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[Feature, Example] A3C Atari Implementation for TorchRL #3001
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      5d38241
              
                Add code for A3C
              
              
                simeetnayan81 748b673
              
                Add readme
              
              
                simeetnayan81 ecbec8b
              
                log only worker-0 stats
              
              
                simeetnayan81 72eea77
              
                Add linux test script file, and sota-check for a3c
              
              
                simeetnayan81 7b9ba6b
              
                Merge branch 'main' into a3c-implementation
              
              
                simeetnayan81 d95de87
              
                modify sota-check a3c
              
              
                simeetnayan81 c4184f6
              
                Add code for A3C
              
              
                simeetnayan81 7cfa7d7
              
                Add readme
              
              
                simeetnayan81 87ec6f3
              
                log only worker-0 stats
              
              
                simeetnayan81 bba7ba5
              
                Add linux test script file, and sota-check for a3c
              
              
                simeetnayan81 b49e35a
              
                modify sota-check a3c
              
              
                simeetnayan81 a6eb18d
              
                amend
              
              
                vmoens 836f03e
              
                Merge branch 'pytorch:main' into a3c-implementation
              
              
                simeetnayan81 19209e2
              
                Move SharedAdam to utils
              
              
                simeetnayan81 3ebad77
              
                Move SharedAdam to utils
              
              
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              | Original file line number | Diff line number | Diff line change | 
|---|---|---|
| @@ -0,0 +1,27 @@ | ||
| #!/bin/bash | ||
|  | ||
| #SBATCH --job-name=a3c_atari | ||
| #SBATCH --ntasks=32 | ||
| #SBATCH --cpus-per-task=1 | ||
| #SBATCH --gres=gpu:1 | ||
| #SBATCH --output=slurm_logs/a3c_atari_%j.txt | ||
| #SBATCH --error=slurm_errors/a3c_atari_%j.txt | ||
|  | ||
| current_commit=$(git rev-parse --short HEAD) | ||
| project_name="torchrl-example-check-$current_commit" | ||
| group_name="a3c_atari" | ||
|  | ||
| export PYTHONPATH=$(dirname $(dirname $PWD)) | ||
| python $PYTHONPATH/sota-implementations/a3c/a3c_atari.py \ | ||
| logger.backend=wandb \ | ||
| logger.project_name="$project_name" \ | ||
| logger.group_name="$group_name" | ||
|  | ||
| # Capture the exit status of the Python command | ||
| exit_status=$? | ||
| # Write the exit status to a file | ||
| if [ $exit_status -eq 0 ]; then | ||
| echo "${group_name}_${SLURM_JOB_ID}=success" >>> report.log | ||
| else | ||
| echo "${group_name}_${SLURM_JOB_ID}=error" >>> report.log | ||
| fi | 
  
    
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              | Original file line number | Diff line number | Diff line change | 
|---|---|---|
| @@ -0,0 +1,21 @@ | ||
| # Reproducing Asynchronous Advantage Actor Critic (A3C) Algorithm Results | ||
|  | ||
| This repository contains scripts that enable training agents using the Asynchronous Advantage Actor Critic (A3C) Algorithm on Atari environments. We follow the original paper [Asynchronous Methods for Deep Reinforcement Learning](https://arxiv.org/abs/1602.01783) by Mnih et al. (2016) to implement the A3C algorithm with a fixed number of steps during the collection phase. | ||
|  | ||
| ## Examples Structure | ||
|  | ||
| Please note that each example is independent of each other for the sake of simplicity. Each example contains the following files: | ||
|  | ||
| 1. **Main Script:** The definition of algorithm components and the training loop can be found in the main script (e.g. `a3c_atari.py`). | ||
|  | ||
| 2. **Utils File:** A utility file is provided to contain various helper functions, generally to create the environment and the models (e.g. `utils_atari.py`). | ||
|  | ||
| 3. **Configuration File:** This file includes default hyperparameters specified in the original paper. Users can modify these hyperparameters to customize their experiments (e.g. `config_atari.yaml`). | ||
|  | ||
| ## Running the Examples | ||
|  | ||
| You can execute the A3C algorithm on Atari environments by running the following command: | ||
|  | ||
| ```bash | ||
| python a3c_atari.py | ||
| ``` | 
  
