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...

58 Commits
b5579 ... b5637

Author SHA1 Message Date
Sigbjørn Skjæret
cc66a7f78f tests : add test-tokenizers-repo (#14017) 2025-06-11 17:16:32 +02:00
Jeff Bolz
bd248d4dc7 vulkan: Better thread-safety for command pools/buffers (#14116)
This change moves the command pool/buffer tracking into a vk_command_pool
structure. There are two instances per context (for compute+transfer) and
two instances per device for operations that don't go through a context.
This should prevent separate contexts from stomping on each other.
2025-06-11 09:48:52 -05:00
Aman
7781e5fe99 webui: Wrap long numbers instead of infinite horizontal scroll (#14062)
* webui: Wrap long numbers instead of infinite horizontal scroll

* Use tailwind class

* update index.html.gz
2025-06-11 16:42:25 +02:00
Georgi Gerganov
89a184fa71 kv-cache : relax SWA masking condition (#14119)
ggml-ci
2025-06-11 16:48:45 +03:00
Taylor
2baf07727f server : pass default --keep argument (#14120) 2025-06-11 13:43:43 +03:00
Georgi Gerganov
7ae2932116 kv-cache : add LLAMA_KV_CACHE_DEBUG environment variable (#14121) 2025-06-11 12:52:45 +03:00
Jeff Bolz
1f7d50b293 vulkan: Track descriptor pools/sets per-context (#14109)
Use the same descriptor set layout for all pipelines (MAX_PARAMETER_COUNT == 8)
and move it to the vk_device. Move all the descriptor pool and set tracking to
the context - none of it is specific to pipelines anymore. It has a single vector
of pools and vector of sets, and a single counter to track requests and a single
counter to track use.
2025-06-11 07:19:25 +02:00
lhez
4c763c8d1b opencl: add mul_mv_id_q4_0_f32_8x_flat (#14003) 2025-06-10 16:55:58 -07:00
compilade
dad5c44398 kv-cache : avoid modifying recurrent cells when setting inputs (#13834)
* kv-cache : avoid modifying recurrent cells when setting inputs

* kv-cache : remove inp_s_mask

It was replaced with equivalent and simpler functionality
with rs_z (the first zeroed state) and the already-existing inp_s_copy.

* kv-cache : fix non-consecutive token pos warning for recurrent models

The problem was apparently caused by how the tail cells were swapped.

* graph : simplify logic for recurrent state copies

* kv-cache : use cell without src refs for rs_z in recurrent cache

* llama-graph : fix recurrent state copy

The `state_copy` shuffle assumes everything is moved at once,
which is not true when `states_extra` is copied back to the cache
before copying the range of states between `head` and `head + n_seqs`.
This is only a problem if any of the cells in [`head`, `head + n_seqs`)
have an `src` in [`head + n_seqs`, `head + n_kv`),
which does happen when `n_ubatch > 1` in the `llama-parallel` example.

Changing the order of the operations avoids the potential overwrite
before use, although when copies are avoided (like with Mamba2),
this will require further changes.

* llama-graph : rename n_state to state_size in build_recurrent_state

This naming should reduce confusion between the state size
and the number of states.
2025-06-10 18:20:14 -04:00
Sigbjørn Skjæret
55f6b9fa65 convert : fix duplicate key DeepSeek-R1 conversion error (#14103) 2025-06-10 23:29:52 +02:00
Sigbjørn Skjæret
3678b838bb llama : support GEGLU for jina-bert-v2 (#14090) 2025-06-10 18:02:08 +02:00
Jeff Bolz
652b70e667 vulkan: force device 0 in CI (#14106) 2025-06-10 10:53:47 -05:00
Juk Armstrong
3a12db23b6 Fixed spec timings to: accepted/tested instead of accepted/drafted (#14104) 2025-06-10 16:48:07 +01:00
Georgi Gerganov
ae92c1855b sync : ggml
ggml-ci
2025-06-10 18:39:33 +03:00
Georgi Gerganov
b7ce1ad1e3 ggml : fix weak alias win32 (whisper/0)
ggml-ci
2025-06-10 18:39:33 +03:00
0cc4m
97340b4c99 Vulkan: Don't default to CPU device (like llvmpipe), even if no other device is available, to allow fallback to CPU backend (#14099) 2025-06-10 13:01:33 +01:00
Isaac McFadyen
2bb0467043 rpc : nicer error messages for RPC server crash (#14076) 2025-06-10 09:41:01 +03:00
Georgi Gerganov
b8e2194efc sync : ggml
ggml-ci
2025-06-10 09:21:56 +03:00
Kai Pastor
1a3b5e80f7 Add in-build ggml::ggml ALIAS library (ggml/1260)
Enable uniform linking with subproject and with find_package.
2025-06-10 09:21:56 +03:00
Georgi Gerganov
1f63e75f3b metal : use less stack memory in FA kernel (#14088)
* metal : use less stack memory in FA kernel

ggml-ci

* cont : fix BF16 variant
2025-06-09 23:05:02 +03:00
Georgi Gerganov
40cbf571c9 kv-cache : fix shift and defrag logic (#14081)
* kv-cache : fix shift

ggml-ci

* cont : reset shift[i]

ggml-ci

* cont : fix defrag erasing cells that didn't move

ggml-ci
2025-06-09 23:04:35 +03:00
Diego Devesa
7f4fbe5183 llama : allow building all tests on windows when not using shared libs (#13980)
* llama : allow building all tests on windows when not using shared libraries

* add static windows build to ci

* tests : enable debug logs for test-chat

---------

Co-authored-by: Georgi Gerganov <ggerganov@gmail.com>
2025-06-09 20:03:09 +02:00
xctan
f470bc36be ggml-cpu : split arch-specific implementations (#13892)
* move ggml-cpu-aarch64 to repack

* split quantize_row_q8_0/1

* split helper functions

* split ggml_vec_dot_q4_0_q8_0

* split ggml_vec_dot_q4_1_q8_1

* split ggml_vec_dot_q5_0_q8_0

* split ggml_vec_dot_q5_1_q8_1

* split ggml_vec_dot_q8_0_q8_0

* split ggml_vec_dot_tq1_0_q8_K

* split ggml_vec_dot_tq2_0_q8_K

* split ggml_vec_dot_q2_K_q8_K

* split ggml_vec_dot_q3_K_q8_K

* split ggml_vec_dot_q4_K_q8_K

* split ggml_vec_dot_q5_K_q8_K

* split ggml_vec_dot_q6_K_q8_K

* split ggml_vec_dot_iq2_xxs_q8_K

* split ggml_vec_dot_iq2_xs_q8_K

* split ggml_vec_dot_iq2_s_q8_K

* split ggml_vec_dot_iq3_xxs_q8_K

* split ggml_vec_dot_iq3_s_q8_K

* split ggml_vec_dot_iq1_s_q8_K

* split ggml_vec_dot_iq1_m_q8_K

* split ggml_vec_dot_iq4_nl_q8_0

* split ggml_vec_dot_iq4_xs_q8_K

* fix typos

* fix missing prototypes

* rename ggml-cpu-quants.c

* rename ggml-cpu-traits

* rename arm folder

* move cpu-feats-x86.cpp

* rename ggml-cpu-hbm

* update arm detection macro in quants.c

* move iq quant tables

* split ggml_quantize_mat_q8_0/K

* split ggml_gemv_*

* split ggml_gemm_*

* rename namespace aarch64 to repack

* use weak aliases to replace test macros

* rename GGML_CPU_AARCH64 to GGML_CPU_REPACK

* rename more aarch64 to repack

* clean up rebase leftover

* fix compilation errors

* remove trailing spaces

* try to fix clang compilation errors

* try to fix clang compilation errors again

* try to fix clang compilation errors, 3rd attempt

* try to fix clang compilation errors, 4th attempt

* try to fix clang compilation errors, 5th attempt

* try to fix clang compilation errors, 6th attempt

* try to fix clang compilation errors, 7th attempt

* try to fix clang compilation errors, 8th attempt

* try to fix clang compilation errors, 9th attempt

* more cleanup

* fix compilation errors

* fix apple targets

* fix a typo in arm version of ggml_vec_dot_q4_K_q8_K

Co-authored-by: Georgi Gerganov <ggerganov@gmail.com>

---------

Co-authored-by: Georgi Gerganov <ggerganov@gmail.com>
2025-06-09 16:47:13 +02:00
Diego Devesa
8f47e25f56 cuda : fix device sync on buffer clear (#14033) 2025-06-09 16:36:26 +02:00
Georgi Gerganov
201b31dc2e graph : fix geglu (#14077)
ggml-ci
2025-06-09 17:17:31 +03:00
Xinpeng Dou
e21d2d4ae2 CANN: Simplify the environment variable setting(#13104)
* Simplify the environment variable setting to specify the memory pool type.

* Adjust the GGML_CANN_ASYNC_MODE setting to accept yes, enable, 1, or on (case-insensitive) as valid options.

* update

* fix CI

* update

* delete whitespace

* fix according to review

* update CANN.md

* update CANN.md
2025-06-09 19:47:39 +08:00
R0CKSTAR
dc0623fddb webui: fix sidebar being covered by main content (#14082)
* webui: fix sidebar being covered by main content

Signed-off-by: Xiaodong Ye <xiaodong.ye@mthreads.com>

* webui: update index.html.gz

Signed-off-by: Xiaodong Ye <xiaodong.ye@mthreads.com>

---------

Signed-off-by: Xiaodong Ye <xiaodong.ye@mthreads.com>
2025-06-09 12:01:17 +02:00
Georgi Gerganov
87d34b381d server : fix LRU check (#14079)
ggml-ci
2025-06-09 12:57:58 +03:00
Nicolò Scipione
b460d16ae8 sycl: Add reorder to Q6_K mmvq implementation (#13885)
* Add Reorder to Q6_K mmvq implementation

* Address PR comments: clean up comments

* Remove unused parameter after refactoring q4_k

* Adding inline to function and removing unnecessary reference to int

---------

Signed-off-by: nscipione <nicolo.scipione@codeplay.com>
2025-06-09 11:47:07 +02:00
Đinh Trọng Huy
91a8ee6a6f add geglu activation function (#14074)
Co-authored-by: dinhhuy <huy.dinh@brains-tech.co.jp>
2025-06-09 05:15:31 +01:00
Yuanhao Ji
056eb74534 CANN: Enable labeler for Ascend NPU (#13914) 2025-06-09 11:20:06 +08:00
Diego Devesa
247e5c6e44 cuda : fix buffer type check with integrated GPUs (#14069) 2025-06-08 11:39:56 -07:00
吴小白
5787b5da57 ci: add LoongArch cross-compile build (#13944) 2025-06-07 10:39:11 -03:00
Akarshan Biswas
228f34c9ce SYCL: Implement few same quantized type copy kernels (#13739)
* SYCL: Implement few same quantized type copy kernels

* Use memcpy for copying contiguous tensors

ggml-ci

* feat(sycl): add contiguous tensor copy support and device checks

Adds a memcpy path for contiguous tensors of the same type to optimize data transfer. Updates device support checks to recognize contiguous tensor operations, improving compatibility and performance.

* refactor: replace specific block copy functions with template

The changes replace multiple redundant block copy functions (e.g., cpy_block_q8_0_q8_0, cpy_block_q5_0_q5_0) with a single templated function cpy_blck_q_q. This reduces code duplication by using a generic template that works for any block type, improving maintainability while preserving the same functionality. The template is instantiated with specific block types (e.g., block_q8_0) where needed.

* Exclude BF16 support for COPY tensors for now
ggml-ci

* perf: adjust SYCL copy kernel block sizes for efficiency

Use ceil_div to ensure full element coverage and update nd_range parameters to better align with SYCL block sizes, improving parallelism and device utilization in copy operations.
2025-06-07 18:58:20 +05:30
Sigbjørn Skjæret
0974ad7a7c llama : fix llama_model_chat_template with template name (LLM_KV with suffix) (#14050) 2025-06-07 14:13:12 +02:00
Georgi Gerganov
745aa5319b llama : deprecate llama_kv_self_ API (#14030)
* llama : deprecate llama_kv_self_ API

ggml-ci

* llama : allow llama_memory_(nullptr)

ggml-ci

* memory : add flag for optional data clear in llama_memory_clear

ggml-ci
2025-06-06 14:11:15 +03:00
Georgi Gerganov
487a5e0401 context : fix SWA-related warning for multiple sequences (#14045) 2025-06-06 13:29:18 +03:00
Sigbjørn Skjæret
d17a809ef0 llama : support multiple classifier outputs and labels (#13940) 2025-06-06 09:03:25 +02:00
Sigbjørn Skjæret
1caae7fc6c gguf-py : add add_classifier_output_labels method to writer (#14031)
* add add_classifier_output_labels

* use add_classifier_output_labels
2025-06-05 17:42:31 +02:00
Masato Nakasaka
669c13e0f6 vulkan: Enable VK_KHR_cooperative_matrix extension for Intel Xe2 GPUs (#14001)
* allowing B580 and U9-288V

* experimenting code to detect Xe2

* allowing coopmat only for Xe2 GPUs

* fixed comment wording

* fixed comment wording

* removed unnecessary driver check
2025-06-05 16:00:29 +02:00
pockers21
146b88e8b3 ci: fix CUDA build failure on autodl cloud machines (#14005)
Replace CMAKE_CUDA_ARCHITECTURES=native with nvidia-smi detection
as 'native' fails on autodl cloud environments.

Co-authored-by: pockers21 <liyang2@uniontech.com>
2025-06-05 16:25:29 +03:00
Georgi Gerganov
7f37b6cf1e memory : migrate from llama_kv_cache to more generic llama_memory (#14006)
* memory : merge llama_kv_cache into llama_memory + new `llama_memory` API

ggml-ci

* context : fix casts

ggml-ci
2025-06-05 15:29:22 +03:00
Diego Devesa
3a077146a4 llama : allow using mmap without PrefetchVirtualMemory, apply GGML_WIN_VER to llama.cpp sources (#14013) 2025-06-05 11:57:42 +02:00
Olexandr88
d01d112abb readme : add badge (#13938) 2025-06-05 10:50:55 +03:00
Sigbjørn Skjæret
9f47fa5792 vocab : warn about missing mask token (#14022) 2025-06-05 09:29:18 +02:00
Georgi Gerganov
9e31bec4fd context : fix pos_min initialization upon error decode (#14008)
ggml-ci
2025-06-05 09:06:29 +03:00
Jeff Bolz
5a8ae3053c vulkan: automatically deduce size of push constants (#13936) 2025-06-05 07:17:58 +02:00
Ervin Áron Tasnádi
0d3984424f ggml-vulkan: adds support for op CONV_TRANSPOSE_1D (#13813)
* * ggml-vulkan: adds op CONV_TRANSPOSE_1D

* test-backend-ops: adds more spohisticated tests for CONV_TRANSPOSE_1D

* Missing barrier added to shader.
Number of additional tests reduced to 108.

* * Fixes typo in variable name.

* Removes extra whitespaces.

* Adds int64->int32 casts to prevent possible warnings.

* Problem size reduced in tests to pass tests with llvmpipe.

* supports_op condition moved from unintended position
2025-06-04 22:02:00 +02:00
Georgi Gerganov
3e63a58ef7 kv-cache : refactor the update/defrag mechanism (#13988)
* kv-cache : refactor update mechanism

ggml-ci

* memory : improve status handling

* defrag : reset head + add comments

ggml-ci

* cont : minor fixes

ggml-ci
2025-06-04 18:58:20 +03:00
Diego Devesa
2589ad3704 ci : remove cuda 11.7 releases, switch runner to windows 2022 (#13997) 2025-06-04 15:37:40 +02:00
Diego Devesa
482548716f releases : use dl backend for linux release, remove arm64 linux release (#13996) 2025-06-04 13:15:54 +02:00
Xuan-Son Nguyen
3ac67535c8 llama-graph : use ggml_repeat_4d (#13998) 2025-06-04 10:11:26 +02:00
Johannes Gäßler
0b4be4c435 CUDA: fix FTZ in FA for Gemma 3 (#13991) 2025-06-04 08:57:05 +02:00
Georgi Gerganov
e0e806f52e kv-cache : fix unified::seq_rm to work with seq_id < 0 (#13985)
ggml-ci
2025-06-04 09:50:32 +03:00
Jeff Bolz
7e00e60ef8 vulkan: fix warnings in perf logger querypool code (#13937) 2025-06-03 20:30:22 +02:00
Xuan-Son Nguyen
ea1431b0fa docs : add "Quick start" section for new users (#13862)
* docs : add "Quick start" section for non-technical users

* rm flox

* Update README.md
2025-06-03 13:09:36 +02:00
lhez
71e74a3ac9 opencl: add backend_synchronize (#13939)
* This is not needed by the normal use where the result is read
  using `tensor_get`, but it allows perf mode of `test-backend-ops`
  to properly measure performance.
2025-06-02 16:54:58 -07:00
rmatif
bfb1e012a0 OpenCL: Add concat, tsembd, upscale, tanh, pad and repeat (#13840)
* add concat, pad, repeat, tsembd, tanh, upscale

* small fixes
2025-06-02 16:53:36 -07:00
134 changed files with 28492 additions and 18412 deletions

7
.github/labeler.yml vendored
View File

@@ -86,3 +86,10 @@ nix:
embedding:
- changed-files:
- any-glob-to-any-file: examples/embedding/
Ascend NPU:
- changed-files:
- any-glob-to-any-file:
- ggml/include/ggml-cann.h
- ggml/src/ggml-cann/**
- docs/backend/CANN.md

View File

@@ -231,3 +231,116 @@ jobs:
-DCMAKE_FIND_ROOT_PATH_MODE_INCLUDE=BOTH
cmake --build build --config Release -j $(nproc)
debian-13-loongarch64-cpu-cross:
runs-on: ubuntu-24.04
container: debian@sha256:653dfb9f86c3782e8369d5f7d29bb8faba1f4bff9025db46e807fa4c22903671
steps:
- uses: actions/checkout@v4
- name: Setup LoongArch
run: |
rm -f /etc/apt/sources.list.d/*
cat << EOF | tee /etc/apt/sources.list.d/debian-ports.list
deb http://snapshot.debian.org/archive/debian/20250515T202920Z/ trixie main
EOF
( echo 'quiet "true";'; \
echo 'APT::Get::Assume-Yes "true";'; \
echo 'APT::Install-Recommends "false";'; \
echo 'Acquire::Check-Valid-Until "false";'; \
echo 'Acquire::Retries "5";'; \
) > /etc/apt/apt.conf.d/99snapshot-repos
apt-get update
apt-get install -y ca-certificates debian-ports-archive-keyring cmake git zip
dpkg --add-architecture loong64
# Add arch-specific repositories for non-amd64 architectures
cat << EOF | tee /etc/apt/sources.list.d/loong64-ports.list
deb [arch=loong64] http://snapshot.debian.org/archive/debian-ports/20250515T194251Z/ sid main
EOF
apt-get update || true ;# Prevent failure due to missing URLs.
apt-get install -y --no-install-recommends \
build-essential \
gcc-14-loongarch64-linux-gnu \
g++-14-loongarch64-linux-gnu
- name: Build
run: |
cmake -B build -DLLAMA_CURL=OFF \
-DCMAKE_BUILD_TYPE=Release \
-DGGML_OPENMP=OFF \
-DLLAMA_BUILD_EXAMPLES=ON \
-DLLAMA_BUILD_TOOLS=ON \
-DLLAMA_BUILD_TESTS=OFF \
-DCMAKE_SYSTEM_NAME=Linux \
-DCMAKE_SYSTEM_PROCESSOR=loongarch64 \
-DCMAKE_C_COMPILER=loongarch64-linux-gnu-gcc-14 \
-DCMAKE_CXX_COMPILER=loongarch64-linux-gnu-g++-14 \
-DCMAKE_POSITION_INDEPENDENT_CODE=ON \
-DCMAKE_FIND_ROOT_PATH=/usr/lib/loongarch64-linux-gnu \
-DCMAKE_FIND_ROOT_PATH_MODE_PROGRAM=NEVER \
-DCMAKE_FIND_ROOT_PATH_MODE_LIBRARY=ONLY \
-DCMAKE_FIND_ROOT_PATH_MODE_INCLUDE=BOTH
cmake --build build --config Release -j $(nproc)
debian-13-loongarch64-vulkan-cross:
runs-on: ubuntu-24.04
container: debian@sha256:653dfb9f86c3782e8369d5f7d29bb8faba1f4bff9025db46e807fa4c22903671
steps:
- uses: actions/checkout@v4
- name: Setup LoongArch
run: |
rm -f /etc/apt/sources.list.d/*
cat << EOF | tee /etc/apt/sources.list.d/debian-ports.list
deb http://snapshot.debian.org/archive/debian/20250515T202920Z/ trixie main
EOF
( echo 'quiet "true";'; \
echo 'APT::Get::Assume-Yes "true";'; \
echo 'APT::Install-Recommends "false";'; \
echo 'Acquire::Check-Valid-Until "false";'; \
echo 'Acquire::Retries "5";'; \
) > /etc/apt/apt.conf.d/99snapshot-repos
apt-get update
apt-get install -y ca-certificates debian-ports-archive-keyring cmake git zip
dpkg --add-architecture loong64
# Add arch-specific repositories for non-amd64 architectures
cat << EOF | tee /etc/apt/sources.list.d/loong64-ports.list
deb [arch=loong64] http://snapshot.debian.org/archive/debian-ports/20250515T194251Z/ sid main
EOF
apt-get update || true ;# Prevent failure due to missing URLs.
apt-get install -y --no-install-recommends \
build-essential \
glslc \
gcc-14-loongarch64-linux-gnu \
g++-14-loongarch64-linux-gnu \
libvulkan-dev:loong64
- name: Build
run: |
cmake -B build -DLLAMA_CURL=OFF \
-DCMAKE_BUILD_TYPE=Release \
-DGGML_VULKAN=ON \
-DGGML_OPENMP=OFF \
-DLLAMA_BUILD_EXAMPLES=ON \
-DLLAMA_BUILD_TOOLS=ON \
-DLLAMA_BUILD_TESTS=OFF \
-DCMAKE_SYSTEM_NAME=Linux \
-DCMAKE_SYSTEM_PROCESSOR=loongarch64 \
-DCMAKE_C_COMPILER=loongarch64-linux-gnu-gcc-14 \
-DCMAKE_CXX_COMPILER=loongarch64-linux-gnu-g++-14 \
-DCMAKE_POSITION_INDEPENDENT_CODE=ON \
-DCMAKE_FIND_ROOT_PATH=/usr/lib/loongarch64-linux-gnu \
-DCMAKE_FIND_ROOT_PATH_MODE_PROGRAM=NEVER \
-DCMAKE_FIND_ROOT_PATH_MODE_LIBRARY=ONLY \
-DCMAKE_FIND_ROOT_PATH_MODE_INCLUDE=BOTH
cmake --build build --config Release -j $(nproc)

View File

@@ -306,6 +306,7 @@ jobs:
id: cmake_test
run: |
cd build
export GGML_VK_VISIBLE_DEVICES=0
# This is using llvmpipe and runs slower than other backends
ctest -L main --verbose --timeout 3600
@@ -687,8 +688,8 @@ jobs:
strategy:
matrix:
include:
- build: 'cpu-x64'
defines: '-G "Ninja Multi-Config" -D CMAKE_TOOLCHAIN_FILE=cmake/x64-windows-llvm.cmake -DGGML_NATIVE=OFF -DLLAMA_BUILD_SERVER=ON -DGGML_RPC=ON -DGGML_BACKEND_DL=ON -DGGML_CPU_ALL_VARIANTS=ON -DGGML_OPENMP=OFF'
- build: 'cpu-x64 (static)'
defines: '-G "Ninja Multi-Config" -D CMAKE_TOOLCHAIN_FILE=cmake/x64-windows-llvm.cmake -DGGML_NATIVE=OFF -DLLAMA_BUILD_SERVER=ON -DGGML_RPC=ON -DBUILD_SHARED_LIBS=OFF'
- build: 'openblas-x64'
defines: '-G "Ninja Multi-Config" -D CMAKE_TOOLCHAIN_FILE=cmake/x64-windows-llvm.cmake -DGGML_NATIVE=OFF -DLLAMA_BUILD_SERVER=ON -DGGML_RPC=ON -DGGML_BACKEND_DL=ON -DGGML_CPU_ALL_VARIANTS=ON -DGGML_OPENMP=OFF -DGGML_BLAS=ON -DGGML_BLAS_VENDOR=OpenBLAS -DBLAS_INCLUDE_DIRS="$env:RUNNER_TEMP/openblas/include" -DBLAS_LIBRARIES="$env:RUNNER_TEMP/openblas/lib/openblas.lib"'
- build: 'vulkan-x64'
@@ -839,12 +840,12 @@ jobs:
-DGGML_CUDA=ON
cmake --build build
windows-2019-cmake-cuda:
runs-on: windows-2019
windows-2022-cmake-cuda:
runs-on: windows-2022
strategy:
matrix:
cuda: ['12.4', '11.7']
cuda: ['12.4']
steps:
- name: Clone
@@ -878,7 +879,7 @@ jobs:
env:
CURL_PATH: ${{ steps.get_libcurl.outputs.curl_path }}
run: |
call "C:\Program Files (x86)\Microsoft Visual Studio\2019\Enterprise\VC\Auxiliary\Build\vcvars64.bat"
call "C:\Program Files\Microsoft Visual Studio\2022\Enterprise\VC\Auxiliary\Build\vcvarsall.bat" x64
cmake -S . -B build -G "Ninja Multi-Config" ^
-DLLAMA_BUILD_SERVER=ON ^
-DGGML_NATIVE=OFF ^

View File

@@ -131,8 +131,9 @@ jobs:
include:
- build: 'x64'
os: ubuntu-22.04
- build: 'arm64'
os: ubuntu-22.04-arm
# GGML_BACKEND_DL and GGML_CPU_ALL_VARIANTS are not currently supported on arm
# - build: 'arm64'
# os: ubuntu-22.04-arm
runs-on: ${{ matrix.os }}
@@ -159,6 +160,9 @@ jobs:
id: cmake_build
run: |
cmake -B build \
-DGGML_BACKEND_DL=ON \
-DGGML_NATIVE=OFF \
-DGGML_CPU_ALL_VARIANTS=ON \
-DLLAMA_FATAL_WARNINGS=ON \
${{ env.CMAKE_ARGS }}
cmake --build build --config Release -j $(nproc)
@@ -207,6 +211,9 @@ jobs:
id: cmake_build
run: |
cmake -B build \
-DGGML_BACKEND_DL=ON \
-DGGML_NATIVE=OFF \
-DGGML_CPU_ALL_VARIANTS=ON \
-DGGML_VULKAN=ON \
${{ env.CMAKE_ARGS }}
cmake --build build --config Release -j $(nproc)
@@ -373,11 +380,11 @@ jobs:
name: llama-bin-win-${{ matrix.backend }}-${{ matrix.arch }}.zip
windows-cuda:
runs-on: windows-2019
runs-on: windows-2022
strategy:
matrix:
cuda: ['12.4', '11.7']
cuda: ['12.4']
steps:
- name: Clone
@@ -405,7 +412,7 @@ jobs:
id: cmake_build
shell: cmd
run: |
call "C:\Program Files (x86)\Microsoft Visual Studio\2019\Enterprise\VC\Auxiliary\Build\vcvars64.bat"
call "C:\Program Files\Microsoft Visual Studio\2022\Enterprise\VC\Auxiliary\Build\vcvarsall.bat" x64
cmake -S . -B build -G "Ninja Multi-Config" ^
-DGGML_BACKEND_DL=ON ^
-DGGML_NATIVE=OFF ^

View File

@@ -180,7 +180,7 @@ jobs:
server-windows:
runs-on: windows-2019
runs-on: windows-2022
steps:
- name: Clone

View File

@@ -159,6 +159,11 @@ if (NOT TARGET ggml AND NOT LLAMA_USE_SYSTEM_GGML)
# ... otherwise assume ggml is added by a parent CMakeLists.txt
endif()
if (MINGW)
# Target Windows 8 for PrefetchVirtualMemory
add_compile_definitions(_WIN32_WINNT=${GGML_WIN_VER})
endif()
#
# build the library
#

View File

@@ -367,7 +367,7 @@ ifdef LLAMA_SERVER_SSL
endif
ifndef GGML_NO_CPU_AARCH64
MK_CPPFLAGS += -DGGML_USE_CPU_AARCH64
MK_CPPFLAGS += -DGGML_USE_CPU_REPACK
endif
# warnings
@@ -970,7 +970,7 @@ OBJ_GGML = \
$(DIR_GGML)/src/ggml-threading.o \
$(DIR_GGML)/src/ggml-cpu/ggml-cpu.o \
$(DIR_GGML)/src/ggml-cpu/ggml-cpu_cpp.o \
$(DIR_GGML)/src/ggml-cpu/ggml-cpu-aarch64.o \
$(DIR_GGML)/src/ggml-cpu/repack.o \
$(DIR_GGML)/src/ggml-cpu/ggml-cpu-hbm.o \
$(DIR_GGML)/src/ggml-cpu/ggml-cpu-quants.o \
$(DIR_GGML)/src/ggml-cpu/ggml-cpu-traits.o \

View File

@@ -3,6 +3,7 @@
![llama](https://user-images.githubusercontent.com/1991296/230134379-7181e485-c521-4d23-a0d6-f7b3b61ba524.png)
[![License: MIT](https://img.shields.io/badge/license-MIT-blue.svg)](https://opensource.org/licenses/MIT)
[![Release](https://img.shields.io/github/v/release/ggml-org/llama.cpp)](https://github.com/ggml-org/llama.cpp/releases)
[![Server](https://github.com/ggml-org/llama.cpp/actions/workflows/server.yml/badge.svg)](https://github.com/ggml-org/llama.cpp/actions/workflows/server.yml)
[Roadmap](https://github.com/users/ggerganov/projects/7) / [Project status](https://github.com/ggml-org/llama.cpp/discussions/3471) / [Manifesto](https://github.com/ggml-org/llama.cpp/discussions/205) / [ggml](https://github.com/ggml-org/ggml)
@@ -28,6 +29,30 @@ Inference of Meta's [LLaMA](https://arxiv.org/abs/2302.13971) model (and others)
----
## Quick start
Getting started with llama.cpp is straightforward. Here are several ways to install it on your machine:
- Install `llama.cpp` using [brew, nix or winget](docs/install.md)
- Run with Docker - see our [Docker documentation](docs/docker.md)
- Download pre-built binaries from the [releases page](https://github.com/ggml-org/llama.cpp/releases)
- Build from source by cloning this repository - check out [our build guide](docs/build.md)
Once installed, you'll need a model to work with. Head to the [Obtaining and quantizing models](#obtaining-and-quantizing-models) section to learn more.
Example command:
```sh
# Use a local model file
llama-cli -m my_model.gguf
# Or download and run a model directly from Hugging Face
llama-cli -hf ggml-org/gemma-3-1b-it-GGUF
# Launch OpenAI-compatible API server
llama-server -hf ggml-org/gemma-3-1b-it-GGUF
```
## Description
The main goal of `llama.cpp` is to enable LLM inference with minimal setup and state-of-the-art performance on a wide
@@ -230,6 +255,7 @@ Instructions for adding support for new models: [HOWTO-add-model.md](docs/develo
</details>
## Supported backends
| Backend | Target devices |
@@ -246,16 +272,6 @@ Instructions for adding support for new models: [HOWTO-add-model.md](docs/develo
| [OpenCL](docs/backend/OPENCL.md) | Adreno GPU |
| [RPC](https://github.com/ggml-org/llama.cpp/tree/master/tools/rpc) | All |
## Building the project
The main product of this project is the `llama` library. Its C-style interface can be found in [include/llama.h](include/llama.h).
The project also includes many example programs and tools using the `llama` library. The examples range from simple, minimal code snippets to sophisticated sub-projects such as an OpenAI-compatible HTTP server. Possible methods for obtaining the binaries:
- Clone this repository and build locally, see [how to build](docs/build.md)
- On MacOS or Linux, install `llama.cpp` via [brew, flox or nix](docs/install.md)
- Use a Docker image, see [documentation for Docker](docs/docker.md)
- Download pre-built binaries from [releases](https://github.com/ggml-org/llama.cpp/releases)
## Obtaining and quantizing models
The [Hugging Face](https://huggingface.co) platform hosts a [number of LLMs](https://huggingface.co/models?library=gguf&sort=trending) compatible with `llama.cpp`:
@@ -263,7 +279,11 @@ The [Hugging Face](https://huggingface.co) platform hosts a [number of LLMs](htt
- [Trending](https://huggingface.co/models?library=gguf&sort=trending)
- [LLaMA](https://huggingface.co/models?sort=trending&search=llama+gguf)
You can either manually download the GGUF file or directly use any `llama.cpp`-compatible models from [Hugging Face](https://huggingface.co/) or other model hosting sites, such as [ModelScope](https://modelscope.cn/), by using this CLI argument: `-hf <user>/<model>[:quant]`.
You can either manually download the GGUF file or directly use any `llama.cpp`-compatible models from [Hugging Face](https://huggingface.co/) or other model hosting sites, such as [ModelScope](https://modelscope.cn/), by using this CLI argument: `-hf <user>/<model>[:quant]`. For example:
```sh
llama-cli -hf ggml-org/gemma-3-1b-it-GGUF
```
By default, the CLI would download from Hugging Face, you can switch to other options with the environment variable `MODEL_ENDPOINT`. For example, you may opt to downloading model checkpoints from ModelScope or other model sharing communities by setting the environment variable, e.g. `MODEL_ENDPOINT=https://www.modelscope.cn/`.

View File

@@ -46,7 +46,20 @@ if [ ! -z ${GG_BUILD_METAL} ]; then
fi
if [ ! -z ${GG_BUILD_CUDA} ]; then
CMAKE_EXTRA="${CMAKE_EXTRA} -DGGML_CUDA=ON -DCMAKE_CUDA_ARCHITECTURES=native"
CMAKE_EXTRA="${CMAKE_EXTRA} -DGGML_CUDA=ON"
if command -v nvidia-smi >/dev/null 2>&1; then
CUDA_ARCH=$(nvidia-smi --query-gpu=compute_cap --format=csv,noheader,nounits 2>/dev/null | head -1 | tr -d '.')
if [[ -n "$CUDA_ARCH" && "$CUDA_ARCH" =~ ^[0-9]+$ ]]; then
CMAKE_EXTRA="${CMAKE_EXTRA} -DCMAKE_CUDA_ARCHITECTURES=${CUDA_ARCH}"
else
echo "Warning: Using fallback CUDA architectures"
CMAKE_EXTRA="${CMAKE_EXTRA} -DCMAKE_CUDA_ARCHITECTURES=61;70;75;80;86;89"
fi
else
echo "Error: nvidia-smi not found, cannot build with CUDA"
exit 1
fi
fi
if [ ! -z ${GG_BUILD_SYCL} ]; then

View File

@@ -934,7 +934,7 @@ struct common_init_result common_init_from_params(common_params & params) {
return iparams;
}
if (params.ctx_shift && !llama_kv_self_can_shift(lctx)) {
if (params.ctx_shift && !llama_memory_can_shift(llama_get_memory(lctx))) {
LOG_WRN("%s: KV cache shifting is not supported for this context, disabling KV cache shifting\n", __func__);
params.ctx_shift = false;
}
@@ -1041,7 +1041,7 @@ struct common_init_result common_init_from_params(common_params & params) {
if (llama_model_has_decoder(model)) {
llama_decode(lctx, llama_batch_get_one(tmp.data(), std::min(tmp.size(), (size_t) params.n_batch)));
}
llama_kv_self_clear(lctx);
llama_memory_clear(llama_get_memory(lctx), true);
llama_synchronize(lctx);
llama_perf_context_reset(lctx);
llama_set_warmup(lctx, false);

View File

@@ -144,6 +144,8 @@ llama_tokens common_speculative_gen_draft(
auto & smpl = spec->smpl;
auto & prompt = spec->prompt;
auto * mem = llama_get_memory(ctx);
int reuse_i = 0;
int reuse_n = 0;
@@ -173,7 +175,7 @@ llama_tokens common_speculative_gen_draft(
result.reserve(params.n_draft);
if (reuse_n == 0) {
llama_kv_self_clear(ctx);
llama_memory_clear(mem, false);
prompt.clear();
} else {
@@ -192,14 +194,14 @@ llama_tokens common_speculative_gen_draft(
}
if (reuse_i > 0) {
llama_kv_self_seq_rm (ctx, 0, 0, reuse_i);
llama_kv_self_seq_add(ctx, 0, reuse_i, -1, -reuse_i);
llama_memory_seq_rm (mem, 0, 0, reuse_i);
llama_memory_seq_add(mem, 0, reuse_i, -1, -reuse_i);
prompt.erase(prompt.begin(), prompt.begin() + reuse_i);
}
if (reuse_n < (int) prompt.size()) {
llama_kv_self_seq_rm (ctx, 0, reuse_n, -1);
llama_memory_seq_rm (mem, 0, reuse_n, -1);
prompt.erase(prompt.begin() + reuse_n, prompt.end());
}

View File

@@ -556,8 +556,11 @@ class TextModel(ModelBase):
logger.info(f"gguf: experts used count = {n_experts_used}")
if (head_dim := self.hparams.get("head_dim")) is not None:
self.gguf_writer.add_key_length(head_dim)
self.gguf_writer.add_value_length(head_dim)
# Workaround for incorrect AutoConfig value for DeepSeekV3 (is set correctly in DeepSeekV2Model class)
# https://github.com/huggingface/transformers/blob/19224c3642705c5b6988c9f5f4251f83323d05ae/src/transformers/models/deepseek_v3/configuration_deepseek_v3.py#L210
if self.hparams.get("model_type") != "deepseek_v3":
self.gguf_writer.add_key_length(head_dim)
self.gguf_writer.add_value_length(head_dim)
self.gguf_writer.add_file_type(self.ftype)
logger.info(f"gguf: file type = {self.ftype}")
@@ -3709,8 +3712,7 @@ class BertModel(TextModel):
self._try_set_pooling_type()
if self.cls_out_labels:
key_name = gguf.Keys.Classifier.OUTPUT_LABELS.format(arch = gguf.MODEL_ARCH_NAMES[self.model_arch])
self.gguf_writer.add_array(key_name, [v for k, v in sorted(self.cls_out_labels.items())])
self.gguf_writer.add_classifier_output_labels([v for k, v in sorted(self.cls_out_labels.items())])
def set_vocab(self):
tokens, toktypes, tokpre = self.get_vocab_base()
@@ -4799,25 +4801,6 @@ class OlmoeModel(TextModel):
class JinaBertV2Model(BertModel):
model_arch = gguf.MODEL_ARCH.JINA_BERT_V2
def __init__(self, *args, **kwargs):
super().__init__(*args, **kwargs)
self.intermediate_size = self.hparams["intermediate_size"]
def get_tensors(self):
for name, data in super().get_tensors():
if 'gated_layer' in name:
d1 = data[:self.intermediate_size, :]
name1 = name.replace('gated_layers', 'gated_layers_w')
name1 = name1.replace('up_gated_layer', 'gated_layers_v')
d2 = data[self.intermediate_size:, :]
name2 = name.replace('gated_layers', 'gated_layers_v')
name2 = name2.replace('up_gated_layer', 'gated_layers_w')
yield name1, d1
yield name2, d2
continue
yield name, data
def set_vocab(self):
tokenizer_class = 'BertTokenizer'
with open(self.dir_model / "tokenizer_config.json", "r", encoding="utf-8") as f:
@@ -4833,14 +4816,6 @@ class JinaBertV2Model(BertModel):
self.gguf_writer.add_add_bos_token(True)
self.gguf_writer.add_add_eos_token(True)
def modify_tensors(self, data_torch: Tensor, name: str, bid: int | None) -> Iterable[tuple[str, Tensor]]:
# if name starts with "bert.", remove the prefix
# e.g. https://huggingface.co/jinaai/jina-reranker-v1-tiny-en
if name.startswith("bert."):
name = name[5:]
return super().modify_tensors(data_torch, name, bid)
@ModelBase.register("OpenELMForCausalLM")
class OpenELMModel(TextModel):

View File

@@ -8,6 +8,7 @@
- [DataType Supports](#datatype-supports)
- [Docker](#docker)
- [Linux](#linux)
- [Environment variable setup](#environment-variable-setup)
- [TODO](#todo)
@@ -290,5 +291,24 @@ Authors from Peking University: Bizhao Shi (bshi@pku.edu.cn), Yuxin Yang (yxyang
We would like to thank Tuo Dai, Shanni Li, and all of the project maintainers from Huawei Technologies Co., Ltd for their help during the code development and pull request.
## Environment variable setup
### GGML_CANN_ASYNC_MODE
Enables asynchronous operator submission. Disabled by default.
### GGML_CANN_MEM_POOL
Specifies the memory pool management strategy:
- vmm: Utilizes a virtual memory manager pool. If hardware support for VMM is unavailable, falls back to the legacy (leg) memory pool.
- prio: Employs a priority queue-based memory pool management.
- leg: Uses a fixed-size buffer pool.
### GGML_CANN_DISABLE_BUF_POOL_CLEAN
Controls automatic cleanup of the memory pool. This option is only effective when using the prio or leg memory pool strategies.
## TODO
- Support more models and data types.

