Shortcuts

Source code for ignite.contrib.handlers.neptune_logger

import numbers
import tempfile
import warnings
from typing import Any, Callable, List, Mapping, Optional, Union

import torch
import torch.nn as nn
from torch.optim import Optimizer

import ignite
import ignite.distributed as idist
from ignite.contrib.handlers.base_logger import (
    BaseLogger,
    BaseOptimizerParamsHandler,
    BaseOutputHandler,
    BaseWeightsScalarHandler,
)
from ignite.engine import Engine, Events
from ignite.handlers import global_step_from_engine
from ignite.handlers.checkpoint import BaseSaveHandler

__all__ = [
    "NeptuneLogger",
    "NeptuneSaver",
    "OptimizerParamsHandler",
    "OutputHandler",
    "WeightsScalarHandler",
    "GradsScalarHandler",
    "global_step_from_engine",
]


[docs]class NeptuneLogger(BaseLogger): """ `Neptune <https://neptune.ai/>`_ handler to log metrics, model/optimizer parameters, gradients during the training and validation. It can also log model checkpoints to Neptune server. .. code-block:: bash pip install neptune-client Args: api_token (str | None): Required in online mode. Neputne API token, found on https://neptune.ai. Read how to get your API key https://docs.neptune.ai/python-api/tutorials/get-started.html#copy-api-token. project_name (str): Required in online mode. Qualified name of a project in a form of "namespace/project_name" for example "tom/minst-classification". If None, the value of NEPTUNE_PROJECT environment variable will be taken. You need to create the project in https://neptune.ai first. offline_mode (bool): Optional default False. If offline_mode=True no logs will be send to neptune. Usually used for debug purposes. experiment_name (str, optional): Optional. Editable name of the experiment. Name is displayed in the experiment’s Details (Metadata section) and in experiments view as a column. upload_source_files (list, optional): Optional. List of source files to be uploaded. Must be list of str or single str. Uploaded sources are displayed in the experiment’s Source code tab. If None is passed, Python file from which experiment was created will be uploaded. Pass empty list (`[]`) to upload no files. Unix style pathname pattern expansion is supported. For example, you can pass `*.py` to upload all python source files from the current directory. For recursion lookup use `**/*.py` (for Python 3.5 and later). For more information see glob library. params (dict, optional): Optional. Parameters of the experiment. After experiment creation params are read-only. Parameters are displayed in the experiment’s Parameters section and each key-value pair can be viewed in experiments view as a column. properties (dict, optional): Optional default is `{}`. Properties of the experiment. They are editable after experiment is created. Properties are displayed in the experiment’s Details and each key-value pair can be viewed in experiments view as a column. tags (list, optional): Optional default `[]`. Must be list of str. Tags of the experiment. Tags are displayed in the experiment’s Details and can be viewed in experiments view as a column. Examples: .. code-block:: python from ignite.contrib.handlers.neptune_logger import * # Create a logger # We are using the api_token for the anonymous user neptuner but you can use your own. npt_logger = NeptuneLogger( api_token="ANONYMOUS", project_name="shared/pytorch-ignite-integration", experiment_name="cnn-mnist", # Optional, params={"max_epochs": 10}, # Optional, tags=["pytorch-ignite","minst"] # Optional ) # Attach the logger to the trainer to log training loss at each iteration npt_logger.attach_output_handler( trainer, event_name=Events.ITERATION_COMPLETED, tag="training", output_transform=lambda loss: {'loss': loss} ) # Attach the logger to the evaluator on the training dataset and log NLL, Accuracy metrics after each epoch # We setup `global_step_transform=global_step_from_engine(trainer)` to take the epoch # of the `trainer` instead of `train_evaluator`. npt_logger.attach_output_handler( train_evaluator, event_name=Events.EPOCH_COMPLETED, tag="training", metric_names=["nll", "accuracy"], global_step_transform=global_step_from_engine(trainer), ) # Attach the logger to the evaluator on the validation dataset and log NLL, Accuracy metrics after # each epoch. We setup `global_step_transform=global_step_from_engine(trainer)` to take the epoch of the # `trainer` instead of `evaluator`. npt_logger.attach_output_handler( evaluator, event_name=Events.EPOCH_COMPLETED, tag="validation", metric_names=["nll", "accuracy"], global_step_transform=global_step_from_engine(trainer)), ) # Attach the logger to the trainer to log optimizer's parameters, e.g. learning rate at each iteration npt_logger.attach_opt_params_handler( trainer, event_name=Events.ITERATION_STARTED, optimizer=optimizer, param_name='lr' # optional ) # Attach the logger to the trainer to log model's weights norm after each iteration npt_logger.attach( trainer, event_name=Events.ITERATION_COMPLETED, log_handler=WeightsScalarHandler(model) ) Explore an experiment with neptune tracking here: https://ui.neptune.ai/o/shared/org/pytorch-ignite-integration/e/PYTOR1-18/charts You can save model checkpoints to a Neptune server: .. code-block:: python from ignite.handlers import Checkpoint def score_function(engine): return engine.state.metrics["accuracy"] to_save = {"model": model} handler = Checkpoint( to_save, NeptuneSaver(npt_logger), n_saved=2, filename_prefix="best", score_function=score_function, score_name="validation_accuracy", global_step_transform=global_step_from_engine(trainer) ) validation_evaluator.add_event_handler(Events.COMPLETED, handler) It is also possible to use the logger as context manager: .. code-block:: python from ignite.contrib.handlers.neptune_logger import * # We are using the api_token for the anonymous user neptuner but you can use your own. with NeptuneLogger(api_token="ANONYMOUS", project_name="shared/pytorch-ignite-integration", experiment_name="cnn-mnist", # Optional, params={"max_epochs": 10}, # Optional, tags=["pytorch-ignite","minst"] # Optional ) as npt_logger: trainer = Engine(update_fn) # Attach the logger to the trainer to log training loss at each iteration npt_logger.attach_output_handler( trainer, event_name=Events.ITERATION_COMPLETED, tag="training", output_transform=lambda loss: {"loss": loss} ) """ def __getattr__(self, attr: Any) -> Any: import neptune return getattr(neptune, attr) def __init__(self, *args: Any, **kwargs: Any) -> None: try: import neptune except ImportError: raise RuntimeError( "This contrib module requires neptune-client to be installed. " "You may install neptune with command: \n pip install neptune-client \n" ) if kwargs.get("offline_mode", False): self.mode = "offline" neptune.init(project_qualified_name="dry-run/project", backend=neptune.OfflineBackend()) else: self.mode = "online" neptune.init(api_token=kwargs.get("api_token"), project_qualified_name=kwargs.get("project_name")) kwargs["name"] = kwargs.pop("experiment_name", None) self._experiment_kwargs = { k: v for k, v in kwargs.items() if k not in ["api_token", "project_name", "offline_mode"] } self.experiment = neptune.create_experiment(**self._experiment_kwargs) def close(self) -> None: self.stop() def _create_output_handler(self, *args: Any, **kwargs: Any) -> "OutputHandler": return OutputHandler(*args, **kwargs) def _create_opt_params_handler(self, *args: Any, **kwargs: Any) -> "OptimizerParamsHandler": return OptimizerParamsHandler(*args, **kwargs)
