AI4SE and SE4AI Exploration: A Decade Looking Back and Forward
Quick Answer
The article reviews a decade of AI and Systems Engineering (SE) advancements, highlighting critical gaps and progress across foundational, applied, and LLM phases.
Quick Take
The article reviews a decade of AI and Systems Engineering (SE) advancements, highlighting critical gaps and progress across foundational, applied, and LLM phases. It identifies five key research gaps and provides resources for practitioners navigating AI adoption in SE.
Key Points
- The INCOSE INSIGHT special issue on AI became the most downloaded in history.
- Over 250 participants now attend the annual AI and SE workshop.
- A literature review assessed 1,712 INCOSE articles and 889 SERC publications.
- Five critical research gaps were identified for AI adoption in SE.
- The AI4SE/SE4AI Explorer web application allows comparison of relevance judgments.
Paper Resources
Article Excerpt
From source RSS / original summaryarXiv:2606. 19630v1 Announce Type: new Abstract: The March 2020 INCOSE INSIGHT special issue on AI and Systems Engineering (SE) became the most downloaded issue in the publication's history and launched a research community that now draws over 250 registrants to its annual workshop.
In this article, we trace the progress in AI and SE across three phases (labeled here foundational, applied, and LLM inflection) based on the authors' reading of the field's core papers, and describe our opinions of where the community has converged and where critical gaps remain. Separately, a human-AI agreement literature review leveraging both human expertise and six AI models was performed to assess the relevance of 1,712 INCOSE INSIGHT articles and 889 SERC publications.
The results identify five critical research gaps and offer guidance for practitioners navigating AI adoption, assurance, and workforce transformation in SE. We share the agreement data and the AI4SE/SE4AI Explorer web application so readers can compare their own relevance judgments with the human and AI raters.
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