Synergizing Foundation Models and Federated Learning: A Survey (2406.12844v1)
Abstract: The recent development of Foundation Models (FMs), represented by LLMs, vision transformers, and multimodal models, has been making a significant impact on both academia and industry. Compared with small-scale models, FMs have a much stronger demand for high-volume data during the pre-training phase. Although general FMs can be pre-trained on data collected from open sources such as the Internet, domain-specific FMs need proprietary data, posing a practical challenge regarding the amount of data available due to privacy concerns. Federated Learning (FL) is a collaborative learning paradigm that breaks the barrier of data availability from different participants. Therefore, it provides a promising solution to customize and adapt FMs to a wide range of domain-specific tasks using distributed datasets whilst preserving privacy. This survey paper discusses the potentials and challenges of synergizing FL and FMs and summarizes core techniques, future directions, and applications. A periodically updated paper collection on FM-FL is available at https://github.com/lishenghui/awesome-fm-fl.
- Shenghui Li (8 papers)
- Fanghua Ye (30 papers)
- Meng Fang (100 papers)
- Jiaxu Zhao (6 papers)
- Yun-Hin Chan (5 papers)
- Edith C. -H. Ngai (9 papers)
- Thiemo Voigt (19 papers)