434 lines
16 KiB
Python
434 lines
16 KiB
Python
import os
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import pathlib
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from collections import OrderedDict
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from copy import deepcopy
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import gym
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import numpy as np
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import pytest
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import torch as th
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from stable_baselines3.common.base_class import BaseAlgorithm
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from stable_baselines3.common.identity_env import FakeImageEnv, IdentityEnv, IdentityEnvBox
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from stable_baselines3.common.utils import get_device
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from stable_baselines3.common.vec_env import DummyVecEnv
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from sb3_contrib import QRDQN, TQC
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MODEL_LIST = [TQC, QRDQN]
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def select_env(model_class: BaseAlgorithm) -> gym.Env:
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"""
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Selects an environment with the correct action space as QRDQN only supports discrete action space
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"""
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if model_class == QRDQN:
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return IdentityEnv(10)
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else:
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return IdentityEnvBox(10)
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@pytest.mark.parametrize("model_class", MODEL_LIST)
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def test_save_load(tmp_path, model_class):
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"""
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Test if 'save' and 'load' saves and loads model correctly
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and if 'get_parameters' and 'set_parameters' and work correctly.
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''warning does not test function of optimizer parameter load
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:param model_class: (BaseAlgorithm) A RL model
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"""
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env = DummyVecEnv([lambda: select_env(model_class)])
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policy_kwargs = dict(net_arch=[16])
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if model_class in {QRDQN, TQC}:
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policy_kwargs.update(dict(n_quantiles=20))
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# create model
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model = model_class("MlpPolicy", env, verbose=1, policy_kwargs=policy_kwargs)
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model.learn(total_timesteps=300)
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env.reset()
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observations = np.concatenate([env.step([env.action_space.sample()])[0] for _ in range(10)], axis=0)
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# Get parameters of different objects
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# deepcopy to avoid referencing to tensors we are about to modify
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original_params = deepcopy(model.get_parameters())
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# Test different error cases of set_parameters.
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# Test that invalid object names throw errors
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invalid_object_params = deepcopy(original_params)
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invalid_object_params["I_should_not_be_a_valid_object"] = "and_I_am_an_invalid_tensor"
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with pytest.raises(ValueError):
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model.set_parameters(invalid_object_params, exact_match=True)
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with pytest.raises(ValueError):
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model.set_parameters(invalid_object_params, exact_match=False)
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# Test that exact_match catches when something was missed.
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missing_object_params = dict((k, v) for k, v in list(original_params.items())[:-1])
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with pytest.raises(ValueError):
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model.set_parameters(missing_object_params, exact_match=True)
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# Test that exact_match catches when something inside state-dict
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# is missing but we have exact_match.
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missing_state_dict_tensor_params = {}
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for object_name in original_params:
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object_params = {}
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missing_state_dict_tensor_params[object_name] = object_params
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# Skip last item in state-dict
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for k, v in list(original_params[object_name].items())[:-1]:
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object_params[k] = v
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with pytest.raises(RuntimeError):
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# PyTorch load_state_dict throws RuntimeError if strict but
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# invalid state-dict.
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model.set_parameters(missing_state_dict_tensor_params, exact_match=True)
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# Test that parameters do indeed change.
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random_params = {}
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for object_name, params in original_params.items():
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# Do not randomize optimizer parameters (custom layout)
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if "optim" in object_name:
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random_params[object_name] = params
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else:
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# Again, skip the last item in state-dict
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random_params[object_name] = OrderedDict(
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(param_name, th.rand_like(param)) for param_name, param in list(params.items())[:-1]
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)
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# Update model parameters with the new random values
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model.set_parameters(random_params, exact_match=False)
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new_params = model.get_parameters()
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# Check that all params except the final item in each state-dict are different.
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for object_name in original_params:
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# Skip optimizers (no valid comparison with just th.allclose)
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if "optim" in object_name:
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continue
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# state-dicts use ordered dictionaries, so key order
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# is guaranteed.
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last_key = list(original_params[object_name].keys())[-1]
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for k in original_params[object_name]:
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if k == last_key:
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# Should be same as before
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assert th.allclose(
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original_params[object_name][k], new_params[object_name][k]
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), "Parameter changed despite not included in the loaded parameters."
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else:
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# Should be different
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assert not th.allclose(
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original_params[object_name][k], new_params[object_name][k]
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), "Parameters did not change as expected."
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params = new_params
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# get selected actions
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selected_actions, _ = model.predict(observations, deterministic=True)
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# Check
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model.save(tmp_path / "test_save.zip")
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del model
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# Check if the model loads as expected for every possible choice of device:
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for device in ["auto", "cpu", "cuda"]:
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model = model_class.load(str(tmp_path / "test_save.zip"), env=env, device=device)
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# check if the model was loaded to the correct device
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assert model.device.type == get_device(device).type
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assert model.policy.device.type == get_device(device).type
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# check if params are still the same after load
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new_params = model.get_parameters()
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# Check that all params are the same as before save load procedure now
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for object_name in new_params:
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# Skip optimizers (no valid comparison with just th.allclose)
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if "optim" in object_name:
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continue
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for key in params[object_name]:
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assert new_params[object_name][key].device.type == get_device(device).type
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assert th.allclose(
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params[object_name][key].to("cpu"), new_params[object_name][key].to("cpu")
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), "Model parameters not the same after save and load."
