gomoku / DI-engine /dizoo /league_demo /league_demo_collector.py
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from typing import Optional, Any, List, Tuple
from collections import namedtuple, deque
from easydict import EasyDict
import numpy as np
import torch
from ding.envs import BaseEnvManager
from ding.utils import build_logger, EasyTimer, SERIAL_COLLECTOR_REGISTRY, dicts_to_lists
from ding.torch_utils import to_tensor, to_ndarray
from ding.worker.collector.base_serial_collector import ISerialCollector, CachePool, TrajBuffer, INF, \
to_tensor_transitions
@SERIAL_COLLECTOR_REGISTRY.register('league_demo')
class LeagueDemoCollector(ISerialCollector):
"""
Overview:
League demo collector, derived from BattleEpisodeSerialCollector, add action probs viz.
Interfaces:
__init__, reset, reset_env, reset_policy, collect, close
Property:
envstep
"""
config = dict(deepcopy_obs=False, transform_obs=False, collect_print_freq=100, get_train_sample=False)
def __init__(
self,
cfg: EasyDict,
env: BaseEnvManager = None,
policy: List[namedtuple] = None,
tb_logger: 'SummaryWriter' = None, # noqa
exp_name: Optional[str] = 'default_experiment',
instance_name: Optional[str] = 'collector'
) -> None:
"""
Overview:
Initialization method.
Arguments:
- cfg (:obj:`EasyDict`): Config dict
- env (:obj:`BaseEnvManager`): the subclass of vectorized env_manager(BaseEnvManager)
- policy (:obj:`List[namedtuple]`): the api namedtuple of collect_mode policy
- tb_logger (:obj:`SummaryWriter`): tensorboard handle
"""
self._exp_name = exp_name
self._instance_name = instance_name
self._collect_print_freq = cfg.collect_print_freq
self._deepcopy_obs = cfg.deepcopy_obs
self._transform_obs = cfg.transform_obs
self._cfg = cfg
self._timer = EasyTimer()
self._end_flag = False
if tb_logger is not None:
self._logger, _ = build_logger(
path='./{}/log/{}'.format(self._exp_name, self._instance_name), name=self._instance_name, need_tb=False
)
self._tb_logger = tb_logger
else:
self._logger, self._tb_logger = build_logger(
path='./{}/log/{}'.format(self._exp_name, self._instance_name), name=self._instance_name
)
self._traj_len = float("inf")
self.reset(policy, env)
def reset_env(self, _env: Optional[BaseEnvManager] = None) -> None:
"""
Overview:
Reset the environment.
If _env is None, reset the old environment.
If _env is not None, replace the old environment in the collector with the new passed \
in environment and launch.
Arguments:
- env (:obj:`Optional[BaseEnvManager]`): instance of the subclass of vectorized \
env_manager(BaseEnvManager)
"""
if _env is not None:
self._env = _env
self._env.launch()
self._env_num = self._env.env_num
else:
self._env.reset()
def reset_policy(self, _policy: Optional[List[namedtuple]] = None) -> None:
"""
Overview:
Reset the policy.
If _policy is None, reset the old policy.
If _policy is not None, replace the old policy in the collector with the new passed in policy.
Arguments:
- policy (:obj:`Optional[List[namedtuple]]`): the api namedtuple of collect_mode policy
"""
assert hasattr(self, '_env'), "please set env first"
if _policy is not None:
assert len(_policy) == 2, "1v1 episode collector needs 2 policy, but found {}".format(len(_policy))
self._policy = _policy
self._default_n_episode = _policy[0].get_attribute('cfg').collect.get('n_episode', None)
self._unroll_len = _policy[0].get_attribute('unroll_len')
self._on_policy = _policy[0].get_attribute('cfg').on_policy
self._traj_len = INF
self._logger.debug(
'Set default n_episode mode(n_episode({}), env_num({}), traj_len({}))'.format(
self._default_n_episode, self._env_num, self._traj_len
)
)
for p in self._policy:
p.reset()
def reset(self, _policy: Optional[List[namedtuple]] = None, _env: Optional[BaseEnvManager] = None) -> None:
"""
Overview:
Reset the environment and policy.
If _env is None, reset the old environment.
If _env is not None, replace the old environment in the collector with the new passed \
in environment and launch.
If _policy is None, reset the old policy.
If _policy is not None, replace the old policy in the collector with the new passed in policy.
