Please Enter Keywords
资源 63
[Lecture] Practical Machine Learning for Networked Systems
Sep. 05, 2024

Speaker: Francis Y. Yan (Microsoft Research)

Time: 10:00 – 11:00 a.m., Sep 5, 2024, GMT+8

Venue: Lecture Hall 820, Yanyuan Building &
             Zoom Link:ID 818 8001 1875, Password 2ZsMWj

Abstract: 

The growing complexity and heterogeneity of networked systems have spurred a plethora of machine learning (ML) policies, each promising a tantalizing improvement in performance. However, their path to real-world adoption is fraught with obstacles due to concerns from system operators about ML's generalization, transparency, robustness, and efficiency.
My research takes a holistic approach to enabling practical ML for networked systems: 1) building open research platforms to lay the foundation for ML-based algorithms; 2) complementing ML with classical techniques (e.g., time-tested heuristics, control algorithms, or optimization methods) to enhance deployability; and 3) validating ML-based policies through extensive empirical evidence gathered from real users or production systems. In this talk, I will demonstrate this research approach using three studies: Puffer/Fugu learns to adapt video bitrate in situ on a live streaming service we developed (with over 360,000 users to date), Autothrottle learns to assist resource management for cloud microservices, and Teal learns to accelerate traffic engineering on wide-area networks. Finally, I will conclude by outlining my research agenda for further pushing the boundaries of practical ML in networked systems.

Source: School of Computer Sciences, PKU