Towards a Cost vs. Quality Sweet Spot for Monitoring Networks

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Abstract

Continuously monitoring a wide variety of performance and fault metrics has become a crucial part of operating large-scale datacenter networks. In this work, we ask whether we can reduce the costs to monitor - in terms of collection, storage and analysis - by judiciously controlling how much and which measurements we collect. By positing that we can treat almost all measured signals as sampled time-series, we show that we can use signal processing techniques such as the Nyquist-Shannon theorem to avoid wasteful data collection. We show that large savings appear possible by analyzing tens of popular measurement systems from a production datacenter network. We also discuss some challenges that must be solved when applying these techniques in practice.

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CITATION STYLE

APA

Yaseen, N., Arzani, B., Chintalapudi, K., Ranganathan, V., Frujeri, F., Hsieh, K., … Kandula, S. (2021). Towards a Cost vs. Quality Sweet Spot for Monitoring Networks. In HotNets 2021 - Proceedings of the 20th ACM Workshop on Hot Topics in Networks (pp. 38–44). Association for Computing Machinery, Inc. https://doi.org/10.1145/3484266.3487390

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