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Primal-Dual and Dual-Fitting Analysis of Online Scheduling Algorithms for Generalized Flow-Time Problems

机译:广义流时问题在线调度算法的原始-对偶拟合

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We study online scheduling problems on a single processor that can be viewed as extensions of the well-studied problem of minimizing total weighted flow time. In particular, we provide a framework of analysis that is derived by duality properties, does not rely on potential functions and is applicable to a variety of scheduling problems. A key ingredient in our approach is bypassing the need for "black-box" rounding of fractional solutions, which yields improved competitive ratios. We begin with an interpretation of Highest-Density-First (HDF) as a primal-dual algorithm, and a corresponding proof that HDF is optimal for total fractional weighted flow time (and thus scalable for the integral objective). Building upon the salient ideas of the proof, we show how to apply and extend this analysis to the more general problem of minimizing n-ary sumation is the flow time and g is a non-decreasing cost function. Among other results, we present improved competitive ratios for the setting in which g is a concave function, and the setting of same-density jobs but general cost functions. We further apply our framework of analysis to online weighted completion time with general cost functions as well as scheduling under polyhedral constraints.
机译:我们在单个处理器上研究在线调度问题,这可以看作是对已研究充分的问题的一种扩展,该问题可以使总加权流时间最小化。特别是,我们提供了一个由对偶属性派生的分析框架,它不依赖于潜在功能,并且适用于各种调度问题。我们方法中的一个关键因素是绕过分批解决方案的“黑匣子”四舍五入的需要,从而提高了竞争比率。我们首先将最高密度优先(HDF)解释为原始对偶算法,并相应证明HDF对于总分数加权流动时间是最优的(因此对于积分目标是可扩展的)。在证明的显着思想的基础上,我们展示了如何将分析应用和扩展到使n元求和最小的更普遍的问题,即流动时间,而g是一个不变的成本函数。在其他结果中,我们针对g是凹函数的设置以及相同密度的工作但具有一般成本函数的设置,提出了改进的竞争比率。我们进一步将分析框架应用于具有一般成本函数的在线加权完成时间,以及在多面体约束下进行调度。

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