test_hooks.py 65.3 KB
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# Copyright (c) OpenMMLab. All rights reserved.
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"""Tests the hooks with runners.

CommandLine:
    pytest tests/test_runner/test_hooks.py
    xdoctest tests/test_hooks.py zero
"""
import logging
import os.path as osp
import platform
import random
import re
import shutil
import sys
import tempfile
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from unittest.mock import MagicMock, Mock, call, patch
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import pytest
import torch
import torch.nn as nn
from torch.nn.init import constant_
from torch.utils.data import DataLoader

from mmcv.fileio.file_client import PetrelBackend
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# yapf: disable
from mmcv.runner import (CheckpointHook, ClearMLLoggerHook, DvcliveLoggerHook,
                         EMAHook, Fp16OptimizerHook,
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                         GradientCumulativeFp16OptimizerHook,
                         GradientCumulativeOptimizerHook, IterTimerHook,
                         MlflowLoggerHook, NeptuneLoggerHook, OptimizerHook,
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                         PaviLoggerHook, SegmindLoggerHook, WandbLoggerHook,
                         build_runner)
# yapf: enable
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from mmcv.runner.fp16_utils import auto_fp16
from mmcv.runner.hooks.hook import HOOKS, Hook
from mmcv.runner.hooks.lr_updater import (CosineRestartLrUpdaterHook,
                                          CyclicLrUpdaterHook,
                                          FlatCosineAnnealingLrUpdaterHook,
                                          OneCycleLrUpdaterHook,
                                          StepLrUpdaterHook)
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from mmcv.utils import TORCH_VERSION
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sys.modules['petrel_client'] = MagicMock()
sys.modules['petrel_client.client'] = MagicMock()


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@pytest.mark.skipif(
    torch.__version__ == 'parrots', reason='not supported in parrots now')
def test_optimizerhook():

    class Model(nn.Module):

        def __init__(self):
            super().__init__()
            self.conv1 = nn.Conv2d(
                in_channels=1,
                out_channels=2,
                kernel_size=3,
                stride=1,
                padding=1,
                dilation=1)
            self.conv2 = nn.Conv2d(
                in_channels=2,
                out_channels=2,
                kernel_size=3,
                stride=1,
                padding=1,
                dilation=1)
            self.conv3 = nn.Conv2d(
                in_channels=1,
                out_channels=2,
                kernel_size=3,
                stride=1,
                padding=1,
                dilation=1)

        def forward(self, x):
            x1 = self.conv1(x)
            x2 = self.conv2(x1)
            return x1, x2

    model = Model()
    x = torch.rand(1, 1, 3, 3)

    dummy_runner = Mock()
    dummy_runner.optimizer.zero_grad = Mock(return_value=None)
    dummy_runner.optimizer.step = Mock(return_value=None)
    dummy_runner.model = model
    dummy_runner.outputs = dict()

    dummy_runner.outputs['num_samples'] = 0

    class DummyLogger():

        def __init__(self):
            self.msg = ''

        def log(self, msg=None, **kwargs):
            self.msg += msg

    dummy_runner.logger = DummyLogger()
    optimizer_hook = OptimizerHook(
        dict(max_norm=2), detect_anomalous_params=True)

    dummy_runner.outputs['loss'] = model(x)[0].sum()
    optimizer_hook.after_train_iter(dummy_runner)
    # assert the parameters of conv2 and conv3 are not in the
    # computational graph which is with x1.sum() as root.
    assert 'conv2.weight' in dummy_runner.logger.msg
    assert 'conv2.bias' in dummy_runner.logger.msg
    assert 'conv3.weight' in dummy_runner.logger.msg
    assert 'conv3.bias' in dummy_runner.logger.msg
    assert 'conv1.weight' not in dummy_runner.logger.msg
    assert 'conv1.bias' not in dummy_runner.logger.msg

    dummy_runner.outputs['loss'] = model(x)[1].sum()
    dummy_runner.logger.msg = ''
    optimizer_hook.after_train_iter(dummy_runner)
    # assert the parameters of conv3 are not in the computational graph
    assert 'conv3.weight' in dummy_runner.logger.msg
    assert 'conv3.bias' in dummy_runner.logger.msg
    assert 'conv2.weight' not in dummy_runner.logger.msg
    assert 'conv2.bias' not in dummy_runner.logger.msg
    assert 'conv1.weight' not in dummy_runner.logger.msg
    assert 'conv1.bias' not in dummy_runner.logger.msg


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def test_checkpoint_hook(tmp_path):
    """xdoctest -m tests/test_runner/test_hooks.py test_checkpoint_hook."""

    # test epoch based runner
    loader = DataLoader(torch.ones((5, 2)))
    runner = _build_demo_runner('EpochBasedRunner', max_epochs=1)
    runner.meta = dict()
    checkpointhook = CheckpointHook(interval=1, by_epoch=True)
    runner.register_hook(checkpointhook)
    runner.run([loader], [('train', 1)])
    assert runner.meta['hook_msgs']['last_ckpt'] == osp.join(
        runner.work_dir, 'epoch_1.pth')
    shutil.rmtree(runner.work_dir)

    # test petrel oss when the type of runner is `EpochBasedRunner`
    runner = _build_demo_runner('EpochBasedRunner', max_epochs=4)
    runner.meta = dict()
    out_dir = 's3://user/data'
    with patch.object(PetrelBackend, 'put') as mock_put, \
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            patch.object(PetrelBackend, 'remove') as mock_remove, \
            patch.object(PetrelBackend, 'isfile') as mock_isfile:
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        checkpointhook = CheckpointHook(
            interval=1, out_dir=out_dir, by_epoch=True, max_keep_ckpts=2)
        runner.register_hook(checkpointhook)
        runner.run([loader], [('train', 1)])
        basename = osp.basename(runner.work_dir.rstrip(osp.sep))
        assert runner.meta['hook_msgs']['last_ckpt'] == \
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               '/'.join([out_dir, basename, 'epoch_4.pth'])
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    mock_put.assert_called()
    mock_remove.assert_called()
    mock_isfile.assert_called()
    shutil.rmtree(runner.work_dir)

    # test iter based runner
    runner = _build_demo_runner(
        'IterBasedRunner', max_iters=1, max_epochs=None)
    runner.meta = dict()
    checkpointhook = CheckpointHook(interval=1, by_epoch=False)
    runner.register_hook(checkpointhook)
    runner.run([loader], [('train', 1)])
    assert runner.meta['hook_msgs']['last_ckpt'] == osp.join(
        runner.work_dir, 'iter_1.pth')
    shutil.rmtree(runner.work_dir)

    # test petrel oss when the type of runner is `IterBasedRunner`
    runner = _build_demo_runner(
        'IterBasedRunner', max_iters=4, max_epochs=None)
    runner.meta = dict()
    out_dir = 's3://user/data'
    with patch.object(PetrelBackend, 'put') as mock_put, \
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            patch.object(PetrelBackend, 'remove') as mock_remove, \
            patch.object(PetrelBackend, 'isfile') as mock_isfile:
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        checkpointhook = CheckpointHook(
            interval=1, out_dir=out_dir, by_epoch=False, max_keep_ckpts=2)
        runner.register_hook(checkpointhook)
        runner.run([loader], [('train', 1)])
        basename = osp.basename(runner.work_dir.rstrip(osp.sep))
        assert runner.meta['hook_msgs']['last_ckpt'] == \
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               '/'.join([out_dir, basename, 'iter_4.pth'])
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    mock_put.assert_called()
    mock_remove.assert_called()
    mock_isfile.assert_called()
    shutil.rmtree(runner.work_dir)


def test_ema_hook():
    """xdoctest -m tests/test_hooks.py test_ema_hook."""

