Newer
Older
# Copyright (c) OpenMMLab. All rights reserved.
import copy
import os.path as osp
from torch.nn.parallel import DistributedDataParallel
from torch.optim import SGD
from torch.utils.data import DataLoader, Dataset
from mmengine.config import Config
from mmengine.data import DefaultSampler
from mmengine.evaluator import BaseMetric, Evaluator
from mmengine.hooks import (DistSamplerSeedHook, Hook, IterTimerHook,
LoggerHook, OptimizerHook, ParamSchedulerHook)
from mmengine.hooks.checkpoint_hook import CheckpointHook
from mmengine.logging import LogProcessor, MessageHub, MMLogger
from mmengine.optim.scheduler import MultiStepLR, StepLR
from mmengine.registry import (DATASETS, HOOKS, LOG_PROCESSORS, LOOPS, METRICS,
MODEL_WRAPPERS, MODELS, PARAM_SCHEDULERS,
Registry)
from mmengine.runner import (BaseLoop, EpochBasedTrainLoop, IterBasedTrainLoop,
Runner, TestLoop, ValLoop)
from mmengine.runner.priority import Priority, get_priority
from mmengine.utils import is_list_of
@MODELS.register_module()
class ToyModel(nn.Module):
def __init__(self):
super().__init__()
self.linear = nn.Linear(2, 1)
def forward(self, data_batch, return_loss=False):
inputs, labels = [], []
for x in data_batch:
inputs.append(x['inputs'])
labels.append(x['data_sample'])
device = 'cuda:0' if torch.cuda.is_available() else 'cpu'
inputs = torch.stack(inputs).to(device)
labels = torch.stack(labels).to(device)
outputs = self.linear(inputs)
if return_loss:
loss = (labels - outputs).sum()
outputs = dict(loss=loss, log_vars=dict(loss=loss.item()))
return outputs
else:
outputs = dict(log_vars=dict(a=1, b=0.5))
return outputs
@MODELS.register_module()
class ToyModel1(ToyModel):
def __init__(self):
super().__init__()
@MODEL_WRAPPERS.register_module()
class CustomModelWrapper(nn.Module):
def __init__(self, model):
super().__init__()
self.model = model
@DATASETS.register_module()
class ToyDataset(Dataset):
METAINFO = dict() # type: ignore
data = torch.randn(12, 2)
label = torch.ones(12)
return dict(inputs=self.data[index], data_sample=self.label[index])
@METRICS.register_module()
class ToyMetric1(BaseMetric):
def __init__(self, collect_device='cpu', dummy_metrics=None):
super().__init__(collect_device=collect_device)
self.dummy_metrics = dummy_metrics
def process(self, data_samples, predictions):
result = {'acc': 1}
self.results.append(result)
def compute_metrics(self, results):
return dict(acc=1)
@METRICS.register_module()
class ToyMetric2(BaseMetric):
104
105
106
107
108
109
110
111
112
113
114
115
116
117
118
119
120
121
122
123
124
125
126
127
128
129
130
131
132
def __init__(self, collect_device='cpu', dummy_metrics=None):
super().__init__(collect_device=collect_device)
self.dummy_metrics = dummy_metrics
def process(self, data_samples, predictions):
result = {'acc': 1}
self.results.append(result)
def compute_metrics(self, results):
return dict(acc=1)
@HOOKS.register_module()
class ToyHook(Hook):
priority = 'Lowest'
def before_train_epoch(self, runner):
pass
@HOOKS.register_module()
class ToyHook2(Hook):
priority = 'Lowest'
def after_train_epoch(self, runner):
pass
@HOOKS.register_module()
class ToyHook3(Hook):
def before_train_iter(self, runner, data_batch):
pass
@LOOPS.register_module()
class CustomTrainLoop(BaseLoop):
def __init__(self, runner, dataloader, max_epochs):
super().__init__(runner, dataloader)
self._max_epochs = max_epochs
def run(self) -> None:
pass
@LOOPS.register_module()
class CustomValLoop(BaseLoop):
def __init__(self, runner, dataloader, evaluator, interval=1):
super().__init__(runner, dataloader)
self._runner = runner
if isinstance(evaluator, dict) or is_list_of(evaluator, dict):
