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Fix with effect lowering for list return type (#149510)
Summary: - For `torch.ops.higher_order.with_effects`'s lowering, we should not extract the items out of an list (i.e. `*result` vs `result`). The `get_attr` nodes consider the result to be in the list format. Test Plan: ``` buck run fbcode//mode/dev-nosan //caffe2/test/inductor:torchbind -- -r test_torchbind_aot_compile buck run fbcode//mode/dev-nosan //caffe2/test/inductor:torchbind -- -r list_return buck run //caffe2/torch/fb/sparsenn:sigrid_test -- -r test_transform_torch_bind # tested together with D70013257 buck run fbcode//mode/dev-nosan //caffe2/test:test_export -- -r test_custom_obj ``` Reviewed By: angelayi Differential Revision: D71346024 Pull Request resolved: https://github.com/pytorch/pytorch/pull/149510 Approved by: https://github.com/zou3519
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@ -286,6 +286,30 @@ class TestTorchbind(TestCase):
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# TODO: add accuracy test after we support loading and running compiled models with
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# torchbind objects.
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def test_torchbind_list_return_aot_compile(self):
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class M(torch.nn.Module):
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def __init__(self) -> None:
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super().__init__()
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self.attr = torch.classes._TorchScriptTesting._Foo(10, 20)
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def forward(self, x):
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a = torch.ops._TorchScriptTesting.takes_foo_list_return(self.attr, x)
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y = a[0] + a[1] + a[2]
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b = torch.ops._TorchScriptTesting.takes_foo(self.attr, y)
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return x + b
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m = M()
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inputs = (torch.ones(2, 3),)
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# We can't directly torch.compile because dynamo doesn't trace ScriptObjects yet
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with enable_torchbind_tracing():
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ep = torch.export.export(m, inputs, strict=False)
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aot_compile(ep.module(), inputs, options={"aot_inductor.package": True})
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# TODO: add accuracy test after we support loading and running compiled models with
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# torchbind objects.
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if __name__ == "__main__":
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run_tests()
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@ -146,6 +146,12 @@ def with_effects_dense(
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) -> tuple[torch.Tensor, ...]:
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out = op(*args, **kwargs)
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new_token = new_token_tensor()
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# [NOTE: with_effects return type]
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# Note that we should only do *out for tuple type, but not list type.
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# This is to match the schema of the op.
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# For tuple output, the length of schema output is the same as the length of out.
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# For list output, the length of schema output is 1 (e.g. Tensor[]) regardless of the
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# length of the list.
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if isinstance(out, tuple):
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return (new_token, *out)
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return (new_token, out)
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@ -6954,7 +6954,9 @@ def with_effects(token, op, *args, **kwargs):
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return (effectful_kernel,)
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result = pytree.tree_map_only(ir.MultiOutput, TensorBox.create, result)
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if not isinstance(result, (list, tuple)):
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# See [NOTE: with_effects return type]
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# Only return `result` if it is a tuple, not list.
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if not isinstance(result, tuple):
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return (effectful_kernel, result)
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else:
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return (effectful_kernel, *result)
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