Saved in:
Bibliographic Details
Main Authors: Ren, Chao, Yu, Han, Peng, Hongyi, Tang, Xiaoli, Zhao, Bo, Yi, Liping, Tan, Alysa Ziying, Gao, Yulan, Li, Anran, Li, Xiaoxiao, Li, Zengxiang, Yang, Qiang
Format: Preprint
Published: 2024
Subjects:
Online Access:https://arxiv.org/abs/2404.15381
Tags: Add Tag
No Tags, Be the first to tag this record!
_version_ 1866916385610792960
author Ren, Chao
Yu, Han
Peng, Hongyi
Tang, Xiaoli
Zhao, Bo
Yi, Liping
Tan, Alysa Ziying
Gao, Yulan
Li, Anran
Li, Xiaoxiao
Li, Zengxiang
Yang, Qiang
author_facet Ren, Chao
Yu, Han
Peng, Hongyi
Tang, Xiaoli
Zhao, Bo
Yi, Liping
Tan, Alysa Ziying
Gao, Yulan
Li, Anran
Li, Xiaoxiao
Li, Zengxiang
Yang, Qiang
contents The integration of Foundation Models (FMs) with Federated Learning (FL) presents a transformative paradigm in Artificial Intelligence (AI). This integration offers enhanced capabilities, while addressing concerns of privacy, data decentralization and computational efficiency. This paper provides a comprehensive survey of the emerging field of Federated Foundation Models (FedFM), elucidating their synergistic relationship and exploring novel methodologies, challenges, and future directions that the FL research field needs to focus on in order to thrive in the age of FMs. A systematic multi-tiered taxonomy is proposed, categorizing existing FedFM approaches for model training, aggregation, trustworthiness, and incentivization. Key challenges, including how to enable FL to deal with high complexity of computational demands, privacy considerations, contribution evaluation, and communication efficiency, are thoroughly discussed. Moreover, this paper explores the intricate challenges of communication, scalability and security inherent in training/fine-tuning FMs via FL. It highlights the potential of quantum computing to revolutionize the processes of training, inference, optimization and security. This survey also introduces the implementation requirement of FedFM and some practical FedFM applications. It highlights lessons learned with a clear understanding of our findings for FedFM. Finally, this survey not only provides insights into the current state and challenges of FedFM, but also offers a blueprint for future research directions, emphasizing the need for developing trustworthy solutions. It serves as a foundational guide for researchers and practitioners interested in contributing to this interdisciplinary and rapidly advancing field.
format Preprint
id arxiv_https___arxiv_org_abs_2404_15381
institution arXiv
publishDate 2024
record_format arxiv
spellingShingle Advances and Open Challenges in Federated Foundation Models
Ren, Chao
Yu, Han
Peng, Hongyi
Tang, Xiaoli
Zhao, Bo
Yi, Liping
Tan, Alysa Ziying
Gao, Yulan
Li, Anran
Li, Xiaoxiao
Li, Zengxiang
Yang, Qiang
Machine Learning
Artificial Intelligence
The integration of Foundation Models (FMs) with Federated Learning (FL) presents a transformative paradigm in Artificial Intelligence (AI). This integration offers enhanced capabilities, while addressing concerns of privacy, data decentralization and computational efficiency. This paper provides a comprehensive survey of the emerging field of Federated Foundation Models (FedFM), elucidating their synergistic relationship and exploring novel methodologies, challenges, and future directions that the FL research field needs to focus on in order to thrive in the age of FMs. A systematic multi-tiered taxonomy is proposed, categorizing existing FedFM approaches for model training, aggregation, trustworthiness, and incentivization. Key challenges, including how to enable FL to deal with high complexity of computational demands, privacy considerations, contribution evaluation, and communication efficiency, are thoroughly discussed. Moreover, this paper explores the intricate challenges of communication, scalability and security inherent in training/fine-tuning FMs via FL. It highlights the potential of quantum computing to revolutionize the processes of training, inference, optimization and security. This survey also introduces the implementation requirement of FedFM and some practical FedFM applications. It highlights lessons learned with a clear understanding of our findings for FedFM. Finally, this survey not only provides insights into the current state and challenges of FedFM, but also offers a blueprint for future research directions, emphasizing the need for developing trustworthy solutions. It serves as a foundational guide for researchers and practitioners interested in contributing to this interdisciplinary and rapidly advancing field.
title Advances and Open Challenges in Federated Foundation Models
topic Machine Learning
Artificial Intelligence
url https://arxiv.org/abs/2404.15381