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425 行
14 KiB
425 行
14 KiB
import json
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import os
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from unittest.mock import *
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import yaml
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import pytest
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from mlagents.trainers.trainer_controller import TrainerController
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from mlagents.trainers.ppo.trainer import PPOTrainer
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from mlagents.trainers.bc.offline_trainer import OfflineBCTrainer
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from mlagents.trainers.bc.online_trainer import OnlineBCTrainer
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from mlagents.envs.exception import UnityEnvironmentException
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@pytest.fixture
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def dummy_config():
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return yaml.load(
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'''
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default:
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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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gamma: 0.99
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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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memory_size: 8
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use_curiosity: false
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curiosity_strength: 0.0
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curiosity_enc_size: 1
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''')
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@pytest.fixture
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def dummy_online_bc_config():
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return yaml.load(
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'''
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default:
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trainer: online_bc
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brain_to_imitate: ExpertBrain
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batches_per_epoch: 16
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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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gamma: 0.99
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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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memory_size: 8
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use_curiosity: false
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curiosity_strength: 0.0
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curiosity_enc_size: 1
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''')
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@pytest.fixture
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def dummy_offline_bc_config():
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return yaml.load(
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'''
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default:
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trainer: offline_bc
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demo_path: '''
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+ os.path.dirname(os.path.abspath(__file__)) + '''/test.demo
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batches_per_epoch: 16
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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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gamma: 0.99
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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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memory_size: 8
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use_curiosity: false
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curiosity_strength: 0.0
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curiosity_enc_size: 1
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''')
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@pytest.fixture
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def dummy_offline_bc_config_with_override():
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base = dummy_offline_bc_config()
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base['testbrain'] = {}
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base['testbrain']['normalize'] = False
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return base
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@pytest.fixture
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def dummy_bad_config():
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return yaml.load(
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'''
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default:
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trainer: incorrect_trainer
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brain_to_imitate: ExpertBrain
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batches_per_epoch: 16
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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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gamma: 0.99
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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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memory_size: 8
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''')
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@pytest.fixture
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def basic_trainer_controller(brain_info):
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return TrainerController(
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model_path='test_model_path',
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summaries_dir='test_summaries_dir',
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run_id='test_run_id',
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save_freq=100,
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meta_curriculum=None,
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load=True,
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train=True,
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keep_checkpoints=False,
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lesson=None,
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external_brains={'testbrain': brain_info},
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training_seed=99
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)
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@patch('numpy.random.seed')
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@patch('tensorflow.set_random_seed')
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def test_initialization_seed(numpy_random_seed, tensorflow_set_seed):
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seed = 27
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TrainerController('', '', '1', 1, None, True, False, False, None, {}, seed)
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numpy_random_seed.assert_called_with(seed)
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tensorflow_set_seed.assert_called_with(seed)
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def assert_bc_trainer_constructed(trainer_cls, input_config, tc, expected_brain_info, expected_config):
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def mock_constructor(self, brain, trainer_params, training, load, seed, run_id):
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assert(brain == expected_brain_info)
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assert(trainer_params == expected_config)
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assert(training == tc.train_model)
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assert(load == tc.load_model)
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assert(seed == tc.seed)
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assert(run_id == tc.run_id)
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with patch.object(trainer_cls, "__init__", mock_constructor):
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tc.initialize_trainers(input_config)
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assert('testbrain' in tc.trainers)
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assert(isinstance(tc.trainers['testbrain'], trainer_cls))
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def assert_ppo_trainer_constructed(input_config, tc, expected_brain_info,
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expected_config, expected_reward_buff_cap=0):
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def mock_constructor(self, brain, reward_buff_cap, trainer_parameters, training, load, seed, run_id):
