Load Balancing in Parallel Queues and Rank-based Diffusions
Sayan Banerjee, Amarjit Budhiraja, Benjamin Estevez

TL;DR
This paper analyzes rank-based routing policies in large parallel queue systems, deriving heavy traffic diffusion limits, showing no state space collapse, and evaluating queue-length behavior with reduced communication costs.
Contribution
It introduces a novel diffusion limit for rank-based queues without state space collapse and connects the steady state to explicit product laws of exponential variables.
Findings
Heavy traffic approximation for rank-based queues.
No state space collapse in MJSQ and similar policies.
Steady state approximated by explicit diffusion process.
Abstract
Consider a system with parallel queues in which the server for each queue processes jobs at rate and the total arrival rate to the system is where and is large. We study rank-based routing policies in which of the incoming jobs are routed to servers with probabilities depending on their ranked queue-length and the remaining jobs are routed uniformly at random. A particular case, referred to as the marginal join-the-shortest-queue (MJSQ) policy, is one in which the jobs are routed using the join-the-shortest-queue (JSQ) policy. Our first result provides a heavy traffic approximation theorem for such queuing systems. It turns out that, unlike the JSQ system, there is no state space collapse in the setting of MJSQ (and for the more general rank-based routing schemes) and one obtains a novel diffusion…
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Taxonomy
TopicsAdvanced Queuing Theory Analysis · Random Matrices and Applications · Markov Chains and Monte Carlo Methods
