Enterprise financial platforms have historically been designed as systems of record augmented post-hoc with analytical and AI capabilities — an approach that imposes a compounding integration tax that grows superlinearly with platform complexity. This paper argues that AI must be treated as a foundational architectural concern from platform inception, not a layered addition, and introduces five architecture patterns for AI-native financial system design: Event-Driven Intelligence, Federated AI Governance, Compliance-by-Design, Adaptive Schema Fabric, and Explainability-First. These patterns, derived from practitioner experience designing and operating enterprise-scale financial platforms at a high-volume global technology manufacturer, collectively define a reference architecture for AI-native financial platforms. The paper further presents a simulated case study of an AI-native order-to-cash replatforming initiative and a comparative evaluation against traditional layered and bolt-on AI architectures. The Compliance-by-Design pattern explicitly integrates the Adaptive Compliance Intelligence and Governance (ACIG) framework as its implementation blueprint, establishing a formal connection between platform-level AI-native design and domain-specific compliance intelligence. Together, the two papers constitute a cohesive architectural framework for intelligent enterprise financial governance.
AJAY MIRANI (Fri,) studied this question.