    class DemoModel(nn.Module):

        def __init__(self):
            super().__init__()
            self.conv = nn.Conv2d(
                in_channels=1,
                out_channels=2,
                kernel_size=1,
                padding=1,
                bias=True)
            self._init_weight()

        def _init_weight(self):
            constant_(self.conv.weight, 0)
            constant_(self.conv.bias, 0)

        def forward(self, x):
            return self.conv(x).sum()

        def train_step(self, x, optimizer, **kwargs):
            return dict(loss=self(x))

        def val_step(self, x, optimizer, **kwargs):
            return dict(loss=self(x))

    loader = DataLoader(torch.ones((1, 1, 1, 1)))
    runner = _build_demo_runner()
    demo_model = DemoModel()
    runner.model = demo_model
    emahook = EMAHook(momentum=0.1, interval=2, warm_up=100, resume_from=None)
    checkpointhook = CheckpointHook(interval=1, by_epoch=True)
    runner.register_hook(emahook, priority='HIGHEST')
    runner.register_hook(checkpointhook)
    runner.run([loader, loader], [('train', 1), ('val', 1)])
    checkpoint = torch.load(f'{runner.work_dir}/epoch_1.pth')
    contain_ema_buffer = False
    for name, value in checkpoint['state_dict'].items():
        if 'ema' in name:
            contain_ema_buffer = True
            assert value.sum() == 0
            value.fill_(1)
        else:
            assert value.sum() == 0
    assert contain_ema_buffer
    torch.save(checkpoint, f'{runner.work_dir}/epoch_1.pth')
    work_dir = runner.work_dir
    resume_ema_hook = EMAHook(
        momentum=0.5, warm_up=0, resume_from=f'{work_dir}/epoch_1.pth')
    runner = _build_demo_runner(max_epochs=2)
    runner.model = demo_model
    runner.register_hook(resume_ema_hook, priority='HIGHEST')
    checkpointhook = CheckpointHook(interval=1, by_epoch=True)
    runner.register_hook(checkpointhook)
    runner.run([loader, loader], [('train', 1), ('val', 1)])
    checkpoint = torch.load(f'{runner.work_dir}/epoch_2.pth')
    contain_ema_buffer = False
    for name, value in checkpoint['state_dict'].items():
        if 'ema' in name:
            contain_ema_buffer = True
            assert value.sum() == 2
        else:
            assert value.sum() == 1
    assert contain_ema_buffer
    shutil.rmtree(runner.work_dir)
    shutil.rmtree(work_dir)


def test_custom_hook():

    @HOOKS.register_module()
    class ToyHook(Hook):

        def __init__(self, info, *args, **kwargs):
            super().__init__()
            self.info = info

    runner = _build_demo_runner_without_hook('EpochBasedRunner', max_epochs=1)
    # test if custom_hooks is None
    runner.register_custom_hooks(None)
    assert len(runner.hooks) == 0
    # test if custom_hooks is dict list
    custom_hooks_cfg = [
        dict(type='ToyHook', priority=51, info=51),
        dict(type='ToyHook', priority=49, info=49)
    ]
    runner.register_custom_hooks(custom_hooks_cfg)
    assert [hook.info for hook in runner.hooks] == [49, 51]
    # test if custom_hooks is object and without priority
    runner.register_custom_hooks(ToyHook(info='default'))
    assert len(runner.hooks) == 3 and runner.hooks[1].info == 'default'
    shutil.rmtree(runner.work_dir)

    runner = _build_demo_runner_without_hook('EpochBasedRunner', max_epochs=1)
    # test custom_hooks with string priority setting
    priority_ranks = [
        'HIGHEST', 'VERY_HIGH', 'HIGH', 'ABOVE_NORMAL', 'NORMAL',
        'BELOW_NORMAL', 'LOW', 'VERY_LOW', 'LOWEST'
    ]
    random_priority_ranks = priority_ranks.copy()
    random.shuffle(random_priority_ranks)
    custom_hooks_cfg = [
        dict(type='ToyHook', priority=rank, info=rank)
        for rank in random_priority_ranks
    ]
    runner.register_custom_hooks(custom_hooks_cfg)
    assert [hook.info for hook in runner.hooks] == priority_ranks
    shutil.rmtree(runner.work_dir)

    runner = _build_demo_runner_without_hook('EpochBasedRunner', max_epochs=1)
    # test register_training_hooks order
    custom_hooks_cfg = [
        dict(type='ToyHook', priority=1, info='custom 1'),
        dict(type='ToyHook', priority='NORMAL', info='custom normal'),
        dict(type='ToyHook', priority=89, info='custom 89')
    ]
    runner.register_training_hooks(
        lr_config=ToyHook('lr'),
        optimizer_config=ToyHook('optimizer'),
        checkpoint_config=ToyHook('checkpoint'),
        log_config=dict(interval=1, hooks=[dict(type='ToyHook', info='log')]),
        momentum_config=ToyHook('momentum'),
        timer_config=ToyHook('timer'),
        custom_hooks_config=custom_hooks_cfg)
    # If custom hooks have same priority with default hooks, custom hooks
    # will be triggered after default hooks.
    hooks_order = [
        'custom 1', 'lr', 'momentum', 'optimizer', 'checkpoint',
        'custom normal', 'timer', 'custom 89', 'log'
    ]
    assert [hook.info for hook in runner.hooks] == hooks_order
    shutil.rmtree(runner.work_dir)


def test_pavi_hook():
    sys.modules['pavi'] = MagicMock()

    loader = DataLoader(torch.ones((5, 2)))
    runner = _build_demo_runner()
    runner.meta = dict(config_dict=dict(lr=0.02, gpu_ids=range(1)))
    hook = PaviLoggerHook(add_graph=False, add_last_ckpt=True)
    runner.register_hook(hook)
    runner.run([loader, loader], [('train', 1), ('val', 1)])
    shutil.rmtree(runner.work_dir)

    assert hasattr(hook, 'writer')
    hook.writer.add_scalars.assert_called_with('val', {
        'learning_rate': 0.02,
        'momentum': 0.95
    }, 1)
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    # in Windows environment, the latest checkpoint is copied from epoch_1.pth
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    if platform.system() == 'Windows':
        snapshot_file_path = osp.join(runner.work_dir, 'latest.pth')
    else:
        snapshot_file_path = osp.join(runner.work_dir, 'epoch_1.pth')
    hook.writer.add_snapshot_file.assert_called_with(
        tag=runner.work_dir.split('/')[-1],
        snapshot_file_path=snapshot_file_path,
        iteration=1)


def test_sync_buffers_hook():
    loader = DataLoader(torch.ones((5, 2)))
    runner = _build_demo_runner()
    runner.register_hook_from_cfg(dict(type='SyncBuffersHook'))
    runner.run([loader, loader], [('train', 1), ('val', 1)])
    shutil.rmtree(runner.work_dir)


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@pytest.mark.parametrize('multi_optimizers, max_iters, gamma, cyclic_times',
                         [(True, 8, 1, 1), (False, 8, 0.5, 2)])
def test_momentum_runner_hook(multi_optimizers, max_iters, gamma,
                              cyclic_times):
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    """xdoctest -m tests/test_hooks.py test_momentum_runner_hook."""
    sys.modules['pavi'] = MagicMock()
    loader = DataLoader(torch.ones((10, 2)))
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    runner = _build_demo_runner(multi_optimizers=multi_optimizers)
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    # add momentum scheduler
    hook_cfg = dict(
        type='CyclicMomentumUpdaterHook',
        by_epoch=False,
        target_ratio=(0.85 / 0.95, 1),
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        cyclic_times=cyclic_times,
        step_ratio_up=0.4,
        gamma=gamma)
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    runner.register_hook_from_cfg(hook_cfg)

    # add momentum LR scheduler
    hook_cfg = dict(
        type='CyclicLrUpdaterHook',
        by_epoch=False,
        target_ratio=(10, 1),
        cyclic_times=1,
        step_ratio_up=0.4)
    runner.register_hook_from_cfg(hook_cfg)
    runner.register_hook_from_cfg(dict(type='IterTimerHook'))

    # add pavi hook
    hook = PaviLoggerHook(interval=1, add_graph=False, add_last_ckpt=True)
    runner.register_hook(hook)
    runner.run([loader], [('train', 1)])
    shutil.rmtree(runner.work_dir)

    # TODO: use a more elegant way to check values
    assert hasattr(hook, 'writer')
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    if multi_optimizers:
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        calls = [
            call(
                'train', {
                    'learning_rate/model1': 0.01999999999999999,
                    'learning_rate/model2': 0.009999999999999995,
                    'momentum/model1': 0.95,
                    'momentum/model2': 0.9,
                }, 1),
            call(
                'train', {
                    'learning_rate/model1': 0.2,
                    'learning_rate/model2': 0.1,
                    'momentum/model1': 0.85,
                    'momentum/model2': 0.8052631578947369,
                }, 5),
            call(
                'train', {
                    'learning_rate/model1': 0.155,
                    'learning_rate/model2': 0.0775,
                    'momentum/model1': 0.875,
                    'momentum/model2': 0.8289473684210527,
                }, 7)
        ]
    else:
        calls = [
            call('train', {
                'learning_rate': 0.01999999999999999,
                'momentum': 0.95
            }, 1),
            call('train', {
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                'learning_rate': 0.11,
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                'momentum': 0.85
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            }, 3),
            call('train', {
                'learning_rate': 0.1879422863405995,
                'momentum': 0.95
            }, 6),
            call('train', {
                'learning_rate': 0.11000000000000001,
                'momentum': 0.9
            }, 8),
        ]
    hook.writer.add_scalars.assert_has_calls(calls, any_order=True)

