Commit Graph

201 Commits (1d6aca3823e33a026320dadfd4d680452758edfa)

Author SHA1 Message Date
Ramiro Leal-Cavazos b723186983
Remove all but one of valsem ops + move fill.Scalar to elementwise (#1531)
This commit removes almost all of the valsem ops, since the value
semantics version of the ops now exist in PyTorch. The only op missing
is `aten.bernoulli_.float`. In addition, this commit also simplifies
the implementation of `aten.fill.Scalar` by moving it to the pattern
that converts elementwise ops.
2022-10-28 15:06:11 +00:00
powderluv 1c579c8c39
Drop 3.9 binaries to keep under 6hrs build (#1533) 2022-10-28 06:14:08 -07:00
powderluv bbde4e163f
Add Windows Builder (#1521)
Add a powershell script to build windows .whl packages
Disable LTC as it doesn't build on Windows.
Add GHA hooks
Use Python 3.10.8
2022-10-25 16:13:31 -07:00
Ashay Rane 4a776be156
build: make PyTorch caching more robust (#1510)
Whether or not the PyTorch build is cached should not affect the success
of the Torch-MLIR build, but based on the existing code, a build may
fail if the `TM_PYTORCH_INSTALL_WITHOUT_REBUILD` variable was set but
the build cache doesn't exist.

Although that variable is set by CI upon a cache hit, nuances of
Github's caching behavior can create situations where the coupling
between `TM_PYTORCH_INSTALL_WITHOUT_REBUILD` and the cache lookup fails.

Specifically, a branch other than our default branch (`main`) may create
the cache entry, but because Github doesn't share this cache entry with
builds running on the `main` branch, the `main` branch build tries to
create it's own cache entry.  However, since cache identifiers are
unique and because caches are immutable, the caching step running in the
`main` branch appears to create an invalid cache entry (of 233 bytes,
instead of the expected ~60 MB).

Consequently, subsequent builds observe a cache "hit", since caches
created by the `main` branch are shared with all other branches, but
because this cache entry is invalid (since it doesn't actually contain
the ~60 MB PyTorch WHL file), the builds fail.

One workaround would be to let only the `main` branch create caches, but
in doing so, we would also prevent other branches from _reading_ the
cache, making the builds in those branches terribly slow.

So this patch uses a different workaround, which is to check whether the
PyTorch WHL file exists, even if the build observed a cache hit.  If the
file doesn't exist, even if it was a purported cache hit, the code
builds PyTorch from source, which is probably intuitive.

A longer term fix will follow, after a discussion with the wider team.
2022-10-20 08:50:18 -05:00
Ashay Rane b86ec38541
ci: use the LLVM linker instead of GNU ld (#1501)
Without this patch, CI logs contained the line:

    -- Linker detection: GNU ld

GNU ld is notoriously slow at linking large binaries, so this patch
swaps GNU ld with the LLVM linker.

Since the linker invocation is driven through the compiler, perhaps the
best way to use the LLVM linker is to tell the compiler which linker
binary to use.  This patch adds the `-fuse-ld=lld` flag to all Linux
builds of Torch-MLIR in CI to make it use lld.
2022-10-18 00:43:04 -05:00
Ashay Rane a9942f343a
Cache PyTorch source builds to reduce CI time (#1500)
* ci: cache PyTorch source builds

This patch reduces the time spent in regular CI builds by caching
PyTorch source builds.  Specifically, this patch:

1. Makes CI lookup the cache entry for the PyTorch commit hash in
   pytorch-version.txt
2. If lookup was successful, CI fetches the previously-generated WHL
   file into the build_tools/python/wheelhouse directory
3. CI sets the `TM_PYTORCH_INSTALL_WITHOUT_REBUILD` variable to `true`
4. The build_libtorch.sh script then uses the downloaded WHL file
   instead of rebuilding PyTorch

* ci: warm up PyTorch source cache during daily RollPyTorch action

This patch makes the RollPyTorch action write the updated WHL file to
the cache, so that it can be later retrieved by CI that runs for each
PR.  We deliberately add the caching step to the end of the action since
the RollPyTorch action never needs to read from the cache, although
executing this step earlier in the process should not cause problems
either.
2022-10-18 00:42:42 -05:00
Gleb Kazantaev bdb5083d33
New ops support & enhancements (#1494)
* New ops support & enhancements

* Enabled xfail ltc tests
2022-10-14 10:28:21 -04:00
Daniel Ellis c085da148a Publish Python 3.7 packages.
This is the runtime Colab uses.
2022-10-12 08:50:12 -04:00
Sean Silva c8280d67bd Remove the heavydep tests
We originally added these to help bring up more complex models with
heavier dependencies. However, over time it has become clear that these
models usually require more than just heavier dependencies -- they often
require a nontrivial amount of "one-off" code to extract the relevant
parts of the model and compile them. This is not a good fit for a
component in the core Torch-MLIR repo.