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assert(brain == expected_brain_info)
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assert(trainer_parameters == expected_config)
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assert(reward_buff_cap == expected_reward_buff_cap)
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assert(training == tc.train_model)
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assert(load == tc.load_model)
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assert(seed == tc.seed)
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assert(run_id == tc.run_id)
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with patch.object(PPOTrainer, "__init__", mock_constructor):
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tc.initialize_trainers(input_config)
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assert('testbrain' in tc.trainers)
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assert(isinstance(tc.trainers['testbrain'], PPOTrainer))
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@patch('mlagents.envs.BrainInfo')
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def test_initialize_trainer_parameters_uses_defaults(BrainInfoMock):
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brain_info_mock = BrainInfoMock()
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tc = basic_trainer_controller(brain_info_mock)
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full_config = dummy_offline_bc_config()
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expected_config = full_config['default']
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expected_config['summary_path'] = tc.summaries_dir + '/test_run_id_testbrain'
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expected_config['model_path'] = tc.model_path + '/testbrain'
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expected_config['keep_checkpoints'] = tc.keep_checkpoints
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assert_bc_trainer_constructed(OfflineBCTrainer, full_config, tc, brain_info_mock, expected_config)
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@patch('mlagents.envs.BrainInfo')
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def test_initialize_trainer_parameters_override_defaults(BrainInfoMock):
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brain_info_mock = BrainInfoMock()
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tc = basic_trainer_controller(brain_info_mock)
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full_config = dummy_offline_bc_config_with_override()
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expected_config = full_config['default']
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expected_config['summary_path'] = tc.summaries_dir + '/test_run_id_testbrain'
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expected_config['model_path'] = tc.model_path + '/testbrain'
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expected_config['keep_checkpoints'] = tc.keep_checkpoints
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# Override value from specific brain config
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expected_config['normalize'] = False
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assert_bc_trainer_constructed(OfflineBCTrainer, full_config, tc, brain_info_mock, expected_config)
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@patch('mlagents.envs.BrainInfo')
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def test_initialize_online_bc_trainer(BrainInfoMock):
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brain_info_mock = BrainInfoMock()
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tc = basic_trainer_controller(brain_info_mock)
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full_config = dummy_online_bc_config()
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expected_config = full_config['default']
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expected_config['summary_path'] = tc.summaries_dir + '/test_run_id_testbrain'
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expected_config['model_path'] = tc.model_path + '/testbrain'
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expected_config['keep_checkpoints'] = tc.keep_checkpoints
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assert_bc_trainer_constructed(OnlineBCTrainer, full_config, tc, brain_info_mock, expected_config)
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@patch('mlagents.envs.BrainInfo')
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def test_initialize_ppo_trainer(BrainInfoMock):
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brain_info_mock = BrainInfoMock()
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tc = basic_trainer_controller(brain_info_mock)
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full_config = dummy_config()
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expected_config = full_config['default']
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expected_config['summary_path'] = tc.summaries_dir + '/test_run_id_testbrain'
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expected_config['model_path'] = tc.model_path + '/testbrain'
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expected_config['keep_checkpoints'] = tc.keep_checkpoints
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assert_ppo_trainer_constructed(full_config, tc, brain_info_mock, expected_config)
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@patch('mlagents.envs.BrainInfo')
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def test_initialize_invalid_trainer_raises_exception(BrainInfoMock):
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brain_info_mock = BrainInfoMock()
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tc = basic_trainer_controller(brain_info_mock)
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bad_config = dummy_bad_config()
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try:
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tc.initialize_trainers(bad_config)
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assert(1 == 0, "Initialize trainers with bad config did not raise an exception.")
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except UnityEnvironmentException:
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pass
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def trainer_controller_with_start_learning_mocks():
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trainer_mock = MagicMock()
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trainer_mock.get_step = 0
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trainer_mock.get_max_steps = 5
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trainer_mock.parameters = {'some': 'parameter'}
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trainer_mock.write_tensorboard_text = MagicMock()
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brain_info_mock = MagicMock()
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tc = basic_trainer_controller(brain_info_mock)
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tc.initialize_trainers = MagicMock()
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tc.trainers = {'testbrain': trainer_mock}
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tc.take_step = MagicMock()
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def take_step_sideeffect(env, curr_info):
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tc.trainers['testbrain'].get_step += 1
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if tc.trainers['testbrain'].get_step > 10:
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raise KeyboardInterrupt
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tc.take_step.side_effect = take_step_sideeffect
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tc._export_graph = MagicMock()
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tc._save_model = MagicMock()
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return tc, trainer_mock
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@patch('tensorflow.reset_default_graph')
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def test_start_learning_trains_forever_if_no_train_model(tf_reset_graph):
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tc, trainer_mock = trainer_controller_with_start_learning_mocks()
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tc.train_model = False
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trainer_config = dummy_config()
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tf_reset_graph.return_value = None
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env_mock = MagicMock()
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env_mock.close = MagicMock()
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env_mock.reset = MagicMock()
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tc.start_learning(env_mock, trainer_config)
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tf_reset_graph.assert_called_once()
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tc.initialize_trainers.assert_called_once_with(trainer_config)
