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train_ppo_ale.py
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train_ppo_ale.py
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"""An example of training PPO against OpenAI Gym Atari Envs.
This script is an example of training a PPO agent on Atari envs.
To train PPO for 10M timesteps on Breakout, run:
python train_ppo_ale.py
To train PPO using a recurrent model on a flickering Atari env, run:
python train_ppo_ale.py --recurrent --flicker --no-frame-stack
"""
import argparse
import os
import chainer
from chainer import functions as F
from chainer import links as L
import numpy as np
import chainerrl
from chainerrl.agents import PPO
from chainerrl import experiments
from chainerrl import misc
from chainerrl.wrappers import atari_wrappers
def main():
parser = argparse.ArgumentParser()
parser.add_argument('--env', type=str, default='BreakoutNoFrameskip-v4',
help='Gym Env ID.')
parser.add_argument('--gpu', type=int, default=0,
help='GPU device ID. Set to -1 to use CPUs only.')
parser.add_argument('--num-envs', type=int, default=8,
help='Number of env instances run in parallel.')
parser.add_argument('--seed', type=int, default=0,
help='Random seed [0, 2 ** 32)')
parser.add_argument('--outdir', type=str, default='results',
help='Directory path to save output files.'
' If it does not exist, it will be created.')
parser.add_argument('--steps', type=int, default=10 ** 7,
help='Total time steps for training.')
parser.add_argument('--max-frames', type=int,
default=30 * 60 * 60, # 30 minutes with 60 fps
help='Maximum number of frames for each episode.')
parser.add_argument('--lr', type=float, default=2.5e-4,
help='Learning rate.')
parser.add_argument('--eval-interval', type=int, default=100000,
help='Interval (in timesteps) between evaluation'
' phases.')
parser.add_argument('--eval-n-runs', type=int, default=10,
help='Number of episodes ran in an evaluation phase.')
parser.add_argument('--demo', action='store_true', default=False,
help='Run demo episodes, not training.')
parser.add_argument('--load', type=str, default='',
help='Directory path to load a saved agent data from'
' if it is a non-empty string.')
parser.add_argument('--logging-level', type=int, default=20,
help='Logging level. 10:DEBUG, 20:INFO etc.')
parser.add_argument('--render', action='store_true', default=False,
help='Render env states in a GUI window.')
parser.add_argument('--monitor', action='store_true', default=False,
help='Monitor env. Videos and additional information'
' are saved as output files.')
parser.add_argument('--update-interval', type=int, default=128 * 8,
help='Interval (in timesteps) between PPO iterations.')
parser.add_argument('--batchsize', type=int, default=32 * 8,
help='Size of minibatch (in timesteps).')
parser.add_argument('--epochs', type=int, default=4,
help='Number of epochs used for each PPO iteration.')
parser.add_argument('--log-interval', type=int, default=10000,
help='Interval (in timesteps) of printing logs.')
parser.add_argument('--recurrent', action='store_true', default=False,
help='Use a recurrent model. See the code for the'
' model definition.')
parser.add_argument('--flicker', action='store_true', default=False,
help='Use so-called flickering Atari, where each'
' screen is blacked out with probability 0.5.')
parser.add_argument('--no-frame-stack', action='store_true', default=False,
help='Disable frame stacking so that the agent can'
' only see the current screen.')
parser.add_argument('--checkpoint-frequency', type=int,
default=None,
help='Frequency at which agents are stored.')
args = parser.parse_args()
import logging
logging.basicConfig(level=args.logging_level)
# Set a random seed used in ChainerRL.
misc.set_random_seed(args.seed, gpus=(args.gpu,))
# Set different random seeds for different subprocesses.
# If seed=0 and processes=4, subprocess seeds are [0, 1, 2, 3].
# If seed=1 and processes=4, subprocess seeds are [4, 5, 6, 7].
process_seeds = np.arange(args.num_envs) + args.seed * args.num_envs
assert process_seeds.max() < 2 ** 32
args.outdir = experiments.prepare_output_dir(args, args.outdir)
print('Output files are saved in {}'.format(args.outdir))
def make_env(idx, test):
# Use different random seeds for train and test envs
process_seed = int(process_seeds[idx])
env_seed = 2 ** 32 - 1 - process_seed if test else process_seed
env = atari_wrappers.wrap_deepmind(
atari_wrappers.make_atari(args.env, max_frames=args.max_frames),
episode_life=not test,
clip_rewards=not test,
flicker=args.flicker,
frame_stack=not args.no_frame_stack,
)
env.seed(env_seed)
if args.monitor:
env = chainerrl.wrappers.Monitor(
env, args.outdir,
mode='evaluation' if test else 'training')
if args.render:
env = chainerrl.wrappers.Render(env)
return env
def make_batch_env(test):
return chainerrl.envs.MultiprocessVectorEnv(
[(lambda: make_env(idx, test))
for idx, env in enumerate(range(args.num_envs))])
sample_env = make_env(0, test=False)
print('Observation space', sample_env.observation_space)
print('Action space', sample_env.action_space)
n_actions = sample_env.action_space.n
winit_last = chainer.initializers.LeCunNormal(1e-2)
if args.recurrent:
model = chainerrl.links.StatelessRecurrentSequential(
L.Convolution2D(None, 32, 8, stride=4),
F.relu,
L.Convolution2D(None, 64, 4, stride=2),
F.relu,
L.Convolution2D(None, 64, 3, stride=1),
F.relu,
L.Linear(None, 512),
F.relu,
L.NStepGRU(1, 512, 512, 0),
chainerrl.links.Branched(
chainer.Sequential(
L.Linear(None, n_actions, initialW=winit_last),
chainerrl.distribution.SoftmaxDistribution,
),
L.Linear(None, 1),
)
)
else:
model = chainer.Sequential(
L.Convolution2D(None, 32, 8, stride=4),
F.relu,
L.Convolution2D(None, 64, 4, stride=2),
F.relu,
L.Convolution2D(None, 64, 3, stride=1),
F.relu,
L.Linear(None, 512),
F.relu,
chainerrl.links.Branched(
chainer.Sequential(
L.Linear(None, n_actions, initialW=winit_last),
chainerrl.distribution.SoftmaxDistribution,
),
L.Linear(None, 1),
)
)
# Draw the computational graph and save it in the output directory.
fake_obss = np.zeros(
sample_env.observation_space.shape, dtype=np.float32)[None]
if args.recurrent:
fake_out, _ = model(fake_obss, None)
else:
fake_out = model(fake_obss)
chainerrl.misc.draw_computational_graph(
[fake_out], os.path.join(args.outdir, 'model'))
opt = chainer.optimizers.Adam(alpha=args.lr, eps=1e-5)
opt.setup(model)
opt.add_hook(chainer.optimizer.GradientClipping(0.5))
def phi(x):
# Feature extractor
return np.asarray(x, dtype=np.float32) / 255
agent = PPO(
model,
opt,
gpu=args.gpu,
phi=phi,
update_interval=args.update_interval,
minibatch_size=args.batchsize,
epochs=args.epochs,
clip_eps=0.1,
clip_eps_vf=None,
standardize_advantages=True,
entropy_coef=1e-2,
recurrent=args.recurrent,
)
if args.load:
agent.load(args.load)
if args.demo:
eval_stats = experiments.eval_performance(
env=make_batch_env(test=True),
agent=agent,
n_steps=None,
n_episodes=args.eval_n_runs)
print('n_runs: {} mean: {} median: {} stdev: {}'.format(
args.eval_n_runs, eval_stats['mean'], eval_stats['median'],
eval_stats['stdev']))
else:
step_hooks = []
# Linearly decay the learning rate to zero
def lr_setter(env, agent, value):
agent.optimizer.alpha = value
step_hooks.append(
experiments.LinearInterpolationHook(
args.steps, args.lr, 0, lr_setter))
experiments.train_agent_batch_with_evaluation(
agent=agent,
env=make_batch_env(False),
eval_env=make_batch_env(True),
outdir=args.outdir,
steps=args.steps,
eval_n_steps=None,
eval_n_episodes=args.eval_n_runs,
checkpoint_freq=args.checkpoint_frequency,
eval_interval=args.eval_interval,
log_interval=args.log_interval,
save_best_so_far_agent=False,
step_hooks=step_hooks,
)
if __name__ == '__main__':
main()