TY - GEN
T1 - Ultra-Fast Throughput Estimation based on Intelligent Network Sampling
AU - Buskila, Rivka
AU - Israel, Amit Waizman
AU - Dubin, Ran
N1 - Publisher Copyright:
© 2026 IEEE.
PY - 2026
Y1 - 2026
N2 - The exponential growth of network traffic in modern telecommunications has made the task of analyzing flow data for effective bandwidth estimation increasingly complex and resource-intensive. Accurate estimation of effective throughput is essential for a wide range of network management tasks, including dynamic traffic shaping, congestion control, quality optimization, and anomaly detection. However, traditional packet-based solutions, which rely on inspecting packets across the entire flow duration, demand substantial computational resources and memory, thereby reducing system performance and limiting scalability under high traffic volumes. This paper introduces an efficient sampling method based on linear regression and error reduction to accurately estimate effective throughput. Unlike general sampling methods such as random or systematic sampling, which do not account for actual network conditions or flow dynamics, our approach leverages real-time flow behavior to guide the sampling process. By focusing only on the most informative and impactful portions of each flow, the method significantly reduces the amount of data that needs to be processed while maintaining high estimation accuracy, allowing accurate throughput estimation using less than 15% of the available data, with an estimation error of no more than 10%. These advantages make the proposed method highly suitable for scalable and efficient deployment in diverse real-time network monitoring and traffic analysis environments.
AB - The exponential growth of network traffic in modern telecommunications has made the task of analyzing flow data for effective bandwidth estimation increasingly complex and resource-intensive. Accurate estimation of effective throughput is essential for a wide range of network management tasks, including dynamic traffic shaping, congestion control, quality optimization, and anomaly detection. However, traditional packet-based solutions, which rely on inspecting packets across the entire flow duration, demand substantial computational resources and memory, thereby reducing system performance and limiting scalability under high traffic volumes. This paper introduces an efficient sampling method based on linear regression and error reduction to accurately estimate effective throughput. Unlike general sampling methods such as random or systematic sampling, which do not account for actual network conditions or flow dynamics, our approach leverages real-time flow behavior to guide the sampling process. By focusing only on the most informative and impactful portions of each flow, the method significantly reduces the amount of data that needs to be processed while maintaining high estimation accuracy, allowing accurate throughput estimation using less than 15% of the available data, with an estimation error of no more than 10%. These advantages make the proposed method highly suitable for scalable and efficient deployment in diverse real-time network monitoring and traffic analysis environments.
KW - Encrypted Traffic Classification
KW - Quality of Experience
KW - Traffic Optimization
KW - Traffic Sampling
UR - https://www.scopus.com/pages/publications/105034081827
U2 - 10.1109/CCNC65079.2026.11366426
DO - 10.1109/CCNC65079.2026.11366426
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AN - SCOPUS:105034081827
T3 - Proceedings - IEEE Consumer Communications and Networking Conference, CCNC
BT - 2026 IEEE 23rd Consumer Communications and Networking Conference, CCNC 2026
PB - Institute of Electrical and Electronics Engineers Inc.
T2 - 23rd IEEE Consumer Communications and Networking Conference, CCNC 2026
Y2 - 9 January 2026 through 12 January 2026
ER -