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JOURNALS // Doklady Rossijskoj Akademii Nauk. Mathematika, Informatika, Processy Upravlenia // Archive

Dokl. RAN. Math. Inf. Proc. Upr., 2024 Volume 516, Pages 103–112 (Mi danma521)

INFORMATICS

Machine learning to control network powered by computing infrastructure

R. L. Smelyanskii, E. P. Stepanov

Lomonosov Moscow State University, Moscow, Russia

Abstract: Machine learning (ML) methods are applied to optimal resource control for Network Powered by Computing Infrastructure (NPC)–a new generation computing infrastructure. The relation between the proposed computing infrastructure and the GRID concept is considered. It is shown how ML methods applied to computing infrastructure control make it possible to solve the problems of computing infrastructure control that did not allow the GRID concept to be implemented in full force. As an example, the application of multi-agent optimization methods with reinforcement learning for network resource management is considered. It is shown that multi-agent ML methods increase the speed of distribution of transport flows and ensure optimal NPC network channel load based on uniform load balancing; moreover, such control of network resources is more effective than a centralized approach.

Keywords: reinforcement learning, multi-agent methods, network powered by computing.

UDC: 004.74

Received: 14.11.2023
Revised: 20.03.2024
Accepted: 26.03.2024

DOI: 10.31857/S2686954324020176


 English version:
Doklady Mathematics, 2024, 109:2, 183–190

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© Steklov Math. Inst. of RAS, 2025