AbstractWe study the problem of scheduling tasks for execution by a processor when the tasks can stochastically generate new tasks. Tasks can be of different types, and each type has a fixed, known probability of generating other tasks. We present results on the random variable Sσ modeling the maximal space needed by the processor to store the currently active tasks when acting under the scheduler σ. We obtain tail bounds for the distribution of Sσ for both offline and online schedulers, and investigate the expected value E[Sσ]
This dissertation is concerned with developing optimal strategies for the scheduling of stochastic j...
We present a novel co-scheduling algorithm for real-time (RT) and non real-time response time sensit...
In this paper we consider a model for scheduling under uncertainty. Inthis model, we combine the mai...
AbstractWe study the problem of scheduling tasks for execution by a processor when the tasks can sto...
We revisit the classical stochastic scheduling problem of nonpreemptively scheduling n jobs so as to...
We introduce a model for non-preemptive scheduling under uncertainty. In this model, we combine the ...
International audienceThis paper discusses scheduling strategies for the problem of maximizing the e...
We consider a non-preemptive, stochastic parallel machine scheduling model with the goal to minimize...
We consider the stochastic identical parallel machine scheduling problem and its online extension, w...
We present first constant performance guarantees for preemptive stochastic scheduling to minimize th...
Two important characteristics encountered in many real-world scheduling problems are heterogeneous p...
This work introduces scheduling strategies to maximize the expected numberof independent tasks that ...
Scheduling appears frequently in distributed, cloud and high-performance computing, as well as in em...
We consider a model for scheduling under uncertainty. In this model, we combine the main characteris...
This dissertation is concerned with developing optimal strategies for the scheduling of stochastic j...
We present a novel co-scheduling algorithm for real-time (RT) and non real-time response time sensit...
In this paper we consider a model for scheduling under uncertainty. Inthis model, we combine the mai...
AbstractWe study the problem of scheduling tasks for execution by a processor when the tasks can sto...
We revisit the classical stochastic scheduling problem of nonpreemptively scheduling n jobs so as to...
We introduce a model for non-preemptive scheduling under uncertainty. In this model, we combine the ...
International audienceThis paper discusses scheduling strategies for the problem of maximizing the e...
We consider a non-preemptive, stochastic parallel machine scheduling model with the goal to minimize...
We consider the stochastic identical parallel machine scheduling problem and its online extension, w...
We present first constant performance guarantees for preemptive stochastic scheduling to minimize th...
Two important characteristics encountered in many real-world scheduling problems are heterogeneous p...
This work introduces scheduling strategies to maximize the expected numberof independent tasks that ...
Scheduling appears frequently in distributed, cloud and high-performance computing, as well as in em...
We consider a model for scheduling under uncertainty. In this model, we combine the main characteris...
This dissertation is concerned with developing optimal strategies for the scheduling of stochastic j...
We present a novel co-scheduling algorithm for real-time (RT) and non real-time response time sensit...
In this paper we consider a model for scheduling under uncertainty. Inthis model, we combine the mai...