import pytest import torch as th from stable_baselines3 import A2C, DQN, PPO, SAC, TD3 from stable_baselines3.common.sb2_compat.rmsprop_tf_like import RMSpropTFLike @pytest.mark.parametrize( "net_arch", [ [12, dict(vf=[16], pi=[8])], [4], [], [4, 4], [12, dict(vf=[8, 4], pi=[8])], [12, dict(vf=[8], pi=[8, 4])], [12, dict(pi=[8])], ], ) @pytest.mark.parametrize("model_class", [A2C, PPO]) def test_flexible_mlp(model_class, net_arch): _ = model_class("MlpPolicy", "CartPole-v1", policy_kwargs=dict(net_arch=net_arch), n_steps=100).learn(300) @pytest.mark.parametrize("net_arch", [[], [4], [4, 4], dict(qf=[8], pi=[8, 4])]) @pytest.mark.parametrize("model_class", [SAC, TD3]) def test_custom_offpolicy(model_class, net_arch): _ = model_class("MlpPolicy", "Pendulum-v0", policy_kwargs=dict(net_arch=net_arch), learning_starts=100).learn(300) @pytest.mark.parametrize("model_class", [A2C, PPO, SAC, TD3]) @pytest.mark.parametrize("optimizer_kwargs", [None, dict(weight_decay=0.0)]) def test_custom_optimizer(model_class, optimizer_kwargs): kwargs = {} if model_class in {DQN, SAC, TD3}: kwargs = dict(learning_starts=100) elif model_class in {A2C, PPO}: kwargs = dict(n_steps=100) policy_kwargs = dict(optimizer_class=th.optim.AdamW, optimizer_kwargs=optimizer_kwargs, net_arch=[32]) _ = model_class("MlpPolicy", "Pendulum-v0", policy_kwargs=policy_kwargs, **kwargs).learn(300) def test_tf_like_rmsprop_optimizer(): policy_kwargs = dict(optimizer_class=RMSpropTFLike, net_arch=[32]) _ = A2C("MlpPolicy", "Pendulum-v0", policy_kwargs=policy_kwargs).learn(500) def test_dqn_custom_policy(): policy_kwargs = dict(optimizer_class=RMSpropTFLike, net_arch=[32]) _ = DQN("MlpPolicy", "CartPole-v1", policy_kwargs=policy_kwargs, learning_starts=100).learn(300)