Skip to content
/ CFAR Public

This repository is a workplace for the upcoming "Analysis of Catastrophic Forgetting and Adaptive Resonance Theory Algorithms" paper.

License

Notifications You must be signed in to change notification settings

AP6YC/CFAR

Repository files navigation

cfar-header

This repository is a workplace for the upcoming "Analysis of Catastrophic Forgetting and Adaptive Resonance Theory Algorithms" paper. Please see the documentation.

Documentation Docs Build Status DOI
Docs Docs Status DOI
Testing Status Coveralls Codecov
CI Status Coveralls Codecov

Table of Contents

Overview

TODO

Installation

mamba create -n cfar python=3.11
mamba activate cfar
pip install -e '.[dev]'

Usage

TODO

tar results:

tar -czvf knn.tar.gz knn/

Notes

TODO:

  1. Mover dataset
  2. TT 1-2, final perfs, n_cats,
  3. CVIs
  4. Vary vigilance
  5. Refactor data utils
  6. Dist driver refactor

Attribution

Authors

Images

This project uses the following images:

About

This repository is a workplace for the upcoming "Analysis of Catastrophic Forgetting and Adaptive Resonance Theory Algorithms" paper.

Resources

License

Stars

Watchers

Forks

Packages

 
 
 

Contributors