Use Closed-Form Policy to Play MountainCarContinuous-v0¶

In [1]:
import sys
import logging
import itertools

import numpy as np
np.random.seed(0)
import gym

logging.basicConfig(level=logging.INFO,
        format='%(asctime)s [%(levelname)s] %(message)s',
        stream=sys.stdout, datefmt='%H:%M:%S')
In [2]:
env = gym.make('MountainCarContinuous-v0')
for key in vars(env):
    logging.info('%s: %s', key, vars(env)[key])
for key in vars(env.spec):
    logging.info('%s: %s', key, vars(env.spec)[key])
00:00:00 [INFO] env: <Continuous_MountainCarEnv<MountainCarContinuous-v0>>
00:00:00 [INFO] action_space: Box(-1.0, 1.0, (1,), float32)
00:00:00 [INFO] observation_space: Box(-1.2000000476837158, 0.6000000238418579, (2,), float32)
00:00:00 [INFO] reward_range: (-inf, inf)
00:00:00 [INFO] metadata: {'render.modes': ['human', 'rgb_array'], 'video.frames_per_second': 30}
00:00:00 [INFO] _max_episode_steps: 999
00:00:00 [INFO] _elapsed_steps: None
00:00:00 [INFO] id: MountainCarContinuous-v0
00:00:00 [INFO] entry_point: gym.envs.classic_control:Continuous_MountainCarEnv
00:00:00 [INFO] reward_threshold: 90.0
00:00:00 [INFO] nondeterministic: False
00:00:00 [INFO] max_episode_steps: 999
00:00:00 [INFO] _kwargs: {}
00:00:00 [INFO] _env_name: MountainCarContinuous
In [3]:
class ClosedFormAgent:
    def __init__(self, _):
        pass

    def reset(self, mode=None):
        pass

    def step(self, observation, reward, terminated):
        position, velocity = observation
        if position > -4 * velocity or position < 13 * velocity - 0.6:
            force = 1.
        else:
            force = -1.
        action = np.array([force,])
        return action

    def close(self):
        pass


agent = ClosedFormAgent(env)
In [4]:
def play_episode(env, agent, seed=None, mode=None, render=False):
    observation, _ = env.reset(seed=seed)
    reward, terminated, truncated = 0., False, False
    agent.reset(mode=mode)
    episode_reward, elapsed_steps = 0., 0
    while True:
        action = agent.step(observation, reward, terminated)
        if render:
            env.render()
        if terminated or truncated:
            break
        observation, reward, terminated, truncated, _ = env.step(action)
        episode_reward += reward
        elapsed_steps += 1
    agent.close()
    return episode_reward, elapsed_steps


