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Autonomous Data Orchestration With Generative AI: Redefining Pipelines for Intelligent Analytics

Autonomous Data Orchestration With Generative AI: Redefining Pipelines for Intelligent Analytics
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Author(s): Muhammad Usman Tariq (Abu Dhabi University, UAE & University College Cork, Ireland)
Copyright: 2026
Pages: 28
Source title: Generative AI-Powered Data Architectures: From Governance to Autonomous Analytics
Source Author(s)/Editor(s): Bahaa Eddine Elbaghazaoui (Sultan Moulay Slimane University, Morocco), Mohamed Amnai (Ibn Tofail University, Morocco)and Noreddine Gherabi (Sultan Moulay Slimane University, Morocco)
DOI: 10.4018/979-8-3373-5616-7.ch007

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Abstract

Orchestration of autonomous data using generated AI transforms traditional analytics pipelines by introducing intelligent automation, context-related decision-making, and adaptive data workflows. This ambitious paradigm leverages the capabilities of large-scale models and basic AI systems to dynamically manage the absorption, transformation, integration, and delivery of data, eliminating the need for constant human supervision. Generated AI enables the system to interpret metadata, understand the data's intent, and optimize the pipeline itself based on power metrics or actual time analysis requirements. In contrast to the traditional static architecture, autonomous orchestration introduces continuous learning, enabling the pipeline to evolve further and adapt to changing business requirements and data ecosystems. Enhance agility, eliminate operational bottlenecks, and enhance accessibility for advanced analytics. This shift redefines the role of data engineers, focusing on governance, monitoring, and strategic design while minimizing manual intervention in pipeline operations.

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