tinyms.callbacks 源代码

# Copyright 2021 Huawei Technologies Co., Ltd
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# Licensed under the Apache License, Version 2.0 (the "License");
# you may not use this file except in compliance with the License.
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# http://www.apache.org/licenses/LICENSE-2.0
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"""Callback related classes and functions in model training phase."""
import time
import numpy as np
from mindspore.train import callback
from mindspore.train.callback import *
from . import Tensor

__all__ = ['LossTimeMonitor']
__all__.extend(callback.__all__)


[文档]class LossTimeMonitor(Callback): """ Monitor loss and time. Args: lr_init (numpy.ndarray): Train learning rate. Default: None. Returns: None Examples: >>> from tinyms import Tensor >>> from tinyms.callbacks import LossTimeMonitor >>> >>> LossTimeMonitor(lr_init=Tensor([0.05] * 100).asnumpy()) """ def __init__(self, lr_init=None): super(LossTimeMonitor, self).__init__() self.lr_init = lr_init self.lr_init_len = len(lr_init) def epoch_begin(self, run_context): self.losses = [] self.epoch_time = time.time() def epoch_end(self, run_context): cb_params = run_context.original_args() epoch_mseconds = (time.time() - self.epoch_time) * 1000 per_step_mseconds = epoch_mseconds / cb_params.batch_num print("epoch time: {:5.3f}, per step time: {:5.3f}, avg loss: {:5.3f}".format(epoch_mseconds, per_step_mseconds, np.mean(self.losses))) def step_begin(self, run_context): self.step_time = time.time() def step_end(self, run_context): cb_params = run_context.original_args() step_mseconds = (time.time() - self.step_time) * 1000 step_loss = cb_params.net_outputs if isinstance(step_loss, (tuple, list)) and isinstance(step_loss[0], Tensor): step_loss = step_loss[0] if isinstance(step_loss, Tensor): step_loss = np.mean(step_loss.asnumpy()) self.losses.append(step_loss) cur_step_in_epoch = (cb_params.cur_step_num - 1) % cb_params.batch_num print("epoch: [{:3d}/{:3d}], step:[{:5d}/{:5d}], loss:[{:5.3f}/{:5.3f}], time:[{:5.3f}], lr:[{:5.3f}]".format( cb_params.cur_epoch_num - 1, cb_params.epoch_num, cur_step_in_epoch, cb_params.batch_num, step_loss, np.mean(self.losses), step_mseconds, self.lr_init[cb_params.cur_step_num - 1]))