| import datetime
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| import logging
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| from dataclasses import dataclass
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|
|
| logger = logging.getLogger("trainer")
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|
|
|
|
| @dataclass(frozen=True)
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| class tcolors:
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| OKBLUE: str = "\033[94m"
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| HEADER: str = "\033[95m"
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| OKGREEN: str = "\033[92m"
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| WARNING: str = "\033[93m"
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| FAIL: str = "\033[91m"
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| ENDC: str = "\033[0m"
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| BOLD: str = "\033[1m"
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| UNDERLINE: str = "\033[4m"
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|
|
|
|
| class ConsoleLogger:
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| def __init__(self):
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|
|
|
|
| self.old_train_loss_dict = None
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| self.old_epoch_loss_dict = None
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| self.old_eval_loss_dict = None
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|
|
| @staticmethod
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| def log_with_flush(msg: str):
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| if logger is not None:
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| logger.info(msg)
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| for handler in logger.handlers:
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| handler.flush()
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| else:
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| print(msg, flush=True)
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|
|
|
|
| def get_time(self):
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| now = datetime.datetime.now()
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| return now.strftime("%Y-%m-%d %H:%M:%S")
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|
|
| def print_epoch_start(self, epoch, max_epoch, output_path=None):
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| self.log_with_flush(
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| "\n{}{} > EPOCH: {}/{}{}".format(tcolors.UNDERLINE, tcolors.BOLD, epoch, max_epoch, tcolors.ENDC),
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| )
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| if output_path is not None:
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| self.log_with_flush(f" --> {output_path}")
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|
|
| def print_train_start(self):
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| self.log_with_flush(f"\n{tcolors.BOLD} > TRAINING ({self.get_time()}) {tcolors.ENDC}")
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|
|
| def print_train_step(self, batch_steps, step, global_step, loss_dict, avg_loss_dict):
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| indent = " | > "
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| self.log_with_flush("")
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| log_text = "{} --> STEP: {}/{} -- GLOBAL_STEP: {}{}\n".format(
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| tcolors.BOLD, step, batch_steps, global_step, tcolors.ENDC
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| )
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| for key, value in loss_dict.items():
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|
|
| if f"avg_{key}" in avg_loss_dict.keys():
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| log_text += "{}{}: {:.5f} ({:.5f})\n".format(indent, key, value, avg_loss_dict[f"avg_{key}"])
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| else:
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| log_text += "{}{}: {:.5f} \n".format(indent, key, value)
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| self.log_with_flush(log_text)
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|
|
|
|
| def print_train_epoch_end(self, global_step, epoch, epoch_time, print_dict):
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| indent = " | > "
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| log_text = f"\n{tcolors.BOLD} --> TRAIN PERFORMACE -- EPOCH TIME: {epoch_time:.2f} sec -- GLOBAL_STEP: {global_step}{tcolors.ENDC}\n"
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| for key, value in print_dict.items():
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| log_text += "{}{}: {:.5f}\n".format(indent, key, value)
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| self.log_with_flush(log_text)
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|
|
| def print_eval_start(self):
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| self.log_with_flush(f"\n{tcolors.BOLD} > EVALUATION {tcolors.ENDC}\n")
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|
|
| def print_eval_step(self, step, loss_dict, avg_loss_dict):
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| indent = " | > "
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| log_text = f"{tcolors.BOLD} --> STEP: {step}{tcolors.ENDC}\n"
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| for key, value in loss_dict.items():
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|
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| if f"avg_{key}" in avg_loss_dict.keys():
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| log_text += "{}{}: {:.5f} ({:.5f})\n".format(indent, key, value, avg_loss_dict[f"avg_{key}"])
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| else:
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| log_text += "{}{}: {:.5f} \n".format(indent, key, value)
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| self.log_with_flush(log_text)
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|
|
| def print_epoch_end(self, epoch, avg_loss_dict):
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| indent = " | > "
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| log_text = "\n {}--> EVAL PERFORMANCE{}\n".format(tcolors.BOLD, tcolors.ENDC)
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| for key, value in avg_loss_dict.items():
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|
|
| color = ""
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| sign = "+"
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| diff = 0
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| if self.old_eval_loss_dict is not None and key in self.old_eval_loss_dict:
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| diff = value - self.old_eval_loss_dict[key]
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| if diff < 0:
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| color = tcolors.OKGREEN
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| sign = ""
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| elif diff > 0:
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| color = tcolors.FAIL
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| sign = "+"
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| log_text += "{}{}:{} {:.5f} {}({}{:.5f})\n".format(indent, key, color, value, tcolors.ENDC, sign, diff)
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| self.old_eval_loss_dict = avg_loss_dict
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| self.log_with_flush(log_text)
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|
|