| |
| import argparse |
| import os |
| import random |
| import time |
| from distutils.util import strtobool |
|
|
| import gymnasium as gym |
| import numpy as np |
| import torch |
| import torch.nn as nn |
| import torch.optim as optim |
| from torch.distributions.normal import Normal |
| from torch.utils.tensorboard import SummaryWriter |
|
|
|
|
| def parse_args(): |
| |
| parser = argparse.ArgumentParser() |
| parser.add_argument("--exp-name", type=str, default=os.path.basename(__file__).rstrip(".py"), |
| help="the name of this experiment") |
| parser.add_argument("--seed", type=int, default=1, |
| help="seed of the experiment") |
| parser.add_argument("--torch-deterministic", type=lambda x: bool(strtobool(x)), default=True, nargs="?", const=True, |
| help="if toggled, `torch.backends.cudnn.deterministic=False`") |
| parser.add_argument("--cuda", type=lambda x: bool(strtobool(x)), default=True, nargs="?", const=True, |
| help="if toggled, cuda will be enabled by default") |
| parser.add_argument("--track", type=lambda x: bool(strtobool(x)), default=False, nargs="?", const=True, |
| help="if toggled, this experiment will be tracked with Weights and Biases") |
| parser.add_argument("--wandb-project-name", type=str, default="cleanRL", |
| help="the wandb's project name") |
| parser.add_argument("--wandb-entity", type=str, default=None, |
| help="the entity (team) of wandb's project") |
| parser.add_argument("--capture-video", type=lambda x: bool(strtobool(x)), default=False, nargs="?", const=True, |
| help="whether to capture videos of the agent performances (check out `videos` folder)") |
| parser.add_argument("--save-model", type=lambda x: bool(strtobool(x)), default=False, nargs="?", const=True, |
| help="whether to save model into the `runs/{run_name}` folder") |
| parser.add_argument("--upload-model", type=lambda x: bool(strtobool(x)), default=False, nargs="?", const=True, |
| help="whether to upload the saved model to huggingface") |
| parser.add_argument("--hf-entity", type=str, default="", |
| help="the user or org name of the model repository from the Hugging Face Hub") |
|
|
| |
| parser.add_argument("--env-id", type=str, default="HalfCheetah-v4", |
| help="the id of the environment") |
| parser.add_argument("--total-timesteps", type=int, default=1000000, |
| help="total timesteps of the experiments") |
| parser.add_argument("--learning-rate", type=float, default=3e-4, |
| help="the learning rate of the optimizer") |
| parser.add_argument("--num-envs", type=int, default=1, |
| help="the number of parallel game environments") |
| parser.add_argument("--num-steps", type=int, default=2048, |
| help="the number of steps to run in each environment per policy rollout") |
| parser.add_argument("--anneal-lr", type=lambda x: bool(strtobool(x)), default=True, nargs="?", const=True, |
| help="Toggle learning rate annealing for policy and value networks") |
| parser.add_argument("--gamma", type=float, default=0.99, |
| help="the discount factor gamma") |
| parser.add_argument("--gae-lambda", type=float, default=0.95, |
| help="the lambda for the general advantage estimation") |
| parser.add_argument("--num-minibatches", type=int, default=32, |
| help="the number of mini-batches") |
| parser.add_argument("--update-epochs", type=int, default=10, |
| help="the K epochs to update the policy") |
| parser.add_argument("--norm-adv", type=lambda x: bool(strtobool(x)), default=True, nargs="?", const=True, |
| help="Toggles advantages normalization") |
| parser.add_argument("--clip-coef", type=float, default=0.2, |
