test_checkpoint.py 16.1 KB
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import sys
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from collections import OrderedDict
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from tempfile import TemporaryDirectory
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from unittest.mock import MagicMock, patch
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import pytest
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import torch
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import torch.nn as nn
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import torch.optim as optim
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from torch.nn.parallel import DataParallel

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from mmcv.fileio.file_client import PetrelBackend
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from mmcv.parallel.registry import MODULE_WRAPPERS
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from mmcv.runner.checkpoint import (_load_checkpoint_with_prefix,
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                                    get_state_dict, load_checkpoint,
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                                    load_from_pavi, save_checkpoint)

sys.modules['petrel_client'] = MagicMock()
sys.modules['petrel_client.client'] = MagicMock()
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@MODULE_WRAPPERS.register_module()
class DDPWrapper(object):

    def __init__(self, module):
        self.module = module


class Block(nn.Module):

    def __init__(self):
        super().__init__()
        self.conv = nn.Conv2d(3, 3, 1)
        self.norm = nn.BatchNorm2d(3)


class Model(nn.Module):

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


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class Mockpavimodel(object):

    def __init__(self, name='fakename'):
        self.name = name

    def download(self, file):
        pass


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def assert_tensor_equal(tensor_a, tensor_b):
    assert tensor_a.eq(tensor_b).all()


def test_get_state_dict():
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    if torch.__version__ == 'parrots':
        state_dict_keys = set([
            'block.conv.weight', 'block.conv.bias', 'block.norm.weight',
            'block.norm.bias', 'block.norm.running_mean',
            'block.norm.running_var', 'conv.weight', 'conv.bias'
        ])
    else:
        state_dict_keys = set([
            'block.conv.weight', 'block.conv.bias', 'block.norm.weight',
            'block.norm.bias', 'block.norm.running_mean',
            'block.norm.running_var', 'block.norm.num_batches_tracked',
            'conv.weight', 'conv.bias'
        ])
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    model = Model()
    state_dict = get_state_dict(model)
    assert isinstance(state_dict, OrderedDict)
    assert set(state_dict.keys()) == state_dict_keys

    assert_tensor_equal(state_dict['block.conv.weight'],
                        model.block.conv.weight)
    assert_tensor_equal(state_dict['block.conv.bias'], model.block.conv.bias)
    assert_tensor_equal(state_dict['block.norm.weight'],
                        model.block.norm.weight)
    assert_tensor_equal(state_dict['block.norm.bias'], model.block.norm.bias)
    assert_tensor_equal(state_dict['block.norm.running_mean'],
                        model.block.norm.running_mean)
    assert_tensor_equal(state_dict['block.norm.running_var'],
                        model.block.norm.running_var)
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    if torch.__version__ != 'parrots':
        assert_tensor_equal(state_dict['block.norm.num_batches_tracked'],
                            model.block.norm.num_batches_tracked)
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    assert_tensor_equal(state_dict['conv.weight'], model.conv.weight)
    assert_tensor_equal(state_dict['conv.bias'], model.conv.bias)

    wrapped_model = DDPWrapper(model)
    state_dict = get_state_dict(wrapped_model)
    assert isinstance(state_dict, OrderedDict)
    assert set(state_dict.keys()) == state_dict_keys
    assert_tensor_equal(state_dict['block.conv.weight'],
                        wrapped_model.module.block.conv.weight)
    assert_tensor_equal(state_dict['block.conv.bias'],
                        wrapped_model.module.block.conv.bias)
    assert_tensor_equal(state_dict['block.norm.weight'],
                        wrapped_model.module.block.norm.weight)
    assert_tensor_equal(state_dict['block.norm.bias'],
                        wrapped_model.module.block.norm.bias)
    assert_tensor_equal(state_dict['block.norm.running_mean'],
                        wrapped_model.module.block.norm.running_mean)
    assert_tensor_equal(state_dict['block.norm.running_var'],
                        wrapped_model.module.block.norm.running_var)
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    if torch.__version__ != 'parrots':
        assert_tensor_equal(
            state_dict['block.norm.num_batches_tracked'],
            wrapped_model.module.block.norm.num_batches_tracked)
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    assert_tensor_equal(state_dict['conv.weight'],
                        wrapped_model.module.conv.weight)
    assert_tensor_equal(state_dict['conv.bias'],
                        wrapped_model.module.conv.bias)

