Take Your ETL Testing Skills to the Cloud, at Scale, and into the Age of AI
Modern ETL Testing with AI – Volume 2 picks up where foundational ETL testing leaves off. If you can already validate a row count, compare source and target, and write a solid Python assertion, this book takes you the rest of the way: into cloud data warehouses, data lakes, Spark, Kafka, CDC pipelines, enterprise CI/CD, and the growing role of AI agents in building and maintaining test coverage.
Written for testers, data engineers, and QA professionals now responsible for pipelines spanning multiple clouds, near-real-time streams, and audit-grade reporting.
What's InsideEvery chapter follows the same discipline: explain why the problem matters before showing how to solve it, ground every technique in runnable SQL, Python, PySpark, and YAML code, and close with testing checkpoints you can use as a QA checklist. Real-world examples throughout—a skewed join that broke a telecom billing pipeline, a silent delete gap in an e-commerce inventory feed, a currency conversion bug caught by a canary deployment—show how these techniques catch real, costly defects before they reach production.
The AI chapters take a disciplined approach: agents accelerate test generation and anomaly triage, but every consequential decision stays under human review, with clear guardrails against AI quietly locking in bugs.
Who This Book Is ForWhether you're preparing for your next interview, building a testing practice for a growing data platform, or leading a team through the shift to cloud-native, AI-augmented data engineering, this volume gives you practical, tested, immediately usable techniques to get there.
"synopsis" may belong to another edition of this title.
Seller: California Books, Miami, FL, U.S.A.
Condition: New. Print on Demand. Seller Inventory # I-9798185427330