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The Geometry of Scheduling

机译:调度的几何形状

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We consider the following general scheduling problem: The input consists of $n$ jobs, each with an arbitrary release time, size, and a monotone function specifying the cost incurred when the job is completed at a particular time. The objective is to find a preemptive schedule of minimum aggregate cost. This problem formulation is general enough to include many natural scheduling objectives, such as weighted flow, weighted tardiness, and sum of flow squared. The main contribution of this paper is a randomized polynomial-time algorithm with an approximation ratio $O(log log nP )$, where $P$ is the maximum job size. We also give an $O(1)$ approximation in the special case when all jobs have identical release times. Initially, we show how to reduce this scheduling problem to a particular geometric set-cover problem. We then consider a natural linear programming formulation of this geometric set-cover problem, strengthened by adding knapsack cover inequalities, and show that rounding the solution of this linear program can be reduced to other particular geometric set-cover problems. We then develop algorithms for these sub-problems using the local ratio technique, and Varadarajan's quasi-uniform sampling technique. This general algorithmic approach improves the best known approximation ratios by at least an exponential factor (and much more in some cases) for essentially all of the nontrivial common special cases of this problem. We believe that this geometric interpretation of scheduling is of independent interest.
机译:我们认为以下一般调度问题:输入由$ n $的工作,每一个任意释放时间,大小和单调函数指定当作业在特定的时间内完成所需的费用。我们的目标是找到最小的综合成本的抢占式调度。此问题制剂一般足以包括许多天然的调度目标,如加权流,负重缓慢,和平方流的总和。本文的主要贡献是随机多项式算法与近似比$ O(log日志NP)$,其中$ P $是最大作业大小。我们也给了$ O(1)$近似的特殊情况下,当所有作业具有相同的释放时间。最初,我们将展示如何减少这种调度问题,以特定的几何集覆盖问题。然后,我们考虑这种几何设置覆盖问题的一种自然的线性规划制剂,通过添加背包盖不等式加强,并表明,该舍入线性规划的溶液可以减少到其它特定的几何设定盖的问题。然后,我们开发利用当地比技术,这些子问题的算法,并瓦拉达拉金的准均匀采样技术。这是一般的算法方法提高了至少一个指数因子(在某些情况下更多)基本上所有的这个问题的平凡常见的特殊情况下,最好的已知近似比例。我们相信,调度这种几何解释是独立的利益的。

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