    
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              | Original file line number | Diff line number | Diff line change | 
|---|---|---|
| @@ -0,0 +1,241 @@ | ||
| from __future__ import annotations | ||
|  | ||
| from copy import deepcopy | ||
|  | ||
| import hydra | ||
| import torch | ||
|  | ||
| import torch.multiprocessing as mp | ||
| import torch.nn as nn | ||
| import torch.optim | ||
| import tqdm | ||
| from tensordict import from_module | ||
|  | ||
| from torchrl.collectors import SyncDataCollector | ||
| from torchrl.objectives import A2CLoss | ||
| from torchrl.objectives.value.advantages import GAE | ||
|  | ||
| from torchrl.record.loggers import generate_exp_name, get_logger | ||
| from utils_atari import make_parallel_env, make_ppo_models, SharedAdam | ||
|  | ||
|  | ||
| torch.set_float32_matmul_precision("high") | ||
|  | ||
|  | ||
| class A3CWorker(mp.Process): | ||
| def __init__( | ||
| self, name, cfg, global_actor, global_critic, optimizer, use_logger=False | ||
| ): | ||
| super().__init__() | ||
| self.name = name | ||
| self.cfg = cfg | ||
|  | ||
| self.optimizer = optimizer | ||
|  | ||
| self.device = cfg.loss.device or torch.device( | ||
| "cuda:0" if torch.cuda.is_available() else "cpu" | ||
| ) | ||
|  | ||
| self.frame_skip = 4 | ||
| self.total_frames = cfg.collector.total_frames // self.frame_skip | ||
| self.frames_per_batch = cfg.collector.frames_per_batch // self.frame_skip | ||
| self.mini_batch_size = cfg.loss.mini_batch_size // self.frame_skip | ||
| self.test_interval = cfg.logger.test_interval // self.frame_skip | ||
|  | ||
| self.global_actor = global_actor | ||
| self.global_critic = global_critic | ||
| self.local_actor = self.copy_model(global_actor) | ||
| self.local_critic = self.copy_model(global_critic) | ||
|  | ||
| logger = None | ||
| if use_logger and cfg.logger.backend: | ||
| exp_name = generate_exp_name( | ||
| "A3C", f"{cfg.logger.exp_name}_{cfg.env.env_name}" | ||
| ) | ||
| logger = get_logger( | ||
| cfg.logger.backend, | ||
| logger_name="a3c", | ||
| experiment_name=exp_name, | ||
| wandb_kwargs={ | ||
| "config": dict(cfg), | ||
| "project": cfg.logger.project_name, | ||
| "group": cfg.logger.group_name, | ||
| }, | ||
| ) | ||
|  | ||
| self.logger = logger | ||
|  | ||
| self.adv_module = GAE( | ||
| gamma=cfg.loss.gamma, | ||
| lmbda=cfg.loss.gae_lambda, | ||
| value_network=self.local_critic, | ||
| average_gae=True, | ||
| vectorized=not cfg.compile.compile, | ||
| device=self.device, | ||
| ) | ||
| self.loss_module = A2CLoss( | ||
| actor_network=self.local_actor, | ||
| critic_network=self.local_critic, | ||
| loss_critic_type=cfg.loss.loss_critic_type, | ||
| entropy_coef=cfg.loss.entropy_coef, | ||
| critic_coef=cfg.loss.critic_coef, | ||
| ) | ||
|  | ||
| self.adv_module.set_keys(done="end-of-life", terminated="end-of-life") | ||
| self.loss_module.set_keys(done="end-of-life", terminated="end-of-life") | ||
|  | ||
| def copy_model(self, model): | ||
| td_params = from_module(model) | ||
| td_new_params = td_params.data.clone() | ||
| td_new_params = td_new_params.apply( | ||
| lambda p0, p1: torch.nn.Parameter(p0) | ||
| if isinstance(p1, torch.nn.Parameter) | ||
| else p0, | ||
| td_params, | ||
| ) | ||
| with td_params.data.to("meta").to_module(model): | ||
| # we don't copy any param here | ||
| new_model = deepcopy(model) | ||
| td_new_params.to_module(new_model) | ||
| return new_model | ||
|  | ||
| def update(self, batch, max_grad_norm=None): | ||
| if max_grad_norm is None: | ||
| max_grad_norm = self.cfg.optim.max_grad_norm | ||
|  | ||
| loss = self.loss_module(batch) | ||
| loss_sum = loss["loss_critic"] + loss["loss_objective"] + loss["loss_entropy"] | ||
| loss_sum.backward() | ||
|  | ||
| for local_param, global_param in zip( | ||
| self.local_actor.parameters(), self.global_actor.parameters() | ||
| ): | ||
| global_param._grad = local_param.grad | ||
|  | ||
| for local_param, global_param in zip( | ||
| self.local_critic.parameters(), self.global_critic.parameters() | ||
| ): | ||
| global_param._grad = local_param.grad | ||
|  | ||
| gn = torch.nn.utils.clip_grad_norm_( | ||
