Ejemplo n.º 1
0
    def test_init(self):
        ddpg, locals = self.create_ddpg()
        env_spec = locals['env_spec']
        env = locals['env']
        mlp_dyna = self.create_continuous_mlp_global_dynamics_model(env_spec=env_spec)[0]
        algo = self.create_dyna(env_spec=env_spec, model_free_algo=ddpg, dyanmics_model=mlp_dyna)[0]
        algo.init()

        st = env.reset()
        data = TransitionData(env_spec)

        for _ in range(100):
            ac = algo.predict(st)
            new_st, re, done, _ = env.step(action=ac)
            data.append(state=st,
                        new_state=new_st,
                        reward=re,
                        action=ac,
                        done=done)
        algo.append_to_memory(samples=data)
        pre_res = 10000
        for i in range(20):
            print(algo.train(batch_data=data))
            print(algo.train(batch_data=data, state='state_dynamics_training'))
            print(algo.train(batch_data=data, state='state_agent_training'))
            res = algo.test_dynamics(env=env, sample_count=100)
            self.assertLess(list(res.values())[0], pre_res)
            self.assertLess(list(res.values())[1], pre_res)
            print(res)
        algo.test()
Ejemplo n.º 2
0
 def test_with_dqn(self):
     dqn, local = self.create_dqn()
     env = local['env']
     env_spec = local['env_spec']
     dqn.init()
     st = env.reset()
     from baconian.common.sampler.sample_data import TransitionData
     a = TransitionData(env_spec)
     res = []
     for i in range(100):
         ac = dqn.predict(obs=st, sess=self.sess, batch_flag=False)
         st_new, re, done, _ = env.step(action=ac)
         a.append(state=st,
                  new_state=st_new,
                  action=ac,
                  done=done,
                  reward=re)
         dqn.append_to_memory(a)
     res.append(
         dqn.train(batch_data=a,
                   train_iter=10,
                   sess=None,
                   update_target=True)['average_loss'])
     res.append(
         dqn.train(batch_data=None,
                   train_iter=10,
                   sess=None,
                   update_target=True)['average_loss'])
     print(dqn._status())
     print(dqn._status._info_dict_with_sub_info)
Ejemplo n.º 3
0
 def test_trajectory_data(self):
     env = make('Acrobot-v1')
     env_spec = EnvSpec(obs_space=env.observation_space,
                        action_space=env.action_space)
     a = TrajectoryData(env_spec)
     tmp_traj = TransitionData(env_spec)
     st = env.reset()
     re_list = []
     st_list = []
     for i in range(100):
         ac = env_spec.action_space.sample()
         st_new, re, done, _ = env.step(action=ac)
         st_list.append(st_new)
         re_list.append(re)
         if (i + 1) % 10 == 0:
             done = True
         else:
             done = False
         tmp_traj.append(state=st,
                         new_state=st_new,
                         action=ac,
                         done=done,
                         reward=re)
         if done:
             a.append(tmp_traj.get_copy())
             tmp_traj.reset()
     self.assertEqual(a.trajectories.__len__(), 10)
     for traj in a.trajectories:
         self.assertEqual(len(traj), 10)
Ejemplo n.º 4
0
    def DynaMLP_get_action(self, mlp_dyna: DynamicsModel, env: Env, state,
                           cost_fn, num_simulated_paths, horizon):
        '''
        mpc.ModelBasedModelPredictiveControl.predict()

        :param mlp_dyna:
        :param env:
        :param state:
        :param cost_fn:
        :param num_simulated_paths:
        :param horizon:
        :return:
        '''
        rollout = TrajectoryData(env_spec=env.env_spec)
        for i in range(num_simulated_paths):
            path = TransitionData(env_spec=env.env_spec)
            obs = state
            for j in range(horizon):
                action = env.action_space.sample()
                obs_ = mlp_dyna.step(action=action, state=obs)
                cost = cost_fn(obs, action, obs_)
                path.append(obs, action, obs_, False, -cost)
                obs = obs_

            rollout.append(path)
        rollout.trajectories.sort(key=lambda x: x.cumulative_reward,
                                  reverse=True)
        optimial_action = rollout.trajectories[0].action_set[0]
        return optimial_action
Ejemplo n.º 5
0
    def test_sample_batch(self):
        env = make('ModifiedHalfCheetah')
        env.init()
        env_spec = env.env_spec
        random_buffer = TransitionData(env_spec=env_spec, obs_shape=env_spec.obs_shape, \
                                       action_shape=env_spec.action_shape, size=100)
        print("====> Random Sample")
        num_trajectory = 1
        max_step = 30

        for i in range(num_trajectory):
            ep_len = 0
            obs = env.reset()
            while ep_len < max_step:
                act = self.RandomController_get_action(env=env, state=obs)
                obs_, reward, done, _ = env.step(act)
                random_buffer.append(obs, act, obs_, done, reward)
                assert not done
                obs = obs_
                ep_len += 1

        batch_data_1 = random_buffer.sample_batch(batch_size=16,
                                                  shuffle_flag=True)
        assert isinstance(batch_data_1, dict)
        print(batch_data_1.keys())

        self.assertEqual(len(batch_data_1['action_set']), 16)
Ejemplo n.º 6
0
    def sample(self, batch_size) -> SampleData:
        if self.nb_entries < batch_size:
            raise MemoryBufferLessThanBatchSizeError()

        # todo This will be changed to prioritised
        batch_idxs = np.random.randint(self.nb_entries - 2, size=batch_size)

        obs0_batch = self.observations0.get_batch(batch_idxs)
        obs1_batch = self.observations1.get_batch(batch_idxs)
        action_batch = self.actions.get_batch(batch_idxs)
        reward_batch = self.rewards.get_batch(batch_idxs)
        terminal1_batch = self.terminals1.get_batch(batch_idxs)

        result = {
            'obs0': array_min2d(obs0_batch),
            'obs1': array_min2d(obs1_batch),
            'rewards': array_min2d(reward_batch),
            'actions': array_min2d(action_batch),
            'terminals1': array_min2d(terminal1_batch),
        }

