Commit Graph

62 Commits

Author SHA1 Message Date
PyTorch MergeBot
d5e6f42094 Revert "Use std::string_view in torchgen (#157050)"
This reverts commit 064288cbab.

Reverted https://github.com/pytorch/pytorch/pull/157050 on behalf of https://github.com/jeanschmidt due to Seems to have broken internal builds, more details on D77449943. @ezyang may I count on your help to get those changes merged? ([comment](https://github.com/pytorch/pytorch/pull/157050#issuecomment-3020222668))
2025-06-30 18:08:54 +00:00
cyy
064288cbab Use std::string_view in torchgen (#157050)
Let the generated code use std::sv

Pull Request resolved: https://github.com/pytorch/pytorch/pull/157050
Approved by: https://github.com/ezyang
2025-06-27 06:36:10 +00:00
Xuehai Pan
c73a92fbf5 [BE][CI] bump ruff to 0.9.2: multiline assert statements (#144546)
Reference: https://docs.astral.sh/ruff/formatter/black/#assert-statements

> Unlike Black, Ruff prefers breaking the message over breaking the assertion, similar to how both Ruff and Black prefer breaking the assignment value over breaking the assignment target:
>
> ```python
> # Input
> assert (
>     len(policy_types) >= priority + num_duplicates
> ), f"This tests needs at least {priority+num_duplicates} many types."
>
>
> # Black
> assert (
>     len(policy_types) >= priority + num_duplicates
> ), f"This tests needs at least {priority+num_duplicates} many types."
>
> # Ruff
> assert len(policy_types) >= priority + num_duplicates, (
>     f"This tests needs at least {priority + num_duplicates} many types."
> )
> ```

Pull Request resolved: https://github.com/pytorch/pytorch/pull/144546
Approved by: https://github.com/malfet
2025-02-27 20:46:16 +00:00
Xuehai Pan
754fb834db [BE][CI] bump ruff to 0.9.0: string quote styles (#144569)
Reference: https://docs.astral.sh/ruff/formatter/#f-string-formatting

- Change the outer quotes to double quotes for nested f-strings

```diff
- f'{", ".join(args)}'
+ f"{', '.join(args)}"
```

- Change the inner quotes to double quotes for triple f-strings

```diff
  string = """
-     {', '.join(args)}
+     {", ".join(args)}
  """
```

- Join implicitly concatenated strings

```diff
- string = "short string " "short string " f"{var}"
+ string = f"short string short string {var}"
```

Pull Request resolved: https://github.com/pytorch/pytorch/pull/144569
Approved by: https://github.com/Skylion007
ghstack dependencies: #146509
2025-02-24 19:56:09 +00:00
Xuehai Pan
9120992c72 [BE][Easy] enable postponed annotations in torchgen (#129376)
Pull Request resolved: https://github.com/pytorch/pytorch/pull/129376
Approved by: https://github.com/ezyang
ghstack dependencies: #129375
2024-06-29 09:23:39 +00:00
PyTorch MergeBot
6063bb9d45 Revert "[BE][Easy] enable postponed annotations in torchgen (#129376)"
This reverts commit 494057d6d4.

Reverted https://github.com/pytorch/pytorch/pull/129376 on behalf of https://github.com/huydhn due to Sorry for reverting your change but I need to revert to cleanly revert https://github.com/pytorch/pytorch/pull/129374, please do a rebase and reland this ([comment](https://github.com/pytorch/pytorch/pull/129375#issuecomment-2197800541))
2024-06-29 00:44:25 +00:00
Xuehai Pan
494057d6d4 [BE][Easy] enable postponed annotations in torchgen (#129376)
Pull Request resolved: https://github.com/pytorch/pytorch/pull/129376
Approved by: https://github.com/ezyang
ghstack dependencies: #129375
2024-06-28 15:37:57 +00:00
cyy
fb90b4d4b2 [TorchGen] Use std::optional in generated code (#121454)
This PR changes TorchGen to generate std::optional.

Pull Request resolved: https://github.com/pytorch/pytorch/pull/121454
Approved by: https://github.com/ezyang
2024-03-29 14:11:09 +00:00
PyTorch MergeBot
db506762d1 Revert "Change ATEN generator argument type to const std::optional<Generator>& (#120076)"
This reverts commit a52b4e2257.

Reverted https://github.com/pytorch/pytorch/pull/120076 on behalf of https://github.com/atalman due to breaking internal builds ([comment](https://github.com/pytorch/pytorch/pull/120076#issuecomment-2018680656))
2024-03-25 18:52:05 +00:00
cyy
a01d35c7f6 [TorchGen] Remove unused variables (#122576)
This PR removes some unused Python variables from TorchGen scripts.
Pull Request resolved: https://github.com/pytorch/pytorch/pull/122576
Approved by: https://github.com/Skylion007
2024-03-25 03:31:41 +00:00
cyy
a52b4e2257 Change ATEN generator argument type to const std::optional<Generator>& (#120076)
This PR proposes to use std::optional<Generator>& for underlying functions to avoid unnecessary copy and move operations. The torchgen code was changed to generate the new type.