self.evaluator = runner.build_evaluator(evaluator) # type: ignore
else:
self.evaluator = evaluator
def run(self) -> None:
pass
@LOOPS.register_module()
class CustomTestLoop(BaseLoop):
def __init__(self, runner, dataloader, evaluator):
super().__init__(runner, dataloader)
self._runner = runner
if isinstance(evaluator, dict) or is_list_of(evaluator, dict):
self.evaluator = runner.build_evaluator(evaluator) # type: ignore
else:
self.evaluator = evaluator
def run(self) -> None:
pass
class CustomLogProcessor(LogProcessor):
def __init__(self, window_size=10, by_epoch=True, custom_cfg=None):
self.window_size = window_size
self.by_epoch = by_epoch
self.custom_cfg = custom_cfg if custom_cfg else []
self._check_custom_cfg()
def collate_fn(data_batch):
return data_batch
class TestRunner(TestCase):
def setUp(self):
self.temp_dir = tempfile.mkdtemp()
epoch_based_cfg = dict(
train_dataloader=dict(
dataset=dict(type='ToyDataset'),
sampler=dict(type='DefaultSampler', shuffle=True),
num_workers=0),
val_dataloader=dict(
dataset=dict(type='ToyDataset'),
sampler=dict(type='DefaultSampler', shuffle=False),
num_workers=0),
test_dataloader=dict(
dataset=dict(type='ToyDataset'),
sampler=dict(type='DefaultSampler', shuffle=False),
num_workers=0),
optimizer=dict(type='SGD', lr=0.01),
param_scheduler=dict(type='MultiStepLR', milestones=[1, 2]),
val_evaluator=dict(type='ToyMetric1'),
test_evaluator=dict(type='ToyMetric1'),
val_cfg=dict(interval=1, begin=1),
test_cfg=dict(),
custom_hooks=[],
default_hooks=dict(
runtime_info=dict(type='RuntimeInfoHook'),
optimizer=dict(type='OptimizerHook', grad_clip=None),
param_scheduler=dict(type='ParamSchedulerHook'),
checkpoint=dict(
type='CheckpointHook', interval=1, by_epoch=True),
sampler_seed=dict(type='DistSamplerSeedHook')),
launcher='none',
env_cfg=dict(dist_cfg=dict(backend='nccl')),
)
self.epoch_based_cfg = Config(epoch_based_cfg)
self.iter_based_cfg = copy.deepcopy(self.epoch_based_cfg)
self.iter_based_cfg.train_dataloader = dict(
dataset=dict(type='ToyDataset'),
sampler=dict(type='InfiniteSampler', shuffle=True),
batch_size=3,
num_workers=0)
self.iter_based_cfg.train_cfg = dict(by_epoch=False, max_iters=12)
self.iter_based_cfg.default_hooks = dict(
runtime_info=dict(type='RuntimeInfoHook'),
optimizer=dict(type='OptimizerHook', grad_clip=None),
logger=dict(type='LoggerHook'),
param_scheduler=dict(type='ParamSchedulerHook'),
checkpoint=dict(type='CheckpointHook', interval=1, by_epoch=False),
sampler_seed=dict(type='DistSamplerSeedHook'))
shutil.rmtree(self.temp_dir)
def test_init(self):
# 1. test arguments
# 1.1 train_dataloader, train_cfg, optimizer and param_scheduler
cfg = copy.deepcopy(self.epoch_based_cfg)
cfg.pop('train_cfg')
with self.assertRaisesRegex(ValueError, 'either all None or not None'):
Runner(**cfg)
# all of training related configs are None and param_scheduler should
# also be None
cfg.experiment_name = 'test_init2'
cfg.pop('train_dataloader')
cfg.pop('optimizer')
cfg.pop('param_scheduler')
runner = Runner(**cfg)
self.assertIsInstance(runner, Runner)
# all of training related configs are not None
cfg = copy.deepcopy(self.epoch_based_cfg)
cfg.experiment_name = 'test_init3'
runner = Runner(**cfg)
self.assertIsInstance(runner, Runner)
# all of training related configs are not None and param_scheduler
# can be None
cfg = copy.deepcopy(self.epoch_based_cfg)
cfg.experiment_name = 'test_init4'
cfg.pop('param_scheduler')
runner = Runner(**cfg)
self.assertIsInstance(runner, Runner)
self.assertEqual(runner.param_schedulers, [])
# param_scheduler should be None when optimizer is None
cfg = copy.deepcopy(self.epoch_based_cfg)
