!3051 add loss monitor to lenet
Merge pull request !3051 from chenzhongming/newnew_masterpull/3051/MERGE
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# Copyright 2020 Huawei Technologies Co., Ltd
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#
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# Licensed under the Apache License, Version 2.0 (the "License");
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# you may not use this file except in compliance with the License.
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# You may obtain a copy of the License at
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#
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# http://www.apache.org/licenses/LICENSE-2.0
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#
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# Unless required by applicable law or agreed to in writing, software
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# distributed under the License is distributed on an "AS IS" BASIS,
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# WITHOUT WARRANTIES OR CONDITIONS OF ANY KIND, either express or implied.
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# See the License for the specific language governing permissions and
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# limitations under the License.
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# ============================================================================
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"""LossMonitor Callback class."""
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import time
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import numpy as np
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from mindspore.common.tensor import Tensor
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from mindspore.train.callback import Callback
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class LossMonitor(Callback):
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"""
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Monitor the loss in training.
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If the loss is NAN or INF, it will terminate training.
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Note:
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If per_print_times is 0 do not print loss.
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Args:
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per_print_times (int): Print loss every times. Default: 1.
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lr_init (numpy array): train learning rate. Default: None.
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Raises:
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ValueError: If print_step is not int or less than zero.
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Examples:
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>>> LossMonitor(100, lr_init=Tensor([0.05]*100).asnumpy())
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"""
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def __init__(self, per_print_times=1, lr_init=None):
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super(LossMonitor, self).__init__()
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if not isinstance(per_print_times, int) or per_print_times < 0:
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raise ValueError("print_step must be int and >= 0.")
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self._per_print_times = per_print_times
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self.lr_init = lr_init
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def epoch_begin(self, run_context):
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self.losses = []
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self.epoch_time = time.time()
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def epoch_end(self, run_context):
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cb_params = run_context.original_args()
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epoch_mseconds = (time.time() - self.epoch_time) * 1000
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per_step_mseconds = epoch_mseconds / cb_params.batch_num
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print("Epoch time: {:5.3f}, per step time: {:5.3f}, "
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"avg loss: {:5.3f}".format(epoch_mseconds,
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per_step_mseconds,
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np.mean(self.losses)))
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print("*" * 60)
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def step_begin(self, run_context):
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self.step_time = time.time()
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def step_end(self, run_context):
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cb_params = run_context.original_args()
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step_mseconds = (time.time() - self.step_time) * 1000
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step_loss = cb_params.net_outputs
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if isinstance(step_loss, (tuple, list)) and isinstance(step_loss[0], Tensor):
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step_loss = step_loss[0]
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if isinstance(step_loss, Tensor):
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step_loss = np.mean(step_loss.asnumpy())
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self.losses.append(step_loss)
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cur_step_in_epoch = int((cb_params.cur_step_num - 1) % cb_params.batch_num) + 1
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if isinstance(step_loss, float) and (np.isnan(step_loss) or np.isinf(step_loss)):
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raise ValueError("Epoch: [{:3d}/{:3d}], step: [{:5d}/{:5d}]. "
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"Invalid loss, terminating training.".format(
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cb_params.cur_epoch_num - 1, cb_params.epoch_num,
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cur_step_in_epoch, cb_params.batch_num))
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if self._per_print_times != 0 and cb_params.cur_step_num % self._per_print_times == 0:
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print("Epoch: [{:3d}/{:3d}], step: [{:5d}/{:5d}], "
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"loss: [{:5.4f}], avg loss: [{:5.4f}], time: [{:5.4f}ms]".format(
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cb_params.cur_epoch_num, cb_params.epoch_num,
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cur_step_in_epoch, int(cb_params.batch_num),
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step_loss, np.mean(self.losses),
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step_mseconds), flush=True)
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