        res = TransitionData(obs_shape=self.obs_shape,
                             action_shape=self.action_shape)
        for obs0, obs1, action, terminal, re in zip(result['obs0'],
                                                    result['obs1'],
                                                    result['actions'],
                                                    result['terminals1'],
                                                    result['rewards']):
            res.append(state=obs0,
                       new_state=obs1,
                       action=action,
                       done=terminal,
                       reward=re)
        return res
Ejemplo n.º 7
0
 def test_trajectory_data(self):
     env = make('Acrobot-v1')
     env_spec = EnvSpec(obs_space=env.observation_space,
                        action_space=env.action_space)
     a = TrajectoryData(env_spec)
     tmp_traj = TransitionData(env_spec)
     st = env.reset()
     re_list = []
     st_list = []
     for i in range(100):
         ac = env_spec.action_space.sample()
         st_new, re, done, _ = env.step(action=ac)
         st_list.append(st_new)
         re_list.append(re)
         if (i + 1) % 10 == 0:
             done = True
         else:
             done = False
         tmp_traj.append(state=st,
                         new_state=st_new,
                         action=ac,
                         done=done,
                         reward=re)
         if done is True:
             a.append(tmp_traj)
             tmp_traj.reset()
     self.assertEqual(a.trajectories.__len__(), 10)
     for traj in a.trajectories:
         self.assertEqual(len(traj), 10)
     data = a.return_as_transition_data()
     data_gen = data.return_generator()
     for d, re, st in zip(data_gen, re_list, st_list):
         self.assertEqual(d[3], re)
         self.assertTrue(np.equal(st, d[1]).all())
Ejemplo n.º 8
0
    def wrap_func():
        mlp_dyna, local = self.create_continue_dynamics_model(
            env_id='Pendulum-v0')
        env_spec = local['env_spec']
        env = local['env']
        policy = func(env_spec=env_spec)[0]
        algo, locals = self.create_mpc(env_spec=env_spec,
                                       mlp_dyna=mlp_dyna,
                                       policy=policy,
                                       env=env)
        algo.init()
        for _ in range(100):
            assert env_spec.action_space.contains(
                algo.predict(env_spec.obs_space.sample()))

        st = env.reset()
        data = TransitionData(env_spec)

        for _ in range(10):
            ac = algo.predict(st)
            new_st, re, done, _ = env.step(action=ac)
            data.append(state=st,
                        new_state=new_st,
                        reward=re,
                        action=ac,
                        done=done)
        print(algo.train(batch_data=data))
Ejemplo n.º 9
0
    def test_StandScaler(self):
        env = make('ModifiedHalfCheetah')
        env_spec = env.env_spec
        self.assertEqual(env_spec.flat_obs_dim, 18)
        self.assertEqual(env_spec.flat_action_dim, 6)

        buffer_size = 10
        buffer = TransitionData(env_spec=env_spec, obs_shape=env_spec.obs_shape, \
                       action_shape=env_spec.action_shape, size=buffer_size)
        obs = env.reset()
        for i in range(buffer_size):
            act = env.action_space.sample()
            obs_, rew, done, _ = env.step(act)
            buffer.append(obs, act, obs_, done, rew)

        batch_list = buffer.sample_batch_as_Transition(4, all_as_batch=True)
        state_input_scaler_1 = RunningStandardScaler(env_spec.flat_action_dim)

        for batch_data in batch_list:
            state_input_scaler_1.update_scaler(batch_data.action_set)

        mean_1 = state_input_scaler_1._mean
        var_1 = state_input_scaler_1._var

        print(mean_1)
        print(var_1)

        state_input_scaler_2 = RunningStandardScaler(env_spec.flat_action_dim)
        state_input_scaler_2.update_scaler(buffer.action_set)
        mean_2 = state_input_scaler_2._mean
        var_2 = state_input_scaler_2._var
        print(mean_2)
        print(var_2)
Ejemplo n.º 10
0
    def test_apply_normalization(self):
        '''
        Test normalization & denormalization in Transition.apply_(de)normalization
        '''
        mlp_dyna, local = self.create_continue_dynamics_model(
            env_id='ModifiedHalfCheetah', name='mlp_dyna_model')
        mlp_dyna.init()
        print(mlp_dyna.state_input_scaler)

        env = local['env']
        assert isinstance(env, ModifiedHalfCheetahEnv)
        env_spec = env.env_spec
        buffer_size = 50
        random_buffer = TransitionData(env_spec=env_spec, obs_shape=env_spec.obs_shape, \
                                       action_shape=env_spec.action_shape, size=buffer_size)

        obs = env.reset()
        for i in range(buffer_size):
            act = env.action_space.sample()
            obs_, reward, done, info = env.step(act)
            random_buffer.append(obs, act, obs_, done, reward)

        normalized_random_buffer, mean_dict, var_dict = random_buffer.apply_normalization(
        )
        denormalized_random_buffer = normalized_random_buffer.apply_denormalization(
            None, mean_dict, var_dict)

        self.assertEqual(random_buffer.action_set.any(),
                         denormalized_random_buffer.action_set.any())
        self.assertEqual(random_buffer.state_set.any(),
                         denormalized_random_buffer.state_set.any())
Ejemplo n.º 11
0
    def _launch(self) -> bool:
        env = self.env
        env_spec = self.env_spec
        cyber = self.cyber

        obs, ep_ret, ep_len = env.reset(), 0, 0
        for step in range(self.total_steps):
            self.step_counter.increase(1)
            act = self.agent.predict(obs=obs)
            obs_, reward, done, _ = cyber.step(obs, act)
            _buffer = TransitionData(env_spec=env_spec, obs_shape=env_spec.obs_shape, action_shape=env_spec.action_shape)
            _buffer.append(obs, act, obs_, done, reward)
            self.agent.algo.append_to_memory(_buffer)
            ep_ret += reward
            ep_len += 1

            if done or ep_len > self.max_step_per_episode:
                obs, ep_ret, ep_len = env.reset(), 0, 0
            else:
                obs = obs_

            if step > self.train_after_step and step % self.train_every_step == 0:
                self.agent.train()
            if step > self.test_after_step and step % self.test_every_step == 0:
                self.data_sample, self.test_reward = self.agent.test(env=env,
                                                                     cyber=cyber,
                                                                     data_sample=self.data_sample,
                                                                     test_reward=self.test_reward,
                                                                     num_test=self.num_test,
                                                                     max_step_per_episode=self.max_step_per_episode)
        env.close()
        self.plot_test_reward(self.data_sample, self.test_reward)
        return True
Ejemplo n.º 12
0
	def test_prior_eval(self):
		env = make('Pendulum-v0')
		name = 'demo_exp'
		env_spec = EnvSpec(obs_space=env.observation_space, action_space=env.action_space)
		data = TransitionData(env_spec=env_spec)
		policy = UniformRandomPolicy(env_spec=env_spec)

