Esempio n. 1
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def test_iterate_value_q_pi():

    random_state = RandomState(12345)

    mdp_environment: Gridworld = Gridworld.example_4_1(random_state, None)

    q_S_A = TabularStateActionValueEstimator(mdp_environment, 0.1, None)

    mdp_agent = StochasticMdpAgent('test', random_state,
                                   q_S_A.get_initial_policy(), 1)

    iterate_value_q_pi(agent=mdp_agent,
                       environment=mdp_environment,
                       num_improvements=3000,
                       num_episodes_per_improvement=1,
                       update_upon_every_visit=False,
                       planning_environment=None,
                       make_final_policy_greedy=False,
                       q_S_A=q_S_A)

    # uncomment the following line and run test to update fixture
    # with open(f'{os.path.dirname(__file__)}/fixtures/test_monte_carlo_iteration_of_value_q_pi.pickle', 'wb') as file:
    #     pickle.dump((mdp_agent.pi, q_S_A), file)

    with open(
            f'{os.path.dirname(__file__)}/fixtures/test_monte_carlo_iteration_of_value_q_pi.pickle',
            'rb') as file:
        pi_fixture, q_S_A_fixture = pickle.load(file)

    assert tabular_pi_legacy_eq(mdp_agent.pi,
                                pi_fixture) and tabular_estimator_legacy_eq(
                                    q_S_A, q_S_A_fixture)
Esempio n. 2
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def test_learn():

    random_state = RandomState(12345)

    gym = Gym(random_state=random_state, T=None, gym_id='CartPole-v1')

    q_S_A = TabularStateActionValueEstimator(gym, 0.05, 0.001)

    mdp_agent = StochasticMdpAgent('agent', random_state,
                                   q_S_A.get_initial_policy(), 1)

    iterate_value_q_pi(agent=mdp_agent,
                       environment=gym,
                       num_improvements=10,
                       num_episodes_per_improvement=100,
                       num_updates_per_improvement=None,
                       alpha=0.1,
                       mode=Mode.SARSA,
                       n_steps=1,
                       planning_environment=None,
                       make_final_policy_greedy=False,
                       q_S_A=q_S_A)

    # uncomment the following line and run test to update fixture
    # with open(f'{os.path.dirname(__file__)}/fixtures/test_gym.pickle', 'wb') as file:
    #     pickle.dump((mdp_agent.pi, q_S_A), file)

    with open(f'{os.path.dirname(__file__)}/fixtures/test_gym.pickle',
              'rb') as file:
        fixture_pi, fixture_q_S_A = pickle.load(file)

    assert tabular_pi_legacy_eq(mdp_agent.pi,
                                fixture_pi) and tabular_estimator_legacy_eq(
                                    q_S_A, fixture_q_S_A)
Esempio n. 3
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def test_sarsa_iterate_value_q_pi_with_trajectory_planning():

    random_state = RandomState(12345)
    mdp_environment: Gridworld = Gridworld.example_4_1(random_state, None)
    q_S_A = TabularStateActionValueEstimator(mdp_environment, 0.05, None)
    mdp_agent = ActionValueMdpAgent('test', random_state, 1, q_S_A)

    planning_environment = TrajectorySamplingMdpPlanningEnvironment(
        'test planning', random_state, StochasticEnvironmentModel(), 10, None)

    iterate_value_q_pi(agent=mdp_agent,
                       environment=mdp_environment,
                       num_improvements=100,
                       num_episodes_per_improvement=1,
                       num_updates_per_improvement=None,
                       alpha=0.1,
                       mode=Mode.SARSA,
                       n_steps=1,
                       planning_environment=planning_environment,
                       make_final_policy_greedy=True)