View File

@@ -1,5 +1,9 @@
# Build llama.cpp locally
The main product of this project is the `llama` library. Its C-style interface can be found in [include/llama.h](include/llama.h).
The project also includes many example programs and tools using the `llama` library. The examples range from simple, minimal code snippets to sophisticated sub-projects such as an OpenAI-compatible HTTP server.
**To get the Code:**
```bash

View File

@@ -1,28 +1,42 @@
# Install pre-built version of llama.cpp
## Homebrew
| Install via | Windows | Mac | Linux |
|-------------|---------|-----|-------|
| Winget | ✅ | | |
| Homebrew | | ✅ | ✅ |
| MacPorts | | ✅ | |
| Nix | | ✅ | ✅ |
On Mac and Linux, the homebrew package manager can be used via
## Winget (Windows)
```sh
winget install llama.cpp
```
The package is automatically updated with new `llama.cpp` releases. More info: https://github.com/ggml-org/llama.cpp/issues/8188
## Homebrew (Mac and Linux)
```sh
brew install llama.cpp
```
The formula is automatically updated with new `llama.cpp` releases. More info: https://github.com/ggml-org/llama.cpp/discussions/7668
## MacPorts
## MacPorts (Mac)
```sh
sudo port install llama.cpp
```
see also: https://ports.macports.org/port/llama.cpp/details/
## Nix
See also: https://ports.macports.org/port/llama.cpp/details/
On Mac and Linux, the Nix package manager can be used via
## Nix (Mac and Linux)
```sh
nix profile install nixpkgs#llama-cpp
```
For flake enabled installs.
Or
@@ -34,13 +48,3 @@ nix-env --file '<nixpkgs>' --install --attr llama-cpp
For non-flake enabled installs.
This expression is automatically updated within the [nixpkgs repo](https://github.com/NixOS/nixpkgs/blob/nixos-24.05/pkgs/by-name/ll/llama-cpp/package.nix#L164).
## Flox
On Mac and Linux, Flox can be used to install llama.cpp within a Flox environment via
```sh
flox install llama-cpp
```
Flox follows the nixpkgs build of llama.cpp.

View File

@@ -116,7 +116,7 @@ if llama_decode(context, batch) != 0 {
}
for i in 1 ..< n_parallel {
llama_kv_self_seq_cp(context, 0, Int32(i), 0, batch.n_tokens)
llama_memory_seq_cp(llama_get_memory(context), 0, Int32(i), 0, batch.n_tokens)
}
if n_parallel > 1 {

View File

@@ -37,7 +37,7 @@ static void batch_decode(llama_context * ctx, llama_batch & batch, float * outpu
const enum llama_pooling_type pooling_type = llama_pooling_type(ctx);
// clear previous kv_cache values (irrelevant for embeddings)
llama_kv_self_clear(ctx);
llama_memory_clear(llama_get_memory(ctx), true);
// run model
LOG_INF("%s: n_tokens = %d, n_seq = %d\n", __func__, batch.n_tokens, n_seq);
@@ -236,9 +236,24 @@ int main(int argc, char ** argv) {
LOG("\n");
}
} else if (pooling_type == LLAMA_POOLING_TYPE_RANK) {
const uint32_t n_cls_out = llama_model_n_cls_out(model);
std::vector<std::string> cls_out_labels;
for (uint32_t i = 0; i < n_cls_out; i++) {
const char * label = llama_model_cls_label(model, i);
const std::string label_i(label == nullptr ? "" : label);
cls_out_labels.emplace_back(label_i.empty() ? std::to_string(i) : label_i);
}
for (int j = 0; j < n_embd_count; j++) {
// NOTE: if you change this log - update the tests in ci/run.sh
LOG("rerank score %d: %8.3f\n", j, emb[j * n_embd]);
for (uint32_t i = 0; i < n_cls_out; i++) {
// NOTE: if you change this log - update the tests in ci/run.sh
if (n_cls_out == 1) {
LOG("rerank score %d: %8.3f\n", j, emb[j * n_embd]);
} else {
LOG("rerank score %d: %8.3f [%s]\n", j, emb[j * n_embd + i], cls_out_labels[i].c_str());
}
}
}
} else {
// print the first part of the embeddings or for a single prompt, the full embedding

View File

@@ -45,7 +45,7 @@ static std::vector<std::vector<float>> encode(llama_context * ctx, const std::ve
}
// clear previous kv_cache values (irrelevant for embeddings)
llama_kv_self_clear(ctx);
llama_memory_clear(llama_get_memory(ctx), true);
llama_set_embeddings(ctx, true);
llama_set_causal_attn(ctx, false);
@@ -102,7 +102,7 @@ static std::string generate(llama_context * ctx, llama_sampler * smpl, const std
llama_token eos_token = llama_vocab_eos(vocab);
llama_kv_self_clear(ctx);
llama_memory_clear(llama_get_memory(ctx), true);
llama_set_embeddings(ctx, false);
llama_set_causal_attn(ctx, true);

View File

@@ -194,7 +194,7 @@ Java_android_llama_cpp_LLamaAndroid_bench_1model(
}
batch->logits[batch->n_tokens - 1] = true;
llama_kv_self_clear(context);
llama_memory_clear(llama_get_memory(context), false);
const auto t_pp_start = ggml_time_us();
if (llama_decode(context, *batch) != 0) {
@@ -206,7 +206,7 @@ Java_android_llama_cpp_LLamaAndroid_bench_1model(
LOGi("Benchmark text generation (tg)");
llama_kv_self_clear(context);
llama_memory_clear(llama_get_memory(context), false);
const auto t_tg_start = ggml_time_us();
for (i = 0; i < tg; i++) {
@@ -223,7 +223,7 @@ Java_android_llama_cpp_LLamaAndroid_bench_1model(
const auto t_tg_end = ggml_time_us();
llama_kv_self_clear(context);
llama_memory_clear(llama_get_memory(context), false);
const auto t_pp = double(t_pp_end - t_pp_start) / 1000000.0;
const auto t_tg = double(t_tg_end - t_tg_start) / 1000000.0;
@@ -448,5 +448,5 @@ Java_android_llama_cpp_LLamaAndroid_completion_1loop(
extern "C"
JNIEXPORT void JNICALL
Java_android_llama_cpp_LLamaAndroid_kv_1cache_1clear(JNIEnv *, jobject, jlong context) {
llama_kv_self_clear(reinterpret_cast<llama_context *>(context));
llama_memory_clear(llama_get_memory(reinterpret_cast<llama_context *>(context)), true);
}

View File

@@ -210,7 +210,7 @@ actor LlamaContext {
}
batch.logits[Int(batch.n_tokens) - 1] = 1 // true
llama_kv_self_clear(context)
llama_memory_clear(llama_get_memory(context), false)
let t_pp_start = DispatchTime.now().uptimeNanoseconds / 1000;
@@ -223,7 +223,7 @@ actor LlamaContext {
// bench text generation
llama_kv_self_clear(context)
llama_memory_clear(llama_get_memory(context), false)
let t_tg_start = DispatchTime.now().uptimeNanoseconds / 1000;
@@ -242,7 +242,7 @@ actor LlamaContext {
let t_tg_end = DispatchTime.now().uptimeNanoseconds / 1000;
llama_kv_self_clear(context)
llama_memory_clear(llama_get_memory(context), false)
let t_pp = Double(t_pp_end - t_pp_start) / 1000000.0
let t_tg = Double(t_tg_end - t_tg_start) / 1000000.0
@@ -292,7 +292,7 @@ actor LlamaContext {
func clear() {
tokens_list.removeAll()
temporary_invalid_cchars.removeAll()
llama_kv_self_clear(context)
llama_memory_clear(llama_get_memory(context), true)
}
private func tokenize(text: String, add_bos: Bool) -> [llama_token] {

View File

@@ -60,6 +60,8 @@ int main(int argc, char ** argv) {
llama_model * model = llama_init.model.get();
llama_context * ctx = llama_init.context.get();
auto * mem = llama_get_memory(ctx);
const llama_vocab * vocab = llama_model_get_vocab(model);
// Tokenize the prompt
@@ -94,7 +96,7 @@ int main(int argc, char ** argv) {
llama_decode(ctx, llama_batch_get_one(&inp.back(), 1));
for (int s = 1; s < W + G + 1; ++s) {
llama_kv_self_seq_cp(ctx, 0, s, -1, -1);
llama_memory_seq_cp(mem, 0, s, -1, -1);
}
const auto t_enc_end = ggml_time_us();
@@ -427,17 +429,17 @@ int main(int argc, char ** argv) {
// KV cache management
// if no verification token matched, we simply remove all cells from this batch -> no fragmentation
llama_kv_self_seq_rm(ctx, -1, n_past, -1);
llama_memory_seq_rm(mem, -1, n_past, -1);
if (seq_id_best != 0) {
// if a verification token matched, we keep the best sequence and remove the rest
// this leads to some KV cache fragmentation
llama_kv_self_seq_keep(ctx, seq_id_best);
llama_kv_self_seq_cp (ctx, seq_id_best, 0, -1, -1);
llama_kv_self_seq_rm (ctx, seq_id_best, -1, -1);
llama_memory_seq_keep(mem, seq_id_best);
llama_memory_seq_cp (mem, seq_id_best, 0, -1, -1);
llama_memory_seq_rm (mem, seq_id_best, -1, -1);
for (int s = 1; s < W + G + 1; ++s) {
llama_kv_self_seq_cp(ctx, 0, s, -1, -1);
llama_memory_seq_cp(mem, 0, s, -1, -1);
}
}
}

View File

@@ -181,7 +181,7 @@ int main(int argc, char ** argv){
// KV cache management
// clean the cache of draft tokens that weren't accepted
llama_kv_self_seq_rm(ctx, 0, n_past, -1);
llama_memory_seq_rm(llama_get_memory(ctx), 0, n_past, -1);
common_batch_clear(batch_tgt);
common_batch_add(batch_tgt, draft[0], n_past, { 0 }, true);

View File

@@ -194,6 +194,8 @@ int main(int argc, char ** argv) {
llama_model * model = llama_init.model.get();
llama_context * ctx = llama_init.context.get();
auto * mem = llama_get_memory(ctx);
const llama_vocab * vocab = llama_model_get_vocab(model);
// load the prompts from an external file if there are any
@@ -259,7 +261,7 @@ int main(int argc, char ** argv) {
// assign the system KV cache to all parallel sequences
for (int32_t i = 1; i <= n_clients; ++i) {
llama_kv_self_seq_cp(ctx, 0, i, -1, -1);
llama_memory_seq_cp(mem, 0, i, -1, -1);
}
LOG_INF("\n");
@@ -286,9 +288,9 @@ int main(int argc, char ** argv) {
if (batch.n_tokens == 0) {
// all sequences have ended - clear the entire KV cache
for (int i = 1; i <= n_clients; ++i) {
llama_kv_self_seq_rm(ctx, i, -1, -1);
llama_memory_seq_rm(mem, i, -1, -1);
// but keep the system prompt
llama_kv_self_seq_cp(ctx, 0, i, -1, -1);
llama_memory_seq_cp(mem, 0, i, -1, -1);
}
LOG_INF("%s: clearing the KV cache\n", __func__);
@@ -447,8 +449,8 @@ int main(int argc, char ** argv) {
}
// delete only the generated part of the sequence, i.e. keep the system prompt in the cache
llama_kv_self_seq_rm(ctx, client.id + 1, -1, -1);
llama_kv_self_seq_cp(ctx, 0, client.id + 1, -1, -1);
llama_memory_seq_rm(mem, client.id + 1, -1, -1);
llama_memory_seq_cp(mem, 0, client.id + 1, -1, -1);
const auto t_main_end = ggml_time_us();

View File

@@ -126,6 +126,8 @@ int main(int argc, char ** argv) {
int n_past = 0;
auto * mem = llama_get_memory(ctx);
// fill the KV cache
for (int i = 0; i < n_ctx; i += n_batch) {
if (i > 0 && n_grp > 1) {
@@ -133,10 +135,10 @@ int main(int argc, char ** argv) {
const int ib = i/n_batch - 1;
const int bd = n_batch_grp*(n_grp - 1);
llama_kv_self_seq_add(ctx, 0, n_past - n_batch, n_past, ib*bd);
llama_kv_self_seq_div(ctx, 0, n_past - n_batch + ib*bd, n_past + ib*bd, n_grp);
llama_memory_seq_add(mem, 0, n_past - n_batch, n_past, ib*bd);
llama_memory_seq_div(mem, 0, n_past - n_batch + ib*bd, n_past + ib*bd, n_grp);
n_past = llama_kv_self_seq_pos_max(ctx, 0) + 1;
n_past = llama_memory_seq_pos_max(mem, 0) + 1;
}
common_batch_clear(batch);
@@ -166,10 +168,10 @@ int main(int argc, char ** argv) {
LOG_INF("%s: shifting KV cache with %d\n", __func__, n_discard);
llama_kv_self_seq_rm (ctx, 0, n_keep , n_keep + n_discard);
llama_kv_self_seq_add(ctx, 0, n_keep + n_discard, n_ctx, -n_discard);
llama_memory_seq_rm (mem, 0, n_keep , n_keep + n_discard);
llama_memory_seq_add(mem, 0, n_keep + n_discard, n_ctx, -n_discard);
n_past = llama_kv_self_seq_pos_max(ctx, 0) + 1;
n_past = llama_memory_seq_pos_max(mem, 0) + 1;
common_batch_clear(batch);
@@ -195,10 +197,10 @@ int main(int argc, char ** argv) {
if (n_discard > 0) {
LOG_INF("%s: shifting KV cache with %d to free space for the answer\n", __func__, n_discard);
llama_kv_self_seq_rm (ctx, 0, n_keep , n_keep + n_discard);
llama_kv_self_seq_add(ctx, 0, n_keep + n_discard, n_ctx, -n_discard);
llama_memory_seq_rm (mem, 0, n_keep , n_keep + n_discard);
llama_memory_seq_add(mem, 0, n_keep + n_discard, n_ctx, -n_discard);
n_past = llama_kv_self_seq_pos_max(ctx, 0) + 1;
n_past = llama_memory_seq_pos_max(mem, 0) + 1;
}
}

View File

@@ -83,7 +83,7 @@ static void batch_add_seq(llama_batch & batch, const std::vector<int32_t> & toke
static void batch_process(llama_context * ctx, llama_batch & batch, float * output, int n_seq, int n_embd) {
// clear previous kv_cache values (irrelevant for embeddings)
llama_kv_self_clear(ctx);
llama_memory_clear(llama_get_memory(ctx), false);
// run model
LOG_INF("%s: n_tokens = %d, n_seq = %d\n", __func__, batch.n_tokens, n_seq);

View File

@@ -196,7 +196,7 @@ int main(int argc, char ** argv) {
fprintf(stderr, "%s : seq 0 copied, %zd bytes\n", __func__, ncopy);
// erase whole kv
llama_kv_self_clear(ctx3);
llama_memory_clear(llama_get_memory(ctx3), true);
fprintf(stderr, "%s : kv cache cleared\n", __func__);
// restore kv into seq 1

View File

@@ -98,7 +98,7 @@ int main(int argc, char ** argv) {
auto generate = [&](const std::string & prompt) {
std::string response;
const bool is_first = llama_kv_self_seq_pos_max(ctx, 0) == 0;
const bool is_first = llama_memory_seq_pos_max(llama_get_memory(ctx), 0) == 0;
// tokenize the prompt
const int n_prompt_tokens = -llama_tokenize(vocab, prompt.c_str(), prompt.size(), NULL, 0, is_first, true);
@@ -113,7 +113,7 @@ int main(int argc, char ** argv) {
while (true) {
// check if we have enough space in the context to evaluate this batch
int n_ctx = llama_n_ctx(ctx);
int n_ctx_used = llama_kv_self_seq_pos_max(ctx, 0);
int n_ctx_used = llama_memory_seq_pos_max(llama_get_memory(ctx), 0);
if (n_ctx_used + batch.n_tokens > n_ctx) {
printf("\033[0m\n");
fprintf(stderr, "context size exceeded\n");

View File

@@ -217,7 +217,7 @@ int main(int argc, char ** argv) {
{
LOG_DBG("clear kv cache from any extra tokens, n_past = %d\n", n_past);
llama_kv_self_seq_rm(ctx_tgt, 0, n_past, -1);
llama_memory_seq_rm(llama_get_memory(ctx_tgt), 0, n_past, -1);
}
if ((params.n_predict >= 0 && n_predict > params.n_predict) || has_eos) {

View File

@@ -142,6 +142,8 @@ int main(int argc, char ** argv) {
}
}
auto * mem_tgt = llama_get_memory(ctx_tgt);
auto * mem_dft = llama_get_memory(ctx_dft);
// Tokenize the prompt
std::vector<llama_token> inp;
@@ -420,14 +422,14 @@ int main(int argc, char ** argv) {
{
LOG_DBG("keeping sequence %d, n_past_tgt = %d, n_past_dft = %d\n", s_keep, n_past_tgt, n_past_dft);
llama_kv_self_seq_keep(ctx_dft, s_keep);
llama_kv_self_seq_cp (ctx_dft, s_keep, 0, -1, -1);
llama_kv_self_seq_keep(ctx_dft, 0);
llama_memory_seq_keep(mem_dft, s_keep);
llama_memory_seq_cp (mem_dft, s_keep, 0, -1, -1);
llama_memory_seq_keep(mem_dft, 0);
llama_kv_self_seq_rm (ctx_tgt, s_keep, n_past_tgt, -1);
llama_kv_self_seq_keep(ctx_tgt, s_keep);
llama_kv_self_seq_cp (ctx_tgt, s_keep, 0, -1, -1);
llama_kv_self_seq_keep(ctx_tgt, 0);
llama_memory_seq_rm (mem_tgt, s_keep, n_past_tgt, -1);
llama_memory_seq_keep(mem_tgt, s_keep);
llama_memory_seq_cp (mem_tgt, s_keep, 0, -1, -1);
llama_memory_seq_keep(mem_tgt, 0);
}
for (int s = 0; s < n_seq_dft; ++s) {
@@ -444,7 +446,7 @@ int main(int argc, char ** argv) {
common_batch_clear(batch_dft);
common_batch_add (batch_dft, token_id, n_past_dft, { 0 }, true);
llama_kv_self_seq_rm(ctx_dft, 0, n_past_dft, -1);
llama_memory_seq_rm(mem_dft, 0, n_past_dft, -1);
// LOG_DBG("dft batch: %s\n", LOG_BATCH_TOSTR_PRETTY(ctx_dft, batch_dft).c_str());
llama_decode(ctx_dft, batch_dft);
@@ -503,8 +505,8 @@ int main(int argc, char ** argv) {
if (n_seq_cur < n_seq_dft && cur_p->data[f].p > p_draft_split) {
LOG_DBG("splitting seq %3d into %3d\n", s, n_seq_cur);
llama_kv_self_seq_rm(ctx_dft, n_seq_cur, -1, -1);
llama_kv_self_seq_cp(ctx_dft, s, n_seq_cur, -1, -1);
llama_memory_seq_rm(mem_dft, n_seq_cur, -1, -1);
llama_memory_seq_cp(mem_dft, s, n_seq_cur, -1, -1);
// all previous tokens from this branch are now also part of the new branch
for (int t = 0; t < batch_tgt.n_tokens; ++t) {
@@ -585,9 +587,9 @@ int main(int argc, char ** argv) {
// evaluate the target model on the drafted tokens
{
llama_kv_self_seq_keep(ctx_tgt, 0);
llama_memory_seq_keep(mem_tgt, 0);
for (int s = 1; s < n_seq_dft; ++s) {
llama_kv_self_seq_cp(ctx_tgt, 0, s, -1, -1);
llama_memory_seq_cp(mem_tgt, 0, s, -1, -1);
}
// LOG_DBG("target batch: %s\n", LOG_BATCH_TOSTR_PRETTY(ctx_tgt, batch_tgt).c_str());

View File

@@ -105,7 +105,7 @@ message(DEBUG "GGML_NATIVE_DEFAULT : ${GGML_NATIVE_DEFAULT}")
message(DEBUG "INS_ENB : ${INS_ENB}")
option(GGML_CPU_HBM "ggml: use memkind for CPU HBM" OFF)
option(GGML_CPU_AARCH64 "ggml: use runtime weight conversion of Q4_0 to Q4_X_X" ON)
option(GGML_CPU_REPACK "ggml: use runtime weight conversion of Q4_0 to Q4_X_X" ON)
option(GGML_CPU_KLEIDIAI "ggml: use KleidiAI optimized kernels if applicable" OFF)
option(GGML_SSE42 "ggml: enable SSE 4.2" ${INS_ENB})
option(GGML_AVX "ggml: enable AVX" ${INS_ENB})
@@ -137,7 +137,7 @@ set(GGML_CPU_ARM_ARCH "" CACHE STRING "ggml: CPU architecture for ARM")
set(GGML_CPU_POWERPC_CPUTYPE "" CACHE STRING "ggml: CPU type for PowerPC")
if (WIN32)
if (MINGW)
set(GGML_WIN_VER "0x602" CACHE STRING "ggml: Windows version")
endif()

View File

@@ -125,7 +125,6 @@ if (NOT MSVC)
endif()
if (MINGW)
# Target Windows 8 for PrefetchVirtualMemory
add_compile_definitions(_WIN32_WINNT=${GGML_WIN_VER})
endif()
@@ -213,6 +212,7 @@ endif()
add_library(ggml
ggml-backend-reg.cpp)
add_library(ggml::ggml ALIAS ggml)
target_link_libraries(ggml PUBLIC ggml-base)

View File

@@ -37,6 +37,7 @@
#include <thread>
#include <unistd.h>
#include <functional>
#include <optional>
#include "../include/ggml-cann.h"
#include "../include/ggml.h"
@@ -103,6 +104,9 @@ const ggml_cann_device_info& ggml_cann_info();
void ggml_cann_set_device(int32_t device);
int32_t ggml_cann_get_device();
std::optional<std::string> get_env(const std::string& name);
bool parse_bool(const std::string& value);
/**
* @brief Abstract base class for memory pools used by CANN.
*/
@@ -354,7 +358,8 @@ struct ggml_backend_cann_context {
: device(device), name("CANN" + std::to_string(device)), task_queue(1024, device) {
ggml_cann_set_device(device);
description = aclrtGetSocName();
async_mode = (getenv("GGML_CANN_ASYNC_MODE") != nullptr);
bool async_mode = parse_bool(get_env("GGML_CANN_ASYNC_MODE").value_or(""));
GGML_LOG_INFO("%s: device %d async operator submission is %s\n", __func__,
device, async_mode ? "ON" : "OFF");
}

View File

@@ -31,6 +31,8 @@
#include <mutex>
#include <queue>
#include <chrono>
#include <unordered_set>
#include <optional>
#include "ggml-impl.h"
#include "ggml-backend-impl.h"
@@ -93,6 +95,26 @@ int32_t ggml_cann_get_device() {
return id;
}
/**
* @brief Get the value of the specified environment variable (name).
* if not empty, return a std::string object
*/
std::optional<std::string> get_env(const std::string& name) {
const char* val = std::getenv(name.c_str());
if (!val) return std::nullopt;
std::string res = std::string(val);
std::transform(res.begin(), res.end(), res.begin(), ::tolower);
return res;
}
/**
* @brief Verify whether the environment variable is a valid value.
*/
bool parse_bool(const std::string& value) {
std::unordered_set<std::string> valid_values = {"on", "1", "yes", "y", "enable", "true"};
return valid_values.find(value) != valid_values.end();
}
/**
* @brief Initialize the CANN device information.
*
@@ -214,7 +236,7 @@ struct ggml_cann_pool_buf_prio : public ggml_cann_pool {
* @param device The device ID to associate with this buffer pool.
*/
explicit ggml_cann_pool_buf_prio(int device) : device(device) {
disable_clean = getenv("GGML_CANN_DISABLE_BUF_POOL_CLEAN") != nullptr;
disable_clean = parse_bool(get_env("GGML_CANN_DISABLE_BUF_POOL_CLEAN").value_or(""));
}
/**
@@ -410,7 +432,7 @@ struct ggml_cann_pool_buf : public ggml_cann_pool {
* @param device The device ID to associate with this buffer pool.
*/
explicit ggml_cann_pool_buf(int device) : device(device) {
disable_clean = getenv("GGML_CANN_DISABLE_BUF_POOL_CLEAN") != nullptr;
disable_clean = parse_bool(get_env("GGML_CANN_DISABLE_BUF_POOL_CLEAN").value_or(""));
}
/**
@@ -731,16 +753,18 @@ struct ggml_cann_pool_vmm : public ggml_cann_pool {
*/
std::unique_ptr<ggml_cann_pool> ggml_backend_cann_context::new_pool_for_device(
int device) {
bool disable_vmm = (getenv("GGML_CANN_DISABLE_VMM_POOL") != nullptr);
if (!disable_vmm && ggml_cann_info().devices[device].vmm) {
GGML_LOG_INFO("%s: device %d use vmm pool\n", __func__, device);
return std::unique_ptr<ggml_cann_pool>(new ggml_cann_pool_vmm(device));
}
bool enable_buf_prio = (getenv("GGML_CANN_ENABLE_BUF_PRIO_POOL") != nullptr);
if (enable_buf_prio) {
std::string mem_pool_type = get_env("GGML_CANN_MEM_POOL").value_or("");
if (mem_pool_type == "prio") {
GGML_LOG_INFO("%s: device %d use buffer pool with priority queue\n", __func__, device);
return std::unique_ptr<ggml_cann_pool>(new ggml_cann_pool_buf_prio(device));
}
if (ggml_cann_info().devices[device].vmm && mem_pool_type != "leg") {
GGML_LOG_INFO("%s: device %d use vmm pool\n", __func__, device);
return std::unique_ptr<ggml_cann_pool>(new ggml_cann_pool_vmm(device));
}
GGML_LOG_INFO("%s: device %d use buffer pool\n", __func__, device);
return std::unique_ptr<ggml_cann_pool>(new ggml_cann_pool_buf(device));
}

View File

@@ -1074,6 +1074,10 @@ GGML_TABLE_BEGIN(uint32_t, iq3s_grid, 512)
0x0f090307, 0x0f090501, 0x0f090b01, 0x0f0b0505, 0x0f0b0905, 0x0f0d0105, 0x0f0d0703, 0x0f0f0101,
GGML_TABLE_END()
GGML_TABLE_BEGIN(int8_t, kvalues_iq4nl, 16)
-127, -104, -83, -65, -49, -35, -22, -10, 1, 13, 25, 38, 53, 69, 89, 113,
GGML_TABLE_END()
#define NGRID_IQ1S 2048
#define IQ1S_DELTA 0.125f
#define IQ1M_DELTA 0.125f

View File

@@ -10,14 +10,14 @@ function(ggml_add_cpu_backend_variant_impl tag_name)
list (APPEND GGML_CPU_SOURCES
ggml-cpu/ggml-cpu.c
ggml-cpu/ggml-cpu.cpp
ggml-cpu/ggml-cpu-aarch64.cpp
ggml-cpu/ggml-cpu-aarch64.h
ggml-cpu/ggml-cpu-hbm.cpp
ggml-cpu/ggml-cpu-hbm.h
ggml-cpu/ggml-cpu-quants.c
ggml-cpu/ggml-cpu-quants.h
ggml-cpu/ggml-cpu-traits.cpp
ggml-cpu/ggml-cpu-traits.h
ggml-cpu/repack.cpp
ggml-cpu/repack.h
ggml-cpu/hbm.cpp
ggml-cpu/hbm.h
ggml-cpu/quants.c
ggml-cpu/quants.h
ggml-cpu/traits.cpp
ggml-cpu/traits.h
ggml-cpu/amx/amx.cpp
ggml-cpu/amx/amx.h
ggml-cpu/amx/mmq.cpp
@@ -84,6 +84,11 @@ function(ggml_add_cpu_backend_variant_impl tag_name)
if (GGML_SYSTEM_ARCH STREQUAL "ARM")
message(STATUS "ARM detected")
list(APPEND GGML_CPU_SOURCES
ggml-cpu/arch/arm/quants.c
ggml-cpu/arch/arm/repack.cpp
)
if (MSVC AND NOT CMAKE_C_COMPILER_ID STREQUAL "Clang")
message(FATAL_ERROR "MSVC is not supported for ARM, use clang")
else()
@@ -167,6 +172,11 @@ function(ggml_add_cpu_backend_variant_impl tag_name)
endif()
elseif (GGML_SYSTEM_ARCH STREQUAL "x86")
message(STATUS "x86 detected")
list(APPEND GGML_CPU_SOURCES
ggml-cpu/arch/x86/quants.c
ggml-cpu/arch/x86/repack.cpp
)
if (MSVC)
# instruction set detection for MSVC only
if (GGML_NATIVE)
@@ -302,7 +312,7 @@ function(ggml_add_cpu_backend_variant_impl tag_name)
# Since multiple variants of the CPU backend may be included in the same
# build, using set_source_files_properties() to set the arch flags is not possible
set(GGML_CPU_FEATS_NAME ${GGML_CPU_NAME}-feats)
add_library(${GGML_CPU_FEATS_NAME} OBJECT ggml-cpu/cpu-feats-x86.cpp)
add_library(${GGML_CPU_FEATS_NAME} OBJECT ggml-cpu/arch/x86/cpu-feats.cpp)
target_include_directories(${GGML_CPU_FEATS_NAME} PRIVATE . .. ../include)
target_compile_definitions(${GGML_CPU_FEATS_NAME} PRIVATE ${ARCH_DEFINITIONS})
target_compile_definitions(${GGML_CPU_FEATS_NAME} PRIVATE GGML_BACKEND_DL GGML_BACKEND_BUILD GGML_BACKEND_SHARED)
@@ -311,6 +321,7 @@ function(ggml_add_cpu_backend_variant_impl tag_name)
endif()
elseif (GGML_SYSTEM_ARCH STREQUAL "PowerPC")
message(STATUS "PowerPC detected")
list(APPEND GGML_CPU_SOURCES ggml-cpu/arch/powerpc/quants.c)
if (GGML_NATIVE)
if (${CMAKE_SYSTEM_PROCESSOR} MATCHES "ppc64")
file(READ "/proc/cpuinfo" POWER10_M)
@@ -338,6 +349,8 @@ function(ggml_add_cpu_backend_variant_impl tag_name)
endif()
elseif (GGML_SYSTEM_ARCH STREQUAL "loongarch64")
message(STATUS "loongarch64 detected")
list(APPEND GGML_CPU_SOURCES ggml-cpu/arch/loongarch/quants.c)
list(APPEND ARCH_FLAGS -march=loongarch64)
if (GGML_LASX)
list(APPEND ARCH_FLAGS -mlasx)
@@ -347,6 +360,10 @@ function(ggml_add_cpu_backend_variant_impl tag_name)
endif()
elseif (GGML_SYSTEM_ARCH STREQUAL "riscv64")
message(STATUS "riscv64 detected")
list(APPEND GGML_CPU_SOURCES
ggml-cpu/arch/riscv/quants.c
ggml-cpu/arch/riscv/repack.cpp
)
if (GGML_RVV)
if (GGML_XTHEADVECTOR)
list(APPEND ARCH_FLAGS -march=rv64gc_xtheadvector -mabi=lp64d)
@@ -358,6 +375,7 @@ function(ggml_add_cpu_backend_variant_impl tag_name)
endif()
elseif (GGML_SYSTEM_ARCH STREQUAL "s390x")
message(STATUS "s390x detected")
list(APPEND GGML_CPU_SOURCES ggml-cpu/arch/s390/quants.c)
file(READ "/proc/cpuinfo" CPUINFO_CONTENTS)
string(REGEX REPLACE "machine[ \t\r\n]*=[ \t\r\n]*([0-9]+)" "\\1" S390X_M ${CPUINFO_CONTENTS})
@@ -381,12 +399,16 @@ function(ggml_add_cpu_backend_variant_impl tag_name)
if (GGML_VXE)
list(APPEND ARCH_FLAGS -mvx -mzvector)
endif()
elseif (CMAKE_SYSTEM_PROCESSOR MATCHES "wasm")
message(STATUS "Wasm detected")
list (APPEND GGML_CPU_SOURCES ggml-cpu/arch/wasm/quants.c)
else()
message(STATUS "Unknown architecture")
message(WARNING "Unknown CPU architecture. Falling back to generic implementations.")
list(APPEND ARCH_FLAGS -DGGML_CPU_GENERIC)
endif()
if (GGML_CPU_AARCH64)
target_compile_definitions(${GGML_CPU_NAME} PRIVATE GGML_USE_CPU_AARCH64)
if (GGML_CPU_REPACK)
target_compile_definitions(${GGML_CPU_NAME} PRIVATE GGML_USE_CPU_REPACK)
endif()
if (GGML_CPU_KLEIDIAI)

View File

@@ -5,7 +5,7 @@
#include "ggml-backend.h"
#include "ggml-impl.h"
#include "ggml-cpu.h"
#include "ggml-cpu-traits.h"
#include "traits.h"
#if defined(__gnu_linux__)
#include <sys/syscall.h>

View File

@@ -8,7 +8,7 @@
#include "mmq.h"
#include "ggml-impl.h"
#include "ggml-cpu-impl.h"
#include "ggml-cpu-quants.h"
#include "quants.h"
#include "ggml-quants.h"
#include <algorithm>
#include <type_traits>

File diff suppressed because it is too large Load Diff

File diff suppressed because it is too large Load Diff

File diff suppressed because it is too large Load Diff

File diff suppressed because it is too large Load Diff

File diff suppressed because it is too large Load Diff

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@@ -0,0 +1,396 @@
#define GGML_COMMON_IMPL_CPP
#define GGML_COMMON_DECL_CPP
#include "ggml-common.h"
#include "ggml-backend-impl.h"
#include "ggml-impl.h"
#include "ggml-cpu.h"
#include "ggml-cpu-impl.h"
#include "traits.h"
#include <cmath>
#include <cstring>
#include <cassert>
#include <cstdlib> // for qsort
#include <cstdio> // for GGML_ASSERT
#define GGML_CPU_CLANG_WORKAROUND
#include "../../repack.h"
#if defined(__GNUC__)
#pragma GCC diagnostic ignored "-Woverlength-strings"
#endif
#define UNUSED GGML_UNUSED
void ggml_gemv_q4_0_8x8_q8_0(int n, float * GGML_RESTRICT s, size_t bs, const void * GGML_RESTRICT vx, const void * GGML_RESTRICT vy, int nr, int nc) {
const int qk = QK8_0;
const int nb = n / qk;
const int ncols_interleaved = 8;
const int blocklen = 8;
assert (n % qk == 0);
assert (nc % ncols_interleaved == 0);
UNUSED(s);
UNUSED(bs);
UNUSED(vx);
UNUSED(vy);
UNUSED(nr);
UNUSED(nc);
UNUSED(nb);
UNUSED(ncols_interleaved);
UNUSED(blocklen);
#if defined __riscv_v
if (__riscv_vlenb() >= QK4_0) {
const size_t vl = QK4_0;
const block_q8_0 * a_ptr = (const block_q8_0 *) vy;
for (int x = 0; x < nc / ncols_interleaved; x++) {
const block_q4_0x8 * b_ptr = (const block_q4_0x8 *) vx + (x * nb);
vfloat32m1_t sumf = __riscv_vfmv_v_f_f32m1(0.0, vl / 4);
for (int l = 0; l < nb; l++) {
const int64_t a0 = *(const int64_t *)&a_ptr[l].qs[0];
const int64_t a1 = *(const int64_t *)&a_ptr[l].qs[8];
const int64_t a2 = *(const int64_t *)&a_ptr[l].qs[16];
const int64_t a3 = *(const int64_t *)&a_ptr[l].qs[24];
__asm__ __volatile__("" ::: "memory"); // prevent gcc from emitting fused vlse64, violating alignment constraints
const vint8m2_t lhs_0_8 =__riscv_vreinterpret_v_i64m2_i8m2(__riscv_vmv_v_x_i64m2(a0, vl / 4));
const vint8m2_t lhs_1_8 =__riscv_vreinterpret_v_i64m2_i8m2(__riscv_vmv_v_x_i64m2(a1, vl / 4));
const vint8m2_t lhs_2_8 =__riscv_vreinterpret_v_i64m2_i8m2(__riscv_vmv_v_x_i64m2(a2, vl / 4));
const vint8m2_t lhs_3_8 =__riscv_vreinterpret_v_i64m2_i8m2(__riscv_vmv_v_x_i64m2(a3, vl / 4));
const vint8m4_t rhs_raw_vec = __riscv_vle8_v_i8m4((const int8_t *)b_ptr[l].qs, vl * 4);
const vint8m4_t rhs_vec_lo = __riscv_vsra_vx_i8m4(__riscv_vsll_vx_i8m4(rhs_raw_vec, 4, vl * 4), 4, vl * 4);
const vint8m4_t rhs_vec_hi = __riscv_vsra_vx_i8m4(rhs_raw_vec, 4, vl * 4);
const vint8m2_t rhs_vec_lo_0 = __riscv_vget_v_i8m4_i8m2(rhs_vec_lo, 0);
const vint8m2_t rhs_vec_lo_1 = __riscv_vget_v_i8m4_i8m2(rhs_vec_lo, 1);
const vint8m2_t rhs_vec_hi_0 = __riscv_vget_v_i8m4_i8m2(rhs_vec_hi, 0);
const vint8m2_t rhs_vec_hi_1 = __riscv_vget_v_i8m4_i8m2(rhs_vec_hi, 1);
const vint16m4_t sumi_lo_0 = __riscv_vwmul_vv_i16m4(rhs_vec_lo_0, lhs_0_8, vl * 2);
const vint16m4_t sumi_lo_1 = __riscv_vwmacc_vv_i16m4(sumi_lo_0, rhs_vec_lo_1, lhs_1_8, vl * 2);
const vint16m4_t sumi_hi_0 = __riscv_vwmacc_vv_i16m4(sumi_lo_1, rhs_vec_hi_0, lhs_2_8, vl * 2);
const vint16m4_t sumi_hi_m = __riscv_vwmacc_vv_i16m4(sumi_hi_0, rhs_vec_hi_1, lhs_3_8, vl * 2);
const vuint32m4_t sumi_i32 = __riscv_vreinterpret_v_i32m4_u32m4(__riscv_vreinterpret_v_i16m4_i32m4(sumi_hi_m));
const vuint16m2_t sumi_h2_0 = __riscv_vnsrl_wx_u16m2(sumi_i32, 0, vl);
const vuint16m2_t sumi_h2_1 = __riscv_vnsrl_wx_u16m2(sumi_i32, 16, vl);
const vuint16m2_t sumi_h2 = __riscv_vadd_vv_u16m2(sumi_h2_0, sumi_h2_1, vl);
const vuint32m2_t sumi_h2_i32 = __riscv_vreinterpret_v_u16m2_u32m2(sumi_h2);
const vuint16m1_t sumi_h4_0 = __riscv_vnsrl_wx_u16m1(sumi_h2_i32, 0, vl / 2);
const vuint16m1_t sumi_h4_1 = __riscv_vnsrl_wx_u16m1(sumi_h2_i32, 16, vl / 2);
const vuint16m1_t sumi_h4 = __riscv_vadd_vv_u16m1(sumi_h4_0, sumi_h4_1, vl / 2);
const vuint32m1_t sumi_h4_i32 = __riscv_vreinterpret_v_u16m1_u32m1(sumi_h4);
const vint16mf2_t sumi_h8_0 = __riscv_vreinterpret_v_u16mf2_i16mf2(__riscv_vnsrl_wx_u16mf2(sumi_h4_i32, 0, vl / 4));
const vint16mf2_t sumi_h8_1 = __riscv_vreinterpret_v_u16mf2_i16mf2(__riscv_vnsrl_wx_u16mf2(sumi_h4_i32, 16, vl / 4));
const vint32m1_t sumi_h8 = __riscv_vwadd_vv_i32m1(sumi_h8_0, sumi_h8_1, vl / 4);
const vfloat32m1_t facc = __riscv_vfcvt_f_x_v_f32m1(sumi_h8, vl / 4);
// vector version needs Zvfhmin extension
const float a_scale = GGML_FP16_TO_FP32(a_ptr[l].d);
const float b_scales[8] = {
GGML_FP16_TO_FP32(b_ptr[l].d[0]),
GGML_FP16_TO_FP32(b_ptr[l].d[1]),
GGML_FP16_TO_FP32(b_ptr[l].d[2]),
GGML_FP16_TO_FP32(b_ptr[l].d[3]),
GGML_FP16_TO_FP32(b_ptr[l].d[4]),
GGML_FP16_TO_FP32(b_ptr[l].d[5]),
GGML_FP16_TO_FP32(b_ptr[l].d[6]),
GGML_FP16_TO_FP32(b_ptr[l].d[7])
};
const vfloat32m1_t b_scales_vec = __riscv_vle32_v_f32m1(b_scales, vl / 4);
const vfloat32m1_t tmp1 = __riscv_vfmul_vf_f32m1(facc, a_scale, vl / 4);
sumf = __riscv_vfmacc_vv_f32m1(sumf, tmp1, b_scales_vec, vl / 4);
}
__riscv_vse32_v_f32m1(s + x * ncols_interleaved, sumf, vl / 4);
}
return;
}
#endif
{
float sumf[8];
int sumi;
const block_q8_0 * a_ptr = (const block_q8_0 *) vy;
for (int x = 0; x < nc / ncols_interleaved; x++) {