However, in the community, nod.ai has developed the ["Shark
Tank"](https://github.com/nod-ai/SHARK/tree/main/tank) which has all the
appropriate code to wrangle these models and organize them. We intend to
more heaviliy lean on that as a community and improve the symbiosis
there to serve the role that these heavydep tests were meant to play.
2022-10-12 05:19:36 -07:00
Jae Hoon (Antonio) Kim 3e08f5a779
Fix `fromIntArrayRef` call (#1479)
* Fix fromSymint call

* Update PyTorch requirement

* Re-enable LTC
2022-10-11 13:29:07 -04:00
Ashay Rane aefbf65e27
Disable LTC and update PyTorch (#1472)
* build: disable LTC again so that we can bump PyTorch version

When built using PyTorch's master branch, the LTC code has been failing
to build for a few days.  As a result, the PyTorch version referenced by
Torch-MLIR is stalled to the one from October 4th.

In an effort to advance to PyTorch version, this patch disables LTC, and
a subsequent patch will advance the PyTorch version.

* update PyTorch version to 1.14.0.dev20221010

Also disables the `UpSampleNearest2dDynamicFactor_basic` e2e test, since
the (PyTorch) oracle differs from the computed value for both the
refbackend and the eager_mode backends.
2022-10-10 23:05:40 -05:00
Gleb Kazantaev eda18e351c
LTC aten.where support (#1455)
aten.where support
2022-10-04 10:17:41 -07:00
Ashay Rane 760cb13be0
build: switch to the correct directory before updating ODS (#1452) 2022-10-04 11:24:32 -05:00
Ashay Rane 8a8e779529
Disable auto-update of PyTorch version until CI script stabilizes (#1456)
Instead of letting the auto-update script either fail because of script
errors or letting it commit bad versions, this patch makes the update
process manual, for now.  Once the script stabilizes, I will its
re-enable periodic execution.
2022-10-04 03:02:44 -05:00
Ashay Rane da02390188
build: update ODS and shape library when updating PyTorch (#1450)
Updating the PyTorch version may break the Torch-MLIR build, as it did
recently, since the PyTorch update caused the shape library to change,
but the shape library was not updated in the commit for updating
PyTorch.

This patch introduces a new default-off environment variable to the
build_linux_packages.sh script called `TM_UPDATE_ODS_AND_SHAPE_LIB`
which instructs the script to run the update_torch_ods.sh and
update_shape_lib.sh scripts.

However, running these scripts requires an in-tree build and the tests
that run for an in-tree build of Torch-MLIR are more comprehensive than
those that run for an out-of-tree build, so this patch also swaps out
the out-of-tree build for an in-tree build.
2022-10-02 18:02:34 -05:00
Ashay Rane 95ffa27733
release: pin PyTorch version in release requirements (#1435)
Prior to this patch, the release process (`pip wheel`) retrieved
dependencies from the pyproject.toml file, which specified a version of
PyTorch that defaulted to the most recent nightly release.  Instead, we
want the release process to use the same pinned PyTorch version as the
development build of PyTorch.

Since TOML files can't reference the pytorch-requirements.txt file, this
patch puts the dependencies from pyproject.toml into
whl-requirements.txt, which references pytorch-requirements.txt.
2022-09-29 14:09:31 -05:00
Ramiro Leal-Cavazos 2509641cab
Add `--no-index` to CI's git-diff check on generated files (#1428)
`git diff` does not work by default on untracked files. Since the
function `_check_file_not_changed_by` stores the new generated file in
an untracked file, `git diff` was not catching any modifications in
the new generated file. This commit adds the flag `--no-index` to make
`git diff` work with untracked files.
2022-09-29 10:31:40 -07:00
Ashay Rane 53e76b8ab6
build: create RollPyTorch to update PyTorch version in Torch-MLIR (#1419)
This patch fetches the most recent nightly (binary) build of PyTorch,
before pinning it in pytorch-requirements.txt, which is referenced in
the top-level requirements.txt file.  This way, end users will continue
to be able to run `pip -r requirements.txt` without worrying whether
doing so will break their Torch-MLIR build.

This patch also fetches the git commit hash that corresponds to the
nightly release, and this hash is passed to the out-of-tree build so
that it can build PyTorch from source.

If we were to sort the torch versions as numbers (in the usual
descending order), then 1.9 appears before 1.13.  To fix this problem,
we use the `--version-sort` flag (along with `--reverse` for specifying
a descending order).  We also filter out lines that don't contain
version numbers by only considering lines that start with a digit.

As a matter of slight clarity, this patch renames the variable
`torch_from_src` to `torch_from_bin`, since that variable is initialized
to `TM_USE_PYTORCH_BINARY`.

Co-authored-by: powderluv <powderluv@users.noreply.github.com>
2022-09-28 15:38:30 -05:00
Ashay Rane 78bfbf2474
build: re-enable TOSA tests after upstream LLVM rollback (#1417) 2022-09-27 07:35:33 -05:00
Jae Hoon (Antonio) Kim 3e27aa2be3
Fix as_strided/slice symint (#1401)
* Fix as_strided symint

* Re-enable LTC tests

* Re-enable LTC

* Add hardtanh shape inference function

* Fix slice symint
2022-09-26 12:16:49 -04:00
Daniel Ellis 1dfe5efe9e Create github action for creating pip-compatible releases index 2022-09-23 15:26:19 -04:00
Sean Silva 7a77f9fe3d Add a way to turn off crashing tests
This adds a very long and obnoxious option to disable crashing tests.
The right fix here is to use the right multiprocessing techniques to
ensure that segfaulting tests can be XFAILed like normal tests, but we
currently don't know how to implement "catch a segfault" in Python
(patches or even just ideas welcome).