cfg.experiment_name = 'test_init5'
cfg.pop('train_cfg')
cfg.pop('train_dataloader')
cfg.pop('optimizer')
with self.assertRaisesRegex(ValueError, 'should be None'):
runner = Runner(**cfg)
# 1.2 val_dataloader, val_evaluator, val_cfg
cfg = copy.deepcopy(self.epoch_based_cfg)
cfg.pop('val_cfg')
with self.assertRaisesRegex(ValueError, 'either all None or not None'):
Runner(**cfg)
cfg.pop('val_dataloader')
cfg.pop('val_evaluator')
runner = Runner(**cfg)
self.assertIsInstance(runner, Runner)
cfg = copy.deepcopy(self.epoch_based_cfg)
runner = Runner(**cfg)
self.assertIsInstance(runner, Runner)
# 1.3 test_dataloader, test_evaluator and test_cfg
cfg = copy.deepcopy(self.epoch_based_cfg)
cfg.pop('test_cfg')
with self.assertRaisesRegex(ValueError, 'either all None or not None'):
runner = Runner(**cfg)
cfg.pop('test_dataloader')
cfg.pop('test_evaluator')
runner = Runner(**cfg)
self.assertIsInstance(runner, Runner)
# 1.4 test env params
cfg = copy.deepcopy(self.epoch_based_cfg)
runner = Runner(**cfg)
self.assertFalse(runner.distributed)
self.assertFalse(runner.deterministic)
# they are all not specified
cfg = copy.deepcopy(self.epoch_based_cfg)
runner = Runner(**cfg)
self.assertIsInstance(runner.logger, MMLogger)
self.assertIsInstance(runner.message_hub, MessageHub)
self.assertIsInstance(runner.visualizer, Visualizer)
# they are all specified
cfg = copy.deepcopy(self.epoch_based_cfg)
cfg.experiment_name = 'test_init13'
cfg.log_level = 'INFO'
runner = Runner(**cfg)
self.assertIsInstance(runner.logger, MMLogger)
self.assertIsInstance(runner.message_hub, MessageHub)
self.assertIsInstance(runner.visualizer, Visualizer)
assert runner.distributed is False
assert runner.seed is not None
assert runner.work_dir == self.temp_dir
# 2 model should be initialized
self.assertIsInstance(runner.model,
(nn.Module, DistributedDataParallel))
self.assertEqual(runner.model_name, 'ToyModel')
# 3. test lazy initialization
self.assertIsInstance(runner._train_dataloader, dict)
self.assertIsInstance(runner._val_dataloader, dict)
self.assertIsInstance(runner._test_dataloader, dict)
self.assertIsInstance(runner.optimizer, dict)
self.assertIsInstance(runner.param_schedulers[0], dict)
# After calling runner.train(),
# train_dataloader and val_loader should be initialized but
# test_dataloader should also be dict
self.assertIsInstance(runner._train_loop, BaseLoop)
self.assertIsInstance(runner.train_dataloader, DataLoader)
self.assertIsInstance(runner.optimizer, SGD)
self.assertIsInstance(runner.param_schedulers[0], MultiStepLR)
self.assertIsInstance(runner._val_loop, BaseLoop)
self.assertIsInstance(runner._val_loop.dataloader, DataLoader)
self.assertIsInstance(runner._val_loop.evaluator, Evaluator)
# After calling runner.test(), test_dataloader should be initialized
self.assertIsInstance(runner._test_loop, dict)
self.assertIsInstance(runner._test_loop, BaseLoop)
self.assertIsInstance(runner._test_loop.dataloader, DataLoader)
self.assertIsInstance(runner._test_loop.evaluator, Evaluator)
# 4. initialize runner with objects rather than config
model = ToyModel()
optimizer = SGD(
model.parameters(),
lr=0.01,
)
toy_hook = ToyHook()
toy_hook2 = ToyHook2()
train_dataloader = DataLoader(ToyDataset(), collate_fn=collate_fn)
val_dataloader = DataLoader(ToyDataset(), collate_fn=collate_fn)
test_dataloader = DataLoader(ToyDataset(), collate_fn=collate_fn)
train_dataloader=train_dataloader,
optimizer=optimizer,
param_scheduler=MultiStepLR(optimizer, milestones=[1, 2]),
val_cfg=dict(interval=1, begin=1),
test_cfg=dict(),
test_dataloader=test_dataloader,
custom_hooks=[toy_hook2],
experiment_name='test_init14')
def test_dump_config(self):
