
Generative AI Real world Projects in Python, GenAI real world projects in Python : Build 3 end-2-end LLM apps with LangChain, RAG, Vector DB, ChatGPT, Gemini, Llama.
Course Description
Learn Generative AI by solving Generative AI projects.
Build practical LLM applications using LangChain + RAG, work with Vector Databases, and integrate ChatGPT, Gemini & LLaMA in production-style workflows.
By the end of this course, you will have a strong Generative AI project portfolio, real experience working with LLM APIs, RAG systems, and vector databases, and a clear understanding of how modern AI-powered products are built and deployed in real-world environments.
What You Will Build (Generative AIÂ Real-World Projects) :
Project 1 : Cold Email Generator using LLaMA 3.3
Build an AI-powered cold email generator that:
- Analyzes job descriptions or business requirements
- Extracts relevant skills and context
- Automatically generates personalized, high-quality cold emails
This project demonstrates how companies use open-source LLMs like LLaMA for sales automation and outreach.
Project 2 : Text-to-SQL Generator using Google Gemini
Create an intelligent system that:
- Converts natural language questions into SQL queries
- Works on real database schemas
- Enables non-technical users to query databases using plain English
This project reflects real enterprise use cases in data analytics, business intelligence (BI), and AI-driven decision-making systems.
Project 3 : Food Calorie Detector using OpenAI GPT
Develop a multimodal AI pipeline that:
- Takes food images as input
- Extracts food information using vision models
- Retrieves verified nutritional data
- Generates structured calorie, protein, fat, and carb insights using GPT
This project showcases end-to-end GenAI workflows, combining computer vision, retrieval-augmented generation (RAG), and LLM reasoning.
What You Will Learn ?
- How to Build Generative AI projects in Python
- Create LLM apps using LangChain
- Prompt engineering techniques for reliable and accurate outputs
- Building RAG (Retrieval-Augmented Generation) systems
- Working with embeddings and vector databases
- Work with ChatGPT, Google Gemini, and LLaMA
Why This Course Is Different ?
- 100% project-based learning
- Real industry-style use cases (not toy examples)
- Multiple LLM providers: OpenAI, Google Gemini, LLaMA
- Focus on end-to-end GenAI system design
- Portfolio-ready projects for interviews
By completing this course, you won’t just understand Generative AI —
you’ll know how to build, apply, and explain GenAI solutions confidently in real-world scenarios.
Enroll now and start building production-ready Generative AI applications.

