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Machine scheduling with resource dependent processing times

机译:具有资源依赖处理时间的机器调度

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摘要

We consider machine scheduling on unrelated parallel machines with the objective to minimize the schedule makespan. We assume that, in addition to its machine dependence, the processing time of any job is dependent on the usage of a discrete renewable resource, e.g. workers. A given amount of that resource can be distributed over the jobs in process at any time, and the more of that resource is allocated to a job, the smaller is its processing time. This model generalizes the classical unrelated parallel machine scheduling problem by adding a time-resource tradeoff. It is also a natural variant of a generalized assignment problem studied previously by Shmoys and Tardos. On the basis of an integer linear programming formulation for a relaxation of the problem, we use LP rounding techniques to allocate resources to jobs, and to assign jobs to machines. Combined with Graham's list scheduling, we show how to derive a 4-approximation algorithm. We also show how to tune our approach to yield a 3.75-approximation algorithm. This is achieved by applying the same rounding technique to a slightly modified linear programming relaxation, and by using a more sophisticated scheduling algorithm that is inspired by the harmonic algorithm for bin packing. We finally derive inapproximability results for two special cases, and discuss tightness of the integer linear programming relaxations.
机译:我们考虑在不相关的并行机上进行机器调度,目的是最大程度地减少调度工期。我们假设,除了其对机器的依赖之外,任何作业的处理时间还取决于离散可再生资源的使用,例如工人。可以随时将给定数量的资源分配到正在处理的作业中,并且分配给作业的资源越多,其处理时间就越短。该模型通过添加时间资源权衡来概括经典的无关并行机调度问题。这也是Shmoys和Tardos先前研究的广义分配问题的自然变体。为缓解问题,在整数线性规划公式的基础上,我们使用LP舍入技术将资源分配给作业,并将作业分配给机器。结合Graham的列表调度,我们展示了如何推导4近似算法。我们还将展示如何调整我们的方法以产生3.75近似算法。通过将相同的舍入技术应用于经过稍微修改的线性规划松弛,以及使用受谐波算法进行装箱的启发而使用的更复杂的调度算法,可以实现此目的。最后,我们得出两个特殊情况的不可逼近结果,并讨论整数线性规划松弛的紧度。

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