This paper proposes a learning and scheduling algorithm to minimize the expected cumulative holding cost incurred by jobs, where statistical parameters defining their individual holding costs are unknown a priori. In each time slot, the server can process a job while receiving the realized random holding costs of the jobs remaining in the system. Our algorithm is a learning-based variant of the cμ rule for scheduling: it starts with a preemption period of fixed length which serves as a learning phase, and after accumulating enough data about individual jobs, it switches to nonpreemptive scheduling mode. The algorithm is designed to handle instances with large or small gaps in jobs' parameters and achieves near-optimal performance guarantees...
Two important characteristics encountered in many real-world scheduling problems are hetero-geneous ...
This paper establishes performance guarantees for online algorithms that schedule stochastic, nonpre...
We consider the single-machine scheduling problem of minimizing the number of late jobs. We omit her...
International audienceIn this paper, we are interested in scheduling stochastic jobs on a reservatio...
We consider a scheduling problem in which two classes of independent jobs have to be processed non-p...
We consider a scheduling problem in which two classes of independent jobs have to be processed non-p...
Traditional job shop scheduling models ignore the stochastic elements that exist in actual job shops...
International audienceIn this paper, we are interested in scheduling and checkpointing stochastic jo...
We study stochastic scheduling on m parallel identical machines with random processing times. The co...
We introduce a model for non-preemptive scheduling under uncertainty. In this model, we combine the ...
Most classical scheduling formulations assume a fixed and known duration for each ac-tivity. In this...
This chapter surveys the literature on scheduling problems with random attributes, including process...
This paper is concerned with the problems in scheduling a set of jobs associated with random due dat...
Most classical scheduling formulations assume a fixed and known duration for each activity. In this ...
In this dissertation we study a broad class of stochastic scheduling problems characterized by the p...
Two important characteristics encountered in many real-world scheduling problems are hetero-geneous ...
This paper establishes performance guarantees for online algorithms that schedule stochastic, nonpre...
We consider the single-machine scheduling problem of minimizing the number of late jobs. We omit her...
International audienceIn this paper, we are interested in scheduling stochastic jobs on a reservatio...
We consider a scheduling problem in which two classes of independent jobs have to be processed non-p...
We consider a scheduling problem in which two classes of independent jobs have to be processed non-p...
Traditional job shop scheduling models ignore the stochastic elements that exist in actual job shops...
International audienceIn this paper, we are interested in scheduling and checkpointing stochastic jo...
We study stochastic scheduling on m parallel identical machines with random processing times. The co...
We introduce a model for non-preemptive scheduling under uncertainty. In this model, we combine the ...
Most classical scheduling formulations assume a fixed and known duration for each ac-tivity. In this...
This chapter surveys the literature on scheduling problems with random attributes, including process...
This paper is concerned with the problems in scheduling a set of jobs associated with random due dat...
Most classical scheduling formulations assume a fixed and known duration for each activity. In this ...
In this dissertation we study a broad class of stochastic scheduling problems characterized by the p...
Two important characteristics encountered in many real-world scheduling problems are hetero-geneous ...
This paper establishes performance guarantees for online algorithms that schedule stochastic, nonpre...
We consider the single-machine scheduling problem of minimizing the number of late jobs. We omit her...