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Constraint programming / Mathematical optimization / Artificial intelligence / Theoretical computer science / Applied mathematics / Constraint logic programming / NP-hard problems / Operations research / Genetic algorithm / Nurse scheduling problem / Constrained optimization
Date: 2006-04-07 00:52:14
Constraint programming
Mathematical optimization
Artificial intelligence
Theoretical computer science
Applied mathematics
Constraint logic programming
NP-hard problems
Operations research
Genetic algorithm
Nurse scheduling problem
Constrained optimization

LNCSA Standard Framework for Timetabling Problems

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