    # test constant momentum warmup
    sys.modules['pavi'] = MagicMock()
    runner = _build_demo_runner(multi_optimizers=multi_optimizers)

    # add momentum scheduler
    hook_cfg = dict(
        type='StepMomentumUpdaterHook',
        by_epoch=False,
        warmup='constant',
        warmup_iters=5,
        warmup_ratio=0.5,
        step=[10],
    )
    runner.register_hook_from_cfg(hook_cfg)
    runner.register_hook_from_cfg(dict(type='IterTimerHook'))

    hook = PaviLoggerHook(interval=1, add_graph=False, add_last_ckpt=True)
    runner.register_hook(hook)
    runner.run([loader], [('train', 1)])
    shutil.rmtree(runner.work_dir)

    assert hasattr(hook, 'writer')
    if multi_optimizers:
        calls = [
            call(
                'train', {
                    'learning_rate/model1': 0.02,
                    'learning_rate/model2': 0.01,
                    'momentum/model1': 1.9,
                    'momentum/model2': 1.8,
                }, 1),
            call(
                'train', {
                    'learning_rate/model1': 0.02,
                    'learning_rate/model2': 0.01,
                    'momentum/model1': 1.9,
                    'momentum/model2': 1.8,
                }, 5),
            call(
                'train', {
                    'learning_rate/model1': 0.02,
                    'learning_rate/model2': 0.01,
                    'momentum/model1': 0.95,
                    'momentum/model2': 0.9,
                }, 10),
        ]
    else:
        calls = [
            call('train', {
                'learning_rate': 0.02,
                'momentum': 1.9
            }, 1),
            call('train', {
                'learning_rate': 0.02,
                'momentum': 1.9
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            }, 5),
            call('train', {
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                'learning_rate': 0.02,
                'momentum': 0.95
            }, 10),
        ]

    hook.writer.add_scalars.assert_has_calls(calls, any_order=True)

    # test linear momentum warmup
    sys.modules['pavi'] = MagicMock()
    runner = _build_demo_runner(multi_optimizers=multi_optimizers)

    # add momentum scheduler
    hook_cfg = dict(
        type='StepMomentumUpdaterHook',
        by_epoch=False,
        warmup='linear',
        warmup_iters=5,
        warmup_ratio=0.5,
        step=[10],
    )
    runner.register_hook_from_cfg(hook_cfg)
    runner.register_hook_from_cfg(dict(type='IterTimerHook'))

    hook = PaviLoggerHook(interval=1, add_graph=False, add_last_ckpt=True)
    runner.register_hook(hook)
    runner.run([loader], [('train', 1)])
    shutil.rmtree(runner.work_dir)

    assert hasattr(hook, 'writer')
    if multi_optimizers:
        calls = [
            call(
                'train', {
                    'learning_rate/model1': 0.02,
                    'learning_rate/model2': 0.01,
                    'momentum/model1': 1.9,
                    'momentum/model2': 1.8,
                }, 1),
            call(
                'train', {
                    'learning_rate/model1': 0.02,
                    'learning_rate/model2': 0.01,
                    'momentum/model1': 1.3571428571428572,
                    'momentum/model2': 1.2857142857142858,
                }, 3),
            call(
                'train', {
                    'learning_rate/model1': 0.02,
                    'learning_rate/model2': 0.01,
                    'momentum/model1': 0.95,
                    'momentum/model2': 0.9,
                }, 10),
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        ]
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    else:
        calls = [
            call('train', {
                'learning_rate': 0.02,
                'momentum': 1.9
            }, 1),
            call('train', {
                'learning_rate': 0.02,
                'momentum': 1.3571428571428572
            }, 3),
            call('train', {
                'learning_rate': 0.02,
                'momentum': 0.95
            }, 10),
        ]

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    hook.writer.add_scalars.assert_has_calls(calls, any_order=True)

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    # test exponentially momentum warmup
    sys.modules['pavi'] = MagicMock()
    runner = _build_demo_runner(multi_optimizers=multi_optimizers)
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    # add momentum scheduler
    hook_cfg = dict(
        type='StepMomentumUpdaterHook',
        by_epoch=False,
        warmup='exp',
        warmup_iters=5,
        warmup_ratio=0.5,
        step=[10],
    )
    runner.register_hook_from_cfg(hook_cfg)
    runner.register_hook_from_cfg(dict(type='IterTimerHook'))

    hook = PaviLoggerHook(interval=1, add_graph=False, add_last_ckpt=True)
    runner.register_hook(hook)
    runner.run([loader], [('train', 1)])
    shutil.rmtree(runner.work_dir)

    assert hasattr(hook, 'writer')
    if multi_optimizers:
        calls = [
            call(
                'train', {
                    'learning_rate/model1': 0.02,
                    'learning_rate/model2': 0.01,
                    'momentum/model1': 1.9,
                    'momentum/model2': 1.8,
                }, 1),
            call(
                'train', {
                    'learning_rate/model1': 0.02,
                    'learning_rate/model2': 0.01,
                    'momentum/model1': 1.4399307381848783,
                    'momentum/model2': 1.3641449098593583,
                }, 3),
            call(
                'train', {
                    'learning_rate/model1': 0.02,
                    'learning_rate/model2': 0.01,
                    'momentum/model1': 0.95,
                    'momentum/model2': 0.9,
                }, 10),
        ]
    else:
        calls = [
            call('train', {
                'learning_rate': 0.02,
                'momentum': 1.9
            }, 1),
            call('train', {
                'learning_rate': 0.02,
                'momentum': 1.4399307381848783
            }, 3),
            call('train', {
                'learning_rate': 0.02,
                'momentum': 0.95
            }, 10),
        ]

    hook.writer.add_scalars.assert_has_calls(calls, any_order=True)


@pytest.mark.parametrize('multi_optimizers', (True, False))
def test_cosine_runner_hook(multi_optimizers):
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    """xdoctest -m tests/test_hooks.py test_cosine_runner_hook."""
    sys.modules['pavi'] = MagicMock()
    loader = DataLoader(torch.ones((10, 2)))
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    runner = _build_demo_runner(multi_optimizers=multi_optimizers)
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    # add momentum scheduler
    hook_cfg = dict(
        type='CosineAnnealingMomentumUpdaterHook',
        min_momentum_ratio=0.99 / 0.95,
        by_epoch=False,
        warmup_iters=2,
        warmup_ratio=0.9 / 0.95)
    runner.register_hook_from_cfg(hook_cfg)

    # add momentum LR scheduler
    hook_cfg = dict(
        type='CosineAnnealingLrUpdaterHook',
        by_epoch=False,
        min_lr_ratio=0,
        warmup_iters=2,
        warmup_ratio=0.9)
    runner.register_hook_from_cfg(hook_cfg)
    runner.register_hook_from_cfg(dict(type='IterTimerHook'))
    runner.register_hook(IterTimerHook())
    # add pavi hook
    hook = PaviLoggerHook(interval=1, add_graph=False, add_last_ckpt=True)
    runner.register_hook(hook)
    runner.run([loader], [('train', 1)])
    shutil.rmtree(runner.work_dir)

    # TODO: use a more elegant way to check values
    assert hasattr(hook, 'writer')
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    if multi_optimizers:
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        calls = [
            call(
                'train', {
                    'learning_rate/model1': 0.02,
                    'learning_rate/model2': 0.01,
                    'momentum/model1': 0.95,
                    'momentum/model2': 0.9,
                }, 1),
            call(
                'train', {
                    'learning_rate/model1': 0.01,
                    'learning_rate/model2': 0.005,
                    'momentum/model1': 0.97,
                    'momentum/model2': 0.9189473684210527,
                }, 6),
            call(
                'train', {
                    'learning_rate/model1': 0.0004894348370484647,
                    'learning_rate/model2': 0.00024471741852423234,
                    'momentum/model1': 0.9890211303259032,
                    'momentum/model2': 0.9369673866245399,
                }, 10)
        ]
    else:
        calls = [
            call('train', {
                'learning_rate': 0.02,
                'momentum': 0.95
            }, 1),
            call('train', {
                'learning_rate': 0.01,
                'momentum': 0.97
            }, 6),
            call(
                'train', {
                    'learning_rate': 0.0004894348370484647,
                    'momentum': 0.9890211303259032
                }, 10)
        ]
    hook.writer.add_scalars.assert_has_calls(calls, any_order=True)


