| from typing import Any, Dict, Optional, Type, Union |
|
|
| import numpy as np |
| import torch as th |
| from gym import spaces |
| from torch.nn import functional as F |
|
|
| from stable_baselines3.common import logger |
| from stable_baselines3.common.on_policy_algorithm import OnPolicyAlgorithm |
| from stable_baselines3.common.policies import ActorCriticPolicy |
| from stable_baselines3.common.type_aliases import GymEnv, MaybeCallback, Schedule |
| from stable_baselines3.common.utils import explained_variance, get_schedule_fn |
|
|
|
|
| class PPO(OnPolicyAlgorithm): |
| """ |
| Proximal Policy Optimization algorithm (PPO) (clip version) |
| |
| Paper: https://arxiv.org/abs/1707.06347 |
| Code: This implementation borrows code from OpenAI Spinning Up (https://github.com/openai/spinningup/) |
| https://github.com/ikostrikov/pytorch-a2c-ppo-acktr-gail and |
| and Stable Baselines (PPO2 from https://github.com/hill-a/stable-baselines) |
| |
| Introduction to PPO: https://spinningup.openai.com/en/latest/algorithms/ppo.html |
| |
| :param policy: The policy model to use (MlpPolicy, CnnPolicy, ...) |
| :param env: The environment to learn from (if registered in Gym, can be str) |
| :param learning_rate: The learning rate, it can be a function |
| of the current progress remaining (from 1 to 0) |
| :param n_steps: The number of steps to run for each environment per update |
| (i.e. batch size is n_steps * n_env where n_env is number of environment copies running in parallel) |
| :param batch_size: Minibatch size |
| :param n_epochs: Number of epoch when optimizing the surrogate loss |
| :param gamma: Discount factor |
| :param gae_lambda: Factor for trade-off of bias vs variance for Generalized Advantage Estimator |
| :param clip_range: Clipping parameter, it can be a function of the current progress |
| remaining (from 1 to 0). |
| :param clip_range_vf: Clipping parameter for the value function, |
| it can be a function of the current progress remaining (from 1 to 0). |
| This is a parameter specific to the OpenAI implementation. If None is passed (default), |
| no clipping will be done on the value function. |
| IMPORTANT: this clipping depends on the reward scaling. |
| :param ent_coef: Entropy coefficient for the loss calculation |
| :param vf_coef: Value function coefficient for the loss calculation |
| :param max_grad_norm: The maximum value for the gradient clipping |
| :param use_sde: Whether to use generalized State Dependent Exploration (gSDE) |
| instead of action noise exploration (default: False) |
| :param sde_sample_freq: Sample a new noise matrix every n steps when using gSDE |
| Default: -1 (only sample at the beginning of the rollout) |
| :param target_kl: Limit the KL divergence between updates, |
| because the clipping is not enough to prevent large update |
| see issue #213 (cf https://github.com/hill-a/stable-baselines/issues/213) |
| By default, there is no limit on the kl div. |
| :param tensorboard_log: the log location for tensorboard (if None, no logging) |
| :param create_eval_env: Whether to create a second environment that will be |
| used for evaluating the agent periodically. (Only available when passing string for the environment) |
| :param policy_kwargs: additional arguments to be passed to the policy on creation |
| :param verbose: the verbosity level: 0 no output, 1 info, 2 debug |
| :param seed: Seed for the pseudo random generators |
| :param device: Device (cpu, cuda, ...) on which the code should be run. |
| Setting it to auto, the code will be run on the GPU if possible. |
| :param _init_setup_model: Whether or not to build the network at the creation of the instance |
| """ |
|
|
| def __init__( |
| self, |
| policy: Union[str, Type[ActorCriticPolicy]], |
| env: Union[GymEnv, str], |
| learning_rate: Union[float, Schedule] = 3e-4, |
| n_steps: int = 2048, |
| batch_size: Optional[int] = 64, |
| n_epochs: int = 10, |
| gamma: float = 0.99, |
| gae_lambda: float = 0.95, |
| clip_range: Union[float, Schedule] = 0.2, |
| clip_range_vf: Union[None, float, Schedule] = None, |
| ent_coef: float = 0.0, |
| vf_coef: float = 0.5, |
| max_grad_norm: float = 0.5, |
| use_sde: bool = False, |
| sde_sample_freq: int = -1, |
| target_kl: Optional[float] = None, |
| tensorboard_log: Optional[str] = None, |
| create_eval_env: bool = False, |
| policy_kwargs: Optional[Dict[str, Any]] = None, |
| verbose: int = 0, |
| seed: Optional[int] = None, |
| device: Union[th.device, str] = "auto", |
| _init_setup_model: bool = True, |
| ): |
|
|
| super(PPO, self).__init__( |
| policy, |
| env, |
| learning_rate=learning_rate, |
| n_steps=n_steps, |
| gamma=gamma, |
| gae_lambda=gae_lambda, |
| ent_coef=ent_coef, |
| vf_coef=vf_coef, |
| max_grad_norm=max_grad_norm, |
| use_sde=use_sde, |
| sde_sample_freq=sde_sample_freq, |
| tensorboard_log=tensorboard_log, |
| policy_kwargs=policy_kwargs, |
| verbose=verbose, |
| device=device, |
| create_eval_env=create_eval_env, |
| seed=seed, |
