experiment 1 running
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696e520862
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@ -2,9 +2,9 @@ import warnings
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from pathlib import Path
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import yaml
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from natsort import natsorted
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from environments import helpers as h
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from environments import helpers as h
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from environments.factory.factory_dirt import DirtFactory
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from environments.factory.factory_dirt_item import DirtItemFactory
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from environments.logging.recorder import RecorderCallback
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@ -17,21 +17,23 @@ if __name__ == '__main__':
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model_name = 'PPO_1631187073'
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run_id = 0
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seed = 69
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out_path = Path(__file__).parent / 'study_out' / 'e_1_1631709932'/ 'no_obs' / 'itemdirt'/'A2C_1631709932' / '0_A2C_1631709932'
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out_path = Path(__file__).parent / 'study_out' / 'e_1_1631709932' / 'no_obs' / 'dirt' / 'A2C_1631709932' / '0_A2C_1631709932'
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model_path = out_path / model_name
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with (out_path / f'env_params.json').open('r') as f:
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env_kwargs = yaml.load(f, Loader=yaml.FullLoader)
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env_kwargs.update(verbose=False, env_seed=seed, record_episodes=True)
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env_kwargs.update(additional_agent_placeholder=None)
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# env_kwargs.update(verbose=False, env_seed=seed, record_episodes=True, parse_doors=True)
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this_model = out_path / 'model.zip'
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model_cls = next(val for key, val in h.MODEL_MAP.items() if key in model_name)
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model = model_cls.load(this_model)
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with RecorderCallback(filepath=Path() / 'recorder_out.json') as recorder:
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with RecorderCallback(filepath=Path() / 'recorder_out_doors.json') as recorder:
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# Init Env
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with DirtItemFactory(**env_kwargs) as env:
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with DirtFactory(**env_kwargs) as env:
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obs_shape = env.observation_space.shape
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# Evaluation Loop for i in range(n Episodes)
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for episode in range(5):
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obs = env.reset()
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@ -41,6 +43,7 @@ if __name__ == '__main__':
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env_state, step_r, done_bool, info_obj = env.step(action[0])
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recorder.read_info(0, info_obj)
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rew += step_r
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env.render()
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if done_bool:
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recorder.read_done(0, done_bool)
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break
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245
studies/e_1.py
245
studies/e_1.py
@ -1,5 +1,6 @@
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import sys
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from pathlib import Path
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from matplotlib import pyplot as plt
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try:
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# noinspection PyUnboundLocalVariable
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@ -25,11 +26,14 @@ from environments.factory.factory_dirt_item import DirtItemFactory
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from environments.factory.factory_item import ItemProperties, ItemFactory
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from environments.logging.monitor import MonitorCallback
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from environments.utility_classes import MovementProperties
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import pickle
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from plotting.compare_runs import compare_seed_runs, compare_model_runs, compare_all_parameter_runs
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import pandas as pd
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import seaborn as sns
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# Define a global studi save path
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start_time = 1631709932 # int(time.time())
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study_root_path = (Path('..') if not DIR else Path()) / 'study_out' / f'{Path(__file__).stem}_{start_time}'
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start_time = int(time.time())
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study_root_path = Path(__file__).parent.parent / 'study_out' / f'{Path(__file__).stem}_{start_time}'
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"""
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In this studie, we want to explore the macro behaviour of multi agents which are trained on the same task,
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@ -56,6 +60,11 @@ There are further distinctions to be made:
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- This tells the agent to treat other agents as obstacle.
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- However, the state space is altered since moving obstacles are not part the original agent observation.
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- We are out of distribution.
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4. Obseration (similiar to camera read out) ['in_lvl_0.5', 'in_lvl_n']
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- This tells the agent to treat other agents as obstacle, but "sees" them encoded as a different value.
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- However, the state space is altered since moving obstacles are not part the original agent observation.
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- We are out of distribution.
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"""
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@ -122,12 +131,12 @@ if __name__ == '__main__':
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# Further Adjustments are done post-training
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'in_lvl_obs': dict(post_training_kwargs=dict(other_agent_obs='in_lvl')),
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# No further adjustment needed
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'no_obs': None
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'no_obs': {}
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}
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# Train starts here ############################################################
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# Build Major Loop parameters, parameter versions, Env Classes and models
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if False:
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if True:
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for observation_mode in observation_modes.keys():
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for env_name in env_names:
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for model_cls in h.MODEL_MAP.values():
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@ -151,27 +160,28 @@ if __name__ == '__main__':
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# Env Init & Model kwargs definition
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if model_cls.__name__ in ["PPO", "A2C"]:
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env = env_class(**env_kwargs)
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# env = SubprocVecEnv([encapsule_env_factory(env_class, env_kwargs) for _ in range(1)],
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# start_method="spawn")
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# env_factory = env_class(**env_kwargs)
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env_factory = SubprocVecEnv([encapsule_env_factory(env_class, env_kwargs)
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for _ in range(1)], start_method="spawn")
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model_kwargs = policy_model_kwargs()
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elif model_cls.__name__ in ["RegDQN", "DQN", "QRDQN"]:
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env = env_class(**env_kwargs)
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model_kwargs = dqn_model_kwargs()
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with env_class(**env_kwargs) as env_factory:
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model_kwargs = dqn_model_kwargs()
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else:
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raise NameError(f'The model "{model_cls.__name__}" has the wrong name.')
