Shortcuts

mmengine.logging.history_buffer 源代码

# Copyright (c) OpenMMLab. All rights reserved.
import warnings
from typing import Any, Callable, Optional, Sequence, Tuple, Union

import numpy as np


[文档]class HistoryBuffer: """Unified storage format for different log types. ``HistoryBuffer`` records the history of log for further statistics. Examples: >>> history_buffer = HistoryBuffer() >>> # Update history_buffer. >>> history_buffer.update(1) >>> history_buffer.update(2) >>> history_buffer.min() # minimum of (1, 2) 1 >>> history_buffer.max() # maximum of (1, 2) 2 >>> history_buffer.mean() # mean of (1, 2) 1.5 >>> history_buffer.statistics('mean') # access method by string. 1.5 Args: log_history (Sequence): History logs. Defaults to []. count_history (Sequence): Counts of history logs. Defaults to []. max_length (int): The max length of history logs. Defaults to 1000000. """ _statistics_methods: dict = dict() def __init__(self, log_history: Sequence = [], count_history: Sequence = [], max_length: int = 1000000): self.max_length = max_length self._set_default_statistics() assert len(log_history) == len(count_history), \ 'The lengths of log_history and count_histroy should be equal' if len(log_history) > max_length: warnings.warn(f'The length of history buffer({len(log_history)}) ' f'exceeds the max_length({max_length}), the first ' 'few elements will be ignored.') self._log_history = np.array(log_history[-max_length:]) self._count_history = np.array(count_history[-max_length:]) else: self._log_history = np.array(log_history) self._count_history = np.array(count_history) def _set_default_statistics(self) -> None: """Register default statistic methods: min, max, current and mean.""" self._statistics_methods.setdefault('min', HistoryBuffer.min) self._statistics_methods.setdefault('max', HistoryBuffer.max) self._statistics_methods.setdefault('current', HistoryBuffer.current) self._statistics_methods.setdefault('mean', HistoryBuffer.mean)
[文档] def update(self, log_val: Union[int, float], count: int = 1) -> None: """update the log history. If the length of the buffer exceeds ``self._max_length``, the oldest element will be removed from the buffer. Args: log_val (int or float): The value of log. count (int): The accumulation times of log, defaults to 1. ``count`` will be used in smooth statistics. """ if (not isinstance(log_val, (int, float)) or not isinstance(count, (int, float))): raise TypeError(f'log_val must be int or float but got ' f'{type(log_val)}, count must be int but got ' f'{type(count)}') self._log_history = np.append(self._log_history, log_val) self._count_history = np.append(self._count_history, count) if len(self._log_history) > self.max_length: self._log_history = self._log_history[-self.max_length:] self._count_history = self._count_history[-self.max_length:]
@property def data(self) -> Tuple[np.ndarray, np.ndarray]: """Get the ``_log_history`` and ``_count_history``. Returns: Tuple[np.ndarray, np.ndarray]: History logs and the counts of the history logs. """ return self._log_history, self._count_history
[文档] @classmethod def register_statistics(cls, method: Callable) -> Callable: """Register custom statistics method to ``_statistics_methods``. The registered method can be called by ``history_buffer.statistics`` with corresponding method name and arguments. Examples: >>> @HistoryBuffer.register_statistics >>> def weighted_mean(self, window_size, weight): >>> assert len(weight) == window_size >>> return (self._log_history[-window_size:] * >>> np.array(weight)).sum() / \ >>> self._count_history[-window_size:] >>> log_buffer = HistoryBuffer([1, 2], [1, 1]) >>> log_buffer.statistics('weighted_mean', 2, [2, 1]) 2 Args: method (Callable): Custom statistics method. Returns: Callable: Original custom statistics method. """ method_name = method.__name__ assert method_name not in cls._statistics_methods, \ 'method_name cannot be registered twice!' cls._statistics_methods[method_name] = method return method
[文档] def statistics(self, method_name: str, *arg, **kwargs) -> Any: """Access statistics method by name. Args: method_name (str): Name of method. Returns: Any: Depends on corresponding method. """ if method_name not in self._statistics_methods: raise KeyError(f'{method_name} has not been registered in ' 'HistoryBuffer._statistics_methods') method = self._statistics_methods[method_name] # Provide self arguments for registered functions. return method(self, *arg, **kwargs)
[文档] def mean(self, window_size: Optional[int] = None) -> np.ndarray: """Return the mean of the latest ``window_size`` values in log histories. If ``window_size is None`` or ``window_size > len(self._log_history)``, return the global mean value of history logs. Args: window_size (int, optional): Size of statistics window. Returns: np.ndarray: Mean value within the window. """ if window_size is not None: assert isinstance(window_size, int), \ 'The type of window size should be int, but got ' \ f'{type(window_size)}' else: window_size = len(self._log_history) logs_sum = self._log_history[-window_size:].sum() counts_sum = self._count_history[-window_size:].sum() return logs_sum / counts_sum
[文档] def max(self, window_size: Optional[int] = None) -> np.ndarray: """Return the maximum value of the latest ``window_size`` values in log histories. If ``window_size is None`` or ``window_size > len(self._log_history)``, return the global maximum value of history logs. Args: window_size (int, optional): Size of statistics window. Returns: np.ndarray: The maximum value within the window. """ if window_size is not None: assert isinstance(window_size, int), \ 'The type of window size should be int, but got ' \ f'{type(window_size)}' else: window_size = len(self._log_history) return self._log_history[-window_size:].max()
[文档] def min(self, window_size: Optional[int] = None) -> np.ndarray: """Return the minimum value of the latest ``window_size`` values in log histories. If ``window_size is None`` or ``window_size > len(self._log_history)``, return the global minimum value of history logs. Args: window_size (int, optional): Size of statistics window. Returns: np.ndarray: The minimum value within the window. """ if window_size is not None: assert isinstance(window_size, int), \ 'The type of window size should be int, but got ' \ f'{type(window_size)}' else: window_size = len(self._log_history) return self._log_history[-window_size:].min()
[文档] def current(self) -> np.ndarray: """Return the recently updated values in log histories. Returns: np.ndarray: Recently updated values in log histories. """ if len(self._log_history) == 0: raise ValueError('HistoryBuffer._log_history is an empty array! ' 'please call update first') return self._log_history[-1]
def __getstate__(self) -> dict: """Make ``_statistics_methods`` can be resumed. Returns: dict: State dict including statistics_methods. """ self.__dict__.update(statistics_methods=self._statistics_methods) return self.__dict__ def __setstate__(self, state): """Try to load ``_statistics_methods`` from state. Args: state (dict): State dict. """ statistics_methods = state.pop('statistics_methods', {}) self._set_default_statistics() self._statistics_methods.update(statistics_methods) self.__dict__.update(state)

© Copyright 2022, mmengine contributors. Revision 39ed23fa.

Built with Sphinx using a theme provided by Read the Docs.
Read the Docs v: latest
Versions
latest
stable
v0.10.3
v0.10.2
v0.10.1
v0.10.0
v0.9.1
v0.9.0
v0.8.5
v0.8.4
v0.8.3
v0.8.2
v0.8.1
v0.8.0
v0.7.4
v0.7.3
v0.7.2
v0.7.1
v0.7.0
v0.6.0
v0.5.0
v0.4.0
v0.3.0
v0.2.0
Downloads
epub
On Read the Docs
Project Home
Builds

Free document hosting provided by Read the Docs.