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Revert "remove unnecessary sync point in AveragedModel update (#158017)"
This reverts commit cb7f45fd34.
Reverted https://github.com/pytorch/pytorch/pull/158017 on behalf of https://github.com/wdvr due to discussed with author - expecting this to break checkpointing ([comment](https://github.com/pytorch/pytorch/pull/158017#issuecomment-3301790645))
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@ -76,6 +76,7 @@ class TestSWAUtils(TestCase):
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# Check that AveragedModel is on the correct device
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self.assertTrue(p_swa.device == swa_device)
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self.assertTrue(p_avg.device == net_device)
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self.assertTrue(averaged_dnn.n_averaged.device == swa_device)
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def _run_averaged_steps(self, dnn, swa_device, ema):
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ema_decay = 0.999
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@ -149,44 +150,6 @@ class TestSWAUtils(TestCase):
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self.assertEqual(p_swa, p_swa2)
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self.assertTrue(averaged_dnn.n_averaged == averaged_dnn2.n_averaged)
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def test_averaged_model_backward_compatibility(self):
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"""Test that AveragedModel correctly handles old checkpoints with tensor n_averaged."""
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dnn = torch.nn.Sequential(
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torch.nn.Conv2d(1, 5, kernel_size=3), torch.nn.Linear(5, 10)
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)
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averaged_dnn = AveragedModel(dnn)
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# Update parameters a few times
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n_updates = 5
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for _ in range(n_updates):
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for p in dnn.parameters():
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p.detach().add_(torch.randn_like(p))
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averaged_dnn.update_parameters(dnn)
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# Manually create a state dict with tensor n_averaged (simulating old checkpoint)
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state_dict = averaged_dnn.state_dict()
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# Create an old-style tensor n_averaged
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old_n_averaged = torch.tensor(n_updates, dtype=torch.long)
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state_dict["n_averaged"] = old_n_averaged
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# Create new model and load the old-style state dict
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averaged_dnn2 = AveragedModel(dnn)
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averaged_dnn2.load_state_dict(state_dict)
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# Check that n_averaged was correctly loaded as a Python int
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self.assertEqual(averaged_dnn2.n_averaged, n_updates)
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self.assertIsInstance(averaged_dnn2.n_averaged, int)
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# Verify that parameters are correctly loaded
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for p_swa, p_swa2 in zip(averaged_dnn.parameters(), averaged_dnn2.parameters()):
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self.assertEqual(p_swa, p_swa2)
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# Test that we can continue to update parameters without issues
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for p in dnn.parameters():
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p.detach().add_(torch.randn_like(p))
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averaged_dnn2.update_parameters(dnn)
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self.assertEqual(averaged_dnn2.n_averaged, n_updates + 1)
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def test_averaged_model_default_avg_fn_picklable(self):
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dnn = torch.nn.Sequential(
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torch.nn.Conv2d(1, 5, kernel_size=3),
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@ -116,28 +116,6 @@ def get_swa_avg_fn():
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return swa_update
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def _load_state_dict_pre_hook(
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module,
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state_dict,
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prefix,
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local_metadata,
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strict,
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missing_keys,
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unexpected_keys,
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error_msgs,
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):
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"""Pre-hook to handle backward compatibility with tensor n_averaged."""
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# Check if the old tensor n_averaged is present in the state dict
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n_averaged_key = prefix + "n_averaged"
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if n_averaged_key in state_dict:
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# Convert tensor n_averaged to Python int for backward compatibility
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n_averaged_tensor = state_dict[n_averaged_key]
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if isinstance(n_averaged_tensor, Tensor):
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module.n_averaged = int(n_averaged_tensor.item())
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# Remove the old tensor buffer from state_dict to avoid loading it
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del state_dict[n_averaged_key]
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class AveragedModel(Module):
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r"""Implements averaged model for Stochastic Weight Averaging (SWA) and Exponential Moving Average (EMA).
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@ -237,7 +215,7 @@ class AveragedModel(Module):
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https://paperswithcode.com/method/polyak-averaging
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"""
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n_averaged: int
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n_averaged: Tensor
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def __init__(
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self,
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@ -256,25 +234,17 @@ class AveragedModel(Module):
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self.module = deepcopy(model)
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if device is not None:
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self.module = self.module.to(device)
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self.n_averaged = 0
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self.register_buffer(
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"n_averaged", torch.tensor(0, dtype=torch.long, device=device)
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)
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self.avg_fn = avg_fn
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self.multi_avg_fn = multi_avg_fn
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self.use_buffers = use_buffers
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self.register_load_state_dict_pre_hook(_load_state_dict_pre_hook)
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def forward(self, *args, **kwargs):
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"""Forward pass."""
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return self.module(*args, **kwargs)
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def get_extra_state(self) -> Any:
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"""Get extra state for serialization."""
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return {"n_averaged": self.n_averaged}
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def set_extra_state(self, state: Any) -> None:
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"""Set extra state from deserialization."""
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if isinstance(state, dict) and "n_averaged" in state:
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self.n_averaged = state["n_averaged"]
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def update_parameters(self, model: Module):
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"""Update model parameters."""
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self_param = (
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@ -310,26 +280,28 @@ class AveragedModel(Module):
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self.multi_avg_fn(
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self_params, # type: ignore[arg-type]
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model_params, # type: ignore[arg-type]
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self.n_averaged,
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self.n_averaged.to(device),
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)
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elif (
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device is not None
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and device.type in _get_foreach_kernels_supported_devices()
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):
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multi_avg_fn = get_swa_multi_avg_fn()
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multi_avg_fn(self_params, model_params, self.n_averaged)
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multi_avg_fn(
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self_params, model_params, self.n_averaged.to(device)
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)
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else:
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avg_fn = get_swa_avg_fn()
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n_averaged = self.n_averaged.to(device)
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for p_averaged, p_model in zip(self_params, model_params): # type: ignore[assignment]
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p_averaged.copy_(
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avg_fn(p_averaged, p_model, self.n_averaged)
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)
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p_averaged.copy_(avg_fn(p_averaged, p_model, n_averaged))
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else:
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for p_averaged, p_model in zip( # type: ignore[assignment]
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self_param_detached, model_param_detached
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):
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n_averaged = self.n_averaged.to(p_averaged.device)
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p_averaged.detach().copy_(
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self.avg_fn(p_averaged.detach(), p_model, self.n_averaged)
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self.avg_fn(p_averaged.detach(), p_model, n_averaged)
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)
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if not self.use_buffers:
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