Turbine is IREE's frontend for PyTorch.
Turbine provides a collection of tools:
nn.Module
s to compiled, deployment
ready artifacts. This operates via both a simple one-shot export API (Already upstreamed to torch-mlir)
for simple models and an underlying advanced API for complicated models
and accessing the full features of the runtime.torch.compile
backend is provided and a Turbine Tensor/Device
is available for more native, interactive use within a PyTorch session.Turbine is under active development. Feel free to reach out on one of
IREE's communication channels
(specifically, we monitor the #pytorch
and #turbine
channels on the IREE
Discord server).
pip install iree-turbine
# Or for editable: see instructions under developers
The above does install some cuda/cudnn packages which are unnecessary for most usage. To avoid this you can install just pytorch-cpu via:
pip install -r pytorch-cpu-requirements.txt
pip install iree-turbine
(or follow the "Developers" instructions below for installing from head/nightly)
Generally, we use Turbine to produce valid, dynamic shaped Torch IR (from the
torch-mlir torch
dialect
with various approaches to handling globals). Depending on the use-case and status of the
compiler, these should be compilable via IREE with --iree-input-type=torch
for
end to end execution. Dynamic shape support in torch-mlir is a work in progress,
and not everything works at head with release binaries at present.
torch.compile
Use this as a guide to get started developing the project using pinned, pre-release dependencies. You are welcome to deviate as you see fit, but these canonical directions mirror what the CI does.
We recommend setting up a virtual environment (venv). The project is configured
to ignore .venv
directories, and editors like VSCode pick them up by default.
python -m venv --prompt iree-turbine .venv
source .venv/bin/activate
If no explicit action is taken, the default PyTorch version will be installed. This will give you a current CUDA-based version. Install a different variant by doing so explicitly first:
CPU:
pip install -r pytorch-cpu-requirements.txt
ROCM:
pip install -r pytorch-rocm-requirements.txt
# Install editable local projects.
pip install -r requirements.txt -e .
# Python unit tests
pytest .
# Lit tests
lit lit_tests/ -v
This project is set up to use the pre-commit
tooling. To install it in
your local repo, run: pre-commit install
. After this point, when making
commits locally, hooks will run. See https://pre-commit.com/
If doing native development of the compiler, it can be useful to switch to source builds for iree-base-compiler and iree-base-runtime.
In order to do this, check out IREE and follow the instructions to build from source, making sure to specify additional options for the Python bindings:
-DIREE_BUILD_PYTHON_BINDINGS=ON -DPython3_EXECUTABLE="$(which python)"
Uninstall existing packages (including any with the old package names):
pip uninstall iree-compiler iree-base-compiler iree-runtime iree-base-runtime
Copy the .env
file from iree/
to this source directory to get IDE
support and add to your path for use from your shell:
source .env && export PYTHONPATH