Restricted Adaptivity in Stochastic Scheduling (2106.15393v1)
Abstract: We consider the stochastic scheduling problem of minimizing the expected makespan on $m$ parallel identical machines. While the (adaptive) list scheduling policy achieves an approximation ratio of $2$, any (non-adaptive) fixed assignment policy has performance guarantee $\Omega\left(\frac{\log m}{\log \log m}\right)$. Although the performance of the latter class of policies are worse, there are applications in which non-adaptive policies are desired. In this work, we introduce the two classes of $\delta$-delay and $\tau$-shift policies whose degree of adaptivity can be controlled by a parameter. We present a policy - belonging to both classes - which is an $\mathcal{O}(\log \log m)$-approximation for reasonably bounded parameters. In other words, an exponential improvement on the performance of any fixed assignment policy can be achieved when allowing a small degree of adaptivity. Moreover, we provide a matching lower bound for any $\delta$-delay and $\tau$-shift policy when both parameters, respectively, are in the order of the expected makespan of an optimal non-anticipatory policy.