Motivated by #1361, where we ended up removing two tests from *all*
backends due to a failure in one backend, which is undesirable.
2022-09-23 05:01:39 -07:00
Sean Silva 566234f97a
Disable LTC again (#1400)
https://github.com/llvm/torch-mlir/issues/1396
2022-09-22 17:49:13 -05:00
Jae Hoon (Antonio) Kim 8967463980
Fix symint ops and blacklist `lift_fresh_copy` (#1373)
* Add symint to native functions yaml

* Re-enable LTC

* Fix new_empty_strided and narrow_copy
2022-09-20 10:16:04 -04:00
Sean Silva 7fa31817c5
Fix generated file checks (#1338)
No idea how this slipped by. Sorry about that.

Fixes #1334
2022-09-02 12:12:42 -07:00
powderluv 234b2f2bd4
Fix release builds to only build release (#1333)
We were defaulting to building Release and running tests. Tests are spawned separately.
2022-09-02 03:37:57 -07:00
powderluv 729609831c
Remove setting ulimit for docker runs (#1325)
We added both ipc=host and explicit ulimits. This _may_ be causing slow downs on GHA. Remove the ulimit setting still passes all the CI tests locally. `--ipc=host` is still required.
2022-08-31 20:37:53 -07:00
powderluv 9dbe41a85c
Drop Python3.8 binary releases. Still builds from source. (#1329)
Shows low download count and we can add it back if people ask for it. Should save release artifacts space and Release build time.
2022-08-31 20:30:01 -07:00
Sean Silva a924de3e1a Slightly tweak generated file checks
The new logic has the following benefits:
1. It does not clobber the working tree state. We expect testing to not
   change the work tree.
2. It correctly handles the case where a user has changes to the
   generated files, but hasn't checked them in yet (this happens
   frequently when adding new ops).
2022-08-31 20:03:25 -07:00
powderluv 3704363892
Use pre-compiled headers for PyTorch Source builds (#1327)
This should speed up source builds and ccache. May cause issues on macOS (https://github.com/pytorch/pytorch/issues/80018)
2022-08-31 16:09:16 -07:00
powderluv 928c815ce2
Add shapelib and Torch ODS gen tests (#1318) 2022-08-31 15:01:59 -07:00
powderluv 9f061ea97d
Dockerize CI + Release builds (#1234)
Gets both CI and Release builds integrated in one workflow.
Mount ccache and pip cache as required for fast iterative builds
Current Release docker builds still run with root perms, fix it
in the future to run as the same user.

There may be some corner cases left especially when switching
build types etc.

Docker build TEST plan:

tl;dr:
Build everythin: Releases (Python 3.8, 3.9, 3.10) and CIs.
  TM_PACKAGES="torch-mlir out-of-tree in-tree"
  2.57s user 2.49s system 0% cpu 30:33.11 total

Out of Tree + PyTorch binaries:

  Fresh build (purged cache):
    TM_PACKAGES="out-of-tree"
    0.47s user 0.51s system 0% cpu 5:24.99 total

  Incremental with ccache:
    TM_PACKAGES="out-of-tree"
    0.09s user 0.08s system 0% cpu 34.817 total

Out of Tree + PyTorch from source

  Incremental
    TM_PACKAGES="out-of-tree" TM_USE_PYTORCH_BINARY=OFF
    1.58s user 1.81s system 2% cpu 1:59.61 total

In-Tree + PyTorch binaries:

  Fresh build and tests: (purge ccache)
  TM_PACKAGES="in-tree"
  0.53s user 0.49s system 0% cpu 6:23.35 total

  Fresh build/ but with prior ccache
  TM_PACKAGES="in-tree"
  0.45s user 0.66s system 0% cpu 3:57.47 total

  Incremental in-tree with all tests and regression tests
  TM_PACKAGES="in-tree"
  0.16s user 0.09s system 0% cpu 2:18.52 total

In-Tree + PyTorch from source

  Fresh build and tests: (purge ccache)
  TM_PACKAGES="in-tree" TM_USE_PYTORCH_BINARY=OFF
  2.03s user 2.28s system 0% cpu 11:11.86 total

  Fresh build/ but with prior ccache
  TM_PACKAGES="in-tree" TM_USE_PYTORCH_BINARY=OFF
  1.58s user 1.88s system 1% cpu 4:53.15 total

  Incremental in-tree with all tests and regression tests
  TM_PACKAGES="in-tree" TM_USE_PYTORCH_BINARY=OFF
  1.09s user 1.10s system 1% cpu 3:29.84 total

  Incremental without tests
  TM_PACKAGES="in-tree" TM_USE_PYTORCH_BINARY=OFF TM_SKIP_TESTS=ON
  1.52s user 1.42s system 3% cpu 1:15.82 total

In-tree+out-of-tree + Pytorch Binaries
  TM_PACKAGES="out-of-tree in-tree"
  0.25s user 0.18s system 0% cpu 3:01.91 total

To clear all artifacts:
rm -rf build build_oot llvm-build libtorch docker_venv
externals/pytorch/build
2022-08-30 11:07:25 -07:00
Sean Silva e16b43e20b Remove "torchscript" association from the e2e framework.
We use it for more than TorchScript testing now. This is a purely
mechanical change to adjust some file paths to remove "torchscript".

