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FL-AsiaCCS 2025 : International Workshop on Secure and Efficient Federated Learning In Conjunction with ACM AsiaCCS 2025 | |||||||||||||||
Link: https://federated-learning.org/fl-asiaccs-2025/ | |||||||||||||||
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Call For Papers | |||||||||||||||
[Call for Papers]
Since its inception in 2016, Federated Learning (FL) has become a popular framework for collaboratively training machine learning models across multiple devices, while ensuring that user data remains on the devices to enhance privacy. With the exponential growth of data and the increasing diversity of data types, coupled with the limited availability of computational resources, improving the efficiency of training processes in FL is even more urgent than before. This challenge is further amplified by the rise in popularity of training and fine-tuning large-scale models, such as Large Language Models (LLMs), which demand significant computational power. In addition, as FL is now being deployed in more complex and heterogeneous environments, it is more pressing to strengthen security and ensure data privacy in FL to maintain user trust. This workshop aims to bring together academics and industry experts to discuss the future directions of federated learning research, along with practical setups and promising extensions of baseline approaches, with a special focus on how to enhance both the training efficiency and the security in FL. By dealing with these critical issues, we aim to pave the way for more sustainable and secure FL implementations that can effectively handle the requirements of modern AI applications. The Workshop on Secure and Efficient Federated Learning aims to provide a platform for discussing the key promises of federated learning and how they can be addressed simultaneously. Given the growing concern over data leakage in modern distributed systems and the requirement of training large-scaled models with limited resources, the security and efficiency of federated learning is the central focus of this workshop. Topics of interest include, but are not limited to: -Coded Federated Learning -Communication Efficiency in Federated Learning -Federated Learning in Heterogeneous Networks -Federated Learning of Large Language Models -Privacy-Preserving Techniques for Federated Learning -Scalable and Robust Federated Learning -Security Attacks and Defenses in Federated Learning -Trusted Execution Environments for Federated Learning -Verifiable Federated Learning [Submission Instructions] We invite submissions of original research papers, case studies, and position papers related to the workshop's themes. Submissions should follow the latest ACM Sigconf style conference format (https://www.acm.org/publications/proceedings-template) and will undergo a double-blind review process. All submissions should be anonymized appropriately. Author names and affiliations should not appear in the paper. The authors should avoid obvious self-references and should appropriately blind them if used. The list of authors cannot be changed (but the order can be) after the submission is made unless approved by the Program Chairs. Submissions must not substantially overlap with papers that are published or simultaneously submitted to other venues (including journals or conferences/workshops). Double-submission will result in immediate rejection. We may report detected violations to other conference chairs and journal editors. Papers in double-blind ACM format of up to six pages, including all text, figures and references can be submitted via EDAS at https://edas.info/N33095. For questions, please contact: asiaccsfl@gmail.com [Workshop Chairs] -Huaxiong Wang (NTU) -Mikael Skoglund (KTH) -Stanislav Kruglik (NTU) [Organizing Committee Members] -Chengxi Li (KTH) -Rawad Bitar (TUM) -Han Yu (NTU) [Program Committee] -Antonia Wachter-Zeh (Technical University of Munich) -Christopher G. Brinton (Purdue University) -Deniz Gunduz (Imperial College, London) -Han Yu (Nanyang Technological University) -Harshan Jagadeesh (Indian Institute of Technology Delhi) -Heng Pan (Flower Labs) -Huaxiong Wang (Nanyang Technological University) -Jingge Zhu (University of Melbourne) -Liang Feng Zhang (ShanghaiTech University) -Li-Ping Wang (Institute of Information Engineering, Chinese Academy of Sciences) -Lun Wang (Google, USA) -Mikael Skoglund (KTH Royal Institute of Technology) -Ming Xiao (KTH Royal Institute of Technology) -Mingzhe Chen (University of Miami) -Pasin Manurangsi (Google Research, Thailand) -Ragnar Thobaben (KTH Royal Institute of Technology) -Salim El Rouayheb (Rutgers University) -Samuel Horvath (Mohamed bin Zayed University of Artificial Intelligence) -Son Hoang Dau (RMIT University) -Songze Li (Southeast University) -Willy Susilo (University of Wollongong) -Yan Gao (Flower Labs) |
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