Efcientand Scalable Training of Graph Neural Networks at Scale
The Hong Kong University of Science and Technology (Guangzhou)
数据科学与分析学域
PhD Thesis Proposal Examination
By Mr ZHANG, Xin
Abstract
Graph Neural Networks are popular these days due to their strong capability in modeling and predicting complex graph-structured data. However, real-world graphs are usually giant in nature, containing millions of nodes and billions of edges. Efficient training of GNNs on such giant graphs is a challenge. Recently, many research studies have been done that propose improvements from different perspectives to address the challenge. However, we observe two significant gaps that hinder the efficient and scalable training of GNNs at scale. In this paper, we first provide a structured review of these existing works and categorize them based on their position in the GNN training stack, namely the graph sampling algorithm and the GNN training system. Then, we analyze the shortcomings of existing work and propose our solutions, namely (1) a scalable graph sampling algorithm called feature-oriented sampling and (2) an efficient GNN training system called DUCATI to address them. This paper also provides the future plan for the remainder of the final thesis.
TPE Committee
Chair of Committee: Prof. WANG, Wei
Prime Supervisor: Prof. CHEN, Lei
Co-Supervisor: Prof. LUO, Qiong
Examiner: Prof. LI, Jia
日期
30 June 2025
时间
14:00:00 - 16:00:00
地点
4475 (HKUST)
Join Link
Zoom Meeting ID: 965 3668 1416
Passcode: dsa2025