Generic Agnostic AI and Distributed Ledger Enterprise System for Scalable Domain Adaptation
Architecture and Methodology for Vertical-Specific AI Deployment from a Unified Core Framework
Abstract
The objective of this study is to define a compliance-first, conceptually generalisable architecture for a multi-agent artificial intelligence platform integrated with distributed ledger technology, designed to be domain-, deployment-, and vendor-agnostic. It addresses a persistent shortcoming in current AI deployments, where compliance is often treated as a secondary concern, applied retroactively through prompt engineering rather than embedded within the foundational design. The proposed model encodes regulatory, governance, and ESG requirements into an objective-under-constraints framework, ensuring that all specialised agents operate within legally admissible and verifiably auditable parameters prior to any domain-specific implementation. A DAG-based verification layer is incorporated to enable scalable, low-latency, and cost-efficient operation while preserving evidentiary integrity. The analysis evaluates the feasibility of this conceptual model to support sustainable, rapid-deployment vertical applications without inducing vendor lock-in, preserving operational neutrality, and ensuring environmental accountability. The findings suggest that integrating compliance, ESG metrics, and agent specialisation at the architectural level provides a transferable foundation for cross-domain AI–DLT infrastructures.
Keywords:
Compliance-first AI, Multi-agent systems, Distributed ledger technology, ESG integration, Domain-agnostic architecture, Deployment-agnostic architecture, Objective-under-constraintsDownloads
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- 2026-01-24 (3)
- 2026-01-24 (2)
- 2026-01-24 (1)
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Copyright (c) 2026 Walter Kurz, Michel Malara

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