| help="the surrogate clipping coefficient") |
| parser.add_argument("--clip-vloss", type=lambda x: bool(strtobool(x)), default=True, nargs="?", const=True, |
| help="Toggles whether or not to use a clipped loss for the value function, as per the paper.") |
| parser.add_argument("--ent-coef", type=float, default=0.0, |
| help="coefficient of the entropy") |
| parser.add_argument("--vf-coef", type=float, default=0.5, |
| help="coefficient of the value function") |
| parser.add_argument("--max-grad-norm", type=float, default=0.5, |
| help="the maximum norm for the gradient clipping") |
| parser.add_argument("--target-kl", type=float, default=None, |
| help="the target KL divergence threshold") |
| args = parser.parse_args() |
| args.batch_size = int(args.num_envs * args.num_steps) |
| args.minibatch_size = int(args.batch_size // args.num_minibatches) |
| |
| return args |
|
|
|
|
| def make_env(env_id, idx, capture_video, run_name, gamma): |
| def thunk(): |
| if capture_video and idx == 0: |
| env = gym.make(env_id, render_mode="rgb_array") |
| env = gym.wrappers.RecordVideo(env, f"videos/{run_name}") |
| else: |
| env = gym.make(env_id) |
| env = gym.wrappers.FlattenObservation(env) |
| env = gym.wrappers.RecordEpisodeStatistics(env) |
| env = gym.wrappers.ClipAction(env) |
| env = gym.wrappers.NormalizeObservation(env) |
| env = gym.wrappers.TransformObservation(env, lambda obs: np.clip(obs, -10, 10)) |
| env = gym.wrappers.NormalizeReward(env, gamma=gamma) |
| env = gym.wrappers.TransformReward(env, lambda reward: np.clip(reward, -10, 10)) |
| return env |
|
|
| return thunk |
|
|
|
|
| def layer_init(layer, std=np.sqrt(2), bias_const=0.0): |
| torch.nn.init.orthogonal_(layer.weight, std) |
| torch.nn.init.constant_(layer.bias, bias_const) |
| return layer |
|
|
|
|
| class Agent(nn.Module): |
| def __init__(self, envs): |
| super().__init__() |
| self.critic = nn.Sequential( |
| layer_init(nn.Linear(np.array(envs.single_observation_space.shape).prod(), 64)), |
| nn.Tanh(), |
| layer_init(nn.Linear(64, 64)), |
| nn.Tanh(), |
| layer_init(nn.Linear(64, 1), std=1.0), |
| ) |
| self.actor_mean = nn.Sequential( |
| layer_init(nn.Linear(np.array(envs.single_observation_space.shape).prod(), 64)), |
| nn.Tanh(), |
| layer_init(nn.Linear(64, 64)), |
| nn.Tanh(), |
| layer_init(nn.Linear(64, np.prod(envs.single_action_space.shape)), std=0.01), |
| ) |
| self.actor_logstd = nn.Parameter(torch.zeros(1, np.prod(envs.single_action_space.shape))) |
|
|
| def get_value(self, x): |
| return self.critic(x) |
|
|
| def get_action_and_value(self, x, action=None): |
| action_mean = self.actor_mean(x) |
| action_logstd = self.actor_logstd.expand_as(action_mean) |
| action_std = torch.exp(action_logstd) |
| probs = Normal(action_mean, action_std) |
| if action is None: |
| action = probs.sample() |
| return action, probs.log_prob(action).sum(1), probs.entropy().sum(1), self.critic(x) |
|
|
|
|
| if __name__ == "__main__": |
| args = parse_args() |
| run_name = f"{args.env_id}__{args.exp_name}__{args.seed}__{int(time.time())}" |
| if args.track: |
| import wandb |
|
|
| wandb.init( |
| project=args.wandb_project_name, |
| entity=args.wandb_entity, |
| sync_tensorboard=True, |
| config=vars(args), |
| name=run_name, |
| monitor_gym=True, |
| save_code=True, |
| ) |
| writer = SummaryWriter(f"runs/{run_name}") |
| writer.add_text( |
| "hyperparameters", |
| "|param|value|\n|-|-|\n%s" % ("\n".join([f"|{key}|{value}|" for key, value in vars(args).items()])), |
| ) |
|
|
| |
| random.seed(args.seed) |
| np.random.seed(args.seed) |
| torch.manual_seed(args.seed) |