| self.loss_module.parameters(), max_norm=max_grad_norm | ||
| ) | ||
|  | ||
| self.optimizer.step() | ||
| self.optimizer.zero_grad(set_to_none=True) | ||
|  | ||
| return ( | ||
| loss.select("loss_critic", "loss_entropy", "loss_objective") | ||
| .detach() | ||
| .set("grad_norm", gn) | ||
| ) | ||
|  | ||
| def run(self): | ||
| cfg = self.cfg | ||
|  | ||
| collector = SyncDataCollector( | ||
| create_env_fn=make_parallel_env( | ||
| cfg.env.env_name, | ||
| num_envs=cfg.env.num_envs, | ||
| device=self.device, | ||
| gym_backend=cfg.env.backend, | ||
| ), | ||
| policy=self.local_actor, | ||
| frames_per_batch=self.frames_per_batch, | ||
| total_frames=self.total_frames, | ||
| device=self.device, | ||
| storing_device=self.device, | ||
| policy_device=self.device, | ||
| compile_policy=False, | ||
| cudagraph_policy=False, | ||
| ) | ||
|  | ||
| collected_frames = 0 | ||
| num_network_updates = 0 | ||
| pbar = tqdm.tqdm(total=self.total_frames) | ||
| num_mini_batches = self.frames_per_batch // self.mini_batch_size | ||
| total_network_updates = ( | ||
| self.total_frames // self.frames_per_batch | ||
| ) * num_mini_batches | ||
| lr = cfg.optim.lr | ||
|  | ||
| c_iter = iter(collector) | ||
| total_iter = len(collector) | ||
|  | ||
| for _ in range(total_iter): | ||
| data = next(c_iter) | ||
|  | ||
| metrics_to_log = {} | ||
| frames_in_batch = data.numel() | ||
| collected_frames += self.frames_per_batch * self.frame_skip | ||
| pbar.update(frames_in_batch) | ||
|  | ||
| episode_rewards = data["next", "episode_reward"][data["next", "terminated"]] | ||
| if len(episode_rewards) > 0: | ||
| episode_length = data["next", "step_count"][data["next", "terminated"]] | ||
| metrics_to_log["train/reward"] = episode_rewards.mean().item() | ||
| metrics_to_log[ | ||
| "train/episode_length" | ||
| ] = episode_length.sum().item() / len(episode_length) | ||
|  | ||
| with torch.no_grad(): | ||
| data = self.adv_module(data) | ||
| data_reshape = data.reshape(-1) | ||
| losses = [] | ||
|  | ||
| mini_batches = data_reshape.split(self.mini_batch_size) | ||
| There was a problem hiding this comment. Choose a reason for hiding this commentThe reason will be displayed to describe this comment to others. Learn more. To shuffle things a bit I usually rely on a replay buffer instance rather than just splitting the data | ||
| for batch in mini_batches: | ||
| alpha = 1.0 | ||
| if cfg.optim.anneal_lr: | ||
| alpha = 1 - (num_network_updates / total_network_updates) | ||
| for group in self.optimizer.param_groups: | ||
| group["lr"] = lr * alpha | ||
|  | ||
| num_network_updates += 1 | ||
| loss = self.update(batch).clone() | ||
| losses.append(loss) | ||
|  | ||
| losses = torch.stack(losses).float().mean() | ||
|  | ||
| for key, value in losses.items(): | ||
| metrics_to_log[f"train/{key}"] = value.item() | ||
|  | ||
| metrics_to_log["train/lr"] = lr * alpha | ||
|  | ||
| # Logging only on the first worker in the dashboard. | ||
| # Alternatively, you can use a distributed logger, or aggregate metrics from all workers. | ||
| if self.logger: | ||
| for key, value in metrics_to_log.items(): | ||
| self.logger.log_scalar(key, value, collected_frames) | ||
| collector.shutdown() | ||
|  | ||
|  | ||
| @hydra.main(config_path="", config_name="config_atari", version_base="1.1") | ||
| def main(cfg: DictConfig): # noqa: F821 | ||
|  | ||
| global_actor, global_critic, global_critic_head = make_ppo_models( | ||
| cfg.env.env_name, device=cfg.loss.device, gym_backend=cfg.env.backend | ||
| ) | ||
| global_model = nn.ModuleList([global_actor, global_critic_head]) | ||
| global_model.share_memory() | ||
| optimizer = SharedAdam(global_model.parameters(), lr=cfg.optim.lr) | ||
|  | ||
| num_workers = cfg.multiprocessing.num_workers | ||
|  | ||
| workers = [ | ||
| A3CWorker( | ||
| f"worker_{i}", | ||
| cfg, | ||
| global_actor, | ||
| global_critic, | ||
| optimizer, | ||
| use_logger=i == 0, | ||
| ) | ||
| for i in range(num_workers) | ||
| ] | ||
| [w.start() for w in workers] | ||
| [w.join() for w in workers] | ||
|  | ||
|  | ||
| if __name__ == "__main__": | ||
| main() | ||
  