Pull Request resolved: https://github.com/pytorch/pytorch/pull/120076
Approved by: https://github.com/malfet
2024-03-24 02:12:08 +00:00
PyTorch MergeBot
02fee6caec Revert "Change ATEN generator argument type to const std::optional<Generator>& (#120076)"
This reverts commit ecbe82b9ce.

Reverted https://github.com/pytorch/pytorch/pull/120076 on behalf of https://github.com/jeanschmidt due to Reverting in order to check if this will fix XLA trunk jobs ([comment](https://github.com/pytorch/pytorch/pull/120076#issuecomment-2015272644))
2024-03-22 14:53:45 +00:00
cyy
ecbe82b9ce Change ATEN generator argument type to const std::optional<Generator>& (#120076)
This PR proposes to use std::optional<Generator>& for underlying functions to avoid unnecessary copy and move operations. The torchgen code was changed to generate the new type.

Pull Request resolved: https://github.com/pytorch/pytorch/pull/120076
Approved by: https://github.com/malfet
2024-03-22 03:49:31 +00:00
PyTorch MergeBot
c0996866f4 Revert "Change ATEN generator argument type to const std::optional<Generator>& (#120076)"
This reverts commit 4305c64fea.

Reverted https://github.com/pytorch/pytorch/pull/120076 on behalf of https://github.com/izaitsevfb due to breaking internal builds(take 3) ([comment](https://github.com/pytorch/pytorch/pull/120076#issuecomment-1986338164))
2024-03-08 20:01:03 +00:00
cyy
4305c64fea Change ATEN generator argument type to const std::optional<Generator>& (#120076)
This PR proposes to use std::optional<Generator>& for underlying functions to avoid unnecessary copy and move operations. The torchgen code was changed to generate the new type.

Pull Request resolved: https://github.com/pytorch/pytorch/pull/120076
Approved by: https://github.com/malfet
2024-03-07 09:52:21 +00:00
Antonio Kim
7fc292930c Add support for torch.Generator type in TorchScript (#110413)
- Add support for `torch.Generator` type in TorchScript
- Add `generator` args to all `torch.nn.init` functions that call `uniform_` or `normal_`
- Add support for `torch.Generator` in LTC's TorchScript backend (CC: @wconstab)

CC: @eellison @davidberard98 @GlebKazantaev @behzad-a
Pull Request resolved: https://github.com/pytorch/pytorch/pull/110413
Approved by: https://github.com/wconstab, https://github.com/albanD, https://github.com/glebk-cerebras, https://github.com/davidberard98
2023-11-21 23:07:21 +00:00
PyTorch MergeBot
252e68a83b Revert "Add support for torch.Generator type in TorchScript (#110413)"
This reverts commit 54493fe8c4.

Reverted https://github.com/pytorch/pytorch/pull/110413 on behalf of https://github.com/huydhn due to Sorry for reverting your change but it is, unfortunately, still breaking internal builds ([comment](https://github.com/pytorch/pytorch/pull/110413#issuecomment-1811625557))
2023-11-15 00:51:23 +00:00
Antonio Kim
54493fe8c4 Add support for torch.Generator type in TorchScript (#110413)
- Add support for `torch.Generator` type in TorchScript
- Add `generator` args to all `torch.nn.init` functions that call `uniform_` or `normal_`
- Add support for `torch.Generator` in LTC's TorchScript backend (CC: @wconstab)

CC: @eellison @davidberard98 @GlebKazantaev @behzad-a
Pull Request resolved: https://github.com/pytorch/pytorch/pull/110413
Approved by: https://github.com/wconstab, https://github.com/albanD, https://github.com/glebk-cerebras, https://github.com/davidberard98
2023-11-13 23:18:14 +00:00
PyTorch MergeBot
9a28a7b498 Revert "Add support for torch.Generator type in TorchScript (#110413)"
This reverts commit 27e31ab6e8.