# dump config from dict.
cfg = copy.deepcopy(self.epoch_based_cfg)
for idx, cfg in enumerate((cfg, cfg._cfg_dict)):
cfg.experiment_name = f'test_dump{idx}'
runner = Runner.from_cfg(cfg=cfg)
assert osp.exists(
osp.join(runner.work_dir, f'{runner.timestamp}.py'))
# dump config from file.
with tempfile.TemporaryDirectory() as temp_config_dir:
temp_config_file = tempfile.NamedTemporaryFile(
dir=temp_config_dir, suffix='.py')
file_cfg = Config(
self.epoch_based_cfg._cfg_dict,
filename=temp_config_file.name)
file_cfg.experiment_name = f'test_dump2{idx}'
runner = Runner.from_cfg(cfg=file_cfg)
assert osp.exists(
osp.join(runner.work_dir,
osp.basename(temp_config_file.name)))
def test_from_cfg(self):
runner = Runner.from_cfg(cfg=self.epoch_based_cfg)
def test_build_logger(self):
self.epoch_based_cfg.experiment_name = 'test_build_logger1'
runner = Runner.from_cfg(self.epoch_based_cfg)
self.assertIsInstance(runner.logger, MMLogger)
self.assertEqual(runner.experiment_name, runner.logger.instance_name)
# input is a dict
logger = runner.build_logger(name='test_build_logger2')
self.assertIsInstance(logger, MMLogger)
self.assertEqual(logger.instance_name, 'test_build_logger2')
# input is a dict but does not contain name key
runner._experiment_name = 'test_build_logger3'
logger = runner.build_logger()
self.assertIsInstance(logger, MMLogger)
self.assertEqual(logger.instance_name, 'test_build_logger3')
self.epoch_based_cfg.experiment_name = 'test_build_message_hub1'
runner = Runner.from_cfg(self.epoch_based_cfg)
self.assertIsInstance(runner.message_hub, MessageHub)
self.assertEqual(runner.message_hub.instance_name,
runner.experiment_name)
# input is a dict
message_hub_cfg = dict(name='test_build_message_hub2')
message_hub = runner.build_message_hub(message_hub_cfg)
self.assertIsInstance(message_hub, MessageHub)
self.assertEqual(message_hub.instance_name, 'test_build_message_hub2')
# input is a dict but does not contain name key
runner._experiment_name = 'test_build_message_hub3'
message_hub_cfg = dict()
message_hub = runner.build_message_hub(message_hub_cfg)
self.assertIsInstance(message_hub, MessageHub)
self.assertEqual(message_hub.instance_name, 'test_build_message_hub3')
# input is not a valid type
with self.assertRaisesRegex(TypeError, 'message_hub should be'):
runner.build_message_hub('invalid-type')
def test_build_visualizer(self):
self.epoch_based_cfg.experiment_name = 'test_build_visualizer1'
runner = Runner.from_cfg(self.epoch_based_cfg)
self.assertIsInstance(runner.visualizer, Visualizer)
self.assertEqual(runner.experiment_name,
runner.visualizer.instance_name)
id(runner.build_visualizer(runner.visualizer)),
id(runner.visualizer))
visualizer_cfg = dict(type='Visualizer', name='test_build_visualizer2')
visualizer = runner.build_visualizer(visualizer_cfg)
self.assertIsInstance(visualizer, Visualizer)
self.assertEqual(visualizer.instance_name, 'test_build_visualizer2')
# input is a dict but does not contain name key
runner._experiment_name = 'test_build_visualizer3'
visualizer_cfg = None
visualizer = runner.build_visualizer(visualizer_cfg)
self.assertIsInstance(visualizer, Visualizer)
self.assertEqual(visualizer.instance_name, 'test_build_visualizer3')
with self.assertRaisesRegex(TypeError, 'visualizer should be'):
runner.build_visualizer('invalid-type')
def test_default_scope(self):
TOY_SCHEDULERS = Registry(
'parameter scheduler', parent=PARAM_SCHEDULERS, scope='toy')
@TOY_SCHEDULERS.register_module()
class ToyScheduler(MultiStepLR):
def __init__(self, *args, **kwargs):
super().__init__(*args, **kwargs)
