Preemptive scheduling on uniformly related machines: minimizing the sum of the largest pair of job completion times
Leah Epstein () and
Ido Yatsiv ()
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Leah Epstein: University of Haifa
Ido Yatsiv: University of Haifa
Journal of Scheduling, 2017, vol. 20, issue 2, No 1, 115-127
Abstract:
Abstract We revisit the classic problem of preemptive scheduling on m uniformly related machines. In this problem, jobs can be arbitrarily split into parts, under the constraint that every job is processed completely, and that the parts of a job are not assigned to run in parallel on different machines. We study a new objective which is motivated by fairness, where the goal is to minimize the sum of the two maximal job completion times. We design a polynomial time algorithm for computing an optimal solution. The algorithm can act on any set of machine speeds and any set of input jobs. The algorithm has several cases, many of which are very different from algorithms for makespan minimization (algorithms that minimize the maximum completion time of any job), and from algorithms that minimize the total completion time of all jobs.
Keywords: Uniformly related machines; Preemptive scheduling; Makespan completion times (search for similar items in EconPapers)
Date: 2017
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Citations: View citations in EconPapers (1)
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DOI: 10.1007/s10951-016-0476-y
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