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aa2b471a6e
* Add `ConsoleLogger.v3` This addition expands the progress bar feature to count up the training/distillation steps to either the next evaluation pass or the maximum number of steps. * Rename progress bar types * Add defaults to docs Minor fixes * Move comment * Minor punctuation fixes * Explicitly check for `None` when validating progress bar type Co-authored-by: Paul O'Leary McCann <polm@dampfkraft.com>
199 lines
7.6 KiB
Python
199 lines
7.6 KiB
Python
from typing import TYPE_CHECKING, Dict, Any, Tuple, Callable, List, Optional, IO, Union
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from wasabi import Printer
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from pathlib import Path
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import tqdm
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import sys
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import srsly
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from ..util import registry
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from ..errors import Errors
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from .. import util
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if TYPE_CHECKING:
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from ..language import Language # noqa: F401
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def setup_table(
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*, cols: List[str], widths: List[int], max_width: int = 13
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) -> Tuple[List[str], List[int], List[str]]:
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final_cols = []
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final_widths = []
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for col, width in zip(cols, widths):
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if len(col) > max_width:
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col = col[: max_width - 3] + "..." # shorten column if too long
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final_cols.append(col.upper())
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final_widths.append(max(len(col), width))
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return final_cols, final_widths, ["r" for _ in final_widths]
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# We cannot rename this method as it's directly imported
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# and used by external packages such as spacy-loggers.
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@registry.loggers("spacy.ConsoleLogger.v2")
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def console_logger(
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progress_bar: bool = False,
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console_output: bool = True,
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output_file: Optional[Union[str, Path]] = None,
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):
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"""The ConsoleLogger.v2 prints out training logs in the console and/or saves them to a jsonl file.
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progress_bar (bool): Whether the logger should print a progress bar tracking the steps till the next evaluation pass.
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console_output (bool): Whether the logger should print the logs on the console.
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output_file (Optional[Union[str, Path]]): The file to save the training logs to.
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"""
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return console_logger_v3(
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progress_bar=None if progress_bar is False else "eval",
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console_output=console_output,
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output_file=output_file,
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)
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@registry.loggers("spacy.ConsoleLogger.v3")
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def console_logger_v3(
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progress_bar: Optional[str] = None,
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console_output: bool = True,
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output_file: Optional[Union[str, Path]] = None,
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):
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"""The ConsoleLogger.v3 prints out training logs in the console and/or saves them to a jsonl file.
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progress_bar (Optional[str]): Type of progress bar to show in the console. Allowed values:
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train - Tracks the number of steps from the beginning of training until the full training run is complete (training.max_steps is reached).
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eval - Tracks the number of steps between the previous and next evaluation (training.eval_frequency is reached).
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console_output (bool): Whether the logger should print the logs on the console.
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output_file (Optional[Union[str, Path]]): The file to save the training logs to.
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"""
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_log_exist = False
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if output_file:
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output_file = util.ensure_path(output_file) # type: ignore
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if output_file.exists(): # type: ignore
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_log_exist = True
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if not output_file.parents[0].exists(): # type: ignore
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output_file.parents[0].mkdir(parents=True) # type: ignore
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def setup_printer(
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nlp: "Language", stdout: IO = sys.stdout, stderr: IO = sys.stderr
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) -> Tuple[Callable[[Optional[Dict[str, Any]]], None], Callable[[], None]]:
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write = lambda text: print(text, file=stdout, flush=True)
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msg = Printer(no_print=True)
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nonlocal output_file
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output_stream = None
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if _log_exist:
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write(
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msg.warn(
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f"Saving logs is disabled because {output_file} already exists."
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)
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)
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output_file = None
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elif output_file:
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write(msg.info(f"Saving results to {output_file}"))
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output_stream = open(output_file, "w", encoding="utf-8")
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# ensure that only trainable components are logged
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logged_pipes = [
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name
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for name, proc in nlp.pipeline
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if hasattr(proc, "is_trainable") and proc.is_trainable
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]
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max_steps = nlp.config["training"]["max_steps"]
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eval_frequency = nlp.config["training"]["eval_frequency"]
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score_weights = nlp.config["training"]["score_weights"]
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score_cols = [col for col, value in score_weights.items() if value is not None]
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loss_cols = [f"Loss {pipe}" for pipe in logged_pipes]
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if console_output:
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spacing = 2
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table_header, table_widths, table_aligns = setup_table(
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cols=["E", "#"] + loss_cols + score_cols + ["Score"],
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widths=[3, 6] + [8 for _ in loss_cols] + [6 for _ in score_cols] + [6],
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)
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write(msg.row(table_header, widths=table_widths, spacing=spacing))
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write(msg.row(["-" * width for width in table_widths], spacing=spacing))
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progress = None
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expected_progress_types = ("train", "eval")
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if progress_bar is not None and progress_bar not in expected_progress_types:
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raise ValueError(
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Errors.E1048.format(
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unexpected=progress_bar, expected=expected_progress_types
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)
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)
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def log_step(info: Optional[Dict[str, Any]]) -> None:
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nonlocal progress
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if info is None:
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# If we don't have a new checkpoint, just return.
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if progress is not None:
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progress.update(1)
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return
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losses = []
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log_losses = {}
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for pipe_name in logged_pipes:
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losses.append("{0:.2f}".format(float(info["losses"][pipe_name])))
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log_losses[pipe_name] = float(info["losses"][pipe_name])
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scores = []
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log_scores = {}
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for col in score_cols:
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score = info["other_scores"].get(col, 0.0)
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try:
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score = float(score)
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except TypeError:
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err = Errors.E916.format(name=col, score_type=type(score))
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raise ValueError(err) from None
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if col != "speed":
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score *= 100
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scores.append("{0:.2f}".format(score))
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log_scores[str(col)] = score
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data = (
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[info["epoch"], info["step"]]
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+ losses
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+ scores
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+ ["{0:.2f}".format(float(info["score"]))]
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)
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if output_stream:
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# Write to log file per log_step
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log_data = {
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"epoch": info["epoch"],
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"step": info["step"],
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"losses": log_losses,
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"scores": log_scores,
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"score": float(info["score"]),
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}
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output_stream.write(srsly.json_dumps(log_data) + "\n")
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if progress is not None:
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progress.close()
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if console_output:
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write(
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msg.row(
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data, widths=table_widths, aligns=table_aligns, spacing=spacing
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)
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)
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if progress_bar:
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if progress_bar == "train":
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total = max_steps
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desc = f"Last Eval Epoch: {info['epoch']}"
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initial = info["step"]
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else:
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total = eval_frequency
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desc = f"Epoch {info['epoch']+1}"
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initial = 0
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# Set disable=None, so that it disables on non-TTY
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progress = tqdm.tqdm(
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total=total,
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disable=None,
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leave=False,
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file=stderr,
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initial=initial,
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)
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progress.set_description(desc)
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def finalize() -> None:
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if output_stream:
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output_stream.close()
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return log_step, finalize
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return setup_printer
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