Characterizing TCP's Performance for Low-Priority Flows Inside a Cloud
CoRR(2024)
摘要
Many cloud systems utilize low-priority flows to achieve various performance
objectives (e.g., low latency, high utilization), relying on TCP as their
preferred transport protocol. However, the suitability of TCP for such
low-priority flows is relatively unexplored. Specifically, how
prioritization-induced delays in packet transmission can cause spurious
timeouts and low utilization. In this paper, we conduct an empirical study to
investigate the performance of TCP for low-priority flows under a wide range of
realistic scenarios: use-cases (with accompanying workloads) where the
performance of low-priority flows is crucial to the functioning of the overall
system as well as various network loads and other network parameters. Our
findings yield two key insights: 1) for several popular use-cases (e.g.,
network scheduling), TCP's performance for low-priority flows is within 2x of a
near-optimal scheme, 2) for emerging workloads that exhibit an on-off behavior
in the high priority queue (e.g., distributed ML model training), TCP's
performance for low-priority flows is poor. Finally, we discuss and conduct
preliminary evaluation to show that two simple strategies – weighted fair
queuing (WFQ) and cross-queue congestion notification – can substantially
improve TCP's performance for low-priority flows.
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