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63 Commits
b5196 ... b5259

Author SHA1 Message Date
piDack
2af6880178 llama-chat : reset glmedge chat template (#13253)
* reset glmedge chat template

* fix glmedge chat template
2025-05-02 11:06:09 +02:00
Shakil Ahmed
e84773ab60 mtmd-cli : fix out_of_range when input image path is empty (#13244)
* fix out_of_range error  to keep the chat loop running

* Update examples/llava/mtmd-cli.cpp

Co-authored-by: Sigbjørn Skjæret <sigbjorn.skjaeret@scala.com>

* mtmd-cli : load image right away

* add a new line for readability

* rm printf

* Update examples/llava/mtmd-cli.cpp

Co-authored-by: Sigbjørn Skjæret <sigbjorn.skjaeret@scala.com>

* Update examples/llava/mtmd-cli.cpp

---------

Co-authored-by: Sigbjørn Skjæret <sigbjorn.skjaeret@scala.com>
Co-authored-by: Xuan Son Nguyen <son@huggingface.co>
Co-authored-by: Xuan-Son Nguyen <thichthat@gmail.com>
2025-05-02 10:20:27 +02:00
Georgi Gerganov
fab647e884 server : add cache reuse card link to help (#13230)
* server : add cache reuse card link to help

* args : use short url
2025-05-02 09:48:31 +03:00
Xuan-Son Nguyen
dcf886007d convert : explicitly disable trust_remote_code for AutoConfig (#13246) 2025-05-02 08:45:10 +02:00
bandoti
d24d592808 ci: fix cross-compile sync issues (#12804) 2025-05-01 19:06:39 -03:00
Justin Santa Barbara
8efbdadc61 rpc : avoid uninitialized memory in serialize_tensor (#13210)
Zero out the name and padding buffers.
2025-05-01 23:32:11 +02:00
Jesse Gross
f057808ffa ggml: Don't assert fail when tensor data changes (#13222)
The following scenario will cause an assertion failure in the graph
allocator:
 - Build and allocate a graph containing a tensor with a non-NULL data
   pointer
 - Build and allocate a new graph where that data is NULL

Result:
ggml-alloc.c:819: GGML_ASSERT(talloc->buffer_id >= 0) failed

This happens during revalidation because we think that memory should
have been previously allocated based on the current graph but in
reality the previous graph was different. In this situation, we
should do a full reallocation pass.
2025-05-01 22:46:10 +02:00
Diego Devesa
d7a14c42a1 build : fix build info on windows (#13239)
* build : fix build info on windows

* fix cuda host compiler msg
2025-05-01 21:48:08 +02:00
Loïc Carrère
b6e4ff69b8 clip : (minicpmv) Re-enable upscaling of images smaller than the CLIP image size (#13237) 2025-05-01 21:32:21 +02:00
matteo
e0f572c846 llama-chat : update GLM4 chat template (#13238)
* update GLM4 chat template

* Update chat template

Co-authored-by: Xuan-Son Nguyen <thichthat@gmail.com>

---------

Co-authored-by: Xuan-Son Nguyen <thichthat@gmail.com>
2025-05-01 21:16:38 +02:00
Jeff Bolz
79f26e9e12 vulkan: Add bfloat16 support (#12554)
* vulkan: Add bfloat16 support

This adds bfloat16 matrix multiply support based on VK_KHR_shader_bfloat16.
The extension is required for coopmat multiply support, but matrix-vector
multiply trivially promotes bf16 to fp32 and doesn't require the extension.
The copy/get_rows shaders also don't require the extension.

It's probably possible to fall back to non-coopmat and promote to fp32 when
the extension isn't supported, but this change doesn't do that.

The coopmat support also requires a glslc that supports the extension, which
currently requires a custom build.

* vulkan: Support bf16 tensors without the bf16 extension or coopmat support

Compile a variant of the scalar mul_mm shader that will promote the bf16
values to float, and use that when either the bf16 extension or the coopmat
extensions aren't available.

* vulkan: bfloat16 fixes (really works without bfloat16 support now)

* vulkan: fix spirv-val failure and reenable -O
2025-05-01 20:49:39 +02:00
Jeff Bolz
fc727bcdd5 vulkan: Handle src1 batch dimension in non-contiguous mat-vec-mul shader (#13191)
* vulkan: Handle src1 batch dimension in non-contiguous mat-vec-mul shader
2025-05-01 20:19:31 +02:00
Johannes Gäßler
b0ecbd434b test: non-cont. b in test-backend-ops -o MUL_MAT (#13187) 2025-05-01 20:18:56 +02:00
Georgi Gerganov
b1dd4d08e8 sync : ggml
ggml-ci
2025-05-01 20:15:34 +03:00
Daniel Bevenius
99881f77d8 whisper : add check that target name exists (whisper/3103)
This commit adds a check to makes sure that the target exists before
trying to add compile options to ignore warnings when using MSVC.

The motivation for this is currently the build is broken depending on
the cmake options provided. With this fix it should be possible to build
even if the targets are not actually available.

Refs: https://github.com/ggml-org/whisper.cpp/pull/3090#issuecomment-2842760104
2025-05-01 20:15:34 +03:00
Daniel Bevenius
b5769d92b4 ggml : suppress Windows compiler warnings (whisper/3075)
* whisper: suppress Windows compiler warnings

This commit disables compiler warnings on window using MSVC.

The motivation for these changes is that some compilers generate
warnings for these conversion, for example Windows MSVC, and
there are quite a few of them. This makes it a little difficult to
spot new warnings that may be introduced and also can be difficult
for users/embedders of ggml where these warnings are hard to separate
from their own warnings.

* squash! whisper: suppress Windows compiler warnings

Move ggml related warnings into ggml. This commit also fixes the
indentation and adds a missing whitespace to the if statement.
2025-05-01 20:15:34 +03:00
Xuan-Son Nguyen
8936784f7a mtmd : add **vision** support for Mistral Small 3.1 (#13231)
* convert ok

* load ok, missing patch merger

* ah sheet it works

* update llava/readme

* add test

* fix test
2025-05-01 17:05:42 +02:00
Xuan-Son Nguyen
13c9a3319b arg : remove CURLINFO_EFFECTIVE_METHOD (#13228) 2025-05-01 10:23:25 +02:00
Jared Van Bortel
a70183eb00 llama-model : fix the reported size class for nomic-embed-text-v2-moe (#13223) 2025-05-01 10:09:41 +03:00
Georgi Gerganov
8d33d740c3 sync : ggml 2025-05-01 10:00:39 +03:00
Diego Devesa
4254bb4951 ggml : fix ggml_gallocr_ptr type (ggml/1205) 2025-05-01 09:58:44 +03:00
Georgi Gerganov
9998540149 cuda : fix unused variable compile warning (whisper/0)
ggml-ci
2025-05-01 09:58:44 +03:00
Johannes Gäßler
e1e8e0991f CUDA: batched+noncont MMQ, refactor bs>1 MoE code (#13199) 2025-04-30 23:12:59 +02:00
Xuan-Son Nguyen
6f67cf1f48 arg : -hf do not fail if url mismatch (#13219)
* arg : -hf do not fail if url mismatch

* do not return if cannot parse metadata json
2025-04-30 21:29:15 +01:00
ddh0
16a457facd fix typo: n_ctx_pre_seq -> n_ctx_per_seq (#13221) 2025-04-30 21:28:43 +01:00
Xuan-Son Nguyen
3e168bede4 convert : improve model arch handling (#13122)
* convert : improve model arch handling

* use AutoConfig

* rm trust_remote_code

* Update convert_hf_to_gguf.py

* fix self.block_count for vision

* fix NomicBertModel
2025-04-30 16:56:24 +02:00
Tatsuya Tanaka
ceda28ef8e llava : remove duplicate include (#13207) 2025-04-30 15:25:20 +02:00
Olivier Chafik
3b127c7385 common : add -jf / --json-schema-file flag (#12011) 2025-04-30 14:52:35 +02:00
Jeff Bolz
e5007a5edf vulkan: use uint array index to avoid glslang bug (#13193) 2025-04-30 14:38:37 +02:00
shalinib-ibm
416313773b ggml : fix ppc64le build (#13176)
Build fails with compilation error on power pc.
This patch fixes the same.

Tested with unit tests run via
 --build <build_dir> && cd <build_dir> && make test

Signed-off-by: Shalini Salomi Bodapati <Shalini.Salomi.Bodapati@ibm.com>
2025-04-30 13:17:08 +02:00
Xuan-Son Nguyen
07c2e2f76c convert : correct typo image_mean --> image_std (#13208) 2025-04-30 13:06:15 +02:00
Aaron Teo
44cd8d91ff feat(ggml-cpu): enable z17 compile (#13182)
z17 compilation requires GCC 15.1.0 and onwards

Signed-off-by: Aaron Teo <aaron.teo1@ibm.com>
2025-04-30 10:47:35 +01:00
Xuan-Son Nguyen
5933e6fdc9 arg : allow using -hf offline (#13202)
* arg : allow using -hf offline

* add more comments in code [no ci]
2025-04-30 10:46:32 +02:00
Xuan-Son Nguyen
da84c04d8f docker : do not build tests (#13204)
* docker : do not build tests

* include "ggml-cpu.h"
2025-04-30 10:44:07 +02:00
xiaofei
a0f7016d17 rpc : fix cache directory initialization (#13188)
Signed-off-by: xiaofei <hbuxiaofei@gmail.com>
2025-04-30 09:29:22 +03:00
Johannes Gäßler
19e899ce21 scripts: n_depth for compare-llama-bench [no ci] (#13201) 2025-04-29 23:32:04 +02:00
matteo
e2e1ddb93a server : Prefilling assistant message in openai compatible API (#13174)
* Prefilling assistant message in openai compatible API

* fixed indentation

* fixed code convention

* simplify method usage

* no more than one assistant message at end of messages

* merge checks into prefill code

* Update examples/server/utils.hpp

---------

Co-authored-by: matteo <matteo@naspc.lan>
Co-authored-by: Xuan-Son Nguyen <thichthat@gmail.com>
2025-04-29 20:33:10 +02:00
Georgi Gerganov
d9d398f84f sampling : when top-k <= 0 -> noop (#13173)
ggml-ci
2025-04-29 20:22:57 +03:00
Alberto Cabrera Pérez
5a63980117 llama-bench: fixed size of fields to correctly map to values (#13183) 2025-04-29 17:24:36 +02:00
Johannes Gäßler
cdf76586b2 CUDA: fix non-cont. inputs for batched mat mul (#13155) 2025-04-29 16:00:27 +02:00
Sigbjørn Skjæret
7d3af70b08 llama : llm_type order by size (#13177) 2025-04-29 13:25:53 +02:00
Xuan-Son Nguyen
00e3e5a194 mtmd : add qwen2vl and qwen2.5vl (#13141)
* llava : add clip_n_output_tokens, deprecate clip_n_patches

* mtmd : add qwen2vl and qwen2.5vl

* decode_embd_batch::set_position_...

* working version

* deprecate llama-qwen2vl-cli

* correct order W, H of clip_embd_nbytes_by_img

* edit existing line in hot topics
2025-04-29 11:47:04 +02:00
Sigbjørn Skjæret
e98b3692be llama : set qwen3 model type sizes (#13175) 2025-04-29 11:00:31 +02:00
Xuan-Son Nguyen
b6ce7430b7 llama-graph : fix text position for mrope (#13159)
* llama-graph : fix text position for mrope

* fix typo

* explicitly set 4th dim in the loop
2025-04-29 09:45:49 +03:00
AT
5f5e39e1ba model : Nomic Embed Text V2 with Mixture-of-Experts (MoE) architecture (#12466)
* Nomic Embed Text V2 with Mixture-of-Experts (MoE) architecture

- Adds MoE-based embedding model supporting multilingual embeddings.
- Selects architecture variant based on hyperparameter detection (MoE layers).
- Removes unnecessary subclass initialization checks for clarity.

https://www.nomic.ai/blog/posts/nomic-embed-text-v2

Co-authored-by: Jared Van Bortel <jared@nomic.ai>

* fix tokenizer

* don't rename this tensor

---------

Co-authored-by: Jared Van Bortel <jared@nomic.ai>
2025-04-28 22:52:15 +03:00
Xuan-Son Nguyen
eaea325324 clip : fix model size display (#13153) 2025-04-28 21:23:19 +02:00
Ville Vesilehto
43ddab6eee fix(rpc): Improve input validation and error handling (#13069)
* fix(rpc): Improve input validation and error handling

The `rpc-server` was vulnerable to Denial of Service attacks via
several RPC commands (`SET_TENSOR`, `GRAPH_COMPUTE`, etc.). Malformed
messages could trigger failed assertions (e.g., invalid `ggml_type`)
or out-of-bounds reads/writes leading to `GGML_ABORT` calls,
crashing the server process.

This PR introduces robust input validation and replaces `abort()`
calls with graceful error handling:

- **Type Validation:** `deserialize_tensor` now checks if the
  `tensor->type` is within the valid `GGML_TYPE_COUNT` range
  *before* calling `ggml_new_tensor_4d`. Returns `nullptr` on
  invalid type.
- **Bounds Checks:** Replaced `GGML_ABORT` in `set_tensor`,
  `set_tensor_hash`, and `get_tensor` handlers with error
  logging and returning `false` when data/offset parameters
  are out of buffer bounds.
- **Size Checks:** Added safe arithmetic checks (for overflow) in
  `graph_compute` when calculating required message sizes based
  on client-provided `n_nodes` and `n_tensors`. Returns early
  if the reported sizes conflict with the actual message size or
  would lead to overflow.
- **Error Propagation:**
    - `create_node` now checks for `nullptr` return values from
      `deserialize_tensor` and its recursive calls, propagating
      `nullptr` upwards on failure. Uses `find` instead of `at`
      for safer map access.
    - `copy_tensor` now checks for `nullptr` from `deserialize_tensor`
      and sets the response status to failure if deserialization
      or bounds checks fail.
    - `graph_compute` now checks for `nullptr` return from
      `create_node` and returns failure status correctly. The final
      return value now reflects the actual computation status.

These changes improve the RPC server's resilience
against malformed client requests, preventing crashes and ensuring
errors are handled more gracefully.

Signed-off-by: Ville Vesilehto <ville@vesilehto.fi>

* refactor(rpc): address pr comments

removed comments and unnecessary returns

Signed-off-by: Ville Vesilehto <ville@vesilehto.fi>

* refactor(rpc): ambiguous nullptr from create_node

rpc_server::create_node could previously return nullptr if the input ID
was 0 (valid) or if an internal error (deserialization, recursion
failure) occurred (invalid). This ambiguity made error handling
difficult for the caller (`graph_compute`).

This commit clarifies the meaning of nullptr:
- `graph_compute` now checks if the input 'id' was non-zero when
  `create_node` returns nullptr, correctly identifying failures
  versus intentional null links.
- `create_node` avoids recursive calls for zero IDs and propagates
  nullptr unambiguously on failure during recursion.

Signed-off-by: Ville Vesilehto <ville@vesilehto.fi>

* refactor(rpc): initial zero check in create_node

The caller (`graph_compute`) already checks `id != 0` when handling
a `nullptr` return from `create_node`, correctly distinguishing
intentional null links from actual errors. This makes the initial
`if (id == 0)` check redundant.

Also removes the log message when a tensor ID is not found in the
provided map which was added in this branch.

Signed-off-by: Ville Vesilehto <ville@vesilehto.fi>

* fix(rpc): Handle get_alloc_size failure in server

Check the return value of `server.get_alloc_size` in the RPC server
loop. If the call fails, return early to close the connection.

Signed-off-by: Ville Vesilehto <ville@vesilehto.fi>

* refactor(rpc): input size validation in graph_compute

Removes detailed, step-by-step size calculations and overflow
checks in favor of simpler direct comparisons, assuming 64-bit
overflow is unlikely.

Signed-off-by: Ville Vesilehto <ville@vesilehto.fi>

* refactor(rpc): remove extra status code setting

Removes the explicit setting of `response.result = GGML_STATUS_FAILED`
when `create_node` returns `nullptr` within `graph_compute`.
Primary signal is the `false` return value in case of failure.

Signed-off-by: Ville Vesilehto <ville@vesilehto.fi>

* refactor(rpc): remove redundant check for tensor->type

Breaks CI on ubuntu-cpu-make. Tensor type is uint32_t, thus
the check is not needed.

Signed-off-by: Ville Vesilehto <ville@vesilehto.fi>

---------

Signed-off-by: Ville Vesilehto <ville@vesilehto.fi>
2025-04-28 21:00:20 +03:00
Vishal Agarwal
1831f538f7 llama-bench: add -d depth arg (#13096)
* add depth param

* update llama-bench README and add depth param

* llama-bench: default params for depth arg for faster execution

* Update examples/llama-bench/README.md

Co-authored-by: Johannes Gäßler <johannesg@5d6.de>

* fix buffer print ub

* use user provided args

* remove extra whitespaces

---------

Co-authored-by: Johannes Gäßler <johannesg@5d6.de>
2025-04-28 16:50:39 +02:00
Xuan-Son Nguyen
4e87962e34 mtmd : fix glm-edge redundant token count (#13139)
* mtmd : fix glm-edge redundant token count

* fix chat template

* temporary disable GLMEdge test chat tmpl
2025-04-28 16:12:56 +02:00
pockers21
fb0471d175 context : do not clear output buffer on reserve (#13152)
Co-authored-by: pockers21 <liyang2@uniontech.com>
2025-04-28 16:45:40 +03:00
Xuan-Son Nguyen
d2b2031e5f llama : (mrope) allow using normal 1D position for text token (#13138)
* llama : (mrope) use normal position for text token

* rm n_pos_per_embd from llm_graph_input_attn_temp
2025-04-28 14:20:56 +02:00
Xuan-Son Nguyen
5fa9e63be8 clip : refactor set input for cgraph + fix qwen2.5vl input (#13136)
* clip : refactor set input for cgraph

* more strict assert

* minicpmv : use clip_n_mmproj_embd instead of copying the same code everywhere

* split qwen2 and qwen2.5 code blocks

* minor style fix
2025-04-28 12:18:59 +02:00
Akarshan Biswas
a4c340f974 SYCL: Add all missing unary kernels (#13074)
* SYCL: Add all missing unary kernels

ggml-ci

* decouple kernel launch range from data size using strided loop

* use ciel_div helper for num_blocks
ggml-ci

* clean auto imported header files
2025-04-28 11:33:25 +02:00
Georgi Gerganov
d0a417f3c7 readme : update hot topics (#13150) 2025-04-28 12:10:18 +03:00
Georgi Gerganov
43f2b07193 common : fix noreturn compile warning (#13151)
ggml-ci
2025-04-28 11:57:19 +03:00
Xuan-Son Nguyen
e5d6c2554e llama-chat : fix typo GML --> GLM (#13143) 2025-04-28 10:11:58 +02:00
R0CKSTAR
f0dd6a1926 musa: fix typo in cc control (#13144)
Signed-off-by: Xiaodong Ye <xiaodong.ye@mthreads.com>
2025-04-28 09:33:28 +02:00
Johannes Gäßler
69699be48a CUDA: fix q_nope_absorbed prec for DS 2 Lite f16 (#13137) 2025-04-28 09:29:26 +02:00
Xuan-Son Nguyen
85f36e5e71 arg : fix unused variable (#13142) 2025-04-28 08:16:59 +03:00
4onen
c0a97b762e llama-bench : Add --override-tensors arg (#12922)
* Add --override-tensors option to llama-bench

* Correct llama-bench --override-tensors to --override-tensor

* llama-bench: Update --override-tensors parsing to match --tensor-split, appear in test matrix.

* Make new llama-bench util functions static to fix Ubuntu CI

* llama-bench: Correct -ot corner cases (No -ot calls, leading and trailing empty -ot spans, etc.)
2025-04-27 23:48:26 +02:00
matteo
ced44be342 llama-chat : fix wrong template in GLM4-0414 (#13140)
* fix wrong template in GLM4-0414

* fix spaces

* no bos token since it is already in the template

* moved the chatgml4 check to higher priority

* restored template for old GLM models

* moved the GLM4 template check in the correct place with correct check
2025-04-27 21:57:32 +02:00
R0CKSTAR
e291450b76 musa: fix build warning (#13129)
Signed-off-by: Xiaodong Ye <xiaodong.ye@mthreads.com>
2025-04-27 13:22:49 +02:00
LostRuins Concedo
59e991c23c Fixes Qwen2.5VL segfault during inference with https://github.com/ggml-org/llama.cpp/pull/12402 as has_qwen2vl_merger migration was incomplete (#13133) 2025-04-27 12:43:37 +02:00
89 changed files with 3126 additions and 1353 deletions

View File

@@ -14,9 +14,9 @@ WORKDIR /app
COPY . .
RUN if [ "$TARGETARCH" = "amd64" ]; then \
cmake -S . -B build -DCMAKE_BUILD_TYPE=Release -DGGML_NATIVE=OFF -DGGML_BACKEND_DL=ON -DGGML_CPU_ALL_VARIANTS=ON; \
cmake -S . -B build -DCMAKE_BUILD_TYPE=Release -DGGML_NATIVE=OFF -DLLAMA_BUILD_TESTS=OFF -DGGML_BACKEND_DL=ON -DGGML_CPU_ALL_VARIANTS=ON; \
elif [ "$TARGETARCH" = "arm64" ]; then \
cmake -S . -B build -DCMAKE_BUILD_TYPE=Release -DGGML_NATIVE=OFF -DGGML_CPU_ARM_ARCH=${GGML_CPU_ARM_ARCH}; \
cmake -S . -B build -DCMAKE_BUILD_TYPE=Release -DGGML_NATIVE=OFF -DLLAMA_BUILD_TESTS=OFF -DGGML_CPU_ARM_ARCH=${GGML_CPU_ARM_ARCH}; \
else \
echo "Unsupported architecture"; \
exit 1; \

View File

@@ -21,7 +21,7 @@ COPY . .
RUN if [ "${CUDA_DOCKER_ARCH}" != "default" ]; then \
export CMAKE_ARGS="-DCMAKE_CUDA_ARCHITECTURES=${CUDA_DOCKER_ARCH}"; \
fi && \
cmake -B build -DGGML_NATIVE=OFF -DGGML_CUDA=ON -DLLAMA_CURL=ON -DGGML_BACKEND_DL=ON -DGGML_CPU_ALL_VARIANTS=ON ${CMAKE_ARGS} -DCMAKE_EXE_LINKER_FLAGS=-Wl,--allow-shlib-undefined . && \
cmake -B build -DGGML_NATIVE=OFF -DGGML_CUDA=ON -DGGML_BACKEND_DL=ON -DGGML_CPU_ALL_VARIANTS=ON -DLLAMA_BUILD_TESTS=OFF ${CMAKE_ARGS} -DCMAKE_EXE_LINKER_FLAGS=-Wl,--allow-shlib-undefined . && \
cmake --build build --config Release -j$(nproc)
RUN mkdir -p /app/lib && \

View File

@@ -17,7 +17,7 @@ RUN if [ "${GGML_SYCL_F16}" = "ON" ]; then \
&& export OPT_SYCL_F16="-DGGML_SYCL_F16=ON"; \
fi && \
echo "Building with dynamic libs" && \
cmake -B build -DGGML_NATIVE=OFF -DGGML_SYCL=ON -DCMAKE_C_COMPILER=icx -DCMAKE_CXX_COMPILER=icpx -DLLAMA_CURL=ON -DGGML_BACKEND_DL=ON -DGGML_CPU_ALL_VARIANTS=ON ${OPT_SYCL_F16} && \
cmake -B build -DGGML_NATIVE=OFF -DGGML_SYCL=ON -DCMAKE_C_COMPILER=icx -DCMAKE_CXX_COMPILER=icpx -DGGML_BACKEND_DL=ON -DGGML_CPU_ALL_VARIANTS=ON -DLLAMA_BUILD_TESTS=OFF ${OPT_SYCL_F16} && \
cmake --build build --config Release -j$(nproc)
RUN mkdir -p /app/lib && \

View File

@@ -22,7 +22,7 @@ ENV LD_LIBRARY_PATH=${ASCEND_TOOLKIT_HOME}/runtime/lib64/stub:$LD_LIBRARY_PATH
RUN echo "Building with static libs" && \
source /usr/local/Ascend/ascend-toolkit/set_env.sh --force && \
cmake -B build -DGGML_NATIVE=OFF -DGGML_CANN=ON -DBUILD_SHARED_LIBS=OFF && \
cmake -B build -DGGML_NATIVE=OFF -DGGML_CANN=ON -DBUILD_SHARED_LIBS=OFF -DLLAMA_BUILD_TESTS=OFF && \
cmake --build build --config Release --target llama-cli
# TODO: use image with NNRT

View File

@@ -35,7 +35,7 @@ COPY . .
RUN if [ "${MUSA_DOCKER_ARCH}" != "default" ]; then \
export CMAKE_ARGS="-DMUSA_ARCHITECTURES=${MUSA_DOCKER_ARCH}"; \
fi && \
cmake -B build -DGGML_NATIVE=OFF -DGGML_MUSA=ON -DLLAMA_CURL=ON -DGGML_BACKEND_DL=ON -DGGML_CPU_ALL_VARIANTS=ON ${CMAKE_ARGS} -DCMAKE_EXE_LINKER_FLAGS=-Wl,--allow-shlib-undefined . && \
cmake -B build -DGGML_NATIVE=OFF -DGGML_MUSA=ON -DLLAMA_BUILD_TESTS=OFF -DGGML_BACKEND_DL=ON -DGGML_CPU_ALL_VARIANTS=ON ${CMAKE_ARGS} -DCMAKE_EXE_LINKER_FLAGS=-Wl,--allow-shlib-undefined . && \
cmake --build build --config Release -j$(nproc)
RUN mkdir -p /app/lib && \

View File

@@ -40,7 +40,7 @@ WORKDIR /app
COPY . .
RUN HIPCXX="$(hipconfig -l)/clang" HIP_PATH="$(hipconfig -R)" \
cmake -S . -B build -DGGML_HIP=ON -DAMDGPU_TARGETS=$ROCM_DOCKER_ARCH -DGGML_BACKEND_DL=ON -DGGML_CPU_ALL_VARIANTS=ON -DCMAKE_BUILD_TYPE=Release -DLLAMA_CURL=ON \
cmake -S . -B build -DGGML_HIP=ON -DAMDGPU_TARGETS=$ROCM_DOCKER_ARCH -DGGML_BACKEND_DL=ON -DGGML_CPU_ALL_VARIANTS=ON -DCMAKE_BUILD_TYPE=Release -DLLAMA_BUILD_TESTS=OFF \
&& cmake --build build --config Release -j$(nproc)
RUN mkdir -p /app/lib \

View File

@@ -16,7 +16,7 @@ WORKDIR /app
COPY . .
RUN cmake -B build -DGGML_NATIVE=OFF -DGGML_VULKAN=1 -DLLAMA_CURL=1 -DGGML_BACKEND_DL=ON -DGGML_CPU_ALL_VARIANTS=ON && \
RUN cmake -B build -DGGML_NATIVE=OFF -DGGML_VULKAN=1 -DLLAMA_BUILD_TESTS=OFF -DGGML_BACKEND_DL=ON -DGGML_CPU_ALL_VARIANTS=ON && \
cmake --build build --config Release -j$(nproc)
RUN mkdir -p /app/lib && \

View File

@@ -4,18 +4,25 @@ on:
workflow_call:
jobs:
ubuntu-latest-riscv64-cpu-cross:
runs-on: ubuntu-latest
ubuntu-24-riscv64-cpu-cross:
runs-on: ubuntu-24.04
steps:
- uses: actions/checkout@v4
- name: Setup Riscv
run: |
sudo dpkg --add-architecture riscv64
sudo sed -i 's|http://azure.archive.ubuntu.com/ubuntu|http://ports.ubuntu.com/ubuntu-ports|g' \
/etc/apt/sources.list /etc/apt/apt-mirrors.txt
sudo apt-get clean
sudo apt-get update
# Add arch-specific repositories for non-amd64 architectures
cat << EOF | sudo tee /etc/apt/sources.list.d/riscv64-ports.list
deb [arch=riscv64] http://ports.ubuntu.com/ubuntu-ports/ noble main universe
deb [arch=riscv64] http://ports.ubuntu.com/ubuntu-ports/ noble-updates main universe
deb [arch=riscv64] http://ports.ubuntu.com/ubuntu-ports/ noble-security main universe
deb [arch=riscv64] http://ports.ubuntu.com/ubuntu-ports/ noble-backports main universe
EOF
sudo apt-get update || true ;# Prevent failure due to missing URLs.
sudo apt-get install -y --no-install-recommends \
build-essential \
gcc-14-riscv64-linux-gnu \
@@ -40,21 +47,25 @@ jobs:
cmake --build build --config Release -j $(nproc)
ubuntu-latest-riscv64-vulkan-cross:
runs-on: ubuntu-latest
ubuntu-24-riscv64-vulkan-cross:
runs-on: ubuntu-24.04
steps:
- uses: actions/checkout@v4
with:
fetch-depth: 0
- name: Setup Riscv
run: |
sudo dpkg --add-architecture riscv64
sudo sed -i 's|http://azure.archive.ubuntu.com/ubuntu|http://ports.ubuntu.com/ubuntu-ports|g' \
/etc/apt/sources.list /etc/apt/apt-mirrors.txt
sudo apt-get clean
sudo apt-get update
# Add arch-specific repositories for non-amd64 architectures
cat << EOF | sudo tee /etc/apt/sources.list.d/riscv64-ports.list
deb [arch=riscv64] http://ports.ubuntu.com/ubuntu-ports/ noble main universe
deb [arch=riscv64] http://ports.ubuntu.com/ubuntu-ports/ noble-updates main universe
deb [arch=riscv64] http://ports.ubuntu.com/ubuntu-ports/ noble-security main universe
deb [arch=riscv64] http://ports.ubuntu.com/ubuntu-ports/ noble-backports main universe
EOF
sudo apt-get update || true ;# Prevent failure due to missing URLs.
sudo apt-get install -y --no-install-recommends \
build-essential \
glslc \
@@ -82,21 +93,25 @@ jobs:
cmake --build build --config Release -j $(nproc)
ubuntu-latest-arm64-vulkan-cross:
runs-on: ubuntu-latest
ubuntu-24-arm64-vulkan-cross:
runs-on: ubuntu-24.04
steps:
- uses: actions/checkout@v4
with:
fetch-depth: 0
- name: Setup Arm64
run: |
sudo dpkg --add-architecture arm64
sudo sed -i 's|http://azure.archive.ubuntu.com/ubuntu|http://ports.ubuntu.com/ubuntu-ports|g' \
/etc/apt/sources.list /etc/apt/apt-mirrors.txt
sudo apt-get clean
sudo apt-get update
# Add arch-specific repositories for non-amd64 architectures
cat << EOF | sudo tee /etc/apt/sources.list.d/arm64-ports.list
deb [arch=arm64] http://ports.ubuntu.com/ubuntu-ports/ noble main universe
deb [arch=arm64] http://ports.ubuntu.com/ubuntu-ports/ noble-updates main universe
deb [arch=arm64] http://ports.ubuntu.com/ubuntu-ports/ noble-security main universe
deb [arch=arm64] http://ports.ubuntu.com/ubuntu-ports/ noble-backports main universe
EOF
sudo apt-get update || true ;# Prevent failure due to missing URLs.
sudo apt-get install -y --no-install-recommends \
build-essential \
glslc \

View File

@@ -601,9 +601,8 @@ jobs:
-DGGML_SYCL_F16=ON
cmake --build build --config Release -j $(nproc)
# Disabled for now due to sporadic issue syncing.
# build-linux-cross:
# uses: ./.github/workflows/build-linux-cross.yml
build-linux-cross:
uses: ./.github/workflows/build-linux-cross.yml
macOS-latest-cmake-ios:
runs-on: macos-latest

View File

@@ -16,9 +16,9 @@ Inference of Meta's [LLaMA](https://arxiv.org/abs/2302.13971) model (and others)
## Hot topics
- A new binary `llama-mtmd-cli` is introduced to replace `llava-cli`, `minicpmv-cli` and `gemma3-cli` https://github.com/ggml-org/llama.cpp/pull/13012, `libllava` will be deprecated
- **How to use [MTLResidencySet](https://developer.apple.com/documentation/metal/mtlresidencyset?language=objc) to keep the GPU memory active?** https://github.com/ggml-org/llama.cpp/pull/11427
- **VS Code extension for FIM completions:** https://github.com/ggml-org/llama.vscode
- **GGML developer experience survey (organized and reviewed by NVIDIA):** [link](https://forms.gle/Gasw3cRgyhNEnrwK9)
- A new binary `llama-mtmd-cli` is introduced to replace `llava-cli`, `minicpmv-cli`, `gemma3-cli` ([#13012](https://github.com/ggml-org/llama.cpp/pull/13012)) and `qwen2vl-cli` ([#13141]((https://github.com/ggml-org/llama.cpp/pull/13141))), `libllava` will be deprecated
- VS Code extension for FIM completions: https://github.com/ggml-org/llama.vscode
- Universal [tool call support](./docs/function-calling.md) in `llama-server` https://github.com/ggml-org/llama.cpp/pull/9639
- Vim/Neovim plugin for FIM completions: https://github.com/ggml-org/llama.vim
- Introducing GGUF-my-LoRA https://github.com/ggml-org/llama.cpp/discussions/10123

View File

@@ -41,14 +41,20 @@ endif()
if(MSVC)
set(BUILD_COMPILER "${CMAKE_C_COMPILER_ID} ${CMAKE_C_COMPILER_VERSION}")
set(BUILD_TARGET ${CMAKE_VS_PLATFORM_NAME})
if (CMAKE_VS_PLATFORM_NAME)
set(BUILD_TARGET ${CMAKE_VS_PLATFORM_NAME})
else()
set(BUILD_TARGET "${CMAKE_SYSTEM_NAME} ${CMAKE_SYSTEM_PROCESSOR}")
endif()
else()
execute_process(
COMMAND sh -c "\"$@\" --version | head -1" _ ${CMAKE_C_COMPILER}
COMMAND ${CMAKE_C_COMPILER} --version
OUTPUT_VARIABLE OUT
OUTPUT_STRIP_TRAILING_WHITESPACE
)
string(REGEX REPLACE " *\n.*" "" OUT "${OUT}")
set(BUILD_COMPILER ${OUT})
execute_process(
COMMAND ${CMAKE_C_COMPILER} -dumpmachine
OUTPUT_VARIABLE OUT

View File

@@ -39,7 +39,9 @@ add_custom_command(
COMMENT "Generating build details from Git"
COMMAND ${CMAKE_COMMAND} -DMSVC=${MSVC} -DCMAKE_C_COMPILER_VERSION=${CMAKE_C_COMPILER_VERSION}
-DCMAKE_C_COMPILER_ID=${CMAKE_C_COMPILER_ID} -DCMAKE_VS_PLATFORM_NAME=${CMAKE_VS_PLATFORM_NAME}
-DCMAKE_C_COMPILER=${CMAKE_C_COMPILER} -P "${CMAKE_CURRENT_SOURCE_DIR}/cmake/build-info-gen-cpp.cmake"
-DCMAKE_C_COMPILER=${CMAKE_C_COMPILER}
-DCMAKE_SYSTEM_NAME=${CMAKE_SYSTEM_NAME} -DCMAKE_SYSTEM_PROCESSOR=${CMAKE_SYSTEM_PROCESSOR}
-P "${CMAKE_CURRENT_SOURCE_DIR}/cmake/build-info-gen-cpp.cmake"
WORKING_DIRECTORY "${CMAKE_CURRENT_SOURCE_DIR}/.."
DEPENDS "${CMAKE_CURRENT_SOURCE_DIR}/build-info.cpp.in" ${GIT_INDEX}
VERBATIM

View File

@@ -43,6 +43,25 @@ std::initializer_list<enum llama_example> mmproj_examples = {
// TODO: add LLAMA_EXAMPLE_SERVER when it's ready
};
static std::string read_file(const std::string & fname) {
std::ifstream file(fname);
if (!file) {
throw std::runtime_error(string_format("error: failed to open file '%s'\n", fname.c_str()));
}
std::string content((std::istreambuf_iterator<char>(file)), std::istreambuf_iterator<char>());
file.close();
return content;
}
static void write_file(const std::string & fname, const std::string & content) {
std::ofstream file(fname);
if (!file) {
throw std::runtime_error(string_format("error: failed to open file '%s'\n", fname.c_str()));
}
file << content;
file.close();
}
common_arg & common_arg::set_examples(std::initializer_list<enum llama_example> examples) {
this->examples = std::move(examples);
return *this;
@@ -198,11 +217,11 @@ struct curl_slist_ptr {
#define CURL_MAX_RETRY 3
#define CURL_RETRY_DELAY_SECONDS 2
static bool curl_perform_with_retry(const std::string & url, CURL * curl, int max_attempts, int retry_delay_seconds) {
static bool curl_perform_with_retry(const std::string & url, CURL * curl, int max_attempts, int retry_delay_seconds, const char * method_name) {
int remaining_attempts = max_attempts;
while (remaining_attempts > 0) {
LOG_INF("%s: Trying to download from %s (attempt %d of %d)...\n", __func__ , url.c_str(), max_attempts - remaining_attempts + 1, max_attempts);
LOG_INF("%s: %s %s (attempt %d of %d)...\n", __func__ , method_name, url.c_str(), max_attempts - remaining_attempts + 1, max_attempts);
CURLcode res = curl_easy_perform(curl);
if (res == CURLE_OK) {
@@ -213,6 +232,7 @@ static bool curl_perform_with_retry(const std::string & url, CURL * curl, int ma
LOG_WRN("%s: curl_easy_perform() failed: %s, retrying after %d milliseconds...\n", __func__, curl_easy_strerror(res), exponential_backoff_delay);
remaining_attempts--;
if (remaining_attempts == 0) break;
std::this_thread::sleep_for(std::chrono::milliseconds(exponential_backoff_delay));
}
@@ -231,8 +251,6 @@ static bool common_download_file_single(const std::string & url, const std::stri
return false;
}
bool force_download = false;
// Set the URL, allow to follow http redirection
curl_easy_setopt(curl.get(), CURLOPT_URL, url.c_str());
curl_easy_setopt(curl.get(), CURLOPT_FOLLOWLOCATION, 1L);
@@ -256,7 +274,7 @@ static bool common_download_file_single(const std::string & url, const std::stri
// If the file exists, check its JSON metadata companion file.
std::string metadata_path = path + ".json";
nlohmann::json metadata;
nlohmann::json metadata; // TODO @ngxson : get rid of this json, use regex instead
std::string etag;
std::string last_modified;
@@ -266,14 +284,7 @@ static bool common_download_file_single(const std::string & url, const std::stri
if (metadata_in.good()) {
try {
metadata_in >> metadata;
LOG_INF("%s: previous metadata file found %s: %s\n", __func__, metadata_path.c_str(), metadata.dump().c_str());
if (metadata.contains("url") && metadata.at("url").is_string()) {
auto previous_url = metadata.at("url").get<std::string>();
if (previous_url != url) {
LOG_ERR("%s: Model URL mismatch: %s != %s\n", __func__, url.c_str(), previous_url.c_str());
return false;
}
}
LOG_DBG("%s: previous metadata file found %s: %s\n", __func__, metadata_path.c_str(), metadata.dump().c_str());
if (metadata.contains("etag") && metadata.at("etag").is_string()) {
etag = metadata.at("etag");
}
@@ -281,10 +292,10 @@ static bool common_download_file_single(const std::string & url, const std::stri
last_modified = metadata.at("lastModified");
}
} catch (const nlohmann::json::exception & e) {
LOG_ERR("%s: error reading metadata file %s: %s\n", __func__, metadata_path.c_str(), e.what());
return false;
LOG_ERR("%s: error reading metadata file %s: %s\n", __func__, metadata_path.c_str(), e.what());
}
}
// if we cannot open the metadata file, we assume that the downloaded file is not valid (etag and last-modified are left empty, so we will download it again)
} else {
LOG_INF("%s: no previous model file found %s\n", __func__, path.c_str());
}
@@ -296,7 +307,10 @@ static bool common_download_file_single(const std::string & url, const std::stri
};
common_load_model_from_url_headers headers;
bool head_request_ok = false;
bool should_download = !file_exists; // by default, we should download if the file does not exist
// get ETag to see if the remote file has changed
{
typedef size_t(*CURLOPT_HEADERFUNCTION_PTR)(char *, size_t, size_t, void *);
auto header_callback = [](char * buffer, size_t /*size*/, size_t n_items, void * userdata) -> size_t {
@@ -325,23 +339,28 @@ static bool common_download_file_single(const std::string & url, const std::stri
curl_easy_setopt(curl.get(), CURLOPT_HEADERFUNCTION, static_cast<CURLOPT_HEADERFUNCTION_PTR>(header_callback));
curl_easy_setopt(curl.get(), CURLOPT_HEADERDATA, &headers);
bool was_perform_successful = curl_perform_with_retry(url, curl.get(), CURL_MAX_RETRY, CURL_RETRY_DELAY_SECONDS);
// we only allow retrying once for HEAD requests
// this is for the use case of using running offline (no internet), retrying can be annoying
bool was_perform_successful = curl_perform_with_retry(url, curl.get(), 1, 0, "HEAD");
if (!was_perform_successful) {
return false;
head_request_ok = false;
}
long http_code = 0;
curl_easy_getinfo(curl.get(), CURLINFO_RESPONSE_CODE, &http_code);
if (http_code != 200) {
// HEAD not supported, we don't know if the file has changed
// force trigger downloading
force_download = true;
LOG_ERR("%s: HEAD invalid http status code received: %ld\n", __func__, http_code);
if (http_code == 200) {
head_request_ok = true;
} else {
LOG_WRN("%s: HEAD invalid http status code received: %ld\n", __func__, http_code);
head_request_ok = false;
}
}
bool should_download = !file_exists || force_download;
if (!should_download) {
// if head_request_ok is false, we don't have the etag or last-modified headers
// we leave should_download as-is, which is true if the file does not exist
if (head_request_ok) {
// check if ETag or Last-Modified headers are different
// if it is, we need to download the file again
if (!etag.empty() && etag != headers.etag) {
LOG_WRN("%s: ETag header is different (%s != %s): triggering a new download\n", __func__, etag.c_str(), headers.etag.c_str());
should_download = true;
@@ -350,6 +369,7 @@ static bool common_download_file_single(const std::string & url, const std::stri
should_download = true;
}
}
if (should_download) {
std::string path_temporary = path + ".downloadInProgress";
if (file_exists) {
@@ -403,7 +423,7 @@ static bool common_download_file_single(const std::string & url, const std::stri
// start the download
LOG_INF("%s: trying to download model from %s to %s (server_etag:%s, server_last_modified:%s)...\n", __func__,
llama_download_hide_password_in_url(url).c_str(), path.c_str(), headers.etag.c_str(), headers.last_modified.c_str());
bool was_perform_successful = curl_perform_with_retry(url, curl.get(), CURL_MAX_RETRY, CURL_RETRY_DELAY_SECONDS);
bool was_perform_successful = curl_perform_with_retry(url, curl.get(), CURL_MAX_RETRY, CURL_RETRY_DELAY_SECONDS, "GET");
if (!was_perform_successful) {
return false;
}
@@ -424,13 +444,15 @@ static bool common_download_file_single(const std::string & url, const std::stri
{"etag", headers.etag},
{"lastModified", headers.last_modified}
});
std::ofstream(metadata_path) << metadata.dump(4);
LOG_INF("%s: file metadata saved: %s\n", __func__, metadata_path.c_str());
write_file(metadata_path, metadata.dump(4));
LOG_DBG("%s: file metadata saved: %s\n", __func__, metadata_path.c_str());
if (rename(path_temporary.c_str(), path.c_str()) != 0) {
LOG_ERR("%s: unable to rename file: %s to %s\n", __func__, path_temporary.c_str(), path.c_str());
return false;
}
} else {
LOG_INF("%s: using cached file: %s\n", __func__, path.c_str());
}
return true;
@@ -605,16 +627,37 @@ static struct common_hf_file_res common_get_hf_file(const std::string & hf_repo_
// Important: the User-Agent must be "llama-cpp" to get the "ggufFile" field in the response
// User-Agent header is already set in common_remote_get_content, no need to set it here
// we use "=" to avoid clashing with other component, while still being allowed on windows
std::string cached_response_fname = "manifest=" + hf_repo + "=" + tag + ".json";
string_replace_all(cached_response_fname, "/", "_");
std::string cached_response_path = fs_get_cache_file(cached_response_fname);
// make the request
common_remote_params params;
params.headers = headers;
auto res = common_remote_get_content(url, params);
long res_code = res.first;
std::string res_str(res.second.data(), res.second.size());
long res_code = 0;
std::string res_str;
bool use_cache = false;
try {
auto res = common_remote_get_content(url, params);
res_code = res.first;
res_str = std::string(res.second.data(), res.second.size());
} catch (const std::exception & e) {
LOG_WRN("error: failed to get manifest: %s\n", e.what());
LOG_WRN("try reading from cache\n");
// try to read from cache
try {
res_str = read_file(cached_response_path);
res_code = 200;
use_cache = true;
} catch (const std::exception & e) {
throw std::runtime_error("error: failed to get manifest (check your internet connection)");
}
}
std::string ggufFile;
std::string mmprojFile;
if (res_code == 200) {
if (res_code == 200 || res_code == 304) {
// extract ggufFile.rfilename in json, using regex
{
std::regex pattern("\"ggufFile\"[\\s\\S]*?\"rfilename\"\\s*:\\s*\"([^\"]+)\"");
@@ -631,6 +674,10 @@ static struct common_hf_file_res common_get_hf_file(const std::string & hf_repo_
mmprojFile = match[1].str();
}
}
if (!use_cache) {
// if not using cached response, update the cache file
write_file(cached_response_path, res_str);
}
} else if (res_code == 401) {
throw std::runtime_error("error: model is private or does not exist; if you are accessing a gated model, please provide a valid HF token");
} else {
@@ -673,8 +720,12 @@ static struct common_hf_file_res common_get_hf_file(const std::string &, const s
return {};
}
std::pair<long, std::vector<char>> common_remote_get_content(const std::string & url, const common_remote_params & params) {
throw std::runtime_error("error: built without CURL, cannot download model from the internet");
std::pair<long, std::vector<char>> common_remote_get_content(const std::string & url, const common_remote_params &) {
if (!url.empty()) {
throw std::runtime_error("error: built without CURL, cannot download model from the internet");
}
return {};
}
#endif // LLAMA_USE_CURL
@@ -1138,6 +1189,9 @@ bool common_params_parse(int argc, char ** argv, common_params & params, llama_e
fprintf(stderr, "%s\n", ex.what());
ctx_arg.params = params_org;
return false;
} catch (std::exception & ex) {
fprintf(stderr, "%s\n", ex.what());
exit(1); // for other exceptions, we exit with status code 1
}
return true;
@@ -1438,13 +1492,9 @@ common_params_context common_params_parser_init(common_params & params, llama_ex
{"-f", "--file"}, "FNAME",
"a file containing the prompt (default: none)",
[](common_params & params, const std::string & value) {
std::ifstream file(value);
if (!file) {
throw std::runtime_error(string_format("error: failed to open file '%s'\n", value.c_str()));
}
params.prompt = read_file(value);
// store the external file name in params
params.prompt_file = value;
std::copy(std::istreambuf_iterator<char>(file), std::istreambuf_iterator<char>(), back_inserter(params.prompt));
if (!params.prompt.empty() && params.prompt.back() == '\n') {
params.prompt.pop_back();
}
@@ -1454,11 +1504,7 @@ common_params_context common_params_parser_init(common_params & params, llama_ex
{"-sysf", "--system-prompt-file"}, "FNAME",
"a file containing the system prompt (default: none)",
[](common_params & params, const std::string & value) {
std::ifstream file(value);
if (!file) {
throw std::runtime_error(string_format("error: failed to open file '%s'\n", value.c_str()));
}
std::copy(std::istreambuf_iterator<char>(file), std::istreambuf_iterator<char>(), back_inserter(params.system_prompt));
params.system_prompt = read_file(value);
if (!params.system_prompt.empty() && params.system_prompt.back() == '\n') {
params.system_prompt.pop_back();
}
@@ -1883,15 +1929,7 @@ common_params_context common_params_parser_init(common_params & params, llama_ex
{"--grammar-file"}, "FNAME",
"file to read grammar from",
[](common_params & params, const std::string & value) {
std::ifstream file(value);
if (!file) {
throw std::runtime_error(string_format("error: failed to open file '%s'\n", value.c_str()));
}
std::copy(
std::istreambuf_iterator<char>(file),
std::istreambuf_iterator<char>(),
std::back_inserter(params.sampling.grammar)
);
params.sampling.grammar = read_file(value);
}
).set_sparam());
add_opt(common_arg(
@@ -1901,6 +1939,23 @@ common_params_context common_params_parser_init(common_params & params, llama_ex
params.sampling.grammar = json_schema_to_grammar(json::parse(value));
}
).set_sparam());
add_opt(common_arg(
{"-jf", "--json-schema-file"}, "FILE",
"File containing a JSON schema to constrain generations (https://json-schema.org/), e.g. `{}` for any JSON object\nFor schemas w/ external $refs, use --grammar + example/json_schema_to_grammar.py instead",
[](common_params & params, const std::string & value) {
std::ifstream file(value);
if (!file) {
throw std::runtime_error(string_format("error: failed to open file '%s'\n", value.c_str()));
}
std::string schema;
std::copy(
std::istreambuf_iterator<char>(file),
std::istreambuf_iterator<char>(),
std::back_inserter(schema)
);
params.sampling.grammar = json_schema_to_grammar(json::parse(schema));
}
).set_sparam());
add_opt(common_arg(
{"--pooling"}, "{none,mean,cls,last,rank}",
"pooling type for embeddings, use model default if unspecified",
@@ -2728,7 +2783,10 @@ common_params_context common_params_parser_init(common_params & params, llama_ex
).set_examples({LLAMA_EXAMPLE_SERVER}).set_env("LLAMA_ARG_THREADS_HTTP"));
add_opt(common_arg(
{"--cache-reuse"}, "N",
string_format("min chunk size to attempt reusing from the cache via KV shifting (default: %d)", params.n_cache_reuse),
string_format(
"min chunk size to attempt reusing from the cache via KV shifting (default: %d)\n"
"[(card)](https://ggml.ai/f0.png)", params.n_cache_reuse
),
[](common_params & params, int value) {
params.n_cache_reuse = value;
}
@@ -2811,14 +2869,7 @@ common_params_context common_params_parser_init(common_params & params, llama_ex
"list of built-in templates:\n%s", list_builtin_chat_templates().c_str()
),
[](common_params & params, const std::string & value) {
std::ifstream file(value);
if (!file) {
throw std::runtime_error(string_format("error: failed to open file '%s'\n", value.c_str()));
}
std::copy(
std::istreambuf_iterator<char>(file),
std::istreambuf_iterator<char>(),
std::back_inserter(params.chat_template));
params.chat_template = read_file(value);
}
).set_examples({LLAMA_EXAMPLE_MAIN, LLAMA_EXAMPLE_SERVER}).set_env("LLAMA_ARG_CHAT_TEMPLATE_FILE"));
add_opt(common_arg(

View File

@@ -16,6 +16,7 @@ from pathlib import Path
from hashlib import sha256
from typing import TYPE_CHECKING, Any, Callable, ContextManager, Iterable, Iterator, Literal, Sequence, TypeVar, cast
from itertools import chain
from transformers import AutoConfig
import math
import numpy as np
@@ -66,8 +67,6 @@ class ModelBase:
part_names: list[str]
is_safetensors: bool
hparams: dict[str, Any]
block_count: int
tensor_map: gguf.TensorNameMap
tensor_names: set[str] | None
gguf_writer: gguf.GGUFWriter
model_name: str | None
@@ -78,7 +77,11 @@ class ModelBase:
# subclasses should define this!
model_arch: gguf.MODEL_ARCH
def __init__(self, dir_model: Path, ftype: gguf.LlamaFileType, fname_out: Path, is_big_endian: bool = False,
# subclasses should initialize this!
block_count: int
tensor_map: gguf.TensorNameMap
def __init__(self, dir_model: Path, ftype: gguf.LlamaFileType, fname_out: Path, *, is_big_endian: bool = False,
use_temp_file: bool = False, eager: bool = False,
metadata_override: Path | None = None, model_name: str | None = None,
split_max_tensors: int = 0, split_max_size: int = 0, dry_run: bool = False,
@@ -113,8 +116,6 @@ class ModelBase:
if not self.is_safetensors:
self.part_names = ModelBase.get_model_part_names(self.dir_model, "pytorch_model", ".bin")
self.hparams = ModelBase.load_hparams(self.dir_model) if hparams is None else hparams
self.block_count = self.find_hparam(["n_layers", "num_hidden_layers", "n_layer", "num_layers"])
self.tensor_map = gguf.get_tensor_name_map(self.model_arch, self.block_count)
self.tensor_names = None
self.metadata_override = metadata_override
self.model_name = model_name
@@ -417,15 +418,15 @@ class ModelBase:
@staticmethod
def load_hparams(dir_model: Path):
with open(dir_model / "config.json", "r", encoding="utf-8") as f:
hparams = json.load(f)
architectures = hparams.get("architectures")
if "text_config" in hparams:
hparams = {**hparams, **hparams["text_config"]}
if architectures is not None:
# preserve "architectures" from root level config
hparams["architectures"] = architectures
return hparams
try:
# for security reason, we don't allow loading remote code by default
# if a model need remote code, we will fallback to config.json
return AutoConfig.from_pretrained(dir_model, trust_remote_code=False).to_dict()
except Exception as e:
logger.warning(f"Failed to load model config from {dir_model}: {e}")
logger.warning("Trying to load config.json instead")
with open(dir_model / "config.json", "r", encoding="utf-8") as f:
return json.load(f)
@classmethod
def register(cls, *names: str) -> Callable[[AnyModel], AnyModel]:
@@ -454,6 +455,16 @@ class ModelBase:
class TextModel(ModelBase):
def __init__(self, *args, **kwargs):
super().__init__(*args, **kwargs)
if "text_config" in self.hparams:
# move the text_config to the root level
self.hparams = {**self.hparams, **self.hparams["text_config"]}
self.block_count = self.find_hparam(["n_layers", "num_hidden_layers", "n_layer", "num_layers"])
self.tensor_map = gguf.get_tensor_name_map(self.model_arch, self.block_count)
@classmethod
def __init_subclass__(cls):
# can't use an abstract property, because overriding it without type errors
@@ -1077,9 +1088,9 @@ class VisionModel(ModelBase):
if self.model_arch != gguf.MODEL_ARCH.CLIP_VISION:
raise TypeError("VisionModel must be subclassed with model_arch = gguf.MODEL_ARCH.CLIP_VISION")
# small hack to correct the number of layers
self.tensor_map = gguf.get_tensor_name_map(gguf.MODEL_ARCH.CLIP_VISION, 128)
self.n_embd_text = self.find_hparam(["hidden_size", "n_embd"])
# get n_embd of the text model
text_config = {**self.hparams, **self.hparams["text_config"]}
self.n_embd_text = text_config.get("hidden_size", text_config.get("n_embd", 0))
assert self.n_embd_text > 0, "n_embd not found in hparams"
if "vision_config" not in self.hparams:
@@ -1088,6 +1099,9 @@ class VisionModel(ModelBase):
self.global_config = self.hparams
self.hparams = self.hparams["vision_config"]
self.block_count = self.find_hparam(["n_layers", "num_hidden_layers", "n_layer", "num_layers", "depth"])
self.tensor_map = gguf.get_tensor_name_map(gguf.MODEL_ARCH.CLIP_VISION, self.block_count)
# load preprocessor config
with open(self.dir_model / "preprocessor_config.json", "r", encoding="utf-8") as f:
self.preprocessor_config = json.load(f)
@@ -1105,12 +1119,12 @@ class VisionModel(ModelBase):
self.gguf_writer.add_vision_patch_size(self.find_hparam(["patch_size"]))
self.gguf_writer.add_vision_embedding_length(self.find_hparam(["hidden_size"]))
self.gguf_writer.add_vision_feed_forward_length(self.find_hparam(["intermediate_size"]))
self.gguf_writer.add_vision_block_count(self.find_hparam(["num_hidden_layers"]))
self.gguf_writer.add_vision_block_count(self.block_count)
self.gguf_writer.add_vision_head_count(self.find_hparam(["num_attention_heads"]))
# preprocessor config
self.gguf_writer.add_vision_image_mean(self.preprocessor_config["image_mean"])
self.gguf_writer.add_vision_image_std(self.preprocessor_config["image_mean"])
self.gguf_writer.add_vision_image_std(self.preprocessor_config["image_std"])
def write_vocab(self):
raise ValueError("VisionModel does not support vocab writing")
@@ -1726,23 +1740,12 @@ class StableLMModel(TextModel):
"LlamaForCausalLM",
"MistralForCausalLM",
"MixtralForCausalLM",
"Idefics3ForConditionalGeneration",
"SmolVLMForConditionalGeneration",
"VLlama3ForCausalLM",
"LlavaForConditionalGeneration")
class LlamaModel(TextModel):
model_arch = gguf.MODEL_ARCH.LLAMA
undo_permute = True
def __init__(self, *args, **kwargs):
super().__init__(*args, **kwargs)
# fix for SmolVLM2, missing `num_attention_heads` in config.json
if self.hparams["architectures"][0] == "SmolVLMForConditionalGeneration":
self.hparams["num_attention_heads"] = self.hparams.get("num_attention_heads", 32)
# fix for Pixtral, missing `num_attention_heads` in config.json
if self.hparams["architectures"][0] == "LlavaForConditionalGeneration" \
and self.hparams.get("model_type") == "mistral":
self.hparams["num_attention_heads"] = self.hparams.get("num_attention_heads", 32)
def set_vocab(self):
try:
self._set_vocab_sentencepiece()
@@ -1898,31 +1901,50 @@ class LlamaModel(TextModel):
raise ValueError(f"Unprocessed experts: {experts}")
@ModelBase.register("LlavaForConditionalGeneration")
@ModelBase.register(
"LlavaForConditionalGeneration", # pixtral
"Mistral3ForConditionalGeneration", # mistral small 3.1
)
class LlavaVisionModel(VisionModel):
img_break_tok_id = -1
def __init__(self, *args, **kwargs):
super().__init__(*args, **kwargs)
if self.hparams["model_type"] == "pixtral":
# fix missing config.json values
self.hparams["num_attention_heads"] = self.hparams.get("num_attention_heads", 16)
self.hparams["num_hidden_layers"] = self.hparams.get("num_hidden_layers", 24)
self.hparams["intermediate_size"] = self.hparams.get("intermediate_size", 4096)
self.hparams["hidden_size"] = self.hparams.get("hidden_size", 1024)
# layer_norm_eps is not in config.json, it is hard-coded in modeling_pixtral.py
self.hparams["layer_norm_eps"] = self.hparams.get("layer_norm_eps", 1e-5)
self.img_break_tok_id = 12 # see tokenizer_config.json
self.img_break_tok_id = self.get_token_id("[IMG_BREAK]")
logger.info(f"Image break token id: {self.img_break_tok_id}")
else:
raise ValueError(f"Unsupported model type: {self.hparams['model_type']}")
def get_token_id(self, token: str) -> int:
tokenizer_config_file = self.dir_model / 'tokenizer_config.json'
with open(tokenizer_config_file, "r", encoding="utf-8") as f:
added_tokens_decoder = json.load(f)['added_tokens_decoder']
for id_, token_data in added_tokens_decoder.items():
if token_data["content"] == token:
return int(id_)
raise ValueError(f"Token '{token}' not found in tokenizer config.")
def set_gguf_parameters(self):
super().set_gguf_parameters()
hparams = self.hparams
if hparams["model_type"] == "pixtral":
self.gguf_writer.add_vision_projector_type(gguf.VisionProjectorType.PIXTRAL)
# default values below are taken from HF tranformers code
self.gguf_writer.add_vision_attention_layernorm_eps(hparams["layer_norm_eps"])
self.gguf_writer.add_vision_use_silu(True)
# hidden_act
if hparams["hidden_act"] == "silu":
self.gguf_writer.add_vision_use_silu(True)
elif hparams["hidden_act"] == "gelu":
self.gguf_writer.add_vision_use_gelu(True)
else:
raise ValueError(f"Unsupported hidden_act: {hparams['hidden_act']}")
# spatial_merge_size
if "spatial_merge_size" in self.global_config:
self.gguf_writer.add_vision_spatial_merge_size(self.global_config["spatial_merge_size"])
def modify_tensors(self, data_torch: Tensor, name: str, bid: int | None) -> Iterable[tuple[str, Tensor]]:
del bid # unused
@@ -1951,13 +1973,12 @@ class LlavaVisionModel(VisionModel):
class SmolVLMModel(VisionModel):
def __init__(self, *args, **kwargs):
super().__init__(*args, **kwargs)
# fix for SmolVLM2, missing some keys in config.json
# default values are taken from transformers code
if self.hparams["model_type"] == "smolvlm_vision":
# fix for SmolVLM2, missing some keys in config.json
# default values are taken from transformers code
self.hparams["hidden_size"] = self.hparams.get("hidden_size", 1152)
self.hparams["num_attention_heads"] = self.hparams.get("num_attention_heads", 16)
self.hparams["intermediate_size"] = self.hparams.get("intermediate_size", 3072)
self.hparams["num_hidden_layers"] = self.hparams.get("num_hidden_layers", 12)
def set_gguf_parameters(self):
super().set_gguf_parameters()
@@ -3373,14 +3394,7 @@ class BertModel(TextModel):
return [(self.map_tensor_name(name), data_torch)]
@ModelBase.register("RobertaModel")
class RobertaModel(BertModel):
model_arch = gguf.MODEL_ARCH.BERT
def __init__(self, *args, **kwargs):
super().__init__(*args, **kwargs)
def _xlmroberta_tokenizer_init(self) -> None:
# we need the pad_token_id to know how to chop down position_embd matrix
if (pad_token_id := self.hparams.get("pad_token_id")) is not None:
self._position_offset = 1 + pad_token_id
@@ -3389,82 +3403,7 @@ class RobertaModel(BertModel):
else:
self._position_offset = None
def set_vocab(self):
"""Support BPE tokenizers for roberta models"""
bpe_tok_path = self.dir_model / "tokenizer.json"
if bpe_tok_path.exists():
self._set_vocab_gpt2()
self.gguf_writer.add_add_bos_token(True)
self.gguf_writer.add_add_eos_token(True)
# we need this to validate the size of the token_type embeddings
# though currently we are passing all zeros to the token_type embeddings
# "Sequence A" or "Sequence B"
self.gguf_writer.add_token_type_count(self.hparams.get("type_vocab_size", 1))
else:
return super().set_vocab()
def modify_tensors(self, data_torch: Tensor, name: str, bid: int | None) -> Iterable[tuple[str, Tensor]]:
# if name starts with "roberta.", remove the prefix
# e.g. https://huggingface.co/BAAI/bge-reranker-v2-m3/tree/main
if name.startswith("roberta."):
name = name[8:]
# position embeddings start at pad_token_id + 1, so just chop down the weight tensor
if name == "embeddings.position_embeddings.weight":
if self._position_offset is not None:
data_torch = data_torch[self._position_offset:,:]
return super().modify_tensors(data_torch, name, bid)
@ModelBase.register("NomicBertModel")
class NomicBertModel(BertModel):
model_arch = gguf.MODEL_ARCH.NOMIC_BERT
def __init__(self, *args, **kwargs):
super().__init__(*args, **kwargs)
# the HF config claims n_ctx=8192, but it uses RoPE scaling
self.hparams["n_ctx"] = 2048
# SwigLU activation
assert self.hparams["activation_function"] == "swiglu"
# this doesn't do anything in the HF version
assert self.hparams["causal"] is False
# no bias tensors
assert self.hparams["qkv_proj_bias"] is False
assert self.hparams["mlp_fc1_bias"] is False
assert self.hparams["mlp_fc2_bias"] is False
# norm at end of layer
assert self.hparams["prenorm"] is False
# standard RoPE
assert self.hparams["rotary_emb_fraction"] == 1.0
assert self.hparams["rotary_emb_interleaved"] is False
assert self.hparams["rotary_emb_scale_base"] is None
def set_gguf_parameters(self):
super().set_gguf_parameters()
self.gguf_writer.add_rope_freq_base(self.hparams["rotary_emb_base"])
@ModelBase.register("XLMRobertaModel", "XLMRobertaForSequenceClassification")
class XLMRobertaModel(BertModel):
model_arch = gguf.MODEL_ARCH.BERT
def __init__(self, *args, **kwargs):
super().__init__(*args, **kwargs)
# we need the pad_token_id to know how to chop down position_embd matrix
if (pad_token_id := self.hparams.get("pad_token_id")) is not None:
self._position_offset = 1 + pad_token_id
if "max_position_embeddings" in self.hparams:
self.hparams["max_position_embeddings"] -= self._position_offset
else:
self._position_offset = None
def set_vocab(self):
def _xlmroberta_set_vocab(self) -> None:
# to avoid TypeError: Descriptors cannot be created directly
# exception when importing sentencepiece_model_pb2
os.environ["PROTOCOL_BUFFERS_PYTHON_IMPLEMENTATION"] = "python"
@@ -3546,6 +3485,140 @@ class XLMRobertaModel(BertModel):
self.gguf_writer.add_add_bos_token(True)
self.gguf_writer.add_add_eos_token(True)
@ModelBase.register("RobertaModel")
class RobertaModel(BertModel):
model_arch = gguf.MODEL_ARCH.BERT
def __init__(self, *args, **kwargs):
super().__init__(*args, **kwargs)
# we need the pad_token_id to know how to chop down position_embd matrix
if (pad_token_id := self.hparams.get("pad_token_id")) is not None:
self._position_offset = 1 + pad_token_id
if "max_position_embeddings" in self.hparams:
self.hparams["max_position_embeddings"] -= self._position_offset
else:
self._position_offset = None
def set_vocab(self):
"""Support BPE tokenizers for roberta models"""
bpe_tok_path = self.dir_model / "tokenizer.json"
if bpe_tok_path.exists():
self._set_vocab_gpt2()
self.gguf_writer.add_add_bos_token(True)
self.gguf_writer.add_add_eos_token(True)
# we need this to validate the size of the token_type embeddings
# though currently we are passing all zeros to the token_type embeddings
# "Sequence A" or "Sequence B"
self.gguf_writer.add_token_type_count(self.hparams.get("type_vocab_size", 1))
else:
return super().set_vocab()
def modify_tensors(self, data_torch: Tensor, name: str, bid: int | None) -> Iterable[tuple[str, Tensor]]:
# if name starts with "roberta.", remove the prefix
# e.g. https://huggingface.co/BAAI/bge-reranker-v2-m3/tree/main
if name.startswith("roberta."):
name = name[8:]
# position embeddings start at pad_token_id + 1, so just chop down the weight tensor
if name == "embeddings.position_embeddings.weight":
if self._position_offset is not None:
data_torch = data_torch[self._position_offset:,:]
return super().modify_tensors(data_torch, name, bid)
@ModelBase.register("NomicBertModel")
class NomicBertModel(BertModel):
model_arch = gguf.MODEL_ARCH.BERT
def __init__(self, dir_model: Path, ftype: gguf.LlamaFileType, fname_out: Path, **kwargs: Any):
hparams = kwargs.pop("hparams", None)
if hparams is None:
hparams = ModelBase.load_hparams(dir_model)
self.is_moe = bool(hparams.get("moe_every_n_layers"))
self.model_arch = gguf.MODEL_ARCH.NOMIC_BERT_MOE if self.is_moe else gguf.MODEL_ARCH.NOMIC_BERT
super().__init__(dir_model, ftype, fname_out, hparams=hparams, **kwargs)
self._tokenizer_is_xlmroberta = self._is_tokenizer_xlmroberta()
if self._tokenizer_is_xlmroberta:
self._xlmroberta_tokenizer_init()
# the HF config claims n_ctx=8192, but it uses RoPE scaling
self.hparams["n_ctx"] = 2048
assert self.hparams["activation_function"] == "gelu" if self.is_moe else "swiglu"
# this doesn't do anything in the HF version
assert self.hparams["causal"] is False
# no bias tensors unless MoE
assert self.hparams["qkv_proj_bias"] == self.is_moe
assert self.hparams["mlp_fc1_bias"] == self.is_moe
assert self.hparams["mlp_fc2_bias"] == self.is_moe
# norm at end of layer
assert self.hparams["prenorm"] is False
# standard RoPE
assert self.hparams["rotary_emb_fraction"] == 1.0
assert self.hparams["rotary_emb_interleaved"] is False
assert self.hparams["rotary_emb_scale_base"] is None
def set_vocab(self) -> None:
if self._tokenizer_is_xlmroberta:
return self._xlmroberta_set_vocab()
return super().set_vocab()
def modify_tensors(self, data_torch: torch.Tensor, name: str, bid: int | None) -> Iterable[tuple[str, torch.Tensor]]:
# If the tensor is an experts bias tensor, skip it by returning an empty list.
if "mlp.experts.bias" in name:
return [] # Explicitly return an empty list.
if "mlp.experts.mlp.w1" in name:
data_torch = data_torch.view(self.hparams["num_experts"], self.hparams["n_inner"], self.hparams["n_embd"])
name += ".weight"
if "mlp.experts.mlp.w2" in name:
data_torch = data_torch.view(self.hparams["num_experts"], self.hparams["n_inner"], self.hparams["n_embd"])
data_torch = data_torch.transpose(1, 2)
name += ".weight"
return [(self.map_tensor_name(name), data_torch)]
def set_gguf_parameters(self):
super().set_gguf_parameters()
self.gguf_writer.add_rope_freq_base(self.hparams["rotary_emb_base"])
if self.is_moe:
self.gguf_writer.add_moe_every_n_layers(self.hparams["moe_every_n_layers"])
self.gguf_writer.add_expert_count(self.hparams["num_experts"])
self.gguf_writer.add_expert_used_count(self.hparams["moe_top_k"])
def _is_tokenizer_xlmroberta(self) -> bool:
with open(self.dir_model / "tokenizer.json") as f:
tokenizer_json = json.load(f)
toktyp = tokenizer_json["model"]["type"]
if toktyp == "Unigram":
return True
if toktyp == "WordPiece":
return False
raise ValueError(f"unknown tokenizer: {toktyp}")
@ModelBase.register("XLMRobertaModel", "XLMRobertaForSequenceClassification")
class XLMRobertaModel(BertModel):
model_arch = gguf.MODEL_ARCH.BERT
def __init__(self, *args, **kwargs):
super().__init__(*args, **kwargs)
self._xlmroberta_tokenizer_init()
def set_vocab(self):
self._xlmroberta_set_vocab()
def modify_tensors(self, data_torch: Tensor, name: str, bid: int | None) -> Iterable[tuple[str, Tensor]]:
# if name starts with "roberta.", remove the prefix
# e.g. https://huggingface.co/BAAI/bge-reranker-v2-m3/tree/main
@@ -5154,7 +5227,7 @@ class Glm4Model(TextModel):
special_vocab._set_special_token("eos", tokenizer.get_added_vocab()["<|endoftext|>"])
special_vocab._set_special_token("eot", tokenizer.get_added_vocab()["<|user|>"])
special_vocab._set_special_token("unk", tokenizer.get_added_vocab()["<|endoftext|>"])
special_vocab._set_special_token("bos", tokenizer.get_added_vocab()["[gMASK]"])
special_vocab._set_special_token("bos", tokenizer.get_added_vocab()["<|endoftext|>"])
special_vocab.add_to_gguf(self.gguf_writer)
def set_gguf_parameters(self):
@@ -5806,6 +5879,19 @@ def split_str_to_n_bytes(split_str: str) -> int:
return n
def get_model_architecture(dir_model: Path, model_type: ModelType, hparams: Any = None) -> str:
hparams = ModelBase.load_hparams(dir_model) if hparams is None else hparams
text_config = hparams.get("text_config", {})
vision_config = hparams.get("vision_config", {})
arch = hparams["architectures"][0]
# if "architectures" is found in the sub-config, use that instead
if model_type == ModelType.TEXT and text_config.get("architectures") is not None:
arch = text_config["architectures"][0]
elif model_type == ModelType.VISION and vision_config.get("architectures") is not None:
arch = vision_config["architectures"][0]
return arch
def main() -> None:
args = parse_args()
@@ -5858,16 +5944,15 @@ def main() -> None:
logger.info(f"Loading model: {dir_model.name}")
hparams = ModelBase.load_hparams(dir_model)
if args.mmproj:
if "mmproj" not in fname_out.name:
fname_out = ModelBase.add_prefix_to_filename(fname_out, "mmproj-")
with torch.inference_mode():
output_type = ftype_map[args.outtype]
model_architecture = hparams["architectures"][0]
model_type = ModelType.VISION if args.mmproj else ModelType.TEXT
model_architecture = get_model_architecture(dir_model, model_type)
logger.info(f"Model architecture: {model_architecture}")
try:
model_class = ModelBase.from_model_architecture(model_architecture, model_type=model_type)
except NotImplementedError:

View File

@@ -28,6 +28,7 @@ options:
-p, --n-prompt <n> (default: 512)
-n, --n-gen <n> (default: 128)
-pg <pp,tg> (default: )
-d, --n-depth <n> (default: 0)
-b, --batch-size <n> (default: 2048)
-ub, --ubatch-size <n> (default: 512)
-ctk, --cache-type-k <t> (default: f16)
@@ -66,6 +67,8 @@ With the exception of `-r`, `-o` and `-v`, all options can be specified multiple
Each test is repeated the number of times given by `-r`, and the results are averaged. The results are given in average tokens per second (t/s) and standard deviation. Some output formats (e.g. json) also include the individual results of each repetition.
Using the `-d <n>` option, each test can be run at a specified context depth, prefilling the KV cache with `<n>` tokens.
For a description of the other options, see the [main example](../main/README.md).
Note:
@@ -148,6 +151,19 @@ $ ./llama-bench -ngl 10,20,30,31,32,33,34,35
| llama 7B mostly Q4_0 | 3.56 GiB | 6.74 B | CUDA | 35 | pp 512 | 2400.01 ± 7.72 |
| llama 7B mostly Q4_0 | 3.56 GiB | 6.74 B | CUDA | 35 | tg 128 | 131.66 ± 0.49 |
### Different prefilled context
```
$ ./llama-bench -d 0,512
```
| model | size | params | backend | ngl | test | t/s |
| ------------------------------ | ---------: | ---------: | ---------- | --: | --------------: | -------------------: |
| qwen2 7B Q4_K - Medium | 4.36 GiB | 7.62 B | CUDA | 99 | pp512 | 7340.20 ± 23.45 |
| qwen2 7B Q4_K - Medium | 4.36 GiB | 7.62 B | CUDA | 99 | tg128 | 120.60 ± 0.59 |
| qwen2 7B Q4_K - Medium | 4.36 GiB | 7.62 B | CUDA | 99 | pp512 @ d512 | 6425.91 ± 18.88 |
| qwen2 7B Q4_K - Medium | 4.36 GiB | 7.62 B | CUDA | 99 | tg128 @ d512 | 116.71 ± 0.60 |
## Output formats
By default, llama-bench outputs the results in markdown format. The results can be output in other formats by using the `-o` option.
@@ -170,9 +186,9 @@ $ ./llama-bench -o csv
```
```csv
build_commit,build_number,cuda,metal,gpu_blas,blas,cpu_info,gpu_info,model_filename,model_type,model_size,model_n_params,n_batch,n_threads,f16_kv,n_gpu_layers,main_gpu,mul_mat_q,tensor_split,n_prompt,n_gen,test_time,avg_ns,stddev_ns,avg_ts,stddev_ts
"3469684","1275","1","0","0","1","1","13th Gen Intel(R) Core(TM) i9-13900K","NVIDIA GeForce RTX 3090 Ti","models/7B/ggml-model-q4_0.gguf","llama 7B mostly Q4_0","3825065984","6738415616","512","16","1","99","0","1","0.00","512","0","2023-09-23T12:09:01Z","212155977","732372","2413.341687","8.305961"
"3469684","1275","1","0","0","1","1","13th Gen Intel(R) Core(TM) i9-13900K","NVIDIA GeForce RTX 3090 Ti","models/7B/ggml-model-q4_0.gguf","llama 7B mostly Q4_0","3825065984","6738415616","512","16","1","99","0","1","0.00","0","128","2023-09-23T12:09:02Z","969320879","2728399","132.052051","0.371342"
build_commit,build_number,cpu_info,gpu_info,backends,model_filename,model_type,model_size,model_n_params,n_batch,n_ubatch,n_threads,cpu_mask,cpu_strict,poll,type_k,type_v,n_gpu_layers,split_mode,main_gpu,no_kv_offload,flash_attn,tensor_split,use_mmap,embeddings,n_prompt,n_gen,n_depth,test_time,avg_ns,stddev_ns,avg_ts,stddev_ts
"8cf427ff","5163","AMD Ryzen 7 7800X3D 8-Core Processor","NVIDIA GeForce RTX 4080","CUDA","models/Qwen2.5-7B-Instruct-Q4_K_M.gguf","qwen2 7B Q4_K - Medium","4677120000","7615616512","2048","512","8","0x0","0","50","f16","f16","99","layer","0","0","0","0.00","1","0","512","0","0","2025-04-24T11:57:09Z","70285660","982040","7285.676949","100.064434"
"8cf427ff","5163","AMD Ryzen 7 7800X3D 8-Core Processor","NVIDIA GeForce RTX 4080","CUDA","models/Qwen2.5-7B-Instruct-Q4_K_M.gguf","qwen2 7B Q4_K - Medium","4677120000","7615616512","2048","512","8","0x0","0","50","f16","f16","99","layer","0","0","0","0.00","1","0","0","128","0","2025-04-24T11:57:10Z","1067431600","3834831","119.915244","0.430617"
```
### JSON
@@ -184,64 +200,78 @@ $ ./llama-bench -o json
```json
[
{
"build_commit": "3469684",
"build_number": 1275,
"cuda": true,
"metal": false,
"gpu_blas": true,
"blas": true,
"cpu_info": "13th Gen Intel(R) Core(TM) i9-13900K",
"gpu_info": "NVIDIA GeForce RTX 3090 Ti",
"model_filename": "models/7B/ggml-model-q4_0.gguf",
"model_type": "llama 7B mostly Q4_0",
"model_size": 3825065984,
"model_n_params": 6738415616,
"n_batch": 512,
"n_threads": 16,
"f16_kv": true,
"build_commit": "8cf427ff",
"build_number": 5163,
"cpu_info": "AMD Ryzen 7 7800X3D 8-Core Processor",
"gpu_info": "NVIDIA GeForce RTX 4080",
"backends": "CUDA",
"model_filename": "models/Qwen2.5-7B-Instruct-Q4_K_M.gguf",
"model_type": "qwen2 7B Q4_K - Medium",
"model_size": 4677120000,
"model_n_params": 7615616512,
"n_batch": 2048,
"n_ubatch": 512,
"n_threads": 8,
"cpu_mask": "0x0",
"cpu_strict": false,
"poll": 50,
"type_k": "f16",
"type_v": "f16",
"n_gpu_layers": 99,
"split_mode": "layer",
"main_gpu": 0,
"mul_mat_q": true,
"no_kv_offload": false,
"flash_attn": false,
"tensor_split": "0.00",
"use_mmap": true,
"embeddings": false,
"n_prompt": 512,
"n_gen": 0,
"test_time": "2023-09-23T12:09:57Z",
"avg_ns": 212365953,
"stddev_ns": 985423,
"avg_ts": 2410.974041,
"stddev_ts": 11.163766,
"samples_ns": [ 213837238, 211635853, 212328053, 211329715, 212698907 ],
"samples_ts": [ 2394.34, 2419.25, 2411.36, 2422.75, 2407.16 ]
"n_depth": 0,
"test_time": "2025-04-24T11:58:50Z",
"avg_ns": 72135640,
"stddev_ns": 1453752,
"avg_ts": 7100.002165,
"stddev_ts": 140.341520,
"samples_ns": [ 74601900, 71632900, 71745200, 71952700, 70745500 ],
"samples_ts": [ 6863.1, 7147.55, 7136.37, 7115.79, 7237.21 ]
},
{
"build_commit": "3469684",
"build_number": 1275,
"cuda": true,
"metal": false,
"gpu_blas": true,
"blas": true,
"cpu_info": "13th Gen Intel(R) Core(TM) i9-13900K",
"gpu_info": "NVIDIA GeForce RTX 3090 Ti",
"model_filename": "models/7B/ggml-model-q4_0.gguf",
"model_type": "llama 7B mostly Q4_0",
"model_size": 3825065984,
"model_n_params": 6738415616,
"n_batch": 512,
"n_threads": 16,
"f16_kv": true,
"build_commit": "8cf427ff",
"build_number": 5163,
"cpu_info": "AMD Ryzen 7 7800X3D 8-Core Processor",
"gpu_info": "NVIDIA GeForce RTX 4080",
"backends": "CUDA",
"model_filename": "models/Qwen2.5-7B-Instruct-Q4_K_M.gguf",
"model_type": "qwen2 7B Q4_K - Medium",
"model_size": 4677120000,
"model_n_params": 7615616512,
"n_batch": 2048,
"n_ubatch": 512,
"n_threads": 8,
"cpu_mask": "0x0",
"cpu_strict": false,
"poll": 50,
"type_k": "f16",
"type_v": "f16",
"n_gpu_layers": 99,
"split_mode": "layer",
"main_gpu": 0,
"mul_mat_q": true,
"no_kv_offload": false,
"flash_attn": false,
"tensor_split": "0.00",
"use_mmap": true,
"embeddings": false,
"n_prompt": 0,
"n_gen": 128,
"test_time": "2023-09-23T12:09:59Z",
"avg_ns": 977425219,
"stddev_ns": 9268593,
"avg_ts": 130.965708,
"stddev_ts": 1.238924,
"samples_ns": [ 984472709, 974901233, 989474741, 970729355, 967548060 ],
"samples_ts": [ 130.019, 131.295, 129.362, 131.86, 132.293 ]
"n_depth": 0,
"test_time": "2025-04-24T11:58:51Z",
"avg_ns": 1076767880,
"stddev_ns": 9449585,
"avg_ts": 118.881588,
"stddev_ts": 1.041811,
"samples_ns": [ 1075361300, 1065089400, 1071761200, 1081934900, 1089692600 ],
"samples_ts": [ 119.03, 120.178, 119.43, 118.307, 117.464 ]
}
]
```
@@ -254,8 +284,8 @@ $ ./llama-bench -o jsonl
```
```json lines
{"build_commit":"3469684","build_number":1275,"cuda":true,"metal":false,"gpu_blas":true,"blas":true,"cpu_info":"13th Gen Intel(R) Core(TM) i9-13900K","gpu_info":"NVIDIA GeForce RTX 3090 Ti","model_filename":"models/7B/ggml-model-q4_0.gguf","model_type":"llama 7B mostly Q4_0","model_size":3825065984,"model_n_params":6738415616,"n_batch":512,"n_threads":16,"f16_kv":true,"n_gpu_layers":99,"main_gpu":0,"mul_mat_q":true,"tensor_split":"0.00","n_prompt":512,"n_gen":0,"test_time":"2023-09-23T12:09:57Z","avg_ns":212365953,"stddev_ns":985423,"avg_ts":2410.974041,"stddev_ts":11.163766,"samples_ns":[213837238,211635853,212328053,211329715,212698907],"samples_ts":[2394.34,2419.25,2411.36,2422.75,2407.16]}
{"build_commit":"3469684","build_number":1275,"cuda":true,"metal":false,"gpu_blas":true,"blas":true,"cpu_info":"13th Gen Intel(R) Core(TM) i9-13900K","gpu_info":"NVIDIA GeForce RTX 3090 Ti","model_filename":"models/7B/ggml-model-q4_0.gguf","model_type":"llama 7B mostly Q4_0","model_size":3825065984,"model_n_params":6738415616,"n_batch":512,"n_threads":16,"f16_kv":true,"n_gpu_layers":99,"main_gpu":0,"mul_mat_q":true,"tensor_split":"0.00","n_prompt":0,"n_gen":128,"test_time":"2023-09-23T12:09:59Z","avg_ns":977425219,"stddev_ns":9268593,"avg_ts":130.965708,"stddev_ts":1.238924,"samples_ns":[984472709,974901233,989474741,970729355,967548060],"samples_ts":[130.019,131.295,129.362,131.86,132.293]}
{"build_commit": "8cf427ff", "build_number": 5163, "cpu_info": "AMD Ryzen 7 7800X3D 8-Core Processor", "gpu_info": "NVIDIA GeForce RTX 4080", "backends": "CUDA", "model_filename": "models/Qwen2.5-7B-Instruct-Q4_K_M.gguf", "model_type": "qwen2 7B Q4_K - Medium", "model_size": 4677120000, "model_n_params": 7615616512, "n_batch": 2048, "n_ubatch": 512, "n_threads": 8, "cpu_mask": "0x0", "cpu_strict": false, "poll": 50, "type_k": "f16", "type_v": "f16", "n_gpu_layers": 99, "split_mode": "layer", "main_gpu": 0, "no_kv_offload": false, "flash_attn": false, "tensor_split": "0.00", "use_mmap": true, "embeddings": false, "n_prompt": 512, "n_gen": 0, "n_depth": 0, "test_time": "2025-04-24T11:59:33Z", "avg_ns": 70497220, "stddev_ns": 883196, "avg_ts": 7263.609157, "stddev_ts": 90.940578, "samples_ns": [ 71551000, 71222800, 70364100, 69439100, 69909100 ],"samples_ts": [ 7155.74, 7188.71, 7276.44, 7373.37, 7323.8 ]}
{"build_commit": "8cf427ff", "build_number": 5163, "cpu_info": "AMD Ryzen 7 7800X3D 8-Core Processor", "gpu_info": "NVIDIA GeForce RTX 4080", "backends": "CUDA", "model_filename": "models/Qwen2.5-7B-Instruct-Q4_K_M.gguf", "model_type": "qwen2 7B Q4_K - Medium", "model_size": 4677120000, "model_n_params": 7615616512, "n_batch": 2048, "n_ubatch": 512, "n_threads": 8, "cpu_mask": "0x0", "cpu_strict": false, "poll": 50, "type_k": "f16", "type_v": "f16", "n_gpu_layers": 99, "split_mode": "layer", "main_gpu": 0, "no_kv_offload": false, "flash_attn": false, "tensor_split": "0.00", "use_mmap": true, "embeddings": false, "n_prompt": 0, "n_gen": 128, "n_depth": 0, "test_time": "2025-04-24T11:59:33Z", "avg_ns": 1068078400, "stddev_ns": 6279455, "avg_ts": 119.844681, "stddev_ts": 0.699739, "samples_ns": [ 1066331700, 1064864900, 1079042600, 1063328400, 1066824400 ],"samples_ts": [ 120.038, 120.203, 118.624, 120.377, 119.982 ]}
```
@@ -271,25 +301,32 @@ $ ./llama-bench -o sql
CREATE TABLE IF NOT EXISTS test (
build_commit TEXT,
build_number INTEGER,
cuda INTEGER,
metal INTEGER,
gpu_blas INTEGER,
blas INTEGER,
cpu_info TEXT,
gpu_info TEXT,
backends TEXT,
model_filename TEXT,
model_type TEXT,
model_size INTEGER,
model_n_params INTEGER,
n_batch INTEGER,
n_ubatch INTEGER,
n_threads INTEGER,
f16_kv INTEGER,
cpu_mask TEXT,
cpu_strict INTEGER,
poll INTEGER,
type_k TEXT,
type_v TEXT,
n_gpu_layers INTEGER,
split_mode TEXT,
main_gpu INTEGER,
mul_mat_q INTEGER,
no_kv_offload INTEGER,
flash_attn INTEGER,
tensor_split TEXT,
use_mmap INTEGER,
embeddings INTEGER,
n_prompt INTEGER,
n_gen INTEGER,
n_depth INTEGER,
test_time TEXT,
avg_ns INTEGER,
stddev_ns INTEGER,
@@ -297,6 +334,6 @@ CREATE TABLE IF NOT EXISTS test (
stddev_ts REAL
);
INSERT INTO test (build_commit, build_number, cuda, metal, gpu_blas, blas, cpu_info, gpu_info, model_filename, model_type, model_size, model_n_params, n_batch, n_threads, f16_kv, n_gpu_layers, main_gpu, mul_mat_q, tensor_split, n_prompt, n_gen, test_time, avg_ns, stddev_ns, avg_ts, stddev_ts) VALUES ('3469684', '1275', '1', '0', '0', '1', '1', '13th Gen Intel(R) Core(TM) i9-13900K', 'NVIDIA GeForce RTX 3090 Ti', 'models/7B/ggml-model-q4_0.gguf', 'llama 7B mostly Q4_0', '3825065984', '6738415616', '512', '16', '1', '99', '0', '1', '0.00', '512', '0', '2023-09-23T12:10:30Z', '212693772', '743623', '2407.240204', '8.409634');
INSERT INTO test (build_commit, build_number, cuda, metal, gpu_blas, blas, cpu_info, gpu_info, model_filename, model_type, model_size, model_n_params, n_batch, n_threads, f16_kv, n_gpu_layers, main_gpu, mul_mat_q, tensor_split, n_prompt, n_gen, test_time, avg_ns, stddev_ns, avg_ts, stddev_ts) VALUES ('3469684', '1275', '1', '0', '0', '1', '1', '13th Gen Intel(R) Core(TM) i9-13900K', 'NVIDIA GeForce RTX 3090 Ti', 'models/7B/ggml-model-q4_0.gguf', 'llama 7B mostly Q4_0', '3825065984', '6738415616', '512', '16', '1', '99', '0', '1', '0.00', '0', '128', '2023-09-23T12:10:31Z', '977925003', '4037361', '130.891159', '0.537692');
INSERT INTO test (build_commit, build_number, cpu_info, gpu_info, backends, model_filename, model_type, model_size, model_n_params, n_batch, n_ubatch, n_threads, cpu_mask, cpu_strict, poll, type_k, type_v, n_gpu_layers, split_mode, main_gpu, no_kv_offload, flash_attn, tensor_split, use_mmap, embeddings, n_prompt, n_gen, n_depth, test_time, avg_ns, stddev_ns, avg_ts, stddev_ts) VALUES ('8cf427ff', '5163', 'AMD Ryzen 7 7800X3D 8-Core Processor', 'NVIDIA GeForce RTX 4080', 'CUDA', 'models/Qwen2.5-7B-Instruct-Q4_K_M.gguf', 'qwen2 7B Q4_K - Medium', '4677120000', '7615616512', '2048', '512', '8', '0x0', '0', '50', 'f16', 'f16', '99', 'layer', '0', '0', '0', '0.00', '1', '0', '512', '0', '0', '2025-04-24T12:00:08Z', '69905000', '519516', '7324.546977', '54.032613');
INSERT INTO test (build_commit, build_number, cpu_info, gpu_info, backends, model_filename, model_type, model_size, model_n_params, n_batch, n_ubatch, n_threads, cpu_mask, cpu_strict, poll, type_k, type_v, n_gpu_layers, split_mode, main_gpu, no_kv_offload, flash_attn, tensor_split, use_mmap, embeddings, n_prompt, n_gen, n_depth, test_time, avg_ns, stddev_ns, avg_ts, stddev_ts) VALUES ('8cf427ff', '5163', 'AMD Ryzen 7 7800X3D 8-Core Processor', 'NVIDIA GeForce RTX 4080', 'CUDA', 'models/Qwen2.5-7B-Instruct-Q4_K_M.gguf', 'qwen2 7B Q4_K - Medium', '4677120000', '7615616512', '2048', '512', '8', '0x0', '0', '50', 'f16', 'f16', '99', 'layer', '0', '0', '0', '0.00', '1', '0', '0', '128', '0', '2025-04-24T12:00:09Z', '1063608780', '4464130', '120.346696', '0.504647');
```

View File

@@ -36,6 +36,46 @@ static uint64_t get_time_ns() {
return std::chrono::nanoseconds(clock::now().time_since_epoch()).count();
}
static bool tensor_buft_override_equal(const llama_model_tensor_buft_override& a, const llama_model_tensor_buft_override& b) {
if (a.pattern != b.pattern) {
// cString comparison that may be null
if (a.pattern == nullptr || b.pattern == nullptr) {
return false;
}
if (strcmp(a.pattern, b.pattern) != 0) {
return false;
}
}
if (a.buft != b.buft) {
return false;
}
return true;
}
static bool vec_tensor_buft_override_equal(const std::vector<llama_model_tensor_buft_override>& a, const std::vector<llama_model_tensor_buft_override>& b) {
if (a.size() != b.size()) {
return false;
}
for (size_t i = 0; i < a.size(); i++) {
if (!tensor_buft_override_equal(a[i], b[i])) {
return false;
}
}
return true;
}
static bool vec_vec_tensor_buft_override_equal(const std::vector<std::vector<llama_model_tensor_buft_override>>& a, const std::vector<std::vector<llama_model_tensor_buft_override>>& b) {
if (a.size() != b.size()) {
return false;
}
for (size_t i = 0; i < a.size(); i++) {
if (!vec_tensor_buft_override_equal(a[i], b[i])) {
return false;
}
}
return true;
}
template <class T> static std::string join(const std::vector<T> & values, const std::string & delim) {
std::ostringstream str;
for (size_t i = 0; i < values.size(); i++) {
@@ -160,6 +200,7 @@ struct cmd_params {
std::vector<int> n_prompt;
std::vector<int> n_gen;
std::vector<std::pair<int, int>> n_pg;
std::vector<int> n_depth;
std::vector<int> n_batch;
std::vector<int> n_ubatch;
std::vector<ggml_type> type_k;
@@ -175,6 +216,7 @@ struct cmd_params {
std::vector<bool> no_kv_offload;
std::vector<bool> flash_attn;
std::vector<std::vector<float>> tensor_split;
std::vector<std::vector<llama_model_tensor_buft_override>> tensor_buft_overrides;
std::vector<bool> use_mmap;
std::vector<bool> embeddings;
ggml_numa_strategy numa;
@@ -192,6 +234,7 @@ static const cmd_params cmd_params_defaults = {
/* n_prompt */ { 512 },
/* n_gen */ { 128 },
/* n_pg */ {},
/* n_depth */ { 0 },
/* n_batch */ { 2048 },
/* n_ubatch */ { 512 },
/* type_k */ { GGML_TYPE_F16 },
@@ -207,6 +250,7 @@ static const cmd_params cmd_params_defaults = {
/* no_kv_offload */ { false },
/* flash_attn */ { false },
/* tensor_split */ { std::vector<float>(llama_max_devices(), 0.0f) },
/* tensor_buft_overrides*/ { std::vector<llama_model_tensor_buft_override>{{nullptr,nullptr}} },
/* use_mmap */ { true },
/* embeddings */ { false },
/* numa */ GGML_NUMA_STRATEGY_DISABLED,
@@ -230,6 +274,7 @@ static void print_usage(int /* argc */, char ** argv) {
printf(" -n, --n-gen <n> (default: %s)\n", join(cmd_params_defaults.n_gen, ",").c_str());
printf(" -pg <pp,tg> (default: %s)\n",
join(transform_to_str(cmd_params_defaults.n_pg, pair_str), ",").c_str());
printf(" -d, --n-depth <n> (default: %s)\n", join(cmd_params_defaults.n_depth, ",").c_str());
printf(" -b, --batch-size <n> (default: %s)\n",
join(cmd_params_defaults.n_batch, ",").c_str());
printf(" -ub, --ubatch-size <n> (default: %s)\n",
@@ -265,6 +310,7 @@ static void print_usage(int /* argc */, char ** argv) {
printf(" -embd, --embeddings <0|1> (default: %s)\n",
join(cmd_params_defaults.embeddings, ",").c_str());
printf(" -ts, --tensor-split <ts0/ts1/..> (default: 0)\n");
printf(" -ot --override-tensors <tensor name pattern>=<buffer type>;... (default: disabled)\n");
printf(" -r, --repetitions <n> (default: %d)\n", cmd_params_defaults.reps);
printf(" --prio <0|1|2|3> (default: %d)\n", cmd_params_defaults.prio);
printf(" --delay <0...N> (seconds) (default: %d)\n", cmd_params_defaults.delay);
@@ -366,6 +412,13 @@ static cmd_params parse_cmd_params(int argc, char ** argv) {
break;
}
params.n_pg.push_back({ std::stoi(p[0]), std::stoi(p[1]) });
} else if (arg == "-d" || arg == "--n-depth") {
if (++i >= argc) {
invalid_param = true;
break;
}
auto p = string_split<int>(argv[i], split_delim);
params.n_depth.insert(params.n_depth.end(), p.begin(), p.end());
} else if (arg == "-b" || arg == "--batch-size") {
if (++i >= argc) {
invalid_param = true;
@@ -557,6 +610,87 @@ static cmd_params parse_cmd_params(int argc, char ** argv) {
}
params.tensor_split.push_back(tensor_split);
}
} else if (arg == "-ot" || arg == "--override-tensor") {
if (++i >= argc) {
invalid_param = true;
break;
}
auto value = argv[i];
/* static */ std::map<std::string, ggml_backend_buffer_type_t> buft_list;
if (buft_list.empty()) {
// enumerate all the devices and add their buffer types to the list
for (size_t i = 0; i < ggml_backend_dev_count(); ++i) {
auto * dev = ggml_backend_dev_get(i);
auto * buft = ggml_backend_dev_buffer_type(dev);
if (buft) {
buft_list[ggml_backend_buft_name(buft)] = buft;
}
}
}
auto override_group_span_len = std::strcspn(value, ",");
bool last_group = false;
do {
if (override_group_span_len == 0) {
// Adds an empty override-tensors for an empty span
params.tensor_buft_overrides.push_back({{}});
if (value[override_group_span_len] == '\0') {
value = &value[override_group_span_len];
last_group = true;
} else {
value = &value[override_group_span_len + 1];
override_group_span_len = std::strcspn(value, ",");
}
continue;
}
// Stamps null terminators into the argv
// value for this option to avoid the
// memory leak present in the implementation
// over in arg.cpp. Acceptable because we
// only parse these args once in this program.
auto override_group = value;
if (value[override_group_span_len] == '\0') {
value = &value[override_group_span_len];
last_group = true;
} else {
value[override_group_span_len] = '\0';
value = &value[override_group_span_len + 1];
}
std::vector<llama_model_tensor_buft_override> group_tensor_buft_overrides{};
auto override_span_len = std::strcspn(override_group, ";");
while (override_span_len > 0) {
auto override = override_group;
if (override_group[override_span_len] != '\0') {
override_group[override_span_len] = '\0';
override_group = &override_group[override_span_len + 1];
} else {
override_group = &override_group[override_span_len];
}
auto tensor_name_span_len = std::strcspn(override, "=");
if (tensor_name_span_len >= override_span_len) {
invalid_param = true;
break;
}
override[tensor_name_span_len] = '\0';
auto tensor_name = override;
auto buffer_type = &override[tensor_name_span_len + 1];
if (buft_list.find(buffer_type) == buft_list.end()) {
printf("Available buffer types:\n");
for (const auto & it : buft_list) {
printf(" %s\n", ggml_backend_buft_name(it.second));
}
invalid_param = true;
break;
}
group_tensor_buft_overrides.push_back({tensor_name, buft_list.at(buffer_type)});
override_span_len = std::strcspn(override_group, ";");
}
if (invalid_param) {
break;
}
group_tensor_buft_overrides.push_back({nullptr,nullptr});
params.tensor_buft_overrides.push_back(group_tensor_buft_overrides);
override_group_span_len = std::strcspn(value, ",");
} while (!last_group);
} else if (arg == "-r" || arg == "--repetitions") {
if (++i >= argc) {
invalid_param = true;
@@ -615,6 +749,9 @@ static cmd_params parse_cmd_params(int argc, char ** argv) {
if (params.n_pg.empty()) {
params.n_pg = cmd_params_defaults.n_pg;
}
if (params.n_depth.empty()) {
params.n_depth = cmd_params_defaults.n_depth;
}
if (params.n_batch.empty()) {
params.n_batch = cmd_params_defaults.n_batch;
}
@@ -648,6 +785,9 @@ static cmd_params parse_cmd_params(int argc, char ** argv) {
if (params.tensor_split.empty()) {
params.tensor_split = cmd_params_defaults.tensor_split;
}
if (params.tensor_buft_overrides.empty()) {
params.tensor_buft_overrides = cmd_params_defaults.tensor_buft_overrides;
}
if (params.use_mmap.empty()) {
params.use_mmap = cmd_params_defaults.use_mmap;
}
@@ -674,6 +814,7 @@ struct cmd_params_instance {
std::string model;
int n_prompt;
int n_gen;
int n_depth;
int n_batch;
int n_ubatch;
ggml_type type_k;
@@ -689,6 +830,7 @@ struct cmd_params_instance {
bool no_kv_offload;
bool flash_attn;
std::vector<float> tensor_split;
std::vector<llama_model_tensor_buft_override> tensor_buft_overrides;
bool use_mmap;
bool embeddings;
@@ -733,19 +875,26 @@ struct cmd_params_instance {
mparams.tensor_split = tensor_split.data();
mparams.use_mmap = use_mmap;
if (tensor_buft_overrides.empty()) {
mparams.tensor_buft_overrides = nullptr;
} else {
GGML_ASSERT(tensor_buft_overrides.back().pattern == nullptr && "Tensor buffer overrides not terminated with empty pattern");
mparams.tensor_buft_overrides = tensor_buft_overrides.data();
}
return mparams;
}
bool equal_mparams(const cmd_params_instance & other) const {
return model == other.model && n_gpu_layers == other.n_gpu_layers && rpc_servers_str == other.rpc_servers_str &&
split_mode == other.split_mode && main_gpu == other.main_gpu && use_mmap == other.use_mmap &&
tensor_split == other.tensor_split;
tensor_split == other.tensor_split && vec_tensor_buft_override_equal(tensor_buft_overrides, other.tensor_buft_overrides);
}
llama_context_params to_llama_cparams() const {
llama_context_params cparams = llama_context_default_params();
cparams.n_ctx = n_prompt + n_gen;
cparams.n_ctx = n_prompt + n_gen + n_depth;
cparams.n_batch = n_batch;
cparams.n_ubatch = n_ubatch;
cparams.type_k = type_k;
@@ -769,6 +918,7 @@ static std::vector<cmd_params_instance> get_cmd_params_instances(const cmd_param
for (const auto & sm : params.split_mode)
for (const auto & mg : params.main_gpu)
for (const auto & ts : params.tensor_split)
for (const auto & ot : params.tensor_buft_overrides)
for (const auto & mmp : params.use_mmap)
for (const auto & embd : params.embeddings)
for (const auto & nb : params.n_batch)
@@ -780,6 +930,7 @@ static std::vector<cmd_params_instance> get_cmd_params_instances(const cmd_param
for (const auto & nt : params.n_threads)
for (const auto & cm : params.cpu_mask)
for (const auto & cs : params.cpu_strict)
for (const auto & nd : params.n_depth)
for (const auto & pl : params.poll) {
for (const auto & n_prompt : params.n_prompt) {
if (n_prompt == 0) {
@@ -789,6 +940,7 @@ static std::vector<cmd_params_instance> get_cmd_params_instances(const cmd_param
/* .model = */ m,
/* .n_prompt = */ n_prompt,
/* .n_gen = */ 0,
/* .n_depth = */ nd,
/* .n_batch = */ nb,
/* .n_ubatch = */ nub,
/* .type_k = */ tk,
@@ -804,6 +956,7 @@ static std::vector<cmd_params_instance> get_cmd_params_instances(const cmd_param
/* .no_kv_offload= */ nkvo,
/* .flash_attn = */ fa,
/* .tensor_split = */ ts,
/* .tensor_buft_overrides = */ ot,
/* .use_mmap = */ mmp,
/* .embeddings = */ embd,
};
@@ -818,6 +971,7 @@ static std::vector<cmd_params_instance> get_cmd_params_instances(const cmd_param
/* .model = */ m,
/* .n_prompt = */ 0,
/* .n_gen = */ n_gen,
/* .n_depth = */ nd,
/* .n_batch = */ nb,
/* .n_ubatch = */ nub,
/* .type_k = */ tk,
@@ -833,6 +987,7 @@ static std::vector<cmd_params_instance> get_cmd_params_instances(const cmd_param
/* .no_kv_offload= */ nkvo,
/* .flash_attn = */ fa,
/* .tensor_split = */ ts,
/* .tensor_buft_overrides = */ ot,
/* .use_mmap = */ mmp,
/* .embeddings = */ embd,
};
@@ -847,6 +1002,7 @@ static std::vector<cmd_params_instance> get_cmd_params_instances(const cmd_param
/* .model = */ m,
/* .n_prompt = */ n_pg.first,
/* .n_gen = */ n_pg.second,
/* .n_depth = */ nd,
/* .n_batch = */ nb,
/* .n_ubatch = */ nub,
/* .type_k = */ tk,
@@ -862,6 +1018,7 @@ static std::vector<cmd_params_instance> get_cmd_params_instances(const cmd_param
/* .no_kv_offload= */ nkvo,
/* .flash_attn = */ fa,
/* .tensor_split = */ ts,
/* .tensor_buft_overrides = */ ot,
/* .use_mmap = */ mmp,
/* .embeddings = */ embd,
};
@@ -896,10 +1053,12 @@ struct test {
bool no_kv_offload;
bool flash_attn;
std::vector<float> tensor_split;
std::vector<llama_model_tensor_buft_override> tensor_buft_overrides;
bool use_mmap;
bool embeddings;
int n_prompt;
int n_gen;
int n_depth;
std::string test_time;
std::vector<uint64_t> samples_ns;
@@ -927,10 +1086,12 @@ struct test {
no_kv_offload = inst.no_kv_offload;
flash_attn = inst.flash_attn;
tensor_split = inst.tensor_split;
tensor_buft_overrides = inst.tensor_buft_overrides;
use_mmap = inst.use_mmap;
embeddings = inst.embeddings;
n_prompt = inst.n_prompt;
n_gen = inst.n_gen;
n_depth = inst.n_depth;
// RFC 3339 date-time format
time_t t = time(NULL);
std::strftime(buf, sizeof(buf), "%FT%TZ", gmtime(&t));
@@ -972,9 +1133,9 @@ struct test {
"build_commit", "build_number", "cpu_info", "gpu_info", "backends", "model_filename",
"model_type", "model_size", "model_n_params", "n_batch", "n_ubatch", "n_threads",
"cpu_mask", "cpu_strict", "poll", "type_k", "type_v", "n_gpu_layers",
"split_mode", "main_gpu", "no_kv_offload", "flash_attn", "tensor_split", "use_mmap",
"embeddings", "n_prompt", "n_gen", "test_time", "avg_ns", "stddev_ns",
"avg_ts", "stddev_ts",
"split_mode", "main_gpu", "no_kv_offload", "flash_attn", "tensor_split", "tensor_buft_overrides",
"use_mmap", "embeddings", "n_prompt", "n_gen", "n_depth", "test_time",
"avg_ns", "stddev_ns", "avg_ts", "stddev_ts",
};
return fields;
}
@@ -984,8 +1145,8 @@ struct test {
static field_type get_field_type(const std::string & field) {
if (field == "build_number" || field == "n_batch" || field == "n_ubatch" || field == "n_threads" ||
field == "poll" || field == "model_size" || field == "model_n_params" || field == "n_gpu_layers" ||
field == "main_gpu" || field == "n_prompt" || field == "n_gen" || field == "avg_ns" ||
field == "stddev_ns") {
field == "main_gpu" || field == "n_prompt" || field == "n_gen" || field == "n_depth" ||
field == "avg_ns" || field == "stddev_ns") {
return INT;
}
if (field == "f16_kv" || field == "no_kv_offload" || field == "cpu_strict" || field == "flash_attn" ||
@@ -1000,6 +1161,7 @@ struct test {
std::vector<std::string> get_values() const {
std::string tensor_split_str;
std::string tensor_buft_overrides_str;
int max_nonzero = 0;
for (size_t i = 0; i < llama_max_devices(); i++) {
if (tensor_split[i] > 0) {
@@ -1014,6 +1176,26 @@ struct test {
tensor_split_str += "/";
}
}
if (tensor_buft_overrides.size() == 1) {
// Last element of tensor_buft_overrides is always a null pattern
// so if it is only one element long, it must be a null pattern.
GGML_ASSERT(tensor_buft_overrides[0].pattern == nullptr);
tensor_buft_overrides_str += "none";
} else {
for (size_t i = 0; i < tensor_buft_overrides.size()-1; i++) {
// Last element of tensor_buft_overrides is always a null pattern
if (tensor_buft_overrides[i].pattern == nullptr) {
tensor_buft_overrides_str += "none";
} else {
tensor_buft_overrides_str += tensor_buft_overrides[i].pattern;
tensor_buft_overrides_str += "=";
tensor_buft_overrides_str += ggml_backend_buft_name(tensor_buft_overrides[i].buft);
}
if (i + 2 < tensor_buft_overrides.size()) {
tensor_buft_overrides_str += ";";
}
}
}
std::vector<std::string> values = { build_commit,
std::to_string(build_number),
cpu_info,
@@ -1037,10 +1219,12 @@ struct test {
std::to_string(no_kv_offload),
std::to_string(flash_attn),
tensor_split_str,
tensor_buft_overrides_str,
std::to_string(use_mmap),
std::to_string(embeddings),
std::to_string(n_prompt),
std::to_string(n_gen),
std::to_string(n_depth),
test_time,
std::to_string(avg_ns()),
std::to_string(stdev_ns()),
@@ -1218,7 +1402,7 @@ struct markdown_printer : public printer {
return 4;
}
if (field == "test") {
return 13;
return 15;
}
int width = std::max((int) field.length(), 10);
@@ -1254,6 +1438,9 @@ struct markdown_printer : public printer {
if (field == "tensor_split") {
return "ts";
}
if (field == "tensor_buft_overrides") {
return "ot";
}
return field;
}
@@ -1307,6 +1494,9 @@ struct markdown_printer : public printer {
if (params.tensor_split.size() > 1 || params.tensor_split != cmd_params_defaults.tensor_split) {
fields.emplace_back("tensor_split");
}
if (params.tensor_buft_overrides.size() > 1 || !vec_vec_tensor_buft_override_equal(params.tensor_buft_overrides, cmd_params_defaults.tensor_buft_overrides)) {
fields.emplace_back("tensor_buft_overrides");
}
if (params.use_mmap.size() > 1 || params.use_mmap != cmd_params_defaults.use_mmap) {
fields.emplace_back("use_mmap");
}
@@ -1362,6 +1552,10 @@ struct markdown_printer : public printer {
} else {
snprintf(buf, sizeof(buf), "pp%d+tg%d", t.n_prompt, t.n_gen);
}
if (t.n_depth > 0) {
int len = strlen(buf);
snprintf(buf + len, sizeof(buf) - len, " @ d%d", t.n_depth);
}
value = buf;
} else if (field == "t/s") {
snprintf(buf, sizeof(buf), "%.2f ± %.2f", t.avg_ts(), t.stdev_ts());
@@ -1620,6 +1814,14 @@ int main(int argc, char ** argv) {
for (int i = 0; i < params.reps; i++) {
llama_kv_self_clear(ctx);
if (t.n_depth > 0) {
if (params.progress) {
fprintf(stderr, "llama-bench: benchmark %d/%zu: depth run %d/%d\n", params_idx, params_count,
i + 1, params.reps);
}
test_prompt(ctx, t.n_depth, t.n_batch, t.n_threads);
}
uint64_t t_start = get_time_ns();
if (t.n_prompt > 0) {

View File

@@ -64,13 +64,7 @@ endif()
add_executable(llama-llava-cli deprecation-warning.cpp)
add_executable(llama-gemma3-cli deprecation-warning.cpp)
add_executable(llama-minicpmv-cli deprecation-warning.cpp)
set(TARGET llama-qwen2vl-cli)
add_executable(${TARGET} qwen2vl-cli.cpp)
set_target_properties(${TARGET} PROPERTIES OUTPUT_NAME llama-qwen2vl-cli)
install(TARGETS ${TARGET} RUNTIME)
target_link_libraries(${TARGET} PRIVATE common llava ${CMAKE_THREAD_LIBS_INIT})
target_compile_features(${TARGET} PRIVATE cxx_std_17)
add_executable(llama-qwen2vl-cli deprecation-warning.cpp)
set(TARGET llama-mtmd-cli)
add_executable(${TARGET} mtmd-cli.cpp)

View File

@@ -34,6 +34,9 @@ llama-mtmd-cli -hf ggml-org/SmolVLM2-500M-Video-Instruct-GGUF
# Pixtral 12B
llama-mtmd-cli -hf ggml-org/pixtral-12b-GGUF
# Mistral Small 3.1 24B (IQ2_M quantization)
llama-mtmd-cli -hf ggml-org/Mistral-Small-3.1-24B-Instruct-2503-GGUF --chat-template mistral-v7
```
## How it works and what is `mmproj`?
@@ -73,3 +76,4 @@ For the following models, you can use `convert_hf_to_gguf.py`with `--mmproj` fla
- SmolVLM (from [HuggingFaceTB](https://huggingface.co/HuggingFaceTB))
- SmolVLM2 (from [HuggingFaceTB](https://huggingface.co/HuggingFaceTB))
- [Pixtral 12B](https://huggingface.co/mistral-community/pixtral-12b) - only works with `transformers`-compatible checkpoint
- [Mistral Small 3.1 24B](https://huggingface.co/mistralai/Mistral-Small-3.1-24B-Instruct-2503)

View File

@@ -2,8 +2,6 @@
#include "gguf.h"
#include "clip.h"
#include "clip.h"
#include <climits>
#include <cstdarg>
#include <string>
@@ -33,6 +31,7 @@
#define KEY_FEATURE_LAYER "clip.vision.feature_layer"
#define KEY_PROJ_SCALE_FACTOR "clip.vision.projector.scale_factor"
#define KEY_PROJ_TYPE "clip.projector_type"
#define KEY_SPATIAL_MERGE_SIZE "clip.vision.spatial_merge_size"
#define KEY_USE_GLU_MLP "clip.use_glu_mlp" // for qwen2.5vl
#define KEY_USE_RMS_NORM "clip.use_rms_norm" // for qwen2.5vl
@@ -70,9 +69,11 @@
#define TN_MVLM_PROJ_BLOCK "mm.model.mb_block.%d.block.%d.%s"
#define TN_MVLM_PROJ_PEG "mm.model.peg.%d.%s"
#define TN_IMAGE_NEWLINE "model.image_newline"
#define TN_MM_INP_NORM "mm.input_norm.weight"
#define TN_MM_INP_PROJ "mm.input_projection.weight" // gemma3
#define TN_MM_SOFT_EMB_N "mm.soft_emb_norm.weight" // gemma3
#define TN_MM_PROJECTOR "mm.model.fc.weight" // idefics3
#define TN_MM_PATCH_MERGER "mm.patch_merger.weight" // mistral small 3.1
#define TN_TOK_IMG_BREAK "v.token_embd.img_break" // pixtral
// mimicpmv

