A multi-objective reinforcement learning algorithm for deadline constrained scientific workflow scheduling in clouds

作者:Yao Qin, Hua Wang, Shanwen Yi, Xiaole Li, Linbo Zhai

摘要

Recently, a growing number of scientific applications have been migrated into the cloud. To deal with the problems brought by clouds, more and more researchers start to consider multiple optimization goals in workflow scheduling. However, the previous works ignore some details, which are challenging but essential. Most existing multi-objective workflow scheduling algorithms overlook weight selection, which may result in the quality degradation of solutions. Besides, we find that the famous partial critical path (PCP) strategy, which has been widely used to meet the deadline constraint, can not accurately reflect the situation of each time step. Workflow scheduling is an NP-hard problem, so self-optimizing algorithms are more suitable to solve it.

论文关键词:workflow scheduling, energy saving, multi-objective reinforcement learning, deadline constrained, cloud computing

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论文官网地址:https://doi.org/10.1007/s11704-020-9273-z