    # wrapped inner module
    for name, module in wrapped_model.module._modules.items():
        module = DataParallel(module)
        wrapped_model.module._modules[name] = module
    state_dict = get_state_dict(wrapped_model)
    assert isinstance(state_dict, OrderedDict)
    assert set(state_dict.keys()) == state_dict_keys
    assert_tensor_equal(state_dict['block.conv.weight'],
                        wrapped_model.module.block.module.conv.weight)
    assert_tensor_equal(state_dict['block.conv.bias'],
                        wrapped_model.module.block.module.conv.bias)
    assert_tensor_equal(state_dict['block.norm.weight'],
                        wrapped_model.module.block.module.norm.weight)
    assert_tensor_equal(state_dict['block.norm.bias'],
                        wrapped_model.module.block.module.norm.bias)
    assert_tensor_equal(state_dict['block.norm.running_mean'],
                        wrapped_model.module.block.module.norm.running_mean)
    assert_tensor_equal(state_dict['block.norm.running_var'],
                        wrapped_model.module.block.module.norm.running_var)
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    if torch.__version__ != 'parrots':
        assert_tensor_equal(
            state_dict['block.norm.num_batches_tracked'],
            wrapped_model.module.block.module.norm.num_batches_tracked)
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    assert_tensor_equal(state_dict['conv.weight'],
                        wrapped_model.module.conv.module.weight)
    assert_tensor_equal(state_dict['conv.bias'],
                        wrapped_model.module.conv.module.bias)
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def test_load_pavimodel_dist():
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    sys.modules['pavi'] = MagicMock()
    sys.modules['pavi.modelcloud'] = MagicMock()
    pavimodel = Mockpavimodel()
    import pavi
    pavi.modelcloud.get = MagicMock(return_value=pavimodel)
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    with pytest.raises(AssertionError):
        # test pavi prefix
        _ = load_from_pavi('MyPaviFolder/checkpoint.pth')

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    with pytest.raises(FileNotFoundError):
        # there is not such checkpoint for us to load
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        _ = load_from_pavi('pavi://checkpoint.pth')
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def test_load_checkpoint_with_prefix():

    class FooModule(nn.Module):

        def __init__(self):
            super().__init__()
            self.linear = nn.Linear(1, 2)
            self.conv2d = nn.Conv2d(3, 1, 3)
            self.conv2d_2 = nn.Conv2d(3, 2, 3)

    model = FooModule()
    nn.init.constant_(model.linear.weight, 1)
    nn.init.constant_(model.linear.bias, 2)
    nn.init.constant_(model.conv2d.weight, 3)
    nn.init.constant_(model.conv2d.bias, 4)
    nn.init.constant_(model.conv2d_2.weight, 5)
    nn.init.constant_(model.conv2d_2.bias, 6)

    with TemporaryDirectory():
        torch.save(model.state_dict(), 'model.pth')
        prefix = 'conv2d'
        state_dict = _load_checkpoint_with_prefix(prefix, 'model.pth')
        assert torch.equal(model.conv2d.state_dict()['weight'],
                           state_dict['weight'])
        assert torch.equal(model.conv2d.state_dict()['bias'],
                           state_dict['bias'])

        # test whether prefix is in pretrained model
        with pytest.raises(AssertionError):
            prefix = 'back'
            _load_checkpoint_with_prefix(prefix, 'model.pth')


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def test_load_checkpoint():
    import os
    import tempfile
    import re

    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)
    state_dict = load_checkpoint(
        pmodel, 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)
    state_dict = load_checkpoint(
        model, 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)


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def test_load_checkpoint_metadata():
    import os
    import tempfile

    from mmcv.runner import load_checkpoint, save_checkpoint

    class ModelV1(nn.Module):

        def __init__(self):
            super().__init__()
            self.block = Block()
            self.conv1 = nn.Conv2d(3, 3, 1)
            self.conv2 = nn.Conv2d(3, 3, 1)
            nn.init.normal_(self.conv1.weight)
            nn.init.normal_(self.conv2.weight)

    class ModelV2(nn.Module):
        _version = 2

        def __init__(self):
            super().__init__()
            self.block = Block()
            self.conv0 = nn.Conv2d(3, 3, 1)
            self.conv1 = nn.Conv2d(3, 3, 1)
            nn.init.normal_(self.conv0.weight)
            nn.init.normal_(self.conv1.weight)

        def _load_from_state_dict(self, state_dict, prefix, local_metadata,
                                  *args, **kwargs):
            """load checkpoints."""

