Merge pull request #7899 from freqtrade/fix/multiproc-dp
Ensure data provider is passed to multiproc envs
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b915872f66
@ -11,9 +11,6 @@ from gym import spaces
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from gym.utils import seeding
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from pandas import DataFrame
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from freqtrade.data.dataprovider import DataProvider
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from freqtrade.enums import RunMode
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logger = logging.getLogger(__name__)
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@ -47,8 +44,8 @@ class BaseEnvironment(gym.Env):
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def __init__(self, df: DataFrame = DataFrame(), prices: DataFrame = DataFrame(),
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reward_kwargs: dict = {}, window_size=10, starting_point=True,
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id: str = 'baseenv-1', seed: int = 1, config: dict = {},
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dp: Optional[DataProvider] = None):
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id: str = 'baseenv-1', seed: int = 1, config: dict = {}, live: bool = False,
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fee: float = 0.0015):
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"""
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Initializes the training/eval environment.
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:param df: dataframe of features
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@ -59,32 +56,29 @@ class BaseEnvironment(gym.Env):
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:param id: string id of the environment (used in backend for multiprocessed env)
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:param seed: Sets the seed of the environment higher in the gym.Env object
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:param config: Typical user configuration file
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:param dp: dataprovider from freqtrade
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:param live: Whether or not this environment is active in dry/live/backtesting
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:param fee: The fee to use for environmental interactions.
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"""
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self.config = config
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self.rl_config = config['freqai']['rl_config']
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self.add_state_info = self.rl_config.get('add_state_info', False)
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self.id = id
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self.seed(seed)
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self.reset_env(df, prices, window_size, reward_kwargs, starting_point)
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self.max_drawdown = 1 - self.rl_config.get('max_training_drawdown_pct', 0.8)
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self.compound_trades = config['stake_amount'] == 'unlimited'
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if self.config.get('fee', None) is not None:
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self.fee = self.config['fee']
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elif dp is not None:
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self.fee = dp._exchange.get_fee(symbol=dp.current_whitelist()[0]) # type: ignore
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else:
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self.fee = 0.0015
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self.fee = fee
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# set here to default 5Ac, but all children envs can override this
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self.actions: Type[Enum] = BaseActions
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self.tensorboard_metrics: dict = {}
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self.live: bool = False
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if dp:
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self.live = dp.runmode in (RunMode.DRY_RUN, RunMode.LIVE)
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self.live = live
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if not self.live and self.add_state_info:
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self.add_state_info = False
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logger.warning("add_state_info is not available in backtesting. Deactivating.")
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self.seed(seed)
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self.reset_env(df, prices, window_size, reward_kwargs, starting_point)
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def reset_env(self, df: DataFrame, prices: DataFrame, window_size: int,
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reward_kwargs: dict, starting_point=True):
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@ -213,7 +207,7 @@ class BaseEnvironment(gym.Env):
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"""
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features_window = self.signal_features[(
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self._current_tick - self.window_size):self._current_tick]
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if self.add_state_info and self.live:
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if self.add_state_info:
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features_and_state = DataFrame(np.zeros((len(features_window), 3)),
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columns=['current_profit_pct',
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'position',
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@ -143,18 +143,14 @@ class BaseReinforcementLearningModel(IFreqaiModel):
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train_df = data_dictionary["train_features"]
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test_df = data_dictionary["test_features"]
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env_info = self.pack_env_dict()
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self.train_env = self.MyRLEnv(df=train_df,
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prices=prices_train,
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window_size=self.CONV_WIDTH,
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reward_kwargs=self.reward_params,
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config=self.config,
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dp=self.data_provider)
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**env_info)
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self.eval_env = Monitor(self.MyRLEnv(df=test_df,
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prices=prices_test,
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window_size=self.CONV_WIDTH,
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reward_kwargs=self.reward_params,
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config=self.config,
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dp=self.data_provider))
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**env_info))
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self.eval_callback = EvalCallback(self.eval_env, deterministic=True,
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render=False, eval_freq=len(train_df),
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best_model_save_path=str(dk.data_path))
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@ -162,6 +158,20 @@ class BaseReinforcementLearningModel(IFreqaiModel):
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actions = self.train_env.get_actions()
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self.tensorboard_callback = TensorboardCallback(verbose=1, actions=actions)
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def pack_env_dict(self) -> Dict[str, Any]:
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"""
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Create dictionary of environment arguments
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"""
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env_info = {"window_size": self.CONV_WIDTH,
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"reward_kwargs": self.reward_params,
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"config": self.config,
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"live": self.live}
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if self.data_provider:
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env_info["fee"] = self.data_provider._exchange \
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.get_fee(symbol=self.data_provider.current_whitelist()[0]) # type: ignore
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return env_info
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@abstractmethod
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def fit(self, data_dictionary: Dict[str, Any], dk: FreqaiDataKitchen, **kwargs):
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"""
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@ -383,8 +393,8 @@ class BaseReinforcementLearningModel(IFreqaiModel):
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def make_env(MyRLEnv: Type[gym.Env], env_id: str, rank: int,
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seed: int, train_df: DataFrame, price: DataFrame,
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reward_params: Dict[str, int], window_size: int, monitor: bool = False,
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config: Dict[str, Any] = {}) -> Callable:
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monitor: bool = False,
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env_info: Dict[str, Any] = {}) -> Callable:
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"""
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Utility function for multiprocessed env.
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@ -392,13 +402,14 @@ def make_env(MyRLEnv: Type[gym.Env], env_id: str, rank: int,
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:param num_env: (int) the number of environment you wish to have in subprocesses
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:param seed: (int) the inital seed for RNG
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:param rank: (int) index of the subprocess
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:param env_info: (dict) all required arguments to instantiate the environment.
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:return: (Callable)
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"""
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def _init() -> gym.Env:
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env = MyRLEnv(df=train_df, prices=price, window_size=window_size,
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reward_kwargs=reward_params, id=env_id, seed=seed + rank, config=config)
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env = MyRLEnv(df=train_df, prices=price, id=env_id, seed=seed + rank,
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**env_info)
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if monitor:
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env = Monitor(env)
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return env
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@ -34,17 +34,20 @@ class ReinforcementLearner_multiproc(ReinforcementLearner):
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train_df = data_dictionary["train_features"]
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test_df = data_dictionary["test_features"]
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env_info = self.pack_env_dict()
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env_id = "train_env"
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self.train_env = SubprocVecEnv([make_env(self.MyRLEnv, env_id, i, 1, train_df, prices_train,
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self.reward_params, self.CONV_WIDTH, monitor=True,
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config=self.config) for i
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self.train_env = SubprocVecEnv([make_env(self.MyRLEnv, env_id, i, 1,
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train_df, prices_train,
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monitor=True,
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env_info=env_info) for i
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in range(self.max_threads)])
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eval_env_id = 'eval_env'
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self.eval_env = SubprocVecEnv([make_env(self.MyRLEnv, eval_env_id, i, 1,
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test_df, prices_test,
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self.reward_params, self.CONV_WIDTH, monitor=True,
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config=self.config) for i
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monitor=True,
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env_info=env_info) for i
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in range(self.max_threads)])
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self.eval_callback = EvalCallback(self.eval_env, deterministic=True,
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render=False, eval_freq=len(train_df),
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