self.epoch_based_cfg.param_scheduler = dict(
self.epoch_based_cfg.default_scope = 'toy'
cfg = copy.deepcopy(self.epoch_based_cfg)
cfg.experiment_name = 'test_default_scope'
runner = Runner.from_cfg(cfg)
self.assertIsInstance(runner.param_schedulers[0], ToyScheduler)
cfg = copy.deepcopy(self.epoch_based_cfg)
cfg.experiment_name = 'test_build_model'
runner = Runner.from_cfg(cfg)
self.assertIsInstance(runner.model, ToyModel)
# input should be a nn.Module object or dict
with self.assertRaisesRegex(TypeError, 'model should be'):
runner.build_model('invalid-type')
# input is a nn.Module object
_model = ToyModel1()
model = runner.build_model(_model)
self.assertEqual(id(model), id(_model))
# input is a dict
model = runner.build_model(dict(type='ToyModel1'))
self.assertIsInstance(model, ToyModel1)
# test init weights
@MODELS.register_module()
class ToyModel2(ToyModel):
def __init__(self):
super().__init__()
self.initiailzed = False
def init_weights(self):
self.initiailzed = True
model = runner.build_model(dict(type='ToyModel2'))
self.assertTrue(model.initiailzed)
# test init weights with model object
_model = ToyModel2()
model = runner.build_model(_model)
self.assertFalse(model.initiailzed)
def test_wrap_model(self):
# TODO: test on distributed environment
# custom model wrapper
cfg = copy.deepcopy(self.epoch_based_cfg)
cfg.experiment_name = 'test_wrap_model'
cfg.model_wrapper_cfg = dict(type='CustomModelWrapper')
self.assertIsInstance(runner.model, CustomModelWrapper)
def test_build_optimizer(self):
cfg = copy.deepcopy(self.epoch_based_cfg)
cfg.experiment_name = 'test_build_optimizer'
runner = Runner.from_cfg(cfg)
# input should be an Optimizer object or dict
with self.assertRaisesRegex(TypeError, 'optimizer should be'):
runner.build_optimizer('invalid-type')
# input is an Optimizer object
_optimizer = SGD(runner.model.parameters(), lr=0.01)
optimizer = runner.build_optimizer(_optimizer)
self.assertEqual(id(_optimizer), id(optimizer))
# input is a dict
optimizer = runner.build_optimizer(dict(type='SGD', lr=0.01))
self.assertIsInstance(optimizer, SGD)
def test_build_param_scheduler(self):
cfg = copy.deepcopy(self.epoch_based_cfg)
cfg.experiment_name = 'test_build_param_scheduler'
runner = Runner.from_cfg(cfg)
613
614
615
616
617
618
619
620
621
622
623
624
625
626
627
628
629
630
631
632
633
634
635
636
637
638
639
640
641
642
643
644
645
646
647
# `build_optimizer` should be called before `build_param_scheduler`
cfg = dict(type='MultiStepLR', milestones=[1, 2])
runner.optimizer = None
with self.assertRaisesRegex(RuntimeError, 'should be called before'):
runner.build_param_scheduler(cfg)
runner.optimizer = runner.build_optimizer(dict(type='SGD', lr=0.01))
param_schedulers = runner.build_param_scheduler(cfg)
self.assertIsInstance(param_schedulers, list)
self.assertEqual(len(param_schedulers), 1)
self.assertIsInstance(param_schedulers[0], MultiStepLR)
# input is a ParamScheduler object
param_scheduler = MultiStepLR(runner.optimizer, milestones=[1, 2])
param_schedulers = runner.build_param_scheduler(param_scheduler)
self.assertEqual(id(param_schedulers[0]), id(param_scheduler))
# input is a list of dict
cfg = [
dict(type='MultiStepLR', milestones=[1, 2]),
dict(type='StepLR', step_size=1)
]
param_schedulers = runner.build_param_scheduler(cfg)
self.assertEqual(len(param_schedulers), 2)
self.assertIsInstance(param_schedulers[0], MultiStepLR)
self.assertIsInstance(param_schedulers[1], StepLR)
# input is a list and some items are ParamScheduler objects
cfg = [param_scheduler, dict(type='StepLR', step_size=1)]