The most perceptible change here is that now e2e tests are run with

```
./tools/e2e_test.sh
instead of:
./tools/torchscript_e2e_test.sh
```
2022-08-29 14:10:03 -07:00
Jae Hoon (Antonio) Kim 8e880a2d00
Fix symint related functionalization ops (#1289)
* Fix symint related functionalization ops

* Remove zeros xfail from LTC tests
2022-08-26 16:13:28 -04:00
Henry Tu e2f862cb85
Fix LTC build warnings (#1272)
* Resolved Wunused-variable

* Fix Wunneeded-internal-declaration

* Address review comment

* Update autogen_ltc_backend.py

* Update mlir_native_functions.cpp to work with updated PyTorch

* Remove NewZeros from LTC XFAIL set
2022-08-24 15:04:28 -04:00
Henry Tu ba17a4d6c0
Reenable LTC in out-of-tree build (for real this time) (#1205)
* Fix OOT LTC CI build failure

* Disable LTC during macOS package gen

* Add more details about static TorchMLIRJITIRImporter library
2022-08-19 15:25:00 -04:00
powderluv 0d1aa43764
Drop Python 3.7x from the nightly binary builds (#1246) 2022-08-18 16:34:12 -07:00
Quinn Dawkins 85f383ce0b
Bump the shape lib to match the upstream functions currently in PyTorch (#1236)
Bumps the shape library:
 - Updates the function signature for aten.arange.start_step
 - upstream_shape_functions.mean_dim -> upstream_shape_functions.sum_mean_dim
2022-08-17 00:11:04 -04:00
nithinsubbiah fde390c766 Re-enable custom op support 2022-08-16 22:49:08 +05:30
Sambhav Jain f00ca91db0
Simplify matrix configuration for CI workflows (#1213)
Addresses https://github.com/llvm/torch-mlir/issues/1207. 

#### Provisioned jobs:
```
# ubuntu - x86_64 - llvm in-tree     - pytorch binary - build+test    # most used dev flow and fastest signal
# ubuntu - x86_64 - llvm out-of-tree - pytorch source - build+test    # most elaborate build
# macos  - arm64  - llvm in-tree     - pytorch source - build only    # cross compile, can't test arm64
```

#### Main changes
- [x] Spawn macos builds from a separate matrix (in the same workflow). It made sense to do this as they are fairly different from ubuntu (cross compile, use a different cmake configuration). This simplifies the matrix configuration and exclusions quite a bit, and makes the workflow a bit more tractable and maintenance friendly.
- [x] Remove the submodule md5sum step for ccache config. This was [broken](https://github.com/llvm/torch-mlir/runs/7779288734?check_suite_focus=true#step:3:145) for a while now.
- [x] Removes unused matrix options - `os`, `targetarch`, `python-version`, `llvmtype`.
- [x] Address ZSTD [comment](https://github.com/llvm/torch-mlir/pull/1204#discussion_r942349282) on @powderluv's cross compile [PR](https://github.com/llvm/torch-mlir/pull/1204). 

#### Further improvements (to be addressed in follow-on):
* ubuntu-x86_64 out-of-tree integration tests fail ([error](https://github.com/sjain-stanford/torch-mlir/runs/7781264029?check_suite_focus=true)); only run unit tests for now (tests are excluded in current CI too)

#### Passing workflow:
https://github.com/sjain-stanford/torch-mlir/actions/runs/2840676309
![image](https://user-images.githubusercontent.com/19234106/184194535-f3807991-401a-4cb9-b030-0ee8c334eba3.png)
2022-08-11 16:35:15 -07:00
Sean Silva 5618890ca0 development.md: Avoid name collisions with PYTORCH_ variables 2022-08-05 19:41:08 -07:00
Henry Tu 2c3b3606d0 Resolve remaining LTC CI failures (#1110)
* Replace CHECK_EQ with TORCH_CHECK_EQ

* Check value of TORCH_MLIR_USE_INSTALLED_PYTORCH during LTC build

* Update LTC XFAIL with NewZerosModule ops

* Explicitly blacklist _like ops

* Automatically blacklist new_/_like ops

* Prune away unused Python dependencies from LTC

* Add flag to disable LTC

* Autogen dummy _REFERENCE_LAZY_BACKEND library when LTC is disabled

* Implement compute_shape_var

* Removed Var tests from XFAIL Set

* XFAIL tests using _local_scalar_dense or index.Tensor

* Add StdDim tests to XFAIL set

* Autogen aten::cat
2022-07-30 09:40:02 -04:00
Jae Hoon (Antonio) Kim 425362263b Clean up Autogen (#1112)
* Remove unnecessary sed in autogen

* Remove .pyc files frrom VCS
2022-07-30 09:40:02 -04:00
Jae Hoon (Antonio) Kim 0d16a91656 Add support for lift_fresh op (#1101) 2022-07-30 09:40:02 -04:00
Antonio Kim de6c135dc3 Fix LTC autogen for CI with nightly PyTorch
- Update llvm-project pin to match main
2022-07-30 09:40:02 -04:00
Henry Tu cec74b8d37 Blacklist _convolution op (#1048)
* Blacklist _convolution op in LTC

* Removed duplicate Torch_AtenSelectScatterOp instance from autogen .td

* Removed duplicate Torch_AtenSliceScatterOp instance from autogen .td
2022-07-30 09:40:02 -04:00
Henry Tu 47bb38d180 Reference Lazy Backend (#1045)
* Changed Example MLIR backend to Reference MLIR backend

