Machine Learning-Based Online Scheduling in Distributed Computing.

PPAM (2)(2022)

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摘要
In this work, we propose and evaluate an online scheduler prototype based on machine learning algorithms. Online job-flow scheduler should make scheduling and resource allocation decisions for individual jobs without any prior knowledge of the subsequent job queue (i.e., online). We simulate and generalize this task to a more formal 0–1 Knapsack problem with unknown utility functions of the knapsack items. In this way we evaluate the implemented machine learning-based solution to classical combinatorial optimization algorithms. A hybrid machine learning and dynamic programming - based approach is proposed to consider and strictly satisfy the knapsack constraint on the total weight. As a main result the proposed hybrid solution showed efficiency comparable to the greedy knapsack approximation.
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关键词
online scheduling,computing,learning-based
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