This paper addresses the non-preemptive single machine scheduling problem to minimize total tardiness. We are interested in the online version of this problem, where orders arrive at the system at random times. Jobs have to be scheduled without knowledge of what jobs will come afterwards. The processing times and the due dates become known when the order is placed. The order release date occurs only at the beginning of periodic intervals. A customized approximate dynamic programming method is introduced for this problem. The authors also present numerical experiments that assess the reliability of the new approach and show that it performs better than a myopic policy
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...
Abstract This paper proposes an efficient exact algorithm for the general single-machine scheduling ...
This paper addresses the non-preemptive single machine scheduling problem to minimize total tardines...
Part 5: Regular Session: Maintenance Improvement and Lifecycle ManagementInternational audienceWe st...
This paper is concerned with the problems in scheduling a set of jobs associated with random due dat...
The problem of scheduling jobs on unreliable machines has received little attention in the literatur...
This paper addresses the problem of scheduling n independent jobs on a single machine with a fixed u...
We introduce a model for non-preemptive scheduling under uncertainty. In this model, we combine the ...
We consider single-machine stochastic scheduling models with due dates as decisions. In addition to ...
Research on non-regular performance measures is at best scarce in the deterministic machine scheduli...
We consider dynamic stochastic scheduling of preemptive jobs with processing times that follow indep...
This paper considers a dynamic scheduling problem where the set of jobs to perform is modified by th...
In this work, we study a stochastic single machine scheduling problem in which the features of learn...
Traditional job shop scheduling models ignore the stochastic elements that exist in actual job shops...
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...
Abstract This paper proposes an efficient exact algorithm for the general single-machine scheduling ...
This paper addresses the non-preemptive single machine scheduling problem to minimize total tardines...
Part 5: Regular Session: Maintenance Improvement and Lifecycle ManagementInternational audienceWe st...
This paper is concerned with the problems in scheduling a set of jobs associated with random due dat...
The problem of scheduling jobs on unreliable machines has received little attention in the literatur...
This paper addresses the problem of scheduling n independent jobs on a single machine with a fixed u...
We introduce a model for non-preemptive scheduling under uncertainty. In this model, we combine the ...
We consider single-machine stochastic scheduling models with due dates as decisions. In addition to ...
Research on non-regular performance measures is at best scarce in the deterministic machine scheduli...
We consider dynamic stochastic scheduling of preemptive jobs with processing times that follow indep...
This paper considers a dynamic scheduling problem where the set of jobs to perform is modified by th...
In this work, we study a stochastic single machine scheduling problem in which the features of learn...
Traditional job shop scheduling models ignore the stochastic elements that exist in actual job shops...
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...
Abstract This paper proposes an efficient exact algorithm for the general single-machine scheduling ...