Cloud-Native Architecture for AI Data Platforms: A Snowflake Implementation Case Study

Dandolu, Srikanth (2025) Cloud-Native Architecture for AI Data Platforms: A Snowflake Implementation Case Study. World Journal of Advanced Engineering Technology and Sciences, 15 (3). pp. 475-485. ISSN 2582-8266

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Abstract

This architectural analysis presents a comprehensive implementation of a cloud-native Snowflake-based data platform optimized for enterprise AI workloads. The design decisions, scalability strategies, and performance optimization techniques address the unique challenges of supporting machine learning pipelines in large-scale enterprise environments. The architecture leverages dynamic resource allocation, advanced partitioning strategies, and zero-copy cloning to enable efficient AI experimentation while maintaining governance and security. The multi-layer design approach effectively separates storage, compute, and service concerns while facilitating seamless integration with existing enterprise systems and external ML frameworks. Performance benchmarks reveal significant improvements in feature extraction times, concurrent workload handling, and cost efficiency. This case provides valuable insights for data architects and engineers tasked with designing similar AI-ready data infrastructure solutions, highlighting both successful patterns and areas requiring further optimization. The findings contribute to the growing body of knowledge on practical implementations of cloud-native architectures for AI-centric data platforms in enterprise settings.

Item Type: Article
Official URL: https://doi.org/10.30574/wjaets.2025.15.3.0931
Uncontrolled Keywords: Cloud-Native Architecture; AI Data Platforms; Snowflake Optimization; Enterprise Scalability; ML Infrastructure
Depositing User: Editor Engineering Section
Date Deposited: 16 Aug 2025 12:53
Related URLs:
URI: https://eprint.scholarsrepository.com/id/eprint/4477