461 lines
12 KiB
Python
461 lines
12 KiB
Python
import pytest
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import tests.base.utils as tutils
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from pytorch_lightning import Trainer
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from pytorch_lightning.utilities.debugging import MisconfigurationException
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from tests.base import (
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TestModelBase,
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LightningTestModel,
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LightEmptyTestStep,
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LightValidationMultipleDataloadersMixin,
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LightTestMultipleDataloadersMixin,
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LightTestFitSingleTestDataloadersMixin,
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LightTestFitMultipleTestDataloadersMixin,
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LightValStepFitMultipleDataloadersMixin,
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LightValStepFitSingleDataloaderMixin,
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LightTrainDataloader,
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LightInfTrainDataloader,
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LightInfValDataloader,
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LightInfTestDataloader
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)
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def test_dataloader_config_errors(tmpdir):
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tutils.reset_seed()
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class CurrentTestModel(
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LightTrainDataloader,
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TestModelBase,
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):
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pass
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hparams = tutils.get_default_hparams()
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model = CurrentTestModel(hparams)
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# percent check < 0
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# logger file to get meta
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trainer_options = dict(
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default_save_path=tmpdir,
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max_epochs=1,
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train_percent_check=-0.1,
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)
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# fit model
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trainer = Trainer(**trainer_options)
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with pytest.raises(ValueError):
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trainer.fit(model)
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# percent check > 1
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# logger file to get meta
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trainer_options = dict(
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default_save_path=tmpdir,
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max_epochs=1,
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train_percent_check=1.1,
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)
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# fit model
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trainer = Trainer(**trainer_options)
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with pytest.raises(ValueError):
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trainer.fit(model)
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# int val_check_interval > num batches
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# logger file to get meta
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trainer_options = dict(
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default_save_path=tmpdir,
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max_epochs=1,
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val_check_interval=10000
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)
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# fit model
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trainer = Trainer(**trainer_options)
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with pytest.raises(ValueError):
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trainer.fit(model)
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# float val_check_interval > 1
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# logger file to get meta
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trainer_options = dict(
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default_save_path=tmpdir,
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max_epochs=1,
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val_check_interval=1.1
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)
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# fit model
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trainer = Trainer(**trainer_options)
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with pytest.raises(ValueError):
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trainer.fit(model)
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def test_multiple_val_dataloader(tmpdir):
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"""Verify multiple val_dataloader."""
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tutils.reset_seed()
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class CurrentTestModel(
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LightTrainDataloader,
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LightValidationMultipleDataloadersMixin,
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TestModelBase,
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):
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pass
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hparams = tutils.get_default_hparams()
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model = CurrentTestModel(hparams)
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# logger file to get meta
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trainer_options = dict(
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default_save_path=tmpdir,
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max_epochs=1,
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val_percent_check=0.1,
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train_percent_check=1.0,
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)
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# fit model
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trainer = Trainer(**trainer_options)
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result = trainer.fit(model)
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# verify training completed
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assert result == 1
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# verify there are 2 val loaders
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assert len(trainer.val_dataloaders) == 2, \
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'Multiple val_dataloaders not initiated properly'
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# make sure predictions are good for each val set
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for dataloader in trainer.val_dataloaders:
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tutils.run_prediction(dataloader, trainer.model)
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def test_multiple_test_dataloader(tmpdir):
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"""Verify multiple test_dataloader."""
