Commit Graph

1617 Commits (c956c39c8603ff4859f95c1a5299c9f42ba0d77d)
 

Author SHA1 Message Date
Sean Silva 22307a1427 Clean up some parts of the test suite
The purpose of the test suite is to accelerate the development of the
compiler. However, we had various tests there that were not expected to
work, had no in-progress work being tested by the test, and nobody was
actively working on them. Having such tests in our test suite just adds
clutter and slows down development on the compiler.
2022-11-21 06:14:31 -08:00
Tanyo Kwok a9fb0c5459
fix mhlo e2e ci crashes (#1620)
* fix mhlo e2e ci crashes

* add passed tests

* calc dynamic positive dim
2022-11-21 21:50:35 +08:00
Vivek Khandelwal 25ab8fcc1f [MLIR][TORCH] Fix numel tests for Roll PyTorch action
Signed-Off By: Vivek Khandelwal<vivek@nod-labs.com>
2022-11-20 19:19:42 +05:30
Vivek Khandelwal 4cbd3927d7 [MLIR][TORCH] Add aten.sort.int op
Signed-Off By: Vivek Khandelwal<vivek@nod-labs.com>
2022-11-20 19:00:41 +05:30
Chi_Liu 29c8f47723
[TOSA] Add aten.clamp op tosa support (#1609)
Co-authored-by: AmosLewis <Amos_Lewsi@foxmail.com>
2022-11-18 13:32:13 -08:00
Abhishek Varma 1d949f3ac2 [MLIR][TORCH] Fix aten.upsample_nearest2d op
-- aten.upsample_nearest2d.vec op is not present
   owing to https://github.com/pytorch/pytorch/pull/85638
-- So this commit adds a lowering on aten.upsample_nearest2d.

Signed-off-by: Abhishek Varma <abhishek@nod-labs.com>
2022-11-18 13:41:47 +05:30
Kazuaki Ishizaki 638a884e8c fix typos 2022-11-17 11:03:27 -08:00
Sean Silva 39de4d6265 [cleanup] Make diagnostics better
Also remove some unused imports.
2022-11-17 02:09:54 -08:00
Vivek Khandelwal 5f7177da35 [MLIR][TORCH] Add decomposition for aten.var_mean.correction op
Signed-Off By: Vivek Khandelwal<vivek@nod-labs.com>
2022-11-17 13:00:09 +05:30
Gaurav Shukla 0d209998d1
llvm: update tag to e864ac6945 (#1600)
Summary of changes:
1. Replace `string` iterator types by `IteratorType` enum.
(e6598b053d)
2. Update `includes` wrt new directory layout of MLIR HLO codebase.
(9fd8d251a8)
3. Update tags
   llvm: e864ac694540342d5e59f59c525c5082f2594fb8
   MHLO: eab364ba2a66bd0613efb94f8a738c1c97aaee92

