def test_dist_info_sym_include_action(self, obs_dim, action_dim,
                                          hidden_dim):
        env = TfEnv(DummyBoxEnv(obs_dim=obs_dim, action_dim=action_dim))

        obs_ph = tf.compat.v1.placeholder(
            tf.float32, shape=(None, None, env.observation_space.flat_dim))

        with mock.patch(('metarl.tf.policies.'
                         'gaussian_lstm_policy.GaussianLSTMModel'),
                        new=SimpleGaussianLSTMModel):
            policy = GaussianLSTMPolicy(env_spec=env.spec,
                                        state_include_action=True)

            policy.reset()
            obs = env.reset()
            dist_sym = policy.dist_info_sym(
                obs_var=obs_ph,
                state_info_vars={'prev_action': np.zeros((2, 1) + action_dim)},
                name='p2_sym')
        dist = self.sess.run(
            dist_sym, feed_dict={obs_ph: [[obs.flatten()], [obs.flatten()]]})

        assert np.array_equal(dist['mean'], np.full((2, 1) + action_dim, 0.5))
        assert np.array_equal(dist['log_std'], np.full((2, 1) + action_dim,
                                                       0.5))
Example #2
0
    def test_gaussian_lstm_policy(self):
        gaussian_lstm_policy = GaussianLSTMPolicy(env_spec=self.env,
                                                  hidden_dim=1)
        self.sess.run(tf.compat.v1.global_variables_initializer())

        gaussian_lstm_policy.reset()

        obs = self.env.observation_space.high
        assert gaussian_lstm_policy.get_action(obs)
Example #3
0
 def test_ppo_pendulum_lstm(self):
     """Test PPO with Pendulum environment and recurrent policy."""
     with LocalTFRunner(snapshot_config) as runner:
         env = MetaRLEnv(normalize(gym.make('InvertedDoublePendulum-v2')))
         lstm_policy = GaussianLSTMPolicy(env_spec=env.spec)
         baseline = GaussianMLPBaseline(
             env_spec=env.spec,
             regressor_args=dict(hidden_sizes=(32, 32)),
         )
         algo = PPO(
             env_spec=env.spec,
             policy=lstm_policy,
             baseline=baseline,
             max_path_length=100,
             discount=0.99,
             gae_lambda=0.95,
             lr_clip_range=0.2,
             optimizer_args=dict(
                 batch_size=32,
                 max_epochs=10,
             ),
             stop_entropy_gradient=True,
             entropy_method='max',
             policy_ent_coeff=0.02,
             center_adv=False,
         )
         runner.setup(algo, env)
         last_avg_ret = runner.train(n_epochs=10, batch_size=2048)
         assert last_avg_ret > 80
    def test_is_pickleable(self):
        env = TfEnv(DummyBoxEnv(obs_dim=(1, ), action_dim=(1, )))
        with mock.patch(('metarl.tf.policies.'
                         'gaussian_lstm_policy.GaussianLSTMModel'),
                        new=SimpleGaussianLSTMModel):
            policy = GaussianLSTMPolicy(env_spec=env.spec,
                                        state_include_action=False)

        env.reset()
        obs = env.reset()

        with tf.compat.v1.variable_scope(
                'GaussianLSTMPolicy/GaussianLSTMModel', reuse=True):
            return_var = tf.compat.v1.get_variable('return_var')
        # assign it to all one
        return_var.load(tf.ones_like(return_var).eval())

        output1 = self.sess.run(
            policy.model.networks['default'].mean,
            feed_dict={policy.model.input: [[obs.flatten()], [obs.flatten()]]})

        p = pickle.dumps(policy)
        # yapf: disable
        with tf.compat.v1.Session(graph=tf.Graph()) as sess:
            policy_pickled = pickle.loads(p)
            output2 = sess.run(
                policy_pickled.model.networks['default'].mean,
                feed_dict={
                    policy_pickled.model.input: [[obs.flatten()],
                                                 [obs.flatten()]]
                })
            assert np.array_equal(output1, output2)
def ppo_cmb(env, seed, log_dir):
    """Create test continuous mlp baseline on ppo.

