Scheduling with Non-Renewable Resources: Minimizing the Sum of Completion Times
November 26, 2019 Β· Declared Dead Β· π Journal of Scheduling
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Authors
KristΓ³f BΓ©rczi, TamΓ‘s KirΓ‘ly, Simon Omlor
arXiv ID
1911.12138
Category
cs.DS: Data Structures & Algorithms
Cross-listed
cs.DM
Citations
5
Venue
Journal of Scheduling
Last Checked
4 months ago
Abstract
The paper considers single-machine scheduling problems with a non-renewable resource. In this setting, we are given a set jobs, each of which is characterized by a processing time, a weight, and the job also has some resource requirement. At fixed points in time, a certain amount of the resource is made available to be consumed by the jobs. The goal is to assign the jobs non-preemptively to time slots on the machine, so that at any time their resource requirement does not exceed the available amounts of resources. The objective that we consider here is the minimization of the sum of weighted completion times. We give polynomial approximation algorithms and complexity results for single scheduling machine problems. In particular, we show strong NP-hardness of the case of unit resource requirements and weights ($1|rm=1,a_j=1|\sum C_j$), thus answering an open question of GyΓΆrgyi and Kis. We also prove that the schedule corresponding to the Shortest Processing Time First ordering provides a $3/2$-approximation for the same problem. We give simple constant factor approximations and a more complicated PTAS for the case of $0$ processing times ($1|rm=1,p_j=0|\sum w_jC_j$). We close the paper by proposing a new variant of the problem in which the resource arrival times are unknown. A $4$-approximation is presented for this variant, together with an $(4-\varepsilon)$-inapproximability result.
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