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from __future__ import annotations |
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import warnings |
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from collections.abc import Callable, Iterable, Sequence |
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from typing import TYPE_CHECKING, Any |
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import torch |
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import torch.distributed as dist |
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from torch.utils.data import DataLoader |
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from torch.utils.data.distributed import DistributedSampler |
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from monai.config import IgniteInfo |
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from monai.engines.utils import IterationEvents, default_metric_cmp_fn, default_prepare_batch |
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from monai.transforms import Decollated |
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from monai.utils import ensure_tuple, is_scalar, min_version, optional_import |
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from .utils import engine_apply_transform |
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State, _ = optional_import("ignite.engine", IgniteInfo.OPT_IMPORT_VERSION, min_version, "State") |
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Events, _ = optional_import("ignite.engine", IgniteInfo.OPT_IMPORT_VERSION, min_version, "Events") |
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if TYPE_CHECKING: |
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from ignite.engine import Engine, EventEnum |
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from ignite.metrics import Metric |
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else: |
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Engine, _ = optional_import( |
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"ignite.engine", IgniteInfo.OPT_IMPORT_VERSION, min_version, "Engine", as_type="decorator" |
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) |
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Metric, _ = optional_import( |
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"ignite.metrics", IgniteInfo.OPT_IMPORT_VERSION, min_version, "Metric", as_type="decorator" |
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) |
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EventEnum, _ = optional_import( |
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"ignite.engine", IgniteInfo.OPT_IMPORT_VERSION, min_version, "EventEnum", as_type="decorator" |
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) |
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class Workflow(Engine): |
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""" |
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Workflow defines the core work process inheriting from Ignite engine. |
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All trainer, validator and evaluator share this same workflow as base class, |
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because they all can be treated as same Ignite engine loops. |
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It initializes all the sharable data in Ignite engine.state. |
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And attach additional processing logics to Ignite engine based on Event-Handler mechanism. |
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Users should consider inheriting from `trainer` or `evaluator` to develop more trainers or evaluators. |
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Args: |
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device: an object representing the device on which to run. |
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max_epochs: the total epoch number for engine to run, validator and evaluator have only 1 epoch. |
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data_loader: Ignite engine use data_loader to run, must be Iterable or torch.DataLoader. |
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epoch_length: number of iterations for one epoch, default to `len(data_loader)`. |
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non_blocking: if True and this copy is between CPU and GPU, the copy may occur asynchronously |
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with respect to the host. For other cases, this argument has no effect. |
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prepare_batch: function to parse expected data (usually `image`, `label` and other network args) |
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from `engine.state.batch` for every iteration, for more details please refer to: |
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https://pytorch.org/ignite/generated/ignite.engine.create_supervised_trainer.html. |
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iteration_update: the callable function for every iteration, expect to accept `engine` |
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and `engine.state.batch` as inputs, return data will be stored in `engine.state.output`. |
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if not provided, use `self._iteration()` instead. for more details please refer to: |
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https://pytorch.org/ignite/generated/ignite.engine.engine.Engine.html. |
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postprocessing: execute additional transformation for the model output data. |
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Typically, several Tensor based transforms composed by `Compose`. |
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key_metric: compute metric when every iteration completed, and save average value to |
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engine.state.metrics when epoch completed. key_metric is the main metric to compare and save the |
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checkpoint into files. |
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additional_metrics: more Ignite metrics that also attach to Ignite Engine. |
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metric_cmp_fn: function to compare current key metric with previous best key metric value, |
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it must accept 2 args (current_metric, previous_best) and return a bool result: if `True`, will update |
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`best_metric` and `best_metric_epoch` with current metric and epoch, default to `greater than`. |
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handlers: every handler is a set of Ignite Event-Handlers, must have `attach` function, like: |
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CheckpointHandler, StatsHandler, etc. |
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amp: whether to enable auto-mixed-precision training or inference, default is False. |
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event_names: additional custom ignite events that will register to the engine. |
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new events can be a list of str or `ignite.engine.events.EventEnum`. |
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event_to_attr: a dictionary to map an event to a state attribute, then add to `engine.state`. |
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for more details, check: https://pytorch.org/ignite/generated/ignite.engine.engine.Engine.html |
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#ignite.engine.engine.Engine.register_events. |
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decollate: whether to decollate the batch-first data to a list of data after model computation, |
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recommend `decollate=True` when `postprocessing` uses components from `monai.transforms`. |
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default to `True`. |
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to_kwargs: dict of other args for `prepare_batch` API when converting the input data, except for |
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`device`, `non_blocking`. |
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amp_kwargs: dict of the args for `torch.cuda.amp.autocast()` API, for more details: |
