from unittest import mock import pytest import mlagents.trainers.tests.mock_brain as mb import numpy as np from mlagents.trainers.agent_processor import ( AgentProcessor, AgentManager, AgentManagerQueue, ) from mlagents.trainers.action_info import ActionInfo from mlagents.trainers.trajectory import Trajectory from mlagents.trainers.stats import StatsReporter def create_mock_brain(): mock_brain = mb.create_mock_brainparams( vector_action_space_type="continuous", vector_action_space_size=[2], vector_observation_space_size=8, number_visual_observations=1, ) return mock_brain def create_mock_policy(): mock_policy = mock.Mock() mock_policy.reward_signals = {} mock_policy.retrieve_memories.return_value = np.zeros((1, 1), dtype=np.float32) mock_policy.retrieve_previous_action.return_value = np.zeros( (1, 1), dtype=np.float32 ) return mock_policy @pytest.mark.parametrize("num_vis_obs", [0, 1, 2], ids=["vec", "1 viz", "2 viz"]) def test_agentprocessor(num_vis_obs): policy = create_mock_policy() tqueue = mock.Mock() name_behavior_id = "test_brain_name" processor = AgentProcessor( policy, name_behavior_id, max_trajectory_length=5, stats_reporter=StatsReporter("testcat"), ) fake_action_outputs = { "action": [0.1, 0.1], "entropy": np.array([1.0], dtype=np.float32), "learning_rate": 1.0, "pre_action": [0.1, 0.1], "log_probs": [0.1, 0.1], } mock_step = mb.create_mock_batchedstep( num_agents=2, num_vector_observations=8, action_shape=[2], num_vis_observations=num_vis_obs, ) fake_action_info = ActionInfo( action=[0.1, 0.1], value=[0.1, 0.1], outputs=fake_action_outputs, agent_ids=mock_step.agent_id, ) processor.publish_trajectory_queue(tqueue) # This is like the initial state after the env reset processor.add_experiences(mock_step, 0, ActionInfo([], [], {}, [])) for _ in range(5): processor.add_experiences(mock_step, 0, fake_action_info) # Assert that two trajectories have been added to the Trainer assert len(tqueue.put.call_args_list) == 2 # Assert that the trajectory is of length 5 trajectory = tqueue.put.call_args_list[0][0][0] assert len(trajectory.steps) == 5 # Assert that the AgentProcessor is empty assert len(processor.experience_buffers[0]) == 0 # Test empty BatchedStepResult mock_step = mb.create_mock_batchedstep( num_agents=0, num_vector_observations=8, action_shape=[2], num_vis_observations=num_vis_obs, ) processor.add_experiences(mock_step, 0, ActionInfo([], [], {}, [])) # Assert that the AgentProcessor is still empty assert len(processor.experience_buffers[0]) == 0 def test_agent_manager(): policy = create_mock_policy() name_behavior_id = "test_brain_name" manager = AgentManager( policy, name_behavior_id, max_trajectory_length=5, stats_reporter=StatsReporter("testcat"), ) assert len(manager.trajectory_queues) == 1 assert isinstance(manager.trajectory_queues[0], AgentManagerQueue) def test_agent_manager_queue(): queue = AgentManagerQueue(behavior_id="testbehavior") trajectory = mock.Mock(spec=Trajectory) assert queue.empty() queue.put(trajectory) assert not queue.empty() queue_traj = queue.get_nowait() assert isinstance(queue_traj, Trajectory) assert queue.empty()