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Engine

Backend

optimization_objective(self, config, trainer_config, gpu=0.0)

Defines lightning_objective function which is used by tuner to minimize/maximize the metric.

Parameters:

Name Type Description Default
config dict

key value pair of hyperparameters.

required
trainer_config dict

configurations passed directly to Lightning Trainer.

required
gpu Optional[float]

GPU per trial

0.0

BackendType (Enum)

An enumeration.


AutoModel (BaseAutoModel, ABC)

Base model that defines hyperparameter search methods and initializes Ray. All other autotasks are implementation of AutoModel.

Parameters:

Name Type Description Default
datamodule flash.DataModule

DataModule from Flash or PyTorch Lightning

None
max_epochs [int]

Maximum number of epochs for which model will train

10
max_steps Optional[int]

Maximum number of steps for each epoch. Defaults None.

None
optimization_metric str

Value on which hyperparameter search will run.

None
n_trials int

Number of trials for HPO

20
suggested_conf Dict

Any extra suggested configuration

None
timeout int

HPO will stop after timeout

600
prune bool

Whether to stop unpromising training.

True
backend_type Optional[str]

Training backend_type - PL / torch / fastai. Default is PL

required

hp_tune(self, name=None, ray_config=None, trainer_config=None, mode=None, gpu=0, cpu=None, resume=False)

Search Hyperparameter and builds model with the best params

    automodel = AutoClassifier(data)  # implements `AutoModel`
    automodel.hp_tune(name="gflow-example", gpu=1)

Parameters:

Name Type Description Default
name Optional[str]

name of the experiment.

None
ray_config dict

configuration passed to ray.tune.run(...)

None
trainer_config dict

configuration passed to pl.trainer.fit(...)

None
mode Optional[str]

Whether to maximize or minimize the optimization_metric.

None
gpu Optional[float]

Amount of GPU resource per trial.

0
cpu float

CPU cores per trial

None
resume bool

Whether to resume the training or not.

False

AutoClassifier (AutoModel)

Implements AutoModel for classification autotasks.

build_model(self, config)

Every Task implementing AutoClassifier has to implement a build model method that can build torch.nn.Module from dictionary config and return the model.


Last update: December 7, 2021