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ChameleMon: Shifting Measurement Attention as Network State Changes

Authors :
Yang, Kaicheng
Wu, Yuhan
Miao, Ruijie
Yang, Tong
Liu, Zirui
Xu, Zicang
Qiu, Rui
Zhao, Yikai
Lv, Hanglong
Ji, Zhigang
Xie, Gaogang
Source :
ACM SIGCOMM (2023) 881-903
Publication Year :
2023

Abstract

Flow-level network measurement is critical to many network applications. Among various measurement tasks, packet loss detection and heavy-hitter detection are two most important measurement tasks, which we call the two key tasks. In practice, the two key tasks are often required at the same time, but existing works seldom handle both tasks. In this paper, we design ChameleMon to support the two key tasks simultaneously. One key design/novelty of ChameleMon is to shift measurement attention as network state changes, through two dimensions of dynamics: 1) dynamically allocating memory between the two key tasks; 2) dynamically monitoring the flows of importance. To realize the key design, we propose a key technique, leveraging Fermat's little theorem to devise a flexible data structure, namely FermatSketch. FermatSketch is dividable, additive, and subtractive, supporting the two key tasks. We have fully implemented a ChameleMon prototype on a testbed with a Fat-tree topology. We conduct extensive experiments and the results show ChameleMon supports the two key tasks with low memory/bandwidth overhead, and more importantly, it can automatically shift measurement attention as network state changes.<br />Comment: This is a preprint of ChameleMon: Shifting Measurement Attention as Network State Changes, to appear in SIGCOMM 2023

Details

Database :
arXiv
Journal :
ACM SIGCOMM (2023) 881-903
Publication Type :
Report
Accession number :
edsarx.2301.00615
Document Type :
Working Paper
Full Text :
https://doi.org/10.1145/3603269.3604850