Volume 17, Number 1/2
Architecting Intelligent Decentralized Data Systems to Enable Analytics with Entropy-Aware Governance, Quantum Readiness and LLM-Driven Federation
Authors
Meethun Panda 1 and Soumyodeep Mukherjee 2, 1 Bain & Company, UAE, 2 Genmab, USA
Abstract
Enterprises pursuing AI-driven transformation face a critical tradeoff: centralized consistency vs. decentralized scalability. The "Data Platform Unification Paradox" captures this dilemma. Building on our prior NLPI 2025 paper, this extended version integrates technical depth, mathematical models, and concrete architectures, especially for integrating Data Mesh with Quantum Databases and LLM Agents. A federated architecture is proposed using graph-theoretic models and entropy-based data valuation. We introduce a formal structure to evaluate platform complexity and propose intelligent agent-based governance models to operationalize data sharing across domains. This work aims to move beyond conceptual frameworks by proposing actionable blueprints for next-generation, intelligent data ecosystems.
Keywords
Data Mesh, Entropy, Federated Graph, Zero-Trust, Quantum DB, LLM Agents, Domain Ownership, Data Governance, Distributed Data Platforms, Decentralized Architecture, Centralized Architecture