onnxruntime/tools/ci_build/github/azure-pipelines/win-gpu-ci-pipeline.yml
aciddelgado ebd0368bb0
Make Flash Attention work on Windows (#21015)
### Description
Previously, Flash Attention only worked on Linux systems. This PR will
make it work and enable it to be built and run on Windows.

Limitations of Flash Attention in Windows: Requires CUDA 12.

### Motivation and Context
This will significantly increase the performance of Windows-based LLM's
with hardware sm>=80.

To illustrate the improvement of Flash Attention over Memory Efficient
Attention, here are some average benchmark numbers for the GQA operator,
run with configurations based on several recent models (Llama, Mixtral,
Phi-3). The benchmarks were obtained on RTX4090 GPU using the test
script located at
(onnxruntime/test/python/transformers/benchmark_gqa_windows.py).

* Clarifying Note: These benchmarks are just for the GQA operator, not
the entire model.

### Memory Efficient Attention Kernel Benchmarks:
| Model Name | Max Sequence Length | Inference Interval (ms) |
Throughput (samples/second) |

|----------------------------------------|---------------------|-------------------------|-----------------------------|
| Llama3-8B (Average Prompt) | 8192 | 0.19790525 | 13105.63425 |
| Llama3-8B (Average Token) | 8192 | 0.207775538 | 12025.10172 |
| Llama3-70B (Average Prompt) | 8192 | 0.216049167 | 11563.31185 |
| Llama3-70B (Average Token) | 8192 | 0.209730731 | 12284.38149 |
| Mixtral-8x22B-v0.1 (Average Prompt) | 32768 | 0.371928785 |
7031.440056 |
| Mixtral-8x22B-v0.1 (Average Token) | 32768 | 0.2996659 | 7607.947159 |
| Phi-3-mini-128k (Average Prompt) | 131072 | 0.183195867 | 15542.0852 |
| Phi-3-mini-128k (Average Token) | 131072 | 0.198215688 | 12874.53494 |
| Phi-3-small-128k (Average Prompt) | 65536 | 2.9884929 | 2332.584142 |
| Phi-3-small-128k (Average Token) | 65536 | 0.845072406 | 2877.85822 |
| Phi-3-medium-128K (Average Prompt) | 32768 | 0.324974429 | 8094.909517
|
| Phi-3-medium-128K (Average Token) | 32768 | 0.263662567 | 8978.463687
|

### Flash Attention Kernel Benchmarks:
| Model Name | Max Sequence Length | Inference Interval (ms) |
Throughput (samples/second) |

|--------------------------------------|---------------------|-------------------------|-----------------------------|
| Llama3-8B (Average Prompt) | 8192 | 0.163566292 | 16213.69057 |
| Llama3-8B (Average Token) | 8192 | 0.161643692 | 16196.14715 |
| Llama3-70B (Average Prompt) | 8192 | 0.160510375 | 17448.67753 |
| Llama3-70B (Average Token) | 8192 | 0.169427308 | 14702.62043 |
| Mixtral-8x22B-v0.1 (Average Prompt) | 32768 | 0.164121964 |
15618.51301 |
| Mixtral-8x22B-v0.1 (Average Token) | 32768 | 0.1715865 | 14524.32273 |
| Phi-3-mini-128k (Average Prompt) | 131072 | 0.167527167 | 14576.725 |
| Phi-3-mini-128k (Average Token) | 131072 | 0.175940594 | 15762.051 |
| Phi-3-small-128k (Average Prompt) | 65536 | 0.162719733 | 17824.494 |
| Phi-3-small-128k (Average Token) | 65536 | 0.14977525 | 16749.19858 |
| Phi-3-medium-128K (Average Prompt) | 32768 | 0.156490786 | 17679.2513
|
| Phi-3-medium-128K (Average Token) | 32768 | 0.165333833 | 14932.26079
|

Flash Attention is consistently faster for every configuration we
benchmarked, with improvements in our trials ranging from ~20% to ~650%.

In addition to these improvements in performance, Flash Attention has
better memory usage. For example, Memory Efficient Attention cannot
handle a max sequence length higher than 32,768, but Flash Attention can
handle max sequence lengths at least as high as 131,072.