Reverted https://github.com/pytorch/pytorch/pull/110413 on behalf of https://github.com/PaliC due to breaking internal builds ([comment](https://github.com/pytorch/pytorch/pull/110413#issuecomment-1799003164))
2023-11-07 15:53:32 +00:00
Antonio Kim
27e31ab6e8 Add support for torch.Generator type in TorchScript (#110413)
- Add support for `torch.Generator` type in TorchScript
- Add `generator` args to all `torch.nn.init` functions that call `uniform_` or `normal_`
- Add support for `torch.Generator` in LTC's TorchScript backend (CC: @wconstab)

CC: @eellison @davidberard98 @GlebKazantaev @behzad-a
Pull Request resolved: https://github.com/pytorch/pytorch/pull/110413
Approved by: https://github.com/wconstab, https://github.com/albanD, https://github.com/glebk-cerebras, https://github.com/davidberard98
2023-11-06 21:27:02 +00:00
Kazuaki Ishizaki
ac48c11ab7 Fix typo under torchgen directory (#111154)
This PR fixes typo in comments and messages in files under `torchgen` directory.
Pull Request resolved: https://github.com/pytorch/pytorch/pull/111154
Approved by: https://github.com/rajveer43, https://github.com/Skylion007
2023-10-13 16:43:46 +00:00
Aaron Gokaslan
9c3fbe7475 [BE] Enable flake8-simplify checks (#97984)
Enable some sensible flake8-simplify rules. Mainly wanted to enable the SIM101, and `yield from` SIM103 checks. @kit1980 since you wanted to be tagged on this CI check.

Enabling this check also helped flag one logical bug so it's definitely beneficial (also fixed in this PR).

Pull Request resolved: https://github.com/pytorch/pytorch/pull/97984
Approved by: https://github.com/ezyang
2023-03-31 03:40:21 +00:00
Wonjoo Lee
a171b0636a Add use_lazy_shape flag to GenLazyIr class (#88444)
Add use_lazy_shape flag to GenLazyIr class to allow XLA to use its custom shape class. The default value is kept to use lazy shape, so this PR does not introduce any new behaviors.

PyTorch/XLA companion PR: https://github.com/pytorch/xla/pull/4111
Pull Request resolved: https://github.com/pytorch/pytorch/pull/88444
Approved by: https://github.com/alanwaketan, https://github.com/wconstab
2022-11-04 08:23:56 +00:00
Edward Z. Yang
07800c9c81 Miscellaneous fixes from symbolic-shapes branch (#86042)
- Make toIValue accept SymIntNode and SymFloatNode where number (aka Scalar) is
  expected
- Binding for symintlistOptional in python arg parser
- Teach translate to convert from IntArrayRef to ArrayRef<int64_t>
- Don't query _symint function for meta info in LTC unless LTC is
  code generating a symint function

Signed-off-by: Edward Z. Yang <ezyang@fb.com>
Pull Request resolved: https://github.com/pytorch/pytorch/pull/86042
Approved by: https://github.com/Chillee
2022-10-01 13:57:58 +00:00
Edward Z. Yang
3eb27229dd as_strided symbolic support (#85264)
Signed-off-by: Edward Z. Yang <ezyang@fb.com>

Differential Revision: [D39662820](https://our.internmc.facebook.com/intern/diff/D39662820)
Pull Request resolved: https://github.com/pytorch/pytorch/pull/85264
Approved by: https://github.com/wconstab
2022-09-21 13:34:55 +00:00
Edward Z. Yang
caf034a9a2 Fix bugs in how LTC decides whether or not to symint op or not (#84832)
This fixes two problems:

- First, shape signature didn't respect the symint property (so it
  would always mark the operator as symint).  This was relatively
  easy to fix.

- Second, the call to fallback goes directly through at::_ops, so
  it must always be SymInt-aware, even if SymInt is disabled externally.
  This was a bit more difficult, because the current LTC codegen
  is poorly factored.  First, I needed to make it so individual
  arguments knew if they were going to be SymInt in LTC or not; second,
  I need to plumb enough information about the enclosing bindings so
  that I could use translate to do the expressions (previously, it was
  just assumed the signatures matched.)

The LTC codegen would do well to have a complete rewrite, but this will
have to do for now, I suppose.

Signed-off-by: Edward Z. Yang <ezyang@fb.com>
Pull Request resolved: https://github.com/pytorch/pytorch/pull/84832
Approved by: https://github.com/wconstab
2022-09-12 04:49:04 +00:00
Nikolay Korovaiko
f725009a48 as_strided supports SymInt; codegen supports optional SymInt (#84393)
Signed-off-by: Edward Z. Yang <ezyang@fb.com>
Pull Request resolved: https://github.com/pytorch/pytorch/pull/84393
Approved by: https://github.com/ezyang
2022-09-06 16:39:24 +00:00
Edward Z. Yang
5e2c23377a LTC codegen appears to be hardcoded to only support tensors (#84355)
Assert accordingly

Signed-off-by: Edward Z. Yang <ezyang@fb.com>
Pull Request resolved: https://github.com/pytorch/pytorch/pull/84355
Approved by: https://github.com/wconstab
2022-09-01 16:29:39 +00:00
Edward Z. Yang
ad44670fa1 Back out "Revert D38984222: Don't introduce new overload for SymInt (#83628)" (#84173)
Also Back out "Revert D39075159: [acc_tensor] Use SymIntArrayRef for overloaded empty.memory_format's signature"

Original commit changeset: dab4a9dba4fa
Original commit changeset: dcaf16c037a9

Original Phabricator Diff: D38984222
Original Phabricator Diff: D39075159

Also update Metal registrations for C++ registration changes.

