Published February 12, 2025 | Version v1
Conference paper Open

Flow-level Tail Latency Estimation and Verification based on Extreme Value Theory

  • 1. ROR icon Technical University of Munich

Description

Modeling extreme latencies in communication net-works can contribute information to network planning and flow admission under service level agreements. Extreme Value Theory is such an approach that utilizes real-world measurement data. It is often applied without verifying the resulting model predictions on larger datasets. Here we show that such models can provide accurate predictions over larger datasets while being applied to 100 random network topologies and configurations. We found that applying derived models with a bounded tail to a twentyfold time period results in a prediction accuracy of 75% for extreme latency exceedances. Furthermore, we show that tail latency quantiles can be predicted on a flow level with median absolute percentage errors ranging from 0.7% to 16.8%. Therefore, we consider this approach to be useful for dimensioning networks under latency-constrained service level agreements.

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Additional details

Funding

European Commission
SLICES - SC - Scientific Large-scale Infrastructure for Computing/Communication Experimental Studies – Starting Community 101008468

Dates

Accepted
2022-12-02
Preprint

Software