Search
2000 Volume 15
Article Contents
RESEARCH ARTICLE   Open Access    

Artificial intelligence and operations research: challenges and opportunities in planning and scheduling

More Information
  • Both the Artificial Intelligence (AI) and the Operations Research (OR) communities are interested in developing techniques for solving hard combinatorial problems, in particular in the domain of planning and scheduling. AI approaches encompass a rich collection of knowledge representation formalisms for dealing with a wide variety of real-world problems. Some examples are constraint programming representations, logical formalisms, declarative and functional programming languages such as Prolog and Lisp, Bayesian models, rule-based formalism, etc. The downside of such rich representations is that in general they lead to intractable problems, and we therefore often cannot use such formalisms for handling realistic size problems. OR, on the other hand, has focused on more tractable representations, such as linear programming formulations. OR-based techniques have demonstrated the ability to identify optimal and locally optimal solutions for well-defined problem spaces. In general, however, OR solutions are restricted to rigid models with limited expressive power. AI techniques, on the other hand, provide richer and more flexible representations of real-world problems, supporting efficient constraint-based reasoning mechanisms as well as mixed initiative frameworks, which allow the human expertise to be in the loop. The challenge lies in providing representations that are expressive enough to describe real-world problems and at the same time guaranteeing good and fast solutions.
  • 加载中
  • Cite this article

    CARLA P. GOMES. 2000. Artificial intelligence and operations research: challenges and opportunities in planning and scheduling. The Knowledge Engineering Review 15(1)1−10, doi: 10.1017/S0269888900001090
    CARLA P. GOMES. 2000. Artificial intelligence and operations research: challenges and opportunities in planning and scheduling. The Knowledge Engineering Review 15(1)1−10, doi: 10.1017/S0269888900001090

Article Metrics

Article views(8) PDF downloads(201)

Other Articles By Authors

RESEARCH ARTICLE   Open Access    

Artificial intelligence and operations research: challenges and opportunities in planning and scheduling

The Knowledge Engineering Review  15 2000, 15(1): 1−10  |  Cite this article

Abstract: Both the Artificial Intelligence (AI) and the Operations Research (OR) communities are interested in developing techniques for solving hard combinatorial problems, in particular in the domain of planning and scheduling. AI approaches encompass a rich collection of knowledge representation formalisms for dealing with a wide variety of real-world problems. Some examples are constraint programming representations, logical formalisms, declarative and functional programming languages such as Prolog and Lisp, Bayesian models, rule-based formalism, etc. The downside of such rich representations is that in general they lead to intractable problems, and we therefore often cannot use such formalisms for handling realistic size problems. OR, on the other hand, has focused on more tractable representations, such as linear programming formulations. OR-based techniques have demonstrated the ability to identify optimal and locally optimal solutions for well-defined problem spaces. In general, however, OR solutions are restricted to rigid models with limited expressive power. AI techniques, on the other hand, provide richer and more flexible representations of real-world problems, supporting efficient constraint-based reasoning mechanisms as well as mixed initiative frameworks, which allow the human expertise to be in the loop. The challenge lies in providing representations that are expressive enough to describe real-world problems and at the same time guaranteeing good and fast solutions.

    • © 2000 Cambridge University Press
  • About this article
    Cite this article
    CARLA P. GOMES. 2000. Artificial intelligence and operations research: challenges and opportunities in planning and scheduling. The Knowledge Engineering Review 15(1)1−10, doi: 10.1017/S0269888900001090
    CARLA P. GOMES. 2000. Artificial intelligence and operations research: challenges and opportunities in planning and scheduling. The Knowledge Engineering Review 15(1)1−10, doi: 10.1017/S0269888900001090
  • Catalog

      /

      DownLoad:  Full-Size Img  PowerPoint
      Return
      Return