---------

Co-authored-by: Tianlei Wu <tlwu@microsoft.com>
2024-06-24 09:43:49 -07:00

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3.7 KiB
YAML

##### start trigger Don't edit it manually, Please do edit set-trigger-rules.py ####
trigger:
branches:
include:
- main
- rel-*
paths:
exclude:
- docs/**
- README.md
- CONTRIBUTING.md
- BUILD.md
- 'js/web'
- 'onnxruntime/core/providers/js'
pr:
branches:
include:
- main
- rel-*
paths:
exclude:
- docs/**
- README.md
- CONTRIBUTING.md
- BUILD.md
- 'js/web'
- 'onnxruntime/core/providers/js'
#### end trigger ####
parameters:
- name: RunOnnxRuntimeTests
displayName: Run Tests?
type: boolean
default: true
stages:
- stage: cuda
dependsOn: []
jobs:
- template: templates/jobs/win-ci-vs-2022-job.yml
parameters:
BuildConfig: 'RelWithDebInfo'
EnvSetupScript: setup_env_cuda.bat
buildArch: x64
additionalBuildFlags: >-
--enable_pybind --build_java --build_nodejs --use_cuda --cuda_home="$(Agent.TempDirectory)\v11.8"
--enable_cuda_profiling --enable_transformers_tool_test
--cmake_extra_defines CMAKE_CUDA_ARCHITECTURES=86
--cmake_extra_defines onnxruntime_BUILD_UNIT_TESTS=ON
--cmake_extra_defines onnxruntime_ENABLE_CUDA_EP_INTERNAL_TESTS=ON
msbuildPlatform: x64
isX86: false
job_name_suffix: x64_RelWithDebInfo
RunOnnxRuntimeTests: ${{ parameters.RunOnnxRuntimeTests }}
ORT_EP_NAME: CUDA
WITH_CACHE: true
MachinePool: onnxruntime-Win2022-GPU-A10
- stage: training
dependsOn: []
jobs:
- template: templates/jobs/win-ci-vs-2022-job.yml
parameters:
BuildConfig: 'RelWithDebInfo'
EnvSetupScript: setup_env_cuda.bat
buildArch: x64
additionalBuildFlags: >-
--enable_pybind --enable_training --use_cuda --cuda_home="$(Agent.TempDirectory)\v11.8"
--skip_onnx_tests
--cmake_extra_defines CMAKE_CUDA_ARCHITECTURES=86
msbuildPlatform: x64
isX86: false
job_name_suffix: x64_RelWithDebInfo
RunOnnxRuntimeTests: ${{ parameters.RunOnnxRuntimeTests }}
ORT_EP_NAME: CUDA
WITH_CACHE: true
MachinePool: onnxruntime-Win2022-GPU-A10
isTraining: true
- stage: dml
dependsOn: []
jobs:
- template: templates/jobs/win-ci-vs-2022-job.yml
parameters:
BuildConfig: 'RelWithDebInfo'
EnvSetupScript: setup_env.bat
buildArch: x64
additionalBuildFlags: --enable_pybind --use_dml --enable_wcos --use_winml
msbuildPlatform: x64
isX86: false
job_name_suffix: x64_RelWithDebInfo
RunOnnxRuntimeTests: ${{ parameters.RunOnnxRuntimeTests }}
ORT_EP_NAME: DML
WITH_CACHE: false
MachinePool: onnxruntime-Win2022-GPU-dml-A10
- stage: kernelDocumentation
dependsOn: []
jobs:
- template: templates/jobs/win-ci-vs-2022-job.yml
parameters:
BuildConfig: 'RelWithDebInfo'
EnvSetupScript: setup_env_cuda.bat
buildArch: x64
# note: need to specify `--gen_doc` when creating the build config so it has to be in additionalBuildFlags
additionalBuildFlags: >-
--gen_doc validate --skip_tests --enable_pybind --use_dml --use_cuda
--cuda_home="$(Agent.TempDirectory)\v11.8"
--cmake_extra_defines CMAKE_CUDA_ARCHITECTURES=86
--cmake_extra_defines onnxruntime_BUILD_UNIT_TESTS=OFF
msbuildPlatform: x64
isX86: false
job_name_suffix: x64_RelWithDebInfo
RunOnnxRuntimeTests: false
GenerateDocumentation: true
ORT_EP_NAME: CUDA # It doesn't really matter which EP is selected here since this stage is for documentation.
WITH_CACHE: true
MachinePool: onnxruntime-Win2022-GPU-A10