This course covers generative AI engineering on Azure Databricks, using Spark to explore, fine-tune, evaluate, and integrate advanced language models.
It teaches how to implement techniques like retrieval-augmented generation (RAG) and multi-stage reasoning, as well as how to fine-tune large language models for specific tasks and evaluate their performance. Students will also learn about responsible AI practices for deploying AI solutions and how to manage models in production using LLMOps (Large Language Model Operations) on Azure Databricks.
- Implement Generative AI engineering with Azure Databricks
- Get started with language models in Azure Databricks
- Implement Retrieval Augmented Generation (RAG) with Azure Databricks
- Implement multi-stage reasoning in Azure Databricks
- Fine-tune language models with Azure Databricks
- Evaluate language models with Azure Databricks
- Review responsible AI principles for language models in Azure Databricks
- Implement LLMOps in Azure Databricks
NOK 9.900
COURSE CONTENT: • Data modeling in ABAP • Creating database tables • Defining global types • Defining CDS views • Defining relationships and associations between objects • Using code…
COURSE CONTENT: Module 1 : Get started with Microsoft data analytics- Discover data analysis • Get started building with Power BI • Introduction to end-to-end analytics using Microsoft Fabric…
COURSE CONTENT: Module 1 : Explore Azure Databricks • Provision an Azure Databricks workspace. • Identify core workloads and personas for Azure Databricks. • Use Data Governance tools Unity…
We use cookies to improve your experience, including essential cookies required for the website to function. By continuing, you agree to our use of cookies. Learn more.