Offloading Machine Learning to Programmable Data Planes: A Systematic Survey

The demand for machine learning (ML) has increased significantly in recent decades, enabling several applications, such as speech recognition, computer vision, and recommendation engines. As applications become more sophisticated, the models trained become more complex while also increasing the amou...

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Veröffentlicht in:ACM computing surveys 2024-01, Vol.56 (1), p.1-34, Article 18
Hauptverfasser: Parizotto, Ricardo, Coelho, Bruno Loureiro, Nunes, Diego Cardoso, Haque, Israat, Schaeffer-Filho, Alberto
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container_start_page 1
container_title ACM computing surveys
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creator Parizotto, Ricardo
Coelho, Bruno Loureiro
Nunes, Diego Cardoso
Haque, Israat
Schaeffer-Filho, Alberto
description The demand for machine learning (ML) has increased significantly in recent decades, enabling several applications, such as speech recognition, computer vision, and recommendation engines. As applications become more sophisticated, the models trained become more complex while also increasing the amount of data used for training. Several domain-specific techniques can be helpful to scale machine learning to large amounts of data and more complex models. Among the methods employed, of particular interest is offloading machine learning functionality to the network infrastructure, which is enabled by the use of emerging programmable data plane hardware, such as SmartNICs and programmable switches. As such, offloading machine learning to programmable network hardware has attracted considerable attention from the research community in the last few years. This survey presents a study of programmable data planes applied to machine learning, also highlighting how in-network computing is helping to speed up machine learning applications. In this article, we provide various concepts and propose a taxonomy to classify existing research. Next, we systematically review the literature that offloads machine learning functionality to programmable data plane devices, classifying it based on our proposed taxonomy. Finally, we discuss open challenges in the field and suggest directions for future research.
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As applications become more sophisticated, the models trained become more complex while also increasing the amount of data used for training. Several domain-specific techniques can be helpful to scale machine learning to large amounts of data and more complex models. Among the methods employed, of particular interest is offloading machine learning functionality to the network infrastructure, which is enabled by the use of emerging programmable data plane hardware, such as SmartNICs and programmable switches. As such, offloading machine learning to programmable network hardware has attracted considerable attention from the research community in the last few years. This survey presents a study of programmable data planes applied to machine learning, also highlighting how in-network computing is helping to speed up machine learning applications. In this article, we provide various concepts and propose a taxonomy to classify existing research. 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subjects Classification
Computer science
Computer vision
Computing methodologies
Hardware
Literature reviews
Machine learning
Machine learning approaches
Networks
Programmable networks
Recommender systems
Speech recognition
Taxonomy
title Offloading Machine Learning to Programmable Data Planes: A Systematic Survey
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