avalanche.training.templates.BaseTemplate
- class avalanche.training.templates.BaseTemplate(model: Module, device='cpu', plugins: Optional[List[BasePlugin]] = None)[source]
Base class for continual learning skeletons.
Training loop The training loop is organized as follows:
train train_exp # for each experience
Evaluation loop The evaluation loop is organized as follows:
eval eval_exp # for each experience
- __init__(model: Module, device='cpu', plugins: Optional[List[BasePlugin]] = None)[source]
Init.
Methods
__init__
(model[, device, plugins])Init.
eval
(exp_list, **kwargs)Evaluate the current model on a series of experiences and returns the last recorded value for each metric.
train
(experiences[, eval_streams])Training loop.
Attributes
is_eval
True if the strategy is in evaluation mode.
model
PyTorch model.
device
PyTorch device where the model will be allocated.
plugins
List of `SupervisedPlugin`s. .
experience
Current experience.
is_training
True if the strategy is in training mode.
current_eval_stream
Current evaluation stream.