View File

@@ -170,8 +170,9 @@ struct clip_hparams {
std::vector<int32_t> image_grid_pinpoints;
int32_t image_crop_resolution;
std::unordered_set<int32_t> vision_feature_layer;
int32_t attn_window_size;
int32_t n_wa_pattern;
int32_t attn_window_size = 0;
int32_t n_wa_pattern = 0;
int32_t spatial_merge_size = 0;
};
struct clip_layer {
@@ -232,6 +233,7 @@ struct clip_vision_model {
struct ggml_tensor * projection;
// LLaVA projection
struct ggml_tensor * mm_input_norm_w = nullptr;
struct ggml_tensor * mm_0_w = nullptr;
struct ggml_tensor * mm_0_b = nullptr;
struct ggml_tensor * mm_2_w = nullptr;
@@ -311,6 +313,7 @@ struct clip_vision_model {
// pixtral
struct ggml_tensor * token_embd_img_break = nullptr;
struct ggml_tensor * mm_patch_merger_w = nullptr;
};
struct clip_ctx {
@@ -325,7 +328,6 @@ struct clip_ctx {
float image_std[3];
bool use_gelu = false;
bool use_silu = false;
int32_t ftype = 1;
gguf_context_ptr ctx_gguf;
ggml_context_ptr ctx_data;
@@ -638,6 +640,7 @@ static ggml_cgraph * clip_image_build_graph_pixtral(clip_ctx * ctx, const clip_i
const int d_head = hidden_size / n_head;
const int n_layer = hparams.n_layer;
const float eps = hparams.eps;
const int n_merge = hparams.spatial_merge_size;
struct ggml_init_params params = {
/*.mem_size =*/ ctx->buf_compute_meta.size(),
@@ -722,7 +725,13 @@ static ggml_cgraph * clip_image_build_graph_pixtral(clip_ctx * ctx, const clip_i
{
ggml_tensor * gate_proj = ggml_mul_mat(ctx0, model.layers[il].ff_gate_w, cur);
ggml_tensor * up_proj = ggml_mul_mat(ctx0, model.layers[il].ff_up_w, cur);
gate_proj = ggml_silu(ctx0, gate_proj); // pixtral uses silu
if (ctx->use_silu) {
gate_proj = ggml_silu(ctx0, gate_proj);
} else if (ctx->use_gelu) {
gate_proj = ggml_gelu(ctx0, gate_proj);
} else {
GGML_ABORT("Pixtral: Unsupported activation");
}
cur = ggml_mul(ctx0, up_proj, gate_proj);
cur = ggml_mul_mat(ctx0, model.layers[il].ff_down_w, cur);
}
@@ -733,14 +742,42 @@ static ggml_cgraph * clip_image_build_graph_pixtral(clip_ctx * ctx, const clip_i
embeddings = cur;
}
// LlavaMultiModalProjector (with GELU activation)
// mistral small 3.1 patch merger
// ref: https://github.com/huggingface/transformers/blob/7a3e208892c06a5e278144eaf38c8599a42f53e7/src/transformers/models/mistral3/modeling_mistral3.py#L67
if (model.mm_patch_merger_w) {
GGML_ASSERT(hparams.spatial_merge_size > 0);
ggml_tensor * cur = embeddings;
cur = ggml_mul(ctx0, ggml_rms_norm(ctx0, cur, eps), model.mm_input_norm_w);
// reshape image tokens to 2D grid
cur = ggml_reshape_3d(ctx0, cur, hidden_size, n_patches_x, n_patches_y);
cur = ggml_permute(ctx0, cur, 2, 0, 1, 3); // [x, y, hidden_size]
cur = ggml_cont(ctx0, cur);
// torch.nn.functional.unfold is just an im2col under the hood
// we just need a dummy kernel to make it work
ggml_tensor * kernel = ggml_view_3d(ctx0, cur, n_merge, n_merge, cur->ne[2], 0, 0, 0);
cur = ggml_im2col(ctx0, kernel, cur, n_merge, n_merge, 0, 0, 1, 1, true, inp->type);
// project to hidden_size
cur = ggml_reshape_2d(ctx0, cur, cur->ne[0], cur->ne[1] * cur->ne[2]);
cur = ggml_mul_mat(ctx0, model.mm_patch_merger_w, cur);
embeddings = cur;
}
// LlavaMultiModalProjector (always using GELU activation)
{
embeddings = ggml_mul_mat(ctx0, model.mm_1_w, embeddings);
embeddings = ggml_add(ctx0, embeddings, model.mm_1_b);
if (model.mm_1_b) {
embeddings = ggml_add(ctx0, embeddings, model.mm_1_b);
}
embeddings = ggml_gelu(ctx0, embeddings);
embeddings = ggml_mul_mat(ctx0, model.mm_2_w, embeddings);
embeddings = ggml_add(ctx0, embeddings, model.mm_2_b);
if (model.mm_2_b) {
embeddings = ggml_add(ctx0, embeddings, model.mm_2_b);
}
}
// arrangement of the [IMG_BREAK] token
@@ -750,11 +787,14 @@ static ggml_cgraph * clip_image_build_graph_pixtral(clip_ctx * ctx, const clip_i
// and then concatenate the [IMG_BREAK] token to the end of each row, aka n_patches_per_row dimension
// after the concatenation, we have a tensor with shape [hidden_size, n_patches_per_row + 1, n_rows]
const int p_y = n_merge > 0 ? n_patches_y / n_merge : n_patches_y;
const int p_x = n_merge > 0 ? n_patches_x / n_merge : n_patches_x;
const int p_total = p_x * p_y;
const int n_embd_text = embeddings->ne[0];
const int n_tokens_output = num_patches + n_patches_y - 1; // one [IMG_BREAK] per row, except the last row
const int n_tokens_output = p_total + p_y - 1; // one [IMG_BREAK] per row, except the last row
ggml_tensor * cur = ggml_reshape_3d(ctx0, embeddings, n_embd_text, n_patches_x, n_patches_y);
ggml_tensor * tok = ggml_new_tensor_3d(ctx0, embeddings->type, n_embd_text, 1, n_patches_y);
ggml_tensor * cur = ggml_reshape_3d(ctx0, embeddings, n_embd_text, p_x, p_y);
ggml_tensor * tok = ggml_new_tensor_3d(ctx0, embeddings->type, n_embd_text, 1, p_y);
tok = ggml_scale(ctx0, tok, 0.0); // clear the tensor
tok = ggml_add(ctx0, tok, model.token_embd_img_break);
cur = ggml_concat(ctx0, cur, tok, 1);
@@ -776,7 +816,6 @@ static ggml_cgraph * clip_image_build_graph_qwen25vl(clip_ctx * ctx, const clip_
const int image_size_width = imgs.entries[0]->nx;
const int image_size_height = imgs.entries[0]->ny;
const bool use_mrope = ctx->proj_type == PROJECTOR_TYPE_QWEN2VL || ctx->proj_type == PROJECTOR_TYPE_QWEN25VL;
const bool use_window_attn = hparams.n_wa_pattern > 0;
const int n_wa_pattern = hparams.n_wa_pattern;
@@ -785,10 +824,11 @@ static ggml_cgraph * clip_image_build_graph_qwen25vl(clip_ctx * ctx, const clip_
const int patches_w = image_size_width / patch_size;
const int patches_h = image_size_height / patch_size;
const int num_positions = num_patches + (model.class_embedding ? 1 : 0);
const int num_position_ids = use_mrope ? num_positions * 4 : num_positions;
const int num_position_ids = num_positions * 4; // m-rope requires 4 dim per position
const int hidden_size = hparams.hidden_size;
const int n_head = hparams.n_head;
const int d_head = hidden_size / n_head;
const int n_layer = hparams.n_layer;
const float eps = hparams.eps;
int mrope_sections[4] = {d_head/4, d_head/4, d_head/4, d_head/4};
@@ -870,7 +910,7 @@ static ggml_cgraph * clip_image_build_graph_qwen25vl(clip_ctx * ctx, const clip_
}
// loop over layers
for (int il = 0; il < ctx->max_feature_layer; il++) {
for (int il = 0; il < n_layer; il++) {
struct ggml_tensor * cur = embeddings; // embeddings = residual, cur = hidden_states
// rmsnorm1
@@ -1115,15 +1155,8 @@ static ggml_cgraph * clip_image_build_graph_legacy(clip_ctx * ctx, const clip_im
if (ctx->proj_type == PROJECTOR_TYPE_MINICPMV) {
int pos_w = image_size_width/patch_size;
int pos_h = image_size_height/patch_size;
if (ctx->minicpmv_version == 2) {
pos_embed = ggml_new_tensor_3d(ctx0, GGML_TYPE_F32, 4096, pos_w * pos_h, 1);
}
else if (ctx->minicpmv_version == 3) {
pos_embed = ggml_new_tensor_3d(ctx0, GGML_TYPE_F32, 3584, pos_w * pos_h, 1);
}
else if (ctx->minicpmv_version == 4) {
pos_embed = ggml_new_tensor_3d(ctx0, GGML_TYPE_F32, 3584, pos_w * pos_h, 1);
}
int n_output_dim = clip_n_mmproj_embd(ctx);
pos_embed = ggml_new_tensor_3d(ctx0, GGML_TYPE_F32, n_output_dim, pos_w * pos_h, 1);
ggml_set_name(pos_embed, "pos_embed");
ggml_set_input(pos_embed);
}
@@ -1461,23 +1494,17 @@ static ggml_cgraph * clip_image_build_graph_legacy(clip_ctx * ctx, const clip_im
}
{ // attention
int hidden_size = 4096;
int hidden_size = clip_n_mmproj_embd(ctx);
const int d_head = 128;
int n_head = hidden_size/d_head;
int num_query = 96;
if (ctx->minicpmv_version == 2) {
hidden_size = 4096;
n_head = hidden_size/d_head;
num_query = 96;
}
else if (ctx->minicpmv_version == 3) {
hidden_size = 3584;
n_head = hidden_size/d_head;
num_query = 64;
}
else if (ctx->minicpmv_version == 4) {
hidden_size = 3584;
n_head = hidden_size/d_head;
num_query = 64;
}
@@ -1588,7 +1615,7 @@ struct clip_model_loader {
clip_ctx & ctx_clip;
std::string fname;
size_t model_size; // in bytes
size_t model_size = 0; // in bytes
// TODO @ngxson : we should not pass clip_ctx here, it should be clip_vision_model
clip_model_loader(const char * fname, clip_ctx & ctx_clip) : ctx_clip(ctx_clip), fname(fname) {
@@ -1718,7 +1745,8 @@ struct clip_model_loader {
if (ctx_clip.proj_type == PROJECTOR_TYPE_MINICPMV
|| ctx_clip.proj_type == PROJECTOR_TYPE_GLM_EDGE
|| ctx_clip.proj_type == PROJECTOR_TYPE_QWEN2VL) {
|| ctx_clip.proj_type == PROJECTOR_TYPE_QWEN2VL
|| ctx_clip.proj_type == PROJECTOR_TYPE_QWEN25VL) {
n_layer += 1;
}
@@ -1747,6 +1775,7 @@ struct clip_model_loader {
case PROJECTOR_TYPE_PIXTRAL:
{
hparams.rope_theta = 10000.0f;
get_u32(KEY_SPATIAL_MERGE_SIZE, hparams.spatial_merge_size, false);
} break;
case PROJECTOR_TYPE_QWEN25VL:
{
@@ -1759,6 +1788,10 @@ struct clip_model_loader {
LOG_INF("%s: projector: %s\n", __func__, proj_type.c_str());
LOG_INF("%s: has_llava_proj: %d\n", __func__, ctx_clip.has_llava_projector);
LOG_INF("%s: minicpmv_version: %d\n", __func__, ctx_clip.minicpmv_version);
LOG_INF("%s: proj_scale_factor: %d\n", __func__, hparams.proj_scale_factor);
LOG_INF("%s: n_wa_pattern: %d\n", __func__, hparams.n_wa_pattern);
LOG_INF("%s: use_silu: %d\n", __func__, ctx_clip.use_silu);
LOG_INF("%s: use_gelu: %d\n", __func__, ctx_clip.use_gelu);
LOG_INF("%s: model size: %.2f MiB\n", __func__, model_size / 1024.0 / 1024.0);
LOG_INF("%s: metadata size: %.2f MiB\n", __func__, ggml_get_mem_size(ctx_meta.get()) / 1024.0 / 1024.0);
}
@@ -1966,11 +1999,14 @@ struct clip_model_loader {
case PROJECTOR_TYPE_PIXTRAL:
{
vision_model.mm_1_w = get_tensor(string_format(TN_LLAVA_PROJ, 1, "weight"));
vision_model.mm_1_b = get_tensor(string_format(TN_LLAVA_PROJ, 1, "bias"));
vision_model.mm_1_b = get_tensor(string_format(TN_LLAVA_PROJ, 1, "bias"), false);
vision_model.mm_2_w = get_tensor(string_format(TN_LLAVA_PROJ, 2, "weight"));
vision_model.mm_2_b = get_tensor(string_format(TN_LLAVA_PROJ, 2, "bias"));
vision_model.mm_2_b = get_tensor(string_format(TN_LLAVA_PROJ, 2, "bias"), false);
// [IMG_BREAK] token embedding
vision_model.token_embd_img_break = get_tensor(TN_TOK_IMG_BREAK);
// for mistral small 3.1
vision_model.mm_input_norm_w = get_tensor(TN_MM_INP_NORM, false);
vision_model.mm_patch_merger_w = get_tensor(TN_MM_PATCH_MERGER, false);
} break;
default:
GGML_ASSERT(false && "unknown projector type");
@@ -2525,7 +2561,7 @@ struct llava_uhd {
// no pinpoints, dynamically calculate the grid size (e.g. minicpmv)
auto best_size = get_best_resize(original_size, slice_size, patch_size, has_slices);
auto best_size = get_best_resize(original_size, slice_size, patch_size, !has_slices);
res.overview_size = best_size;
if (!has_slices) {
@@ -2744,7 +2780,7 @@ bool clip_image_preprocess(struct clip_ctx * ctx, const clip_image_u8 * img, str
}
return true;
}
else if (ctx->proj_type == PROJECTOR_TYPE_QWEN2VL) {
else if (ctx->proj_type == PROJECTOR_TYPE_QWEN2VL || ctx->proj_type == PROJECTOR_TYPE_QWEN25VL) {
clip_image_u8 resized;
auto patch_size = clip_get_patch_size(ctx) * 2;
int nx = ceil((float)img->nx / patch_size) * patch_size;
@@ -2834,15 +2870,18 @@ void clip_free(clip_ctx * ctx) {
delete ctx;
}
// deprecated
size_t clip_embd_nbytes(const struct clip_ctx * ctx) {
return clip_n_patches(ctx) * clip_n_mmproj_embd(ctx) * sizeof(float);
const int32_t nx = ctx->vision_model.hparams.image_size;
const int32_t ny = ctx->vision_model.hparams.image_size;
return clip_embd_nbytes_by_img(ctx, nx, ny);
}
size_t clip_embd_nbytes_by_img(const struct clip_ctx * ctx, int img_h, int img_w) {
size_t clip_embd_nbytes_by_img(const struct clip_ctx * ctx, int img_w, int img_h) {
clip_image_f32 img;
img.nx = img_w;
img.ny = img_h;
return clip_n_patches_by_img(ctx, &img) * clip_n_mmproj_embd(ctx) * sizeof(float);
return clip_n_output_tokens(ctx, &img) * clip_n_mmproj_embd(ctx) * sizeof(float);
}
int32_t clip_get_image_size(const struct clip_ctx * ctx) {
@@ -2872,14 +2911,37 @@ size_t get_clip_image_grid_size(const struct clip_ctx * ctx) {
return ctx->vision_model.hparams.image_grid_pinpoints.size();
}
// deprecated
int clip_n_patches(const struct clip_ctx * ctx) {
clip_image_f32 img;
img.nx = ctx->vision_model.hparams.image_size;
img.ny = ctx->vision_model.hparams.image_size;
return clip_n_patches_by_img(ctx, &img);
return clip_n_output_tokens(ctx, &img);
}
// deprecated
int clip_n_patches_by_img(const struct clip_ctx * ctx, struct clip_image_f32 * img) {
return clip_n_output_tokens(ctx, img);
}
int clip_n_output_tokens_x(const struct clip_ctx * ctx, struct clip_image_f32 * img) {
const auto & params = ctx->vision_model.hparams;
const int n_total = clip_n_output_tokens(ctx, img);
if (ctx->proj_type == PROJECTOR_TYPE_QWEN2VL || ctx->proj_type == PROJECTOR_TYPE_QWEN25VL) {
return img->nx / (params.patch_size * 2) + (int)(img->nx % params.patch_size > 0);
}
return n_total;
}
int clip_n_output_tokens_y(const struct clip_ctx * ctx, struct clip_image_f32 * img) {
const auto & params = ctx->vision_model.hparams;
if (ctx->proj_type == PROJECTOR_TYPE_QWEN2VL || ctx->proj_type == PROJECTOR_TYPE_QWEN25VL) {
return img->ny / (params.patch_size * 2) + (int)(img->ny % params.patch_size > 0);
}
return 1;
}
int clip_n_output_tokens(const struct clip_ctx * ctx, struct clip_image_f32 * img) {
const auto & params = ctx->vision_model.hparams;
int n_patches = (params.image_size / params.patch_size) * (params.image_size / params.patch_size);
@@ -2909,8 +2971,9 @@ int clip_n_patches_by_img(const struct clip_ctx * ctx, struct clip_image_f32 * i
} else if (ctx->proj_type == PROJECTOR_TYPE_IDEFICS3) {
n_patches /= ctx->vision_model.hparams.proj_scale_factor;
} else if (ctx->proj_type == PROJECTOR_TYPE_PIXTRAL) {
int n_patches_x = img->nx / params.patch_size;
int n_patches_y = img->ny / params.patch_size;
int n_merge = ctx->vision_model.hparams.spatial_merge_size;
int n_patches_x = img->nx / params.patch_size / (n_merge > 0 ? n_merge : 1);
int n_patches_y = img->ny / params.patch_size / (n_merge > 0 ? n_merge : 1);
n_patches = n_patches_y*n_patches_x + n_patches_y - 1; // + one [IMG_BREAK] per row, except the last row
}
@@ -3037,15 +3100,43 @@ bool clip_image_batch_encode(clip_ctx * ctx, const int n_threads, const clip_ima
const int patch_size = hparams.patch_size;
const int num_patches = ((image_size_width / patch_size) * (image_size_height / patch_size));
const int num_positions = num_patches + (model.class_embedding ? 1 : 0);
const int pos_w = ctx->load_image_size.width / patch_size;
const int pos_w = ctx->load_image_size.width / patch_size;
const int pos_h = ctx->load_image_size.height / patch_size;
const bool use_window_attn = hparams.n_wa_pattern > 0; // for qwen2.5vl
auto get_inp_tensor = [&gf](const char * name) {
struct ggml_tensor * inp = ggml_graph_get_tensor(gf, name);
if (inp == nullptr) {
GGML_ABORT("Failed to get tensor %s", name);
}
if (!(inp->flags & GGML_TENSOR_FLAG_INPUT)) {
GGML_ABORT("Tensor %s is not an input tensor", name);
}
return inp;
};
auto set_input_f32 = [&get_inp_tensor](const char * name, std::vector<float> & values) {
ggml_tensor * cur = get_inp_tensor(name);
GGML_ASSERT(cur->type == GGML_TYPE_F32);
GGML_ASSERT(ggml_nelements(cur) == (int64_t)values.size());
ggml_backend_tensor_set(cur, values.data(), 0, ggml_nbytes(cur));
};
auto set_input_i32 = [&get_inp_tensor](const char * name, std::vector<int32_t> & values) {
ggml_tensor * cur = get_inp_tensor(name);
GGML_ASSERT(cur->type == GGML_TYPE_I32);
GGML_ASSERT(ggml_nelements(cur) == (int64_t)values.size());
ggml_backend_tensor_set(cur, values.data(), 0, ggml_nbytes(cur));
};
// set input pixel values
{
struct ggml_tensor * inp_raw = ggml_graph_get_tensor(gf, "inp_raw");
std::vector<float> inp_data(ggml_nelements(inp_raw));
float * data = inp_data.data();
size_t nelem = 0;
for (const auto & img : imgs.entries) {
nelem += img->nx * img->ny * 3;
}
std::vector<float> inp_raw(nelem);
// layout of data (note: the channel dim is unrolled to better visualize the layout):
//
@@ -3064,7 +3155,7 @@ bool clip_image_batch_encode(clip_ctx * ctx, const int n_threads, const clip_ima
const int n = nx * ny;
for (int b = 0; b < batch_size; b++) {
float * batch_entry = data + b * (3*n);
float * batch_entry = inp_raw.data() + b * (3*n);
for (int y = 0; y < ny; y++) {
for (int x = 0; x < nx; x++) {
size_t base_src = 3*(y * nx + x); // idx of the first channel
@@ -3076,266 +3167,207 @@ bool clip_image_batch_encode(clip_ctx * ctx, const int n_threads, const clip_ima
}
}
}
ggml_backend_tensor_set(inp_raw, data, 0, ggml_nbytes(inp_raw));
set_input_f32("inp_raw", inp_raw);
}
if (ctx->proj_type == PROJECTOR_TYPE_MINICPMV) {
{
// inspired from siglip:
// -> https://huggingface.co/HuggingFaceM4/siglip-so400m-14-980-flash-attn2-navit
// -> https://huggingface.co/HuggingFaceM4/siglip-so400m-14-980-flash-attn2-navit/blob/d66538faeba44480d0bfaa42145eef26f9423199/modeling_siglip.py#L316
struct ggml_tensor * positions = ggml_graph_get_tensor(gf, "positions");
std::vector<int> pos_data(ggml_nelements(positions));
int * data = pos_data.data();
int bucket_coords_h[1024];
int bucket_coords_w[1024];
for (int i = 0; i < pos_h; i++){
bucket_coords_h[i] = std::floor(70.0*i/pos_h);
}
for (int i = 0; i < pos_w; i++){
bucket_coords_w[i] = std::floor(70.0*i/pos_w);
}
for (int i = 0, id = 0; i < pos_h; i++){
for (int j = 0; j < pos_w; j++){
data[id++] = bucket_coords_h[i]*70 + bucket_coords_w[j];
// set input per projector
switch (ctx->proj_type) {
case PROJECTOR_TYPE_MINICPMV:
{
// inspired from siglip:
// -> https://huggingface.co/HuggingFaceM4/siglip-so400m-14-980-flash-attn2-navit
// -> https://huggingface.co/HuggingFaceM4/siglip-so400m-14-980-flash-attn2-navit/blob/d66538faeba44480d0bfaa42145eef26f9423199/modeling_siglip.py#L316
std::vector<int32_t> positions(pos_h * pos_w);
int bucket_coords_h[1024];
int bucket_coords_w[1024];
for (int i = 0; i < pos_h; i++){
bucket_coords_h[i] = std::floor(70.0*i/pos_h);
}
}
ggml_backend_tensor_set(positions, data, 0, ggml_nbytes(positions));
}
{
// inspired from resampler of Qwen-VL:
// -> https://huggingface.co/Qwen/Qwen-VL/tree/main
// -> https://huggingface.co/Qwen/Qwen-VL/blob/0547ed36a86561e2e42fecec8fd0c4f6953e33c4/visual.py#L23
struct ggml_tensor * pos_embed = ggml_graph_get_tensor(gf, "pos_embed");
int embed_dim = 4096;
if (ctx->minicpmv_version == 2) {
embed_dim = 4096;
}
else if (ctx->minicpmv_version == 3) {
embed_dim = 3584;
}
else if (ctx->minicpmv_version == 4) {
embed_dim = 3584;
}
else {
GGML_ABORT("Unknown minicpmv version");
}
// TODO @ngxson : this is very inefficient, can we do this using ggml_sin and ggml_cos?
auto pos_embed_t = get_2d_sincos_pos_embed(embed_dim, std::make_pair(pos_w, pos_h));
std::vector<float> pos_data(ggml_nelements(pos_embed));
float * data = pos_data.data();
for(int i = 0; i < pos_w * pos_h; ++i){
for(int j = 0; j < embed_dim; ++j){
data[i * embed_dim + j] = pos_embed_t[i][j];
for (int i = 0; i < pos_w; i++){
bucket_coords_w[i] = std::floor(70.0*i/pos_w);
}
}
for (int i = 0, id = 0; i < pos_h; i++){
for (int j = 0; j < pos_w; j++){
positions[id++] = bucket_coords_h[i]*70 + bucket_coords_w[j];
}
}
set_input_i32("positions", positions);
ggml_backend_tensor_set(pos_embed, data, 0, ggml_nbytes(pos_embed));
}
}
else {
// non-minicpmv models
// inspired from resampler of Qwen-VL:
// -> https://huggingface.co/Qwen/Qwen-VL/tree/main
// -> https://huggingface.co/Qwen/Qwen-VL/blob/0547ed36a86561e2e42fecec8fd0c4f6953e33c4/visual.py#L23
int embed_dim = clip_n_mmproj_embd(ctx);
if (ctx->proj_type == PROJECTOR_TYPE_QWEN2VL) {
// pw * ph = number of tokens output by ViT after apply patch merger
// ipw * ipw = number of vision token been processed inside ViT
const int merge_ratio = 2;
const int pw = image_size_width / patch_size / merge_ratio;
const int ph = image_size_height / patch_size / merge_ratio;
const int ipw = image_size_width / patch_size;
const int iph = image_size_height / patch_size;
// TODO @ngxson : this is very inefficient, can we do this using ggml_sin and ggml_cos?
auto pos_embed_t = get_2d_sincos_pos_embed(embed_dim, std::make_pair(pos_w, pos_h));
std::vector<int> idx (ph * pw);
std::vector<int> inv_idx(ph * pw);
std::vector<float> pos_embed(embed_dim * pos_w * pos_h);
for(int i = 0; i < pos_w * pos_h; ++i){
for(int j = 0; j < embed_dim; ++j){
pos_embed[i * embed_dim + j] = pos_embed_t[i][j];
}
}
if (use_window_attn) {
const int attn_window_size = 112;
struct ggml_tensor * window_idx = ggml_graph_get_tensor(gf, "window_idx");
struct ggml_tensor * inv_window_idx = ggml_graph_get_tensor(gf, "inv_window_idx");
struct ggml_tensor * window_mask = ggml_graph_get_tensor(gf, "window_mask");
const int grid_window = attn_window_size / patch_size / merge_ratio;
int dst = 0;
// [num_vision_tokens, num_vision_tokens] attention mask tensor
std::vector<float> mask(pow(ipw * iph, 2), std::numeric_limits<float>::lowest());
int mask_row = 0;
for (int y = 0; y < ph; y += grid_window)
{
for (int x = 0; x < pw; x += grid_window)
{
const int win_h = std::min(grid_window, ph - y);
const int win_w = std::min(grid_window, pw - x);
const int dst_0 = dst;
// group all tokens belong to the same window togather (to a continue range)
for (int dy = 0; dy < win_h; dy++) {
for (int dx = 0; dx < win_w; dx++) {
const int src = (y + dy) * pw + (x + dx);
assert(src < (int)idx.size());
assert(dst < (int)inv_idx.size());
idx [src] = dst;
inv_idx[dst] = src;
dst++;
set_input_f32("pos_embed", pos_embed);
} break;
case PROJECTOR_TYPE_QWEN2VL:
{
const int merge_ratio = 2;
const int pw = image_size_width / patch_size;
const int ph = image_size_height / patch_size;
std::vector<int> positions(num_positions * 4);
int ptr = 0;
for (int y = 0; y < ph; y += merge_ratio) {
for (int x = 0; x < pw; x += merge_ratio) {
for (int dy = 0; dy < 2; dy++) {
for (int dx = 0; dx < 2; dx++) {
positions[ ptr] = y + dy;
positions[ num_patches + ptr] = x + dx;
positions[2 * num_patches + ptr] = y + dy;
positions[3 * num_patches + ptr] = x + dx;
ptr++;
}
}
for (int r=0; r < win_h * win_w * merge_ratio * merge_ratio; r++) {
int row_offset = mask_row * (ipw * iph);
std::fill(
mask.begin() + row_offset + (dst_0 * merge_ratio * merge_ratio),
mask.begin() + row_offset + (dst * merge_ratio * merge_ratio),
0.0);
mask_row++;
}
}
}
ggml_backend_tensor_set(window_idx, idx.data(), 0, ggml_nbytes(window_idx));
ggml_backend_tensor_set(inv_window_idx, inv_idx.data(), 0, ggml_nbytes(inv_window_idx));
ggml_backend_tensor_set(window_mask, mask.data(), 0, ggml_nbytes(window_mask));
} else {
std::iota(idx.begin(), idx.end(), 0);
std::iota(inv_idx.begin(), inv_idx.end(), 0);
}
struct ggml_tensor * positions = ggml_graph_get_tensor(gf, "positions");
const int mpow = merge_ratio * merge_ratio;
std::vector<int> positions_data(ggml_nelements(positions));
int * data = positions_data.data();
int ptr = 0;
for (int y = 0; y < iph; y += merge_ratio)
set_input_i32("positions", positions);
} break;
case PROJECTOR_TYPE_QWEN25VL:
{
for (int x = 0; x < ipw; x += merge_ratio)
{
for (int dy = 0; dy < 2; dy++) {
for (int dx = 0; dx < 2; dx++) {
auto remap = idx[ptr / mpow];
remap = remap * mpow + (ptr % mpow);
// pw * ph = number of tokens output by ViT after apply patch merger
// ipw * ipw = number of vision token been processed inside ViT
const int merge_ratio = 2;
const int pw = image_size_width / patch_size / merge_ratio;
const int ph = image_size_height / patch_size / merge_ratio;
const int ipw = image_size_width / patch_size;
const int iph = image_size_height / patch_size;
data[ remap] = y + dy;
data[ num_patches + remap] = x + dx;
data[2 * num_patches + remap] = y + dy;
data[3 * num_patches + remap] = x + dx;
ptr++;
std::vector<int> idx (ph * pw);
std::vector<int> inv_idx(ph * pw);
if (use_window_attn) {
const int attn_window_size = 112;
const int grid_window = attn_window_size / patch_size / merge_ratio;
int dst = 0;
// [num_vision_tokens, num_vision_tokens] attention mask tensor
std::vector<float> mask(pow(ipw * iph, 2), std::numeric_limits<float>::lowest());
int mask_row = 0;
for (int y = 0; y < ph; y += grid_window) {
for (int x = 0; x < pw; x += grid_window) {
const int win_h = std::min(grid_window, ph - y);
const int win_w = std::min(grid_window, pw - x);
const int dst_0 = dst;
// group all tokens belong to the same window togather (to a continue range)
for (int dy = 0; dy < win_h; dy++) {
for (int dx = 0; dx < win_w; dx++) {
const int src = (y + dy) * pw + (x + dx);
GGML_ASSERT(src < (int)idx.size());
GGML_ASSERT(dst < (int)inv_idx.size());
idx [src] = dst;
inv_idx[dst] = src;
dst++;
}
}
for (int r=0; r < win_h * win_w * merge_ratio * merge_ratio; r++) {
int row_offset = mask_row * (ipw * iph);
std::fill(
mask.begin() + row_offset + (dst_0 * merge_ratio * merge_ratio),
mask.begin() + row_offset + (dst * merge_ratio * merge_ratio),
0.0);
mask_row++;
}
}
}
set_input_i32("window_idx", idx);
set_input_i32("inv_window_idx", inv_idx);
set_input_f32("window_mask", mask);
} else {
for (int i = 0; i < ph * pw; i++) {
idx[i] = i;
}
}
const int mpow = merge_ratio * merge_ratio;
std::vector<int> positions(num_positions * 4);
int ptr = 0;
for (int y = 0; y < iph; y += merge_ratio) {
for (int x = 0; x < ipw; x += merge_ratio) {
for (int dy = 0; dy < 2; dy++) {
for (int dx = 0; dx < 2; dx++) {
auto remap = idx[ptr / mpow];
remap = (remap * mpow) + (ptr % mpow);
positions[ remap] = y + dy;
positions[ num_patches + remap] = x + dx;
positions[2 * num_patches + remap] = y + dy;
positions[3 * num_patches + remap] = x + dx;
ptr++;
}
}
}
}
}
ggml_backend_tensor_set(positions, data, 0, ggml_nbytes(positions));
}
else if (ctx->proj_type == PROJECTOR_TYPE_GEMMA3) {
// do nothing
}
else if (ctx->proj_type == PROJECTOR_TYPE_IDEFICS3) {
// do nothing
}
else if (ctx->proj_type == PROJECTOR_TYPE_PIXTRAL) {
// set the 2D positions
int n_patches_per_col = image_size_width / patch_size;
std::vector<int> pos_data(num_positions);
struct ggml_tensor * pos;
// dimension H
pos = ggml_graph_get_tensor(gf, "pos_h");
for (int i = 0; i < num_positions; i++) {
pos_data[i] = i / n_patches_per_col;
}
ggml_backend_tensor_set(pos, pos_data.data(), 0, ggml_nbytes(pos));
// dimension W
pos = ggml_graph_get_tensor(gf, "pos_w");
for (int i = 0; i < num_positions; i++) {
pos_data[i] = i % n_patches_per_col;
}
ggml_backend_tensor_set(pos, pos_data.data(), 0, ggml_nbytes(pos));
}
else {
set_input_i32("positions", positions);
} break;
case PROJECTOR_TYPE_PIXTRAL:
{
// set the 2D positions
int n_patches_per_col = image_size_width / patch_size;
std::vector<int> pos_data(num_positions);
// dimension H
for (int i = 0; i < num_positions; i++) {
pos_data[i] = i / n_patches_per_col;
}
set_input_i32("pos_h", pos_data);
// dimension W
for (int i = 0; i < num_positions; i++) {
pos_data[i] = i % n_patches_per_col;
}
set_input_i32("pos_w", pos_data);
} break;
case PROJECTOR_TYPE_GLM_EDGE:
{
// llava and other models
struct ggml_tensor * positions = ggml_graph_get_tensor(gf, "positions");
int* positions_data = (int*)malloc(ggml_nbytes(positions));
std::vector<int32_t> positions(num_positions);
for (int i = 0; i < num_positions; i++) {
positions_data[i] = i;
positions[i] = i;
}
ggml_backend_tensor_set(positions, positions_data, 0, ggml_nbytes(positions));
free(positions_data);
set_input_i32("positions", positions);
} break;
case PROJECTOR_TYPE_MLP:
case PROJECTOR_TYPE_MLP_NORM:
case PROJECTOR_TYPE_LDP:
case PROJECTOR_TYPE_LDPV2:
{
// llava and other models
std::vector<int32_t> positions(num_positions);
for (int i = 0; i < num_positions; i++) {
positions[i] = i;
}
set_input_i32("positions", positions);
if (ctx->proj_type != PROJECTOR_TYPE_GLM_EDGE) {
struct ggml_tensor * patches = ggml_graph_get_tensor(gf, "patches");
// The patches vector is used to get rows to index into the embeds with;
// we should skip dim 0 only if we have CLS to avoid going out of bounds
// when retrieving the rows.
int patch_offset = model.class_embedding ? 1 : 0;
int* patches_data = (int*)malloc(ggml_nbytes(patches));
std::vector<int32_t> patches(num_patches);
for (int i = 0; i < num_patches; i++) {
patches_data[i] = i + patch_offset;
patches[i] = i + patch_offset;
}
ggml_backend_tensor_set(patches, patches_data, 0, ggml_nbytes(patches));
free(patches_data);
}
}
}
if (use_window_attn && ctx->proj_type == PROJECTOR_TYPE_QWEN25VL) {
struct ggml_tensor * window_idx = ggml_graph_get_tensor(gf, "window_idx");
struct ggml_tensor * inv_window_idx = ggml_graph_get_tensor(gf, "inv_window_idx");
struct ggml_tensor * window_mask = ggml_graph_get_tensor(gf, "window_mask");
const int merge_ratio = 2;
const int attn_window_size = 112;
const int pw = image_size_width / patch_size / merge_ratio;
const int ph = image_size_height / patch_size / merge_ratio;
const int grid_window = attn_window_size / patch_size / merge_ratio;
const int ipw = image_size_width / patch_size;
const int iph = image_size_height / patch_size;
/*
pw * ph = number of tokens output by ViT after apply patch merger
ipw * ipw = number of vision token been processed inside ViT
*/
std::vector<int> idx(ph * pw);
std::vector<int> inv_idx(ph * pw);
int dst = 0;
// [num_vision_tokens, num_vision_tokens] attention mask tensor
std::vector<float> mask(pow(ipw * iph, 2), std::numeric_limits<float>::lowest());
int mask_row = 0;
for (int y = 0; y < ph; y+=grid_window)
{
for (int x = 0; x < pw; x+=grid_window)
set_input_i32("patches", patches);
} break;
case PROJECTOR_TYPE_GEMMA3:
case PROJECTOR_TYPE_IDEFICS3:
{
const int win_h = std::min(grid_window, ph - y);
const int win_w = std::min(grid_window, pw - x);
const int dst_0 = dst;
// group all tokens belong to the same window togather (to a continue range)
for (int dy = 0; dy < win_h; dy++) {
for (int dx = 0; dx < win_w; dx++) {
const int src = (y + dy) * pw + (x + dx);
assert(src < (int)idx.size());
assert(dst < (int)inv_idx.size());
idx[src] = dst;
inv_idx[dst] = src;
dst++;
}
}
for (int r=0; r < win_h * win_w * merge_ratio * merge_ratio; r++) {
int row_offset = mask_row * (ipw * iph);
std::fill(
mask.begin() + row_offset + (dst_0 * merge_ratio * merge_ratio),
mask.begin() + row_offset + (dst * merge_ratio * merge_ratio),
0.0);
mask_row++;
}
}
}
ggml_backend_tensor_set(window_idx, idx.data(), 0, ggml_nbytes(window_idx));
ggml_backend_tensor_set(inv_window_idx, inv_idx.data(), 0, ggml_nbytes(inv_window_idx));
ggml_backend_tensor_set(window_mask, mask.data(), 0, ggml_nbytes(window_mask));
// do nothing
} break;
default:
GGML_ABORT("Unknown projector type");
}
ggml_backend_cpu_set_n_threads(ctx->backend_cpu, n_threads);
@@ -3498,7 +3530,7 @@ int clip_n_mmproj_embd(const struct clip_ctx * ctx) {
return ctx->vision_model.mm_model_peg_0_b->ne[0];
case PROJECTOR_TYPE_MLP:
case PROJECTOR_TYPE_PIXTRAL:
return ctx->vision_model.mm_2_b->ne[0];
return ctx->vision_model.mm_2_w->ne[1];
case PROJECTOR_TYPE_MLP_NORM:
return ctx->vision_model.mm_3_b->ne[0];
case PROJECTOR_TYPE_MINICPMV:
@@ -3536,7 +3568,7 @@ bool clip_is_glm(const struct clip_ctx * ctx) {
}
bool clip_is_qwen2vl(const struct clip_ctx * ctx) {
return ctx->proj_type == PROJECTOR_TYPE_QWEN2VL;
return ctx->proj_type == PROJECTOR_TYPE_QWEN2VL || ctx->proj_type == PROJECTOR_TYPE_QWEN25VL;
}
bool clip_is_llava(const struct clip_ctx * ctx) {

View File

@@ -47,7 +47,7 @@ CLIP_API struct clip_ctx * clip_init(const char * fname, struct clip_context_par
CLIP_API void clip_free(struct clip_ctx * ctx);
CLIP_API size_t clip_embd_nbytes(const struct clip_ctx * ctx);
CLIP_API size_t clip_embd_nbytes_by_img(const struct clip_ctx * ctx, int img_h, int img_w);
CLIP_API size_t clip_embd_nbytes_by_img(const struct clip_ctx * ctx, int img_w, int img_h);
CLIP_API int32_t clip_get_image_size (const struct clip_ctx * ctx);
CLIP_API int32_t clip_get_patch_size (const struct clip_ctx * ctx);
@@ -59,9 +59,20 @@ CLIP_API const char * clip_patch_merge_type(const struct clip_ctx * ctx);
CLIP_API const int32_t * clip_image_grid(const struct clip_ctx * ctx);
CLIP_API size_t get_clip_image_grid_size(const struct clip_ctx * ctx);
CLIP_API int clip_n_patches (const struct clip_ctx * ctx);
CLIP_API int clip_n_patches_by_img (const struct clip_ctx * ctx, struct clip_image_f32 * img);
CLIP_API int clip_n_mmproj_embd (const struct clip_ctx * ctx);
GGML_DEPRECATED(CLIP_API int clip_n_patches(const struct clip_ctx * ctx),
"use clip_n_output_tokens instead");
GGML_DEPRECATED(CLIP_API int clip_n_patches_by_img(const struct clip_ctx * ctx, struct clip_image_f32 * img),
"use clip_n_output_tokens instead");
CLIP_API int clip_n_output_tokens(const struct clip_ctx * ctx, struct clip_image_f32 * img);
// for M-RoPE, this will be the number of token positions in X and Y directions
// for other models, X will be the total number of tokens and Y will be 1
CLIP_API int clip_n_output_tokens_x(const struct clip_ctx * ctx, struct clip_image_f32 * img);
CLIP_API int clip_n_output_tokens_y(const struct clip_ctx * ctx, struct clip_image_f32 * img);
// this should be equal to the embedding dimension of the text model
CLIP_API int clip_n_mmproj_embd(const struct clip_ctx * ctx);
CLIP_API int clip_uhd_num_image_embeds_col(struct clip_ctx * ctx_clip);
CLIP_API void clip_add_load_image_size(struct clip_ctx * ctx_clip, struct clip_image_size * load_image_size);

View File

@@ -112,7 +112,7 @@ static struct clip_image_grid_shape get_anyres_image_grid_shape(const std::pair<
}
// Take the image segments in a grid configuration and return the embeddings and the number of embeddings into preallocated memory (image_embd_out)
static bool clip_llava_handle_patches(clip_ctx * ctx_clip, std::vector<float *> & image_embd_v, struct clip_image_grid_shape grid_shape, float * image_embd_out, int * n_img_pos_out) {
static bool clip_llava_handle_patches(clip_ctx * ctx_clip, std::vector<float *> & image_embd_v, struct clip_image_grid_shape grid_shape, float * image_embd_out, int * n_img_pos_out, clip_image_f32 * img_input) {
struct {
struct ggml_context * ctx;
} model;
@@ -175,7 +175,7 @@ static bool clip_llava_handle_patches(clip_ctx * ctx_clip, std::vector<float *>
model.ctx = ggml_init(params);
struct ggml_tensor * image_features = ggml_new_tensor_3d(model.ctx, GGML_TYPE_F32, clip_n_mmproj_embd(ctx_clip), clip_n_patches(ctx_clip), num_images - 1); // example: 4096 x 576 x 4
struct ggml_tensor * image_features = ggml_new_tensor_3d(model.ctx, GGML_TYPE_F32, clip_n_mmproj_embd(ctx_clip), clip_n_output_tokens(ctx_clip, img_input), num_images - 1); // example: 4096 x 576 x 4
// ggml_tensor_printf(image_features,"image_features",__LINE__,false,false);
// fill it with the image embeddings, ignoring the base
for (size_t i = 1; i < num_images; i++) {
@@ -214,8 +214,8 @@ static bool clip_llava_handle_patches(clip_ctx * ctx_clip, std::vector<float *>
memcpy(image_embd_out, image_embd_v[0], clip_embd_nbytes(ctx_clip)); // main image as global context
// append without newline tokens (default behavior in llava_arch when not using unpad ):
memcpy(image_embd_out + clip_n_patches(ctx_clip) * clip_n_mmproj_embd(ctx_clip), (float*)result->data, clip_embd_nbytes(ctx_clip) * (num_images-1)); // grid patches
*n_img_pos_out = static_cast<int>(result->ne[1]+clip_n_patches(ctx_clip));
memcpy(image_embd_out + clip_n_output_tokens(ctx_clip, img_input) * clip_n_mmproj_embd(ctx_clip), (float*)result->data, clip_embd_nbytes(ctx_clip) * (num_images-1)); // grid patches
*n_img_pos_out = static_cast<int>(result->ne[1]+clip_n_output_tokens(ctx_clip, img_input));
// Debug: Test single segments
// Current findings: sending base image, sending a segment embedding all works similar to python
@@ -313,7 +313,7 @@ static bool encode_image_with_clip(clip_ctx * ctx_clip, int n_threads, const cli
image_embd + n_img_pos_out * clip_n_mmproj_embd(ctx_clip),
image_embd_v[i],
clip_embd_nbytes_by_img(ctx_clip, nx, ny));
n_img_pos_out += clip_n_patches_by_img(ctx_clip, img_res);
n_img_pos_out += clip_n_output_tokens(ctx_clip, img_res);
}
*n_img_pos = n_img_pos_out;
for (size_t i = 0; i < image_embd_v.size(); i++) {
@@ -342,8 +342,8 @@ static bool encode_image_with_clip(clip_ctx * ctx_clip, int n_threads, const cli
}
else if (strcmp(mm_patch_merge_type, "spatial_unpad") != 0) {
// flat / default llava-1.5 type embedding
*n_img_pos = clip_n_patches(ctx_clip);
clip_image_f32 * img_res = clip_image_f32_get_img(img_res_v.get(), 0);
*n_img_pos = clip_n_output_tokens(ctx_clip, img_res);
bool encoded = clip_image_encode(ctx_clip, n_threads, img_res, image_embd); // image_embd shape is 576 x 4096
if (!encoded) {
LOG_ERR("Unable to encode image\n");
@@ -381,7 +381,8 @@ static bool encode_image_with_clip(clip_ctx * ctx_clip, int n_threads, const cli
struct clip_image_grid_shape grid_shape = get_anyres_image_grid_shape({img->nx,img->ny}, grid_pinpoints, image_size);
int n_img_pos_out;
clip_llava_handle_patches(ctx_clip, image_embd_v, grid_shape, image_embd, &n_img_pos_out);
clip_image_f32 * img_input = clip_image_f32_get_img(img_res_v.get(), 0);
clip_llava_handle_patches(ctx_clip, image_embd_v, grid_shape, image_embd, &n_img_pos_out, img_input);
*n_img_pos = n_img_pos_out;
for (size_t i = 0; i < image_embd_v.size(); i++) {

View File

@@ -72,6 +72,8 @@ struct mtmd_cli_context {
llama_batch batch;
int n_batch;
std::vector<mtmd_bitmap> bitmaps;
// note: we know that gemma3 template is "linear", meaning each turn is completely separated to another
// so here we don't need to keep track of chat history
common_chat_templates_ptr tmpls;
@@ -94,6 +96,7 @@ struct mtmd_cli_context {
LOG_ERR("Model does not have chat template.\n");
LOG_ERR(" For old llava models, you may need to use '--chat-template vicuna'\n");
LOG_ERR(" For MobileVLM models, use '--chat-template deepseek'\n");
LOG_ERR(" For Mistral Small 3.1, use '--chat-template mistral-v7'\n");
exit(1);
}
@@ -134,38 +137,14 @@ struct mtmd_cli_context {
antiprompt_tokens.begin()
);
}
};
struct decode_embd_batch {
std::vector<llama_pos> pos;
std::vector<int32_t> n_seq_id;
std::vector<llama_seq_id> seq_id_0;
std::vector<llama_seq_id *> seq_ids;
std::vector<int8_t> logits;
llama_batch batch;
decode_embd_batch(float * embd, int32_t n_tokens, llama_pos pos_0, llama_seq_id seq_id) {
pos .resize(n_tokens);
n_seq_id.resize(n_tokens);
seq_ids .resize(n_tokens + 1);
logits .resize(n_tokens);
seq_id_0.resize(1);
seq_id_0[0] = seq_id;
seq_ids [n_tokens] = nullptr;
batch = {
/*n_tokens =*/ n_tokens,
/*tokens =*/ nullptr,
/*embd =*/ embd,
/*pos =*/ pos.data(),
/*n_seq_id =*/ n_seq_id.data(),
/*seq_id =*/ seq_ids.data(),
/*logits =*/ logits.data(),
};
for (int i = 0; i < n_tokens; i++) {
batch.pos [i] = pos_0 + i;
batch.n_seq_id[i] = 1;
batch.seq_id [i] = seq_id_0.data();
batch.logits [i] = false;
bool load_image(const std::string & fname) {
mtmd_bitmap bitmap;
if (mtmd_helper_bitmap_init_from_file(fname.c_str(), bitmap)) {
return false;
}
bitmaps.push_back(std::move(bitmap));
return true;
}
};
@@ -173,7 +152,7 @@ static int generate_response(mtmd_cli_context & ctx, common_sampler * smpl, int
llama_tokens generated_tokens;
for (int i = 0; i < n_predict; i++) {
if (i > n_predict || !g_is_generating || g_is_interrupted) {
printf("\n");
LOG("\n");
break;
}
@@ -182,15 +161,15 @@ static int generate_response(mtmd_cli_context & ctx, common_sampler * smpl, int
common_sampler_accept(smpl, token_id, true);
if (llama_vocab_is_eog(ctx.vocab, token_id) || ctx.check_antiprompt(generated_tokens)) {
printf("\n");
LOG("\n");
break; // end of generation
}
printf("%s", common_token_to_piece(ctx.lctx, token_id).c_str());
LOG("%s", common_token_to_piece(ctx.lctx, token_id).c_str());
fflush(stdout);
if (g_is_interrupted) {
printf("\n");
LOG("\n");
break;
}
@@ -205,9 +184,7 @@ static int generate_response(mtmd_cli_context & ctx, common_sampler * smpl, int
return 0;
}
static int eval_message(mtmd_cli_context & ctx, common_chat_msg & msg, std::vector<std::string> & images_fname, bool add_bos = false) {
std::vector<mtmd_bitmap> bitmaps;
static int eval_message(mtmd_cli_context & ctx, common_chat_msg & msg, bool add_bos = false) {
common_chat_templates_inputs tmpl_inputs;
tmpl_inputs.messages = {msg};
tmpl_inputs.add_generation_prompt = true;
@@ -215,15 +192,6 @@ static int eval_message(mtmd_cli_context & ctx, common_chat_msg & msg, std::vect
auto formatted_chat = common_chat_templates_apply(ctx.tmpls.get(), tmpl_inputs);
LOG_DBG("formatted_chat.prompt: %s\n", formatted_chat.prompt.c_str());
for (auto & fname : images_fname) {
mtmd_bitmap bitmap;
if (mtmd_helper_bitmap_init_from_file(fname.c_str(), bitmap)) {
LOG_ERR("Unable to load image %s\n", fname.c_str());
return 2; // image not found
}
bitmaps.push_back(std::move(bitmap));
}
mtmd_input_text text;
text.text = formatted_chat.prompt;
text.add_special = add_bos;
@@ -232,18 +200,22 @@ static int eval_message(mtmd_cli_context & ctx, common_chat_msg & msg, std::vect
if (g_is_interrupted) return 0;
int32_t res = mtmd_tokenize(ctx.ctx_vision.get(), chunks, text, bitmaps);
int32_t res = mtmd_tokenize(ctx.ctx_vision.get(), chunks, text, ctx.bitmaps);
if (res != 0) {
LOG_ERR("Unable to tokenize prompt, res = %d\n", res);
return 1;
}
ctx.bitmaps.clear();
if (mtmd_helper_eval(ctx.ctx_vision.get(), ctx.lctx, chunks, ctx.n_past, 0, ctx.n_batch)) {
LOG_ERR("Unable to eval prompt\n");
return 1;
}
ctx.n_past += mtmd_helper_get_n_tokens(chunks);
ctx.n_past += mtmd_helper_get_n_pos(chunks);
LOG("\n");
return 0;
}
@@ -267,7 +239,7 @@ int main(int argc, char ** argv) {
}
mtmd_cli_context ctx(params);
printf("%s: %s\n", __func__, params.model.path.c_str());
LOG("%s: loading model: %s\n", __func__, params.model.path.c_str());
bool is_single_turn = !params.prompt.empty() && !params.image.empty();
@@ -300,7 +272,12 @@ int main(int argc, char ** argv) {
common_chat_msg msg;
msg.role = "user";
msg.content = params.prompt;
if (eval_message(ctx, msg, params.image, true)) {
for (const auto & image : params.image) {
if (!ctx.load_image(image)) {
return 1; // error is already printed by libmtmd
}
}
if (eval_message(ctx, msg, true)) {
return 1;
}
if (!g_is_interrupted && generate_response(ctx, smpl, n_predict)) {
@@ -315,7 +292,6 @@ int main(int argc, char ** argv) {
LOG("\n");
bool is_first_msg = true;
std::vector<std::string> images_fname;
std::string content;
while (!g_is_interrupted) {
@@ -340,10 +316,17 @@ int main(int argc, char ** argv) {
continue;
}
g_is_generating = true;
if (line.find("/image") == 0) {
if (line == "/image" || line.find("/image ") == 0) {
if (line.size() < 8) {
LOG_ERR("ERR: Missing image filename\n");
continue;
}
std::string image = line.substr(7);
images_fname.push_back(string_strip(image));
content += "<__image__>";
if (ctx.load_image(image)) {
LOG("Image %s loaded\n", image.c_str());
content += "<__image__>";
}
// else, error is already printed by libmtmd
continue;
} else {
content += line;
@@ -351,26 +334,20 @@ int main(int argc, char ** argv) {
common_chat_msg msg;
msg.role = "user";
msg.content = content;
int ret = eval_message(ctx, msg, images_fname, is_first_msg);
if (g_is_interrupted) break;
if (ret == 2) {
// non-fatal error
images_fname.clear();
content.clear();
continue;
}
int ret = eval_message(ctx, msg, is_first_msg);
if (ret) {
return 1;
}
if (g_is_interrupted) break;
if (generate_response(ctx, smpl, n_predict)) {
return 1;
}
images_fname.clear();
content.clear();
is_first_msg = false;
}
}
if (g_is_interrupted) LOG("\nInterrupted by user\n");
LOG("\n\n");
llama_perf_context_print(ctx.lctx);
return g_is_interrupted ? 130 : 0;
}

View File

@@ -40,11 +40,14 @@ struct mtmd_context {
llama_token tok_sli_img_end = LLAMA_TOKEN_NULL; // single slice
llama_token tok_row_end = LLAMA_TOKEN_NULL; // end of row
bool use_mrope = false; // for Qwen2VL, we need to use M-RoPE
// TODO @ngxson : add timings
mtmd_context(const char * mmproj_fname,
const llama_model * text_model,
const mtmd_context_params & ctx_params) :
text_model (text_model),
print_timings(ctx_params.print_timings),
n_threads (ctx_params.n_threads),
image_marker (ctx_params.image_marker)
@@ -56,9 +59,8 @@ struct mtmd_context {
if (!ctx_clip) {
throw std::runtime_error(string_format("Failed to load CLIP model from %s\n", mmproj_fname));
}
this->text_model = text_model;
GGML_ASSERT(!clip_is_qwen2vl(ctx_clip) && "Qwen2VL model is not supported yet, use llama-qwen2vl-cli instead");
use_mrope = clip_is_qwen2vl(ctx_clip);
int minicpmv_version = clip_is_minicpmv(ctx_clip);
if (minicpmv_version == 2) {
@@ -126,6 +128,7 @@ struct mtmd_image_tokens_data {
struct mtmd_image_tokens {
uint32_t nx; // number of tokens in x direction
uint32_t ny; // number of tokens in y direction
bool use_mrope_pos = false; // use M-RoPE position counting (the whole image is 1 temporal position)
uint32_t n_tokens() const { return nx * ny; }
clip_image_f32_batch batch_f32; // preprocessed image patches
std::string id; // optional user-defined ID, useful for KV cache tracking
@@ -202,10 +205,14 @@ int32_t mtmd_tokenize(mtmd_context * ctx,
string_replace_all(prompt_modified, ctx->image_marker, marker_modified);
}
// llava-1.5, llava-1.6, Yi-VL, Yi-34B, granite: don't need to add prefix and suffix
// for glm-edge, we don't need to add because the tokens are already in the returned embeddings
else if (proj_type == PROJECTOR_TYPE_QWEN2VL || proj_type == PROJECTOR_TYPE_QWEN25VL) {
// <|vision_start|> ... (image embeddings) ... <|vision_end|>
marker_modified = "<|vision_start|>" + ctx->image_marker + "<|vision_end|>";
string_replace_all(prompt_modified, ctx->image_marker, marker_modified);
// TODO @ngxson : glm-edge : remove BOI / EOI tokens embeddings, decode them as normal tokens
}
// llava-1.5, llava-1.6, Yi-VL, Yi-34B, granite: don't need to add prefix and suffix
std::vector<std::string> parts = string_split_str(prompt_modified, ctx->image_marker);
output.clear();
@@ -229,7 +236,7 @@ int32_t mtmd_tokenize(mtmd_context * ctx,
for (auto & entry : batch_f32.entries) {
mtmd_image_tokens_ptr image_tokens(new mtmd_image_tokens);
image_tokens->nx = clip_n_patches_by_img(ctx->ctx_clip, entry.get());
image_tokens->nx = clip_n_output_tokens(ctx->ctx_clip, entry.get());
image_tokens->ny = 1;
image_tokens->batch_f32.entries.push_back(std::move(entry));
image_tokens->id = id;
@@ -246,7 +253,7 @@ int32_t mtmd_tokenize(mtmd_context * ctx,
};
for (const auto & part : parts) {
//printf("tokenizing part: %s\n", part.c_str());
// printf("tokenizing part: %s\n", part.c_str());
bool add_bos = &parts.front() == &part;
auto tokens = mtmd_tokenize_text_internal(vocab, part, text.add_special && add_bos, text.parse_special);
if (tokens.empty()) {
@@ -325,12 +332,20 @@ int32_t mtmd_tokenize(mtmd_context * ctx,
} else {
size_t n_tokens = 0;
for (const auto & entry : batch_f32.entries) {
n_tokens += clip_n_patches_by_img(ctx->ctx_clip, entry.get());
n_tokens += clip_n_output_tokens(ctx->ctx_clip, entry.get());
}
mtmd_image_tokens_ptr image_tokens(new mtmd_image_tokens);
image_tokens->nx = n_tokens;
image_tokens->ny = 1; // TODO
if (ctx->use_mrope) {
// for Qwen2VL, we need this information for M-RoPE decoding positions
image_tokens->nx = clip_n_output_tokens_x(ctx->ctx_clip, batch_f32.entries[0].get());
image_tokens->ny = clip_n_output_tokens_y(ctx->ctx_clip, batch_f32.entries[0].get());
image_tokens->use_mrope_pos = true;
} else {
// other models, we only need the total number of tokens
image_tokens->nx = n_tokens;
image_tokens->ny = 1;
}
image_tokens->batch_f32 = std::move(batch_f32);
image_tokens->id = bitmaps[i_img].id; // optional
@@ -338,11 +353,6 @@ int32_t mtmd_tokenize(mtmd_context * ctx,
LOG_DBG("image_tokens->ny = %d\n", image_tokens->ny);
LOG_DBG("batch_f32 size = %d\n", (int)image_tokens->batch_f32.entries.size());
if (clip_is_glm(ctx->ctx_clip)) {
// glm-edge
image_tokens->nx += 2; // add 2 for the begin_of_image and end_of_image token embeddings
}
mtmd_input_chunk chunk{
MTMD_INPUT_CHUNK_TYPE_IMAGE,
{},
@@ -380,6 +390,13 @@ std::string mtmd_image_tokens_get_id(const mtmd_image_tokens * image_tokens) {
return image_tokens->id;
}
llama_pos mtmd_image_tokens_get_n_pos(const mtmd_image_tokens * image_tokens) {
if (image_tokens->use_mrope_pos) {
return 1; // for M-RoPE, the whole image is 1 in temporal dimension
}
return image_tokens->n_tokens();
}
int32_t mtmd_encode(mtmd_context * ctx, const mtmd_image_tokens * image_tokens) {
int n_mmproj_embd = clip_n_mmproj_embd(ctx->ctx_clip);
ctx->image_embd_v.resize(image_tokens->n_tokens() * n_mmproj_embd);
@@ -397,7 +414,7 @@ int32_t mtmd_encode(mtmd_context * ctx, const mtmd_image_tokens * image_tokens)
// TODO @ngxson : llava does not support batched encoding ; this should be fixed inside clip_image_batch_encode()
const auto & entries = image_tokens->batch_f32.entries;
for (size_t i = 0; i < entries.size(); i++) {
int n_tokens_per_image = clip_n_patches_by_img(ctx->ctx_clip, entries[i].get());
int n_tokens_per_image = clip_n_output_tokens(ctx->ctx_clip, entries[i].get());
ok = clip_image_encode(
ctx->ctx_clip,
ctx->n_threads,
@@ -425,7 +442,7 @@ size_t mtmd_helper_get_n_tokens(mtmd_input_chunks & chunks) {
if (chunk.type == MTMD_INPUT_CHUNK_TYPE_TEXT) {
n_tokens += chunk.tokens_text.size();
} else if (chunk.type == MTMD_INPUT_CHUNK_TYPE_IMAGE) {
n_tokens += chunk.tokens_image->n_tokens();
n_tokens += mtmd_image_tokens_get_n_tokens(chunk.tokens_image.get());
} else {
GGML_ASSERT(false && "chunk type not supported");
}
@@ -433,22 +450,38 @@ size_t mtmd_helper_get_n_tokens(mtmd_input_chunks & chunks) {
return n_tokens;
}
llama_pos mtmd_helper_get_n_pos(mtmd_input_chunks & chunks) {
llama_pos n_pos = 0;
for (auto & chunk : chunks) {
if (chunk.type == MTMD_INPUT_CHUNK_TYPE_TEXT) {
n_pos += chunk.tokens_text.size();
} else if (chunk.type == MTMD_INPUT_CHUNK_TYPE_IMAGE) {
n_pos += mtmd_image_tokens_get_n_pos(chunk.tokens_image.get());
} else {
GGML_ASSERT(false && "chunk type not supported");
}
}
return n_pos;
}
// helper struct to make working with embd batch easier
// note: this will be removed after llama_batch_ext refactoring
struct decode_embd_batch {
int n_pos_per_embd;
int n_mmproj_embd;
std::vector<llama_pos> pos;
std::vector<llama_pos> pos_view; // used by mrope
std::vector<int32_t> n_seq_id;
std::vector<llama_seq_id> seq_id_0;
std::vector<llama_seq_id *> seq_ids;
std::vector<int8_t> logits;
llama_batch batch;
decode_embd_batch(float * embd, int32_t n_tokens, llama_pos pos_0, llama_seq_id seq_id) {
pos .resize(n_tokens);
decode_embd_batch(float * embd, int32_t n_tokens, int n_pos_per_embd, int n_mmproj_embd) : n_pos_per_embd(n_pos_per_embd), n_mmproj_embd(n_mmproj_embd) {
pos .resize(n_tokens * n_pos_per_embd);
n_seq_id.resize(n_tokens);
seq_ids .resize(n_tokens + 1);
logits .resize(n_tokens);
seq_id_0.resize(1);
seq_id_0[0] = seq_id;
seq_ids [n_tokens] = nullptr;
batch = {
/*n_tokens =*/ n_tokens,
@@ -459,13 +492,64 @@ struct decode_embd_batch {
/*seq_id =*/ seq_ids.data(),
/*logits =*/ logits.data(),
};
for (int i = 0; i < n_tokens; i++) {
}
void set_position_normal(llama_pos pos_0, llama_seq_id seq_id) {
seq_id_0[0] = seq_id;
for (int i = 0; i < batch.n_tokens; i++) {
batch.pos [i] = pos_0 + i;
batch.n_seq_id[i] = 1;
batch.seq_id [i] = seq_id_0.data();
batch.logits [i] = false;
}
}
void set_position_mrope(llama_pos pos_0, int nx, int ny, llama_seq_id seq_id) {
GGML_ASSERT(n_pos_per_embd == 4);
seq_id_0[0] = seq_id;
for (int y = 0; y < ny; y++) {
for (int x = 0; x < nx; x++) {
int i = y * nx + x;
pos[i ] = pos_0;
pos[i + batch.n_tokens ] = pos_0 + y;
pos[i + batch.n_tokens * 2] = pos_0 + x;
pos[i + batch.n_tokens * 3] = 0; // last pos dim is unused
}
}
for (int i = 0; i < batch.n_tokens; i++) {
batch.n_seq_id[i] = 1;
batch.seq_id [i] = seq_id_0.data();
batch.logits [i] = false;
}
}
llama_batch get_view(int offset, int n_tokens) {
llama_pos * pos_ptr;
pos_view.clear();
pos_view.resize(n_tokens * n_pos_per_embd);
if (n_pos_per_embd > 1) {
// mrope
// for example, with layout of src: 1234...1234...1234...1234...
// offset 2 will give us dst: 34...34...34...34...
for (int i = 0; i < n_pos_per_embd; i++) {
auto src = pos.begin() + i * batch.n_tokens + offset;
pos_view.insert(pos_view.end(), src, src + n_tokens);
}
pos_ptr = pos_view.data();
} else {
// normal
pos_ptr = pos.data() + offset;
}
return {
/*n_tokens =*/ n_tokens,
/*tokens =*/ nullptr,
/*embd =*/ batch.embd + offset * n_mmproj_embd,
/*pos =*/ pos_ptr,
/*n_seq_id =*/ batch.n_seq_id + offset,
/*seq_id =*/ batch.seq_id + offset,
/*logits =*/ batch.logits + offset,
};
}
};
int32_t mtmd_helper_eval(mtmd_context * ctx,
@@ -478,6 +562,7 @@ int32_t mtmd_helper_eval(mtmd_context * ctx,
llama_pos n_past = pos0;
llama_batch text_batch = llama_batch_init(n_batch, 0, 1);
int n_mmproj_embd = clip_n_mmproj_embd(ctx->ctx_clip);
int n_pos_per_embd = mtmd_decode_use_mrope(ctx) ? 4 : 1;
for (auto & chunk : chunks) {
bool is_last = &chunk == &chunks.back();
@@ -505,7 +590,7 @@ int32_t mtmd_helper_eval(mtmd_context * ctx,
}
} else if (chunk.type == MTMD_INPUT_CHUNK_TYPE_IMAGE) {
GGML_ASSERT(!is_last && "logits for last image chunk is not yet support");
GGML_ASSERT(!is_last && "logits for last image chunk is not yet supported");
GGML_ASSERT(chunk.tokens_image != nullptr);
int64_t t0 = ggml_time_ms();
if (ctx->print_timings) {
@@ -525,6 +610,16 @@ int32_t mtmd_helper_eval(mtmd_context * ctx,
int32_t i_batch = 0;
int32_t n_img_batches = GGML_PAD(n_tokens, n_batch) / n_batch;
float * embd = mtmd_get_output_embd(ctx);
decode_embd_batch batch_embd(embd, n_tokens, n_pos_per_embd, n_mmproj_embd);
const int nx = mtmd_image_tokens_get_nx(chunk.tokens_image.get());
const int ny = mtmd_image_tokens_get_ny(chunk.tokens_image.get());
if (mtmd_decode_use_mrope(ctx)) {
batch_embd.set_position_mrope(n_past, nx, ny, seq_id);
} else {
batch_embd.set_position_normal(n_past, seq_id);
}
if (mtmd_decode_use_non_causal(ctx)) {
llama_set_causal_attn(lctx, false);
@@ -532,15 +627,14 @@ int32_t mtmd_helper_eval(mtmd_context * ctx,
}
while (i_batch < n_img_batches) { // split into batches
int32_t pos_offset = i_batch*n_batch;
int32_t n_tokens_batch = std::min(n_batch, n_tokens - pos_offset);
float * embd_batch = embd + pos_offset*n_mmproj_embd;
decode_embd_batch batch_img(embd_batch, n_tokens_batch, n_past, 0);
int pos_offset = i_batch*n_batch;
int n_tokens_batch = std::min(n_batch, n_tokens - pos_offset);
llama_batch batch_embd_view = batch_embd.get_view(pos_offset, n_tokens_batch);
printf("decoding image batch %d/%d, n_tokens_batch = %d\n", i_batch+1, n_img_batches, n_tokens_batch);
LOG_INF("decoding image batch %d/%d, n_tokens_batch = %d\n", i_batch+1, n_img_batches, n_tokens_batch);
int64_t t1 = ggml_time_ms();
ret = llama_decode(lctx, batch_img.batch);
ret = llama_decode(lctx, batch_embd_view);
if (ret != 0) {
LOG_ERR("failed to decode image\n");
llama_set_causal_attn(lctx, true); // restore causal attn
@@ -553,9 +647,11 @@ int32_t mtmd_helper_eval(mtmd_context * ctx,
}
i_batch++;
n_past += n_tokens_batch;
}
// for mrope, one image is one single **temporal** position
n_past += mtmd_decode_use_mrope(ctx) ? 1 : n_tokens;
if (mtmd_decode_use_non_causal(ctx)) {
llama_set_causal_attn(lctx, true);
}
@@ -603,6 +699,10 @@ bool mtmd_decode_use_non_causal(mtmd_context * ctx) {
return false;
}
bool mtmd_decode_use_mrope(mtmd_context * ctx) {
return ctx->use_mrope;
}
void mtmd_image_tokens_deleter::operator()(mtmd_image_tokens * val) {
mtmd_image_tokens_free(val);
}

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@@ -102,6 +102,7 @@ MTMD_API size_t mtmd_image_tokens_get_n_tokens(const mtmd_image_tokens * im
MTMD_API size_t mtmd_image_tokens_get_nx(const mtmd_image_tokens * image_tokens);
MTMD_API size_t mtmd_image_tokens_get_ny(const mtmd_image_tokens * image_tokens);
MTMD_API std::string mtmd_image_tokens_get_id(const mtmd_image_tokens * image_tokens);
MTMD_API llama_pos mtmd_image_tokens_get_n_pos(const mtmd_image_tokens * image_tokens); // number of temporal positions (always 1 for M-RoPE, n_tokens otherwise)
MTMD_API void mtmd_image_tokens_free(mtmd_image_tokens * image_tokens);
// returns 0 on success
@@ -114,15 +115,21 @@ MTMD_API float * mtmd_get_output_embd(mtmd_context * ctx);
// whether we need to set non-causal mask before llama_decode
MTMD_API bool mtmd_decode_use_non_causal(mtmd_context * ctx);
// whether the current model use M-RoPE for llama_decode
MTMD_API bool mtmd_decode_use_mrope(mtmd_context * ctx);
//
// helper functions (can be implemented based on other functions)
//
// helper to count the total number of tokens from a list of chunks, useful to keep track of n_past
// helper to count the total number of tokens from a list of chunks, useful to keep track of KV cache
MTMD_API size_t mtmd_helper_get_n_tokens(mtmd_input_chunks & chunks);
// helper to count the total position of tokens from a list of chunks, useful to keep track of n_past
MTMD_API llama_pos mtmd_helper_get_n_pos(mtmd_input_chunks & chunks);
// helper function that automatically:
// 1. run llama_decode() on text chunks
// 2. run mtmd_encode() on image chunks, then mtmd_get_output_embd() and then llama_decode()