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# check if model still selects the same actions
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new_selected_actions, _ = model.predict(observations, deterministic=True)
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assert np.allclose(selected_actions, new_selected_actions, 1e-4)
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# check if learn still works
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model.learn(total_timesteps=300)
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del model
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# clear file from os
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os.remove(tmp_path / "test_save.zip")
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@pytest.mark.parametrize("model_class", MODEL_LIST)
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def test_set_env(model_class):
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"""
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Test if set_env function does work correct
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:param model_class: (BaseAlgorithm) A RL model
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"""
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# use discrete for QRDQN
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env = DummyVecEnv([lambda: select_env(model_class)])
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env2 = DummyVecEnv([lambda: select_env(model_class)])
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env3 = select_env(model_class)
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kwargs = dict(policy_kwargs=dict(net_arch=[16]))
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if model_class in {TQC, QRDQN}:
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kwargs.update(dict(learning_starts=100))
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kwargs["policy_kwargs"].update(dict(n_quantiles=20))
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# create model
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model = model_class("MlpPolicy", env, **kwargs)
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# learn
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model.learn(total_timesteps=300)
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# change env
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model.set_env(env2)
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# learn again
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model.learn(total_timesteps=300)
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# change env test wrapping
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model.set_env(env3)
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# learn again
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model.learn(total_timesteps=300)
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@pytest.mark.parametrize("model_class", MODEL_LIST)
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def test_exclude_include_saved_params(tmp_path, model_class):
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"""
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Test if exclude and include parameters of save() work
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:param model_class: (BaseAlgorithm) A RL model
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"""
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env = DummyVecEnv([lambda: select_env(model_class)])
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# create model, set verbose as 2, which is not standard
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model = model_class("MlpPolicy", env, policy_kwargs=dict(net_arch=[16]), verbose=2)
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# Check if exclude works
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model.save(tmp_path / "test_save", exclude=["verbose"])
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del model
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model = model_class.load(str(tmp_path / "test_save.zip"))
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# check if verbose was not saved
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assert model.verbose != 2
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# set verbose as something different then standard settings
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model.verbose = 2
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# Check if include works
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model.save(tmp_path / "test_save", exclude=["verbose"], include=["verbose"])
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del model
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model = model_class.load(str(tmp_path / "test_save.zip"))
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assert model.verbose == 2
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# clear file from os
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os.remove(tmp_path / "test_save.zip")
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@pytest.mark.parametrize("model_class", [TQC, QRDQN])
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def test_save_load_replay_buffer(tmp_path, model_class):
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path = pathlib.Path(tmp_path / "logs/replay_buffer.pkl")
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path.parent.mkdir(exist_ok=True, parents=True) # to not raise a warning
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model = model_class("MlpPolicy", select_env(model_class), buffer_size=1000)
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model.learn(300)
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old_replay_buffer = deepcopy(model.replay_buffer)
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model.save_replay_buffer(path)
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model.replay_buffer = None
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model.load_replay_buffer(path)
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assert np.allclose(old_replay_buffer.observations, model.replay_buffer.observations)
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assert np.allclose(old_replay_buffer.actions, model.replay_buffer.actions)
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assert np.allclose(old_replay_buffer.rewards, model.replay_buffer.rewards)
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assert np.allclose(old_replay_buffer.dones, model.replay_buffer.dones)
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# test extending replay buffer
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model.replay_buffer.extend(
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old_replay_buffer.observations,
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old_replay_buffer.observations,
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old_replay_buffer.actions,
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old_replay_buffer.rewards,
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old_replay_buffer.dones,
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)
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@pytest.mark.parametrize("model_class", MODEL_LIST)
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@pytest.mark.parametrize("policy_str", ["MlpPolicy", "CnnPolicy"])
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def test_save_load_policy(tmp_path, model_class, policy_str):
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"""
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Test saving and loading policy only.
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:param model_class: (BaseAlgorithm) A RL model
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:param policy_str: (str) Name of the policy.
