Improved Scheduling with a Shared Resource
Improved Scheduling with a Shared Resource
Christoph Damerius, Peter Kling, Florian Schneider
AbstractWe consider the following shared-resource scheduling problem: Given a set of jobs , for each we must schedule a job-specific processing volume of . A total resource of is available at any time. Jobs have a resource requirement , and the resources assigned to them may vary over time. However, assigning them less will cause a proportional slowdown. We consider two settings. In the first, we seek to minimize the makespan in an online setting: The resource assignment of a job must be fixed before the next job arrives. Here we give an optimal -competitive algorithm with runtime . In the second, we aim to minimize the total completion time. We use a continuous linear programming (CLP) formulation for the fractional total completion time and combine it with a previously known dominance property from malleable job scheduling to obtain a lower bound on the total completion time. We extract structural properties by considering a geometrical representation of a CLP's primal-dual pair. We combine the CLP schedule with a greedy schedule to obtain a -approximation for this setting. This improves upon the so far best-known approximation factor of .