Summary:
When we have both `set_grad` and `autocast` HOP, name collision might happen when we try to inline a node.
For exmaple, for a GraphModule like this:
```
GraphModule(
(submod_0): GraphModule(
(submod_1): GraphModule()
)
(submod_1): GraphModule()
(submod_2): GraphModule()
)
```
when we inline `submod_0`, we might accidentally overwrite `submod_1`.
In this PR, we fix this by check if the graph module already has an attribute with the same name, if so, we use the next "submod_{i}", until no name collision.
Partially fixes https://github.com/pytorch/pytorch/issues/140589.
Test Plan:
```
buck2 run 'fbcode//mode/dev-nosan' fbcode//caffe2/test:test_export -- -r test_predispatch_autocast_and_set_grad
```
Differential Revision: D66200994
Pull Request resolved: https://github.com/pytorch/pytorch/pull/141169
Approved by: https://github.com/angelayi
Differential Revision: [D65362160](https://our.internmc.facebook.com/intern/diff/D65362160)
State after this IR:
1. For the tests that require inference IR, they are replaced with ep.run_decomp({}) so export_for_training_run_decomp is sort of redundant but i guess it is still nice that multiple round of retracing still working. In general, we need some auditing to reduce our redundant testing coverages.
2. After this PR landed and not get reverted for a week or so, i will replace the export_for_training calls with export as they are the same thing now.
3. Added more tests to also cover now "deprecated" old IR by patching export to use old export. For reviewers, please look at the internal version.
Pull Request resolved: https://github.com/pytorch/pytorch/pull/139511
Approved by: https://github.com/ydwu4, https://github.com/angelayi, https://github.com/avikchaudhuri
Summary:
Reland of D60206382.
Suggested in https://github.com/pytorch/pytorch/issues/128394.
If there's an autocast context manager, the predispatch (strict) graph can look something like:
```
class <lambda>(torch.nn.Module):
def forward(self, x: "f32[1]"):
...
_enter_autocast = torch.amp.autocast_mode._enter_autocast('cuda', torch.bfloat16, True, None)
mm: "f32[8, 8]" = torch.ops.aten.mm.default(rand, rand_1); rand = rand_1 = None
_exit_autocast = torch.amp.autocast_mode._exit_autocast(_enter_autocast); _enter_autocast = None
return (mm_1,)
```
But the operator `torch.amp.autocast_mode._enter_autocast` is not a valid ATen op. We remove these nodes by turning autocast into a higher order operator and make a submodule for the blocks between `_enter_autocast` and `_exit_autocast`.
Some potential followup improvement:
1) Merge some of the duplicated logic with `replace_set_grad_with_hop_pass.py`
2) Check the current autocast status (any enabled? dtype?) and not create a submodule if the autocast args matches current autocast status.
Test Plan:
CI
```
buck2 run 'fbcode//mode/dev-nosan' fbcode//caffe2/test:test_export -- -r "test_predispatch_autocast"
buck2 run 'fbcode//mode/dev-nosan' fbcode//caffe2/test:test_export -- -r "test_predispatch_set_grad"
```
Verified that now we can export the llama model in gh issue 128394 and the gemma model in gh issue 131829 without error.
Differential Revision: D60770038
Pull Request resolved: https://github.com/pytorch/pytorch/pull/132677
Approved by: https://github.com/angelayi
Summary:
Suggested in https://github.com/pytorch/pytorch/issues/128394.
If there's an autocast context manager, the predispatch (strict) graph can look something like:
```
class <lambda>(torch.nn.Module):
def forward(self, x: "f32[1]"):
...
_enter_autocast = torch.amp.autocast_mode._enter_autocast('cuda', torch.bfloat16, True, None)
mm: "f32[8, 8]" = torch.ops.aten.mm.default(rand, rand_1); rand = rand_1 = None
_exit_autocast = torch.amp.autocast_mode._exit_autocast(_enter_autocast); _enter_autocast = None
return (mm_1,)
```
But the operator `torch.amp.autocast_mode._enter_autocast` is not a valid ATen op. We remove these nodes by turning autocast into a higher order operator and make a submodule for the blocks between `_enter_autocast` and `_exit_autocast`.
Some potential followup improvement:
1) Merge some of the duplicated logic with `replace_set_grad_with_hop_pass.py`
2) Check the current autocast status (any enabled? dtype?) and not create a submodule if the autocast args matches current autocast status.
