Zero-ETL Architectures for AI Workloads Direct ML Model Access on Cloud-Native OLAP Systems


연구 분야: Databases



학회: 2025 International Conference on Computing Technologies (ICOCT)


초록

The growing demand for real-time AI insights necessitates a shift from traditional Extract, Transform, Load (ETL) processes toward Zero-ETL architectures. This paper investigates an approach that lets ML models directly connect to cloud-native Online Analytical Processing (OLAP) systems by bypassing traditional data pipelines. Zero-ETL frameworks cut ETL expenses to deliver rapid access to data and provide automatic model updates combined with real-time execution against active operational data. The paper evaluates fundamental architectural elements of serverless computation together with distributed query infrastructure and real-time data extraction schemes that facilitate easy machine learning implementation. The evaluation outlines a comparison between Zero-ETL pipelines and traditional ETL solutions regarding operational complexity together with system throughput and model accuracy. Analysing artificial intelligence workload deployment through three popular cloud-native OLAP platforms BigQuery Snowflake and Redshift demonstrates performance improvement along with deployment advantage. This research addresses consistency and security and model governance issues in Zero-ETL environments through proposed future directions for building scalable intelligent data architectures for enterprises that use AI.


Author Profile
Ramesh Somayajula

Independent Researcher Snohomish WA USA

United States
Author Profile
Rakesh Ramakrishna Pai

Data Engineering IT Manager Franklin TN USA

Italy
Author Profile
Nirmal Sajanraj

Independent Researcher Celina TX USA

United States

📄 논문 정보

발행 연도 2025년
인용수 9
출판 국가 Suriname, Italy, United States
사이트 IEEE
좋아요 수 0

연관 논문 목록 (106건)