Training

Baselines and Strategies Code Examples

Avalanche offers significant support for training (with templates, strategies and plug-ins). Here you can find a list of examples related to the training and some strategies available in Avalanche (each strategy reproduces original paper results in the CL-Baselines repository:

  • Joint-Training: this example shows how to take a stream of experiences and train simultaneously on all of them. This is useful to implement the "offline" or "multi-task" upper bound.

  • Replay strategy: simple example on the usage of replay in Avalanche.

  • AR1 strategy: this is a simple example on how to use the AR1 strategy.

  • CoPE Strategy: this is a simple example on how to use the CoPE plugin. It's an example in the online data incremental setting, where both learning and evaluation is completely task-agnostic.

  • Cumulative Strategy: how to define your own cumulative strategy based on the different Data Loaders made available in Avalanche.

  • Deep SLDA: this is a simple example on how to use the Deep SLDA strategy.

  • Early Stopping: this example shows how to use early stopping to dynamically stop the training procedure when the model converged instead of training for a fixed number of epochs.

  • Object Detection: this example shows how to run object detection/segmentation tasks.

  • Object Detection with Elvis: this example shows how to run object detection/segmentation tasks with a toy benchmark based on the LVIS dataset.

  • Object Detection Training: set of examples showing how you can use Avalanche for distributed training of object detector.

  • EWC on MNIST: this example tests EWC on Split MNIST and Permuted MNIST.

  • LWF on MNIST: this example tests LWF on Permuted MNIST.

  • GEM and A-GEM on MNIST: this example shows how to use GEM and A-GEM strategies on MNIST.

  • Ex-Model Continual Learning: this example shows how to create a stream of pre-trained model from which to learn.

  • Generative Replay: this is a simple example on how to implement generative replay in Avalanche.

  • iCARL strategy: simple example to show how to use the iCARL strategy.

  • LaMAML strategy: example on how to use a meta continual learning in Avalanche.

  • RWalk strategy: example of the RWalk strategy usage.

  • Online Naive: example to run a naive strategy in an online setting.

  • Synaptic Intelligence: this is a simple example on how to use the Synaptic Intelligence Plugin.

  • Continual Sequence Classification: sequence classification example using torchaudio and Speech Commands.