Also update NNPI registration to account for tightened schema checking

Differential Revision: [D39084762](https://our.internmc.facebook.com/intern/diff/D39084762/)

**NOTE FOR REVIEWERS**: This PR has internal Facebook specific changes or comments, please review them on [Phabricator](https://our.internmc.facebook.com/intern/diff/D39084762/)!
Pull Request resolved: https://github.com/pytorch/pytorch/pull/84173
Approved by: https://github.com/Krovatkin
2022-08-29 18:01:07 +00:00
PyTorch MergeBot
c7edcd6968 Revert "Don't introduce new overload for SymInt (#83628)"
This reverts commit 9790d90e4b.

Reverted https://github.com/pytorch/pytorch/pull/83628 on behalf of https://github.com/malfet due to Breaks internal builds, see D39076487
2022-08-27 01:23:17 +00:00
Edward Z. Yang
9790d90e4b Don't introduce new overload for SymInt (#83628)
Previously, we introduced new SymInt overloads for every function we wanted.  This led to a lot of boilerplate, and also a lot of confusion about how the overloads needed to be implemented.

This PR takes a simpler but more risky approach: just take the original function and changes its ints to SymInts.

This is BC-breaking in the following ways:

* The C++ API for registering implementations for aten operators will change from int64_t to SymInt whenever you make this change. Code generated registrations in PyTorch do not change as codegen handles the translation automatically, but manual registrations will need to follow the change.  Typically, if you now accept a SymInt where you previously only took int64_t, you have to convert it back manually.  This will definitely break XLA, see companion PR https://github.com/pytorch/xla/pull/3914 Note that not all dispatch keys get the automatic translation; all the composite keys and Meta keys are modified to take SymInt directly (because they should handle them directly), and so there are adjustments for this.

This is not BC-breaking in the following ways:

* The user facing C++ API remains compatible.  Even if a function changes from int to SymInt, the default C++ binding still takes only ints.  (e.g., at::empty(IntArrayRef, ...).  To call with SymInts, you must call at::empty_symint instead. This involved adding two more signatures to CppSignatureGroup; in many cases I refactored code to iterate over all signatures in the group instead of hard-coding the two that previously existed.
* This is TorchScript compatible; internally we treat SymInts as ints so there is no change to what happens at runtime in TorchScript. In particular, it's OK to reference an empty schema by its old type (using int types), as long as you're not doing string equality (which you shouldn't be), these parse to the same underyling type.

Structure of the PR:

* The general strategy of this PR is that, even when you write `SymInt` inside `native_functions.yaml`, sometimes, we will treat it *as if* it were an `int`. This idea pervades the codegen changes, where we have a translation from SymInt to c10::SymInt or int64_t, and this is controlled by a symint kwarg which I added and then audited all call sites to decide which I wanted. Here are some of the major places where we pick one or the other:
  * The C++ FunctionSchema representation represents `SymInt` as `int`. There are a few places we do need to know that we actually have a SymInt and we consult `real_type()` to get the real type in this case. In particular:
    * When we do schema validation of C++ operator registration, we must compare against true schema (as the C++ API will provide `c10::SymInt`, and this will only be accepted if the schema is `SymInt`. This is handled with cloneWithRealTypes before we check for schema differences.
    * In `toIValue` argument parsing, we parse against the true schema value. For backwards compatibility reasons, I do still accept ints in many places where Layout/SymInt/etc were expected. (Well, accepting int where SymInt is expected is not BC, it's just the right logic!)
  * In particular, because SymInt never shows up as type() in FunctionSchema, this means that we no longer need a dedicated Tag::SymInt. This is good, because SymInts never show up in mobile anyway.
* Changes to functorch/aten are mostly about tracking changes to the C++ API registration convention. Additionally, since SymInt overloads no longer exist, registrations for SymInt implementations are deleted. In many cases, the old implementations did not properly support SymInts; I did not add any new functionality with this PR, but I did try to annotate with TODOs where this is work to do. Finally, because the signature of `native::` API changed from int to SymInt, I need to find alternative APIs for people who were directly calling these functions to call. Typically, I insert a new dispatch call when perf doesn't matter, or use `at::compositeexplicitautograd` namespace to handle other caes.
* The change to `make_boxed_from_unboxed_functor.h` is so that we accept a plain IntList IValue anywhere a SymIntList is expected; these are read-only arguments so covariant typing is OK.
* I change how unboxing logic works slightly. Previously, we interpret the C++ type for Layout/etc directly as IntType JIT type, which works well because the incoming IValue is tagged as an integer. Now, we interpret the C++ type for Layout as its true type, e.g., LayoutType (change to `jit_type.h`), but then we accept an int IValue for it anyway. This makes it symmetric with SymInt, where we interpret the C++ type as SymIntType, and then accept SymInt and int IValues for it.
* I renamed the `empty.names` overload to `empty_names` to make it less confusing (I kept mixing it up with the real empty overload)
* I deleted the `empty.SymInt` overload, which ended up killing a pile of functions. (This was originally a separate PR but the profiler expect test was giving me grief so I folded it in.)
* I deleted the LazyDynamicOpsTest tests. These were failing after these changes, and I couldn't figure out why they used to be passing: they make use of `narrow_copy` which didn't actually support SymInts; they were immediately converted to ints.
* I bashed LTC into working. The patches made here are not the end of the story. The big problem is that SymInt translates into Value, but what if you have a list of SymInt? This cannot be conveniently represented in the IR today, since variadic Values are not supported. To work around this, I translate SymInt[] into plain int[] (this is fine for tests because LTC dynamic shapes never actually worked); but this will need to be fixed for proper LTC SymInt support. The LTC codegen also looked somewhat questionable; I added comments based on my code reading.