const block_q4_0x8 * b_ptr = (const block_q4_0x8 *) vx + (x * nb);
for (int j = 0; j < ncols_interleaved; j++) sumf[j] = 0.0;
for (int l = 0; l < nb; l++) {
for (int k = 0; k < (qk / (2 * blocklen)); k++) {
for (int j = 0; j < ncols_interleaved; j++) {
sumi = 0;
for (int i = 0; i < blocklen; ++i) {
const int v0 = (int8_t) (b_ptr[l].qs[k * ncols_interleaved * blocklen + j * blocklen + i] << 4);
const int v1 = (int8_t) (b_ptr[l].qs[k * ncols_interleaved * blocklen + j * blocklen + i] & 0xF0);
sumi += ((v0 * a_ptr[l].qs[k * blocklen + i]) + (v1 * a_ptr[l].qs[k * blocklen + i + qk / 2])) >> 4;
}
sumf[j] += sumi * GGML_FP16_TO_FP32(b_ptr[l].d[j]) * GGML_FP16_TO_FP32(a_ptr[l].d);
}
}
}
for (int j = 0; j < ncols_interleaved; j++) s[x * ncols_interleaved + j] = sumf[j];
}
}
}
void ggml_gemm_q4_0_8x8_q8_0(int n, float * GGML_RESTRICT s, size_t bs, const void * GGML_RESTRICT vx, const void * GGML_RESTRICT vy, int nr, int nc) {
const int qk = QK8_0;
const int nb = n / qk;
const int ncols_interleaved = 8;
const int blocklen = 8;
assert (n % qk == 0);
assert (nr % 4 == 0);
assert (nc % ncols_interleaved == 0);
UNUSED(s);
UNUSED(bs);
UNUSED(vx);
UNUSED(vy);
UNUSED(nr);
UNUSED(nc);
UNUSED(nb);
UNUSED(ncols_interleaved);
UNUSED(blocklen);
#if defined __riscv_v
if (__riscv_vlenb() >= QK4_0) {
const size_t vl = QK4_0;
for (int y = 0; y < nr / 4; y++) {
const block_q8_0x4 * a_ptr = (const block_q8_0x4 *) vy + (y * nb);
for (int x = 0; x < nc / ncols_interleaved; x++) {
const block_q4_0x8 * b_ptr = (const block_q4_0x8 *) vx + (x * nb);
vfloat32m1_t sumf0 = __riscv_vfmv_v_f_f32m1(0.0, vl / 4);
vfloat32m1_t sumf1 = __riscv_vfmv_v_f_f32m1(0.0, vl / 4);
vfloat32m1_t sumf2 = __riscv_vfmv_v_f_f32m1(0.0, vl / 4);
vfloat32m1_t sumf3 = __riscv_vfmv_v_f_f32m1(0.0, vl / 4);
for (int l = 0; l < nb; l++) {
const vint8m4_t rhs_raw_vec = __riscv_vle8_v_i8m4((const int8_t *)b_ptr[l].qs, vl * 4);
const vint8m4_t rhs_vec_lo = __riscv_vsra_vx_i8m4(__riscv_vsll_vx_i8m4(rhs_raw_vec, 4, vl * 4), 4, vl * 4);
const vint8m4_t rhs_vec_hi = __riscv_vsra_vx_i8m4(rhs_raw_vec, 4, vl * 4);
const vint8m2_t rhs_vec_lo_0 = __riscv_vget_v_i8m4_i8m2(rhs_vec_lo, 0);
const vint8m2_t rhs_vec_lo_1 = __riscv_vget_v_i8m4_i8m2(rhs_vec_lo, 1);
const vint8m2_t rhs_vec_hi_0 = __riscv_vget_v_i8m4_i8m2(rhs_vec_hi, 0);
const vint8m2_t rhs_vec_hi_1 = __riscv_vget_v_i8m4_i8m2(rhs_vec_hi, 1);
// vector version needs Zvfhmin extension
const float a_scales[4] = {
GGML_FP16_TO_FP32(a_ptr[l].d[0]),
GGML_FP16_TO_FP32(a_ptr[l].d[1]),
GGML_FP16_TO_FP32(a_ptr[l].d[2]),
GGML_FP16_TO_FP32(a_ptr[l].d[3])
};
const float b_scales[8] = {
GGML_FP16_TO_FP32(b_ptr[l].d[0]),
GGML_FP16_TO_FP32(b_ptr[l].d[1]),
GGML_FP16_TO_FP32(b_ptr[l].d[2]),
GGML_FP16_TO_FP32(b_ptr[l].d[3]),
GGML_FP16_TO_FP32(b_ptr[l].d[4]),
GGML_FP16_TO_FP32(b_ptr[l].d[5]),
GGML_FP16_TO_FP32(b_ptr[l].d[6]),
GGML_FP16_TO_FP32(b_ptr[l].d[7])
};
const vfloat32m1_t b_scales_vec = __riscv_vle32_v_f32m1(b_scales, vl / 4);
const int64_t A0 = *(const int64_t *)&a_ptr[l].qs[0];
const int64_t A4 = *(const int64_t *)&a_ptr[l].qs[32];
const int64_t A8 = *(const int64_t *)&a_ptr[l].qs[64];
const int64_t Ac = *(const int64_t *)&a_ptr[l].qs[96];
__asm__ __volatile__("" ::: "memory"); // prevent gcc from emitting fused vlse64, violating alignment
vint16m4_t sumi_l0;
{
const vint8m2_t lhs_0_8 =__riscv_vreinterpret_v_i64m2_i8m2(__riscv_vmv_v_x_i64m2(A0, vl / 4));
const vint8m2_t lhs_1_8 =__riscv_vreinterpret_v_i64m2_i8m2(__riscv_vmv_v_x_i64m2(A4, vl / 4));
const vint8m2_t lhs_2_8 =__riscv_vreinterpret_v_i64m2_i8m2(__riscv_vmv_v_x_i64m2(A8, vl / 4));
const vint8m2_t lhs_3_8 =__riscv_vreinterpret_v_i64m2_i8m2(__riscv_vmv_v_x_i64m2(Ac, vl / 4));
const vint16m4_t sumi_lo_0 = __riscv_vwmul_vv_i16m4(rhs_vec_lo_0, lhs_0_8, vl * 2);
const vint16m4_t sumi_lo_1 = __riscv_vwmacc_vv_i16m4(sumi_lo_0, rhs_vec_lo_1, lhs_1_8, vl * 2);
const vint16m4_t sumi_hi_0 = __riscv_vwmacc_vv_i16m4(sumi_lo_1, rhs_vec_hi_0, lhs_2_8, vl * 2);
const vint16m4_t sumi_hi_m = __riscv_vwmacc_vv_i16m4(sumi_hi_0, rhs_vec_hi_1, lhs_3_8, vl * 2);
sumi_l0 = sumi_hi_m;
}
{
const vuint32m4_t sumi_i32 = __riscv_vreinterpret_v_i32m4_u32m4(__riscv_vreinterpret_v_i16m4_i32m4(sumi_l0));
const vuint16m2_t sumi_h2_0 = __riscv_vnsrl_wx_u16m2(sumi_i32, 0, vl);
const vuint16m2_t sumi_h2_1 = __riscv_vnsrl_wx_u16m2(sumi_i32, 16, vl);
const vuint16m2_t sumi_h2 = __riscv_vadd_vv_u16m2(sumi_h2_0, sumi_h2_1, vl);
const vuint32m2_t sumi_h2_i32 = __riscv_vreinterpret_v_u16m2_u32m2(sumi_h2);
const vuint16m1_t sumi_h4_0 = __riscv_vnsrl_wx_u16m1(sumi_h2_i32, 0, vl / 2);
const vuint16m1_t sumi_h4_1 = __riscv_vnsrl_wx_u16m1(sumi_h2_i32, 16, vl / 2);
const vuint16m1_t sumi_h4 = __riscv_vadd_vv_u16m1(sumi_h4_0, sumi_h4_1, vl / 2);
const vuint32m1_t sumi_h4_i32 = __riscv_vreinterpret_v_u16m1_u32m1(sumi_h4);
const vint16mf2_t sumi_h8_0 = __riscv_vreinterpret_v_u16mf2_i16mf2(__riscv_vnsrl_wx_u16mf2(sumi_h4_i32, 0, vl / 4));
const vint16mf2_t sumi_h8_1 = __riscv_vreinterpret_v_u16mf2_i16mf2(__riscv_vnsrl_wx_u16mf2(sumi_h4_i32, 16, vl / 4));
const vint32m1_t sumi_h8 = __riscv_vwadd_vv_i32m1(sumi_h8_0, sumi_h8_1, vl / 4);
const vfloat32m1_t facc = __riscv_vfcvt_f_x_v_f32m1(sumi_h8, vl / 4);
const vfloat32m1_t tmp1 = __riscv_vfmul_vf_f32m1(facc, a_scales[0], vl / 4);
sumf0 = __riscv_vfmacc_vv_f32m1(sumf0, tmp1, b_scales_vec, vl / 4);
}
const int64_t A1 = *(const int64_t *)&a_ptr[l].qs[8];
const int64_t A5 = *(const int64_t *)&a_ptr[l].qs[40];
const int64_t A9 = *(const int64_t *)&a_ptr[l].qs[72];
const int64_t Ad = *(const int64_t *)&a_ptr[l].qs[104];
__asm__ __volatile__("" ::: "memory"); // prevent gcc from emitting fused vlse64, violating alignment
vint16m4_t sumi_l1;
{
const vint8m2_t lhs_0_8 =__riscv_vreinterpret_v_i64m2_i8m2(__riscv_vmv_v_x_i64m2(A1, vl / 4));
const vint8m2_t lhs_1_8 =__riscv_vreinterpret_v_i64m2_i8m2(__riscv_vmv_v_x_i64m2(A5, vl / 4));
const vint8m2_t lhs_2_8 =__riscv_vreinterpret_v_i64m2_i8m2(__riscv_vmv_v_x_i64m2(A9, vl / 4));
const vint8m2_t lhs_3_8 =__riscv_vreinterpret_v_i64m2_i8m2(__riscv_vmv_v_x_i64m2(Ad, vl / 4));
const vint16m4_t sumi_lo_0 = __riscv_vwmul_vv_i16m4(rhs_vec_lo_0, lhs_0_8, vl * 2);
const vint16m4_t sumi_lo_1 = __riscv_vwmacc_vv_i16m4(sumi_lo_0, rhs_vec_lo_1, lhs_1_8, vl * 2);
const vint16m4_t sumi_hi_0 = __riscv_vwmacc_vv_i16m4(sumi_lo_1, rhs_vec_hi_0, lhs_2_8, vl * 2);
const vint16m4_t sumi_hi_m = __riscv_vwmacc_vv_i16m4(sumi_hi_0, rhs_vec_hi_1, lhs_3_8, vl * 2);
sumi_l1 = sumi_hi_m;
}
{
const vuint32m4_t sumi_i32 = __riscv_vreinterpret_v_i32m4_u32m4(__riscv_vreinterpret_v_i16m4_i32m4(sumi_l1));
const vuint16m2_t sumi_h2_0 = __riscv_vnsrl_wx_u16m2(sumi_i32, 0, vl);
const vuint16m2_t sumi_h2_1 = __riscv_vnsrl_wx_u16m2(sumi_i32, 16, vl);
const vuint16m2_t sumi_h2 = __riscv_vadd_vv_u16m2(sumi_h2_0, sumi_h2_1, vl);
const vuint32m2_t sumi_h2_i32 = __riscv_vreinterpret_v_u16m2_u32m2(sumi_h2);
const vuint16m1_t sumi_h4_0 = __riscv_vnsrl_wx_u16m1(sumi_h2_i32, 0, vl / 2);
const vuint16m1_t sumi_h4_1 = __riscv_vnsrl_wx_u16m1(sumi_h2_i32, 16, vl / 2);
const vuint16m1_t sumi_h4 = __riscv_vadd_vv_u16m1(sumi_h4_0, sumi_h4_1, vl / 2);
const vuint32m1_t sumi_h4_i32 = __riscv_vreinterpret_v_u16m1_u32m1(sumi_h4);
const vint16mf2_t sumi_h8_0 = __riscv_vreinterpret_v_u16mf2_i16mf2(__riscv_vnsrl_wx_u16mf2(sumi_h4_i32, 0, vl / 4));
const vint16mf2_t sumi_h8_1 = __riscv_vreinterpret_v_u16mf2_i16mf2(__riscv_vnsrl_wx_u16mf2(sumi_h4_i32, 16, vl / 4));
const vint32m1_t sumi_h8 = __riscv_vwadd_vv_i32m1(sumi_h8_0, sumi_h8_1, vl / 4);
const vfloat32m1_t facc = __riscv_vfcvt_f_x_v_f32m1(sumi_h8, vl / 4);
const vfloat32m1_t tmp1 = __riscv_vfmul_vf_f32m1(facc, a_scales[1], vl / 4);
sumf1 = __riscv_vfmacc_vv_f32m1(sumf1, tmp1, b_scales_vec, vl / 4);
}
const int64_t A2 = *(const int64_t *)&a_ptr[l].qs[16];
const int64_t A6 = *(const int64_t *)&a_ptr[l].qs[48];
const int64_t Aa = *(const int64_t *)&a_ptr[l].qs[80];
const int64_t Ae = *(const int64_t *)&a_ptr[l].qs[112];
__asm__ __volatile__("" ::: "memory"); // prevent gcc from emitting fused vlse64, violating alignment
vint16m4_t sumi_l2;
{
const vint8m2_t lhs_0_8 =__riscv_vreinterpret_v_i64m2_i8m2(__riscv_vmv_v_x_i64m2(A2, vl / 4));
const vint8m2_t lhs_1_8 =__riscv_vreinterpret_v_i64m2_i8m2(__riscv_vmv_v_x_i64m2(A6, vl / 4));
const vint8m2_t lhs_2_8 =__riscv_vreinterpret_v_i64m2_i8m2(__riscv_vmv_v_x_i64m2(Aa, vl / 4));
const vint8m2_t lhs_3_8 =__riscv_vreinterpret_v_i64m2_i8m2(__riscv_vmv_v_x_i64m2(Ae, vl / 4));
const vint16m4_t sumi_lo_0 = __riscv_vwmul_vv_i16m4(rhs_vec_lo_0, lhs_0_8, vl * 2);
const vint16m4_t sumi_lo_1 = __riscv_vwmacc_vv_i16m4(sumi_lo_0, rhs_vec_lo_1, lhs_1_8, vl * 2);
const vint16m4_t sumi_hi_0 = __riscv_vwmacc_vv_i16m4(sumi_lo_1, rhs_vec_hi_0, lhs_2_8, vl * 2);
const vint16m4_t sumi_hi_m = __riscv_vwmacc_vv_i16m4(sumi_hi_0, rhs_vec_hi_1, lhs_3_8, vl * 2);
sumi_l2 = sumi_hi_m;
}
{
const vuint32m4_t sumi_i32 = __riscv_vreinterpret_v_i32m4_u32m4(__riscv_vreinterpret_v_i16m4_i32m4(sumi_l2));
const vuint16m2_t sumi_h2_0 = __riscv_vnsrl_wx_u16m2(sumi_i32, 0, vl);
const vuint16m2_t sumi_h2_1 = __riscv_vnsrl_wx_u16m2(sumi_i32, 16, vl);
const vuint16m2_t sumi_h2 = __riscv_vadd_vv_u16m2(sumi_h2_0, sumi_h2_1, vl);
const vuint32m2_t sumi_h2_i32 = __riscv_vreinterpret_v_u16m2_u32m2(sumi_h2);
const vuint16m1_t sumi_h4_0 = __riscv_vnsrl_wx_u16m1(sumi_h2_i32, 0, vl / 2);
const vuint16m1_t sumi_h4_1 = __riscv_vnsrl_wx_u16m1(sumi_h2_i32, 16, vl / 2);
const vuint16m1_t sumi_h4 = __riscv_vadd_vv_u16m1(sumi_h4_0, sumi_h4_1, vl / 2);
const vuint32m1_t sumi_h4_i32 = __riscv_vreinterpret_v_u16m1_u32m1(sumi_h4);
const vint16mf2_t sumi_h8_0 = __riscv_vreinterpret_v_u16mf2_i16mf2(__riscv_vnsrl_wx_u16mf2(sumi_h4_i32, 0, vl / 4));
const vint16mf2_t sumi_h8_1 = __riscv_vreinterpret_v_u16mf2_i16mf2(__riscv_vnsrl_wx_u16mf2(sumi_h4_i32, 16, vl / 4));
const vint32m1_t sumi_h8 = __riscv_vwadd_vv_i32m1(sumi_h8_0, sumi_h8_1, vl / 4);
const vfloat32m1_t facc = __riscv_vfcvt_f_x_v_f32m1(sumi_h8, vl / 4);
const vfloat32m1_t tmp1 = __riscv_vfmul_vf_f32m1(facc, a_scales[2], vl / 4);
sumf2 = __riscv_vfmacc_vv_f32m1(sumf2, tmp1, b_scales_vec, vl / 4);
}
const int64_t A3 = *(const int64_t *)&a_ptr[l].qs[24];
const int64_t A7 = *(const int64_t *)&a_ptr[l].qs[56];
const int64_t Ab = *(const int64_t *)&a_ptr[l].qs[88];
const int64_t Af = *(const int64_t *)&a_ptr[l].qs[120];
__asm__ __volatile__("" ::: "memory"); // prevent gcc from emitting fused vlse64, violating alignment
vint16m4_t sumi_l3;
{
const vint8m2_t lhs_0_8 =__riscv_vreinterpret_v_i64m2_i8m2(__riscv_vmv_v_x_i64m2(A3, vl / 4));
const vint8m2_t lhs_1_8 =__riscv_vreinterpret_v_i64m2_i8m2(__riscv_vmv_v_x_i64m2(A7, vl / 4));
const vint8m2_t lhs_2_8 =__riscv_vreinterpret_v_i64m2_i8m2(__riscv_vmv_v_x_i64m2(Ab, vl / 4));
const vint8m2_t lhs_3_8 =__riscv_vreinterpret_v_i64m2_i8m2(__riscv_vmv_v_x_i64m2(Af, vl / 4));
const vint16m4_t sumi_lo_0 = __riscv_vwmul_vv_i16m4(rhs_vec_lo_0, lhs_0_8, vl * 2);
const vint16m4_t sumi_lo_1 = __riscv_vwmacc_vv_i16m4(sumi_lo_0, rhs_vec_lo_1, lhs_1_8, vl * 2);
const vint16m4_t sumi_hi_0 = __riscv_vwmacc_vv_i16m4(sumi_lo_1, rhs_vec_hi_0, lhs_2_8, vl * 2);
const vint16m4_t sumi_hi_m = __riscv_vwmacc_vv_i16m4(sumi_hi_0, rhs_vec_hi_1, lhs_3_8, vl * 2);
sumi_l3 = sumi_hi_m;
}
{
const vuint32m4_t sumi_i32 = __riscv_vreinterpret_v_i32m4_u32m4(__riscv_vreinterpret_v_i16m4_i32m4(sumi_l3));
const vuint16m2_t sumi_h2_0 = __riscv_vnsrl_wx_u16m2(sumi_i32, 0, vl);
const vuint16m2_t sumi_h2_1 = __riscv_vnsrl_wx_u16m2(sumi_i32, 16, vl);
const vuint16m2_t sumi_h2 = __riscv_vadd_vv_u16m2(sumi_h2_0, sumi_h2_1, vl);
const vuint32m2_t sumi_h2_i32 = __riscv_vreinterpret_v_u16m2_u32m2(sumi_h2);
const vuint16m1_t sumi_h4_0 = __riscv_vnsrl_wx_u16m1(sumi_h2_i32, 0, vl / 2);
const vuint16m1_t sumi_h4_1 = __riscv_vnsrl_wx_u16m1(sumi_h2_i32, 16, vl / 2);
const vuint16m1_t sumi_h4 = __riscv_vadd_vv_u16m1(sumi_h4_0, sumi_h4_1, vl / 2);
const vuint32m1_t sumi_h4_i32 = __riscv_vreinterpret_v_u16m1_u32m1(sumi_h4);
const vint16mf2_t sumi_h8_0 = __riscv_vreinterpret_v_u16mf2_i16mf2(__riscv_vnsrl_wx_u16mf2(sumi_h4_i32, 0, vl / 4));
const vint16mf2_t sumi_h8_1 = __riscv_vreinterpret_v_u16mf2_i16mf2(__riscv_vnsrl_wx_u16mf2(sumi_h4_i32, 16, vl / 4));
const vint32m1_t sumi_h8 = __riscv_vwadd_vv_i32m1(sumi_h8_0, sumi_h8_1, vl / 4);
const vfloat32m1_t facc = __riscv_vfcvt_f_x_v_f32m1(sumi_h8, vl / 4);
const vfloat32m1_t tmp1 = __riscv_vfmul_vf_f32m1(facc, a_scales[3], vl / 4);
sumf3 = __riscv_vfmacc_vv_f32m1(sumf3, tmp1, b_scales_vec, vl / 4);
}
}
__riscv_vse32_v_f32m1(&s[(y * 4 + 0) * bs + x * ncols_interleaved], sumf0, vl / 4);
__riscv_vse32_v_f32m1(&s[(y * 4 + 1) * bs + x * ncols_interleaved], sumf1, vl / 4);
__riscv_vse32_v_f32m1(&s[(y * 4 + 2) * bs + x * ncols_interleaved], sumf2, vl / 4);
__riscv_vse32_v_f32m1(&s[(y * 4 + 3) * bs + x * ncols_interleaved], sumf3, vl / 4);
}
}
return;
}
#endif // #if ! ((defined(_MSC_VER)) && ! defined(__clang__)) && defined(__aarch64__)
float sumf[4][8];
int sumi;
for (int y = 0; y < nr / 4; y++) {
const block_q8_0x4 * a_ptr = (const block_q8_0x4 *) vy + (y * nb);
for (int x = 0; x < nc / ncols_interleaved; x++) {
const block_q4_0x8 * b_ptr = (const block_q4_0x8 *) vx + (x * nb);
for (int m = 0; m < 4; m++) {
for (int j = 0; j < ncols_interleaved; j++) sumf[m][j] = 0.0;
}
for (int l = 0; l < nb; l++) {
for (int k = 0; k < (qk / (2 * blocklen)); k++) {
for (int m = 0; m < 4; m++) {
for (int j = 0; j < ncols_interleaved; j++) {
sumi = 0;
for (int i = 0; i < blocklen; ++i) {
const int v0 = (int8_t) (b_ptr[l].qs[k * ncols_interleaved * blocklen + j * blocklen + i] << 4);
const int v1 = (int8_t) (b_ptr[l].qs[k * ncols_interleaved * blocklen + j * blocklen + i] & 0xF0);
sumi += ((v0 * a_ptr[l].qs[k * 4 * blocklen + m * blocklen + i]) +
(v1 * a_ptr[l].qs[k * 4 * blocklen + m * blocklen + i + qk / 2 * 4])) >> 4;
}
sumf[m][j] += sumi * GGML_FP16_TO_FP32(b_ptr[l].d[j]) * GGML_FP16_TO_FP32(a_ptr[l].d[m]);
}
}
}
}
for (int m = 0; m < 4; m++) {
for (int j = 0; j < ncols_interleaved; j++)
s[(y * 4 + m) * bs + x * ncols_interleaved + j] = sumf[m][j];
}
}
}
}

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@@ -1,7 +1,7 @@
#pragma once
#include "ggml.h"
#include "ggml-cpu-traits.h"
#include "traits.h"
#include "ggml-cpu-impl.h"
#include "ggml-impl.h"

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@@ -1,8 +0,0 @@
#pragma once
#include "ggml-cpu-traits.h"
#include "ggml.h"
// GGML internal header
ggml_backend_buffer_type_t ggml_backend_cpu_aarch64_buffer_type(void);

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@@ -506,3 +506,28 @@ void ggml_barrier(struct ggml_threadpool * tp);
#ifdef __cplusplus
}
#endif
#define GGML_DO_PRAGMA_(x) _Pragma (#x)
#define GGML_DO_PRAGMA(x) GGML_DO_PRAGMA_(x)
#if defined(GGML_CPU_GENERIC) || defined(__HIPCC__)
// Note for Apple targets:
// - clang: aliases are not supported on darwin
// - all native kernels need to be implemented in both x86 and arm files
// - on iOS, tvOS, and visionOS, if cmake cannot determine the target architecture, all `_generic` names are replaced by defines
# define GGML_WEAK_ALIAS(name, alias)
#elif defined(__GNUC__)
// GCC/Clang on *nix
# define GGML_WEAK_ALIAS(name, alias) GGML_DO_PRAGMA(weak name = alias) // NOLINT
#elif defined(_MSC_VER) && defined(_WIN64)
// MSVC
// Note: C name mangling varies across different calling conventions
// see https://learn.microsoft.com/en-us/cpp/build/reference/decorated-names?view=msvc-170
# define GGML_WEAK_ALIAS(name, alias) GGML_DO_PRAGMA(comment(linker, "/alternatename:" #name "=" #alias))
#elif defined(_MSC_VER) && defined(WIN32)
// ref: https://github.com/ggml-org/whisper.cpp/pull/3239#issuecomment-2958224591
# define GGML_WEAK_ALIAS(name, alias) GGML_DO_PRAGMA(comment(linker, "/alternatename:_" #name "=_" #alias))
#else
# error "Unsupported compiler for GGML_WEAK_ALIAS"
#endif
#define GGML_CPU_NATIVE_IMPL(name) GGML_WEAK_ALIAS(name, name ## _generic)

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@@ -1,63 +0,0 @@
#pragma once
#define GGML_COMMON_DECL_C
#include "ggml-common.h"
#include "ggml.h"
// GGML CPU internal header
#ifdef __cplusplus
extern "C" {
#endif
// Quantization
void quantize_row_q4_0(const float * GGML_RESTRICT x, void * GGML_RESTRICT y, int64_t k);
void quantize_row_q4_1(const float * GGML_RESTRICT x, void * GGML_RESTRICT y, int64_t k);
void quantize_row_q5_0(const float * GGML_RESTRICT x, void * GGML_RESTRICT y, int64_t k);
void quantize_row_q5_1(const float * GGML_RESTRICT x, void * GGML_RESTRICT y, int64_t k);
void quantize_row_q8_0(const float * GGML_RESTRICT x, void * GGML_RESTRICT y, int64_t k);
void quantize_row_q8_1(const float * GGML_RESTRICT x, void * GGML_RESTRICT y, int64_t k);
void quantize_row_q2_K(const float * GGML_RESTRICT x, void * GGML_RESTRICT y, int64_t k);
void quantize_row_q3_K(const float * GGML_RESTRICT x, void * GGML_RESTRICT y, int64_t k);
void quantize_row_q4_K(const float * GGML_RESTRICT x, void * GGML_RESTRICT y, int64_t k);
void quantize_row_q5_K(const float * GGML_RESTRICT x, void * GGML_RESTRICT y, int64_t k);
void quantize_row_q6_K(const float * GGML_RESTRICT x, void * GGML_RESTRICT y, int64_t k);
void quantize_row_q8_K(const float * GGML_RESTRICT x, void * GGML_RESTRICT y, int64_t k);
void quantize_row_tq1_0(const float * GGML_RESTRICT x, void * GGML_RESTRICT y, int64_t k);
void quantize_row_tq2_0(const float * GGML_RESTRICT x, void * GGML_RESTRICT y, int64_t k);
void quantize_row_iq4_nl (const float * GGML_RESTRICT x, void * GGML_RESTRICT y, int64_t k);
void quantize_row_iq4_xs (const float * GGML_RESTRICT x, void * GGML_RESTRICT y, int64_t k);
// Dot product
void ggml_vec_dot_q4_0_q8_0(int n, float * GGML_RESTRICT s, size_t bs, const void * GGML_RESTRICT vx, size_t bx, const void * GGML_RESTRICT vy, size_t by, int nrc);
void ggml_vec_dot_q4_1_q8_1(int n, float * GGML_RESTRICT s, size_t bs, const void * GGML_RESTRICT vx, size_t bx, const void * GGML_RESTRICT vy, size_t by, int nrc);
void ggml_vec_dot_q5_0_q8_0(int n, float * GGML_RESTRICT s, size_t bs, const void * GGML_RESTRICT vx, size_t bx, const void * GGML_RESTRICT vy, size_t by, int nrc);
void ggml_vec_dot_q5_1_q8_1(int n, float * GGML_RESTRICT s, size_t bs, const void * GGML_RESTRICT vx, size_t bx, const void * GGML_RESTRICT vy, size_t by, int nrc);
void ggml_vec_dot_q8_0_q8_0(int n, float * GGML_RESTRICT s, size_t bs, const void * GGML_RESTRICT vx, size_t bx, const void * GGML_RESTRICT vy, size_t by, int nrc);
void ggml_vec_dot_q2_K_q8_K(int n, float * GGML_RESTRICT s, size_t bs, const void * GGML_RESTRICT vx, size_t bx, const void * GGML_RESTRICT vy, size_t by, int nrc);
void ggml_vec_dot_q3_K_q8_K(int n, float * GGML_RESTRICT s, size_t bs, const void * GGML_RESTRICT vx, size_t bx, const void * GGML_RESTRICT vy, size_t by, int nrc);
void ggml_vec_dot_q4_K_q8_K(int n, float * GGML_RESTRICT s, size_t bs, const void * GGML_RESTRICT vx, size_t bx, const void * GGML_RESTRICT vy, size_t by, int nrc);
void ggml_vec_dot_q5_K_q8_K(int n, float * GGML_RESTRICT s, size_t bs, const void * GGML_RESTRICT vx, size_t bx, const void * GGML_RESTRICT vy, size_t by, int nrc);
void ggml_vec_dot_q6_K_q8_K(int n, float * GGML_RESTRICT s, size_t bs, const void * GGML_RESTRICT vx, size_t bx, const void * GGML_RESTRICT vy, size_t by, int nrc);
void ggml_vec_dot_tq1_0_q8_K(int n, float * GGML_RESTRICT s, size_t bs, const void * GGML_RESTRICT vx, size_t bx, const void * GGML_RESTRICT vy, size_t by, int nrc);
void ggml_vec_dot_tq2_0_q8_K(int n, float * GGML_RESTRICT s, size_t bs, const void * GGML_RESTRICT vx, size_t bx, const void * GGML_RESTRICT vy, size_t by, int nrc);
void ggml_vec_dot_iq2_xxs_q8_K(int n, float * GGML_RESTRICT s, size_t bs, const void * GGML_RESTRICT vx, size_t bx, const void * GGML_RESTRICT vy, size_t by, int nrc);
void ggml_vec_dot_iq2_xs_q8_K (int n, float * GGML_RESTRICT s, size_t bs, const void * GGML_RESTRICT vx, size_t bx, const void * GGML_RESTRICT vy, size_t by, int nrc);
void ggml_vec_dot_iq2_s_q8_K (int n, float * GGML_RESTRICT s, size_t bs, const void * GGML_RESTRICT vx, size_t bx, const void * GGML_RESTRICT vy, size_t by, int nrc);
void ggml_vec_dot_iq3_xxs_q8_K(int n, float * GGML_RESTRICT s, size_t bs, const void * GGML_RESTRICT vx, size_t bx, const void * GGML_RESTRICT vy, size_t by, int nrc);
void ggml_vec_dot_iq1_s_q8_K (int n, float * GGML_RESTRICT s, size_t bs, const void * GGML_RESTRICT vx, size_t bx, const void * GGML_RESTRICT vy, size_t by, int nrc);
void ggml_vec_dot_iq1_m_q8_K (int n, float * GGML_RESTRICT s, size_t bs, const void * GGML_RESTRICT vx, size_t bx, const void * GGML_RESTRICT vy, size_t by, int nrc);
void ggml_vec_dot_iq4_nl_q8_0 (int n, float * GGML_RESTRICT s, size_t bs, const void * GGML_RESTRICT vx, size_t bx, const void * GGML_RESTRICT vy, size_t by, int nrc);
void ggml_vec_dot_iq4_xs_q8_K (int n, float * GGML_RESTRICT s, size_t bs, const void * GGML_RESTRICT vx, size_t bx, const void * GGML_RESTRICT vy, size_t by, int nrc);
void ggml_vec_dot_iq3_s_q8_K (int n, float * GGML_RESTRICT s, size_t bs, const void * GGML_RESTRICT vx, size_t bx, const void * GGML_RESTRICT vy, size_t by, int nrc);
#ifdef __cplusplus
}
#endif

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@@ -3,11 +3,11 @@
#include "ggml-backend-impl.h"
#include "ggml-backend.h"
#include "ggml-cpu-traits.h"
#include "traits.h"
#include "ggml-cpu-impl.h"
#include "ggml-cpu.h"
#include "ggml-impl.h"
#include "ggml-cpu-quants.h"
#include "quants.h"
#include "ggml-threading.h"
#include "unary-ops.h"
#include "binary-ops.h"

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@@ -1,8 +1,8 @@
#include "ggml-backend.h"
#include "ggml-backend-impl.h"
#include "ggml-cpu.h"
#include "ggml-cpu-aarch64.h"
#include "ggml-cpu-traits.h"
#include "repack.h"
#include "traits.h"
#include "ggml-impl.h"
#include "amx/amx.h"
@@ -11,7 +11,7 @@
#include <vector>
#ifdef GGML_USE_CPU_HBM
# include "ggml-cpu-hbm.h"
# include "hbm.h"
#endif
#ifdef GGML_USE_CPU_KLEIDIAI
@@ -51,9 +51,9 @@ std::vector<ggml_backend_buffer_type_t>& ggml_backend_cpu_get_extra_buffers_type
}
#endif
#ifdef GGML_USE_CPU_AARCH64
if (ggml_backend_cpu_aarch64_buffer_type()) {
bufts.push_back(ggml_backend_cpu_aarch64_buffer_type());
#ifdef GGML_USE_CPU_REPACK
if (ggml_backend_cpu_repack_buffer_type()) {
bufts.push_back(ggml_backend_cpu_repack_buffer_type());
}
#endif
@@ -596,8 +596,8 @@ static ggml_backend_feature * ggml_backend_cpu_get_features(ggml_backend_reg_t r
#ifdef GGML_USE_CPU_KLEIDIAI
features.push_back({ "KLEIDIAI", "1" });
#endif
#ifdef GGML_USE_CPU_AARCH64
features.push_back({ "AARCH64_REPACK", "1" });
#ifdef GGML_USE_CPU_REPACK
features.push_back({ "REPACK", "1" });
#endif
features.push_back({ nullptr, nullptr });

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@@ -5,7 +5,7 @@
#include "ggml-cpu.h"
#include "ggml-impl.h"
#include "ggml-cpu-hbm.h"
#include "hbm.h"
// buffer type HBM

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@@ -26,7 +26,7 @@
#include "ggml-impl.h"
#include "ggml-backend-impl.h"
#include "ggml-threading.h"
#include "ggml-cpu-traits.h"
#include "traits.h"
#include "kernels.h"

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@@ -8132,8 +8132,8 @@ static void ggml_compute_forward_rwkv_wkv6_f32(
#define WKV_VECTOR_SIZE 4
#endif
int wkv_vector_size;
#ifdef WKV_VECTOR_SIZE
int wkv_vector_size;
#if defined(__ARM_FEATURE_SVE)
wkv_vector_size = svcntw();
#else
@@ -8348,8 +8348,8 @@ static void ggml_compute_forward_gla_f32(
#define GLA_VECTOR_SIZE 4
#endif
int gla_vector_size;
#ifdef GLA_VECTOR_SIZE
int gla_vector_size;
#if defined(__ARM_FEATURE_SVE)
gla_vector_size = svcntw();
#else

1179
ggml/src/ggml-cpu/quants.c Normal file

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116
ggml/src/ggml-cpu/quants.h Normal file
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@@ -0,0 +1,116 @@
#pragma once
#define GGML_COMMON_DECL_C
#include "ggml-common.h"
#include "ggml.h"
// GGML CPU internal header
#ifdef __cplusplus
extern "C" {
#endif
// Quantization
void quantize_row_q4_0(const float * GGML_RESTRICT x, void * GGML_RESTRICT y, int64_t k);
void quantize_row_q4_1(const float * GGML_RESTRICT x, void * GGML_RESTRICT y, int64_t k);
void quantize_row_q5_0(const float * GGML_RESTRICT x, void * GGML_RESTRICT y, int64_t k);
void quantize_row_q5_1(const float * GGML_RESTRICT x, void * GGML_RESTRICT y, int64_t k);
void quantize_row_q8_0(const float * GGML_RESTRICT x, void * GGML_RESTRICT y, int64_t k);
void quantize_row_q8_1(const float * GGML_RESTRICT x, void * GGML_RESTRICT y, int64_t k);
void quantize_row_q2_K(const float * GGML_RESTRICT x, void * GGML_RESTRICT y, int64_t k);
void quantize_row_q3_K(const float * GGML_RESTRICT x, void * GGML_RESTRICT y, int64_t k);
void quantize_row_q4_K(const float * GGML_RESTRICT x, void * GGML_RESTRICT y, int64_t k);
void quantize_row_q5_K(const float * GGML_RESTRICT x, void * GGML_RESTRICT y, int64_t k);
void quantize_row_q6_K(const float * GGML_RESTRICT x, void * GGML_RESTRICT y, int64_t k);
void quantize_row_q8_K(const float * GGML_RESTRICT x, void * GGML_RESTRICT y, int64_t k);
void quantize_row_tq1_0(const float * GGML_RESTRICT x, void * GGML_RESTRICT y, int64_t k);
void quantize_row_tq2_0(const float * GGML_RESTRICT x, void * GGML_RESTRICT y, int64_t k);
void quantize_row_iq4_nl (const float * GGML_RESTRICT x, void * GGML_RESTRICT y, int64_t k);
void quantize_row_iq4_xs (const float * GGML_RESTRICT x, void * GGML_RESTRICT y, int64_t k);
// Dot product
void ggml_vec_dot_q4_0_q8_0(int n, float * GGML_RESTRICT s, size_t bs, const void * GGML_RESTRICT vx, size_t bx, const void * GGML_RESTRICT vy, size_t by, int nrc);
void ggml_vec_dot_q4_1_q8_1(int n, float * GGML_RESTRICT s, size_t bs, const void * GGML_RESTRICT vx, size_t bx, const void * GGML_RESTRICT vy, size_t by, int nrc);
void ggml_vec_dot_q5_0_q8_0(int n, float * GGML_RESTRICT s, size_t bs, const void * GGML_RESTRICT vx, size_t bx, const void * GGML_RESTRICT vy, size_t by, int nrc);
void ggml_vec_dot_q5_1_q8_1(int n, float * GGML_RESTRICT s, size_t bs, const void * GGML_RESTRICT vx, size_t bx, const void * GGML_RESTRICT vy, size_t by, int nrc);
void ggml_vec_dot_q8_0_q8_0(int n, float * GGML_RESTRICT s, size_t bs, const void * GGML_RESTRICT vx, size_t bx, const void * GGML_RESTRICT vy, size_t by, int nrc);
void ggml_vec_dot_q2_K_q8_K(int n, float * GGML_RESTRICT s, size_t bs, const void * GGML_RESTRICT vx, size_t bx, const void * GGML_RESTRICT vy, size_t by, int nrc);
void ggml_vec_dot_q3_K_q8_K(int n, float * GGML_RESTRICT s, size_t bs, const void * GGML_RESTRICT vx, size_t bx, const void * GGML_RESTRICT vy, size_t by, int nrc);
void ggml_vec_dot_q4_K_q8_K(int n, float * GGML_RESTRICT s, size_t bs, const void * GGML_RESTRICT vx, size_t bx, const void * GGML_RESTRICT vy, size_t by, int nrc);
void ggml_vec_dot_q5_K_q8_K(int n, float * GGML_RESTRICT s, size_t bs, const void * GGML_RESTRICT vx, size_t bx, const void * GGML_RESTRICT vy, size_t by, int nrc);
void ggml_vec_dot_q6_K_q8_K(int n, float * GGML_RESTRICT s, size_t bs, const void * GGML_RESTRICT vx, size_t bx, const void * GGML_RESTRICT vy, size_t by, int nrc);
void ggml_vec_dot_tq1_0_q8_K(int n, float * GGML_RESTRICT s, size_t bs, const void * GGML_RESTRICT vx, size_t bx, const void * GGML_RESTRICT vy, size_t by, int nrc);
void ggml_vec_dot_tq2_0_q8_K(int n, float * GGML_RESTRICT s, size_t bs, const void * GGML_RESTRICT vx, size_t bx, const void * GGML_RESTRICT vy, size_t by, int nrc);
void ggml_vec_dot_iq2_xxs_q8_K(int n, float * GGML_RESTRICT s, size_t bs, const void * GGML_RESTRICT vx, size_t bx, const void * GGML_RESTRICT vy, size_t by, int nrc);
void ggml_vec_dot_iq2_xs_q8_K (int n, float * GGML_RESTRICT s, size_t bs, const void * GGML_RESTRICT vx, size_t bx, const void * GGML_RESTRICT vy, size_t by, int nrc);
void ggml_vec_dot_iq2_s_q8_K (int n, float * GGML_RESTRICT s, size_t bs, const void * GGML_RESTRICT vx, size_t bx, const void * GGML_RESTRICT vy, size_t by, int nrc);
void ggml_vec_dot_iq3_xxs_q8_K(int n, float * GGML_RESTRICT s, size_t bs, const void * GGML_RESTRICT vx, size_t bx, const void * GGML_RESTRICT vy, size_t by, int nrc);
void ggml_vec_dot_iq1_s_q8_K (int n, float * GGML_RESTRICT s, size_t bs, const void * GGML_RESTRICT vx, size_t bx, const void * GGML_RESTRICT vy, size_t by, int nrc);
void ggml_vec_dot_iq1_m_q8_K (int n, float * GGML_RESTRICT s, size_t bs, const void * GGML_RESTRICT vx, size_t bx, const void * GGML_RESTRICT vy, size_t by, int nrc);
void ggml_vec_dot_iq4_nl_q8_0 (int n, float * GGML_RESTRICT s, size_t bs, const void * GGML_RESTRICT vx, size_t bx, const void * GGML_RESTRICT vy, size_t by, int nrc);
void ggml_vec_dot_iq4_xs_q8_K (int n, float * GGML_RESTRICT s, size_t bs, const void * GGML_RESTRICT vx, size_t bx, const void * GGML_RESTRICT vy, size_t by, int nrc);
void ggml_vec_dot_iq3_s_q8_K (int n, float * GGML_RESTRICT s, size_t bs, const void * GGML_RESTRICT vx, size_t bx, const void * GGML_RESTRICT vy, size_t by, int nrc);
// Generic implementation
void quantize_row_q8_0_generic(const float * GGML_RESTRICT x, void * GGML_RESTRICT vy, int64_t k);
void quantize_row_q8_1_generic(const float * GGML_RESTRICT x, void * GGML_RESTRICT vy, int64_t k);
void quantize_row_q8_K_generic(const float * GGML_RESTRICT x, void * GGML_RESTRICT y, int64_t k);
void ggml_vec_dot_q4_0_q8_0_generic(int n, float * GGML_RESTRICT s, size_t bs, const void * GGML_RESTRICT vx, size_t bx, const void * GGML_RESTRICT vy, size_t by, int nrc);
void ggml_vec_dot_q4_1_q8_1_generic(int n, float * GGML_RESTRICT s, size_t bs, const void * GGML_RESTRICT vx, size_t bx, const void * GGML_RESTRICT vy, size_t by, int nrc);
void ggml_vec_dot_q5_0_q8_0_generic(int n, float * GGML_RESTRICT s, size_t bs, const void * GGML_RESTRICT vx, size_t bx, const void * GGML_RESTRICT vy, size_t by, int nrc);
void ggml_vec_dot_q5_1_q8_1_generic(int n, float * GGML_RESTRICT s, size_t bs, const void * GGML_RESTRICT vx, size_t bx, const void * GGML_RESTRICT vy, size_t by, int nrc);
void ggml_vec_dot_q8_0_q8_0_generic(int n, float * GGML_RESTRICT s, size_t bs, const void * GGML_RESTRICT vx, size_t bx, const void * GGML_RESTRICT vy, size_t by, int nrc);
void ggml_vec_dot_tq1_0_q8_K_generic(int n, float * GGML_RESTRICT s, size_t bs, const void * GGML_RESTRICT vx, size_t bx, const void * GGML_RESTRICT vy, size_t by, int nrc);
