Colloquium - Efficient and Secure Message Passing for Machine Learning

Colloquium - Efficient and Secure Message Passing for Machine Learning promotional image

Speaker

Xiaorui Liu

Abstract

Message passing is the essential building block in many machine learning problems such as decentralized learning and graph neural networks. In this talk, I will introduce several innovative designs of message passing schemes that address the efficiency and security issues in machine learning. Specifically, first I will present a novel decentralized algorithm with compressed message passing that enables large-scale, efficient, and scalable distributed machine learning on big data. Then I will show how to significantly improve the security and robustness of graph neural networks by exploiting the structural information in data with a novel message passing design.

Bio

Xiaorui Liu is a Ph.D. candidate in the Department of Computer Science and Engineering at Michigan State University. His advisor is Prof. Jiliang Tang. His research interests include distributed and trustworthy machine learning, with a focus on big data and graph data. He was awarded the Best Paper Honorable Mention Award at ICHI 2019, MSU Engineering Distinguished Fellowship, and Cloud Computing Fellowship. He organized and co-presented four tutorials in KDD 2021, IJCAI 2021, and ICAPS 2021, and he has published innovative works in top-tier conferences such as NeurIPS, ICML, ICLR, KDD, and AISTATS. More information can be found on his homepage.

Talk url | Passcode: 766398 [Video-off please during talk]

Thursday, March 10, 2022 11:30am to 12:30pm
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Individuals with disabilities are encouraged to attend all University of Iowa–sponsored events. If you are a person with a disability who requires a reasonable accommodation in order to participate in this program, please contact Computer Science Dept. in advance at 3193350713 or matthieu-biger@uiowa.edu.