import argparse import os import ray from ray import tune from ray.rllib.agents.trainer_template import build_trainer from ray.rllib.policy.policy_template import build_policy_class from ray.rllib.policy.sample_batch import SampleBatch parser = argparse.ArgumentParser() parser.add_argument("--stop-iters", type=int, default=200) parser.add_argument("--num-cpus", type=int, default=0) def policy_gradient_loss(policy, model, dist_class, train_batch): logits, _ = model({SampleBatch.CUR_OBS: train_batch[SampleBatch.CUR_OBS]}) action_dist = dist_class(logits, model) log_probs = action_dist.logp(train_batch[SampleBatch.ACTIONS]) return -train_batch[SampleBatch.REWARDS].dot(log_probs) # MyTorchPolicy = build_policy_class( name="MyTorchPolicy", framework="torch", loss_fn=policy_gradient_loss) # MyTrainer = build_trainer( name="MyCustomTrainer", default_policy=MyTorchPolicy, ) if __name__ == "__main__": args = parser.parse_args() ray.init(num_cpus=args.num_cpus or None) tune.run( MyTrainer, stop={"training_iteration": args.stop_iters}, config={ "env": "CartPole-v0", # Use GPUs iff `RLLIB_NUM_GPUS` env var set to > 0. "num_gpus": int(os.environ.get("RLLIB_NUM_GPUS", "0")), "num_workers": 2, "framework": "torch", })