mirror of https://github.com/llvm/torch-mlir
481 lines
17 KiB
Markdown
481 lines
17 KiB
Markdown
# Checkout and build from source
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## Check out the code
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```shell
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git clone https://github.com/llvm/torch-mlir
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cd torch-mlir
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git submodule update --init
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```
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## Setup your Python VirtualEnvironment and Dependencies
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Also, ensure that you have the appropriate `python-dev` package installed
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to access the Python development libraries / headers.
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```shell
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python -m venv mlir_venv
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source mlir_venv/bin/activate
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# Some older pip installs may not be able to handle the recent PyTorch deps
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python -m pip install --upgrade pip
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# Install latest PyTorch nightlies and build requirements.
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python -m pip install -r requirements.txt
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```
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## CMake Build
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Two setups are possible to build: in-tree and out-of-tree. The in-tree setup is the most straightforward, as it will build LLVM dependencies as well.
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### Building torch-mlir in-tree
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The following command generates configuration files to build the project *in-tree*, that is, using llvm/llvm-project as the main build. This will build LLVM as well as torch-mlir and its subprojects. On Windows, use the "Developer PowerShell for Visual Studio" to ensure that the compiler and linker binaries are in the `PATH` variable.
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```shell
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cmake -GNinja -Bbuild \
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-DCMAKE_BUILD_TYPE=Release \
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-DPython3_FIND_VIRTUALENV=ONLY \
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-DLLVM_ENABLE_PROJECTS=mlir \
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-DLLVM_EXTERNAL_PROJECTS="torch-mlir;torch-mlir-dialects" \
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-DLLVM_EXTERNAL_TORCH_MLIR_SOURCE_DIR="$PWD" \
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-DLLVM_EXTERNAL_TORCH_MLIR_DIALECTS_SOURCE_DIR="$PWD"/externals/llvm-external-projects/torch-mlir-dialects \
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-DMLIR_ENABLE_BINDINGS_PYTHON=ON \
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-DLLVM_TARGETS_TO_BUILD=host \
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externals/llvm-project/llvm
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```
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The following additional quality of life flags can be used to reduce build time:
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* Enabling clang on Linux
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```shell
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-DCMAKE_C_COMPILER=clang -DCMAKE_CXX_COMPILER=clang++
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```
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* Enabling ccache:
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```shell
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-DCMAKE_C_COMPILER_LAUNCHER=ccache -DCMAKE_CXX_COMPILER_LAUNCHER=ccache
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```
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* Enabling LLD (links in seconds compared to minutes)
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```shell
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-DCMAKE_EXE_LINKER_FLAGS_INIT="-fuse-ld=lld" -DCMAKE_MODULE_LINKER_FLAGS_INIT="-fuse-ld=lld" -DCMAKE_SHARED_LINKER_FLAGS_INIT="-fuse-ld=lld"
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# Use --ld-path= instead of -fuse-ld=lld for clang > 13
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```
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* Enabling libtorch binary cache
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By default we download the latest version of libtorch everytime you build so we are always on the latest version. Set `-DLIBTORCH_CACHE=ON` to
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not download the latest version everytime. If libtorch gets out of date and you test against a newer PyTorch you may notice failures.
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```shell
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-DLIBTORCH_CACHE=ON
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```
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* Enabling building libtorch as part of your build
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By default we download the latest version of libtorch. We have an experimental path to build libtorch (and PyTorch wheels) from source.
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```shell
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-DLIBTORCH_SRC_BUILD=ON # Build Libtorch from source
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-DLIBTORCH_VARIANT=shared # Set the variant of libtorch to build / link against. (`shared`|`static` and optionally `cxxabi11`)
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```
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### Building against a pre-built LLVM
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If you have built llvm-project separately in the directory `$LLVM_INSTALL_DIR`, you can also build the project *out-of-tree* using the following command as template:
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```shell
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cmake -GNinja -Bbuild \
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-DCMAKE_BUILD_TYPE=Release \
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-DPython3_FIND_VIRTUALENV=ONLY \
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-DMLIR_DIR="$LLVM_INSTALL_DIR/lib/cmake/mlir/" \
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-DLLVM_DIR="$LLVM_INSTALL_DIR/lib/cmake/llvm/" \
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-DMLIR_ENABLE_BINDINGS_PYTHON=ON \
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-DLLVM_TARGETS_TO_BUILD=host \
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.