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https://pytorch.org/docs/stable/amp.html#torch.cuda.amp.autocast. |
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Raises: |
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TypeError: When ``data_loader`` is not a ``torch.utils.data.DataLoader``. |
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TypeError: When ``key_metric`` is not a ``Optional[dict]``. |
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TypeError: When ``additional_metrics`` is not a ``Optional[dict]``. |
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""" |
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def __init__( |
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self, |
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device: torch.device | str, |
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max_epochs: int, |
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data_loader: Iterable | DataLoader, |
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epoch_length: int | None = None, |
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non_blocking: bool = False, |
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prepare_batch: Callable = default_prepare_batch, |
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iteration_update: Callable[[Engine, Any], Any] | None = None, |
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postprocessing: Callable | None = None, |
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key_metric: dict[str, Metric] | None = None, |
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additional_metrics: dict[str, Metric] | None = None, |
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metric_cmp_fn: Callable = default_metric_cmp_fn, |
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handlers: Sequence | None = None, |
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amp: bool = False, |
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event_names: list[str | EventEnum | type[EventEnum]] | None = None, |
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event_to_attr: dict | None = None, |
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decollate: bool = True, |
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to_kwargs: dict | None = None, |
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amp_kwargs: dict | None = None, |
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) -> None: |
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if iteration_update is not None: |
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super().__init__(iteration_update) |
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else: |
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super().__init__(self._iteration) |
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if isinstance(data_loader, DataLoader): |
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sampler = data_loader.__dict__["sampler"] |
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if isinstance(sampler, DistributedSampler): |
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@self.on(Events.EPOCH_STARTED) |
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def set_sampler_epoch(engine: Engine) -> None: |
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sampler.set_epoch(engine.state.epoch) |
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if epoch_length is None: |
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epoch_length = len(data_loader) |
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else: |
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if epoch_length is None: |
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raise ValueError("If data_loader is not PyTorch DataLoader, must specify the epoch_length.") |
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self.state: Any = State( |
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rank=dist.get_rank() if dist.is_available() and dist.is_initialized() else 0, |
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seed=0, |
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iteration=0, |
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epoch=0, |
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max_epochs=max_epochs, |
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epoch_length=epoch_length, |
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output=None, |
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batch=None, |
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metrics={}, |
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metric_details={}, |
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dataloader=None, |
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device=device if isinstance(device, torch.device) or device is None else torch.device(device), |
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key_metric_name=None, |
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best_metric=-1, |
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best_metric_epoch=-1, |
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) |
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self.data_loader = data_loader |
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self.non_blocking = non_blocking |
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self.prepare_batch = prepare_batch |
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self.metric_cmp_fn = metric_cmp_fn |
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self.amp = amp |
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self.to_kwargs = {} if to_kwargs is None else to_kwargs |
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self.amp_kwargs = {} if amp_kwargs is None else amp_kwargs |
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self.scaler: torch.cuda.amp.GradScaler | None = None |
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if event_names is None: |
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event_names = [IterationEvents] |
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else: |
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if not isinstance(event_names, list): |
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raise ValueError("`event_names` must be a list of strings or EventEnums.") |
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event_names += [IterationEvents] |
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for name in event_names: |
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if isinstance(name, (str, EventEnum)): |
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self.register_events(name, event_to_attr=event_to_attr) |
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elif issubclass(name, EventEnum): |
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self.register_events(*name, event_to_attr=event_to_attr) |
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else: |
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raise ValueError("`event_names` must be a list of strings or EventEnums.") |
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if decollate: |
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self._register_decollate() |
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if postprocessing is not None: |
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self._register_postprocessing(postprocessing) |
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if key_metric is not None: |
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self._register_metrics(key_metric, additional_metrics) |
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if handlers is not None: |
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self._register_handlers(handlers) |
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def _register_decollate(self): |
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""" |
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Register the decollate operation for batch data, will execute after model forward and loss forward. |
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""" |
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@self.on(IterationEvents.MODEL_COMPLETED) |
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def _decollate_data(engine: Engine) -> None: |
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transform = Decollated(keys=None, detach=True) |
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if isinstance(engine.state.batch, (list, dict)): |