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@@ -27,6 +27,8 @@
#include <cassert>
#include <cmath>
// THIS FILE IS ONLY USED FOR TESTING THE QWEN2VL MODEL
// IT IS NOT A PRODUCTION CODE
static bool qwen2vl_eval_image_embed(llama_context * ctx_llama, const struct llava_image_embed * image_embed,
int n_batch, int * n_past, int * st_pos_id, struct clip_image_size * image_size) {
@@ -92,20 +94,12 @@ static bool qwen2vl_eval_image_embed(llama_context * ctx_llama, const struct lla
static bool eval_tokens(struct llama_context * ctx_llama, std::vector<llama_token> tokens, int n_batch, int * n_past, int * st_pos_id) {
int N = (int) tokens.size();
std::vector<llama_pos> pos;
for (int i = 0; i < N; i += n_batch) {
int n_eval = (int) tokens.size() - i;
if (n_eval > n_batch) {
n_eval = n_batch;
}
auto batch = llama_batch_get_one(&tokens[i], n_eval);
// TODO: add mrope pos ids somewhere else
pos.resize(batch.n_tokens * 4);
std::fill(pos.begin(), pos.end(), 0);
for (int j = 0; j < batch.n_tokens * 3; j ++) {
pos[j] = *st_pos_id + (j % batch.n_tokens);
}
batch.pos = pos.data();
if (llama_decode(ctx_llama, batch)) {
LOG_ERR("%s : failed to eval. token %d/%d (batch size %d, n_past %d)\n", __func__, i, N, n_batch, *n_past);

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@@ -54,11 +54,12 @@ add_test "llama-mtmd-cli" "ibm-research/granite-vision-3.2-2b-GGUF:Q4_K_M"
add_test "llama-mtmd-cli" "second-state/MiniCPM-Llama3-V-2_5-GGUF:Q2_K" # model from openbmb is corrupted
add_test "llama-mtmd-cli" "openbmb/MiniCPM-V-2_6-gguf:Q2_K"
add_test "llama-mtmd-cli" "openbmb/MiniCPM-o-2_6-gguf:Q4_0"
add_test "llama-qwen2vl-cli" "bartowski/Qwen2-VL-2B-Instruct-GGUF:Q4_K_M"
add_test "llama-qwen2vl-cli" "ggml-org/Qwen2.5-VL-3B-Instruct-GGUF:Q4_K_M"
add_test "llama-mtmd-cli" "bartowski/Qwen2-VL-2B-Instruct-GGUF:Q4_K_M"
add_test "llama-mtmd-cli" "ggml-org/Qwen2.5-VL-3B-Instruct-GGUF:Q4_K_M"
# to test the big models, run: ./tests.sh big
add_test_big "llama-mtmd-cli" "ggml-org/pixtral-12b-GGUF:Q4_K_M"
add_test_big "llama-mtmd-cli" "ggml-org/Mistral-Small-3.1-24B-Instruct-2503-GGUF" "mistral-v7"
# these models always give the wrong answer, not sure why
# add_test "llama-mtmd-cli" "ggml-org/SmolVLM-Instruct-GGUF:Q4_K_M"

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@@ -304,8 +304,9 @@ int main(int argc, char * argv[]) {
get_backend_memory(&free_mem, &total_mem);
}
const char * cache_dir = nullptr;
std::string cache_dir_str = fs_get_cache_directory() + "rpc/";
std::string cache_dir_str;
if (params.use_cache) {
cache_dir_str = fs_get_cache_directory() + "rpc/";
if (!fs_create_directory_with_parents(cache_dir_str)) {
fprintf(stderr, "Failed to create cache directory: %s\n", cache_dir_str.c_str());
return 1;

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@@ -154,7 +154,7 @@ The project is under active development, and we are [looking for feedback and co
| `--ssl-cert-file FNAME` | path to file a PEM-encoded SSL certificate<br/>(env: LLAMA_ARG_SSL_CERT_FILE) |
| `-to, --timeout N` | server read/write timeout in seconds (default: 600)<br/>(env: LLAMA_ARG_TIMEOUT) |
| `--threads-http N` | number of threads used to process HTTP requests (default: -1)<br/>(env: LLAMA_ARG_THREADS_HTTP) |
| `--cache-reuse N` | min chunk size to attempt reusing from the cache via KV shifting (default: 0)<br/>(env: LLAMA_ARG_CACHE_REUSE) |
| `--cache-reuse N` | min chunk size to attempt reusing from the cache via KV shifting (default: 0)<br/>[(card)](https://ggml.ai/f0.png)<br/>(env: LLAMA_ARG_CACHE_REUSE) |
| `--metrics` | enable prometheus compatible metrics endpoint (default: disabled)<br/>(env: LLAMA_ARG_ENDPOINT_METRICS) |
| `--slots` | enable slots monitoring endpoint (default: disabled)<br/>(env: LLAMA_ARG_ENDPOINT_SLOTS) |
| `--props` | enable changing global properties via POST /props (default: disabled)<br/>(env: LLAMA_ARG_ENDPOINT_PROPS) |

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@@ -642,9 +642,31 @@ static json oaicompat_completion_params_parse(
throw std::runtime_error("Cannot use custom grammar constraints with tools.");
}
// if the assistant message appears at the end of list, we do not add end-of-turn token
// for ex. this can be useful to modify the reasoning process in reasoning models
bool prefill_assistant_message = !inputs.messages.empty() && inputs.messages.back().role == "assistant";
common_chat_msg last_message;
if (prefill_assistant_message) {
last_message = inputs.messages.back();
inputs.messages.pop_back();
/* sanity check, max one assistant message at the end of the list */
if (!inputs.messages.empty() && inputs.messages.back().role == "assistant"){
throw std::runtime_error("Cannot have 2 or more assistant messages at the end of the list.");
}
inputs.extract_reasoning = false;
inputs.add_generation_prompt = true;
}
// Apply chat template to the list of messages
auto chat_params = common_chat_templates_apply(tmpls, inputs);
/* Append assistant prefilled message */
if (prefill_assistant_message) {
chat_params.prompt += last_message.content;
}
llama_params["chat_format"] = static_cast<int>(chat_params.format);
llama_params["prompt"] = chat_params.prompt;
if (!chat_params.grammar.empty()) {

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@@ -360,3 +360,27 @@ write_basic_package_version_file(
install(FILES ${CMAKE_CURRENT_BINARY_DIR}/ggml-config.cmake
${CMAKE_CURRENT_BINARY_DIR}/ggml-version.cmake
DESTINATION ${CMAKE_INSTALL_LIBDIR}/cmake/ggml)
if (MSVC)
set(MSVC_WARNING_FLAGS
/wd4005 # Macro redefinition
/wd4244 # Conversion from one type to another type, possible loss of data
/wd4267 # Conversion from 'size_t' to a smaller type, possible loss of data
)
function(disable_msvc_warnings target_name)
if(TARGET ${target_name})
target_compile_options(${target_name} PRIVATE ${MSVC_WARNING_FLAGS})
endif()
endfunction()
disable_msvc_warnings(ggml-base)
disable_msvc_warnings(ggml)
disable_msvc_warnings(ggml-cpu)
disable_msvc_warnings(ggml-cpu-x64)
disable_msvc_warnings(ggml-cpu-sse42)
disable_msvc_warnings(ggml-cpu-sandybridge)
disable_msvc_warnings(ggml-cpu-haswell)
disable_msvc_warnings(ggml-cpu-skylakex)
disable_msvc_warnings(ggml-cpu-icelake)
disable_msvc_warnings(ggml-cpu-alderlake)
endif()

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@@ -24,7 +24,7 @@ typedef std::unique_ptr<gguf_context, gguf_context_deleter> gguf_context_ptr;
struct ggml_gallocr_deleter { void operator()(ggml_gallocr_t galloc) { ggml_gallocr_free(galloc); } };
typedef std::unique_ptr<ggml_gallocr_t, ggml_gallocr_deleter> ggml_gallocr_ptr;
typedef std::unique_ptr<ggml_gallocr, ggml_gallocr_deleter> ggml_gallocr_ptr;
// ggml-backend

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@@ -393,8 +393,8 @@ extern "C" {
// precision
enum ggml_prec {
GGML_PREC_DEFAULT,
GGML_PREC_F32,
GGML_PREC_DEFAULT = 0, // stored as ggml_tensor.op_params, 0 by default
GGML_PREC_F32 = 10,
};
// model file types

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@@ -816,7 +816,10 @@ static void ggml_gallocr_init_tensor(ggml_gallocr_t galloc, struct ggml_tensor *
static bool ggml_gallocr_node_needs_realloc(ggml_gallocr_t galloc, struct ggml_tensor * node, struct tensor_alloc * talloc) {
size_t node_size = 0;
if (!node->data && !node->view_src) {
GGML_ASSERT(talloc->buffer_id >= 0); // prevent segfault when misusing the API
// If we previously had data but don't now then reallocate
if (talloc->buffer_id < 0) {
return false;
}
node_size = ggml_backend_buft_get_alloc_size(galloc->bufts[talloc->buffer_id], node);
}
return talloc->size_max >= node_size;

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@@ -352,10 +352,14 @@ function(ggml_add_cpu_backend_variant_impl tag_name)
# TODO: Separation to determine activation of VX/VXE/VXE2
if (${S390X_M} MATCHES "8561|8562")
message(STATUS "z15 target")
list(APPEND ARCH_FLAGS -march=z15 -mtune=z15)
list(APPEND ARCH_FLAGS -march=z15)
elseif (${S390X_M} MATCHES "3931")
message(STATUS "z16 target")
list(APPEND ARCH_FLAGS -march=z16 -mtune=z16)
list(APPEND ARCH_FLAGS -march=z16)
elseif (${S390X_M} MATCHES "9175|9176")
# NOTE: Only available from GCC 15.1.0 onwards. Any z17 machine with compile issues must first verify their GCC version.
message(STATUS "z17 target")
list(APPEND ARCH_FLAGS -march=z17)
else()
message(STATUS "Unknown target")
message(WARNING "Unknown target. If you are compiling for z14 and earlier, you might have to add -DGGML_VXE=OFF.")

View File

@@ -341,7 +341,7 @@ static inline void __avx_f32cx8_store(ggml_fp16_t *x, __m256 y) {
#define GGML_F32_EPR 4
#define GGML_F32x4 vector float
#define GGML_F32x4_ZERO 0.0f
#define GGML_F32x4_ZERO {0.0f}
#define GGML_F32x4_SET1 vec_splats
#define GGML_F32x4_LOAD(p) vec_xl(0, p)
#define GGML_F32x4_STORE(p, r) vec_xst(r, 0, p)

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@@ -133,6 +133,7 @@ if (CUDAToolkit_FOUND)
COMMAND ${NVCC_CMD} -Xcompiler "-dumpfullversion -dumpversion"
OUTPUT_VARIABLE CUDA_CCVER
ERROR_QUIET
OUTPUT_STRIP_TRAILING_WHITESPACE
)
else()
if (CUDA_CCFULLVER MATCHES Apple)
@@ -143,7 +144,7 @@ if (CUDAToolkit_FOUND)
string(REGEX REPLACE "^.* version ([0-9.]*).*$" "\\1" CUDA_CCVER ${CUDA_CCFULLVER})
endif()
message("-- CUDA host compiler is ${CUDA_CCID} ${CUDA_CCVER}")
message(STATUS "CUDA host compiler is ${CUDA_CCID} ${CUDA_CCVER}")
ggml_get_flags(${CUDA_CCID} ${CUDA_CCVER})
list(APPEND CUDA_CXX_FLAGS ${CXX_FLAGS} ${GF_CXX_FLAGS}) # This is passed to -Xcompiler later

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@@ -78,13 +78,13 @@
// Moore Threads
#define GGML_CUDA_MUSA_ARCH_IS_QY1 (__MUSA_ARCH__ <= 210)
#define GGML_CUDA_CC_QY1 (GGML_MUSA_CC_OFFSET_MTHREADS + 0x210) // MTT S80, MTT S3000
#define GGML_CUDA_CC_QY2 (GGML_MUSA_CC_OFFSET_MTHREADS + 0x220) // MTT S4000
#define GGML_CUDA_CC_NG (GGML_MUSA_CC_OFFSET_MTHREADS + 0x310) // TBD
#define GGML_CUDA_CC_QY1 (GGML_CUDA_CC_OFFSET_MTHREADS + 0x210) // MTT S80, MTT S3000
#define GGML_CUDA_CC_QY2 (GGML_CUDA_CC_OFFSET_MTHREADS + 0x220) // MTT S4000
#define GGML_CUDA_CC_NG (GGML_CUDA_CC_OFFSET_MTHREADS + 0x310) // TBD
#define GGML_CUDA_CC_IS_MTHREADS(cc) (cc >= GGML_CUDA_CC_OFFSET_MTHREADS && cc < GGML_CUDA_CC_OFFSET_AMD)
#define GGML_CUDA_CC_IS_QY1(cc) (cc >= GGML_CUDA_CC_QY1 && cc < GGML_CUDA_CC_QY2)
#define GGML_CUDA_CC_IS_QY2(cc) (cc >= GGML_CUDA_CC_QY2 && cc < GGML_CUDA_CC_NEXT)
#define GGML_CUDA_CC_IS_QY2(cc) (cc >= GGML_CUDA_CC_QY2 && cc < GGML_CUDA_CC_NG)
#define GGML_CUDA_CC_IS_NG(cc) (cc >= GGML_CUDA_CC_NG)
#ifdef __CUDA_ARCH_LIST__

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@@ -1,6 +1,8 @@
#include "convert.cuh"
#include "dequantize.cuh"
#include <cstdint>
#define CUDA_Q8_0_NE_ALIGN 2048
template <int qk, int qr, dequantize_kernel_t dequantize_kernel, typename dst_t>
@@ -570,30 +572,46 @@ static void dequantize_row_iq4_xs_cuda(const void * vx, dst_t * y, const int64_t
}
template <typename src_t, typename dst_t>
static __global__ void convert_unary(const void * __restrict__ vx, dst_t * __restrict__ y, const int64_t k) {
const int64_t i = (int64_t)blockDim.x*blockIdx.x + threadIdx.x;
static __global__ void convert_unary(
const void * __restrict__ vx, dst_t * __restrict__ y, const int64_t ne00, const int64_t ne01, const int64_t ne02,
const int64_t s01, const int64_t s02, const int64_t s03) {
const int64_t i00 = (int64_t)blockDim.x*blockIdx.x + threadIdx.x;
if (i >= k) {
if (i00 >= ne00) {
return;
}
const int64_t i01 = blockIdx.y;
const int64_t i02 = blockIdx.z % ne02;
const int64_t i03 = blockIdx.z / ne02;
const src_t * x = (const src_t *) vx;
y[i] = float(x[i]);
const int64_t ix = i03*s03 + i02*s02 + i01*s01 + i00;
const int64_t iy = ((i03*ne02 + i02)*ne01 + i01)*ne00 + i00;
y[iy] = float(x[ix]);
}
template <typename src_t, typename dst_t>
static void convert_unary_cuda(const void * __restrict__ vx, dst_t * __restrict__ y, const int64_t k, cudaStream_t stream) {
const int num_blocks = (k + CUDA_DEQUANTIZE_BLOCK_SIZE - 1) / CUDA_DEQUANTIZE_BLOCK_SIZE;
convert_unary<src_t><<<num_blocks, CUDA_DEQUANTIZE_BLOCK_SIZE, 0, stream>>>(vx, y, k);
static void convert_unary_cuda(const void * vx, dst_t * y,
const int64_t ne00, const int64_t ne01, const int64_t ne02, const int64_t ne03,
const int64_t s01, const int64_t s02, const int64_t s03, cudaStream_t stream) {
const dim3 num_blocks((ne00 + CUDA_DEQUANTIZE_BLOCK_SIZE - 1) / CUDA_DEQUANTIZE_BLOCK_SIZE, ne01, ne02*ne03);
convert_unary<src_t><<<num_blocks, CUDA_DEQUANTIZE_BLOCK_SIZE, 0, stream>>>
(vx, y, ne00, ne01, ne02, s01, s02, s03);
}
template <typename src_t, typename dst_t>
static void convert_unary_cont_cuda(const void * vx, dst_t * y, const int64_t k, cudaStream_t stream) {
convert_unary_cuda<src_t>(vx, y, k, 1, 1, 1, k, k, k, stream);
}
to_bf16_cuda_t ggml_get_to_bf16_cuda(ggml_type type) {
switch (type) {
case GGML_TYPE_F32:
return convert_unary_cuda<float>;
return convert_unary_cont_cuda<float>;
case GGML_TYPE_F16:
return convert_unary_cuda<half>;
return convert_unary_cont_cuda<half>;
default:
return nullptr;
}
@@ -643,9 +661,9 @@ to_fp16_cuda_t ggml_get_to_fp16_cuda(ggml_type type) {
case GGML_TYPE_IQ3_S:
return dequantize_row_iq3_s_cuda;
case GGML_TYPE_F32:
return convert_unary_cuda<float>;
return convert_unary_cont_cuda<float>;
case GGML_TYPE_BF16:
return convert_unary_cuda<nv_bfloat16>;
return convert_unary_cont_cuda<nv_bfloat16>;
default:
return nullptr;
}
@@ -692,7 +710,18 @@ to_fp32_cuda_t ggml_get_to_fp32_cuda(ggml_type type) {
case GGML_TYPE_IQ3_S:
return dequantize_row_iq3_s_cuda;
case GGML_TYPE_F16:
return convert_unary_cuda<half>;
return convert_unary_cont_cuda<half>;
case GGML_TYPE_BF16:
return convert_unary_cont_cuda<nv_bfloat16>;
default:
return nullptr;
}
}
to_fp16_nc_cuda_t ggml_get_to_fp16_nc_cuda(ggml_type type) {
switch (type) {
case GGML_TYPE_F32:
return convert_unary_cuda<float>;
case GGML_TYPE_BF16:
return convert_unary_cuda<nv_bfloat16>;
default:

View File

@@ -3,7 +3,7 @@
#define CUDA_DEQUANTIZE_BLOCK_SIZE 256
template<typename T>
using to_t_cuda_t = void (*)(const void * __restrict__ x, T * __restrict__ y, int64_t k, cudaStream_t stream);
using to_t_cuda_t = void (*)(const void * x, T * y, int64_t k, cudaStream_t stream);
typedef to_t_cuda_t<float> to_fp32_cuda_t;
typedef to_t_cuda_t<half> to_fp16_cuda_t;
@@ -14,3 +14,13 @@ to_fp16_cuda_t ggml_get_to_fp16_cuda(ggml_type type);
to_bf16_cuda_t ggml_get_to_bf16_cuda(ggml_type type);
to_fp32_cuda_t ggml_get_to_fp32_cuda(ggml_type type);
// TODO more general support for non-contiguous inputs
template<typename T>
using to_t_nc_cuda_t = void (*)(const void * x, T * y,
int64_t ne00, int64_t ne01, int64_t ne02, int64_t ne03,
int64_t s01, int64_t s02, int64_t s03, cudaStream_t stream);
typedef to_t_nc_cuda_t<half> to_fp16_nc_cuda_t;
to_fp16_nc_cuda_t ggml_get_to_fp16_nc_cuda(ggml_type type);

View File

@@ -592,6 +592,8 @@ void ggml_cuda_cpy(ggml_backend_cuda_context & ctx, const ggml_tensor * src0, gg
dest_ptrs_d = ctx.cuda_graph->dest_ptrs_d;
graph_cpynode_index = ctx.cuda_graph->graph_cpynode_index;
}
#else
GGML_UNUSED(disable_indirection_for_this_node);
#endif
if (src0->type == src1->type && ggml_is_contiguous(src0) && ggml_is_contiguous(src1)) {
GGML_ASSERT(ggml_nbytes(src0) == ggml_nbytes(src1));
@@ -639,6 +641,8 @@ void ggml_cuda_cpy(ggml_backend_cuda_context & ctx, const ggml_tensor * src0, gg
if(ctx.cuda_graph->use_cpy_indirection && !disable_indirection_for_this_node) {
ctx.cuda_graph->graph_cpynode_index = graph_cpynode_index;
}
#else
GGML_UNUSED(disable_indirection_for_this_node);
#endif
}

View File

@@ -33,8 +33,8 @@ static __global__ void k_get_rows(
dfloat2 v;
dequantize_kernel(src0_row, ib, iqs, v);
dst_row[iybs + iqs + 0] = v.x;
dst_row[iybs + iqs + y_offset] = v.y;
dst_row[iybs + iqs + 0] = float(v.x);
dst_row[iybs + iqs + y_offset] = float(v.y);
}
template<typename src0_t, typename dst_t>
@@ -60,7 +60,7 @@ static __global__ void k_get_rows_float(
dst_t * dst_row = dst + i10*s1 + i11*s2 + i12*s3;
const src0_t * src0_row = (const src0_t *)((const char *) src0 + i01*nb01 + i11*nb02 + i12*nb03);
dst_row[i00] = src0_row[i00];
dst_row[i00] = float(src0_row[i00]);
}
template<typename grad_t, typename dst_t>
@@ -86,120 +86,159 @@ static __global__ void k_get_rows_back_float(
dst[dst_row*ncols + col] = sum;
}
template<int qk, int qr, dequantize_kernel_t dq>
static void get_rows_cuda(
const ggml_tensor * src0, const ggml_tensor * src1, ggml_tensor * dst,
const void * src0_dd, const int32_t * src1_dd, float * dst_dd, cudaStream_t stream) {
GGML_TENSOR_BINARY_OP_LOCALS
template<int qk, int qr, dequantize_kernel_t dq, typename dst_t>
static void get_rows_cuda_q(
const void * src0_d, const int32_t * src1_d, dst_t * dst_d,
const int64_t ne00, const size_t nb01, const size_t nb02, const size_t nb03,
const int64_t ne10, const int64_t ne11, const int64_t ne12, const size_t nb10, const size_t nb11, const size_t nb12,
const size_t nb1, const size_t nb2, const size_t nb3,
cudaStream_t stream) {
const dim3 block_dims(CUDA_GET_ROWS_BLOCK_SIZE, 1, 1);
const int block_num_x = (ne00 + 2*CUDA_GET_ROWS_BLOCK_SIZE - 1) / (2*CUDA_GET_ROWS_BLOCK_SIZE);
const dim3 block_nums(block_num_x, ne10, ne11*ne12);
// strides in elements
//const size_t s0 = nb0 / ggml_element_size(dst);
const size_t s1 = nb1 / ggml_element_size(dst);
const size_t s2 = nb2 / ggml_element_size(dst);
const size_t s3 = nb3 / ggml_element_size(dst);
// const size_t s0 = nb0 / sizeof(dst_t);
const size_t s1 = nb1 / sizeof(dst_t);
const size_t s2 = nb2 / sizeof(dst_t);
const size_t s3 = nb3 / sizeof(dst_t);
const size_t s10 = nb10 / ggml_element_size(src1);
const size_t s11 = nb11 / ggml_element_size(src1);
const size_t s12 = nb12 / ggml_element_size(src1);
//const size_t s13 = nb13 / ggml_element_size(src1);
const size_t s10 = nb10 / sizeof(int32_t);
const size_t s11 = nb11 / sizeof(int32_t);
const size_t s12 = nb12 / sizeof(int32_t);
// const size_t s13 = nb13 / sizeof(int32_t);
GGML_ASSERT(ne00 % 2 == 0);
k_get_rows<qk, qr, dq><<<block_nums, block_dims, 0, stream>>>(
src0_dd, src1_dd, dst_dd,
src0_d, src1_d, dst_d,
ne00, /*ne01, ne02, ne03,*/
/*ne10, ne11,*/ ne12, /*ne13,*/
/* s0,*/ s1, s2, s3,
/* nb00,*/ nb01, nb02, nb03,
s10, s11, s12/*, s13*/);
GGML_UNUSED(dst);
}
template<typename src0_t>
template<typename src0_t, typename dst_t>
static void get_rows_cuda_float(
const ggml_tensor * src0, const ggml_tensor * src1, ggml_tensor * dst,
const src0_t * src0_dd, const int32_t * src1_dd, float * dst_dd, cudaStream_t stream) {
GGML_TENSOR_BINARY_OP_LOCALS
GGML_ASSERT(ne13 == 1);
const src0_t * src0_d, const int32_t * src1_d, dst_t * dst_d,
const int64_t ne00, const size_t nb01, const size_t nb02, const size_t nb03,
const int64_t ne10, const int64_t ne11, const int64_t ne12, const size_t nb10, const size_t nb11, const size_t nb12,
const size_t nb1, const size_t nb2, const size_t nb3,
cudaStream_t stream) {
const dim3 block_dims(CUDA_GET_ROWS_BLOCK_SIZE, 1, 1);
const int block_num_x = (ne00 + CUDA_GET_ROWS_BLOCK_SIZE - 1) / CUDA_GET_ROWS_BLOCK_SIZE;
const dim3 block_nums(block_num_x, ne10, ne11*ne12);
// strides in elements
//const size_t s0 = nb0 / ggml_element_size(dst);
const size_t s1 = nb1 / ggml_element_size(dst);
const size_t s2 = nb2 / ggml_element_size(dst);
const size_t s3 = nb3 / ggml_element_size(dst);
// const size_t s0 = nb0 / sizeof(dst_t);
const size_t s1 = nb1 / sizeof(dst_t);
const size_t s2 = nb2 / sizeof(dst_t);
const size_t s3 = nb3 / sizeof(dst_t);
const size_t s10 = nb10 / ggml_element_size(src1);
const size_t s11 = nb11 / ggml_element_size(src1);
const size_t s12 = nb12 / ggml_element_size(src1);
//const size_t s13 = nb13 / ggml_element_size(src1);
const size_t s10 = nb10 / sizeof(int32_t);
const size_t s11 = nb11 / sizeof(int32_t);
const size_t s12 = nb12 / sizeof(int32_t);
// const size_t s13 = nb13 / sizeof(int32_t);
k_get_rows_float<<<block_nums, block_dims, 0, stream>>>(
src0_dd, src1_dd, dst_dd,
src0_d, src1_d, dst_d,
ne00, /*ne01, ne02, ne03,*/
/*ne10, ne11,*/ ne12, /*ne13,*/
/* s0,*/ s1, s2, s3,
/* nb00,*/ nb01, nb02, nb03,
s10, s11, s12/*, s13*/);
}
GGML_UNUSED(dst);
template <typename dst_t>
static void ggml_cuda_get_rows_switch_src0_type(
const void * src0_d, const ggml_type src0_type, const int32_t * src1_d, dst_t * dst_d,
const int64_t ne00, const size_t nb01, const size_t nb02, const size_t nb03,
const int64_t ne10, const int64_t ne11, const int64_t ne12, const size_t nb10, const size_t nb11, const size_t nb12,
const size_t nb1, const size_t nb2, const size_t nb3,
cudaStream_t stream) {
switch (src0_type) {
case GGML_TYPE_F16:
get_rows_cuda_float((const half *) src0_d, src1_d, dst_d,
ne00, nb01, nb02, nb03, ne10, ne11, ne12, nb10, nb11, nb12, nb1, nb2, nb3, stream);
break;
case GGML_TYPE_F32:
get_rows_cuda_float((const float *) src0_d, src1_d, dst_d,
ne00, nb01, nb02, nb03, ne10, ne11, ne12, nb10, nb11, nb12, nb1, nb2, nb3, stream);
break;
case GGML_TYPE_BF16:
get_rows_cuda_float((const nv_bfloat16 *) src0_d, src1_d, dst_d,
ne00, nb01, nb02, nb03, ne10, ne11, ne12, nb10, nb11, nb12, nb1, nb2, nb3, stream);
break;
case GGML_TYPE_Q4_0:
get_rows_cuda_q<QK4_0, QR4_0, dequantize_q4_0>(src0_d, src1_d, dst_d,
ne00, nb01, nb02, nb03, ne10, ne11, ne12, nb10, nb11, nb12, nb1, nb2, nb3, stream);
break;
case GGML_TYPE_Q4_1:
get_rows_cuda_q<QK4_1, QR4_1, dequantize_q4_1>(src0_d, src1_d, dst_d,
ne00, nb01, nb02, nb03, ne10, ne11, ne12, nb10, nb11, nb12, nb1, nb2, nb3, stream);
break;
case GGML_TYPE_Q5_0:
get_rows_cuda_q<QK5_0, QR5_0, dequantize_q5_0>(src0_d, src1_d, dst_d,
ne00, nb01, nb02, nb03, ne10, ne11, ne12, nb10, nb11, nb12, nb1, nb2, nb3, stream);
break;
case GGML_TYPE_Q5_1:
get_rows_cuda_q<QK5_1, QR5_1, dequantize_q5_1>(src0_d, src1_d, dst_d,
ne00, nb01, nb02, nb03, ne10, ne11, ne12, nb10, nb11, nb12, nb1, nb2, nb3, stream);
break;
case GGML_TYPE_Q8_0:
get_rows_cuda_q<QK8_0, QR8_0, dequantize_q8_0>(src0_d, src1_d, dst_d,
ne00, nb01, nb02, nb03, ne10, ne11, ne12, nb10, nb11, nb12, nb1, nb2, nb3, stream);
break;
default:
// TODO: k-quants
GGML_ABORT("%s: unsupported src0 type: %s\n", __func__, ggml_type_name(src0_type));
break;
}
}
void get_rows_cuda(
const void * src0_d, ggml_type src0_type, const int32_t * src1_d, void * dst_d, ggml_type dst_type,
int64_t ne00, size_t nb01, size_t nb02, size_t nb03,
int64_t ne10, int64_t ne11, int64_t ne12, size_t nb10, size_t nb11, size_t nb12,
size_t nb1, size_t nb2, size_t nb3,
cudaStream_t stream) {
switch (dst_type) {
case GGML_TYPE_F32:
ggml_cuda_get_rows_switch_src0_type(src0_d, src0_type, src1_d, (float *) dst_d,
ne00, nb01, nb02, nb03, ne10, ne11, ne12, nb10, nb11, nb12, nb1, nb2, nb3, stream);
break;
case GGML_TYPE_F16:
ggml_cuda_get_rows_switch_src0_type(src0_d, src0_type, src1_d, (half *) dst_d,
ne00, nb01, nb02, nb03, ne10, ne11, ne12, nb10, nb11, nb12, nb1, nb2, nb3, stream);
break;
case GGML_TYPE_BF16:
ggml_cuda_get_rows_switch_src0_type(src0_d, src0_type, src1_d, (nv_bfloat16 *) dst_d,
ne00, nb01, nb02, nb03, ne10, ne11, ne12, nb10, nb11, nb12, nb1, nb2, nb3, stream);
break;
default:
GGML_ABORT("%s: unsupported dst type: %s\n", __func__, ggml_type_name(dst_type));
break;
}
}
void ggml_cuda_op_get_rows(ggml_backend_cuda_context & ctx, ggml_tensor * dst) {
const ggml_tensor * src0 = dst->src[0];
const ggml_tensor * src1 = dst->src[1];
const void * src0_d = (const void *) src0->data;
const int32_t * src1_d = (const int32_t *) src1->data;
float * dst_d = (float *) dst->data;
cudaStream_t stream = ctx.stream();
GGML_TENSOR_BINARY_OP_LOCALS
GGML_ASSERT(src1->type == GGML_TYPE_I32);
GGML_ASSERT(dst->type == GGML_TYPE_F32);
GGML_ASSERT(ne13 == 1);
GGML_ASSERT(src0->nb[0] == ggml_type_size(src0->type));
GGML_ASSERT(src1->nb[0] == ggml_type_size(src1->type));
GGML_ASSERT(dst->nb[0] == ggml_type_size(dst->type));
switch (src0->type) {
case GGML_TYPE_F16:
get_rows_cuda_float(src0, src1, dst, (const half *) src0_d, src1_d, dst_d, stream);
break;
case GGML_TYPE_F32:
get_rows_cuda_float(src0, src1, dst, (const float *) src0_d, src1_d, dst_d, stream);
break;
case GGML_TYPE_Q4_0:
get_rows_cuda<QK4_0, QR4_0, dequantize_q4_0>(src0, src1, dst, src0_d, src1_d, dst_d, stream);
break;
case GGML_TYPE_Q4_1:
get_rows_cuda<QK4_1, QR4_1, dequantize_q4_1>(src0, src1, dst, src0_d, src1_d, dst_d, stream);
break;
case GGML_TYPE_Q5_0:
get_rows_cuda<QK5_0, QR5_0, dequantize_q5_0>(src0, src1, dst, src0_d, src1_d, dst_d, stream);
break;
case GGML_TYPE_Q5_1:
get_rows_cuda<QK5_1, QR5_1, dequantize_q5_1>(src0, src1, dst, src0_d, src1_d, dst_d, stream);
break;
case GGML_TYPE_Q8_0:
get_rows_cuda<QK8_0, QR8_0, dequantize_q8_0>(src0, src1, dst, src0_d, src1_d, dst_d, stream);
break;
default:
// TODO: k-quants
GGML_ABORT("%s: unsupported type: %s\n", __func__, ggml_type_name(src0->type));
break;
}
get_rows_cuda(src0->data, src0->type, (const int32_t *) src1->data, dst->data, dst->type,
ne00, nb01, nb02, nb03, ne10, ne11, ne12, nb10, nb11, nb12, nb1, nb2, nb3, stream);
}
void ggml_cuda_op_get_rows_back(ggml_backend_cuda_context & ctx, ggml_tensor * dst) {

View File

@@ -3,6 +3,13 @@
#define CUDA_GET_ROWS_BLOCK_SIZE 256
#define CUDA_GET_ROWS_BACK_BLOCK_SIZE 256
void get_rows_cuda(
const void * src0_d, ggml_type src0_type, const int32_t * src1_d, void * dst_d, ggml_type dst_type,
int64_t ne00, size_t nb01, size_t nb02, size_t nb03,
int64_t ne10, int64_t ne11, int64_t ne12, size_t nb10, size_t nb11, size_t nb12,
size_t nb1, size_t nb2, size_t nb3,
cudaStream_t stream);
void ggml_cuda_op_get_rows(ggml_backend_cuda_context & ctx, ggml_tensor * dst);
void ggml_cuda_op_get_rows_back(ggml_backend_cuda_context & ctx, ggml_tensor * dst);

View File

@@ -1551,7 +1551,7 @@ static void ggml_cuda_op_mul_mat(
if (src1_on_device && src1_is_contiguous) {
quantize_src1(
dev[id].src1_ddf, dev[id].src1_ddq, src0->type, ne10,
dev[id].src1_ddf, nullptr, dev[id].src1_ddq, src0->type, ne10,
nb11/sizeof(float), nb12/sizeof(float), nb13/sizeof(float),
src1_padded_col_size, ne11, ne12, ne13, stream);
CUDA_CHECK(cudaGetLastError());
@@ -1649,7 +1649,7 @@ static void ggml_cuda_op_mul_mat(
if (quantize_src1 && !src1_is_contiguous) {
quantize_src1(
src1_ddf_i, src1_ddq_i, src0->type, ne10, ne10, ne11*ne10, ne12*ne11*ne10,
src1_ddf_i, nullptr, src1_ddq_i, src0->type, ne10, ne10, ne11*ne10, ne12*ne11*ne10,
src1_padded_col_size, src1_ncols, 1, 1, stream);
CUDA_CHECK(cudaGetLastError());
}
@@ -1720,15 +1720,15 @@ static __global__ void k_compute_batched_ptrs(
size_t nb12, size_t nb13,
size_t nbd2, size_t nbd3,
int64_t r2, int64_t r3) {
int64_t i13 = blockIdx.x * blockDim.x + threadIdx.x;
int64_t i12 = blockIdx.y * blockDim.y + threadIdx.y;
const int64_t i13 = blockIdx.x * blockDim.x + threadIdx.x;
const int64_t i12 = blockIdx.y * blockDim.y + threadIdx.y;
if (i13 >= ne13 || i12 >= ne12) {
return;
}
int64_t i03 = i13 / r3;
int64_t i02 = i12 / r2;
const int64_t i03 = i13 / r3;
const int64_t i02 = i12 / r2;
ptrs_src[0*ne23 + i12 + i13*ne12] = (const char *) src0_as_f16 + i02*nb02 + i03*nb03;
ptrs_src[1*ne23 + i12 + i13*ne12] = (const char *) src1_as_f16 + i12*nb12 + i13*nb13;
@@ -1742,6 +1742,10 @@ static void ggml_cuda_mul_mat_batched_cublas(ggml_backend_cuda_context & ctx, co
GGML_ASSERT(ggml_backend_buffer_is_cuda(src0->buffer));
GGML_ASSERT(src0->type == GGML_TYPE_F16);
// Byte offsets and tensor dimensions are currently used in an inconsistent way for dst.
// As long as dst is contiguous this does not matter though.
GGML_ASSERT(ggml_is_contiguous(dst));
GGML_TENSOR_BINARY_OP_LOCALS
const int64_t ne_dst = ggml_nelements(dst);
@@ -1750,21 +1754,31 @@ static void ggml_cuda_mul_mat_batched_cublas(ggml_backend_cuda_context & ctx, co
CUBLAS_CHECK(cublasSetStream(ctx.cublas_handle(), main_stream));
void * src0_ddq = src0->data;
half * src0_f16 = (half *) src0_ddq;
float * src1_ddf = (float *) src1->data;
float * dst_ddf = (float *) dst->data;
const half * src0_f16 = (const half *) src0->data;
float * dst_ddf = (float *) dst->data;
const half * src1_f16 = (const half *) src1->data;
const size_t ts_src1 = ggml_type_size(src1->type);
GGML_ASSERT(nb10 == ts_src1);
int64_t s11 = nb11 / ts_src1;
int64_t s12 = nb12 / ts_src1;
int64_t s13 = nb13 / ts_src1;
ggml_cuda_pool_alloc<half> src1_f16_alloc(ctx.pool());
// convert src1 to fp16
ggml_cuda_pool_alloc<half> src1_f16_alloc(ctx.pool());
if (src1->type != GGML_TYPE_F16) {
const to_fp16_cuda_t to_fp16_cuda = ggml_get_to_fp16_cuda(src1->type);
const to_fp16_nc_cuda_t to_fp16_cuda = ggml_get_to_fp16_nc_cuda(src1->type);
const int64_t ne_src1 = ggml_nelements(src1);
src1_f16_alloc.alloc(ne_src1);
GGML_ASSERT(to_fp16_cuda != nullptr);
to_fp16_cuda(src1_ddf, src1_f16_alloc.get(), ne_src1, main_stream);
to_fp16_cuda(src1_f16, src1_f16_alloc.get(), ne10, ne11, ne12, ne13, s11, s12, s13, main_stream);
src1_f16 = src1_f16_alloc.get();
s11 = ne10;
s12 = ne11*s11;
s13 = ne12*s12;
}
half * src1_f16 = src1->type == GGML_TYPE_F16 ? (half *) src1_ddf : src1_f16_alloc.get();
ggml_cuda_pool_alloc<half> dst_f16(ctx.pool());
char * dst_t;
@@ -1824,13 +1838,13 @@ static void ggml_cuda_mul_mat_batched_cublas(ggml_backend_cuda_context & ctx, co
int i02 = i12 / r2;
CUBLAS_CHECK(
cublasGemmEx(g_cublas_handles[g_main_device], CUBLAS_OP_T, CUBLAS_OP_N,
ne01, ne11, ne10,
alpha, (const char *) src0_as_f16 + i02*src0->nb[2] + i03*src0->nb[3] , CUDA_R_16F, nb01/sizeof(half),
(const char *) src1_as_f16 + i12*src1->nb[2]/2 + i13*src1->nb[3]/2, CUDA_R_16F, nb11/sizeof(float),
beta, ( char *) dst_t + i12*nbd2 + i13*nbd3, cu_data_type, ne01,
cu_compute_type,
CUBLAS_GEMM_DEFAULT_TENSOR_OP));
cublasGemmEx(ctx.cublas_handle(), CUBLAS_OP_T, CUBLAS_OP_N,
ne01, ne11, ne10,
alpha, (const char *) src0_f16 + i03*nb03 + i02*nb02, CUDA_R_16F, nb01/sizeof(half),
src1_f16 + i13*s13 + i12*s12, CUDA_R_16F, s11,
beta, ( char *) dst_t + i13*nbd3 + i12*nbd2, cu_data_type, ne0,
cu_compute_type,
CUBLAS_GEMM_DEFAULT_TENSOR_OP));
}
}
}
@@ -1841,15 +1855,15 @@ static void ggml_cuda_mul_mat_batched_cublas(ggml_backend_cuda_context & ctx, co
CUBLAS_CHECK(
cublasGemmStridedBatchedEx(ctx.cublas_handle(), CUBLAS_OP_T, CUBLAS_OP_N,
ne01, ne11, ne10,
alpha, (const char *) src0_f16, CUDA_R_16F, nb01/nb00, nb02/nb00, // strideA
(const char *) src1_f16, CUDA_R_16F, nb11/nb10, nb12/nb10, // strideB
beta, ( char *) dst_t, cu_data_type, ne01, nb2/nb0, // strideC
alpha, src0_f16, CUDA_R_16F, nb01/nb00, nb02/nb00, // strideA
src1_f16, CUDA_R_16F, s11, s12, // strideB
beta, dst_t, cu_data_type, ne0, ne1*ne0, // strideC
ne12*ne13,
cu_compute_type,
CUBLAS_GEMM_DEFAULT_TENSOR_OP));
} else {
// use cublasGemmBatchedEx
const int ne23 = ne12*ne13;
const int64_t ne23 = ne12*ne13;
ggml_cuda_pool_alloc<const void *> ptrs_src(ctx.pool(), 2*ne23);
ggml_cuda_pool_alloc< void *> ptrs_dst(ctx.pool(), 1*ne23);
@@ -1861,8 +1875,8 @@ static void ggml_cuda_mul_mat_batched_cublas(ggml_backend_cuda_context & ctx, co
ne12, ne13,
ne23,
nb02, nb03,
src1->type == GGML_TYPE_F16 ? nb12 : nb12/2,
src1->type == GGML_TYPE_F16 ? nb13 : nb13/2,
src1->type == GGML_TYPE_F16 ? nb12 : s12*sizeof(half),
src1->type == GGML_TYPE_F16 ? nb13 : s13*sizeof(half),
nbd2, nbd3,
r2, r3);
CUDA_CHECK(cudaGetLastError());
@@ -1871,8 +1885,8 @@ static void ggml_cuda_mul_mat_batched_cublas(ggml_backend_cuda_context & ctx, co
cublasGemmBatchedEx(ctx.cublas_handle(), CUBLAS_OP_T, CUBLAS_OP_N,
ne01, ne11, ne10,
alpha, (const void **) (ptrs_src.get() + 0*ne23), CUDA_R_16F, nb01/nb00,
(const void **) (ptrs_src.get() + 1*ne23), CUDA_R_16F, nb11/nb10,
beta, ( void **) (ptrs_dst.get() + 0*ne23), cu_data_type, ne01,
(const void **) (ptrs_src.get() + 1*ne23), CUDA_R_16F, s11,
beta, ( void **) (ptrs_dst.get() + 0*ne23), cu_data_type, ne0,
ne23,
cu_compute_type,
CUBLAS_GEMM_DEFAULT_TENSOR_OP));
@@ -1935,8 +1949,10 @@ static void ggml_cuda_mul_mat(ggml_backend_cuda_context & ctx, const ggml_tensor
ggml_cuda_mul_mat_vec(ctx, src0, src1, nullptr, dst);
} else if (!split && use_mul_mat_vec_q) {
ggml_cuda_mul_mat_vec_q(ctx, src0, src1, nullptr, dst);
} else if (!split && src0->type == GGML_TYPE_F16 && (src1->type == GGML_TYPE_F16 || !any_gpus_with_slow_fp16)
&& !ggml_is_transposed(src0) && !ggml_is_transposed(src1) && src1->ne[2]*src1->ne[3] > 1) {
} else if (!split && use_mul_mat_q) {
ggml_cuda_mul_mat_q(ctx, src0, src1, nullptr, dst);
} else if (!split && src0->type == GGML_TYPE_F16 && (src1->type == GGML_TYPE_F16 || !any_gpus_with_slow_fp16) &&
!ggml_is_transposed(src0) && !ggml_is_transposed(src1) && src1->ne[2]*src1->ne[3] > 1) {
// general KQ + KQV multi-batch without FlashAttention
ggml_cuda_mul_mat_batched_cublas(ctx, src0, src1, dst);
} else if (use_mul_mat_vec) {
@@ -1950,183 +1966,145 @@ static void ggml_cuda_mul_mat(ggml_backend_cuda_context & ctx, const ggml_tensor
}
}
struct mmid_row_mapping {
int32_t i1;
int32_t i2;
};
static __global__ void k_copy_src1_to_contiguous(const char * __restrict__ src1_original, char * __restrict__ src1_contiguous,
int * __restrict__ cur_src1_row, mmid_row_mapping * __restrict__ row_mapping,
const char * __restrict ids, int64_t i02, size_t ids_nb1, size_t ids_nb0,
int64_t ne11, int64_t ne10,
size_t nb11, size_t nb12) {
int32_t iid1 = blockIdx.x;
int32_t id = blockIdx.y;
const int32_t row_id_i = *(const int32_t *) (ids + iid1*ids_nb1 + id*ids_nb0);
if (row_id_i != i02) {
return;
}
const int64_t i11 = id % ne11;
const int64_t i12 = iid1;
__shared__ int src1_row;
if (threadIdx.x == 0) {
src1_row = atomicAdd(cur_src1_row, 1);
row_mapping[src1_row] = {id, iid1};
}
__syncthreads();
const float * src1_row_original = (const float *)(src1_original + i11*nb11 + i12*nb12);
float * src1_row_contiguous = (float *)(src1_contiguous + src1_row*nb11);
for (int i = threadIdx.x; i < ne10; i += blockDim.x) {
src1_row_contiguous[i] = src1_row_original[i];
}
}
static __global__ void k_copy_dst_from_contiguous(char * __restrict__ dst_original, const char * __restrict__ dst_contiguous,
const mmid_row_mapping * __restrict__ row_mapping,
int64_t ne0,
size_t nb1, size_t nb2) {
int32_t i = blockIdx.x;
const int32_t i1 = row_mapping[i].i1;
const int32_t i2 = row_mapping[i].i2;
const float * dst_row_contiguous = (const float *)(dst_contiguous + i*nb1);
float * dst_row_original = (float *)(dst_original + i1*nb1 + i2*nb2);
for (int j = threadIdx.x; j < ne0; j += blockDim.x) {
dst_row_original[j] = dst_row_contiguous[j];
}
}
static void ggml_cuda_mul_mat_id(ggml_backend_cuda_context & ctx, ggml_tensor * dst) {
const ggml_tensor * src0 = dst->src[0];
const ggml_tensor * src1 = dst->src[1];
const ggml_tensor * ids = dst->src[2];
GGML_ASSERT(src1->type == GGML_TYPE_F32);
GGML_ASSERT(dst->type == GGML_TYPE_F32);
GGML_ASSERT(!ggml_backend_buft_is_cuda_split(src0->buffer->buft) && "mul_mat_id does not support split buffers");
GGML_TENSOR_BINARY_OP_LOCALS
if (src1->type == GGML_TYPE_F32 && dst->type == GGML_TYPE_F32 && ne2 == 1) {
if (ggml_is_quantized(src0->type)) {
ggml_cuda_mul_mat_vec_q(ctx, src0, src1, ids, dst);
} else {
ggml_cuda_mul_mat_vec(ctx, src0, src1, ids, dst);
}
return;
}
const int cc = ggml_cuda_info().devices[ggml_cuda_get_device()].cc;
GGML_ASSERT(!ggml_backend_buft_is_cuda_split(src0->buffer->buft) && "mul_mat_id does not support split buffers");
if (src1->type == GGML_TYPE_F32 && dst->type == GGML_TYPE_F32) {
if (ne2 == 1) {
if (ggml_is_quantized(src0->type)) {
ggml_cuda_mul_mat_vec_q(ctx, src0, src1, ids, dst);
} else {
ggml_cuda_mul_mat_vec(ctx, src0, src1, ids, dst);
}
return;
}
if (ggml_cuda_should_use_mmq(src0->type, cc, ne12)) {
ggml_cuda_mul_mat_q(ctx, src0, src1, ids, dst);
return;
}
}
cudaStream_t stream = ctx.stream();
const int64_t n_as = ne02;
const int64_t n_ids = ids->ne[0];
GGML_ASSERT(nb12 % nb11 == 0);
GGML_ASSERT(nb2 % nb1 == 0);
const ggml_type type_src1_sorted = (src0->type == GGML_TYPE_F16 && !fast_fp16_hardware_available(cc))
|| ggml_is_quantized(src0->type) ? GGML_TYPE_F32 : src0->type;
const ggml_type type_dst_sorted = GGML_TYPE_F32;
const size_t ts_src1_sorted = ggml_type_size(type_src1_sorted);
const size_t ts_dst_sorted = ggml_type_size(type_dst_sorted);
const int64_t n_expert_used = ids->ne[0];
const int64_t ne_get_rows = ne12 * n_expert_used;
std::vector<int32_t> ids_to_sorted_host;
ids_to_sorted_host.reserve(2*ne_get_rows);
std::vector<int32_t> ids_from_sorted_host(ne_get_rows);
ggml_cuda_pool_alloc<int32_t> ids_buf_dev(ctx.pool(), 2*ne_get_rows);
std::vector<int32_t> tokens_per_expert(ne02);
ggml_cuda_pool_alloc<char> src1_sorted(ctx.pool(), ne12*n_expert_used*ne10*ts_src1_sorted);
ggml_cuda_pool_alloc<char> dst_sorted(ctx.pool(), ne2 *n_expert_used* ne0*ts_dst_sorted);
std::vector<char> ids_host(ggml_nbytes(ids));
const char * ids_dev = (const char *) ids->data;
CUDA_CHECK(cudaMemcpyAsync(ids_host.data(), ids_dev, ggml_nbytes(ids), cudaMemcpyDeviceToHost, stream));
CUDA_CHECK(cudaMemcpyAsync(ids_host.data(), ids->data, ggml_nbytes(ids), cudaMemcpyDeviceToHost, stream));
CUDA_CHECK(cudaStreamSynchronize(stream));
ggml_tensor src0_row = *src0;
ggml_tensor src1_row = *src1;
ggml_tensor dst_row = *dst;
char * src0_original = (char *) src0->data;
char * src1_original = (char *) src1->data;
char * dst_original = (char *) dst->data;
src0_row.ne[2] = 1;
src0_row.ne[3] = 1;
src0_row.nb[3] = nb02;
src1_row.ne[1] = 1;
src1_row.ne[2] = 1;
src1_row.ne[3] = 1;
src1_row.nb[2] = nb11;
src1_row.nb[3] = nb11;
dst_row.ne[1] = 1;
dst_row.ne[2] = 1;
dst_row.ne[3] = 1;
dst_row.nb[2] = nb1;
dst_row.nb[3] = nb1;
ggml_cuda_pool_alloc<char> src1_contiguous(ctx.pool(), sizeof(float)*ggml_nelements(src1));
ggml_cuda_pool_alloc<char> dst_contiguous(ctx.pool(), sizeof(float)*ggml_nelements(dst));
src1_row.data = src1_contiguous.get();
dst_row.data = dst_contiguous.get();
for (int64_t i02 = 0; i02 < n_as; i02++) {
int64_t num_src1_rows = 0;
for (int64_t iid1 = 0; iid1 < ids->ne[1]; iid1++) {
for (int64_t id = 0; id < n_ids; id++) {
const int32_t row_id_i = *(const int32_t *) (ids_host.data() + iid1*ids->nb[1] + id*ids->nb[0]);
GGML_ASSERT(row_id_i >= 0 && row_id_i < n_as);
if (row_id_i != i02) {
continue;
for (int64_t i02 = 0; i02 < ne02; ++i02) { // expert matrices
for (int64_t i12 = 0; i12 < ne12; ++i12) { // tokens
for (int64_t iex = 0; iex < n_expert_used; ++iex) {
const int32_t expert_to_use = *(const int32_t *)(ids_host.data() + i12*ids->nb[1] + iex*ids->nb[0]);
assert(expert_to_use >= 0 && expert_to_use < ne02);
if (expert_to_use == i02) {
ids_from_sorted_host[i12*n_expert_used + iex] = ids_to_sorted_host.size();
ids_to_sorted_host.push_back(i12*ne11 + iex % ne11);
tokens_per_expert[i02]++;
break;
}
num_src1_rows++;
}
}
}
GGML_ASSERT(ids_to_sorted_host.size() == size_t(ne_get_rows));
if (num_src1_rows == 0) {
ids_to_sorted_host.insert(ids_to_sorted_host.end(), ids_from_sorted_host.begin(), ids_from_sorted_host.end());
CUDA_CHECK(cudaMemcpyAsync(ids_buf_dev.ptr, ids_to_sorted_host.data(), 2*ne_get_rows*sizeof(int32_t), cudaMemcpyHostToDevice, stream));
CUDA_CHECK(cudaStreamSynchronize(stream));
const int32_t * ids_to_sorted = ids_buf_dev.ptr + 0*ne_get_rows;
const int32_t * ids_from_sorted = ids_buf_dev.ptr + 1*ne_get_rows;
get_rows_cuda(src1->data, src1->type, ids_to_sorted, src1_sorted.ptr, type_src1_sorted,
ne10, nb11, nb12, nb13,
ne_get_rows, 1, 1, sizeof(int32_t), ne_get_rows*sizeof(int32_t), ne_get_rows*sizeof(int32_t),
ne10*ts_src1_sorted, ne_get_rows*ne10*ts_src1_sorted, ne_get_rows*ne10*ts_src1_sorted, stream);
CUDA_CHECK(cudaGetLastError());
char * src1_data_cur = (char *) src1_sorted.ptr;
char * dst_data_cur = (char *) dst_sorted.ptr;
for (int64_t i02 = 0; i02 < ne02; ++i02) {
if (tokens_per_expert[i02] == 0) {
continue;
}
ggml_cuda_pool_alloc<int> dev_cur_src1_row(ctx.pool(), 1);
ggml_cuda_pool_alloc<mmid_row_mapping> dev_row_mapping(ctx.pool(), num_src1_rows);
CUDA_CHECK(cudaMemsetAsync(dev_cur_src1_row.get(), 0, sizeof(int), stream));
ggml_tensor src0_slice = *src0;
src0_slice.ne[2] = 1;
src0_slice.nb[3] = src0_slice.nb[2];
src0_slice.data = (char *) src0->data + i02*nb02;
{
dim3 block_dims(std::min((unsigned int)ne10, 768u));
dim3 grid_dims(ids->ne[1], n_ids);
k_copy_src1_to_contiguous<<<grid_dims, block_dims, 0, stream>>>(
src1_original, src1_contiguous.get(),
dev_cur_src1_row.get(), dev_row_mapping.get(),
ids_dev, i02, ids->nb[1], ids->nb[0],
ne11, ne10,
nb11, nb12);
CUDA_CHECK(cudaGetLastError());
}
ggml_tensor src1_slice;
memset(&src1_slice, 0, sizeof(src1_slice));
src1_slice.buffer = src1->buffer;
src1_slice.type = type_src1_sorted;
src1_slice.ne[0] = ne10;
src1_slice.ne[1] = tokens_per_expert[i02];
src1_slice.ne[2] = 1;
src1_slice.ne[3] = 1;
src1_slice.nb[0] = ts_src1_sorted;
src1_slice.nb[1] = src1_slice.ne[0] * src1_slice.nb[0];
src1_slice.nb[2] = src1_slice.ne[1] * src1_slice.nb[1];
src1_slice.nb[3] = src1_slice.ne[2] * src1_slice.nb[2];
src1_slice.data = src1_data_cur;
src0_row.data = src0_original + i02*nb02;
ggml_tensor dst_slice;
memset(&dst_slice, 0, sizeof(dst_slice));
dst_slice.buffer = dst->buffer;
dst_slice.type = type_dst_sorted;
dst_slice.ne[0] = ne0;
dst_slice.ne[1] = tokens_per_expert[i02];
dst_slice.ne[2] = 1;
dst_slice.ne[3] = 1;
dst_slice.nb[0] = ts_dst_sorted;
dst_slice.nb[1] = dst_slice.ne[0] * dst_slice.nb[0];
dst_slice.nb[2] = dst_slice.ne[1] * dst_slice.nb[1];
dst_slice.nb[3] = dst_slice.ne[2] * dst_slice.nb[2];
dst_slice.data = dst_data_cur;
GGML_ASSERT(nb11 == sizeof(float)*ne10);
GGML_ASSERT(nb1 == sizeof(float)*ne0);
ggml_cuda_mul_mat(ctx, &src0_slice, &src1_slice, &dst_slice);
CUDA_CHECK(cudaGetLastError());
src1_row.ne[1] = num_src1_rows;
src1_row.nb[1] = nb11;
src1_row.nb[2] = num_src1_rows*nb11;
src1_row.nb[3] = num_src1_rows*nb11;
dst_row.ne[1] = num_src1_rows;
dst_row.nb[1] = nb1;
dst_row.nb[2] = num_src1_rows*nb1;
dst_row.nb[3] = num_src1_rows*nb1;
ggml_cuda_mul_mat(ctx, &src0_row, &src1_row, &dst_row);
{
dim3 block_dims(std::min((unsigned int)ne0, 768u));
dim3 grid_dims(num_src1_rows);
k_copy_dst_from_contiguous<<<grid_dims, block_dims, 0, stream>>>(
dst_original, dst_contiguous.get(),
dev_row_mapping.get(),
ne0,
nb1, nb2);
CUDA_CHECK(cudaGetLastError());
}
src1_data_cur += src1_slice.nb[2];
dst_data_cur += dst_slice.nb[2];
}
get_rows_cuda(dst_sorted.ptr, type_dst_sorted, ids_from_sorted, dst->data, dst->type,
ne0, ne0*ts_dst_sorted, ne_get_rows*ne0*ts_dst_sorted, ne_get_rows*ne0*ts_dst_sorted,
ne_get_rows, 1, 1, sizeof(int32_t), ne_get_rows*sizeof(int32_t), ne_get_rows*sizeof(int32_t),
nb1, nb2, nb3, stream);
}
static bool ggml_cuda_compute_forward(ggml_backend_cuda_context & ctx, struct ggml_tensor * dst) {

