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Automated planning and scheduling / Artificial intelligence / Planning Domain Definition Language / Mathematical optimization / Model checking / Heuristic / Motion planning / Genetic algorithm / Protein domain / Cognitive science / Learning
Date: 2016-06-09 08:09:38
Automated planning and scheduling
Artificial intelligence
Planning Domain Definition Language
Mathematical optimization
Model checking
Heuristic
Motion planning
Genetic algorithm
Protein domain
Cognitive science
Learning

Thesis Abstract: Constructing Heuristics for PDDL+ Planning Domains Wiktor Piotrowski Supervised by: Daniele Magazzeni and Maria Fox Department of Informatics King’s College London United Kingdom

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