* Moved reference_ltc_backend into csrc

* Merged sys_utils.h

* Renamed reference_ltc_backend to reference_lazy_backend

* Addressed review comments

* Update docs with new library name

* Removed _REFERENCE_LAZY_BACKEND from .gitignore

* Added reference_lazy_backend to the TorchMLIRPythonModules dependency list

Fixed typo in `ltc_examples.md`

Missed instance where `ltc_backend` was used instead of `lazy_backend`.
2022-07-30 09:40:02 -04:00
Jae Hoon (Antonio) Kim fb21c9e6cb Integrate Functionalization Pass (#998)
* Fix autogen build dir issue

* Got functionalization pass to compile

* Add slice/diagonal backwards functionalization

* Fix codegen invocation in CMakeLists.txt

* Add functionalization view ops

* Fix logsumexp out functionalization

* Fix ComputationPtr

* Blacklist new_empty op

* Add op comparison

* Remove unnecessary ops

Co-authored-by: Henry Tu <henry.tu@cerebras.net>
2022-07-30 09:40:02 -04:00
Jae Hoon (Antonio) Kim a62d60829c Refactor autogen (#925) 2022-07-30 09:40:02 -04:00
Jae Hoon (Antonio) Kim d9aee0d7a7 E2E HuggingFace Bert using LTC Backend (#912)
* Update native function definitions

* Add ops to support bert lowering

- Add empty_strided and as_strided

- Restore zeros_like to op blacklist (Without this, tensors will be unintentionally created with a CPU device rather than lazy)

- Check for composite implicit ops and add device data IR

- Also fix codegen for functionalization

* Add autogen to CMakeList

* Remove PyTorch submodule

* Reduced BERT model size

* Print Mark Step status in Torch MLIR LTC debug string

* Apply fixes to work with latest upstream/main

- Pass importOptions into getMlirTypeFromTorchType during NodeImporter::importNode

  Without this, the tensor type created may have a mismatched type as ImportOptions may cause vtensor to be used instead of tensor

* Update shape inference functions

- Fixed compute_shape_native_batch_norm when mean and var are uninitialized

  Previously, the number of shapes returned would be <3 if either mean or val was didn't exist. Instead, we now initialize them with a vector matching the number of channels.

- Implemented compute_shape_mul

- Fixed bug in reshape shape inference error message

* Get MLIR backend more consistent with TS backend

- Remove LazyNativeFunctions::_unsafe_view from autogen

- Blacklist ops to make JIT graph more like output of TS backend

- Print graph when SSA value has mismatch of types and results

- Remove normalize_index from LazyShapeInference

- Fix seeds for LTC example models

* Update and clean up shape inference functions

- Prune shape inference functions

- Add shape inference function for GenerateSlice

- Add shape inference function for GenerateCopy

Co-authored-by: Henry Tu <henry.tu@cerebras.net>
2022-07-30 09:40:02 -04:00
Jae Hoon (Antonio) Kim 1bde00c73d Fix LTC Decoupling (#815)
* Initial changes

* Fix up native functions

* Further fix decoupling

* Remove unnecessary ops

* Formatting and copyright banners:

* Add pytorch submodule
2022-07-30 09:40:02 -04:00
Henry Tu cca9fe126e Enable support for LTC Input/Output Mapping (#764)
* Save InputOutputAliases to TorchMlirComputation

* Implement GetResultShape for TorchMlirLoweringContext

* Use optional return type for GetResultShape

* Remove support for aten::detach

With this op enabled, tensors were being copied, which resulted in incorrect aliasing.

* Add newline before printing I/O alias mapping

* Changed printout to use "Input param" as label instead of "Input"

* Remote shape inference function for aten::detach

* Moved implementation of SetUpAlias to MlirLoweringContext

As part of this change, TorchMlirComputation has been moved to the end of mlir_lowering_context.h so that it can access some new structs in TorchMlirLoweringContext

* Use updated PyTorch API

* Remove GetResultShape

Complements this upstream PyTorch PR: pytorch/pytorch#75828

This PR adds support for mapping input and output tensors which alias each other. (e.g. maps input weight tensor in parameter to the same tensor in output after a training iteration)

MLIR: 
func @graph(%arg0: !torch.vtensor<[1,5],f32>, %arg1: !torch.vtensor<[1],si64>, ..., %arg6: !torch.vtensor<[10,5],f32>, %arg7: !torch.vtensor<[10],f32>, ...) {
  ...
  return %arg0, %arg1, %17, %23, ... : !torch.vtensor<[1,5],f32>, !torch.vtensor<[1],si64>, !torch.vtensor<[10,5],f32>, !torch.vtensor<[10],f32>, ...
}

Input/Output Alias Mapping: 
Output: 0 -> Input: 0
Output: 1 -> Input: 1
Output: 2 -> Input: 6
Output: 3 -> Input: 7
The aten::detach op has also been disabled in this PR to fix the issue of tensors not aliasing properly due to copying.
2022-07-30 09:40:02 -04:00
Antonio Kim 615ff1d31c Generate MLIR with shape information via LTC frontend (#742) 2022-07-30 09:40:02 -04:00
Henry Tu 3e9b1cbd36 Added JIT to MLIR lowering (#724)
* Added JIT to MLIR lowering

Lowering to JIT is performed in a way similar to how it's done in the TS LTC backend. After a jit::Graph is constructed, it gets converted to a jit::Function, which is fed into the existing utility to generate an MlirModule in torch-mlir.