Signed-Off-by: Gaurav Shukla <gaurav@nod-labs.com>

Signed-off-by: Gaurav Shukla <gaurav@nod-labs.com>
2022-11-16 14:40:36 -08:00
Ramiro Leal-Cavazos 09ca07bca0
`m_TorchConstant{Int/Bool}List` -> `m_TorchListOfConstant{Int/Bool}s` (#1601)
This commit renames the patterns used to match on lists of constant
values to `m_TorchListOfConstant{valueType}s`. This is needed to avoid
ambiguity for when `valueType` has `Optional` in it. In particular, it
makes it clear whether the values in the list are optional or the list
itself is optional.
2022-11-16 20:33:12 +00:00
Sambhav Jain ba5b90ee27
Enable bazel LIT tests in CI (#1596)
Bazel LIT test support was added in https://github.com/llvm/torch-mlir/pull/1585. This PR enables the tests in CI.

```
INFO: Build completed successfully, 254 total actions
@torch-mlir//test/Conversion:TorchToArith/basic.mlir.test                PASSED in 0.3s
@torch-mlir//test/Conversion:TorchToLinalg/basic.mlir.test               PASSED in 0.5s
@torch-mlir//test/Conversion:TorchToLinalg/elementwise.mlir.test         PASSED in 0.3s
@torch-mlir//test/Conversion:TorchToLinalg/flatten.mlir.test             PASSED in 0.3s
@torch-mlir//test/Conversion:TorchToLinalg/pooling.mlir.test             PASSED in 0.3s
@torch-mlir//test/Conversion:TorchToLinalg/unsqueeze.mlir.test           PASSED in 0.2s
@torch-mlir//test/Conversion:TorchToLinalg/view.mlir.test                PASSED in 0.3s
@torch-mlir//test/Conversion:TorchToMhlo/basic.mlir.test                 PASSED in 0.5s
@torch-mlir//test/Conversion:TorchToMhlo/elementwise.mlir.test           PASSED in 0.9s
@torch-mlir//test/Conversion:TorchToMhlo/gather.mlir.test                PASSED in 0.3s
@torch-mlir//test/Conversion:TorchToMhlo/linear.mlir.test                PASSED in 0.6s
@torch-mlir//test/Conversion:TorchToMhlo/pooling.mlir.test               PASSED in 0.3s
@torch-mlir//test/Conversion:TorchToMhlo/reduction.mlir.test             PASSED in 0.4s
@torch-mlir//test/Conversion:TorchToMhlo/view_like.mlir.test             PASSED in 0.6s
@torch-mlir//test/Conversion:TorchToSCF/basic.mlir.test                  PASSED in 0.2s
@torch-mlir//test/Conversion:TorchToTosa/basic.mlir.test                 PASSED in 1.1s
@torch-mlir//test/Dialect:Torch/GlobalizeObjectGraph/basic.mlir.test     PASSED in 0.2s
@torch-mlir//test/Dialect:Torch/GlobalizeObjectGraph/error.mlir.test     PASSED in 0.2s
@torch-mlir//test/Dialect:Torch/GlobalizeObjectGraph/free-functions.mlir.test PASSED in 0.2s
@torch-mlir//test/Dialect:Torch/GlobalizeObjectGraph/initializers.mlir.test PASSED in 0.2s
@torch-mlir//test/Dialect:Torch/GlobalizeObjectGraph/methods.mlir.test   PASSED in 0.2s
@torch-mlir//test/Dialect:Torch/GlobalizeObjectGraph/module-uses-error.mlir.test PASSED in 0.2s
@torch-mlir//test/Dialect:Torch/GlobalizeObjectGraph/module-uses.mlir.test PASSED in 0.2s
@torch-mlir//test/Dialect:Torch/GlobalizeObjectGraph/multiple-instances-error.mlir.test PASSED in 0.2s
@torch-mlir//test/Dialect:Torch/GlobalizeObjectGraph/multiple-instances-multiple-module-args.mlir.test PASSED in 0.2s
@torch-mlir//test/Dialect:Torch/GlobalizeObjectGraph/multiple-instances.mlir.test PASSED in 0.2s
@torch-mlir//test/Dialect:Torch/GlobalizeObjectGraph/submodules.mlir.test PASSED in 0.3s
@torch-mlir//test/Dialect:Torch/GlobalizeObjectGraph/visibility.mlir.test PASSED in 0.2s
@torch-mlir//test/Dialect:Torch/adjust-calling-conventions.mlir.test     PASSED in 0.2s
@torch-mlir//test/Dialect:Torch/canonicalize.mlir.test                   PASSED in 0.4s
@torch-mlir//test/Dialect:Torch/decompose-complex-ops-legal.mlir.test    PASSED in 0.2s
@torch-mlir//test/Dialect:Torch/decompose-complex-ops.mlir.test          PASSED in 0.9s
@torch-mlir//test/Dialect:Torch/drop-shape-calculations.mlir.test        PASSED in 0.4s
@torch-mlir//test/Dialect:Torch/erase-module-initializer.mlir.test       PASSED in 0.2s
@torch-mlir//test/Dialect:Torch/inline-global-slots-analysis.mlir.test   PASSED in 0.3s
@torch-mlir//test/Dialect:Torch/inline-global-slots-transform.mlir.test  PASSED in 0.2s
@torch-mlir//test/Dialect:Torch/invalid.mlir.test                        PASSED in 0.4s
@torch-mlir//test/Dialect:Torch/lower-to-backend-contract-error.mlir.test PASSED in 17.3s
@torch-mlir//test/Dialect:Torch/maximize-value-semantics.mlir.test       PASSED in 0.3s
@torch-mlir//test/Dialect:Torch/ops.mlir.test                            PASSED in 0.3s
@torch-mlir//test/Dialect:Torch/prepare-for-globalize-object-graph.mlir.test PASSED in 0.2s
@torch-mlir//test/Dialect:Torch/promote-types.mlir.test                  PASSED in 0.3s
@torch-mlir//test/Dialect:Torch/reduce-op-variants-error.mlir.test       PASSED in 0.2s
@torch-mlir//test/Dialect:Torch/reduce-op-variants.mlir.test             PASSED in 0.2s
@torch-mlir//test/Dialect:Torch/refine-public-return.mlir.test           PASSED in 0.2s
@torch-mlir//test/Dialect:Torch/refine-types-branch.mlir.test            PASSED in 0.3s
@torch-mlir//test/Dialect:Torch/refine-types-ops.mlir.test               PASSED in 0.6s
@torch-mlir//test/Dialect:Torch/refine-types.mlir.test                   PASSED in 0.4s
@torch-mlir//test/Dialect:Torch/reify-shape-calculations.mlir.test       PASSED in 2.9s
@torch-mlir//test/Dialect:Torch/simplify-shape-calculations.mlir.test    PASSED in 0.3s
@torch-mlir//test/Dialect:Torch/torch-function-to-torch-backend-pipeline.mlir.test PASSED in 0.6s
@torch-mlir//test/Dialect:TorchConversion/canonicalize.mlir.test         PASSED in 0.2s
@torch-mlir//test/Dialect:TorchConversion/finalizing-backend-type-conversion.mlir.test PASSED in 0.3s
@torch-mlir//test/Dialect:TorchConversion/func-backend-type-conversion.mlir.test PASSED in 0.2s
@torch-mlir//test/Dialect:TorchConversion/ops.mlir.test                  PASSED in 0.3s
@torch-mlir//test/Dialect:TorchConversion/verify-linalg-on-tensors-backend-contract.mlir.test PASSED in 0.3s
@torch-mlir//test/Dialect:TorchConversion/verify-tosa-backend-contract.mlir.test PASSED in 0.2s
@torch-mlir//test/RefBackend:insert-rng-globals.mlir.test                PASSED in 0.2s
INFO: Build completed successfully, 2[54](https://github.com/sjain-stanford/torch-mlir/actions/runs/3476816449/jobs/5812368489#step:7:55) total actions
@torch-mlir//test/RefBackend:munge-calling-conventions.mlir.test         PASSED in 0.2s

Executed [59](https://github.com/sjain-stanford/torch-mlir/actions/runs/3476816449/jobs/5812368489#step:7:60) out of 59 tests: 59 tests pass.
```

