Author_Institution :
Dept. of Comput. Sci., Purdue Univ., West Lafayette, IN, USA
Abstract :
We design and implement an efficient on-line approach, FlowMate, for clustering flows (connections) emanating from a busy server, according to shared bottlenecks. Clusters can be periodically input to load balancing, congestion coordination, aggregation, admission control, or pricing modules. FlowMate uses in-band (passive) end-to-end delay measurements to infer shared bottlenecks. Delay information is piggybacked on feedback from the receivers, or, if impossible, TCP or application round-trip time estimates are used. We simulate FlowMate and examine the effects of network load, traffic burstiness, network buffer sizes, and packet drop policies on clustering correctness, evaluated via a novel accuracy metric. We find that coordinated congestion management techniques are more fair when integrated with FlowMate. We also implement FlowMate in the Linux kernel v2.4.17 and evaluate its performance on the Emulab testbed, using both synthetic and tcplib-generated traffic. Our results demonstrate that clustering of medium to long-lived flows is accurate, even with bursty background traffic. Finally, we validate our results on the Internet Planetlab testbed.
Keywords :
Linux; operating system kernels; telecommunication computing; telecommunication congestion control; telecommunication network management; telecommunication network topology; telecommunication traffic; transport protocols; Flowmate; admission control; application round-trip time estimation; congestion coordination; congestion management technique; end-to-end delay; load balancing; network monitoring; network tomography; network traffic; packet drop policy; scalable on-line flow clustering; shared bottleneck inference; Admission control; Communication system traffic control; Delay effects; Delay estimation; Extraterrestrial measurements; Feedback; Load management; Pricing; Testing; Traffic control; Coordinated congestion management; TCP; load balancing; network monitoring; network tomography; shared bottleneck inference;