* Renamed `csrc/backend` to `csrc/base_lazy_backend`
2022-07-30 09:40:02 -04:00
Jae Hoon (Antonio) Kim 65cf1465ef Fix Torch-MLIR LTC Backend based off latest PyTorch master (#723)
* Changes as a result of the LTC TS backend decoupling

* Fix bugs in BackendImpl and codegen

* Fix based on latest PyTorch master
2022-07-30 09:40:02 -04:00
Jae Hoon (Antonio) Kim c3b20e444c Got LTC working until compile (#689) 2022-07-30 09:40:02 -04:00
powderluv 31fd812acf
Add linux and macOS source builds in CI (#1070)
This enables building Pytorch from source in the CI.
The build should mostly hit the ccache.
Release builds will follow once we have some runtime on the CI.
2022-07-21 14:16:03 -07:00
powderluv baa4383c44
Revert to using Pytorch paths for delocate (#1065)
Remove the linking of libtorch/ paths in delocate for CI builds
2022-07-15 19:51:59 -07:00
powderluv 479a8a8963
Remove libtorch downloads (#1058)
Remove all the libtorch downloads. If the user sets
-DTORCH_MLIR_USE_INSTALLED_PYTORCH=OFF then just build from src.

Doesn't change developer workflow since we still default to local
PyTorch versions.

TEST: Build and verify all tests (except one xfail quant) pass on linux
2022-07-14 17:16:51 -07:00
Ramana Radhakrishnan 6e68f27399
Fail to install x86_64 linux libtorch.so on other architectures. (#1053)
Found while trying to build torch-mlir on an AArch64 Linux VM, worth
a belts and braces to prevent such cases.

Change-Id: I89c6fccb62e666dbda0d9acac2d0ee43c2899e9b
2022-07-14 10:01:21 -07:00
Maksim Levental 1bb990afc7
Speed up libtorch build. (#1031) 2022-07-11 20:46:49 -05:00
powderluv ea2afce29a
Fix OSX nightly builds (#1032)
Set default OSX arch to x86_64. Release builds will override it.
Also update to the latest point release on Python 3.9x and 3.10x
2022-07-10 22:17:01 -07:00
Ashay Rane 874fdb7e42
build: improve robustness of cmake and shell scripts (#1018)
On my local machine, `unzip` didn't exist (producing a "command not
found" error), but CMake ignored the error.  Although the build did
succeed (because it found a previously-built version of libtorch), it
seems better to abort builds on such failures, so this patch checks the
return code of all external process invocations.

Along similar lines, this patch also updates the shell scripts in
`build_tools` to extensively use double-quoting to prevent unintentional
word splitting or globbing.  Since some of the scripts execute `rm`
while using shell variables, this patch also adds the preamble `set -u`
to abort execution if an undefined variable is referenced, so that we
reduce the chances of executing `rm -rf /` if the path expression
happens to refer to an undefined variable.
2022-07-06 14:39:30 -07:00
powderluv 33bfeda4c5
Enable libtorch caching and source builds (#1004)
Add an option to cache libtorch/ releases if you don't want to
download the latest. Add an option to enable source builds.

TESTS:
macOS: verify with / without cache downloads
       verify source builds -- shared and static

Linux: Build Tests and Release builds
2022-07-05 10:25:43 -07:00
powderluv 2b52da951b
Link against libtorch (#955)
This moves torch-mlir to link against libtorch on macOS and linux

TESTS: Tests pass. Tested release builds on linux and macOS
2022-06-30 12:40:17 -07:00
Bob Adolf b90837ee24
Temporarily revert support for custom op extensions. (#944)
The MacOS builders are having linking trouble with the extension library.
Until it's fixed, all support for op extensions is disabled. It should be
easy to restore once the issue is resolved.
2022-06-14 18:24:40 -07:00
Bob Adolf 0a7ba62438
Allow torch-mlir to support PyTorch extensions. (#895)
PyTorch allows new operators to be registered dynamically in modules.
Torch-mlir already makes it fairly straightforward to add support for
new operators, and this commit just extends that support to allow new
PyTorch ops to come from a external module.

This does *not* allow ops to be dynamically loaded into torch-mlir.
Torch-mlir must still be compiled with support built-in.

Add a `_torch_mlir_custom_op_example` subpackage to `torch_mlir` which
registers an demonstration op. It will not be imported by default when
importing torch_mlir. It's strictly for testing and documentation.

Adds an end-to-end test for the `torch_mlir_custom_op_example::identity` op.