Signed-off-by: Edward Z. Yang <ezyang@fb.com>
Pull Request resolved: https://github.com/pytorch/pytorch/pull/83628
Approved by: https://github.com/albanD, https://github.com/bdhirsh
2022-08-26 01:35:40 +00:00
PyTorch MergeBot
a7edf71360 Revert "Don't introduce new overload for SymInt (#83628)"
This reverts commit 8fae7027b3.

Reverted https://github.com/pytorch/pytorch/pull/83628 on behalf of https://github.com/malfet due to breaking internal builds, see https://www.internalfb.com/diff/D38984222
2022-08-25 00:49:40 +00:00
Henry Tu
4a18d0a972 Fix LTC build warnings (#83955)
Addresses `Wc++98-compat-extra-semi` warning from https://github.com/llvm/torch-mlir/issues/1264 by removing extraneous semicolon after autogen LTC native function definitions.

```
/home/runner/work/torch-mlir/torch-mlir/build/tools/torch-mlir/python/torch_mlir/csrc/base_lazy_backend/generated/LazyNativeFunctions.cpp:4241:6: warning: extra ';' outside of a function is incompatible with C++98 [-Wc++98-compat-extra-semi]
    };
     ^
```

cc: @wconstab @desertfire @ke1337 @antoniojkim
Pull Request resolved: https://github.com/pytorch/pytorch/pull/83955
Approved by: https://github.com/wconstab
2022-08-24 14:33:52 +00:00
Edward Z. Yang
8fae7027b3 Don't introduce new overload for SymInt (#83628)
Previously, we introduced new SymInt overloads for every function we wanted.  This led to a lot of boilerplate, and also a lot of confusion about how the overloads needed to be implemented.

This PR takes a simpler but more risky approach: just take the original function and changes its ints to SymInts.

This is BC-breaking in the following ways:

* The C++ API for registering implementations for aten operators will change from int64_t to SymInt whenever you make this change. Code generated registrations in PyTorch do not change as codegen handles the translation automatically, but manual registrations will need to follow the change.  Typically, if you now accept a SymInt where you previously only took int64_t, you have to convert it back manually.  This will definitely break XLA, see companion PR https://github.com/pytorch/xla/pull/3914 Note that not all dispatch keys get the automatic translation; all the composite keys and Meta keys are modified to take SymInt directly (because they should handle them directly), and so there are adjustments for this.

This is not BC-breaking in the following ways:

* The user facing C++ API remains compatible.  Even if a function changes from int to SymInt, the default C++ binding still takes only ints.  (e.g., at::empty(IntArrayRef, ...).  To call with SymInts, you must call at::empty_symint instead. This involved adding two more signatures to CppSignatureGroup; in many cases I refactored code to iterate over all signatures in the group instead of hard-coding the two that previously existed.
* This is TorchScript compatible; internally we treat SymInts as ints so there is no change to what happens at runtime in TorchScript. In particular, it's OK to reference an empty schema by its old type (using int types), as long as you're not doing string equality (which you shouldn't be), these parse to the same underyling type.

