The Torch-MLIR project aims to provide first class support from the PyTorch ecosystem to the MLIR ecosystem.
 
 
 
 
 
 
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Sean Silva 43dba03afd Properly model "derefinement".
In terms of IR structure, TorchScript allows types to vary in many
circumstances where MLIR requires pointer-identical types. In particular,
it is valid to pass any subtype in place of a type. For example, if an
`Optional[int]` is required somewhere in the IR, it is legal to pass a
value of just `int` (but not the other way around; see
`torch.prim.unchecked_cast`). In effect, every *use* can have a different
type.

We introduce a new op `torch.derefine` that models that impedance
mismatch. This op allows casting a value from one type to a type that it
is a subtype of to model this behavior.

Recommended review order:
- TorchOps.td for new torch.derefine (and updated docs for
  `torch.prim.unchecked_cast`)
- new test code in if.py, loop.py, function-derefine.py
- new code in node_importer.cpp for handling derefinement insertion
- function_importer.cpp and utils changes in torch_to_mlir_utils.cpp

Properly handling derefinement on function boundaries required
relayering the code so that graph_importer.cpp/.h is now
function_importer.cpp/.h because only the `torch::jit::Function`
(actually the `c10::FunctionSchema` it holds) knows the derefined types that are
actually needed at the boundary (see `function-derefine.py` for a test).

Annoyingly, this churns all the functions which are now prefixed with
`__torch__.` but that is more correct anyway (that is their linkage name
in the `torch::jit::CompilationUnit`; the previous `mb.import_function`
was actually buggy in the case of functions calling each other as it
would reference their unqualified name).

With this change, we can import `resnet18` from `torchvision` :)
IR: https://gist.github.com/silvasean/6426a5272d8a6c7caae533fce05ab704
2021-03-03 15:09:44 -08:00
.github/workflows Add a CI builder with latest pytorch CPU nightly. Also add AArch64 to the build (#166) 2021-02-21 13:36:06 -08:00
build_tools Bump llvm-project to c68d2895a1f4019b387c69d1e5eec31b0eb5e7b0 2021-02-22 12:23:24 -08:00
cmake/modules Make torch_mlir compatible with binary PyTorch installations. 2020-12-14 09:51:00 -08:00
docker/pytorch-nightly install pybind11 through pip to get version 2.6 (#173) 2021-02-28 16:19:03 -08:00
docs Update links in features.md 2021-01-05 13:52:57 -08:00
external Bump llvm-project to c68d2895a1f4019b387c69d1e5eec31b0eb5e7b0 2021-02-22 12:23:24 -08:00
frontends Properly model "derefinement". 2021-03-03 15:09:44 -08:00
include Properly model "derefinement". 2021-03-03 15:09:44 -08:00
lib Properly model "derefinement". 2021-03-03 15:09:44 -08:00
python Fix the import path in python samples 2021-03-02 13:40:08 -08:00
test Properly import the entire torch::jit::CompilationUnit 2021-03-01 12:08:01 -08:00
tools Bump llvm-project to c68d2895a1f4019b387c69d1e5eec31b0eb5e7b0 2021-02-22 12:23:24 -08:00
.clang-format Add stub numpy dialect. 2020-04-26 17:20:58 -07:00
.gitignore Add vim swap file in gitignore 2021-02-18 19:06:10 -08:00
.gitmodules Add mlir-hlo as a submodule and add a script to find versions. (#20) 2020-08-13 16:42:05 -07:00
.style.yapf Introduce a Target class and use it to define generic 32 and 64bit variants. 2020-06-13 14:43:10 -07:00
CMakeLists.txt Enable building using LLVM_EXTERNAL_PROJECTS. (#152) 2021-01-26 11:43:43 -07:00
LICENSE License and readme changes to align with inclusion in LLVM. (#1) 2020-07-31 20:53:09 -07:00
README.md Update README.md 2021-01-26 10:02:25 -08:00

README.md

NPComp - MLIR based compiler toolkit for numerical python programs

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.

The NPComp project aims to provide tooling for compiling numerical python programs of various forms to take advantage of MLIR+LLVM code generation and backend runtime systems.

In addition to providing a bridge to a variety of Python based numerical programming frameworks, NPComp also directly develops components for tracing and compilation of generic Python program fragments.

Framework integrations

  • PyTorch -- Experimental integration for extracting programs from PyTorch.

Python language compiler tookit

At the core of NPComp are a set of dialects and python support code for tracing (define by run) numerical programs and compiling idiomatic subsets of the Python language. As another interpretation of the name, NPComp also seeks to provide compiler-backed support for Numpy APIs.

See the features doc for a semi-curated status of what is implemented in this area.

Architecture

The compiler is separated into:

  • Frontend importer: Translates from various AST levels to corresponding MLIR dialects.
  • Frontend compiler: MLIR passes and conversions, mostly operating on the basicpy and numpy dialects.
  • Backend compiler and runtime: Some effort has been taken to make this pluggable, but right now, only the IREE Backend exists. There is in-tree work to also build a minimal reference backend directly targeting LLVM.

