This PR adds strict typing to the output of `update` and `learn` in all policies. This will likely be the last large refactoring PR before the next release (0.6.0, not 1.0.0), so it requires some attention. Several difficulties were encountered on the path to that goal: 1. The policy hierarchy is actually "broken" in the sense that the keys of dicts that were output by `learn` did not follow the same enhancement (inheritance) pattern as the policies. This is a real problem and should be addressed in the near future. Generally, several aspects of the policy design and hierarchy might deserve a dedicated discussion. 2. Each policy needs to be generic in the stats return type, because one might want to extend it at some point and then also extend the stats. Even within the source code base this pattern is necessary in many places. 3. The interaction between learn and update is a bit quirky, we currently handle it by having update modify special field inside TrainingStats, whereas all other fields are handled by learn. 4. The IQM module is a policy wrapper and required a TrainingStatsWrapper. The latter relies on a bunch of black magic. They were addressed by: 1. Live with the broken hierarchy, which is now made visible by bounds in generics. We use type: ignore where appropriate. 2. Make all policies generic with bounds following the policy inheritance hierarchy (which is incorrect, see above). We experimented a bit with nested TrainingStats classes, but that seemed to add more complexity and be harder to understand. Unfortunately, mypy thinks that the code below is wrong, wherefore we have to add `type: ignore` to the return of each `learn` ```python T = TypeVar("T", bound=int) def f() -> T: return 3 ``` 3. See above 4. Write representative tests for the `TrainingStatsWrapper`. Still, the black magic might cause nasty surprises down the line (I am not proud of it)... Closes #933 --------- Co-authored-by: Maximilian Huettenrauch <m.huettenrauch@appliedai.de> Co-authored-by: Michael Panchenko <m.panchenko@appliedai.de>
223 lines
9.3 KiB
Python
223 lines
9.3 KiB
Python
from dataclasses import dataclass
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from typing import Any, Generic, Literal, TypeVar
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import gymnasium as gym
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import numpy as np
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import torch
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import torch.nn.functional as F
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from torch import nn
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from torch.distributions import kl_divergence
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from tianshou.data import Batch, ReplayBuffer, SequenceSummaryStats
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from tianshou.data.types import BatchWithAdvantagesProtocol, RolloutBatchProtocol
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from tianshou.policy import A2CPolicy
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from tianshou.policy.base import TLearningRateScheduler, TrainingStats
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from tianshou.policy.modelfree.pg import TDistributionFunction
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@dataclass(kw_only=True)
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class NPGTrainingStats(TrainingStats):
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actor_loss: SequenceSummaryStats
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vf_loss: SequenceSummaryStats
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kl: SequenceSummaryStats
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TNPGTrainingStats = TypeVar("TNPGTrainingStats", bound=NPGTrainingStats)
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# TODO: the type ignore here is needed b/c the hierarchy is actually broken! Should reconsider the inheritance structure.
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class NPGPolicy(A2CPolicy[TNPGTrainingStats], Generic[TNPGTrainingStats]): # type: ignore[type-var]
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"""Implementation of Natural Policy Gradient.
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https://proceedings.neurips.cc/paper/2001/file/4b86abe48d358ecf194c56c69108433e-Paper.pdf
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:param actor: the actor network following the rules in BasePolicy. (s -> logits)
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:param critic: the critic network. (s -> V(s))
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:param optim: the optimizer for actor and critic network.
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:param dist_fn: distribution class for computing the action.
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:param action_space: env's action space
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:param optim_critic_iters: Number of times to optimize critic network per update.
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:param actor_step_size: step size for actor update in natural gradient direction.
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:param advantage_normalization: whether to do per mini-batch advantage
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normalization.
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:param gae_lambda: in [0, 1], param for Generalized Advantage Estimation.
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:param max_batchsize: the maximum size of the batch when computing GAE.
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:param discount_factor: in [0, 1].
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:param reward_normalization: normalize estimated values to have std close to 1.
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:param deterministic_eval: if True, use deterministic evaluation.
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:param observation_space: the space of the observation.
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:param action_scaling: if True, scale the action from [-1, 1] to the range of
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action_space. Only used if the action_space is continuous.
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:param action_bound_method: method to bound action to range [-1, 1].
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:param lr_scheduler: if not None, will be called in `policy.update()`.
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"""
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def __init__(
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self,
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*,
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actor: torch.nn.Module,
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critic: torch.nn.Module,
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optim: torch.optim.Optimizer,
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dist_fn: TDistributionFunction,
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action_space: gym.Space,
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optim_critic_iters: int = 5,
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actor_step_size: float = 0.5,
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advantage_normalization: bool = True,
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gae_lambda: float = 0.95,
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max_batchsize: int = 256,
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discount_factor: float = 0.99,
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# TODO: rename to return_normalization?
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reward_normalization: bool = False,
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deterministic_eval: bool = False,
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observation_space: gym.Space | None = None,
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action_scaling: bool = True,
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action_bound_method: Literal["clip", "tanh"] | None = "clip",
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lr_scheduler: TLearningRateScheduler | None = None,
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) -> None:
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super().__init__(
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actor=actor,
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critic=critic,
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optim=optim,
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dist_fn=dist_fn,
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action_space=action_space,
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# TODO: violates Liskov substitution principle, see the del statement below
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vf_coef=None, # type: ignore
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ent_coef=None, # type: ignore
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max_grad_norm=None,
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gae_lambda=gae_lambda,
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max_batchsize=max_batchsize,
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discount_factor=discount_factor,
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reward_normalization=reward_normalization,
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deterministic_eval=deterministic_eval,
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observation_space=observation_space,
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action_scaling=action_scaling,
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action_bound_method=action_bound_method,
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lr_scheduler=lr_scheduler,
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)
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# TODO: see above, it ain't pretty...
