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Autores principales: Mhaske, Vaishnavi, Jain, Khushi, Thatikonda, Sai Karthik, Kunwar, Asif
Formato: Preprint
Publicado: 2023
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Acceso en línea:https://arxiv.org/abs/2312.11790
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author Mhaske, Vaishnavi
Jain, Khushi
Thatikonda, Sai Karthik
Kunwar, Asif
author_facet Mhaske, Vaishnavi
Jain, Khushi
Thatikonda, Sai Karthik
Kunwar, Asif
contents Google's BBR (Bottleneck Bandwidth and Round-trip Propagation Time) approach is used to enhance internet network transmission. It is particularly intended to efficiently handle enormous amounts of data. Traditional TCP (Transmission Control Protocol) algorithms confront the most difficulty in calculating the proper quantity of data to send in order to prevent congestion and bottlenecks. This wastes bandwidth and causes network delays. BBR addresses this issue by adaptively assessing the available bandwidth (also known as bottleneck bandwidth) along the network channel and calculating the round-trip time (RTT) between the sender and receiver. Although when several flows compete for bandwidth, BBR may supply more bandwidth to one flow at the expense of another, resulting in unequal resource distribution. This paper proposes to integrate machine learning with BBR to enhance fairness in resource allocation. This novel strategy can improve bandwidth allocation and provide a more equal distribution of resources among competing flows by using historical BBR data to train an ML model. Further we also implemented a classifier model that is graphic neural network in the congestion control method.
format Preprint
id arxiv_https___arxiv_org_abs_2312_11790
institution arXiv
publishDate 2023
record_format arxiv
spellingShingle Improvement of inter-protocol fairness for BBR congestion control using machine learning
Mhaske, Vaishnavi
Jain, Khushi
Thatikonda, Sai Karthik
Kunwar, Asif
Networking and Internet Architecture
Google's BBR (Bottleneck Bandwidth and Round-trip Propagation Time) approach is used to enhance internet network transmission. It is particularly intended to efficiently handle enormous amounts of data. Traditional TCP (Transmission Control Protocol) algorithms confront the most difficulty in calculating the proper quantity of data to send in order to prevent congestion and bottlenecks. This wastes bandwidth and causes network delays. BBR addresses this issue by adaptively assessing the available bandwidth (also known as bottleneck bandwidth) along the network channel and calculating the round-trip time (RTT) between the sender and receiver. Although when several flows compete for bandwidth, BBR may supply more bandwidth to one flow at the expense of another, resulting in unequal resource distribution. This paper proposes to integrate machine learning with BBR to enhance fairness in resource allocation. This novel strategy can improve bandwidth allocation and provide a more equal distribution of resources among competing flows by using historical BBR data to train an ML model. Further we also implemented a classifier model that is graphic neural network in the congestion control method.
title Improvement of inter-protocol fairness for BBR congestion control using machine learning
topic Networking and Internet Architecture
url https://arxiv.org/abs/2312.11790