Repository Layout

The project is roughly split into the following areas of code:

  • User-facing Python code
  • C++ include and lib trees, following LLVM/MLIR conventions
  • LIT testing trees:
    • test: Lit/FileCheck tests covering core MLIR based infra
    • test/Python/Compiler: Lit test suite that drive the compiler infra from Python
    • backend_test: Lit test suites conditionally enabled for each backend
  • tools: Scripts and binaries (npcomp-opt, npcomp-run-mlir, etc)

Interactive Use

The cmake configuration populates symlinks in the build/python directory mirroring the source layout. This allows edit-run without rebuilding (unless if files are added/removed).

Configuring the PYTHONPATH as above should be sufficient to run any interactive tooling (python3, Jupyter/Colab, etc).

Note that running the cmake_configure.sh script will also output a .env file in the workspace folder with the correct PYTHONPATH set. This allows tools like VSCode to work by default for debugging.

Notes:

  • Python sources are symlinked to the output directory at configure time. Adding sources will require a reconfigure. Editing should not.
  • It is a very common issue to have both python 2.7 (aka. "python") and python 3.x (aka. "python3") on a system at a time (and we can only hope that one day this ends). Since the native library at development time binds to a specific version, if you try to run with a different python, you will get an error about the "native" module not being found.

Compiler development

For bash users, adding the following to your .bashrc defines some aliases that are useful during compiler development, such as shortcuts for builing and running npcomp-opt.

source $WHERE_YOU_CHECKED_OUT_NPCOMP/tools/bash_helpers.sh

Build Instructions

Common prep

# From checkout directory.
git submodule init
git submodule update

# Use clang and lld to build (optional but recommended).
LLVM_VERSION=10
export CC=clang-$LLVM_VERSION
export CXX=clang++-$LLVM_VERSION
export LDFLAGS=-fuse-ld=$(which ld.lld-$LLVM_VERSION)

# Build and install LLVM/MLIR into the ./install-mlir directory
./build_tools/install_mlir.sh

Vanilla - numpy-only, no pytorch

# Follow common prep above.
./build_tools/cmake_configure.sh

# Build and run tests
# ./build_tools/test_all.sh runs all of these commands.
cd build
ninja
ninja check-npcomp

# cmake_configure.sh should emit a .env file with needed
# PYTHONPATH setup.
source .env

PyTorch Frontend (with PyTorch installed via conda)

./build_tools/cmake_configure.sh
cmake --build build --target check-npcomp check-frontends-pytorch

PyTorch Frontend (via docker container)

Create docker image (or follow your own preferences):

  • Mount the (host) source directory to /src/mlir-npcomp (in the container).
  • Mount the /build directory (in the container) appropriately for your case.
docker build docker/pytorch-nightly --tag local/npcomp:build-pytorch-nightly
docker volume create npcomp-build

Shell into docker image:

docker run \
  --mount type=bind,source=$HOME/src/mlir-npcomp,target=/src/mlir-npcomp \
  --mount source=npcomp-build,target=/build \
  --rm -it local/npcomp:build-pytorch-nightly /bin/bash

Build/test npcomp (from within docker image):

# From within the docker image.
cd /src/mlir-npcomp
./build_tools/install_mlir.sh
./build_tools/cmake_configure.sh
cmake --build /build/npcomp --target check-npcomp check-frontends-pytorch

VSCode with a Docker Dev Image

Start a docker dev container based on our image

Assumes that mlir-npcomp is checked out locally under ~/src/mlir-npcomp. See docker_shell_funcs.sh for commands to modify if different.

# Build/start the container.
# Follow instructions here to allow running `docker` without `sudo`:
# https://docs.docker.com/engine/install/linux-postinstall/
source ./build_tools/docker_shell_funcs.sh
npcomp_docker_build  # Only needed first time/on updates to docker files.
npcomp_docker_start
# Get an interactive shell to the container and initial build.
npcomp_docker_login
# Stop the container (when done).
npcomp_docker_stop

Configure VSCode:

First, install the VSCode Docker extension and VSCode Remote - Containers extension. Follow instructions here to allow running docker without sudo, otherwise VSCode won't be able to use docker https://docs.docker.com/engine/install/linux-postinstall/ (Note that VSCode has some daemons that you will need to kill/restart for the instructions there to take effect; consider just rebooting your machine)

Attach to your running container by opening the Docker extension tab (left panel), right clicking on the container name, and selecting "Attach Visual Studio code". The container name if you are using docker_shell_funcs.sh is npcomp.

Install extensions in container:

  • CMake Tools
  • C/C++
  • C++ Intellisense

Add workspace folders:

  • mlir-npcomp source folder
  • external/llvm-project source folder

Configure general settings:

Ctrl-Shift-P > Preferences: Open Settings (UI)

  • For mlir-npcomp folder:
    • Cmake: Build directory: /build/npcomp
    • Uncheck Cmake: Configure On Edit and Cmake: Configure on Open
  • For llvm-project folder:
    • Cmake: Build directory: /build/llvm-build
    • Uncheck Cmake: Configure On Edit and Cmake: Configure on Open

Configure Intellisense:

Ctrl-Shift-P > C/C++: Edit Configurations (UI)

  • Open C/C++ config (for each project folder):
    • Under Advanced, Compile Commands:
      • set /build/npcomp/compile_commands.json for mlir-npcomp
      • set /build/llvm-build/compile_commands.json for llvm-project
  • Open a C++ file, give it a few seconds and see if you get code completion (press CTRL-Space).

Make sure to save your workspace (prefer a local folder with the "Use Local" button)!