Toolsuite for Implementing Multiagent Systems Based on Communication Protocols
- URL: http://arxiv.org/abs/2507.10324v1
- Date: Mon, 14 Jul 2025 14:32:09 GMT
- Title: Toolsuite for Implementing Multiagent Systems Based on Communication Protocols
- Authors: Amit K. Chopra, Samuel H. Christie V, Munindar P. Singh,
- Abstract summary: IOP is an approach to building a multiagent system by modeling the interactions between its roles via a flexible interaction protocol.<n>In recent years, we have developed an extensive suite of software that enables multiagent system developers to apply IOP.
- Score: 15.122742324168472
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: Interaction-Oriented Programming (IOP) is an approach to building a multiagent system by modeling the interactions between its roles via a flexible interaction protocol and implementing agents to realize the interactions of the roles they play in the protocol. In recent years, we have developed an extensive suite of software that enables multiagent system developers to apply IOP. These include tools for efficiently verifying protocols for properties such as liveness and safety and middleware that simplifies the implementation of agents. This paper presents some of that software suite.
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