FlyPrompt: Brain-Inspired Random-Expanded Routing with Temporal-Ensemble Experts for General Continual Learning
Paper
•
2602.01976
•
Published
This repository provides research checkpoints for FlyGCL, a lightweight framework for General Continual Learning (GCL) / online class-incremental learning in the Si-Blurry setting.
It is designed to be used together with the FlyGCL codebase:
https://github.com/AnAppleCore/FlyGCLhttps://www.arxiv.org/abs/2602.01976https://openreview.net/forum?id=8pi1rP71qvThis model repo may contain:
--backbone.g_prompt.pte_prompt.ptFor the exact filename mapping and where to place these files in FlyGCL, see the code repository README:
https://github.com/AnAppleCore/FlyGCL/blob/main/README.mdThese checkpoints are released for:
Not intended for:
LICENSE).If you use FlyGCL or these checkpoints in your research, please cite:
@inproceedings{flyprompt2026,
title={FlyPrompt: Brain-Inspired Random-Expanded Routing with Temporal-Ensemble Experts for General Continual Learning},
author={Yan, Hongwei and Sun, Guanglong and Zhou, Kanglei and Li, Qian and Wang, Liyuan and Zhong, Yi},
booktitle={ICLR},
year={2026}
}
Hongwei Yan (yanhw22@mails.tsinghua.edu.cn)