AbstractReal world combinatorial optimization problems such as scheduling are typically too complex to solve with exact methods. Additionally, the problems often have to observe vaguely specified constraints of different importance, the available data may be uncertain, and compromises between antagonistic criteria may be necessary. We present a combination of approximate reasoning based constraints and iterative optimization based heuristics that help to model and solve such problems in a framework of C++ software libraries called StarFLIP++. While initially developed to schedule continuous caster units in steel plants, we present in this paper results from reusing the library components in a shift scheduling system for the workforce of an ...
Optimization problems have been immuned to any attempt of combination with machine learning until a ...
In this article we present a complete algorithm using mathematical optimization tools for solving a ...
Abstract This paper describes DTS, a decisiontheoretic scheduler designed to employ stateof-the-art ...
AbstractReal world combinatorial optimization problems such as scheduling are typically too complex ...
Real-world scheduling is decision making under vague constraints of different importance, often usin...
Mathematical-analytical methods as used in Operations Research approaches are often insufficient for...
The various general iterative non-deterministic algorithms for combinatorial optimization. » Search,...
© 2011 Dr. Andreas SchuttScheduling problems appear in many industrial problems with different facet...
PhD ThesisThis thesis considers the usefulness of interaction between a human and a powerful comput...
pp.155-158Since the last decade, hard combinatorial problems such as scheduling have been the target...
A constraint satisfaction problem (CSP) requires a value, selected from a given finite domain, to be...
This paper presents a framework taking advantage of both the flexibility of constraint programming a...
The article describes the proposition and implementation of a demonstration, learning and decision s...
AbstractPractical constraint satisfaction problems (CSPs) such as design of integrated circuits or s...
In this paper a methodology to solve scheduling applications (e.g. job-shop) using constraint logic ...
Optimization problems have been immuned to any attempt of combination with machine learning until a ...
In this article we present a complete algorithm using mathematical optimization tools for solving a ...
Abstract This paper describes DTS, a decisiontheoretic scheduler designed to employ stateof-the-art ...
AbstractReal world combinatorial optimization problems such as scheduling are typically too complex ...
Real-world scheduling is decision making under vague constraints of different importance, often usin...
Mathematical-analytical methods as used in Operations Research approaches are often insufficient for...
The various general iterative non-deterministic algorithms for combinatorial optimization. » Search,...
© 2011 Dr. Andreas SchuttScheduling problems appear in many industrial problems with different facet...
PhD ThesisThis thesis considers the usefulness of interaction between a human and a powerful comput...
pp.155-158Since the last decade, hard combinatorial problems such as scheduling have been the target...
A constraint satisfaction problem (CSP) requires a value, selected from a given finite domain, to be...
This paper presents a framework taking advantage of both the flexibility of constraint programming a...
The article describes the proposition and implementation of a demonstration, learning and decision s...
AbstractPractical constraint satisfaction problems (CSPs) such as design of integrated circuits or s...
In this paper a methodology to solve scheduling applications (e.g. job-shop) using constraint logic ...
Optimization problems have been immuned to any attempt of combination with machine learning until a ...
In this article we present a complete algorithm using mathematical optimization tools for solving a ...
Abstract This paper describes DTS, a decisiontheoretic scheduler designed to employ stateof-the-art ...