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@pytest.mark.parametrize('multi_optimizers', (True, False))
def test_linear_runner_hook(multi_optimizers):
    sys.modules['pavi'] = MagicMock()
    loader = DataLoader(torch.ones((10, 2)))
    runner = _build_demo_runner(multi_optimizers=multi_optimizers)

    # add momentum scheduler

    hook_cfg = dict(
        type='LinearAnnealingMomentumUpdaterHook',
        min_momentum_ratio=0.99 / 0.95,
        by_epoch=False,
        warmup_iters=2,
        warmup_ratio=0.9 / 0.95)
    runner.register_hook_from_cfg(hook_cfg)

    # add momentum LR scheduler
    hook_cfg = dict(
        type='LinearAnnealingLrUpdaterHook',
        by_epoch=False,
        min_lr_ratio=0,
        warmup_iters=2,
        warmup_ratio=0.9)
    runner.register_hook_from_cfg(hook_cfg)
    runner.register_hook_from_cfg(dict(type='IterTimerHook'))
    runner.register_hook(IterTimerHook())
    # add pavi hook
    hook = PaviLoggerHook(interval=1, add_graph=False, add_last_ckpt=True)
    runner.register_hook(hook)
    runner.run([loader], [('train', 1)])
    shutil.rmtree(runner.work_dir)

    # TODO: use a more elegant way to check values
    assert hasattr(hook, 'writer')
    if multi_optimizers:
        calls = [
            call(
                'train', {
                    'learning_rate/model1': 0.02,
                    'learning_rate/model2': 0.01,
                    'momentum/model1': 0.95,
                    'momentum/model2': 0.9,
                }, 1),
            call(
                'train', {
                    'learning_rate/model1': 0.01,
                    'learning_rate/model2': 0.005,
                    'momentum/model1': 0.97,
                    'momentum/model2': 0.9189473684210527,
                }, 6),
            call(
                'train', {
                    'learning_rate/model1': 0.0019999999999999983,
                    'learning_rate/model2': 0.0009999999999999992,
                    'momentum/model1': 0.9860000000000001,
                    'momentum/model2': 0.9341052631578949,
                }, 10)
        ]
    else:
        calls = [
            call('train', {
                'learning_rate': 0.02,
                'momentum': 0.95
            }, 1),
            call('train', {
                'learning_rate': 0.01,
                'momentum': 0.97
            }, 6),
            call(
                'train', {
                    'learning_rate': 0.0019999999999999983,
                    'momentum': 0.9860000000000001
                }, 10)
        ]
    hook.writer.add_scalars.assert_has_calls(calls, any_order=True)


@pytest.mark.parametrize('multi_optimizers, by_epoch', [(False, False),
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                                                        (True, False),
                                                        (False, True),
                                                        (True, True)])
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def test_flat_cosine_runner_hook(multi_optimizers, by_epoch):
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    """xdoctest -m tests/test_hooks.py test_flat_cosine_runner_hook."""
    sys.modules['pavi'] = MagicMock()
    loader = DataLoader(torch.ones((10, 2)))
    max_epochs = 10 if by_epoch else 1
    runner = _build_demo_runner(
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        multi_optimizers=multi_optimizers, max_epochs=max_epochs)
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    with pytest.raises(ValueError):
        # start_percent: expected float between 0 and 1
        FlatCosineAnnealingLrUpdaterHook(start_percent=-0.1, min_lr_ratio=0)

    # add LR scheduler
    hook_cfg = dict(
        type='FlatCosineAnnealingLrUpdaterHook',
        by_epoch=by_epoch,
        min_lr_ratio=0,
        warmup='linear',
        warmup_iters=10 if by_epoch else 2,
        warmup_ratio=0.9,
        start_percent=0.5)
    runner.register_hook_from_cfg(hook_cfg)
    runner.register_hook_from_cfg(dict(type='IterTimerHook'))
    runner.register_hook(IterTimerHook())
    # add pavi hook
    hook = PaviLoggerHook(interval=1, add_graph=False, add_last_ckpt=True)
    runner.register_hook(hook)
    runner.run([loader], [('train', 1)])
    shutil.rmtree(runner.work_dir)

    # TODO: use a more elegant way to check values
    assert hasattr(hook, 'writer')
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    if multi_optimizers:
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        if by_epoch:
            calls = [
                call(
                    'train', {
                        'learning_rate/model1': 0.018000000000000002,
                        'learning_rate/model2': 0.009000000000000001,
                        'momentum/model1': 0.95,
                        'momentum/model2': 0.9,
                    }, 1),
                call(
                    'train', {
                        'learning_rate/model1': 0.02,
                        'learning_rate/model2': 0.01,
                        'momentum/model1': 0.95,
                        'momentum/model2': 0.9,
                    }, 11),
                call(
                    'train', {
                        'learning_rate/model1': 0.018090169943749474,
                        'learning_rate/model2': 0.009045084971874737,
                        'momentum/model1': 0.95,
                        'momentum/model2': 0.9,
                    }, 61),
                call(
                    'train', {
                        'learning_rate/model1': 0.0019098300562505265,
                        'learning_rate/model2': 0.0009549150281252633,
                        'momentum/model1': 0.95,
                        'momentum/model2': 0.9,
                    }, 100)
            ]
        else:
            calls = [
                call(
                    'train', {
                        'learning_rate/model1': 0.018000000000000002,
                        'learning_rate/model2': 0.009000000000000001,
                        'momentum/model1': 0.95,
                        'momentum/model2': 0.9
                    }, 1),
                call(
                    'train', {
                        'learning_rate/model1': 0.02,
                        'learning_rate/model2': 0.01,
                        'momentum/model1': 0.95,
                        'momentum/model2': 0.9
                    }, 6),
                call(
                    'train', {
                        'learning_rate/model1': 0.018090169943749474,
                        'learning_rate/model2': 0.009045084971874737,
                        'momentum/model1': 0.95,
                        'momentum/model2': 0.9
                    }, 7),
                call(
                    'train', {
                        'learning_rate/model1': 0.0019098300562505265,
                        'learning_rate/model2': 0.0009549150281252633,
                        'momentum/model1': 0.95,
                        'momentum/model2': 0.9
                    }, 10)
            ]
    else:
        if by_epoch:
            calls = [
                call('train', {
                    'learning_rate': 0.018000000000000002,
                    'momentum': 0.95
                }, 1),
                call('train', {
                    'learning_rate': 0.02,
                    'momentum': 0.95
                }, 11),
                call('train', {
                    'learning_rate': 0.018090169943749474,
                    'momentum': 0.95
                }, 61),
                call('train', {
                    'learning_rate': 0.0019098300562505265,
                    'momentum': 0.95
                }, 100)
            ]
        else:
            calls = [
                call('train', {
                    'learning_rate': 0.018000000000000002,
                    'momentum': 0.95
                }, 1),
                call('train', {
                    'learning_rate': 0.02,
                    'momentum': 0.95
                }, 6),
                call('train', {
                    'learning_rate': 0.018090169943749474,
                    'momentum': 0.95
                }, 7),
                call('train', {
                    'learning_rate': 0.0019098300562505265,
                    'momentum': 0.95
                }, 10)
            ]
    hook.writer.add_scalars.assert_has_calls(calls, any_order=True)


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@pytest.mark.skipif(
    torch.__version__ == 'parrots', reason='not supported in parrots now')
@pytest.mark.parametrize('multi_optimizers, max_iters', [(True, 10), (True, 2),
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                                                         (False, 10),
                                                         (False, 2)])
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def test_one_cycle_runner_hook(multi_optimizers, max_iters):
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    """Test OneCycleLrUpdaterHook and OneCycleMomentumUpdaterHook."""
    with pytest.raises(AssertionError):
        # by_epoch should be False
        OneCycleLrUpdaterHook(max_lr=0.1, by_epoch=True)

    with pytest.raises(ValueError):
        # expected float between 0 and 1
        OneCycleLrUpdaterHook(max_lr=0.1, pct_start=-0.1)

    with pytest.raises(ValueError):
        # anneal_strategy should be either 'cos' or 'linear'
        OneCycleLrUpdaterHook(max_lr=0.1, anneal_strategy='sin')

    sys.modules['pavi'] = MagicMock()
    loader = DataLoader(torch.ones((10, 2)))
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    runner = _build_demo_runner(multi_optimizers=multi_optimizers)
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    # add momentum scheduler
    hook_cfg = dict(
        type='OneCycleMomentumUpdaterHook',
        base_momentum=0.85,
        max_momentum=0.95,
        pct_start=0.5,
        anneal_strategy='cos',
        three_phase=False)
    runner.register_hook_from_cfg(hook_cfg)