		# Do some initial sampling here to train gmm model
		st = env.reset()
		for i in range(100):
			ac = policy.forward(st)
			new_st, re, _, _ = env.step(ac)
			data.append(state=st, new_state=new_st, action=ac, reward=re, done=False)
			st = new_st

		gmm = GaussianMixtureDynamicsPrior(env_spec=env_spec, batch_data=data)
		gmm.init()
		gmm.update(batch_data=data)
		mu0, Phi, m, n0 = gmm.eval(batch_data=data)

		state_shape = data.state_set.shape[1]
		action_shape = data.action_set.shape[1]
		self.assertEqual(state_shape + action_shape + state_shape, mu0.shape[0])
		self.assertEqual(state_shape + action_shape + state_shape, Phi.shape[0])
		self.assertEqual(state_shape + action_shape + state_shape, Phi.shape[1])
Ejemplo n.º 13
0
    def test_Transition_union(self):
        '''
        Useless testcase.
        '''
        algo, locals = self.create_mpc(name='test_Transition_union')
        env_spec = locals['env_spec']
        env = locals['env']
        env.env_spec = env_spec

        algo.init()
        for _ in range(100):
            assert env_spec.action_space.contains(
                algo.predict(env_spec.obs_space.sample()))

        st = env.reset()
        data = TransitionData(env_spec)

        for _ in range(10):
            ac = algo.predict(st)
            new_st, re, done, _ = env.step(action=ac)
            data.append(state=st,
                        new_state=new_st,
                        reward=re,
                        action=ac,
                        done=done)
        print(algo.train(batch_data=data))
Ejemplo n.º 14
0
    def test_init(self):
        dqn, locals = self.create_dqn()
        env = locals['env']
        env_spec = locals['env_spec']
        dqn.init()
        st = env.reset()
        a = TransitionData(env_spec)
        for i in range(100):
            ac = dqn.predict(obs=st, sess=self.sess, batch_flag=False)
            st_new, re, done, _ = env.step(action=ac)
            a.append(state=st, new_state=st_new, action=ac, done=done, reward=re)
            st = st_new
            dqn.append_to_memory(a)
        new_dqn, _ = self.create_dqn(name='new_dqn')
        new_dqn.copy_from(dqn)
        self.assert_var_list_id_no_equal(dqn.q_value_func.parameters('tf_var_list'),
                                         new_dqn.q_value_func.parameters('tf_var_list'))
        self.assert_var_list_id_no_equal(dqn.target_q_value_func.parameters('tf_var_list'),
                                         new_dqn.target_q_value_func.parameters('tf_var_list'))

        self.assert_var_list_equal(dqn.q_value_func.parameters('tf_var_list'),
                                   new_dqn.q_value_func.parameters('tf_var_list'))
        self.assert_var_list_equal(dqn.target_q_value_func.parameters('tf_var_list'),
                                   new_dqn.target_q_value_func.parameters('tf_var_list'))

        dqn.save(save_path=GlobalConfig().DEFAULT_LOG_PATH + '/dqn_test',
                 global_step=0,
                 name=dqn.name)

        for i in range(10):
            print(dqn.train(batch_data=a, train_iter=10, sess=None, update_target=True))
            print(dqn.train(batch_data=None, train_iter=10, sess=None, update_target=True))

        self.assert_var_list_at_least_not_equal(dqn.q_value_func.parameters('tf_var_list'),
                                                new_dqn.q_value_func.parameters('tf_var_list'))

        self.assert_var_list_at_least_not_equal(dqn.target_q_value_func.parameters('tf_var_list'),
                                                new_dqn.target_q_value_func.parameters('tf_var_list'))

        dqn.load(path_to_model=GlobalConfig().DEFAULT_LOG_PATH + '/dqn_test',
                 model_name=dqn.name,
                 global_step=0)

        self.assert_var_list_equal(dqn.q_value_func.parameters('tf_var_list'),
                                   new_dqn.q_value_func.parameters('tf_var_list'))
        self.assert_var_list_equal(dqn.target_q_value_func.parameters('tf_var_list'),
                                   new_dqn.target_q_value_func.parameters('tf_var_list'))
        for i in range(10):
            self.sess.run(dqn.update_target_q_value_func_op,
                          feed_dict=dqn.parameters.return_tf_parameter_feed_dict())
            var1 = self.sess.run(dqn.q_value_func.parameters('tf_var_list'))
            var2 = self.sess.run(dqn.target_q_value_func.parameters('tf_var_list'))
            import numpy as np
            total_diff = 0.0
            for v1, v2 in zip(var1, var2):
                total_diff += np.mean(np.abs(np.array(v1) - np.array(v2)))
            print('update target, difference mean', total_diff)
def get_some_samples(env, num, env_spec, policy):
    data = TransitionData(env_spec=env_spec)
    st = env.reset()
    for i in range(num):
        ac = policy.forward(st)
        new_st, re, _, _ = env.step(ac)
        data.append(state=st, new_state=new_st, action=ac, reward=re, done=False)
        st = new_st
    return data
Ejemplo n.º 16
0
 def sample_transition(self, env, count=100):
     data = TransitionData(env.env_spec)
     st = env.get_state()
     for i in range(count):
         ac = env.env_spec.action_space.sample()
         new_st, re, done, info = env.step(action=ac)
         data.append(state=st,
                     action=ac,
                     new_state=new_st,
                     done=done,
                     reward=re)
     return data
    def test_mlp_dynamics_model(self):
        mlp_dyna, local = self.create_continue_dynamics_model(
            name='mlp_dyna_model')
        env = local['env']
        env_spec = local['env_spec']
        env.reset()
        mlp_dyna.init()
        for i in range(100):
            mlp_dyna.step(action=np.array(env_spec.action_space.sample()),
                          state=env_spec.obs_space.sample())
        data = TransitionData(env_spec)
        st = env.get_state()
        for i in range(10):
            ac = env_spec.action_space.sample()
            new_st, re, done, info = env.step(action=ac)
            data.append(state=st,
                        action=ac,
                        new_state=new_st,
                        done=done,
                        reward=re)
            st = new_st
        print(mlp_dyna.train(batch_data=data, train_iter=10))
        mlp_dyna_2, _ = self.create_continue_dynamics_model(name='model_2')
        mlp_dyna_2.init()
        self.assert_var_list_at_least_not_equal(
            var_list1=mlp_dyna.parameters('tf_var_list'),
            var_list2=mlp_dyna_2.parameters('tf_var_list'))

        self.assert_var_list_id_no_equal(
            var_list1=mlp_dyna.parameters('tf_var_list'),
            var_list2=mlp_dyna_2.parameters('tf_var_list'))

        mlp_dyna_2.init(source_obj=mlp_dyna)

