We introduce a model for non-preemptive scheduling under uncertainty. In this model, we combine the main characteristics of online and stochastic scheduling in a simple and natural way. Job processing times are assumed to be stochastic, but in contrast to traditional stochastic scheduling models, we assume that jobs arrive online, and there is no knowledge about the jobs that will arrive in the future. The model incorporates both, stochastic scheduling and online scheduling as a special case. The particular setting we analyze is parallel machine scheduling, with the objective to minimize the total weighted completion times of jobs. We propose simple, combinatorial online scheduling policies for that model, and derive performance guarantees ...
We present first constant performance guarantees for preemptive stochastic scheduling to minimize th...
This paper establishes performance guarantees for online algorithms that schedule stochastic, nonpre...
In this paper we consider a model for scheduling under uncertainty. Inthis model, we combine the mai...
We consider a model for scheduling under, uncertainty. In this model, we combine the main characteri...
We introduce a model for non-preemptive scheduling under uncertainty. In this model, we combine the ...
We consider a non-preemptive, stochastic parallel machine scheduling model with the goal to minimize...
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...
In this paper we consider a model for scheduling under uncertainty. In this model, we combine the ma...
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...
We derive the first performance guarantees for a combinatorial online algorithm that schedules stoch...
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...
We present first constant performance guarantees for preemptive stochastic scheduling to minimize th...
This paper establishes performance guarantees for online algorithms that schedule stochastic, nonpre...
In this paper we consider a model for scheduling under uncertainty. Inthis model, we combine the mai...
We consider a model for scheduling under, uncertainty. In this model, we combine the main characteri...
We introduce a model for non-preemptive scheduling under uncertainty. In this model, we combine the ...
We consider a non-preemptive, stochastic parallel machine scheduling model with the goal to minimize...
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...
In this paper we consider a model for scheduling under uncertainty. In this model, we combine the ma...
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...
We derive the first performance guarantees for a combinatorial online algorithm that schedules stoch...
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...
We present first constant performance guarantees for preemptive stochastic scheduling to minimize th...
This paper establishes performance guarantees for online algorithms that schedule stochastic, nonpre...
In this paper we consider a model for scheduling under uncertainty. Inthis model, we combine the mai...