    # add LR scheduler
    hook_cfg = dict(
        type='OneCycleLrUpdaterHook',
        max_lr=0.01,
        pct_start=0.5,
        anneal_strategy='cos',
        div_factor=25,
        final_div_factor=1e4,
        three_phase=False)
    runner.register_hook_from_cfg(hook_cfg)
    runner.register_hook_from_cfg(dict(type='IterTimerHook'))
    runner.register_hook(IterTimerHook())
    # add pavi hook
    hook = PaviLoggerHook(interval=1, add_graph=False, add_last_ckpt=True)
    runner.register_hook(hook)
    runner.run([loader], [('train', 1)])
    shutil.rmtree(runner.work_dir)

    # TODO: use a more elegant way to check values
    assert hasattr(hook, 'writer')
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    if multi_optimizers:
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        calls = [
            call(
                'train', {
                    'learning_rate/model1': 0.0003999999999999993,
                    'learning_rate/model2': 0.0003999999999999993,
                    'momentum/model1': 0.95,
                    'momentum/model2': 0.95,
                }, 1),
            call(
                'train', {
                    'learning_rate/model1': 0.00904508879153485,
                    'learning_rate/model2': 0.00904508879153485,
                    'momentum/model1': 0.8595491502812526,
                    'momentum/model2': 0.8595491502812526,
                }, 6),
            call(
                'train', {
                    'learning_rate/model1': 4e-08,
                    'learning_rate/model2': 4e-08,
                    'momentum/model1': 0.95,
                    'momentum/model2': 0.95,
                }, 10)
        ]
    else:
        calls = [
            call('train', {
                'learning_rate': 0.0003999999999999993,
                'momentum': 0.95
            }, 1),
            call(
                'train', {
                    'learning_rate': 0.00904508879153485,
                    'momentum': 0.8595491502812526
                }, 6),
            call('train', {
                'learning_rate': 4e-08,
                'momentum': 0.95
            }, 10)
        ]
    hook.writer.add_scalars.assert_has_calls(calls, any_order=True)

    # Test OneCycleLrUpdaterHook
    sys.modules['pavi'] = MagicMock()
    loader = DataLoader(torch.ones((10, 2)))
    runner = _build_demo_runner(
        runner_type='IterBasedRunner', max_epochs=None, max_iters=max_iters)

    args = dict(
        max_lr=0.01,
        total_steps=5,
        pct_start=0.5,
        anneal_strategy='linear',
        div_factor=25,
        final_div_factor=1e4,
    )
    hook = OneCycleLrUpdaterHook(**args)
    runner.register_hook(hook)
    if max_iters == 10:
        # test total_steps < max_iters
        with pytest.raises(ValueError):
            runner.run([loader], [('train', 1)])
    else:
        # test total_steps > max_iters
        runner.run([loader], [('train', 1)])
        lr_last = runner.current_lr()
        t = torch.tensor([0.0], requires_grad=True)
        optim = torch.optim.SGD([t], lr=0.01)
        lr_scheduler = torch.optim.lr_scheduler.OneCycleLR(optim, **args)
        lr_target = []
        for _ in range(max_iters):
            optim.step()
            lr_target.append(optim.param_groups[0]['lr'])
            lr_scheduler.step()
        assert lr_target[-1] == lr_last[0]


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@pytest.mark.parametrize('multi_optimizers', (True, False))
def test_cosine_restart_lr_update_hook(multi_optimizers):
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    """Test CosineRestartLrUpdaterHook."""
    with pytest.raises(AssertionError):
        # either `min_lr` or `min_lr_ratio` should be specified
        CosineRestartLrUpdaterHook(
            by_epoch=False,
            periods=[2, 10],
            restart_weights=[0.5, 0.5],
            min_lr=0.1,
            min_lr_ratio=0)

    with pytest.raises(AssertionError):
        # periods and restart_weights should have the same length
        CosineRestartLrUpdaterHook(
            by_epoch=False,
            periods=[2, 10],
            restart_weights=[0.5],
            min_lr_ratio=0)

    with pytest.raises(ValueError):
        # the last cumulative_periods 7 (out of [5, 7]) should >= 10
        sys.modules['pavi'] = MagicMock()
        loader = DataLoader(torch.ones((10, 2)))
        runner = _build_demo_runner()

        # add cosine restart LR scheduler
        hook = CosineRestartLrUpdaterHook(
            by_epoch=False,
            periods=[5, 2],  # cumulative_periods [5, 7 (5 + 2)]
            restart_weights=[0.5, 0.5],
            min_lr=0.0001)
        runner.register_hook(hook)
        runner.register_hook(IterTimerHook())

        # add pavi hook
        hook = PaviLoggerHook(interval=1, add_graph=False, add_last_ckpt=True)
        runner.register_hook(hook)
        runner.run([loader], [('train', 1)])
        shutil.rmtree(runner.work_dir)

    sys.modules['pavi'] = MagicMock()
    loader = DataLoader(torch.ones((10, 2)))
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    runner = _build_demo_runner(multi_optimizers=multi_optimizers)
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    # add cosine restart LR scheduler
    hook = CosineRestartLrUpdaterHook(
        by_epoch=False,
        periods=[5, 5],
        restart_weights=[0.5, 0.5],
        min_lr_ratio=0)
    runner.register_hook(hook)
    runner.register_hook(IterTimerHook())

    # add pavi hook
    hook = PaviLoggerHook(interval=1, add_graph=False, add_last_ckpt=True)
    runner.register_hook(hook)
    runner.run([loader], [('train', 1)])
    shutil.rmtree(runner.work_dir)

    # TODO: use a more elegant way to check values
    assert hasattr(hook, 'writer')
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    if multi_optimizers:
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        calls = [
            call(
                'train', {
                    'learning_rate/model1': 0.01,
                    'learning_rate/model2': 0.005,
                    'momentum/model1': 0.95,
                    'momentum/model2': 0.9,
                }, 1),
            call(
                'train', {
                    'learning_rate/model1': 0.01,
                    'learning_rate/model2': 0.005,
                    'momentum/model1': 0.95,
                    'momentum/model2': 0.9,
                }, 6),
            call(
                'train', {
                    'learning_rate/model1': 0.0009549150281252633,
                    'learning_rate/model2': 0.00047745751406263163,
                    'momentum/model1': 0.95,
                    'momentum/model2': 0.9,
                }, 10)
        ]
    else:
        calls = [
            call('train', {
                'learning_rate': 0.01,
                'momentum': 0.95
            }, 1),
            call('train', {
                'learning_rate': 0.01,
                'momentum': 0.95
            }, 6),
            call('train', {
                'learning_rate': 0.0009549150281252633,
                'momentum': 0.95
            }, 10)
        ]
    hook.writer.add_scalars.assert_has_calls(calls, any_order=True)


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@pytest.mark.parametrize('multi_optimizers', (True, False))
def test_step_runner_hook(multi_optimizers):
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    """Test StepLrUpdaterHook."""
    with pytest.raises(TypeError):
        # `step` should be specified
        StepLrUpdaterHook()
    with pytest.raises(AssertionError):
        # if `step` is int, should be positive
        StepLrUpdaterHook(-10)
    with pytest.raises(AssertionError):
        # if `step` is list of int, should all be positive
        StepLrUpdaterHook([10, 16, -20])

    # test StepLrUpdaterHook with int `step` value
    sys.modules['pavi'] = MagicMock()
    loader = DataLoader(torch.ones((30, 2)))
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    runner = _build_demo_runner(multi_optimizers=multi_optimizers)
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    # add momentum scheduler
    hook_cfg = dict(
        type='StepMomentumUpdaterHook',
        by_epoch=False,
        step=5,
        gamma=0.5,
        min_momentum=0.05)
    runner.register_hook_from_cfg(hook_cfg)

    # add step LR scheduler
    hook = StepLrUpdaterHook(by_epoch=False, step=5, gamma=0.5, min_lr=1e-3)
    runner.register_hook(hook)
    runner.register_hook(IterTimerHook())