Test Plan:
CI
```
parsh --build-flags fbcode//mode/dev-nosan fbcode//caffe2/test:test_export
run_tests("test_predispatch_autocast")
```
Reviewed By: angelayi
Differential Revision: D60206382
Pull Request resolved: https://github.com/pytorch/pytorch/pull/131914
Approved by: https://github.com/angelayi
Summary:
Suggested in https://github.com/pytorch/pytorch/issues/128394.
If there's an autocast context manager, the predispatch (strict) graph can look something like:
```
class <lambda>(torch.nn.Module):
def forward(self, x: "f32[1]"):
...
_enter_autocast = torch.amp.autocast_mode._enter_autocast('cuda', torch.bfloat16, True, None)
mm: "f32[8, 8]" = torch.ops.aten.mm.default(rand, rand_1); rand = rand_1 = None
_exit_autocast = torch.amp.autocast_mode._exit_autocast(_enter_autocast); _enter_autocast = None
return (mm_1,)
```
But the operator `torch.amp.autocast_mode._enter_autocast` is not a valid ATen op. We remove these nodes by turning autocast into a higher order operator and make a submodule for the blocks between `_enter_autocast` and `_exit_autocast`.
Some potential followup improvement:
1) Merge some of the duplicated logic with `replace_set_grad_with_hop_pass.py`
2) Check the current autocast status (any enabled? dtype?) and not create a submodule if the autocast args matches current autocast status.
Test Plan:
CI
```
parsh --build-flags fbcode//mode/dev-nosan fbcode//caffe2/test:test_export
run_tests("test_predispatch_autocast")
```
Reviewed By: angelayi
Differential Revision: D60206382
Pull Request resolved: https://github.com/pytorch/pytorch/pull/131914
Approved by: https://github.com/angelayi
Add similar semantics for creating a buffer object similar to creating a parameter. This is done by introducing a new Buffer class that can be used for type disambiguation. The underlying functionality of registering a buffer remains the same as the register_buffer method has not been changed. The persistent parameter in the Buffer type is to indicate whether a buffer object should be persistent or not. Other non-test changes have to do with getting the new Buffer type recognized by inductor and dynamo. Remaining changes are test changes to make sure that the Buffer type can be used as a drop in replacement for register_buffer as it just leads to register_buffer being called. The addition of this new functionality still allows for normal tensors to be used as buffers so these changes are intended to be backwards compatible.
Fixes#35735
Co-authored-by: Mikayla Gawarecki <mikaylagawarecki@gmail.com>
Pull Request resolved: https://github.com/pytorch/pytorch/pull/125971
Approved by: https://github.com/albanD, https://github.com/anijain2305, https://github.com/mlazos
Summary: Previously, remove_effect_tokens pass didn't pass kwargs to the internal nodes. This PR fix it and add a test for it.
Test Plan: buck2 run caffe2/test:test_export -- -r test_remove_effect_token_kwargs
Reviewed By: angelayi
Differential Revision: D59603147
Pull Request resolved: https://github.com/pytorch/pytorch/pull/130491
Approved by: https://github.com/angelayi
original PR: https://github.com/pytorch/pytorch/pull/128599 (re-created after revert + poisoned diff train)
Summary:
This PR adds deduplication and CSE for runtime asserts. Existing size computation in the graph is CSE'd along with added runtime asserts, and redundant asserts are removed. Shape calls on intermediate tensors are also turned into compute on input sizes if possible, allowing intermediate tensors to be freed earlier. For example:
```
z = torch.cat([x, x], dim=0) # 2*s0
w = z.repeat(y.shape[0]) # 2*s0*s1
_w = w.shape[0]
s0 = x.shape[0]
s1 = y.shape[0]
_w0 = 2 * s0
_w = _w0 * s1
```
Additionally, constrain_range calls are deduplicated. Single-symbol bound checks for unbacked symbols (e.g. u0 >= 0, u0 <= 5) and sym_constrain_range.default calls are also removed, since they accumulate range info in the ShapeEnv, and are replaced with two _assert_scalar.default calls that check the min/max bounds. For example:
```
torch.sym_constrain_range_for_size(n, min=2, max=16)
torch.sym_constrain_range(n, min=4, max=20)
torch._check(n >= 0)
torch._check(n >= 3)
torch._check(n <= 14)
torch.sym_constrain_range_for_size(n)
torch._check(n >= 4)
torch._check(n <= 14)
```
Test Plan:
contbuild & OSS CI, see 940e4477ab
Original Phabricator Test Plan:
Imported from GitHub, without a `Test Plan:` line.
Differential Revision: D59543603
Pull Request resolved: https://github.com/pytorch/pytorch/pull/130380
Approved by: https://github.com/izaitsevfb
Summary: Previously, when we inline the subgraphs that doesn't have a different require_grad environment, we didn't clean up the nodes's users in subgraph and direcly used them to to replace the output of the call_modules. This records dead depencies in node.users. This PR fixes this.