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```
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The same QoL CMake flags can be used to enable clang, ccache, and lld. Be sure to have built LLVM with `-DLLVM_ENABLE_PROJECTS=mlir`.
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Be aware that the installed version of LLVM needs in general to match the committed version in `externals/llvm-project`. Using a different version may or may not work.
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### Build commands
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After either cmake run (in-tree/out-of-tree), use one of the following commands to build the project:
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```shell
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# Build just torch-mlir (not all of LLVM)
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cmake --build build --target tools/torch-mlir/all
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# Run unit tests.
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cmake --build build --target check-torch-mlir
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# Run Python regression tests.
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cmake --build build --target check-torch-mlir-python
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# Build everything (including LLVM if in-tree)
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cmake --build build
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```
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## Setup Python Environment to export the built Python packages
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### Linux and macOS
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```shell
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export PYTHONPATH=`pwd`/build/tools/torch-mlir/python_packages/torch_mlir:`pwd`/examples
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```
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### Windows PowerShell
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```shell
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$env:PYTHONPATH = "$PWD/build/tools/torch-mlir/python_packages/torch_mlir;$PWD/examples"
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```
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## Testing MLIR output in various dialects
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To test the compiler's output to the different MLIR dialects, you can use the example `examples/torchscript_resnet18_all_output_types.py`.
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Make sure you have activated the virtualenv and set the `PYTHONPATH` above
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(if running on Windows, modify the environment variable as shown above):
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```shell
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source mlir_venv/bin/activate
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export PYTHONPATH=`pwd`/build/tools/torch-mlir/python_packages/torch_mlir:`pwd`/examples
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python examples/torchscript_resnet18_all_output_types.py
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```
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This will display the Resnet18 network example in three dialects: TORCH, LINALG on TENSORS and TOSA.
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The main functionality is on `torch_mlir.compile()`'s `output_type`.
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Ex:
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```python
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module = torch_mlir.compile(resnet18, torch.ones(1, 3, 224, 224), output_type="torch")
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```
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Currently, `output_type` can be: `TORCH`, `TOSA`, `LINALG_ON_TENSORS`, `RAW` and `MHLO`.
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## Jupyter
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Jupyter notebook:
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```shell
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python -m ipykernel install --user --name=torch-mlir --env PYTHONPATH "$PYTHONPATH"
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# Open in jupyter, and then navigate to
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# `examples/resnet_inference.ipynb` and use the `torch-mlir` kernel to run.
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jupyter notebook
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```
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[Example IR](https://gist.github.com/silvasean/e74780f8a8a449339aac05c51e8b0caa) for a simple 1 layer MLP to show the compilation steps from TorchScript.
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## Interactive Use
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The `build_tools/write_env_file.sh` script will output a `.env`
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file in the workspace folder with the correct PYTHONPATH set. This allows
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tools like VSCode to work by default for debugging. This file can also be
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manually `source`'d in a shell.
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## Bazel Build
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> **NOTE** Our Bazel build follows LLVM's Bazel build policy: only the
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> subcommunity interested in Bazel is responsible for fixing it. Average
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> Torch-MLIR developers should not be notified of any Bazel build issues and are
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> not responsible for fixing any breakages (though any help is, of course,
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> welcome). For more info, see LLVM's
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> [Peripheral Support Tier](https://llvm.org/docs/SupportPolicy.html#peripheral-tier)
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> definition.
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Torch-MLIR can also be built using Bazel (apart from the official CMake build) for users that depend on Bazel in their workflows. To build `torch-mlir-opt` using Bazel, follow these steps:
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1. Launch an interactive docker container with the required deps installed:
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```shell
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./utils/bazel/docker/run_docker.sh
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```
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2. Build torch-mlir:
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```shell
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bazel build @torch-mlir//:torch-mlir-opt
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```
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The built binary should be at `bazel-bin/external/torch-mlir/torch-mlir-opt`.