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tutils.reset_seed()
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class CurrentTestModel(
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LightTrainDataloader,
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LightTestMultipleDataloadersMixin,
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LightEmptyTestStep,
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TestModelBase,
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):
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pass
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hparams = tutils.get_default_hparams()
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model = CurrentTestModel(hparams)
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# logger file to get meta
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trainer_options = dict(
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default_save_path=tmpdir,
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max_epochs=1,
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val_percent_check=0.1,
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train_percent_check=0.2
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)
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# fit model
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trainer = Trainer(**trainer_options)
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trainer.fit(model)
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trainer.test()
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# verify there are 2 val loaders
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assert len(trainer.test_dataloaders) == 2, \
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'Multiple test_dataloaders not initiated properly'
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# make sure predictions are good for each test set
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for dataloader in trainer.test_dataloaders:
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tutils.run_prediction(dataloader, trainer.model)
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# run the test method
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trainer.test()
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def test_train_dataloaders_passed_to_fit(tmpdir):
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"""Verify that train dataloader can be passed to fit """
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tutils.reset_seed()
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class CurrentTestModel(LightTrainDataloader, TestModelBase):
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pass
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hparams = tutils.get_default_hparams()
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# logger file to get meta
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trainer_options = dict(
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default_save_path=tmpdir,
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max_epochs=1,
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val_percent_check=0.1,
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train_percent_check=0.2
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)
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# only train passed to fit
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model = CurrentTestModel(hparams)
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trainer = Trainer(**trainer_options)
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fit_options = dict(train_dataloader=model._dataloader(train=True))
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result = trainer.fit(model, **fit_options)
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assert result == 1
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def test_train_val_dataloaders_passed_to_fit(tmpdir):
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""" Verify that train & val dataloader can be passed to fit """
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tutils.reset_seed()
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class CurrentTestModel(
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LightTrainDataloader,
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LightValStepFitSingleDataloaderMixin,
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TestModelBase,
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):
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pass
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hparams = tutils.get_default_hparams()
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# logger file to get meta
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trainer_options = dict(
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default_save_path=tmpdir,
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max_epochs=1,
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val_percent_check=0.1,
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train_percent_check=0.2
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)
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# train, val passed to fit
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model = CurrentTestModel(hparams)
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trainer = Trainer(**trainer_options)
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fit_options = dict(train_dataloader=model._dataloader(train=True),
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val_dataloaders=model._dataloader(train=False))
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result = trainer.fit(model, **fit_options)
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assert result == 1
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assert len(trainer.val_dataloaders) == 1, \
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f'`val_dataloaders` not initiated properly, got {trainer.val_dataloaders}'
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def test_all_dataloaders_passed_to_fit(tmpdir):
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"""Verify train, val & test dataloader can be passed to fit """
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tutils.reset_seed()
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class CurrentTestModel(
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LightTrainDataloader,
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LightValStepFitSingleDataloaderMixin,
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LightTestFitSingleTestDataloadersMixin,
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LightEmptyTestStep,
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TestModelBase,
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):
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pass
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hparams = tutils.get_default_hparams()
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# logger file to get meta
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trainer_options = dict(
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default_save_path=tmpdir,
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max_epochs=1,
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val_percent_check=0.1,
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train_percent_check=0.2
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)
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# train, val and test passed to fit
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model = CurrentTestModel(hparams)
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trainer = Trainer(**trainer_options)
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fit_options = dict(train_dataloader=model._dataloader(train=True),
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val_dataloaders=model._dataloader(train=False),
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test_dataloaders=model._dataloader(train=False))
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result = trainer.fit(model, **fit_options)
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trainer.test()
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assert result == 1
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assert len(trainer.val_dataloaders) == 1, \
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f'val_dataloaders` not initiated properly, got {trainer.val_dataloaders}'
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assert len(trainer.test_dataloaders) == 1, \
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f'test_dataloaders` not initiated properly, got {trainer.test_dataloaders}'
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def test_multiple_dataloaders_passed_to_fit(tmpdir):
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"""Verify that multiple val & test dataloaders can be passed to fit."""
