The Torch-MLIR project aims to provide first class compiler support from the PyTorch ecosystem to the MLIR ecosystem.
This project is participating in the LLVM Incubator process: as such, it is not part of any official LLVM release. While incubation status is not necessarily a reflection of the completeness or stability of the code, it does indicate that the project is not yet endorsed as a component of LLVM.
PyTorch An open source machine learning framework that accelerates the path from research prototyping to production deployment.
MLIR The MLIR project is a novel approach to building reusable and extensible compiler infrastructure. MLIR aims to address software fragmentation, improve compilation for heterogeneous hardware, significantly reduce the cost of building domain specific compilers, and aid in connecting existing compilers together.
Torch-MLIR Multiple Vendors use MLIR as the middle layer mapping from platform frameworks like PyTorch, JAX, TensorFlow onto MLIR and then progressively lower down to their target hardware. We have seen half a dozen custom lowerings from PyTorch to MLIR. Having canonical lowerings from the PyTorch ecosystem to the MLIR ecosystem would provide much needed relief to hardware vendors to focus on their unique value rather than implementing another PyTorch frontend for MLIR. It would be similar to current hardware vendors adding LLVM target support instead of each one also implementing the Clang/C++ frontend.
We have few paths to lower down to the Torch MLIR Dialect.
- Torchscript This is the most tested path down to Torch MLIR Dialect.
- TorchFX This provides a path to lower from TorchFX down to MLIR. This a functional prototype that we expect to mature as TorchFX matures
- Lazy Tensor Core (Based on lazy-tensor-core staging branch) This path provides the upcoming LTC path of capture. It is based of an unstable devel branch but is the closest way for you to adapt any existing torch_xla derivatives.
- “ACAP” - Deprecated torch_xla based capture Mentioned here for completeness.
git clone https://github.com/llvm/torch-mlir
cd torch-mlir
git submodule update --init
python -m venv mlir_venv
source mlir_venv/bin/activate
# Some older pip installs may not be able to handle the recent PyTorch deps
python -m pip install --upgrade pip
# Install latest PyTorch nightlies
python -m pip install --pre torch torchvision pybind11 -f https://download.pytorch.org/whl/nightly/cpu/torch_nightly.html
cmake -GNinja -Bbuild \
-DCMAKE_C_COMPILER=clang \
-DCMAKE_CXX_COMPILER=clang++ \
-DLLVM_ENABLE_PROJECTS=mlir \
-DLLVM_EXTERNAL_PROJECTS=torch-mlir \
-DLLVM_EXTERNAL_TORCH_MLIR_SOURCE_DIR=`pwd` \
-DMLIR_ENABLE_BINDINGS_PYTHON=ON \
-DLLVM_TARGETS_TO_BUILD=host \
external/llvm-project/llvm
# Additional quality of life CMake flags:
# Enable ccache:
# -DCMAKE_C_COMPILER_LAUNCHER=ccache -DCMAKE_CXX_COMPILER_LAUNCHER=ccache
# Enale LLD (links in seconds compared to minutes)
# -DCMAKE_EXE_LINKER_FLAGS_INIT="-fuse-ld=lld" -DCMAKE_MODULE_LINKER_FLAGS_INIT="-fuse-ld=lld" -DCMAKE_SHARED_LINKER_FLAGS_INIT="-fuse-ld=lld"
# Use --ld-path= instead of -fuse-ld=lld for clang > 13
cmake --build build
export PYTHONPATH=`pwd`/build/tools/torch-mlir/python_packages/torch_mlir:`pwd`/examples
Running execution (end-to-end) tests:
# Run E2E TorchScript tests. These compile and run the TorchScript program
# through torch-mlir with a simplified MLIR CPU backend we call RefBackend
python -m e2e_testing.torchscript.main --filter Conv2d --verbose
Example IR for a simple 1 layer MLP to show the compilation steps from TorchScript.
Standalone script to Convert a PyTorch ResNet18 model to MLIR and run it on the CPU Backend:
# The example uses PIL and requests to get the image.
pip install requests pillow
# Run ResNet18 as a standalone script.
python examples/torchscript_resnet18_e2e.py
load image from https://upload.wikimedia.org/wikipedia/commons/2/26/YellowLabradorLooking_new.jpg
Downloading: "https://download.pytorch.org/models/resnet18-f37072fd.pth" to /home/mlir/.cache/torch/hub/checkpoints/resnet18-f37072fd.pth
100.0%
PyTorch prediction
[('Labrador retriever', 70.66319274902344), ('golden retriever', 4.956596374511719), ('Chesapeake Bay retriever', 4.195662975311279)]
torch-mlir prediction
[('Labrador retriever', 70.66320037841797), ('golden retriever', 4.956601619720459), ('Chesapeake Bay retriever', 4.195651531219482)]
Jupyter notebook:
python -m ipykernel install --user --name=torch-mlir --env PYTHONPATH "$PYTHONPATH"
# Open in jupyter, and then navigate to
# `examples/resnet_inference.ipynb` and use the `torch-mlir` kernel to run.
jupyter notebook
The examples
folder includes the Python package torchfx
, which is a functional prototype of a TorchFX to MLIR pipeline. The main entry point into the torchfx
package is the torchfx.builder
module, which includes a function for converting the output of a TorchFX trace into MLIR. Currently, the number of PyTorch operations supported is very limited, but will be expanded in the future.
The examples
folder includes scripts torchfx_*.py
showing how to use the TorchFX to MLIR pipeline. In order to run the examples, make sure you've setup your PYTHONPATH
by following the Setup Python Environment instructions.
Then, run
python torchfx_example_name.py
replacing torchfx_example_name.py
with the actual torchfx
example you want to run.
The examples
folder includes the Python package lazytensor
, which implements a Lazy Tensor Core (LTC) to MLIR pipeline. The main entry point into the lazytensor
package is the lazytensor.builder
, which includes the function build_module
that takes a computation captured and converted to TorchScript IR by LTC, and converts it to MLIR.
The examples
folder includes scripts lazytensor_*.py
showing how to use the Lazy Tensor to MLIR pipeline. The examples depend on the Lazy Tensor Core (LTC) of PyTorch. For information on how to obtain LTC, see here.
In order to run the examples, make sure you've setup your PYTHONPATH
by following the Setup Python Environment instructions, and also add /path/to/pytorch/lazy_tensor_core
to your PYTHONPATH
as shown below:
export PYTHONPATH=$PYTHONPATH:`/replace/with/path/to/pytorch/lazy_tensor_core`
python lazytensor_example_name.py
replacing lazytensor_example_name.py
with the actual lazytensor
example you want to run.
The project follows the conventions of typical MLIR-based projects:
include/torch-mlir
,lib
structure for C++ MLIR compiler dialects/passes.test
for holding test code.tools
fortorch-mlir-opt
and such.python
top level directory for Python code
The build_tools/write_env_file.sh
script will output a .env
file in the workspace folder with the correct PYTHONPATH set. This allows
tools like VSCode to work by default for debugging. This file can also be
manually source
'd in a shell.
#torch-mlir
channel on the LLVM Discord- Issues here
torch-mlir
section of LLVM Discourse