Test Plan:
Added a new test.
Also see the torchrec tests:
Step 1:
buck run mode/dev-nosan //aimp/experimental/pt2:pt2_export -- --model-entity-id 934687114 --output /tmp/934687114.zip --use-torchrec-eager-mp --use-manifold
Step 2:
buck run mode/opt -c python.package_style=inplace -c fbcode.enable_gpu_sections=true aimp/cli:cli -- --platform=aps --template=disagg_gpu_aps_pt2 --pt2 --model-entity-id=934687114 non-request-only-tagging torchrec-shard-and-quantize gpu-disagg-split assign-device materialize-weights script-and-save
Differential Revision: D59132214
Pull Request resolved: https://github.com/pytorch/pytorch/pull/129716
Approved by: https://github.com/angelayi
This PR adds deduplication and CSE for runtime asserts. Existing size computation in the graph is CSE'd along with added runtime asserts, and redundant asserts are removed. Shape calls on intermediate tensors are also turned into compute on input sizes if possible, allowing intermediate tensors to be freed earlier. For example:
```
z = torch.cat([x, x], dim=0) # 2*s0
w = z.repeat(y.shape[0]) # 2*s0*s1
_w = w.shape[0]
# something with _w ...
# turns into ->
s0 = x.shape[0]
s1 = y.shape[0]
_w0 = 2 * s0
_w = _w0 * s1
```
Additionally, constrain_range calls are deduplicated. Single-symbol bound checks for unbacked symbols (e.g. u0 >= 0, u0 <= 5) and sym_constrain_range.default calls are also removed, since they accumulate range info in the ShapeEnv, and are replaced with two _assert_scalar.default calls that check the min/max bounds. For example:
```
torch.sym_constrain_range_for_size(n, min=2, max=16)
torch.sym_constrain_range(n, min=4, max=20)
torch._check(n >= 0)
torch._check(n >= 3)
torch._check(n <= 14)
# turns into
torch.sym_constrain_range_for_size(n)
torch._check(n >= 4)
torch._check(n <= 14)
```
Pull Request resolved: https://github.com/pytorch/pytorch/pull/128599
Approved by: https://github.com/ezyang
This PR adds deduplication and CSE for runtime asserts. Existing size computation in the graph is CSE'd along with added runtime asserts, and redundant asserts are removed. Shape calls on intermediate tensors are also turned into compute on input sizes if possible, allowing intermediate tensors to be freed earlier. For example:
```
z = torch.cat([x, x], dim=0) # 2*s0
w = z.repeat(y.shape[0]) # 2*s0*s1
_w = w.shape[0]
# something with _w ...
# turns into ->
s0 = x.shape[0]
s1 = y.shape[0]
_w0 = 2 * s0
_w = _w0 * s1
```
Additionally, constrain_range calls are deduplicated. Single-symbol bound checks for unbacked symbols (e.g. u0 >= 0, u0 <= 5) and sym_constrain_range.default calls are also removed, since they accumulate range info in the ShapeEnv, and are replaced with two _assert_scalar.default calls that check the min/max bounds. For example:
```
torch.sym_constrain_range_for_size(n, min=2, max=16)
torch.sym_constrain_range(n, min=4, max=20)
torch._check(n >= 0)
torch._check(n >= 3)
torch._check(n <= 14)
# turns into
torch.sym_constrain_range_for_size(n)
torch._check(n >= 4)
torch._check(n <= 14)
```
Pull Request resolved: https://github.com/pytorch/pytorch/pull/128599
Approved by: https://github.com/ezyang
The `usort` config in `pyproject.toml` has no effect due to a typo. Fixing the typo make `usort` do more and generate the changes in the PR. Except `pyproject.toml`, all changes are generated by `lintrunner -a --take UFMT --all-files`.
Pull Request resolved: https://github.com/pytorch/pytorch/pull/127126
Approved by: https://github.com/kit1980
The `usort` config in `pyproject.toml` has no effect due to a typo. Fixing the typo make `usort` do more and generate the changes in the PR. Except `pyproject.toml`, all changes are generated by `lintrunner -a --take UFMT --all-files`.
Pull Request resolved: https://github.com/pytorch/pytorch/pull/127126
Approved by: https://github.com/kit1980
ghstack dependencies: #127122, #127123, #127124, #127125
The `usort` config in `pyproject.toml` has no effect due to a typo. Fixing the typo make `usort` do more and generate the changes in the PR. Except `pyproject.toml`, all changes are generated by `lintrunner -a --take UFMT --all-files`.