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del self.vf_coef, self.ent_coef, self.max_grad_norm
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self.norm_adv = advantage_normalization
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self.optim_critic_iters = optim_critic_iters
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self.actor_step_size = actor_step_size
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# adjusts Hessian-vector product calculation for numerical stability
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self._damping = 0.1
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def process_fn(
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self,
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batch: RolloutBatchProtocol,
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buffer: ReplayBuffer,
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indices: np.ndarray,
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) -> BatchWithAdvantagesProtocol:
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batch = super().process_fn(batch, buffer, indices)
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old_log_prob = []
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with torch.no_grad():
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for minibatch in batch.split(self.max_batchsize, shuffle=False, merge_last=True):
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old_log_prob.append(self(minibatch).dist.log_prob(minibatch.act))
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batch.logp_old = torch.cat(old_log_prob, dim=0)
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if self.norm_adv:
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batch.adv = (batch.adv - batch.adv.mean()) / batch.adv.std()
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return batch
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def learn( # type: ignore
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self,
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batch: Batch,
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batch_size: int | None,
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repeat: int,
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**kwargs: Any,
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) -> TNPGTrainingStats:
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actor_losses, vf_losses, kls = [], [], []
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split_batch_size = batch_size or -1
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for _ in range(repeat):
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for minibatch in batch.split(split_batch_size, merge_last=True):
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# optimize actor
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# direction: calculate villia gradient
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dist = self(minibatch).dist
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log_prob = dist.log_prob(minibatch.act)
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log_prob = log_prob.reshape(log_prob.size(0), -1).transpose(0, 1)
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actor_loss = -(log_prob * minibatch.adv).mean()
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flat_grads = self._get_flat_grad(actor_loss, self.actor, retain_graph=True).detach()
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# direction: calculate natural gradient
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with torch.no_grad():
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old_dist = self(minibatch).dist
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kl = kl_divergence(old_dist, dist).mean()
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# calculate first order gradient of kl with respect to theta
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flat_kl_grad = self._get_flat_grad(kl, self.actor, create_graph=True)
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search_direction = -self._conjugate_gradients(flat_grads, flat_kl_grad, nsteps=10)
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# step
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with torch.no_grad():
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flat_params = torch.cat(
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[param.data.view(-1) for param in self.actor.parameters()],
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)
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new_flat_params = flat_params + self.actor_step_size * search_direction
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self._set_from_flat_params(self.actor, new_flat_params)
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new_dist = self(minibatch).dist
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kl = kl_divergence(old_dist, new_dist).mean()
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# optimize critic
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for _ in range(self.optim_critic_iters):
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value = self.critic(minibatch.obs).flatten()
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vf_loss = F.mse_loss(minibatch.returns, value)
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self.optim.zero_grad()
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vf_loss.backward()
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self.optim.step()
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actor_losses.append(actor_loss.item())
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vf_losses.append(vf_loss.item())
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kls.append(kl.item())
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actor_loss_summary_stat = SequenceSummaryStats.from_sequence(actor_losses)
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vf_loss_summary_stat = SequenceSummaryStats.from_sequence(vf_losses)
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kl_summary_stat = SequenceSummaryStats.from_sequence(kls)
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return NPGTrainingStats( # type: ignore[return-value]
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actor_loss=actor_loss_summary_stat,
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vf_loss=vf_loss_summary_stat,
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kl=kl_summary_stat,
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)
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def _MVP(self, v: torch.Tensor, flat_kl_grad: torch.Tensor) -> torch.Tensor:
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"""Matrix vector product."""
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# caculate second order gradient of kl with respect to theta
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kl_v = (flat_kl_grad * v).sum()
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flat_kl_grad_grad = self._get_flat_grad(kl_v, self.actor, retain_graph=True).detach()
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return flat_kl_grad_grad + v * self._damping
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def _conjugate_gradients(
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self,
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minibatch: torch.Tensor,
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flat_kl_grad: torch.Tensor,
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nsteps: int = 10,
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residual_tol: float = 1e-10,
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) -> torch.Tensor:
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x = torch.zeros_like(minibatch)
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r, p = minibatch.clone(), minibatch.clone()
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# Note: should be 'r, p = minibatch - MVP(x)', but for x=0, MVP(x)=0.
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# Change if doing warm start.
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rdotr = r.dot(r)
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for _ in range(nsteps):
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z = self._MVP(p, flat_kl_grad)
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alpha = rdotr / p.dot(z)
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x += alpha * p
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r -= alpha * z
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new_rdotr = r.dot(r)
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if new_rdotr < residual_tol:
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break
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p = r + new_rdotr / rdotr * p
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rdotr = new_rdotr
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return x
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def _get_flat_grad(self, y: torch.Tensor, model: nn.Module, **kwargs: Any) -> torch.Tensor:
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grads = torch.autograd.grad(y, model.parameters(), **kwargs) # type: ignore
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return torch.cat([grad.reshape(-1) for grad in grads])
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def _set_from_flat_params(self, model: nn.Module, flat_params: torch.Tensor) -> nn.Module:
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prev_ind = 0
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for param in model.parameters():
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flat_size = int(np.prod(list(param.size())))
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param.data.copy_(flat_params[prev_ind : prev_ind + flat_size].view(param.size()))
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prev_ind += flat_size
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return model
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