View File

@@ -1,37 +1,10 @@
#include "mmq.cuh"
#include "quantize.cuh"
void ggml_cuda_op_mul_mat_q(
ggml_backend_cuda_context & ctx,
const ggml_tensor * src0, const ggml_tensor * src1, ggml_tensor * dst, const char * src0_dd_i, const float * src1_ddf_i,
const char * src1_ddq_i, float * dst_dd_i, const int64_t row_low, const int64_t row_high, const int64_t src1_ncols,
const int64_t src1_padded_row_size, cudaStream_t stream) {
#include <vector>
const int64_t ne00 = src0->ne[0];
const int64_t ne10 = src1->ne[0];
const int64_t ne11 = src1->ne[1];
GGML_ASSERT(ne10 % QK8_1 == 0);
const int64_t ne0 = dst->ne[0];
const int64_t row_diff = row_high - row_low;
const int64_t stride00 = ne00 / ggml_blck_size(src0->type);
int id = ggml_cuda_get_device();
const int cc = ggml_cuda_info().devices[id].cc;
// the main device has a larger memory buffer to hold the results from all GPUs
// nrows_dst == nrows of the matrix that the kernel writes into
const int64_t nrows_dst = id == ctx.device ? ne0 : row_diff;
// The stream-k decomposition is only faster for recent NVIDIA GPUs.
// Also its fixup needs to allocate a temporary buffer in the memory pool.
// There are multiple parallel CUDA streams for src1_ncols != ne11 which would introduce a race condition for this buffer.
const bool use_stream_k = GGML_CUDA_CC_IS_NVIDIA(cc) &&
ggml_cuda_highest_compiled_arch(cc) >= GGML_CUDA_CC_VOLTA && src1_ncols == ne11;
const mmq_args args = {src0_dd_i, src1_ddq_i, dst_dd_i, ne00, row_diff, stride00, src1_padded_row_size, src1_ncols, ne11, nrows_dst, use_stream_k};
switch (src0->type) {
static void ggml_cuda_mul_mat_q_switch_type(ggml_backend_cuda_context & ctx, const mmq_args & args, cudaStream_t stream) {
switch (args.type_x) {
case GGML_TYPE_Q4_0:
mul_mat_q_case<GGML_TYPE_Q4_0>(ctx, args, stream);
break;
@@ -90,10 +63,195 @@ void ggml_cuda_op_mul_mat_q(
GGML_ABORT("fatal error");
break;
}
}
void ggml_cuda_mul_mat_q(
ggml_backend_cuda_context & ctx, const ggml_tensor * src0, const ggml_tensor * src1, const ggml_tensor * ids, ggml_tensor * dst) {
GGML_ASSERT( src1->type == GGML_TYPE_F32);
GGML_ASSERT( dst->type == GGML_TYPE_F32);
GGML_ASSERT(!ids || ids->type == GGML_TYPE_I32); // Optional, used for batched GGML_MUL_MAT_ID.
GGML_TENSOR_BINARY_OP_LOCALS;
cudaStream_t stream = ctx.stream();
const int cc = ggml_cuda_info().devices[ggml_cuda_get_device()].cc;
const size_t ts_src0 = ggml_type_size(src0->type);
const size_t ts_src1 = ggml_type_size(src1->type);
const size_t ts_dst = ggml_type_size(dst->type);
GGML_ASSERT( nb00 == ts_src0);
GGML_ASSERT( nb10 == ts_src1);
GGML_ASSERT( nb0 == ts_dst);
GGML_ASSERT(!ids || ids->nb[0] == ggml_type_size(ids->type));
const char * src0_d = (const char *) src0->data;
const float * src1_d = (const float *) src1->data;
float * dst_d = (float *) dst->data;
const int64_t ne10_padded = GGML_PAD(ne10, MATRIX_ROW_PADDING);
const int64_t s01 = src0->nb[1] / ts_src0;
const int64_t s1 = dst->nb[1] / ts_dst;
const int64_t s02 = src0->nb[2] / ts_src0;
const int64_t s2 = dst->nb[2] / ts_dst;
const int64_t s03 = src0->nb[3] / ts_src0;
const int64_t s3 = dst->nb[3] / ts_dst;
const bool use_stream_k = GGML_CUDA_CC_IS_NVIDIA(cc) && ggml_cuda_highest_compiled_arch(cc) >= GGML_CUDA_CC_VOLTA;
if (!ids) {
const size_t nbytes_src1_q8_1 = ne13*ne12 * ne11*ne10_padded * sizeof(block_q8_1)/QK8_1 +
get_mmq_x_max_host(cc)*sizeof(block_q8_1_mmq);
ggml_cuda_pool_alloc<char> src1_q8_1(ctx.pool(), nbytes_src1_q8_1);
{
const int64_t s11 = src1->nb[1] / ts_src1;
const int64_t s12 = src1->nb[2] / ts_src1;
const int64_t s13 = src1->nb[3] / ts_src1;
quantize_mmq_q8_1_cuda(src1_d, nullptr, src1_q8_1.get(), src0->type,
ne10, s11, s12, s13, ne10_padded, ne11, ne12, ne13, stream);
}
const int64_t s12 = ne11*ne10_padded * sizeof(block_q8_1)/(QK8_1*sizeof(int));
const int64_t s13 = ne12*s12;
const mmq_args args = {
src0_d, src0->type, (const int *) src1_q8_1.ptr, nullptr, nullptr, dst_d,
ne00, ne01, ne1, s01, s1,
ne02, ne12, s02, s12, s2,
ne03, ne13, s03, s13, s3,
use_stream_k};
ggml_cuda_mul_mat_q_switch_type(ctx, args, stream);
return;
}
GGML_ASSERT(ne13 == 1);
GGML_ASSERT(nb12 % nb11 == 0);
GGML_ASSERT(nb2 % nb1 == 0);
const int64_t n_expert_used = ids->ne[0];
const int64_t ne_get_rows = ne12 * n_expert_used;
std::vector<char> ids_host(ggml_nbytes(ids));
std::vector<int32_t> ids_src1_host;
ids_src1_host.reserve(ne_get_rows);
std::vector<int32_t> ids_dst_host;
ids_dst_host.reserve(ne_get_rows);
std::vector<int32_t> tokens_per_expert_host(ne02);
std::vector<int32_t> expert_bounds_host(ne02 + 1);
ggml_cuda_pool_alloc<int32_t> ids_buf_dev(ctx.pool());
CUDA_CHECK(cudaMemcpyAsync(ids_host.data(), ids->data, ggml_nbytes(ids), cudaMemcpyDeviceToHost, stream));
CUDA_CHECK(cudaStreamSynchronize(stream));
for (int64_t i02 = 0; i02 < ne02; ++i02) { // expert matrices
for (int64_t i12 = 0; i12 < ne12; ++i12) { // tokens
for (int64_t iex = 0; iex < n_expert_used; ++iex) {
const int32_t expert_to_use = *(const int32_t *)(ids_host.data() + i12*ids->nb[1] + iex*ids->nb[0]);
assert(expert_to_use >= 0 && expert_to_use < ne02);
if (expert_to_use == i02) {
ids_src1_host.push_back(i12*(nb12/nb11) + iex % ne11);
ids_dst_host.push_back(i12*ne1 + iex);
tokens_per_expert_host[i02]++;
break;
}
}
}
}
int32_t cumsum = 0;
for (int64_t i = 0; i < ne02; ++i) {
expert_bounds_host[i] = cumsum;
cumsum += tokens_per_expert_host[i];
}
expert_bounds_host[ne02] = cumsum;
std::vector<int32_t> ids_buf_host;
ids_buf_host.reserve(ids_src1_host.size() + ids_dst_host.size() + expert_bounds_host.size());
ids_buf_host.insert(ids_buf_host.end(), ids_src1_host.begin(), ids_src1_host.end());
ids_buf_host.insert(ids_buf_host.end(), ids_dst_host.begin(), ids_dst_host.end());
ids_buf_host.insert(ids_buf_host.end(), expert_bounds_host.begin(), expert_bounds_host.end());
ids_buf_dev.alloc(ids_buf_host.size() + get_mmq_x_max_host(cc)); // Expert bounds are padded on device.
CUDA_CHECK(cudaMemcpyAsync(ids_buf_dev.ptr, ids_buf_host.data(), ids_buf_host.size()*sizeof(int32_t), cudaMemcpyHostToDevice, stream));
CUDA_CHECK(cudaStreamSynchronize(stream));
const int32_t * ids_src1_dev = ids_buf_dev.ptr;
const int32_t * ids_dst_dev = ids_src1_dev + ids_src1_host.size();
const int32_t * expert_bounds_dev = ids_dst_dev + ids_dst_host.size();
const size_t nbytes_src1_q8_1 = ne12*n_expert_used*ne10_padded * sizeof(block_q8_1)/QK8_1 +
get_mmq_x_max_host(cc)*sizeof(block_q8_1_mmq);
ggml_cuda_pool_alloc<char> src1_q8_1(ctx.pool(), nbytes_src1_q8_1);
const int64_t ne11_flat = ne12*n_expert_used;
const int64_t ne12_flat = 1;
const int64_t ne13_flat = 1;
{
const int64_t s11 = src1->nb[1] / ts_src1;
const int64_t s12 = src1->nb[2] / ts_src1;
const int64_t s13 = src1->nb[2] / ts_src1;
quantize_mmq_q8_1_cuda(src1_d, ids_src1_dev, src1_q8_1.get(), src0->type,
ne10, s11, s12, s13, ne10_padded, ne11_flat, ne12_flat, ne13_flat, stream);
}
const int64_t s12 = ne11*ne10_padded * sizeof(block_q8_1)/(QK8_1*sizeof(int));
const int64_t s13 = ne12*s12;
// Note that ne02 is used instead of ne12 because the number of y channels determines the z dimension of the CUDA grid.
const mmq_args args = {
src0_d, src0->type, (const int *) src1_q8_1.ptr, ids_dst_dev, expert_bounds_dev, dst_d,
ne00, ne01, ne_get_rows, s01, s1,
ne02, ne02, s02, s12, s2,
ne03, ne13, s03, s13, s3,
use_stream_k};
ggml_cuda_mul_mat_q_switch_type(ctx, args, stream);
}
void ggml_cuda_op_mul_mat_q(
ggml_backend_cuda_context & ctx,
const ggml_tensor * src0, const ggml_tensor * src1, ggml_tensor * dst, const char * src0_dd_i, const float * src1_ddf_i,
const char * src1_ddq_i, float * dst_dd_i, const int64_t row_low, const int64_t row_high, const int64_t src1_ncols,
const int64_t src1_padded_row_size, cudaStream_t stream) {
const int64_t ne00 = src0->ne[0];
const int64_t ne10 = src1->ne[0];
const int64_t ne11 = src1->ne[1];
GGML_ASSERT(ne10 % QK8_1 == 0);
const int64_t ne0 = dst->ne[0];
const int64_t row_diff = row_high - row_low;
const int64_t stride01 = ne00 / ggml_blck_size(src0->type);
const int id = ggml_cuda_get_device();
const int cc = ggml_cuda_info().devices[id].cc;
// the main device has a larger memory buffer to hold the results from all GPUs
// nrows_dst == nrows of the matrix that the kernel writes into
const int64_t nrows_dst = id == ctx.device ? ne0 : row_diff;
// The stream-k decomposition is only faster for recent NVIDIA GPUs.
// Also its fixup needs to allocate a temporary buffer in the memory pool.
// There are multiple parallel CUDA streams for src1_ncols != ne11 which would introduce a race condition for this buffer.
const bool use_stream_k = GGML_CUDA_CC_IS_NVIDIA(cc) &&
ggml_cuda_highest_compiled_arch(cc) >= GGML_CUDA_CC_VOLTA && src1_ncols == ne11;
const mmq_args args = {
src0_dd_i, src0->type, (const int *) src1_ddq_i, nullptr, nullptr, dst_dd_i,
ne00, row_diff, src1_ncols, stride01, nrows_dst,
1, 1, 0, 0, 0,
1, 1, 0, 0, 0,
use_stream_k};
ggml_cuda_mul_mat_q_switch_type(ctx, args, stream);
GGML_UNUSED(src1);
GGML_UNUSED(dst);
GGML_UNUSED(src1_ddf_i);
GGML_UNUSED(src1_padded_row_size);
}
bool ggml_cuda_should_use_mmq(enum ggml_type type, int cc, int64_t ne11) {

View File

@@ -13,9 +13,10 @@ using namespace ggml_cuda_mma;
#define MMQ_ITER_K 256
#define MMQ_NWARPS 8
typedef void (*load_tiles_mmq_t)(const char * __restrict__ x, int * x_tile, const int & kbx0, const int & i_max, const int & stride);
typedef void (*vec_dot_mmq_t)(const int * __restrict__ x, const int * __restrict__ y, float * __restrict__ sum, const int & k00);
typedef void (*mmq_write_back_t)(const float * __restrict__ sum, float * __restrict__ dst, const int & stride, const int & i_max, const int & j_max);
typedef void (*load_tiles_mmq_t)(const char * __restrict__ x, int * x_tile, const int kbx0, const int i_max, const int stride);
typedef void (*vec_dot_mmq_t)(const int * __restrict__ x, const int * __restrict__ y, float * __restrict__ sum, const int k00);
typedef void (*mmq_write_back_t)(const float * __restrict__ sum, const int32_t * __restrict__ get_rows_to_sorted,
float * __restrict__ dst, const int stride, const int i_max, const int j_max);
enum mmq_q8_1_ds_layout {
MMQ_Q8_1_DS_LAYOUT_D4,
@@ -233,7 +234,7 @@ static constexpr __device__ int mmq_get_granularity_device(const int /* mmq_x */
// ------------------------------------------------------------
template <int mmq_y, int nwarps, bool need_check> static __device__ __forceinline__ void load_tiles_q4_0(
const char * __restrict__ x, int * __restrict__ x_tile, const int & kbx0, const int & i_max, const int & stride) {
const char * __restrict__ x, int * __restrict__ x_tile, const int kbx0, const int i_max, const int stride) {
#ifdef NEW_MMA_AVAILABLE
int * x_qs = (int *) x_tile;
@@ -289,7 +290,7 @@ template <int mmq_y, int nwarps, bool need_check> static __device__ __forceinlin
template <int mmq_x, int mmq_y, int nwarps>
static __device__ __forceinline__ void vec_dot_q4_0_q8_1_dp4a(
const int * __restrict__ x, const int * __restrict__ y, float * __restrict__ sum, const int & k00) {
const int * __restrict__ x, const int * __restrict__ y, float * __restrict__ sum, const int k00) {
constexpr tile_x_sizes txs = mmq_get_dp4a_tile_x_sizes(GGML_TYPE_Q4_0, mmq_y);
const int * x_qs = (const int *) x;
@@ -328,7 +329,7 @@ static __device__ __forceinline__ void vec_dot_q4_0_q8_1_dp4a(
}
template <int mmq_y, int nwarps, bool need_check> static __device__ __forceinline__ void load_tiles_q4_1(
const char * __restrict__ x, int * __restrict__ x_tile, const int & kbx0, const int & i_max, const int & stride) {
const char * __restrict__ x, int * __restrict__ x_tile, const int kbx0, const int i_max, const int stride) {
#ifdef NEW_MMA_AVAILABLE
int * x_qs = (int *) x_tile;
@@ -384,7 +385,7 @@ template <int mmq_y, int nwarps, bool need_check> static __device__ __forceinlin
template <int mmq_x, int mmq_y, int nwarps>
static __device__ __forceinline__ void vec_dot_q4_1_q8_1_dp4a(
const int * __restrict__ x, const int * __restrict__ y, float * __restrict__ sum, const int & k00) {
const int * __restrict__ x, const int * __restrict__ y, float * __restrict__ sum, const int k00) {
constexpr tile_x_sizes txs = mmq_get_dp4a_tile_x_sizes(GGML_TYPE_Q4_1, mmq_y);
const int * x_qs = (const int *) x;
@@ -423,7 +424,7 @@ static __device__ __forceinline__ void vec_dot_q4_1_q8_1_dp4a(
}
template <int mmq_y, int nwarps, bool need_check> static __device__ __forceinline__ void load_tiles_q5_0(
const char * __restrict__ x, int * __restrict__ x_tile, const int & kbx0, const int & i_max, const int & stride) {
const char * __restrict__ x, int * __restrict__ x_tile, const int kbx0, const int i_max, const int stride) {
#ifdef NEW_MMA_AVAILABLE
int * x_qs = (int *) x_tile;
@@ -495,7 +496,7 @@ template <int mmq_y, int nwarps, bool need_check> static __device__ __forceinlin
}
template <int mmq_y, int nwarps, bool need_check> static __device__ __forceinline__ void load_tiles_q5_1(
const char * __restrict__ x, int * __restrict__ x_tile, const int & kbx0, const int & i_max, const int & stride) {
const char * __restrict__ x, int * __restrict__ x_tile, const int kbx0, const int i_max, const int stride) {
#ifdef NEW_MMA_AVAILABLE
int * x_qs = (int *) x_tile;
@@ -565,7 +566,7 @@ template <int mmq_y, int nwarps, bool need_check> static __device__ __forceinlin
}
template <int mmq_y, int nwarps, bool need_check> static __device__ __forceinline__ void load_tiles_q8_0(
const char * __restrict__ x, int * __restrict__ x_tile, const int & kbx0, const int & i_max, const int & stride) {
const char * __restrict__ x, int * __restrict__ x_tile, const int kbx0, const int i_max, const int stride) {
#ifdef NEW_MMA_AVAILABLE
int * x_qs = (int *) x_tile;
@@ -621,7 +622,7 @@ template <int mmq_y, int nwarps, bool need_check> static __device__ __forceinlin
template <int mmq_x, int mmq_y, int nwarps>
static __device__ __forceinline__ void vec_dot_q8_0_q8_1_dp4a(
const int * __restrict__ x, const int * __restrict__ y, float * __restrict__ sum, const int & k00) {
const int * __restrict__ x, const int * __restrict__ y, float * __restrict__ sum, const int k00) {
constexpr tile_x_sizes txs = mmq_get_dp4a_tile_x_sizes(GGML_TYPE_Q8_0, mmq_y);
const int * x_qs = (const int *) x;
@@ -651,7 +652,7 @@ static __device__ __forceinline__ void vec_dot_q8_0_q8_1_dp4a(
template <int mmq_x, int mmq_y, int nwarps, mmq_q8_1_ds_layout ds_layout>
static __device__ __forceinline__ void vec_dot_q8_0_q8_1_mma(
const int * __restrict__ x, const int * __restrict__ y, float * __restrict__ sum, const int & k00) {
const int * __restrict__ x, const int * __restrict__ y, float * __restrict__ sum, const int k00) {
typedef tile<16, 8, int> tile_A;
typedef tile< 8, 8, int> tile_B;
@@ -732,7 +733,7 @@ static __device__ __forceinline__ void vec_dot_q8_0_q8_1_mma(
template <int mmq_x, int mmq_y, int nwarps>
static __device__ __forceinline__ void vec_dot_q8_1_q8_1_dp4a(
const int * __restrict__ x, const int * __restrict__ y, float * __restrict__ sum, const int & k00) {
const int * __restrict__ x, const int * __restrict__ y, float * __restrict__ sum, const int k00) {
constexpr tile_x_sizes txs = mmq_get_dp4a_tile_x_sizes(GGML_TYPE_Q5_1, mmq_y);
const int * x_qs = (const int *) x;
@@ -762,7 +763,7 @@ static __device__ __forceinline__ void vec_dot_q8_1_q8_1_dp4a(
template <int mmq_x, int mmq_y, int nwarps>
static __device__ __forceinline__ void vec_dot_q8_1_q8_1_mma(
const int * __restrict__ x, const int * __restrict__ y, float * __restrict__ sum, const int & k00) {
const int * __restrict__ x, const int * __restrict__ y, float * __restrict__ sum, const int k00) {
typedef tile<16, 8, int> tile_A;
typedef tile< 8, 8, int> tile_B;
@@ -839,7 +840,7 @@ static __device__ __forceinline__ void vec_dot_q8_1_q8_1_mma(
template <int mmq_x, int mmq_y, int nwarps>
static __device__ __forceinline__ void vec_dot_q8_0_16_q8_1_dp4a(
const int * __restrict__ x, const int * __restrict__ y, float * __restrict__ sum, const int & k00) {
const int * __restrict__ x, const int * __restrict__ y, float * __restrict__ sum, const int k00) {
constexpr tile_x_sizes txs = MMQ_DP4A_TXS_Q8_0_16;
const int * x_qs = (const int *) x;
@@ -871,7 +872,7 @@ static __device__ __forceinline__ void vec_dot_q8_0_16_q8_1_dp4a(
template <int mmq_x, int mmq_y, int nwarps>
static __device__ __forceinline__ void vec_dot_q8_0_16_q8_1_mma(
const int * __restrict__ x, const int * __restrict__ y, float * __restrict__ sum, const int & k00) {
const int * __restrict__ x, const int * __restrict__ y, float * __restrict__ sum, const int k00) {
#ifdef NEW_MMA_AVAILABLE
typedef tile<16, 4, int> tile_A;
@@ -955,7 +956,7 @@ static __device__ __forceinline__ void vec_dot_q8_0_16_q8_1_mma(
}
template <int mmq_y, int nwarps, bool need_check> static __device__ __forceinline__ void load_tiles_q2_K(
const char * __restrict__ x, int * __restrict__ x_tile, const int & kbx0, const int & i_max, const int & stride) {
const char * __restrict__ x, int * __restrict__ x_tile, const int kbx0, const int i_max, const int stride) {
#ifdef NEW_MMA_AVAILABLE
int * x_qs = (int *) x_tile;
@@ -1011,7 +1012,7 @@ template <int mmq_y, int nwarps, bool need_check> static __device__ __forceinlin
template <int mmq_x, int mmq_y, int nwarps>
static __device__ __forceinline__ void vec_dot_q2_K_q8_1_dp4a(
const int * __restrict__ x, const int * __restrict__ y, float * __restrict__ sum, const int & k00) {
const int * __restrict__ x, const int * __restrict__ y, float * __restrict__ sum, const int k00) {
constexpr tile_x_sizes txs = mmq_get_dp4a_tile_x_sizes(GGML_TYPE_Q2_K, mmq_y);
const int * x_qs = (const int *) x;
@@ -1074,7 +1075,7 @@ static __device__ __forceinline__ void vec_dot_q2_K_q8_1_dp4a(
template <int mmq_x, int mmq_y, int nwarps>
static __device__ __forceinline__ void vec_dot_q2_K_q8_1_mma(
const int * __restrict__ x, const int * __restrict__ y, float * __restrict__ sum, const int & k00) {
const int * __restrict__ x, const int * __restrict__ y, float * __restrict__ sum, const int k00) {
#ifdef NEW_MMA_AVAILABLE
typedef tile<16, 4, int> tile_A;
@@ -1201,7 +1202,7 @@ static __device__ __forceinline__ void vec_dot_q2_K_q8_1_mma(
}
template <int mmq_y, int nwarps, bool need_check> static __device__ __forceinline__ void load_tiles_q3_K(
const char * __restrict__ x, int * __restrict__ x_tile, const int & kbx0, const int & i_max, const int & stride) {
const char * __restrict__ x, int * __restrict__ x_tile, const int kbx0, const int i_max, const int stride) {
#ifdef NEW_MMA_AVAILABLE
int * x_qs = (int *) x_tile;
@@ -1298,7 +1299,7 @@ template <int mmq_y, int nwarps, bool need_check> static __device__ __forceinlin
template <int mmq_x, int mmq_y, int nwarps>
static __device__ __forceinline__ void vec_dot_q3_K_q8_1_dp4a(
const int * __restrict__ x, const int * __restrict__ y, float * __restrict__ sum, const int & k00) {
const int * __restrict__ x, const int * __restrict__ y, float * __restrict__ sum, const int k00) {
constexpr tile_x_sizes txs = mmq_get_dp4a_tile_x_sizes(GGML_TYPE_Q3_K, mmq_y);
const int * x_qs = (const int *) x;
@@ -1340,7 +1341,7 @@ static __device__ __forceinline__ int unpack_scales_q45_K(const int * scales, co
}
template <int mmq_y, int nwarps, bool need_check> static __device__ __forceinline__ void load_tiles_q4_K(
const char * __restrict__ x, int * __restrict__ x_tile, const int & kbx0, const int & i_max, const int & stride) {
const char * __restrict__ x, int * __restrict__ x_tile, const int kbx0, const int i_max, const int stride) {
#ifdef NEW_MMA_AVAILABLE
int * x_qs = (int *) x_tile;
@@ -1437,7 +1438,7 @@ template <int mmq_y, int nwarps, bool need_check> static __device__ __forceinlin
template <int mmq_x, int mmq_y, int nwarps>
static __device__ __forceinline__ void vec_dot_q4_K_q8_1_dp4a(
const int * __restrict__ x, const int * __restrict__ y, float * __restrict__ sum, const int & k00) {
const int * __restrict__ x, const int * __restrict__ y, float * __restrict__ sum, const int k00) {
constexpr tile_x_sizes txs = mmq_get_dp4a_tile_x_sizes(GGML_TYPE_Q4_K, mmq_y);
const int * x_qs = (const int *) x;
@@ -1469,7 +1470,7 @@ static __device__ __forceinline__ void vec_dot_q4_K_q8_1_dp4a(
}
template <int mmq_y, int nwarps, bool need_check> static __device__ __forceinline__ void load_tiles_q5_K(
const char * __restrict__ x, int * __restrict__ x_tile, const int & kbx0, const int & i_max, const int & stride) {
const char * __restrict__ x, int * __restrict__ x_tile, const int kbx0, const int i_max, const int stride) {
#ifdef NEW_MMA_AVAILABLE
int * x_qs = (int *) x_tile;
@@ -1578,7 +1579,7 @@ template <int mmq_y, int nwarps, bool need_check> static __device__ __forceinlin
template <int mmq_x, int mmq_y, int nwarps>
static __device__ __forceinline__ void vec_dot_q5_K_q8_1_dp4a(
const int * __restrict__ x, const int * __restrict__ y, float * __restrict__ sum, const int & k00) {
const int * __restrict__ x, const int * __restrict__ y, float * __restrict__ sum, const int k00) {
constexpr tile_x_sizes txs = mmq_get_dp4a_tile_x_sizes(GGML_TYPE_Q5_K, mmq_y);
const int * x_qs = (const int *) x;
@@ -1610,7 +1611,7 @@ static __device__ __forceinline__ void vec_dot_q5_K_q8_1_dp4a(
}
template <int mmq_y, int nwarps, bool need_check> static __device__ __forceinline__ void load_tiles_q6_K(
const char * __restrict__ x, int * __restrict__ x_tile, const int & kbx0, const int & i_max, const int & stride) {
const char * __restrict__ x, int * __restrict__ x_tile, const int kbx0, const int i_max, const int stride) {
#ifdef NEW_MMA_AVAILABLE
int * x_qs = (int *) x_tile;
@@ -1693,7 +1694,7 @@ template <int mmq_y, int nwarps, bool need_check> static __device__ __forceinlin
template <int mmq_x, int mmq_y, int nwarps>
static __device__ __forceinline__ void vec_dot_q6_K_q8_1_dp4a(
const int * __restrict__ x, const int * __restrict__ y, float * __restrict__ sum, const int & k00) {
const int * __restrict__ x, const int * __restrict__ y, float * __restrict__ sum, const int k00) {
constexpr tile_x_sizes txs = mmq_get_dp4a_tile_x_sizes(GGML_TYPE_Q6_K, mmq_y);
const int * x_qs = (const int *) x;
@@ -1726,7 +1727,7 @@ static __device__ __forceinline__ void vec_dot_q6_K_q8_1_dp4a(
template <int mmq_x, int mmq_y, int nwarps>
static __device__ __forceinline__ void vec_dot_q6_K_q8_1_mma(
const int * __restrict__ x, const int * __restrict__ y, float * __restrict__ sum, const int & k00) {
const int * __restrict__ x, const int * __restrict__ y, float * __restrict__ sum, const int k00) {
#ifdef NEW_MMA_AVAILABLE
typedef tile<16, 4, int> tile_A;
@@ -1835,7 +1836,7 @@ static __device__ __forceinline__ void vec_dot_q6_K_q8_1_mma(
}
template <int mmq_y, int nwarps, bool need_check> static __device__ __forceinline__ void load_tiles_iq4_nl(
const char * __restrict__ x, int * __restrict__ x_tile, const int & kbx0, const int & i_max, const int & stride) {
const char * __restrict__ x, int * __restrict__ x_tile, const int kbx0, const int i_max, const int stride) {
#ifdef NEW_MMA_AVAILABLE
int * x_qs = (int *) x_tile;
@@ -1893,7 +1894,7 @@ template <int mmq_y, int nwarps, bool need_check> static __device__ __forceinlin
}
template <int mmq_y, int nwarps, bool need_check> static __device__ __forceinline__ void load_tiles_iq2_xxs(
const char * __restrict__ x, int * __restrict__ x_tile, const int & kbx0, const int & i_max, const int & stride) {
const char * __restrict__ x, int * __restrict__ x_tile, const int kbx0, const int i_max, const int stride) {
#ifdef NEW_MMA_AVAILABLE
int * x_qs = (int *) x_tile;
@@ -1951,7 +1952,7 @@ template <int mmq_y, int nwarps, bool need_check> static __device__ __forceinlin
}
template <int mmq_y, int nwarps, bool need_check> static __device__ __forceinline__ void load_tiles_iq2_xs(
const char * __restrict__ x, int * __restrict__ x_tile, const int & kbx0, const int & i_max, const int & stride) {
const char * __restrict__ x, int * __restrict__ x_tile, const int kbx0, const int i_max, const int stride) {
#ifdef NEW_MMA_AVAILABLE
int * x_qs = (int *) x_tile;
@@ -2007,7 +2008,7 @@ template <int mmq_y, int nwarps, bool need_check> static __device__ __forceinlin
}
template <int mmq_y, int nwarps, bool need_check> static __device__ __forceinline__ void load_tiles_iq2_s(
const char * __restrict__ x, int * __restrict__ x_tile, const int & kbx0, const int & i_max, const int & stride) {
const char * __restrict__ x, int * __restrict__ x_tile, const int kbx0, const int i_max, const int stride) {
#ifdef NEW_MMA_AVAILABLE
int * x_qs = (int *) x_tile;
@@ -2070,7 +2071,7 @@ template <int mmq_y, int nwarps, bool need_check> static __device__ __forceinlin
}
template <int mmq_y, int nwarps, bool need_check> static __device__ __forceinline__ void load_tiles_iq3_xxs(
const char * __restrict__ x, int * __restrict__ x_tile, const int & kbx0, const int & i_max, const int & stride) {
const char * __restrict__ x, int * __restrict__ x_tile, const int kbx0, const int i_max, const int stride) {
#ifdef NEW_MMA_AVAILABLE
int * x_qs = (int *) x_tile;
@@ -2126,7 +2127,7 @@ template <int mmq_y, int nwarps, bool need_check> static __device__ __forceinlin
}
template <int mmq_y, int nwarps, bool need_check> static __device__ __forceinline__ void load_tiles_iq3_s(
const char * __restrict__ x, int * __restrict__ x_tile, const int & kbx0, const int & i_max, const int & stride) {
const char * __restrict__ x, int * __restrict__ x_tile, const int kbx0, const int i_max, const int stride) {
#ifdef NEW_MMA_AVAILABLE
int * x_qs = (int *) x_tile;
@@ -2189,7 +2190,7 @@ template <int mmq_y, int nwarps, bool need_check> static __device__ __forceinlin
}
template <int mmq_y, int nwarps, bool need_check> static __device__ __forceinline__ void load_tiles_iq1_s(
const char * __restrict__ x, int * __restrict__ x_tile, const int & kbx0, const int & i_max, const int & stride) {
const char * __restrict__ x, int * __restrict__ x_tile, const int kbx0, const int i_max, const int stride) {
#ifdef NEW_MMA_AVAILABLE
int * x_qs = (int *) x_tile;
@@ -2245,7 +2246,7 @@ template <int mmq_y, int nwarps, bool need_check> static __device__ __forceinlin
}
template <int mmq_y, int nwarps, bool need_check> static __device__ __forceinline__ void load_tiles_iq4_xs(
const char * __restrict__ x, int * __restrict__ x_tile, const int & kbx0, const int & i_max, const int & stride) {
const char * __restrict__ x, int * __restrict__ x_tile, const int kbx0, const int i_max, const int stride) {
#ifdef NEW_MMA_AVAILABLE
int * x_qs = (int *) x_tile;
@@ -2306,8 +2307,8 @@ template <int mmq_y, int nwarps, bool need_check> static __device__ __forceinlin
template<int mmq_x, int mmq_y, int nwarps, bool need_check>
static __device__ __forceinline__ void mmq_write_back_dp4a(
const float * __restrict__ sum, float * __restrict__ dst, const int & stride, const int & i_max, const int & j_max) {
const float * __restrict__ sum, const int32_t * __restrict__ ids_dst, float * __restrict__ dst,
const int stride, const int i_max, const int j_max) {
#pragma unroll
for (int j0 = 0; j0 < mmq_x; j0 += nwarps) {
const int j = j0 + threadIdx.y;
@@ -2324,15 +2325,15 @@ static __device__ __forceinline__ void mmq_write_back_dp4a(
continue;
}
dst[j*stride + i] = sum[(j0/nwarps) * (mmq_y/WARP_SIZE) + i0/WARP_SIZE];
dst[ids_dst[j]*stride + i] = sum[(j0/nwarps) * (mmq_y/WARP_SIZE) + i0/WARP_SIZE];
}
}
}
template<int mmq_x, int mmq_y, int nwarps, bool need_check>
static __device__ __forceinline__ void mmq_write_back_mma(
const float * __restrict__ sum, float * __restrict__ dst, const int & stride, const int & i_max, const int & j_max) {
const float * __restrict__ sum, const int * __restrict__ ids_dst, float * __restrict__ dst,
const int stride, const int i_max, const int j_max) {
typedef tile<16, 8, int> tile_C;
constexpr int granularity = mmq_get_granularity_device(mmq_x);
@@ -2362,7 +2363,7 @@ static __device__ __forceinline__ void mmq_write_back_mma(
continue;
}
dst[j*stride + i] = sum[(j0/tile_C::J + n)*tile_C::ne + l];
dst[ids_dst[j]*stride + i] = sum[(j0/tile_C::J + n)*tile_C::ne + l];
}
}
}
@@ -2518,17 +2519,18 @@ struct mmq_type_traits<mmq_x, mmq_y, nwarps, need_check, GGML_TYPE_IQ4_XS> {
};
template <ggml_type type, int mmq_x, int nwarps, bool need_check, bool fixup>
static __device__ void mul_mat_q_process_tile(
const char * __restrict__ x, const char * __restrict__ yc, float * __restrict__ dst, float * __restrict__ tmp_fixup,
const int & ne00, const int & ne01, const int & stride01, const int & ne10, const int & ne11, const int & stride11, const int & ne0,
const int & it, const int & jt, const int & kb0_start, const int & kb0_stop) {
static __device__ __forceinline__ void mul_mat_q_process_tile(
const char * __restrict__ x, const int offset_x, const int * __restrict__ y,
const int * __restrict__ ids_dst, float * __restrict__ dst, float * __restrict__ tmp_fixup,
const int nrows_x, const int ncols_y, const int stride_row_x, const int stride_col_dst,
const int tile_x_max_i, const int tile_y_max_j, const int kb0_start, const int kb0_stop) {
constexpr int qk = ggml_cuda_type_traits<type>::qk;
constexpr int mmq_y = get_mmq_y_device();
constexpr load_tiles_mmq_t load_tiles = mmq_type_traits<mmq_x, mmq_y, nwarps, need_check, type>::load_tiles;
extern __shared__ char data_mul_mat_q[];
int * tile_y = (int *) data_mul_mat_q;
extern __shared__ int data_mul_mat_q[];
int * tile_y = data_mul_mat_q + mmq_x;
int * tile_x = tile_y + GGML_PAD(mmq_x*(WARP_SIZE + WARP_SIZE/QI8_1), nwarps*WARP_SIZE);
#ifdef NEW_MMA_AVAILABLE
@@ -2543,16 +2545,11 @@ static __device__ void mul_mat_q_process_tile(
float sum[mmq_x*mmq_y / (nwarps*WARP_SIZE)] = {0.0f};
const int tile_x_max_i = ne01 - it*mmq_y - 1;
const int tile_y_max_j = ne11 - jt*mmq_x - 1;
const int * y = (const int *) yc + jt*(mmq_x*sizeof(block_q8_1_mmq)/sizeof(int));
for (int kb0 = kb0_start; kb0 < kb0_stop; kb0 += blocks_per_iter) {
load_tiles(x, tile_x, stride01*it*mmq_y + kb0, tile_x_max_i, stride01);
load_tiles(x, tile_x, offset_x + kb0, tile_x_max_i, stride_row_x);
{
const int * by0 = y + stride11*(kb0*(qk*sizeof(block_q8_1_mmq) / (4*QK8_1*sizeof(int))) + 0*sizeof(block_q8_1_mmq)/sizeof(int));
const int * by0 = y + ncols_y*(kb0*(qk*sizeof(block_q8_1_mmq) / (4*QK8_1*sizeof(int))) + 0*sizeof(block_q8_1_mmq)/sizeof(int));
#pragma unroll
for (int l0 = 0; l0 < mmq_x*MMQ_TILE_Y_K; l0 += nwarps*WARP_SIZE) {
int l = l0 + threadIdx.y*WARP_SIZE + threadIdx.x;
@@ -2568,7 +2565,7 @@ static __device__ void mul_mat_q_process_tile(
__syncthreads();
{
const int * by0 = y + stride11*(kb0*(qk*sizeof(block_q8_1_mmq) / (4*QK8_1*sizeof(int))) + 1*sizeof(block_q8_1_mmq)/sizeof(int));
const int * by0 = y + ncols_y*(kb0*(qk*sizeof(block_q8_1_mmq) / (4*QK8_1*sizeof(int))) + 1*sizeof(block_q8_1_mmq)/sizeof(int));
#pragma unroll
for (int l0 = 0; l0 < mmq_x*MMQ_TILE_Y_K; l0 += nwarps*WARP_SIZE) {
int l = l0 + threadIdx.y*WARP_SIZE + threadIdx.x;
@@ -2585,12 +2582,10 @@ static __device__ void mul_mat_q_process_tile(
}
if (fixup) {
write_back(sum, tmp_fixup + blockIdx.x*(mmq_x*mmq_y), mmq_y, mmq_y, mmq_x);
write_back(sum, ids_dst, tmp_fixup + blockIdx.x*(mmq_x*mmq_y), mmq_y, mmq_y, mmq_x);
} else {
write_back(sum, dst + jt*mmq_x*ne0 + it*mmq_y, ne0, tile_x_max_i, tile_y_max_j);
write_back(sum, ids_dst, dst, stride_col_dst, tile_x_max_i, tile_y_max_j);
}
GGML_UNUSED(ne00); GGML_UNUSED(ne10);
}
@@ -2609,8 +2604,11 @@ template <ggml_type type, int mmq_x, int nwarps, bool need_check>
#endif // __CUDA_ARCH__ >= GGML_CUDA_CC_VOLTA
#endif // defined(GGML_USE_HIP) && defined(__HIP_PLATFORM_AMD__)
static __global__ void mul_mat_q(
const char * __restrict__ x, const char * __restrict__ yc, float * __restrict__ dst, float * __restrict__ tmp_fixup,
const int ne00, const int ne01, const int stride01, const int ne10, const int ne11, const int stride11, const int ne0) {
const char * __restrict__ x, const int * __restrict__ y, const int32_t * __restrict__ ids_dst,
const int32_t * __restrict__ expert_bounds, float * __restrict__ dst, float * __restrict__ tmp_fixup,
const int ncols_x, const int nrows_x, const int ncols_y, const int stride_row_x, const int stride_col_dst,
const int channel_ratio, const int nchannels_y, const int stride_channel_x, const int stride_channel_y, const int stride_channel_dst,
const int sample_ratio, const int nsamples_y, const int stride_sample_x, const int stride_sample_y, const int stride_sample_dst) {
// Skip unused template specializations for faster compilation:
if (mmq_x > get_mmq_x_max_device() || mmq_x % mmq_get_granularity_device(mmq_x) != 0) {
@@ -2621,26 +2619,85 @@ static __global__ void mul_mat_q(
constexpr int qk = ggml_cuda_type_traits<type>::qk;
constexpr int mmq_y = get_mmq_y_device();
const int ntx = (ncols_y + mmq_x - 1) / mmq_x; // Number of tiles x
const int nty = (nrows_x + mmq_y - 1) / mmq_y; // Number of tiles y
// Initialize the ids for writing back data with just the index.
// For regular matrix multiplications this is never changed.
// For MoE the correct indices are loaded from ids_dst.
extern __shared__ int ids_dst_shared[]; // Stored at beginning of shared memory.
#pragma unroll
for (int j0 = 0; j0 < mmq_x; j0 += nwarps*WARP_SIZE) {
const int j = j0 + threadIdx.y*WARP_SIZE + threadIdx.x;
if (j0 + nwarps*WARP_SIZE > mmq_x && j >= mmq_x) {
break;
}
ids_dst_shared[j] = j;
}
// On AMD or old CUDA the performance with stream-k was worse, use conventional tiling instead:
#if (defined(GGML_USE_HIP) && defined(__HIP_PLATFORM_AMD__)) || __CUDA_ARCH__ < GGML_CUDA_CC_VOLTA
{
const int wt = blockIdx.z / nchannels_y;
const int zt = blockIdx.z - wt*nchannels_y;
const int jt = blockIdx.y;
const int it = blockIdx.x;
// Defaults for regular matrix multiplication:
int col_low = 0;
int col_high = ncols_y;
int col_diff = ncols_y;
int offset_y = wt*stride_sample_y + zt*stride_channel_y;
int offset_dst = wt*stride_sample_dst + zt*stride_channel_dst + jt*mmq_x*stride_col_dst;
if (ids_dst) {
col_low = expert_bounds[zt + 0];
col_high = expert_bounds[zt + 1];
col_diff = col_high - col_low;
offset_y = 0;
offset_dst = 0;
if (jt*mmq_x >= col_diff) {
return;
}
#pragma unroll
for (int j0 = 0; j0 < mmq_x; j0 += nwarps*WARP_SIZE) {
const int j = j0 + threadIdx.y*WARP_SIZE + threadIdx.x;
if (j0 + nwarps*WARP_SIZE > mmq_x && j >= mmq_x) {
break;
}
ids_dst_shared[j] = ids_dst[col_low + jt*mmq_x + j];
}
}
offset_y += (col_low + jt*mmq_x)*(sizeof(block_q8_1_mmq)/sizeof(int));
offset_dst += it*mmq_y;
const int tile_x_max_i = nrows_x - it*mmq_y - 1;
const int tile_y_max_j = col_diff - jt*mmq_x - 1;
const int offset_x = (wt/sample_ratio)*stride_sample_x + (zt/channel_ratio)*stride_channel_x + it*mmq_y*stride_row_x;
constexpr bool fixup = false;
mul_mat_q_process_tile<type, mmq_x, nwarps, need_check, fixup>
(x, yc, dst, tmp_fixup, ne00, ne01, stride01, ne10, ne11, stride11, ne0,
blockIdx.x, blockIdx.y, 0, ne00/qk);
(x, offset_x, y + offset_y, ids_dst_shared, dst + offset_dst, tmp_fixup, nrows_x, ncols_y, stride_row_x, stride_col_dst,
tile_x_max_i, tile_y_max_j, 0, ncols_x/qk);
return;
}
#endif // (defined(GGML_USE_HIP) && defined(__HIP_PLATFORM_AMD__)) || __CUDA_ARCH__ < GGML_CUDA_CC_VOLTA
const int64_t blocks_per_ne00 = ne00 / qk;
const int64_t blocks_per_ne00 = ncols_x / qk;
constexpr int blocks_per_iter = MMQ_ITER_K / qk;
const int ntx = (ne11 + mmq_x - 1) / mmq_x; // Number of tiles x
const int nty = (ne01 + mmq_y - 1) / mmq_y; // Number of tiles y
// kbc == k block continuous, current index in continuous ijk space.
int64_t kbc = (int64_t) blockIdx.x *blocks_per_ne00*ntx*nty / gridDim.x;
int64_t kbc_stop = (int64_t)(blockIdx.x + 1)*blocks_per_ne00*ntx*nty / gridDim.x;
int64_t kbc = (int64_t) blockIdx.x *nsamples_y*nchannels_y*ntx*nty*blocks_per_ne00 / gridDim.x;
int64_t kbc_stop = (int64_t)(blockIdx.x + 1)*nsamples_y*nchannels_y*ntx*nty*blocks_per_ne00 / gridDim.x;
kbc -= (kbc % blocks_per_ne00) % blocks_per_iter;
kbc_stop -= (kbc_stop % blocks_per_ne00) % blocks_per_iter;
@@ -2649,13 +2706,64 @@ static __global__ void mul_mat_q(
int kb0_start = kbc % blocks_per_ne00;
int kb0_stop = min(blocks_per_ne00, kb0_start + kbc_stop - kbc);
while (kbc < kbc_stop && kb0_stop == blocks_per_ne00) {
const int jt = kbc / (blocks_per_ne00*nty); // j index of current tile.
const int it = (kbc - jt*(blocks_per_ne00*nty)) / blocks_per_ne00; // i index of current tile.
int tmp = kbc;
const int it = tmp / (nsamples_y*nchannels_y*ntx*blocks_per_ne00);
tmp -= it * (nsamples_y*nchannels_y*ntx*blocks_per_ne00);
const int wt = tmp / (nchannels_y*ntx*blocks_per_ne00);
tmp -= wt * (nchannels_y*ntx*blocks_per_ne00);
const int zt = tmp / (ntx*blocks_per_ne00);
tmp -= zt * (ntx*blocks_per_ne00);
const int jt = tmp / blocks_per_ne00;
// Defaults for regular matrix multiplication:
int col_low = 0;
int col_high = ncols_y;
int col_diff = ncols_y;
int offset_y = wt*stride_sample_y + zt*stride_channel_y;
int offset_dst = wt*stride_sample_dst + zt*stride_channel_dst + jt*mmq_x*stride_col_dst;
if (ids_dst) {
col_low = expert_bounds[zt + 0];
col_high = expert_bounds[zt + 1];
col_diff = col_high - col_low;
offset_y = 0;
offset_dst = 0;
if (jt*mmq_x >= col_diff) {
kbc += blocks_per_ne00;
kbc -= kbc % blocks_per_ne00;
kb0_start = 0;
kb0_stop = min(blocks_per_ne00, kbc_stop - kbc);
continue;
}
#pragma unroll
for (int j0 = 0; j0 < mmq_x; j0 += nwarps*WARP_SIZE) {
const int j = j0 + threadIdx.y*WARP_SIZE + threadIdx.x;
if (j0 + nwarps*WARP_SIZE > mmq_x && j >= mmq_x) {
break;
}
ids_dst_shared[j] = ids_dst[col_low + jt*mmq_x + j];
}
}
offset_y += (col_low + jt*mmq_x)*(sizeof(block_q8_1_mmq)/sizeof(int));
offset_dst += it*mmq_y;
const int tile_x_max_i = nrows_x - it*mmq_y - 1;
const int tile_y_max_j = col_diff - jt*mmq_x - 1;
const int offset_x = (wt/sample_ratio)*stride_sample_x + (zt/channel_ratio)*stride_channel_x + it*mmq_y*stride_row_x;
constexpr bool fixup = false; // All but (potentially) the last iterations write their data to dst rather than the fixup buffer.
mul_mat_q_process_tile<type, mmq_x, nwarps, need_check, fixup>
(x, yc, dst, tmp_fixup, ne00, ne01, stride01, ne10, ne11, stride11, ne0,
it, jt, kb0_start, kb0_stop);
(x, offset_x, y + offset_y, ids_dst_shared, dst + offset_dst, tmp_fixup, nrows_x, ncols_y, stride_row_x, stride_col_dst,
tile_x_max_i, tile_y_max_j, kb0_start, kb0_stop);
kbc += blocks_per_ne00;
kbc -= kbc % blocks_per_ne00;
@@ -2668,55 +2776,106 @@ static __global__ void mul_mat_q(
return;
}
const int jt = kbc / (blocks_per_ne00*nty);
const int it = (kbc - jt*(blocks_per_ne00*nty)) / blocks_per_ne00;
int tmp = kbc;
const int it = tmp / (nsamples_y*nchannels_y*ntx*blocks_per_ne00);
tmp -= it * (nsamples_y*nchannels_y*ntx*blocks_per_ne00);
const int wt = tmp / (nchannels_y*ntx*blocks_per_ne00);
tmp -= wt * (nchannels_y*ntx*blocks_per_ne00);
const int zt = tmp / (ntx*blocks_per_ne00);
tmp -= zt * (ntx*blocks_per_ne00);
const int jt = tmp / blocks_per_ne00;
// Defaults for regular matrix multiplication:
int col_low = 0;
int col_high = ncols_y;
int col_diff = ncols_y;
int offset_y = wt*stride_sample_y + zt*stride_channel_y;
int offset_dst = wt*stride_sample_dst + zt*stride_channel_dst + jt*mmq_x*stride_col_dst;
if (ids_dst) {
col_low = expert_bounds[zt + 0];
col_high = expert_bounds[zt + 1];
col_diff = col_high - col_low;
offset_y = 0;
offset_dst = 0;
if (jt*mmq_x >= col_diff) {
return;
}
// The memory layout for the fixup buffer is always contiguous, therefore reset ids:
#pragma unroll
for (int j0 = 0; j0 < mmq_x; j0 += nwarps*WARP_SIZE) {
const int j = j0 + threadIdx.y*WARP_SIZE + threadIdx.x;
if (j0 + nwarps*WARP_SIZE > mmq_x && j >= mmq_x) {
break;
}
ids_dst_shared[j] = j;
}
}
offset_y += (col_low + jt*mmq_x)*(sizeof(block_q8_1_mmq)/sizeof(int));
offset_dst += it*mmq_y;
const int tile_x_max_i = nrows_x - it*mmq_y - 1;
const int tile_y_max_j = col_diff - jt*mmq_x - 1;
const int offset_x = (wt/sample_ratio)*stride_sample_x + (zt/channel_ratio)*stride_channel_x + it*mmq_y*stride_row_x;
constexpr bool fixup = true; // Last index writes its data to fixup buffer to avoid data races with other blocks.
mul_mat_q_process_tile<type, mmq_x, nwarps, need_check, fixup>
(x, yc, dst, tmp_fixup, ne00, ne01, stride01, ne10, ne11, stride11, ne0,
it, jt, kb0_start, kb0_stop);
(x, offset_x, y + offset_y, ids_dst_shared, dst + offset_dst, tmp_fixup, nrows_x, ncols_y, stride_row_x, stride_col_dst,
tile_x_max_i, tile_y_max_j, kb0_start, kb0_stop);
}
template <ggml_type type, int mmq_x, int nwarps, bool need_check>
static __global__ void mul_mat_q_stream_k_fixup(
float * __restrict__ dst, const float * __restrict__ tmp_last_tile, const int ne00, const int ne01, const int ne11, const int ne0, const int block_num_mmq) {
const int32_t * ids_dst, const int32_t * expert_bounds, float * __restrict__ dst, const float * __restrict__ tmp_last_tile,
const int ncols_x, const int nrows_x, const int ncols_y, const int stride_col_dst,
const int nchannels_y, const int stride_channel_dst, const int nsamples_y, const int stride_sample_dst) {
constexpr int mmq_y = get_mmq_y_device();
constexpr int qk = ggml_cuda_type_traits<type>::qk;
constexpr int blocks_per_iter = MMQ_ITER_K / qk;
const int64_t blocks_per_ne00 = ne00 / qk;
const int64_t blocks_per_ne00 = ncols_x / qk;
float sum[mmq_x*mmq_y / (nwarps*WARP_SIZE)] = {0.0f};
const int ntx = (ne11 + mmq_x - 1) / mmq_x;
const int nty = (ne01 + mmq_y - 1) / mmq_y;
const int ntx = (ncols_y + mmq_x - 1) / mmq_x;
const int nty = (nrows_x + mmq_y - 1) / mmq_y;
const int bidx0 = blockIdx.x;
// kbc == k block continuous, current index in continuous ijk space.
int64_t kbc0 = (int64_t) bidx0 *nsamples_y*nchannels_y*ntx*nty*blocks_per_ne00 / gridDim.x;
int64_t kbc0_stop = (int64_t)(bidx0 + 1)*nsamples_y*nchannels_y*ntx*nty*blocks_per_ne00 / gridDim.x;
kbc0 -= (kbc0 % blocks_per_ne00) % blocks_per_iter;
kbc0_stop -= (kbc0_stop % blocks_per_ne00) % blocks_per_iter;
const bool did_not_have_any_data = kbc0 == kbc0_stop;
const bool wrote_beginning_of_tile = kbc0 % blocks_per_ne00 == 0;
const bool did_not_write_last = kbc0/blocks_per_ne00 == kbc0_stop/blocks_per_ne00 && kbc0_stop % blocks_per_ne00 != 0;
if (did_not_have_any_data || wrote_beginning_of_tile || did_not_write_last) {
return;
}
bool any_fixup = false;
const int bidx_start = ((blockIdx.y*nty + blockIdx.x) * block_num_mmq) / (gridDim.y*gridDim.x);
const int bidx_stop = ((blockIdx.y*nty + blockIdx.x + 1) * block_num_mmq + gridDim.y*gridDim.x - 1) / (gridDim.y*gridDim.x);
// Iterate over previous blocks and sum up partial sums written to fixup buffer.
// All CUDA blocks that get here must have a previous block that needs a fixup.
int64_t bidx = bidx0 - 1;
int64_t kbc_stop = kbc0;
while(true) {
int64_t kbc = bidx*nsamples_y*nchannels_y*ntx*nty*blocks_per_ne00 / gridDim.x;
kbc -= (kbc % blocks_per_ne00) % blocks_per_iter;
int64_t kbc_0;
int64_t kbc_stop_0 = (int64_t) bidx_start*blocks_per_ne00*ntx*nty / block_num_mmq;
for (int bidx = bidx_start; bidx < bidx_stop; ++bidx) {
kbc_0 = kbc_stop_0;
kbc_stop_0 = (int64_t) (bidx + 1)*blocks_per_ne00*ntx*nty / block_num_mmq;
const int64_t kbc = kbc_0 - (kbc_0 % blocks_per_ne00) % blocks_per_iter;
const int64_t kbc_stop = kbc_stop_0 - (kbc_stop_0 % blocks_per_ne00) % blocks_per_iter;
// Skip fixup tile if the MMQ CUDA block never wrote anything to it:
if (kbc == kbc_stop || kbc_stop % blocks_per_ne00 == 0) {
continue;
}
const int jt = kbc_stop / (blocks_per_ne00*nty);
const int it = (kbc_stop - jt*(blocks_per_ne00*nty)) / blocks_per_ne00;
// Skip fixup tile if it's unrelated to the output tile assigned to this CUDA block:
if ((unsigned)it != blockIdx.x || (unsigned)jt != blockIdx.y) {
if (kbc == kbc_stop) { // Did not have any data.
bidx--;
kbc_stop = kbc;
continue;
}
@@ -2733,16 +2892,71 @@ static __global__ void mul_mat_q_stream_k_fixup(
sum[(j0/nwarps) * (mmq_y/WARP_SIZE) + i0/WARP_SIZE] += tmp_last_tile[bidx*(mmq_x*mmq_y) + j*mmq_y + i];
}
}
// If this block started in a previous tile we are done and don't need to combine additional partial results.
if (kbc % blocks_per_ne00 == 0 || kbc/blocks_per_ne00 < kbc0/blocks_per_ne00) {
break;
}
bidx--;
kbc_stop = kbc;
}
if (!any_fixup) {
return;
}
dst += blockIdx.y*mmq_x*ne0 + blockIdx.x*mmq_y;
int tmp = kbc0;
const int it = tmp / (nsamples_y*nchannels_y*ntx*blocks_per_ne00);
tmp -= it * (nsamples_y*nchannels_y*ntx*blocks_per_ne00);
const int wt = tmp / (nchannels_y*ntx*blocks_per_ne00);
tmp -= wt * (nchannels_y*ntx*blocks_per_ne00);
const int zt = tmp / (ntx*blocks_per_ne00);
tmp -= zt * (ntx*blocks_per_ne00);
const int jt = tmp / blocks_per_ne00;
const int i_max = ne01 - blockIdx.x*mmq_y - 1;
const int j_max = ne11 - blockIdx.y*mmq_x - 1;
if (!ids_dst) {
const int offset_dst = wt*stride_sample_dst + zt*stride_channel_dst + jt*mmq_x*stride_col_dst + it*mmq_y;
dst += offset_dst;
const int i_max = nrows_x - it*mmq_y - 1;
const int j_max = ncols_y - jt*mmq_x - 1;
#pragma unroll
for (int j0 = 0; j0 < mmq_x; j0 += nwarps) {
const int j = j0 + threadIdx.y;
if (j > j_max) {
return;
}
#pragma unroll
for (int i0 = 0; i0 < mmq_y; i0 += WARP_SIZE) {
const int i = i0 + threadIdx.x;
if (need_check && i > i_max) {
continue;
}
dst[j*stride_col_dst + i] += sum[(j0/nwarps) * (mmq_y/WARP_SIZE) + i0/WARP_SIZE];
}
}
return;
}
__shared__ int ids_dst_shared[mmq_x];
const int col_low = expert_bounds[zt + 0];
const int col_high = expert_bounds[zt + 1];
const int col_diff = col_high - col_low;
for (int j = threadIdx.y*WARP_SIZE + threadIdx.x; j < mmq_x; j += nwarps*WARP_SIZE) {
ids_dst_shared[j] = ids_dst[col_low + j];
}
const int offset_dst = it*mmq_y;
dst += offset_dst;
const int i_max = nrows_x - it*mmq_y - 1;
const int j_max = col_diff - jt*mmq_x - 1;
#pragma unroll
for (int j0 = 0; j0 < mmq_x; j0 += nwarps) {
@@ -2760,26 +2974,27 @@ static __global__ void mul_mat_q_stream_k_fixup(
continue;
}
dst[j*ne0 + i] += sum[(j0/nwarps) * (mmq_y/WARP_SIZE) + i0/WARP_SIZE];
dst[ids_dst_shared[j]*stride_col_dst + i] += sum[(j0/nwarps) * (mmq_y/WARP_SIZE) + i0/WARP_SIZE];
}
}
}
struct mmq_args {
const char * x; const char * y; float * dst;
int64_t ne00; int64_t ne01; int64_t stride01;
int64_t ne10; int64_t ne11; int64_t stride11;
int64_t ne0;
const char * x; ggml_type type_x; const int * y; const int32_t * ids_dst; const int32_t * expert_bounds; float * dst;
int64_t ncols_x; int64_t nrows_x; int64_t ncols_y; int64_t stride_row_x; int64_t nrows_dst;
int64_t nchannels_x; int64_t nchannels_y; int64_t stride_channel_x; int64_t stride_channel_y; int64_t stride_channel_dst;
int64_t nsamples_x; int64_t nsamples_y; int64_t stride_sample_x; int64_t stride_sample_y; int64_t stride_sample_dst;
bool use_stream_k;
};
template<ggml_type type>
static int mmq_get_shmem(const int mmq_x, const int mmq_y, const int cc) {
static size_t mmq_get_nbytes_shared(const int mmq_x, const int mmq_y, const int cc) {
const tile_x_sizes txs = mmq_get_dp4a_tile_x_sizes(type, mmq_y);
const int mmq_tile_x_k = mmq_get_mma_tile_x_k(type);
const int shmem_x = new_mma_available(cc) ? mmq_y*mmq_tile_x_k*sizeof(int) : txs.qs*sizeof(int) + txs.dm*sizeof(half2) + txs.sc*sizeof(int);
const int shmem_y = mmq_x*sizeof(block_q8_1_mmq);
return shmem_x + GGML_PAD(shmem_y, MMQ_NWARPS*WARP_SIZE*sizeof(int));
const size_t nbs_ids = mmq_x*sizeof(int);
const size_t nbs_x = new_mma_available(cc) ? mmq_y*mmq_tile_x_k*sizeof(int) : txs.qs*sizeof(int) + txs.dm*sizeof(half2) + txs.sc*sizeof(int);
const size_t nbs_y = mmq_x*sizeof(block_q8_1_mmq);
return nbs_ids + nbs_x + GGML_PAD(nbs_y, MMQ_NWARPS*WARP_SIZE*sizeof(int));
}
template <ggml_type type, int mmq_x>
@@ -2791,86 +3006,114 @@ static void launch_mul_mat_q(ggml_backend_cuda_context & ctx, const mmq_args & a
const dim3 block_dims(WARP_SIZE, MMQ_NWARPS, 1);
const int shmem = mmq_get_shmem<type>(mmq_x, mmq_y, cc);
const int nbytes_shared = mmq_get_nbytes_shared<type>(mmq_x, mmq_y, cc);
#if !(defined(GGML_USE_HIP) && defined(__HIP_PLATFORM_AMD__)) && !defined(GGML_USE_MUSA)
static bool shmem_limit_raised[GGML_CUDA_MAX_DEVICES] = {false};
if (!shmem_limit_raised[id]) {
CUDA_CHECK(cudaFuncSetAttribute(mul_mat_q<type, mmq_x, MMQ_NWARPS, false>, cudaFuncAttributeMaxDynamicSharedMemorySize, shmem));
CUDA_CHECK(cudaFuncSetAttribute(mul_mat_q<type, mmq_x, MMQ_NWARPS, true>, cudaFuncAttributeMaxDynamicSharedMemorySize, shmem));
shmem_limit_raised[id] = true;
static bool shared_memory_limit_raised[GGML_CUDA_MAX_DEVICES] = {false};
if (!shared_memory_limit_raised[id]) {
CUDA_CHECK(cudaFuncSetAttribute(mul_mat_q<type, mmq_x, MMQ_NWARPS, false>, cudaFuncAttributeMaxDynamicSharedMemorySize, nbytes_shared));
CUDA_CHECK(cudaFuncSetAttribute(mul_mat_q<type, mmq_x, MMQ_NWARPS, true>, cudaFuncAttributeMaxDynamicSharedMemorySize, nbytes_shared));
shared_memory_limit_raised[id] = true;
}
#endif // !(defined(GGML_USE_HIP) && defined(__HIP_PLATFORM_AMD__)) && !defined(GGML_USE_MUSA)
const int nty = (args.ne01 + mmq_y - 1) / mmq_y;
const int ntx = (args.ne11 + mmq_x - 1) / mmq_x;
const dim3 block_nums_xy_tiling(nty, ntx, 1);
const int nty = (args.nrows_x + mmq_y - 1) / mmq_y;
const int ntx = (args.ncols_y + mmq_x - 1) / mmq_x;
const int ntzw = args.nchannels_y * args.nsamples_y;
const dim3 block_nums_xy_tiling(nty, ntx, ntzw);
GGML_ASSERT(args.nchannels_y % args.nchannels_x == 0);
GGML_ASSERT(args.nsamples_y % args.nsamples_x == 0);
const int channel_ratio = args.nchannels_y / args.nchannels_x;
const int sample_ratio = args.nsamples_y / args.nsamples_x;
if (!args.use_stream_k) {
if (args.ne01 % mmq_y == 0) {
if (args.nrows_x % mmq_y == 0) {
constexpr bool need_check = false;
mul_mat_q<type, mmq_x, MMQ_NWARPS, need_check><<<block_nums_xy_tiling, block_dims, shmem, stream>>>
(args.x, args.y, args.dst, nullptr, args.ne00, args.ne01, args.stride01, args.ne10, args.ne11, args.stride11, args.ne0);
mul_mat_q<type, mmq_x, MMQ_NWARPS, need_check><<<block_nums_xy_tiling, block_dims, nbytes_shared, stream>>>
(args.x, args.y, args.ids_dst, args.expert_bounds, args.dst, nullptr,
args.ncols_x, args.nrows_x, args.ncols_y, args.stride_row_x, args.nrows_dst,
channel_ratio, args.nchannels_y, args.stride_channel_x, args.stride_channel_y, args.stride_channel_dst,
sample_ratio, args.nsamples_y, args.stride_sample_x, args.stride_sample_y, args.stride_sample_dst);
} else {
constexpr bool need_check = true;
mul_mat_q<type, mmq_x, MMQ_NWARPS, need_check><<<block_nums_xy_tiling, block_dims, shmem, stream>>>
(args.x, args.y, args.dst, nullptr, args.ne00, args.ne01, args.stride01, args.ne10, args.ne11, args.stride11, args.ne0);
mul_mat_q<type, mmq_x, MMQ_NWARPS, need_check><<<block_nums_xy_tiling, block_dims, nbytes_shared, stream>>>
(args.x, args.y, args.ids_dst, args.expert_bounds, args.dst, nullptr,
args.ncols_x, args.nrows_x, args.ncols_y, args.stride_row_x, args.nrows_dst,
channel_ratio, args.nchannels_y, args.stride_channel_x, args.stride_channel_y, args.stride_channel_dst,
sample_ratio, args.nsamples_y, args.stride_sample_x, args.stride_sample_y, args.stride_sample_dst);
}
return;
}
const dim3 block_nums_mmq(nsm, 1, 1);
const dim3 block_nums_stream_k(nsm, 1, 1);
const bool fixup_needed = ntx*nty*ntzw % nsm != 0;
ggml_cuda_pool & pool = ctx.pool(id);
ggml_cuda_pool_alloc<float> tmp_fixup(pool, block_nums_mmq.x * mmq_x*mmq_y);
ggml_cuda_pool_alloc<float> tmp_fixup(pool);
if (fixup_needed) {
tmp_fixup.alloc(block_nums_stream_k.x * mmq_x*mmq_y);
}
if (args.ne01 % mmq_y == 0) {
if (args.nrows_x % mmq_y == 0) {
constexpr bool need_check = false;
mul_mat_q<type, mmq_x, MMQ_NWARPS, need_check><<<block_nums_mmq, block_dims, shmem, stream>>>
(args.x, args.y, args.dst, tmp_fixup.ptr, args.ne00, args.ne01, args.stride01, args.ne10, args.ne11, args.stride11, args.ne0);
mul_mat_q<type, mmq_x, MMQ_NWARPS, need_check><<<block_nums_stream_k, block_dims, nbytes_shared, stream>>>
(args.x, args.y, args.ids_dst, args.expert_bounds, args.dst, tmp_fixup.ptr,
args.ncols_x, args.nrows_x, args.ncols_y, args.stride_row_x, args.nrows_dst,
channel_ratio, args.nchannels_y, args.stride_channel_x, args.stride_channel_y, args.stride_channel_dst,
sample_ratio, args.nsamples_y, args.stride_sample_x, args.stride_sample_y, args.stride_sample_dst);
mul_mat_q_stream_k_fixup<type, mmq_x, MMQ_NWARPS, need_check><<<block_nums_xy_tiling, block_dims, 0, stream>>>
(args.dst, tmp_fixup.ptr, args.ne00, args.ne01, args.ne11, args.ne0, block_nums_mmq.x);
if (!fixup_needed) {
return;
}
mul_mat_q_stream_k_fixup<type, mmq_x, MMQ_NWARPS, need_check><<<block_nums_stream_k, block_dims, 0, stream>>>
(args.ids_dst, args.expert_bounds, args.dst, tmp_fixup.ptr, args.ncols_x, args.nrows_x, args.ncols_y,
args.nrows_dst, args.nchannels_y, args.stride_channel_dst, args.nsamples_y, args.stride_sample_dst);
} else {
constexpr bool need_check = true;
mul_mat_q<type, mmq_x, MMQ_NWARPS, need_check><<<block_nums_mmq, block_dims, shmem, stream>>>
(args.x, args.y, args.dst, tmp_fixup.ptr, args.ne00, args.ne01, args.stride01, args.ne10, args.ne11, args.stride11, args.ne0);
mul_mat_q<type, mmq_x, MMQ_NWARPS, need_check><<<block_nums_stream_k, block_dims, nbytes_shared, stream>>>
(args.x, args.y, args.ids_dst, args.expert_bounds, args.dst, tmp_fixup.ptr,
args.ncols_x, args.nrows_x, args.ncols_y, args.stride_row_x, args.nrows_dst,
channel_ratio, args.nchannels_y, args.stride_channel_x, args.stride_channel_y, args.stride_channel_dst,
sample_ratio, args.nsamples_y, args.stride_sample_x, args.stride_sample_y, args.stride_sample_dst);
mul_mat_q_stream_k_fixup<type, mmq_x, MMQ_NWARPS, need_check><<<block_nums_xy_tiling, block_dims, 0, stream>>>
(args.dst, tmp_fixup.ptr, args.ne00, args.ne01, args.ne11, args.ne0, block_nums_mmq.x);
if (!fixup_needed) {
return;
}
mul_mat_q_stream_k_fixup<type, mmq_x, MMQ_NWARPS, need_check><<<block_nums_stream_k, block_dims, 0, stream>>>
(args.ids_dst, args.expert_bounds, args.dst, tmp_fixup.ptr, args.ncols_x, args.nrows_x, args.ncols_y,
args.nrows_dst, args.nchannels_y, args.stride_channel_dst, args.nsamples_y, args.stride_sample_dst);
}
}
template <ggml_type type>
void mul_mat_q_case(ggml_backend_cuda_context & ctx, const mmq_args & args, cudaStream_t stream) {
const int id = ggml_cuda_get_device();
const int cc = ggml_cuda_info().devices[id].cc;
const int smpbo = ggml_cuda_info().devices[id].smpbo;
const int id = ggml_cuda_get_device();
const int cc = ggml_cuda_info().devices[id].cc;
const size_t smpbo = ggml_cuda_info().devices[id].smpbo;
const int mmq_x_max = get_mmq_x_max_host(cc);
const int mmq_y = get_mmq_y_host(cc);
const int block_num_y = (args.ne01 + mmq_y - 1) / mmq_y;
const bool use_stream_k = GGML_CUDA_CC_IS_NVIDIA(cc) && ggml_cuda_highest_compiled_arch(cc) >= GGML_CUDA_CC_VOLTA;
int mmq_x_best = 0;
int nparts_best = INT_MAX;
int ntiles_x_best = INT_MAX;
for (int mmq_x = 8; mmq_x <= mmq_x_max && nparts_best > 1; mmq_x += 8) {
for (int mmq_x = 8; mmq_x <= mmq_x_max && ntiles_x_best > 1; mmq_x += 8) {
const int granularity = mmq_get_granularity_host(mmq_x, cc);
if (mmq_x % granularity != 0 || mmq_get_shmem<type>(mmq_x, mmq_y, cc) > smpbo) {
if (mmq_x % granularity != 0 || mmq_get_nbytes_shared<type>(mmq_x, mmq_y, cc) > smpbo) {
continue;
}
const int ntiles_x = (args.ne11 + mmq_x - 1) / mmq_x;
const int nwaves_xy_tiling = ntiles_x*block_num_y;
const int nparts = use_stream_k ? ntiles_x : nwaves_xy_tiling;
const int ntiles_x = (args.ncols_y + mmq_x - 1) / mmq_x;
if (nparts < nparts_best) {
mmq_x_best = mmq_x;
nparts_best = nparts;
if (ntiles_x < ntiles_x_best) {
mmq_x_best = mmq_x;
ntiles_x_best = ntiles_x;
}
}
@@ -2954,6 +3197,9 @@ extern DECL_MMQ_CASE(GGML_TYPE_IQ4_XS);
// -------------------------------------------------------------------------------------------------------------------------
void ggml_cuda_mul_mat_q(
ggml_backend_cuda_context & ctx, const ggml_tensor * src0, const ggml_tensor * src1, const ggml_tensor * ids, ggml_tensor * dst);
void ggml_cuda_op_mul_mat_q(
ggml_backend_cuda_context & ctx,
const ggml_tensor * src0, const ggml_tensor * src1, ggml_tensor * dst, const char * src0_dd_i, const float * src1_ddf_i,