    # add pavi hook
    hook = PaviLoggerHook(interval=1, add_graph=False, add_last_ckpt=True)
    runner.register_hook(hook)
    runner.run([loader], [('train', 1)])
    shutil.rmtree(runner.work_dir)

    # TODO: use a more elegant way to check values
    assert hasattr(hook, 'writer')
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    if multi_optimizers:
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        calls = [
            call(
                'train', {
                    'learning_rate/model1': 0.02,
                    'learning_rate/model2': 0.01,
                    'momentum/model1': 0.95,
                    'momentum/model2': 0.9
                }, 1),
            call(
                'train', {
                    'learning_rate/model1': 0.01,
                    'learning_rate/model2': 0.005,
                    'momentum/model1': 0.475,
                    'momentum/model2': 0.45
                }, 6),
            call(
                'train', {
                    'learning_rate/model1': 0.0025,
                    'learning_rate/model2': 0.00125,
                    'momentum/model1': 0.11875,
                    'momentum/model2': 0.1125
                }, 16),
            call(
                'train', {
                    'learning_rate/model1': 0.00125,
                    'learning_rate/model2': 0.001,
                    'momentum/model1': 0.059375,
                    'momentum/model2': 0.05625
                }, 21),
            call(
                'train', {
                    'learning_rate/model1': 0.001,
                    'learning_rate/model2': 0.001,
                    'momentum/model1': 0.05,
                    'momentum/model2': 0.05
                }, 26),
            call(
                'train', {
                    'learning_rate/model1': 0.001,
                    'learning_rate/model2': 0.001,
                    'momentum/model1': 0.05,
                    'momentum/model2': 0.05
                }, 30)
        ]
    else:
        calls = [
            call('train', {
                'learning_rate': 0.02,
                'momentum': 0.95
            }, 1),
            call('train', {
                'learning_rate': 0.01,
                'momentum': 0.475
            }, 6),
            call('train', {
                'learning_rate': 0.0025,
                'momentum': 0.11875
            }, 16),
            call('train', {
                'learning_rate': 0.00125,
                'momentum': 0.059375
            }, 21),
            call('train', {
                'learning_rate': 0.001,
                'momentum': 0.05
            }, 26),
            call('train', {
                'learning_rate': 0.001,
                'momentum': 0.05
            }, 30)
        ]
    hook.writer.add_scalars.assert_has_calls(calls, any_order=True)

    # test StepLrUpdaterHook with list[int] `step` value
    sys.modules['pavi'] = MagicMock()
    loader = DataLoader(torch.ones((10, 2)))
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    runner = _build_demo_runner(multi_optimizers=multi_optimizers)
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    # add momentum scheduler
    hook_cfg = dict(
        type='StepMomentumUpdaterHook',
        by_epoch=False,
        step=[4, 6, 8],
        gamma=0.1)
    runner.register_hook_from_cfg(hook_cfg)

    # add step LR scheduler
    hook = StepLrUpdaterHook(by_epoch=False, step=[4, 6, 8], gamma=0.1)
    runner.register_hook(hook)
    runner.register_hook(IterTimerHook())

    # add pavi hook
    hook = PaviLoggerHook(interval=1, add_graph=False, add_last_ckpt=True)
    runner.register_hook(hook)
    runner.run([loader], [('train', 1)])
    shutil.rmtree(runner.work_dir)

    # TODO: use a more elegant way to check values
    assert hasattr(hook, 'writer')
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    if multi_optimizers:
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        calls = [
            call(
                'train', {
                    'learning_rate/model1': 0.02,
                    'learning_rate/model2': 0.01,
                    'momentum/model1': 0.95,
                    'momentum/model2': 0.9
                }, 1),
            call(
                'train', {
                    'learning_rate/model1': 0.002,
                    'learning_rate/model2': 0.001,
                    'momentum/model1': 9.5e-2,
                    'momentum/model2': 9.000000000000001e-2
                }, 5),
            call(
                'train', {
                    'learning_rate/model1': 2.0000000000000004e-4,
                    'learning_rate/model2': 1.0000000000000002e-4,
                    'momentum/model1': 9.500000000000001e-3,
                    'momentum/model2': 9.000000000000003e-3
                }, 7),
            call(
                'train', {
                    'learning_rate/model1': 2.0000000000000005e-05,
                    'learning_rate/model2': 1.0000000000000003e-05,
                    'momentum/model1': 9.500000000000002e-4,
                    'momentum/model2': 9.000000000000002e-4
                }, 9)
        ]
    else:
        calls = [
            call('train', {
                'learning_rate': 0.02,
                'momentum': 0.95
            }, 1),
            call('train', {
                'learning_rate': 0.002,
                'momentum': 0.095
            }, 5),
            call(
                'train', {
                    'learning_rate': 2.0000000000000004e-4,
                    'momentum': 9.500000000000001e-3
                }, 7),
            call(
                'train', {
                    'learning_rate': 2.0000000000000005e-05,
                    'momentum': 9.500000000000002e-4
                }, 9)
        ]
    hook.writer.add_scalars.assert_has_calls(calls, any_order=True)


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@pytest.mark.parametrize('multi_optimizers, max_iters, gamma, cyclic_times',
                         [(True, 8, 1, 1), (False, 8, 0.5, 2)])
def test_cyclic_lr_update_hook(multi_optimizers, max_iters, gamma,
                               cyclic_times):
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    """Test CyclicLrUpdateHook."""
    with pytest.raises(AssertionError):
        # by_epoch should be False
        CyclicLrUpdaterHook(by_epoch=True)

    with pytest.raises(AssertionError):
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        # target_ratio must be either float or tuple/list of two floats
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        CyclicLrUpdaterHook(by_epoch=False, target_ratio=(10.0, 0.1, 0.2))

    with pytest.raises(AssertionError):
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        # step_ratio_up must be in range [0,1)
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        CyclicLrUpdaterHook(by_epoch=False, step_ratio_up=1.4)

    with pytest.raises(ValueError):
        # anneal_strategy must be one of "cos" or "linear"
        CyclicLrUpdaterHook(by_epoch=False, anneal_strategy='sin')

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    with pytest.raises(AssertionError):
        # gamma must be in range (0, 1]
        CyclicLrUpdaterHook(by_epoch=False, gamma=0)

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    sys.modules['pavi'] = MagicMock()
    loader = DataLoader(torch.ones((10, 2)))
    runner = _build_demo_runner(
        runner_type='IterBasedRunner',
        max_epochs=None,
        max_iters=max_iters,
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        multi_optimizers=multi_optimizers)
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    # add cyclic LR scheduler
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    schedule_hook = CyclicLrUpdaterHook(
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        by_epoch=False,
        target_ratio=(10.0, 1.0),
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        cyclic_times=cyclic_times,
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        step_ratio_up=0.5,
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        anneal_strategy='linear',
        gamma=gamma)
    runner.register_hook(schedule_hook)
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    runner.register_hook_from_cfg(dict(type='IterTimerHook'))
    runner.register_hook(IterTimerHook())
    # add pavi hook
    hook = PaviLoggerHook(interval=1, add_graph=False, add_last_ckpt=True)
    runner.register_hook(hook)
    runner.run([loader], [('train', 1)])
    shutil.rmtree(runner.work_dir)

    assert hasattr(hook, 'writer')
    if multi_optimizers:
        calls = [
            call(
                'train', {
                    'learning_rate/model1': 0.02,
                    'learning_rate/model2': 0.01,
                    'momentum/model1': 0.95,
                    'momentum/model2': 0.9,
                }, 1),
            call(
                'train', {
                    'learning_rate/model1': 0.155,
                    'learning_rate/model2': 0.0775,
                    'momentum/model1': 0.95,
                    'momentum/model2': 0.9,
                }, 4),
            call(
                'train', {
                    'learning_rate/model1': 0.155,
                    'learning_rate/model2': 0.0775,
                    'momentum/model1': 0.95,
                    'momentum/model2': 0.9,
                }, 6)
        ]
    else:
        calls = [
            call('train', {
                'learning_rate': 0.02,
                'momentum': 0.95
            }, 1),
            call('train', {
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                'learning_rate': 0.11,
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                'momentum': 0.95
            }, 4),
            call('train', {
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                'learning_rate': 0.065,
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                'momentum': 0.95
            }, 6),
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            call('train', {
                'learning_rate': 0.11,
                'momentum': 0.95
            }, 7),
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        ]
    hook.writer.add_scalars.assert_has_calls(calls, any_order=True)