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"""
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kwargs = dict(policy_kwargs=dict(net_arch=[16]))
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if policy_str == "MlpPolicy":
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env = select_env(model_class)
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else:
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if model_class in [TQC, QRDQN]:
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# Avoid memory error when using replay buffer
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# Reduce the size of the features
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kwargs = dict(
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buffer_size=250,
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learning_starts=100,
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policy_kwargs=dict(features_extractor_kwargs=dict(features_dim=32)),
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)
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env = FakeImageEnv(screen_height=40, screen_width=40, n_channels=2, discrete=model_class == QRDQN)
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# Reduce number of quantiles for faster tests
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if model_class in [TQC, QRDQN]:
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kwargs["policy_kwargs"].update(dict(n_quantiles=20))
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env = DummyVecEnv([lambda: env])
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# create model
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model = model_class(policy_str, env, verbose=1, **kwargs)
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model.learn(total_timesteps=300)
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env.reset()
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observations = np.concatenate([env.step([env.action_space.sample()])[0] for _ in range(10)], axis=0)
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policy = model.policy
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policy_class = policy.__class__
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actor, actor_class = None, None
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if model_class in [TQC]:
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actor = policy.actor
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actor_class = actor.__class__
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# Get dictionary of current parameters
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params = deepcopy(policy.state_dict())
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# Modify all parameters to be random values
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random_params = dict((param_name, th.rand_like(param)) for param_name, param in params.items())
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# Update model parameters with the new random values
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policy.load_state_dict(random_params)
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new_params = policy.state_dict()
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# Check that all params are different now
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for k in params:
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assert not th.allclose(params[k], new_params[k]), "Parameters did not change as expected."
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params = new_params
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# get selected actions
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selected_actions, _ = policy.predict(observations, deterministic=True)
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# Should also work with the actor only
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if actor is not None:
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selected_actions_actor, _ = actor.predict(observations, deterministic=True)
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# Save and load policy
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policy.save(tmp_path / "policy.pkl")
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# Save and load actor
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if actor is not None:
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actor.save(tmp_path / "actor.pkl")
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del policy, actor
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policy = policy_class.load(tmp_path / "policy.pkl")
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if actor_class is not None:
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actor = actor_class.load(tmp_path / "actor.pkl")
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# check if params are still the same after load
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new_params = policy.state_dict()
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# Check that all params are the same as before save load procedure now
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for key in params:
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assert th.allclose(params[key], new_params[key]), "Policy parameters not the same after save and load."
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# check if model still selects the same actions
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new_selected_actions, _ = policy.predict(observations, deterministic=True)
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assert np.allclose(selected_actions, new_selected_actions, 1e-4)
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if actor_class is not None:
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new_selected_actions_actor, _ = actor.predict(observations, deterministic=True)
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assert np.allclose(selected_actions_actor, new_selected_actions_actor, 1e-4)
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assert np.allclose(selected_actions_actor, new_selected_actions, 1e-4)
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# clear file from os
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os.remove(tmp_path / "policy.pkl")
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if actor_class is not None:
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os.remove(tmp_path / "actor.pkl")
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@pytest.mark.parametrize("model_class", [QRDQN])
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@pytest.mark.parametrize("policy_str", ["MlpPolicy", "CnnPolicy"])
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def test_save_load_q_net(tmp_path, model_class, policy_str):
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"""
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Test saving and loading q-network/quantile net only.
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:param model_class: (BaseAlgorithm) A RL model
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:param policy_str: (str) Name of the policy.
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"""
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kwargs = dict(policy_kwargs=dict(net_arch=[16]))
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if policy_str == "MlpPolicy":
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env = select_env(model_class)
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else:
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if model_class in [QRDQN]:
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# Avoid memory error when using replay buffer
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# Reduce the size of the features
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kwargs = dict(
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buffer_size=250,
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learning_starts=100,
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policy_kwargs=dict(features_extractor_kwargs=dict(features_dim=32)),
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)
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env = FakeImageEnv(screen_height=40, screen_width=40, n_channels=2, discrete=model_class == QRDQN)
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# Reduce number of quantiles for faster tests
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if model_class in [QRDQN]:
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kwargs["policy_kwargs"].update(dict(n_quantiles=20))
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env = DummyVecEnv([lambda: env])
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# create model
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model = model_class(policy_str, env, verbose=1, **kwargs)
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model.learn(total_timesteps=300)
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env.reset()
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observations = np.concatenate([env.step([env.action_space.sample()])[0] for _ in range(10)], axis=0)
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q_net = model.quantile_net
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q_net_class = q_net.__class__
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# Get dictionary of current parameters
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params = deepcopy(q_net.state_dict())
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# Modify all parameters to be random values
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random_params = dict((param_name, th.rand_like(param)) for param_name, param in params.items())
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# Update model parameters with the new random values
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q_net.load_state_dict(random_params)
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new_params = q_net.state_dict()
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# Check that all params are different now
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for k in params:
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assert not th.allclose(params[k], new_params[k]), "Parameters did not change as expected."
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params = new_params
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# get selected actions
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selected_actions, _ = q_net.predict(observations, deterministic=True)
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# Save and load q_net
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q_net.save(tmp_path / "q_net.pkl")
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del q_net
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q_net = q_net_class.load(tmp_path / "q_net.pkl")
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# check if params are still the same after load
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new_params = q_net.state_dict()
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# Check that all params are the same as before save load procedure now
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for key in params:
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assert th.allclose(params[key], new_params[key]), "Policy parameters not the same after save and load."
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# check if model still selects the same actions
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new_selected_actions, _ = q_net.predict(observations, deterministic=True)
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assert np.allclose(selected_actions, new_selected_actions, 1e-4)
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# clear file from os
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os.remove(tmp_path / "q_net.pkl")
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