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engine.state.batch = transform(engine.state.batch) |
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if isinstance(engine.state.output, (list, dict)): |
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engine.state.output = transform(engine.state.output) |
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def _register_postprocessing(self, posttrans: Callable) -> None: |
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""" |
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Register the postprocessing logic to the engine, will execute them as a chain when iteration completed. |
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""" |
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@self.on(IterationEvents.MODEL_COMPLETED) |
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def _run_postprocessing(engine: Engine) -> None: |
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if not isinstance(engine.state.batch, list) or not isinstance(engine.state.output, list): |
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engine.state.batch, engine.state.output = engine_apply_transform( |
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batch=engine.state.batch, output=engine.state.output, transform=posttrans |
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) |
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else: |
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for i, (b, o) in enumerate(zip(engine.state.batch, engine.state.output)): |
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engine.state.batch[i], engine.state.output[i] = engine_apply_transform(b, o, posttrans) |
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def _register_metrics(self, k_metric: dict, add_metrics: dict | None = None) -> None: |
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""" |
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Register the key metric and additional metrics to the engine, supports ignite Metrics. |
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""" |
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if not isinstance(k_metric, dict): |
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raise TypeError(f"`key_metric` must be None or a dict but is {type(k_metric).__name__}.") |
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self.state.key_metric_name = list(k_metric.keys())[0] |
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metrics = dict(k_metric) |
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if add_metrics is not None and len(add_metrics) > 0: |
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if not isinstance(add_metrics, dict): |
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raise TypeError(f"Additional metrics must be None or a dict but is {type(add_metrics).__name__}.") |
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metrics.update(add_metrics) |
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for name, metric in metrics.items(): |
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metric.attach(self, name) |
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@self.on(Events.EPOCH_COMPLETED) |
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def _compare_metrics(engine: Workflow) -> None: |
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key_metric_name = engine.state.key_metric_name |
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if key_metric_name is not None: |
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current_val_metric = engine.state.metrics[key_metric_name] |
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if not is_scalar(current_val_metric): |
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warnings.warn( |
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"Key metric is not a scalar value, skip the metric comparison with the current best metric." |
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"Please set other metrics as the key metric, or change the `reduction` mode to 'mean'." |
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) |
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return |
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if engine.state.best_metric_epoch == -1 or self.metric_cmp_fn( |
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current_val_metric, engine.state.best_metric |
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): |
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self.logger.info(f"Got new best metric of {key_metric_name}: {current_val_metric}") |
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engine.state.best_metric = current_val_metric |
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engine.state.best_metric_epoch = engine.state.epoch |
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def _register_handlers(self, handlers: Sequence) -> None: |
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""" |
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Register the handlers to the engine, supports ignite Handlers with `attach` API. |
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""" |
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handlers_ = ensure_tuple(handlers) |
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for handler in handlers_: |
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handler.attach(self) |
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def run(self) -> None: |
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""" |
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Execute training, validation or evaluation based on Ignite Engine. |
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""" |
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if self.state.epoch_length == 0: |
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warnings.warn( |
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"`dataloader` is empty or the specified `epoch_length` is 0, skip the `run`." |
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" If running distributed training, the program may hang in `all-gather`, `all-reduce`, etc." |
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" because not all the ranks run the same computation logic." |
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) |
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return |
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super().run(data=self.data_loader, max_epochs=self.state.max_epochs) |
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def _iteration(self, engine: Any, batchdata: dict[str, torch.Tensor]) -> dict: |
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""" |
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Abstract callback function for the processing logic of 1 iteration in Ignite Engine. |
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Need subclass to implement different logics, like SupervisedTrainer/Evaluator, GANTrainer, etc. |
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Args: |
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engine: Ignite Engine, it can be a trainer, validator or evaluator. |
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batchdata: input data for this iteration, usually can be dictionary or tuple of Tensor data. |
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Raises: |
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NotImplementedError: When the subclass does not override this method. |
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""" |
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raise NotImplementedError(f"Subclass {self.__class__.__name__} must implement this method.") |
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def get_stats(self, *vars): |
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""" |
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Get the statistics information of the workflow process. |
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Args: |
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vars: variables name in the `self.state`, will use the variable name as the key |
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and the state content as the value. if the variable doesn't exist, default value is `None`. |
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""" |
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return {k: getattr(self.state, k, None) for k in vars} |
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