UNIFIED INTELLIGENCE FABRIC: AI-DRIVEN DATA ENGINEERING AND DEEP LEARNING FOR CROSS-DOMAIN AUTOMATION AND REAL-TIME GOVERNANCE
DOI:
https://doi.org/10.52152/q5726g61Keywords:
Deep Learning, Unified Intelligence Fabric, AI- Driven Data Engineering, Real-Time Automation, Real-Time Governance, Reinforcement Learning, Policy Learning, Pattern Learning, Transfer Learning, Continual Learning, Data Lineage, Feature Store, Trustworthy AI, Cross-Domain Intelligence, Intel- ligent Agents, Data Quality Management, Automation Architec- ture, Multi-Domain Systems, Scalable Governance, Adaptive AI Frameworks.Abstract
Advances in deep learning (DL) have enormous potential to automate processes across diverse domains. Yet the deployed solutions often lack sufficient quality, traceability, and real-time responsiveness because of manual tools and static, inflexible rule systems that govern them. Greater trustworthiness, reliability, and adaptability would enable AI to take a more autonomous role as an enabler of trustworthy intelligent agents. A unified intelligence fabric integrates AI-driven data engineering with DL to fulfil these requirements and thus facilitate real- time automation with real-time governance. Unlike traditional intelligent cross-domain systems, which integrate a federation of hand-crafted ML cycles with explicit rules for decisioning and actioning, this approach enables a multi-domain intelligent system coproduced by reinforcement learning, real-time policy learning, and real-time pattern learning. The resulting model architectures can share internal representations across domains through transfer learning and continual learning. An AI-driven data-engineering pipeline creates the data required by training and inference phases, manages quality and lineage to establish data as a product, and supplies a separate feature store for real-time governance. The fabric supports interdomain use cases, including cyber, risk, and quality operations in banking; patient stratification and signal detection in healthcare; supply-chain dis- ruptions in mining and manufacturing; and safety and pollution monitoring in smart cities. A phased deployment roadmap aligns data engineering and governance execution.
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