CRAIMay 10

Governing AI-Assisted Security Operations: A Design Science Framework for Operational Decision Support

arXiv:2605.095341.9
Predicted impact top 99% in CR · last 90 daysOriginality Synthesis-oriented
AI Analysis

Provides a management framework for governing AI-assisted decision support in high-risk digital infrastructure, addressing a practical need for engineering managers in security operations centers.

Engineering managers face challenges in introducing generative AI into high-risk security operations without compromising accountability, privacy, or auditability. This study develops a governance framework for AI-assisted operational decision support, separating AI planning from execution through schema-grounded retrieval, policy validation, and auditable traces.

Engineering managers increasingly must decide how to introduce generative artificial intelligence (AI), retrieval-augmented generation, and coding agents into high-risk operational functions without weakening accountability, privacy, cost discipline, or auditability. The central message of this study is that AI-assisted operational decision support should be managed as a governed engineering capability before it is scaled as automation. Security operations centers (SOCs) provide a suitable setting because they combine privileged telemetry, specialist expertise, software repositories, cloud services, and evidence-sensitive decisions. This study uses Kusto Query Language (KQL) and Microsoft Azure security capabilities as a bounded technical instantiation of that broader engineering management problem. KQL is read-only in ordinary query use, but read-only does not mean risk-free: AI-assisted queries can still create privacy, cost, performance, schema-validity, and decision-quality risks through broad scans, sensitive-field exposure, stale intelligence, and misleading interpretations. Using design science research, the study develops a governed AI query-broker artifact that separates AI planning from operational execution through schema-grounded retrieval, approved templates, policy validation, read-only adapters, normalized outputs, auditable agent traces, and engineering review board gates. The contribution is not a new KQL technique, security product, or detection algorithm. Rather, the study contributes a management framework for governing AI-assisted operational decision support in high-risk digital infrastructure by specifying design propositions, role accountability, maturity stages, quality gates, evaluation criteria, and evidence boundaries.

Foundations

The foundational work for this paper's niche, ranked by how specifically the neighbourhood builds on it — not by global fame.

Your Notes