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3. Test torch-mlir (lit test only):
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```shell
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bazel test @torch-mlir//test/...
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```
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We welcome patches to torch-mlir's Bazel build. If you do contribute,
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please complete your PR with an invocation of buildifier to ensure
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the BUILD files are formatted consistently:
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```shell
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bazel run @torch-mlir//:buildifier
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```
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## Docker Builds
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We have preliminary support for building with Docker images. Currently this
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is not very convenient for day-to-day interactive development and
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debugging flows but is very useful for reproducing failures
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from the CI. This is a new flow and we would like your feedback on how
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it works for you and please feel free to file any feedback or issues.
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Install [Docker Engine](https://docs.docker.com/engine/install/ubuntu/). You don't need Docker Desktop.
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You have three types of builds selectable with the Environment Variable `TM_PACKAGES`:`torch-mlir` the
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Release build, `out-of-tree` where torch-mlir is build with a pre-built MLIR and `in-tree` where torch-mlir
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is built as part of the LLVM project along with MLIR.
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We mount a ccache and pip cache inside the docker container to speed up iterative builds. Iterative
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builds should be as fast as running without docker.
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### In-Tree builds
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Build MLIR and Torch-MLIR together as part of the LLVM repo.
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```shell
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TM_PACKAGES="in-tree" ./build_tools/python_deploy/build_linux_packages.sh
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```
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### Out-of-Tree builds
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Build LLVM/MLIR first and then build Torch-MLIR referencing that build
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```shell
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TM_PACKAGES="out-of-tree" ./build_tools/python_deploy/build_linux_packages.sh
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```
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### Release builds
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Build in a manylinux Docker image so we can upload artifacts to PyPI.
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```shell
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TM_PACKAGES="torch-mlir" ./build_tools/python_deploy/build_linux_packages.sh
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```
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### Mimicing CI+Release builds
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If you wanted to build all the CIs locally
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```shell
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TM_PACKAGES="out-of-tree in-tree" ./build_tools/python_deploy/build_linux_packages.sh
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```
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If you wanted to build all the CIs and the Release builds (just with Python 3.10 since most other Python builds are redundant)
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```shell
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TM_PACKAGES="torch-mlir out-of-tree in-tree" TM_PYTHON_VERSIONS="cp310-cp310" ./build_tools/python_deploy/build_linux_packages.sh
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```
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Note: The Release docker still runs as root so it may generate some files owned by root:root. We hope to move it to run as a user in the future.
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### Cleaning up
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Docker builds tend to leave a wide variety of files around. Luckily most are owned by the user but there are still some that need to be removed
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as superuser.
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```shell
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rm -rf build build_oot llvm-build docker_venv externals/pytorch/build .ccache
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```
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## Building your own Docker image
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If you would like to build your own docker image (usually not necessary). You can run:
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```shell
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cd ./build_tools/docker
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docker build -t your-name/torch-mlir-ci --no-cache .