Pull Request resolved: https://github.com/pytorch/pytorch/pull/127125
Approved by: https://github.com/Skylion007
ghstack dependencies: #127122, #127123, #127124
Fixes [internal error](https://fb.workplace.com/groups/1075192433118967/permalink/1416709435633930/).
The issue is that the asserting nodes added in the `insert_deferred_runtime_assertion` pass do not contain metadata that the ExportedProgram requires the graph to have. One solution to fix this is to retrace the entire module, or another solution is to manually add back this metadata.
This diff implements the latter solution (manually add back the metadata) through hooking into fx.graph's `create_node` function, and adding export-specific metadata for every node that is created. The reason I did this is so that the `insert_deferred_runtime_assertion` does not have to know about what metadata export wants.
Pull Request resolved: https://github.com/pytorch/pytorch/pull/125414
Approved by: https://github.com/zhxchen17, https://github.com/BoyuanFeng
A re-land of #124239.
This PR fakify ScriptObject inputs and attributes in export non-strict mode by default.
The basic idea is to only fakify the script object during tracing (i.e. aot_export). After we get the traced graph module, eagerly executing, serializing, or running more passes will use the real script objects. This is essentially treating the script object as constant tensor.
Concretely, we
fakify all the script object inputs, and module attributes (gathered by constant_attrs).
patch the module's attributes with fakified script object
right after aot_export, remove the patching (to avoid changing the original module) then modify the exported graph module's attribute to real script object.
Pull Request resolved: https://github.com/pytorch/pytorch/pull/125490
Approved by: https://github.com/angelayi
To fix data-dependent errors we want to recommend that people use `torch._check*` APIs. The `constrain_as*` APIs should be fully subsumed by them, and in the future we should kill them entirely.
Differential Revision: D56774333
Pull Request resolved: https://github.com/pytorch/pytorch/pull/125253
Approved by: https://github.com/ezyang
This PR fakify ScriptObject inputs and attributes in export non-strict mode by default.
The basic idea is to `only fakify the script object during tracing (i.e. aot_export)`. After we get the traced graph module, eagerly executing, serializing, or running more passes will use the real script objects. This is essentially treating the script object as constant tensor.
Concretely, we
1. fakify all the script object inputs, and module attributes (gathered by constant_attrs).
2. patch the module's attributes with fakified script object
3. right after aot_export, remove the patching (to avoid changing the original module) then modify the exported graph module's attribute to real script object.
Pull Request resolved: https://github.com/pytorch/pytorch/pull/124239
Approved by: https://github.com/zou3519
Summary:
Fixes https://github.com/pytorch/pytorch/issues/122842
Currently, calling ep.module() on an ExportedProgram leads to a GraphModule with a default forward signature (e.g. arg_0, arg_1, ...). This leads to original placeholder names disappearing for retracing/re-exporting.
Fixing this issue by creating a forward_arg_names field (will take renaming suggestions for this), that stores the positional & keyword arg names that are used. These names aren't present in the call_spec currently stored, and requires a major version bump for the ExportedProgram schema.
Test Plan: Tests exist for export, but names are now changed from generic (e.g. arg_0, arg_1) to follow user inputs (e.g. x, y)
Differential Revision: D56484994
Pull Request resolved: https://github.com/pytorch/pytorch/pull/124765
Approved by: https://github.com/zhxchen17
This PR switches export IR from aot-dispatch to pre-dispatch IR.
**What is pre-dispatch IR and why should you care?**
Currently the default IR returned by torch.export can contain only functional ATen operators after ALL pytorch dispatcher decompositions (for example, CompositeImplicitAutograd) run.
In contrast, pre-dispatch IR refers to an IR that can contain all functional ATen operators (i.e., not just from the core subset), before any decomposition happens, as well as operators that manipulate autograd state. Pre-dispatch IR closely resembles eager PyTorch computation, but is still functional and serializable by torch.export. As a result:
- You can train the pre-dispatch IR in eager mode as the IR contains necessary information for the autograd engine to automatically generate a backward graph.
- You can write sound graph transformations more easily as the IR is functional.
- Since it is an ATen IR, it is still normalized. For example, torch.add has multiple overloads, but aten.add.Tensor is unique in this IR.
If you want to get the core aten IR out of `torch.export`, you will need to:
```
ep = torch.export.export(M(), inputs)
ep_for_core_aten = ep.run_decompositions()
```
Differential Revision: [D56273267](https://our.internmc.facebook.com/intern/diff/D56273267)
Pull Request resolved: https://github.com/pytorch/pytorch/pull/123573
Approved by: https://github.com/gmagogsfm
Summary:
This PR restores original names to placeholder nodes, replacing the default names arg0_1, arg1_1, and so on.