View File

@@ -158,7 +158,7 @@ static __global__ void mul_mat_vec_q(
const int blocks_per_row_x = ncols_x / qk;
constexpr int blocks_per_iter = vdr * nwarps*warp_size / qi;
// The MUL_MAT_ID code path with ids != nullptr is only implemetned for ncols_dst == 1.
// The MUL_MAT_ID code path with ids != nullptr is only implemented for ncols_dst == 1.
const int channel_dst = blockIdx.y;
const int channel_x = ncols_dst == 1 && ids ? ids[channel_dst] : channel_dst / channel_ratio;
const int channel_y = ncols_dst == 1 && ids ? channel_dst % nchannels_y : channel_dst;
@@ -507,7 +507,7 @@ void ggml_cuda_mul_mat_vec_q(
GGML_ASSERT( nb0 == ts_dst);
GGML_ASSERT(!ids || ids->nb[0] == ggml_type_size(ids->type));
GGML_ASSERT(!ids || ne12 == 1); // Implementation is only correct for batch size 1.
GGML_ASSERT(!ids || ne12 == 1); // Implementation is only correct for batch size 1.
const float * src1_d = (const float *) src1->data;
const int32_t * ids_d = ids ? (const int32_t *) ids->data : nullptr;
@@ -519,7 +519,7 @@ void ggml_cuda_mul_mat_vec_q(
const int64_t s11 = src1->nb[1] / ts_src1;
const int64_t s12 = src1->nb[2] / ts_src1;
const int64_t s13 = src1->nb[3] / ts_src1;
quantize_row_q8_1_cuda(src1_d, src1_q8_1.get(), src0->type, ne10, s11, s12, s13, ne10_padded, ne11, ne12, ne13, stream);
quantize_row_q8_1_cuda(src1_d, nullptr, src1_q8_1.get(), src0->type, ne10, s11, s12, s13, ne10_padded, ne11, ne12, ne13, stream);
}
const int64_t s01 = src0->nb[1] / ts_src0;

View File

@@ -49,29 +49,38 @@ static __global__ void quantize_q8_1(
template <mmq_q8_1_ds_layout ds_layout>
static __global__ void quantize_mmq_q8_1(
const float * __restrict__ x, void * __restrict__ vy, const int64_t kx0, const int64_t kx1, const int64_t kx0_padded) {
const float * __restrict__ x, const int32_t * __restrict__ ids, void * __restrict__ vy,
const int64_t ne00, const int64_t s01, const int64_t s02, const int64_t s03,
const int64_t ne0, const int ne1, const int ne2) {
constexpr int vals_per_scale = ds_layout == MMQ_Q8_1_DS_LAYOUT_D2S6 ? 64 : 32;
constexpr int vals_per_sum = ds_layout == MMQ_Q8_1_DS_LAYOUT_D2S6 ? 16 : 32;
const int64_t ix0 = ((int64_t)blockDim.x*blockIdx.x + threadIdx.x)*4;
const int64_t i0 = ((int64_t)blockDim.x*blockIdx.x + threadIdx.x)*4;
if (ix0 >= kx0_padded) {
if (i0 >= ne0) {
return;
}
const float4 * x4 = (const float4 *) x;
const int64_t i1 = blockIdx.y;
const int64_t i2 = blockIdx.z % ne2;
const int64_t i3 = blockIdx.z / ne2;
const int64_t ix1 = kx1*blockIdx.z + blockIdx.y;
const int64_t i00 = i0;
const int64_t i01 = ids ? ids[i1] : i1;
const int64_t i02 = i2;
const int64_t i03 = i3;
const float4 * x4 = (const float4 *) x;
block_q8_1_mmq * y = (block_q8_1_mmq *) vy;
const int64_t ib0 = blockIdx.z*((int64_t)gridDim.y*gridDim.x*blockDim.x/QK8_1); // first block of channel
const int64_t ib = ib0 + (ix0 / (4*QK8_1))*kx1 + blockIdx.y; // block index in channel
const int64_t iqs = ix0 % (4*QK8_1); // quant index in block
const int64_t ib = ib0 + (i0 / (4*QK8_1))*ne1 + blockIdx.y; // block index in channel
const int64_t iqs = i0 % (4*QK8_1); // quant index in block
// Load 4 floats per thread and calculate max. abs. value between them:
const float4 xi = ix0 < kx0 ? x4[(ix1*kx0 + ix0)/4] : make_float4(0.0f, 0.0f, 0.0f, 0.0f);
const float4 xi = i0 < ne00 ? x4[(i03*s03 + i02*s02 + i01*s01 + i00)/4] : make_float4(0.0f, 0.0f, 0.0f, 0.0f);
float amax = fabsf(xi.x);
amax = fmaxf(amax, fabsf(xi.y));
amax = fmaxf(amax, fabsf(xi.z));
@@ -87,7 +96,7 @@ static __global__ void quantize_mmq_q8_1(
if (ds_layout != MMQ_Q8_1_DS_LAYOUT_D4) {
sum = xi.x + xi.y + xi.z + xi.w;
// Exchange calculate sum across vals_per_sum/4 threads.
// Calculate sums across vals_per_sum/4 threads.
#pragma unroll
for (int offset = vals_per_sum/8; offset > 0; offset >>= 1) {
sum += __shfl_xor_sync(0xFFFFFFFF, sum, offset, WARP_SIZE);
@@ -137,9 +146,10 @@ static __global__ void quantize_mmq_q8_1(
}
void quantize_row_q8_1_cuda(
const float * x, void * vy, const ggml_type type_src0, const int64_t ne00, const int64_t s01, const int64_t s02, const int64_t s03,
const int64_t ne0, const int64_t ne1, const int64_t ne2, const int64_t ne3, cudaStream_t stream) {
const float * x, const int32_t * ids, void * vy, const ggml_type type_src0,
const int64_t ne00, const int64_t s01, const int64_t s02, const int64_t s03,
const int64_t ne0, const int64_t ne1, const int64_t ne2, const int64_t ne3, cudaStream_t stream) {
GGML_ASSERT(!ids);
GGML_ASSERT(ne0 % QK8_1 == 0);
const int64_t block_num_x = (ne0 + CUDA_QUANTIZE_BLOCK_SIZE - 1) / CUDA_QUANTIZE_BLOCK_SIZE;
@@ -150,9 +160,9 @@ void quantize_row_q8_1_cuda(
}
void quantize_mmq_q8_1_cuda(
const float * x, void * vy, const ggml_type type_src0, const int64_t ne00, const int64_t s01, const int64_t s02, const int64_t s03,
const int64_t ne0, const int64_t ne1, const int64_t ne2, const int64_t ne3, cudaStream_t stream) {
const float * x, const int32_t * ids, void * vy, const ggml_type type_src0,
const int64_t ne00, const int64_t s01, const int64_t s02, const int64_t s03,
const int64_t ne0, const int64_t ne1, const int64_t ne2, const int64_t ne3, cudaStream_t stream) {
GGML_ASSERT(ne0 % (4*QK8_1) == 0);
const int64_t block_num_x = (ne0 + 4*CUDA_QUANTIZE_BLOCK_SIZE_MMQ - 1) / (4*CUDA_QUANTIZE_BLOCK_SIZE_MMQ);
@@ -161,21 +171,18 @@ void quantize_mmq_q8_1_cuda(
switch (mmq_get_q8_1_ds_layout(type_src0)) {
case MMQ_Q8_1_DS_LAYOUT_D4:
quantize_mmq_q8_1<MMQ_Q8_1_DS_LAYOUT_D4>
<<<num_blocks, block_size, 0, stream>>>(x, vy, ne00, ne1, ne0);
<<<num_blocks, block_size, 0, stream>>>(x, ids, vy, ne00, s01, s02, s03, ne0, ne1, ne2);
break;
case MMQ_Q8_1_DS_LAYOUT_DS4:
quantize_mmq_q8_1<MMQ_Q8_1_DS_LAYOUT_DS4>
<<<num_blocks, block_size, 0, stream>>>(x, vy, ne00, ne1, ne0);
<<<num_blocks, block_size, 0, stream>>>(x, ids, vy, ne00, s01, s02, s03, ne0, ne1, ne2);
break;
case MMQ_Q8_1_DS_LAYOUT_D2S6:
quantize_mmq_q8_1<MMQ_Q8_1_DS_LAYOUT_D2S6>
<<<num_blocks, block_size, 0, stream>>>(x, vy, ne00, ne1, ne0);
<<<num_blocks, block_size, 0, stream>>>(x, ids, vy, ne00, s01, s02, s03, ne0, ne1, ne2);
break;
default:
GGML_ABORT("fatal error");
break;
}
GGML_UNUSED(s01);
GGML_UNUSED(s02);
GGML_UNUSED(s03);
}

View File

@@ -12,13 +12,16 @@ static_assert(MATRIX_ROW_PADDING % CUDA_QUANTIZE_BLOCK_SIZE == 0, "Risk
static_assert(MATRIX_ROW_PADDING % (4*CUDA_QUANTIZE_BLOCK_SIZE_MMQ) == 0, "Risk of out-of-bounds access.");
typedef void (*quantize_cuda_t)(
const float * x, void * vy, const ggml_type type_src0, const int64_t ne00, const int64_t s01, const int64_t s02, const int64_t s03,
const int64_t ne0, const int64_t ne1, const int64_t ne2, const int64_t ne3, cudaStream_t stream);
const float * x, const int32_t * ids, void * vy,
ggml_type type_src0, int64_t ne00, int64_t s01, int64_t s02, int64_t s03,
int64_t ne0, int64_t ne1, int64_t ne2, int64_t ne3, cudaStream_t stream);
void quantize_row_q8_1_cuda(
const float * x, void * vy, const ggml_type type_src0, const int64_t ne00, const int64_t s01, const int64_t s02, const int64_t s03,
const int64_t ne0, const int64_t ne1, const int64_t ne2, const int64_t ne3, cudaStream_t stream);
const float * x, const int32_t * ids, void * vy,
ggml_type type_src0, int64_t ne00, int64_t s01, int64_t s02, int64_t s03,
int64_t ne0, int64_t ne1, int64_t ne2, int64_t ne3, cudaStream_t stream);
void quantize_mmq_q8_1_cuda(
const float * x, void * vy, const ggml_type type_src0, const int64_t ne00, const int64_t s01, const int64_t s02, const int64_t s03,
const int64_t ne0, const int64_t ne1, const int64_t ne2, const int64_t ne3, cudaStream_t stream);
const float * x, const int32_t * ids, void * vy,
ggml_type type_src0, int64_t ne00, int64_t s01, int64_t s02, int64_t s03,
int64_t ne0, int64_t ne1, int64_t ne2, int64_t ne3, cudaStream_t stream);

View File

@@ -518,6 +518,11 @@ static rpc_tensor serialize_tensor(const ggml_tensor * tensor) {
result.view_src = reinterpret_cast<uint64_t>(tensor->view_src);
result.view_offs = tensor->view_offs;
result.data = reinterpret_cast<uint64_t>(tensor->data);
// Avoid sending uninitialized data over the wire
memset(result.name, 0, sizeof(result.name));
memset(result.padding, 0, sizeof(result.padding));
snprintf(result.name, GGML_MAX_NAME, "%s", tensor->name);
return result;
}
@@ -982,8 +987,21 @@ bool rpc_server::buffer_clear(const rpc_msg_buffer_clear_req & request) {
}
ggml_tensor * rpc_server::deserialize_tensor(struct ggml_context * ctx, const rpc_tensor * tensor) {
// Validate tensor type before using it
if (tensor->type >= GGML_TYPE_COUNT) {
GGML_LOG_ERROR("[%s] invalid tensor type received: %u\n", __func__, tensor->type);
return nullptr;
}
ggml_tensor * result = ggml_new_tensor_4d(ctx, (ggml_type) tensor->type,
tensor->ne[0], tensor->ne[1], tensor->ne[2], tensor->ne[3]);
// ggml_new_tensor_4d might fail if dimensions are invalid, although less likely to crash than invalid type
if (result == nullptr) {
GGML_LOG_ERROR("[%s] ggml_new_tensor_4d failed for type %u\\n", __func__, tensor->type);
return nullptr;
}
for (uint32_t i = 0; i < GGML_MAX_DIMS; i++) {
result->nb[i] = tensor->nb[i];
}
@@ -1043,7 +1061,9 @@ bool rpc_server::set_tensor(const std::vector<uint8_t> & input) {
const size_t p1 = p0 + ggml_backend_buffer_get_size(tensor->buffer);
if (in_tensor->data + offset < p0 || in_tensor->data + offset >= p1 || size > (p1 - in_tensor->data - offset)) {
GGML_ABORT("[%s] tensor->data out of bounds\n", __func__);
GGML_LOG_ERROR("[%s] tensor data region (data=0x%" PRIx64 ", offset=%" PRIu64 ", size=%zu) out of buffer bounds [0x%zx, 0x%zx)\n",
__func__, in_tensor->data, offset, size, p0, p1);
return false;
}
}
@@ -1118,7 +1138,9 @@ bool rpc_server::set_tensor_hash(const std::vector<uint8_t> & input, rpc_msg_set
const size_t p1 = p0 + ggml_backend_buffer_get_size(tensor->buffer);
if (in_tensor->data + offset < p0 || in_tensor->data + offset >= p1 || size > (p1 - in_tensor->data - offset)) {
GGML_ABORT("[%s] tensor->data out of bounds\n", __func__);
GGML_LOG_ERROR("[%s] tensor data region (data=0x%" PRIx64 ", offset=%" PRIu64 ", size=%zu, hash=0x%" PRIx64 ") out of buffer bounds [0x%zx, 0x%zx)\n",
__func__, in_tensor->data, offset, size, *hash, p0, p1);
return false;
}
}
ggml_backend_tensor_set(tensor, cached_file.data(), offset, size);
@@ -1183,7 +1205,9 @@ bool rpc_server::get_tensor(const rpc_msg_get_tensor_req & request, std::vector<
if (request.tensor.data + request.offset < p0 ||
request.tensor.data + request.offset >= p1 ||
request.size > (p1 - request.tensor.data - request.offset)) {
GGML_ABORT("[%s] tensor->data out of bounds\n", __func__);
GGML_LOG_ERROR("[%s] requested tensor region (data=0x%" PRIx64 ", offset=%" PRIu64 ", size=%" PRIu64 ") out of buffer bounds [0x%zx, 0x%zx)\n",
__func__, request.tensor.data, request.offset, request.size, p0, p1);
return false;
}
}
@@ -1237,22 +1261,50 @@ ggml_tensor * rpc_server::create_node(uint64_t id,
struct ggml_context * ctx,
const std::unordered_map<uint64_t, const rpc_tensor*> & tensor_ptrs,
std::unordered_map<uint64_t, struct ggml_tensor*> & tensor_map) {
if (id == 0) {
return nullptr;
}
if (tensor_map.find(id) != tensor_map.end()) {
return tensor_map[id];
}
const rpc_tensor * tensor = tensor_ptrs.at(id);
// Safely find the tensor pointer
auto it_ptr = tensor_ptrs.find(id);
if (it_ptr == tensor_ptrs.end()) {
return nullptr;
}
const rpc_tensor * tensor = it_ptr->second;
struct ggml_tensor * result = deserialize_tensor(ctx, tensor);
if (result == nullptr) {
return nullptr;
}
tensor_map[id] = result;
for (int i = 0; i < GGML_MAX_SRC; i++) {
result->src[i] = create_node(tensor->src[i], ctx, tensor_ptrs, tensor_map);
// Check if the source ID is 0 before calling create_node recursively
if (tensor->src[i] == 0) {
result->src[i] = nullptr;
} else {
result->src[i] = create_node(tensor->src[i], ctx, tensor_ptrs, tensor_map);
// If the recursive call failed for a non-zero ID, propagate the error
if (result->src[i] == nullptr) {
GGML_LOG_ERROR("[%s] failed to create source node %d (src_id=%" PRIu64 ") for node id %" PRIu64 "\n",
__func__, i, tensor->src[i], id);
// Must return nullptr to signal failure up the call stack
return nullptr;
}
}
}
// Handle view_src similarly
if (tensor->view_src == 0) {
result->view_src = nullptr;
} else {
result->view_src = create_node(tensor->view_src, ctx, tensor_ptrs, tensor_map);
// If the recursive call failed for a non-zero ID, propagate the error
if (result->view_src == nullptr) {
GGML_LOG_ERROR("[%s] failed to create view_src node (view_src_id=%" PRIu64 ") for node id %" PRIu64 "\n",
__func__, tensor->view_src, id);
// Must return nullptr to signal failure up the call stack
return nullptr;
}
}
result->view_src = create_node(tensor->view_src, ctx, tensor_ptrs, tensor_map);
result->view_offs = tensor->view_offs;
return result;
}
@@ -1278,6 +1330,7 @@ bool rpc_server::graph_compute(const std::vector<uint8_t> & input, rpc_msg_graph
GGML_PRINT_DEBUG("[%s] n_nodes: %u, n_tensors: %u\n", __func__, n_nodes, n_tensors);
size_t buf_size = ggml_tensor_overhead()*(n_nodes + n_tensors) + ggml_graph_overhead_custom(n_nodes, false);
struct ggml_init_params params = {
/*.mem_size =*/ buf_size,
/*.mem_buffer =*/ NULL,
@@ -1297,6 +1350,14 @@ bool rpc_server::graph_compute(const std::vector<uint8_t> & input, rpc_msg_graph
int64_t id;
memcpy(&id, &nodes[i], sizeof(id));
graph->nodes[i] = create_node(id, ctx, tensor_ptrs, tensor_map);
// Check if create_node failed for a *non-zero* ID.
// If id was 0, create_node returning nullptr is expected.
// If id was non-zero and create_node returned nullptr, it indicates a deserialization error.
if (graph->nodes[i] == nullptr && id != 0) {
GGML_LOG_ERROR("[%s] failed to create graph node %d (id=%" PRId64 ")\n", __func__, i, id);
return false;
}
}
ggml_status status = ggml_backend_graph_compute(backend, graph);
response.result = status;
@@ -1361,7 +1422,9 @@ static void rpc_serve_client(ggml_backend_t backend, const char * cache_dir,
return;
}
rpc_msg_get_alloc_size_rsp response;
server.get_alloc_size(request, response);
if (!server.get_alloc_size(request, response)) {
return;
}
if (!send_msg(sockfd, &response, sizeof(response))) {
return;
}

View File

@@ -493,5 +493,9 @@ static __dpct_inline__ Tp* get_pointer(sycl::local_accessor<Tp, dim> acc) {
int64_t downsample_sycl_global_range(int64_t accumulate_block_num, int64_t block_size);
constexpr size_t ceil_div(const size_t m, const size_t n) {
return (m + n - 1) / n;
}
bool gpu_has_xmx(sycl::device &dev);
#endif // GGML_SYCL_COMMON_HPP

View File

@@ -21,6 +21,27 @@ static void acc_f32(const float * x, const float * y, float * dst, const int ne,
}
}
template<typename T>
static void sgn(const T * x, T * dst, const int k, const sycl::nd_item<3> &item_ct1) {
for(auto i = item_ct1.get_global_id(2); i < (const size_t)k; i += item_ct1.get_global_range(2)) {
dst[i] = x[i] > static_cast<T>(0.f) ? static_cast<T>(1.f) : ((x[i] < static_cast<T>(0.f) ? static_cast<T>(-1.f) : static_cast<T>(0.f)));
}
}
template<typename T>
static void abs_op(const T * x, T * dst, const int k, const sycl::nd_item<3> &item_ct1) {
for(auto i = item_ct1.get_global_id(2); i < (const size_t)k; i += item_ct1.get_global_range(2)) {
dst[i] = sycl::fabs(x[i]);
}
}
template<typename T>
static void elu_op(const T * x, T * dst, const int k, const sycl::nd_item<3> &item_ct1) {
for(auto i = item_ct1.get_global_id(2); i < (const size_t)k; i += item_ct1.get_global_range(2)) {
dst[i] = (x[i] > static_cast<T>(0.f)) ? x[i] : sycl::expm1(x[i]);
}
}
template<typename T>
static void gelu(const T * x, T * dst, const int k,
const sycl::nd_item<3> &item_ct1) {
@@ -335,6 +356,37 @@ static void silu_sycl(const T *x, T *dst, const int k,
});
}
template<typename T>
static void sgn_sycl(const T * x, T * dst, const int k, queue_ptr stream) {
// hard code for now
const int num_blocks = ceil_div(k, 256);
stream->parallel_for(
sycl::nd_range<3>((sycl::range<3>(1, 1, num_blocks) * sycl::range(1, 1, 256)), sycl::range(1, 1, 256)), [=](sycl::nd_item<3> item_ct1) {
sgn(x, dst, k, item_ct1);
});
}
template<typename T>
static void abs_sycl(const T * x, T * dst, const int k, queue_ptr stream) {
// hard code for now
const int num_blocks = ceil_div(k, 256);
stream->parallel_for(
sycl::nd_range<3>((sycl::range<3>(1, 1, num_blocks) * sycl::range<3>(1, 1, 256)), sycl::range<3>(1, 1, 256)), [=](sycl::nd_item<3> item_ct1) {
abs_op(x, dst, k, item_ct1);
});
}
template<typename T>
static void elu_sycl(const T * x, T * dst, const int k, queue_ptr stream) {
// hard code for now
const int num_blocks = ceil_div(k, 256);
stream->parallel_for(
sycl::nd_range<3>((sycl::range<3>(1, 1, num_blocks) * sycl::range<3>(1, 1, 256)), sycl::range<3>(1, 1, 256)), [=](sycl::nd_item<3> item_ct1) {
elu_op(x, dst, k, item_ct1);
});
}
template<typename T>
static void gelu_quick_sycl(const T *x, T *dst, const int k,
queue_ptr stream) {
@@ -574,6 +626,106 @@ static void clamp_sycl(const T *x, T *dst, const float min,
});
}
inline void ggml_sycl_op_sgn(ggml_backend_sycl_context & ctx, ggml_tensor * dst) {
#if defined (GGML_SYCL_F16)
GGML_ASSERT(dst->src[0]->type == GGML_TYPE_F32 || dst->src[0]->type == GGML_TYPE_F16);
GGML_ASSERT(dst->type == GGML_TYPE_F32 || dst->type == GGML_TYPE_F16);
#else
GGML_ASSERT(dst->src[0]->type == GGML_TYPE_F32);
GGML_ASSERT(dst->type == GGML_TYPE_F32);
#endif
GGML_ASSERT(dst->src[0]->type == dst->type);
dpct::queue_ptr main_stream = ctx.stream();
SYCL_CHECK(ggml_sycl_set_device(ctx.device));
switch (dst->type) {
#if defined (GGML_SYCL_F16)
case GGML_TYPE_F16:
{
auto data_pts = cast_data<sycl::half>(dst);
sgn_sycl(data_pts.src, data_pts.dst, ggml_nelements(dst->src[0]), main_stream);
break;
}
#endif
case GGML_TYPE_F32:
{
auto data_pts = cast_data<float>(dst);
sgn_sycl(data_pts.src, data_pts.dst, ggml_nelements(dst->src[0]), main_stream);
break;
}
default:
GGML_ABORT("GGML tensor type not supported!\n");
break;
}
}
inline void ggml_sycl_op_abs(ggml_backend_sycl_context & ctx, ggml_tensor * dst) {
#if defined (GGML_SYCL_F16)
GGML_ASSERT(dst->src[0]->type == GGML_TYPE_F32 || dst->src[0]->type == GGML_TYPE_F16);
GGML_ASSERT(dst->type == GGML_TYPE_F32 || dst->type == GGML_TYPE_F16);
#else
GGML_ASSERT(dst->src[0]->type == GGML_TYPE_F32);
GGML_ASSERT(dst->type == GGML_TYPE_F32);
#endif
GGML_ASSERT(dst->src[0]->type == dst->type);
dpct::queue_ptr main_stream = ctx.stream();
SYCL_CHECK(ggml_sycl_set_device(ctx.device));
switch (dst->type) {
#if defined (GGML_SYCL_F16)
case GGML_TYPE_F16:
{
auto data_pts = cast_data<sycl::half>(dst);
abs_sycl(data_pts.src, data_pts.dst, ggml_nelements(dst->src[0]), main_stream);
break;
}
#endif
case GGML_TYPE_F32:
{
auto data_pts = cast_data<float>(dst);
abs_sycl(data_pts.src, data_pts.dst, ggml_nelements(dst->src[0]), main_stream);
break;
}
default:
GGML_ABORT("GGML tensor type not supported!\n");
break;
}
}
inline void ggml_sycl_op_elu(ggml_backend_sycl_context & ctx, ggml_tensor * dst) {
#if defined (GGML_SYCL_F16)
GGML_ASSERT(dst->src[0]->type == GGML_TYPE_F32 || dst->src[0]->type == GGML_TYPE_F16);
GGML_ASSERT(dst->type == GGML_TYPE_F32 || dst->type == GGML_TYPE_F16);
#else
GGML_ASSERT(dst->src[0]->type == GGML_TYPE_F32);
GGML_ASSERT(dst->type == GGML_TYPE_F32);
#endif
GGML_ASSERT(dst->src[0]->type == dst->type);
dpct::queue_ptr main_stream = ctx.stream();
SYCL_CHECK(ggml_sycl_set_device(ctx.device));
switch (dst->type) {
#if defined (GGML_SYCL_F16)
case GGML_TYPE_F16:
{
auto data_pts = cast_data<sycl::half>(dst);
elu_sycl(data_pts.src, data_pts.dst, ggml_nelements(dst->src[0]), main_stream);
break;
}
#endif
case GGML_TYPE_F32:
{
auto data_pts = cast_data<float>(dst);
elu_sycl(data_pts.src, data_pts.dst, ggml_nelements(dst->src[0]), main_stream);
break;
}
default:
GGML_ABORT("GGML tensor type not supported!\n");
break;
}
}
inline void ggml_sycl_op_silu(ggml_backend_sycl_context & ctx, ggml_tensor * dst) {
#if defined (GGML_SYCL_F16)
GGML_ASSERT(dst->src[0]->type == GGML_TYPE_F32 || dst->src[0]->type == GGML_TYPE_F16);
@@ -1388,3 +1540,20 @@ void ggml_sycl_clamp(ggml_backend_sycl_context & ctx, ggml_tensor * dst) {
GGML_SYCL_DEBUG("call %s done\n", __func__);
}
void ggml_sycl_sgn(ggml_backend_sycl_context & ctx, ggml_tensor * dst) {
GGML_SYCL_DEBUG("call %s: DST Tensor type: %s\n", __func__, ggml_type_name(dst->type));
ggml_sycl_op_sgn(ctx, dst);
GGML_SYCL_DEBUG("call %s done\n", __func__);
}
void ggml_sycl_abs(ggml_backend_sycl_context & ctx, ggml_tensor * dst) {
GGML_SYCL_DEBUG("call %s: DST Tensor type: %s\n", __func__, ggml_type_name(dst->type));
ggml_sycl_op_abs(ctx, dst);
GGML_SYCL_DEBUG("call %s done\n", __func__);
}
void ggml_sycl_elu(ggml_backend_sycl_context & ctx, ggml_tensor * dst) {
GGML_SYCL_DEBUG("call %s: DST Tensor type: %s\n", __func__, ggml_type_name(dst->type));
ggml_sycl_op_elu(ctx, dst);
GGML_SYCL_DEBUG("call %s done\n", __func__);
}

View File

@@ -66,5 +66,10 @@ void ggml_sycl_pad(ggml_backend_sycl_context & ctx, ggml_tensor * dst);
void ggml_sycl_clamp(ggml_backend_sycl_context & ctx, ggml_tensor * dst);
void ggml_sycl_sgn(ggml_backend_sycl_context & ctx, ggml_tensor * dst);
void ggml_sycl_abs(ggml_backend_sycl_context & ctx, ggml_tensor * dst);
void ggml_sycl_elu(ggml_backend_sycl_context & ctx, ggml_tensor * dst);
#endif // GGML_SYCL_ELEMENTWISE_HPP

View File

@@ -38,6 +38,7 @@
#include "ggml-sycl/backend.hpp"
#include "ggml-sycl/common.hpp"
#include "ggml-sycl/element_wise.hpp"
#include "ggml-sycl/presets.hpp"
#include "ggml-sycl/gemm.hpp"
#include "ggml-sycl/sycl_hw.hpp"
@@ -3355,6 +3356,15 @@ static bool ggml_sycl_compute_forward(ggml_backend_sycl_context & ctx, struct gg
case GGML_UNARY_OP_EXP:
ggml_sycl_exp(ctx, dst);
break;
case GGML_UNARY_OP_SGN:
ggml_sycl_sgn(ctx, dst);
break;
case GGML_UNARY_OP_ABS:
ggml_sycl_abs(ctx, dst);
break;
case GGML_UNARY_OP_ELU:
ggml_sycl_elu(ctx, dst);
break;
default:
return false;
}
@@ -3837,6 +3847,9 @@ static bool ggml_backend_sycl_device_supports_op(ggml_backend_dev_t dev, const g
case GGML_UNARY_OP_GELU_QUICK:
case GGML_UNARY_OP_TANH:
case GGML_UNARY_OP_EXP:
case GGML_UNARY_OP_SGN:
case GGML_UNARY_OP_ABS:
case GGML_UNARY_OP_ELU:
#if defined (GGML_SYCL_F16)
return ggml_is_contiguous(op->src[0]) && (op->type == op->src[0]->type);
#else

View File

@@ -71,6 +71,22 @@ if (Vulkan_FOUND)
add_compile_definitions(GGML_VULKAN_INTEGER_DOT_GLSLC_SUPPORT)
endif()
# Compile a test shader to determine whether GL_EXT_bfloat16 is supported.
# If it's not, there will be an error to stderr.
# If it's supported, set a define to indicate that we should compile those shaders
execute_process(COMMAND ${Vulkan_GLSLC_EXECUTABLE} -o - -fshader-stage=compute --target-env=vulkan1.3 "${CMAKE_CURRENT_SOURCE_DIR}/vulkan-shaders/test_bfloat16_support.comp"
OUTPUT_VARIABLE glslc_output
ERROR_VARIABLE glslc_error)
if (${glslc_error} MATCHES ".*extension not supported: GL_EXT_bfloat16.*")
message(STATUS "GL_EXT_bfloat16 not supported by glslc")
set(GGML_VULKAN_BFLOAT16_GLSLC_SUPPORT OFF)
else()
message(STATUS "GL_EXT_bfloat16 supported by glslc")
set(GGML_VULKAN_BFLOAT16_GLSLC_SUPPORT ON)
add_compile_definitions(GGML_VULKAN_BFLOAT16_GLSLC_SUPPORT)
endif()
target_link_libraries(ggml-vulkan PRIVATE Vulkan::Vulkan)
target_include_directories(ggml-vulkan PRIVATE ${CMAKE_CURRENT_BINARY_DIR})
@@ -142,6 +158,7 @@ if (Vulkan_FOUND)
-DGGML_VULKAN_COOPMAT_GLSLC_SUPPORT=${GGML_VULKAN_COOPMAT_GLSLC_SUPPORT}
-DGGML_VULKAN_COOPMAT2_GLSLC_SUPPORT=${GGML_VULKAN_COOPMAT2_GLSLC_SUPPORT}
-DGGML_VULKAN_INTEGER_DOT_GLSLC_SUPPORT=${GGML_VULKAN_INTEGER_DOT_GLSLC_SUPPORT}
-DGGML_VULKAN_BFLOAT16_GLSLC_SUPPORT=${GGML_VULKAN_BFLOAT16_GLSLC_SUPPORT}
BUILD_COMMAND ${CMAKE_COMMAND} --build .
INSTALL_COMMAND ${CMAKE_COMMAND} --install .
INSTALL_DIR ${CMAKE_BINARY_DIR}

