By 2025, 80% of enterprises will integrate GenAI into production workflows, yet only 15% feel confident deploying reliable RAG systems. This Short Course was created to help Machine Learning and Artificial Intelligence professionals build, optimize, and evaluate production-grade GenAI applications on the Databricks platform. By completing this course, you'll be able to construct vector search pipelines from raw data, fine-tune models with MLflow tracking, and implement rigorous evaluation frameworks that ensure your GenAI systems meet real-world SLA requirements—skills you can apply immediately to customer-facing AI deployments.

Databricks GenAI Engineering

Databricks GenAI Engineering

Instructor: Hurix Digital
Access provided by Rothschild & Co. Wealth Management UK
Recommended experience
What you'll learn
RAG grounds LLM responses in retrieved data, reducing hallucinations while enabling dynamic, domain-aware conversations.
Systematic tuning with MLflow balances quality, latency, and cost for scalable GenAI deployments.
Production GenAI needs continuous monitoring of accuracy, relevance, cost efficiency, and latency to maintain trust and viability.
Lakehouse platforms like Databricks remove ETL friction, enabling smooth GenAI workflows from documents to vectors.
Details to know

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April 2026
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There are 3 modules in this course
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Felipe M.

Jennifer J.

Larry W.

Chaitanya A.
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