Tiered Compliant AI System for Regulated Financial Institutions
ulti Agentic Execution Capable Framework with Built-In DLT Audit Trails for Financial Operations in DACH
Abstract
We present a compliance-first architecture for AI in regulated finance that treats regulation as an orientation layer rather than a deterministic ruleset. A matrix of regulatory intent and exposure provides a compact classification handle, which a governed policy compiler then maps into concrete prohibitions, obligations and runtime budgets. Prohibitions constrain feasibility and block externalisation, while obligations extend tasks with artefacts that must meet explicit admissibility criteria. Committee activation remains policy-driven and proportionate, preserving efficiency while ensuring supervisory oversight. Evidence, decisions and reason codes are bound to a permissioned DAG with deterministic timestamping, enabling replay, provenance checks and clear attribution of failure. Clause-level legal indexing with effective dates and capability-based agent routing ensure portability across DACH and the wider EU. The result is assurance by construction: compliance is embedded in execution and verifiable by auditors without sacrificing proportionality or transparency.
Keywords:
DACH finance, regulated financial institutions, multi agent AI expert system, AI, AI Governance, AI in legal systems, Austrian Financial Market, AI-driven compliance, Artificial Intelligence, EU AI Act, MiFID II, DORA, GDPR, ESG, Finance, FMA, BaFin, FINMADownloads
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Copyright (c) 2026 Walter Kurz, Reinhard Magg

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