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Notices of the AMS, September 1998. Internet traffic Standard Poisson models don’t capture long-range correlations. Poisson Measured “bursty” on all time.

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Presentation on theme: "Notices of the AMS, September 1998. Internet traffic Standard Poisson models don’t capture long-range correlations. Poisson Measured “bursty” on all time."— Presentation transcript:

1 Notices of the AMS, September 1998

2 Internet traffic Standard Poisson models don’t capture long-range correlations. Poisson Measured “bursty” on all time scales

3 Internet traffic Fractional Gaussian (fractal) noise models measurements well. Hurst parameter H is an aggregate measure of long-range correlations. Fractal Measured “bursty” on all time scales

4 The “physics” of the Internet “Physicists use chaos to calm the web,” (Physics World, 2001) www.networkphysics.com Large literature in physics journals and recently in Science, Nature, etc…

5 Links The SOC (Self-Organized Criticality) view

6 Links Flow capacity Average Queue “phase transition”

7 Lattice without congestion control (?!?) “Critical” phase transition at max capacity At criticality: self-similar fluctuations, long tailed queues and latencies, 1/f time series, etc Flow capacity Average Queue

8 Alternative “edge of chaos” models Self-similarity due to chaos and independent of higher-layer characteristics

9 Why SOC/EOC/… models fail No “critical” traffic rate Self-similar scaling at all different rates TCP can be unstable and perhaps chaotic, but does not generate self-similar scaling Self-similar scaling occurs in all forms of traffic (TCP and nonTCP) Measured traffic is not consistent with these models Fractal and scale-free topology models are equally specious (for different reasons)

10 A network based explanation Underlying cause: If connections arrive randomly (in time) and if their size (# packets) have high variability (i.e. are heavy-tailed with infinite variance) then the aggregate traffic is perforce self-similar Evidence –Coherent and mathematically rigorous framework –Alternative measurements (e.g. TCP connections, IP flows) –Alternative analysis (e.g. heavy-tailed property)

11 Typical web traffic log(file size)  > 1.0 log(freq > size) p  s -  Web servers Heavy tailed web traffic Is streamed out on the net. Creating fractal Gaussian internet traffic (Willinger,…)

12 Fat tail web traffic Is streamed onto the Internet creating long-range correlations with time

13 Heavy tails and divergent length scales are everywhere in networks. There is a large literature since 1994: Leland, Taqqu, Willinger, Wilson Paxson, Floyd Crovella, Bestavros Harchol-Balter,… Heavy tails in networks?

14 Typical web traffic log(file size)  > 1.0 log(freq > size) p  s -  Web servers Heavy tailed web traffic Is streamed out on the net. Piece of a consistent, rigorous theory with supporting measurements


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