Generative AI and Agentic AI with Deep Learning, CNN, LLMs
Python, NumPy, Pandas, Matplotlib, Deep Learning, Generative AI : GAN, VAE, LLMs, RAG, MCP, ACP, A2A, Agentic AI & more
Development ,Data Science,Machine Learning
Lectures -187
Resources -1
Duration -24.5 hours
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Course Description
We begin with Python fundamentals and dive into essential data libraries like NumPy, Pandas, and Matplotlib for effective data handling and visualization. Then, we advance into Deep Learning, building and training neural networks Mode to understand the core mechanics behind AI.
Generative AI is a subset of Deep Learning. Without a solid understanding of Deep Learning fundamentals, learning Generative AI becomes difficult and often confusing. That’s why I’ve combined the most essential parts from one of my previous Deep Learning courses into this course. This ensures that you build a strong foundation before diving into advanced Generative AI topics.
Once the Deep Learning Fundamentals is complete, You’ll then explore the rapidly evolving field of Generative AI: From training your own GANs and VAEs, to working with Large Language Models (LLMs), Retrieval-Augmented Generation (RAG), and Diffusion Models, this course offers hands-on projects and intuitive explanations.
Finally, we introduce you to the next frontier: Agentic AI. Learn about intelligent agent architectures such as MCP, ACP, and A2A, and use cutting-edge frameworks like Lang Chain to build autonomous, goal-driven AI agents.
What You’ll Learn
- Python programming basics and data manipulation using NumPy and Pandas
- Data visualization using Matplotlib
- Fundamentals of Deep Learning and neural network training
- Building Generative AI models: GANs, VAEs, LLMs, and Diffusion Models
- Implementing Retrieval-Augmented Generation (RAG)
- Understanding and applying Agentic AI Protocols: MCP, ACP, A2A
- Working with popular Agentic AI frameworks like LangChain
- No prior programming or AI experience is required
- A basic understanding of high-school math is helpful
- Access to a computer with internet connection
- Curiosity and a willingness to learn by building real-world projects
Also after completing this course, you will be provided with a course completion certificate which will add value to your portfolio.
So that's all for now, see you soon in the class room. Happy learning and have a great time.
Goals
- Design and implement Generative AI models such as GANs, VAEs, Diffusion Models, and Large Language Models, including Retrieval-Augmented Generation (RAG).
- Build autonomous AI agents using Agentic AI frameworks like LangChain and apply protocols such as MCP, ACP, and A2A
- Understand and train deep learning models, building a strong foundation for advanced AI concepts.
- Write Python programs and perform data manipulation and visualization using NumPy, Pandas, and Matplotlib.
Prerequisites
- No prior programming or AI experience is required, this course starts from the basics. A basic understanding of high school mathematics (algebra, probability, and functions) will be helpful. Access to a computer with an internet connection. Curiosity, consistency, and a willingness to learn by building hands-on projects.

Curriculum
Check out the detailed breakdown of what’s inside the course
Course Introduction and Table of Contents
1 Lectures
-
Course Introduction and Table of Contents 02:34 02:34
Introduction to Generative AI, Machine Learning and Deep Learning
4 Lectures

Setting up Computer
1 Lectures

Python Programming Basics
6 Lectures

Basic Python ML Library Basics: Numpy, Pandas & Matplotlib
6 Lectures

Deep Learning and Convolutional Neural Networks
66 Lectures

Popular CNN and Generative Network Types
1 Lectures

Type 1: GAN - Generative Adversarial Networks
50 Lectures

Type 2: VAE - Variational Auto Encoders
13 Lectures

Type 3: Autoregressive Models - Natural Language Processing Fundamentals
4 Lectures

Type 3: Autoregressive Models - Transformers and LLMs
5 Lectures

LLM Customization - Fine Tuning and RAG (Retrieval-Augmented Generation)
8 Lectures

Agentic AI Fundamentals
6 Lectures

Popular Agentic AI Protocols - MCP, ACP, A2A
8 Lectures

AI Agent Frameworks
5 Lectures

Generative AI: Diffusion Models
2 Lectures

SOURCE CODE DOWNLOAD
1 Lectures

Instructor Details

Abhilash Nelson
Ph.D, Computer Engineering Master, Senior Trainer & CoderI am a pioneering, talented and security-oriented Android/iOS Mobile and PHP/Python Web Developer Application Developer offering more than eight years’ overall IT experience which involves designing, implementing, integrating, testing and supporting impact-full web and mobile applications.
I am a Ph.D in AI and Deep Learning and Post Graduate Masters Degree holder in Computer Science and Engineering.
My experience with PHP/Python Programming is an added advantage for server based Android and iOS Client Applications.
I am currently serving full time as a Senior Solution Architect managing my client's projects from start to finish to ensure high quality, innovative and functional design.
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