Workshop: International Workshop on Scalability, Privacy, and Security in Federated Learning (SpicyFL 2020)
Xiaolin Andy Li, Dejing Dou, Ameet Talwalkar, Hongyu Li, Jianzong Wang, Yanzhi Wang
Sat, Dec 12th @ 13:20 GMT – Sun, Dec 13th @ 00:10 GMT
Abstract: In the recent decade, we have witnessed rapid progress in machine learning in general and deep learning in particular, mostly driven by tremendous data. As these intelligent algorithms, systems, and applications are deployed in real-world scenarios, we are now facing new challenges, such as scalability, security, privacy, trust, cost, regulation, and environmental and societal impacts. In the meantime, data privacy and ownership has become more and more critical in many domains, such as finance, health, government, and social networks. Federated learning (FL) has emerged to address data privacy issues. To make FL practically scalable, useful, efficient, and effective on security and privacy mechanisms and policies, it calls for joint efforts from the community, academia, and industry. More challenges, interplays, and tradeoffs in scalability, privacy, and security need to be investigated in a more holistic and comprehensive manner by the community. We are expecting broader, deeper, and greater evolution of these concepts and technologies, and confluence towards holistic trustworthy AI ecosystems.
This workshop provides an open forum for researchers, practitioners, and system builders to exchange ideas, discuss, and shape roadmaps towards scalable and privacy-preserving federated learning in particular, and scalable and trustworthy AI ecosystems in general.
This workshop provides an open forum for researchers, practitioners, and system builders to exchange ideas, discuss, and shape roadmaps towards scalable and privacy-preserving federated learning in particular, and scalable and trustworthy AI ecosystems in general.
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Schedule
13:20 – 13:30 GMT
Opening Remarks
Xiaolin Andy Li
13:30 – 14:00 GMT
Keynote Talk 1: Dawn Song
14:00 – 14:15 GMT
A Better Alternative to Error Feedback for Communication-Efficient Distributed Learning, Samuel Horváth and Peter Richtárik
14:15 – 14:30 GMT
Backdoor Attacks on Federated Meta-Learning, Chien-Lun Chen, Leana Golubchik and Marco Paolieri
14:30 – 14:45 GMT
FedBE: Making Bayesian Model Ensemble Applicable to Federated Learning, Hong-You Chen and Wei-Lun Chao
14:45 – 15:00 GMT
Preventing Backdoors in Federated Learningby Adjusting Server-side Learning Rate, Mustafa Ozdayi, Murat Kantarcioglu and Yulia Gel
15:00 – 15:30 GMT
Keynote Talk 2: H. Brendan McMahan
15:30 – 15:50 GMT
Lightning Talk Session 1: 10 papers, 2m each
15:50 – 16:20 GMT
Keynote Talk 3: Ruslan Salakhutdinov
16:20 – 16:35 GMT
FedML: A Research Library and Benchmark for Federated Machine Learning, Chaoyang He, et. al.
16:35 – 16:50 GMT
Learning to Attack Distributionally Robust Federated Learning, Wen Shen, Henger Li and Zizhan Zheng
16:50 – 17:20 GMT
Keynote Talk 4: Virginia Smith
17:20 – 17:30 GMT
Lightning Talk Session 2: 5 papers, 2m each
17:30 – 18:30 GMT
Poster Session 1
18:30 – 19:00 GMT
Keynote Talk 5: John C. Duchi
19:00 – 19:15 GMT
On Biased Compression for Distributed Learning, Aleksandr Beznosikov, Samuel Horváth, Mher Safaryan and Peter Richtarik
19:15 – 19:30 GMT
PAC Identifiability in Federated Personalization, Ben London
19:30 – 19:45 GMT
Model Pruning Enables Efficient Federated Learning on Edge Devices, Yuang Jiang, Shiqiang Wang, Victor Valls, Bong Jun Ko, Wei-Han Lee, Kin Leung and Leandros Tassiulas
19:45 – 20:00 GMT
Hybrid FL: Algorithms and Implementation, Xinwei Zhang, Tianyi Chen, Mingyi Hong and Wotao Yin
20:00 – 20:30 GMT
Break
20:30 – 21:00 GMT
Keynote Talk 6: Tao Yang
21:00 – 21:20 GMT
Lightning Talk Session 3: 10 papers, 2m each
21:20 – 21:50 GMT
Keynote Talk 7: Tong Zhang
21:50 – 22:00 GMT
Lightning Talk Session 4: 5 papers, 2m each
22:00 – 23:00 GMT
Panel Discussion
Sat, Dec 12th @ 23:00 GMT – Sun, Dec 13th @ 00:00 GMT
Poster Session 2 (Papers presented in the afternoon)
00:00 – 00:10 GMT
Closing Remarks
Xiaolin Andy Li