    # uncomment the following line and run test to update fixture
    # with open(f'{os.path.dirname(__file__)}/fixtures/test_td_iteration_of_value_q_pi_planning.pickle', 'wb') as file:
    #     pickle.dump((mdp_agent.pi, q_S_A), file)

    with open(
            f'{os.path.dirname(__file__)}/fixtures/test_td_iteration_of_value_q_pi_planning.pickle',
            'rb') as file:
        pi_fixture, q_S_A_fixture = pickle.load(file)

    assert tabular_pi_legacy_eq(mdp_agent.pi,
                                pi_fixture) and tabular_estimator_legacy_eq(
                                    q_S_A, q_S_A_fixture)
Esempio n. 4
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def test_n_step_q_learning_iterate_value_q_pi():

    random_state = RandomState(12345)

    mdp_environment: Gridworld = Gridworld.example_4_1(random_state, None)

    q_S_A = TabularStateActionValueEstimator(mdp_environment, 0.05, None)

    mdp_agent = StochasticMdpAgent('test', random_state,
                                   q_S_A.get_initial_policy(), 1)

    iterate_value_q_pi(agent=mdp_agent,
                       environment=mdp_environment,
                       num_improvements=10,
                       num_episodes_per_improvement=100,
                       num_updates_per_improvement=None,
                       alpha=0.1,
                       mode=Mode.Q_LEARNING,
                       n_steps=3,
                       planning_environment=None,
                       make_final_policy_greedy=False,
                       q_S_A=q_S_A)

    # uncomment the following line and run test to update fixture
    # with open(f'{os.path.dirname(__file__)}/fixtures/test_td_n_step_q_learning_iteration_of_value_q_pi.pickle', 'wb') as file:
    #     pickle.dump((mdp_agent.pi, q_S_A), file)

    with open(
            f'{os.path.dirname(__file__)}/fixtures/test_td_n_step_q_learning_iteration_of_value_q_pi.pickle',
            'rb') as file:
        fixture_pi, fixture_q_S_A = pickle.load(file)

    assert tabular_pi_legacy_eq(mdp_agent.pi,
                                fixture_pi) and tabular_estimator_legacy_eq(
                                    q_S_A, fixture_q_S_A)
Esempio n. 5
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def test_learn():

    random_state = RandomState(12345)

    mancala: Mancala = Mancala(random_state=random_state,
                               T=None,
                               initial_count=4,
                               player_2=None)

    p1 = ActionValueMdpAgent(
        'player 1', random_state, 1,
        TabularStateActionValueEstimator(mancala, 0.05, None))

    checkpoint_path = iterate_value_q_pi(
        agent=p1,
        environment=mancala,
        num_improvements=3,
        num_episodes_per_improvement=100,
        update_upon_every_visit=False,
        planning_environment=None,
        make_final_policy_greedy=False,
        num_improvements_per_checkpoint=3,
        checkpoint_path=tempfile.NamedTemporaryFile(delete=False).name)

    # uncomment the following line and run test to update fixture
    # with open(f'{os.path.dirname(__file__)}/fixtures/test_mancala.pickle', 'wb') as file:
    #     pickle.dump(p1.pi, file)

    with open(f'{os.path.dirname(__file__)}/fixtures/test_mancala.pickle',
              'rb') as file:
        fixture = pickle.load(file)

    assert tabular_pi_legacy_eq(p1.pi, fixture)

    resumed_p1 = resume_from_checkpoint(checkpoint_path=checkpoint_path,
                                        resume_function=iterate_value_q_pi,
                                        num_improvements=2)

    # run same number of improvements without checkpoint...result should be the same.
    random_state = RandomState(12345)
    mancala: Mancala = Mancala(random_state=random_state,
                               T=None,
                               initial_count=4,
                               player_2=None)
    no_checkpoint_p1 = ActionValueMdpAgent(
        'player 1', random_state, 1,
        TabularStateActionValueEstimator(mancala, 0.05, None))

    iterate_value_q_pi(agent=no_checkpoint_p1,
                       environment=mancala,
                       num_improvements=5,
                       num_episodes_per_improvement=100,
                       update_upon_every_visit=False,
                       planning_environment=None,
                       make_final_policy_greedy=False)

    assert no_checkpoint_p1.pi == resumed_p1.pi