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Future directions in agent programming

Logan, Brian

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Authors

Brian Logan



Abstract

Agent programming is a subfield of Artificial Intelligence concerned with the development of intelligent autonomous systems that combine multiple capabilities, e.g., sensing, deliberation, problem-solving and action, in a single system. There has been considerable progress in both the theory and practice of agent programming since Georgeff & Rao’s seminal work on the Belief-Desire-Intention paradigm. However, despite increasing interest in the development of autonomous systems, applications of agent programming are currently confined to a small number of niche areas, and adoption of agent programming languages (APLs) in mainstream software development remains limited. In this paper, I argue that increased adoption of agent programming is contingent on being able to solve a larger class of AI problems with significantly less developer effort than is currently the case, and briefly sketch one possible approach to expanding the set of AI problems that can be addressed by APLs. Critically, the approach I propose requires minimal developer effort and expertise, and relies instead on expanding the basic capabilities of the language.

Citation

Logan, B. (2017). Future directions in agent programming

Journal Article Type Article
Acceptance Date Dec 22, 2016
Publication Date Jan 24, 2017
Deposit Date May 12, 2017
Publicly Available Date May 12, 2017
Journal ALP Issue
Peer Reviewed Peer Reviewed
Volume 29
Issue 4
Public URL https://nottingham-repository.worktribe.com/output/839226
Publisher URL https://www.cs.nmsu.edu/ALP/2016/12/future-directions-in-agent-programming/
Additional Information ALP issue is the newsletter of the Association for Logic Programming.
Contract Date May 12, 2017

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