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Implement Generative AI engineering with Azure Databricks
Course Description
Overview
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.Objectives
- Set up a RAG workflow.
- Prepare your data for RAG.
- Retrieve relevant documents with vector search.
- Improve model accuracy by reranking your search results.
- Identify the need for multi-stage reasoning systems.
- Describe a multi-stage reasoning workflow.
- Implement multi-stage reasoning with libraries like LangChain, LlamaIndex, Haystack, and the DSPy framework.
- Describe the responsible AI principles for implementation of language models.
- Identify the ethical considerations for language models.
- Mitigate the risks associated with language models.
- Implement key security tooling for language models.
- Describe the LLM lifecycle overview.
- Identify the model deployment option that best fits your needs.
- Use MLflow and Unity Catalog to implement LLMops.
Audience
Prerequisites
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Before starting this module, you should be familiar with fundamental Azure Databricks concepts. Consider completing the Get started with artificial intelligence learning path and the Explore Azure Databricks module first.
Topics
- Introduction
- Understand Generative AI
- Understand Large Language Models (LLMs)
- Identify key components of LLM applications
- Use LLMs for Natural Language Processing (NLP) tasks
- Exercise - Explore language models
- Module assessment
- Introduction
- Explore the main concepts of a RAG workflow
- Prepare your data for RAG
- Find relevant data with vector search
- Rerank your retrieved results
- Exercise - Set up RAG
- Module assessment
- Introduction
- What are multi-stage reasoning systems?
- Explore LangChain
- Explore LlamaIndex
- Explore Haystack
- Explore the DSPy framework
- Exercise - Implement multi-stage reasoning with LangChain
- Module assessment
- Introduction
- What is fine-tuning?
- Prepare your data for fine-tuning
- Fine-tune an Azure OpenAI model
- Exercise - Fine-tune an Azure OpenAI model
- Module assessment
- Introduction
- Explore LLM evaluation
- Evaluate LLMs and AI systems
- Evaluate LLMs with standard metrics
- Describe LLM-as-a-judge for evaluation
- Exercise - Evaluate an Azure OpenAI model
- Module assessment
- Introduction
- What is responsible AI?
- Identify risks
- Mitigate issues
- Use key security tooling to protect your AI systems
- Exercise - Implement responsible AI
- Module assessment
- Introduction
- Transition from traditional MLOps to LLMOps
- Understand model deployments
- Describe MLflow deployment capabilities
- Use Unity Catalog to manage models
- Exercise - Implement LLMOps
- Module assessment
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