@pytest.mark.parametrize('log_model', (True, False))
def test_mlflow_hook(log_model):
    sys.modules['mlflow'] = MagicMock()
    sys.modules['mlflow.pytorch'] = MagicMock()

    runner = _build_demo_runner()
    loader = DataLoader(torch.ones((5, 2)))

    hook = MlflowLoggerHook(exp_name='test', log_model=log_model)
    runner.register_hook(hook)
    runner.run([loader, loader], [('train', 1), ('val', 1)])
    shutil.rmtree(runner.work_dir)

    hook.mlflow.set_experiment.assert_called_with('test')
    hook.mlflow.log_metrics.assert_called_with(
        {
            'learning_rate': 0.02,
            'momentum': 0.95
        }, step=6)
    if log_model:
        hook.mlflow_pytorch.log_model.assert_called_with(
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            runner.model,
            'models',
            pip_requirements=[f'torch=={TORCH_VERSION}'])
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    else:
        assert not hook.mlflow_pytorch.log_model.called


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def test_segmind_hook():
    sys.modules['segmind'] = MagicMock()
    runner = _build_demo_runner()
    hook = SegmindLoggerHook()
    loader = DataLoader(torch.ones((5, 2)))

    runner.register_hook(hook)
    runner.run([loader, loader], [('train', 1), ('val', 1)])
    shutil.rmtree(runner.work_dir)

    hook.mlflow_log.assert_called_with(
        hook.log_metrics, {
            'learning_rate': 0.02,
            'momentum': 0.95
        },
        step=runner.epoch,
        epoch=runner.epoch)


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def test_wandb_hook():
    sys.modules['wandb'] = MagicMock()
    runner = _build_demo_runner()
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    hook = WandbLoggerHook(log_artifact=True)
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    loader = DataLoader(torch.ones((5, 2)))

    runner.register_hook(hook)
    runner.run([loader, loader], [('train', 1), ('val', 1)])
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    shutil.rmtree(runner.work_dir)

    hook.wandb.init.assert_called_with()
    hook.wandb.log.assert_called_with({
        'learning_rate': 0.02,
        'momentum': 0.95
    },
                                      step=6,
                                      commit=True)
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    hook.wandb.log_artifact.assert_called()
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    hook.wandb.join.assert_called_with()


def test_neptune_hook():
    sys.modules['neptune'] = MagicMock()
    sys.modules['neptune.new'] = MagicMock()
    runner = _build_demo_runner()
    hook = NeptuneLoggerHook()

    loader = DataLoader(torch.ones((5, 2)))

    runner.register_hook(hook)
    runner.run([loader, loader], [('train', 1), ('val', 1)])
    shutil.rmtree(runner.work_dir)

    hook.neptune.init.assert_called_with()
    hook.run['momentum'].log.assert_called_with(0.95, step=6)
    hook.run.stop.assert_called_with()


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def test_dvclive_hook():
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    sys.modules['dvclive'] = MagicMock()
    runner = _build_demo_runner()

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    hook = DvcliveLoggerHook()
    dvclive_mock = hook.dvclive
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    loader = DataLoader(torch.ones((5, 2)))

    runner.register_hook(hook)
    runner.run([loader, loader], [('train', 1), ('val', 1)])
    shutil.rmtree(runner.work_dir)

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    dvclive_mock.set_step.assert_called_with(6)
    dvclive_mock.log.assert_called_with('momentum', 0.95)


def test_dvclive_hook_model_file(tmp_path):
    sys.modules['dvclive'] = MagicMock()
    runner = _build_demo_runner()

    hook = DvcliveLoggerHook(model_file=osp.join(runner.work_dir, 'model.pth'))
    runner.register_hook(hook)

    loader = torch.utils.data.DataLoader(torch.ones((5, 2)))
    loader = DataLoader(torch.ones((5, 2)))

    runner.run([loader, loader], [('train', 1), ('val', 1)])

    assert osp.exists(osp.join(runner.work_dir, 'model.pth'))

    shutil.rmtree(runner.work_dir)


def test_clearml_hook():
    sys.modules['clearml'] = MagicMock()
    runner = _build_demo_runner()
    hook = ClearMLLoggerHook(init_kwargs={
        'project_name': 'proj',
        'task_name': 'task',
    })

    loader = DataLoader(torch.ones((5, 2)))

    runner.register_hook(hook)
    runner.run([loader, loader], [('train', 1), ('val', 1)])
    shutil.rmtree(runner.work_dir)

    hook.clearml.Task.init.assert_called_with(
        project_name='proj', task_name='task')
    hook.task.get_logger.assert_called_with()
    report_scalar_calls = [
        call('momentum', 'momentum', 0.95, 6),
        call('learning_rate', 'learning_rate', 0.02, 6),
    ]
    hook.task_logger.report_scalar.assert_has_calls(
        report_scalar_calls, any_order=True)
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def _build_demo_runner_without_hook(runner_type='EpochBasedRunner',
                                    max_epochs=1,
                                    max_iters=None,
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                                    multi_optimizers=False):
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    class Model(nn.Module):

        def __init__(self):
            super().__init__()
            self.linear = nn.Linear(2, 1)
            self.conv = nn.Conv2d(3, 3, 3)

        def forward(self, x):
            return self.linear(x)

        def train_step(self, x, optimizer, **kwargs):
            return dict(loss=self(x))

        def val_step(self, x, optimizer, **kwargs):
            return dict(loss=self(x))

    model = Model()

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    if multi_optimizers:
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        optimizer = {
            'model1':
            torch.optim.SGD(model.linear.parameters(), lr=0.02, momentum=0.95),
            'model2':
            torch.optim.SGD(model.conv.parameters(), lr=0.01, momentum=0.9),
        }
    else:
        optimizer = torch.optim.SGD(model.parameters(), lr=0.02, momentum=0.95)

    tmp_dir = tempfile.mkdtemp()
    runner = build_runner(
        dict(type=runner_type),
        default_args=dict(
            model=model,
            work_dir=tmp_dir,
            optimizer=optimizer,
            logger=logging.getLogger(),
            max_epochs=max_epochs,
            max_iters=max_iters))
    return runner


def _build_demo_runner(runner_type='EpochBasedRunner',
                       max_epochs=1,
                       max_iters=None,
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                       multi_optimizers=False):
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    log_config = dict(
        interval=1, hooks=[
            dict(type='TextLoggerHook'),
        ])

    runner = _build_demo_runner_without_hook(runner_type, max_epochs,
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                                             max_iters, multi_optimizers)
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    runner.register_checkpoint_hook(dict(interval=1))
    runner.register_logger_hooks(log_config)
    return runner


def test_runner_with_revise_keys():
    import os

    class Model(nn.Module):

        def __init__(self):
            super().__init__()
            self.conv = nn.Conv2d(3, 3, 1)

    class PrefixModel(nn.Module):

        def __init__(self):
            super().__init__()
            self.backbone = Model()

    pmodel = PrefixModel()
    model = Model()
    checkpoint_path = os.path.join(tempfile.gettempdir(), 'checkpoint.pth')

    # add prefix
    torch.save(model.state_dict(), checkpoint_path)
    runner = _build_demo_runner(runner_type='EpochBasedRunner')
    runner.model = pmodel
    state_dict = runner.load_checkpoint(
        checkpoint_path, revise_keys=[(r'^', 'backbone.')])
    for key in pmodel.backbone.state_dict().keys():
        assert torch.equal(pmodel.backbone.state_dict()[key], state_dict[key])
    # strip prefix
    torch.save(pmodel.state_dict(), checkpoint_path)
    runner.model = model
    state_dict = runner.load_checkpoint(
        checkpoint_path, revise_keys=[(r'^backbone\.', '')])
    for key in state_dict.keys():
        key_stripped = re.sub(r'^backbone\.', '', key)
        assert torch.equal(model.state_dict()[key_stripped], state_dict[key])
    os.remove(checkpoint_path)


def test_get_triggered_stages():

    class ToyHook(Hook):
        # test normal stage
        def before_run():
            pass