    Args:
        env (gym_env): Environment of the task.
        seed (int): Random seed for the trial.
        log_dir (str): Log dir path.

    Returns:
        str: training results in csv format.

    """
    deterministic.set_seed(seed)
    config = tf.ConfigProto(allow_soft_placement=True,
                            intra_op_parallelism_threads=num_proc,
                            inter_op_parallelism_threads=num_proc)
    sess = tf.Session(config=config)
    with LocalTFRunner(snapshot_config, sess=sess,
                       max_cpus=num_proc) as runner:
        env = TfEnv(normalize(env))

        policy = GaussianLSTMPolicy(
            env_spec=env.spec,
            hidden_dim=policy_params['policy_hidden_sizes'],
            hidden_nonlinearity=policy_params['hidden_nonlinearity'],
        )

        baseline = ContinuousMLPBaseline(
            env_spec=env.spec,
            regressor_args=baseline_params['regressor_args'],
        )

        algo = PPO(env_spec=env.spec,
                   policy=policy,
                   baseline=baseline,
                   max_path_length=algo_params['max_path_length'],
                   discount=algo_params['discount'],
                   gae_lambda=algo_params['gae_lambda'],
                   lr_clip_range=algo_params['lr_clip_range'],
                   entropy_method=algo_params['entropy_method'],
                   policy_ent_coeff=algo_params['policy_ent_coeff'],
                   optimizer_args=algo_params['optimizer_args'],
                   center_adv=algo_params['center_adv'],
                   stop_entropy_gradient=True)

        # Set up logger since we are not using run_experiment
        tabular_log_file = osp.join(log_dir, 'progress.csv')
        dowel_logger.add_output(dowel.StdOutput())
        dowel_logger.add_output(dowel.CsvOutput(tabular_log_file))
        dowel_logger.add_output(dowel.TensorBoardOutput(log_dir))

        runner.setup(algo,
                     env,
                     sampler_args=dict(n_envs=algo_params['n_envs']))
        runner.train(n_epochs=algo_params['n_epochs'],
                     batch_size=algo_params['n_rollout_steps'])

        dowel_logger.remove_all()

        return tabular_log_file
Example #6
0
 def test_process_samples_continuous_recurrent(self):
     env = TfEnv(DummyBoxEnv())
     policy = GaussianLSTMPolicy(env_spec=env.spec)
     baseline = GaussianMLPBaseline(env_spec=env.spec)
     max_path_length = 100
     with LocalTFRunner(snapshot_config, sess=self.sess) as runner:
         algo = BatchPolopt2(env_spec=env.spec,
                             policy=policy,
                             baseline=baseline,
                             max_path_length=max_path_length,
                             flatten_input=True)
         runner.setup(algo, env, sampler_args=dict(n_envs=1))
         runner.train(n_epochs=1, batch_size=max_path_length)
         paths = runner.obtain_samples(0)
         samples = algo.process_samples(0, paths)
         # Since there is only 1 vec_env in the sampler and DummyBoxEnv
         # never terminate until it reaches max_path_length, batch size
         # must be max_path_length, i.e. 100
         assert samples['observations'].shape == (
             max_path_length, env.observation_space.flat_dim)
         assert samples['actions'].shape == (max_path_length,
                                             env.action_space.flat_dim)
         assert samples['rewards'].shape == (max_path_length, )
         assert samples['baselines'].shape == (max_path_length, )
         assert samples['returns'].shape == (max_path_length, )
         # there is only 1 path
         assert samples['lengths'].shape == (1, )
         for key, shape in policy.state_info_specs:
             assert samples['agent_infos'][key].shape == (max_path_length,
                                                          np.prod(shape))
         # DummyBoxEnv has env_info dummy
         assert samples['env_infos']['dummy'].shape == (max_path_length, )
         assert isinstance(samples['average_return'], float)
    def test_is_pickleable(self):
        env = MetaRLEnv(DummyBoxEnv(obs_dim=(1, ), action_dim=(1, )))
        obs_var = tf.compat.v1.placeholder(
            tf.float32,
            shape=[None, None, env.observation_space.flat_dim],
            name='obs')
        policy = GaussianLSTMPolicy(env_spec=env.spec,
                                    state_include_action=False)