void ggml_vec_dot_tq2_0_q8_K_generic(int n, float * GGML_RESTRICT s, size_t bs, const void * GGML_RESTRICT vx, size_t bx, const void * GGML_RESTRICT vy, size_t by, int nrc);
void ggml_vec_dot_q2_K_q8_K_generic(int n, float * GGML_RESTRICT s, size_t bs, const void * GGML_RESTRICT vx, size_t bx, const void * GGML_RESTRICT vy, size_t by, int nrc);
void ggml_vec_dot_q3_K_q8_K_generic(int n, float * GGML_RESTRICT s, size_t bs, const void * GGML_RESTRICT vx, size_t bx, const void * GGML_RESTRICT vy, size_t by, int nrc);
void ggml_vec_dot_q4_K_q8_K_generic(int n, float * GGML_RESTRICT s, size_t bs, const void * GGML_RESTRICT vx, size_t bx, const void * GGML_RESTRICT vy, size_t by, int nrc);
void ggml_vec_dot_q5_K_q8_K_generic(int n, float * GGML_RESTRICT s, size_t bs, const void * GGML_RESTRICT vx, size_t bx, const void * GGML_RESTRICT vy, size_t by, int nrc);
void ggml_vec_dot_q6_K_q8_K_generic(int n, float * GGML_RESTRICT s, size_t bs, const void * GGML_RESTRICT vx, size_t bx, const void * GGML_RESTRICT vy, size_t by, int nrc);
void ggml_vec_dot_iq2_xxs_q8_K_generic(int n, float * GGML_RESTRICT s, size_t bs, const void * GGML_RESTRICT vx, size_t bx, const void * GGML_RESTRICT vy, size_t by, int nrc);
void ggml_vec_dot_iq2_xs_q8_K_generic(int n, float * GGML_RESTRICT s, size_t bs, const void * GGML_RESTRICT vx, size_t bx, const void * GGML_RESTRICT vy, size_t by, int nrc);
void ggml_vec_dot_iq2_s_q8_K_generic(int n, float * GGML_RESTRICT s, size_t bs, const void * GGML_RESTRICT vx, size_t bx, const void * GGML_RESTRICT vy, size_t by, int nrc);
void ggml_vec_dot_iq3_xxs_q8_K_generic(int n, float * GGML_RESTRICT s, size_t bs, const void * GGML_RESTRICT vx, size_t bx, const void * GGML_RESTRICT vy, size_t by, int nrc);
void ggml_vec_dot_iq3_s_q8_K_generic(int n, float * GGML_RESTRICT s, size_t bs, const void * GGML_RESTRICT vx, size_t bx, const void * GGML_RESTRICT vy, size_t by, int nrc);
void ggml_vec_dot_iq1_s_q8_K_generic(int n, float * GGML_RESTRICT s, size_t bs, const void * GGML_RESTRICT vx, size_t bx, const void * GGML_RESTRICT vy, size_t by, int nrc);
void ggml_vec_dot_iq1_m_q8_K_generic(int n, float * GGML_RESTRICT s, size_t bs, const void * GGML_RESTRICT vx, size_t bx, const void * GGML_RESTRICT vy, size_t by, int nrc);
void ggml_vec_dot_iq4_nl_q8_0_generic(int n, float * GGML_RESTRICT s, size_t bs, const void * GGML_RESTRICT vx, size_t bx, const void * GGML_RESTRICT vy, size_t by, int nrc);
void ggml_vec_dot_iq4_xs_q8_K_generic(int n, float * GGML_RESTRICT s, size_t bs, const void * GGML_RESTRICT vx, size_t bx, const void * GGML_RESTRICT vy, size_t by, int nrc);
#if defined(GGML_CPU_GENERIC)
#define quantize_row_q8_0_generic quantize_row_q8_0
#define quantize_row_q8_1_generic quantize_row_q8_1
#define quantize_row_q8_K_generic quantize_row_q8_K
#define ggml_vec_dot_q4_0_q8_0_generic ggml_vec_dot_q4_0_q8_0
#define ggml_vec_dot_q4_1_q8_1_generic ggml_vec_dot_q4_1_q8_1
#define ggml_vec_dot_q5_0_q8_0_generic ggml_vec_dot_q5_0_q8_0
#define ggml_vec_dot_q5_1_q8_1_generic ggml_vec_dot_q5_1_q8_1
#define ggml_vec_dot_q8_0_q8_0_generic ggml_vec_dot_q8_0_q8_0
#define ggml_vec_dot_tq1_0_q8_K_generic ggml_vec_dot_tq1_0_q8_K
#define ggml_vec_dot_tq2_0_q8_K_generic ggml_vec_dot_tq2_0_q8_K
#define ggml_vec_dot_q2_K_q8_K_generic ggml_vec_dot_q2_K_q8_K
#define ggml_vec_dot_q3_K_q8_K_generic ggml_vec_dot_q3_K_q8_K
#define ggml_vec_dot_q4_K_q8_K_generic ggml_vec_dot_q4_K_q8_K
#define ggml_vec_dot_q5_K_q8_K_generic ggml_vec_dot_q5_K_q8_K
#define ggml_vec_dot_q6_K_q8_K_generic ggml_vec_dot_q6_K_q8_K
#define ggml_vec_dot_iq2_xxs_q8_K_generic ggml_vec_dot_iq2_xxs_q8_K
#define ggml_vec_dot_iq2_xs_q8_K_generic ggml_vec_dot_iq2_xs_q8_K
#define ggml_vec_dot_iq2_s_q8_K_generic ggml_vec_dot_iq2_s_q8_K
#define ggml_vec_dot_iq3_xxs_q8_K_generic ggml_vec_dot_iq3_xxs_q8_K
#define ggml_vec_dot_iq3_s_q8_K_generic ggml_vec_dot_iq3_s_q8_K
#define ggml_vec_dot_iq1_s_q8_K_generic ggml_vec_dot_iq1_s_q8_K
#define ggml_vec_dot_iq1_m_q8_K_generic ggml_vec_dot_iq1_m_q8_K
#define ggml_vec_dot_iq4_nl_q8_0_generic ggml_vec_dot_iq4_nl_q8_0
#define ggml_vec_dot_iq4_xs_q8_K_generic ggml_vec_dot_iq4_xs_q8_K
#endif
#ifdef __cplusplus
}
#endif

1566
ggml/src/ggml-cpu/repack.cpp Normal file

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119
ggml/src/ggml-cpu/repack.h Normal file
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@@ -0,0 +1,119 @@
#pragma once
#define GGML_COMMON_DECL_CPP
#include "ggml-common.h"
#include "traits.h"
#include "ggml.h"
// GGML internal header
ggml_backend_buffer_type_t ggml_backend_cpu_repack_buffer_type(void);
template <int K> constexpr int QK_0() {
if constexpr (K == 4) {
return QK4_0;
}
if constexpr (K == 8) {
return QK8_0;
}
return -1;
}
template <int K, int N> struct block {
ggml_half d[N]; // deltas for N qK_0 blocks
int8_t qs[(QK_0<K>() * N * K) / 8]; // quants for N qK_0 blocks
};
// control size
static_assert(sizeof(block<4, 4>) == 4 * sizeof(ggml_half) + QK8_0 * 2, "wrong block<4,4> size/padding");
static_assert(sizeof(block<4, 8>) == 8 * sizeof(ggml_half) + QK8_0 * 4, "wrong block<4,8> size/padding");
static_assert(sizeof(block<8, 4>) == 4 * sizeof(ggml_half) + QK8_0 * 4, "wrong block<8,4> size/padding");
static_assert(sizeof(block<8, 8>) == 8 * sizeof(ggml_half) + QK8_0 * 8, "wrong block<8,8> size/padding");
using block_q4_0x4 = block<4, 4>;
using block_q4_0x8 = block<4, 8>;
using block_q8_0x4 = block<8, 4>;
using block_q8_0x8 = block<8, 8>;
struct block_q4_Kx8 {
ggml_half d[8]; // super-block scale for quantized scales
ggml_half dmin[8]; // super-block scale for quantized mins
uint8_t scales[96]; // scales and mins, quantized with 6 bits
uint8_t qs[1024]; // 4--bit quants
};
static_assert(sizeof(block_q4_Kx8) == sizeof(ggml_half) * 16 + K_SCALE_SIZE * 8 + QK_K * 4, "wrong q4_K block size/padding");
struct block_q8_Kx4 {
float d[4]; // delta
int8_t qs[QK_K * 4]; // quants
int16_t bsums[QK_K / 4]; // sum of quants in groups of 16
};
static_assert(sizeof(block_q8_Kx4) == sizeof(float) * 4 + QK_K * 4 + (QK_K / 4) * sizeof(int16_t), "wrong q8_K block size/padding");
struct block_iq4_nlx4 {
ggml_half d[4]; // deltas for 4 iq4_nl blocks
uint8_t qs[QK4_NL * 2]; // nibbles / quants for 4 iq4_nl blocks
};
static_assert(sizeof(block_iq4_nlx4) == 4 * sizeof(ggml_half) + QK4_NL * 2, "wrong iq4_nlx4 block size/padding");
#if defined(__cplusplus)
extern "C" {
#endif
// Workaround for clang:
// clang++ complains: ``error: call to 'ggml_gemm_q4_0_4x4_q8_0' is ambiguous''
// repro: https://godbolt.org/z/oKdeWKonM (ICE), https://godbolt.org/z/1szq6P36v (ambiguous call)
#if defined(GGML_CPU_CLANG_WORKAROUND) || !(defined(__GNUC__) && defined(__clang__)) || defined(__HIPCC__)
void ggml_quantize_mat_q8_0_4x4(const float * GGML_RESTRICT x, void * GGML_RESTRICT vy, int64_t k);
void ggml_quantize_mat_q8_0_4x8(const float * GGML_RESTRICT x, void * GGML_RESTRICT vy, int64_t k);
void ggml_quantize_mat_q8_K_4x8(const float * GGML_RESTRICT x, void * GGML_RESTRICT vy, int64_t k);
void ggml_gemv_q4_0_4x4_q8_0(int n, float * GGML_RESTRICT s, size_t bs, const void * GGML_RESTRICT vx, const void * GGML_RESTRICT vy, int nr, int nc);
void ggml_gemv_q4_0_4x8_q8_0(int n, float * GGML_RESTRICT s, size_t bs, const void * GGML_RESTRICT vx, const void * GGML_RESTRICT vy, int nr, int nc);
void ggml_gemv_q4_0_8x8_q8_0(int n, float * GGML_RESTRICT s, size_t bs, const void * GGML_RESTRICT vx, const void * GGML_RESTRICT vy, int nr, int nc);
void ggml_gemv_q4_K_8x8_q8_K(int n, float * GGML_RESTRICT s, size_t bs, const void * GGML_RESTRICT vx, const void * GGML_RESTRICT vy, int nr, int nc);
void ggml_gemv_iq4_nl_4x4_q8_0(int n, float * GGML_RESTRICT s, size_t bs, const void * GGML_RESTRICT vx, const void * GGML_RESTRICT vy, int nr, int nc);
void ggml_gemm_q4_0_4x4_q8_0(int n, float * GGML_RESTRICT s, size_t bs, const void * GGML_RESTRICT vx, const void * GGML_RESTRICT vy, int nr, int nc);
void ggml_gemm_q4_0_4x8_q8_0(int n, float * GGML_RESTRICT s, size_t bs, const void * GGML_RESTRICT vx, const void * GGML_RESTRICT vy, int nr, int nc);
void ggml_gemm_q4_0_8x8_q8_0(int n, float * GGML_RESTRICT s, size_t bs, const void * GGML_RESTRICT vx, const void * GGML_RESTRICT vy, int nr, int nc);
void ggml_gemm_q4_K_8x8_q8_K(int n, float * GGML_RESTRICT s, size_t bs, const void * GGML_RESTRICT vx, const void * GGML_RESTRICT vy, int nr, int nc);
void ggml_gemm_iq4_nl_4x4_q8_0(int n, float * GGML_RESTRICT s, size_t bs, const void * GGML_RESTRICT vx, const void * GGML_RESTRICT vy, int nr, int nc);
#endif // !defined(__clang__)
// Native implementations
void ggml_quantize_mat_q8_0_4x4_generic(const float * GGML_RESTRICT x, void * GGML_RESTRICT vy, int64_t k);
void ggml_quantize_mat_q8_0_4x8_generic(const float * GGML_RESTRICT x, void * GGML_RESTRICT vy, int64_t k);
void ggml_quantize_mat_q8_K_4x8_generic(const float * GGML_RESTRICT x, void * GGML_RESTRICT vy, int64_t k);
void ggml_gemv_q4_0_4x4_q8_0_generic(int n, float * GGML_RESTRICT s, size_t bs, const void * GGML_RESTRICT vx, const void * GGML_RESTRICT vy, int nr, int nc);
void ggml_gemv_q4_0_4x8_q8_0_generic(int n, float * GGML_RESTRICT s, size_t bs, const void * GGML_RESTRICT vx, const void * GGML_RESTRICT vy, int nr, int nc);
void ggml_gemv_q4_0_8x8_q8_0_generic(int n, float * GGML_RESTRICT s, size_t bs, const void * GGML_RESTRICT vx, const void * GGML_RESTRICT vy, int nr, int nc);
void ggml_gemv_q4_K_8x8_q8_K_generic(int n, float * GGML_RESTRICT s, size_t bs, const void * GGML_RESTRICT vx, const void * GGML_RESTRICT vy, int nr, int nc);
void ggml_gemv_iq4_nl_4x4_q8_0_generic(int n, float * GGML_RESTRICT s, size_t bs, const void * GGML_RESTRICT vx, const void * GGML_RESTRICT vy, int nr, int nc);
void ggml_gemm_q4_0_4x4_q8_0_generic(int n, float * GGML_RESTRICT s, size_t bs, const void * GGML_RESTRICT vx, const void * GGML_RESTRICT vy, int nr, int nc);
void ggml_gemm_q4_0_4x8_q8_0_generic(int n, float * GGML_RESTRICT s, size_t bs, const void * GGML_RESTRICT vx, const void * GGML_RESTRICT vy, int nr, int nc);
void ggml_gemm_q4_0_8x8_q8_0_generic(int n, float * GGML_RESTRICT s, size_t bs, const void * GGML_RESTRICT vx, const void * GGML_RESTRICT vy, int nr, int nc);
void ggml_gemm_q4_K_8x8_q8_K_generic(int n, float * GGML_RESTRICT s, size_t bs, const void * GGML_RESTRICT vx, const void * GGML_RESTRICT vy, int nr, int nc);
void ggml_gemm_iq4_nl_4x4_q8_0_generic(int n, float * GGML_RESTRICT s, size_t bs, const void * GGML_RESTRICT vx, const void * GGML_RESTRICT vy, int nr, int nc);
#if defined(GGML_CPU_GENERIC)
#define ggml_quantize_mat_q8_0_4x4_generic ggml_quantize_mat_q8_0_4x4
#define ggml_quantize_mat_q8_0_4x8_generic ggml_quantize_mat_q8_0_4x8
#define ggml_quantize_mat_q8_K_4x8_generic ggml_quantize_mat_q8_K_4x8
#define ggml_gemv_q4_0_4x4_q8_0_generic ggml_gemv_q4_0_4x4_q8_0
#define ggml_gemv_q4_0_4x8_q8_0_generic ggml_gemv_q4_0_4x8_q8_0
#define ggml_gemv_q4_0_8x8_q8_0_generic ggml_gemv_q4_0_8x8_q8_0
#define ggml_gemv_q4_K_8x8_q8_K_generic ggml_gemv_q4_K_8x8_q8_K
#define ggml_gemv_iq4_nl_4x4_q8_0_generic ggml_gemv_iq4_nl_4x4_q8_0
#define ggml_gemm_q4_0_4x4_q8_0_generic ggml_gemm_q4_0_4x4_q8_0
#define ggml_gemm_q4_0_4x8_q8_0_generic ggml_gemm_q4_0_4x8_q8_0
#define ggml_gemm_q4_0_8x8_q8_0_generic ggml_gemm_q4_0_8x8_q8_0
#define ggml_gemm_q4_K_8x8_q8_K_generic ggml_gemm_q4_K_8x8_q8_K
#define ggml_gemm_iq4_nl_4x4_q8_0_generic ggml_gemm_iq4_nl_4x4_q8_0
#endif
#if defined(__cplusplus)
} // extern "C"
#endif

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@@ -1,4 +1,4 @@
#include "ggml-cpu-traits.h"
#include "traits.h"
#include "ggml-backend-impl.h"
#include "ggml-backend.h"

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@@ -466,9 +466,6 @@ static __device__ __forceinline__ int ggml_cuda_dp4a(const int a, const int b, i
#endif // defined(GGML_USE_HIP) && defined(__HIP_PLATFORM_AMD__)
}
// TODO: move to ggml-common.h
static constexpr __device__ int8_t kvalues_iq4nl[16] = {-127, -104, -83, -65, -49, -35, -22, -10, 1, 13, 25, 38, 53, 69, 89, 113};
typedef void (*dequantize_kernel_t)(const void * vx, const int64_t ib, const int iqs, dfloat2 & v);
static __device__ __forceinline__ float get_alibi_slope(

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@@ -652,9 +652,12 @@ static __device__ __forceinline__ void flash_attn_ext_f16_iter(
float KQ_max_scale[cols_per_thread];
#pragma unroll
for (int col = 0; col < cols_per_thread; ++col) {
KQ_max_scale[col] = expf(KQ_max[col] - KQ_max_new[col]);
const float KQ_max_diff = KQ_max[col] - KQ_max_new[col];
KQ_max_scale[col] = expf(KQ_max_diff);
KQ_max[col] = KQ_max_new[col];
*((uint32_t *) &KQ_max_scale[col]) *= KQ_max_diff >= SOFTMAX_FTZ_THRESHOLD;
// Scale previous KQ_rowsum to account for a potential increase in KQ_max:
KQ_rowsum[col] = KQ_max_scale[col]*KQ_rowsum[col] + KQ_rowsum_add[col];
}

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@@ -615,9 +615,8 @@ static void ggml_backend_cuda_buffer_clear(ggml_backend_buffer_t buffer, uint8_t
ggml_backend_cuda_buffer_context * ctx = (ggml_backend_cuda_buffer_context *)buffer->context;
ggml_cuda_set_device(ctx->device);
CUDA_CHECK(cudaDeviceSynchronize());
CUDA_CHECK(cudaMemset(ctx->dev_ptr, value, buffer->size));
CUDA_CHECK(cudaDeviceSynchronize());
CUDA_CHECK(cudaMemsetAsync(ctx->dev_ptr, value, buffer->size, cudaStreamPerThread));
CUDA_CHECK(cudaStreamSynchronize(cudaStreamPerThread));
}
static const ggml_backend_buffer_i ggml_backend_cuda_buffer_interface = {
@@ -1144,7 +1143,6 @@ typedef void (*ggml_cuda_op_mul_mat_t)(
static cudaError_t ggml_cuda_cpy_tensor_2d(
void * dst, const struct ggml_tensor * src, int64_t i3, int64_t i2, int64_t i1_low, int64_t i1_high, cudaStream_t stream) {
GGML_ASSERT(ggml_backend_buffer_is_cuda(src->buffer));
const char * src_ptr = (const char *) src->data;
char * dst_ptr = (char *) dst;
@@ -1427,8 +1425,6 @@ static void ggml_cuda_op_mul_mat(
const int64_t nb2 = dst->nb[2];
const int64_t nb3 = dst->nb[3];
GGML_ASSERT(ggml_backend_buffer_is_cuda(dst->buffer));
GGML_ASSERT(ggml_backend_buffer_is_cuda(src1->buffer));
ggml_backend_cuda_buffer_context * src1_ctx = (ggml_backend_cuda_buffer_context *) src1->buffer->context;
ggml_backend_cuda_buffer_context * dst_ctx = (ggml_backend_cuda_buffer_context *) dst->buffer->context;
@@ -1750,7 +1746,7 @@ static void ggml_cuda_mul_mat_batched_cublas(ggml_backend_cuda_context & ctx, co
GGML_ASSERT(!ggml_is_transposed(src0));
GGML_ASSERT(!ggml_is_transposed(src1));
GGML_ASSERT(ggml_backend_buffer_is_cuda(src0->buffer));
GGML_ASSERT(!ggml_backend_buft_is_cuda_split(src0->buffer->buft));
GGML_ASSERT(src0->type == GGML_TYPE_F16);
// Byte offsets and tensor dimensions are currently used in an inconsistent way for dst.

View File

@@ -3333,8 +3333,6 @@ kernel void kernel_flash_attn_ext(
threadgroup q_t * sq = (threadgroup q_t *) (shmem_f16 + 0*DK); // holds the query data
threadgroup q4_t * sq4 = (threadgroup q4_t *) (shmem_f16 + 0*DK); // same as above but in q4_t
threadgroup o_t * so = (threadgroup o_t *) (shmem_f16 + 0*DK); // reuse query data for accumulation
threadgroup o4_t * so4 = (threadgroup o4_t *) (shmem_f16 + 0*DK); // same as above but in o4_t
threadgroup s_t * ss = (threadgroup s_t *) (shmem_f16 + 2*sgitg*SH + 2*Q*DK); // scratch buffer for attention, mask and diagonal matrix
threadgroup k_t * sk = (threadgroup k_t *) (shmem_f16 + sgitg*(4*16*KV) + Q*T); // scratch buffer to load K in shared memory
@@ -3548,20 +3546,20 @@ kernel void kernel_flash_attn_ext(
// O = diag(ms)*O
{
s8x8_t mm;
simdgroup_load(mm, ss + 2*C, TS, 0, false);
s8x8_t ms;
simdgroup_load(ms, ss + 2*C, TS, 0, false);
#pragma unroll(DV8)
for (short i = 0; i < DV8; ++i) {
simdgroup_multiply(lo[i], mm, lo[i]);
simdgroup_multiply(lo[i], ms, lo[i]);
}
}
// O = O + (Q*K^T)*V
{
for (short cc = 0; cc < C/8; ++cc) {
s8x8_t ms;
simdgroup_load(ms, ss + 8*cc, TS, 0, false);
s8x8_t vs;
simdgroup_load(vs, ss + 8*cc, TS, 0, false);
if (is_same<vd4x4_t, v4x4_t>::value) {
// we can read directly from global memory
@@ -3572,7 +3570,7 @@ kernel void kernel_flash_attn_ext(
v8x8_t mv;
simdgroup_load(mv, pv + i*8, args.nb21/sizeof(v_t), 0, false); // TODO: use ne20
simdgroup_multiply_accumulate(lo[i], ms, mv, lo[i]);
simdgroup_multiply_accumulate(lo[i], vs, mv, lo[i]);
}
} else {
for (short ii = 0; ii < DV16; ii += 4) {
@@ -3593,10 +3591,10 @@ kernel void kernel_flash_attn_ext(
v8x8_t mv;
simdgroup_load(mv, sv + 16*k + 0*8, 4*16, 0, false);
simdgroup_multiply_accumulate(lo[2*(ii + k) + 0], ms, mv, lo[2*(ii + k) + 0]);
simdgroup_multiply_accumulate(lo[2*(ii + k) + 0], vs, mv, lo[2*(ii + k) + 0]);
simdgroup_load(mv, sv + 16*k + 1*8, 4*16, 0, false);
simdgroup_multiply_accumulate(lo[2*(ii + k) + 1], ms, mv, lo[2*(ii + k) + 1]);
simdgroup_multiply_accumulate(lo[2*(ii + k) + 1], vs, mv, lo[2*(ii + k) + 1]);
}
} else {
if (ii + tx < DV16) {
@@ -3611,10 +3609,10 @@ kernel void kernel_flash_attn_ext(
v8x8_t mv;
simdgroup_load(mv, sv + 16*k + 0*8, 4*16, 0, false);
simdgroup_multiply_accumulate(lo[2*(ii + k) + 0], ms, mv, lo[2*(ii + k) + 0]);
simdgroup_multiply_accumulate(lo[2*(ii + k) + 0], vs, mv, lo[2*(ii + k) + 0]);
simdgroup_load(mv, sv + 16*k + 1*8, 4*16, 0, false);
simdgroup_multiply_accumulate(lo[2*(ii + k) + 1], ms, mv, lo[2*(ii + k) + 1]);
simdgroup_multiply_accumulate(lo[2*(ii + k) + 1], vs, mv, lo[2*(ii + k) + 1]);
}
}
}
@@ -3624,83 +3622,80 @@ kernel void kernel_flash_attn_ext(
}
// these are needed for reducing the results from the simdgroups (reuse the ss buffer)
for (short j = 0; j < Q; ++j) {
if (tiisg == 0) {
ss[j*TS + 0] = S[j];
ss[j*TS + 1] = M[j];
}
for (short j = tiisg; j < Q; j += NW) {
ss[j*TS + 0] = S[j];
ss[j*TS + 1] = M[j];
}
}
threadgroup_barrier(mem_flags::mem_threadgroup);
threadgroup float * so = (threadgroup float *) (shmem_f16 + 0*DK); // reuse query data for accumulation
threadgroup float4 * so4 = (threadgroup float4 *) (shmem_f16 + 0*DK);
// store result to shared memory in F32
if (sgitg == 0) {
for (short i = 0; i < DV8; ++i) {
//simdgroup_store(lo[i], so + i*8, DV, 0, false);
simdgroup_float8x8 t(1.0f);
simdgroup_multiply(t, lo[i], t);
simdgroup_store(t, so + i*8, DV, 0, false);
}
}
threadgroup_barrier(mem_flags::mem_threadgroup);
// reduce the warps sequentially
for (ushort sg = 1; sg < nsg; ++sg) {
threadgroup_barrier(mem_flags::mem_threadgroup);
// each simdgroup stores its output to shared memory, reusing sq
if (sgitg == sg) {
for (short i = 0; i < DV8; ++i) {
simdgroup_store(lo[i], so + i*8, DV, 0, false);
}
}
for (short j = tiisg; j < Q; j += NW) {
const float S0 = ss[j*TS - 1*SH + 0];
const float S1 = ss[j*TS + 0];
threadgroup_barrier(mem_flags::mem_threadgroup);
// the first simdgroup accumulates the results from the other simdgroups
if (sgitg == 0) {
for (short j = 0; j < Q; ++j) {
const float S0 = ss[j*TS + 0];
const float S1 = ss[j*TS + sg*SH + 0];
const float M0 = ss[j*TS + 1];
const float M1 = ss[j*TS + sg*SH + 1];
const float M0 = ss[j*TS - 1*SH + 1];
const float M1 = ss[j*TS + 1];
const float M = max(M0, M1);
const float ms0 = exp(M0 - M);
const float ms1 = exp(M1 - M);
float ms0 = exp(M0 - M);
float ms1 = exp(M1 - M);
const float S = S0*ms0 + S1*ms1;
if (tiisg == 0) {
ss[j*TS + 0] = S;
ss[j*TS + 1] = M;
ss[j*TS + 0] = S;
ss[j*TS + 1] = M;
ss[j*TS + 2*C + j ] = ms0;
ss[j*TS + 2*C + j + sg*SH] = ms1;
}
ss[j*TS + 2*C + j - 1*SH] = ms0;
ss[j*TS + 2*C + j ] = ms1;
}
//simdgroup_barrier(mem_flags::mem_threadgroup);
// O_0 = diag(ms0)*O_0 + diag(ms1)*O_1
{
s8x8_t ms0;
s8x8_t ms1;
simdgroup_load(ms0, ss + 2*C, TS, 0, false);
simdgroup_load(ms1, ss + 2*C + sg*SH, TS, 0, false);
simdgroup_load(ms0, ss + 2*C - 1*SH, TS, 0, false);
simdgroup_load(ms1, ss + 2*C, TS, 0, false);
#pragma unroll(DV8)
for (short i = 0; i < DV8; ++i) {
o8x8_t t;
simdgroup_float8x8 t;
simdgroup_load (t, so + i*8, DV, 0, false);
simdgroup_multiply(t, ms1, t);
simdgroup_multiply(t, ms0, t);
simdgroup_multiply_accumulate(lo[i], ms0, lo[i], t);
simdgroup_multiply_accumulate(t, ms1, lo[i], t);
simdgroup_store(t, so + i*8, DV, 0, false);
}
}
}
threadgroup_barrier(mem_flags::mem_threadgroup);
}
// store result to shared memory (reuse sq)
if (sgitg == 0) {
for (short i = 0; i < DV8; ++i) {
simdgroup_store(lo[i], so + i*8, DV, 0, false);
}
}
threadgroup_barrier(mem_flags::mem_threadgroup);
threadgroup s_t * sf = (threadgroup s_t *) (shmem_f16 + 2*Q*DK);
threadgroup s_t * sf = (threadgroup s_t *) (shmem_f16 + 2*(nsg-1)*SH + 2*Q*DK);
// final rescale with 1/S and store to global memory
for (short j = sgitg; j < Q && iq1 + j < args.ne01; j += nsg) {
@@ -3723,8 +3718,8 @@ kernel void kernel_flash_attn_ext(
half, half4x4, simdgroup_half8x8, \
float, simdgroup_float8x8, \
float, simdgroup_float8x8, \
float, float4, simdgroup_float8x8
//half, half4, simdgroup_half8x8
half, half4, simdgroup_half8x8
//float, float4, simdgroup_float8x8
#define FA_TYPES_BF \
bfloat, bfloat4, simdgroup_bfloat8x8, \
@@ -3732,8 +3727,8 @@ kernel void kernel_flash_attn_ext(
bfloat, bfloat4x4, simdgroup_bfloat8x8, \
float, simdgroup_float8x8, \
float, simdgroup_float8x8, \
float, float4, simdgroup_float8x8
//half, half4, simdgroup_half8x8
half, half4, simdgroup_half8x8
//float, float4, simdgroup_float8x8
typedef decltype(kernel_flash_attn_ext<FA_TYPES, half4x4, 1, dequantize_f16, half4x4, 1, dequantize_f16, 64, 64>) flash_attn_ext_t;

View File

@@ -80,6 +80,7 @@ set(GGML_OPENCL_KERNELS
mul_mv_q4_0_f32_1d_8x_flat
mul_mv_q4_0_f32_1d_16x_flat
mul_mv_q6_k
mul_mv_id_q4_0_f32_8x_flat
mul
norm
relu
@@ -95,6 +96,12 @@ set(GGML_OPENCL_KERNELS
sub
sum_rows
transpose
concat
tsembd
upscale
tanh
pad
repeat
)
foreach (K ${GGML_OPENCL_KERNELS})

View File

@@ -315,6 +315,13 @@ struct ggml_backend_opencl_context {
cl_program program_softmax_4_f16;
cl_program program_argsort_f32_i32;
cl_program program_sum_rows_f32;
cl_program program_repeat;
cl_program program_pad;
cl_program program_tanh;
cl_program program_upscale;
cl_program program_concat;
cl_program program_tsembd;
cl_program program_mul_mv_id_q4_0_f32_8x_flat;
cl_kernel kernel_add, kernel_add_row;
cl_kernel kernel_mul, kernel_mul_row;
@@ -351,6 +358,16 @@ struct ggml_backend_opencl_context {
cl_kernel kernel_im2col_f32, kernel_im2col_f16;
cl_kernel kernel_argsort_f32_i32;
cl_kernel kernel_sum_rows_f32;
cl_kernel kernel_repeat;
cl_kernel kernel_pad;
cl_kernel kernel_tanh_f32_nd;
cl_kernel kernel_tanh_f16_nd;
cl_kernel kernel_upscale;
cl_kernel kernel_upscale_bilinear;
cl_kernel kernel_concat_f32_contiguous;
cl_kernel kernel_concat_f32_non_contiguous;
cl_kernel kernel_timestep_embedding;
cl_kernel kernel_mul_mv_id_q4_0_f32_8x_flat;
#ifdef GGML_OPENCL_USE_ADRENO_KERNELS
// Transpose kernels
@@ -1097,6 +1114,166 @@ static void load_cl_kernels(ggml_backend_opencl_context *backend_ctx, ggml_cl_ve
GGML_LOG_CONT(".");
}
// repeat
{
#ifdef GGML_OPENCL_EMBED_KERNELS
const std::string kernel_src {
#include "repeat.cl.h"
};
#else
const std::string kernel_src = read_file("repeat.cl");
#endif
if (!kernel_src.empty()) {
backend_ctx->program_repeat =
build_program_from_source(backend_ctx->context, backend_ctx->device, kernel_src.c_str(), compile_opts);
CL_CHECK((backend_ctx->kernel_repeat = clCreateKernel(backend_ctx->program_repeat, "kernel_repeat", &err), err));
GGML_LOG_CONT(".");
} else {
GGML_LOG_WARN("ggml_opencl: repeat kernel source not found or empty. Repeat operations will not be available.\n");
backend_ctx->program_repeat = nullptr;
backend_ctx->kernel_repeat = nullptr;
}
}
// pad
{
#ifdef GGML_OPENCL_EMBED_KERNELS
const std::string kernel_src {
#include "pad.cl.h"
};
#else
const std::string kernel_src = read_file("pad.cl");
#endif
if (!kernel_src.empty()) {
backend_ctx->program_pad =
build_program_from_source(backend_ctx->context, backend_ctx->device, kernel_src.c_str(), compile_opts);
CL_CHECK((backend_ctx->kernel_pad = clCreateKernel(backend_ctx->program_pad, "kernel_pad", &err), err));
GGML_LOG_CONT(".");
} else {
GGML_LOG_WARN("ggml_opencl: pad kernel source not found or empty. Pad operations will not be available.\n");
backend_ctx->program_pad = nullptr;
backend_ctx->kernel_pad = nullptr;
}
}
// tanh
{
#ifdef GGML_OPENCL_EMBED_KERNELS
const std::string kernel_src {
#include "tanh.cl.h"
};
#else
const std::string kernel_src = read_file("tanh.cl");
#endif
if (!kernel_src.empty()) {
backend_ctx->program_tanh =
build_program_from_source(backend_ctx->context, backend_ctx->device, kernel_src.c_str(), compile_opts);
CL_CHECK((backend_ctx->kernel_tanh_f32_nd = clCreateKernel(backend_ctx->program_tanh, "kernel_tanh_f32_nd", &err), err));
CL_CHECK((backend_ctx->kernel_tanh_f16_nd = clCreateKernel(backend_ctx->program_tanh, "kernel_tanh_f16_nd", &err), err));
GGML_LOG_CONT(".");
} else {
GGML_LOG_WARN("ggml_opencl: tanh kernel source not found or empty. Tanh operation will not be available.\n");
backend_ctx->program_tanh = nullptr;
backend_ctx->kernel_tanh_f32_nd = nullptr;
backend_ctx->kernel_tanh_f16_nd = nullptr;
}
}
// upscale
{
#ifdef GGML_OPENCL_EMBED_KERNELS
const std::string kernel_src {
#include "upscale.cl.h"
};
#else
const std::string kernel_src = read_file("upscale.cl");
#endif
if (!kernel_src.empty()) {
backend_ctx->program_upscale =
build_program_from_source(backend_ctx->context, backend_ctx->device, kernel_src.c_str(), compile_opts);
CL_CHECK((backend_ctx->kernel_upscale = clCreateKernel(backend_ctx->program_upscale, "kernel_upscale", &err), err));
if (backend_ctx->program_upscale) {
cl_int err_bilinear;
backend_ctx->kernel_upscale_bilinear = clCreateKernel(backend_ctx->program_upscale, "kernel_upscale_bilinear", &err_bilinear);
if (err_bilinear != CL_SUCCESS) {
GGML_LOG_WARN("ggml_opencl: kernel_upscale_bilinear not found in upscale.cl. Bilinear upscale will not be available. Error: %d\n", err_bilinear);
backend_ctx->kernel_upscale_bilinear = nullptr;
}
} else {
backend_ctx->kernel_upscale_bilinear = nullptr;
}
GGML_LOG_CONT(".");
} else {
GGML_LOG_WARN("ggml_opencl: upscale kernel source not found or empty. Upscale operations will not be available.\n");
backend_ctx->program_upscale = nullptr;
backend_ctx->kernel_upscale = nullptr;
backend_ctx->kernel_upscale_bilinear = nullptr;
}
}
// concat
{
#ifdef GGML_OPENCL_EMBED_KERNELS
const std::string kernel_src {
#include "concat.cl.h"
};
#else
const std::string kernel_src = read_file("concat.cl");
#endif
if (!kernel_src.empty()) {
backend_ctx->program_concat =
build_program_from_source(backend_ctx->context, backend_ctx->device, kernel_src.c_str(), compile_opts);
CL_CHECK((backend_ctx->kernel_concat_f32_contiguous = clCreateKernel(backend_ctx->program_concat, "kernel_concat_f32_contiguous", &err), err));
CL_CHECK((backend_ctx->kernel_concat_f32_non_contiguous = clCreateKernel(backend_ctx->program_concat, "kernel_concat_f32_non_contiguous", &err), err));
GGML_LOG_CONT(".");
} else {
GGML_LOG_WARN("ggml_opencl: concat kernel source not found or empty. Concat operations will not be available.\n");
backend_ctx->program_concat = nullptr;
backend_ctx->kernel_concat_f32_contiguous = nullptr;
backend_ctx->kernel_concat_f32_non_contiguous = nullptr;
}
}
// timestep_embedding
{
#ifdef GGML_OPENCL_EMBED_KERNELS
const std::string kernel_src {
#include "tsembd.cl.h"
};
#else
const std::string kernel_src = read_file("tsembd.cl");
#endif
if (!kernel_src.empty()) {
backend_ctx->program_tsembd =
build_program_from_source(backend_ctx->context, backend_ctx->device, kernel_src.c_str(), compile_opts);
CL_CHECK((backend_ctx->kernel_timestep_embedding = clCreateKernel(backend_ctx->program_tsembd, "kernel_timestep_embedding", &err), err));
GGML_LOG_CONT(".");
} else {
GGML_LOG_WARN("ggml_opencl: timestep_embedding kernel source not found or empty. This op will not be available.\n");
backend_ctx->program_tsembd = nullptr;
backend_ctx->kernel_timestep_embedding = nullptr;
}
}
// mul_mv_id_q4_0_f32_8x_flat
{
#ifdef GGML_OPENCL_EMBED_KERNELS
const std::string kernel_src {
#include "mul_mv_id_q4_0_f32_8x_flat.cl.h"
};
#else
const std::string kernel_src = read_file("mul_mv_id_q4_0_f32_8x_flat.cl");
#endif
backend_ctx->program_mul_mv_id_q4_0_f32_8x_flat =
build_program_from_source(backend_ctx->context, backend_ctx->device, kernel_src.c_str(), compile_opts);
CL_CHECK((backend_ctx->kernel_mul_mv_id_q4_0_f32_8x_flat = clCreateKernel(backend_ctx->program_mul_mv_id_q4_0_f32_8x_flat, "kernel_mul_mv_id_q4_0_f32_8x_flat", &err), err));
GGML_LOG_CONT(".");
}
// Adreno kernels
#ifdef GGML_OPENCL_USE_ADRENO_KERNELS
// transpose
@@ -1863,7 +2040,12 @@ static bool ggml_backend_opencl_cpy_tensor_async(ggml_backend_t backend, const g
}
static void ggml_backend_opencl_synchronize(ggml_backend_t backend) {
GGML_UNUSED(backend);
auto * backend_ctx = static_cast<ggml_backend_opencl_context *>(backend->context);
cl_event evt;
CL_CHECK(clEnqueueBarrierWithWaitList(backend_ctx->queue, 0, nullptr, &evt));
CL_CHECK(clWaitForEvents(1, &evt));
CL_CHECK(clReleaseEvent(evt));
}
// Syncronizes the 'backend_ctx's device with others so that commands
@@ -1976,9 +2158,12 @@ static bool ggml_opencl_supports_op(ggml_backend_dev_t dev, const struct ggml_te
case GGML_UNARY_OP_SILU:
case GGML_UNARY_OP_RELU:
case GGML_UNARY_OP_GELU_QUICK:
return ggml_is_contiguous(op->src[0]) && op->src[0]->type == GGML_TYPE_F32;
return ggml_is_contiguous(op->src[0]) && op->src[0]->type == GGML_TYPE_F32;
case GGML_UNARY_OP_SIGMOID:
return ggml_is_contiguous(op->src[0]);
case GGML_UNARY_OP_TANH:
return (op->src[0]->type == GGML_TYPE_F32 && op->type == GGML_TYPE_F32) ||
(op->src[0]->type == GGML_TYPE_F16 && op->type == GGML_TYPE_F16);
default:
return false;
}
@@ -1988,6 +2173,17 @@ static bool ggml_opencl_supports_op(ggml_backend_dev_t dev, const struct ggml_te
case GGML_OP_NORM:
case GGML_OP_RMS_NORM:
return true;
case GGML_OP_REPEAT:
return op->src[0]->type == GGML_TYPE_F32 && op->type == GGML_TYPE_F32; // Assuming F32 for now, can be expanded
case GGML_OP_PAD:
return op->src[0]->type == GGML_TYPE_F32 && op->type == GGML_TYPE_F32 &&
op->src[0]->ne[3] == 1 && op->ne[3] == 1;
case GGML_OP_UPSCALE:
return op->src[0]->type == GGML_TYPE_F32 && op->type == GGML_TYPE_F32;
case GGML_OP_CONCAT:
return op->src[0]->type == GGML_TYPE_F32 && op->src[1]->type == GGML_TYPE_F32 && op->type == GGML_TYPE_F32;
case GGML_OP_TIMESTEP_EMBEDDING:
return op->src[0]->type == GGML_TYPE_F32 && op->type == GGML_TYPE_F32;
case GGML_OP_GROUP_NORM:
return ggml_is_contiguous(op->src[0]);
case GGML_OP_MUL_MAT:
@@ -2000,6 +2196,13 @@ static bool ggml_opencl_supports_op(ggml_backend_dev_t dev, const struct ggml_te