GHA workflow: https://github.com/sjain-stanford/torch-mlir/actions/runs/3476816449/jobs/5812368489
2022-11-16 11:59:33 -08:00
Sean Silva 3695ca83e6 [torch_mlir.compile] Handle the case of already-scripted models better
Closes #1582
2022-11-16 10:47:13 -08:00
Vivek Khandelwal a1d3afdba9 [MLIR][TORCH] Add E2E support for aten.randint.low op
Signed-Off By: Vivek Khandelwal<vivek@nod-labs.com>
2022-11-16 09:54:18 +05:30
AmosLewis 22a5067242 [TOSA] Add more tosa::cast type support 2022-11-16 09:53:10 +05:30
Sambhav Jain 4aa1e90b34
Fix cache bug with Bazel builds in CI (#1593)
Some time ago, bazel builds in CI were being sped up fine with caching. However, over time the cache got stale because `actions/cache@v3` apparently doesn't update caches when it "hits" unless it is configured to do so specifically. This requires using a uniqued per-commit `key` (to force it to update cache after each successful run) and a relaxed `restore-keys` which is not unique per-commit so newer commits can restore from the nearest hit.

Test GHA run 1 (no cache hit): [1h 1m 52s](https://github.com/sjain-stanford/torch-mlir/actions/runs/3474770334/usage)
Test GHA run 2 (cache hit, same commit): [5m 14s](https://github.com/sjain-stanford/torch-mlir/actions/runs/3475132135/usage)
Test GHA run 3 (cache hit, different commit): [6m 6s](https://github.com/sjain-stanford/torch-mlir/actions/runs/3475161009/usage)
2022-11-15 18:48:31 -08:00
Sambhav Jain fc4c8d4ed9
Enable torch-mlir LIT tests in Bazel (#1585)
Adds support to run `.mlir` LIT tests in bazel. 

```
bazel test @torch-mlir//test/...
```

Follow-on PR will contain these updates:
- Add tests to GHA CI workflow
- Add `.py` LIT tests to bazel
2022-11-15 14:02:19 -08:00
Sambhav Jain 4032eeca64
Add Bazel buildifier to torch-mlir (#1586)
Formats bazel BUILD and .bzl files with a standard convention. 

