Loop
This page will cover the two LoopCallback
subclasses and how to configure the training/validation loop of the Trainer
by using one of them.
Prerequisites
Make sure to have read through Trainer Overview and Trainer Configuration Overview which provide the basic overview of how to run Model Zoo models. In this document, you will be using the tools and configurations outlined in those pages.
Configure the Loop
The loop
argument allows you to manage the training and/or validation loop. The Trainer
takes in a LoopCallback
subclass that is used to configure loop options such as number of steps/epochs to run for and how often to run validation. A LoopCallback
cannot be instantiated directly, TrainingLoop
or ValidationLoop
must be used instead.
Configure for training
The TrainingLoop
callback is used to configure the Trainer
to run a fit
task. The majority of loop arguments reference step
. The step
is simply a batch of training/validation data.
Arguments
-
num_steps
: The total number of steps to train for. -
max_steps
: The maximum number of global steps to train for.num_steps
supersedes this. -
num_epochs
: The number of epochs to train for. Mutually exclusive withnum_steps
. -
steps_per_epoch
: The number of steps to train for in each epoch. -
eval_frequency
: The frequency at which validation is performed. SeeLoopCallback
for more details on options. -
eval_steps
: The number of validation steps to perform. -
grad_accum_steps
: The number of steps to accumulate gradients before performing and optimizer step. Only relevant for"CPU"
and"GPU"
runs.
If you plan on running any kind of training (calling fit
), you must use a TrainingLoop
. If you plan on running only validation, you may use a ValidationLoop
.
In the example below, we configure the Trainer
to run for 1000 steps and run validation for 50 steps every 100 training steps.
Configure for Validation
The ValidationLoop
callback is used to configure the Trainer
to run a validate
or validate_all
task.
Arguments
-
eval_steps
: The number of validation steps to perform. -
hook
: The base name of the validation hooks to run. Used to extend validation functionality by implementing custom validation callbacks. SeeEleutherEvalHarnessLoop
for an example. Defaults to"validate"
.
ValidationLoop
can only be used if you plan on running only validation tasks (calling validate
or validate_all
). Otherwise, use TrainingLoop
.
In the example below, we configure the Trainer
to run validation for 100 steps. We do not need to set any training related options such as num_steps
or eval_frequency
since we are only running validation.
TrainingLoop
supports both training and validation because it instantiates a ValidationLoop
on initalization.
Everytime validation runs, we are restarting the validation dataloaders from scratch. This is not the same for training where we resume training from the where we left off in the training dataloader.
Conclusion
That covers how to configure the Trainer
for training and/or validation. You should now understand how to use a LoopCallback
subclass to configure training loop parameters such as number of steps and validation frequency.
Further Reading
To learn more about how you can use the Trainer
in some core workflows, you can check out:
To learn more about how you can extend the capabilities of the Trainer
class, you can check out: