Files
pytorch-soft-actor-critic/main.py
T
2018-09-14 23:51:27 +05:30

94 lines
3.9 KiB
Python

import argparse
import math
import gym
import numpy as np
import itertools
import torch
from sac import SAC
from plot import plot_line
from normalized_actions import NormalizedActions
from replay_memory import ReplayMemory
parser = argparse.ArgumentParser(description='PyTorch REINFORCE example')
parser.add_argument('--env-name', default="Pendulum-v0",
help='name of the environment to run')
parser.add_argument('--deterministic', type=bool, default=False,
help='use a deterministic policy (default:False)')
parser.add_argument('--eval', type=bool, default=False,
help='Evaluate a policy (default:False)')
parser.add_argument('--reparam', type=bool, default=True,
help='reparameterize the policy (default:True)')
parser.add_argument('--gamma', type=float, default=0.99, metavar='G',
help='discount factor for reward (default: 0.99)')
parser.add_argument('--tau', type=float, default=0.005, metavar='G',
help='target smoothing coefficient(τ) (default: 0.005)')
parser.add_argument('--scale_R', type=int, default=5, metavar='G',
help='reward scaling (default: 5)')
parser.add_argument('--seed', type=int, default=543, metavar='N',
help='random seed (default: 543)')
parser.add_argument('--batch_size', type=int, default=256, metavar='N',
help='batch size (default: 256)')
parser.add_argument('--num_steps', type=int, default=1000000, metavar='N',
help='maximum number of steps (default: 1000000)')
parser.add_argument('--hidden_size', type=int, default=256, metavar='N',
help='hidden size (default: 256)')
parser.add_argument('--updates_per_step', type=int, default=1, metavar='N',
help='model updates per simulator step (default: 1)')
parser.add_argument('--value_update', type=int, default=1, metavar='N',
help='Value target update per no. of updates per step (default: 1)')
parser.add_argument('--replay_size', type=int, default=1000000, metavar='N',
help='size of replay buffer (default: 10000000)')
args = parser.parse_args()
# Environment
env = NormalizedActions(gym.make(args.env_name))
env.seed(args.seed)
torch.manual_seed(args.seed)
np.random.seed(args.seed)
# Agent
agent = SAC(env.observation_space.shape[0], env.action_space, args)
# Memory
memory = ReplayMemory(args.replay_size)
# Training Loop
rewards = []
rewards_test = []
total_numsteps = 0
updates = 0
for i_episode in itertools.count():
state = env.reset()
episode_reward = 0
while True:
action = agent.select_action(state) # Sample action from policy
next_state, reward, done, _ = env.step(action) # Step
mask = not done # 1 for not done and 0 for done
memory.push(state, action, reward, next_state, mask) # Append transition to memory
if len(memory) > args.batch_size:
for i in range(args.updates_per_step): # Number of updates per step in environment
# Sample a batch from memory
state_batch, action_batch, reward_batch, next_state_batch, mask_batch = memory.sample(args.batch_size)
# Update parameters of all the networks
agent.update_parameters(state_batch, action_batch, reward_batch, next_state_batch, mask_batch, updates)
updates += 1
state = next_state
total_numsteps += 1
episode_reward += reward
if done:
break
if total_numsteps > args.num_steps:
break
rewards.append(episode_reward)
plot_line(total_numsteps, rewards, args)
print("Episode: {}, total numsteps: {}, reward: {}, average reward: {}".format(i_episode, total_numsteps, np.round(rewards[-1],2),
np.round(np.mean(rewards[-100:]),2)))
env.close()