        policy.build(obs_var)
        env.reset()
        obs = env.reset()
        with tf.compat.v1.variable_scope(
                'GaussianLSTMPolicy/GaussianLSTMModel', reuse=True):
            param = tf.compat.v1.get_variable(
                'dist_params/log_std_param/parameter')
        # assign it to all one
        param.load(tf.ones_like(param).eval())

        output1 = self.sess.run(
            [policy.distribution.loc,
             policy.distribution.stddev()],
            feed_dict={policy.model.input: [[obs.flatten()], [obs.flatten()]]})

        p = pickle.dumps(policy)
        # yapf: disable
        with tf.compat.v1.Session(graph=tf.Graph()) as sess:
            policy_pickled = pickle.loads(p)
            obs_var = tf.compat.v1.placeholder(
                        tf.float32,
                        shape=[None, None, env.observation_space.flat_dim],
                        name='obs')
            policy_pickled.build(obs_var)
            output2 = sess.run(
                [
                    policy_pickled.distribution.loc,
                    policy_pickled.distribution.stddev()
                ],
                feed_dict={
                    policy_pickled.model.input: [[obs.flatten()],
                                                 [obs.flatten()]]
                })
            assert np.array_equal(output1, output2)
Example #8
0
def gaussian_lstm_policy(ctxt, env_id, seed):
    """Create Gaussian LSTM Policy on TF-PPO.

    Args:
        ctxt (metarl.experiment.ExperimentContext): The experiment
            configuration used by LocalRunner to create the
            snapshotter.
        env_id (str): Environment id of the task.
        seed (int): Random positive integer for the trial.

    """
    deterministic.set_seed(seed)

    with LocalTFRunner(ctxt) as runner:
        env = MetaRLEnv(normalize(gym.make(env_id)))

        policy = GaussianLSTMPolicy(
            env_spec=env.spec,
            hidden_dim=32,
            hidden_nonlinearity=tf.nn.tanh,
            output_nonlinearity=None,
        )

        baseline = GaussianMLPBaseline(
            env_spec=env.spec,
            regressor_args=dict(
                hidden_sizes=(64, 64),
                use_trust_region=False,
                optimizer=FirstOrderOptimizer,
                optimizer_args=dict(
                    batch_size=32,
                    max_epochs=10,
                    learning_rate=1e-3,
                ),
            ),
        )

        algo = PPO(
            env_spec=env.spec,
            policy=policy,
            baseline=baseline,
            max_path_length=100,
            discount=0.99,
            gae_lambda=0.95,
            lr_clip_range=0.2,
            policy_ent_coeff=0.0,
            optimizer_args=dict(
                batch_size=32,
                max_epochs=10,
                learning_rate=1e-3,
            ),
        )

        runner.setup(algo, env, sampler_args=dict(n_envs=12))
        runner.train(n_epochs=5, batch_size=2048)
    def test_get_action(self, mock_normal, obs_dim, action_dim, hidden_dim):
        mock_normal.return_value = 0.5
        env = TfEnv(DummyBoxEnv(obs_dim=obs_dim, action_dim=action_dim))
        with mock.patch(('metarl.tf.policies.'
                         'gaussian_lstm_policy.GaussianLSTMModel'),
                        new=SimpleGaussianLSTMModel):
            policy = GaussianLSTMPolicy(env_spec=env.spec,
                                        state_include_action=False)
        expected_action = np.full(action_dim, 0.5 * np.exp(0.5) + 0.5)

        policy.reset()
        obs = env.reset()

        action, agent_info = policy.get_action(obs)
        assert env.action_space.contains(action)
        assert np.allclose(action,
                           np.full(action_dim, expected_action),
                           atol=1e-6)

