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from typing import Optional |
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import torch |
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import torch.optim._functional as F |
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from torch import Tensor |
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from torch.distributed.optim._deprecation_warning import ( |
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_scripted_functional_optimizer_deprecation_warning, |
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) |
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__all__: list[str] = [] |
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@torch.jit.script |
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class _FunctionalRprop: |
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def __init__( |
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self, |
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params: list[Tensor], |
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lr: float = 1e-2, |
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etas: tuple[float, float] = (0.5, 1.2), |
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step_sizes: tuple[float, float] = (1e-6, 50), |
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foreach: bool = False, |
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maximize: bool = False, |
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_allow_empty_param_list: bool = False, |
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): |
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_scripted_functional_optimizer_deprecation_warning(stacklevel=2) |
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self.defaults = { |
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"lr": lr, |
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} |
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self.etas = etas |
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self.step_sizes = step_sizes |
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self.foreach = foreach |
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self.maximize = maximize |
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if len(params) == 0 and not _allow_empty_param_list: |
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raise ValueError("optimizer got an empty parameter list") |
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self.param_group = {"params": params} |
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self.state = torch.jit.annotate(dict[torch.Tensor, dict[str, torch.Tensor]], {}) |
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def step(self, gradients: list[Optional[Tensor]]): |
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params = self.param_group["params"] |
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params_with_grad = [] |
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grads = [] |
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prevs = [] |
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step_sizes = [] |
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state_steps = [] |
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lr = self.defaults["lr"] |
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etaminus, etaplus = self.etas |
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step_size_min, step_size_max = self.step_sizes |
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if len(params) != len(gradients): |
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raise ValueError( |
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"the gradients passed in does not equal to the size of the parameters!" |
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+ f"Params length: {len(params)}. " |
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+ f"Gradients length: {len(gradients)}" |
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) |
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has_complex = False |
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for param, gradient in zip(params, gradients): |
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if gradient is not None: |
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has_complex |= torch.is_complex(param) |
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params_with_grad.append(param) |
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grads.append(gradient) |
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if param not in self.state: |
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self.state[param] = {} |
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state = self.state[param] |
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state["step"] = torch.tensor(0.0) |
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state["prev"] = torch.zeros_like( |
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param, memory_format=torch.preserve_format |
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) |
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state["step_size"] = torch.full_like(gradient, lr) |
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state = self.state[param] |
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prevs.append(state["prev"]) |
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step_sizes.append(state["step_size"]) |
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state_steps.append(state["step"]) |
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with torch.no_grad(): |
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F.rprop( |
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params_with_grad, |
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grads, |
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prevs, |
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step_sizes, |
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state_steps, |
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step_size_min=step_size_min, |
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step_size_max=step_size_max, |
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etaminus=etaminus, |
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etaplus=etaplus, |
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foreach=self.foreach, |
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maximize=self.maximize, |
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has_complex=has_complex, |
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) |
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