Endpoint-Flexible Coflow Scheduling Across Geo-Distributed Datacenters

Over the last decade, we have witnessed growing data volumes generated and stored across geographically distributed datacenters. Processing such geo-distributed datasets may suffer from significant slowdown as the underlying network flows have to go through the inter-datacenter networks with relativ...

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Veröffentlicht in:IEEE transactions on parallel and distributed systems 2020-10, Vol.31 (10), p.2466-2481
Hauptverfasser: Li, Wenxin, Yuan, Xu, Li, Keqiu, Qi, Heng, Zhou, Xiaobo, Xu, Renhai
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Sprache:eng
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Zusammenfassung:Over the last decade, we have witnessed growing data volumes generated and stored across geographically distributed datacenters. Processing such geo-distributed datasets may suffer from significant slowdown as the underlying network flows have to go through the inter-datacenter networks with relatively low and highly heterogeneous available link bandwidth. Thus, optimizing the transmissions of inter-datacenter flows, especially coflows that capture application-level semantics, is important for improving the communication performance of such geo-distributed applications. However, prior solutions on coflow scheduling have significant limitations: they schedule coflows with already-fixed endpoints of flows, making them insufficient to optimize the coflow completion time (CCT). In this article, we focus on the problem of jointly considering endpoint placement and coflow scheduling to minimize the average CCT of coflows across geo-distributed datacenters. To solve this problem without any prior knowledge of coflow arrivals, we present a coflow-aware optimization framework called SmartCoflow. In SmartCoflow, we first apply an approximate algorithm to obtain the endpoint placement and scheduling decisions for a single coflow. Based on the single-coflow solution, we then develop an efficient online algorithm to handle the dynamically arrived coflows. Through rigorous theoretical analysis, we prove that SmartCoflow has a non-trivial competitive ratio. We also extend SmartCoflow to incorporate various design choices or requirements of applications and operators, such as enforcing an inter-datacenter bandwidth usage budget and considering coflow deadline. Through experimental results from testbed implementation and trace-driven simulations, we demonstrate that SmartCoflow can reduce the average CCT, lower bandwidth usage, and improve coflow deadline meet rate, when compared to the state-of-the-art scheduling-only method.
ISSN:1045-9219
1558-2183
DOI:10.1109/TPDS.2020.2992615