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233 行
7.8 KiB
233 行
7.8 KiB
import pytest
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import numpy as np
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import yaml
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from mlagents.trainers.ghost.trainer import GhostTrainer
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from mlagents.trainers.ppo.trainer import PPOTrainer
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from mlagents.trainers.brain import BrainParameters
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from mlagents.trainers.agent_processor import AgentManagerQueue
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from mlagents.trainers.behavior_id_utils import BehaviorIdentifiers
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from mlagents.trainers.tests import mock_brain as mb
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from mlagents.trainers.tests.test_trajectory import make_fake_trajectory
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@pytest.fixture
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def dummy_config():
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return yaml.safe_load(
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"""
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trainer: ppo
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batch_size: 32
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beta: 5.0e-3
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buffer_size: 512
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epsilon: 0.2
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hidden_units: 128
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lambd: 0.95
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learning_rate: 3.0e-4
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max_steps: 5.0e4
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normalize: true
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num_epoch: 5
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num_layers: 2
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time_horizon: 64
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sequence_length: 64
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summary_freq: 1000
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use_recurrent: false
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normalize: true
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memory_size: 8
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curiosity_strength: 0.0
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curiosity_enc_size: 1
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summary_path: test
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model_path: test
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reward_signals:
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extrinsic:
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strength: 1.0
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gamma: 0.99
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self_play:
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window: 5
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play_against_current_self_ratio: 0.5
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save_steps: 1000
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swap_steps: 1000
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"""
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)
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VECTOR_ACTION_SPACE = [1]
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VECTOR_OBS_SPACE = 8
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DISCRETE_ACTION_SPACE = [3, 3, 3, 2]
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BUFFER_INIT_SAMPLES = 513
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NUM_AGENTS = 12
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@pytest.mark.parametrize("use_discrete", [True, False])
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def test_load_and_set(dummy_config, use_discrete):
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mock_brain = mb.setup_mock_brain(
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use_discrete,
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False,
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vector_action_space=VECTOR_ACTION_SPACE,
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vector_obs_space=VECTOR_OBS_SPACE,
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discrete_action_space=DISCRETE_ACTION_SPACE,
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)
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trainer_params = dummy_config
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trainer = PPOTrainer(mock_brain.brain_name, 0, trainer_params, True, False, 0, "0")
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trainer.seed = 1
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policy = trainer.create_policy(mock_brain)
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policy.create_tf_graph()
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trainer.seed = 20 # otherwise graphs are the same
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to_load_policy = trainer.create_policy(mock_brain)
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to_load_policy.create_tf_graph()
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to_load_policy.init_load_weights()
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weights = policy.get_weights()
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load_weights = to_load_policy.get_weights()
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try:
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for w, lw in zip(weights, load_weights):
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np.testing.assert_array_equal(w, lw)
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except AssertionError:
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pass
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to_load_policy.load_weights(weights)
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load_weights = to_load_policy.get_weights()
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for w, lw in zip(weights, load_weights):
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np.testing.assert_array_equal(w, lw)
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def test_process_trajectory(dummy_config):
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brain_params_team0 = BrainParameters(
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brain_name="test_brain?team=0",
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vector_observation_space_size=1,
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camera_resolutions=[],
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vector_action_space_size=[2],
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vector_action_descriptions=[],
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vector_action_space_type=0,
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)
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brain_name = BehaviorIdentifiers.from_name_behavior_id(
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brain_params_team0.brain_name
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).brain_name
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brain_params_team1 = BrainParameters(
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brain_name="test_brain?team=1",
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vector_observation_space_size=1,
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camera_resolutions=[],
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vector_action_space_size=[2],
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vector_action_descriptions=[],
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vector_action_space_type=0,
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)
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dummy_config["summary_path"] = "./summaries/test_trainer_summary"
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dummy_config["model_path"] = "./models/test_trainer_models/TestModel"
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ppo_trainer = PPOTrainer(brain_name, 0, dummy_config, True, False, 0, "0")
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trainer = GhostTrainer(ppo_trainer, brain_name, 0, dummy_config, True, "0")
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# first policy encountered becomes policy trained by wrapped PPO