        # test the method mapped to multi stages.
        def after_epoch():
            pass

    hook = ToyHook()
    # stages output have order, so here is list instead of set.
    expected_stages = ['before_run', 'after_train_epoch', 'after_val_epoch']
    assert hook.get_triggered_stages() == expected_stages


def test_gradient_cumulative_optimizer_hook():

    class ToyModel(nn.Module):

        def __init__(self, with_norm=False):
            super().__init__()
            self.fp16_enabled = False
            self.fc = nn.Linear(3, 2)
            nn.init.constant_(self.fc.weight, 1.)
            nn.init.constant_(self.fc.bias, 1.)
            self.with_norm = with_norm
            if with_norm:
                self.norm = nn.BatchNorm1d(2)

        def forward(self, x):
            x = self.fc(x)
            if self.with_norm:
                x = self.norm(x)
            return x

        def train_step(self, x, optimizer, **kwargs):
            return dict(loss=self(x).mean(), num_samples=x.shape[0])

        def val_step(self, x, optimizer, **kwargs):
            return dict(loss=self(x).mean(), num_samples=x.shape[0])

    def build_toy_runner(config=dict(type='EpochBasedRunner', max_epochs=3)):
        model = ToyModel()
        optimizer = torch.optim.SGD(model.parameters(), lr=0.02)
        tmp_dir = tempfile.mkdtemp()

        runner = build_runner(
            config,
            default_args=dict(
                model=model,
                work_dir=tmp_dir,
                optimizer=optimizer,
                logger=logging.getLogger(),
                meta=dict()))
        return runner

    with pytest.raises(AssertionError):
        # cumulative_iters only accepts int
        GradientCumulativeOptimizerHook(cumulative_iters='str')

    with pytest.raises(AssertionError):
        # cumulative_iters only accepts positive number
        GradientCumulativeOptimizerHook(cumulative_iters=-1)

    # test epoch based runner
    data = torch.rand((6, 3))
    # optimize with cumulative_iters
    loader_1 = DataLoader(data, batch_size=1)
    runner_1 = build_toy_runner()
    optimizer_hook = GradientCumulativeOptimizerHook(
        grad_clip=dict(max_norm=0.2), cumulative_iters=3)
    runner_1.register_hook(optimizer_hook)
    runner_1.run([loader_1], [('train', 1)])

    # optimize without cumulative_iters
    loader_2 = DataLoader(data, batch_size=3)
    runner_2 = build_toy_runner()
    optimizer_hook = OptimizerHook(grad_clip=dict(max_norm=0.2))
    runner_2.register_hook(optimizer_hook)
    runner_2.run([loader_2], [('train', 1)])

    # test optimizer works well
    assert (runner_1.model.fc.weight < 1).all()
    assert (runner_1.model.fc.bias < 1).all()
    # test optimizer with cumulative_iters gets the same results
    assert torch.allclose(runner_1.model.fc.weight, runner_2.model.fc.weight)
    assert torch.allclose(runner_1.model.fc.bias, runner_2.model.fc.bias)
    shutil.rmtree(runner_1.work_dir)
    shutil.rmtree(runner_2.work_dir)

    # test iter based runner
    data = torch.rand((8, 3))
    # optimize with cumulative_iters
    loader_1 = DataLoader(data, batch_size=1)
    runner_1 = build_toy_runner(dict(type='IterBasedRunner', max_iters=8))
    optimizer_hook = GradientCumulativeOptimizerHook(
        grad_clip=dict(max_norm=0.2), cumulative_iters=3)
    runner_1.register_hook(optimizer_hook)
    runner_1.run([loader_1], [('train', 1)])

    # optimize without cumulative_iters
    loader_2_divisible = DataLoader(data[:6], batch_size=3)
    loader_2_remainder = DataLoader(data[6:], batch_size=2)
    runner_2 = build_toy_runner(dict(type='IterBasedRunner', max_iters=3))
    optimizer_hook = OptimizerHook(grad_clip=dict(max_norm=0.2))
    runner_2.register_hook(optimizer_hook)
    runner_2.run([loader_2_divisible, loader_2_remainder], [('train', 2),
                                                            ('train', 1)])

    # test optimizer works well
    assert (runner_1.model.fc.weight < 1).all()
    assert (runner_1.model.fc.bias < 1).all()
    # test optimizer with cumulative_iters gets the same results
    assert torch.allclose(runner_1.model.fc.weight, runner_2.model.fc.weight)
    assert torch.allclose(runner_1.model.fc.bias, runner_2.model.fc.bias)
    shutil.rmtree(runner_1.work_dir)
    shutil.rmtree(runner_2.work_dir)

    # test has_batch_norm
    model = ToyModel(with_norm=True)
    optimizer_hook = GradientCumulativeOptimizerHook(
        grad_clip=dict(max_norm=0.2), cumulative_iters=3)
    assert optimizer_hook.has_batch_norm(model)


@pytest.mark.skipif(
    not torch.cuda.is_available(), reason='requires CUDA support')
def test_gradient_cumulative_fp16_optimizer_hook():

    class ToyModel(nn.Module):

        def __init__(self):
            super().__init__()
            self.fp16_enabled = False
            self.fc = nn.Linear(3, 2)
            nn.init.constant_(self.fc.weight, 1.)
            nn.init.constant_(self.fc.bias, 1.)

        @auto_fp16(apply_to=('x', ))
        def forward(self, x):
            x = self.fc(x)
            return x

        def train_step(self, x, optimizer, **kwargs):
            return dict(loss=self(x).mean(), num_samples=x.shape[0])

        def val_step(self, x, optimizer, **kwargs):
            return dict(loss=self(x).mean(), num_samples=x.shape[0])

    def build_toy_runner(config=dict(type='EpochBasedRunner', max_epochs=3)):
        model = ToyModel().cuda()
        optimizer = torch.optim.SGD(model.parameters(), lr=0.02)
        tmp_dir = tempfile.mkdtemp()

        runner = build_runner(
            config,
            default_args=dict(
                model=model,
                work_dir=tmp_dir,
                optimizer=optimizer,
                logger=logging.getLogger(),
                meta=dict()))
        return runner

    # test epoch based runner
    data = torch.rand((6, 3)).cuda()
    # optimize with cumulative_iters
    loader_1 = DataLoader(data, batch_size=1)
    runner_1 = build_toy_runner()
    optimizer_hook = GradientCumulativeFp16OptimizerHook(
        grad_clip=dict(max_norm=0.2), cumulative_iters=3)
    runner_1.register_hook(optimizer_hook)
    runner_1.run([loader_1], [('train', 1)])

    # optimize without cumulative_iters
    loader_2 = DataLoader(data, batch_size=3)
    runner_2 = build_toy_runner()
    optimizer_hook = Fp16OptimizerHook(grad_clip=dict(max_norm=0.2))
    runner_2.register_hook(optimizer_hook)
    runner_2.run([loader_2], [('train', 1)])

    # test optimizer works well
    assert (runner_1.model.fc.weight < 1).all()
    assert (runner_1.model.fc.bias < 1).all()
    # test optimizer with cumulative_iters gets the same results
    assert torch.allclose(runner_1.model.fc.weight, runner_2.model.fc.weight)
    assert torch.allclose(runner_1.model.fc.bias, runner_2.model.fc.bias)
    shutil.rmtree(runner_1.work_dir)
    shutil.rmtree(runner_2.work_dir)

    # test iter based runner
    data = torch.rand((8, 3)).cuda()
    # optimize with cumulative_iters
    loader_1 = DataLoader(data, batch_size=1)
    runner_1 = build_toy_runner(dict(type='IterBasedRunner', max_iters=8))
    optimizer_hook = GradientCumulativeFp16OptimizerHook(
        grad_clip=dict(max_norm=0.2), cumulative_iters=3)
    runner_1.register_hook(optimizer_hook)
    runner_1.run([loader_1], [('train', 1)])

    # optimize without cumulative_iters
    loader_2_divisible = DataLoader(data[:6], batch_size=3)
    loader_2_remainder = DataLoader(data[6:], batch_size=2)
    runner_2 = build_toy_runner(dict(type='IterBasedRunner', max_iters=3))
    optimizer_hook = Fp16OptimizerHook(grad_clip=dict(max_norm=0.2))
    runner_2.register_hook(optimizer_hook)
    runner_2.run([loader_2_divisible, loader_2_remainder], [('train', 2),
                                                            ('train', 1)])

    # test optimizer works well
    assert (runner_1.model.fc.weight < 1).all()
    assert (runner_1.model.fc.bias < 1).all()
    # test optimizer with cumulative_iters gets the same results
    assert torch.allclose(runner_1.model.fc.weight, runner_2.model.fc.weight)
    assert torch.allclose(runner_1.model.fc.bias, runner_2.model.fc.bias)
    shutil.rmtree(runner_1.work_dir)
    shutil.rmtree(runner_2.work_dir)