LibContinual: A Comprehensive Library towards Realistic Continual Learning
Wenbin Li, Shangge Liu, Borui Kang, Yiyang Chen, KaXuan Lew, Yang Chen, Yinghuan Shi, Lei Wang, Yang Gao, Jiebo Luo

TL;DR
LibContinual is a unified, modular library that standardizes continual learning evaluation, revealing performance gaps of existing methods under realistic constraints and promoting resource-aware strategies.
Contribution
It introduces LibContinual, a comprehensive library integrating 19 algorithms, and systematically analyzes common evaluation assumptions in continual learning.
Findings
Many CL methods perform poorly under realistic constraints.
Standardized framework enables fair comparison of algorithms.
Resource-aware strategies are crucial for real-world CL applications.
Abstract
A fundamental challenge in Continual Learning (CL) is catastrophic forgetting, where adapting to new tasks degrades the performance on previous ones. While the field has evolved with diverse methods, this rapid surge in diverse methodologies has culminated in a fragmented research landscape. The lack of a unified framework, including inconsistent implementations, conflicting dependencies, and varying evaluation protocols, makes fair comparison and reproducible research increasingly difficult. To address this challenge, we propose LibContinual, a comprehensive and reproducible library designed to serve as a foundational platform for realistic CL. Built upon a high-cohesion, low-coupling modular architecture, LibContinual integrates 19 representative algorithms across five major methodological categories, providing a standardized execution environment. Meanwhile, leveraging this unified…
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Taxonomy
TopicsDomain Adaptation and Few-Shot Learning · Advanced Neural Network Applications · Memory Processes and Influences