Arguments:
- policy (:obj:`Optional[List[namedtuple]]`): the api namedtuple of collect_mode policy
- env (:obj:`Optional[BaseEnvManager]`): instance of the subclass of vectorized \
env_manager(BaseEnvManager)
"""
if _env is not None:
self.reset_env(_env)
if _policy is not None:
self.reset_policy(_policy)
self._obs_pool = CachePool('obs', self._env_num, deepcopy=self._deepcopy_obs)
self._policy_output_pool = CachePool('policy_output', self._env_num)
# _traj_buffer is {env_id: {policy_id: TrajBuffer}}, is used to store traj_len pieces of transitions
self._traj_buffer = {
env_id: {policy_id: TrajBuffer(maxlen=self._traj_len)
for policy_id in range(2)}
for env_id in range(self._env_num)
}
self._env_info = {env_id: {'time': 0., 'step': 0} for env_id in range(self._env_num)}
self._episode_info = []
self._total_envstep_count = 0
self._total_episode_count = 0
self._total_duration = 0
self._last_train_iter = 0
self._end_flag = False
def _reset_stat(self, env_id: int) -> None:
"""
Overview:
Reset the collector's state. Including reset the traj_buffer, obs_pool, policy_output_pool\
and env_info. Reset these states according to env_id. You can refer to base_serial_collector\
to get more messages.
Arguments:
- env_id (:obj:`int`): the id where we need to reset the collector's state
"""
for i in range(2):
self._traj_buffer[env_id][i].clear()
self._obs_pool.reset(env_id)
self._policy_output_pool.reset(env_id)
self._env_info[env_id] = {'time': 0., 'step': 0}
@property
def envstep(self) -> int:
"""
Overview:
Print the total envstep count.
Return:
- envstep (:obj:`int`): the total envstep count
"""
return self._total_envstep_count
def close(self) -> None:
"""
Overview:
Close the collector. If end_flag is False, close the environment, flush the tb_logger\
and close the tb_logger.
"""
if self._end_flag:
return
self._end_flag = True
self._env.close()
self._tb_logger.flush()
self._tb_logger.close()
def __del__(self) -> None:
"""
Overview:
Execute the close command and close the collector. __del__ is automatically called to \
destroy the collector instance when the collector finishes its work
"""
self.close()
def collect(self,
n_episode: Optional[int] = None,
train_iter: int = 0,
policy_kwargs: Optional[dict] = None) -> Tuple[List[Any], List[Any]]:
"""
Overview:
Collect `n_episode` data with policy_kwargs, which is already trained `train_iter` iterations
Arguments:
- n_episode (:obj:`int`): the number of collecting data episode
- train_iter (:obj:`int`): the number of training iteration
- policy_kwargs (:obj:`dict`): the keyword args for policy forward
Returns:
- return_data (:obj:`Tuple[List, List]`): A tuple with training sample(data) and episode info, \
the former is a list containing collected episodes if not get_train_sample, \
otherwise, return train_samples split by unroll_len.
"""
if n_episode is None:
if self._default_n_episode is None:
raise RuntimeError("Please specify collect n_episode")
else:
n_episode = self._default_n_episode
assert n_episode >= self._env_num, "Please make sure n_episode >= env_num"
if policy_kwargs is None:
policy_kwargs = {}
collected_episode = 0
return_data = [[] for _ in range(2)]
return_info = [[] for _ in range(2)]
ready_env_id = set()
remain_episode = n_episode
while True:
with self._timer:
# Get current env obs.
obs = self._env.ready_obs
new_available_env_id = set(obs.keys()).difference(ready_env_id)
ready_env_id = ready_env_id.union(set(list(new_available_env_id)[:remain_episode]))
remain_episode -= min(len(new_available_env_id), remain_episode)
obs = {env_id: obs[env_id] for env_id in ready_env_id}
# Policy forward.
self._obs_pool.update(obs)
if self._transform_obs:
obs = to_tensor(obs, dtype=torch.float32)
obs = dicts_to_lists(obs)
policy_output = [p.forward(obs[i], **policy_kwargs) for i, p in enumerate(self._policy)]
self._policy_output_pool.update(policy_output)