[docs]class OutputHandler(BaseOutputHandler): """Helper handler to log engine's output and/or metrics Examples: .. code-block:: python from ignite.contrib.handlers.neptune_logger import * # Create a logger # We are using the api_token for the anonymous user neptuner but you can use your own. npt_logger = NeptuneLogger( api_token="ANONYMOUS", project_name="shared/pytorch-ignite-integration", experiment_name="cnn-mnist", # Optional, params={"max_epochs": 10}, # Optional, tags=["pytorch-ignite","minst"] # Optional ) # Attach the logger to the evaluator on the validation dataset and log NLL, Accuracy metrics after # each epoch. We setup `global_step_transform=global_step_from_engine(trainer)` to take the epoch # of the `trainer`: npt_logger.attach( evaluator, log_handler=OutputHandler( tag="validation", metric_names=["nll", "accuracy"], global_step_transform=global_step_from_engine(trainer) ), event_name=Events.EPOCH_COMPLETED ) # or equivalently npt_logger.attach_output_handler( evaluator, event_name=Events.EPOCH_COMPLETED, tag="validation", metric_names=["nll", "accuracy"], global_step_transform=global_step_from_engine(trainer) ) Another example, where model is evaluated every 500 iterations: .. code-block:: python from ignite.contrib.handlers.neptune_logger import * @trainer.on(Events.ITERATION_COMPLETED(every=500)) def evaluate(engine): evaluator.run(validation_set, max_epochs=1) # We are using the api_token for the anonymous user neptuner but you can use your own. npt_logger = NeptuneLogger( api_token="ANONYMOUS", project_name="shared/pytorch-ignite-integration", experiment_name="cnn-mnist", # Optional, params={"max_epochs": 10}, # Optional, tags=["pytorch-ignite", "minst"] # Optional ) def global_step_transform(*args, **kwargs): return trainer.state.iteration # Attach the logger to the evaluator on the validation dataset and log NLL, Accuracy metrics after # every 500 iterations. Since evaluator engine does not have access to the training iteration, we # provide a global_step_transform to return the trainer.state.iteration for the global_step, each time # evaluator metrics are plotted on NeptuneML. npt_logger.attach_output_handler( evaluator, event_name=Events.EPOCH_COMPLETED, tag="validation", metrics=["nll", "accuracy"], global_step_transform=global_step_transform ) Args: tag (str): common title for all produced plots. For example, "training" metric_names (list of str, optional): list of metric names to plot or a string "all" to plot all available metrics. output_transform (callable, optional): output transform function to prepare `engine.state.output` as a number. For example, `output_transform = lambda output: output` This function can also return a dictionary, e.g `{"loss": loss1, "another_loss": loss2}` to label the plot with corresponding keys. global_step_transform (callable, optional): global step transform function to output a desired global step. Input of the function is `(engine, event_name)`. Output of function should be an integer. Default is None, global_step based on attached engine. If provided, uses function output as global_step. To setup global step from another engine, please use :meth:`~ignite.contrib.handlers.neptune_logger.global_step_from_engine`. Note: Example of `global_step_transform`: .. code-block:: python def global_step_transform(engine, event_name): return engine.state.get_event_attrib_value(event_name) """ def __init__( self, tag: str, metric_names: Optional[Union[str, List[str]]] = None, output_transform: Optional[Callable] = None, global_step_transform: Optional[Callable] = None, ) -> None: super(OutputHandler, self).__init__(tag, metric_names, output_transform, global_step_transform) def __call__(self, engine: Engine, logger: NeptuneLogger, event_name: Union[str, Events]) -> None: if not isinstance(logger, NeptuneLogger): raise TypeError("Handler OutputHandler works only with NeptuneLogger") metrics = self._setup_output_metrics(engine) global_step = self.global_step_transform(engine, event_name) # type: ignore[misc] if not isinstance(global_step, int): raise TypeError( f"global_step must be int, got {type(global_step)}." " Please check the output of global_step_transform." ) for key, value in metrics.items(): if isinstance(value, numbers.Number) or isinstance(value, torch.Tensor) and value.ndimension() == 0: logger.log_metric(f"{self.tag}/{key}", x=global_step, y=value) elif isinstance(value, torch.Tensor) and value.ndimension() == 1: for i, v in enumerate(value): logger.log_metric(f"{self.tag}/{key}/{i}", x=global_step, y=v.item()) else: warnings.warn(f"NeptuneLogger output_handler can not log metrics value type {type(value)}")
