105 lines
4.7 KiB
Python
105 lines
4.7 KiB
Python
# Copyright The PyTorch Lightning team.
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#
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# Licensed under the Apache License, Version 2.0 (the "License");
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# you may not use this file except in compliance with the License.
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# You may obtain a copy of the License at
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#
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# http://www.apache.org/licenses/LICENSE-2.0
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#
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# Unless required by applicable law or agreed to in writing, software
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# distributed under the License is distributed on an "AS IS" BASIS,
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# WITHOUT WARRANTIES OR CONDITIONS OF ANY KIND, either express or implied.
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# See the License for the specific language governing permissions and
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# limitations under the License.
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from pytorch_lightning.core.lightning import LightningModule
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from pytorch_lightning.utilities import rank_zero_warn
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from pytorch_lightning.utilities.exceptions import MisconfigurationException
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from pytorch_lightning.utilities.model_helpers import is_overridden
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class ConfigValidator(object):
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def __init__(self, trainer):
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self.trainer = trainer
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def verify_loop_configurations(self, model: LightningModule):
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r"""
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Checks that the model is configured correctly before training or testing is started.
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Args:
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model: The model to check the configuration.
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"""
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if not self.trainer.testing:
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self.__verify_train_loop_configuration(model)
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self.__verify_eval_loop_configuration(model, 'validation')
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else:
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# check test loop configuration
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self.__verify_eval_loop_configuration(model, 'test')
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def __verify_train_loop_configuration(self, model):
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# -----------------------------------
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# verify model has a training step
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# -----------------------------------
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has_training_step = is_overridden('training_step', model)
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if not has_training_step:
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raise MisconfigurationException(
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'No `training_step()` method defined. Lightning `Trainer` expects as minimum a'
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' `training_step()`, `train_dataloader()` and `configure_optimizers()` to be defined.'
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)
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# -----------------------------------
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# verify model has a train dataloader
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# -----------------------------------
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has_train_dataloader = is_overridden('train_dataloader', model)
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if not has_train_dataloader:
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raise MisconfigurationException(
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'No `train_dataloader()` method defined. Lightning `Trainer` expects as minimum a'
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' `training_step()`, `train_dataloader()` and `configure_optimizers()` to be defined.'
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)
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# -----------------------------------
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# verify model has optimizer
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# -----------------------------------
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has_optimizers = is_overridden('configure_optimizers', model)
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if not has_optimizers:
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raise MisconfigurationException(
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'No `configure_optimizers()` method defined. Lightning `Trainer` expects as minimum a'
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' `training_step()`, `train_dataloader()` and `configure_optimizers()` to be defined.'
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)
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trainer = self.trainer
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trainer.overriden_optimizer_step = is_overridden('optimizer_step', model)
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trainer.overriden_optimizer_zero_grad = is_overridden('optimizer_zero_grad', model)
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automatic_optimization = trainer.train_loop.automatic_optimization
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going_to_accumulate_grad_batches = trainer.accumulation_scheduler.going_to_accumulate_grad_batches()
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has_overriden_optimization_functions = trainer.overriden_optimizer_step or trainer.overriden_optimizer_zero_grad
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if (has_overriden_optimization_functions) and going_to_accumulate_grad_batches and automatic_optimization:
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raise MisconfigurationException(
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'When overriding `LightningModule` optimizer_step or optimizer_zero_grad,'
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' `accumulate_grad_batches` in `Trainer` should be 1.'
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' It ensures optimizer_step or optimizer_zero_grad are called on every batch.'
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)
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def __verify_eval_loop_configuration(self, model, eval_loop_name):
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step_name = f'{eval_loop_name}_step'
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# map the dataloader name
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loader_name = f'{eval_loop_name}_dataloader'
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if eval_loop_name == 'validation':
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loader_name = 'val_dataloader'
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has_loader = is_overridden(loader_name, model)
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has_step = is_overridden(step_name, model)
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if has_loader and not has_step:
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rank_zero_warn(
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f'you passed in a {loader_name} but have no {step_name}. Skipping {eval_loop_name} loop'
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)
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if has_step and not has_loader:
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rank_zero_warn(
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f'you defined a {step_name} but have no {loader_name}. Skipping {eval_loop_name} loop'
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)
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