AI Agents 相关度: 8/10

Agile V: A Compliance-Ready Framework for AI-Augmented Engineering -- From Concept to Audit-Ready Delivery

Christopher Koch, Joshua Andreas Wellbrock
arXiv: 2602.20684v1 发布: 2026-02-24 更新: 2026-02-24

AI 摘要

Agile V框架将AI融入工程,实现自动化验证、溯源和审计,大幅降低成本。

主要贡献

  • 提出了Agile V框架,结合Agile和V模型
  • 利用AI agent自动化验证和审计流程
  • 实验证明可生成审计文档并降低成本

方法论

将Agile迭代和V模型验证融合为无限循环,使用AI agent执行各项任务,并设置人工审批节点。

原文摘要

Current AI-assisted engineering workflows lack a built-in mechanism to maintain task-level verification and regulatory traceability at machine-speed delivery. Agile V addresses this gap by embedding independent verification and audit artifact generation into each task cycle. The framework merges Agile iteration with V-Model verification into a continuous Infinity Loop, deploying specialized AI agents for requirements, design, build, test, and compliance, governed by mandatory human approval gates. We evaluate three hypotheses: (H1) audit-ready artifacts emerge as a by-product of development, (H2) 100% requirement-level verification is achievable with independent test generation, and (H3) verified increments can be delivered with single-digit human interactions per cycle. A feasibility case study on a Hardware-in-the-Loop system (about 500 LOC, 8 requirements, 54 tests) supports all three hypotheses: audit-ready documentation was generated automatically (H1), 100% requirement-level pass rate was achieved (H2), and only 6 prompts per cycle were required (H3), yielding an estimated 10-50x cost reduction versus a COCOMO II baseline (sensitivity range from pessimistic to optimistic assumptions). We invite independent replication to validate generalizability.

标签

AI-assisted engineering Agile V-Model Verification Audit

arXiv 分类

cs.SE cs.AI cs.MA