[docs]class OptimizerParamsHandler(BaseOptimizerParamsHandler): """Helper handler to log optimizer parameters Examples: .. code-block:: python from ignite.contrib.handlers.neptune_logger import * # Create a logger # We are using the api_token for the anonymous user neptuner but you can use your own. npt_logger = NeptuneLogger( api_token="ANONYMOUS", project_name="shared/pytorch-ignite-integration", experiment_name="cnn-mnist", # Optional, params={"max_epochs": 10}, # Optional, tags=["pytorch-ignite","minst"] # Optional ) # Attach the logger to the trainer to log optimizer's parameters, e.g. learning rate at each iteration npt_logger.attach( trainer, log_handler=OptimizerParamsHandler(optimizer), event_name=Events.ITERATION_STARTED ) # or equivalently npt_logger.attach_opt_params_handler( trainer, event_name=Events.ITERATION_STARTED, optimizer=optimizer ) Args: optimizer (torch.optim.Optimizer or object): torch optimizer or any object with attribute ``param_groups`` as a sequence. param_name (str): parameter name tag (str, optional): common title for all produced plots. For example, "generator" """ def __init__(self, optimizer: Optimizer, param_name: str = "lr", tag: Optional[str] = None) -> None: super(OptimizerParamsHandler, self).__init__(optimizer, param_name, tag) def __call__(self, engine: Engine, logger: NeptuneLogger, event_name: Union[str, Events]) -> None: if not isinstance(logger, NeptuneLogger): raise TypeError("Handler OptimizerParamsHandler works only with NeptuneLogger") global_step = engine.state.get_event_attrib_value(event_name) tag_prefix = f"{self.tag}/" if self.tag else "" params = { f"{tag_prefix}{self.param_name}/group_{i}": float(param_group[self.param_name]) for i, param_group in enumerate(self.optimizer.param_groups) } for k, v in params.items(): logger.log_metric(k, x=global_step, y=v)
[docs]class WeightsScalarHandler(BaseWeightsScalarHandler): """Helper handler to log model's weights as scalars. Handler iterates over named parameters of the model, applies reduction function to each parameter produce a scalar and then logs the scalar. Examples: .. code-block:: python from ignite.contrib.handlers.neptune_logger import * # Create a logger # We are using the api_token for the anonymous user neptuner but you can use your own. npt_logger = NeptuneLogger( api_token="ANONYMOUS", project_name="shared/pytorch-ignite-integration", experiment_name="cnn-mnist", # Optional, params={"max_epochs": 10}, # Optional, tags=["pytorch-ignite","minst"] # Optional ) # Attach the logger to the trainer to log model's weights norm after each iteration npt_logger.attach( trainer, event_name=Events.ITERATION_COMPLETED, log_handler=WeightsScalarHandler(model, reduction=torch.norm) ) Args: model (torch.nn.Module): model to log weights reduction (callable): function to reduce parameters into scalar tag (str, optional): common title for all produced plots. For example, "generator" """ def __init__(self, model: nn.Module, reduction: Callable = torch.norm, tag: Optional[str] = None) -> None: super(WeightsScalarHandler, self).__init__(model, reduction, tag=tag) def __call__(self, engine: Engine, logger: NeptuneLogger, event_name: Union[str, Events]) -> None: if not isinstance(logger, NeptuneLogger): raise TypeError("Handler WeightsScalarHandler works only with NeptuneLogger") global_step = engine.state.get_event_attrib_value(event_name) tag_prefix = f"{self.tag}/" if self.tag else "" for name, p in self.model.named_parameters(): if p.grad is None: continue name = name.replace(".", "/") logger.log_metric( f"{tag_prefix}weights_{self.reduction.__name__}/{name}", x=global_step, y=self.reduction(p.data), )