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```
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### Other configurable environmental variables
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The following additional environmental variables can be used to customize your docker build:
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* Custom Release Docker image:
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Defaults to `stellaraccident/manylinux2014_x86_64-bazel-5.1.0:latest`
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```shell
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TM_RELEASE_DOCKER_IMAGE="stellaraccident/manylinux2014_x86_64-bazel-5.1.0:latest"
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```
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* Custom CI Docker image:
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Defaults to `powderluv/torch-mlir-ci:latest`. This assumes an Ubuntu LTS like image. You can build your own with `./build_tools/docker/Dockerfile`
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```shell
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TM_CI_DOCKER_IMAGE="powderluv/torch-mlir-ci:latest"
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```
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* Custom Python Versions for Release builds:
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Version of Python to use in Release builds. Ignored in CIs. Defaults to `cp38-cp38 cp39-cp39 cp310-cp310`
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```shell
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TM_PYTHON_VERSIONS="cp38-cp38 cp39-cp39 cp310-cp310"
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```
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* Location to store Release build wheels
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```shell
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TM_OUTPUT_DIR="./build_tools/python_deploy/wheelhouse"
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```
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* What "packages" to build:
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Defaults to torch-mlir. Options are `torch-mlir out-of-tree in-tree`
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```shell
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TM_PACKAGES="torch-mlir out-of-tree in-tree"
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```
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* Use pre-built Pytorch:
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Defaults to using pre-built Pytorch. Setting it to `OFF` builds from source
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```shell
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TM_USE_PYTORCH_BINARY="OFF"
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```
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* Skip running tests
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Skip running tests if you want quick build only iteration. Default set to `OFF`
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```shell
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TM_SKIP_TESTS="OFF"
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```
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## Build Python Packages
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We have preliminary support for building Python packages. This can be done
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with the following commands:
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```
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python -m pip install --upgrade pip
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python -m pip install -r requirements.txt
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CMAKE_GENERATOR=Ninja python setup.py bdist_wheel
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```
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# Testing
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Torch-MLIR has two types of tests:
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1. End-to-end execution tests. These compile and run a program and check the
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result against the expected output from execution on native Torch. These use
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a homegrown testing framework (see
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`python/torch_mlir_e2e_test/torchscript/framework.py`) and the test suite
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lives at `python/torch_mlir_e2e_test/test_suite/__init__.py`.
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2. Compiler and Python API unit tests. These use LLVM's `lit` testing framework.
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For example, these might involve using `torch-mlir-opt` to run a pass and
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check the output with `FileCheck`. These tests usually live in the `test/`
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directory with a parallel file naming scheme to the `lib/*` structure.
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More details about this kind of test is available in the upstream
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[LLVM Testing Guide](https://llvm.org/docs/TestingGuide.html#regression-test-structure).
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## Running execution (end-to-end) tests:
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> **Note**
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> An `.env` file must be generated via `build_tools/write_env_file.sh` before these commands can be run.
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```shell
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# Run all tests on the reference backend
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./tools/e2e_test.sh
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# Run tests that match the regex `Conv2d`, with verbose errors.
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./tools/e2e_test.sh --filter Conv2d --verbose
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# Run tests on the TOSA backend.
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./tools/e2e_test.sh --config tosa
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```
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Alternatively, you can run the tests via Python directly:
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```shell
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python -m e2e_testing.main -f 'AtenEmbeddingBag'
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```
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## Running unit tests.
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To run all of the unit tests, run:
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```
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ninja check-torch-mlir-all
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```
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This can be broken down into
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```
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ninja check-torch-mlir check-torch-mlir-dialects check-torch-mlir-python
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```
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To run more fine-grained tests, you can do, for `check-torch-mlir`:
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```
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cd $TORCH_MLIR_BUILD_DIR/tools/torch-mlir/test
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$TORCH_MLIR_BUILD_DIR/bin/llvm-lit $TORCH_MLIR_SRC_ROOT/test -v --filter=canonicalize
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```
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See [the `lit` documentation](https://llvm.org/docs/CommandGuide/lit.html) for details on the available lit args.
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For example, if you wanted to test just `test/Dialect/Torch/canonicalize.mlir`,
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then you might do
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```
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cd $TORCH_MLIR_BUILD_DIR/tools/torch-mlir/test
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$TORCH_MLIR_BUILD_DIR/bin/llvm-lit $TORCH_MLIR_SRC_ROOT/test -v --filter=canonicalize.mlir
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```
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Most of the unit tests use the [`FileCheck` tool](https://llvm.org/docs/CommandGuide/FileCheck.html) to verify expected outputs.