| torch.backends.cudnn.deterministic = args.torch_deterministic |
|
|
| device = torch.device("cuda" if torch.cuda.is_available() and args.cuda else "cpu") |
|
|
| |
| envs = gym.vector.SyncVectorEnv( |
| [make_env(args.env_id, i, args.capture_video, run_name, args.gamma) for i in range(args.num_envs)] |
| ) |
| assert isinstance(envs.single_action_space, gym.spaces.Box), "only continuous action space is supported" |
|
|
| agent = Agent(envs).to(device) |
| optimizer = optim.Adam(agent.parameters(), lr=args.learning_rate, eps=1e-5) |
|
|
| |
| obs = torch.zeros((args.num_steps, args.num_envs) + envs.single_observation_space.shape).to(device) |
| actions = torch.zeros((args.num_steps, args.num_envs) + envs.single_action_space.shape).to(device) |
| logprobs = torch.zeros((args.num_steps, args.num_envs)).to(device) |
| rewards = torch.zeros((args.num_steps, args.num_envs)).to(device) |
| dones = torch.zeros((args.num_steps, args.num_envs)).to(device) |
| values = torch.zeros((args.num_steps, args.num_envs)).to(device) |
|
|
| |
| global_step = 0 |
| start_time = time.time() |
| next_obs, _ = envs.reset(seed=args.seed) |
| next_obs = torch.Tensor(next_obs).to(device) |
| next_done = torch.zeros(args.num_envs).to(device) |
| num_updates = args.total_timesteps // args.batch_size |
|
|
| for update in range(1, num_updates + 1): |
| |
| if args.anneal_lr: |
| frac = 1.0 - (update - 1.0) / num_updates |
| lrnow = frac * args.learning_rate |
| optimizer.param_groups[0]["lr"] = lrnow |
|
|
| for step in range(0, args.num_steps): |
| global_step += 1 * args.num_envs |
| obs[step] = next_obs |
| dones[step] = next_done |
|
|
| |
| with torch.no_grad(): |
| action, logprob, _, value = agent.get_action_and_value(next_obs) |
| values[step] = value.flatten() |
| actions[step] = action |
| logprobs[step] = logprob |
|
|
| |
| next_obs, reward, terminations, truncations, infos = envs.step(action.cpu().numpy()) |
| done = np.logical_or(terminations, truncations) |
| rewards[step] = torch.tensor(reward).to(device).view(-1) |
| next_obs, next_done = torch.Tensor(next_obs).to(device), torch.Tensor(done).to(device) |
|
|
| |
| if "final_info" not in infos: |
| continue |
|
|
| for info in infos["final_info"]: |
| |
| if info is None: |
| continue |
| print(f"global_step={global_step}, episodic_return={info['episode']['r']}") |
| writer.add_scalar("charts/episodic_return", info["episode"]["r"], global_step) |
| writer.add_scalar("charts/episodic_length", info["episode"]["l"], global_step) |
|
|
| |
| with torch.no_grad(): |
| next_value = agent.get_value(next_obs).reshape(1, -1) |
| advantages = torch.zeros_like(rewards).to(device) |
| lastgaelam = 0 |
| for t in reversed(range(args.num_steps)): |
| if t == args.num_steps - 1: |
| nextnonterminal = 1.0 - next_done |
| nextvalues = next_value |
| else: |
| nextnonterminal = 1.0 - dones[t + 1] |
| nextvalues = values[t + 1] |
| delta = rewards[t] + args.gamma * nextvalues * nextnonterminal - values[t] |
| advantages[t] = lastgaelam = delta + args.gamma * args.gae_lambda * nextnonterminal * lastgaelam |
| returns = advantages + values |
|
|
| |
| b_obs = obs.reshape((-1,) + envs.single_observation_space.shape) |
| b_logprobs = logprobs.reshape(-1) |
| b_actions = actions.reshape((-1,) + envs.single_action_space.shape) |
| b_advantages = advantages.reshape(-1) |
| b_returns = returns.reshape(-1) |
| b_values = values.reshape(-1) |
|
|
| |
| b_inds = np.arange(args.batch_size) |
| clipfracs = [] |
| for epoch in range(args.update_epochs): |
| np.random.shuffle(b_inds) |