param_schedulers = runner.build_param_scheduler(cfg)
self.assertEqual(len(param_schedulers), 2)
self.assertIsInstance(param_schedulers[0], MultiStepLR)
self.assertIsInstance(param_schedulers[1], StepLR)
# train loop should be built before convert scheduler
cfg = dict(
type='MultiStepLR', milestones=[1, 2], convert_to_iter_based=True)
with self.assertRaisesRegex(
AssertionError,
'Scheduler can only be converted to iter-based when '
'train loop is built.'):
param_schedulers = runner.build_param_scheduler(cfg)
# convert epoch-based to iter-based scheduler
cfg = dict(
type='MultiStepLR',
milestones=[1, 2],
begin=1,
end=7,
convert_to_iter_based=True)
runner._train_loop = runner.build_train_loop(runner.train_loop)
param_schedulers = runner.build_param_scheduler(cfg)
self.assertFalse(param_schedulers[0].by_epoch)
self.assertEqual(param_schedulers[0].begin, 4)
self.assertEqual(param_schedulers[0].end, 28)
cfg = copy.deepcopy(self.epoch_based_cfg)
cfg.experiment_name = 'test_build_evaluator'
runner = Runner.from_cfg(cfg)
# input is a BaseEvaluator or ComposedEvaluator object
evaluator = Evaluator(ToyMetric1())
self.assertEqual(id(runner.build_evaluator(evaluator)), id(evaluator))
evaluator = Evaluator([ToyMetric1(), ToyMetric2()])
self.assertEqual(id(runner.build_evaluator(evaluator)), id(evaluator))
# input is a dict
evaluator = dict(type='ToyMetric1')
self.assertIsInstance(runner.build_evaluator(evaluator), Evaluator)
# input is a list of dict
evaluator = [dict(type='ToyMetric1'), dict(type='ToyMetric2')]
self.assertIsInstance(runner.build_evaluator(evaluator), Evaluator)
# test collect device
evaluator = [
dict(type='ToyMetric1', collect_device='cpu'),
dict(type='ToyMetric2', collect_device='gpu')
]
_evaluator = runner.build_evaluator(evaluator)
self.assertEqual(_evaluator.metrics[0].collect_device, 'cpu')
self.assertEqual(_evaluator.metrics[1].collect_device, 'gpu')
cfg = copy.deepcopy(self.epoch_based_cfg)
cfg.experiment_name = 'test_build_dataloader'
runner = Runner.from_cfg(cfg)
cfg = dict(
dataset=dict(type='ToyDataset'),
sampler=dict(type='DefaultSampler', shuffle=True),
batch_size=1,
num_workers=0)
seed = np.random.randint(2**31)
dataloader = runner.build_dataloader(cfg, seed=seed)
self.assertIsInstance(dataloader, DataLoader)
self.assertIsInstance(dataloader.dataset, ToyDataset)
self.assertIsInstance(dataloader.sampler, DefaultSampler)
self.assertEqual(dataloader.sampler.seed, seed)
cfg = copy.deepcopy(self.epoch_based_cfg)
cfg.experiment_name = 'test_build_train_loop'
runner = Runner.from_cfg(cfg)
721
722
723
724
725
726
727
728
729
730
731
732
733
734
735
736
737
738
739
740
741
742
743
744
745
746
747
748
749
750
# input should be a Loop object or dict
with self.assertRaisesRegex(TypeError, 'should be'):
runner.build_train_loop('invalid-type')
# Only one of type or by_epoch can exist in cfg
cfg = dict(type='EpochBasedTrainLoop', by_epoch=True, max_epochs=3)
with self.assertRaisesRegex(RuntimeError, 'Only one'):
runner.build_train_loop(cfg)
# input is a dict and contains type key
cfg = dict(type='EpochBasedTrainLoop', max_epochs=3)
loop = runner.build_train_loop(cfg)
self.assertIsInstance(loop, EpochBasedTrainLoop)
cfg = dict(type='IterBasedTrainLoop', max_iters=3)
loop = runner.build_train_loop(cfg)
self.assertIsInstance(loop, IterBasedTrainLoop)
# input is a dict and does not contain type key
cfg = dict(by_epoch=True, max_epochs=3)
loop = runner.build_train_loop(cfg)
self.assertIsInstance(loop, EpochBasedTrainLoop)
cfg = dict(by_epoch=False, max_iters=3)
loop = runner.build_train_loop(cfg)
