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Main Authors: Tomi Esho, Clarissa Hoyt, Jeremy Marshall, Jyotirmay Gadewadikar
Format: Artículo Open Access
Published: Wiley 2026
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Online Access:https://incose.onlinelibrary.wiley.com/doi/10.1002/sys.70032
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author Tomi Esho
Clarissa Hoyt
Jeremy Marshall
Jyotirmay Gadewadikar
author_facet Tomi Esho
Clarissa Hoyt
Jeremy Marshall
Jyotirmay Gadewadikar
Tomi Esho
Clarissa Hoyt
Jeremy Marshall
Jyotirmay Gadewadikar
collection Wiley Open Access
contents Artificial Intelligence Enabled Systems Engineering Modeling With Retrieval Augmented Generation Tomi Esho Clarissa Hoyt Jeremy Marshall Jyotirmay Gadewadikar Systems Engineering ABSTRACT This work presents an AI‐enabled tool aimed at streamlining model‐based systems engineering (MBSE) workflows. The tool converts natural language inputs into MBSE models by combining large language models, natural language processing techniques, and retrieval augmented generation with MBSE software APIs. Integrating generative AI into systems engineering processes is highly effective for automating routine tasks, boosting productivity, and supporting the ongoing digital transformation in the field. Summary This work enhances systems engineering processes by automating modeling tasks with an AI‐driven tool. For researchers, the tool offers the ability to integrate large language models (LLMs) with model‐based systems engineering (MBSE) tools through application programming interfaces (APIs). The tool's core capabilities include the automatic creation of SysML components like block definition diagrams and state machine diagrams, as well as reading and analyzing the models. With the addition of retrieval augmented generation (RAG), the program can retrieve context from documents that contain domain‐specific information, which is used to improve the language model's response. For practitioners, the tool assists systems engineers with an interactive user interface that offers AI‐driven model management. The tool is presented as a chatbot where users can request model updates, ask questions, or automate tasks. These abilities improve speed and accuracy within the systems engineering workflows. 10.1002/sys.70032 http://onlinelibrary.wiley.com/termsAndConditions#vor
doi_str_mv 10.1002/sys.70032
format Artículo Open Access
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institution Wiley Open Access
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publishDate 2026
publisher Wiley
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spellingShingle Artificial Intelligence Enabled Systems Engineering Modeling With Retrieval Augmented Generation
Tomi Esho
Clarissa Hoyt
Jeremy Marshall
Jyotirmay Gadewadikar
Systems Engineering
Artificial Intelligence Enabled Systems Engineering Modeling With Retrieval Augmented Generation Tomi Esho Clarissa Hoyt Jeremy Marshall Jyotirmay Gadewadikar Systems Engineering ABSTRACT This work presents an AI‐enabled tool aimed at streamlining model‐based systems engineering (MBSE) workflows. The tool converts natural language inputs into MBSE models by combining large language models, natural language processing techniques, and retrieval augmented generation with MBSE software APIs. Integrating generative AI into systems engineering processes is highly effective for automating routine tasks, boosting productivity, and supporting the ongoing digital transformation in the field. Summary This work enhances systems engineering processes by automating modeling tasks with an AI‐driven tool. For researchers, the tool offers the ability to integrate large language models (LLMs) with model‐based systems engineering (MBSE) tools through application programming interfaces (APIs). The tool's core capabilities include the automatic creation of SysML components like block definition diagrams and state machine diagrams, as well as reading and analyzing the models. With the addition of retrieval augmented generation (RAG), the program can retrieve context from documents that contain domain‐specific information, which is used to improve the language model's response. For practitioners, the tool assists systems engineers with an interactive user interface that offers AI‐driven model management. The tool is presented as a chatbot where users can request model updates, ask questions, or automate tasks. These abilities improve speed and accuracy within the systems engineering workflows. 10.1002/sys.70032 http://onlinelibrary.wiley.com/termsAndConditions#vor
title Artificial Intelligence Enabled Systems Engineering Modeling With Retrieval Augmented Generation
topic Systems Engineering
url https://incose.onlinelibrary.wiley.com/doi/10.1002/sys.70032