With all these changes, we should now be actively testing PyTorch extension
support with all future patches.
2022-06-13 14:51:30 -07:00
Prashant Kumar 10c8e3c593 Add simple neural_net and bert_training scripts.
1. With the help of `make_fx` we are able to get the full training graph
   with weight updates.
2. NeuralNet_training passes. Bert_training passes after cherry-picking
   https://github.com/llvm/torch-mlir/pull/844.
3. TODO: Remove the functorch's dependency after make_fx moves to
   pytorch core.
2022-05-19 06:18:42 +05:30
powderluv d872f3e2ca
Build each OSX python version in an venv (#852)
Previously only system default versions were built. Now we build
binaries for both 3.9 and 3.10
2022-05-12 16:39:35 -07:00
powderluv e7f306ec2f
Use delocate to make portable wheels on OSX (#850)
Fix up wheels per python version on OSX
2022-05-12 14:16:32 -07:00
powderluv 0fb7a03ac9
Update build_macos_packages.sh
Set default OSX SDK to 11.0 not 11:0
2022-05-04 08:44:43 -07:00
powderluv fe1237b2a4
Provide a way to override MacOS target and arch (#818)
Useful when we are only building for one architecture.
2022-05-02 09:04:12 -07:00
Prashant Kumar 5192a4e9f3 Remove heavy_deps models that don't get serialized.
BART, BigBird and GPT2 are not being serialized and hence removed.
Also, changed the script to obtain the resnest model.
2022-04-29 17:21:25 +05:30
powderluv ef546e1137
Add a script to build and upload M1 snapshots (#801)
Uses the latest snapshot tags and adds the releases to same asset
directories so it can be run on a cronjob without a GH runner.
2022-04-28 14:50:58 -07:00
Vivek Khandelwal 4635d36efb [MLIR][TORCH] Add heavydep tests for torch benchmarks
This commit adds e2e heavydep tests for the torch benchmarks.

Signed-Off By: Vivek Khandelwal <vivek@nod-labs.com>
2022-04-26 13:22:08 +05:30
powderluv 6d09c98b2f
Fix version information in Release builds (#788)
env vars seems to be lost in manylinux docker.
Use a version file like IREE does.
2022-04-25 14:13:17 -07:00
powderluv 7d9138f497
Update build_macos_packages.sh (#787)
Set the environment variable and export it since it doesn't seem to get passed down.
2022-04-22 15:48:03 -07:00
Prashant Kumar e9c785b04b Generate backward graph via functorch-aot module
Example to demonstrate the extraction of forward as well as
backward graph via Functorch's AOT module is added.
2022-04-22 20:58:35 +05:30
powderluv 4ef61aa27f
Minor buildsystem fixes (#778)
Sets up auto-pinning of latest torch-nightly
2022-04-21 15:53:00 -07:00
powderluv b03eac4224
Enable OSX (Intel, Apple Silicon Builds) (#776)
Update pinned pytorch version. Will submit a follow on PR to bump.
Also update artifacts directory
2022-04-21 10:47:28 -07:00
powderluv cc3a4a58ef
Add oneshot release snapshot for test/ondemand (#768)
* Add oneshot release snapshot for test/ondemand

Add some build scripts to test new release flow based on IREE.
Wont affect current builds, once this works well we can plumb it
in.

Build with manylinux docker

* Fixes a few issues found when debugging powderluv's setup.

* It is optional to link against Python3_LIBRARIES. Check that and don't do it if they don't exist for this config.
* Clean and auditwheel need to operate on sanitized package names. So "torch_mlir" vs "torch-mlir".
* Adds a pyproject.toml file that pins the build dependencies needed to detect both Torch and Python (the MLIR Python build was failing to detect because Numpy wasn't in the pip venv).
* Commented out auditwheel: These wheels are not PyPi compliant since they weak link to libtorch at runtime. However, they should be fine to deploy to users.
* Adds the --extra-index-url to the pip wheel command, allowing PyTorch to be found.
* Hack setup.py to remove the _mlir_libs dir before building. This keeps back-to-back versions from accumulating in the wheels for subsequent versions. IREE has a more principled way of doing this, but what I have here should work.

Co-authored-by: Stella Laurenzo <stellaraccident@gmail.com>
2022-04-21 02:19:12 -07:00
Sean Silva b69db60f85 Pin the Python package to the exact PyTorch nightly.
This avoids issues where PyTorch version drift has made things
incompatible.

One caveat is that you will need to specify
`-f https://download.pytorch.org/whl/nightly/cpu/torch_nightly.html
--pre` on the command line for pip to know where to find the nightly
packages (there is no way around this) -- this is easiest to do by
simultaneously passing `-r requirements.txt` on the pip command line.
2022-04-20 16:47:38 -07:00
powderluv 91d3e7ba15 Remove CCACHE settings and validate on OSX
Builds whl package for OSX. Need to validate smoke tests next
2022-04-14 01:32:49 -07:00
Sean Silva 3a96078571 Pin the CI to the latest working PyTorch.
I am investigating the breakage.

Also, fix "externals" rename in setup.py and some cases where we weren't
using `requirements.txt` consistently.

Also, fix a case where the packaging script would get confused due to
".." in the path name.
2022-03-29 15:02:17 -07:00
Sean Silva 52c330cca2 Fix some more uses of "e2e" that I missed in the last commit. 2022-03-28 19:09:56 +00:00
Sean Silva 0378c75b35 Centralize all test serialization logic. 2022-03-28 10:17:13 -07:00
Ahmed S. Taei 8383497704
[NFC] Rename external -> externals (#699) 2022-03-26 09:12:27 -07:00
Prashant Kumar 730cdcd071 Add hugging face `albert-base-v2` in torchscript_e2e_heavydep_tests
`albert-base-v2` for sequence classification is added in e2e_heavy_test.
2022-03-24 17:43:24 +05:30
Sean Silva 729402c3f4 Reduce compilation time for TorchOps.cpp.inc
The `assemblyFormat` stuff (which generates unrolled, per-op C++ code)
was taking up a lot of compile time, and all the ops are essentially
printed with the same logic. So this PR makes them all call the same
helper function. This is done by using
`let hasCustomAssemblyFormat = 1` and then implementing `FooOp::parse`
and `FooOp::print`.

