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.
CITATION STYLE
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
Mendeley helps you to discover research relevant for your work.