Most classical scheduling formulations assume a fixed and known duration for each activity. In this paper, we weaken this assumption, requiring instead that each duration can be represented by an independent random variable with a known mean and variance. The best solutions are ones which have a high probability of achieving a good makespan. We first create a theoretical framework, formally showing how Monte Carlo simulation can be combined with deterministic scheduling algorithms to solve this problem. We propose an associated deterministic scheduling problem whose solution is proved, under certain conditions, to be a lower bound for the probabilistic problem. We then propose and investigate a number of techniques for solving such problems...
We consider the single-machine scheduling problem of minimizing the number of late jobs. This proble...
We consider the single-machine scheduling problem of minimizing the number of late jobs. We omit her...
In this paper, we describe an approach to scheduling under uncertainty that achieves scalability thr...
Most classical scheduling formulations assume a fixed and known duration for each activity. In this ...
Most classical scheduling formulations assume a fixed and known duration for each ac-tivity. In this...
Proactive approaches to scheduling take into account information about the execution time uncertaint...
Proactive approaches to scheduling take into account information about the execution time uncertaint...
Proactive scheduling seeks to generate high quality solutions despite execution time uncertainty. Bu...
We introduce a novel model for scheduling with explorable uncertainty. In this model, the processing...
AbstractThis paper propose an effective estimation of distribution algorithm (EDA), which solves the...
In real-world project scheduling applications, activity durations are often uncertain. Proactive sch...
Deterministic models for project scheduling and control suffer from the fact that they assume comple...
Traditional job shop scheduling models ignore the stochastic elements that exist in actual job shops...
This paper is concerned with local search methods to solve job shop scheduling problems with uncerta...
Temporal uncertainty in large-scale logistics forces one to trade off between lost efficiency throug...
We consider the single-machine scheduling problem of minimizing the number of late jobs. This proble...
We consider the single-machine scheduling problem of minimizing the number of late jobs. We omit her...
In this paper, we describe an approach to scheduling under uncertainty that achieves scalability thr...
Most classical scheduling formulations assume a fixed and known duration for each activity. In this ...
Most classical scheduling formulations assume a fixed and known duration for each ac-tivity. In this...
Proactive approaches to scheduling take into account information about the execution time uncertaint...
Proactive approaches to scheduling take into account information about the execution time uncertaint...
Proactive scheduling seeks to generate high quality solutions despite execution time uncertainty. Bu...
We introduce a novel model for scheduling with explorable uncertainty. In this model, the processing...
AbstractThis paper propose an effective estimation of distribution algorithm (EDA), which solves the...
In real-world project scheduling applications, activity durations are often uncertain. Proactive sch...
Deterministic models for project scheduling and control suffer from the fact that they assume comple...
Traditional job shop scheduling models ignore the stochastic elements that exist in actual job shops...
This paper is concerned with local search methods to solve job shop scheduling problems with uncerta...
Temporal uncertainty in large-scale logistics forces one to trade off between lost efficiency throug...
We consider the single-machine scheduling problem of minimizing the number of late jobs. This proble...
We consider the single-machine scheduling problem of minimizing the number of late jobs. We omit her...
In this paper, we describe an approach to scheduling under uncertainty that achieves scalability thr...