Factored out Gaussian Collection for RolloutBuffer
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@ -6,6 +6,10 @@ from gym import spaces
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from stable_baselines3.common.buffers import RolloutBuffer
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from stable_baselines3.common.vec_env import VecNormalize
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from stable_baselines3.common.vec_env import VecEnv
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from stable_baselines3.common.callbacks import BaseCallback
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from stable_baselines3.common.utils import obs_as_tensor
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# TRL requires the origina mean and covariance from the policy when the datapoint was created.
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# GaussianRolloutBuffer extends the RolloutBuffer by these two fields
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@ -110,3 +114,117 @@ class GaussianRolloutBuffer(RolloutBuffer):
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self.stds[batch_inds].reshape((len(batch_inds), -1)),
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)
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return GaussianRolloutBufferSamples(*tuple(map(self.to_torch, data)))
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class GaussianRolloutCollectorAuxclass():
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def _setup_model(self) -> None:
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super()._setup_model()
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self.rollout_buffer = GaussianRolloutBuffer(
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self.n_steps,
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self.observation_space,
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self.action_space,
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device=self.device,
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gamma=self.gamma,
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gae_lambda=self.gae_lambda,
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n_envs=self.n_envs,
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)
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def collect_rollouts(
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self,
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env: VecEnv,
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callback: BaseCallback,
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rollout_buffer: RolloutBuffer,
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n_rollout_steps: int,
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) -> bool:
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"""
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Collect experiences using the current policy and fill a ``RolloutBuffer``.
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The term rollout here refers to the model-free notion and should not
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be used with the concept of rollout used in model-based RL or planning.
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:param env: The training environment
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:param callback: Callback that will be called at each step
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(and at the beginning and end of the rollout)
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:param rollout_buffer: Buffer to fill with rollouts
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:param n_steps: Number of experiences to collect per environment
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:return: True if function returned with at least `n_rollout_steps`
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collected, False if callback terminated rollout prematurely.
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"""
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assert self._last_obs is not None, "No previous observation was provided"
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# Switch to eval mode (this affects batch norm / dropout)
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self.policy.set_training_mode(False)
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n_steps = 0
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rollout_buffer.reset()
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# Sample new weights for the state dependent exploration
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if self.use_sde:
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self.policy.reset_noise(env.num_envs)
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callback.on_rollout_start()
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while n_steps < n_rollout_steps:
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if self.use_sde and self.sde_sample_freq > 0 and n_steps % self.sde_sample_freq == 0:
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# Sample a new noise matrix
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self.policy.reset_noise(env.num_envs)
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with th.no_grad():
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# Convert to pytorch tensor or to TensorDict
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obs_tensor = obs_as_tensor(self._last_obs, self.device)
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actions, values, log_probs = self.policy(obs_tensor)
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dist = self.policy.get_distribution(obs_tensor).distribution
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mean, std = dist.mean, dist.stddev
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actions = actions.cpu().numpy()
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# Rescale and perform action
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clipped_actions = actions
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# Clip the actions to avoid out of bound error
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if isinstance(self.action_space, spaces.Box):
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clipped_actions = np.clip(
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actions, self.action_space.low, self.action_space.high)
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new_obs, rewards, dones, infos = env.step(clipped_actions)
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self.num_timesteps += env.num_envs
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# Give access to local variables
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callback.update_locals(locals())
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if callback.on_step() is False:
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return False
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self._update_info_buffer(infos)
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n_steps += 1
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if isinstance(self.action_space, spaces.Discrete):
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# Reshape in case of discrete action
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actions = actions.reshape(-1, 1)
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# Handle timeout by bootstraping with value function
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# see GitHub issue #633
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for idx, done in enumerate(dones):
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if (
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done
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and infos[idx].get("terminal_observation") is not None
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and infos[idx].get("TimeLimit.truncated", False)
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):
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terminal_obs = self.policy.obs_to_tensor(
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infos[idx]["terminal_observation"])[0]
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with th.no_grad():
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terminal_value = self.policy.predict_values(terminal_obs)[
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0]
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rewards[idx] += self.gamma * terminal_value
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rollout_buffer.add(self._last_obs, actions, rewards,
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self._last_episode_starts, values, log_probs, mean, std)
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self._last_obs = new_obs
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self._last_episode_starts = dones
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with th.no_grad():
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# Compute value for the last timestep
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values = self.policy.predict_values(
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obs_as_tensor(new_obs, self.device))
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rollout_buffer.compute_returns_and_advantage(
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last_values=values, dones=dones)
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callback.on_rollout_end()
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return True
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