        self.assert_var_list_equal(
            var_list1=mlp_dyna.parameters('tf_var_list'),
            var_list2=mlp_dyna_2.parameters('tf_var_list'))

        self.assert_var_list_id_no_equal(
            var_list1=mlp_dyna.parameters('tf_var_list'),
            var_list2=mlp_dyna_2.parameters('tf_var_list'))

        mlp_dyna_2.copy_from(mlp_dyna)

        self.assert_var_list_equal(
            var_list1=mlp_dyna.parameters('tf_var_list'),
            var_list2=mlp_dyna_2.parameters('tf_var_list'))

        self.assert_var_list_id_no_equal(
            var_list1=mlp_dyna.parameters('tf_var_list'),
            var_list2=mlp_dyna_2.parameters('tf_var_list'))
Ejemplo n.º 18
0
    def test_dynamics_model_in_pendulum(self):
        env = self.create_env('Pendulum-v0')
        env_spec = EnvSpec(obs_space=env.observation_space, action_space=env.action_space)
        policy, _ = self.create_uniform_policy(env_spec=env_spec)
        data = TransitionData(env_spec=env_spec)
        st = env.reset()
        for i in range(100):
            ac = policy.forward(st)
            new_st, re, _, _ = env.step(ac)
            data.append(state=st, new_state=new_st, action=ac, reward=re, done=False)
            st = new_st

        gp = GaussianProcessDyanmicsModel(env_spec=env_spec, batch_data=data)
        gp.init()
        gp.train()
        for i in range(len(data.state_set)):
            res = gp.step(action=data.action_set[i],
                          state=data.state_set[i],
                          allow_clip=True)
            _, var = gp._state_transit(action=data.action_set[i],
                                       state=data.state_set[i],
                                       required_var=True)
            print(res)
            print(data.new_state_set[i])
            print(np.sqrt(var))
            # self.assertTrue(np.isclose(res,
            #                            data.new_state_set[i], atol=1e-3).all())
            self.assertTrue(np.greater(data.new_state_set[i] + 1.96 * np.sqrt(var), res).all())
            self.assertTrue(np.less(data.new_state_set[i] - 1.96 * np.sqrt(var), res).all())

        lengthscales = {}
        variances = {}
        noises = {}
        for i, model in enumerate(gp.mgpr_model.models):
            lengthscales['GP' + str(i)] = model.kern.lengthscales.value
            variances['GP' + str(i)] = np.array([model.kern.variance.value])
            noises['GP' + str(i)] = np.array([model.likelihood.variance.value])
        print('-----Learned models------')
        pd.set_option('precision', 3)
        print('---Lengthscales---')
        print(pd.DataFrame(data=lengthscales))
        print('---Variances---')
        print(pd.DataFrame(data=variances))
        print('---Noises---')
        print(pd.DataFrame(data=noises))
Ejemplo n.º 19
0
 def test_dynamics_model_basic(self):
     env = self.create_env('Pendulum-v0')
     env_spec = EnvSpec(obs_space=env.observation_space, action_space=env.action_space)
     policy, _ = self.create_uniform_policy(env_spec=env_spec)
     data = TransitionData(env_spec=env_spec)
     st = env.reset()
     ac = policy.forward(st)
     for i in range(10):
         re = 0.0
         data.append(state=np.ones_like(st) * 0.5, new_state=np.ones_like(st),
                     reward=re, done=False, action=np.ones_like(ac) * 0.1)
         data.append(state=np.ones_like(st), new_state=np.ones_like(st) * 0.5,
                     reward=re, done=False, action=np.ones_like(ac) * -0.1)
     gp = GaussianProcessDyanmicsModel(env_spec=env_spec, batch_data=data)
     gp.init()
     gp.train()
     lengthscales = {}
     variances = {}
     noises = {}
     i = 0
     for model in gp.mgpr_model.models:
         lengthscales['GP' + str(i)] = model.kern.lengthscales.value
         variances['GP' + str(i)] = np.array([model.kern.variance.value])
         noises['GP' + str(i)] = np.array([model.likelihood.variance.value])
         i += 1
     print('-----Learned models------')
     pd.set_option('precision', 3)
     print('---Lengthscales---')
     print(pd.DataFrame(data=lengthscales))
     print('---Variances---')
     print(pd.DataFrame(data=variances))
     print('---Noises---')
     print(pd.DataFrame(data=noises))
     for i in range(5):
         self.assertTrue(np.isclose(gp.step(action=np.ones_like(ac) * -0.1,
                                            state=np.ones_like(st)),
                                    np.ones_like(st) * 0.5).all())
     for i in range(5):
         self.assertTrue(np.isclose(gp.step(action=np.ones_like(ac) * 0.1,
                                            state=np.ones_like(st) * 0.5),
                                    np.ones_like(st)).all())
     for i in range(5):
         print(gp.step(action=np.ones_like(ac) * -0.1,
                       state=np.ones_like(st) * 0.5))
Ejemplo n.º 20
0
    def _sample_transitions(self, env: Env, agent, sample_count, init_state):
        state = init_state
        sample_record = TransitionData(env_spec=self.env_spec)

        for i in range(sample_count):
            action = agent.predict(obs=state)
            new_state, re, done, info = env.step(action)
            if not isinstance(done, bool):
                raise TypeError()
            sample_record.append(state=state,
                                 action=action,
                                 reward=re,
                                 new_state=new_state,
                                 done=done)
            if done:
                state = env.reset()
            else:
                state = new_state
        return sample_record
Ejemplo n.º 21
0
    def predict(self, obs, **kwargs):
        if self.is_training is True:
            return self.env_spec.action_space.sample()

        rollout = TrajectoryData(env_spec=self.env_spec)
        state = obs
        for i in range(self.parameters('SAMPLED_PATH_NUM')):
            path = TransitionData(env_spec=self.env_spec)
            # todo terminal_func signal problem to be consider?
            for _ in range(self.parameters('SAMPLED_HORIZON')):
                ac = self.policy.forward(obs=state)
                new_state, re, done, _ = self.dynamics_env.step(action=ac, state=state) # step() as an Env
                path.append(state=state, action=ac, new_state=new_state, reward=re, done=done)
                state = new_state
            rollout.append(path)
        rollout.trajectories.sort(key=lambda x: x.cumulative_reward, reverse=True)
        ac = rollout.trajectories[0].action_set[0]
        assert self.env_spec.action_space.contains(ac)
        return ac
Ejemplo n.º 22
0
    def test_random_buffer_1(self):
        env = make('ModifiedHalfCheetah')
        # env.init()
        env_spec = env.env_spec
        random_buffer = TransitionData(env_spec=env_spec, obs_shape=env_spec.obs_shape, \
                                       action_shape=env_spec.action_shape, size=5)
        rl_buffer = TransitionData(env_spec=env_spec, obs_shape=env_spec.obs_shape, \
                                   action_shape=env_spec.action_shape, size=10)

