RAD-AI: Rethinking Architecture Documentation for AI-Augmented Ecosystems
AI 摘要
RAD-AI框架扩展了现有架构文档方法,以适应AI增强生态系统的特殊需求和法规遵从性。
主要贡献
- 提出了RAD-AI框架,扩展arc42和C4模型以支持AI系统。
- 系统地映射了RAD-AI到欧盟AI Act Annex IV,提高了法规遵从性。
- 通过案例研究和专家评估验证了RAD-AI的有效性。
方法论
该论文采用案例研究、专家评估和比较分析的方法,验证RAD-AI框架在实际AI平台中的应用价值。
原文摘要
AI-augmented ecosystems (interconnected systems where multiple AI components interact through shared data and infrastructure) are becoming the architectural norm for smart cities, autonomous fleets, and intelligent platforms. Yet the architecture documentation frameworks practitioners rely on, arc42 and the C4 model, were designed for deterministic software and cannot capture probabilistic behavior, data-dependent evolution, or dual ML/software lifecycles. This gap carries regulatory consequence: the EU AI Act (Regulation 2024/1689) mandates technical documentation through Annex IV that no existing framework provides structured support for, with enforcement for high-risk systems beginning August 2, 2026. We present RAD-AI, a backward-compatible extension framework that augments arc42 with eight AI-specific sections and C4 with three diagram extensions, complemented by a systematic EU AI Act Annex IV compliance mapping. A regulatory coverage assessment with six experienced software-architecture practitioners provides preliminary evidence that RAD-AI increases Annex IV addressability from approximately 36% to 93% (mean rating) and demonstrates substantial improvement over existing frameworks. Comparative analysis on two production AI platforms (Uber Michelangelo, Netflix Metaflow) captures eight additional AI-specific concerns missed by standard frameworks and demonstrates that documentation deficiencies are structural rather than domain-specific. An illustrative smart mobility ecosystem case study reveals ecosystem-level concerns, including cascading drift and differentiated compliance obligations, that are invisible under standard notation.