--- library_name: stable-baselines3 tags: - LunarLander-v2 - deep-reinforcement-learning - reinforcement-learning - stable-baselines3 model-index: - name: PPO results: - task: type: reinforcement-learning name: reinforcement-learning dataset: name: LunarLander-v2 type: LunarLander-v2 metrics: - type: mean_reward value: 271.01 +/- 16.84 name: mean_reward verified: false --- # **PPO** Agent playing **LunarLander-v2** This is a trained model of a **PPO** agent playing **LunarLander-v2** using the [stable-baselines3 library](https://github.com/DLR-RM/stable-baselines3). ## Usage (with Stable-baselines3) ```python import gymnasium from stable_baselines3 import PPO from stable_baselines3.common.env_util import make_vec_env from stable_baselines3.common.evaluation import evaluate_policy from stable_baselines3.common.monitor import Monitor from huggingface_sb3 import load_from_hub # Create the environment env = make_vec_env('LunarLander-v2', n_envs=16) # Define a PPO MlpPolicy architecture # We use MultiLayerPerceptron (MLPPolicy) because the input is a vector, # if we had frames as input we would use CnnPolicy model = PPO( "MlpPolicy", env = env, n_steps = 1024, batch_size = 64, n_epochs = 4, gamma = 0.999, gae_lambda = 0.98, ent_coef = 0.01, verbose=1) # Train it for 1,000,000 timesteps model.learn(total_timesteps=1000000) # Specify file name for model and save the model to file model_name = "ppo-LunarLander-v2" model.save(model_name) # Evaluate the agent # Create a new environment for evaluation eval_env = Monitor(gym.make("LunarLander-v2")) # Evaluate the model with 10 evaluation episodes and deterministic=True mean_reward, std_reward = evaluate_policy(model=model, env=eval_env, n_eval_episodes=10, deterministic=True) # Print the results print(mean_reward) print(std_reward) ... ```