import numpy as np import pytest from stable_baselines3 import A2C, DDPG, DQN, PPO, SAC, TD3 from stable_baselines3.common.evaluation import evaluate_policy from stable_baselines3.common.identity_env import IdentityEnv, IdentityEnvBox, IdentityEnvMultiBinary, IdentityEnvMultiDiscrete from stable_baselines3.common.noise import NormalActionNoise from stable_baselines3.common.vec_env import DummyVecEnv DIM = 4 @pytest.mark.parametrize("model_class", [A2C, PPO, DQN]) @pytest.mark.parametrize("env", [IdentityEnv(DIM), IdentityEnvMultiDiscrete(DIM), IdentityEnvMultiBinary(DIM)]) def test_discrete(model_class, env): env_ = DummyVecEnv([lambda: env]) kwargs = {} n_steps = 3000 if model_class == DQN: kwargs = dict(learning_starts=0) n_steps = 4000 # DQN only support discrete actions if isinstance(env, (IdentityEnvMultiDiscrete, IdentityEnvMultiBinary)): return model = model_class("MlpPolicy", env_, gamma=0.4, seed=1, **kwargs).learn(n_steps) evaluate_policy(model, env_, n_eval_episodes=20, reward_threshold=90, warn=False) obs = env.reset() assert np.shape(model.predict(obs)[0]) == np.shape(obs) @pytest.mark.parametrize("model_class", [A2C, PPO, SAC, DDPG, TD3]) def test_continuous(model_class): env = IdentityEnvBox(eps=0.5) n_steps = {A2C: 3500, PPO: 3000, SAC: 700, TD3: 500, DDPG: 500}[model_class] kwargs = dict(policy_kwargs=dict(net_arch=[64, 64]), seed=0, gamma=0.95) if model_class in [TD3]: n_actions = 1 action_noise = NormalActionNoise(mean=np.zeros(n_actions), sigma=0.1 * np.ones(n_actions)) kwargs["action_noise"] = action_noise model = model_class("MlpPolicy", env, **kwargs).learn(n_steps) evaluate_policy(model, env, n_eval_episodes=20, reward_threshold=90, warn=False)