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param_path = seed_path / f'env_params.json'
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try:
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env.env_method('save_params', param_path)
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env_factory.env_method('save_params', param_path)
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except AttributeError:
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env.save_params(param_path)
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env_factory.save_params(param_path)
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# Model Init
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model = model_cls("MlpPolicy", env, verbose=1, seed=seed, device='cpu', **model_kwargs)
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model = model_cls("MlpPolicy", env_factory,
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verbose=1, seed=seed, device='cpu',
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**model_kwargs)
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# Model train
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model.learn(total_timesteps=int(train_steps), callback=callbacks)
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@ -179,56 +189,169 @@ if __name__ == '__main__':
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# Model save
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save_path = seed_path / f'model.zip'
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model.save(save_path)
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pass
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# Compare perfoormance runs, for each seed within a model
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# Better be save then sorry: Clean up!
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del env_factory, model
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import gc
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gc.collect()
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# Compare performance runs, for each seed within a model
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compare_seed_runs(combination_path)
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# Better be save then sorry: Clean up!
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del model_kwargs, env_kwargs
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import gc
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gc.collect()
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# Compare performance runs, for each model
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# FIXME: Check THIS!!!!
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compare_model_runs(study_root_path / observation_mode / env_name, f'{start_time}', 'step_reward')
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# Train ends here ############################################################
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# Evaluation starts here #####################################################
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# Iterate Observation Modes
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for observation_mode in observation_modes:
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obs_mode_path = next(x for x in study_root_path.iterdir() if x.is_dir() and x.name == observation_mode)
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# For trained policy in study_root_path / identifier
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for env_path in [x for x in obs_mode_path.iterdir() if x.is_dir()]:
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for policy_path in [x for x in env_path.iterdir() if x. is_dir()]:
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# TODO: Pick random seed or iterate over available seeds
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# First seed path version
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# seed_path = next((y for y in policy_path.iterdir() if y.is_dir()))
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# Iteration
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for seed_path in (y for y in policy_path.iterdir() if y.is_dir()):
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# retrieve model class
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for model_cls in (val for key, val in h.MODEL_MAP.items() if key in policy_path.name):
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# Load both agents
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models = [model_cls.load(seed_path / 'model.zip') for _ in range(2)]
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# Load old env kwargs
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with next(seed_path.glob('*.json')).open('r') as f:
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env_kwargs = simplejson.load(f)
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env_kwargs.update(n_agents=2, additional_agent_placeholder=None,
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**observation_modes[observation_mode].get('post_training_env_kwargs', {}))
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# Monitor Init
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with MonitorCallback(filepath=seed_path / f'e_1_monitor.pick') as monitor:
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# Init Env
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env = env_map[env_path.name][0](**env_kwargs)
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# Evaluation Loop for i in range(n Episodes)
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for episode in range(50):
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obs = env.reset()
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rew, done_bool = 0, False
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while not done_bool:
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actions = [model.predict(obs[i], deterministic=False)[0]
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for i, model in enumerate(models)]
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env_state, step_r, done_bool, info_obj = env.step(actions)
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monitor.read_info(0, info_obj)
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rew += step_r
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if done_bool:
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monitor.read_done(0, done_bool)
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break
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print(f'Factory run {episode} done, reward is:\n {rew}')
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# Eval monitor outputs are automatically stored by the monitor object
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# TODO: Plotting
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pass
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pass
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pass
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pass
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# Train ends here ############################################################
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exit()
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# Evaluation starts here #####################################################
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# First Iterate over every model and monitor "as trained"
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baseline_monitor_file = 'e_1_baseline_monitor.pick'
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if True:
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render = True
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for observation_mode in observation_modes:
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obs_mode_path = next(x for x in study_root_path.iterdir() if x.is_dir() and x.name == observation_mode)
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# For trained policy in study_root_path / identifier
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for env_path in [x for x in obs_mode_path.iterdir() if x.is_dir()]:
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for policy_path in [x for x in env_path.iterdir() if x. is_dir()]:
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# Iteration
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for seed_path in (y for y in policy_path.iterdir() if y.is_dir()):
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# retrieve model class
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for model_cls in (val for key, val in h.MODEL_MAP.items() if key in policy_path.name):
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# Load both agents
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model = model_cls.load(seed_path / 'model.zip')
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# Load old env kwargs
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with next(seed_path.glob('*.json')).open('r') as f:
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env_kwargs = simplejson.load(f)
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# Monitor Init
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with MonitorCallback(filepath=seed_path / baseline_monitor_file) as monitor:
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# Init Env
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env_factory = env_map[env_path.name][0](**env_kwargs)
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# Evaluation Loop for i in range(n Episodes)
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for episode in range(100):
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obs = env_factory.reset()
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rew, done_bool = 0, False
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while not done_bool:
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action = model.predict(obs, deterministic=True)[0]
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env_state, step_r, done_bool, info_obj = env_factory.step(action)
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monitor.read_info(0, info_obj)
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rew += step_r
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if render:
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env_factory.render()
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if done_bool:
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monitor.read_done(0, done_bool)
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break
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print(f'Factory run {episode} done, reward is:\n {rew}')
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# Eval monitor outputs are automatically stored by the monitor object
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del model, env_kwargs, env_factory
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import gc
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gc.collect()
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# Then iterate over every model and monitor "ood behavior" - "is it ood?"
