Summary: WrapperModule seems a good idea but may introduce some surprising behavior to users, for example, it never registers enclosed modules as submodules and therefore it's unclear that's the state dict for the exported program should look like, because some people may argue to include every state in state dict but others want to keep them as constants.
Test Plan: CI
Reviewed By: tugsbayasgalan
Differential Revision: D54326331
Pull Request resolved: https://github.com/pytorch/pytorch/pull/121042
Approved by: https://github.com/angelayi
Summary: Adding an experimental API to FX graph module to place "hooks" every time when we are changing or replacing nodes in a graph, so that we can properly update the new name in graph signature and potentially other places.
Test Plan:
buck test mode/opt -c fbcode.enable_gpu_sections=true caffe2/test/distributed/_tensor/experimental:tp_transform
buck test mode/opt caffe2/test:test_export -- -r test_replace_hook
Differential Revision: D52896531
Pull Request resolved: https://github.com/pytorch/pytorch/pull/117825
Approved by: https://github.com/avikchaudhuri
Previously we were generating a graph to add runtime assertions on inputs and then running that graph to check input constraints. This PR checks input constraints directly.
Differential Revision: D50289970
Pull Request resolved: https://github.com/pytorch/pytorch/pull/111262
Approved by: https://github.com/zhxchen17
Summary:
Previously we design the GraphSignature format as a bunch of inputs and outputs node names. After a discussion in the design meeting we decide to change the format to make signature more self-contained. Now the signature format look like the following:
```
[
InputSpec(
kind=InputKind.USER_INPUT,
arg=TensorArgument(name="arg0_1"),
target=None,
),
...
]
```
Test Plan: CI
Reviewed By: angelayi
Differential Revision: D49876258
Pull Request resolved: https://github.com/pytorch/pytorch/pull/111017
Approved by: https://github.com/angelayi
This pr expose torch._higher_order_ops.cond as torch.cond.
1. Need to add #noqa: F811 to the _check calls in torch/__init__.py to address some confusing linter error "Redefinition of unused 'cond'" but only one cond is imported and for these lines that have this error, they don't define the cond but just use it as an argument.
2. Also add cond to the list that allows it to be traced through so as dynamo could trigger the CondHigherOrder logic instead of creating a TorchVariable.
Pull Request resolved: https://github.com/pytorch/pytorch/pull/110293
Approved by: https://github.com/zou3519
This pr expose torch._higher_order_ops.cond as torch.cond.
1. Need to add #noqa: F811 to the _check calls in torch/__init__.py to address some confusing linter error "Redefinition of unused 'cond'" but only one cond is imported and for these lines that have this error, they don't define the cond but just use it as an argument.
2. Also add cond to the list that allows it to be traced through so as dynamo could trigger the CondHigherOrder logic instead of creating a TorchVariable.
Pull Request resolved: https://github.com/pytorch/pytorch/pull/110293
Approved by: https://github.com/zou3519
Add non-package python modules to the public API checks.
The original change is to remove the `ispkg` check in this line
https://github.com/pytorch/pytorch/blob/main/docs/source/conf.py#L518
Everything else is to add the appropriate modules to the rst files, make sure every module we provide can be imported (fixed by either making optional dependencies optional or just deleting files that have been un-importable for 3 years), make API that are both modules and functions (like torch.autograd.gradcheck) properly rendered on the docs website without confusion and add every non-documented API to the allow list (~3k of them).
Next steps will be to try and fix these missing docs
Pull Request resolved: https://github.com/pytorch/pytorch/pull/110568
Approved by: https://github.com/zou3519
Recently we updated the `export` API to take an experimental `dynamic_shapes` argument that was meant to subsume the existing `constraints` argument.
This PR deprecates `constraints` (with a warning on its use, but without actually removing it). Simultaneously it replaces all uses of `constraints` in docs, examples, and tests with corresponding uses of `dynamic_shapes` (preserving behavior). This exercise fortunately revealed some minor bugs in the implementation which have also been fixed in this PR.
Some uses of `constraints` still remain, e.g., when `torch._dynamo.export` is called directly. (Meta-internal uses will be updated in a separate diff.)
Differential Revision: D49676049
Pull Request resolved: https://github.com/pytorch/pytorch/pull/110143
Approved by: https://github.com/tugsbayasgalan
Our experience using `constraints` / `dynamic_dim` with the existing export API has found it to be (subjectively) clunky and (objectively) verbose in common cases.
This PR implements a new design for the export API that replaces the use of `constraints` / `dynamic_dim` with a new way of specifying dynamic shapes, involving the following concepts:
* a constructor `Dim` for first-class named dynamic dimensions with ranges (similar to `functorch.dim`, and analogous to internal symbolic sizes)
* a mechanism that uses the above in `export` calls to associate inputs to their dynamic shape specifications (`dynamic_shapes`)
Design doc: https://docs.google.com/presentation/d/168U7XK72C_WSsZpGESP6Cho9udh193fi0gfjxCNcJ4E/edit#slide=id.p (Meta-only). Note that we only implement Option 1 in that doc. An older version of this PR also implemented Option 3, which is an alternative way of specifying dynamic shapes using tensor type annotations on the exported callable; but we have moved that to future work for now.
See docs for these new features in `torch.export`. The existing `torch.export.export` is modified to use the new API, `torch._export.export__RC__`, whenever `constraints=None`. We have not deprecated the existing API yet, but will do in a follow-up.
Constraint violation errors arising through use of the new API will now contain suggested fixes using the new API. No longer do we need to report all specializations for static dimensions and suggest all constraints over dynamic dimensions to fix such errors. Instead, due to the redesign, the suggested fixes are much more concise, only involving modifying the definitions of relevant `Dim`s.
Differential Revision: [D48919204](https://our.internmc.facebook.com/intern/diff/D48919204/)
Pull Request resolved: https://github.com/pytorch/pytorch/pull/108448
Approved by: https://github.com/suo, https://github.com/gmagogsfm
Summary:
This diff demonstrates a simplified E2E workflow for PT2 Inference stack:
1. Model author with `torch.export()`
2. Model processing with `aot_inductor.compile()`
3. Model served with a new Inference Runtime API, named `ModelRunner`
`torch.export()` and `aot_inductor.compile()` produces a zip file using `PyTorchStreamWriter`.
Runtime reads the zip file with `PyTorchStreamReader`.
The zip file contains
{F1080328179}
More discussion on packaging can be found in https://docs.google.com/document/d/1C-4DP5yu7ZhX1aB1p9JcVZ5TultDKObM10AqEtmZ-nU/edit?usp=sharing
Runtime can now switch between two Execution modes:
1. Graph Interpreter mode, implemented based on Sigmoid's Executor
2. AOTInductor mode, implemented based on FBAOTInductorModel
Test Plan:
buck2 run mode/dev-nosan mode/inplace -c fbcode.enable_gpu_sections=True //sigmoid/inference/test:e2e_test
Export and Lower with AOTInductor
buck2 run mode/dev-sand mode/inplace -c fbcode.enable_gpu_sections=True sigmoid/inference:export_package
Run with GraphInterpreter and AOTInducotr
buck2 run mode/dev-nosan //sigmoid/inference:main
Reviewed By: suo
Differential Revision: D47781098
Pull Request resolved: https://github.com/pytorch/pytorch/pull/108482
Approved by: https://github.com/zhxchen17