return op->src[1]->type == GGML_TYPE_F32 && ggml_is_contiguous(op->src[0]) && ggml_is_contiguous(op->src[1]);
}
return false;
case GGML_OP_MUL_MAT_ID:
if (op->src[0]->type == GGML_TYPE_Q4_0) {
if (op->src[1]->type == GGML_TYPE_F32) {
return ggml_is_contiguous(op->src[0]) && ggml_is_contiguous(op->src[1]);
}
}
return false;
case GGML_OP_RESHAPE:
case GGML_OP_VIEW:
case GGML_OP_PERMUTE:
@@ -2052,7 +2255,7 @@ static ggml_backend_i ggml_backend_opencl_i = {
/* .set_tensor_async = */ NULL, /* ggml_backend_opencl_set_tensor_async */
/* .get_tensor_async = */ NULL, /* ggml_backend_opencl_get_tensor_async */
/* .cpy_tensor_async = */ NULL, /* ggml_backend_opencl_cpy_tensor_async */
/* .synchronize = */ NULL, /* ggml_backend_opencl_synchronize */
/* .synchronize = */ ggml_backend_opencl_synchronize,
/* .graph_plan_create = */ NULL,
/* .graph_plan_free = */ NULL,
/* .graph_plan_update = */ NULL,
@@ -4108,6 +4311,536 @@ static void ggml_cl_group_norm(ggml_backend_t backend, const ggml_tensor * src0,
#endif
}
static void ggml_cl_tanh(ggml_backend_t backend, const ggml_tensor * src0, const ggml_tensor * src1, ggml_tensor * dst) {
GGML_ASSERT(src0);
GGML_ASSERT(src0->extra);
GGML_ASSERT(dst);
GGML_ASSERT(dst->extra);
UNUSED(src1);
ggml_backend_opencl_context *backend_ctx = (ggml_backend_opencl_context *)backend->context;
cl_command_queue queue = backend_ctx->queue;
ggml_tensor_extra_cl * extra0 = (ggml_tensor_extra_cl *)src0->extra;
ggml_tensor_extra_cl * extrad = (ggml_tensor_extra_cl *)dst->extra;
cl_ulong offset0_abs = extra0->offset + src0->view_offs;
cl_ulong offsetd_abs = extrad->offset + dst->view_offs;
cl_kernel kernel;
if (dst->type == GGML_TYPE_F32) {
kernel = backend_ctx->kernel_tanh_f32_nd;
} else if (dst->type == GGML_TYPE_F16) {
kernel = backend_ctx->kernel_tanh_f16_nd;
} else {
GGML_ASSERT(false && "Unsupported type for ggml_cl_tanh");
}
GGML_ASSERT(kernel != nullptr);
const int ne00 = src0->ne[0]; const int ne01 = src0->ne[1]; const int ne02 = src0->ne[2]; const int ne03 = src0->ne[3];
const cl_ulong nb00 = src0->nb[0]; const cl_ulong nb01 = src0->nb[1]; const cl_ulong nb02 = src0->nb[2]; const cl_ulong nb03 = src0->nb[3];
const int ne10 = dst->ne[0]; const int ne11 = dst->ne[1]; const int ne12 = dst->ne[2]; const int ne13 = dst->ne[3];
const cl_ulong nb10 = dst->nb[0]; const cl_ulong nb11 = dst->nb[1]; const cl_ulong nb12 = dst->nb[2]; const cl_ulong nb13 = dst->nb[3];
CL_CHECK(clSetKernelArg(kernel, 0, sizeof(cl_mem), &extra0->data_device));
CL_CHECK(clSetKernelArg(kernel, 1, sizeof(cl_ulong), &offset0_abs));
CL_CHECK(clSetKernelArg(kernel, 2, sizeof(cl_mem), &extrad->data_device));
CL_CHECK(clSetKernelArg(kernel, 3, sizeof(cl_ulong), &offsetd_abs));
CL_CHECK(clSetKernelArg(kernel, 4, sizeof(int), &ne00));
CL_CHECK(clSetKernelArg(kernel, 5, sizeof(int), &ne01));
CL_CHECK(clSetKernelArg(kernel, 6, sizeof(int), &ne02));
CL_CHECK(clSetKernelArg(kernel, 7, sizeof(int), &ne03));
CL_CHECK(clSetKernelArg(kernel, 8, sizeof(cl_ulong), &nb00));
CL_CHECK(clSetKernelArg(kernel, 9, sizeof(cl_ulong), &nb01));
CL_CHECK(clSetKernelArg(kernel, 10, sizeof(cl_ulong),&nb02));
CL_CHECK(clSetKernelArg(kernel, 11, sizeof(cl_ulong),&nb03));
CL_CHECK(clSetKernelArg(kernel, 12, sizeof(int), &ne10));
CL_CHECK(clSetKernelArg(kernel, 13, sizeof(int), &ne11));
CL_CHECK(clSetKernelArg(kernel, 14, sizeof(int), &ne12));
CL_CHECK(clSetKernelArg(kernel, 15, sizeof(int), &ne13));
CL_CHECK(clSetKernelArg(kernel, 16, sizeof(cl_ulong),&nb10));
CL_CHECK(clSetKernelArg(kernel, 17, sizeof(cl_ulong),&nb11));
CL_CHECK(clSetKernelArg(kernel, 18, sizeof(cl_ulong),&nb12));
CL_CHECK(clSetKernelArg(kernel, 19, sizeof(cl_ulong),&nb13));
size_t global_work_size[3];
if (ne10 == 0 || ne11 == 0 || ne12 == 0 || ne13 == 0) { // Handle case of 0 elements
return;
}
global_work_size[0] = (size_t)ne10;
global_work_size[1] = (size_t)ne11;
global_work_size[2] = (size_t)ne12;
size_t lws0 = 16, lws1 = 4, lws2 = 1;
if (ne10 < 16) lws0 = ne10;
if (ne11 < 4) lws1 = ne11;
if (ne12 < 1) lws2 = ne12 > 0 ? ne12 : 1;
while (lws0 * lws1 * lws2 > 256 && lws0 > 1) lws0 /= 2;
while (lws0 * lws1 * lws2 > 256 && lws1 > 1) lws1 /= 2;
while (lws0 * lws1 * lws2 > 256 && lws2 > 1) lws2 /= 2;
size_t local_work_size[] = {lws0, lws1, lws2};
size_t* local_work_size_ptr = local_work_size;
if (!backend_ctx->non_uniform_workgroups) {
if (global_work_size[0] % local_work_size[0] != 0 ||
global_work_size[1] % local_work_size[1] != 0 ||
global_work_size[2] % local_work_size[2] != 0) {
local_work_size_ptr = NULL;
}
}
if (global_work_size[0] == 0 || global_work_size[1] == 0 || global_work_size[2] == 0) return;
#ifdef GGML_OPENCL_PROFILING
cl_event evt;
CL_CHECK(clEnqueueNDRangeKernel(queue, kernel, 3, NULL, global_work_size, local_work_size_ptr, 0, NULL, &evt));
g_profiling_info.emplace_back();
populateProfilingInfo(g_profiling_info.back(), evt, kernel, global_work_size, local_work_size_ptr ? local_work_size : (size_t[3]){0,0,0}, dst);
#else
CL_CHECK(clEnqueueNDRangeKernel(queue, kernel, 3, NULL, global_work_size, local_work_size_ptr, 0, NULL, NULL));
#endif
}
static void ggml_cl_repeat(ggml_backend_t backend, const ggml_tensor * src0, const ggml_tensor * src1_shape_def, ggml_tensor * dst) {
GGML_ASSERT(src0);
GGML_ASSERT(src0->extra);
GGML_ASSERT(dst);
GGML_ASSERT(dst->extra);
GGML_ASSERT(dst->type == src0->type);
UNUSED(src1_shape_def);
ggml_backend_opencl_context *backend_ctx = (ggml_backend_opencl_context *)backend->context;
cl_command_queue queue = backend_ctx->queue;
if (backend_ctx->kernel_repeat == nullptr) {
GGML_LOG_WARN("%s: repeat kernel not available, skipping OpenCL execution.\n", __func__);
return;
}
ggml_tensor_extra_cl * extra_src0 = (ggml_tensor_extra_cl *)src0->extra;
ggml_tensor_extra_cl * extra_dst = (ggml_tensor_extra_cl *)dst->extra;
cl_ulong off_src0 = extra_src0->offset + src0->view_offs;
cl_ulong off_dst = extra_dst->offset + dst->view_offs;
const int src0_ne0 = src0->ne[0]; const int src0_ne1 = src0->ne[1]; const int src0_ne2 = src0->ne[2]; const int src0_ne3 = src0->ne[3];
const cl_ulong src0_nb0 = src0->nb[0]; const cl_ulong src0_nb1 = src0->nb[1]; const cl_ulong src0_nb2 = src0->nb[2]; const cl_ulong src0_nb3 = src0->nb[3];
const int dst_ne0 = dst->ne[0]; const int dst_ne1 = dst->ne[1]; const int dst_ne2 = dst->ne[2]; const int dst_ne3 = dst->ne[3];
const cl_ulong dst_nb0 = dst->nb[0]; const cl_ulong dst_nb1 = dst->nb[1]; const cl_ulong dst_nb2 = dst->nb[2]; const cl_ulong dst_nb3 = dst->nb[3];
cl_kernel kernel = backend_ctx->kernel_repeat;
CL_CHECK(clSetKernelArg(kernel, 0, sizeof(cl_mem), &extra_src0->data_device));
CL_CHECK(clSetKernelArg(kernel, 1, sizeof(cl_mem), &extra_dst->data_device));
CL_CHECK(clSetKernelArg(kernel, 2, sizeof(cl_ulong), &off_src0));
CL_CHECK(clSetKernelArg(kernel, 3, sizeof(cl_ulong), &off_dst));
CL_CHECK(clSetKernelArg(kernel, 4, sizeof(int), &src0_ne0));
CL_CHECK(clSetKernelArg(kernel, 5, sizeof(int), &src0_ne1));
CL_CHECK(clSetKernelArg(kernel, 6, sizeof(int), &src0_ne2));
CL_CHECK(clSetKernelArg(kernel, 7, sizeof(int), &src0_ne3));
CL_CHECK(clSetKernelArg(kernel, 8, sizeof(cl_ulong), &src0_nb0));
CL_CHECK(clSetKernelArg(kernel, 9, sizeof(cl_ulong), &src0_nb1));
CL_CHECK(clSetKernelArg(kernel, 10, sizeof(cl_ulong), &src0_nb2));
CL_CHECK(clSetKernelArg(kernel, 11, sizeof(cl_ulong), &src0_nb3));
CL_CHECK(clSetKernelArg(kernel, 12, sizeof(int), &dst_ne0));
CL_CHECK(clSetKernelArg(kernel, 13, sizeof(int), &dst_ne1));
CL_CHECK(clSetKernelArg(kernel, 14, sizeof(int), &dst_ne2));
CL_CHECK(clSetKernelArg(kernel, 15, sizeof(int), &dst_ne3));
CL_CHECK(clSetKernelArg(kernel, 16, sizeof(cl_ulong), &dst_nb0));
CL_CHECK(clSetKernelArg(kernel, 17, sizeof(cl_ulong), &dst_nb1));
CL_CHECK(clSetKernelArg(kernel, 18, sizeof(cl_ulong), &dst_nb2));
CL_CHECK(clSetKernelArg(kernel, 19, sizeof(cl_ulong), &dst_nb3));
size_t gws0 = dst_ne1 > 0 ? (size_t)dst_ne1 : 1;
size_t gws1 = dst_ne2 > 0 ? (size_t)dst_ne2 : 1;
size_t gws2 = dst_ne3 > 0 ? (size_t)dst_ne3 : 1;
size_t global_work_size[] = { gws0, gws1, gws2 };
#ifdef GGML_OPENCL_PROFILING
cl_event evt;
CL_CHECK(clEnqueueNDRangeKernel(queue, kernel, 3, NULL, global_work_size, NULL, 0, NULL, &evt));
g_profiling_info.emplace_back();
populateProfilingInfo(g_profiling_info.back(), evt, kernel, global_work_size, (size_t[3]){0,0,0}, dst);
#else
CL_CHECK(clEnqueueNDRangeKernel(queue, kernel, 3, NULL, global_work_size, NULL, 0, NULL, NULL));
#endif
}
static void ggml_cl_pad(ggml_backend_t backend, const ggml_tensor * src0, ggml_tensor * dst) {
GGML_ASSERT(src0);
GGML_ASSERT(src0->extra);
GGML_ASSERT(dst);
GGML_ASSERT(dst->extra);
GGML_ASSERT(src0->type == GGML_TYPE_F32);
GGML_ASSERT(dst->type == GGML_TYPE_F32);
GGML_ASSERT(src0->ne[3] == 1 && dst->ne[3] == 1);
ggml_backend_opencl_context *backend_ctx = (ggml_backend_opencl_context *)backend->context;
cl_command_queue queue = backend_ctx->queue;
if (backend_ctx->kernel_pad == nullptr) {
GGML_LOG_WARN("%s: pad kernel not available, skipping OpenCL execution.\n", __func__);
return;
}
ggml_tensor_extra_cl * extra_src0 = (ggml_tensor_extra_cl *)src0->extra;
ggml_tensor_extra_cl * extra_dst = (ggml_tensor_extra_cl *)dst->extra;
cl_ulong off_src0 = extra_src0->offset + src0->view_offs;
cl_ulong off_dst = extra_dst->offset + dst->view_offs;
const int s_ne0 = src0->ne[0];
const int s_ne1 = src0->ne[1];
const int s_ne2 = src0->ne[2];
const int d_ne0 = dst->ne[0];
const int d_ne1 = dst->ne[1];
const int d_ne2 = dst->ne[2];
cl_kernel kernel = backend_ctx->kernel_pad;
CL_CHECK(clSetKernelArg(kernel, 0, sizeof(cl_mem), &extra_src0->data_device));
CL_CHECK(clSetKernelArg(kernel, 1, sizeof(cl_ulong), &off_src0));
CL_CHECK(clSetKernelArg(kernel, 2, sizeof(cl_mem), &extra_dst->data_device));
CL_CHECK(clSetKernelArg(kernel, 3, sizeof(cl_ulong), &off_dst));
CL_CHECK(clSetKernelArg(kernel, 4, sizeof(int), &s_ne0));
CL_CHECK(clSetKernelArg(kernel, 5, sizeof(int), &s_ne1));
CL_CHECK(clSetKernelArg(kernel, 6, sizeof(int), &s_ne2));
CL_CHECK(clSetKernelArg(kernel, 7, sizeof(int), &d_ne0));
CL_CHECK(clSetKernelArg(kernel, 8, sizeof(int), &d_ne1));
CL_CHECK(clSetKernelArg(kernel, 9, sizeof(int), &d_ne2));
size_t lws0 = 64;
size_t gws0 = (( (size_t)d_ne0 + lws0 - 1 ) / lws0) * lws0;
size_t global_work_size[] = { gws0, (size_t)d_ne1, (size_t)d_ne2 };
size_t local_work_size[] = { lws0, 1, 1 };
size_t * local_work_size_ptr = local_work_size;
if (d_ne0 % lws0 != 0 && !backend_ctx->non_uniform_workgroups) {
local_work_size_ptr = nullptr;
}
#ifdef GGML_OPENCL_PROFILING
cl_event evt;
CL_CHECK(clEnqueueNDRangeKernel(queue, kernel, 3, NULL, global_work_size, local_work_size_ptr, 0, NULL, &evt));
g_profiling_info.emplace_back();
populateProfilingInfo(g_profiling_info.back(), evt, kernel, global_work_size, local_work_size_ptr ? local_work_size : (size_t[3]){0,0,0}, dst);
#else
CL_CHECK(clEnqueueNDRangeKernel(queue, kernel, 3, NULL, global_work_size, local_work_size_ptr, 0, NULL, NULL));
#endif
}
static void ggml_cl_upscale(ggml_backend_t backend, const ggml_tensor * src0, ggml_tensor * dst) {
GGML_ASSERT(src0);
GGML_ASSERT(src0->extra);
GGML_ASSERT(dst);
GGML_ASSERT(dst->extra);
GGML_ASSERT(src0->type == GGML_TYPE_F32);
GGML_ASSERT(dst->type == GGML_TYPE_F32);
ggml_backend_opencl_context *backend_ctx = (ggml_backend_opencl_context *)backend->context;
cl_command_queue queue = backend_ctx->queue;
const ggml_scale_mode mode = (ggml_scale_mode) ggml_get_op_params_i32(dst, 0);
cl_kernel kernel = nullptr;
if (mode == GGML_SCALE_MODE_NEAREST) {
kernel = backend_ctx->kernel_upscale;
if (kernel == nullptr) {
GGML_LOG_WARN("%s: nearest upscale kernel not available, skipping OpenCL execution.\n", __func__);
return;
}
} else if (mode == GGML_SCALE_MODE_BILINEAR) {
kernel = backend_ctx->kernel_upscale_bilinear;
if (kernel == nullptr) {
GGML_LOG_WARN("%s: bilinear upscale kernel not available, skipping OpenCL execution.\n", __func__);
return;
}
} else {
GGML_LOG_WARN("%s: unsupported upscale mode %d, skipping OpenCL execution.\n", __func__, mode);
return;
}
ggml_tensor_extra_cl * extra_src0 = (ggml_tensor_extra_cl *)src0->extra;
ggml_tensor_extra_cl * extra_dst = (ggml_tensor_extra_cl *)dst->extra;
cl_ulong off_src0 = extra_src0->offset + src0->view_offs;
cl_ulong off_dst = extra_dst->offset + dst->view_offs;
const cl_ulong nb00 = src0->nb[0];
const cl_ulong nb01 = src0->nb[1];
const cl_ulong nb02 = src0->nb[2];
const cl_ulong nb03 = src0->nb[3];
const int ne00_src = src0->ne[0];
const int ne01_src = src0->ne[1];
const int ne10_dst = dst->ne[0];
const int ne11_dst = dst->ne[1];
const int ne12_dst = dst->ne[2];
const int ne13_dst = dst->ne[3];
const float sf0 = (float)dst->ne[0] / src0->ne[0];
const float sf1 = (float)dst->ne[1] / src0->ne[1];
const float sf2 = (float)dst->ne[2] / src0->ne[2];
const float sf3 = (float)dst->ne[3] / src0->ne[3];
CL_CHECK(clSetKernelArg(kernel, 0, sizeof(cl_mem), &extra_src0->data_device));
CL_CHECK(clSetKernelArg(kernel, 1, sizeof(cl_ulong), &off_src0));
CL_CHECK(clSetKernelArg(kernel, 2, sizeof(cl_mem), &extra_dst->data_device));
CL_CHECK(clSetKernelArg(kernel, 3, sizeof(cl_ulong), &off_dst));
CL_CHECK(clSetKernelArg(kernel, 4, sizeof(cl_ulong), &nb00));
CL_CHECK(clSetKernelArg(kernel, 5, sizeof(cl_ulong), &nb01));
CL_CHECK(clSetKernelArg(kernel, 6, sizeof(cl_ulong), &nb02));
CL_CHECK(clSetKernelArg(kernel, 7, sizeof(cl_ulong), &nb03));
if (mode == GGML_SCALE_MODE_NEAREST) {
CL_CHECK(clSetKernelArg(kernel, 8, sizeof(int), &ne10_dst));
CL_CHECK(clSetKernelArg(kernel, 9, sizeof(int), &ne11_dst));
CL_CHECK(clSetKernelArg(kernel, 10, sizeof(int), &ne12_dst));
CL_CHECK(clSetKernelArg(kernel, 11, sizeof(int), &ne13_dst));
CL_CHECK(clSetKernelArg(kernel, 12, sizeof(float), &sf0));
CL_CHECK(clSetKernelArg(kernel, 13, sizeof(float), &sf1));
CL_CHECK(clSetKernelArg(kernel, 14, sizeof(float), &sf2));
CL_CHECK(clSetKernelArg(kernel, 15, sizeof(float), &sf3));
} else if (mode == GGML_SCALE_MODE_BILINEAR) {
CL_CHECK(clSetKernelArg(kernel, 8, sizeof(int), &ne00_src));
CL_CHECK(clSetKernelArg(kernel, 9, sizeof(int), &ne01_src));
CL_CHECK(clSetKernelArg(kernel, 10, sizeof(int), &ne10_dst));
CL_CHECK(clSetKernelArg(kernel, 11, sizeof(int), &ne11_dst));
CL_CHECK(clSetKernelArg(kernel, 12, sizeof(int), &ne12_dst));
CL_CHECK(clSetKernelArg(kernel, 13, sizeof(int), &ne13_dst));
CL_CHECK(clSetKernelArg(kernel, 14, sizeof(float), &sf0));
CL_CHECK(clSetKernelArg(kernel, 15, sizeof(float), &sf1));
CL_CHECK(clSetKernelArg(kernel, 16, sizeof(float), &sf2));
CL_CHECK(clSetKernelArg(kernel, 17, sizeof(float), &sf3));
}
size_t dst_total_elements = (size_t)ne10_dst * ne11_dst * ne12_dst * ne13_dst;
if (dst_total_elements == 0) {
return;
}
size_t global_work_size[] = { dst_total_elements, 1, 1 };
size_t local_work_size_pref = 256;
size_t local_work_size[] = { MIN(local_work_size_pref, dst_total_elements), 1, 1};
size_t * local_work_size_ptr = local_work_size;
if (dst_total_elements % local_work_size[0] != 0 && !backend_ctx->non_uniform_workgroups) {
local_work_size_ptr = nullptr;
}
#ifdef GGML_OPENCL_PROFILING
cl_event evt;
CL_CHECK(clEnqueueNDRangeKernel(queue, kernel, 1, NULL, global_work_size, local_work_size_ptr, 0, NULL, &evt));
g_profiling_info.emplace_back();
size_t profiling_gws[3] = {global_work_size[0], 1, 1};
size_t profiling_lws[3] = {local_work_size_ptr ? local_work_size[0] : 0, 1, 1};
populateProfilingInfo(g_profiling_info.back(), evt, kernel, profiling_gws, profiling_lws, dst);
#else
CL_CHECK(clEnqueueNDRangeKernel(queue, kernel, 1, NULL, global_work_size, local_work_size_ptr, 0, NULL, NULL));
#endif
}
static void ggml_cl_concat(ggml_backend_t backend, const ggml_tensor * src0, const ggml_tensor * src1, ggml_tensor * dst) {
GGML_ASSERT(src0);
GGML_ASSERT(src0->extra);
GGML_ASSERT(src1);
GGML_ASSERT(src1->extra);
GGML_ASSERT(dst);
GGML_ASSERT(dst->extra);
GGML_ASSERT(src0->type == GGML_TYPE_F32);
GGML_ASSERT(src1->type == GGML_TYPE_F32);
GGML_ASSERT(dst->type == GGML_TYPE_F32);
ggml_backend_opencl_context *backend_ctx = (ggml_backend_opencl_context *)backend->context;
cl_command_queue queue = backend_ctx->queue;
if (backend_ctx->kernel_concat_f32_contiguous == nullptr || backend_ctx->kernel_concat_f32_non_contiguous == nullptr) {
GGML_LOG_WARN("%s: concat kernels not available, skipping OpenCL execution.\n", __func__);
return;
}
ggml_tensor_extra_cl * extra0_cl = (ggml_tensor_extra_cl *)src0->extra;
ggml_tensor_extra_cl * extra1_cl = (ggml_tensor_extra_cl *)src1->extra;
ggml_tensor_extra_cl * extrad_cl = (ggml_tensor_extra_cl *)dst->extra;
cl_ulong off_src0 = extra0_cl->offset + src0->view_offs;
cl_ulong off_src1 = extra1_cl->offset + src1->view_offs;
cl_ulong off_dst = extrad_cl->offset + dst->view_offs;
const int32_t dim = ((const int32_t *) dst->op_params)[0];
GGML_ASSERT(dim >= 0 && dim <= 3);
if (ggml_is_contiguous(src0) && ggml_is_contiguous(src1) && ggml_is_contiguous(dst)) {
if (dim == 3) {
size_t nbytes_src0 = ggml_nbytes(src0);
size_t nbytes_src1 = ggml_nbytes(src1);
CL_CHECK(clEnqueueCopyBuffer(queue, extra0_cl->data_device, extrad_cl->data_device,
off_src0, off_dst, nbytes_src0, 0, NULL, NULL));
CL_CHECK(clEnqueueCopyBuffer(queue, extra1_cl->data_device, extrad_cl->data_device,
off_src1, off_dst + nbytes_src0, nbytes_src1, 0, NULL, NULL));
} else {
cl_kernel kernel = backend_ctx->kernel_concat_f32_contiguous;
size_t global_work_size[3];
for (int i3 = 0; i3 < dst->ne[3]; ++i3) {
cl_ulong current_off_src0 = off_src0 + (i3 * src0->nb[3]);
cl_ulong current_off_src1 = off_src1 + (i3 * src1->nb[3]);
cl_ulong current_off_dst = off_dst + (i3 * dst->nb[3]);
int d_ne00 = src0->ne[0]; int d_ne01 = src0->ne[1]; int d_ne02 = src0->ne[2];
int d_ne10 = src1->ne[0]; int d_ne11 = src1->ne[1]; int d_ne12 = src1->ne[2];
int d_ne0 = dst->ne[0]; int d_ne1 = dst->ne[1]; int d_ne2 = dst->ne[2];
CL_CHECK(clSetKernelArg(kernel, 0, sizeof(cl_mem), &extra0_cl->data_device));
CL_CHECK(clSetKernelArg(kernel, 1, sizeof(cl_ulong), &current_off_src0));
CL_CHECK(clSetKernelArg(kernel, 2, sizeof(cl_mem), &extra1_cl->data_device));
CL_CHECK(clSetKernelArg(kernel, 3, sizeof(cl_ulong), &current_off_src1));
CL_CHECK(clSetKernelArg(kernel, 4, sizeof(cl_mem), &extrad_cl->data_device));
CL_CHECK(clSetKernelArg(kernel, 5, sizeof(cl_ulong), &current_off_dst));
CL_CHECK(clSetKernelArg(kernel, 6, sizeof(int), &d_ne00));
CL_CHECK(clSetKernelArg(kernel, 7, sizeof(int), &d_ne01));
CL_CHECK(clSetKernelArg(kernel, 8, sizeof(int), &d_ne02));
CL_CHECK(clSetKernelArg(kernel, 9, sizeof(int), &d_ne10));
CL_CHECK(clSetKernelArg(kernel, 10, sizeof(int), &d_ne11));
CL_CHECK(clSetKernelArg(kernel, 11, sizeof(int), &d_ne12));
CL_CHECK(clSetKernelArg(kernel, 12, sizeof(int), &d_ne0));
CL_CHECK(clSetKernelArg(kernel, 13, sizeof(int), &d_ne1));
CL_CHECK(clSetKernelArg(kernel, 14, sizeof(int), &d_ne2));
CL_CHECK(clSetKernelArg(kernel, 15, sizeof(int), &dim));
global_work_size[0] = d_ne0;
global_work_size[1] = d_ne1;
global_work_size[2] = d_ne2;
CL_CHECK(clEnqueueNDRangeKernel(queue, kernel, 3, NULL, global_work_size, NULL, 0, NULL, NULL));
}
}
} else {
cl_kernel kernel = backend_ctx->kernel_concat_f32_non_contiguous;
long ne00 = src0->ne[0], ne01 = src0->ne[1], ne02 = src0->ne[2], ne03 = src0->ne[3];
cl_ulong nb00 = src0->nb[0], nb01 = src0->nb[1], nb02 = src0->nb[2], nb03 = src0->nb[3];
cl_ulong nb10 = src1->nb[0], nb11 = src1->nb[1], nb12 = src1->nb[2], nb13 = src1->nb[3];
long d_ne0 = dst->ne[0], d_ne1 = dst->ne[1], d_ne2 = dst->ne[2], d_ne3 = dst->ne[3];
cl_ulong d_nb0 = dst->nb[0], d_nb1 = dst->nb[1], d_nb2 = dst->nb[2], d_nb3 = dst->nb[3];
CL_CHECK(clSetKernelArg(kernel, 0, sizeof(cl_mem), &extra0_cl->data_device));
CL_CHECK(clSetKernelArg(kernel, 1, sizeof(cl_ulong), &off_src0));
CL_CHECK(clSetKernelArg(kernel, 2, sizeof(cl_mem), &extra1_cl->data_device));
CL_CHECK(clSetKernelArg(kernel, 3, sizeof(cl_ulong), &off_src1));
CL_CHECK(clSetKernelArg(kernel, 4, sizeof(cl_mem), &extrad_cl->data_device));
CL_CHECK(clSetKernelArg(kernel, 5, sizeof(cl_ulong), &off_dst));
CL_CHECK(clSetKernelArg(kernel, 6, sizeof(long), &ne00));
CL_CHECK(clSetKernelArg(kernel, 7, sizeof(long), &ne01));
CL_CHECK(clSetKernelArg(kernel, 8, sizeof(long), &ne02));
CL_CHECK(clSetKernelArg(kernel, 9, sizeof(long), &ne03));
CL_CHECK(clSetKernelArg(kernel, 10, sizeof(cl_ulong), &nb00));
CL_CHECK(clSetKernelArg(kernel, 11, sizeof(cl_ulong), &nb01));
CL_CHECK(clSetKernelArg(kernel, 12, sizeof(cl_ulong), &nb02));
CL_CHECK(clSetKernelArg(kernel, 13, sizeof(cl_ulong), &nb03));
CL_CHECK(clSetKernelArg(kernel, 14, sizeof(cl_ulong), &nb10));
CL_CHECK(clSetKernelArg(kernel, 15, sizeof(cl_ulong), &nb11));
CL_CHECK(clSetKernelArg(kernel, 16, sizeof(cl_ulong), &nb12));
CL_CHECK(clSetKernelArg(kernel, 17, sizeof(cl_ulong), &nb13));
CL_CHECK(clSetKernelArg(kernel, 18, sizeof(long), &d_ne0));
CL_CHECK(clSetKernelArg(kernel, 19, sizeof(long), &d_ne1));
CL_CHECK(clSetKernelArg(kernel, 20, sizeof(long), &d_ne2));
CL_CHECK(clSetKernelArg(kernel, 21, sizeof(long), &d_ne3));
CL_CHECK(clSetKernelArg(kernel, 22, sizeof(cl_ulong), &d_nb0));
CL_CHECK(clSetKernelArg(kernel, 23, sizeof(cl_ulong), &d_nb1));
CL_CHECK(clSetKernelArg(kernel, 24, sizeof(cl_ulong), &d_nb2));
CL_CHECK(clSetKernelArg(kernel, 25, sizeof(cl_ulong), &d_nb3));
CL_CHECK(clSetKernelArg(kernel, 26, sizeof(int), &dim));
size_t global_work_size_nc[] = { d_ne1 > 0 ? (size_t)d_ne1 : 1,
d_ne2 > 0 ? (size_t)d_ne2 : 1,
d_ne3 > 0 ? (size_t)d_ne3 : 1 };
CL_CHECK(clEnqueueNDRangeKernel(queue, kernel, 3, NULL, global_work_size_nc, NULL, 0, NULL, NULL));
}
}
static void ggml_cl_timestep_embedding(ggml_backend_t backend, const ggml_tensor * src0, ggml_tensor * dst) {
GGML_ASSERT(src0);
GGML_ASSERT(src0->extra);
GGML_ASSERT(dst);
GGML_ASSERT(dst->extra);
GGML_ASSERT(src0->type == GGML_TYPE_F32);
GGML_ASSERT(dst->type == GGML_TYPE_F32);
ggml_backend_opencl_context *backend_ctx = (ggml_backend_opencl_context *)backend->context;
cl_command_queue queue = backend_ctx->queue;
if (backend_ctx->kernel_timestep_embedding == nullptr) {
GGML_LOG_WARN("%s: timestep_embedding kernel not available, skipping OpenCL execution.\n", __func__);
return;
}
ggml_tensor_extra_cl * extra_src0 = (ggml_tensor_extra_cl *)src0->extra;
ggml_tensor_extra_cl * extra_dst = (ggml_tensor_extra_cl *)dst->extra;
cl_ulong off_src0 = extra_src0->offset + src0->view_offs;
cl_ulong off_dst = extra_dst->offset + dst->view_offs;
const int logical_dim = dst->op_params[0];
const int max_period = dst->op_params[1];
const int dst_nb1_bytes = dst->nb[1];
cl_kernel kernel = backend_ctx->kernel_timestep_embedding;
CL_CHECK(clSetKernelArg(kernel, 0, sizeof(cl_mem), &extra_src0->data_device));
CL_CHECK(clSetKernelArg(kernel, 1, sizeof(cl_ulong), &off_src0));
CL_CHECK(clSetKernelArg(kernel, 2, sizeof(cl_mem), &extra_dst->data_device));
CL_CHECK(clSetKernelArg(kernel, 3, sizeof(cl_ulong), &off_dst));
CL_CHECK(clSetKernelArg(kernel, 4, sizeof(int), &dst_nb1_bytes));
CL_CHECK(clSetKernelArg(kernel, 5, sizeof(int), &logical_dim));
CL_CHECK(clSetKernelArg(kernel, 6, sizeof(int), &max_period));
size_t gws0 = (size_t)(((logical_dim + 1) / 2) + 1);
size_t gws1 = (size_t)src0->ne[0];
size_t global_work_size[] = {gws0, gws1, 1};
#ifdef GGML_OPENCL_PROFILING
cl_event evt;
CL_CHECK(clEnqueueNDRangeKernel(queue, kernel, 2, NULL, global_work_size, NULL, 0, NULL, &evt)); // Pass 2 for 2D problem
g_profiling_info.emplace_back();
size_t profiling_gws[3] = {global_work_size[0], global_work_size[1], 1};
size_t profiling_lws[3] = {0,0,0}; // Reflects NULL LWS
populateProfilingInfo(g_profiling_info.back(), evt, kernel, profiling_gws, profiling_lws, dst);
#else
CL_CHECK(clEnqueueNDRangeKernel(queue, kernel, 2, NULL, global_work_size, NULL, 0, NULL, NULL)); // Pass 2 for 2D problem
#endif
}
static void ggml_cl_mul_mat(ggml_backend_t backend, const ggml_tensor * src0, const ggml_tensor * src1, ggml_tensor * dst) {
GGML_ASSERT(src0);
GGML_ASSERT(src0->extra);
@@ -4828,6 +5561,136 @@ static void ggml_cl_mul_mat(ggml_backend_t backend, const ggml_tensor * src0, co
}
}
static void ggml_cl_mul_mat_id(ggml_backend_t backend, const ggml_tensor * src0, const ggml_tensor * src1, ggml_tensor * dst) {
GGML_ASSERT(src0);
GGML_ASSERT(src0->extra);
GGML_ASSERT(src1);
GGML_ASSERT(src1->extra);
GGML_ASSERT(dst);
GGML_ASSERT(dst->extra);
const ggml_tensor * src2 = dst->src[2];
GGML_ASSERT(src2);
GGML_ASSERT(src2->extra);
ggml_backend_opencl_context *backend_ctx = (ggml_backend_opencl_context *)backend->context;
cl_command_queue queue = backend_ctx->queue;
ggml_tensor_extra_cl * extra1 = (ggml_tensor_extra_cl *)src1->extra;
ggml_tensor_extra_cl * extra2 = (ggml_tensor_extra_cl *)src2->extra;
ggml_tensor_extra_cl * extrad = (ggml_tensor_extra_cl *)dst->extra;
cl_ulong offset1 = extra1->offset + src1->view_offs;
cl_ulong offset2 = extra2->offset + src2->view_offs;
cl_ulong offsetd = extrad->offset + dst->view_offs;
#ifdef GGML_OPENCL_SOA_Q
ggml_tensor_extra_cl_q4_0 * extra0_q4_0 = (ggml_tensor_extra_cl_q4_0 *)src0->extra;
#endif
const int ne00 = src0->ne[0];
const int ne01 = src0->ne[1];
const int ne02 = src0->ne[2];
const int ne03 = src0->ne[3];
const cl_ulong nb00 = src0->nb[0];
const cl_ulong nb02 = src0->nb[2];
const int ne10 = src1->ne[0];
const int ne11 = src1->ne[1];
const int ne12 = src1->ne[2];
const int ne13 = src1->ne[3];
const cl_ulong nb11 = src1->nb[1];
const cl_ulong nb12 = src1->nb[2];
const int ne20 = src2->ne[0];
const int ne21 = src2->ne[1];
const cl_ulong nb21 = src2->nb[1];
const int ne0 = dst->ne[0];
const int ne1 = dst->ne[1];
const int r2 = ne12/ne02;
const int r3 = ne13/ne03;
const int dst_rows = ne20*ne21; // ne20 = n_used_experts, ne21 = n_rows
GGML_ASSERT(ne00 == ne10);
int sgs = 32; // subgroup size
int nsg = 1; // number of subgroups
int nrows = 1; // number of row in src1
int ndst = 4; // number of values produced by each subgroup
cl_kernel kernel;
// subgroup mat vec
switch (src0->type) {
case GGML_TYPE_Q4_0: {
kernel = backend_ctx->kernel_mul_mv_id_q4_0_f32_8x_flat;
if (backend_ctx->gpu_family == INTEL) {
sgs = 16;
nsg = 1;
ndst = 8;
} else if (backend_ctx->gpu_family == ADRENO) {
sgs = 64;
nsg = 1;
ndst = 8;
} else {
GGML_ASSERT(false && "TODO: Unknown GPU");
}
CL_CHECK(clSetKernelArg(kernel, 0, sizeof(cl_mem), &extra0_q4_0->q));
CL_CHECK(clSetKernelArg(kernel, 1, sizeof(cl_mem), &extra0_q4_0->d));
CL_CHECK(clSetKernelArg(kernel, 2, sizeof(cl_mem), &extra1->data_device));
CL_CHECK(clSetKernelArg(kernel, 3, sizeof(cl_ulong), &offset1));
CL_CHECK(clSetKernelArg(kernel, 4, sizeof(cl_mem), &extra2->data_device));
CL_CHECK(clSetKernelArg(kernel, 5, sizeof(cl_ulong), &offset2));
CL_CHECK(clSetKernelArg(kernel, 6, sizeof(cl_mem), &extrad->data_device));
CL_CHECK(clSetKernelArg(kernel, 7, sizeof(cl_ulong), &offsetd));
CL_CHECK(clSetKernelArg(kernel, 8, sizeof(int), &ne00));
CL_CHECK(clSetKernelArg(kernel, 9, sizeof(int), &ne01));
CL_CHECK(clSetKernelArg(kernel, 10, sizeof(int), &ne02));
CL_CHECK(clSetKernelArg(kernel, 11, sizeof(cl_ulong), &nb00));
CL_CHECK(clSetKernelArg(kernel, 12, sizeof(cl_ulong), &nb02));
CL_CHECK(clSetKernelArg(kernel, 13, sizeof(int), &ne10));
CL_CHECK(clSetKernelArg(kernel, 14, sizeof(int), &ne11));
CL_CHECK(clSetKernelArg(kernel, 15, sizeof(int), &ne12));
CL_CHECK(clSetKernelArg(kernel, 16, sizeof(cl_ulong), &nb11));
CL_CHECK(clSetKernelArg(kernel, 17, sizeof(cl_ulong), &nb12));
CL_CHECK(clSetKernelArg(kernel, 18, sizeof(int), &ne20));
CL_CHECK(clSetKernelArg(kernel, 19, sizeof(int), &ne21));
CL_CHECK(clSetKernelArg(kernel, 20, sizeof(cl_ulong), &nb21));
CL_CHECK(clSetKernelArg(kernel, 21, sizeof(int), &ne0));
CL_CHECK(clSetKernelArg(kernel, 22, sizeof(int), &ne1));
CL_CHECK(clSetKernelArg(kernel, 23, sizeof(int), &r2));
CL_CHECK(clSetKernelArg(kernel, 24, sizeof(int), &r3));
break;
}
default:
GGML_ASSERT(false && "not implemented");;
}
int _ne1 = 1;
int ne123 = dst_rows;
size_t global_work_size[] = {(size_t)(ne01+ndst*nsg-1)/(ndst*nsg)*sgs, (size_t)(_ne1+nrows-1)/nrows*nsg, (size_t)ne123};
size_t local_work_size[] = {(size_t)sgs, (size_t)nsg, 1};
#ifdef GGML_OPENCL_PROFILING
cl_event evt;
CL_CHECK(clEnqueueNDRangeKernel(queue, kernel, 3, NULL, global_work_size, local_work_size, 0, NULL, &evt));
g_profiling_info.emplace_back();
populateProfilingInfo(g_profiling_info.back(), evt, kernel, global_work_size, local_work_size, dst);
#else
CL_CHECK(clEnqueueNDRangeKernel(queue, kernel, 3, NULL, global_work_size, local_work_size, 0, NULL, NULL));
#endif
}
static void ggml_cl_scale(ggml_backend_t backend, const ggml_tensor * src0, const ggml_tensor * src1, ggml_tensor * dst) {
GGML_ASSERT(src0);
GGML_ASSERT(src0->extra);
@@ -5667,6 +6530,12 @@ bool ggml_cl_compute_forward(ggml_backend_t backend, struct ggml_tensor * tensor
}
func = ggml_cl_sigmoid;
break;
case GGML_UNARY_OP_TANH:
if (!any_on_device) {
return false;
}
func = ggml_cl_tanh;
break;
default:
return false;
} break;
@@ -5694,12 +6563,48 @@ bool ggml_cl_compute_forward(ggml_backend_t backend, struct ggml_tensor * tensor
}
func = ggml_cl_group_norm;
break;
case GGML_OP_REPEAT:
if (!any_on_device) {
return false;
}
func = ggml_cl_repeat;
break;
case GGML_OP_PAD:
if (!any_on_device) {
return false;
}
ggml_cl_pad(backend, tensor->src[0], tensor);
return true;
case GGML_OP_UPSCALE:
if (!any_on_device) {
return false;
}
ggml_cl_upscale(backend, tensor->src[0], tensor);
return true;
case GGML_OP_CONCAT:
if (!any_on_device) {
return false;
}
func = ggml_cl_concat;
break;
case GGML_OP_TIMESTEP_EMBEDDING:
if (!any_on_device) {
return false;
}
ggml_cl_timestep_embedding(backend, tensor->src[0], tensor);
return true;
case GGML_OP_MUL_MAT:
if (!any_on_device && !ggml_cl_can_mul_mat(tensor->src[0], tensor->src[1], tensor)) {
return false;
}
func = ggml_cl_mul_mat;
break;
case GGML_OP_MUL_MAT_ID:
if (!any_on_device) {
return false;
}
func = ggml_cl_mul_mat_id;
break;
case GGML_OP_SCALE:
if (!any_on_device) {
return false;

View File

@@ -0,0 +1,109 @@
kernel void kernel_concat_f32_contiguous(
global const char * p_src0, ulong off_src0,
global const char * p_src1, ulong off_src1,
global char * p_dst, ulong off_dst,
int d_ne00, int d_ne01, int d_ne02, // src0->ne[0..2] for the slice
int d_ne10, int d_ne11, int d_ne12, // src1->ne[0..2] for the slice (d_ne1X must match d_ne0X on non-concat axes)
int d_ne0, int d_ne1, int d_ne2, // dst->ne[0..2] for the slice
int dim
) {
global const float * src0 = (global const float*)((global char*)p_src0 + off_src0);
global const float * src1 = (global const float*)((global char*)p_src1 + off_src1);