            # Names of some parameters in has been changed.
            version = local_metadata.get('version', None)
            if version is None or version < 2:
                state_dict_keys = list(state_dict.keys())
                convert_map = {'conv1': 'conv0', 'conv2': 'conv1'}
                for k in state_dict_keys:
                    for ori_str, new_str in convert_map.items():
                        if k.startswith(prefix + ori_str):
                            new_key = k.replace(ori_str, new_str)
                            state_dict[new_key] = state_dict[k]
                            del state_dict[k]

            super()._load_from_state_dict(state_dict, prefix, local_metadata,
                                          *args, **kwargs)

    model_v1 = ModelV1()
    model_v1_conv0_weight = model_v1.conv1.weight.detach()
    model_v1_conv1_weight = model_v1.conv2.weight.detach()
    model_v2 = ModelV2()
    model_v2_conv0_weight = model_v2.conv0.weight.detach()
    model_v2_conv1_weight = model_v2.conv1.weight.detach()
    ckpt_v1_path = os.path.join(tempfile.gettempdir(), 'checkpoint_v1.pth')
    ckpt_v2_path = os.path.join(tempfile.gettempdir(), 'checkpoint_v2.pth')

    # Save checkpoint
    save_checkpoint(model_v1, ckpt_v1_path)
    save_checkpoint(model_v2, ckpt_v2_path)

    # test load v1 model
    load_checkpoint(model_v2, ckpt_v1_path)
    assert torch.allclose(model_v2.conv0.weight, model_v1_conv0_weight)
    assert torch.allclose(model_v2.conv1.weight, model_v1_conv1_weight)

    # test load v2 model
    load_checkpoint(model_v2, ckpt_v2_path)
    assert torch.allclose(model_v2.conv0.weight, model_v2_conv0_weight)
    assert torch.allclose(model_v2.conv1.weight, model_v2_conv1_weight)


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def test_load_classes_name():
    import os
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    import tempfile

    from mmcv.runner import load_checkpoint, save_checkpoint
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    checkpoint_path = os.path.join(tempfile.gettempdir(), 'checkpoint.pth')
    model = Model()
    save_checkpoint(model, checkpoint_path)
    checkpoint = load_checkpoint(model, checkpoint_path)
    assert 'meta' in checkpoint and 'CLASSES' not in checkpoint['meta']

    model.CLASSES = ('class1', 'class2')
    save_checkpoint(model, checkpoint_path)
    checkpoint = load_checkpoint(model, checkpoint_path)
    assert 'meta' in checkpoint and 'CLASSES' in checkpoint['meta']
    assert checkpoint['meta']['CLASSES'] == ('class1', 'class2')

    model = Model()
    wrapped_model = DDPWrapper(model)
    save_checkpoint(wrapped_model, checkpoint_path)
    checkpoint = load_checkpoint(wrapped_model, checkpoint_path)
    assert 'meta' in checkpoint and 'CLASSES' not in checkpoint['meta']

    wrapped_model.module.CLASSES = ('class1', 'class2')
    save_checkpoint(wrapped_model, checkpoint_path)
    checkpoint = load_checkpoint(wrapped_model, checkpoint_path)
    assert 'meta' in checkpoint and 'CLASSES' in checkpoint['meta']
    assert checkpoint['meta']['CLASSES'] == ('class1', 'class2')