        expected_mean = np.full(action_dim, 0.5)
        assert np.array_equal(agent_info['mean'], expected_mean)
        expected_log_std = np.full(action_dim, 0.5)
        assert np.array_equal(agent_info['log_std'], expected_log_std)

        actions, agent_infos = policy.get_actions([obs])
        for action, mean, log_std in zip(actions, agent_infos['mean'],
                                         agent_infos['log_std']):
            assert env.action_space.contains(action)
            assert np.allclose(action,
                               np.full(action_dim, expected_action),
                               atol=1e-6)
            assert np.array_equal(mean, expected_mean)
            assert np.array_equal(log_std, expected_log_std)
def continuous_mlp_baseline(ctxt, env_id, seed):
    """Create Continuous MLP Baseline on TF-PPO.

    Args:
        ctxt (metarl.experiment.ExperimentContext): The experiment
            configuration used by LocalRunner to create the
            snapshotter.
        env_id (str): Environment id of the task.
        seed (int): Random positive integer for the trial.

    """
    deterministic.set_seed(seed)

    with LocalTFRunner(ctxt, max_cpus=hyper_params['num_proc']) as runner:
        env = MetaRLEnv(normalize(gym.make(env_id)))

        policy = GaussianLSTMPolicy(
            env_spec=env.spec,
            hidden_dim=hyper_params['policy_hidden_sizes'],
            hidden_nonlinearity=hyper_params['hidden_nonlinearity'],
        )

        baseline = ContinuousMLPBaseline(
            env_spec=env.spec,
            regressor_args=dict(hidden_sizes=(64, 64)),
        )

        algo = PPO(env_spec=env.spec,
                   policy=policy,
                   baseline=baseline,
                   max_path_length=hyper_params['max_path_length'],
                   discount=hyper_params['discount'],
                   gae_lambda=hyper_params['gae_lambda'],
                   lr_clip_range=hyper_params['lr_clip_range'],
                   entropy_method=hyper_params['entropy_method'],
                   policy_ent_coeff=hyper_params['policy_ent_coeff'],
                   optimizer_args=dict(
                       batch_size=32,
                       max_epochs=10,
                       learning_rate=1e-3,
                   ),
                   center_adv=hyper_params['center_adv'],
                   stop_entropy_gradient=True)

        runner.setup(algo,
                     env,
                     sampler_args=dict(n_envs=hyper_params['n_envs']))
        runner.train(n_epochs=hyper_params['n_epochs'],
                     batch_size=hyper_params['n_rollout_steps'])
    def run_task(self, snapshot_config, *_):
        config = tf.ConfigProto(device_count={'GPU': 0},
                                allow_soft_placement=True,
                                intra_op_parallelism_threads=12,
                                inter_op_parallelism_threads=12)
        sess = tf.Session(config=config)
        with LocalTFRunner(snapshot_config=snapshot_config,
                           sess=sess) as runner:
            env = gym.make(self._env)
            env = TfEnv(normalize(env))
            env.reset()
            policy = GaussianLSTMPolicy(
                env_spec=env.spec,
                hidden_dim=32,
                hidden_nonlinearity=tf.nn.tanh,
                output_nonlinearity=None,
            )

            baseline = GaussianMLPBaseline(
                env_spec=env.spec,
                regressor_args=dict(
                    hidden_sizes=(64, 64),
                    use_trust_region=False,
                    optimizer=FirstOrderOptimizer,
                    optimizer_args=dict(
                        batch_size=32,
                        max_epochs=10,
                        tf_optimizer_args=dict(learning_rate=1e-3),
                    ),
                ),
            )