global float * dst = (global float*)((global char*)p_dst + off_dst);
int i0 = get_global_id(0); // Index along dst's 0th dimension
int i1 = get_global_id(1); // Index along dst's 1st dimension
int i2 = get_global_id(2); // Index along dst's 2nd dimension
if (i0 >= d_ne0 || i1 >= d_ne1 || i2 >= d_ne2) {
return;
}
ulong dst_idx = (ulong)i2 * d_ne0 * d_ne1 + (ulong)i1 * d_ne0 + i0;
ulong src_idx;
if (dim == 0) {
if (i0 < d_ne00) { // Data from src0
src_idx = (ulong)i2 * d_ne00 * d_ne01 + (ulong)i1 * d_ne00 + i0;
dst[dst_idx] = src0[src_idx];
} else { // Data from src1
src_idx = (ulong)i2 * d_ne10 * d_ne11 + (ulong)i1 * d_ne10 + (i0 - d_ne00);
dst[dst_idx] = src1[src_idx];
}
} else if (dim == 1) {
if (i1 < d_ne01) { // Data from src0
src_idx = (ulong)i2 * d_ne00 * d_ne01 + (ulong)i1 * d_ne00 + i0;
dst[dst_idx] = src0[src_idx];
} else { // Data from src1
src_idx = (ulong)i2 * d_ne10 * d_ne11 + (ulong)(i1 - d_ne01) * d_ne10 + i0;
dst[dst_idx] = src1[src_idx];
}
} else if (dim == 2) {
if (i2 < d_ne02) { // Data from src0
src_idx = (ulong)i2 * d_ne00 * d_ne01 + (ulong)i1 * d_ne00 + i0;
dst[dst_idx] = src0[src_idx];
} else { // Data from src1
src_idx = (ulong)(i2 - d_ne02) * d_ne10 * d_ne11 + (ulong)i1 * d_ne10 + i0;
dst[dst_idx] = src1[src_idx];
}
}
}
kernel void kernel_concat_f32_non_contiguous(
global const char * p_src0, ulong off_src0,
global const char * p_src1, ulong off_src1,
global char * p_dst, ulong off_dst,
long ne00, long ne01, long ne02, long ne03,
ulong nb00, ulong nb01, ulong nb02, ulong nb03,
ulong nb10, ulong nb11, ulong nb12, ulong nb13, // Strides for src1
long d_ne0, long d_ne1, long d_ne2, long d_ne3,
ulong d_nb0, ulong d_nb1, ulong d_nb2, ulong d_nb3,
int dim
) {
global const char * src0_base = p_src0 + off_src0;
global const char * src1_base = p_src1 + off_src1;
global char * dst_base = p_dst + off_dst;
long current_i1 = get_global_id(0); // Index for dst_dim_1
long current_i2 = get_global_id(1); // Index for dst_dim_2
long current_i3 = get_global_id(2); // Index for dst_dim_3
if (current_i1 >= d_ne1 || current_i2 >= d_ne2 || current_i3 >= d_ne3) {
return;
}
global const float * x_val_ptr;
global float * y_val_ptr;
for (long current_i0 = 0; current_i0 < d_ne0; ++current_i0) {
bool use_src0;
long s_i0 = current_i0, s_i1 = current_i1, s_i2 = current_i2, s_i3 = current_i3;
if (dim == 0) {
use_src0 = (current_i0 < ne00);
if (!use_src0) { s_i0 = current_i0 - ne00; }
} else if (dim == 1) {
use_src0 = (current_i1 < ne01);
if (!use_src0) { s_i1 = current_i1 - ne01; }
} else if (dim == 2) {
use_src0 = (current_i2 < ne02);
if (!use_src0) { s_i2 = current_i2 - ne02; }
} else { // dim == 3
use_src0 = (current_i3 < ne03);
if (!use_src0) { s_i3 = current_i3 - ne03; }
}
if (use_src0) {
x_val_ptr = (global const float *)(src0_base + (ulong)s_i3*nb03 + (ulong)s_i2*nb02 + (ulong)s_i1*nb01 + (ulong)s_i0*nb00);
} else {
x_val_ptr = (global const float *)(src1_base + (ulong)s_i3*nb13 + (ulong)s_i2*nb12 + (ulong)s_i1*nb11 + (ulong)s_i0*nb10);
}
y_val_ptr = (global float *)(dst_base + (ulong)current_i3*d_nb3 + (ulong)current_i2*d_nb2 + (ulong)current_i1*d_nb1 + (ulong)current_i0*d_nb0);
*y_val_ptr = *x_val_ptr;
}
}

View File

@@ -0,0 +1,283 @@
#pragma OPENCL EXTENSION cl_khr_fp16 : enable
#ifdef cl_intel_subgroups
#pragma OPENCL EXTENSION cl_intel_subgroups : enable
#else
#pragma OPENCL EXTENSION cl_khr_subgroups : enable
#endif
#ifdef cl_intel_required_subgroup_size
#pragma OPENCL EXTENSION cl_intel_required_subgroup_size : enable
#define INTEL_GPU 1
#define REQD_SUBGROUP_SIZE_16 __attribute__((intel_reqd_sub_group_size(16)))
#define REQD_SUBGROUP_SIZE_32 __attribute__((intel_reqd_sub_group_size(32)))
#elif defined(cl_qcom_reqd_sub_group_size)
#pragma OPENCL EXTENSION cl_qcom_reqd_sub_group_size : enable
#define ADRENO_GPU 1
#define REQD_SUBGROUP_SIZE_64 __attribute__((qcom_reqd_sub_group_size("half")))
#define REQD_SUBGROUP_SIZE_128 __attribute__((qcom_reqd_sub_group_size("full")))
#endif
#define QK4_0 32
typedef char int8_t;
typedef uchar uint8_t;
typedef short int16_t;
typedef ushort uint16_t;
typedef int int32_t;
typedef uint uint32_t;
//------------------------------------------------------------------------------
// block_q4_0
//------------------------------------------------------------------------------
struct block_q4_0
{
half d;
uint8_t qs[QK4_0 / 2];
};
// This function requires the original shuffled weights.
// As a reminder, the original weights are shuffled so that (q[0], q[16]) are
// packed together in a byte, so are (q[1], q[17]) and so on.
inline float block_q_4_0_dot_y_flat(
global uchar * x,
global half * dh,
float sumy,
float16 yl,
int il
) {
float d = *dh;
global ushort * qs = ((global ushort *)x + il/2);
float acc = 0.f;
acc += yl.s0 * (qs[0] & 0x000F);
acc += yl.s1 * (qs[0] & 0x0F00);
acc += yl.s8 * (qs[0] & 0x00F0);
acc += yl.s9 * (qs[0] & 0xF000);
acc += yl.s2 * (qs[1] & 0x000F);
acc += yl.s3 * (qs[1] & 0x0F00);
acc += yl.sa * (qs[1] & 0x00F0);
acc += yl.sb * (qs[1] & 0xF000);
acc += yl.s4 * (qs[2] & 0x000F);
acc += yl.s5 * (qs[2] & 0x0F00);
acc += yl.sc * (qs[2] & 0x00F0);
acc += yl.sd * (qs[2] & 0xF000);
acc += yl.s6 * (qs[3] & 0x000F);
acc += yl.s7 * (qs[3] & 0x0F00);
acc += yl.se * (qs[3] & 0x00F0);
acc += yl.sf * (qs[3] & 0xF000);
return d * (sumy * -8.f + acc);
}
//
// This variant outputs 8 values.
//
#undef N_DST
#undef N_SIMDGROUP
#undef N_SIMDWIDTH
#ifdef INTEL_GPU
#define N_DST 8 // each SIMD group works on 8 rows
#define N_SIMDGROUP 1 // number of SIMD groups in a thread group
#define N_SIMDWIDTH 16 // subgroup size
#elif defined (ADRENO_GPU)
#define N_DST 8
#define N_SIMDGROUP 1
#define N_SIMDWIDTH 64
#endif
inline void mul_vec_q_n_f32_8x_flat(
global char * src0_q,
global half * src0_d,
global float * src1,
global float * dst,
int ne00,
int ne01,
int ne02,
int ne10,
int ne12,
int ne0,
int ne1,
int r2,
int r3
) {
const ulong nb = ne00/QK4_0;
int r0 = get_group_id(0);
int r1 = get_group_id(1);
int im = 0;
int first_row = (r0 * N_SIMDGROUP + get_sub_group_id()) * N_DST;
int i12 = im%ne12;
int i13 = im/ne12;
// The number of scales is the same as the number of blocks.
ulong offset0_d = first_row * nb + (i12/r2)*(nb*ne01) + (i13/r3)*(nb*ne01*ne02);
// Each block contains QK4_0/2 uchars, hence offset for qs is as follows.
ulong offset0_q = (first_row * nb + (i12/r2)*(nb*ne01) + (i13/r3)*(nb*ne01*ne02)) * QK4_0/2;
global uchar * x = (global uchar *) src0_q + offset0_q;
global half * d = (global half *) src0_d + offset0_d;
global float * y = (global float *) src1 + r1*ne10 + im*ne00*ne1;
float16 yl;
float8 sumf = 0.f;
int ix = get_sub_group_local_id()/2;
int il = 8*(get_sub_group_local_id()%2);
global float * yb = y + ix*QK4_0 + il;
for (int ib = ix; ib < nb; ib += N_SIMDWIDTH/2) {
float sumy = 0.f;
sumy += yb[0];
sumy += yb[1];
sumy += yb[2];
sumy += yb[3];
sumy += yb[4];
sumy += yb[5];
sumy += yb[6];
sumy += yb[7];
sumy += yb[16];
sumy += yb[17];
sumy += yb[18];
sumy += yb[19];
sumy += yb[20];
sumy += yb[21];
sumy += yb[22];
sumy += yb[23];
yl.s0 = yb[0];
yl.s1 = yb[1]/256.f;
yl.s2 = yb[2];
yl.s3 = yb[3]/256.f;
yl.s4 = yb[4];
yl.s5 = yb[5]/256.f;
yl.s6 = yb[6];
yl.s7 = yb[7]/256.f;
yl.s8 = yb[16]/16.f;
yl.s9 = yb[17]/4096.f;
yl.sa = yb[18]/16.f;
yl.sb = yb[19]/4096.f;
yl.sc = yb[20]/16.f;
yl.sd = yb[21]/4096.f;
yl.se = yb[22]/16.f;
yl.sf = yb[23]/4096.f;
sumf.s0 += block_q_4_0_dot_y_flat(x + ib*QK4_0/2 + 0*nb*QK4_0/2, d + ib + 0*nb, sumy, yl, il);
sumf.s1 += block_q_4_0_dot_y_flat(x + ib*QK4_0/2 + 1*nb*QK4_0/2, d + ib + 1*nb, sumy, yl, il);
sumf.s2 += block_q_4_0_dot_y_flat(x + ib*QK4_0/2 + 2*nb*QK4_0/2, d + ib + 2*nb, sumy, yl, il);
sumf.s3 += block_q_4_0_dot_y_flat(x + ib*QK4_0/2 + 3*nb*QK4_0/2, d + ib + 3*nb, sumy, yl, il);
sumf.s4 += block_q_4_0_dot_y_flat(x + ib*QK4_0/2 + 4*nb*QK4_0/2, d + ib + 4*nb, sumy, yl, il);
sumf.s5 += block_q_4_0_dot_y_flat(x + ib*QK4_0/2 + 5*nb*QK4_0/2, d + ib + 5*nb, sumy, yl, il);
sumf.s6 += block_q_4_0_dot_y_flat(x + ib*QK4_0/2 + 6*nb*QK4_0/2, d + ib + 6*nb, sumy, yl, il);
sumf.s7 += block_q_4_0_dot_y_flat(x + ib*QK4_0/2 + 7*nb*QK4_0/2, d + ib + 7*nb, sumy, yl, il);
yb += QK4_0 * (N_SIMDWIDTH/2);
}
float8 tot = (float8)(
sub_group_reduce_add(sumf.s0), sub_group_reduce_add(sumf.s1),
sub_group_reduce_add(sumf.s2), sub_group_reduce_add(sumf.s3),
sub_group_reduce_add(sumf.s4), sub_group_reduce_add(sumf.s5),
sub_group_reduce_add(sumf.s6), sub_group_reduce_add(sumf.s7)
);
if (get_sub_group_local_id() == 0) {
if (first_row + 0 < ne01) {
dst[r1*ne0 + im*ne0*ne1 + first_row + 0] = tot.s0;
}
if (first_row + 1 < ne01) {
dst[r1*ne0 + im*ne0*ne1 + first_row + 1] = tot.s1;
}
if (first_row + 2 < ne01) {
dst[r1*ne0 + im*ne0*ne1 + first_row + 2] = tot.s2;
}
if (first_row + 3 < ne01) {
dst[r1*ne0 + im*ne0*ne1 + first_row + 3] = tot.s3;
}
if (first_row + 4 < ne01) {
dst[r1*ne0 + im*ne0*ne1 + first_row + 4] = tot.s4;
}
if (first_row + 5 < ne01) {
dst[r1*ne0 + im*ne0*ne1 + first_row + 5] = tot.s5;
}
if (first_row + 6 < ne01) {
dst[r1*ne0 + im*ne0*ne1 + first_row + 6] = tot.s6;
}
if (first_row + 7 < ne01) {
dst[r1*ne0 + im*ne0*ne1 + first_row + 7] = tot.s7;
}
}
}
#ifdef INTEL_GPU
REQD_SUBGROUP_SIZE_16
#elif defined (ADRENO_GPU)
REQD_SUBGROUP_SIZE_64
#endif
kernel void kernel_mul_mv_id_q4_0_f32_8x_flat(
global char * src0_q,
global half * src0_d,
global float * src1,
ulong offset1,
global char * src2,
ulong offset2,
global float * dst,
ulong offsetd,
int ne00,
int ne01,
int ne02,
ulong nb00,
ulong nb02,
int ne10,
int ne11,
int ne12,
ulong nb11,
ulong nb12,
int ne20,
int ne21,
ulong nb21,
int ne0,
int ne1,
int r2,
int r3
) {
src1 = (global float *)((global char *)src1 + offset1);
src2 = (global char *)((global char *)src2 + offset2);
dst = (global float *)((global char *)dst + offsetd);
const int iid1 = get_group_id(2)/ne20;
const int idx = get_group_id(2)%ne20;
const int i02 = ((global int *)(src2 + iid1*nb21))[idx];
const int i11 = idx%ne11;
const int i12 = iid1;
const int i1 = idx;
const int i2 = i12;
global char * src0_q_cur = src0_q + (i02*nb02/nb00)*(QK4_0/2);
global half * src0_d_cur = src0_d + (i02*nb02/nb00);
global float * src1_cur = (global float *)((global char *) src1 + i11*nb11 + i12*nb12);
global float * dst_cur = dst + i1*ne0 + i2*ne1*ne0;
mul_vec_q_n_f32_8x_flat(src0_q_cur, src0_d_cur, src1_cur, dst_cur, ne00, ne01, ne02, ne10, ne12, ne0, ne1, r2, r3);
}

View File

@@ -0,0 +1,30 @@
kernel void kernel_pad(
global const void * src0_ptr,
ulong src0_offset,
global void * dst_ptr,
ulong dst_offset,
int s_ne0, int s_ne1, int s_ne2,
int d_ne0, int d_ne1, int d_ne2
) {
global const float * src0 = (global const float *)((global const char *)src0_ptr + src0_offset);
global float * dst = (global float *)((global char *)dst_ptr + dst_offset);
int nidx = get_global_id(0);
int idx_d1 = get_group_id(1);
int idx_d2 = get_group_id(2);
if (nidx >= d_ne0) {
return;
}
int dst_el_offset = nidx + idx_d1 * d_ne0 + idx_d2 * d_ne0 * d_ne1;
bool in_src_bounds = (nidx < s_ne0) && (idx_d1 < s_ne1) && (idx_d2 < s_ne2);
if (in_src_bounds) {
int src_el_offset = nidx + idx_d1 * s_ne0 + idx_d2 * s_ne0 * s_ne1;
dst[dst_el_offset] = src0[src_el_offset];
} else {
dst[dst_el_offset] = 0.0f;
}
}

View File

@@ -0,0 +1,39 @@
kernel void kernel_repeat(
global const char * src0_data_in,
global char * dst_data_in,
ulong src0_offset,
ulong dst_offset,
int src0_ne0, int src0_ne1, int src0_ne2, int src0_ne3,
ulong src0_nb0, ulong src0_nb1, ulong src0_nb2, ulong src0_nb3,
int dst_ne0, int dst_ne1, int dst_ne2, int dst_ne3,
ulong dst_nb0, ulong dst_nb1, ulong dst_nb2, ulong dst_nb3
) {
global const char * src0_data = src0_data_in + src0_offset;
global char * dst_data = dst_data_in + dst_offset;
const int d3 = get_global_id(2);
const int d2 = get_global_id(1);
const int d1 = get_global_id(0);
if (d3 >= dst_ne3 || d2 >= dst_ne2 || d1 >= dst_ne1) {
return;
}
const int s3 = d3 % src0_ne3;
const int s2 = d2 % src0_ne2;
const int s1 = d1 % src0_ne1;
const global char * p_src0_slice = src0_data + (ulong)s3*src0_nb3 + (ulong)s2*src0_nb2 + (ulong)s1*src0_nb1;
global char * p_dst_slice = dst_data + (ulong)d3*dst_nb3 + (ulong)d2*dst_nb2 + (ulong)d1*dst_nb1;
for (int d0 = 0; d0 < dst_ne0; ++d0) {
// Determine source index for dimension 0 based on tiling/broadcasting.
const int s0 = d0 % src0_ne0;
const global char * restrict current_src_el_ptr = p_src0_slice + (ulong)s0*src0_nb0;
global char * restrict current_dst_el_ptr = p_dst_slice + (ulong)d0*dst_nb0;
for (int k = 0; k < src0_nb0; ++k) {
current_dst_el_ptr[k] = current_src_el_ptr[k];
}
}
}

View File

@@ -0,0 +1,63 @@
#pragma OPENCL EXTENSION cl_khr_fp16 : enable
#ifdef cl_intel_required_subgroup_size
#pragma OPENCL EXTENSION cl_intel_required_subgroup_size : enable
#define INTEL_GPU 1
#define REQD_SUBGROUP_SIZE_16 __attribute__((intel_reqd_sub_group_size(16)))
#define REQD_SUBGROUP_SIZE_32 __attribute__((intel_reqd_sub_group_size(32)))
#elif defined(cl_qcom_reqd_sub_group_size)
#pragma OPENCL EXTENSION cl_qcom_reqd_sub_group_size : enable
#define ADRENO_GPU 1
#define REQD_SUBGROUP_SIZE_64 __attribute__((qcom_reqd_sub_group_size("half")))
#define REQD_SUBGROUP_SIZE_128 __attribute__((qcom_reqd_sub_group_size("full")))
#endif
kernel void kernel_tanh_f32_nd(
global void * p_src0_base, ulong off_src0_abs,
global void * p_dst_base, ulong off_dst_abs,
int ne00, int ne01, int ne02, int ne03,
ulong nb00, ulong nb01, ulong nb02, ulong nb03,
int ne10, int ne11, int ne12, int ne13,
ulong nb10, ulong nb11, ulong nb12, ulong nb13
) {
int i0 = get_global_id(0);
int i1 = get_global_id(1);
int i2 = get_global_id(2);
if (i0 < ne10 && i1 < ne11 && i2 < ne12) {
for (int i3 = 0; i3 < ne13; ++i3) {
ulong src_offset_in_tensor = (ulong)i0*nb00 + (ulong)i1*nb01 + (ulong)i2*nb02 + (ulong)i3*nb03;
global const float *src_val_ptr = (global const float *)((global char *)p_src0_base + off_src0_abs + src_offset_in_tensor);
ulong dst_offset_in_tensor = (ulong)i0*nb10 + (ulong)i1*nb11 + (ulong)i2*nb12 + (ulong)i3*nb13;
global float *dst_val_ptr = (global float *)((global char *)p_dst_base + off_dst_abs + dst_offset_in_tensor);
*dst_val_ptr = tanh(*src_val_ptr);
}
}
}
kernel void kernel_tanh_f16_nd(
global void * p_src0_base, ulong off_src0_abs,
global void * p_dst_base, ulong off_dst_abs,
int ne00, int ne01, int ne02, int ne03,
ulong nb00, ulong nb01, ulong nb02, ulong nb03,
int ne10, int ne11, int ne12, int ne13,
ulong nb10, ulong nb11, ulong nb12, ulong nb13
) {
int i0 = get_global_id(0);
int i1 = get_global_id(1);
int i2 = get_global_id(2);
if (i0 < ne10 && i1 < ne11 && i2 < ne12) {
for (int i3 = 0; i3 < ne13; ++i3) {
ulong src_offset_in_tensor = (ulong)i0*nb00 + (ulong)i1*nb01 + (ulong)i2*nb02 + (ulong)i3*nb03;
global const half *src_val_ptr = (global const half *)((global char *)p_src0_base + off_src0_abs + src_offset_in_tensor);
ulong dst_offset_in_tensor = (ulong)i0*nb10 + (ulong)i1*nb11 + (ulong)i2*nb12 + (ulong)i3*nb13;
global half *dst_val_ptr = (global half *)((global char *)p_dst_base + off_dst_abs + dst_offset_in_tensor);
*dst_val_ptr = tanh(*src_val_ptr);
}
}
}

View File

@@ -0,0 +1,48 @@
kernel void kernel_timestep_embedding(
global const void * p_timesteps,
ulong off_timesteps,
global void * p_dst,
ulong off_dst,
int dst_nb1_bytes,
int logical_dim,
int max_period
) {
int local_i;
int local_j;
int local_half_dim;
float local_timestep_val;
float local_freq;
float local_arg;
global float * local_embed_data_ptr;
global const float * local_timesteps_input_ptr;
global float * local_dst_output_base_ptr;
local_timesteps_input_ptr = (global const float *)((global char *)p_timesteps + off_timesteps);
local_dst_output_base_ptr = (global float *)((global char *)p_dst + off_dst);
local_i = get_global_id(1);
local_j = get_global_id(0);
local_half_dim = logical_dim / 2;
local_embed_data_ptr = (global float *)((global char *)local_dst_output_base_ptr + local_i * dst_nb1_bytes);
if (logical_dim % 2 != 0 && local_j == ((logical_dim + 1) / 2)) {
local_embed_data_ptr[logical_dim] = 0.0f;
}
if (local_j >= local_half_dim) {
return;
}
local_timestep_val = local_timesteps_input_ptr[local_i];
if (local_half_dim == 0) {
local_freq = 1.0f;
} else {
local_freq = exp(-log((float)max_period) * (float)local_j / (float)local_half_dim);
}
local_arg = local_timestep_val * local_freq;
local_embed_data_ptr[local_j] = cos(local_arg);
local_embed_data_ptr[local_j + local_half_dim] = sin(local_arg);
}

View File

@@ -0,0 +1,121 @@
kernel void kernel_upscale(
global const void * p_src0,
ulong off_src0,
global void * p_dst,
ulong off_dst,
ulong nb00,
ulong nb01,
ulong nb02,
ulong nb03,
int ne10,
int ne11,
int ne12,
int ne13,
float sf0,
float sf1,
float sf2,
float sf3
) {
global const char * src_base = (global const char *)p_src0 + off_src0;
global float * dst_base = (global float *)((global char *)p_dst + off_dst);
int index = get_global_id(0);
int dst_total_elements = ne10 * ne11 * ne12 * ne13;
if (index >= dst_total_elements) {
return;
}
int i10 = index % ne10;
int i11 = (index / ne10) % ne11;
int i12 = (index / (ne10 * ne11)) % ne12;
int i13 = index / (ne10 * ne11 * ne12);
int i00 = (int)(i10 / sf0);
int i01 = (int)(i11 / sf1);
int i02 = (int)(i12 / sf2);
int i03 = (int)(i13 / sf3);
ulong offset_src_element = (ulong)i03 * nb03 + (ulong)i02 * nb02 + (ulong)i01 * nb01 + (ulong)i00 * nb00;
global const float * src_element_ptr = (global const float *)(src_base + offset_src_element);
dst_base[index] = *src_element_ptr;
}
kernel void kernel_upscale_bilinear(
global const void * p_src0,
ulong off_src0,
global void * p_dst,
ulong off_dst,
ulong nb00,
ulong nb01,
ulong nb02,
ulong nb03,
int ne00_src,
int ne01_src,
int ne10_dst,
int ne11_dst,
int ne12_dst,
int ne13_dst,
float sf0,
float sf1,
float sf2,
float sf3
) {
global const char * src_base = (global const char *)p_src0 + off_src0;
global float * dst_base = (global float *)((global char *)p_dst + off_dst);
int index = get_global_id(0);
int dst_total_elements = ne10_dst * ne11_dst * ne12_dst * ne13_dst;
if (index >= dst_total_elements) {
return;
}
int i10_dst = index % ne10_dst;
int i11_dst = (index / ne10_dst) % ne11_dst;
int i12_dst = (index / (ne10_dst * ne11_dst)) % ne12_dst;
int i13_dst = index / (ne10_dst * ne11_dst * ne12_dst);
int i02_src = (int)(i12_dst / sf2);
int i03_src = (int)(i13_dst / sf3);
const float pixel_offset = 0.5f;
float y_src_f = ((float)i11_dst + pixel_offset) / sf1 - pixel_offset;
long y0_src = (long)floor(y_src_f);
long y1_src = y0_src + 1;
y0_src = max(0L, min(y0_src, (long)ne01_src - 1));
y1_src = max(0L, min(y1_src, (long)ne01_src - 1));
float dy = y_src_f - (float)y0_src;
dy = max(0.0f, min(dy, 1.0f));
float x_src_f = ((float)i10_dst + pixel_offset) / sf0 - pixel_offset;
long x0_src = (long)floor(x_src_f);
long x1_src = x0_src + 1;
x0_src = max(0L, min(x0_src, (long)ne00_src - 1));
x1_src = max(0L, min(x1_src, (long)ne00_src - 1));
float dx = x_src_f - (float)x0_src;
dx = max(0.0f, min(dx, 1.0f));
global const float * p_a = (global const float *)(src_base + (ulong)x0_src * nb00 + (ulong)y0_src * nb01 + (ulong)i02_src * nb02 + (ulong)i03_src * nb03);
global const float * p_b = (global const float *)(src_base + (ulong)x1_src * nb00 + (ulong)y0_src * nb01 + (ulong)i02_src * nb02 + (ulong)i03_src * nb03);
global const float * p_c = (global const float *)(src_base + (ulong)x0_src * nb00 + (ulong)y1_src * nb01 + (ulong)i02_src * nb02 + (ulong)i03_src * nb03);
global const float * p_d = (global const float *)(src_base + (ulong)x1_src * nb00 + (ulong)y1_src * nb01 + (ulong)i02_src * nb02 + (ulong)i03_src * nb03);
const float val_a = *p_a;
const float val_b = *p_b;
const float val_c = *p_c;
const float val_d = *p_d;
float result = val_a * (1.0f - dx) * (1.0f - dy) +
val_b * dx * (1.0f - dy) +
val_c * (1.0f - dx) * dy +
val_d * dx * dy;
dst_base[index] = result;
}

View File

@@ -2425,8 +2425,6 @@ void dequantize_row_iq1_m(const block_iq1_m * GGML_RESTRICT x, float * GGML_REST
}
}
static const int8_t kvalues_iq4nl[16] = {-127, -104, -83, -65, -49, -35, -22, -10, 1, 13, 25, 38, 53, 69, 89, 113};
void dequantize_row_iq4_nl(const block_iq4_nl * GGML_RESTRICT x, float * GGML_RESTRICT y, int64_t k) {
assert(k % QK4_NL == 0);
const int64_t nb = k / QK4_NL;

View File

@@ -53,6 +53,9 @@ struct socket_t {
}
};
// macro for nicer error messages on server crash
#define RPC_STATUS_ASSERT(x) if (!(x)) GGML_ABORT("Remote RPC server crashed or returned malformed response")
// all RPC structures must be packed
#pragma pack(push, 1)
// ggml_tensor is serialized into rpc_tensor
@@ -425,7 +428,7 @@ static bool send_rpc_cmd(const std::shared_ptr<socket_t> & sock, enum rpc_cmd cm
static bool check_server_version(const std::shared_ptr<socket_t> & sock) {
rpc_msg_hello_rsp response;
bool status = send_rpc_cmd(sock, RPC_CMD_HELLO, nullptr, 0, &response, sizeof(response));
GGML_ASSERT(status);
RPC_STATUS_ASSERT(status);
if (response.major != RPC_PROTO_MAJOR_VERSION || response.minor > RPC_PROTO_MINOR_VERSION) {
fprintf(stderr, "RPC server version mismatch: %d.%d.%d\n", response.major, response.minor, response.patch);
return false;
@@ -481,7 +484,7 @@ static void ggml_backend_rpc_buffer_free_buffer(ggml_backend_buffer_t buffer) {
ggml_backend_rpc_buffer_context * ctx = (ggml_backend_rpc_buffer_context *)buffer->context;
rpc_msg_free_buffer_req request = {ctx->remote_ptr};
bool status = send_rpc_cmd(ctx->sock, RPC_CMD_FREE_BUFFER, &request, sizeof(request), nullptr, 0);
GGML_ASSERT(status);
RPC_STATUS_ASSERT(status);
delete ctx;
}
@@ -493,7 +496,7 @@ static void * ggml_backend_rpc_buffer_get_base(ggml_backend_buffer_t buffer) {
rpc_msg_buffer_get_base_req request = {ctx->remote_ptr};
rpc_msg_buffer_get_base_rsp response;
bool status = send_rpc_cmd(ctx->sock, RPC_CMD_BUFFER_GET_BASE, &request, sizeof(request), &response, sizeof(response));
GGML_ASSERT(status);
RPC_STATUS_ASSERT(status);
ctx->base_ptr = reinterpret_cast<void *>(response.base_ptr);
return ctx->base_ptr;
}
@@ -545,7 +548,7 @@ static enum ggml_status ggml_backend_rpc_buffer_init_tensor(ggml_backend_buffer_
request.tensor = serialize_tensor(tensor);
bool status = send_rpc_cmd(ctx->sock, RPC_CMD_INIT_TENSOR, &request, sizeof(request), nullptr, 0);
GGML_ASSERT(status);
RPC_STATUS_ASSERT(status);
}
return GGML_STATUS_SUCCESS;
}
@@ -560,7 +563,7 @@ static void ggml_backend_rpc_buffer_set_tensor(ggml_backend_buffer_t buffer, ggm
request.hash = fnv_hash((const uint8_t*)data, size);
rpc_msg_set_tensor_hash_rsp response;
bool status = send_rpc_cmd(ctx->sock, RPC_CMD_SET_TENSOR_HASH, &request, sizeof(request), &response, sizeof(response));
GGML_ASSERT(status);
RPC_STATUS_ASSERT(status);
if (response.result) {
// the server has the same data, no need to send it
return;
@@ -573,7 +576,7 @@ static void ggml_backend_rpc_buffer_set_tensor(ggml_backend_buffer_t buffer, ggm
memcpy(input.data() + sizeof(rpc_tensor), &offset, sizeof(offset));
memcpy(input.data() + sizeof(rpc_tensor) + sizeof(offset), data, size);
bool status = send_rpc_cmd(ctx->sock, RPC_CMD_SET_TENSOR, input.data(), input.size());
GGML_ASSERT(status);
RPC_STATUS_ASSERT(status);
}
static void ggml_backend_rpc_buffer_get_tensor(ggml_backend_buffer_t buffer, const ggml_tensor * tensor, void * data, size_t offset, size_t size) {
@@ -583,7 +586,7 @@ static void ggml_backend_rpc_buffer_get_tensor(ggml_backend_buffer_t buffer, con
request.offset = offset;
request.size = size;
bool status = send_rpc_cmd(ctx->sock, RPC_CMD_GET_TENSOR, &request, sizeof(request), data, size);
GGML_ASSERT(status);
RPC_STATUS_ASSERT(status);
}
static bool ggml_backend_rpc_buffer_cpy_tensor(ggml_backend_buffer_t buffer, const ggml_tensor * src, ggml_tensor * dst) {
@@ -601,7 +604,7 @@ static bool ggml_backend_rpc_buffer_cpy_tensor(ggml_backend_buffer_t buffer, con
request.dst = serialize_tensor(dst);
rpc_msg_copy_tensor_rsp response;
bool status = send_rpc_cmd(ctx->sock, RPC_CMD_COPY_TENSOR, &request, sizeof(request), &response, sizeof(response));
GGML_ASSERT(status);
RPC_STATUS_ASSERT(status);
return response.result;
}
@@ -609,7 +612,7 @@ static void ggml_backend_rpc_buffer_clear(ggml_backend_buffer_t buffer, uint8_t
ggml_backend_rpc_buffer_context * ctx = (ggml_backend_rpc_buffer_context *)buffer->context;
rpc_msg_buffer_clear_req request = {ctx->remote_ptr, value};
bool status = send_rpc_cmd(ctx->sock, RPC_CMD_BUFFER_CLEAR, &request, sizeof(request), nullptr, 0);
GGML_ASSERT(status);
RPC_STATUS_ASSERT(status);
}
static ggml_backend_buffer_i ggml_backend_rpc_buffer_interface = {
@@ -635,7 +638,7 @@ static ggml_backend_buffer_t ggml_backend_rpc_buffer_type_alloc_buffer(ggml_back
rpc_msg_alloc_buffer_rsp response;
auto sock = get_socket(buft_ctx->endpoint);
bool status = send_rpc_cmd(sock, RPC_CMD_ALLOC_BUFFER, &request, sizeof(request), &response, sizeof(response));
GGML_ASSERT(status);
RPC_STATUS_ASSERT(status);
if (response.remote_ptr != 0) {
ggml_backend_buffer_t buffer = ggml_backend_buffer_init(buft,
ggml_backend_rpc_buffer_interface,
@@ -650,7 +653,7 @@ static ggml_backend_buffer_t ggml_backend_rpc_buffer_type_alloc_buffer(ggml_back
static size_t get_alignment(const std::shared_ptr<socket_t> & sock) {
rpc_msg_get_alignment_rsp response;
bool status = send_rpc_cmd(sock, RPC_CMD_GET_ALIGNMENT, nullptr, 0, &response, sizeof(response));
GGML_ASSERT(status);
RPC_STATUS_ASSERT(status);
return response.alignment;
}
@@ -662,7 +665,7 @@ static size_t ggml_backend_rpc_buffer_type_get_alignment(ggml_backend_buffer_typ
static size_t get_max_size(const std::shared_ptr<socket_t> & sock) {
rpc_msg_get_max_size_rsp response;
bool status = send_rpc_cmd(sock, RPC_CMD_GET_MAX_SIZE, nullptr, 0, &response, sizeof(response));
GGML_ASSERT(status);
RPC_STATUS_ASSERT(status);
return response.max_size;
}
@@ -683,7 +686,7 @@ static size_t ggml_backend_rpc_buffer_type_get_alloc_size(ggml_backend_buffer_ty
rpc_msg_get_alloc_size_rsp response;
bool status = send_rpc_cmd(sock, RPC_CMD_GET_ALLOC_SIZE, &request, sizeof(request), &response, sizeof(response));
GGML_ASSERT(status);
RPC_STATUS_ASSERT(status);
return response.alloc_size;
} else {
@@ -761,7 +764,7 @@ static enum ggml_status ggml_backend_rpc_graph_compute(ggml_backend_t backend, g
rpc_msg_graph_compute_rsp response;
auto sock = get_socket(rpc_ctx->endpoint);
bool status = send_rpc_cmd(sock, RPC_CMD_GRAPH_COMPUTE, input.data(), input.size(), &response, sizeof(response));
GGML_ASSERT(status);
RPC_STATUS_ASSERT(status);
return (enum ggml_status)response.result;
}
@@ -835,7 +838,7 @@ bool ggml_backend_is_rpc(ggml_backend_t backend) {
static void get_device_memory(const std::shared_ptr<socket_t> & sock, size_t * free, size_t * total) {
rpc_msg_get_device_memory_rsp response;
bool status = send_rpc_cmd(sock, RPC_CMD_GET_DEVICE_MEMORY, nullptr, 0, &response, sizeof(response));
GGML_ASSERT(status);
RPC_STATUS_ASSERT(status);
*free = response.free_mem;
*total = response.total_mem;
}

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@@ -149,8 +149,6 @@ typedef sycl::float2 dfloat2;
#define MMVQ_MAX_BATCH_SIZE 8
static const int8_t kvalues_iq4nl[16]={-127, -104, -83, -65, -49, -35, -22, -10, 1, 13, 25, 38, 53, 69, 89, 113};
static int g_all_sycl_device_count = -1;
static bool g_ggml_backend_sycl_buffer_type_initialized = false;

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@@ -265,6 +265,17 @@ static void dequantize_row_q6_K_sycl(const void *vx, dst_t *y, const int64_t k,
#endif
}
template <typename dst_t>
static void dequantize_row_q6_K_sycl_reorder(const void * vx, dst_t * y, const int64_t k, dpct::queue_ptr stream) {
const int64_t nb = k / QK_K;
dpct::has_capability_or_fail(stream->get_device(), { sycl::aspect::fp16 });
stream->parallel_for(
sycl::nd_range<3>(sycl::range<3>(1, 1, nb) * sycl::range<3>(1, 1, 64), sycl::range<3>(1, 1, 64)),
[=](sycl::nd_item<3> item_ct1) { dequantize_block_q6_K_reorder(vx, y, item_ct1, nb); });
}
template <typename dst_t>
static void dequantize_row_iq1_s_sycl(const void *vx, dst_t *y, const int64_t k,
dpct::queue_ptr stream) {
@@ -530,7 +541,11 @@ to_fp16_sycl_t ggml_get_to_fp16_sycl(ggml_type type, ggml_tensor * dst) {
case GGML_TYPE_Q5_K:
return dequantize_row_q5_K_sycl;
case GGML_TYPE_Q6_K:
return dequantize_row_q6_K_sycl;
if (dst->src[0]->extra && ((ggml_tensor_extra_gpu *) dst->src[0]->extra)->optimized_feature.reorder) {
return dequantize_row_q6_K_sycl_reorder;
} else {
return dequantize_row_q6_K_sycl;
}
case GGML_TYPE_IQ1_S:
return dequantize_row_iq1_s_sycl;
case GGML_TYPE_IQ1_M:
@@ -587,7 +602,11 @@ to_fp32_sycl_t ggml_get_to_fp32_sycl(ggml_type type, ggml_tensor *dst) {
case GGML_TYPE_Q5_K:
return dequantize_row_q5_K_sycl;
case GGML_TYPE_Q6_K:
return dequantize_row_q6_K_sycl;
if (dst->src[0]->extra && ((ggml_tensor_extra_gpu *) dst->src[0]->extra)->optimized_feature.reorder) {
return dequantize_row_q6_K_sycl_reorder;
} else {
return dequantize_row_q6_K_sycl;
}
case GGML_TYPE_IQ1_S:
return dequantize_row_iq1_s_sycl;
case GGML_TYPE_IQ1_M:

View File

@@ -1,8 +1,12 @@
#include "cpy.hpp"
#include <float.h>
#include <string>
#include "dequantize.hpp"
#include "ggml-sycl/common.hpp"
#include "ggml-sycl/presets.hpp"
#include "ggml.h"
static __dpct_inline__ int best_index_int8(int n, const int8_t * val, float x) {
if (x <= val[0]) {
@@ -116,6 +120,15 @@ static void cpy_blck_f32_q8_0(const char * cxi, char * cdsti) {
}
}
/* quantized type same copy */
template<typename T>
static void cpy_blck_q_q(const char * cxi, char * cdsti) {
const T * xi = (const T *) cxi;
T * dsti = (T *) cdsti;
*dsti = *xi;
}
static void cpy_blck_q8_0_f32(const char * cxi, char * cdsti) {
float * cdstf = (float *) (cdsti);
@@ -311,6 +324,34 @@ template <dequantize_kernel_t dequant, int qk> static void cpy_blck_q_f32(const
}
}
template <typename T, int qk>
static void cpy_q_q(const char * cx, char * cdst, const int ne, const int ne00, const int ne01, const int ne02,
const int nb00, const int nb01, const int nb02, const int nb03, const int ne10, const int ne11,
const int ne12, const int nb10, const int nb11, const int nb12, const int nb13,
const sycl::nd_item<3> & item_ct1) {
const int i = (item_ct1.get_local_range(2) * item_ct1.get_group(2) + item_ct1.get_local_id(2)) * qk;
if (i >= ne) {
return;
}
const int i03 = i / (ne00 * ne01 * ne02);
const int i02 = (i - i03 * ne00 * ne01 * ne02) / (ne00 * ne01);
const int i01 = (i - i03 * ne00 * ne01 * ne02 - i02 * ne01 * ne00) / ne00;
const int i00 = i - i03 * ne00 * ne01 * ne02 - i02 * ne01 * ne00 - i01 * ne00;