| _init_setup_model=False, |
| supported_action_spaces=( |
| spaces.Box, |
| spaces.Discrete, |
| spaces.MultiDiscrete, |
| spaces.MultiBinary, |
| ), |
| ) |
|
|
| self.batch_size = batch_size |
| self.n_epochs = n_epochs |
| self.clip_range = clip_range |
| self.clip_range_vf = clip_range_vf |
| self.target_kl = target_kl |
|
|
| if _init_setup_model: |
| self._setup_model() |
|
|
| def _setup_model(self) -> None: |
| super(PPO, self)._setup_model() |
|
|
| |
| self.clip_range = get_schedule_fn(self.clip_range) |
| if self.clip_range_vf is not None: |
| if isinstance(self.clip_range_vf, (float, int)): |
| assert self.clip_range_vf > 0, "`clip_range_vf` must be positive, " "pass `None` to deactivate vf clipping" |
|
|
| self.clip_range_vf = get_schedule_fn(self.clip_range_vf) |
|
|
| def train(self) -> None: |
| """ |
| Update policy using the currently gathered rollout buffer. |
| """ |
| |
| self._update_learning_rate(self.policy.optimizer) |
| |
| clip_range = self.clip_range(self._current_progress_remaining) |
| |
| if self.clip_range_vf is not None: |
| clip_range_vf = self.clip_range_vf(self._current_progress_remaining) |
|
|
| entropy_losses, all_kl_divs = [], [] |
| pg_losses, value_losses = [], [] |
| clip_fractions = [] |
|
|
| |
| for epoch in range(self.n_epochs): |
| approx_kl_divs = [] |
| |
| for rollout_data in self.rollout_buffer.get(self.batch_size): |
| actions = rollout_data.actions |
| if isinstance(self.action_space, spaces.Discrete): |
| |
| actions = rollout_data.actions.long().flatten() |
|
|
| |
| |
| |
| if self.use_sde: |
| self.policy.reset_noise(self.batch_size) |
|
|
| values, log_prob, entropy = self.policy.evaluate_actions(rollout_data.observations, actions) |
| values = values.flatten() |
| |
| advantages = rollout_data.advantages |
| advantages = (advantages - advantages.mean()) / (advantages.std() + 1e-8) |
|
|
| |
| ratio = th.exp(log_prob - rollout_data.old_log_prob) |
|
|
| |
| policy_loss_1 = advantages * ratio |
| policy_loss_2 = advantages * th.clamp(ratio, 1 - clip_range, 1 + clip_range) |
| policy_loss = -th.min(policy_loss_1, policy_loss_2).mean() |
|
|
| |
| pg_losses.append(policy_loss.item()) |
| clip_fraction = th.mean((th.abs(ratio - 1) > clip_range).float()).item() |
| clip_fractions.append(clip_fraction) |
|
|
| if self.clip_range_vf is None: |
| |
| values_pred = values |
| else: |
| |
| |
| values_pred = rollout_data.old_values + th.clamp( |
| values - rollout_data.old_values, -clip_range_vf, clip_range_vf |
| ) |
| |
| value_loss = F.mse_loss(rollout_data.returns, values_pred) |
| value_losses.append(value_loss.item()) |
|
|
| |
| if entropy is None: |
| |
| entropy_loss = -th.mean(-log_prob) |
| else: |
| entropy_loss = -th.mean(entropy) |
|
|
| entropy_losses.append(entropy_loss.item()) |
|
|
| loss = policy_loss + self.ent_coef * entropy_loss + self.vf_coef * value_loss |
|
|
| |
| self.policy.optimizer.zero_grad() |
| loss.backward() |
| |
| th.nn.utils.clip_grad_norm_(self.policy.parameters(), self.max_grad_norm) |
| self.policy.optimizer.step() |
| approx_kl_divs.append(th.mean(rollout_data.old_log_prob - log_prob).detach().cpu().numpy()) |
|
|
| all_kl_divs.append(np.mean(approx_kl_divs)) |
|
|
| if self.target_kl is not None and np.mean(approx_kl_divs) > 1.5 * self.target_kl: |
| print(f"Early stopping at step {epoch} due to reaching max kl: {np.mean(approx_kl_divs):.2f}") |
| break |
|
|
| self._n_updates += self.n_epochs |
| explained_var = explained_variance(self.rollout_buffer.values.flatten(), self.rollout_buffer.returns.flatten()) |
|
|
| |
| logger.record("train/entropy_loss", np.mean(entropy_losses)) |
| logger.record("train/policy_gradient_loss", np.mean(pg_losses)) |
| logger.record("train/value_loss", np.mean(value_losses)) |
| logger.record("train/approx_kl", np.mean(approx_kl_divs)) |
| logger.record("train/clip_fraction", np.mean(clip_fractions)) |
| logger.record("train/loss", loss.item()) |
| logger.record("train/explained_variance", explained_var) |
| if hasattr(self.policy, "log_std"): |
| logger.record("train/std", th.exp(self.policy.log_std).mean().item()) |
|
|
| logger.record("train/n_updates", self._n_updates, exclude="tensorboard") |
| logger.record("train/clip_range", clip_range) |
| if self.clip_range_vf is not None: |
| logger.record("train/clip_range_vf", clip_range_vf) |
|
|
| def learn( |
| self, |
| total_timesteps: int, |
| callback: MaybeCallback = None, |
| log_interval: int = 1, |
| eval_env: Optional[GymEnv] = None, |
| eval_freq: int = -1, |
| n_eval_episodes: int = 5, |
| tb_log_name: str = "PPO", |
| eval_log_path: Optional[str] = None, |
| reset_num_timesteps: bool = True, |
| ) -> "PPO": |
|
|
| return super(PPO, self).learn( |
| total_timesteps=total_timesteps, |
| callback=callback, |
| log_interval=log_interval, |
| eval_env=eval_env, |
| eval_freq=eval_freq, |
| n_eval_episodes=n_eval_episodes, |
| tb_log_name=tb_log_name, |
| eval_log_path=eval_log_path, |
| reset_num_timesteps=reset_num_timesteps, |
| ) |
|
|