164 lines
5.6 KiB
Python
164 lines
5.6 KiB
Python
import gym
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import torch
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import torch.nn as nn
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import torch.nn.functional as F
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import rltorch
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import rltorch.network as rn
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import rltorch.memory as M
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import rltorch.env as E
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from rltorch.action_selector import StochasticSelector
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# from tensorboardX import SummaryWriter
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from copy import deepcopy
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from rltorch.log import Logger
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#
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## Networks
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#
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class Value(nn.Module):
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def __init__(self, state_size, action_size):
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super(Value, self).__init__()
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self.state_size = state_size
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self.action_size = action_size
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self.fc1 = rn.NoisyLinear(state_size, 255)
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self.fc_norm = nn.LayerNorm(255)
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self.value_fc = rn.NoisyLinear(255, 255)
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self.value_fc_norm = nn.LayerNorm(255)
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self.value = rn.NoisyLinear(255, 1)
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self.advantage_fc = rn.NoisyLinear(255, 255)
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self.advantage_fc_norm = nn.LayerNorm(255)
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self.advantage = rn.NoisyLinear(255, action_size)
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def forward(self, x):
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x = F.relu(self.fc_norm(self.fc1(x)))
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state_value = F.relu(self.value_fc_norm(self.value_fc(x)))
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state_value = self.value(state_value)
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advantage = F.relu(self.advantage_fc_norm(self.advantage_fc(x)))
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advantage = self.advantage(advantage)
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x = state_value + advantage - advantage.mean()
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return x
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class Policy(nn.Module):
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def __init__(self, state_size, action_size):
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super(Policy, self).__init__()
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self.state_size = state_size
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self.action_size = action_size
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self.fc1 = nn.Linear(state_size, 125)
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self.fc_norm = nn.LayerNorm(125)
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self.fc2 = nn.Linear(125, 125)
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self.fc2_norm = nn.LayerNorm(125)
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self.action_prob = nn.Linear(125, action_size)
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def forward(self, x):
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x = F.relu(self.fc_norm(self.fc1(x)))
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x = F.relu(self.fc2_norm(self.fc2(x)))
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x = F.softmax(self.action_prob(x), dim = 1)
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return x
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#
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## Configuration
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#
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config = {}
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config['seed'] = 901
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config['environment_name'] = 'Acrobot-v1'
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config['memory_size'] = 2000
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config['total_training_episodes'] = 50
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config['total_evaluation_episodes'] = 5
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config['batch_size'] = 32
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config['learning_rate'] = 1e-3
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config['target_sync_tau'] = 1e-1
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config['discount_rate'] = 0.99
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config['replay_skip'] = 0
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# How many episodes between printing out the episode stats
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config['print_stat_n_eps'] = 1
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config['disable_cuda'] = False
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# Prioritized vs Random Sampling
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# 0 - Random sampling
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# 1 - Only the highest prioirities
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config['prioritized_replay_sampling_priority'] = 0.6
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# How important are the weights for the loss?
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# 0 - Treat all losses equally
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# 1 - Lower the importance of high losses
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# Should ideally start from 0 and move your way to 1 to prevent overfitting
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config['prioritized_replay_weight_importance'] = rltorch.scheduler.ExponentialScheduler(initial_value = 0.4, end_value = 1, iterations = 5000)
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#
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## Training Loop
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#
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def train(runner, agent, config, logwriter=None):
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finished = False
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last_episode_num = 1
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while not finished:
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runner.run(config['replay_skip'] + 1)
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agent.learn()
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if logwriter is not None:
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if last_episode_num < runner.episode_num:
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last_episode_num = runner.episode_num
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agent.value_net.log_named_parameters()
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agent.policy_net.log_named_parameters()
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logwriter.write(Logger)
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finished = runner.episode_num > config['total_training_episodes']
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if __name__ == "__main__":
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# Setting up the environment
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rltorch.set_seed(config['seed'])
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print("Setting up environment...", end = " ")
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env = E.TorchWrap(gym.make(config['environment_name']))
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env.seed(config['seed'])
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print("Done.")
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state_size = env.observation_space.shape[0]
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action_size = env.action_space.n
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# Logging
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logwriter = None
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# logwriter = rltorch.log.LogWriter(SummaryWriter())
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# Setting up the networks
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device = torch.device("cuda:0" if torch.cuda.is_available() and not config['disable_cuda'] else "cpu")
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config2 = deepcopy(config)
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config2['learning_rate'] = 0.01
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policy_net = rn.ESNetwork(Policy(state_size, action_size),
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torch.optim.Adam, 500, None, config2, sigma=0.1, device=device, name="ES")
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value_net = rn.Network(Value(state_size, action_size),
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torch.optim.Adam, config, device=device, name="DQN")
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target_net = rn.TargetNetwork(value_net, device=device)
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# Actor takes a net and uses it to produce actions from given states
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actor = StochasticSelector(policy_net, action_size, device=device)
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# Memory stores experiences for later training
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memory = M.PrioritizedReplayMemory(capacity=config['memory_size'], alpha=config['prioritized_replay_sampling_priority'])
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# Runner performs a certain number of steps in the environment
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runner = rltorch.env.EnvironmentRunSync(env, actor, config, name="Training", memory=memory, logwriter=logwriter)
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# Agent is what performs the training
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agent = rltorch.agents.QEPAgent(policy_net, value_net, memory, config, target_value_net=target_net)
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print("Training...")
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train(runner, agent, config, logwriter=logwriter)
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# For profiling...
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# import cProfile
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# cProfile.run('train(runner, agent, config, logwriter = logwriter )')
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# python -m torch.utils.bottleneck /path/to/source/script.py [args] is also a good solution...
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print("Training Finished.")
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print("Evaluating...")
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rltorch.env.simulateEnvEps(env, actor, config, total_episodes = config['total_evaluation_episodes'], name="Evaluation")
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print("Evaulations Done.")
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# logwriter.close() # We don't need to write anything out to disk anymore
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