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Main Authors: Cornacchia, Alessandro, Anand, Vaastav, Bilal, Muhammad, Qazi, Zafar, Canini, Marco
Format: Preprint
Published: 2025
Subjects:
Online Access:https://arxiv.org/abs/2510.11872
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author Cornacchia, Alessandro
Anand, Vaastav
Bilal, Muhammad
Qazi, Zafar
Canini, Marco
author_facet Cornacchia, Alessandro
Anand, Vaastav
Bilal, Muhammad
Qazi, Zafar
Canini, Marco
contents Agentic AI applications increasingly rely on multiple agents with distinct roles, specialized tools, and access to memory layers to solve complex tasks -- closely resembling service-oriented architectures. Yet, in the rapid evolving landscape of programming frameworks and new protocols, deploying and testing AI agents as distributed systems remains a daunting and labor-intensive task. We present DMAS-Forge, a framework designed to close this gap. DMAS-Forge decouples application logic from specific deployment choices, and aims at transparently generating the necessary glue code and configurations to spawn distributed multi-agent applications across diverse deployment scenarios with minimal manual effort. We present our vision, design principles, and a prototype of DMAS-Forge. Finally, we discuss the opportunities and future work for our approach.
format Preprint
id arxiv_https___arxiv_org_abs_2510_11872
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle DMAS-Forge: A Framework for Transparent Deployment of AI Applications as Distributed Systems
Cornacchia, Alessandro
Anand, Vaastav
Bilal, Muhammad
Qazi, Zafar
Canini, Marco
Software Engineering
Agentic AI applications increasingly rely on multiple agents with distinct roles, specialized tools, and access to memory layers to solve complex tasks -- closely resembling service-oriented architectures. Yet, in the rapid evolving landscape of programming frameworks and new protocols, deploying and testing AI agents as distributed systems remains a daunting and labor-intensive task. We present DMAS-Forge, a framework designed to close this gap. DMAS-Forge decouples application logic from specific deployment choices, and aims at transparently generating the necessary glue code and configurations to spawn distributed multi-agent applications across diverse deployment scenarios with minimal manual effort. We present our vision, design principles, and a prototype of DMAS-Forge. Finally, we discuss the opportunities and future work for our approach.
title DMAS-Forge: A Framework for Transparent Deployment of AI Applications as Distributed Systems
topic Software Engineering
url https://arxiv.org/abs/2510.11872