User inputs now follow the signature of mod.forward(), for example forward(x, y) produces nodes x, y. If the tensors are nested in dictionaries, lists, tuples, or dataclasses, the names are a concatenation of the path to the tensor, e.g. x = {'a': torch.randn(4), 'b': [torch.randn(4), torch.randn(4)]} produces nodes x_a, x_b_0, x_b_1.
Parameters, buffers, constants, and custom objects follow the FQN of the object, prefixed by "p", "b", "c", and "obj" respectively. For example, self.bar.l0.weight gets you p_bar_l0_weight.
Effect tokens are named token_1, token_2, and so on, since they are not grounded in model inputs or named attributes.
note: breaking the original diff into 3 parts (top-level renaming, higher-order-op subgraphs, constant input de/serialization) because of its size.
Examples:
```python
# params, buffers, constants, inputs, torch.cond
ExportedProgram:
class GraphModule(torch.nn.Module):
def forward(self, p_l0_weight: "f32[4, 4]", p_l0_bias: "f32[4]", c_alpha: "f32[4]", b_beta: "f32[4]", x_0_a: "f32[4, 4]", y: "f32[4, 4]"):
# No stacktrace found for following nodes
mul: "f32[4, 4]" = torch.ops.aten.mul.Tensor(x_0_a, x_0_a)
t: "f32[4, 4]" = torch.ops.aten.t.default(p_l0_weight); p_l0_weight = None
addmm: "f32[4, 4]" = torch.ops.aten.addmm.default(p_l0_bias, y, t); p_l0_bias = y = t = None
return addmm
# model code
class Bar(torch.nn.Module):
def forward(self, x):
return x * x
class Foo(torch.nn.Module):
def __init__(self):
super().__init__()
self.bar = Bar()
self.l0 = torch.nn.Linear(4, 4)
self.alpha = torch.randn(4)
self.register_buffer('beta', torch.randn(4))
def forward(self, x, y):
x = x[0]['a']
mul = self.bar(x)
z1 = self.l0(y)
return z1
# custom objects, dataclasses, tokens, constant inputs
ExportedProgram:
class GraphModule(torch.nn.Module):
def forward(self, token_1: "f32[0]", obj_attr, data_x: "f32[4, 4]", data_y: "f32[4, 4]", mode):
# No stacktrace found for following nodes
mul: "f32[4, 4]" = torch.ops.aten.mul.Scalar(data_x, 30); data_x = None
div: "f32[4, 4]" = torch.ops.aten.div.Tensor_mode(data_y, 1.0, rounding_mode = 'floor'); data_y = None
add: "f32[4, 4]" = torch.ops.aten.add.Tensor(mul, div); mul = div = None
with_effects = torch._higher_order_ops.effects.with_effects(token_1, torch.ops._TorchScriptTesting.takes_foo.default, obj_attr, add); token_1 = obj_attr = add = None
getitem: "f32[0]" = with_effects[0]
getitem_1: "f32[4, 4]" = with_effects[1]; with_effects = None
return (getitem, getitem_1)
# model code
class Foo(torch.nn.Module):
def __init__(self):
super().__init__()
self.attr = torch.classes._TorchScriptTesting._Foo(10, 20)
def forward(self, data, a=1.0, mode="floor"):
x = self.attr.add_tensor(data.x) + torch.div(data.y, a, rounding_mode=mode)
x = torch.ops._TorchScriptTesting.takes_foo(self.attr, x)
return x
dataclass
class DataClass:
x: Tensor
y: Tensor
register_dataclass_as_pytree_node(
DataClass,
serialized_type_name="test.DataClass"
)
args = (DataClass(x=torch.randn(4, 4), y=torch.randn(4, 4)), )
kwargs = {'mode': 'floor'}
ep = torch.export.export(Foo(), args, kwargs, strict=False)
```
Test Plan: verification checks on placeholder names for all export() calls, unit test in test/export/test_export.py
Differential Revision: D55456418
Pull Request resolved: https://github.com/pytorch/pytorch/pull/122904
Approved by: https://github.com/angelayi, https://github.com/thiagocrepaldi
Summary: Adds a pass that blindly removes the functionalize hop without consideration on if its safe. Useful for ExecuTorch today and other usecases that have additional logic that can reason about when this pass is safe to use
Test Plan: added unit test
Differential Revision: D55103867
Pull Request resolved: https://github.com/pytorch/pytorch/pull/122246
Approved by: https://github.com/angelayi