Structure of the PR:

* The general strategy of this PR is that, even when you write `SymInt` inside `native_functions.yaml`, sometimes, we will treat it *as if* it were an `int`. This idea pervades the codegen changes, where we have a translation from SymInt to c10::SymInt or int64_t, and this is controlled by a symint kwarg which I added and then audited all call sites to decide which I wanted. Here are some of the major places where we pick one or the other:
  * The C++ FunctionSchema representation represents `SymInt` as `int`. There are a few places we do need to know that we actually have a SymInt and we consult `real_type()` to get the real type in this case. In particular:
    * When we do schema validation of C++ operator registration, we must compare against true schema (as the C++ API will provide `c10::SymInt`, and this will only be accepted if the schema is `SymInt`. This is handled with cloneWithRealTypes before we check for schema differences.
    * In `toIValue` argument parsing, we parse against the true schema value. For backwards compatibility reasons, I do still accept ints in many places where Layout/SymInt/etc were expected. (Well, accepting int where SymInt is expected is not BC, it's just the right logic!)
  * In particular, because SymInt never shows up as type() in FunctionSchema, this means that we no longer need a dedicated Tag::SymInt. This is good, because SymInts never show up in mobile anyway.
* Changes to functorch/aten are mostly about tracking changes to the C++ API registration convention. Additionally, since SymInt overloads no longer exist, registrations for SymInt implementations are deleted. In many cases, the old implementations did not properly support SymInts; I did not add any new functionality with this PR, but I did try to annotate with TODOs where this is work to do. Finally, because the signature of `native::` API changed from int to SymInt, I need to find alternative APIs for people who were directly calling these functions to call. Typically, I insert a new dispatch call when perf doesn't matter, or use `at::compositeexplicitautograd` namespace to handle other caes.
* The change to `make_boxed_from_unboxed_functor.h` is so that we accept a plain IntList IValue anywhere a SymIntList is expected; these are read-only arguments so covariant typing is OK.
* I change how unboxing logic works slightly. Previously, we interpret the C++ type for Layout/etc directly as IntType JIT type, which works well because the incoming IValue is tagged as an integer. Now, we interpret the C++ type for Layout as its true type, e.g., LayoutType (change to `jit_type.h`), but then we accept an int IValue for it anyway. This makes it symmetric with SymInt, where we interpret the C++ type as SymIntType, and then accept SymInt and int IValues for it.
* I renamed the `empty.names` overload to `empty_names` to make it less confusing (I kept mixing it up with the real empty overload)
* I deleted the `empty.SymInt` overload, which ended up killing a pile of functions. (This was originally a separate PR but the profiler expect test was giving me grief so I folded it in.)
* I deleted the LazyDynamicOpsTest tests. These were failing after these changes, and I couldn't figure out why they used to be passing: they make use of `narrow_copy` which didn't actually support SymInts; they were immediately converted to ints.
* I bashed LTC into working. The patches made here are not the end of the story. The big problem is that SymInt translates into Value, but what if you have a list of SymInt? This cannot be conveniently represented in the IR today, since variadic Values are not supported. To work around this, I translate SymInt[] into plain int[] (this is fine for tests because LTC dynamic shapes never actually worked); but this will need to be fixed for proper LTC SymInt support. The LTC codegen also looked somewhat questionable; I added comments based on my code reading.

Signed-off-by: Edward Z. Yang <ezyang@fb.com>
Pull Request resolved: https://github.com/pytorch/pytorch/pull/83628
Approved by: https://github.com/albanD, https://github.com/bdhirsh
2022-08-23 22:04:07 +00:00
Bin Bao
7b39406526 [LTC] Pass a BackendDevice parameter into GetIrValueForScalarFromCodegen (#82970)
Summary: Currently GetIrValueForScalarFromCodegen uses CPU as the
default backend device for scalars, but we should make it a
backend-dependent decision.
Pull Request resolved: https://github.com/pytorch/pytorch/pull/82970
Approved by: https://github.com/Krovatkin, https://github.com/JackCaoG
2022-08-10 03:59:25 +00:00
Edward Z. Yang
50e8abbcad Change SymIntNode into an intrusive pointer (#82548)
This will make the pointer type a single word, which is important
for packing it into an int64_t

This time, this diff doesn't segfault when you build with DEBUG mode; more details at https://github.com/pybind/pybind11/issues/4099

Signed-off-by: Edward Z. Yang <ezyangfb.com>
Pull Request resolved: https://github.com/pytorch/pytorch/pull/82548
Approved by: https://github.com/albanD
2022-08-01 15:07:21 +00:00
PyTorch MergeBot
3b9cbb1738 Revert "Change SymIntNode into an intrusive pointer (#82432)"
This reverts commit 7be44f8158.