Invoke using
```
bazel run @torch-mlir//:buildifier
```
2022-11-15 12:34:27 -08:00
Sambhav Jain 99ec6039f6
Fix bazel CI (#1591)
I accidentally broke bazel CI by forgetting to update the GHA workflow in my [previous PR](https://github.com/llvm/torch-mlir/pull/1587). This should get it back to green, my apologies.

Qualifying CI run: https://github.com/sjain-stanford/torch-mlir/actions/runs/3472523982
2022-11-15 09:51:52 -08:00
Sambhav Jain b320f7fb77
Simplify Bazel build workflow (#1587)
Remove `run_bazel_build.sh`, simplify docker's entrypoint to start container at `utils/bazel` directory, update docs.
2022-11-15 08:34:43 -08:00
George Petterson 92f385bd9f [MLIR][TORCH] Add E2E support aten.convolution_backward op
This commit adds the decomposition for the `aten.convolution_backward`
and `aten.convolution_backward_overrideable` op.
2022-11-15 07:38:26 +05:30
Roll PyTorch Action f40cbd6a71 update PyTorch version to 1.14.0.dev20221114 2022-11-15 01:44:30 +00:00
Ashay Rane f1ef5681cc
build: pin torchvision to latest nightly (#1584)
We currently pin the `torch` package to the latest nightly version, but
since `torchvision` depends on the `torch` package, the pip resolver
then has to run through an extensive list of `torchvision` packages that
can be installed with the pinned `torch` package.  This search fails in
the RollPyTorch action, causing pip to settle on an old version of
`torchvision` that does not work with our tests.  In reality, we are
only interested in a specific version of the `torchvision` package.

To make the dependency explicit and to prevent test failures because of
incorrect package installations, this patch makes two key changes:

1. `torchvision` is now pinned to the latest nightly release in
   pytorch-requirements.txt along with the version of `torch` that is
   necessary to install the requested `torchvision` package

2. The RollPyTorch action now looks for the latest `torchvision` package
   instead of the latest `torch` package before writing the version
   numbers for pinning in pytorch-requirements.txt
2022-11-14 15:56:02 -06:00
Chi_Liu dfe7513a45
[MLIR][TORCH] Fix aten.unsqueeze op (#1578)
The range of the unsqueeze dim is: [-input.dim() - 1, input.dim() + 1), the bug forgets to add 1.
2022-11-14 09:09:15 -08:00
Gleb Kazantaev 6909eaf7fc
Update TorchMlirBackendImpl Methods (#1580)
* Fix LTC build

* Remove passing test from xfail set
2022-11-14 00:37:49 -05:00
Ashay Rane eec9a7e022
ci: make pip skip cached packages while installing dependencies (#1570)
We want each build to be reproducible regardless of prior builds and
prior package installations, but pip, by default, uses cached packages
from previous invocations of `pip install`.  As a result, the incorrect
dependencies downloaded in the RollPyTorch workflow in the main
repository cannot be reproduced in private forks of the repository.  To
resolve this problem, this patch adds a `--no-cache-dir` flag to pip, so
that it fetches and inspects each requested package independent or prior
installations.
2022-11-11 20:31:38 -06:00
Vivek Khandelwal a558034c1a [MLIR][TORCH] Fix aten.upsample_nearest2d_backward op
Signed-Off By: Vivek Khandelwal<vivek@nod-labs.com>
2022-11-12 00:05:36 +05:30
Vivek Khandelwal d571d050fd [torch_mlir.compile] Fixes issue with the https://github.com/llvm/torch-mlir/issues/1557
Signed-Off By: Vivek Khandelwal<vivek@nod-labs.com>
2022-11-11 18:05:15 +05:30
Sambhav Jain dcff5a7150
[Bazel] Update to Ubuntu-22.04 and clang-16 for Bazel build docker (#1523)
* Update Ubuntu and clang in the docker container
* Specifically build just `@torch-mlir//:torch-mlir-opt`


