• Databricks
  • Generative AI

Generative AI Engineering with Databricks

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Learning Track icon
Learning Track

Generative AI

Delivery methods icon
Delivery methods

On-Site, Virtual

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Duration

2 days

This course is aimed at data scientists, machine learning engineers, and other data practitioners who want to build generative AI applications using the latest and most popular frameworks and Databricks capabilities. 

Below, we describe each of the four, four-hour modules included in this course.

Generative AI Solution Development: This is your introduction to contextual generative AI solutions using the retrieval-augmented generation (RAG) method. First, you’ll be introduced to RAG architecture and the significance of contextual information using Mosaic AI Playground. Next, we’ll show you how to prepare data for generative AI solutions and connect this process with building a RAG architecture. Finally, you’ll explore concepts related to context embedding, vectors, vector databases, and the utilization of Mosaic AI Vector Search.

Generative AI Application Development: Ready for information and practical experience in building advanced LLM applications using multi-stage reasoning LLM chains and agents? In this module, you'll first learn how to decompose a problem into its components and select the most suitable model for each step to enhance business use cases. Following this, we’ll show you how to construct a multi-stage reasoning chain utilizing LangChain and HuggingFace transformers. Finally, you’ll be introduced to agents and will design an autonomous agent using generative models on Databricks.

Generative AI Application Evaluation and Governance: This is your introduction to evaluating and governing generative AI systems. First, you’ll explore the meaning behind and motivation for building evaluation and governance/security systems. Next, we’ll connect evaluation and governance systems to the Databricks Data Intelligence Platform. Third, we’ll teach you about a variety of evaluation techniques for specific components and types of applications. Finally, the course will conclude with an analysis of evaluating entire AI systems with respect to performance and cost.

Generative AI Application Deployment and Monitoring: Ready to learn how to deploy, operationalize, and monitor generative deploying, operationalizing, and monitoring generative AI applications? This module will help you gain skills in the deployment of generative AI applications using tools like Model Serving. We’ll also cover how to operationalize generative AI applications following best practices and recommended architectures. Finally, we’ll discuss the idea of monitoring generative AI applications and their components using Lakehouse Monitoring.

Objectives

There are four, half-day modules that make up this course. Please see the learning objectives for each of these modules, below: 

Generative AI Solution Development

  • Describe RAG architecture.

  • Use Mosaic AI Playground to explore the significance of contextual information. 

  • Prepare data for generative AI solutions. 

  • Connect data preparation for generative AI solutions to building a RAG architecture. 

  • Describe fundamental concepts about context embedding, vectors, vector databases, and the utilization of Mosaic AI Vector Search. 

Generative AI Application Development  

  • Explain how to decompose a problem into its components and select the most suitable model for each step to enhance business use cases. 

  • Construct a multi-stage reasoning chain utilizing LangChain and HuggingFace transformers. 

  • Design an autonomous agent using generative models on Databricks.

Generative AI Application Evaluation and Governance 

  • Explain the meaning behind and motivation for building evaluation and governance/security systems. 

  • Explain Databricks Data Intelligence Platform features for LLM evaluation and governance. 

  • Describe evaluation techniques for specific components and types of applications. 

  • Analyze entire AI systems with respect to performance and cost.

Generative AI Application Deployment and Monitoring

  • Explain best practices for deploying generative AI applications using tools like Model Serving. 

  • Explain how to operationalize generative AI applications following best practices and recommended architectures. 

  • Use Lakehouse Monitoring to monitor generative AI applications and their components. 

Prerequisites

  • Familiarity with natural language processing concepts
  • Familiarity with prompt engineering/prompt engineering best practices 

  • Familiarity with the Databricks Data Intelligence Platform

  • Familiarity with RAG  (preparing data, building a RAG architecture, concepts like embedding, vectors, vector databases, etc.)

  • Experience with building LLM applications using multi-stage reasoning LLM chains and agents

  • Familiarity with Databricks Data Intelligence Platform tools for evaluation and governance.

Course outline

  • Introduction to RAG
  • Preparing Data for RAG Solutions
  • Vector Search
  • Assembling and Evaluating a RAG Application
  • Foundations of Compound AI Systems
  • Building Multi-Stage Reasoning Chains
  • Agents and Cognitive Architectures
  • Importance of Evaluating GenAI Applications
  • Securing and Governing GenAI Applications
  • GenAI Evaluation Techniques
  • End-to-end Application Evaluation
  • Model Deployment Fundamentals
  • Batch Deployment
  • Real-Time Deployment
  • AI System Monitoring
  • LLMOps Concepts

Ready to accelerate your team's innovation?