Task-Oriented Delay-Aware Multi-Tier Computing in Cell-free Massive MIMO Systems
Kunlun Wang, and Dusit Niyato, and Wen Chen, and Arumugam Nallanathan

TL;DR
This paper proposes a cell-free massive MIMO aided multi-tier computing system that optimizes bandwidth and task allocation to minimize total cost, considering heterogeneous delay requirements and leveraging asymptotic SINR properties.
Contribution
It introduces a novel optimization framework for task and bandwidth allocation in cell-free massive MIMO multi-tier systems with heterogeneous delay constraints.
Findings
Proposed scheme outperforms benchmark schemes in simulations.
Asymptotic SINR properties enable effective task offloading strategies.
Dual problem formulation relaxes binary constraints for efficient solutions.
Abstract
Multi-tier computing can enhance the task computation by multi-tier computing nodes. In this paper, we propose a cell-free massive multiple-input multiple-output (MIMO) aided computing system by deploying multi-tier computing nodes to improve the computation performance. At first, we investigate the computational latency and the total energy consumption for task computation, regarded as total cost. Then, we formulate a total cost minimization problem to design the bandwidth allocation and task allocation, while considering realistic heterogenous delay requirements of the computational tasks. Due to the binary task allocation variable, the formulated optimization problem is nonconvex. Therefore, we solve the bandwidth allocation and task allocation problem by decoupling the original optimization problem into bandwidth allocation and task allocation subproblems. As the bandwidth…
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Taxonomy
TopicsInterconnection Networks and Systems · Molecular Communication and Nanonetworks · Stochastic Gradient Optimization Techniques