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# PyTorch source builds and custom PyTorch versions
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Torch-MLIR by default builds with the latest nightly PyTorch version. This can be toggled to build from latest PyTorch source with
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```
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-DTORCH_MLIR_USE_INSTALLED_PYTORCH=OFF
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-DTORCH_MLIR_SRC_PYTORCH_REPO=vivekkhandelwal1/pytorch # Optional. Github path. Defaults to pytorch/pytorch
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-DTORCH_MLIR_SRC_PYTORCH_BRANCH=master # Optional. Defaults to PyTorch's main branch
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```
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# Updating the LLVM and MLIR-HLO submodules
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Torch-MLIR depends on `llvm-project` (which contains, among other things,
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upstream MLIR) and `mlir-hlo`, both of which are submodules in the `externals/`
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directory. We aim to update these at least weekly to bring in the latest
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features and spread out over time the effort of updating our code for MLIR API
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breakages.
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## Which LLVM commit should I pick?
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Since downstream projects may want to build Torch-MLIR (and thus LLVM and
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MLIR-HLO) in various configurations (Release versus Debug builds; on Linux,
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Windows, or macOS; possibly with Clang, LLD, and LLDB enabled), it is crucial to
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pick LLVM commits that pass tests for all combinations of these configurations.
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So every week, we track the so-called _green_ commit (i.e. the LLVM commit which
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works with all of the above configurations) in Issue
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https://github.com/llvm/torch-mlir/issues/1178. In addition to increasing our
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confidence that the resulting update will not break downstream projects, basing
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our submodule updates on these green commits also helps us stay in sync with
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LLVM updates in other projects like ONNX-MLIR and MLIR-HLO. The person
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responsible for the update each week is listed [here](https://github.com/llvm/torch-mlir/wiki/Weekly-LLVM-Update).
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## What is the update process?
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1. **Lookup green commit hashes**: From the Github issue
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https://github.com/llvm/torch-mlir/issues/1178, find the LLVM and MLIR-HLO
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green commits for the week when Torch-MLIR is being updated.
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2. **Update the `llvm-project` submodule**: In the `externals/llvm-project`
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directory, run `git fetch` followed by `git checkout <llvm-commit-hash>`
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(where `<llvm-commit-hash>` is the green commit hash for the LLVM project
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from Step 1).
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3. **Update the `mlir-hlo` submodule**: In the `externals/mlir-hlo` directory,
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run `git fetch` followed by `git checkout <mlir-hlo-commit-hash>` (where
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`<mlir-hlo-commit-hash>` is the green commit hash for the MLIR-HLO project
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from Step 1).
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4. **Rebuild and test Torch-MLIR**: See the section "CMake Build" above for
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instructions, fixing any issues that arise. This might involve fixing various
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API breakages introduced upstream (they are likely unrelated to what you are
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working on). If these fixes are too complex, please file a work-in-progress
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PR explaining the issues you are running into asking for help so that someone
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from the community can help.
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5. **Update Abstract Interpretation Library**: Run
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`build_tools/update_abstract_interp_lib.sh`. This is sometimes needed
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because upstream changes can affect canonicalization and other minor details
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of the IR in the abstract interpretation library. See
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[docs/abstract_interp_lib.md](abstract_interp_lib.md) for more details
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on the abstract interpretation library.
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Here are some examples of PRs updating the LLVM and MLIR-HLO submodules:
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- https://github.com/llvm/torch-mlir/pull/1180
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- https://github.com/llvm/torch-mlir/pull/1229
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# Enabling Address Sanitizer (ASan)
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To enable ASAN, pass `-DLLVM_USE_SANITIZER=Address` to CMake. This should "just
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work" with all C++ tools like `torch-mlir-opt`. When running a Python script
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such as through `./tools/e2e_test.sh`, you will need to do:
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```
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LD_PRELOAD="$(clang -print-file-name=libclang_rt.asan-x86_64.so)" ./tools/e2e_test.sh -s
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# See instructions here for how to get the libasan path for GCC:
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# https://stackoverflow.com/questions/48833176/get-location-of-libasan-from-gcc-clang
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```
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TODO: Add ASan docs for LTC.
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# Other docs
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- GitHub wiki: https://github.com/llvm/torch-mlir/wiki
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- Of particular interest in the [How to add end-to-end support for new Torch ops](https://github.com/llvm/torch-mlir/wiki/Torch-ops-E2E-implementation) doc.
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