Reverted https://github.com/pytorch/pytorch/pull/82432 on behalf of https://github.com/ezyang due to segfaults on test but not caught in CI
2022-07-29 20:08:59 +00:00
Edward Z. Yang
7be44f8158 Change SymIntNode into an intrusive pointer (#82432)
This will make the pointer type a single word, which is important
for packing it into an int64_t

Signed-off-by: Edward Z. Yang <ezyang@fb.com>
Pull Request resolved: https://github.com/pytorch/pytorch/pull/82432
Approved by: https://github.com/albanD, https://github.com/Krovatkin
2022-07-29 17:32:54 +00:00
Edward Z. Yang
fd5ac1e6b5 Rename SymbolicIntNode to SymIntNodeImpl (#82350)
Done via

```
git grep -l 'SymbolicIntNode' | xargs sed -i 's/SymbolicIntNode/SymIntNodeImpl/g'
```

Reasoning for the change:

* Sym is shorter than Symbolic, and consistent with SymInt
* You usually will deal in shared_ptr<...>, so we're going to
  reserve the shorter name (SymIntNode) for the shared pointer.

But I don't want to update the Python name, so afterwards I ran

```
 git grep -l _C.SymIntNodeImpl | xargs sed -i 's/_C.SymIntNodeImpl/_C.SymIntNode/'
```

and manually fixed up the binding code

Signed-off-by: Edward Z. Yang <ezyang@fb.com>
Pull Request resolved: https://github.com/pytorch/pytorch/pull/82350
Approved by: https://github.com/Krovatkin
2022-07-28 18:27:45 +00:00
Huy Do
a4647cc1fa Apply ufmt linter to all py files under torchgen (#81570)
Previous batches:
* https://github.com/pytorch/pytorch/pull/81285
* https://github.com/pytorch/pytorch/pull/81335

We have multiple batches here to minimize merge conflicts and reviewing process. Once everything has been formatted by ufmt (black+usort), the current black linter will be removed.

Pull Request resolved: https://github.com/pytorch/pytorch/pull/81570
Approved by: https://github.com/ezyang
2022-07-16 03:52:25 +00:00
Brian Hirsh
c2d395cf8e functionalization <> LTC integration (take 3) (#80251)
new PR for https://github.com/pytorch/pytorch/pull/75527.

It looks like there's a bug in the windows CI scripts that was causing
flaky failures, that disappear when I create a new PR. example failure:
https://github.com/pytorch/pytorch/runs/6999272635?check_suite_focus=true
Pull Request resolved: https://github.com/pytorch/pytorch/pull/80251
Approved by: https://github.com/wconstab
2022-06-26 23:10:21 +00:00
Henry Tu
fc6b645fe2 Prevent out of bounds access to null LTC operands (#80060)
When constructing a lazy::Node, [null operands (optional values that aren't included) are dropped](30fb2c4aba/torch/csrc/lazy/core/ir.cpp (L82-L84)), so it’s possible for the stored operand list to be a different length than the one that was passed into the constructor.

This can become a problem during the call to `CanBeReused` in the autogen `LazyIr.h` code. For example:

```
  bool CanBeReused(const torch::lazy::Value& input, const c10::optional<torch::lazy::Value>& weight, const c10::optional<torch::lazy::Value>& bias, const c10::optional<torch::lazy::Value>& running_mean, const c10::optional<torch::lazy::Value>& running_var, const bool& training, const double& momentum, const double& eps) const {
    size_t i = 0;
    std::cout << "Num operands: " << operands().size() << std::endl;
    return (operand(i++) == input &&
        operand(i++) == weight.value_or(kNullValue) &&
        operand(i++) == bias.value_or(kNullValue) &&
        operand(i++) == running_mean.value_or(kNullValue) &&
        operand(i++) == running_var.value_or(kNullValue) &&
        this->training == training &&
        this->momentum == momentum &&
        this->eps == eps);
  }
```

Here we operate under the assumption that the number of operands stored in the `lazy::Node` is equal to the number of operands originally passed into the constructor. Recall that we drop any null operands though, so it’s possible to inadvertently access an invalid index at this point.

This PR addresses this issue by adding a new nullable_operand method which falls back to a null value instead of producing an index error when going out of bounds.

This should solve the issue found at https://github.com/pytorch/pytorch/pull/79637#issuecomment-1162044545

cc: @antoniojkim @ke1337 @wconstab @desertfire
Pull Request resolved: https://github.com/pytorch/pytorch/pull/80060
Approved by: https://github.com/desertfire
2022-06-24 20:39:37 +00:00
Antonio Kim
fe67dff82a Deprecate TSNodeLoweringInterface (#78273)
Fixes #78206

Deprecate `TSNodeLoweringInterface` and refactor lower functions into IR nodes.

CC: @wconstab @desertfire
Pull Request resolved: https://github.com/pytorch/pytorch/pull/78273
Approved by: https://github.com/wconstab
2022-05-31 18:09:12 +00:00
Bin Bao
29189d2ba8 [LT] Add IR resuing support for manually-implemented ops
Summary: Add CanBeReused methods for manually-implemented ops and replace MakeNode with
ReuseOrMakeNode.