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ood_monitor_file = 'e_1_monitor.pick'
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if True:
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for observation_mode in observation_modes:
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obs_mode_path = next(x for x in study_root_path.iterdir() if x.is_dir() and x.name == observation_mode)
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# For trained policy in study_root_path / identifier
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for env_path in [x for x in obs_mode_path.iterdir() if x.is_dir()]:
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for policy_path in [x for x in env_path.iterdir() if x. is_dir()]:
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# FIXME: Pick random seed or iterate over available seeds
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# First seed path version
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# seed_path = next((y for y in policy_path.iterdir() if y.is_dir()))
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# Iteration
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for seed_path in (y for y in policy_path.iterdir() if y.is_dir()):
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if (seed_path / f'e_1_monitor.pick').exists():
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continue
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# retrieve model class
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for model_cls in (val for key, val in h.MODEL_MAP.items() if key in policy_path.name):
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# Load both agents
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models = [model_cls.load(seed_path / 'model.zip') for _ in range(2)]
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# Load old env kwargs
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with next(seed_path.glob('*.json')).open('r') as f:
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env_kwargs = simplejson.load(f)
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env_kwargs.update(
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n_agents=2, additional_agent_placeholder=None,
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**observation_modes[observation_mode].get('post_training_env_kwargs', {}))
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# Monitor Init
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with MonitorCallback(filepath=seed_path / ood_monitor_file) as monitor:
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# Init Env
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with env_map[env_path.name][0](**env_kwargs) as env_factory:
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# Evaluation Loop for i in range(n Episodes)
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for episode in range(50):
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obs = env_factory.reset()
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rew, done_bool = 0, False
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while not done_bool:
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actions = [model.predict(obs[i], deterministic=False)[0]
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for i, model in enumerate(models)]
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env_state, step_r, done_bool, info_obj = env_factory.step(actions)
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monitor.read_info(0, info_obj)
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rew += step_r
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if done_bool:
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monitor.read_done(0, done_bool)
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break
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print(f'Factory run {episode} done, reward is:\n {rew}')
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# Eval monitor outputs are automatically stored by the monitor object
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del models, env_kwargs, env_factory
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import gc
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gc.collect()
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# Plotting
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if True:
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# TODO: Plotting
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df_list = list()
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for observation_folder in (x for x in study_root_path.iterdir() if x.is_dir()):
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for env_folder in (x for x in observation_folder.iterdir() if x.is_dir()):
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for model_folder in (x for x in env_folder.iterdir() if x.is_dir()):
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# Gather per seed results in this list
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for seed_folder in (x for x in model_folder.iterdir() if x.is_dir()):
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for monitor_file in [baseline_monitor_file, ood_monitor_file]:
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with (seed_folder / monitor_file).open('rb') as f:
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monitor_df = pickle.load(f)
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monitor_df = monitor_df.fillna(0)
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monitor_df['seed'] = int(seed_folder.name.split('_')[0])
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monitor_df['monitor'] = monitor_file.split('.')[0]
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monitor_df['monitor'] = monitor_df['monitor'].astype(str)
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monitor_df['env'] = env_folder.name
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monitor_df['obs_mode'] = observation_folder.name
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monitor_df['obs_mode'] = monitor_df['obs_mode'].astype(str)
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monitor_df['model'] = model_folder.name.split('_')[0]
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df_list.append(monitor_df)
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id_cols = ['monitor', 'env', 'obs_mode', 'model']
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df = pd.concat(df_list, ignore_index=True)
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df = df.fillna(0)
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for id_col in id_cols:
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df[id_col] = df[id_col].astype(str)
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df_grouped = df.groupby(id_cols + ['seed']
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).agg({key: 'sum' if "Agent" in key else 'mean' for key in df.columns
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if key not in (id_cols + ['seed'])})
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df_melted = df_grouped.reset_index().melt(id_vars=id_cols,
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value_vars='step_reward', var_name="Measurement",
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value_name="Score")
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c = sns.catplot(data=df_melted, x='obs_mode', hue='monitor', row='model', col='env', y='Score', sharey=False,
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kind="box", height=4, aspect=.7, legend_out=True)
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c.set_xticklabels(rotation=65, horizontalalignment='right')
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plt.tight_layout(pad=2)
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plt.show()
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pass
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