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Generative Migration Architectures: Accelerating Cloud-Native Data Integration Through AI Orchestration
Abstract
The integration of artificial intelligence into cloud migration frameworks represents a paradigm shift in data engineering practices across enterprise ecosystems. Generative AI models embedded within migration toolchains demonstrate exceptional capability in predicting schema inconsistencies and autonomously resolving structural disparities between heterogeneous data sources. Serverless architectures leveraging event-driven processing create adaptable migration pipelines that dynamically scale with workload intensity, effectively eliminating traditional bottlenecks. The evolution toward AI-augmented migration provides measurable advantages in regulatory compliance through automated data classification and lineage tracking. Performance benchmarking mechanisms intrinsic to these frameworks enable continuous optimization of cloud resource allocation throughout the migration lifecycle. Emerging decentralized data fabric implementations suggest promising directions for seamless analytics integration, positioning these migration frameworks as foundational components of resilient cloud-native data infrastructures. This advancement signals a transformative trajectory for data engineering, establishing new benchmarks for efficiency in complex heterogeneous environments.
Article information
Journal
Journal of Computer Science and Technology Studies
Volume (Issue)
7 (5)
Pages
709-718
Published
Copyright
Open access

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