        max_step = 10
        ep_len = 0
        obs = env.reset()
        while ep_len < max_step:
            act = self.RandomController_get_action(env=env, state=obs)
            obs_, reward, done, _ = env.step(act)
            random_buffer.append(obs, act, obs_, done, reward)
            assert not done
            obs = obs_
            ep_len += 1
Ejemplo n.º 23
0
 def _sample_trajectories(self, env, agent, sample_count, init_state):
     state = init_state
     sample_record = TrajectoryData(self.env_spec)
     done = False
     for i in range(sample_count):
         traj_record = TransitionData(self.env_spec)
         while done is not True:
             action = agent.predict(obs=state)
             new_state, re, done, info = env.step(action)
             if not isinstance(done, bool):
                 raise TypeError()
             traj_record.append(state=state,
                                action=action,
                                reward=re,
                                new_state=new_state,
                                done=done)
             state = new_state
         state = env.reset()
         sample_record.append(traj_record)
     return sample_record
Ejemplo n.º 24
0
    def test_init_continuous(self):
        algo, locals = self.create_mpc(env_id='Pendulum-v0')
        env_spec = locals['env_spec']
        env = locals['env']
        algo.init()
        for _ in range(100):
            assert env_spec.action_space.contains(
                algo.predict(env_spec.obs_space.sample()))

        st = env.reset()
        data = TransitionData(env_spec)

        for _ in range(10):
            ac = algo.predict(st)
            new_st, re, done, _ = env.step(action=ac)
            data.append(state=st,
                        new_state=new_st,
                        reward=re,
                        action=ac,
                        done=done)
        print(algo.train(batch_data=data))
Ejemplo n.º 25
0
    def _test_1(self):
        mlp_dyna, local = self.create_continue_dynamics_model(
            env_id='ModifiedHalfCheetah', name='mlp_dyna_model')
        print(local.items())
        env = local['env']
        assert isinstance(env, ModifiedHalfCheetahEnv)
        env_spec = env.env_spec

        batch_data = TransitionData(env_spec=env_spec, obs_shape=env_spec.obs_shape, \
                                   action_shape=env_spec.action_shape)
        batch_size = 32
        obs = env.reset()
        for i in range(batch_size):
            act = self.RandomController_get_action(env=env, state=obs)
            obs_, reward, done, info = env.step(action=act)
            batch_data.append(obs, act, obs_, done, reward)
        self.assertEqual(len(batch_data), batch_size)

        mlp_dyna.init()
        train_epoch = 20
        for i in range(train_epoch):
            res = mlp_dyna.train(batch_data, train_iter=10)
            print('iter:{} loss:{}'.format(i, res))
Ejemplo n.º 26
0
    def predict(self, obs, is_reward_func=True):
        '''
        Sample SAMPLED_PATH_NUM trajectories started from 'obs'. Return the optimal action.

        :param obs: Initial state.
        :param reverse_sort_flag: Decide the sort direction of trajectories, set to 'True' when using reward func.
        :return: Optimal action for 'obs'.
        '''

        rollout = TrajectoryData(env_spec=self.env_spec)
        for i in range(self.parameters('SAMPLED_PATH_NUM')):
            path = TransitionData(env_spec=self.env_spec)
            state = obs
            for j in range(self.parameters('SAMPLED_HORIZON')):
                act = self.policy.forward(obs=state)    # env.action_space.sample()
                new_state, cost, _, _ = self.dynamics_env.step(action=act, state=state) # step() as an Env
                path.append(state=state, action=act, new_state=new_state, reward=cost, done=False)
                state = new_state
            rollout.append(path)
        rollout.trajectories.sort(key=lambda x: x.cumulative_reward, reverse=is_reward_func)
        optimal_act = rollout.trajectories[0].action_set[0]
        assert self.env_spec.action_space.contains(optimal_act)
        return optimal_act
Ejemplo n.º 27
0
from baconian.algo.dynamics.dynamics_model import DynamicsEnvWrapper
from baconian.algo.dynamics.terminal_func.terminal_func import RandomTerminalFunc
from baconian.algo.dynamics.reward_func.reward_func import RandomRewardFunc

env = make('Pendulum-v0')
name = 'demo_exp'
env_spec = EnvSpec(obs_space=env.observation_space,
                   action_space=env.action_space)
data = TransitionData(env_spec=env_spec)
policy = UniformRandomPolicy(env_spec=env_spec)
# Do some initial sampling here to train GP model
st = env.reset()
for i in range(100):
    ac = policy.forward(st)
    new_st, re, _, _ = env.step(ac)
    data.append(state=st, new_state=new_st, action=ac, reward=re, done=False)
    st = new_st

gp = GaussianProcessDyanmicsModel(env_spec=env_spec, batch_data=data)
gp.init()
gp.train()

dyna_env = DynamicsEnvWrapper(dynamics=gp)
# Since we only care about the prediction here, so we pass the terminal function and reward function setting with
# random one
dyna_env.set_terminal_reward_func(terminal_func=RandomTerminalFunc(),
                                  reward_func=RandomRewardFunc())

st = env.reset()
real_state_list = []
dynamics_state_list = []
Ejemplo n.º 28
0
class PPO(ModelFreeAlgo, OnPolicyAlgo, MultiPlaceholderInput):
    required_key_dict = DictConfig.load_json(
        file_path=GlobalConfig().DEFAULT_PPO_REQUIRED_KEY_LIST)

