"""Simple example of writing experiences to a file using JsonWriter."""

# __sphinx_doc_begin__
import gym
import numpy as np
import os

import ray.utils

from ray.rllib.models.preprocessors import get_preprocessor
from ray.rllib.evaluation.sample_batch_builder import SampleBatchBuilder
from ray.rllib.offline.json_writer import JsonWriter

if __name__ == "__main__":
    batch_builder = SampleBatchBuilder()  # or MultiAgentSampleBatchBuilder
    writer = JsonWriter(
        os.path.join(ray.utils.get_user_temp_dir(), "demo-out"))

    # You normally wouldn't want to manually create sample batches if a
    # simulator is available, but let's do it anyways for example purposes:
    env = gym.make("CartPole-v0")

    # RLlib uses preprocessors to implement transforms such as one-hot encoding
    # and flattening of tuple and dict observations. For CartPole a no-op
    # preprocessor is used, but this may be relevant for more complex envs.
    prep = get_preprocessor(env.observation_space)(env.observation_space)
    print("The preprocessor is", prep)

    for eps_id in range(100):
        obs = env.reset()
        prev_action = np.zeros_like(env.action_space.sample())
        prev_reward = 0
        done = False
        t = 0
        while not done:
            action = env.action_space.sample()
            new_obs, rew, done, info = env.step(action)
            batch_builder.add_values(
                t=t,
                eps_id=eps_id,
                agent_index=0,
                obs=prep.transform(obs),
                actions=action,
                action_prob=1.0,  # put the true action probability here
                action_logp=0.0,
                rewards=rew,
                prev_actions=prev_action,
                prev_rewards=prev_reward,
                dones=done,
                infos=info,
                new_obs=prep.transform(new_obs))
            obs = new_obs
            prev_action = action
            prev_reward = rew
            t += 1
        writer.write(batch_builder.build_and_reset())
# __sphinx_doc_end__