Editor’s Note: The following is an article written for and published in DZone’s 2024 Trend Report, Data Engineering: Enriching Data Pipelines, Expanding AI, and Expediting Analytics.

As businesses collect more data than ever before, the ability to manage, integrate, and access this data efficiently has become crucial. Two major approaches dominate this space: extract, transform, and load (ETL) and extract, load, and transform (ELT). Both serve the same core purpose of moving data from various sources into a central repository for analysis, but they do so in different ways. Understanding the distinctions, similarities, and appropriate use cases is key to perfecting your data integration and accessibility practice.

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