Proactive scheduling seeks to generate high quality solutions despite execution time uncertainty. Building on work in [Beck and Wilson, 2004], we conduct an empirical study of a number of algorithms for the job shop scheduling problem with probabilistic durations. The main contributions of this paper are: the introduction and empirical analysis of a novel constraint-based search technique that can be applied beyond probabilistic scheduling problems, the introduction and empirical analysis of a number of deterministic filtering algorithms for probabilistic job shop scheduling, and the identification of a number of problem characteristics that contribute to algorithm performance
In the present study, we proposed a greedy randomized adaptive search procedure (GRASP) for integrat...
Abstract. Recently, a variety of constraint programming and Boolean satisfiability ap-proaches to sc...
A stochastic, multi-objective job shop production scheduling model is developed in this research. Th...
Proactive scheduling seeks to generate high quality solutions despite execution time uncertainty. Bu...
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...
. In the recent years, constraint programming has been applied to a wide variety of academic and ind...
This paper presents a heuristic algorithm for solving a job-shop scheduling problem with sequence de...
AbstractPractical constraint satisfaction problems (CSPs) such as design of integrated circuits or s...
International audienceIn previous work we introduced a simple constraint model that combined generic...
Abstract. In the job shop scheduling problem (JSP), a finite set of jobs is processed on a finite se...
In real-world project scheduling applications, activity durations are often uncertain. Proactive sch...
Abstract This paper presents a heuristic algorithm for solving a job-shop scheduling problem with se...
In the present study, we proposed a greedy randomized adaptive search procedure (GRASP) for integrat...
Abstract. Recently, a variety of constraint programming and Boolean satisfiability ap-proaches to sc...
A stochastic, multi-objective job shop production scheduling model is developed in this research. Th...
Proactive scheduling seeks to generate high quality solutions despite execution time uncertainty. Bu...
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...
. In the recent years, constraint programming has been applied to a wide variety of academic and ind...
This paper presents a heuristic algorithm for solving a job-shop scheduling problem with sequence de...
AbstractPractical constraint satisfaction problems (CSPs) such as design of integrated circuits or s...
International audienceIn previous work we introduced a simple constraint model that combined generic...
Abstract. In the job shop scheduling problem (JSP), a finite set of jobs is processed on a finite se...
In real-world project scheduling applications, activity durations are often uncertain. Proactive sch...
Abstract This paper presents a heuristic algorithm for solving a job-shop scheduling problem with se...
In the present study, we proposed a greedy randomized adaptive search procedure (GRASP) for integrat...
Abstract. Recently, a variety of constraint programming and Boolean satisfiability ap-proaches to sc...
A stochastic, multi-objective job shop production scheduling model is developed in this research. Th...