OCSYSYJan 23, 2018

Infinite horizon asymptotic average optimality for large-scale parallel server networks

arXiv:1706.0393114 citationsh-index: 35
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Provides theoretical foundations for optimal control of large-scale parallel server networks, addressing a key problem in queueing theory and operations research.

This paper establishes asymptotic average optimality for parallel server networks in the Halfin-Whitt regime, showing that optimal values for diffusion-scaled processes converge to those of limiting diffusion under state-dependent Markov balanced saturation policies, with exponential ergodicity when at least one job class has positive abandonment.

We study infinite-horizon asymptotic average optimality for parallel server network with multiple classes of jobs and multiple server pools in the Halfin-Whitt regime. Three control formulations are considered: 1) minimizing the queueing and idleness cost, 2) minimizing the queueing cost under a constraints on idleness at each server pool, and 3) fairly allocating the idle servers among different server pools. For the third problem, we consider a class of bounded-queue, bounded-state (BQBS) stable networks, in which any moment of the state is bounded by that of the queue only (for both the limiting diffusion and diffusion-scaled state processes). We show that the optimal values for the diffusion-scaled state processes converge to the corresponding values of the ergodic control problems for the limiting diffusion. We present a family of state-dependent Markov balanced saturation policies (BSPs) that stabilize the controlled diffusion-scaled state processes. It is shown that under these policies, the diffusion-scaled state process is exponentially ergodic, provided that at least one class of jobs has a positive abandonment rate. We also establish useful moment bounds, and study the ergodic properties of the diffusion-scaled state processes, which play a crucial role in proving the asymptotic optimality.

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