View File

@@ -51,6 +51,24 @@
#include "ggml-vulkan-shaders.hpp"
// remove this once it's more widely available in the SDK
#if !defined(VK_KHR_shader_bfloat16)
#define VK_KHR_shader_bfloat16 1
#define VK_KHR_SHADER_BFLOAT16_SPEC_VERSION 1
#define VK_KHR_SHADER_BFLOAT16_EXTENSION_NAME "VK_KHR_shader_bfloat16"
#define VK_STRUCTURE_TYPE_PHYSICAL_DEVICE_SHADER_BFLOAT16_FEATURES_KHR ((VkStructureType)1000141000)
#define VK_COMPONENT_TYPE_BFLOAT16_KHR ((VkComponentTypeKHR)1000141000)
typedef struct VkPhysicalDeviceShaderBfloat16FeaturesKHR {
VkStructureType sType;
void* pNext;
VkBool32 shaderBFloat16Type;
VkBool32 shaderBFloat16DotProduct;
VkBool32 shaderBFloat16CooperativeMatrix;
} VkPhysicalDeviceShaderBfloat16FeaturesKHR;
#endif
#define ROUNDUP_POW2(M, N) (((M) + (N) - 1) & ~((N) - 1))
#define CEIL_DIV(M, N) (((M) + (N)-1) / (N))
static bool is_pow2(uint32_t x) { return x > 1 && (x & (x-1)) == 0; }
@@ -266,8 +284,9 @@ struct vk_device_struct {
bool subgroup_require_full_support;
bool coopmat_support;
bool coopmat_acc_f32_support;
bool coopmat_acc_f16_support;
bool coopmat_acc_f32_support {};
bool coopmat_acc_f16_support {};
bool coopmat_bf16_support {};
uint32_t coopmat_m;
uint32_t coopmat_n;
uint32_t coopmat_k;
@@ -293,6 +312,7 @@ struct vk_device_struct {
vk_matmul_pipeline pipeline_matmul_f32 {};
vk_matmul_pipeline pipeline_matmul_f32_f16 {};
vk_matmul_pipeline pipeline_matmul_bf16 {};
vk_matmul_pipeline2 pipeline_matmul_f16;
vk_matmul_pipeline2 pipeline_matmul_f16_f32;
@@ -301,6 +321,7 @@ struct vk_device_struct {
vk_matmul_pipeline2 pipeline_dequant_mul_mat_mat_q8_1[GGML_TYPE_COUNT];
vk_matmul_pipeline pipeline_matmul_id_f32 {};
vk_matmul_pipeline pipeline_matmul_id_bf16 {};
vk_matmul_pipeline2 pipeline_matmul_id_f16;
vk_matmul_pipeline2 pipeline_matmul_id_f16_f32;
@@ -333,8 +354,8 @@ struct vk_device_struct {
vk_pipeline pipeline_clamp_f32;
vk_pipeline pipeline_pad_f32;
vk_pipeline pipeline_repeat_f32, pipeline_repeat_back_f32;
vk_pipeline pipeline_cpy_f32_f32, pipeline_cpy_f32_f16, pipeline_cpy_f16_f16;
vk_pipeline pipeline_contig_cpy_f32_f32, pipeline_contig_cpy_f32_f16, pipeline_contig_cpy_f16_f16;
vk_pipeline pipeline_cpy_f32_f32, pipeline_cpy_f32_f16, pipeline_cpy_f16_f16, pipeline_cpy_f32_bf16;
vk_pipeline pipeline_contig_cpy_f32_f32, pipeline_contig_cpy_f32_f16, pipeline_contig_cpy_f16_f16, pipeline_contig_cpy_f32_bf16;
vk_pipeline pipeline_cpy_f32_quant[GGML_TYPE_COUNT];
vk_pipeline pipeline_cpy_quant_f32[GGML_TYPE_COUNT];
vk_pipeline pipeline_norm_f32;
@@ -1791,6 +1812,12 @@ static void ggml_vk_load_shaders(vk_device& device) {
if (!device->pipeline_matmul_id_f32) {
device->pipeline_matmul_id_f32 = std::make_shared<vk_matmul_pipeline_struct>();
}
if (!device->pipeline_matmul_bf16) {
device->pipeline_matmul_bf16 = std::make_shared<vk_matmul_pipeline_struct>();
}
if (!device->pipeline_matmul_id_bf16) {
device->pipeline_matmul_id_bf16 = std::make_shared<vk_matmul_pipeline_struct>();
}
std::vector<std::future<void>> compiles;
auto const &ggml_vk_create_pipeline = [&](vk_device& device, vk_pipeline& pipeline, const std::string &name, size_t spv_size, const void* spv_data, const std::string &entrypoint,
@@ -1900,6 +1927,11 @@ static void ggml_vk_load_shaders(vk_device& device) {
CREATE_MM(PIPELINE_NAME . f32acc, NAMELC, , WG_DENOMS, WARPTILE, PUSHCONST, PARAMCOUNT) \
CREATE_MM2(pipeline_matmul_f16, matmul_f16, wg_denoms, warptile, vk_mat_mat_push_constants, 3)
#if defined(GGML_VULKAN_BFLOAT16_GLSLC_SUPPORT)
if (device->coopmat_bf16_support) {
CREATE_MM(pipeline_matmul_bf16, matmul_bf16, , wg_denoms, warptile, vk_mat_mat_push_constants, 3)
}
#endif
CREATE_MM(pipeline_dequant_mul_mat_mat_f16[GGML_TYPE_Q4_0].f16acc, matmul_q4_0_f16, _f16acc, mmq_wg_denoms, warptile_mmq, vk_mat_mat_push_constants, 3)
CREATE_MM(pipeline_dequant_mul_mat_mat_f16[GGML_TYPE_Q4_1].f16acc, matmul_q4_1_f16, _f16acc, mmq_wg_denoms, warptile_mmq, vk_mat_mat_push_constants, 3)
CREATE_MM(pipeline_dequant_mul_mat_mat_f16[GGML_TYPE_Q5_0].f16acc, matmul_q5_0_f16, _f16acc, mmq_wg_denoms, warptile_mmq, vk_mat_mat_push_constants, 3)
@@ -1921,6 +1953,11 @@ static void ggml_vk_load_shaders(vk_device& device) {
CREATE_MM(pipeline_dequant_mul_mat_mat_f16[GGML_TYPE_IQ4_NL].f16acc, matmul_iq4_nl_f16, _f16acc, mmq_wg_denoms, warptile_mmq, vk_mat_mat_push_constants, 3)
CREATE_MM2(pipeline_matmul_id_f16, matmul_id_f16, wg_denoms, warptile, vk_mat_mat_id_push_constants, 4)
#if defined(GGML_VULKAN_BFLOAT16_GLSLC_SUPPORT)
if (device->coopmat_bf16_support) {
CREATE_MM(pipeline_matmul_id_bf16, matmul_id_bf16, , wg_denoms, warptile, vk_mat_mat_id_push_constants, 4)
}
#endif
CREATE_MM(pipeline_dequant_mul_mat_mat_id[GGML_TYPE_Q4_0].f16acc, matmul_id_q4_0_f16, , mmqid_wg_denoms, warptile_mmqid, vk_mat_mat_id_push_constants, 4)
CREATE_MM(pipeline_dequant_mul_mat_mat_id[GGML_TYPE_Q4_1].f16acc, matmul_id_q4_1_f16, , mmqid_wg_denoms, warptile_mmqid, vk_mat_mat_id_push_constants, 4)
CREATE_MM(pipeline_dequant_mul_mat_mat_id[GGML_TYPE_Q5_0].f16acc, matmul_id_q5_0_f16, , mmqid_wg_denoms, warptile_mmqid, vk_mat_mat_id_push_constants, 4)
@@ -1974,6 +2011,11 @@ static void ggml_vk_load_shaders(vk_device& device) {
CREATE_MM(GGML_TYPE_F32, pipeline_matmul_f32_f16, matmul_f32_f16, , wg_denoms, warptile, vk_mat_mat_push_constants, 3, );
CREATE_MM2(GGML_TYPE_F16, pipeline_matmul_f16, matmul_f16, wg_denoms, warptile, vk_mat_mat_push_constants, 3, );
CREATE_MM2(GGML_TYPE_F16, pipeline_matmul_f16_f32, matmul_f16_f32, wg_denoms, warptile, vk_mat_mat_push_constants, 3, );
#if defined(GGML_VULKAN_BFLOAT16_GLSLC_SUPPORT)
if (device->coopmat_bf16_support) {
CREATE_MM(GGML_TYPE_BF16, pipeline_matmul_bf16, matmul_bf16, , wg_denoms, warptile, vk_mat_mat_push_constants, 3, )
}
#endif
if (device->coopmat_acc_f16_support) {
CREATE_MM(GGML_TYPE_Q4_0, pipeline_dequant_mul_mat_mat[GGML_TYPE_Q4_0].f16acc, matmul_q4_0_f32, _f16acc, mmq_wg_denoms, warptile_mmq, vk_mat_mat_push_constants, 3, );
@@ -2022,6 +2064,11 @@ static void ggml_vk_load_shaders(vk_device& device) {
CREATE_MM(GGML_TYPE_F32, pipeline_matmul_id_f32, matmul_id_f32_f32, , wg_denoms, warptile, vk_mat_mat_push_constants, 4, _id);
CREATE_MM2(GGML_TYPE_F16, pipeline_matmul_id_f16, matmul_id_f16, wg_denoms, warptile, vk_mat_mat_push_constants, 4, _id);
CREATE_MM2(GGML_TYPE_F16, pipeline_matmul_id_f16_f32, matmul_id_f16_f32, wg_denoms, warptile, vk_mat_mat_push_constants, 4, _id);
#if defined(GGML_VULKAN_BFLOAT16_GLSLC_SUPPORT)
if (device->coopmat_bf16_support) {
CREATE_MM(GGML_TYPE_BF16, pipeline_matmul_id_bf16, matmul_id_bf16, , wg_denoms, warptile, vk_mat_mat_push_constants, 4, _id);
}
#endif
if (device->coopmat_acc_f16_support) {
CREATE_MM(GGML_TYPE_Q4_0, pipeline_dequant_mul_mat_mat_id[GGML_TYPE_Q4_0].f16acc, matmul_id_q4_0_f32, _f16acc, mmq_wg_denoms, warptile_mmq, vk_mat_mat_id_push_constants, 4, _id);
@@ -2104,6 +2151,8 @@ static void ggml_vk_load_shaders(vk_device& device) {
CREATE_MM2(GGML_TYPE_F16, pipeline_matmul_f16, matmul_f16, wg_denoms, warptile, vk_mat_mat_push_constants, 3, );
CREATE_MM2(GGML_TYPE_F16, pipeline_matmul_f16_f32, matmul_f16_f32, wg_denoms, warptile, vk_mat_mat_push_constants, 3, );
CREATE_MM(GGML_TYPE_BF16, pipeline_matmul_bf16, matmul_bf16, , wg_denoms, warptile, vk_mat_mat_push_constants, 3, );
CREATE_MM(GGML_TYPE_Q4_0, pipeline_dequant_mul_mat_mat[GGML_TYPE_Q4_0].f16acc, matmul_q4_0_f32, _f16acc, mmq_wg_denoms, warptile_mmq, vk_mat_mat_push_constants, 3, );
CREATE_MM(GGML_TYPE_Q4_1, pipeline_dequant_mul_mat_mat[GGML_TYPE_Q4_1].f16acc, matmul_q4_1_f32, _f16acc, mmq_wg_denoms, warptile_mmq, vk_mat_mat_push_constants, 3, );
CREATE_MM(GGML_TYPE_Q5_0, pipeline_dequant_mul_mat_mat[GGML_TYPE_Q5_0].f16acc, matmul_q5_0_f32, _f16acc, mmq_wg_denoms, warptile_mmq, vk_mat_mat_push_constants, 3, );
@@ -2139,6 +2188,8 @@ static void ggml_vk_load_shaders(vk_device& device) {
CREATE_MM2(GGML_TYPE_F16, pipeline_matmul_id_f16, matmul_id_f16, wg_denoms, warptile, vk_mat_mat_push_constants, 4, _id);
CREATE_MM2(GGML_TYPE_F16, pipeline_matmul_id_f16_f32, matmul_id_f16_f32, wg_denoms, warptile, vk_mat_mat_push_constants, 4, _id);
CREATE_MM(GGML_TYPE_BF16, pipeline_matmul_id_bf16, matmul_id_bf16, , wg_denoms, warptile, vk_mat_mat_id_push_constants, 4, _id);
CREATE_MM(GGML_TYPE_Q4_0, pipeline_dequant_mul_mat_mat_id[GGML_TYPE_Q4_0].f16acc, matmul_id_q4_0_f32, _f16acc, mmq_wg_denoms, warptile_mmq, vk_mat_mat_id_push_constants, 4, _id);
CREATE_MM(GGML_TYPE_Q4_1, pipeline_dequant_mul_mat_mat_id[GGML_TYPE_Q4_1].f16acc, matmul_id_q4_1_f32, _f16acc, mmq_wg_denoms, warptile_mmq, vk_mat_mat_id_push_constants, 4, _id);
CREATE_MM(GGML_TYPE_Q5_0, pipeline_dequant_mul_mat_mat_id[GGML_TYPE_Q5_0].f16acc, matmul_id_q5_0_f32, _f16acc, mmq_wg_denoms, warptile_mmq, vk_mat_mat_id_push_constants, 4, _id);
@@ -2191,6 +2242,8 @@ static void ggml_vk_load_shaders(vk_device& device) {
CREATE_MM(GGML_TYPE_F16, pipeline_matmul_f16.f32acc, matmul_f16, , wg_denoms, warptile, vk_mat_mat_push_constants, 3, );
CREATE_MM(GGML_TYPE_F16, pipeline_matmul_f16_f32.f32acc, matmul_f16_f32, , wg_denoms, warptile, vk_mat_mat_push_constants, 3, );
CREATE_MM(GGML_TYPE_BF16, pipeline_matmul_bf16, matmul_bf16, , wg_denoms, warptile, vk_mat_mat_push_constants, 3, );
CREATE_MM(GGML_TYPE_Q4_0, pipeline_dequant_mul_mat_mat[GGML_TYPE_Q4_0].f32acc, matmul_q4_0_f32, , mmq_wg_denoms, warptile_mmq, vk_mat_mat_push_constants, 3, );
CREATE_MM(GGML_TYPE_Q4_1, pipeline_dequant_mul_mat_mat[GGML_TYPE_Q4_1].f32acc, matmul_q4_1_f32, , mmq_wg_denoms, warptile_mmq, vk_mat_mat_push_constants, 3, );
CREATE_MM(GGML_TYPE_Q5_0, pipeline_dequant_mul_mat_mat[GGML_TYPE_Q5_0].f32acc, matmul_q5_0_f32, , mmq_wg_denoms, warptile_mmq, vk_mat_mat_push_constants, 3, );
@@ -2226,6 +2279,8 @@ static void ggml_vk_load_shaders(vk_device& device) {
CREATE_MM(GGML_TYPE_F16, pipeline_matmul_id_f16.f32acc, matmul_id_f16, , wg_denoms, warptile, vk_mat_mat_push_constants, 4, _id);
CREATE_MM(GGML_TYPE_F16, pipeline_matmul_id_f16_f32.f32acc, matmul_id_f16_f32, , wg_denoms, warptile, vk_mat_mat_push_constants, 4, _id);
CREATE_MM(GGML_TYPE_BF16, pipeline_matmul_id_bf16, matmul_id_bf16, , wg_denoms, warptile, vk_mat_mat_id_push_constants, 4, _id);
CREATE_MM(GGML_TYPE_Q4_0, pipeline_dequant_mul_mat_mat_id[GGML_TYPE_Q4_0].f32acc, matmul_id_q4_0_f32, , mmq_wg_denoms, warptile_mmq, vk_mat_mat_id_push_constants, 4, _id);
CREATE_MM(GGML_TYPE_Q4_1, pipeline_dequant_mul_mat_mat_id[GGML_TYPE_Q4_1].f32acc, matmul_id_q4_1_f32, , mmq_wg_denoms, warptile_mmq, vk_mat_mat_id_push_constants, 4, _id);
CREATE_MM(GGML_TYPE_Q5_0, pipeline_dequant_mul_mat_mat_id[GGML_TYPE_Q5_0].f32acc, matmul_id_q5_0_f32, , mmq_wg_denoms, warptile_mmq, vk_mat_mat_id_push_constants, 4, _id);
@@ -2246,8 +2301,26 @@ static void ggml_vk_load_shaders(vk_device& device) {
CREATE_MM(GGML_TYPE_IQ3_S, pipeline_dequant_mul_mat_mat_id[GGML_TYPE_IQ3_S].f32acc, matmul_id_iq3_s_f32, , mmq_wg_denoms, warptile_mmq, vk_mat_mat_id_push_constants, 4, _id);
CREATE_MM(GGML_TYPE_IQ4_XS, pipeline_dequant_mul_mat_mat_id[GGML_TYPE_IQ4_XS].f32acc, matmul_id_iq4_xs_f32, , mmq_wg_denoms, warptile_mmq, vk_mat_mat_id_push_constants, 4, _id);
CREATE_MM(GGML_TYPE_IQ4_NL, pipeline_dequant_mul_mat_mat_id[GGML_TYPE_IQ4_NL].f32acc, matmul_id_iq4_nl_f32, , mmq_wg_denoms, warptile_mmq, vk_mat_mat_id_push_constants, 4, _id);
#undef CREATE_MM
}
// reusing CREATE_MM from the fp32 path
if ((device->coopmat2 || device->coopmat_support)
#if defined(GGML_VULKAN_INTEGER_DOT_GLSLC_SUPPORT)
&& !device->coopmat_bf16_support
#endif
) {
// use scalar tile sizes
l_warptile = { 128, 128, 128, 16, subgroup_size_8 * 2, 64, 2, 4, 4, 1, subgroup_size_8 };
m_warptile = { 128, 64, 64, 16, subgroup_size_8, 32, 2, 4, 2, 1, subgroup_size_8 };
s_warptile = { subgroup_size_16, 32, 32, 16, 32, 32, 2, 2, 2, 1, subgroup_size_8 };
l_wg_denoms = {128, 128, 1 };
m_wg_denoms = { 64, 64, 1 };
s_wg_denoms = { 32, 32, 1 };
CREATE_MM(GGML_TYPE_BF16, pipeline_matmul_bf16, matmul_bf16, , wg_denoms, warptile, vk_mat_mat_push_constants, 3, );
CREATE_MM(GGML_TYPE_BF16, pipeline_matmul_id_bf16, matmul_id_bf16, , wg_denoms, warptile, vk_mat_mat_id_push_constants, 4, _id);
}
#undef CREATE_MM
// mul mat vec
@@ -2266,6 +2339,7 @@ static void ggml_vk_load_shaders(vk_device& device) {
for (uint32_t i = 0; i < mul_mat_vec_max_cols; ++i) {
ggml_vk_create_pipeline(device, device->pipeline_dequant_mul_mat_vec_f32_f32[GGML_TYPE_F32 ][i], "mul_mat_vec_f32_f32_f32_"+std::to_string(i+1), mul_mat_vec_f32_f32_f32_len, mul_mat_vec_f32_f32_f32_data, "main", 3, sizeof(vk_mat_vec_push_constants), {2, 1, 1}, {device->subgroup_size, 2, i+1}, 1);
ggml_vk_create_pipeline(device, device->pipeline_dequant_mul_mat_vec_f32_f32[GGML_TYPE_F16 ][i], "mul_mat_vec_f16_f32_f32_"+std::to_string(i+1), mul_mat_vec_f16_f32_f32_len, mul_mat_vec_f16_f32_f32_data, "main", 3, sizeof(vk_mat_vec_push_constants), {2, 1, 1}, {device->subgroup_size, 2, i+1}, 1);
ggml_vk_create_pipeline(device, device->pipeline_dequant_mul_mat_vec_f32_f32[GGML_TYPE_BF16][i], "mul_mat_vec_bf16_f32_f32_"+std::to_string(i+1), mul_mat_vec_bf16_f32_f32_len, mul_mat_vec_bf16_f32_f32_data, "main", 3, sizeof(vk_mat_vec_push_constants), {2, 1, 1}, {device->subgroup_size, 2, i+1}, 1);
ggml_vk_create_pipeline(device, device->pipeline_dequant_mul_mat_vec_f32_f32[GGML_TYPE_Q4_0][i], "mul_mat_vec_q4_0_f32_f32_"+std::to_string(i+1), mul_mat_vec_q4_0_f32_f32_len, mul_mat_vec_q4_0_f32_f32_data, "main", 3, sizeof(vk_mat_vec_push_constants), {2*rm_stdq, 1, 1}, {device->subgroup_size, 2*rm_stdq, i+1}, 1, true);
ggml_vk_create_pipeline(device, device->pipeline_dequant_mul_mat_vec_f32_f32[GGML_TYPE_Q4_1][i], "mul_mat_vec_q4_1_f32_f32_"+std::to_string(i+1), mul_mat_vec_q4_1_f32_f32_len, mul_mat_vec_q4_1_f32_f32_data, "main", 3, sizeof(vk_mat_vec_push_constants), {2*rm_stdq, 1, 1}, {device->subgroup_size, 2*rm_stdq, i+1}, 1, true);
ggml_vk_create_pipeline(device, device->pipeline_dequant_mul_mat_vec_f32_f32[GGML_TYPE_Q5_0][i], "mul_mat_vec_q5_0_f32_f32_"+std::to_string(i+1), mul_mat_vec_q5_0_f32_f32_len, mul_mat_vec_q5_0_f32_f32_data, "main", 3, sizeof(vk_mat_vec_push_constants), {2*rm_stdq, 1, 1}, {device->subgroup_size, 2*rm_stdq, i+1}, 1, true);
@@ -2288,6 +2362,7 @@ static void ggml_vk_load_shaders(vk_device& device) {
ggml_vk_create_pipeline(device, device->pipeline_dequant_mul_mat_vec_f16_f32[GGML_TYPE_F32 ][i], "mul_mat_vec_f32_f16_f32_"+std::to_string(i+1), mul_mat_vec_f32_f16_f32_len, mul_mat_vec_f32_f16_f32_data, "main", 3, sizeof(vk_mat_vec_push_constants), {2, 1, 1}, {device->subgroup_size, 2, i+1}, 1);
ggml_vk_create_pipeline(device, device->pipeline_dequant_mul_mat_vec_f16_f32[GGML_TYPE_F16 ][i], "mul_mat_vec_f16_f16_f32_"+std::to_string(i+1), mul_mat_vec_f16_f16_f32_len, mul_mat_vec_f16_f16_f32_data, "main", 3, sizeof(vk_mat_vec_push_constants), {2, 1, 1}, {device->subgroup_size, 2, i+1}, 1);
ggml_vk_create_pipeline(device, device->pipeline_dequant_mul_mat_vec_f16_f32[GGML_TYPE_BF16][i], "mul_mat_vec_bf16_f16_f32_"+std::to_string(i+1), mul_mat_vec_bf16_f16_f32_len, mul_mat_vec_bf16_f16_f32_data, "main", 3, sizeof(vk_mat_vec_push_constants), {2, 1, 1}, {device->subgroup_size, 2, i+1}, 1);
ggml_vk_create_pipeline(device, device->pipeline_dequant_mul_mat_vec_f16_f32[GGML_TYPE_Q4_0][i], "mul_mat_vec_q4_0_f16_f32_"+std::to_string(i+1), mul_mat_vec_q4_0_f16_f32_len, mul_mat_vec_q4_0_f16_f32_data, "main", 3, sizeof(vk_mat_vec_push_constants), {2*rm_stdq, 1, 1}, {device->subgroup_size, 2*rm_stdq, i+1}, 1, true);
ggml_vk_create_pipeline(device, device->pipeline_dequant_mul_mat_vec_f16_f32[GGML_TYPE_Q4_1][i], "mul_mat_vec_q4_1_f16_f32_"+std::to_string(i+1), mul_mat_vec_q4_1_f16_f32_len, mul_mat_vec_q4_1_f16_f32_data, "main", 3, sizeof(vk_mat_vec_push_constants), {2*rm_stdq, 1, 1}, {device->subgroup_size, 2*rm_stdq, i+1}, 1, true);
ggml_vk_create_pipeline(device, device->pipeline_dequant_mul_mat_vec_f16_f32[GGML_TYPE_Q5_0][i], "mul_mat_vec_q5_0_f16_f32_"+std::to_string(i+1), mul_mat_vec_q5_0_f16_f32_len, mul_mat_vec_q5_0_f16_f32_data, "main", 3, sizeof(vk_mat_vec_push_constants), {2*rm_stdq, 1, 1}, {device->subgroup_size, 2*rm_stdq, i+1}, 1, true);
@@ -2311,6 +2386,7 @@ static void ggml_vk_load_shaders(vk_device& device) {
ggml_vk_create_pipeline(device, device->pipeline_dequant_mul_mat_vec_id_f32[GGML_TYPE_F32 ], "mul_mat_vec_id_f32_f32", mul_mat_vec_id_f32_f32_len, mul_mat_vec_id_f32_f32_data, "main", 4, sizeof(vk_mat_vec_id_push_constants), {2, 1, 1}, {device->subgroup_size, 2}, 1);
ggml_vk_create_pipeline(device, device->pipeline_dequant_mul_mat_vec_id_f32[GGML_TYPE_F16 ], "mul_mat_vec_id_f16_f32", mul_mat_vec_id_f16_f32_len, mul_mat_vec_id_f16_f32_data, "main", 4, sizeof(vk_mat_vec_id_push_constants), {2, 1, 1}, {device->subgroup_size, 2}, 1);
ggml_vk_create_pipeline(device, device->pipeline_dequant_mul_mat_vec_id_f32[GGML_TYPE_BF16], "mul_mat_vec_id_bf16_f32", mul_mat_vec_id_bf16_f32_len, mul_mat_vec_id_bf16_f32_data, "main", 4, sizeof(vk_mat_vec_id_push_constants), {2, 1, 1}, {device->subgroup_size, 2}, 1);
ggml_vk_create_pipeline(device, device->pipeline_dequant_mul_mat_vec_id_f32[GGML_TYPE_Q4_0], "mul_mat_vec_id_q4_0_f32", mul_mat_vec_id_q4_0_f32_len, mul_mat_vec_id_q4_0_f32_data, "main", 4, sizeof(vk_mat_vec_id_push_constants), {2*rm_stdq, 1, 1}, {device->subgroup_size, 2*rm_stdq}, 1, true);
ggml_vk_create_pipeline(device, device->pipeline_dequant_mul_mat_vec_id_f32[GGML_TYPE_Q4_1], "mul_mat_vec_id_q4_1_f32", mul_mat_vec_id_q4_1_f32_len, mul_mat_vec_id_q4_1_f32_data, "main", 4, sizeof(vk_mat_vec_id_push_constants), {2*rm_stdq, 1, 1}, {device->subgroup_size, 2*rm_stdq}, 1, true);
ggml_vk_create_pipeline(device, device->pipeline_dequant_mul_mat_vec_id_f32[GGML_TYPE_Q5_0], "mul_mat_vec_id_q5_0_f32", mul_mat_vec_id_q5_0_f32_len, mul_mat_vec_id_q5_0_f32_data, "main", 4, sizeof(vk_mat_vec_id_push_constants), {2*rm_stdq, 1, 1}, {device->subgroup_size, 2*rm_stdq}, 1, true);
@@ -2356,6 +2432,7 @@ static void ggml_vk_load_shaders(vk_device& device) {
// get_rows
ggml_vk_create_pipeline(device, device->pipeline_get_rows[GGML_TYPE_F32 ], "get_rows_f32", get_rows_f32_len, get_rows_f32_data, "main", 3, sizeof(vk_op_binary_push_constants), { 512, 1, 1}, {}, 1);
ggml_vk_create_pipeline(device, device->pipeline_get_rows[GGML_TYPE_F16 ], "get_rows_f16", get_rows_f16_len, get_rows_f16_data, "main", 3, sizeof(vk_op_binary_push_constants), { 512, 1, 1}, {}, 1);
ggml_vk_create_pipeline(device, device->pipeline_get_rows[GGML_TYPE_BF16], "get_rows_bf16", get_rows_bf16_len, get_rows_bf16_data, "main", 3, sizeof(vk_op_binary_push_constants), { 512, 1, 1}, {}, 1);
ggml_vk_create_pipeline(device, device->pipeline_get_rows[GGML_TYPE_Q4_0], "get_rows_q4_0", get_rows_q4_0_len, get_rows_q4_0_data, "main", 3, sizeof(vk_op_binary_push_constants), {1024, 1, 1}, {}, 1);
ggml_vk_create_pipeline(device, device->pipeline_get_rows[GGML_TYPE_Q4_1], "get_rows_q4_1", get_rows_q4_1_len, get_rows_q4_1_data, "main", 3, sizeof(vk_op_binary_push_constants), {1024, 1, 1}, {}, 1);
ggml_vk_create_pipeline(device, device->pipeline_get_rows[GGML_TYPE_Q5_0], "get_rows_q5_0", get_rows_q5_0_len, get_rows_q5_0_data, "main", 3, sizeof(vk_op_binary_push_constants), {1024, 1, 1}, {}, 1);
@@ -2373,6 +2450,7 @@ static void ggml_vk_load_shaders(vk_device& device) {
ggml_vk_create_pipeline(device, device->pipeline_get_rows_f32[GGML_TYPE_F32 ], "get_rows_f32_f32", get_rows_f32_f32_len, get_rows_f32_f32_data, "main", 3, sizeof(vk_op_binary_push_constants), { 512, 1, 1}, {}, 1);
ggml_vk_create_pipeline(device, device->pipeline_get_rows_f32[GGML_TYPE_F16 ], "get_rows_f16_f32", get_rows_f16_f32_len, get_rows_f16_f32_data, "main", 3, sizeof(vk_op_binary_push_constants), { 512, 1, 1}, {}, 1);
ggml_vk_create_pipeline(device, device->pipeline_get_rows_f32[GGML_TYPE_BF16], "get_rows_bf16_f32", get_rows_bf16_f32_len, get_rows_bf16_f32_data, "main", 3, sizeof(vk_op_binary_push_constants), { 512, 1, 1}, {}, 1);
ggml_vk_create_pipeline(device, device->pipeline_get_rows_f32[GGML_TYPE_Q4_0], "get_rows_q4_0_f32", get_rows_q4_0_f32_len, get_rows_q4_0_f32_data, "main", 3, sizeof(vk_op_binary_push_constants), {1024, 1, 1}, {}, 1);
ggml_vk_create_pipeline(device, device->pipeline_get_rows_f32[GGML_TYPE_Q4_1], "get_rows_q4_1_f32", get_rows_q4_1_f32_len, get_rows_q4_1_f32_data, "main", 3, sizeof(vk_op_binary_push_constants), {1024, 1, 1}, {}, 1);
ggml_vk_create_pipeline(device, device->pipeline_get_rows_f32[GGML_TYPE_Q5_0], "get_rows_q5_0_f32", get_rows_q5_0_f32_len, get_rows_q5_0_f32_data, "main", 3, sizeof(vk_op_binary_push_constants), {1024, 1, 1}, {}, 1);
@@ -2399,7 +2477,7 @@ static void ggml_vk_load_shaders(vk_device& device) {
ggml_vk_create_pipeline(device, device->pipeline_mul_mat_vec_p021_f16_f32[i], "mul_mat_vec_p021_f16_f32"+std::to_string(i+1), mul_mat_vec_p021_f16_f32_len, mul_mat_vec_p021_f16_f32_data, "main", 3, 6 * sizeof(uint32_t), {1, 1, 1}, {device->subgroup_size, i + 1}, 1, true);
}
}
ggml_vk_create_pipeline(device, device->pipeline_mul_mat_vec_nc_f16_f32, "mul_mat_vec_nc_f16_f32", mul_mat_vec_nc_f16_f32_len, mul_mat_vec_nc_f16_f32_data, "main", 3, 7 * sizeof(uint32_t), {1, 1, 1}, {}, 1);
ggml_vk_create_pipeline(device, device->pipeline_mul_mat_vec_nc_f16_f32, "mul_mat_vec_nc_f16_f32", mul_mat_vec_nc_f16_f32_len, mul_mat_vec_nc_f16_f32_data, "main", 3, 9 * sizeof(uint32_t), {1, 1, 1}, {}, 1);
ggml_vk_create_pipeline(device, device->pipeline_norm_f32, "norm_f32", norm_f32_len, norm_f32_data, "main", 2, sizeof(vk_op_push_constants), {1, 1, 1}, {}, 1);
ggml_vk_create_pipeline(device, device->pipeline_group_norm_f32, "group_norm_f32", group_norm_f32_len, group_norm_f32_data, "main", 2, sizeof(vk_op_push_constants), {1, 1, 1}, {}, 1);
@@ -2410,10 +2488,13 @@ static void ggml_vk_load_shaders(vk_device& device) {
ggml_vk_create_pipeline(device, device->pipeline_cpy_f32_f32, "cpy_f32_f32", cpy_f32_f32_len, cpy_f32_f32_data, "main", 2, sizeof(vk_op_unary_push_constants), {512, 1, 1}, {}, 1);
ggml_vk_create_pipeline(device, device->pipeline_cpy_f32_f16, "cpy_f32_f16", cpy_f32_f16_len, cpy_f32_f16_data, "main", 2, sizeof(vk_op_unary_push_constants), {512, 1, 1}, {}, 1);
ggml_vk_create_pipeline(device, device->pipeline_cpy_f16_f16, "cpy_f16_f16", cpy_f16_f16_len, cpy_f16_f16_data, "main", 2, sizeof(vk_op_unary_push_constants), {512, 1, 1}, {}, 1);
ggml_vk_create_pipeline(device, device->pipeline_cpy_f32_bf16,"cpy_f32_bf16",cpy_f32_bf16_len,cpy_f32_bf16_data,"main", 2, sizeof(vk_op_unary_push_constants), {512, 1, 1}, {}, 1);
ggml_vk_create_pipeline(device, device->pipeline_contig_cpy_f32_f32, "contig_cpy_f32_f32", contig_cpy_f32_f32_len, contig_cpy_f32_f32_data, "main", 2, sizeof(vk_op_unary_push_constants), {512, 1, 1}, {}, 1);
ggml_vk_create_pipeline(device, device->pipeline_contig_cpy_f32_f16, "contig_cpy_f32_f16", contig_cpy_f32_f16_len, contig_cpy_f32_f16_data, "main", 2, sizeof(vk_op_unary_push_constants), {512, 1, 1}, {}, 1);
ggml_vk_create_pipeline(device, device->pipeline_contig_cpy_f16_f16, "contig_cpy_f16_f16", contig_cpy_f16_f16_len, contig_cpy_f16_f16_data, "main", 2, sizeof(vk_op_unary_push_constants), {512, 1, 1}, {}, 1);
ggml_vk_create_pipeline(device, device->pipeline_contig_cpy_f32_bf16,"contig_cpy_f32_bf16",contig_cpy_f32_bf16_len,contig_cpy_f32_bf16_data,"main", 2, sizeof(vk_op_unary_push_constants), {512, 1, 1}, {}, 1);
if (device->float_controls_rte_fp16) {
ggml_vk_create_pipeline(device, device->pipeline_cpy_f32_quant[GGML_TYPE_Q4_0], "cpy_f32_q4_0", cpy_f32_q4_0_rte_len, cpy_f32_q4_0_rte_data, "main", 2, sizeof(vk_op_unary_push_constants), {(uint32_t)ggml_blck_size(GGML_TYPE_Q4_0), 1, 1}, {}, 1);
ggml_vk_create_pipeline(device, device->pipeline_cpy_f32_quant[GGML_TYPE_Q4_1], "cpy_f32_q4_1", cpy_f32_q4_1_rte_len, cpy_f32_q4_1_rte_data, "main", 2, sizeof(vk_op_unary_push_constants), {(uint32_t)ggml_blck_size(GGML_TYPE_Q4_1), 1, 1}, {}, 1);
@@ -2578,6 +2659,7 @@ static vk_device ggml_vk_get_device(size_t idx) {
bool coopmat2_support = false;
device->coopmat_support = false;
device->integer_dot_product = false;
bool bfloat16_support = false;
for (const auto& properties : ext_props) {
if (strcmp("VK_KHR_maintenance4", properties.extensionName) == 0) {
@@ -2608,6 +2690,9 @@ static vk_device ggml_vk_get_device(size_t idx) {
!getenv("GGML_VK_DISABLE_INTEGER_DOT_PRODUCT")) {
device->integer_dot_product = true;
#endif
} else if (strcmp("VK_KHR_shader_bfloat16", properties.extensionName) == 0 &&
!getenv("GGML_VK_DISABLE_BFLOAT16")) {
bfloat16_support = true;
}
}
@@ -2794,6 +2879,17 @@ static vk_device ggml_vk_get_device(size_t idx) {
}
#endif
#if defined(VK_KHR_shader_bfloat16)
VkPhysicalDeviceShaderBfloat16FeaturesKHR bfloat16_features {};
bfloat16_features.pNext = nullptr;
bfloat16_features.sType = VK_STRUCTURE_TYPE_PHYSICAL_DEVICE_SHADER_BFLOAT16_FEATURES_KHR;
if (bfloat16_support) {
last_struct->pNext = (VkBaseOutStructure *)&bfloat16_features;
last_struct = (VkBaseOutStructure *)&bfloat16_features;
device_extensions.push_back("VK_KHR_shader_bfloat16");
}
#endif
VkPhysicalDeviceMaintenance4Features maint4_features {};
maint4_features.sType = VK_STRUCTURE_TYPE_PHYSICAL_DEVICE_MAINTENANCE_4_FEATURES;
if (maintenance4_support) {
@@ -2991,6 +3087,25 @@ static vk_device ggml_vk_get_device(size_t idx) {
device->coopmat_int_n = prop.NSize;
device->coopmat_int_k = prop.KSize;
}
#if defined(VK_KHR_shader_bfloat16) && defined(GGML_VULKAN_BFLOAT16_GLSLC_SUPPORT)
if (prop.AType == VK_COMPONENT_TYPE_BFLOAT16_KHR &&
prop.BType == VK_COMPONENT_TYPE_BFLOAT16_KHR &&
prop.CType == VK_COMPONENT_TYPE_FLOAT32_KHR &&
prop.ResultType == VK_COMPONENT_TYPE_FLOAT32_KHR &&
(vk::ScopeKHR)prop.scope == vk::ScopeKHR::eSubgroup
) {
// coopmat sizes not set yet
if (device->coopmat_m == 0) {
device->coopmat_bf16_support = true;
device->coopmat_m = prop.MSize;
device->coopmat_n = prop.NSize;
device->coopmat_k = prop.KSize;
} else if (device->coopmat_m == prop.MSize && device->coopmat_n == prop.NSize && device->coopmat_k == prop.KSize) {
// Only enable if shape is identical
device->coopmat_bf16_support = true;
}
}
#endif
}
if (device->coopmat_m == 0 || !device->coopmat_acc_f32_support) {
@@ -2998,11 +3113,19 @@ static vk_device ggml_vk_get_device(size_t idx) {
GGML_LOG_DEBUG("ggml_vulkan: WARNING: No suitable matrix core mode found. Disabling matrix cores.\n");
device->coopmat_support = false;
}
if (getenv("GGML_VK_DISABLE_BFLOAT16")) {
device->coopmat_bf16_support = false;
}
}
if (device->coopmat_support) {
device_extensions.push_back("VK_KHR_cooperative_matrix");
}
#if defined(VK_KHR_shader_bfloat16)
if (device->coopmat_bf16_support) {
device_extensions.push_back("VK_KHR_shader_bfloat16");
}
#endif
#endif
device->name = GGML_VK_NAME + std::to_string(idx);
@@ -3459,6 +3582,9 @@ static vk_matmul_pipeline ggml_vk_get_mul_mat_mat_pipeline(ggml_backend_vk_conte
if (src0_type == GGML_TYPE_F32 && src1_type == GGML_TYPE_F16) {
return ctx->device->pipeline_matmul_f32_f16;
}
if (src0_type == GGML_TYPE_BF16 && src1_type == GGML_TYPE_BF16) {
return ctx->device->pipeline_matmul_bf16;
}
if (prec == GGML_PREC_DEFAULT && ctx->device->fp16 && !(ctx->device->coopmat_support && !ctx->device->coopmat_acc_f16_support)) {
if (src0_type == GGML_TYPE_F16 && src1_type == GGML_TYPE_F32) {
return ctx->device->pipeline_matmul_f16_f32.f16acc;
@@ -3530,6 +3656,7 @@ static vk_pipeline ggml_vk_get_dequantize_mul_mat_vec(ggml_backend_vk_context *
switch (a_type) {
case GGML_TYPE_F32:
case GGML_TYPE_F16:
case GGML_TYPE_BF16:
case GGML_TYPE_Q4_0:
case GGML_TYPE_Q4_1:
case GGML_TYPE_Q5_0:
@@ -3562,6 +3689,9 @@ static vk_matmul_pipeline ggml_vk_get_mul_mat_mat_id_pipeline(ggml_backend_vk_co
if (src0_type == GGML_TYPE_F32 && src1_type == GGML_TYPE_F32) {
return ctx->device->pipeline_matmul_id_f32;
}
if (src0_type == GGML_TYPE_BF16 && src1_type == GGML_TYPE_BF16) {
return ctx->device->pipeline_matmul_id_bf16;
}
if (prec == GGML_PREC_DEFAULT && ctx->device->fp16 && !(ctx->device->coopmat_support && !ctx->device->coopmat_acc_f16_support)) {
if (src0_type == GGML_TYPE_F16 && src1_type == GGML_TYPE_F32) {
return ctx->device->pipeline_matmul_id_f16_f32.f16acc;
@@ -3615,6 +3745,7 @@ static vk_pipeline ggml_vk_get_dequantize_mul_mat_vec_id(ggml_backend_vk_context
switch (a_type) {
case GGML_TYPE_F32:
case GGML_TYPE_F16:
case GGML_TYPE_BF16:
case GGML_TYPE_Q4_0:
case GGML_TYPE_Q4_1:
case GGML_TYPE_Q5_0:
@@ -4350,6 +4481,13 @@ static vk_pipeline ggml_vk_get_cpy_pipeline(ggml_backend_vk_context * ctx, const
return ctx->device->pipeline_cpy_f16_f16;
}
}
if (src->type == GGML_TYPE_F32 && to == GGML_TYPE_BF16) {
if (contig) {
return ctx->device->pipeline_contig_cpy_f32_bf16;
} else {
return ctx->device->pipeline_cpy_f32_bf16;
}
}
if (src->type == GGML_TYPE_F32) {
switch (to) {
case GGML_TYPE_Q4_0:
@@ -4477,8 +4615,12 @@ static void ggml_vk_mul_mat_q_f16(ggml_backend_vk_context * ctx, vk_context& sub
const bool x_non_contig = (ctx->device->coopmat2 && src0->type == GGML_TYPE_F32) ||
!ggml_vk_dim01_contiguous(src0);
const bool y_non_contig = (ctx->device->coopmat2 && src1->type == GGML_TYPE_F32) ||
(src0->type == GGML_TYPE_BF16 && src1->type != GGML_TYPE_BF16) ||
!ggml_vk_dim01_contiguous(src1);
// If src0 is BF16, try to use a BF16 x BF16 multiply
ggml_type f16_type = src0->type == GGML_TYPE_BF16 ? GGML_TYPE_BF16 : GGML_TYPE_F16;
const bool y_f32_kernel = src1->type == GGML_TYPE_F32 && !y_non_contig;
bool quantize_y = ctx->device->integer_dot_product && src1->type == GGML_TYPE_F32 && ggml_is_contiguous(src1) && (ne11 * ne10) % 4 == 0;
@@ -4488,25 +4630,25 @@ static void ggml_vk_mul_mat_q_f16(ggml_backend_vk_context * ctx, vk_context& sub
if (mmp == nullptr) {
// Fall back to f16 dequant mul mat
mmp = ggml_vk_get_mul_mat_mat_pipeline(ctx, src0->type, y_non_contig ? GGML_TYPE_F16 : src1->type, (ggml_prec)dst->op_params[0]);
mmp = ggml_vk_get_mul_mat_mat_pipeline(ctx, src0->type, y_non_contig ? f16_type : src1->type, (ggml_prec)dst->op_params[0]);
quantize_y = false;
}
const bool qx_needs_dequant = mmp == nullptr || x_non_contig;
const bool qy_needs_dequant = !quantize_y && ((src1->type != GGML_TYPE_F16 && !y_f32_kernel) || y_non_contig);
const bool qy_needs_dequant = !quantize_y && ((src1->type != f16_type && !y_f32_kernel) || y_non_contig);
if (qx_needs_dequant) {
// Fall back to dequant + f16 mulmat
mmp = ggml_vk_get_mul_mat_mat_pipeline(ctx, GGML_TYPE_F16, y_f32_kernel ? GGML_TYPE_F32 : GGML_TYPE_F16, (ggml_prec)dst->op_params[0]);
mmp = ggml_vk_get_mul_mat_mat_pipeline(ctx, f16_type, y_f32_kernel ? GGML_TYPE_F32 : f16_type, (ggml_prec)dst->op_params[0]);
}
// Not implemented
GGML_ASSERT(y_non_contig || !qy_needs_dequant); // NOLINT
const uint32_t kpad = quantize_y ? 0 : ggml_vk_align_size(ne10, ggml_vk_guess_matmul_pipeline_align(ctx, mmp, ne01, ne11, qx_needs_dequant ? GGML_TYPE_F16 : src0->type, quantize_y ? GGML_TYPE_Q8_1 : (y_f32_kernel ? GGML_TYPE_F32 : src1->type)));
const uint32_t kpad = quantize_y ? 0 : ggml_vk_align_size(ne10, ggml_vk_guess_matmul_pipeline_align(ctx, mmp, ne01, ne11, qx_needs_dequant ? f16_type : src0->type, quantize_y ? GGML_TYPE_Q8_1 : (y_f32_kernel ? GGML_TYPE_F32 : src1->type)));
const bool aligned = !quantize_y && ne10 == kpad && ne01 > 8 && ne11 > 8;
vk_pipeline pipeline = ggml_vk_guess_matmul_pipeline(ctx, mmp, ne01, ne11, aligned, qx_needs_dequant ? GGML_TYPE_F16 : src0->type, quantize_y ? GGML_TYPE_Q8_1 : (y_f32_kernel ? GGML_TYPE_F32 : src1->type));
vk_pipeline pipeline = ggml_vk_guess_matmul_pipeline(ctx, mmp, ne01, ne11, aligned, qx_needs_dequant ? f16_type : src0->type, quantize_y ? GGML_TYPE_Q8_1 : (y_f32_kernel ? GGML_TYPE_F32 : src1->type));
// Reserve extra storage in the N dimension for the Y matrix, so we can avoid bounds-checking
uint32_t padded_n = qy_needs_dequant ? ROUNDUP_POW2(ne11, pipeline->wg_denoms[1]) : ne11;
@@ -4527,12 +4669,12 @@ static void ggml_vk_mul_mat_q_f16(ggml_backend_vk_context * ctx, vk_context& sub
vk_pipeline to_q8_1 = nullptr;
if (x_non_contig) {
to_fp16_vk_0 = ggml_vk_get_cpy_pipeline(ctx, src0, nullptr, GGML_TYPE_F16);
to_fp16_vk_0 = ggml_vk_get_cpy_pipeline(ctx, src0, nullptr, f16_type);
} else {
to_fp16_vk_0 = ggml_vk_get_to_fp16(ctx, src0->type);
}
if (y_non_contig) {
to_fp16_vk_1 = ggml_vk_get_cpy_pipeline(ctx, src1, nullptr, GGML_TYPE_F16);
to_fp16_vk_1 = ggml_vk_get_cpy_pipeline(ctx, src1, nullptr, f16_type);
} else {
to_fp16_vk_1 = ggml_vk_get_to_fp16(ctx, src1->type);
}
@@ -4949,6 +5091,8 @@ static void ggml_vk_mul_mat_vec_nc_f16_f32(ggml_backend_vk_context * ctx, vk_con
const uint64_t nb01 = src0->nb[1];
const uint64_t nb02 = src0->nb[2];
const uint64_t nb12 = src1->nb[2];
// const uint64_t ne10 = src1->ne[0];
const uint64_t ne11 = src1->ne[1];
const uint64_t ne12 = src1->ne[2];
@@ -4974,6 +5118,7 @@ static void ggml_vk_mul_mat_vec_nc_f16_f32(ggml_backend_vk_context * ctx, vk_con
const uint32_t row_stride_x = nb01 / sizeof(ggml_fp16_t);
const uint32_t channel_stride_x = nb02 / sizeof(ggml_fp16_t);
const uint32_t channel_stride_y = nb12 / sizeof(float);
const uint64_t qx_sz = ggml_nbytes(src0);
const uint64_t qy_sz = ggml_nbytes(src1);
@@ -5004,7 +5149,7 @@ static void ggml_vk_mul_mat_vec_nc_f16_f32(ggml_backend_vk_context * ctx, vk_con
const uint64_t d_shader_offset = d_buf_offset - d_buffer_offset;
// compute
const std::array<uint32_t, 7> pc = { (uint32_t)ne00, (uint32_t)ne01, row_stride_x, channel_stride_x, (uint32_t)(ne12 / ne02), (uint32_t)(qy_shader_offset / ggml_type_size(src1->type)), (uint32_t)(d_shader_offset / ggml_type_size(dst->type)) };
const std::array<uint32_t, 9> pc = { (uint32_t)ne00, (uint32_t)ne01, row_stride_x, channel_stride_x, channel_stride_y, (uint32_t)(ne12 / ne02), (uint32_t)ne12, (uint32_t)(qy_shader_offset / ggml_type_size(src1->type)), (uint32_t)(d_shader_offset / ggml_type_size(dst->type)) };
ggml_vk_sync_buffers(subctx);
ggml_vk_dispatch_pipeline(ctx, subctx, ctx->device->pipeline_mul_mat_vec_nc_f16_f32,
{ vk_subbuffer{ d_Qx, qx_buf_offset, qx_sz }, vk_subbuffer{ d_Qy, qy_buffer_offset, qy_sz + qy_shader_offset }, vk_subbuffer{ d_D, d_buffer_offset, d_sz + d_shader_offset } }, 7 * sizeof(uint32_t), &pc, { 1, (uint32_t)ne01, (uint32_t)ne12 });
@@ -5029,7 +5174,7 @@ static void ggml_vk_mul_mat(ggml_backend_vk_context * ctx, vk_context& subctx, c
// mul_mat_vec supports batching ne12*ne13 when ne11==1, or treating ne11 as the batch size (up to four)
// when ne12 and ne13 are one.
} else if ((dst->ne[1] == 1 || (dst->ne[1] <= mul_mat_vec_max_cols && src1->ne[2] * src1->ne[3] == 1)) &&
(src0->type == GGML_TYPE_F32 || src0->type == GGML_TYPE_F16 || ggml_is_quantized(src0->type))) {
(src0->type == GGML_TYPE_F32 || src0->type == GGML_TYPE_F16 || src0->type == GGML_TYPE_BF16 || ggml_is_quantized(src0->type))) {
ggml_vk_mul_mat_vec_q_f16(ctx, subctx, src0, src1, dst, dryrun);
} else {
ggml_vk_mul_mat_q_f16(ctx, subctx, src0, src1, dst, dryrun);
@@ -5097,27 +5242,31 @@ static void ggml_vk_mul_mat_id_q_f16(ggml_backend_vk_context * ctx, vk_context&
const bool x_non_contig = (ctx->device->coopmat2 && src0->type == GGML_TYPE_F32) ||
!ggml_vk_dim01_contiguous(src0);
const bool y_non_contig = (ctx->device->coopmat2 && src1->type == GGML_TYPE_F32) ||
(src0->type == GGML_TYPE_BF16 && src1->type != GGML_TYPE_BF16) ||
!ggml_vk_dim01_contiguous(src1);
// If src0 is BF16, try to use a BF16 x BF16 multiply
ggml_type f16_type = src0->type == GGML_TYPE_BF16 ? GGML_TYPE_BF16 : GGML_TYPE_F16;
const bool y_f32_kernel = src1->type == GGML_TYPE_F32 && !y_non_contig;
vk_matmul_pipeline mmp = ggml_vk_get_mul_mat_mat_id_pipeline(ctx, src0->type, y_non_contig ? GGML_TYPE_F16 : src1->type, (ggml_prec)dst->op_params[0]);
vk_matmul_pipeline mmp = ggml_vk_get_mul_mat_mat_id_pipeline(ctx, src0->type, y_non_contig ? f16_type : src1->type, (ggml_prec)dst->op_params[0]);
const bool qx_needs_dequant = mmp == nullptr || x_non_contig;
const bool qy_needs_dequant = (src1->type != GGML_TYPE_F16 && !y_f32_kernel) || y_non_contig;
const bool qy_needs_dequant = (src1->type != f16_type && !y_f32_kernel) || y_non_contig;
if (qx_needs_dequant) {
// Fall back to dequant + f16 mulmat
mmp = ggml_vk_get_mul_mat_mat_id_pipeline(ctx, GGML_TYPE_F16, y_f32_kernel ? GGML_TYPE_F32 : GGML_TYPE_F16, (ggml_prec)dst->op_params[0]);
mmp = ggml_vk_get_mul_mat_mat_id_pipeline(ctx, f16_type, y_f32_kernel ? GGML_TYPE_F32 : f16_type, (ggml_prec)dst->op_params[0]);
}
// Not implemented
GGML_ASSERT(y_non_contig || !qy_needs_dequant); // NOLINT
const uint32_t kpad = ggml_vk_align_size(ne10, ggml_vk_guess_matmul_id_pipeline_align(ctx, mmp, ne01, nei1, qx_needs_dequant ? GGML_TYPE_F16 : src0->type));
const uint32_t kpad = ggml_vk_align_size(ne10, ggml_vk_guess_matmul_id_pipeline_align(ctx, mmp, ne01, nei1, qx_needs_dequant ? f16_type : src0->type));
const bool aligned = ne10 == kpad && ne01 > 8 && nei1 > 8;
vk_pipeline pipeline = ggml_vk_guess_matmul_id_pipeline(ctx, mmp, ne01, nei1, aligned, qx_needs_dequant ? GGML_TYPE_F16 : src0->type);
vk_pipeline pipeline = ggml_vk_guess_matmul_id_pipeline(ctx, mmp, ne01, nei1, aligned, qx_needs_dequant ? f16_type : src0->type);
// Reserve extra storage in the N dimension for the Y matrix, so we can avoid bounds-checking
uint32_t padded_n = qy_needs_dequant ? ROUNDUP_POW2(ne11, pipeline->wg_denoms[1]) :ne11;
@@ -5136,12 +5285,12 @@ static void ggml_vk_mul_mat_id_q_f16(ggml_backend_vk_context * ctx, vk_context&
vk_pipeline to_fp16_vk_1 = nullptr;
if (x_non_contig) {
to_fp16_vk_0 = ggml_vk_get_cpy_pipeline(ctx, src0, nullptr, GGML_TYPE_F16);
to_fp16_vk_0 = ggml_vk_get_cpy_pipeline(ctx, src0, nullptr, f16_type);
} else {
to_fp16_vk_0 = ggml_vk_get_to_fp16(ctx, src0->type);
}
if (y_non_contig) {
to_fp16_vk_1 = ggml_vk_get_cpy_pipeline(ctx, src1, nullptr, GGML_TYPE_F16);
to_fp16_vk_1 = ggml_vk_get_cpy_pipeline(ctx, src1, nullptr, f16_type);
} else {
to_fp16_vk_1 = ggml_vk_get_to_fp16(ctx, src1->type);
}
@@ -9227,6 +9376,7 @@ static bool ggml_backend_vk_device_supports_op(ggml_backend_dev_t dev, const ggm
switch (src0_type) {
case GGML_TYPE_F32:
case GGML_TYPE_F16:
case GGML_TYPE_BF16:
case GGML_TYPE_Q4_0:
case GGML_TYPE_Q4_1:
case GGML_TYPE_Q5_0:
@@ -9262,10 +9412,15 @@ static bool ggml_backend_vk_device_supports_op(ggml_backend_dev_t dev, const ggm
if (a->ne[3] != b->ne[3]) {
return false;
}
if (!(ggml_vk_dim01_contiguous(op->src[0]) || op->src[0]->type == GGML_TYPE_F32 || op->src[0]->type == GGML_TYPE_F16) ||
if (!(ggml_vk_dim01_contiguous(op->src[0]) || op->src[0]->type == GGML_TYPE_F32 || op->src[0]->type == GGML_TYPE_F16 || op->src[0]->type == GGML_TYPE_BF16) ||
!(ggml_vk_dim01_contiguous(op->src[1]) || op->src[1]->type == GGML_TYPE_F32 || op->src[1]->type == GGML_TYPE_F16)) {
return false;
}
if (op->src[0]->type == GGML_TYPE_BF16 && op->src[1]->type == GGML_TYPE_F16) {
// We currently don't have a bf16 x f16 shader, or an fp16->bf16 copy shader.
// So don't support this combination for now.
return false;
}
return true;
} break;
@@ -9338,6 +9493,7 @@ static bool ggml_backend_vk_device_supports_op(ggml_backend_dev_t dev, const ggm
switch (op->src[0]->type) {
case GGML_TYPE_F32:
case GGML_TYPE_F16:
case GGML_TYPE_BF16:
case GGML_TYPE_Q4_0:
case GGML_TYPE_Q4_1:
case GGML_TYPE_Q5_0:
@@ -9368,6 +9524,7 @@ static bool ggml_backend_vk_device_supports_op(ggml_backend_dev_t dev, const ggm
switch (src1_type) {
case GGML_TYPE_F32:
case GGML_TYPE_F16:
case GGML_TYPE_BF16:
case GGML_TYPE_Q4_0:
case GGML_TYPE_Q4_1:
case GGML_TYPE_Q5_0:

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@@ -12,6 +12,9 @@ endif()
if (GGML_VULKAN_INTEGER_DOT_GLSLC_SUPPORT)
add_compile_definitions(GGML_VULKAN_INTEGER_DOT_GLSLC_SUPPORT)
endif()
if (GGML_VULKAN_BFLOAT16_GLSLC_SUPPORT)
add_compile_definitions(GGML_VULKAN_BFLOAT16_GLSLC_SUPPORT)
endif()
set(TARGET vulkan-shaders-gen)
add_executable(${TARGET} vulkan-shaders-gen.cpp)
install(TARGETS ${TARGET} RUNTIME)

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@@ -18,7 +18,11 @@ void main() {
// fast path for when all four iterations are in-bounds
if (idx + (num_iter-1)*num_threads < p.ne) {
[[unroll]] for (uint i = 0; i < num_iter; ++i) {
#ifndef OPTIMIZATION_ERROR_WORKAROUND
#if defined(DATA_D_BF16)
float f = float(data_a[get_aoffset() + idx]);
data_d[get_doffset() + idx] = D_TYPE(fp32_to_bf16(f));
#elif !defined(OPTIMIZATION_ERROR_WORKAROUND)
data_d[get_doffset() + idx] = D_TYPE(data_a[get_aoffset() + idx]);
#else
data_d[get_doffset() + idx] = data_a[get_aoffset() + idx];
@@ -31,7 +35,10 @@ void main() {
continue;
}
#ifndef OPTIMIZATION_ERROR_WORKAROUND
#if defined(DATA_D_BF16)
float f = float(data_a[get_aoffset() + idx]);
data_d[get_doffset() + idx] = D_TYPE(fp32_to_bf16(f));
#elif !defined(OPTIMIZATION_ERROR_WORKAROUND)
data_d[get_doffset() + idx] = D_TYPE(data_a[get_aoffset() + idx]);
#else
data_d[get_doffset() + idx] = data_a[get_aoffset() + idx];

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@@ -12,7 +12,10 @@ void main() {
return;
}
#ifndef OPTIMIZATION_ERROR_WORKAROUND
#if defined(DATA_D_BF16)
float f = float(data_a[get_aoffset() + src0_idx(idx)]);
data_d[get_doffset() + dst_idx(idx)] = D_TYPE(fp32_to_bf16(f));
#elif !defined(OPTIMIZATION_ERROR_WORKAROUND)
data_d[get_doffset() + dst_idx(idx)] = D_TYPE(data_a[get_aoffset() + src0_idx(idx)]);
#else
data_d[get_doffset() + dst_idx(idx)] = data_a[get_aoffset() + src0_idx(idx)];

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@@ -23,6 +23,12 @@ vec2 dequantize(uint ib, uint iqs, uint a_offset) {
}
#endif
#if defined(DATA_A_BF16)
vec2 dequantize(uint ib, uint iqs, uint a_offset) {
return vec2(bf16_to_fp32(data_a[a_offset + ib]), bf16_to_fp32(data_a[a_offset + ib + 1]));
}
#endif
#if defined(DATA_A_Q4_0)
vec2 dequantize(uint ib, uint iqs, uint a_offset) {
const uint vui = uint(data_a[a_offset + ib].qs[iqs]);
@@ -428,7 +434,7 @@ vec4 dequantize4(uint ib, uint iqs, uint a_offset) {
}
#endif
#if defined(DATA_A_F32) || defined(DATA_A_F16)
#if defined(DATA_A_F32) || defined(DATA_A_F16) || defined(DATA_A_BF16)
vec2 get_dm(uint ib, uint a_offset) {
return vec2(0, 0);
}

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@@ -482,7 +482,7 @@ float16_t dequantFuncIQ2_XXS(const in decodeBufIQ2_XXS bl, const in uint blockCo
const uint ib8 = (idx & 0x18) >> 3; // 0..3
const uint iqs = 8 * ib32 + ib8;
const uint8_t qs = bl.block.qs[iqs];
const uint qs = bl.block.qs[iqs];
const uint signscale = pack32(u16vec2(bl16.block.qs[4*ib32+2], bl16.block.qs[4*ib32+3]));
const float dscale = float(bl.block.d) * 0.25 * (0.5 + float(signscale >> 28));

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@@ -20,9 +20,14 @@ void main() {
const uint a_offset = get_aoffset() + i01*p.nb01 + i11*p.nb02 + i12*p.nb03;
const uint d_offset = get_doffset() + i10*p.nb21 + i11*p.nb22 + i12*p.nb23;
#ifndef OPTIMIZATION_ERROR_WORKAROUND
data_d[d_offset + i00] = D_TYPE(data_a[a_offset + i00]);
#if defined(DATA_A_BF16)
FLOAT_TYPE v = FLOAT_TYPE(bf16_to_fp32(data_a[a_offset + i00]));
#else
data_d[d_offset + i00] = data_a[a_offset + i00];
FLOAT_TYPE v = FLOAT_TYPE(data_a[a_offset + i00]);
#endif
#ifndef OPTIMIZATION_ERROR_WORKAROUND
data_d[d_offset + i00] = D_TYPE(v);
#else
data_d[d_offset + i00] = D_TYPE(v);
#endif
}

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@@ -6,7 +6,7 @@
layout(local_size_x_id = 0, local_size_y = 1, local_size_z = 1) in;
#if !defined(DATA_A_F32) && !defined(DATA_A_F16)
#if !defined(DATA_A_F32) && !defined(DATA_A_F16) && !defined(DATA_A_BF16)
#define K_PER_ITER 8
#else
#define K_PER_ITER 2

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@@ -21,7 +21,9 @@ layout (push_constant) uniform parameter
uint nrows_x;
uint row_stride_x;
uint channel_stride_x;
uint channel_stride_y;
uint channel_x_divisor;
uint ne12;
uint b_offset;
uint d_offset;
} p;
@@ -33,6 +35,7 @@ void main() {
const uint row_x = gl_GlobalInvocationID.y;
const uint channel = gl_GlobalInvocationID.z;
const uint channel_x = channel / p.channel_x_divisor;
const uint channel_y = channel % p.ne12;
const uint nrows_y = p.ncols_x;
const uint nrows_dst = p.nrows_x;
@@ -56,7 +59,7 @@ void main() {
const uint row_y = col_x;
const uint ix = channel_x*p.channel_stride_x + row_x*p.row_stride_x + col_x;
const uint iy = channel*nrows_y + row_y;
const uint iy = channel_y*p.channel_stride_y + row_y;
const vec4 av4 = vec4(data_a_v4[ix / 4]);
const vec4 bv4 = vec4(data_b_v4[iy / 4]);
@@ -72,7 +75,7 @@ void main() {
const uint row_y = col_x;
const uint ix = channel_x*p.channel_stride_x + row_x*p.row_stride_x + col_x;
const uint iy = channel*nrows_y + row_y;
const uint iy = channel_y*p.channel_stride_y + row_y;
const vec4 av4 = vec4(data_a_v4[ix / 4]);
const vec4 bv4 = vec4(data_b_v4[iy / 4]);
@@ -89,7 +92,7 @@ void main() {
const uint row_y = col_x;
const uint ix = channel_x*p.channel_stride_x + row_x*p.row_stride_x + col_x;
const uint iy = channel*nrows_y + row_y;
const uint iy = channel_y*p.channel_stride_y + row_y;
const FLOAT_TYPE xi = FLOAT_TYPE(data_a[ix]);

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@@ -10,6 +10,10 @@
#extension GL_EXT_shader_explicit_arithmetic_types_float16 : require
#endif
#if defined(DATA_A_BF16) && defined(COOPMAT)
#extension GL_EXT_bfloat16 : enable
#endif
#ifdef COOPMAT
#extension GL_KHR_cooperative_matrix : enable
#extension GL_KHR_memory_scope_semantics : enable
@@ -29,6 +33,10 @@
#define LOAD_VEC_B 1
#endif
#if !defined(TO_FLOAT_TYPE)
#define TO_FLOAT_TYPE FLOAT_TYPE
#endif
layout(local_size_x_id = 0, local_size_y = 1, local_size_z = 1) in;
layout (binding = 0) readonly buffer A {A_TYPE data_a[];};
@@ -202,8 +210,8 @@ void main() {
#endif
#ifdef COOPMAT
coopmat<float16_t, gl_ScopeSubgroup, TM, TK, gl_MatrixUseA> cache_a;
coopmat<float16_t, gl_ScopeSubgroup, TK, TN, gl_MatrixUseB> cache_b;
coopmat<FLOAT_TYPE, gl_ScopeSubgroup, TM, TK, gl_MatrixUseA> cache_a;
coopmat<FLOAT_TYPE, gl_ScopeSubgroup, TK, TN, gl_MatrixUseB> cache_b;
coopmat<ACC_TYPE, gl_ScopeSubgroup, TM, TN, gl_MatrixUseAccumulator> sums[cms_per_row * cms_per_col];
[[unroll]] for (uint i = 0; i < cms_per_row * cms_per_col; i++) {
@@ -248,6 +256,21 @@ void main() {
buf_a[(loadc_a + l) * SHMEM_STRIDE + loadr_a] = FLOAT_TYPE(0.0f);
}
#endif
#elif defined(DATA_A_BF16)
#if LOAD_VEC_A == 4
const uint idx = pos_a + (loadc_a + l) * p.stride_a / LOAD_VEC_A + loadr_a;
const uint buf_idx = (loadc_a + l) * SHMEM_STRIDE + loadr_a * LOAD_VEC_A;
buf_a[buf_idx ] = TO_FLOAT_TYPE(data_a[idx].x);
buf_a[buf_idx + 1] = TO_FLOAT_TYPE(data_a[idx].y);
buf_a[buf_idx + 2] = TO_FLOAT_TYPE(data_a[idx].z);
buf_a[buf_idx + 3] = TO_FLOAT_TYPE(data_a[idx].w);
#else
if (ir * BM + loadc_a + l < p.M && block + loadr_a < end_k) {
buf_a[(loadc_a + l) * SHMEM_STRIDE + loadr_a] = TO_FLOAT_TYPE(data_a[pos_a + (loadc_a + l) * p.stride_a + loadr_a]);
} else {
buf_a[(loadc_a + l) * SHMEM_STRIDE + loadr_a] = TO_FLOAT_TYPE(uint16_t(0));
}
#endif
#elif defined(DATA_A_Q4_0)
const uint idx = pos_a + (loadc_a + l) * p.stride_a / LOAD_VEC_A + loadr_a;
const uint buf_idx = (loadc_a + l) * SHMEM_STRIDE + 4 * loadr_a;
@@ -695,13 +718,13 @@ void main() {
const uint idx = pos_b + (loadc_b + l) * p.stride_b / LOAD_VEC_B + loadr_b;
#endif
const uint buf_idx = (loadc_b + l) * SHMEM_STRIDE + loadr_b * LOAD_VEC_B;
buf_b[buf_idx + 0] = FLOAT_TYPE(data_b[idx].x);
buf_b[buf_idx + 1] = FLOAT_TYPE(data_b[idx].y);
buf_b[buf_idx + 2] = FLOAT_TYPE(data_b[idx].z);
buf_b[buf_idx + 3] = FLOAT_TYPE(data_b[idx].w);
buf_b[buf_idx + 0] = TO_FLOAT_TYPE(data_b[idx].x);
buf_b[buf_idx + 1] = TO_FLOAT_TYPE(data_b[idx].y);
buf_b[buf_idx + 2] = TO_FLOAT_TYPE(data_b[idx].z);
buf_b[buf_idx + 3] = TO_FLOAT_TYPE(data_b[idx].w);
#elif !MUL_MAT_ID
if (ic * BN + loadc_b + l < p.N && block + loadr_b < end_k) {
buf_b[(loadc_b + l) * SHMEM_STRIDE + loadr_b] = FLOAT_TYPE(data_b[pos_b + (loadc_b + l) * p.stride_b + loadr_b]);
buf_b[(loadc_b + l) * SHMEM_STRIDE + loadr_b] = TO_FLOAT_TYPE(data_b[pos_b + (loadc_b + l) * p.stride_b + loadr_b]);
} else {
buf_b[(loadc_b + l) * SHMEM_STRIDE + loadr_b] = FLOAT_TYPE(0.0f);
}
@@ -709,7 +732,7 @@ void main() {
const uint row_i = ic * BN + loadc_b + l;
if (row_i < _ne1) {
const u16vec2 row_idx = row_ids[row_i];
buf_b[(loadc_b + l) * SHMEM_STRIDE + loadr_b] = FLOAT_TYPE(data_b[pos_b + row_idx.y * p.batch_stride_b + (row_idx.x % p.ne11) * p.stride_b + loadr_b]);
buf_b[(loadc_b + l) * SHMEM_STRIDE + loadr_b] = TO_FLOAT_TYPE(data_b[pos_b + row_idx.y * p.batch_stride_b + (row_idx.x % p.ne11) * p.stride_b + loadr_b]);
} else {
buf_b[(loadc_b + l) * SHMEM_STRIDE + loadr_b] = FLOAT_TYPE(0.0f);
}

View File

@@ -14,6 +14,9 @@
#extension GL_EXT_buffer_reference : enable
#extension GL_KHR_shader_subgroup_ballot : enable
#extension GL_KHR_shader_subgroup_vote : enable
#ifdef DATA_A_BF16
#extension GL_EXT_bfloat16 : enable
#endif
#include "types.comp"
@@ -80,6 +83,12 @@ layout (binding = 2) writeonly buffer D {D_TYPE data_d[];};
#define store_scales(a)
#endif
#if defined(DATA_A_BF16)
#define MAT_TYPE bfloat16_t
#else
#define MAT_TYPE FLOAT_TYPE
#endif
#ifdef MUL_MAT_ID
layout (binding = 3) readonly buffer IDS {int data_ids[];};
@@ -271,8 +280,8 @@ void main() {
// Manually partial unroll
[[unroll]] for (uint j = 0; j < unroll_count; ++j) {
coopmat<FLOAT_TYPE, gl_ScopeWorkgroup, BM, BK, gl_MatrixUseA> mat_a;
coopmat<FLOAT_TYPE, gl_ScopeWorkgroup, BK, BNover4, gl_MatrixUseB> mat_b;
coopmat<MAT_TYPE, gl_ScopeWorkgroup, BM, BK, gl_MatrixUseA> mat_a;
coopmat<MAT_TYPE, gl_ScopeWorkgroup, BK, BNover4, gl_MatrixUseB> mat_b;
coopMatLoadTensorNV(mat_a, data_a, pos_a, sliceTensorLayoutNV(tensorLayoutA, ir * BM, BM, block_k, BK) DECODEFUNCA);
coopMatLoadTensorNV(mat_b, data_b, pos_b, sliceTensorLayoutNV(tensorLayoutB, ic * BN, BNover4, block_k, BK), tensorViewTranspose);
@@ -286,8 +295,8 @@ void main() {
store_scales(tid);
}
while (block_k < end_k) {
coopmat<FLOAT_TYPE, gl_ScopeWorkgroup, BM, BK, gl_MatrixUseA> mat_a;
coopmat<FLOAT_TYPE, gl_ScopeWorkgroup, BK, BNover4, gl_MatrixUseB> mat_b;
coopmat<MAT_TYPE, gl_ScopeWorkgroup, BM, BK, gl_MatrixUseA> mat_a;
coopmat<MAT_TYPE, gl_ScopeWorkgroup, BK, BNover4, gl_MatrixUseB> mat_b;
coopMatLoadTensorNV(mat_a, data_a, pos_a, sliceTensorLayoutNV(tensorLayoutA, ir * BM, BM, block_k, BK) DECODEFUNCA);
coopMatLoadTensorNV(mat_b, data_b, pos_b, sliceTensorLayoutNV(tensorLayoutB, ic * BN, BNover4, block_k, BK), tensorViewTranspose);
@@ -310,8 +319,8 @@ void main() {
// Manually partial unroll
[[unroll]] for (uint j = 0; j < unroll_count; ++j) {
coopmat<FLOAT_TYPE, gl_ScopeWorkgroup, BM, BK, gl_MatrixUseA> mat_a;
coopmat<FLOAT_TYPE, gl_ScopeWorkgroup, BK, BNover2, gl_MatrixUseB> mat_b;
coopmat<MAT_TYPE, gl_ScopeWorkgroup, BM, BK, gl_MatrixUseA> mat_a;
coopmat<MAT_TYPE, gl_ScopeWorkgroup, BK, BNover2, gl_MatrixUseB> mat_b;
coopMatLoadTensorNV(mat_a, data_a, pos_a, sliceTensorLayoutNV(tensorLayoutA, ir * BM, BM, block_k, BK) DECODEFUNCA);
coopMatLoadTensorNV(mat_b, data_b, pos_b, sliceTensorLayoutNV(tensorLayoutB, ic * BN, BNover2, block_k, BK), tensorViewTranspose);
@@ -325,8 +334,8 @@ void main() {
store_scales(tid);
}
while (block_k < end_k) {
coopmat<FLOAT_TYPE, gl_ScopeWorkgroup, BM, BK, gl_MatrixUseA> mat_a;
coopmat<FLOAT_TYPE, gl_ScopeWorkgroup, BK, BNover2, gl_MatrixUseB> mat_b;
coopmat<MAT_TYPE, gl_ScopeWorkgroup, BM, BK, gl_MatrixUseA> mat_a;
coopmat<MAT_TYPE, gl_ScopeWorkgroup, BK, BNover2, gl_MatrixUseB> mat_b;
coopMatLoadTensorNV(mat_a, data_a, pos_a, sliceTensorLayoutNV(tensorLayoutA, ir * BM, BM, block_k, BK) DECODEFUNCA);
coopMatLoadTensorNV(mat_b, data_b, pos_b, sliceTensorLayoutNV(tensorLayoutB, ic * BN, BNover2, block_k, BK), tensorViewTranspose);
@@ -350,8 +359,8 @@ void main() {
// Manually partial unroll
[[unroll]] for (uint j = 0; j < unroll_count; ++j) {
coopmat<FLOAT_TYPE, gl_ScopeWorkgroup, BM, BK, gl_MatrixUseA> mat_a;
coopmat<FLOAT_TYPE, gl_ScopeWorkgroup, BK, BN, gl_MatrixUseB> mat_b;
coopmat<MAT_TYPE, gl_ScopeWorkgroup, BM, BK, gl_MatrixUseA> mat_a;
coopmat<MAT_TYPE, gl_ScopeWorkgroup, BK, BN, gl_MatrixUseB> mat_b;
coopMatLoadTensorNV(mat_a, data_a, pos_a, sliceTensorLayoutNV(tensorLayoutA, ir * BM, BM, block_k, BK) DECODEFUNCA);
coopMatLoadTensorNV(mat_b, data_b, pos_b, sliceTensorLayoutNV(tensorLayoutB, ic * BN, BN, block_k, BK), tensorViewTranspose);
@@ -365,8 +374,8 @@ void main() {
store_scales(tid);
}
while (block_k < end_k) {
coopmat<FLOAT_TYPE, gl_ScopeWorkgroup, BM, BK, gl_MatrixUseA> mat_a;
coopmat<FLOAT_TYPE, gl_ScopeWorkgroup, BK, BN, gl_MatrixUseB> mat_b;
coopmat<MAT_TYPE, gl_ScopeWorkgroup, BM, BK, gl_MatrixUseA> mat_a;
coopmat<MAT_TYPE, gl_ScopeWorkgroup, BK, BN, gl_MatrixUseB> mat_b;
coopMatLoadTensorNV(mat_a, data_a, pos_a, sliceTensorLayoutNV(tensorLayoutA, ir * BM, BM, block_k, BK) DECODEFUNCA);
coopMatLoadTensorNV(mat_b, data_b, pos_b, sliceTensorLayoutNV(tensorLayoutB, ic * BN, BN, block_k, BK), tensorViewTranspose);
@@ -405,8 +414,8 @@ void main() {
fetch_scales(ir * BM, pos_a, stride_a, block_k + BK, tid, false);
}
coopmat<FLOAT_TYPE, gl_ScopeWorkgroup, BM, BK, gl_MatrixUseA> mat_a;
coopmat<FLOAT_TYPE, gl_ScopeWorkgroup, BK, BN, gl_MatrixUseB> mat_b;
coopmat<MAT_TYPE, gl_ScopeWorkgroup, BM, BK, gl_MatrixUseA> mat_a;
coopmat<MAT_TYPE, gl_ScopeWorkgroup, BK, BN, gl_MatrixUseB> mat_b;
coopMatLoadTensorNV(mat_a, data_a, pos_a, sliceTensorLayoutNV(tensorLayoutAClamp, ir * BM, BM, block_k, BK) DECODEFUNCA);
#ifdef MUL_MAT_ID

View File

@@ -0,0 +1,7 @@
#version 460
#extension GL_EXT_bfloat16 : require
void main()
{
}

View File

@@ -33,6 +33,19 @@
#endif
#endif
#if defined(DATA_A_BF16)
#define QUANT_K 1
#define QUANT_R 1
#if !defined(LOAD_VEC_A) || LOAD_VEC_A == 1
#define A_TYPE uint16_t
#elif LOAD_VEC_A == 4
#define A_TYPE u16vec4
#elif LOAD_VEC_A == 8
#error unsupported
#endif
#endif
#define QUANT_K_Q4_0 32
#define QUANT_R_Q4_0 2
@@ -1343,4 +1356,18 @@ void init_iq_shmem(uvec3 wgsize)
}
#endif
// returns the bfloat value in the low 16b.
// See ggml_compute_fp32_to_bf16
uint32_t fp32_to_bf16(float f)
{
uint32_t u = floatBitsToUint(f);
u = (u + (0x7fff + ((u >> 16) & 1))) >> 16;
return u;
}
float bf16_to_fp32(uint32_t u)
{
return uintBitsToFloat(u << 16);
}
#endif // !defined(GGML_TYPES_COMP)