    
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              | Original file line number | Diff line number | Diff line change | 
|---|---|---|
| @@ -0,0 +1,46 @@ | ||
| # Environment | ||
| env: | ||
| env_name: PongNoFrameskip-v4 | ||
| backend: gymnasium | ||
| num_envs: 1 | ||
|  | ||
| # collector | ||
| collector: | ||
| frames_per_batch: 800 | ||
| total_frames: 40_000_00 | ||
|  | ||
| # logger | ||
| logger: | ||
| backend: wandb | ||
| project_name: torchrl_example_a3c | ||
| group_name: null | ||
| exp_name: a3c_atari_training | ||
| test_interval: 40_000_000 | ||
| num_test_episodes: 3 | ||
| video: False | ||
|  | ||
| # Optim | ||
| optim: | ||
| lr: 0.0001 | ||
| eps: 1.0e-8 | ||
| weight_decay: 0.0 | ||
| max_grad_norm: 40.0 | ||
| anneal_lr: True | ||
|  | ||
| # loss | ||
| loss: | ||
| gamma: 0.99 | ||
| mini_batch_size: 80 | ||
| gae_lambda: 0.95 | ||
| critic_coef: 0.25 | ||
| entropy_coef: 0.01 | ||
| loss_critic_type: l2 | ||
| device: | ||
|  | ||
| compile: | ||
| compile: False | ||
| compile_mode: | ||
| cudagraphs: False | ||
|  | ||
| multiprocessing: | ||
| num_workers: 16 | 
      
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can you explain what we do here? What do we use the _grad for?
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_grad is used to store the gradients for each parameter.
We copy local gradients to the global model so the global model can be updated with the optimizer.
This is a key step in A3C, where multiple workers asynchronously update a shared global model.