[docs]class GradsScalarHandler(BaseWeightsScalarHandler): """Helper handler to log model's gradients as scalars. Handler iterates over the gradients of named parameters of the model, applies reduction function to each parameter produce a scalar and then logs the scalar. Examples: .. code-block:: python from ignite.contrib.handlers.neptune_logger import * # Create a logger # We are using the api_token for the anonymous user neptuner but you can use your own. npt_logger = NeptuneLogger( api_token="ANONYMOUS", project_name="shared/pytorch-ignite-integration", experiment_name="cnn-mnist", # Optional, params={"max_epochs": 10}, # Optional, tags=["pytorch-ignite","minst"] # Optional ) # Attach the logger to the trainer to log model's weights norm after each iteration npt_logger.attach( trainer, event_name=Events.ITERATION_COMPLETED, log_handler=GradsScalarHandler(model, reduction=torch.norm) ) Args: model (torch.nn.Module): model to log weights reduction (callable): function to reduce parameters into scalar tag (str, optional): common title for all produced plots. For example, "generator" """ def __init__(self, model: nn.Module, reduction: Callable = torch.norm, tag: Optional[str] = None) -> None: super(GradsScalarHandler, self).__init__(model, reduction, tag=tag) def __call__(self, engine: Engine, logger: NeptuneLogger, event_name: Union[str, Events]) -> None: if not isinstance(logger, NeptuneLogger): raise TypeError("Handler GradsScalarHandler works only with NeptuneLogger") global_step = engine.state.get_event_attrib_value(event_name) tag_prefix = f"{self.tag}/" if self.tag else "" for name, p in self.model.named_parameters(): if p.grad is None: continue name = name.replace(".", "/") logger.log_metric( f"{tag_prefix}grads_{self.reduction.__name__}/{name}", x=global_step, y=self.reduction(p.grad), )
[docs]class NeptuneSaver(BaseSaveHandler): """Handler that saves input checkpoint to the Neptune server. Args: neptune_logger (ignite.contrib.handlers.neptune_logger.NeptuneLogger): an instance of NeptuneLogger class. Examples: .. code-block:: python from ignite.contrib.handlers.neptune_logger import * # Create a logger # We are using the api_token for the anonymous user neptuner but you can use your own. npt_logger = NeptuneLogger( api_token="ANONYMOUS", project_name="shared/pytorch-ignite-integration", experiment_name="cnn-mnist", # Optional, params={"max_epochs": 10}, # Optional, tags=["pytorch-ignite","minst"] # Optional ) ... evaluator = create_supervised_evaluator(model, metrics=metrics, ...) ... from ignite.handlers import Checkpoint def score_function(engine): return engine.state.metrics["accuracy"] to_save = {"model": model} # pass neptune logger to NeptuneServer handler = Checkpoint( to_save, NeptuneSaver(npt_logger), n_saved=2, filename_prefix="best", score_function=score_function, score_name="validation_accuracy", global_step_transform=global_step_from_engine(trainer) ) evaluator.add_event_handler(Events.COMPLETED, handler) # We need to close the logger when we are done npt_logger.close() For example, you can access model checkpoints and download them from here: https://ui.neptune.ai/o/shared/org/pytorch-ignite-integration/e/PYTOR1-18/charts """ @idist.one_rank_only() def __init__(self, neptune_logger: NeptuneLogger): self._logger = neptune_logger @idist.one_rank_only() def __call__(self, checkpoint: Mapping, filename: str, metadata: Optional[Mapping] = None) -> None: # wont work on XLA with tempfile.NamedTemporaryFile() as tmp: # we can not use tmp.name to open tmp.file twice on Win32 # https://docs.python.org/3/library/tempfile.html#tempfile.NamedTemporaryFile torch.save(checkpoint, tmp.file) # type: ignore[attr-defined] self._logger.log_artifact(tmp.name, filename)
[docs] @idist.one_rank_only(with_barrier=True) def remove(self, filename: str) -> None: self._logger.delete_artifacts(filename)

© Copyright 2024, PyTorch-Ignite Contributors. Last updated on 03/28/2024, 1:19:06 PM.

Built with Sphinx using a theme provided by Read the Docs.