View File

@@ -63,7 +63,8 @@ const std::vector<std::string> type_names = {
"iq3_xxs",
"iq3_s",
"iq4_xs",
"iq4_nl"
"iq4_nl",
"bf16",
};
namespace {
@@ -296,7 +297,6 @@ void matmul_shaders(bool fp16, bool matmul_id, bool coopmat, bool coopmat2, bool
std::string aligned_b_type_f16 = coopmat2 ? "float16_t" : fp16 ? "f16mat2x4" : "f16vec4";
std::map<std::string, std::string> base_dict = {
{"FLOAT_TYPE", (coopmat2 || fp16) ? "float16_t" : "float"},
{"FLOAT_TYPE_VEC2", (coopmat2 || fp16) ? "f16vec2" : "vec2"},
};
std::string shader_name = "matmul";
@@ -318,12 +318,45 @@ void matmul_shaders(bool fp16, bool matmul_id, bool coopmat, bool coopmat2, bool
const std::string source_name = coopmat2 ? "mul_mm_cm2.comp" : "mul_mm.comp";
// Shaders with f16 B_TYPE
string_to_spv(shader_name + "_f32_f16", source_name, merge_maps(base_dict, {{"DATA_A_F32", "1"}, {"B_TYPE", "float16_t"}, {"D_TYPE", "float"}, }), fp16, coopmat, coopmat2, f16acc);
string_to_spv(shader_name + "_f32_f16_aligned", source_name, merge_maps(base_dict, {{"DATA_A_F32", "1"}, {"LOAD_VEC_A", load_vec}, {"LOAD_VEC_B", load_vec}, {"B_TYPE", aligned_b_type_f16}, {"D_TYPE", "float"}, {"ALIGNED", "1"}}), fp16, coopmat, coopmat2, f16acc);
auto const &FLOAT_TYPE = [&](const std::string &t) -> std::string {
if (t == "bf16") {
// scalar path promotes to float
if (!coopmat && !coopmat2) {
return "float";
}
return "bfloat16_t";
}
if (coopmat2 || fp16) {
return "float16_t";
}
return "float";
};
string_to_spv(shader_name + "_f16_aligned", source_name, merge_maps(base_dict, {{"DATA_A_F16", "1"}, {"LOAD_VEC_A", load_vec}, {"LOAD_VEC_B", load_vec}, {"B_TYPE", aligned_b_type_f16}, {"D_TYPE", "float"}, {"ALIGNED", "1"}}), fp16, coopmat, coopmat2, f16acc);
string_to_spv(shader_name + "_f16", source_name, merge_maps(base_dict, {{"DATA_A_F16", "1"}, {"B_TYPE", "float16_t"}, {"D_TYPE", "float"}}), fp16, coopmat, coopmat2, f16acc);
// Shaders with f16 B_TYPE
string_to_spv(shader_name + "_f32_f16", source_name, merge_maps(base_dict, {{"FLOAT_TYPE", FLOAT_TYPE("f16")}, {"DATA_A_F32", "1"}, {"B_TYPE", "float16_t"}, {"D_TYPE", "float"}, }), fp16, coopmat, coopmat2, f16acc);
string_to_spv(shader_name + "_f32_f16_aligned", source_name, merge_maps(base_dict, {{"FLOAT_TYPE", FLOAT_TYPE("f16")}, {"DATA_A_F32", "1"}, {"LOAD_VEC_A", load_vec}, {"LOAD_VEC_B", load_vec}, {"B_TYPE", aligned_b_type_f16}, {"D_TYPE", "float"}, {"ALIGNED", "1"}}), fp16, coopmat, coopmat2, f16acc);
string_to_spv(shader_name + "_f16_aligned", source_name, merge_maps(base_dict, {{"FLOAT_TYPE", FLOAT_TYPE("f16")}, {"DATA_A_F16", "1"}, {"LOAD_VEC_A", load_vec}, {"LOAD_VEC_B", load_vec}, {"B_TYPE", aligned_b_type_f16}, {"D_TYPE", "float"}, {"ALIGNED", "1"}}), fp16, coopmat, coopmat2, f16acc);
string_to_spv(shader_name + "_f16", source_name, merge_maps(base_dict, {{"FLOAT_TYPE", FLOAT_TYPE("f16")}, {"DATA_A_F16", "1"}, {"B_TYPE", "float16_t"}, {"D_TYPE", "float"}}), fp16, coopmat, coopmat2, f16acc);
// bf16
{
std::string load_vec_a_unaligned = "1";
// For aligned matmul loads
std::string load_vec_a = coopmat2 ? "1" : "4";
// scalar path promotes to float
std::string to_float_type = (coopmat || coopmat2) ? "uintBitsToBFloat16EXT" : "bf16_to_fp32";
// If bfloat16 is not supported, then only compile the scalar (promote to fp32) shader
#if !defined(GGML_VULKAN_BFLOAT16_GLSLC_SUPPORT)
if (!(coopmat || coopmat2))
#endif
{
string_to_spv(shader_name + "_bf16_aligned", source_name, merge_maps(base_dict, {{"FLOAT_TYPE", FLOAT_TYPE("bf16")}, {"TO_FLOAT_TYPE", to_float_type}, {"DATA_A_BF16", "1"}, {"LOAD_VEC_A", load_vec_a}, {"LOAD_VEC_B", "4"}, {"B_TYPE", coopmat2 ? "bfloat16_t" : "u16vec4"}, {"D_TYPE", "float"}, {"B_IS_FLOAT", "1"}, {"ALIGNED", "1"}}), fp16, coopmat, coopmat2, f16acc);
string_to_spv(shader_name + "_bf16", source_name, merge_maps(base_dict, {{"FLOAT_TYPE", FLOAT_TYPE("bf16")}, {"TO_FLOAT_TYPE", to_float_type}, {"DATA_A_BF16", "1"}, {"LOAD_VEC_A", load_vec_a_unaligned}, {"B_TYPE", coopmat2 ? "bfloat16_t" : "uint16_t"}, {"D_TYPE", "float"}, {"B_IS_FLOAT", "1"}}), fp16, coopmat, coopmat2, f16acc);
}
}
for (const auto& tname : type_names) {
std::string load_vec_quant = "2";
@@ -332,26 +365,30 @@ void matmul_shaders(bool fp16, bool matmul_id, bool coopmat, bool coopmat2, bool
else if ((tname == "q5_0") || (tname == "q5_1") || (tname == "q8_0") || (tname == "iq4_nl"))
load_vec_quant = "4";
if (tname == "bf16") {
continue;
}
std::string data_a_key = "DATA_A_" + to_uppercase(tname);
// For unaligned, load one at a time for f32/f16, or two at a time for quants
std::string load_vec_a_unaligned = (coopmat2 || tname == "f32" || tname == "f16") ? "1" : load_vec_quant;
std::string load_vec_a_unaligned = (coopmat2 || tname == "f32" || tname == "f16" || tname == "bf16") ? "1" : load_vec_quant;
// For aligned matmul loads
std::string load_vec_a = (coopmat2 || tname == "f32" || tname == "f16") ? load_vec : load_vec_quant;
std::string load_vec_a = (coopmat2 || tname == "f32" || tname == "f16" || tname == "bf16") ? load_vec : load_vec_quant;
// don't generate f32 variants for coopmat2
if (!coopmat2) {
string_to_spv(shader_name + "_" + tname + "_f32", source_name, merge_maps(base_dict, {{data_a_key, "1"}, {"LOAD_VEC_A", load_vec_a_unaligned}, {"B_TYPE", "float"}, {"D_TYPE", "float"}}), fp16, coopmat, coopmat2, f16acc);
string_to_spv(shader_name + "_" + tname + "_f32_aligned", source_name, merge_maps(base_dict, {{data_a_key, "1"}, {"LOAD_VEC_A", load_vec_a}, {"LOAD_VEC_B", load_vec}, {"B_TYPE", aligned_b_type_f32}, {"D_TYPE", "float"}, {"ALIGNED", "1"}}), fp16, coopmat, coopmat2, f16acc);
string_to_spv(shader_name + "_" + tname + "_f32", source_name, merge_maps(base_dict, {{"FLOAT_TYPE", FLOAT_TYPE(tname)}, {data_a_key, "1"}, {"LOAD_VEC_A", load_vec_a_unaligned}, {"B_TYPE", "float"}, {"D_TYPE", "float"}}), fp16, coopmat, coopmat2, f16acc);
string_to_spv(shader_name + "_" + tname + "_f32_aligned", source_name, merge_maps(base_dict, {{"FLOAT_TYPE", FLOAT_TYPE(tname)}, {data_a_key, "1"}, {"LOAD_VEC_A", load_vec_a}, {"LOAD_VEC_B", load_vec}, {"B_TYPE", aligned_b_type_f32}, {"D_TYPE", "float"}, {"ALIGNED", "1"}}), fp16, coopmat, coopmat2, f16acc);
}
if (tname != "f16" && tname != "f32") {
string_to_spv(shader_name + "_" + tname + "_f16", source_name, merge_maps(base_dict, {{data_a_key, "1"}, {"LOAD_VEC_A", load_vec_a_unaligned}, {"B_TYPE", "float16_t"}, {"D_TYPE", "float"}}), fp16, coopmat, coopmat2, f16acc);
string_to_spv(shader_name + "_" + tname + "_f16_aligned", source_name, merge_maps(base_dict, {{data_a_key, "1"}, {"LOAD_VEC_A", load_vec_a}, {"LOAD_VEC_B", load_vec}, {"B_TYPE", aligned_b_type_f16}, {"D_TYPE", "float"}, {"ALIGNED", "1"}}), fp16, coopmat, coopmat2, f16acc);
string_to_spv(shader_name + "_" + tname + "_f16", source_name, merge_maps(base_dict, {{"FLOAT_TYPE", FLOAT_TYPE(tname)}, {data_a_key, "1"}, {"LOAD_VEC_A", load_vec_a_unaligned}, {"B_TYPE", "float16_t"}, {"D_TYPE", "float"}}), fp16, coopmat, coopmat2, f16acc);
string_to_spv(shader_name + "_" + tname + "_f16_aligned", source_name, merge_maps(base_dict, {{"FLOAT_TYPE", FLOAT_TYPE(tname)}, {data_a_key, "1"}, {"LOAD_VEC_A", load_vec_a}, {"LOAD_VEC_B", load_vec}, {"B_TYPE", aligned_b_type_f16}, {"D_TYPE", "float"}, {"ALIGNED", "1"}}), fp16, coopmat, coopmat2, f16acc);
}
#if defined(GGML_VULKAN_INTEGER_DOT_GLSLC_SUPPORT)
if (!coopmat && !coopmat2 && !matmul_id && (tname == "q4_0" || tname == "q4_1" || tname == "q5_0" || tname == "q5_1" || tname == "q8_0")) {
string_to_spv(shader_name + "_" + tname + "_q8_1", "mul_mmq.comp", merge_maps(base_dict, {{data_a_key, "1"}, {"D_TYPE", "float"},}), fp16, coopmat, coopmat2, f16acc);
string_to_spv(shader_name + "_" + tname + "_q8_1", "mul_mmq.comp", merge_maps(base_dict, {{"FLOAT_TYPE", FLOAT_TYPE(tname)}, {data_a_key, "1"}, {"D_TYPE", "float"},}), fp16, coopmat, coopmat2, f16acc);
}
#endif
}
@@ -393,6 +430,7 @@ void process_shaders() {
if (tname == "f32") {
continue;
}
if (tname == "bf16") continue;
if (tname == "f16") {
string_to_spv("flash_attn_f32_f16_" + tname, "flash_attn_cm2.comp",
@@ -417,12 +455,12 @@ void process_shaders() {
string_to_spv("mul_mat_vec_id_" + tname + "_f32", shader, merge_maps(base_dict, {{"MUL_MAT_ID", "1"}, {data_a_key, "1"}, {"B_TYPE", "float"}, {"B_TYPE_VEC2", "vec2"}, {"B_TYPE_VEC4", "vec4"}, {"D_TYPE", "float"}}));
// Dequant shaders
if (tname != "f16") {
if (tname != "f16" && tname != "bf16") {
string_to_spv("dequant_" + tname, "dequant_" + tname + ".comp", merge_maps(base_dict, {{data_a_key, "1"}, {"D_TYPE", "float16_t"}}));
}
if (!string_ends_with(tname, "_k")) {
shader = (tname == "f32" || tname == "f16") ? "get_rows.comp" : "get_rows_quant.comp";
shader = (tname == "f32" || tname == "f16" || tname == "bf16") ? "get_rows.comp" : "get_rows_quant.comp";
if (tname == "f16") {
string_to_spv("get_rows_" + tname, shader, merge_maps(base_dict, {{data_a_key, "1"}, {"B_TYPE", "int"}, {"D_TYPE", "float16_t"}, {"OPTIMIZATION_ERROR_WORKAROUND", "1"}}));
@@ -447,9 +485,11 @@ void process_shaders() {
string_to_spv("cpy_f32_f32", "copy.comp", {{"A_TYPE", "float"}, {"D_TYPE", "float"}});
string_to_spv("cpy_f32_f16", "copy.comp", {{"A_TYPE", "float"}, {"D_TYPE", "float16_t"}});
string_to_spv("cpy_f16_f16", "copy.comp", {{"A_TYPE", "float16_t"}, {"D_TYPE", "float16_t"}, {"OPTIMIZATION_ERROR_WORKAROUND", "1"}});
string_to_spv("cpy_f32_bf16","copy.comp", {{"A_TYPE", "float"}, {"D_TYPE", "uint16_t"}, {"DATA_D_BF16", "1"}});
string_to_spv("contig_cpy_f32_f32", "contig_copy.comp", {{"A_TYPE", "float"}, {"D_TYPE", "float"}});
string_to_spv("contig_cpy_f32_f16", "contig_copy.comp", {{"A_TYPE", "float"}, {"D_TYPE", "float16_t"}});
string_to_spv("contig_cpy_f16_f16", "contig_copy.comp", {{"A_TYPE", "float16_t"}, {"D_TYPE", "float16_t"}, {"OPTIMIZATION_ERROR_WORKAROUND", "1"}});
string_to_spv("contig_cpy_f32_bf16","contig_copy.comp",{{"A_TYPE", "float"}, {"D_TYPE", "uint16_t"}, {"DATA_D_BF16", "1"}});
for (std::string t : {"q4_0", "q4_1", "q5_0", "q5_1", "q8_0", "iq4_nl"}) {
string_to_spv("cpy_f32_" + t, "copy_to_quant.comp", {{"DATA_A_" + to_uppercase(t), "1"}, {"D_TYPE", "float"}, {"FLOAT_TYPE", "float"}});

View File

@@ -104,6 +104,7 @@ class Keys:
EXPERT_WEIGHTS_SCALE = "{arch}.expert_weights_scale"
EXPERT_WEIGHTS_NORM = "{arch}.expert_weights_norm"
EXPERT_GATING_FUNC = "{arch}.expert_gating_func"
MOE_EVERY_N_LAYERS = "{arch}.moe_every_n_layers"
POOLING_TYPE = "{arch}.pooling_type"
LOGIT_SCALE = "{arch}.logit_scale"
DECODER_START_TOKEN_ID = "{arch}.decoder_start_token_id"
@@ -230,6 +231,7 @@ class Keys:
BLOCK_COUNT = "clip.vision.block_count"
IMAGE_MEAN = "clip.vision.image_mean"
IMAGE_STD = "clip.vision.image_std"
SPATIAL_MERGE_SIZE = "clip.vision.spatial_merge_size"
USE_GELU = "clip.use_gelu"
USE_SILU = "clip.use_silu"
@@ -267,6 +269,7 @@ class MODEL_ARCH(IntEnum):
REFACT = auto()
BERT = auto()
NOMIC_BERT = auto()
NOMIC_BERT_MOE = auto()
JINA_BERT_V2 = auto()
BLOOM = auto()
STABLELM = auto()
@@ -489,6 +492,7 @@ class MODEL_TENSOR(IntEnum):
V_ENC_FFN_DOWN = auto()
V_PRE_NORM = auto()
V_POST_NORM = auto()
V_MM_INP_NORM = auto()
V_MM_INP_PROJ = auto() # gemma3
V_MM_SOFT_EMB_NORM = auto() # gemma3
V_RESMPL_POS_EMBD_K = auto() # minicpmv
@@ -503,6 +507,7 @@ class MODEL_TENSOR(IntEnum):
V_RESMPL_PROJ = auto() # minicpmv
V_RESMPL_QUERY = auto() # minicpmv
V_TOK_EMBD_IMG_BREAK = auto() # pixtral
V_MM_PATCH_MERGER = auto() # mistral small 3.1
MODEL_ARCH_NAMES: dict[MODEL_ARCH, str] = {
@@ -521,6 +526,7 @@ MODEL_ARCH_NAMES: dict[MODEL_ARCH, str] = {
MODEL_ARCH.REFACT: "refact",
MODEL_ARCH.BERT: "bert",
MODEL_ARCH.NOMIC_BERT: "nomic-bert",
MODEL_ARCH.NOMIC_BERT_MOE: "nomic-bert-moe",
MODEL_ARCH.JINA_BERT_V2: "jina-bert-v2",
MODEL_ARCH.BLOOM: "bloom",
MODEL_ARCH.STABLELM: "stablelm",
@@ -744,6 +750,7 @@ TENSOR_NAMES: dict[MODEL_TENSOR, str] = {
MODEL_TENSOR.V_PRE_NORM: "v.pre_ln",
MODEL_TENSOR.V_POST_NORM: "v.post_ln",
MODEL_TENSOR.V_MM_INP_PROJ: "mm.input_projection",
MODEL_TENSOR.V_MM_INP_NORM: "mm.input_norm",
MODEL_TENSOR.V_MM_SOFT_EMB_NORM: "mm.soft_emb_norm",
MODEL_TENSOR.V_RESMPL_POS_EMBD_K: "resampler.pos_embd_k",
MODEL_TENSOR.V_RESMPL_ATTN_Q: "resampler.attn.q",
@@ -757,6 +764,7 @@ TENSOR_NAMES: dict[MODEL_TENSOR, str] = {
MODEL_TENSOR.V_RESMPL_PROJ: "resampler.proj",
MODEL_TENSOR.V_RESMPL_QUERY: "resampler.query",
MODEL_TENSOR.V_TOK_EMBD_IMG_BREAK: "v.token_embd.img_break", # pixtral
MODEL_TENSOR.V_MM_PATCH_MERGER: "mm.patch_merger", # mistral small 3.1
}
MODEL_TENSORS: dict[MODEL_ARCH, list[MODEL_TENSOR]] = {
@@ -780,6 +788,7 @@ MODEL_TENSORS: dict[MODEL_ARCH, list[MODEL_TENSOR]] = {
MODEL_TENSOR.V_PRE_NORM,
MODEL_TENSOR.V_POST_NORM,
MODEL_TENSOR.V_MM_INP_PROJ,
MODEL_TENSOR.V_MM_INP_NORM,
MODEL_TENSOR.V_MM_SOFT_EMB_NORM,
MODEL_TENSOR.V_RESMPL_POS_EMBD_K,
MODEL_TENSOR.V_RESMPL_ATTN_Q,
@@ -793,6 +802,7 @@ MODEL_TENSORS: dict[MODEL_ARCH, list[MODEL_TENSOR]] = {
MODEL_TENSOR.V_RESMPL_PROJ,
MODEL_TENSOR.V_RESMPL_QUERY,
MODEL_TENSOR.V_TOK_EMBD_IMG_BREAK,
MODEL_TENSOR.V_MM_PATCH_MERGER,
],
MODEL_ARCH.LLAMA: [
MODEL_TENSOR.TOKEN_EMBD,
@@ -960,6 +970,22 @@ MODEL_TENSORS: dict[MODEL_ARCH, list[MODEL_TENSOR]] = {
MODEL_TENSOR.FFN_UP,
MODEL_TENSOR.LAYER_OUT_NORM,
],
MODEL_ARCH.NOMIC_BERT_MOE: [
MODEL_TENSOR.TOKEN_EMBD,
MODEL_TENSOR.TOKEN_EMBD_NORM,
MODEL_TENSOR.TOKEN_TYPES,
MODEL_TENSOR.POS_EMBD,
MODEL_TENSOR.OUTPUT_NORM,
MODEL_TENSOR.ATTN_OUT_NORM,
MODEL_TENSOR.ATTN_QKV,
MODEL_TENSOR.ATTN_OUT,
MODEL_TENSOR.FFN_DOWN,
MODEL_TENSOR.FFN_UP,
MODEL_TENSOR.FFN_GATE_INP,
MODEL_TENSOR.FFN_DOWN_EXP,
MODEL_TENSOR.FFN_UP_EXP,
MODEL_TENSOR.LAYER_OUT_NORM,
],
MODEL_ARCH.JINA_BERT_V2: [
MODEL_TENSOR.TOKEN_EMBD,
MODEL_TENSOR.TOKEN_EMBD_NORM,

View File

@@ -728,6 +728,9 @@ class GGUFWriter:
def add_expert_gating_func(self, value: ExpertGatingFuncType) -> None:
self.add_uint32(Keys.LLM.EXPERT_GATING_FUNC.format(arch=self.arch), value.value)
def add_moe_every_n_layers(self, value: int) -> None:
self.add_uint32(Keys.LLM.MOE_EVERY_N_LAYERS.format(arch=self.arch), value)
def add_swin_norm(self, value: bool) -> None:
self.add_bool(Keys.LLM.SWIN_NORM.format(arch=self.arch), value)
@@ -969,6 +972,9 @@ class GGUFWriter:
def add_vision_image_std(self, values: Sequence[float]) -> None:
self.add_array(Keys.ClipVision.IMAGE_STD, values)
def add_vision_spatial_merge_size(self, value: int) -> None:
self.add_uint32(Keys.ClipVision.SPATIAL_MERGE_SIZE, value)
def add_vision_use_gelu(self, value: bool) -> None:
self.add_bool(Keys.ClipVision.USE_GELU, value)

View File

@@ -290,6 +290,7 @@ class TensorNameMap:
"transformer.blocks.{bid}.ffn.router.layer", # dbrx
"model.layers.{bid}.block_sparse_moe.router.layer", # granitemoe
"language_model.model.layers.{bid}.feed_forward.router", # llama4
"encoder.layers.{bid}.mlp.router.layer", # nomic-bert-moe
),
MODEL_TENSOR.FFN_GATE_INP_SHEXP: (
@@ -322,6 +323,7 @@ class TensorNameMap:
"model.layers.layers.{bid}.mlp.up_proj", # plamo
"model.layers.{bid}.feed_forward.w3", # internlm2
"encoder.layers.{bid}.mlp.fc11", # nomic-bert
"encoder.layers.{bid}.mlp.fc1", # nomic-bert-moe
"model.layers.{bid}.mlp.c_fc", # starcoder2
"encoder.layer.{bid}.mlp.gated_layers_v", # jina-bert-v2
"model.layers.{bid}.residual_mlp.w3", # arctic
@@ -337,6 +339,7 @@ class TensorNameMap:
"model.layers.{bid}.mlp.experts.up_proj", # qwen2moe olmoe (merged)
"model.layers.{bid}.block_sparse_moe.experts.w3", # phimoe (merged)
"language_model.model.layers.{bid}.feed_forward.experts.up_proj", # llama4
"encoder.layers.{bid}.mlp.experts.mlp.w1", # nomic-bert-moe
),
MODEL_TENSOR.FFN_UP_SHEXP: (
@@ -418,6 +421,7 @@ class TensorNameMap:
"model.layers.{bid}.block_sparse_moe.output_linear", # granitemoe
"model.layers.{bid}.block_sparse_moe.experts.w2", # phimoe (merged)
"language_model.model.layers.{bid}.feed_forward.experts.down_proj", # llama4
"encoder.layers.{bid}.mlp.experts.mlp.w2", # nomic-bert-moe
),
MODEL_TENSOR.FFN_DOWN_SHEXP: (
@@ -997,6 +1001,10 @@ class TensorNameMap:
"multi_modal_projector.mm_input_projection",
),
MODEL_TENSOR.V_MM_INP_NORM: (
"multi_modal_projector.norm",
),
MODEL_TENSOR.V_MM_SOFT_EMB_NORM: (
"multi_modal_projector.mm_soft_emb_norm",
),
@@ -1048,6 +1056,10 @@ class TensorNameMap:
MODEL_TENSOR.V_TOK_EMBD_IMG_BREAK: (
"v.token_embd.img_break", # for pixtral, this is a generated vector
),
MODEL_TENSOR.V_MM_PATCH_MERGER: (
"multi_modal_projector.patch_merger.merging_layer", # mistral small 3.1
),
}
# architecture-specific block mappings

View File

@@ -1232,6 +1232,7 @@ extern "C" {
"will be removed in the future (see https://github.com/ggml-org/llama.cpp/pull/9896#discussion_r1800920915)");
/// @details Top-K sampling described in academic paper "The Curious Case of Neural Text Degeneration" https://arxiv.org/abs/1904.09751
/// Setting k <= 0 makes this a noop
LLAMA_API struct llama_sampler * llama_sampler_init_top_k (int32_t k);
/// @details Nucleus sampling described in academic paper "The Curious Case of Neural Text Degeneration" https://arxiv.org/abs/1904.09751

View File

@@ -19,9 +19,9 @@ logger = logging.getLogger("compare-llama-bench")
# Properties by which to differentiate results per commit:
KEY_PROPERTIES = [
"cpu_info", "gpu_info", "backends", "n_gpu_layers", "model_filename", "model_type", "n_batch", "n_ubatch",
"embeddings", "cpu_mask", "cpu_strict", "poll", "n_threads", "type_k", "type_v", "use_mmap", "no_kv_offload",
"split_mode", "main_gpu", "tensor_split", "flash_attn", "n_prompt", "n_gen"
"cpu_info", "gpu_info", "backends", "n_gpu_layers", "tensor_buft_overrides", "model_filename", "model_type",
"n_batch", "n_ubatch", "embeddings", "cpu_mask", "cpu_strict", "poll", "n_threads", "type_k", "type_v",
"use_mmap", "no_kv_offload", "split_mode", "main_gpu", "tensor_split", "flash_attn", "n_prompt", "n_gen", "n_depth"
]
# Properties that are boolean and are converted to Yes/No for the table:
@@ -30,11 +30,11 @@ BOOL_PROPERTIES = ["embeddings", "cpu_strict", "use_mmap", "no_kv_offload", "fla
# Header names for the table:
PRETTY_NAMES = {
"cpu_info": "CPU", "gpu_info": "GPU", "backends": "Backends", "n_gpu_layers": "GPU layers",
"model_filename": "File", "model_type": "Model", "model_size": "Model size [GiB]",
"model_n_params": "Num. of par.", "n_batch": "Batch size", "n_ubatch": "Microbatch size",
"embeddings": "Embeddings", "cpu_mask": "CPU mask", "cpu_strict": "CPU strict", "poll": "Poll",
"n_threads": "Threads", "type_k": "K type", "type_v": "V type", "split_mode": "Split mode", "main_gpu": "Main GPU",
"no_kv_offload": "NKVO", "flash_attn": "FlashAttention", "tensor_split": "Tensor split", "use_mmap": "Use mmap",
"tensor_buft_overrides": "Tensor overrides", "model_filename": "File", "model_type": "Model", "model_size": "Model size [GiB]",
"model_n_params": "Num. of par.", "n_batch": "Batch size", "n_ubatch": "Microbatch size", "embeddings": "Embeddings",
"cpu_mask": "CPU mask", "cpu_strict": "CPU strict", "poll": "Poll", "n_threads": "Threads", "type_k": "K type", "type_v": "V type",
"use_mmap": "Use mmap", "no_kv_offload": "NKVO", "split_mode": "Split mode", "main_gpu": "Main GPU", "tensor_split": "Tensor split",
"flash_attn": "FlashAttention",
}
DEFAULT_SHOW = ["model_type"] # Always show these properties by default.
@@ -281,12 +281,12 @@ def get_rows(properties):
The returned rows are unique in terms of property combinations.
"""
select_string = ", ".join(
[f"tb.{p}" for p in properties] + ["tb.n_prompt", "tb.n_gen", "AVG(tb.avg_ts)", "AVG(tc.avg_ts)"])
[f"tb.{p}" for p in properties] + ["tb.n_prompt", "tb.n_gen", "tb.n_depth", "AVG(tb.avg_ts)", "AVG(tc.avg_ts)"])
equal_string = " AND ".join(
[f"tb.{p} = tc.{p}" for p in KEY_PROPERTIES] + [
f"tb.build_commit = '{hexsha8_baseline}'", f"tc.build_commit = '{hexsha8_compare}'"]
)
group_order_string = ", ".join([f"tb.{p}" for p in properties] + ["tb.n_gen", "tb.n_prompt"])
group_order_string = ", ".join([f"tb.{p}" for p in properties] + ["tb.n_gen", "tb.n_prompt", "tb.n_depth"])
query = (f"SELECT {select_string} FROM test tb JOIN test tc ON {equal_string} "
f"GROUP BY {group_order_string} ORDER BY {group_order_string};")
return cursor.execute(query).fetchall()
@@ -309,7 +309,7 @@ else:
rows_full = get_rows(KEY_PROPERTIES)
properties_different = []
for i, kp_i in enumerate(KEY_PROPERTIES):
if kp_i in DEFAULT_SHOW or kp_i == "n_prompt" or kp_i == "n_gen":
if kp_i in DEFAULT_SHOW or kp_i in ["n_prompt", "n_gen", "n_depth"]:
continue
for row_full in rows_full:
if row_full[i] != rows_full[0][i]:
@@ -340,17 +340,20 @@ else:
table = []
for row in rows_show:
n_prompt = int(row[-4])
n_gen = int(row[-3])
n_prompt = int(row[-5])
n_gen = int(row[-4])
n_depth = int(row[-3])
if n_prompt != 0 and n_gen == 0:
test_name = f"pp{n_prompt}"
elif n_prompt == 0 and n_gen != 0:
test_name = f"tg{n_gen}"
else:
test_name = f"pp{n_prompt}+tg{n_gen}"
if n_depth != 0:
test_name = f"{test_name}@d{n_depth}"
# Regular columns test name avg t/s values Speedup
# VVVVVVVVVVVVV VVVVVVVVV VVVVVVVVVVVVVV VVVVVVV
table.append(list(row[:-4]) + [test_name] + list(row[-2:]) + [float(row[-1]) / float(row[-2])])
table.append(list(row[:-5]) + [test_name] + list(row[-2:]) + [float(row[-1]) / float(row[-2])])
# Some a-posteriori fixes to make the table contents prettier:
for bool_property in BOOL_PROPERTIES:
@@ -376,7 +379,7 @@ if "gpu_info" in show:
for gns in GPU_NAME_STRIP:
row_table[ip] = row_table[ip].replace(gns, "")
gpu_names = row_table[ip].split("/")
gpu_names = row_table[ip].split(", ")
num_gpus = len(gpu_names)
all_names_the_same = len(set(gpu_names)) == 1
if len(gpu_names) >= 2 and all_names_the_same:

View File

@@ -1 +1 @@
13bcf9ce50651a8b4238ec6d136f46f2c1b23b6f
f3a375f20bf56860b30e7c511d03593a1e393345

View File

@@ -19,6 +19,7 @@ static const std::map<llm_arch, const char *> LLM_ARCH_NAMES = {
{ LLM_ARCH_REFACT, "refact" },
{ LLM_ARCH_BERT, "bert" },
{ LLM_ARCH_NOMIC_BERT, "nomic-bert" },
{ LLM_ARCH_NOMIC_BERT_MOE, "nomic-bert-moe" },
{ LLM_ARCH_JINA_BERT_V2, "jina-bert-v2" },
{ LLM_ARCH_BLOOM, "bloom" },
{ LLM_ARCH_STABLELM, "stablelm" },
@@ -106,6 +107,7 @@ static const std::map<llm_kv, const char *> LLM_KV_NAMES = {
{ LLM_KV_EXPERT_WEIGHTS_SCALE, "%s.expert_weights_scale" },
{ LLM_KV_EXPERT_WEIGHTS_NORM, "%s.expert_weights_norm" },
{ LLM_KV_EXPERT_GATING_FUNC, "%s.expert_gating_func" },
{ LLM_KV_MOE_EVERY_N_LAYERS, "%s.moe_every_n_layers" },
{ LLM_KV_POOLING_TYPE, "%s.pooling_type" },
{ LLM_KV_LOGIT_SCALE, "%s.logit_scale" },
{ LLM_KV_DECODER_START_TOKEN_ID, "%s.decoder_start_token_id" },
@@ -472,6 +474,24 @@ static const std::map<llm_arch, std::map<llm_tensor, const char *>> LLM_TENSOR_N
{ LLM_TENSOR_FFN_UP, "blk.%d.ffn_up" },
},
},
{
LLM_ARCH_NOMIC_BERT_MOE,
{
{ LLM_TENSOR_TOKEN_EMBD, "token_embd" },
{ LLM_TENSOR_TOKEN_EMBD_NORM, "token_embd_norm" },
{ LLM_TENSOR_TOKEN_TYPES, "token_types" },
{ LLM_TENSOR_ATTN_OUT_NORM, "blk.%d.attn_output_norm" },
{ LLM_TENSOR_ATTN_QKV, "blk.%d.attn_qkv" },
{ LLM_TENSOR_ATTN_OUT, "blk.%d.attn_output" },
{ LLM_TENSOR_LAYER_OUT_NORM, "blk.%d.layer_output_norm" },
{ LLM_TENSOR_FFN_GATE, "blk.%d.ffn_gate" },
{ LLM_TENSOR_FFN_DOWN, "blk.%d.ffn_down" },
{ LLM_TENSOR_FFN_UP, "blk.%d.ffn_up" },
{ LLM_TENSOR_FFN_GATE_INP, "blk.%d.ffn_gate_inp" },
{ LLM_TENSOR_FFN_DOWN_EXPS, "blk.%d.ffn_down_exps" },
{ LLM_TENSOR_FFN_UP_EXPS, "blk.%d.ffn_up_exps" },
},
},
{
LLM_ARCH_JINA_BERT_V2,
{

View File

@@ -23,6 +23,7 @@ enum llm_arch {
LLM_ARCH_REFACT,
LLM_ARCH_BERT,
LLM_ARCH_NOMIC_BERT,
LLM_ARCH_NOMIC_BERT_MOE,
LLM_ARCH_JINA_BERT_V2,
LLM_ARCH_BLOOM,
LLM_ARCH_STABLELM,
@@ -110,6 +111,7 @@ enum llm_kv {
LLM_KV_EXPERT_WEIGHTS_SCALE,
LLM_KV_EXPERT_WEIGHTS_NORM,
LLM_KV_EXPERT_GATING_FUNC,
LLM_KV_MOE_EVERY_N_LAYERS,
LLM_KV_POOLING_TYPE,
LLM_KV_LOGIT_SCALE,
LLM_KV_DECODER_START_TOKEN_ID,

View File

@@ -50,8 +50,8 @@ static const std::map<std::string, llm_chat_template> LLM_CHAT_TEMPLATES = {
{ "deepseek3", LLM_CHAT_TEMPLATE_DEEPSEEK_3 },
{ "command-r", LLM_CHAT_TEMPLATE_COMMAND_R },
{ "llama3", LLM_CHAT_TEMPLATE_LLAMA_3 },
{ "chatglm3", LLM_CHAT_TEMPLATE_CHATGML_3 },
{ "chatglm4", LLM_CHAT_TEMPLATE_CHATGML_4 },
{ "chatglm3", LLM_CHAT_TEMPLATE_CHATGLM_3 },
{ "chatglm4", LLM_CHAT_TEMPLATE_CHATGLM_4 },
{ "glmedge", LLM_CHAT_TEMPLATE_GLMEDGE },
{ "minicpm", LLM_CHAT_TEMPLATE_MINICPM },
{ "exaone3", LLM_CHAT_TEMPLATE_EXAONE_3 },
@@ -122,6 +122,8 @@ llm_chat_template llm_chat_detect_template(const std::string & tmpl) {
}
} else if (tmpl_contains("<|assistant|>") && tmpl_contains("<|end|>")) {
return LLM_CHAT_TEMPLATE_PHI_3;
} else if (tmpl_contains("[gMASK]<sop>")) {
return LLM_CHAT_TEMPLATE_CHATGLM_4;
} else if (tmpl_contains("<|assistant|>") && tmpl_contains("<|user|>")) {
return tmpl_contains("</s>") ? LLM_CHAT_TEMPLATE_FALCON_3 : LLM_CHAT_TEMPLATE_GLMEDGE;
} else if (tmpl_contains("<|{{ item['role'] }}|>") && tmpl_contains("<|begin_of_image|>")) {
@@ -154,9 +156,7 @@ llm_chat_template llm_chat_detect_template(const std::string & tmpl) {
return LLM_CHAT_TEMPLATE_LLAMA_3;
} else if (tmpl_contains("[gMASK]sop")) {
// chatglm3-6b
return LLM_CHAT_TEMPLATE_CHATGML_3;
} else if (tmpl_contains("[gMASK]<sop>")) {
return LLM_CHAT_TEMPLATE_CHATGML_4;
return LLM_CHAT_TEMPLATE_CHATGLM_3;
} else if (tmpl_contains(LU8("<用户>"))) {
// MiniCPM-3B-OpenHermes-2.5-v2-GGUF
return LLM_CHAT_TEMPLATE_MINICPM;
@@ -437,7 +437,7 @@ int32_t llm_chat_apply_template(
if (add_ass) {
ss << "<|start_header_id|>assistant<|end_header_id|>\n\n";
}
} else if (tmpl == LLM_CHAT_TEMPLATE_CHATGML_3) {
} else if (tmpl == LLM_CHAT_TEMPLATE_CHATGLM_3) {
// chatglm3-6b
ss << "[gMASK]" << "sop";
for (auto message : chat) {
@@ -447,14 +447,14 @@ int32_t llm_chat_apply_template(
if (add_ass) {
ss << "<|assistant|>";
}
} else if (tmpl == LLM_CHAT_TEMPLATE_CHATGML_4) {
} else if (tmpl == LLM_CHAT_TEMPLATE_CHATGLM_4) {
ss << "[gMASK]" << "<sop>";
for (auto message : chat) {
std::string role(message->role);
ss << "<|" << role << "|>" << "\n" << message->content;
}
if (add_ass) {
ss << "<|assistant|>";
ss << "<|assistant|>\n";
}
} else if (tmpl == LLM_CHAT_TEMPLATE_GLMEDGE) {
for (auto message : chat) {

View File

@@ -29,8 +29,8 @@ enum llm_chat_template {
LLM_CHAT_TEMPLATE_DEEPSEEK_3,
LLM_CHAT_TEMPLATE_COMMAND_R,
LLM_CHAT_TEMPLATE_LLAMA_3,
LLM_CHAT_TEMPLATE_CHATGML_3,
LLM_CHAT_TEMPLATE_CHATGML_4,
LLM_CHAT_TEMPLATE_CHATGLM_3,
LLM_CHAT_TEMPLATE_CHATGLM_4,
LLM_CHAT_TEMPLATE_GLMEDGE,
LLM_CHAT_TEMPLATE_MINICPM,
LLM_CHAT_TEMPLATE_EXAONE_3,

View File

@@ -114,7 +114,7 @@ llama_context::llama_context(
}
if (n_ctx_per_seq > hparams.n_ctx_train) {
LLAMA_LOG_WARN("%s: n_ctx_pre_seq (%u) > n_ctx_train (%u) -- possible training context overflow\n",
LLAMA_LOG_WARN("%s: n_ctx_per_seq (%u) > n_ctx_train (%u) -- possible training context overflow\n",
__func__, n_ctx_per_seq, hparams.n_ctx_train);
}
@@ -1536,8 +1536,6 @@ int32_t llama_context::output_reserve(int32_t n_outputs) {
// set all ids as invalid (negative)
std::fill(output_ids.begin(), output_ids.end(), -1);
ggml_backend_buffer_clear(buf_output.get(), 0);
this->n_outputs = 0;
this->n_outputs_max = n_outputs_max;

View File

@@ -55,7 +55,21 @@ void llm_graph_input_pos::set_input(const llama_ubatch * ubatch) {
if (ubatch->pos && pos) {
const int64_t n_tokens = ubatch->n_tokens;
ggml_backend_tensor_set(pos, ubatch->pos, 0, n_tokens*n_pos_per_token*ggml_element_size(pos));
if (ubatch->token && n_pos_per_embd == 4) {
// in case we're using M-RoPE with text tokens, convert the 1D positions to 4D
// the 3 first dims are the same, and 4th dim is all 0
std::vector<llama_pos> pos_data(n_tokens*n_pos_per_embd);
// copy the first dimension
for (int i = 0; i < n_tokens; ++i) {
pos_data[ i] = ubatch->pos[i];
pos_data[ n_tokens + i] = ubatch->pos[i];
pos_data[2 * n_tokens + i] = ubatch->pos[i];
pos_data[3 * n_tokens + i] = 0; // 4th dim is 0
}
ggml_backend_tensor_set(pos, pos_data.data(), 0, pos_data.size()*ggml_element_size(pos));
} else {
ggml_backend_tensor_set(pos, ubatch->pos, 0, n_tokens*n_pos_per_embd*ggml_element_size(pos));
}
}
}
@@ -71,7 +85,7 @@ void llm_graph_input_attn_temp::set_input(const llama_ubatch * ubatch) {
) * f_attn_temp_scale + 1.0;
}
ggml_backend_tensor_set(attn_scale, attn_scale_data.data(), 0, n_tokens*n_pos_per_token*ggml_element_size(attn_scale));
ggml_backend_tensor_set(attn_scale, attn_scale_data.data(), 0, n_tokens*ggml_element_size(attn_scale));
}
}
@@ -592,7 +606,7 @@ llm_graph_context::llm_graph_context(const llm_graph_params & params) :
res (std::make_unique<llm_graph_result>()) {
}
int64_t llm_graph_context::n_pos_per_token() const {
int64_t llm_graph_context::n_pos_per_embd() const {
return arch == LLM_ARCH_QWEN2VL ? 4 : 1;
}
@@ -914,28 +928,35 @@ ggml_tensor * llm_graph_context::build_moe_ffn(
ggml_tensor * up = build_lora_mm_id(up_exps, cur, selected_experts); // [n_ff, n_expert_used, n_tokens]
cb(up, "ffn_moe_up", il);
ggml_tensor * gate = build_lora_mm_id(gate_exps, cur, selected_experts); // [n_ff, n_expert_used, n_tokens]
cb(gate, "ffn_moe_gate", il);
ggml_tensor * experts = nullptr;
if (gate_exps) {
cur = build_lora_mm_id(gate_exps, cur, selected_experts); // [n_ff, n_expert_used, n_tokens]
cb(cur, "ffn_moe_gate", il);
} else {
cur = up;
}
switch (type_op) {
case LLM_FFN_SILU:
{
gate = ggml_silu(ctx0, gate);
cb(gate, "ffn_moe_silu", il);
cur = ggml_silu(ctx0, cur);
cb(cur, "ffn_moe_silu", il);
} break;
case LLM_FFN_GELU:
{
gate = ggml_gelu(ctx0, gate);
cb(gate, "ffn_moe_gelu", il);
cur = ggml_gelu(ctx0, cur);
cb(cur, "ffn_moe_gelu", il);
} break;
default:
GGML_ABORT("fatal error");
}
ggml_tensor * par = ggml_mul(ctx0, up, gate); // [n_ff, n_expert_used, n_tokens]
cb(par, "ffn_moe_gate_par", il);
if (gate_exps) {
cur = ggml_mul(ctx0, cur, up); // [n_ff, n_expert_used, n_tokens]
cb(cur, "ffn_moe_gate_par", il);
}
ggml_tensor * experts = build_lora_mm_id(down_exps, par, selected_experts); // [n_embd, n_expert_used, n_tokens]
experts = build_lora_mm_id(down_exps, cur, selected_experts); // [n_embd, n_expert_used, n_tokens]
cb(experts, "ffn_moe_down", il);
if (!weight_before_ffn) {
@@ -1018,11 +1039,11 @@ ggml_tensor * llm_graph_context::build_inp_embd(ggml_tensor * tok_embd) const {
}
ggml_tensor * llm_graph_context::build_inp_pos() const {
auto inp = std::make_unique<llm_graph_input_pos>(n_pos_per_token());
auto inp = std::make_unique<llm_graph_input_pos>(n_pos_per_embd());
auto & cur = inp->pos;
cur = ggml_new_tensor_1d(ctx0, GGML_TYPE_I32, n_tokens*n_pos_per_token());
cur = ggml_new_tensor_1d(ctx0, GGML_TYPE_I32, n_tokens*n_pos_per_embd());
ggml_set_input(cur);
res->add_input(std::move(inp));
@@ -1031,11 +1052,12 @@ ggml_tensor * llm_graph_context::build_inp_pos() const {
}
ggml_tensor * llm_graph_context::build_inp_attn_scale() const {
auto inp = std::make_unique<llm_graph_input_attn_temp>(n_pos_per_token(), hparams.n_attn_temp_floor_scale, hparams.f_attn_temp_scale);
auto inp = std::make_unique<llm_graph_input_attn_temp>(hparams.n_attn_temp_floor_scale, hparams.f_attn_temp_scale);
auto & cur = inp->attn_scale;
cur = ggml_new_tensor_3d(ctx0, GGML_TYPE_F32, 1, 1, n_tokens*n_pos_per_token());
// this need to be 1x1xN for broadcasting
cur = ggml_new_tensor_3d(ctx0, GGML_TYPE_F32, 1, 1, n_tokens);
ggml_set_input(cur);
res->add_input(std::move(inp));

View File

@@ -90,29 +90,27 @@ public:
class llm_graph_input_pos : public llm_graph_input_i {
public:
llm_graph_input_pos(int64_t n_pos_per_token) : n_pos_per_token(n_pos_per_token) {}
llm_graph_input_pos(int64_t n_pos_per_embd) : n_pos_per_embd(n_pos_per_embd) {}
virtual ~llm_graph_input_pos() = default;
void set_input(const llama_ubatch * ubatch) override;
ggml_tensor * pos = nullptr; // I32 [n_batch]
const int64_t n_pos_per_token = 1;
const int64_t n_pos_per_embd = 1;
};
// temperature tuning, used by llama4
class llm_graph_input_attn_temp : public llm_graph_input_i {
public:
llm_graph_input_attn_temp(int64_t n_pos_per_token, uint32_t n_attn_temp_floor_scale, float f_attn_temp_scale)
: n_pos_per_token(n_pos_per_token), n_attn_temp_floor_scale(n_attn_temp_floor_scale), f_attn_temp_scale(f_attn_temp_scale) {}
llm_graph_input_attn_temp(uint32_t n_attn_temp_floor_scale, float f_attn_temp_scale)
: n_attn_temp_floor_scale(n_attn_temp_floor_scale), f_attn_temp_scale(f_attn_temp_scale) {}
virtual ~llm_graph_input_attn_temp() = default;
void set_input(const llama_ubatch * ubatch) override;
ggml_tensor * attn_scale = nullptr; // F32 [n_batch]
const int64_t n_pos_per_token = 1;
const uint32_t n_attn_temp_floor_scale;
const float f_attn_temp_scale;
};
@@ -419,7 +417,7 @@ struct llm_graph_context {
llm_graph_context(const llm_graph_params & params);
int64_t n_pos_per_token() const;
int64_t n_pos_per_embd() const;
void cb(ggml_tensor * cur, const char * name, int il) const;

View File

@@ -66,6 +66,7 @@ struct llama_hparams {
float expert_weights_scale = 0.0;
bool expert_weights_norm = false;
uint32_t expert_gating_func = LLAMA_EXPERT_GATING_FUNC_TYPE_NONE;
uint32_t moe_every_n_layers = 0;
float f_norm_eps;
float f_norm_rms_eps;

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@@ -40,14 +40,17 @@ const char * llm_type_name(llm_type type) {
case LLM_TYPE_335M: return "335M";
case LLM_TYPE_410M: return "410M";
case LLM_TYPE_450M: return "450M";
case LLM_TYPE_475M: return "475M";
case LLM_TYPE_770M: return "770M";
case LLM_TYPE_780M: return "780M";
case LLM_TYPE_0_5B: return "0.5B";
case LLM_TYPE_0_6B: return "0.6B";
case LLM_TYPE_1B: return "1B";
case LLM_TYPE_1_3B: return "1.3B";
case LLM_TYPE_1_4B: return "1.4B";
case LLM_TYPE_1_5B: return "1.5B";
case LLM_TYPE_1_6B: return "1.6B";
case LLM_TYPE_1_7B: return "1.7B";
case LLM_TYPE_1_8B: return "1.8B";
case LLM_TYPE_2B: return "2B";
case LLM_TYPE_2_8B: return "2.8B";
@@ -66,6 +69,7 @@ const char * llm_type_name(llm_type type) {
case LLM_TYPE_15B: return "15B";
case LLM_TYPE_16B: return "16B";
case LLM_TYPE_20B: return "20B";
case LLM_TYPE_27B: return "27B";
case LLM_TYPE_30B: return "30B";
case LLM_TYPE_32B: return "32B";
case LLM_TYPE_34B: return "34B";
@@ -74,6 +78,7 @@ const char * llm_type_name(llm_type type) {
case LLM_TYPE_65B: return "65B";
case LLM_TYPE_70B: return "70B";
case LLM_TYPE_236B: return "236B";
case LLM_TYPE_290B: return "290B";
case LLM_TYPE_314B: return "314B";
case LLM_TYPE_671B: return "671B";
case LLM_TYPE_SMALL: return "0.1B";
@@ -88,10 +93,10 @@ const char * llm_type_name(llm_type type) {
case LLM_TYPE_16x3_8B: return "16x3.8B";
case LLM_TYPE_10B_128x3_66B: return "10B+128x3.66B";
case LLM_TYPE_57B_A14B: return "57B.A14B";
case LLM_TYPE_27B: return "27B";
case LLM_TYPE_290B: return "290B";
case LLM_TYPE_17B_16E: return "17Bx16E (Scout)";
case LLM_TYPE_17B_128E: return "17Bx128E (Maverick)";
case LLM_TYPE_30B_A3B: return "30B.A3B";
case LLM_TYPE_235B_A22B: return "235B.A22B";
default: return "?B";
}
}
@@ -695,13 +700,19 @@ void llama_model::load_hparams(llama_model_loader & ml) {
}
} break;
case LLM_ARCH_NOMIC_BERT:
case LLM_ARCH_NOMIC_BERT_MOE:
{
ml.get_key(LLM_KV_ATTENTION_LAYERNORM_EPS, hparams.f_norm_eps);
ml.get_key(LLM_KV_ATTENTION_CAUSAL, hparams.causal_attn);
ml.get_key(LLM_KV_POOLING_TYPE, hparams.pooling_type);
ml.get_key(LLM_KV_MOE_EVERY_N_LAYERS, hparams.moe_every_n_layers, 0);
if (hparams.n_layer == 12 && hparams.n_embd == 768) {
type = LLM_TYPE_137M;
if (arch == LLM_ARCH_NOMIC_BERT) {
type = LLM_TYPE_137M;
} else if (arch == LLM_ARCH_NOMIC_BERT_MOE && hparams.moe_every_n_layers == 2) {
type = LLM_TYPE_475M;
}
}
} break;
case LLM_ARCH_BLOOM:
@@ -791,6 +802,10 @@ void llama_model::load_hparams(llama_model_loader & ml) {
{
ml.get_key(LLM_KV_ATTENTION_LAYERNORM_RMS_EPS, hparams.f_norm_rms_eps);
switch (hparams.n_layer) {
case 28: type = hparams.n_embd == 1024 ? LLM_TYPE_0_6B : LLM_TYPE_1_7B; break;
case 36: type = hparams.n_embd == 2560 ? LLM_TYPE_4B : LLM_TYPE_8B; break;
case 40: type = LLM_TYPE_14B; break;
case 64: type = LLM_TYPE_32B; break;
default: type = LLM_TYPE_UNKNOWN;
}
} break;
@@ -800,6 +815,8 @@ void llama_model::load_hparams(llama_model_loader & ml) {
ml.get_key(LLM_KV_ATTENTION_LAYERNORM_RMS_EPS, hparams.f_norm_rms_eps);
switch (hparams.n_layer) {
case 48: type = LLM_TYPE_30B_A3B; break;
case 94: type = LLM_TYPE_235B_A22B; break;
default: type = LLM_TYPE_UNKNOWN;
}
} break;
@@ -2057,6 +2074,7 @@ bool llama_model::load_tensors(llama_model_loader & ml) {
} break;
case LLM_ARCH_BERT:
case LLM_ARCH_NOMIC_BERT:
case LLM_ARCH_NOMIC_BERT_MOE:
{
tok_embd = create_tensor(tn(LLM_TENSOR_TOKEN_EMBD, "weight"), {n_embd, n_vocab}, 0);
type_embd = create_tensor(tn(LLM_TENSOR_TOKEN_TYPES, "weight"), {n_embd, n_token_types}, 0);
@@ -2090,20 +2108,31 @@ bool llama_model::load_tensors(llama_model_loader & ml) {
layer.wqkv = create_tensor(tn(LLM_TENSOR_ATTN_QKV, "weight", i), {n_embd, n_embd + 2*n_embd_gqa}, 0);
}
if (arch == LLM_ARCH_NOMIC_BERT_MOE) {
layer.bqkv = create_tensor(tn(LLM_TENSOR_ATTN_QKV, "bias", i), {n_embd + 2*n_embd_gqa}, 0);
}
layer.wo = create_tensor(tn(LLM_TENSOR_ATTN_OUT, "weight", i), {n_embd, n_embd}, 0);
layer.attn_out_norm = create_tensor(tn(LLM_TENSOR_ATTN_OUT_NORM, "weight", i), {n_embd}, 0);
layer.attn_out_norm_b = create_tensor(tn(LLM_TENSOR_ATTN_OUT_NORM, "bias", i), {n_embd}, 0);
layer.ffn_up = create_tensor(tn(LLM_TENSOR_FFN_UP, "weight", i), {n_embd, n_ff}, 0);
layer.ffn_down = create_tensor(tn(LLM_TENSOR_FFN_DOWN, "weight", i), {n_ff, n_embd}, 0);
if (arch == LLM_ARCH_BERT) {
if (hparams.moe_every_n_layers > 0 && i % hparams.moe_every_n_layers == 1) {
layer.bo = create_tensor(tn(LLM_TENSOR_ATTN_OUT, "bias", i), {n_embd}, 0);
layer.ffn_up_b = create_tensor(tn(LLM_TENSOR_FFN_UP, "bias", i), {n_ff}, 0);
layer.ffn_down_b = create_tensor(tn(LLM_TENSOR_FFN_DOWN, "bias", i), {n_embd}, 0);
layer.ffn_up_exps = create_tensor(tn(LLM_TENSOR_FFN_UP_EXPS, "weight", i), { n_embd, n_ff, n_expert}, 0);
layer.ffn_down_exps = create_tensor(tn(LLM_TENSOR_FFN_DOWN_EXPS, "weight", i), { n_ff, n_embd, n_expert}, 0);
layer.ffn_gate_inp = create_tensor(tn(LLM_TENSOR_FFN_GATE_INP, "weight", i), {n_embd, n_expert}, 0);
} else {
layer.ffn_gate = create_tensor(tn(LLM_TENSOR_FFN_GATE, "weight", i), {n_embd, n_ff}, 0);
layer.ffn_up = create_tensor(tn(LLM_TENSOR_FFN_UP, "weight", i), {n_embd, n_ff}, 0);
layer.ffn_down = create_tensor(tn(LLM_TENSOR_FFN_DOWN, "weight", i), {n_ff, n_embd}, 0);
if (arch == LLM_ARCH_BERT || arch == LLM_ARCH_NOMIC_BERT_MOE) {
layer.bo = create_tensor(tn(LLM_TENSOR_ATTN_OUT, "bias", i), {n_embd}, 0);
layer.ffn_up_b = create_tensor(tn(LLM_TENSOR_FFN_UP, "bias", i), {n_ff}, 0);
layer.ffn_down_b = create_tensor(tn(LLM_TENSOR_FFN_DOWN, "bias", i), {n_embd}, 0);
} else {
layer.ffn_gate = create_tensor(tn(LLM_TENSOR_FFN_GATE, "weight", i), {n_embd, n_ff}, 0);
}
}
layer.layer_out_norm = create_tensor(tn(LLM_TENSOR_LAYER_OUT_NORM, "weight", i), {n_embd}, 0);
@@ -5730,6 +5759,11 @@ struct llm_build_bert : public llm_graph_context {
cur = build_lora_mm(model.layers[il].wqkv, cur);
cb(cur, "wqkv", il);
if (model.arch == LLM_ARCH_NOMIC_BERT_MOE) {
cur = ggml_add(ctx0, cur, model.layers[il].bqkv);
cb(cur, "bqkv", il);
}
Qcur = ggml_cont(ctx0, ggml_view_2d(ctx0, cur, n_embd, n_tokens, cur->nb[1], 0*sizeof(float)*(n_embd)));
Kcur = ggml_cont(ctx0, ggml_view_2d(ctx0, cur, n_embd_gqa, n_tokens, cur->nb[1], 1*sizeof(float)*(n_embd)));
Vcur = ggml_cont(ctx0, ggml_view_2d(ctx0, cur, n_embd_gqa, n_tokens, cur->nb[1], 1*sizeof(float)*(n_embd + n_embd_gqa)));
@@ -5782,13 +5816,29 @@ struct llm_build_bert : public llm_graph_context {
cb(ffn_inp, "ffn_inp", il);
// feed-forward network
if (model.arch == LLM_ARCH_BERT) {
if (hparams.moe_every_n_layers > 0 && il % hparams.moe_every_n_layers == 1) {
// MoE branch
cur = build_moe_ffn(cur,
model.layers[il].ffn_gate_inp,
model.layers[il].ffn_up_exps,
nullptr,
model.layers[il].ffn_down_exps,
nullptr,
hparams.n_expert,
hparams.n_expert_used,
LLM_FFN_GELU,
false, false,
0.0f,
LLAMA_EXPERT_GATING_FUNC_TYPE_SOFTMAX, il);
cb(cur, "ffn_moe_out", il);
} else if (model.arch == LLM_ARCH_BERT || model.arch == LLM_ARCH_NOMIC_BERT_MOE) {
cur = build_ffn(cur,
model.layers[il].ffn_up, model.layers[il].ffn_up_b, NULL,
NULL, NULL, NULL,
model.layers[il].ffn_down, model.layers[il].ffn_down_b, NULL,
NULL,
LLM_FFN_GELU, LLM_FFN_SEQ, il);
cb(cur, "ffn_out", il);
} else if (model.arch == LLM_ARCH_JINA_BERT_V2) {
cur = build_ffn(cur,
model.layers[il].ffn_up, NULL, NULL,
@@ -5796,6 +5846,7 @@ struct llm_build_bert : public llm_graph_context {
model.layers[il].ffn_down, model.layers[il].ffn_down_b, NULL,
NULL,
LLM_FFN_GELU, LLM_FFN_PAR, il);
cb(cur, "ffn_out", il);
} else {
cur = build_ffn(cur,
model.layers[il].ffn_up, NULL, NULL,
@@ -5803,8 +5854,8 @@ struct llm_build_bert : public llm_graph_context {
model.layers[il].ffn_down, NULL, NULL,
NULL,
LLM_FFN_SILU, LLM_FFN_PAR, il);
cb(cur, "ffn_out", il);
}
cb(cur, "ffn_out", il);
// attentions bypass the intermediate layer
cur = ggml_add(ctx0, cur, ffn_inp);
@@ -12842,6 +12893,7 @@ llm_graph_result_ptr llama_model::build_graph(
case LLM_ARCH_BERT:
case LLM_ARCH_JINA_BERT_V2:
case LLM_ARCH_NOMIC_BERT:
case LLM_ARCH_NOMIC_BERT_MOE:
{
llm = std::make_unique<llm_build_bert>(*this, params, gf);
} break;
@@ -13200,6 +13252,7 @@ llama_rope_type llama_model_rope_type(const llama_model * model) {
case LLM_ARCH_DBRX:
case LLM_ARCH_BERT:
case LLM_ARCH_NOMIC_BERT:
case LLM_ARCH_NOMIC_BERT_MOE:
case LLM_ARCH_STABLELM:
case LLM_ARCH_BITNET:
case LLM_ARCH_QWEN:

View File

@@ -36,14 +36,17 @@ enum llm_type {
LLM_TYPE_335M,
LLM_TYPE_410M,
LLM_TYPE_450M,
LLM_TYPE_475M,
LLM_TYPE_770M,
LLM_TYPE_780M,
LLM_TYPE_0_5B,
LLM_TYPE_0_6B,
LLM_TYPE_1B,
LLM_TYPE_1_3B,
LLM_TYPE_1_4B,
LLM_TYPE_1_5B,
LLM_TYPE_1_6B,
LLM_TYPE_1_7B,
LLM_TYPE_1_8B,
LLM_TYPE_2B,
LLM_TYPE_2_8B,
@@ -62,6 +65,7 @@ enum llm_type {
LLM_TYPE_15B,
LLM_TYPE_16B,
LLM_TYPE_20B,
LLM_TYPE_27B,
LLM_TYPE_30B,
LLM_TYPE_32B,
LLM_TYPE_34B,
@@ -70,6 +74,7 @@ enum llm_type {
LLM_TYPE_65B,
LLM_TYPE_70B,
LLM_TYPE_236B,
LLM_TYPE_290B,
LLM_TYPE_314B,
LLM_TYPE_671B,
LLM_TYPE_SMALL,
@@ -84,10 +89,10 @@ enum llm_type {
LLM_TYPE_16x3_8B,
LLM_TYPE_10B_128x3_66B,
LLM_TYPE_57B_A14B,
LLM_TYPE_27B,
LLM_TYPE_290B,
LLM_TYPE_17B_16E, // llama4 Scout
LLM_TYPE_17B_128E, // llama4 Maverick
LLM_TYPE_30B_A3B,
LLM_TYPE_235B_A22B,
};
struct llama_layer_posnet {

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@@ -232,7 +232,7 @@ static void llama_sampler_top_k_impl(llama_token_data_array * cur_p, int32_t k)
// }
if (k <= 0) {
k = cur_p->size;
return;
}
k = std::min(k, (int) cur_p->size);
@@ -298,6 +298,7 @@ static void llama_sampler_top_k_impl(llama_token_data_array * cur_p, int32_t k)
}
cur_p->sorted = true;
}
cur_p->size = k;
}

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@@ -1981,7 +1981,7 @@ struct test_mul_mat : public test_case {
const std::array<int64_t, 2> bs; // dims 3 and 4
const std::array<int64_t, 2> nr; // repeat in dims 3 and 4
const std::array<int64_t, 4> per; // permutation of dimensions
const bool v; // whether a is a non-contiguous view
const bool v; // whether a and b are non-contiguous views
std::string vars() override {
return VARS_TO_STR9(type_a, type_b, m, n, k, bs, nr, per, v);
@@ -2042,12 +2042,15 @@ struct test_mul_mat : public test_case {
} else {
if (v) {
a = ggml_new_tensor_4d(ctx, type_a, k*2, m, bs[0], bs[1]);
a = ggml_view_4d(ctx, a, k, m, bs[0], bs[1], a->nb[1], a->nb[2], a->nb[3], 0);
a = ggml_new_tensor_4d(ctx, type_a, k*2, m, bs[0], bs[1]);
b = ggml_new_tensor_4d(ctx, type_b, k*2, n, bs[0]*nr[0], bs[1]*nr[1]);
a = ggml_view_4d(ctx, a, k, m, bs[0], bs[1], a->nb[1], a->nb[2], a->nb[3], 0);
b = ggml_view_4d(ctx, b, k, n, bs[0]*nr[0], bs[1]*nr[1], b->nb[1], b->nb[2], b->nb[3], 0);
} else {
a = ggml_new_tensor_4d(ctx, type_a, k, m, bs[0], bs[1]);
b = ggml_new_tensor_4d(ctx, type_b, k, n, bs[0]*nr[0], bs[1]*nr[1]);
}
b = ggml_new_tensor_4d(ctx, type_b, k, n, bs[0]*nr[0], bs[1]*nr[1]);
if (!ggml_is_quantized(type_a)) {
if (bs[1] == 1 && nr[1] == 1) {
ggml_set_param(ctx, a);
@@ -4184,6 +4187,11 @@ static std::vector<std::unique_ptr<test_case>> make_test_cases_eval() {
test_cases.emplace_back(new test_mul_mat(type_a, type_b, 16, 16, 256, {2, 3}, {1, 1}, {0, 2, 1, 3}));
test_cases.emplace_back(new test_mul_mat(type_a, type_b, 16, 16, 256, {2, 3}, {1, 1}, {0, 1, 3, 2}));
test_cases.emplace_back(new test_mul_mat(type_a, type_b, 16, 16, 256, {2, 3}, {1, 1}, {0, 3, 2, 1}));
// test cases with large ne00/ne10 to cover stream-k fixup
test_cases.emplace_back(new test_mul_mat(type_a, type_b, 16, 1, 1024, {3, 2}, {1, 1}));
test_cases.emplace_back(new test_mul_mat(type_a, type_b, 16, 8, 1024, {3, 2}, {1, 1}));
test_cases.emplace_back(new test_mul_mat(type_a, type_b, 16, 16, 1024, {3, 2}, {1, 1}));
}
}
for (ggml_type type_a : other_types) {

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@@ -181,8 +181,8 @@ int main(void) {
},
{
/* .name= */ "ChatGLM4",
/* .template_str= */ U8C("[gMASK]<sop>{% for item in messages %}{% if item['tools'] is defined %}<|system|>\n你是一个名为 ChatGLM 的人工智能助手。你是基于智谱AI训练的语言模型 GLM-4 模型开发的,你的任务是针对用户的问题和要求提供适当的答复和支持。\n\n# 可用工具{% set tools = item['tools'] %}{% for tool in tools %}{% if tool['type'] == 'function' %}\n\n## {{ tool['function']['name'] }}\n\n{{ tool['function'] | tojson(indent=4) }}\n......{% endif %}{% endfor %}{% endif %}{% if item['content'] %}<|{{ item['role'] }}|>{{ item['metadata'] }}\n{{ item['content'] }}{% endif %}{% endfor %}{% if add_generation_prompt %}<|assistant|>{% endif %}"),
/* .expected_output= */ "[gMASK]<sop><|system|>\nYou are a helpful assistant<|user|>\nHello<|assistant|>\nHi there<|user|>\nWho are you<|assistant|>\n I am an assistant <|user|>\nAnother question<|assistant|>",
/* .template_str= */ U8C("[gMASK]<sop>{% for item in messages %}{% if item['tools'] is defined %}<|system|>\n你是一个名为 ChatGLM 的人工智能助手。你是基于智谱AI训练的语言模型 GLM-4 模型开发的,你的任务是针对用户的问题和要求提供适当的答复和支持。\n\n# 可用工具{% set tools = item['tools'] %}{% for tool in tools %}{% if tool['type'] == 'function' %}\n\n## {{ tool['function']['name'] }}\n\n{{ tool['function'] | tojson(indent=4) }}\n......{% endif %}{% endfor %}{% endif %}{% if item['content'] %}<|{{ item['role'] }}|>{{ item['metadata'] }}\n{{ item['content'] }}{% endif %}{% endfor %}{% if add_generation_prompt %}<|assistant|>\n{% endif %}"),
/* .expected_output= */ "[gMASK]<sop><|system|>\nYou are a helpful assistant<|user|>\nHello<|assistant|>\nHi there<|user|>\nWho are you<|assistant|>\n I am an assistant <|user|>\nAnother question<|assistant|>\n",
/* .expected_output_jinja= */ "",
/* .bos_token= */ "",
/* .eos_token= */ "",

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@@ -1,4 +1,5 @@
#include "ggml.h"
#include "ggml-cpu.h"
#include "llama.h"
#include "common.h"