    # remove the temp file
    os.remove(checkpoint_path)
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def test_checkpoint_loader():
    from mmcv.runner import _load_checkpoint, save_checkpoint, CheckpointLoader
    import tempfile
    import os
    checkpoint_path = os.path.join(tempfile.gettempdir(), 'checkpoint.pth')
    model = Model()
    save_checkpoint(model, checkpoint_path)
    checkpoint = _load_checkpoint(checkpoint_path)
    assert 'meta' in checkpoint and 'CLASSES' not in checkpoint['meta']
    # remove the temp file
    os.remove(checkpoint_path)

    filenames = [
        'http://xx.xx/xx.pth', 'https://xx.xx/xx.pth',
        'modelzoo://xx.xx/xx.pth', 'torchvision://xx.xx/xx.pth',
        'open-mmlab://xx.xx/xx.pth', 'openmmlab://xx.xx/xx.pth',
        'mmcls://xx.xx/xx.pth', 'pavi://xx.xx/xx.pth', 's3://xx.xx/xx.pth',
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        'ss3://xx.xx/xx.pth', ' s3://xx.xx/xx.pth',
        'open-mmlab:s3://xx.xx/xx.pth', 'openmmlab:s3://xx.xx/xx.pth',
        'openmmlabs3://xx.xx/xx.pth', ':s3://xx.xx/xx.path'
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    ]
    fn_names = [
        'load_from_http', 'load_from_http', 'load_from_torchvision',
        'load_from_torchvision', 'load_from_openmmlab', 'load_from_openmmlab',
        'load_from_mmcls', 'load_from_pavi', 'load_from_ceph',
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        'load_from_local', 'load_from_local', 'load_from_ceph',
        'load_from_ceph', 'load_from_local', 'load_from_local'
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    ]

    for filename, fn_name in zip(filenames, fn_names):
        loader = CheckpointLoader._get_checkpoint_loader(filename)
        assert loader.__name__ == fn_name

    @CheckpointLoader.register_scheme(prefixes='ftp://')
    def load_from_ftp(filename, map_location):
        return dict(filename=filename)

    # test register_loader
    filename = 'ftp://xx.xx/xx.pth'
    loader = CheckpointLoader._get_checkpoint_loader(filename)
    assert loader.__name__ == 'load_from_ftp'

    def load_from_ftp1(filename, map_location):
        return dict(filename=filename)

    # test duplicate registered error
    with pytest.raises(KeyError):
        CheckpointLoader.register_scheme('ftp://', load_from_ftp1)

    # test force param
    CheckpointLoader.register_scheme('ftp://', load_from_ftp1, force=True)
    checkpoint = CheckpointLoader.load_checkpoint(filename)
    assert checkpoint['filename'] == filename

    # test print function name
    loader = CheckpointLoader._get_checkpoint_loader(filename)
    assert loader.__name__ == 'load_from_ftp1'

    # test sort
    @CheckpointLoader.register_scheme(prefixes='a/b')
    def load_from_ab(filename, map_location):
        return dict(filename=filename)

    @CheckpointLoader.register_scheme(prefixes='a/b/c')
    def load_from_abc(filename, map_location):
        return dict(filename=filename)

    filename = 'a/b/c/d'
    loader = CheckpointLoader._get_checkpoint_loader(filename)
    assert loader.__name__ == 'load_from_abc'
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def test_save_checkpoint(tmp_path):
    model = Model()
    optimizer = optim.SGD(model.parameters(), lr=0.1, momentum=0.9)
    # meta is not a dict
    with pytest.raises(TypeError):
        save_checkpoint(model, '/path/of/your/filename', meta='invalid type')

    # 1. save to disk
    filename = str(tmp_path / 'checkpoint1.pth')
    save_checkpoint(model, filename)

    filename = str(tmp_path / 'checkpoint2.pth')
    save_checkpoint(model, filename, optimizer)

    filename = str(tmp_path / 'checkpoint3.pth')
    save_checkpoint(model, filename, meta={'test': 'test'})

    filename = str(tmp_path / 'checkpoint4.pth')
    save_checkpoint(model, filename, file_client_args={'backend': 'disk'})

    # 2. save to petrel oss
    with patch.object(PetrelBackend, 'put') as mock_method:
        filename = 's3://path/of/your/checkpoint1.pth'
        save_checkpoint(model, filename)
    mock_method.assert_called()

    with patch.object(PetrelBackend, 'put') as mock_method:
        filename = 's3://path//of/your/checkpoint2.pth'
        save_checkpoint(
            model, filename, file_client_args={'backend': 'petrel'})
    mock_method.assert_called()