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tutils.reset_seed()
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class CurrentTestModel(
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LightningTestModel,
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LightValStepFitMultipleDataloadersMixin,
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LightTestFitMultipleTestDataloadersMixin,
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):
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pass
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hparams = tutils.get_default_hparams()
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# logger file to get meta
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trainer_options = dict(
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default_save_path=tmpdir,
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max_epochs=1,
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val_percent_check=0.1,
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train_percent_check=0.2
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)
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# train, multiple val and multiple test passed to fit
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model = CurrentTestModel(hparams)
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trainer = Trainer(**trainer_options)
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fit_options = dict(train_dataloader=model._dataloader(train=True),
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val_dataloaders=[model._dataloader(train=False),
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model._dataloader(train=False)],
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test_dataloaders=[model._dataloader(train=False),
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model._dataloader(train=False)])
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results = trainer.fit(model, **fit_options)
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trainer.test()
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assert len(trainer.val_dataloaders) == 2, \
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f'Multiple `val_dataloaders` not initiated properly, got {trainer.val_dataloaders}'
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assert len(trainer.test_dataloaders) == 2, \
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f'Multiple `test_dataloaders` not initiated properly, got {trainer.test_dataloaders}'
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def test_mixing_of_dataloader_options(tmpdir):
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"""Verify that dataloaders can be passed to fit"""
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tutils.reset_seed()
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class CurrentTestModel(
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LightTrainDataloader,
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LightValStepFitSingleDataloaderMixin,
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LightTestFitSingleTestDataloadersMixin,
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TestModelBase,
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):
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pass
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hparams = tutils.get_default_hparams()
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model = CurrentTestModel(hparams)
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# logger file to get meta
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trainer_options = dict(
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default_save_path=tmpdir,
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max_epochs=1,
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val_percent_check=0.1,
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train_percent_check=0.2
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)
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# fit model
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trainer = Trainer(**trainer_options)
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fit_options = dict(val_dataloaders=model._dataloader(train=False))
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results = trainer.fit(model, **fit_options)
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# fit model
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trainer = Trainer(**trainer_options)
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fit_options = dict(val_dataloaders=model._dataloader(train=False),
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test_dataloaders=model._dataloader(train=False))
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_ = trainer.fit(model, **fit_options)
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trainer.test()
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assert len(trainer.val_dataloaders) == 1, \
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f'`val_dataloaders` not initiated properly, got {trainer.val_dataloaders}'
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assert len(trainer.test_dataloaders) == 1, \
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f'`test_dataloaders` not initiated properly, got {trainer.test_dataloaders}'
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def test_inf_train_dataloader(tmpdir):
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"""Test inf train data loader (e.g. IterableDataset)"""
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tutils.reset_seed()
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class CurrentTestModel(
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LightInfTrainDataloader,
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LightningTestModel
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):
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pass
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hparams = tutils.get_default_hparams()
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model = CurrentTestModel(hparams)
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# fit model
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with pytest.raises(MisconfigurationException):
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trainer = Trainer(
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default_save_path=tmpdir,
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max_epochs=1,
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val_check_interval=0.5
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)
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trainer.fit(model)
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trainer = Trainer(
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default_save_path=tmpdir,
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max_epochs=1,
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val_check_interval=50
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)
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result = trainer.fit(model)
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# verify training completed
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assert result == 1
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trainer = Trainer(
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default_save_path=tmpdir,
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max_epochs=1
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)
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result = trainer.fit(model)
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# verify training completed
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assert result == 1
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def test_inf_val_dataloader(tmpdir):
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"""Test inf val data loader (e.g. IterableDataset)"""
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tutils.reset_seed()
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class CurrentTestModel(
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LightInfValDataloader,
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LightningTestModel
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):
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pass
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hparams = tutils.get_default_hparams()
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model = CurrentTestModel(hparams)
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# fit model
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with pytest.raises(MisconfigurationException):
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trainer = Trainer(
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default_save_path=tmpdir,
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max_epochs=1,
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val_percent_check=0.5
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)
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trainer.fit(model)
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# logger file to get meta
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trainer = Trainer(
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default_save_path=tmpdir,
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max_epochs=1
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)
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result = trainer.fit(model)
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# verify training completed
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assert result == 1
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def test_inf_test_dataloader(tmpdir):
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"""Test inf test data loader (e.g. IterableDataset)"""
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tutils.reset_seed()
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class CurrentTestModel(
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LightInfTestDataloader,
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LightningTestModel,
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LightTestFitSingleTestDataloadersMixin
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):
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pass
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hparams = tutils.get_default_hparams()
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model = CurrentTestModel(hparams)
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# fit model
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with pytest.raises(MisconfigurationException):
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trainer = Trainer(
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default_save_path=tmpdir,
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max_epochs=1,
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test_percent_check=0.5
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)
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trainer.test(model)
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# logger file to get meta
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trainer = Trainer(
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default_save_path=tmpdir,
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max_epochs=1
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)
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result = trainer.fit(model)
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trainer.test(model)
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# verify training completed
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assert result == 1
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