freqtrade_origin/freqtrade/freqai/tensorboard/tensorboard.py
2024-07-05 08:51:20 +02:00

62 lines
1.8 KiB
Python

import logging
from pathlib import Path
from typing import Any
from torch.utils.tensorboard import SummaryWriter
from xgboost import callback
from freqtrade.freqai.tensorboard.base_tensorboard import (
BaseTensorBoardCallback,
BaseTensorboardLogger,
)
logger = logging.getLogger(__name__)
class TensorboardLogger(BaseTensorboardLogger):
def __init__(self, logdir: Path, activate: bool = True):
self.activate = activate
if self.activate:
self.writer: SummaryWriter = SummaryWriter(f"{str(logdir)}/tensorboard")
def log_scalar(self, tag: str, scalar_value: Any, step: int):
if self.activate:
self.writer.add_scalar(tag, scalar_value, step)
def close(self):
if self.activate:
self.writer.flush()
self.writer.close()
class TensorBoardCallback(BaseTensorBoardCallback):
def __init__(self, logdir: Path, activate: bool = True):
self.activate = activate
if self.activate:
self.writer: SummaryWriter = SummaryWriter(f"{str(logdir)}/tensorboard")
def after_iteration(
self, model, epoch: int, evals_log: callback.TrainingCallback.EvalsLog
) -> bool:
if not self.activate:
return False
if not evals_log:
return False
evals = ["validation", "train"]
for metric, eval_ in zip(evals_log.items(), evals):
for metric_name, log in metric[1].items():
score = log[-1][0] if isinstance(log[-1], tuple) else log[-1]
self.writer.add_scalar(f"{eval_}-{metric_name}", score, epoch)
return False
def after_training(self, model):
if not self.activate:
return model
self.writer.flush()
self.writer.close()
return model