            algo = PPO(
                env_spec=env.spec,
                policy=policy,
                baseline=baseline,
                max_path_length=100,
                discount=0.99,
                gae_lambda=0.95,
                lr_clip_range=0.2,
                policy_ent_coeff=0.0,
                optimizer_args=dict(
                    batch_size=32,
                    max_epochs=10,
                    tf_optimizer_args=dict(learning_rate=1e-3),
                ),
            )
            runner.setup(algo, env, sampler_args=dict(n_envs=12))
            runner.train(n_epochs=5, batch_size=2048)
    def test_get_action_state_include_action(self, obs_dim, action_dim,
                                             hidden_dim):
        env = MetaRLEnv(DummyBoxEnv(obs_dim=obs_dim, action_dim=action_dim))
        obs_var = tf.compat.v1.placeholder(
            tf.float32,
            shape=[
                None, None,
                env.observation_space.flat_dim + np.prod(action_dim)
            ],
            name='obs')
        policy = GaussianLSTMPolicy(env_spec=env.spec,
                                    hidden_dim=hidden_dim,
                                    state_include_action=True)
        policy.build(obs_var)
        policy.reset()
        obs = env.reset()
        action, _ = policy.get_action(obs.flatten())
        assert env.action_space.contains(action)

        policy.reset()

        actions, _ = policy.get_actions([obs.flatten()])
        for action in actions:
            assert env.action_space.contains(action)
Example #13
0
 def setup_method(self):
     super().setup_method()
     self.env = MetaRLEnv(normalize(gym.make('InvertedDoublePendulum-v2')))
     self.policy = GaussianMLPPolicy(
         env_spec=self.env.spec,
         hidden_sizes=(64, 64),
         hidden_nonlinearity=tf.nn.tanh,
         output_nonlinearity=None,
     )
     self.lstm_policy = GaussianLSTMPolicy(env_spec=self.env.spec)
     self.gru_policy = GaussianGRUPolicy(env_spec=self.env.spec)
     self.baseline = GaussianMLPBaseline(
         env_spec=self.env.spec,
         regressor_args=dict(hidden_sizes=(32, 32)),
     )
    def test_dist_info_sym_wrong_input(self):
        env = TfEnv(DummyBoxEnv(obs_dim=(1, ), action_dim=(1, )))

        obs_ph = tf.compat.v1.placeholder(
            tf.float32, shape=(None, None, env.observation_space.flat_dim))

        with mock.patch(('metarl.tf.policies.'
                         'gaussian_lstm_policy.GaussianLSTMModel'),
                        new=SimpleGaussianLSTMModel):
            policy = GaussianLSTMPolicy(env_spec=env.spec,
                                        state_include_action=True)

            policy.reset()
            obs = env.reset()

            policy.dist_info_sym(
                obs_var=obs_ph,
                state_info_vars={'prev_action': np.zeros((3, 1, 1))},
                name='p2_sym')
        # observation batch size = 2 but prev_action batch size = 3
        with pytest.raises(tf.errors.InvalidArgumentError):
            self.sess.run(
                policy.model.networks['p2_sym'].input,
                feed_dict={obs_ph: [[obs.flatten()], [obs.flatten()]]})
 def test_state_info_specs(self):
     env = MetaRLEnv(DummyBoxEnv(obs_dim=(4, ), action_dim=(4, )))
     policy = GaussianLSTMPolicy(env_spec=env.spec,
                                 state_include_action=False)
     assert policy.state_info_specs == []
 def test_clone(self):
     env = MetaRLEnv(DummyBoxEnv(obs_dim=(4, ), action_dim=(4, )))
     policy = GaussianLSTMPolicy(env_spec=env.spec)
     policy_clone = policy.clone('GaussianLSTMPolicyClone')
     assert policy_clone.env_spec == policy.env_spec
 def test_state_info_specs_with_state_include_action(self):
     env = MetaRLEnv(DummyBoxEnv(obs_dim=(4, ), action_dim=(4, )))
     policy = GaussianLSTMPolicy(env_spec=env.spec,
                                 state_include_action=True)
     assert policy.state_info_specs == [('prev_action', (4, ))]
 def test_invalid_env(self):
     env = TfEnv(DummyDiscreteEnv())
     with pytest.raises(ValueError):
         GaussianLSTMPolicy(env_spec=env.spec)