    @typechecked
    def __init__(self,
                 env_spec: EnvSpec,
                 stochastic_policy: StochasticPolicy,
                 config_or_config_dict: (DictConfig, dict),
                 value_func: VValueFunction,
                 name='ppo'):
        ModelFreeAlgo.__init__(self, env_spec=env_spec, name=name)

        self.config = construct_dict_config(config_or_config_dict, self)
        self.policy = stochastic_policy
        self.value_func = value_func
        to_ph_parameter_dict = dict()
        self.trajectory_memory = TrajectoryData(env_spec=env_spec)
        self.transition_data_for_trajectory = TransitionData(env_spec=env_spec)
        self.value_func_train_data_buffer = None
        # self.scaler = Scaler(obs_dim=self.env_spec.flat_obs_dim)
        self.scaler = RunningStandardScaler(dims=self.env_spec.flat_obs_dim)

        with tf.variable_scope(name):
            self.advantages_ph = tf.placeholder(tf.float32, (None, ),
                                                'advantages')
            self.v_func_val_ph = tf.placeholder(tf.float32, (None, ),
                                                'val_valfunc')
            dist_info_list = self.policy.get_dist_info()
            self.old_dist_tensor = [
                (tf.placeholder(**dict(dtype=dist_info['dtype'],
                                       shape=dist_info['shape'],
                                       name=dist_info['name'])),
                 dist_info['name']) for dist_info in dist_info_list
            ]
            self.old_policy = self.policy.make_copy(
                reuse=False,
                name_scope='old_{}'.format(self.policy.name),
                name='old_{}'.format(self.policy.name),
                distribution_tensors_tuple=tuple(self.old_dist_tensor))
            to_ph_parameter_dict['beta'] = tf.placeholder(
                tf.float32, (), 'beta')
            to_ph_parameter_dict['eta'] = tf.placeholder(tf.float32, (), 'eta')
            to_ph_parameter_dict['kl_target'] = tf.placeholder(
                tf.float32, (), 'kl_target')
            to_ph_parameter_dict['lr_multiplier'] = tf.placeholder(
                tf.float32, (), 'lr_multiplier')

        self.parameters = ParametersWithTensorflowVariable(
            tf_var_list=[],
            rest_parameters=dict(
                advantages_ph=self.advantages_ph,
                v_func_val_ph=self.v_func_val_ph,
            ),
            to_ph_parameter_dict=to_ph_parameter_dict,
            name='ppo_param',
            save_rest_param_flag=False,
            source_config=self.config,
            require_snapshot=False)
        with tf.variable_scope(name):
            with tf.variable_scope('train'):
                self.kl = tf.reduce_mean(self.old_policy.kl(other=self.policy))
                self.policy_loss, self.policy_optimizer, self.policy_update_op = self._setup_policy_loss(
                )
                self.value_func_loss, self.value_func_optimizer, self.value_func_update_op = self._setup_value_func_loss(
                )
        var_list = get_tf_collection_var_list(
            '{}/train'.format(name)) + self.policy_optimizer.variables(
            ) + self.value_func_optimizer.variables()
        self.parameters.set_tf_var_list(
            tf_var_list=sorted(list(set(var_list)), key=lambda x: x.name))

        MultiPlaceholderInput.__init__(self,
                                       sub_placeholder_input_list=[
                                           dict(
                                               obj=self.value_func,
                                               attr_name='value_func',
                                           ),
                                           dict(obj=self.policy,
                                                attr_name='policy')
                                       ],
                                       parameters=self.parameters)

    @register_counter_info_to_status_decorator(increment=1,
                                               info_key='init',
                                               under_status='JUST_INITED')
    def init(self, sess=None, source_obj=None):
        self.policy.init()
        self.value_func.init()
        self.parameters.init()
        if source_obj:
            self.copy_from(source_obj)
        super().init()

    @record_return_decorator(which_recorder='self')
    @register_counter_info_to_status_decorator(increment=1,
                                               info_key='train',
                                               under_status='TRAIN')
    @typechecked
    def train(self,
              trajectory_data: TrajectoryData = None,
              train_iter=None,
              sess=None) -> dict:
        super(PPO, self).train()
        if trajectory_data is None:
            trajectory_data = self.trajectory_memory
        if len(trajectory_data) == 0:
            raise MemoryBufferLessThanBatchSizeError(
                'not enough trajectory data')
        tf_sess = sess if sess else tf.get_default_session()
        SampleProcessor.add_estimated_v_value(trajectory_data,
                                              value_func=self.value_func)
        SampleProcessor.add_discount_sum_reward(trajectory_data,
                                                gamma=self.parameters('gamma'))
        SampleProcessor.add_gae(trajectory_data,
                                gamma=self.parameters('gamma'),
                                name='advantage_set',
                                lam=self.parameters('lam'),
                                value_func=self.value_func)

        train_data = trajectory_data.return_as_transition_data(
            shuffle_flag=False)
        SampleProcessor.normalization(train_data, key='advantage_set')
        policy_res_dict = self._update_policy(
            train_data=train_data,
            train_iter=train_iter
            if train_iter else self.parameters('policy_train_iter'),
            sess=tf_sess)
        value_func_res_dict = self._update_value_func(
            train_data=train_data,
            train_iter=train_iter
            if train_iter else self.parameters('value_func_train_iter'),
            sess=tf_sess)
        self.trajectory_memory.reset()
        return {**policy_res_dict, **value_func_res_dict}

    @register_counter_info_to_status_decorator(increment=1,
                                               info_key='test',
                                               under_status='TEST')
    def test(self, *arg, **kwargs) -> dict:
        return super().test(*arg, **kwargs)

    @register_counter_info_to_status_decorator(increment=1, info_key='predict')
    @typechecked
    def predict(self, obs: np.ndarray, sess=None, batch_flag: bool = False):
        tf_sess = sess if sess else tf.get_default_session()
        obs = make_batch(obs, original_shape=self.env_spec.obs_shape)
        obs = self.scaler.process(data=obs)
        ac = self.policy.forward(
            obs=obs,
            sess=tf_sess,
            feed_dict=self.parameters.return_tf_parameter_feed_dict())
        return ac

    @typechecked
    def append_to_memory(self, samples: SampleData):
        # todo how to make sure the data's time sequential
        iter_samples = samples.return_generator()
        # scale, offset = self.scaler.get()
        obs_list = []
        for state, new_state, action, reward, done in iter_samples:
            obs_list.append(state)
            self.transition_data_for_trajectory.append(
                state=self.scaler.process(state),
                new_state=self.scaler.process(new_state),
                action=action,
                reward=reward,
                done=done)
            if done is True:
                self.trajectory_memory.append(
                    self.transition_data_for_trajectory)
                self.transition_data_for_trajectory.reset()
        self.scaler.update_scaler(data=np.array(obs_list))

    @record_return_decorator(which_recorder='self')
    def save(self, global_step, save_path=None, name=None, **kwargs):
        save_path = save_path if save_path else GlobalConfig(
        ).DEFAULT_MODEL_CHECKPOINT_PATH
        name = name if name else self.name
        MultiPlaceholderInput.save(self,
                                   save_path=save_path,
                                   global_step=global_step,
                                   name=name,
                                   **kwargs)
        return dict(check_point_save_path=save_path,
                    check_point_save_global_step=global_step,
                    check_point_save_name=name)