| for start in range(0, args.batch_size, args.minibatch_size): |
| end = start + args.minibatch_size |
| mb_inds = b_inds[start:end] |
|
|
| _, newlogprob, entropy, newvalue = agent.get_action_and_value(b_obs[mb_inds], b_actions[mb_inds]) |
| logratio = newlogprob - b_logprobs[mb_inds] |
| ratio = logratio.exp() |
|
|
| with torch.no_grad(): |
| |
| old_approx_kl = (-logratio).mean() |
| approx_kl = ((ratio - 1) - logratio).mean() |
| clipfracs += [((ratio - 1.0).abs() > args.clip_coef).float().mean().item()] |
|
|
| mb_advantages = b_advantages[mb_inds] |
| if args.norm_adv: |
| mb_advantages = (mb_advantages - mb_advantages.mean()) / (mb_advantages.std() + 1e-8) |
|
|
| |
| pg_loss1 = -mb_advantages * ratio |
| pg_loss2 = -mb_advantages * torch.clamp(ratio, 1 - args.clip_coef, 1 + args.clip_coef) |
| pg_loss = torch.max(pg_loss1, pg_loss2).mean() |
|
|
| |
| newvalue = newvalue.view(-1) |
| if args.clip_vloss: |
| v_loss_unclipped = (newvalue - b_returns[mb_inds]) ** 2 |
| v_clipped = b_values[mb_inds] + torch.clamp( |
| newvalue - b_values[mb_inds], |
| -args.clip_coef, |
| args.clip_coef, |
| ) |
| v_loss_clipped = (v_clipped - b_returns[mb_inds]) ** 2 |
| v_loss_max = torch.max(v_loss_unclipped, v_loss_clipped) |
| v_loss = 0.5 * v_loss_max.mean() |
| else: |
| v_loss = 0.5 * ((newvalue - b_returns[mb_inds]) ** 2).mean() |
|
|
| entropy_loss = entropy.mean() |
| loss = pg_loss - args.ent_coef * entropy_loss + v_loss * args.vf_coef |
|
|
| optimizer.zero_grad() |
| loss.backward() |
| nn.utils.clip_grad_norm_(agent.parameters(), args.max_grad_norm) |
| optimizer.step() |
|
|
| if args.target_kl is not None: |
| if approx_kl > args.target_kl: |
| break |
|
|
| y_pred, y_true = b_values.cpu().numpy(), b_returns.cpu().numpy() |
| var_y = np.var(y_true) |
| explained_var = np.nan if var_y == 0 else 1 - np.var(y_true - y_pred) / var_y |
|
|
| |
| writer.add_scalar("charts/learning_rate", optimizer.param_groups[0]["lr"], global_step) |
| writer.add_scalar("losses/value_loss", v_loss.item(), global_step) |
| writer.add_scalar("losses/policy_loss", pg_loss.item(), global_step) |
| writer.add_scalar("losses/entropy", entropy_loss.item(), global_step) |
| writer.add_scalar("losses/old_approx_kl", old_approx_kl.item(), global_step) |
| writer.add_scalar("losses/approx_kl", approx_kl.item(), global_step) |
| writer.add_scalar("losses/clipfrac", np.mean(clipfracs), global_step) |
| writer.add_scalar("losses/explained_variance", explained_var, global_step) |
| print("SPS:", int(global_step / (time.time() - start_time))) |
| writer.add_scalar("charts/SPS", int(global_step / (time.time() - start_time)), global_step) |
|
|
| if args.save_model: |
| model_path = f"runs/{run_name}/{args.exp_name}.cleanrl_model" |
| torch.save(agent.state_dict(), model_path) |
| print(f"model saved to {model_path}") |
| from cleanrl_utils.evals.ppo_eval import evaluate |
|
|
| episodic_returns = evaluate( |
| model_path, |
| make_env, |
| args.env_id, |
| eval_episodes=10, |
| run_name=f"{run_name}-eval", |
| Model=Agent, |
| device=device, |
| gamma=args.gamma, |
| ) |
| for idx, episodic_return in enumerate(episodic_returns): |
| writer.add_scalar("eval/episodic_return", episodic_return, idx) |
|
|
| if args.upload_model: |
| from cleanrl_utils.huggingface import push_to_hub |
|
|
| repo_name = f"{args.env_id}-{args.exp_name}-seed{args.seed}" |
| repo_id = f"{args.hf_entity}/{repo_name}" if args.hf_entity else repo_name |
| push_to_hub(args, episodic_returns, repo_id, "PPO", f"runs/{run_name}", f"videos/{run_name}-eval") |
|
|
| envs.close() |
| writer.close() |
|
|