Develop Generative AI Applications Get Started

This course provides an introduction to developing generative AI applications using modern tools and frameworks. It covers prompt engineering, LangChain fundamentals, and building your first GenAI applications with practical hands-on projects.

Develop Generative AI Applications

  • It consist of three modules:
    1. Foundation of GenAI and Prompt Engineering
    2. Introduction to LangChain in GenAI AApplications
    3. Build a GenAI Application with LangChain

In this section

  • Module-1

    Foundation of GenAI and Prompt Engineering

    • Generative AI
      This document introduces generative AI, its evolution from discriminative AI and the foundational models that enable creative content generation across text, images, video, and code.
    • Foundation Models
      This document explores foundation models and large language models, covering their training methodology, advantages in performance and productivity, as well as challenges related to compute costs and trustworthiness in enterprise applications.
    • Natural Language Processing
      This document introduces natural language processing, explaining how computers translate between unstructured human language and structured data through techniques like tokenization, stemming, lemmatization, part of speech tagging and named entity recognition.
    • Guide to Gen Ai
      This document provides a comprehensive reference guide to generative AI covering fundamental concepts, key models, applications, and best practices for implementing GenAI solutions.
    • In-Context Learning
      This document introduces in-context learning and prompt engineering explaining how LLMs can learn new tasks from examples provided in prompts without additional training, along with techniques for crafting effective prompts to guide AI systems.
    • LangChain
      This document introduces LangChain, an open-source Python framework for developing LLM applications, exploring its benefits, practical uses, and integration capabilities with various data types.
    • Advanced Methods of Prompt Engineering
      This document explores advanced prompt engineering methods including zero-shot, few-shot, chain-of-thought, and self-consistency techniques, along with practical tools and applications for effective LLM interactions.
    • LangChain Expression Language
      This document introduces LangChain Expression Language (LCEL), covering how to build flexible chains using the pipe operator, structure prompts with templates, and develop reusable patterns for AI applications.
  • Module-2
    • LangChain Core Concepts
      This document defines LangChain and explores its core components including language models, chat models, chat messages, prompt templates, example selectors, and output parsers for building LLM applications.
    • LangChain Chains and Agents for Budilding LLM Applications
      This document describes chains in LangChain for generating responses, memory storage mechanisms, and agents for dynamic action sequencing to build sophisticated LLM applications.
    • LCEL Chaining Method
      This document describes how to build flexible, composable chains using LangChain Expression Language (LCEL), including prompt templates, pipe operators, runnable primitives, and type coercion mechanisms.
  • Module-3
    • Choose the Right AI Models for Use Case
      This document explores the multi-model approach for AI implementation covering model selection criteria, prompt engineering, continuous evaluation and collaborative team strategies for optimal AI deployment.
    • Building Apps with Generative AI
      This document covers the complete AI application development journey, from ideation and model selection through building with RAG and fine-tuning to production deployment with MLOps best practices.
    • Flask Web Framework
      This document introduces Flask, a Python micro web framework, covering its main features, installation process, built-in dependencies, popular community extensions, and key differences from Django.
    • Python with Flask for Large-Scale Projects
      This document explores Flask's capabilities for large-scale web development covering extensibility, scaling considerations, modular development patterns real-world enterprise applications, and HTTP status code handling for production deployments.