2024
DOI: 10.1109/tcc.2023.3336540
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A Stochastic Approach for Scheduling AI Training Jobs in GPU-Based Systems

Federica Filippini,
Jonatha Anselmi,
Danilo Ardagna
et al.

Abstract: In this work, we optimize the scheduling of Deep Learning (DL) training jobs from the perspective of a Cloud Service Provider running a data center, which efficiently selects resources for the execution of each job to minimize the average energy consumption while satisfying time constraints. To model the problem, we first develop a Mixed-Integer Non-Linear Programming formulation. Unfortunately, the computation of an optimal solution is prohibitively expensive, and to overcome this difficulty, we design a heur… Show more

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