Triggered GHA run:
https://github.com/sjain-stanford/torch-mlir/actions/runs/3317006870/jobs/5479411204
2022-11-10 13:11:06 -08:00
Ashay Rane 6c31b06922
build: revert PyTorch update (#1571)
The PyTorch update broke the build.  I'm about to add more tests so that
it doesn't happen in the future.
2022-11-10 12:37:25 -06:00
Roll PyTorch Action 9df748d7ef update PyTorch version to 1.14.0.dev20221110 2022-11-10 17:52:06 +00:00
Sean Silva cc468d2d16 [cleanup] Be consistent about apostrophe 2022-11-10 07:42:15 -08:00
Daniel Ellis a7ac0def45
Move single-tensor-tuple-return test to mlir unit test.
Also, add multiple return test.
2022-11-10 09:23:53 -05:00
Xiafei Qiu 4f173c6e0f
update llvm tag to a2620e00. (#1567)
- also update MHLO to 57ba12a2(branch greencommit/2022-11-07-a2620e00)
- change -pass-pipeline format to make tests pass.
2022-11-10 18:39:28 +08:00
Sean Silva 64914603fa [torch_mlir.compile] Add support for multiple exported methods
For AoT deployments models often have multiple exported methods.
This patch enables something like this:

```
class TwoMethodsModule(torch.nn.Module):
    def sin(self, x):
        return torch.ops.aten.sin(x)

    def cos(self, x):
        return torch.ops.aten.cos(x)

example_args = torch_mlir.ExampleArgs()
example_args.add_method("sin", torch.ones(2, 3))
example_args.add_method("cos", torch.ones(2, 4))
print(torch_mlir.compile(TwoMethodsModule(), example_args))
```

In the
[long-term](https://github.com/llvm/torch-mlir/blob/main/docs/long_term_roadmap.md#tools-for-advanced-aot-deployments)
we will need to reconcile this with our story for stateful models and the
backend contract being purely functional. For now, this provides some basic
infra that seems harmless. Arguably, we could tighten up the backend contract
even more to only allow a single compiled function which would prohibit this or
require building out a layer above.

Fixes #1557
2022-11-10 02:10:22 -08:00
Yuanqiang Liu 2793a2bd41
fix TorchToMhlo Conversion cmake dependency (#1549) 2022-11-09 18:34:53 -06:00
Sean Silva ec4e01c321
Add Suraj to TorchToTOSA owners (#1566) 2022-11-09 14:55:13 -08:00
Jae Hoon (Antonio) Kim 2ec4b06bbb
Remove MakeView from IR Builder (#1552)
* Remove MakeView from IR Builder

* Update PyTorch requirements
2022-11-09 13:46:34 -05:00
Ashay Rane 9a73b9e6c7
build: un-pin the ninja pip package version (#1562)
Now that the ninja pip package issue has been resolved, this patch
removes the pinned version from requirements.txt so that we can go back
to using the most recent version of ninja.
2022-11-06 14:12:28 -06:00
Ashay Rane e16ccce373
ci: re-add powershell script for windows release builds (#1561)
This file was removed as part of the PR that added build caching for
Windows.
2022-11-06 12:48:38 -06:00
Roll PyTorch Action e78e9cd782 update PyTorch version to 1.14.0.dev20221105 2022-11-06 14:04:59 +00:00
Ashay Rane 27d8d47022
build: pin ninja pip version temporarily to resolve build failure (#1558)
Going from ninja v1.10.2 to v1.11.1, there is a change that breaks the
CI builds with the following error:

```
CMake Error at CMakeLists.txt:47 (project):
  Running
   '/main_checkout/torch-mlir/docker_venv/bin/ninja' '--version'
  failed with:
CMake Error: CMAKE_ASM_COMPILER not set, after EnableLanguage
```

Ostensibly, the reason for the error about the ASM compiler is because
llvm-project/llvm/CMakeLists.txt includes ASM among the list of
languages used in the LLVM project. Adding `-DCMAKE_ASM_COMPILER=clang`
does not resolve the error.

Until we figure out why the new version of ninja causes the build
failures, this patch pins the ninja to the one that worked.
2022-11-05 12:20:56 -05:00
Roll PyTorch Action 5ee20e70a1 update PyTorch version to 1.14.0.dev20221104 2022-11-04 22:01:57 +00:00
Ashay Rane d99b2ddb1b
importer: fix usage after PyTorch update (#1555)
Unless requested otherwise, PyTorch no longer installs most of the
header files under the caffe2 directory (see
https://github.com/pytorch/pytorch/pull/87986).  This breaks our
importer code since we need to use the `MakeGuard()` function to execute
statements in the event of exceptions.