    @record_return_decorator(which_recorder='self')
    def load(self, path_to_model, model_name, global_step=None, **kwargs):
        MultiPlaceholderInput.load(self, path_to_model, model_name,
                                   global_step, **kwargs)
        return dict(check_point_load_path=path_to_model,
                    check_point_load_global_step=global_step,
                    check_point_load_name=model_name)

    def _setup_policy_loss(self):
        """
        Code clip from pat-cody
        Three loss terms:
            1) standard policy gradient
            2) D_KL(pi_old || pi_new)
            3) Hinge loss on [D_KL - kl_targ]^2

        See: https://arxiv.org/pdf/1707.02286.pdf
        """

        if self.parameters('clipping_range') is not None:
            pg_ratio = tf.exp(self.policy.log_prob() -
                              self.old_policy.log_prob())
            clipped_pg_ratio = tf.clip_by_value(
                pg_ratio, 1 - self.parameters('clipping_range')[0],
                1 + self.parameters('clipping_range')[1])
            surrogate_loss = tf.minimum(self.advantages_ph * pg_ratio,
                                        self.advantages_ph * clipped_pg_ratio)
            loss = -tf.reduce_mean(surrogate_loss)
        else:
            loss1 = -tf.reduce_mean(
                self.advantages_ph *
                tf.exp(self.policy.log_prob() - self.old_policy.log_prob()))
            loss2 = tf.reduce_mean(self.parameters('beta') * self.kl)
            loss3 = self.parameters('eta') * tf.square(
                tf.maximum(0.0, self.kl - 2.0 * self.parameters('kl_target')))
            loss = loss1 + loss2 + loss3
            self.loss1 = loss1
            self.loss2 = loss2
            self.loss3 = loss3
        if isinstance(self.policy, PlaceholderInput):
            reg_list = tf.get_collection(tf.GraphKeys.REGULARIZATION_LOSSES,
                                         scope=self.policy.name_scope)
            if len(reg_list) > 0:
                reg_loss = tf.reduce_sum(reg_list)
                loss += reg_loss

        optimizer = tf.train.AdamOptimizer(
            learning_rate=self.parameters('policy_lr') *
            self.parameters('lr_multiplier'))
        train_op = optimizer.minimize(
            loss, var_list=self.policy.parameters('tf_var_list'))
        return loss, optimizer, train_op

    def _setup_value_func_loss(self):
        # todo update the value_func design
        loss = tf.reduce_mean(
            tf.square(self.value_func.v_tensor - self.v_func_val_ph))
        reg_loss = tf.get_collection(tf.GraphKeys.REGULARIZATION_LOSSES,
                                     scope=self.value_func.name_scope)
        if len(reg_loss) > 0:
            loss += tf.reduce_sum(reg_loss)

        optimizer = tf.train.AdamOptimizer(self.parameters('value_func_lr'))
        train_op = optimizer.minimize(
            loss, var_list=self.value_func.parameters('tf_var_list'))
        return loss, optimizer, train_op

    def _update_policy(self, train_data: TransitionData, train_iter, sess):
        old_policy_feed_dict = dict()

        res = sess.run(
            [
                getattr(self.policy, tensor[1])
                for tensor in self.old_dist_tensor
            ],
            feed_dict={
                self.policy.parameters('state_input'): train_data('state_set'),
                self.policy.parameters('action_input'):
                train_data('action_set'),
                **self.parameters.return_tf_parameter_feed_dict()
            })

        for tensor, val in zip(self.old_dist_tensor, res):
            old_policy_feed_dict[tensor[0]] = val

        feed_dict = {
            self.policy.parameters('action_input'): train_data('action_set'),
            self.old_policy.parameters('action_input'):
            train_data('action_set'),
            self.policy.parameters('state_input'): train_data('state_set'),
            self.advantages_ph: train_data('advantage_set'),
            **self.parameters.return_tf_parameter_feed_dict(),
            **old_policy_feed_dict
        }
        average_loss, average_kl, average_entropy = 0.0, 0.0, 0.0
        total_epoch = 0
        kl = None
        for i in range(train_iter):
            loss, kl, entropy, _ = sess.run([
                self.policy_loss, self.kl,
                tf.reduce_mean(self.policy.entropy()), self.policy_update_op
            ],
                                            feed_dict=feed_dict)
            average_loss += loss
            average_kl += kl
            average_entropy += entropy
            total_epoch = i + 1
            if kl > self.parameters('kl_target', require_true_value=True) * 4:
                # early stopping if D_KL diverges badly
                break
        average_loss, average_kl, average_entropy = average_loss / total_epoch, average_kl / total_epoch, average_entropy / total_epoch

        if kl > self.parameters('kl_target', require_true_value=True
                                ) * 2:  # servo beta to reach D_KL target
            self.parameters.set(
                key='beta',
                new_val=np.minimum(
                    35,
                    1.5 * self.parameters('beta', require_true_value=True)))
            if self.parameters(
                    'beta', require_true_value=True) > 30 and self.parameters(
                        'lr_multiplier', require_true_value=True) > 0.1:
                self.parameters.set(
                    key='lr_multiplier',
                    new_val=self.parameters('lr_multiplier',
                                            require_true_value=True) / 1.5)
        elif kl < self.parameters('kl_target', require_true_value=True) / 2:
            self.parameters.set(
                key='beta',
                new_val=np.maximum(
                    1 / 35,
                    self.parameters('beta', require_true_value=True) / 1.5))

            if self.parameters('beta', require_true_value=True) < (
                    1 / 30) and self.parameters('lr_multiplier',
                                                require_true_value=True) < 10:
                self.parameters.set(
                    key='lr_multiplier',
                    new_val=self.parameters('lr_multiplier',
                                            require_true_value=True) * 1.5)
        return dict(policy_average_loss=average_loss,
                    policy_average_kl=average_kl,
                    policy_average_entropy=average_entropy,
                    policy_total_train_epoch=total_epoch)