Pull Request resolved: https://github.com/pytorch/pytorch/pull/77616

Approved by: https://github.com/JackCaoG, https://github.com/wconstab
2022-05-26 16:04:47 +00:00
Antonio Kim
02c4d877b4 Codegen Non-Native IR Nodes (#76535)
Add codegen infrastructure to generate IR nodes for non-native ops.

The proposed change is to add a `non_native` key to the `{backend}_native_functions.yaml` file that contains schema definitions similar to what is found in `native_functions.yaml`. e.g.
```
non_native:
    ...
    - func: expand(Tensor input, int[] size, bool is_scalar_expand) -> Tensor
    ...
```
these definitions are parsed into a `LazyIrSchema` that can be used for generating IR nodes using `GenLazyIR`.

Fixes #74628

CC: @wconstab @desertfire @henrytwo

Pull Request resolved: https://github.com/pytorch/pytorch/pull/76535
Approved by: https://github.com/wconstab
2022-05-24 19:29:23 +00:00
Antonio Kim
55be35ae39 Fix 'Code below assumes there is at least one tensor arg' assumption (#76917)
Previously when codegening ops like `zeros_` or `ones_` we'd hit a `Code below assumes there is at least one tensor arg error`. This check is not entirely correct which is what is causing the error to be thrown. There are ops like the ones mentioned that pass in a `device` parameter that can be used in place of the "first tensor".

CC: @wconstab @desertfire @henrytwo @ke1337
Pull Request resolved: https://github.com/pytorch/pytorch/pull/76917
Approved by: https://github.com/desertfire
2022-05-18 17:58:47 +00:00
Bin Bao
25c6ebd12c Revert "Revert "[LT] Codegen ReuseNode for supported ops""
Summary: Fixed a XLC build failure by generating an always-return-false
default CanBeReused method.

This reverts commit 3cade9d454.

Pull Request resolved: https://github.com/pytorch/pytorch/pull/77513

Approved by: https://github.com/alanwaketan
2022-05-16 20:14:42 +00:00
PyTorch MergeBot
3cade9d454 Revert "[LT] Codegen ReuseNode for supported ops"
This reverts commit 6066e5929f.

Reverted https://github.com/pytorch/pytorch/pull/76738 on behalf of https://github.com/malfet
2022-05-14 00:33:10 +00:00
Bin Bao
6066e5929f [LT] Codegen ReuseNode for supported ops
Summary:
1. Update the codegen script to add a TrieCache lookup (ReuseNode)
before creating a new IR node. The following is an example generated
code,

```
    at::Tensor LazyNativeFunctions::add(const at::Tensor & self, const at::Tensor & other, const at::Scalar & alpha) {
        ...
        torch::lazy::NodePtr node = torch::lazy::ReuseNode<AddTensor>(lazy_self->GetIrValue(), lazy_other->GetIrValue(), node_alpha);
        if (!node) {
            auto out_meta = at::meta::add(self, other, alpha);
            std::vector<Shape> shapes{Shape(out_meta.scalar_type(), out_meta.sizes().vec())};
            TORCH_INTERNAL_ASSERT(shapes.size() == 1);
            if(symbolicShapeEnabled()){
                std::vector<jit::IValue> inputs = { self, other, alpha };
                char* schema_str = "aten::add.Tensor(Tensor self, Tensor other, *, Scalar alpha=1) -> Tensor";
                applySymbolicShapesOnLT(schema_str, inputs, shapes);
            }

            node = torch::lazy::MakeNode<AddTensor>(lazy_self->GetIrValue(), lazy_other->GetIrValue(), node_alpha, std::move(shapes));
            CacheNode(node);
        }
        ...
    }
```
2. TrieCache lookup depends on each IR node subclass to provide its own
comparison function. The following is an example generated code,

```
  bool CanBeReused(const torch::lazy::Value& self, const torch::lazy::Value& other, const torch::lazy::Value& alpha) const {
    size_t i = 0;
    return (operand(i++) == self &&
        operand(i++) == other &&
        operand(i++) == alpha);
  }
```

3. DeviceData is specially handled.

4. Non-codegen op changes are coming a separate PR.

Pull Request resolved: https://github.com/pytorch/pytorch/pull/76738

Approved by: https://github.com/JackCaoG, https://github.com/wconstab
2022-05-13 19:13:58 +00:00
JackCaoG
e36a8c1f13 Lazy codegen change for xla (#76717)
Codegen change to enable PyTorch/XLA to generate the first op in https://github.com/pytorch/xla/pull/3544.

@bdhirsh @wconstab
Pull Request resolved: https://github.com/pytorch/pytorch/pull/76717
Approved by: https://github.com/Krovatkin
2022-05-12 17:04:04 +00:00