self.assertIsInstance(loop, IterBasedTrainLoop)
# input is a Loop object
self.assertEqual(id(runner.build_train_loop(loop)), id(loop))
# param_schedulers can be []
cfg = dict(type='EpochBasedTrainLoop', max_epochs=3)
runner.param_schedulers = []
loop = runner.build_train_loop(cfg)
self.assertIsInstance(loop, EpochBasedTrainLoop)
# test custom training loop
cfg = dict(type='CustomTrainLoop', max_epochs=3)
loop = runner.build_train_loop(cfg)
self.assertIsInstance(loop, CustomTrainLoop)
def test_build_val_loop(self):
cfg = copy.deepcopy(self.epoch_based_cfg)
cfg.experiment_name = 'test_build_val_loop'
runner = Runner.from_cfg(cfg)
# input should be a Loop object or dict
with self.assertRaisesRegex(TypeError, 'should be'):
runner.build_test_loop('invalid-type')
# input is a dict and contains type key
cfg = dict(type='ValLoop', interval=1, begin=1)
loop = runner.build_test_loop(cfg)
self.assertIsInstance(loop, ValLoop)
# input is a dict but does not contain type key
cfg = dict(interval=1, begin=1)
loop = runner.build_val_loop(cfg)
self.assertIsInstance(loop, ValLoop)
# input is a Loop object
self.assertEqual(id(runner.build_val_loop(loop)), id(loop))
# test custom validation loop
cfg = dict(type='CustomValLoop', interval=1)
loop = runner.build_val_loop(cfg)
self.assertIsInstance(loop, CustomValLoop)
def test_build_test_loop(self):
cfg = copy.deepcopy(self.epoch_based_cfg)
cfg.experiment_name = 'test_build_test_loop'
runner = Runner.from_cfg(cfg)
# input should be a Loop object or dict
with self.assertRaisesRegex(TypeError, 'should be'):
runner.build_test_loop('invalid-type')
# input is a dict and contains type key
cfg = dict(type='TestLoop')
loop = runner.build_test_loop(cfg)
self.assertIsInstance(loop, TestLoop)
# input is a dict but does not contain type key
cfg = dict()
loop = runner.build_test_loop(cfg)
self.assertIsInstance(loop, TestLoop)
# input is a Loop object
self.assertEqual(id(runner.build_test_loop(loop)), id(loop))
# test custom validation loop
cfg = dict(type='CustomTestLoop')
loop = runner.build_val_loop(cfg)
self.assertIsInstance(loop, CustomTestLoop)
816
817
818
819
820
821
822
823
824
825
826
827
828
829
830
831
832
833
834
835
836
837
838
839
840
841
842
843
def test_build_log_processor(self):
cfg = copy.deepcopy(self.epoch_based_cfg)
cfg.experiment_name = 'test_build_log_processor'
runner = Runner.from_cfg(cfg)
# input should be a LogProcessor object or dict
with self.assertRaisesRegex(TypeError, 'should be'):
runner.build_log_processor('invalid-type')
# input is a dict and contains type key
cfg = dict(type='LogProcessor')
log_processor = runner.build_log_processor(cfg)
self.assertIsInstance(log_processor, LogProcessor)
# input is a dict but does not contain type key
cfg = dict()
log_processor = runner.build_log_processor(cfg)
self.assertIsInstance(log_processor, LogProcessor)
# input is a LogProcessor object
self.assertEqual(
id(runner.build_log_processor(log_processor)), id(log_processor))
# test custom validation log_processor
cfg = dict(type='CustomLogProcessor')
log_processor = runner.build_log_processor(cfg)
self.assertIsInstance(log_processor, CustomLogProcessor)
def test_train(self):
# 1. test `self.train_loop` is None
cfg = copy.deepcopy(self.epoch_based_cfg)
cfg.pop('train_dataloader')
cfg.pop('train_cfg')
cfg.pop('optimizer')
cfg.pop('param_scheduler')
with self.assertRaisesRegex(RuntimeError, 'should not be None'):
runner.train()
# 2. test iter and epoch counter of EpochBasedTrainLoop and timing of
# running ValLoop
iter_targets = [i for i in range(4 * 3)]
