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Scheduling equal length jobs with eligibility restrictions
by
Hong, Juntaek
, Lee, Kangbok
, Pinedo, Michael L
in
Algorithms
/ Completion time
/ Dynamic programming
/ Operations research
/ Polynomials
/ Production scheduling
/ Schedules
/ Scheduling
2020
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Do you wish to request the book?
Scheduling equal length jobs with eligibility restrictions
by
Hong, Juntaek
, Lee, Kangbok
, Pinedo, Michael L
in
Algorithms
/ Completion time
/ Dynamic programming
/ Operations research
/ Polynomials
/ Production scheduling
/ Schedules
/ Scheduling
2020
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Scheduling equal length jobs with eligibility restrictions
Journal Article
Scheduling equal length jobs with eligibility restrictions
2020
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Overview
We consider the problem of scheduling independent jobs on identical parallel machines to minimize the total completion time. Each job has a set of eligible machines and a given release date, and all jobs have equal processing times. For the problem with a fixed number of machines, we determine its computational complexity by providing a polynomial time dynamic programming algorithm. We also present two polynomial time approximation algorithms along with their worst case analyses. Experiments with randomly generated instances show that the proposed algorithms consistently generate schedules that are very close to optimal.
Publisher
Springer Nature B.V
Subject
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