Commit Graph

6 Commits (f91f8163364d4ddbb0822d42d3f97f165901f472)

Author SHA1 Message Date
Vivek Khandelwal 2f231f394e
Bump Onnx Version to 1.16.1 (#3515)
This commit adds the support for new data types: uint4, and int4 and
uint8 tensor protos. Also, it moves some tests from failing to crashing.

Fixes https://github.com/llvm/torch-mlir/issues/3507

Signed-Off By: Vivek Khandelwal <vivekkhandelwal1424@gmail.com>
2024-07-01 22:15:45 +05:30
Rob Suderman ec2b80b433
[ci] Fix mpmath 1.4.0 error by forcing 1.3.0 (#2946)
`mpmath 1.4.0` changes some import locations breaking `torch`. Changing
to `1.3.0` to avoid breaking on `python 3.11`
2024-02-23 13:13:54 -08:00
Daniel Garvey 77b7550997
Add support for bfloat16 in fximporter (#2896)
this introduces an additional soft dependency on the python ml_dtypes
python packages in order to support bfloat16

Addresses #2843
2024-02-14 16:24:25 -06:00
Stella Laurenzo 74f7a0c9d6
Upstream the ONNX importer. (#2636)
This is part 1 of 2, which will also include upstreaming the FX
importer. I started with ONNX because it forces some project layout
updates and is more self contained/easier as a first step.

Deviating somewhat from the RFCs on project layout, I made the following
decisions:

* Locating the `onnx_importer.py` into `torch_mlir.extras` as Maks
already has opened up that namespace and it seemed to fit. Better to
have fewer things at that level.
* Setup the build so that the root project only contains MLIR Python and
pure Python deps (like the importers), but this can be augmented with
the `projects/` adding more depending on which features are enabled.
* The default build continues to build everything whereas in
`TORCH_MLIR_ENABLE_ONLY_MLIR_PYTHON_BINDINGS=1` mode, it builds a
`torch-mlir-core` wheel with the pure contents only.

`onnx_importer.py` and `importer_smoke_test.py` are almost verbatim
copies from SHARK-Turbine. I made some minor local alterations to adapt
to paths and generalize the way they interact with the outer project. I
expect I can copy these back to Turbine verbatim from here. I also
updated the license boilerplate (they have the same license but slightly
different project norms for the headers) but retained the correct
copyright.

Other updates:

* Added the ONNX importer unit test (which also can generate test data)
in lit, conditioned on the availability of the Python `onnx` package. In
a followup once I know everything is stable, I'll add another env var
that the CI can set to always enable this so we know conclusively if
tests pass.
* Moved the ONNX conversion readme to `docs/`.
* Renamed CMake option `TORCH_MLIR_ENABLE_ONLY_MLIR_PYTHON_BINDINGS` ->
`TORCH_MLIR_ENABLE_PYTORCH_EXTENSIONS` and inverted the sense. Made the
JitIR importer and LTC options `cmake_dependent_options` for robustness.
2023-12-12 19:02:51 -08:00
maxbartel db3f2e3fde
Add Stable PyTorch CI Pipeline (#2038)
* feat: split pytorch requirements into stable and nightly

* fix: add true to tests to see full output

* refactor: add comments to explain true statement

* feat: move some tests to experimental mode

* refactor: refactor pipeline into more fine grained difference

* feat: add version differentiation for some tests

* feat: activate more configs

* refactor: change implementation to use less requirement files

* refactor: remove contraints used for testing

* fix: revert some requirement file names

* refactor: remove unnecessary ninja install

* fix: fix version parsing

* refactor: remove dependency on torchvision in main requirements file

* refactor: remove index url

* style: remove unnecesary line switch

* fix: readd index url
2023-05-30 12:16:24 -07:00
Ashay Rane 67ab708b63
python: separate build- and test-related pip dependencies (#1874)
We want to ensure that pip packages required for building torch-mlir
should be included in the dependencies of torch-mlir, but we don't want
the pip packages required for _testing_ of torch-mlir to be included
among the dependencies.  To be able to specify and install one set of
dependencies and not the other, this patch separates the pip packages
into two files: build-requirements.txt and test-requirements.txt.

This patch also updates references to the requirements.txt file so that
CI builds that run end-to-end tests install test-related pip
dependencies while everything else (including WHL builds) sticks to just
the build-related pip dependencies.

Despite this change, this patch should not affect a torch-mlir
developer's workflow.  More precisely, since this patch makes the
top-level requirements.txt file refer to both build-requirements.txt and
test-requirements.txt files, a torch-mlir developer should be able to
continue referring to the requirements.txt file without any impact.
2023-02-13 21:22:09 -06:00