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https://github.com/ROCm/composable_kernel.git
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12235112a10ecbe47acead9a03564cb42c4624c2
* Extract base class for elementwise * Refactor interface of DeviceGemmReduce. Do not use tuple in interface * [What] Rename d into reduce in gemm + reduction related code [Why] Prepare to add d term for add * Unify base class of gemm + reduce and gemm + bias + add + reduce * 1. Rename gemm_bias_add_reduce for external api 2. Refine cmake * Add normalize device operation * [What] Reorder the argument [Why] Because d0 is also the input of c. * Add type string * Add example of gemm_bias_add_layernorm via external api * Refactor example code * clang-format * Fix compile error * clang-format * Add external api for gemm_add_add_layernorm and normalize * Add client example * clang-format
Docker script
docker run \
-it \
--privileged \
--group-add sudo \
-w /root/workspace \
-v ${PATH_TO_LOCAL_WORKSPACE}:/root/workspace \
rocm/tensorflow:rocm5.1-tf2.6-dev \
/bin/bash
Install the new rocm-cmake version
https://github.com/RadeonOpenCompute/rocm-cmake
Build
mkdir build && cd build
# Need to specify target ID, example below is gfx908 and gfx90a
cmake \
-D BUILD_DEV=OFF \
-D CMAKE_BUILD_TYPE=Release \
-D CMAKE_CXX_FLAGS=" --offload-arch=gfx908 --offload-arch=gfx90a -O3" \
-D CMAKE_CXX_COMPILER=/opt/rocm/bin/hipcc \
-D CMAKE_PREFIX_PATH=/opt/rocm \
..
Build and Run Examples
make -j examples
Instructions for running each individual examples are under example/
Tests
make -j examples tests
make test
Build ckProfiler
make -j ckProfiler
Instructions for running ckProfiler are under profiler/
Caveat
Kernel Timing and Verification
CK's own kernel timer will warn up kernel once, and then run it multiple times to get average kernel time. For some kernels that use atomic add, this will cause output buffer to be accumulated multiple times, causing verfication failure. To work around it, do not use CK's own timer and do verification at the same time. CK's own timer and verification in each example and ckProfiler can be enabled or disabled from command line.
Languages
C++
93.7%
Python
3.9%
CMake
1.5%
Shell
0.5%
Pawn
0.2%