def main(config): set_seed(config['seed']) baseline = globals()[config['baseline']]() #instantiate baseline env = globals()[config['env']]() # instantiate env env = normalize(env) # apply normalize wrapper to env policy = MetaGaussianMLPPolicy( name="meta-policy", obs_dim=np.prod(env.observation_space.shape), action_dim=np.prod(env.action_space.shape), meta_batch_size=config['meta_batch_size'], hidden_sizes=config['hidden_sizes'], ) sampler = MetaSampler( env=env, policy=policy, rollouts_per_meta_task=config[ 'rollouts_per_meta_task'], # This batch_size is confusing meta_batch_size=config['meta_batch_size'], max_path_length=config['max_path_length'], parallel=config['parallel'], ) sample_processor = MetaSampleProcessor( baseline=baseline, discount=config['discount'], gae_lambda=config['gae_lambda'], normalize_adv=config['normalize_adv'], ) algo = TRPOMAML( policy=policy, step_size=config['step_size'], inner_type=config['inner_type'], inner_lr=config['inner_lr'], meta_batch_size=config['meta_batch_size'], num_inner_grad_steps=config['num_inner_grad_steps'], exploration=False, ) trainer = Trainer( algo=algo, policy=policy, env=env, sampler=sampler, sample_processor=sample_processor, n_itr=config['n_itr'], num_inner_grad_steps=config['num_inner_grad_steps'], ) trainer.train()
def run_experiment(**kwargs): exp_dir = os.getcwd() + '/data/' + EXP_NAME logger.configure(dir=exp_dir, format_strs=['stdout', 'log', 'csv'], snapshot_mode='last_gap', snapshot_gap=50) json.dump(kwargs, open(exp_dir + '/params.json', 'w'), indent=2, sort_keys=True, cls=ClassEncoder) # Instantiate classes set_seed(kwargs['seed']) baseline = kwargs['baseline']() env = normalize(kwargs['env']()) # Wrappers? policy = MetaGaussianMLPPolicy( name="meta-policy", obs_dim=np.prod(env.observation_space.shape), # Todo...? action_dim=np.prod(env.action_space.shape), meta_batch_size=kwargs['meta_batch_size'], hidden_sizes=kwargs['hidden_sizes'], learn_std=kwargs['learn_std'], hidden_nonlinearity=kwargs['hidden_nonlinearity'], output_nonlinearity=kwargs['output_nonlinearity'], ) # Load policy here sampler = MAMLSampler( env=env, policy=policy, rollouts_per_meta_task=kwargs['rollouts_per_meta_task'], meta_batch_size=kwargs['meta_batch_size'], max_path_length=kwargs['max_path_length'], parallel=kwargs['parallel'], envs_per_task=1, ) sample_processor = MAMLSampleProcessor( baseline=baseline, discount=kwargs['discount'], gae_lambda=kwargs['gae_lambda'], normalize_adv=kwargs['normalize_adv'], positive_adv=kwargs['positive_adv'], ) algo = TRPOMAML( policy=policy, step_size=kwargs['step_size'], inner_type=kwargs['experiment_tuple'][1], inner_lr=kwargs['inner_lr'], meta_batch_size=kwargs['meta_batch_size'], num_inner_grad_steps=kwargs['num_inner_grad_steps'], exploration=kwargs['experiment_tuple'][2], ) trainer = Trainer( algo=algo, policy=policy, env=env, sampler=sampler, sample_processor=sample_processor, n_itr=kwargs['n_itr'], num_inner_grad_steps=kwargs['num_inner_grad_steps'], ) trainer.train()