We derive the first performance guarantees for a combinatorial online algorithm that schedules stochastic, nonpreemptive jobs on unrelated machines to minimize the expectation of the total weighted completion time. Prior work on unrelated machine scheduling with stochastic jobs was restricted to the offline case, and required sophisticated linear or convex programming relaxations for the assignment of jobs to machines. Our algorithm is purely combinatorial, and therefore it also works for the online setting. As to the techniques applied, this paper shows how the dual fitting technique can be put to work for stochastic and nonpreemptive scheduling problems
Two important characteristics encountered in many real-world scheduling problems are heterogeneous p...
International audienceWhen a computer system schedules jobs there is typically a significant cost as...
We present first constant performance guarantees for preemptive stochastic scheduling to minimize th...
We derive the first performance guarantees for a combinatorial online algorithm that schedules stoch...
This paper establishes performance guarantees for online algorithms that schedule stochastic, nonpre...
We consider a model for scheduling under, uncertainty. In this model, we combine the main characteri...
We investigate the competitive performance bounds of a purely combinatorial, online algorithm for st...
Abstract. We consider a non-preemptive, stochastic parallel machine scheduling model with the goal t...
We consider a non-preemptive, stochastic parallel machine scheduling model with the goal to minimize...
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 consider the stochastic identical parallel machine scheduling problem and its online extension, w...
In stochastic online scheduling problems, a common class of policies is the class of fixed assignmen...
We introduce a model for non-preemptive scheduling under uncertainty. In this model, we combine the ...
Two important characteristics encountered in many real-world scheduling problems are hetero-geneous ...
Two important characteristics encountered in many real-world scheduling problems are heterogeneous p...
International audienceWhen a computer system schedules jobs there is typically a significant cost as...
We present first constant performance guarantees for preemptive stochastic scheduling to minimize th...
We derive the first performance guarantees for a combinatorial online algorithm that schedules stoch...
This paper establishes performance guarantees for online algorithms that schedule stochastic, nonpre...
We consider a model for scheduling under, uncertainty. In this model, we combine the main characteri...
We investigate the competitive performance bounds of a purely combinatorial, online algorithm for st...
Abstract. We consider a non-preemptive, stochastic parallel machine scheduling model with the goal t...
We consider a non-preemptive, stochastic parallel machine scheduling model with the goal to minimize...
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 consider the stochastic identical parallel machine scheduling problem and its online extension, w...
In stochastic online scheduling problems, a common class of policies is the class of fixed assignmen...
We introduce a model for non-preemptive scheduling under uncertainty. In this model, we combine the ...
Two important characteristics encountered in many real-world scheduling problems are hetero-geneous ...
Two important characteristics encountered in many real-world scheduling problems are heterogeneous p...
International audienceWhen a computer system schedules jobs there is typically a significant cost as...
We present first constant performance guarantees for preemptive stochastic scheduling to minimize th...