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policy = trainer.create_policy(brain_params_team0)
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trainer.add_policy(brain_params_team0.brain_name, policy)
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trajectory_queue0 = AgentManagerQueue(brain_params_team0.brain_name)
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trainer.subscribe_trajectory_queue(trajectory_queue0)
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# Ghost trainer should ignore this queue because off policy
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policy = trainer.create_policy(brain_params_team1)
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trainer.add_policy(brain_params_team1.brain_name, policy)
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trajectory_queue1 = AgentManagerQueue(brain_params_team1.brain_name)
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trainer.subscribe_trajectory_queue(trajectory_queue1)
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time_horizon = 15
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trajectory = make_fake_trajectory(
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length=time_horizon,
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max_step_complete=True,
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vec_obs_size=1,
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num_vis_obs=0,
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action_space=[2],
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)
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trajectory_queue0.put(trajectory)
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trainer.advance()
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# Check that trainer put trajectory in update buffer
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assert trainer.trainer.update_buffer.num_experiences == 15
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trajectory_queue1.put(trajectory)
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trainer.advance()
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# Check that ghost trainer ignored off policy queue
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assert trainer.trainer.update_buffer.num_experiences == 15
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# Check that it emptied the queue
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assert trajectory_queue1.empty()
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def test_publish_queue(dummy_config):
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brain_params_team0 = BrainParameters(
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brain_name="test_brain?team=0",
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vector_observation_space_size=8,
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camera_resolutions=[],
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vector_action_space_size=[1],
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vector_action_descriptions=[],
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vector_action_space_type=0,
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)
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brain_name = BehaviorIdentifiers.from_name_behavior_id(
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brain_params_team0.brain_name
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).brain_name
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brain_params_team1 = BrainParameters(
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brain_name="test_brain?team=1",
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vector_observation_space_size=8,
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camera_resolutions=[],
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vector_action_space_size=[1],
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vector_action_descriptions=[],
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vector_action_space_type=0,
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)
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dummy_config["summary_path"] = "./summaries/test_trainer_summary"
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dummy_config["model_path"] = "./models/test_trainer_models/TestModel"
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ppo_trainer = PPOTrainer(brain_name, 0, dummy_config, True, False, 0, "0")
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trainer = GhostTrainer(ppo_trainer, brain_name, 0, dummy_config, True, "0")
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# First policy encountered becomes policy trained by wrapped PPO
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# This queue should remain empty after swap snapshot
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policy = trainer.create_policy(brain_params_team0)
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trainer.add_policy(brain_params_team0.brain_name, policy)
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policy_queue0 = AgentManagerQueue(brain_params_team0.brain_name)
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trainer.publish_policy_queue(policy_queue0)
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# Ghost trainer should use this queue for ghost policy swap
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policy = trainer.create_policy(brain_params_team1)
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trainer.add_policy(brain_params_team1.brain_name, policy)
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policy_queue1 = AgentManagerQueue(brain_params_team1.brain_name)
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trainer.publish_policy_queue(policy_queue1)
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# check ghost trainer swap pushes to ghost queue and not trainer
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assert policy_queue0.empty() and policy_queue1.empty()
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trainer._swap_snapshots()
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assert policy_queue0.empty() and not policy_queue1.empty()
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# clear
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policy_queue1.get_nowait()
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mock_brain = mb.setup_mock_brain(
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False,
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False,
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vector_action_space=VECTOR_ACTION_SPACE,
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vector_obs_space=VECTOR_OBS_SPACE,
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discrete_action_space=DISCRETE_ACTION_SPACE,
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)
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buffer = mb.simulate_rollout(BUFFER_INIT_SAMPLES, mock_brain)
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# Mock out reward signal eval
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buffer["extrinsic_rewards"] = buffer["environment_rewards"]
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buffer["extrinsic_returns"] = buffer["environment_rewards"]
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buffer["extrinsic_value_estimates"] = buffer["environment_rewards"]
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buffer["curiosity_rewards"] = buffer["environment_rewards"]
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buffer["curiosity_returns"] = buffer["environment_rewards"]
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buffer["curiosity_value_estimates"] = buffer["environment_rewards"]
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buffer["advantages"] = buffer["environment_rewards"]
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trainer.trainer.update_buffer = buffer
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# when ghost trainer advance and wrapped trainer buffers full
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# the wrapped trainer pushes updated policy to correct queue
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assert policy_queue0.empty() and policy_queue1.empty()
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trainer.advance()
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assert not policy_queue0.empty() and policy_queue1.empty()
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if __name__ == "__main__":
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pytest.main()
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