Proceedings of the 51st International Conference on Parallel Processing 2022
DOI: 10.1145/3545008.3545025
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Learning Mean-Field Control for Delayed Information Load Balancing in Large Queuing Systems

Abstract: Scalable load balancing algorithms are of great interest in cloud networks and data centers, necessitating the use of tractable techniques to compute optimal load balancing policies for good performance. However, most existing scalable techniques, especially asymptotically scaling methods based on mean field theory, have not been able to model large queueing networks with strong locality. Meanwhile, general multi-agent reinforcement learning techniques can be hard to scale and usually lack a theoretical founda… Show more

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