const int x_offset = (i00 / qk) * nb00 + i01 * nb01 + i02 * nb02 + i03 * nb03;
const int i13 = i / (ne10 * ne11 * ne12);
const int i12 = (i - i13 * ne10 * ne11 * ne12) / (ne10 * ne11);
const int i11 = (i - i13 * ne10 * ne11 * ne12 - i12 * ne10 * ne11) / ne10;
const int i10 = i - i13 * ne10 * ne11 * ne12 - i12 * ne10 * ne11 - i11 * ne10;
const int dst_offset = (i10 / qk) * nb10 + i11 * nb11 + i12 * nb12 + i13 * nb13;
cpy_blck_q_q<T>(cx + x_offset, cdst + dst_offset);
}
template <cpy_kernel_t cpy_blck, int qk>
static void cpy_f32_q(const char * cx, char * cdst, const int ne, const int ne00, const int ne01, const int ne02,
const int nb00, const int nb01, const int nb02, const int nb03, const int ne10, const int ne11,
@@ -322,6 +363,7 @@ static void cpy_f32_q(const char * cx, char * cdst, const int ne, const int ne00
return;
}
const int i03 = i / (ne00 * ne01 * ne02);
const int i02 = (i - i03 * ne00 * ne01 * ne02) / (ne00 * ne01);
const int i01 = (i - i03 * ne00 * ne01 * ne02 - i02 * ne01 * ne00) / ne00;
@@ -615,6 +657,70 @@ static void ggml_cpy_i32_i32_sycl(const char * cx, char * cdst, const int ne, co
}
}
static void ggml_cpy_q8_0_q8_0(const char * cx, char * cdst, const int ne, const int ne00, const int ne01,
const int ne02, const int nb00, const int nb01, const int nb02, const int nb03,
const int ne10, const int ne11, const int ne12, const int nb10, const int nb11,
const int nb12, const int nb13, queue_ptr stream) {
const int num_blocks = ceil_div(ne, SYCL_CPY_BLOCK_SIZE);
stream->parallel_for(
sycl::nd_range<3>(sycl::range<3>(1, 1, num_blocks) * sycl::range<3>(1, 1, SYCL_CPY_BLOCK_SIZE),
sycl::range<3>(1, 1, SYCL_CPY_BLOCK_SIZE)), [=](sycl::nd_item<3> item_ct1) {
cpy_q_q<block_q8_0, QK8_0>(cx, cdst, ne, ne00, ne01, ne02, nb00, nb01, nb02, nb03, ne10, ne11, ne12, nb10, nb11, nb12, nb13, item_ct1);
});
}
static void ggml_cpy_q5_0_q5_0(const char * cx, char * cdst, const int ne, const int ne00, const int ne01,
const int ne02, const int nb00, const int nb01, const int nb02, const int nb03,
const int ne10, const int ne11, const int ne12, const int nb10, const int nb11,
const int nb12, const int nb13, queue_ptr stream) {
const int num_blocks = ceil_div(ne, SYCL_CPY_BLOCK_SIZE);
stream->parallel_for(
sycl::nd_range<3>(sycl::range<3>(1, 1, num_blocks) * sycl::range<3>(1, 1, SYCL_CPY_BLOCK_SIZE),
sycl::range<3>(1, 1, SYCL_CPY_BLOCK_SIZE)), [=](sycl::nd_item<3> item_ct1) {
cpy_q_q<block_q5_0, QK5_0>(cx, cdst, ne, ne00, ne01, ne02, nb00, nb01, nb02, nb03, ne10, ne11, ne12, nb10, nb11, nb12, nb13, item_ct1);
});
}
static void ggml_cpy_q5_1_q5_1(const char * cx, char * cdst, const int ne, const int ne00, const int ne01,
const int ne02, const int nb00, const int nb01, const int nb02, const int nb03,
const int ne10, const int ne11, const int ne12, const int nb10, const int nb11,
const int nb12, const int nb13, queue_ptr stream) {
const int num_blocks = ceil_div(ne, SYCL_CPY_BLOCK_SIZE);
stream->parallel_for(
sycl::nd_range<3>(sycl::range<3>(1, 1, num_blocks) * sycl::range<3>(1, 1, SYCL_CPY_BLOCK_SIZE),
sycl::range<3>(1, 1, SYCL_CPY_BLOCK_SIZE)), [=](sycl::nd_item<3> item_ct1) {
cpy_q_q<block_q5_1, QK5_1>(cx, cdst, ne, ne00, ne01, ne02, nb00, nb01, nb02, nb03, ne10, ne11, ne12, nb10, nb11, nb12, nb13, item_ct1);
});
}
static void ggml_cpy_q4_0_q4_0(const char * cx, char * cdst, const int ne, const int ne00, const int ne01,
const int ne02, const int nb00, const int nb01, const int nb02, const int nb03,
const int ne10, const int ne11, const int ne12, const int nb10, const int nb11,
const int nb12, const int nb13, queue_ptr stream) {
const int num_blocks = ceil_div(ne, SYCL_CPY_BLOCK_SIZE);
stream->parallel_for(
sycl::nd_range<3>(sycl::range<3>(1, 1, num_blocks) * sycl::range<3>(1, 1, SYCL_CPY_BLOCK_SIZE), sycl::range<3>(1, 1, SYCL_CPY_BLOCK_SIZE)), [=](sycl::nd_item<3> item_ct1) {
cpy_q_q<block_q4_0, QK4_0>(cx, cdst, ne, ne00, ne01, ne02, nb00, nb01, nb02, nb03, ne10, ne11, ne12, nb10, nb11, nb12, nb13, item_ct1);
});
}
static void ggml_cpy_q4_1_q4_1(const char * cx, char * cdst, const int ne, const int ne00, const int ne01,
const int ne02, const int nb00, const int nb01, const int nb02, const int nb03,
const int ne10, const int ne11, const int ne12, const int nb10, const int nb11,
const int nb12, const int nb13, queue_ptr stream) {
const int num_blocks = ceil_div(ne, SYCL_CPY_BLOCK_SIZE);
stream->parallel_for(
sycl::nd_range<3>(sycl::range<3>(1, 1, num_blocks) * sycl::range<3>(1, 1, SYCL_CPY_BLOCK_SIZE), sycl::range<3>(1, 1, SYCL_CPY_BLOCK_SIZE)), [=](sycl::nd_item<3> item_ct1) {
cpy_q_q<block_q4_1, QK4_1>(cx, cdst, ne, ne00, ne01, ne02, nb00, nb01, nb02, nb03, ne10, ne11, ne12, nb10, nb11, nb12, nb13, item_ct1);
});
}
void ggml_sycl_cpy(ggml_backend_sycl_context & ctx, const ggml_tensor * src0, const ggml_tensor * src1) try {
// Unlike other operators ggml_sycl_cpy takes 2 distinct tensors instead of a dst ggml_tensor and rely on its src field
scope_op_debug_print scope_dbg_print(__func__, src1, /*num_src=*/0,
@@ -632,8 +738,10 @@ void ggml_sycl_cpy(ggml_backend_sycl_context & ctx, const ggml_tensor * src0, co
char * src0_ddc = (char *) src0->data;
char * src1_ddc = (char *) src1->data;
if (src0->type == GGML_TYPE_F32 && src1->type == GGML_TYPE_F32) {
if ((src0->type == src1->type) && (ggml_is_contiguous(src0) && ggml_is_contiguous(src1))) {
GGML_SYCL_DEBUG("%s: memcpy path\n", __func__);
main_stream->memcpy(src1_ddc, src0_ddc, ggml_nbytes(src0));
} else if (src0->type == GGML_TYPE_F32 && src1->type == GGML_TYPE_F32) {
ggml_cpy_f32_f32_sycl(src0_ddc, src1_ddc, ne, ne00, ne01, ne02, nb00, nb01, nb02, nb03, ne10, ne11, ne12, nb10,
nb11, nb12, nb13, main_stream);
} else if (src0->type == GGML_TYPE_F32 && src1->type == GGML_TYPE_F16) {
@@ -684,6 +792,16 @@ void ggml_sycl_cpy(ggml_backend_sycl_context & ctx, const ggml_tensor * src0, co
} else if (src0->type == GGML_TYPE_F32 && src1->type == GGML_TYPE_IQ4_NL) {
ggml_cpy_f32_iq4_nl_sycl(src0_ddc, src1_ddc, ne, ne00, ne01, ne02, nb00, nb01, nb02, nb03, ne10, ne11, ne12,
nb10, nb11, nb12, nb13, main_stream);
} else if (src0->type == GGML_TYPE_Q8_0 && src1->type == GGML_TYPE_Q8_0) {
ggml_cpy_q8_0_q8_0(src0_ddc, src1_ddc, ne, ne00, ne01, ne02, nb00, nb01, nb02, nb03, ne10, ne11, ne12, nb10, nb11, nb12, nb13, main_stream);
} else if (src0->type == GGML_TYPE_Q5_0 && src1->type == GGML_TYPE_Q5_0) {
ggml_cpy_q5_0_q5_0(src0_ddc, src1_ddc, ne, ne00, ne01, ne02, nb00, nb01, nb02, nb03, ne10, ne11, ne12, nb10, nb11, nb12, nb13, main_stream);
} else if (src0->type == GGML_TYPE_Q5_1 && src1->type == GGML_TYPE_Q5_1) {
ggml_cpy_q5_1_q5_1(src0_ddc, src1_ddc, ne, ne00, ne01, ne02, nb00, nb01, nb02, nb03, ne10, ne11, ne12, nb10, nb11, nb12, nb13, main_stream);
} else if (src0->type == GGML_TYPE_Q4_0 && src1->type == GGML_TYPE_Q4_0) {
ggml_cpy_q4_0_q4_0(src0_ddc, src1_ddc, ne, ne00, ne01, ne02, nb00, nb01, nb02, nb03, ne10, ne11, ne12, nb10, nb11, nb12, nb13, main_stream);
} else if (src0->type == GGML_TYPE_Q4_1 && src1->type == GGML_TYPE_Q4_1) {
ggml_cpy_q4_1_q4_1(src0_ddc, src1_ddc, ne, ne00, ne01, ne02, nb00, nb01, nb02, nb03, ne10, ne11, ne12, nb10, nb11, nb12, nb13, main_stream);
} else {
GGML_LOG_ERROR("%s: unsupported type combination (%s to %s)\n", __func__, ggml_type_name(src0->type),
ggml_type_name(src1->type));

View File

@@ -538,6 +538,38 @@ static void dequantize_block_q6_K(const void * __restrict__ vx, dst_t * __restri
#endif
}
template <typename dst_t>
static void dequantize_block_q6_K_reorder(const void * __restrict__ vx, dst_t * __restrict__ yy,
const sycl::nd_item<3> & item_ct1, int64_t n_blocks) {
const int64_t ib = item_ct1.get_group(2);
const int64_t tid = item_ct1.get_local_id(2);
const int64_t ip = tid / 32; // ip is 0 or 1
const int64_t il = tid - 32 * ip; // 0...32
const int64_t is = 8 * ip + il / 16;
const uint8_t * base_ptr = static_cast<const uint8_t *>(vx);
const auto ql_offset = ib * (QK_K / 2);
const auto qh_offset = (QK_K / 2) * n_blocks + (QK_K / 4) * ib;
const auto base_scales_offset = (QK_K / 2) * n_blocks + (QK_K / 4) * n_blocks + (QK_K / 16) * ib;
const auto base_d_offset = ((QK_K / 2) + (QK_K / 4) + (QK_K / 16)) * n_blocks;
const uint8_t * ql_ptr = base_ptr + ql_offset;
const uint8_t * qh_ptr = base_ptr + qh_offset;
const uint8_t * scales_ptr = base_ptr + base_scales_offset;
const ggml_half * d = (const ggml_half *) (base_ptr + base_d_offset) + ib;
dst_t * y = yy + ib * QK_K + 128 * ip + il;
const uint8_t * ql = ql_ptr + 64 * ip + il;
const uint8_t qh = *(qh_ptr + 32 * ip + il);
const int8_t * sc = reinterpret_cast<const int8_t *>(scales_ptr + is);
y[0] = *d * sc[0] * ((int8_t) ((ql[0] & 0xF) | (((qh >> 0) & 3) << 4)) - 32);
y[32] = *d * sc[2] * ((int8_t) ((ql[32] & 0xF) | (((qh >> 2) & 3) << 4)) - 32);
y[64] = *d * sc[4] * ((int8_t) ((ql[0] >> 4) | (((qh >> 4) & 3) << 4)) - 32);
y[96] = *d * sc[6] * ((int8_t) ((ql[32] >> 4) | (((qh >> 6) & 3) << 4)) - 32);
}
template<typename dst_t>
static void dequantize_block_iq2_xxs(const void * __restrict__ vx, dst_t * __restrict__ yy,
const sycl::nd_item<3> &item_ct1,

View File

@@ -354,7 +354,8 @@ ggml_backend_sycl_buffer_init_tensor(ggml_backend_buffer_t buffer,
assert(tensor->view_src->buffer->buft == buffer->buft);
return GGML_STATUS_SUCCESS;
}
if ((tensor->type == GGML_TYPE_Q4_0 || tensor->type == GGML_TYPE_Q4_K) && !g_ggml_sycl_disable_optimize) {
if ((tensor->type == GGML_TYPE_Q4_0 || tensor->type == GGML_TYPE_Q4_K || tensor->type == GGML_TYPE_Q6_K) &&
!g_ggml_sycl_disable_optimize) {
ggml_tensor_extra_gpu * extra = new ggml_tensor_extra_gpu{};
tensor->extra = extra;
ctx->tensor_extras.push_back(extra); //used to release it when destroy ctx.
@@ -2989,6 +2990,7 @@ inline bool ggml_sycl_supports_reorder_mul_mat_sycl(enum ggml_type type) {
case GGML_TYPE_Q4_0:
return true;
case GGML_TYPE_Q4_K:
case GGML_TYPE_Q6_K:
return !g_ggml_sycl_prioritize_dmmv;
default:
return false;
@@ -3008,6 +3010,7 @@ inline bool ggml_sycl_supports_reorder_mmvq(enum ggml_type type) {
switch (type) {
case GGML_TYPE_Q4_0:
case GGML_TYPE_Q4_K:
case GGML_TYPE_Q6_K:
return true;
default:
return false;
@@ -3092,6 +3095,50 @@ static void reorder_qw_q4_k(uint8_t * data_device, size_t size, size_t offset, d
sycl::free(tmp_buf, *stream);
}
static void reorder_qw_q6_k(uint8_t * data_device, size_t size, size_t offset, dpct::queue_ptr stream) {
GGML_ASSERT(size % sizeof(block_q6_K) == 0);
GGML_ASSERT(offset % sizeof(block_q6_K) == 0);
const int nblocks = size / sizeof(block_q6_K);
auto * tmp_buf = sycl::malloc_shared<uint8_t>(size, *stream);
SYCL_CHECK(CHECK_TRY_ERROR((*stream).memcpy(tmp_buf, data_device, size).wait()));
auto * ql_ptr = data_device;
auto * qh_ptr = ql_ptr + (QK_K / 2) * nblocks;
auto * scales_ptr = qh_ptr + (QK_K / 4) * nblocks;
sycl::half * dm_ptr = (sycl::half *) (scales_ptr + (QK_K / 16) * nblocks);
stream
->parallel_for(nblocks,
[=](auto i) {
const block_q6_K * x = (const block_q6_K *) tmp_buf;
const int ib = i;
const uint8_t * ql = x[ib].ql;
const uint8_t * qh = x[ib].qh;
uint8_t * base_ql_ptr = ql_ptr + (QK_K / 2) * ib;
uint8_t * base_qh_ptr = qh_ptr + (QK_K / 4) * ib;
uint8_t * base_scales_ptr = scales_ptr + (QK_K / 16) * ib;
for (int j = 0; j < QK_K / 2; ++j) {
base_ql_ptr[j] = ql[j];
}
for (int j = 0; j < QK_K / 4; ++j) {
base_qh_ptr[j] = qh[j];
}
for (int j = 0; j < QK_K / 16; ++j) {
base_scales_ptr[j] = x[ib].scales[j];
}
dm_ptr[ib] = x[ib].d;
})
.wait_and_throw();
sycl::free(tmp_buf, *stream);
}
static void reorder_qw(const ggml_tensor * src0, dpct::queue_ptr stream) {
uint8_t * data_device = (uint8_t *) src0->data;
size_t ncols = src0->ne[0];
@@ -3105,6 +3152,9 @@ static void reorder_qw(const ggml_tensor * src0, dpct::queue_ptr stream) {
case GGML_TYPE_Q4_K:
reorder_qw_q4_k(data_device, size, 0, stream);
break;
case GGML_TYPE_Q6_K:
reorder_qw_q6_k(data_device, size, 0, stream);
break;
default:
GGML_ABORT("reorder_qw() called with unsupported type");
break;
@@ -4226,6 +4276,9 @@ static bool ggml_backend_sycl_device_supports_op(ggml_backend_dev_t dev, const g
{
ggml_type src0_type = op->src[0]->type;
ggml_type src1_type = op->src[1]->type;
if (src0_type == src1_type && (ggml_is_contiguous(op->src[0]) && ggml_is_contiguous(op->src[1])) && src0_type != GGML_TYPE_BF16) {
return true;
}
if (src0_type == GGML_TYPE_F32 && src1_type == GGML_TYPE_F32) {
return true;
}
@@ -4271,6 +4324,21 @@ static bool ggml_backend_sycl_device_supports_op(ggml_backend_dev_t dev, const g
if (src0_type == GGML_TYPE_F32 && src1_type == GGML_TYPE_IQ4_NL) {
return true;
}
if(src0_type == GGML_TYPE_Q8_0 && src1_type == GGML_TYPE_Q8_0) {
return true;
}
if(src0_type == GGML_TYPE_Q5_0 && src1_type == GGML_TYPE_Q5_0) {
return true;
}
if(src0_type == GGML_TYPE_Q5_1 && src1_type == GGML_TYPE_Q5_1) {
return true;
}
if(src0_type == GGML_TYPE_Q4_0 && src1_type == GGML_TYPE_Q4_0) {
return true;
}
if(src0_type == GGML_TYPE_Q4_1 && src1_type == GGML_TYPE_Q4_1) {
return true;
}
return false;
}
case GGML_OP_CONCAT:

View File

@@ -31,11 +31,10 @@ static void mul_mat_vec_q_reorder(const void * __restrict__ vx, const void * __r
float partial_sum = 0.0f;
for (int i = sg.get_local_linear_id() / block_elements_per_subgroup; i < blocks_per_row; i += blocks_per_subgroup) {
const int ibx = row * blocks_per_row + i; // x block index
// TODO: Generalize offsets, right now only works for quantizations that don't split high and low bits
const int bx_offset = block_type::get_block_offset(ibx);
const int d_offset = block_type::get_d_offset(nrows, ncols, ibx);
const int ibx = row * blocks_per_row + i; // x block index
const auto bx_offset = block_type::get_block_offset(ibx, nblocks);
const auto d_offset = block_type::get_d_offset(nrows, ncols, ibx);
// Y block index that aligns with ibx
const int iby = i * block_type::block_to_q8_1_ratio();
const int8_t* q8_1_quant_ptr = (const int8_t*)vy + iby * QK8_1;
@@ -46,7 +45,7 @@ static void mul_mat_vec_q_reorder(const void * __restrict__ vx, const void * __r
// x block quant index when casting the quants to int
const int iqs = elem + block_traits::vdr_mmvq * (sg.get_local_linear_id() % block_elements_per_subgroup);
partial_sum += reorder_vec_dot_q_sycl()(vx, bx_offset, d_offset, q8_1_quant_ptr, q8_1_ds_ptr, iqs, nblocks);
partial_sum += reorder_vec_dot_q_sycl()(vx, bx_offset, d_offset, q8_1_quant_ptr, q8_1_ds_ptr, iqs);
}
}
@@ -785,6 +784,24 @@ static void mul_mat_vec_q5_K_q8_1_sycl(const void *vx, const void *vy,
}
}
static void reorder_mul_mat_vec_q6_k_q8_1_sycl(const void * vx, const void * vy, float * dst, const int ncols,
const int nrows, dpct::queue_ptr stream) {
GGML_ASSERT(ncols % QK_K == 0);
const int block_num_y = ceil_div(nrows, GGML_SYCL_MMV_Y);
constexpr size_t num_subgroups = 16;
GGML_ASSERT(block_num_y % num_subgroups == 0);
const sycl::range<3> global_size(1, GGML_SYCL_MMV_Y, block_num_y * WARP_SIZE);
const sycl::range<3> workgroup_size(1, GGML_SYCL_MMV_Y, num_subgroups * WARP_SIZE);
stream->submit([&](sycl::handler & cgh) {
cgh.parallel_for(sycl::nd_range<3>(global_size, workgroup_size),
[=](sycl::nd_item<3> nd_item) [[sycl::reqd_sub_group_size(WARP_SIZE)]] {
mul_mat_vec_q_reorder<reorder_vec_dot_q_sycl<GGML_TYPE_Q6_K>>(vx, vy, dst, ncols, nrows,
nd_item);
});
});
}
static void mul_mat_vec_q6_K_q8_1_sycl(const void *vx, const void *vy,
float *dst, const int ncols,
const int nrows,
@@ -1070,7 +1087,14 @@ void ggml_sycl_op_mul_mat_vec_q(ggml_backend_sycl_context & ctx, const ggml_tens
mul_mat_vec_q5_K_q8_1_sycl(src0_dd_i, src1_ddq_i_bs, dst_dd_i_bs, ne00, row_diff, stream);
break;
case GGML_TYPE_Q6_K:
mul_mat_vec_q6_K_q8_1_sycl(src0_dd_i, src1_ddq_i_bs, dst_dd_i_bs, ne00, row_diff, stream);
if ((ggml_tensor_extra_gpu *) dst->src[0]->extra &&
((ggml_tensor_extra_gpu *) dst->src[0]->extra)->optimized_feature.reorder) {
GGML_SYCL_DEBUG("Calling reorder_mul_mat_vec_q6_k_q8_1_sycl\n");
reorder_mul_mat_vec_q6_k_q8_1_sycl(src0_dd_i, src1_ddq_i_bs, dst_dd_i_bs, ne00, row_diff, stream);
} else {
GGML_SYCL_DEBUG("Calling mul_mat_vec_q6_k_q8_1_sycl\n");
mul_mat_vec_q6_K_q8_1_sycl(src0_dd_i, src1_ddq_i_bs, dst_dd_i_bs, ne00, row_diff, stream);
}
break;
case GGML_TYPE_IQ1_S:
mul_mat_vec_iq1_s_q8_1_sycl(src0_dd_i, src1_ddq_i_bs, dst_dd_i_bs, ne00, row_diff, stream);

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@@ -14,12 +14,13 @@
#ifndef GGML_SYCL_QUANTS_HPP
#define GGML_SYCL_QUANTS_HPP
#include <utility>
#include "ggml-common.h"
#include "ggml.h"
namespace ggml_sycl_reordered {
// The reordered block moves quants (qs) and scales(d) to two
// uniform regions of memory that is contiguous in the same tensor.
// What this means is that instead of having:
@@ -32,7 +33,6 @@ namespace ggml_sycl_reordered {
template <ggml_type type> struct block_q_t;
// qk number of weights / quants in a block
// qr number of weights in a byte (described as 'before dequantization')
// for quantization types that has low and high bits split, qr is calculated with
@@ -47,10 +47,12 @@ template <> struct block_q_t<GGML_TYPE_Q4_0> {
static constexpr uint32_t vdr_mmvq = 2;
};
static constexpr int get_block_offset(const int block_index) { return block_index * (traits::qk / traits::qr); }
static constexpr std::pair<int, int> get_block_offset(const int block_index, const int /* nblocks */) {
return { block_index * (traits::qk / traits::qr), 0 };
}
static constexpr int get_d_offset(int nrows, int ncols, const int block_index) {
return (ncols / traits::qr * nrows) + block_index * sizeof(ggml_half);
static constexpr std::pair<int, int> get_d_offset(int nrows, int ncols, const int block_index) {
return { (ncols / traits::qr * nrows) + block_index * sizeof(ggml_half), 0 };
}
static constexpr int block_to_q8_1_ratio() { return traits::qk / QK8_1; }
@@ -64,20 +66,46 @@ template <> struct block_q_t<GGML_TYPE_Q4_K> {
static constexpr uint32_t vdr_mmvq = 2;
};
static constexpr int get_block_offset(const int block_index) { return block_index * (traits::qk / traits::qr); }
static constexpr std::pair<int, int> get_block_offset(const int block_index, const int /* nblocks */) {
return { block_index * (traits::qk / traits::qr), 0 };
}
static constexpr int get_d_offset(int nrows, int ncols, const int block_index) {
static constexpr std::pair<int, int> get_d_offset(int nrows, int ncols, const int block_index) {
auto nblocks = (nrows * (ncols / traits::qk));
return (nblocks * QK_K / 2) + (nblocks * K_SCALE_SIZE) + (block_index * sizeof(ggml_half2));
return { nblocks * (QK_K / 2),
(nblocks * QK_K / 2) + (nblocks * K_SCALE_SIZE) + (block_index * sizeof(ggml_half2)) };
}
static constexpr int block_to_q8_1_ratio() { return traits::qk / QK8_1; }
constexpr size_t get_total_qs_bytes(int nblocks) { return nblocks * QK_K / 2; }
constexpr size_t get_dm_offset(int nblocks) { return get_total_qs_bytes(nblocks) + nblocks * K_SCALE_SIZE; }
};
template <> struct block_q_t<GGML_TYPE_Q6_K> {
struct traits {
static constexpr uint32_t qk = QK_K;
static constexpr uint32_t qi = QI6_K;
static constexpr uint32_t qr = QR6_K;
static constexpr uint32_t vdr_mmvq = 1;
};
static constexpr std::pair<int, int> get_block_offset(const int block_index, const int n_blocks) {
auto low_bits_index = block_index * (traits::qk / traits::qr);
// the index of high bits it's after all low bits
auto high_bits_index = n_blocks * (QK_K / 2) + (block_index * (QK_K / 4));
return { low_bits_index, high_bits_index };
}
static constexpr std::pair<int, int> get_d_offset(int nrows, int ncols, const int block_index) {
auto nblocks = (nrows * (ncols / traits::qk));
auto total_qs_bytes = nblocks * (QK_K / 2) + nblocks * (QK_K / 4);
auto block_scales = total_qs_bytes + block_index * (QK_K / 16);
auto sb_scale = total_qs_bytes + nblocks * (QK_K / 16);
return { block_scales, sb_scale };
}
static constexpr int block_to_q8_1_ratio() { return traits::qk / QK8_1; }
};
} // namespace ggml_sycl_reordered
#endif // GGML_SYCL_QUANTS_HPP

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@@ -284,10 +284,11 @@ template <> struct reorder_vec_dot_q_sycl<GGML_TYPE_Q4_0> {
return d4 * (sumi * ds8f.x() - (8 * q4_0_traits::vdr_mmvq / q4_0_traits::qi) * ds8f.y());
}
__dpct_inline__ float operator()(const void * __restrict__ vbq, const int ibx_offset, const int d_offset,
const int8_t* q8_1_quant_ptr, const sycl::half2* q8_1_ds, const int & iqs, int /* nblocks */) {
const uint8_t * bq4_0 = static_cast<const uint8_t *>(vbq) + ibx_offset;
const ggml_half d = *(reinterpret_cast<const ggml_half *>(static_cast<const uint8_t *>(vbq) + d_offset));
__dpct_inline__ float operator()(const void * __restrict__ vbq, const std::pair<int, int> ibx_offset,
const std::pair<int, int> d_offset, const int8_t * q8_1_quant_ptr,
const sycl::half2 * q8_1_ds, const int & iqs) {
const uint8_t * bq4_0 = static_cast<const uint8_t *>(vbq) + ibx_offset.first;
const ggml_half d = *(reinterpret_cast<const ggml_half *>(static_cast<const uint8_t *>(vbq) + d_offset.first));
int v[q4_0_traits::vdr_mmvq];
int u[2 * q4_0_traits::vdr_mmvq];
@@ -346,15 +347,15 @@ template <> struct reorder_vec_dot_q_sycl<GGML_TYPE_Q4_K> {
using q4_k_block = ggml_sycl_reordered::block_q_t<GGML_TYPE_Q4_K>;
using q4_k_traits = typename q4_k_block::traits;
float operator()(const void * __restrict__ vbq, const int ibx_offset, const int d_offset,
const int8_t* q8_1_quant_ptr, const sycl::half2* q8_1_ds, const int & iqs, int nblocks) {
const int ib = ibx_offset / (QK_K / 2);
__dpct_inline__ float operator()(const void * __restrict__ vbq, const std::pair<int, int> ibx_offset,
const std::pair<int, int> d_offset, const int8_t * q8_1_quant_ptr,
const sycl::half2 * q8_1_ds, const int & iqs) {
const int ib = ibx_offset.first / (QK_K / 2);
const uint8_t * base = static_cast<const uint8_t *>(vbq);
const uint8_t * qs = base + ibx_offset;
const int total_qs_bytes = nblocks * (QK_K / 2);
const uint8_t * scs = base + total_qs_bytes + ib * K_SCALE_SIZE;
const ggml_half2 * dms = reinterpret_cast<const ggml_half2 *>(base + d_offset);
const uint8_t * qs = base + ibx_offset.first;
const uint8_t * scs = base + d_offset.first + ib * K_SCALE_SIZE;
const ggml_half2 * dms = reinterpret_cast<const ggml_half2 *>(base + d_offset.second);
const int bq8_offset = QR4_K * ((iqs / 2) / (QI8_1 / 2));
const int * q4 = (const int *) (qs + 16 * bq8_offset + 4 * ((iqs / 2) % 4));
@@ -395,6 +396,66 @@ template <> struct reorder_vec_dot_q_sycl<GGML_TYPE_Q4_K> {
}
};
template <> struct reorder_vec_dot_q_sycl<GGML_TYPE_Q6_K> {
static constexpr ggml_type gtype = GGML_TYPE_Q6_K;
using q6_k_block = ggml_sycl_reordered::block_q_t<GGML_TYPE_Q6_K>;
using q6_k_traits = typename q6_k_block::traits;
__dpct_inline__ float vec_dot_q6_K_q8_1_impl_mmvq(const int vl, const int vh, const int * __restrict__ u,
const int8_t * __restrict__ scales, const float d,
const float * __restrict__ d8) {
float sumf = 0.0f;
#pragma unroll
for (int i = 0; i < QR6_K; ++i) {
const int sc = scales[4 * i];
const int vil = (vl >> (4 * i)) & 0x0F0F0F0F;
const int vih = ((vh >> (4 * i)) << 4) & 0x30303030;
const int vi = dpct::vectorized_binary<sycl::char4>((vil | vih), 0x20202020,
dpct::sub_sat()); // vi = (vil | vih) - 32
sumf += d8[i] * (dpct::dp4a(vi, u[i], 0) * sc); // SIMD dot product
}
return d * sumf;
}
__dpct_inline__ float operator()(const void * __restrict__ vbq, const std::pair<int, int> ibx_offset,
const std::pair<int, int> d_offset, const int8_t * q8_1_quant_ptr, const sycl::half2 * q8_1_ds,
const int iqs) {
const int ib = ibx_offset.first / (QK_K / 2);
const uint8_t * base = static_cast<const uint8_t *>(vbq);
const uint8_t * ql = base + ibx_offset.first;
const uint8_t * qh = base + ibx_offset.second;
const int8_t * scales = reinterpret_cast<const int8_t *>(base + d_offset.first);
const ggml_half * d = (const ggml_half *) (base + d_offset.second) + ib;
const int bq8_offset = 2 * QR6_K * (iqs / (QI6_K / 2)) + (iqs % (QI6_K / 2)) / (QI6_K / 4);
const int scale_offset = (QI6_K / 4) * (iqs / (QI6_K / 2)) + (iqs % (QI6_K / 2)) / (QI6_K / 8);
const int vh_shift = 2 * ((iqs % (QI6_K / 2)) / (QI6_K / 4));
const int vl = get_int_from_uint8(ql, iqs);
const int vh = get_int_from_uint8(qh, (QI6_K / 4) * (iqs / (QI6_K / 2)) + iqs % (QI6_K / 4)) >> vh_shift;
const int8_t * scs = scales + scale_offset;
int u[QR6_K];
float d8[QR6_K];
#pragma unroll
for (int i = 0; i < QR6_K; ++i) {
u[i] = get_int_from_int8_aligned(q8_1_quant_ptr + (bq8_offset + 2 * i) * QK8_1, iqs % QI8_1);
const sycl::half2 ds_values = *(q8_1_ds + bq8_offset + 2 * i);
d8[i] = ds_values[0];
}
return vec_dot_q6_K_q8_1_impl_mmvq(vl, vh, u, scs, *d, d8);
}
};
#define VDR_Q4_0_Q8_1_MMVQ 2
#define VDR_Q4_0_Q8_1_MMQ 4

File diff suppressed because it is too large Load Diff

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@@ -0,0 +1,98 @@
#version 450
#include "types.comp"
layout (binding = 0) readonly buffer A {A_TYPE data_a[];}; // src0 - kernel: [K, Cout, Cin]
layout (binding = 1) readonly buffer B {B_TYPE data_b[];}; // src1 - input: [L, Cin]
layout (binding = 2) writeonly buffer D {D_TYPE data_d[];}; // dst - result [KL, Cout]
layout(local_size_x = 128 , local_size_y = 1, local_size_z = 1) in;
layout (push_constant) uniform parameter {
uint32_t Cout;
uint32_t Cin;
uint32_t K;
uint32_t L;
uint32_t KL;
uint32_t nb01;
uint32_t nb02;
uint32_t nb11;
uint32_t nb1;
int32_t s0;
} p;
uint32_t Cout_idx = gl_WorkGroupID.x;
const uint32_t bs = gl_WorkGroupSize.x;
uint32_t tid = gl_LocalInvocationID.x;
// Code is more straightforward if we assume it is bs*s0+K instead of (bs-1)*s0+K.
uint32_t tmp_len = bs*p.s0+p.K;
shared D_TYPE tmp[4096];
uint splitWork(uint workSize){
return (bs + workSize -1) / bs;
}
void main(){
for(uint32_t i = 0; i < splitWork(tmp_len); i++){
uint32_t idx = i*bs+tid;
if(idx < tmp_len){
tmp[idx] = 0.0;
}
}
uint32_t L_blocks = splitWork(p.L);
for(uint32_t L_block_id = 0; L_block_id < L_blocks; L_block_id++){
if(L_block_id > 0){
barrier();
// Shift values in tmp to the current processing window
for(int i = 0; i < splitWork(tmp_len); i++){
uint32_t idx = i*bs+tid;
if(idx >= bs*p.s0 && idx < tmp_len){
tmp[idx-bs*p.s0] = tmp[idx];
tmp[idx] = 0.0;
}else if(idx >= p.K && idx < bs*p.s0){
tmp[idx] = 0.0;
}
}
}
barrier();
// Save contributions of the block to tmp
uint32_t L_idx = L_block_id*bs + tid;
for(uint32_t K_idx = 0; K_idx < p.K; K_idx++){
D_TYPE dp = 0.0;
for(uint32_t Cin_idx = 0; Cin_idx < p.Cin; Cin_idx++){
A_TYPE elemKrn = data_a[K_idx + Cout_idx * p.nb01 + Cin_idx * p.nb02];
if(L_idx < p.L){
B_TYPE elemInp = data_b[L_idx + Cin_idx*p.nb11];
dp = fma(elemKrn, elemInp, dp);
}
}
tmp[tid*p.s0 + K_idx] += dp;
barrier();
}
// Save the computed values except the last block that can have different size
uint32_t KLb_idx = L_block_id*bs*p.s0;
if(L_block_id < L_blocks-1){
for(uint32_t s0_idx = 0; s0_idx < p.s0; s0_idx++){
uint32_t sh_idx = p.s0*tid+s0_idx;
uint32_t KL_idx = KLb_idx+sh_idx;
if(KL_idx < p.KL){
data_d[KL_idx + Cout_idx*p.nb1] = tmp[sh_idx];
}
}
}
}
for(uint32_t i = 0; i < splitWork(tmp_len); i++){
uint32_t idx = i*bs+tid;
uint32_t KL_idx = (L_blocks-1)*bs*p.s0+idx;
if(KL_idx < p.KL){
data_d[KL_idx + Cout_idx*p.nb1] = tmp[idx];
}
}
}

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@@ -622,6 +622,8 @@ void process_shaders() {
string_to_spv("timestep_embedding_f32", "timestep_embedding.comp", merge_maps(base_dict, {{"A_TYPE", "float"}, {"D_TYPE", "float"}}));
string_to_spv("conv_transpose_1d_f32", "conv_transpose_1d.comp", {{"A_TYPE", "float"}, {"B_TYPE", "float"}, {"D_TYPE", "float"}});
string_to_spv("pool2d_f32", "pool2d.comp", merge_maps(base_dict, {{"A_TYPE", "float"}, {"D_TYPE", "float"}}));
string_to_spv("rwkv_wkv6_f32", "wkv6.comp", merge_maps(base_dict, {{"A_TYPE", "float"}}));

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@@ -935,6 +935,9 @@ class GGUFWriter:
def add_eom_token_id(self, id: int) -> None:
self.add_uint32(Keys.Tokenizer.EOM_ID, id)
def add_classifier_output_labels(self, labels: Sequence[str]) -> None:
self.add_array(Keys.Classifier.OUTPUT_LABELS.format(arch=self.arch), labels)
# for vision models
def add_clip_has_vision_encoder(self, value: bool) -> None:

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@@ -333,7 +333,9 @@ class TensorNameMap:
"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
"encoder.layer.{bid}.mlp.gated_layers_v", # jina-bert-v2 (split up/gate, no longer used)
"encoder.layer.{bid}.mlp.gated_layers", # jina-bert-v2 (GEGLU)
"encoder.layer.{bid}.mlp.up_gated_layer", # jina-v2-code (GEGLU)
"model.layers.{bid}.residual_mlp.w3", # arctic
"encoder.layers.{bid}.mlp.dense_h_to_4h", # chatglm
"transformer.h.{bid}.mlp.c_fc_1", # exaone
@@ -370,7 +372,7 @@ class TensorNameMap:
"model.layers.layers.{bid}.mlp.gate_proj", # plamo
"model.layers.{bid}.feed_forward.w1", # internlm2
"encoder.layers.{bid}.mlp.fc12", # nomic-bert
"encoder.layer.{bid}.mlp.gated_layers_w", # jina-bert-v2
"encoder.layer.{bid}.mlp.gated_layers_w", # jina-bert-v2 (split up/gate, no longer used)
"transformer.h.{bid}.mlp.linear_1", # refact
"model.layers.{bid}.residual_mlp.w1", # arctic
"transformer.h.{bid}.mlp.c_fc_0", # exaone

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@@ -61,7 +61,10 @@ extern "C" {
struct llama_model;
struct llama_context;
struct llama_sampler;
struct llama_kv_cache;
typedef struct llama_memory_i * llama_memory_t;
struct llama_kv_cache; // DEPRECATED (use llama_memory instead)
typedef int32_t llama_pos;
typedef int32_t llama_token;
@@ -493,9 +496,11 @@ extern "C" {
DEPRECATED(LLAMA_API int32_t llama_n_vocab (const struct llama_vocab * vocab), "use llama_vocab_n_tokens instead");
LLAMA_API const struct llama_model * llama_get_model (const struct llama_context * ctx);
LLAMA_API struct llama_kv_cache * llama_get_kv_self ( struct llama_context * ctx);
LLAMA_API llama_memory_t llama_get_memory (const struct llama_context * ctx);
LLAMA_API enum llama_pooling_type llama_pooling_type(const struct llama_context * ctx); // TODO: rename to llama_get_pooling_type
DEPRECATED(LLAMA_API struct llama_kv_cache * llama_get_kv_self(struct llama_context * ctx), "use llama_get_memory instead");
LLAMA_API const struct llama_vocab * llama_model_get_vocab(const struct llama_model * model);
LLAMA_API enum llama_rope_type llama_model_rope_type(const struct llama_model * model);
@@ -509,6 +514,13 @@ extern "C" {
// Get the model's RoPE frequency scaling factor
LLAMA_API float llama_model_rope_freq_scale_train(const struct llama_model * model);
// Returns the number of classifier outputs (only valid for classifier models)
