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New Directions in
Traffic Measurement and Accounting. Cristian
Estan and George Varghese (UCSD) Accurate network traffic measurement is required for
accounting, bandwidth provisioning and detecting DoS attacks. These applications see the traffic as a
collection of flows they need to measure. As link speeds and the number of
flows increase, keeping a counter for each flow is too expensive (using SRAM)
or slow (using DRAM). The current state-of-the-art methods (Cisco's sampled
NetFlow) which count periodically sampled packets are slow, inaccurate and resource-intensive. Previous work showed that at different granularities
a small number of ``heavy hitters'' accounts for a large share of
traffic. Our paper introduces a
paradigm shift for measurement by concentrating only on large flows --- those
above some threshold such as 0.1% of the link capacity. We propose two novel and scalable algorithms for
identifying the large flows: sample and
hold and multistage filters,
which take a constant number of memory references per packet and use a small
amount of memory. If M is the
available memory, we show analytically that the errors of our new algorithms
are proportional to 1/M; by contrast, the error of an algorithm based on classical
sampling is proportional to 1/sqrt(M) thus providing much less accuracy for
the same amount of memory. We also
describe further optimizations such as early
removal and conservative update that further improve the
accuracy of our algorithms, as measured on real traffic traces, by an order
of magnitude. Our schemes allow a new
form of accounting called threshold
accounting in which only flows above a threshold are charged by usage
while the rest are charged a fixed fee. Threshold accounting generalizes
usage-based and duration based pricing. Papers are provided as
a service to all by the members of ACM SIGCOMM. This
paper is available in Adobe PDF format. |