batch_idx_results = []
batch_idx_targets = [i for i in range(4)] * 3 # train and val
val_epoch_results = []
val_epoch_targets = [i for i in range(2, 4)]
def before_train_epoch(self, runner):
epoch_results.append(runner.epoch)
def before_train_iter(self, runner, batch_idx, data_batch=None):
batch_idx_results.append(batch_idx)
def before_val_epoch(self, runner):
val_epoch_results.append(runner.epoch)
cfg = copy.deepcopy(self.epoch_based_cfg)
cfg.experiment_name = 'test_train2'
cfg.custom_hooks = [dict(type='TestEpochHook', priority=50)]
cfg.val_cfg = dict(begin=2)
assert isinstance(runner.train_loop, EpochBasedTrainLoop)
for result, target, in zip(epoch_results, epoch_targets):
self.assertEqual(result, target)
for result, target, in zip(iter_results, iter_targets):
self.assertEqual(result, target)
for result, target, in zip(batch_idx_results, batch_idx_targets):
for result, target, in zip(val_epoch_results, val_epoch_targets):
self.assertEqual(result, target)
# 3. test iter and epoch counter of IterBasedTrainLoop and timing of
# running ValLoop
val_iter_results = []
val_batch_idx_results = []
batch_idx_targets = [i for i in range(12)]
val_iter_targets = [i for i in range(4, 12)]
val_batch_idx_targets = [i for i in range(4)] * 2
def before_train_epoch(self, runner):
epoch_results.append(runner.epoch)
def before_train_iter(self, runner, batch_idx, data_batch=None):
batch_idx_results.append(batch_idx)
def before_val_iter(self, runner, batch_idx, data_batch=None):
val_epoch_results.append(runner.iter)
val_batch_idx_results.append(batch_idx)
cfg = copy.deepcopy(self.iter_based_cfg)
cfg.experiment_name = 'test_train3'
cfg.custom_hooks = [dict(type='TestIterHook', priority=50)]
cfg.val_cfg = dict(interval=4, begin=4)
assert isinstance(runner.train_loop, IterBasedTrainLoop)
self.assertEqual(len(epoch_results), 1)
self.assertEqual(epoch_results[0], 0)
for result, target, in zip(iter_results, iter_targets):
self.assertEqual(result, target)
for result, target, in zip(batch_idx_results, batch_idx_targets):
for result, target, in zip(val_iter_results, val_iter_targets):
self.assertEqual(result, target)
for result, target, in zip(val_batch_idx_results,
val_batch_idx_targets):
self.assertEqual(result, target)
def test_val(self):
cfg = copy.deepcopy(self.epoch_based_cfg)
cfg.pop('val_dataloader')
cfg.pop('val_cfg')
cfg.pop('val_evaluator')
with self.assertRaisesRegex(RuntimeError, 'should not be None'):
runner.val()
cfg = copy.deepcopy(self.epoch_based_cfg)
cfg.experiment_name = 'test_val2'
runner = Runner.from_cfg(cfg)
# test run val without train and test components
cfg = copy.deepcopy(self.epoch_based_cfg)
cfg.experiment_name = 'test_individually_val'
cfg.pop('train_dataloader')
cfg.pop('train_cfg')
cfg.pop('optimizer')
cfg.pop('param_scheduler')
cfg.pop('test_dataloader')
cfg.pop('test_cfg')
cfg.pop('test_evaluator')
runner = Runner.from_cfg(cfg)
runner.val()
def test_test(self):
cfg = copy.deepcopy(self.epoch_based_cfg)
cfg.pop('test_dataloader')
cfg.pop('test_cfg')
cfg.pop('test_evaluator')
with self.assertRaisesRegex(RuntimeError, 'should not be None'):
runner.test()
cfg = copy.deepcopy(self.epoch_based_cfg)
cfg.experiment_name = 'test_test2'
runner = Runner.from_cfg(cfg)
# test run test without train and test components
cfg = copy.deepcopy(self.epoch_based_cfg)
cfg.experiment_name = 'test_individually_test'
cfg.pop('train_dataloader')
cfg.pop('train_cfg')
cfg.pop('optimizer')
cfg.pop('param_scheduler')
cfg.pop('val_dataloader')
cfg.pop('val_cfg')
cfg.pop('val_evaluator')
runner = Runner.from_cfg(cfg)
runner.test()