// Undefined behavior for non-classifier models
LLAMA_API uint32_t llama_model_n_cls_out(const struct llama_model * model);
// Returns label of classifier output by index (<n_cls_out). Returns nullptr if no label provided
LLAMA_API const char * llama_model_cls_label(const struct llama_model * model, uint32_t i);
LLAMA_API enum llama_vocab_type llama_vocab_type(const struct llama_vocab * vocab);
LLAMA_API int32_t llama_vocab_n_tokens(const struct llama_vocab * vocab);
@@ -609,7 +621,81 @@ extern "C" {
int32_t il_end);
//
// KV cache
// Memory
//
// Clear the memory contents
// If data == true, the data buffers will also be cleared together with the metadata
LLAMA_API void llama_memory_clear(
llama_memory_t mem,
bool data);
// Removes all tokens that belong to the specified sequence and have positions in [p0, p1)
// Returns false if a partial sequence cannot be removed. Removing a whole sequence never fails
// seq_id < 0 : match any sequence
// p0 < 0 : [0, p1]
// p1 < 0 : [p0, inf)
LLAMA_API bool llama_memory_seq_rm(
llama_memory_t mem,
llama_seq_id seq_id,
llama_pos p0,
llama_pos p1);
// Copy all tokens that belong to the specified sequence to another sequence
// p0 < 0 : [0, p1]
// p1 < 0 : [p0, inf)
LLAMA_API void llama_memory_seq_cp(
llama_memory_t mem,
llama_seq_id seq_id_src,
llama_seq_id seq_id_dst,
llama_pos p0,
llama_pos p1);
// Removes all tokens that do not belong to the specified sequence
LLAMA_API void llama_memory_seq_keep(
llama_memory_t mem,
llama_seq_id seq_id);
// Adds relative position "delta" to all tokens that belong to the specified sequence and have positions in [p0, p1)
// p0 < 0 : [0, p1]
// p1 < 0 : [p0, inf)
LLAMA_API void llama_memory_seq_add(
llama_memory_t mem,
llama_seq_id seq_id,
llama_pos p0,
llama_pos p1,
llama_pos delta);
// Integer division of the positions by factor of `d > 1`
// p0 < 0 : [0, p1]
// p1 < 0 : [p0, inf)
LLAMA_API void llama_memory_seq_div(
llama_memory_t mem,
llama_seq_id seq_id,
llama_pos p0,
llama_pos p1,
int d);
// Returns the smallest position present in the memory for the specified sequence
// This is typically non-zero only for SWA caches
// Note that all positions in the range [pos_min, pos_max] are guaranteed to be present in the memory
// Return -1 if the sequence is empty
LLAMA_API llama_pos llama_memory_seq_pos_min(
llama_memory_t mem,
llama_seq_id seq_id);
// Returns the largest position present in the memory for the specified sequence
// Note that all positions in the range [pos_min, pos_max] are guaranteed to be present in the memory
// Return -1 if the sequence is empty
LLAMA_API llama_pos llama_memory_seq_pos_max(
llama_memory_t mem,
llama_seq_id seq_id);
// Check if the memory supports shifting
LLAMA_API bool llama_memory_can_shift(llama_memory_t mem);
//
// KV cache for self-attention (TODO: deprecate in favor of llama_memory)
//
// Returns the number of tokens in the KV cache (slow, use only for debug)
@@ -622,86 +708,95 @@ extern "C" {
"Use llama_kv_self_seq_pos_max() and llama_kv_self_seq_pos_min() instead (https://github.com/ggml-org/llama.cpp/issues/13793)");
// Clear the KV cache - both cell info is erased and KV data is zeroed
LLAMA_API void llama_kv_self_clear(
struct llama_context * ctx);
DEPRECATED(LLAMA_API void llama_kv_self_clear(
struct llama_context * ctx),
"Use llama_memory_clear() instead");
// Removes all tokens that belong to the specified sequence and have positions in [p0, p1)
// Returns false if a partial sequence cannot be removed. Removing a whole sequence never fails
// seq_id < 0 : match any sequence
// p0 < 0 : [0, p1]
// p1 < 0 : [p0, inf)
LLAMA_API bool llama_kv_self_seq_rm(
DEPRECATED(LLAMA_API bool llama_kv_self_seq_rm(
struct llama_context * ctx,
llama_seq_id seq_id,
llama_pos p0,
llama_pos p1);
llama_pos p1),
"Use llama_memory_seq_rm() instead");
// Copy all tokens that belong to the specified sequence to another sequence
// Note that this does not allocate extra KV cache memory - it simply assigns the tokens to the new sequence
// p0 < 0 : [0, p1]
// p1 < 0 : [p0, inf)
LLAMA_API void llama_kv_self_seq_cp(
DEPRECATED(LLAMA_API void llama_kv_self_seq_cp(
struct llama_context * ctx,
llama_seq_id seq_id_src,
llama_seq_id seq_id_dst,
llama_pos p0,
llama_pos p1);
llama_pos p1),
"Use llama_memory_seq_cp() instead");
// Removes all tokens that do not belong to the specified sequence
LLAMA_API void llama_kv_self_seq_keep(
DEPRECATED(LLAMA_API void llama_kv_self_seq_keep(
struct llama_context * ctx,
llama_seq_id seq_id);
llama_seq_id seq_id),
"Use llama_memory_seq_keep() instead");
// Adds relative position "delta" to all tokens that belong to the specified sequence and have positions in [p0, p1)
// If the KV cache is RoPEd, the KV data is updated accordingly:
// - lazily on next llama_decode()
// p0 < 0 : [0, p1]
// p1 < 0 : [p0, inf)
LLAMA_API void llama_kv_self_seq_add(
DEPRECATED(LLAMA_API void llama_kv_self_seq_add(
struct llama_context * ctx,
llama_seq_id seq_id,
llama_pos p0,
llama_pos p1,
llama_pos delta);
llama_pos delta),
"Use llama_memory_seq_add() instead");
// Integer division of the positions by factor of `d > 1`
// If the KV cache is RoPEd, the KV data is updated accordingly:
// - lazily on next llama_decode()
// p0 < 0 : [0, p1]
// p1 < 0 : [p0, inf)
LLAMA_API void llama_kv_self_seq_div(
DEPRECATED(void llama_kv_self_seq_div(
struct llama_context * ctx,
llama_seq_id seq_id,
llama_pos p0,
llama_pos p1,
int d);
int d),
"Use llama_memory_seq_div() instead");
// Returns the smallest position present in the KV cache for the specified sequence
// This is typically non-zero only for SWA caches
// Note that all positions in the range [pos_min, pos_max] are guaranteed to be present in the KV cache
// Return -1 if the sequence is empty
LLAMA_API llama_pos llama_kv_self_seq_pos_min(
DEPRECATED(LLAMA_API llama_pos llama_kv_self_seq_pos_min(
struct llama_context * ctx,
llama_seq_id seq_id);
llama_seq_id seq_id),
"Use llama_memory_seq_pos_min() instead");
// Returns the largest position present in the KV cache for the specified sequence
// Note that all positions in the range [pos_min, pos_max] are guaranteed to be present in the KV cache
// Return -1 if the sequence is empty
LLAMA_API llama_pos llama_kv_self_seq_pos_max(
DEPRECATED(LLAMA_API llama_pos llama_kv_self_seq_pos_max(
struct llama_context * ctx,
llama_seq_id seq_id);
llama_seq_id seq_id),
"Use llama_memory_seq_pos_max() instead");
// Defragment the KV cache
// This will be applied:
// - lazily on next llama_decode()
LLAMA_API DEPRECATED(void llama_kv_self_defrag(struct llama_context * ctx),
DEPRECATED(LLAMA_API void llama_kv_self_defrag(struct llama_context * ctx),
"simply remove this call, the context will automatically decide when to do a defragmentation based on 'defrag_thold'");
// Check if the context supports KV cache shifting
LLAMA_API bool llama_kv_self_can_shift(const struct llama_context * ctx);
DEPRECATED(LLAMA_API bool llama_kv_self_can_shift(const struct llama_context * ctx),
"use llama_memory_can_shift() instead");
// Apply the KV cache updates (such as K-shifts, defragmentation, etc.)
LLAMA_API DEPRECATED(void llama_kv_self_update(struct llama_context * ctx),
DEPRECATED(LLAMA_API void llama_kv_self_update(struct llama_context * ctx),
"simply remove this call, updates are applied lazily on the next llama_decode()");
//
@@ -709,7 +804,7 @@ extern "C" {
//
// Returns the *actual* size in bytes of the state
// (logits, embedding and kv_cache)
// (logits, embedding and memory)
// Only use when saving the state, not when restoring it, otherwise the size may be too small.
LLAMA_API size_t llama_state_get_size(struct llama_context * ctx);
LLAMA_API DEPRECATED(size_t llama_get_state_size(struct llama_context * ctx),
@@ -765,12 +860,12 @@ extern "C" {
size_t n_token_count),
"use llama_state_save_file instead");
// Get the exact size needed to copy the KV cache of a single sequence
// Get the exact size needed to copy the state of a single sequence
LLAMA_API size_t llama_state_seq_get_size(
struct llama_context * ctx,
llama_seq_id seq_id);
// Copy the KV cache of a single sequence into the specified buffer
// Copy the state of a single sequence into the specified buffer
LLAMA_API size_t llama_state_seq_get_data(
struct llama_context * ctx,
uint8_t * dst,
@@ -836,16 +931,16 @@ extern "C" {
// For encode-decoder contexts, processes the batch using the encoder.
// Can store the encoder output internally for later use by the decoder's cross-attention layers.
// 0 - success
// < 0 - error. the KV cache state is restored to the state before this call
// < 0 - error. the memory state is restored to the state before this call
LLAMA_API int32_t llama_encode(
struct llama_context * ctx,
struct llama_batch batch);
// Process a batch of tokens.
// Requires KV cache.
// Requires the context to have a memory.
// For encode-decoder contexts, processes the batch using the decoder.
// Positive return values does not mean a fatal error, but rather a warning.
// Upon non-zero return values, the KV cache state is restored to the state before this call
// Upon non-zero return values, the memory state is restored to the state before this call
// 0 - success
// 1 - could not find a KV slot for the batch (try reducing the size of the batch or increase the context)
// 2 - aborted
@@ -916,7 +1011,7 @@ extern "C" {
// Get the embeddings for a sequence id
// Returns NULL if pooling_type is LLAMA_POOLING_TYPE_NONE
// when pooling_type == LLAMA_POOLING_TYPE_RANK, returns float[1] with the rank of the sequence
// when pooling_type == LLAMA_POOLING_TYPE_RANK, returns float[n_cls_out] with the rank(s) of the sequence
// otherwise: float[n_embd] (1-dimensional)
LLAMA_API float * llama_get_embeddings_seq(struct llama_context * ctx, llama_seq_id seq_id);

View File

@@ -1 +1 @@
94a83ba5a725ae2aee79df75dd99b2119d0478cc
6a7d170c04789f6ebcf320ed03c1b16973f93bd7

View File

@@ -20,7 +20,6 @@ add_library(llama
llama-hparams.cpp
llama-impl.cpp
llama-io.cpp
llama-kv-cache.cpp
llama-kv-cache-unified.cpp
llama-kv-cache-unified-iswa.cpp
llama-kv-cache-recurrent.cpp

View File

@@ -200,7 +200,6 @@ static const std::map<llm_kv, const char *> LLM_KV_NAMES = {
{ LLM_KV_TOKENIZER_HF_JSON, "tokenizer.huggingface.json" },
{ LLM_KV_TOKENIZER_RWKV, "tokenizer.rwkv.world" },
{ LLM_KV_TOKENIZER_CHAT_TEMPLATE, "tokenizer.chat_template" },
{ LLM_KV_TOKENIZER_CHAT_TEMPLATE_N, "tokenizer.chat_template.%s" },
{ LLM_KV_TOKENIZER_FIM_PRE_ID, "tokenizer.ggml.fim_pre_token_id" },
{ LLM_KV_TOKENIZER_FIM_SUF_ID, "tokenizer.ggml.fim_suf_token_id" },
{ LLM_KV_TOKENIZER_FIM_MID_ID, "tokenizer.ggml.fim_mid_token_id" },
@@ -1707,8 +1706,14 @@ static const std::map<llm_tensor, llm_tensor_info> LLM_TENSOR_INFOS = {
LLM_KV::LLM_KV(llm_arch arch, const char * suffix) : arch(arch), suffix(suffix) {}
std::string LLM_KV::operator()(llm_kv kv) const {
return suffix ? ::format(LLM_KV_NAMES.at(kv), LLM_ARCH_NAMES.at(arch), suffix)
: ::format(LLM_KV_NAMES.at(kv), LLM_ARCH_NAMES.at(arch));
std::string name = ::format(LLM_KV_NAMES.at(kv), LLM_ARCH_NAMES.at(arch));
if (suffix != nullptr) {
name += ".";
name += suffix;
}
return name;
}
std::string LLM_TN_IMPL::str() const {

View File

@@ -196,7 +196,6 @@ enum llm_kv {
LLM_KV_TOKENIZER_HF_JSON,
LLM_KV_TOKENIZER_RWKV,
LLM_KV_TOKENIZER_CHAT_TEMPLATE,
LLM_KV_TOKENIZER_CHAT_TEMPLATE_N,
LLM_KV_TOKENIZER_FIM_PRE_ID,
LLM_KV_TOKENIZER_FIM_SUF_ID,
LLM_KV_TOKENIZER_FIM_MID_ID,

View File

@@ -2,9 +2,9 @@
#include "llama-impl.h"
#include "llama-io.h"
#include "llama-memory.h"
#include "llama-mmap.h"
#include "llama-model.h"
#include "llama-kv-cache.h"
#include <cinttypes>
#include <cstring>
@@ -123,7 +123,7 @@ llama_context::llama_context(
__func__, n_ctx_per_seq, hparams.n_ctx_train);
}
if (!params.swa_full && cparams.n_seq_max > 1) {
if (!params.swa_full && cparams.n_seq_max > 1 && hparams.is_swa_any()) {
LLAMA_LOG_WARN("%s: requested n_seq_max (%u) > 1, but swa_full is not enabled -- performance may be degraded: %s\n",
__func__, cparams.n_seq_max, "https://github.com/ggml-org/llama.cpp/pull/13845#issuecomment-2924800573");
}
@@ -277,10 +277,9 @@ llama_context::llama_context(
int n_nodes_tg = -1;
// simulate full KV cache
llama_kv_cache * kv_self = static_cast<llama_kv_cache *>(memory.get());
const auto kv_state = kv_self->init_full();
if (!kv_state) {
const auto mstate = memory->init_full();
if (!mstate) {
throw std::runtime_error("failed to initialize KV cache");
}
@@ -288,7 +287,7 @@ llama_context::llama_context(
// reserve pp graph first so that buffers are only allocated once
{
auto * gf = graph_reserve(n_tokens, n_seqs, n_tokens, kv_state.get());
auto * gf = graph_reserve(n_tokens, n_seqs, n_tokens, mstate.get());
if (!gf) {
throw std::runtime_error("failed to allocate compute pp buffers");
}
@@ -299,7 +298,7 @@ llama_context::llama_context(
// reserve with tg graph to get the number of splits and nodes
{
auto * gf = graph_reserve(1, 1, 1, kv_state.get());
auto * gf = graph_reserve(1, 1, 1, mstate.get());
if (!gf) {
throw std::runtime_error("failed to allocate compute tg buffers");
}
@@ -310,7 +309,7 @@ llama_context::llama_context(
// reserve again with pp graph to avoid ggml-alloc reallocations during inference
{
auto * gf = graph_reserve(n_tokens, n_seqs, n_tokens, kv_state.get());
auto * gf = graph_reserve(n_tokens, n_seqs, n_tokens, mstate.get());
if (!gf) {
throw std::runtime_error("failed to allocate compute pp buffers");
}
@@ -419,40 +418,68 @@ uint32_t llama_context::n_threads_batch() const {
return cparams.n_threads_batch;
}
llama_kv_cache * llama_context::get_kv_self() {
llama_kv_cache * kv_self = static_cast<llama_kv_cache *>(memory.get());
return kv_self;
llama_memory_t llama_context::get_memory() const {
return memory.get();
}
const llama_kv_cache * llama_context::get_kv_self() const {
llama_kv_cache * kv_self = static_cast<llama_kv_cache *>(memory.get());
return kv_self;
// deprecated
void llama_context::kv_self_defrag_sched() {
if (!memory) {
return;
}
memory_force_optimize = true;
}
bool llama_context::kv_self_update() {
// deprecated
bool llama_context::kv_self_update(bool optimize) {
if (!memory) {
return false;
}
llama_kv_cache * kv_self = static_cast<llama_kv_cache *>(memory.get());
{
// TODO: remove in the future
optimize |= memory_force_optimize;
memory_force_optimize = false;
if (!kv_self->update(*this)) {
// no updates have been performed
return false;
const auto mstate = memory->init_update(this, optimize);
switch (mstate->get_status()) {
case LLAMA_MEMORY_STATUS_SUCCESS:
{
// noop
} break;
case LLAMA_MEMORY_STATUS_NO_UPDATE:
{
// no updates need to be performed
return false;
}
case LLAMA_MEMORY_STATUS_FAILED_PREPARE:
case LLAMA_MEMORY_STATUS_FAILED_COMPUTE:
{
LLAMA_LOG_ERROR("%s: failed to prepare memory update\n", __func__);
return false;
}
}
if (!mstate->apply()) {
LLAMA_LOG_ERROR("%s: failed to apply memory update\n", __func__);
}
}
// if the KV cache did any computation, we have to reserve a new worst-case graph
const auto kv_state = kv_self->init_full();
if (!kv_state) {
throw std::runtime_error("failed to initialize KV cache");
}
// if the memory module did any computation, we have to reserve a new worst-case graph
{
const auto mstate = memory->init_full();
if (!mstate) {
throw std::runtime_error("failed to initialize memory state");
}
const uint32_t n_seqs = cparams.n_seq_max;
const uint32_t n_tokens = std::min(cparams.n_ctx, cparams.n_ubatch);
const uint32_t n_seqs = cparams.n_seq_max;
const uint32_t n_tokens = std::min(cparams.n_ctx, cparams.n_ubatch);
auto * gf = graph_reserve(n_tokens, n_seqs, n_tokens, kv_state.get());
if (!gf) {
LLAMA_LOG_ERROR("%s: failed to reserve graph after the KV cache update\n", __func__);
auto * gf = graph_reserve(n_tokens, n_seqs, n_tokens, mstate.get());
if (!gf) {
LLAMA_LOG_ERROR("%s: failed to reserve graph after the memory update\n", __func__);
}
}
return true;
@@ -814,16 +841,17 @@ int llama_context::encode(llama_batch & inp_batch) {
} break;
case LLAMA_POOLING_TYPE_RANK:
{
// extract the rerank score - a single float per sequence
// extract the rerank score - n_cls_out floats per sequence
auto & embd_seq_out = embd_seq;
const uint32_t n_cls_out = hparams.n_cls_out;
for (uint32_t s = 0; s < ubatch.n_seqs; ++s) {
const llama_seq_id seq_id = ubatch.seq_id[s][0];
if (embd_seq_out.find(seq_id) != embd_seq_out.end()) {
continue;
}
embd_seq_out[seq_id].resize(1);
ggml_backend_tensor_get_async(backend_embd, t_embd, embd_seq_out[seq_id].data(), (seq_id)*sizeof(float), sizeof(float));
embd_seq_out[seq_id].resize(n_cls_out);
ggml_backend_tensor_get_async(backend_embd, t_embd, embd_seq_out[seq_id].data(), (n_cls_out*seq_id)*sizeof(float), n_cls_out*sizeof(float));
}
} break;
case LLAMA_POOLING_TYPE_UNSPECIFIED:
@@ -880,10 +908,8 @@ int llama_context::decode(llama_batch & inp_batch) {
}
}
llama_kv_cache * kv_self = static_cast<llama_kv_cache *>(memory.get());
// temporary allocate memory for the input batch if needed
llama_batch_allocr batch_allocr(inp_batch, inp_batch.pos ? -1 : kv_self->seq_pos_max(0) + 1);
llama_batch_allocr batch_allocr(inp_batch, inp_batch.pos ? -1 : memory->seq_pos_max(0) + 1);
const llama_batch & batch = batch_allocr.batch;
@@ -940,42 +966,49 @@ int llama_context::decode(llama_batch & inp_batch) {
n_outputs_all = 1;
}
bool did_optimize = false;
// handle any pending defrags/shifts
kv_self_update();
kv_self_update(false);
llama_memory_state_ptr kv_state;
bool did_defrag = false;
llama_memory_state_ptr mstate;
while (true) {
kv_state = kv_self->init_batch(batch, cparams.n_ubatch, embd_pooled, /* logits_all */ n_outputs_all == n_tokens_all);
if (!kv_state) {
mstate = memory->init_batch(batch, cparams.n_ubatch, embd_pooled, /* logits_all */ n_outputs_all == n_tokens_all);
if (!mstate) {
return -2;
}
switch (kv_state->get_status()) {
switch (mstate->get_status()) {
case LLAMA_MEMORY_STATUS_SUCCESS:
{
} break;
case LLAMA_MEMORY_STATUS_NO_UPDATE:
{
LLAMA_LOG_ERROR("%s: unexpected memory state status: %d\n", __func__, mstate->get_status());
return -2;
}
case LLAMA_MEMORY_STATUS_FAILED_PREPARE:
{
if (!did_defrag) {
did_defrag = true;
if (!did_optimize) {
did_optimize = true;
kv_self->defrag_sched(-1.0f);
if (kv_self_update()) {
LLAMA_LOG_DEBUG("%s: failed to init batch of size %d, retrying after defrag\n", __func__, batch.n_tokens);
if (kv_self_update(true)) {
LLAMA_LOG_DEBUG("%s: retrying batch size %d after cache optimization\n", __func__, batch.n_tokens);
continue;
}
}
LLAMA_LOG_WARN("%s: failed to find KV cache slot for batch of size %d\n", __func__, batch.n_tokens);
LLAMA_LOG_WARN("%s: failed to find a memory slot for batch of size %d\n", __func__, batch.n_tokens);
return 1;
}
case LLAMA_MEMORY_STATUS_FAILED_COMPUTE:
{
LLAMA_LOG_ERROR("%s: compute failed while preparing batch of size %d\n", __func__, batch.n_tokens);
return -2;
}
}
@@ -992,7 +1025,7 @@ int llama_context::decode(llama_batch & inp_batch) {
int64_t n_outputs_prev = 0;
do {
const auto & ubatch = kv_state->get_ubatch();
const auto & ubatch = mstate->get_ubatch();
// count the outputs in this u_batch
{
@@ -1015,11 +1048,14 @@ int llama_context::decode(llama_batch & inp_batch) {
ggml_backend_sched_set_eval_callback(sched.get(), cparams.cb_eval, cparams.cb_eval_user_data);
ggml_status status;
const auto res = process_ubatch(ubatch, LLM_GRAPH_TYPE_DECODER, kv_state.get(), status);
const auto res = process_ubatch(ubatch, LLM_GRAPH_TYPE_DECODER, mstate.get(), status);
if (!res) {
// the last ubatch failed or was aborted -> remove all positions of that ubatch from the KV cache
llama_pos pos_min[LLAMA_MAX_PARALLEL_SEQUENCES] = { std::numeric_limits<llama_pos>::max() };
llama_pos pos_min[LLAMA_MAX_PARALLEL_SEQUENCES];
for (int s = 0; s < LLAMA_MAX_PARALLEL_SEQUENCES; ++s) {
pos_min[s] = std::numeric_limits<llama_pos>::max();
}
for (uint32_t i = 0; i < ubatch.n_tokens; ++i) {
const auto & seq_id = ubatch.seq_id[i][0];
@@ -1034,7 +1070,7 @@ int llama_context::decode(llama_batch & inp_batch) {
LLAMA_LOG_WARN("%s: removing KV cache entries for seq_id = %d, pos = [%d, +inf)\n", __func__, s, pos_min[s]);
llama_kv_self_seq_rm(this, s, pos_min[s], -1);
memory->seq_rm(s, pos_min[s], -1);
}
switch (status) {
@@ -1128,7 +1164,7 @@ int llama_context::decode(llama_batch & inp_batch) {
}
n_outputs_prev += n_outputs;
} while (kv_state->next());
} while (mstate->next());
// set to total number of outputs in the batch, for use in llama_get_logits_ith
n_outputs = n_outputs_all;
@@ -1137,7 +1173,7 @@ int llama_context::decode(llama_batch & inp_batch) {
{
bool sorted_output = true;
auto & out_ids = kv_state->out_ids();
auto & out_ids = mstate->out_ids();
GGML_ASSERT(out_ids.size() == (size_t) n_outputs_all);
@@ -1189,11 +1225,6 @@ int llama_context::decode(llama_batch & inp_batch) {
// wait for the computation to finish (automatically done when obtaining the model output)
//synchronize();
// decide if we need to defrag the kv cache
if (cparams.defrag_thold > 0.0f) {
kv_self->defrag_sched(cparams.defrag_thold);
}
// Reset state for the next token before backend sync, to allow the CPU activities in the reset to
// overlap with device computation.
ggml_backend_sched_reset(sched.get());
@@ -1810,11 +1841,9 @@ size_t llama_context::state_write_data(llama_io_write_i & io) {
}
}
llama_kv_cache * kv_self = static_cast<llama_kv_cache *>(memory.get());
if (kv_self != nullptr) {
if (memory != nullptr) {
LLAMA_LOG_DEBUG("%s: - writing KV self\n", __func__);
kv_self->state_write(io);
memory->state_write(io);
}
return io.n_bytes();
@@ -1901,9 +1930,7 @@ size_t llama_context::state_read_data(llama_io_read_i & io) {
if (memory) {
LLAMA_LOG_DEBUG("%s: - reading KV self\n", __func__);
llama_kv_cache * kv_self = static_cast<llama_kv_cache *>(memory.get());
kv_self->state_read(io);
memory->state_read(io);
}
return io.n_bytes();
@@ -1913,9 +1940,7 @@ size_t llama_context::state_seq_write_data(llama_io_write_i & io, llama_seq_id s
GGML_UNUSED(seq_id);
if (memory) {
llama_kv_cache * kv_self = static_cast<llama_kv_cache *>(memory.get());
kv_self->state_write(io, seq_id);
memory->state_write(io, seq_id);
}
return io.n_bytes();
@@ -1925,9 +1950,7 @@ size_t llama_context::state_seq_read_data(llama_io_read_i & io, llama_seq_id seq
GGML_UNUSED(seq_id);
if (memory) {
llama_kv_cache * kv_self = static_cast<llama_kv_cache *>(memory.get());
kv_self->state_read(io, seq_id);
memory->state_read(io, seq_id);
}
return io.n_bytes();
@@ -2032,9 +2055,7 @@ void llama_context::opt_epoch_iter(
const uint32_t n_batch = std::min(this->n_batch(), n_ctx);
const uint32_t n_ubatch = std::min(this->n_ubatch(), n_batch);
llama_kv_cache * kv_self = static_cast<llama_kv_cache *>(memory.get());
kv_self->clear();
memory->clear(true);
for (uint32_t pos_ctx = 0; pos_ctx < n_ctx; pos_ctx += n_batch) {
batch.n_tokens = n_batch;
@@ -2057,8 +2078,8 @@ void llama_context::opt_epoch_iter(
int64_t n_outputs_all = n_tokens_all;
auto kv_state = kv_self->init_batch(batch, cparams.n_ubatch, embd_pooled, /* logits_all */ true);
if (!kv_state || kv_state->get_status() != LLAMA_MEMORY_STATUS_SUCCESS) {
auto mstate = memory->init_batch(batch, cparams.n_ubatch, embd_pooled, /* logits_all */ true);
if (!mstate || mstate->get_status() != LLAMA_MEMORY_STATUS_SUCCESS) {
LLAMA_LOG_ERROR("%s: could not initialize batch\n", __func__);
break;
}
@@ -2071,17 +2092,17 @@ void llama_context::opt_epoch_iter(
uint32_t pos_batch = 0;
do {
const auto & ubatch = kv_state->get_ubatch();
const auto & ubatch = mstate->get_ubatch();
n_outputs = ubatch.n_tokens;
if (!kv_state->apply()) {
if (!mstate->apply()) {
LLAMA_LOG_ERROR("%s: failed to update the memory state\n", __func__);
break;
}
auto * gf = graph_init();
auto res = graph_build(ctx_compute.get(), gf, ubatch, LLM_GRAPH_TYPE_DEFAULT, kv_state.get());
auto res = graph_build(ctx_compute.get(), gf, ubatch, LLM_GRAPH_TYPE_DEFAULT, mstate.get());
struct ggml_context * ctx_compute_opt;
{
@@ -2116,7 +2137,7 @@ void llama_context::opt_epoch_iter(
ggml_free(ctx_compute_opt);
pos_batch += ubatch.n_tokens;
} while (kv_state->next());
} while (mstate->next());
}
}
@@ -2277,13 +2298,14 @@ const llama_model * llama_get_model(const llama_context * ctx) {
return &ctx->get_model();
}
// deprecated
llama_kv_cache * llama_get_kv_self(llama_context * ctx) {
return ctx->get_kv_self();
return dynamic_cast<llama_kv_cache *>(ctx->get_memory());
}
// deprecated
void llama_kv_self_update(llama_context * ctx) {
ctx->kv_self_update();
ctx->kv_self_update(false);
}
enum llama_pooling_type llama_pooling_type(const llama_context * ctx) {
@@ -2398,13 +2420,118 @@ int32_t llama_apply_adapter_cvec(
return res ? 0 : -1;
}
//
// memory
//
llama_memory_t llama_get_memory(const struct llama_context * ctx) {
return ctx->get_memory();
}
void llama_memory_clear(llama_memory_t mem, bool data) {
if (!mem) {
return;
}
mem->clear(data);
}
bool llama_memory_seq_rm(
llama_memory_t mem,
llama_seq_id seq_id,
llama_pos p0,
llama_pos p1) {
if (!mem) {
return true;
}
return mem->seq_rm(seq_id, p0, p1);
}
void llama_memory_seq_cp(
llama_memory_t mem,
llama_seq_id seq_id_src,
llama_seq_id seq_id_dst,
llama_pos p0,
llama_pos p1) {
if (!mem) {
return;
}
mem->seq_cp(seq_id_src, seq_id_dst, p0, p1);
}
void llama_memory_seq_keep(
llama_memory_t mem,
llama_seq_id seq_id) {
if (!mem) {
return;
}
mem->seq_keep(seq_id);
}
void llama_memory_seq_add(
llama_memory_t mem,
llama_seq_id seq_id,
llama_pos p0,
llama_pos p1,
llama_pos delta) {
if (!mem) {
return;
}
mem->seq_add(seq_id, p0, p1, delta);
}
void llama_memory_seq_div(
llama_memory_t mem,
llama_seq_id seq_id,
llama_pos p0,
llama_pos p1,
int d) {
if (!mem) {
return;
}
mem->seq_div(seq_id, p0, p1, d);
}
llama_pos llama_memory_seq_pos_min(
llama_memory_t mem,
llama_seq_id seq_id) {
if (!mem) {
return -1;
}
return mem->seq_pos_min(seq_id);
}
llama_pos llama_memory_seq_pos_max(
llama_memory_t mem,
llama_seq_id seq_id) {
if (!mem) {
return -1;
}
return mem->seq_pos_max(seq_id);
}
bool llama_memory_can_shift(llama_memory_t mem) {
if (!mem) {
return false;
}
return mem->get_can_shift();
}
//
// kv cache
//
// deprecated
int32_t llama_kv_self_n_tokens(const llama_context * ctx) {
const auto * kv = ctx->get_kv_self();
const auto * kv = llama_get_memory(ctx);
if (!kv) {
return 0;
}
@@ -2426,7 +2553,7 @@ int32_t llama_kv_self_n_tokens(const llama_context * ctx) {
// deprecated
// note: this is the same as above - will be removed anyway, so it's ok
int32_t llama_kv_self_used_cells(const llama_context * ctx) {
const auto * kv = ctx->get_kv_self();
const auto * kv = llama_get_memory(ctx);
if (!kv) {
return 0;
}
@@ -2445,115 +2572,119 @@ int32_t llama_kv_self_used_cells(const llama_context * ctx) {
return res;
}
// deprecated
void llama_kv_self_clear(llama_context * ctx) {
auto * kv = ctx->get_kv_self();
auto * kv = llama_get_memory(ctx);
if (!kv) {
return;
}
kv->clear();
llama_memory_clear(kv, true);
}
// deprecated
bool llama_kv_self_seq_rm(
llama_context * ctx,
llama_seq_id seq_id,
llama_pos p0,
llama_pos p1) {
auto * kv = ctx->get_kv_self();
auto * kv = llama_get_memory(ctx);
if (!kv) {
return true;
}
return kv->seq_rm(seq_id, p0, p1);
return llama_memory_seq_rm(kv, seq_id, p0, p1);
}
// deprecated
void llama_kv_self_seq_cp(
llama_context * ctx,
llama_seq_id seq_id_src,
llama_seq_id seq_id_dst,
llama_pos p0,
llama_pos p1) {
auto * kv = ctx->get_kv_self();
auto * kv = llama_get_memory(ctx);
if (!kv) {
return;
}
kv->seq_cp(seq_id_src, seq_id_dst, p0, p1);
llama_memory_seq_cp(kv, seq_id_src, seq_id_dst, p0, p1);
}
// deprecated
void llama_kv_self_seq_keep(llama_context * ctx, llama_seq_id seq_id) {
auto * kv = ctx->get_kv_self();
auto * kv = llama_get_memory(ctx);
if (!kv) {
return;
}
kv->seq_keep(seq_id);
llama_memory_seq_keep(kv, seq_id);
}
// deprecated
void llama_kv_self_seq_add(
llama_context * ctx,
llama_seq_id seq_id,
llama_pos p0,
llama_pos p1,
llama_pos delta) {
auto * kv = ctx->get_kv_self();
auto * kv = llama_get_memory(ctx);
if (!kv) {
return;
}
kv->seq_add(seq_id, p0, p1, delta);
llama_memory_seq_add(kv, seq_id, p0, p1, delta);
}
// deprecated
void llama_kv_self_seq_div(
llama_context * ctx,
llama_seq_id seq_id,
llama_pos p0,
llama_pos p1,
int d) {
auto * kv = ctx->get_kv_self();
auto * kv = llama_get_memory(ctx);
if (!kv) {
return;
}
kv->seq_div(seq_id, p0, p1, d);
llama_memory_seq_div(kv, seq_id, p0, p1, d);
}
// deprecated
llama_pos llama_kv_self_seq_pos_min(llama_context * ctx, llama_seq_id seq_id) {
const auto * kv = ctx->get_kv_self();
auto * kv = llama_get_memory(ctx);
if (!kv) {
return -1;
}
return kv->seq_pos_min(seq_id);
return llama_memory_seq_pos_min(kv, seq_id);
}
// deprecated
llama_pos llama_kv_self_seq_pos_max(llama_context * ctx, llama_seq_id seq_id) {
const auto * kv = ctx->get_kv_self();
auto * kv = llama_get_memory(ctx);
if (!kv) {
return -1;
}
return kv->seq_pos_max(seq_id);
return llama_memory_seq_pos_max(kv, seq_id);
}
// deprecated
void llama_kv_self_defrag(llama_context * ctx) {
auto * kv = ctx->get_kv_self();
if (!kv) {
return;
}
// force defrag
kv->defrag_sched(-1.0f);
ctx->kv_self_defrag_sched();
}
// deprecated
bool llama_kv_self_can_shift(const llama_context * ctx) {
const auto * kv = ctx->get_kv_self();
auto * kv = llama_get_memory(ctx);
if (!kv) {
return false;
}
return kv->get_can_shift();
return llama_memory_can_shift(kv);
}
// llama state API

View File

@@ -13,13 +13,12 @@
#include <vector>
struct llama_model;
struct llama_kv_cache;
class llama_io_read_i;
class llama_io_write_i;
class llama_memory_i;
class llama_memory_state_i;
struct llama_memory_i;
struct llama_memory_state_i;
struct llama_context {
// init scheduler and compute buffers, reserve worst-case graphs
@@ -47,12 +46,12 @@ struct llama_context {
uint32_t n_threads() const;
uint32_t n_threads_batch() const;
llama_kv_cache * get_kv_self();
const llama_kv_cache * get_kv_self() const;
llama_memory_t get_memory() const;
// return true of the KV cache was updated
// TODO: remove
bool kv_self_update();
bool kv_self_update(bool optimize);
void kv_self_defrag_sched();
enum llama_pooling_type pooling_type() const;
@@ -231,6 +230,9 @@ private:
std::unique_ptr<llama_memory_i> memory;
// TODO: temporary, until the llama_kv_self_defrag() API is removed
bool memory_force_optimize = false;
// decode output (2-dimensional array: [n_outputs][n_vocab])
size_t logits_size = 0; // capacity (of floats) for logits
float * logits = nullptr;

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