Additionally, the `Generated*Ops.td` files are all collapsed into just
`GeneratedTorchOps.td` (there is no reason to have the files separate,
since the files are very large anyway so one is always having to search
within them -- editors don't care that the file to search is now a bit
bigger :) ).

This reduces TorchOpsODSGenerated.cpp compile time (which is now
GeneratedTorchOps.cpp) from 39 to 31 seconds on my machine. This is
actually less than I expected, but this PR is an overall cleanup to the
code anyway. The next step will be to introduce (better) functionality
upstream for sharding the TorchOps.cpp.inc file, so that we can truly
parallelize the O(#ops) costs. This is also necessary, because after
this PR, TorchDialect.cpp is now the slowest file to compile, due to the
`addOperations<... all the ops ...>` call, which needs to be shareded
too.
2022-03-21 14:42:26 -07:00
Sean Silva 3734f69119 Remove basic_mt from the heavydep tests
This was an aspirational goal at an earlier stage in the project where
the focus was heavily on programs with state, control flow, and
lists/dicts. We will circle back to such programs likely 2022H2 at some
point, but for now, having this test doesn't add much, since basically
nothing works or is being worked on.
2022-03-15 15:25:53 -07:00
Sean Silva a5fe0cf063 Introduce new shape library design.
See the documentation in `docs/shape_lib.md` and
`docs/adding_a_shape_function.md` for an overview of the system.

This completely overhauls how we represent shape functions. In
particular, RefineTypes does not infer shapes anymore (only dtypes).
Shape functions are now written in (TorchScript'able) Python.

Recommended review order:

1. Read `docs/shape_lib.md` and `docs/adding_a_shape_function.md`.
1. Code and tests for ReifyShapeCalculations, DropShapeCalculations.
1. Code and tests for SimplifyShapeCalculations.
1. shape_lib_gen.py
1. Code and tests for new RefineTypes pass.
1. Random folders/canonicalizers in TorchOps.cpp and associated test in
   `canonicalize.mlir`.
1. New ReadOnly trait inferred from the registry.
1. Any miscellaneous remaining stuff.

Example `-print-ir-after-all` for ElementwiseUnaryModule:
[IR lowering dump](https://gist.github.com/silvasean/e4dc8cbc8d00aac7819602e3cbd8e212).

Example `-print-ir-after-all` for ElementwiseBinaryModule:
[IR lowering dump](https://gist.github.com/silvasean/daf6860ecced732af3568af6b1899113).
2022-03-15 12:41:58 -07:00
Prashant Kumar 126dac3ded Cmake build commands fix.
The external projects torch-mlir and torch-mlir-dialects should be
placed inside double quotes.
2022-02-16 20:46:53 +05:30
Yi Zhang 869daf3c22 Add TMTensor dialect to torch-mlir
This is intended to explore support for non-structured ops that can't
be modeled by Linalg dialect. `tm_tensor.scan` and `tm_tensor.scatter`
are added as the first such ops. The dialect should aim to be
upstreamed in the future.
2022-02-15 16:45:38 -05:00
Sean Silva 4a8d05e4a5 Add torch_mlir snapshot packages.
This closely follows IREE's
[schedule_snapshot_release.yml](f2f153d394/.github/workflows/schedule_snapshot_release.yml (L1))
workflow.

The snapshot releases can be installed with:
```
python -m pip install torch_mlir -f "https://github.com/llvm/torch-mlir/releases"
```
2021-10-06 14:50:31 -07:00
Sean Silva 712445eaa8 Bring back Python packaging.
Will add a CI job that builds and uploads snapshot packages next.
2021-10-05 13:33:30 -07:00
Sean Silva dcab39146f Remove the last mentions of npcomp from torch-mlir
These snuck through.
2021-10-05 20:17:23 +00:00
Yi Zhang fadd76e9b8 E2e for MiniLM-L6-H384-uncased-sst2
Replace the original BertSequenceClassification with this new one.
The ops needed to support are identical.
2021-10-05 12:45:19 -04:00
Sean Silva f0ed9e2d8d Fix update_torch_ods.sh 2021-10-01 17:47:25 +00:00
Sean Silva 5b6902e31c Dual license the torch-mlir project.
This commit (with approval from all contributors) dual licenses
the torch-mlir project under both the standard LLVM license and the
standard PyTorch license. This will facilitate moving code between
torch-mlir and the two upstream projects.

The standard file comment is now:

```
// This file is licensed under the Apache License v2.0 with LLVM Exceptions.
// See https://llvm.org/LICENSE.txt for license information.
// SPDX-License-Identifier: Apache-2.0 WITH LLVM-exception
// Also available under a BSD-style license. See LICENSE.
```

See `LICENSE` in the project root for the terms of both licenses.
2021-10-01 10:46:08 -07:00
Yi Zhang 89225b0cd8 Add BertSequenceClassification model to e2e
Use torch tracing to get the module because the original model is not
TorchScriptable out of box.
2021-09-30 13:30:29 -04:00