logging.info('==== test ====')
episode_rewards = []
for episode in range(100):
    episode_reward, elapsed_steps = play_episode(env, agent)
    episode_rewards.append(episode_reward)
    logging.info('test episode %d: reward = %.2f, steps = %d',
            episode, episode_reward, elapsed_steps)
logging.info('average episode reward = %.2f ± %.2f',
        np.mean(episode_rewards), np.std(episode_rewards))
00:00:00 [INFO] ==== test ====
00:00:00 [INFO] test episode 0: reward = 93.30, steps = 67
00:00:00 [INFO] test episode 1: reward = 93.30, steps = 67
00:00:00 [INFO] test episode 2: reward = 93.40, steps = 66
00:00:00 [INFO] test episode 3: reward = 93.30, steps = 67
00:00:00 [INFO] test episode 4: reward = 93.30, steps = 67
00:00:00 [INFO] test episode 5: reward = 93.40, steps = 66
00:00:00 [INFO] test episode 6: reward = 93.30, steps = 67
00:00:00 [INFO] test episode 7: reward = 93.40, steps = 66
00:00:00 [INFO] test episode 8: reward = 93.30, steps = 67
00:00:00 [INFO] test episode 9: reward = 93.40, steps = 66
00:00:00 [INFO] test episode 10: reward = 93.30, steps = 67
00:00:00 [INFO] test episode 11: reward = 93.30, steps = 67
00:00:00 [INFO] test episode 12: reward = 93.40, steps = 66
00:00:00 [INFO] test episode 13: reward = 93.40, steps = 66
00:00:00 [INFO] test episode 14: reward = 93.30, steps = 67
00:00:00 [INFO] test episode 15: reward = 93.40, steps = 66
00:00:00 [INFO] test episode 16: reward = 93.40, steps = 66
00:00:00 [INFO] test episode 17: reward = 93.40, steps = 66
00:00:00 [INFO] test episode 18: reward = 93.30, steps = 67
00:00:00 [INFO] test episode 19: reward = 93.30, steps = 67
00:00:00 [INFO] test episode 20: reward = 93.40, steps = 66
00:00:00 [INFO] test episode 21: reward = 93.30, steps = 67
00:00:00 [INFO] test episode 22: reward = 93.40, steps = 66
00:00:00 [INFO] test episode 23: reward = 93.40, steps = 66
00:00:00 [INFO] test episode 24: reward = 93.40, steps = 66
00:00:00 [INFO] test episode 25: reward = 93.40, steps = 66
00:00:00 [INFO] test episode 26: reward = 93.40, steps = 66
00:00:00 [INFO] test episode 27: reward = 93.30, steps = 67
00:00:00 [INFO] test episode 28: reward = 93.40, steps = 66
00:00:00 [INFO] test episode 29: reward = 93.30, steps = 67
00:00:00 [INFO] test episode 30: reward = 93.30, steps = 67
00:00:00 [INFO] test episode 31: reward = 93.40, steps = 66
00:00:00 [INFO] test episode 32: reward = 93.40, steps = 66
00:00:00 [INFO] test episode 33: reward = 93.40, steps = 66
00:00:00 [INFO] test episode 34: reward = 93.40, steps = 66
00:00:00 [INFO] test episode 35: reward = 93.40, steps = 66
00:00:00 [INFO] test episode 36: reward = 93.40, steps = 66
00:00:00 [INFO] test episode 37: reward = 93.40, steps = 66
00:00:00 [INFO] test episode 38: reward = 93.40, steps = 66
00:00:00 [INFO] test episode 39: reward = 93.30, steps = 67
00:00:00 [INFO] test episode 40: reward = 93.40, steps = 66
00:00:00 [INFO] test episode 41: reward = 93.30, steps = 67
00:00:00 [INFO] test episode 42: reward = 93.30, steps = 67
00:00:00 [INFO] test episode 43: reward = 93.30, steps = 67
00:00:00 [INFO] test episode 44: reward = 93.30, steps = 67
00:00:00 [INFO] test episode 45: reward = 93.30, steps = 67
00:00:00 [INFO] test episode 46: reward = 93.30, steps = 67
00:00:00 [INFO] test episode 47: reward = 93.40, steps = 66
00:00:00 [INFO] test episode 48: reward = 93.40, steps = 66
00:00:00 [INFO] test episode 49: reward = 93.40, steps = 66
00:00:00 [INFO] test episode 50: reward = 93.30, steps = 67
00:00:00 [INFO] test episode 51: reward = 93.30, steps = 67
00:00:00 [INFO] test episode 52: reward = 93.40, steps = 66
00:00:00 [INFO] test episode 53: reward = 93.30, steps = 67
00:00:00 [INFO] test episode 54: reward = 93.30, steps = 67
00:00:00 [INFO] test episode 55: reward = 93.30, steps = 67
00:00:00 [INFO] test episode 56: reward = 93.40, steps = 66
00:00:00 [INFO] test episode 57: reward = 93.30, steps = 67
00:00:00 [INFO] test episode 58: reward = 93.30, steps = 67
00:00:00 [INFO] test episode 59: reward = 93.30, steps = 67
00:00:00 [INFO] test episode 60: reward = 93.40, steps = 66
00:00:00 [INFO] test episode 61: reward = 93.30, steps = 67
00:00:00 [INFO] test episode 62: reward = 93.30, steps = 67
00:00:00 [INFO] test episode 63: reward = 93.40, steps = 66
00:00:00 [INFO] test episode 64: reward = 93.40, steps = 66
00:00:00 [INFO] test episode 65: reward = 93.30, steps = 67
00:00:00 [INFO] test episode 66: reward = 93.40, steps = 66
00:00:00 [INFO] test episode 67: reward = 93.40, steps = 66
00:00:00 [INFO] test episode 68: reward = 93.30, steps = 67
00:00:00 [INFO] test episode 69: reward = 93.40, steps = 66
00:00:00 [INFO] test episode 70: reward = 93.30, steps = 67
00:00:00 [INFO] test episode 71: reward = 93.40, steps = 66
00:00:00 [INFO] test episode 72: reward = 93.30, steps = 67
00:00:00 [INFO] test episode 73: reward = 93.40, steps = 66
00:00:00 [INFO] test episode 74: reward = 93.40, steps = 66
00:00:00 [INFO] test episode 75: reward = 93.40, steps = 66
00:00:00 [INFO] test episode 76: reward = 93.30, steps = 67
00:00:00 [INFO] test episode 77: reward = 93.30, steps = 67
00:00:00 [INFO] test episode 78: reward = 93.40, steps = 66
00:00:00 [INFO] test episode 79: reward = 93.40, steps = 66
00:00:00 [INFO] test episode 80: reward = 93.30, steps = 67
00:00:00 [INFO] test episode 81: reward = 93.40, steps = 66
00:00:00 [INFO] test episode 82: reward = 93.30, steps = 67
00:00:00 [INFO] test episode 83: reward = 93.30, steps = 67
00:00:00 [INFO] test episode 84: reward = 93.40, steps = 66
00:00:00 [INFO] test episode 85: reward = 93.40, steps = 66
00:00:00 [INFO] test episode 86: reward = 93.40, steps = 66
00:00:00 [INFO] test episode 87: reward = 93.40, steps = 66
00:00:00 [INFO] test episode 88: reward = 93.40, steps = 66
00:00:00 [INFO] test episode 89: reward = 93.40, steps = 66
00:00:00 [INFO] test episode 90: reward = 93.40, steps = 66
00:00:00 [INFO] test episode 91: reward = 93.30, steps = 67
00:00:00 [INFO] test episode 92: reward = 93.30, steps = 67
00:00:00 [INFO] test episode 93: reward = 93.30, steps = 67
00:00:00 [INFO] test episode 94: reward = 93.40, steps = 66
00:00:00 [INFO] test episode 95: reward = 93.40, steps = 66
00:00:00 [INFO] test episode 96: reward = 93.40, steps = 66
00:00:00 [INFO] test episode 97: reward = 93.40, steps = 66
00:00:00 [INFO] test episode 98: reward = 93.40, steps = 66
00:00:00 [INFO] test episode 99: reward = 93.30, steps = 67
00:00:00 [INFO] average episode reward = 93.35 ± 0.05
In [5]:
env.close()