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Non-Preemptive Flow-Time Minimization via Rejections (1805.09602v1)

Published 24 May 2018 in cs.DS

Abstract: We consider the online problem of minimizing weighted flow-time on unrelated machines. Although much is known about this problem in the resource-augmentation setting, these results assume that jobs can be preempted. We give the first constant-competitive algorithm for the non-preemptive setting in the rejection model. In this rejection model, we are allowed to reject an $\varepsilon$-fraction of the total weight of jobs, and compare the resulting flow-time to that of the offline optimum which is required to schedule all jobs. This is arguably the weakest assumption in which such a result is known for weighted flow-time on unrelated machines. While our algorithms are simple, we need a delicate dual-fitting argument to bound the flow-time while only a small fraction of elements are rejected.

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Authors (3)
  1. Anupam Gupta (131 papers)
  2. Amit Kumar (224 papers)
  3. Jason Li (91 papers)
Citations (1)

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