To fix this issue, this patch implements a rudimentary version of
PyTorch's ScopeGuard, where once the class variable goes out of scope,
it executes a predefined method.
2022-11-04 15:02:23 -05:00
Vivek Khandelwal fedf8c0640 [MLIR][TORCH] Add E2E support for aten.upsample_nearest2d_backward.vec op
Signed-Off By: Vivek Khandelwal<vivek@nod-labs.com>
2022-11-04 22:10:07 +05:30
Ashay Rane db5a496eb4
build: enable update scripts to work with out-of-tree builds (#1553)
Before this patch, the update_shape_lib.sh and update_torch_ods.sh
scripts only worked on in-tree builds, which implied that the
RollPyTorch action was forced to run the longer-running in-tree build.
As a result of this patch, we should be able to run through the basic
checks in the RollPyTorch action faster, while running the full suite of
tests off the critical path.

The key change in this patch is that the update scripts now look for the
directory that is most recently modified between in-tree or out-of-tree
build directories.  The change also correctly handles the case when only
one of the two directories exists.
2022-11-04 08:13:02 -05:00
Sean Silva de4bcbfe9b [docs] Centralize all images in docs/images/ 2022-11-04 03:12:17 -07:00
Ashay Rane 2846776897
ci: enable ccache on Windows (#1548)
This patch makes a few small, but key, changes to enable ccache on
Windows.  First, it replaces the hendrikmuhs/ccache-action action with
command line invocations to the ccache binary, since the action has two
bugs, one of which causes CI to refer to different ccache artifacts
before versus after the build on Windows whereas the other bug can
sometimes cause the action to incorrectly infer that the cache is empty.

Second, this patch slightly alters the cache key, so that our old cache
artifacts, which have grown too big, are eventually discarded in favor
of the new, smaller cache artifacts.  Along the way, this patch also
keeps the RollPyTorch's cache artifact separate from the regular build's
cache artifact so as to keep these artifacts small, and also because the
RollPyTorch action is off the critical path for most contributors.

Finally, this patch makes small changes to the CMake file so that on
Windows, the ccache binary is added as a prefix, as recommended on the
[ccache Wiki](https://github.com/ccache/ccache/wiki/MS-Visual-Studio).
2022-11-03 12:17:22 -05:00
Ashay Rane f847642495
CI script improvements (#1547)
* ci: update versions of external actions

Node.js 12 actions are deprecated and will eventually go away, so this
patch bumps the old actions to their latest versions that use Node.js
16.

* ci: replace deprecated action with bash commands

The llvm/actions/install-ninja action uses Node.js 12, which is
deprecated.  Since that action is not updated to work with Node.js 16,
this patch replaces that action with equivalent bash commands to install
Ninja.

* ci: use smaller ccache artifacts to reduce evictions

Over time, our ccache sizes have grown quite large (some as large as
1.3 GB), which results in us routinely exceeding GitHub's limits, thus
triggering frequent cache evictions.  As a result, cache downloads and
uploads take unnecessary long, in addition to fewer cache entries being
available.

Based on experiments on a clean cache state, it appears that we need
less than 300 MB of (compressed) ccache artifacts for each build type.
Anything larger than that will accrue changes from the past that aren't
needed.

To alleviate the cache burden, this patch sets the maximum ccache size
to be 300 MB.  This change should not affect the success or failure of
our builds.  I will monitor the build times to check whether this change
causes any performance degradation.

* ci: use consistent platform identifiers

Prior to this patch, some of our builds ran on `ubuntu-latest`, while
some others ran on `ubuntu-20.04` and others ran on `ubuntu-22.04`, with
similar situations for macOS and windows.  This patch instead sets all
Linux builds to run on `ubuntu-latest`, all macOS builds to run on
`macos-latest`, and all Windows builds to run on `windows-latest`, to
make debugging future CI failures a little easier.
2022-11-02 21:37:01 -05:00
Sean Silva 2162253401 [docs] Add long-term roadmap
Add a roadmap covering expected project evolution over the next 1-2
years.
2022-11-02 03:25:52 -07:00