Awesome-OL: An Extensible Toolkit for Online Learning

Liu, Zeyi, Hu, Songqiao, Han, Pengyu, Liu, Jiaming, He, Xiao

arXiv.org Artificial Intelligence 

In recent years, online learning has attracted increasing attention due to its adaptive capability to process streaming and non-stationary data. To facilitate algorithm development and practical deployment in this area, we introduce Awesome-OL, an extensible Python toolkit tailored for online learning research. Awesome-OL integrates state-of-the-art algorithm, which provides a unified framework for reproducible comparisons, curated benchmark datasets, and multi-modal visualization. Built upon the scikit-multiflow open-source infrastructure, Awesome-OL emphasizes user-friendly interactions without compromising research flexibility or extensibility.

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