    def _update_value_func(self, train_data: TransitionData, train_iter, sess):
        if self.value_func_train_data_buffer is None:
            self.value_func_train_data_buffer = train_data
        else:
            self.value_func_train_data_buffer.union(train_data)
        y_hat = self.value_func.forward(obs=train_data('state_set'))
        old_exp_var = 1 - np.var(train_data('advantage_set') - y_hat) / np.var(
            train_data('advantage_set'))
        for i in range(train_iter):
            data_gen = self.value_func_train_data_buffer.return_generator(
                batch_size=self.parameters('value_func_train_batch_size'),
                infinite_run=False,
                shuffle_flag=True,
                assigned_keys=('state_set', 'new_state_set', 'action_set',
                               'reward_set', 'done_set', 'advantage_set'))
            for batch in data_gen:
                loss, _ = sess.run(
                    [self.value_func_loss, self.value_func_update_op],
                    feed_dict={
                        self.value_func.state_input: batch[0],
                        self.v_func_val_ph: batch[5],
                        **self.parameters.return_tf_parameter_feed_dict()
                    })
        y_hat = self.value_func.forward(obs=train_data('state_set'))
        loss = np.mean(np.square(y_hat - train_data('advantage_set')))
        exp_var = 1 - np.var(train_data('advantage_set') - y_hat) / np.var(
            train_data('advantage_set'))
        self.value_func_train_data_buffer = train_data
        return dict(value_func_loss=loss,
                    value_func_policy_exp_var=exp_var,
                    value_func_policy_old_exp_var=old_exp_var)
Ejemplo n.º 29
0
    def test_l1_l2_norm(self):
        env = make('Acrobot-v1')
        env_spec = EnvSpec(obs_space=env.observation_space,
                           action_space=env.action_space)
        name = 'dqn'

        mlp_q = MLPQValueFunction(env_spec=env_spec,
                                  name_scope=name + '_mlp',
                                  name=name + '_mlp',
                                  mlp_config=[{
                                      "ACT": "RELU",
                                      "B_INIT_VALUE": 0.0,
                                      "NAME": "1",
                                      "N_UNITS": 16,
                                      "TYPE": "DENSE",
                                      "W_NORMAL_STDDEV": 0.03,
                                      "L1_NORM": 1000.0,
                                      "L2_NORM": 1000.0
                                  }, {
                                      "ACT": "LINEAR",
                                      "B_INIT_VALUE": 0.0,
                                      "NAME": "OUPTUT",
                                      "N_UNITS": 1,
                                      "L1_NORM": 1000.0,
                                      "L2_NORM": 1000.0,
                                      "TYPE": "DENSE",
                                      "W_NORMAL_STDDEV": 0.03
                                  }])
        dqn = DQN(env_spec=env_spec,
                  config_or_config_dict=dict(REPLAY_BUFFER_SIZE=1000,
                                             GAMMA=0.99,
                                             BATCH_SIZE=10,
                                             LEARNING_RATE=0.01,
                                             TRAIN_ITERATION=1,
                                             DECAY=0.5),
                  name=name,
                  value_func=mlp_q)
        dqn2, _ = self.create_dqn(name='dqn_2')
        a = TransitionData(env_spec)
        st = env.reset()
        dqn.init()
        dqn2.init()
        for i in range(100):
            ac = dqn.predict(obs=st, sess=self.sess, batch_flag=False)
            st_new, re, done, _ = env.step(action=ac)
            a.append(state=st,
                     new_state=st_new,
                     action=ac,
                     done=done,
                     reward=re)
            st = st_new
            dqn.append_to_memory(a)
        for i in range(20):
            print(
                'dqn1 loss: ',
                dqn.train(batch_data=a,
                          train_iter=10,
                          sess=None,
                          update_target=True))
            print(
                'dqn2 loss: ',
                dqn2.train(batch_data=a,
                           train_iter=10,
                           sess=None,
                           update_target=True))
        var_list = self.sess.run(dqn.q_value_func.parameters('tf_var_list'))
        print(var_list)
        var_list2 = self.sess.run(dqn2.q_value_func.parameters('tf_var_list'))
        print(var_list2)
        for var, var2 in zip(var_list, var_list2):
            diff = np.abs(var2) - np.abs(var)
            self.assertTrue(np.greater(np.mean(diff), 0.0).all())
Ejemplo n.º 30
0
    def test_init(self):
        ppo, locals = self.create_ppo()
        env = locals['env']
        env_spec = locals['env_spec']
        ppo.init()

        new_ppo, _ = self.create_ppo(name='new_ppo')
        new_ppo.copy_from(ppo)

        self.assert_var_list_id_no_equal(
            ppo.value_func.parameters('tf_var_list'),
            new_ppo.value_func.parameters('tf_var_list'))
        self.assert_var_list_id_no_equal(
            ppo.policy.parameters('tf_var_list'),
            new_ppo.policy.parameters('tf_var_list'))

        self.assert_var_list_equal(
            ppo.value_func.parameters('tf_var_list'),
            new_ppo.value_func.parameters('tf_var_list'))
        self.assert_var_list_equal(ppo.policy.parameters('tf_var_list'),
                                   new_ppo.policy.parameters('tf_var_list'))

        data = TransitionData(env_spec)
        st = env.reset()
        for i in range(100):
            ac = ppo.predict(st)
            assert ac.shape[0] == 1
            self.assertTrue(env_spec.action_space.contains(ac[0]))
            new_st, re, done, _ = env.step(ac)
            if i % 9 == 0 and i > 0:
                done = True
            else:
                done = False
            data.append(state=st,
                        new_state=new_st,
                        action=ac,
                        reward=re,
                        done=done)
        traj = TrajectoryData(env_spec=env_spec)
        traj.append(data)
        ppo.append_to_memory(traj)

        ppo.save(save_path=GlobalConfig().DEFAULT_LOG_PATH + '/ppo_test',
                 global_step=0,
                 name=ppo.name)
        for i in range(5):
            ppo.append_to_memory(traj)
            res = ppo.train()

            print('value_func_loss {}, policy_average_loss: {}'.format(
                res['value_func_loss'], res['policy_average_loss']))
            traj_data = TrajectoryData(env_spec=env_spec)
            traj_data.append(data)
            res = ppo.train(trajectory_data=traj_data,
                            train_iter=5,
                            sess=self.sess)

            print('value_func_loss {}, policy_average_loss: {}'.format(
                res['value_func_loss'], res['policy_average_loss']))

        self.assert_var_list_at_least_not_equal(
            ppo.value_func.parameters('tf_var_list'),
            new_ppo.value_func.parameters('tf_var_list'))
        self.assert_var_list_at_least_not_equal(
            ppo.policy.parameters('tf_var_list'),
            new_ppo.policy.parameters('tf_var_list'))

        ppo.load(path_to_model=GlobalConfig().DEFAULT_LOG_PATH + '/ppo_test',
                 model_name=ppo.name,
                 global_step=0)

        self.assert_var_list_equal(
            ppo.value_func.parameters('tf_var_list'),
            new_ppo.value_func.parameters('tf_var_list'))
        self.assert_var_list_equal(ppo.policy.parameters('tf_var_list'),
                                   new_ppo.policy.parameters('tf_var_list'))