# Interact with env.
actions = {}
for env_id in ready_env_id:
actions[env_id] = []
for output in policy_output:
actions[env_id].append(output[env_id]['action'])
actions = to_ndarray(actions)
# temporally for viz
probs0 = torch.softmax(torch.stack([o['logit'] for o in policy_output[0].values()], 0), 1).mean(0)
probs1 = torch.softmax(torch.stack([o['logit'] for o in policy_output[1].values()], 0), 1).mean(0)
timesteps = self._env.step(actions)
# TODO(nyz) this duration may be inaccurate in async env
interaction_duration = self._timer.value / len(timesteps)
# TODO(nyz) vectorize this for loop
for env_id, timestep in timesteps.items():
self._env_info[env_id]['step'] += 1
self._total_envstep_count += 1
with self._timer:
for policy_id, policy in enumerate(self._policy):
policy_timestep_data = [d[policy_id] if not isinstance(d, bool) else d for d in timestep]
policy_timestep = type(timestep)(*policy_timestep_data)
transition = self._policy[policy_id].process_transition(
self._obs_pool[env_id][policy_id], self._policy_output_pool[env_id][policy_id],
policy_timestep
)
transition['collect_iter'] = train_iter
self._traj_buffer[env_id][policy_id].append(transition)
# prepare data
if timestep.done:
transitions = to_tensor_transitions(self._traj_buffer[env_id][policy_id])
if self._cfg.get_train_sample:
train_sample = self._policy[policy_id].get_train_sample(transitions)
return_data[policy_id].extend(train_sample)
else:
return_data[policy_id].append(transitions)
self._traj_buffer[env_id][policy_id].clear()
self._env_info[env_id]['time'] += self._timer.value + interaction_duration
# If env is done, record episode info and reset
if timestep.done:
self._total_episode_count += 1
info = {
'reward0': timestep.info[0]['eval_episode_return'],
'reward1': timestep.info[1]['eval_episode_return'],
'time': self._env_info[env_id]['time'],
'step': self._env_info[env_id]['step'],
'probs0': probs0,
'probs1': probs1,
}
collected_episode += 1
self._episode_info.append(info)
for i, p in enumerate(self._policy):
p.reset([env_id])
self._reset_stat(env_id)
ready_env_id.remove(env_id)
for policy_id in range(2):
return_info[policy_id].append(timestep.info[policy_id])
if collected_episode >= n_episode:
break
# log
self._output_log(train_iter)
return return_data, return_info
def _output_log(self, train_iter: int) -> None:
"""
Overview:
Print the output log information. You can refer to Docs/Best Practice/How to understand\
training generated folders/Serial mode/log/collector for more details.
Arguments:
- train_iter (:obj:`int`): the number of training iteration.
"""
if (train_iter - self._last_train_iter) >= self._collect_print_freq and len(self._episode_info) > 0:
self._last_train_iter = train_iter
episode_count = len(self._episode_info)
envstep_count = sum([d['step'] for d in self._episode_info])
duration = sum([d['time'] for d in self._episode_info])
episode_return0 = [d['reward0'] for d in self._episode_info]
episode_return1 = [d['reward1'] for d in self._episode_info]
probs0 = [d['probs0'] for d in self._episode_info]
probs1 = [d['probs1'] for d in self._episode_info]
self._total_duration += duration
info = {
'episode_count': episode_count,
'envstep_count': envstep_count,
'avg_envstep_per_episode': envstep_count / episode_count,
'avg_envstep_per_sec': envstep_count / duration,
'avg_episode_per_sec': episode_count / duration,
'collect_time': duration,
'reward0_mean': np.mean(episode_return0),
'reward0_std': np.std(episode_return0),
'reward0_max': np.max(episode_return0),
'reward0_min': np.min(episode_return0),
'reward1_mean': np.mean(episode_return1),
'reward1_std': np.std(episode_return1),
'reward1_max': np.max(episode_return1),
'reward1_min': np.min(episode_return1),
'total_envstep_count': self._total_envstep_count,
'total_episode_count': self._total_episode_count,
'total_duration': self._total_duration,
}
info.update(
{
'probs0_select_action0': sum([p[0] for p in probs0]) / len(probs0),
'probs0_select_action1': sum([p[1] for p in probs0]) / len(probs0),
'probs1_select_action0': sum([p[0] for p in probs1]) / len(probs1),
'probs1_select_action1': sum([p[1] for p in probs1]) / len(probs1),
}
)
self._episode_info.clear()
self._logger.info("collect end:\n{}".format('\n'.join(['{}: {}'.format(k, v) for k, v in info.items()])))
for k, v in info.items():
self._tb_logger.add_scalar('{}_iter/'.format(self._instance_name) + k, v, train_iter)
if k in ['total_envstep_count']:
continue
self._tb_logger.add_scalar('{}_step/'.format(self._instance_name) + k, v, self._total_envstep_count)