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env_mock.reset.assert_called_once()
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assert (tc.take_step.call_count == 11)
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tc._export_graph.assert_not_called()
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tc._save_model.assert_not_called()
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env_mock.close.assert_called_once()
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@patch('tensorflow.reset_default_graph')
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def test_start_learning_trains_until_max_steps_then_saves(tf_reset_graph):
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tc, trainer_mock = trainer_controller_with_start_learning_mocks()
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trainer_config = dummy_config()
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tf_reset_graph.return_value = None
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brain_info_mock = MagicMock()
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env_mock = MagicMock()
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env_mock.close = MagicMock()
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env_mock.reset = MagicMock(return_value=brain_info_mock)
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tc.start_learning(env_mock, trainer_config)
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tf_reset_graph.assert_called_once()
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tc.initialize_trainers.assert_called_once_with(trainer_config)
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env_mock.reset.assert_called_once()
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assert(tc.take_step.call_count == trainer_mock.get_max_steps + 1)
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env_mock.close.assert_called_once()
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tc._save_model.assert_called_once_with(steps=6)
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def test_start_learning_updates_meta_curriculum_lesson_number():
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tc, trainer_mock = trainer_controller_with_start_learning_mocks()
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trainer_config = dummy_config()
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brain_info_mock = MagicMock()
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env_mock = MagicMock()
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env_mock.close = MagicMock()
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env_mock.reset = MagicMock(return_value=brain_info_mock)
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meta_curriculum_mock = MagicMock()
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meta_curriculum_mock.set_all_curriculums_to_lesson_num = MagicMock()
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tc.meta_curriculum = meta_curriculum_mock
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tc.lesson = 5
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tc.start_learning(env_mock, trainer_config)
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meta_curriculum_mock.set_all_curriculums_to_lesson_num.assert_called_once_with(tc.lesson)
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def trainer_controller_with_take_step_mocks():
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trainer_mock = MagicMock()
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trainer_mock.get_step = 0
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trainer_mock.get_max_steps = 5
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trainer_mock.parameters = {'some': 'parameter'}
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trainer_mock.write_tensorboard_text = MagicMock()
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brain_info_mock = MagicMock()
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tc = basic_trainer_controller(brain_info_mock)
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tc.trainers = {'testbrain': trainer_mock}
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return tc, trainer_mock
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def test_take_step_resets_env_on_global_done():
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tc, trainer_mock = trainer_controller_with_take_step_mocks()
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brain_info_mock = MagicMock()
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action_data_mock_out = [None, None, None, None, None]
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trainer_mock.take_action = MagicMock(return_value=action_data_mock_out)
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trainer_mock.add_experiences = MagicMock()
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trainer_mock.process_experiences = MagicMock()
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trainer_mock.update_policy = MagicMock()
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trainer_mock.write_summary = MagicMock()
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trainer_mock.trainer.increment_step_and_update_last_reward = MagicMock()
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env_mock = MagicMock()
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step_data_mock_out = MagicMock()
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env_mock.step = MagicMock(return_value=step_data_mock_out)
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env_mock.close = MagicMock()
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env_mock.reset = MagicMock(return_value=brain_info_mock)
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env_mock.global_done = True
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tc.take_step(env_mock, brain_info_mock)
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env_mock.reset.assert_called_once()
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def test_take_step_adds_experiences_to_trainer_and_trains():
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tc, trainer_mock = trainer_controller_with_take_step_mocks()
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curr_info_mock = MagicMock()
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trainer_action_output_mock = [
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'action',
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'memory',
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'actiontext',
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'value',
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'output',
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]
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trainer_mock.take_action = MagicMock(return_value=trainer_action_output_mock)
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trainer_mock.is_ready_update = MagicMock(return_value=True)
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env_mock = MagicMock()
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env_step_output_mock = MagicMock()
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env_mock.step = MagicMock(return_value=env_step_output_mock)
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env_mock.close = MagicMock()
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env_mock.reset = MagicMock(return_value=curr_info_mock)
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env_mock.global_done = False
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tc.take_step(env_mock, curr_info_mock)
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env_mock.reset.assert_not_called()
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trainer_mock.take_action.assert_called_once_with(curr_info_mock)
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env_mock.step.assert_called_once_with(
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vector_action={'testbrain': trainer_action_output_mock[0]},
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memory={'testbrain': trainer_action_output_mock[1]},
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text_action={'testbrain': trainer_action_output_mock[2]},
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value={'testbrain': trainer_action_output_mock[3]}
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)
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trainer_mock.add_experiences.assert_called_once_with(
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curr_info_mock, env_step_output_mock, trainer_action_output_mock[4]
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)
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trainer_mock.process_experiences.assert_called_once_with(curr_info_mock, env_step_output_mock)
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trainer_mock.update_policy.assert_called_once()
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trainer_mock.write_summary.assert_called_once()
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trainer_mock.increment_step_and_update_last_reward.assert_called_once()
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