What is AI & Generative AI

What is AI & Generative AI?

Artificial Intelligence (AI) is the field of computer science that enables machines to perform tasks that usually require human intelligence — like decision-making, language understanding, visual perception, and problem-solving.

Generative AI is a powerful subset of AI that focuses on creating new content — such as text, images, audio, or code. Instead of just analyzing data, it can generate new data. Tools like ChatGPT, DALL•E, and Midjourney are real-world examples of Generative AI in action.

With Generative AI, machines don’t just think—they create!

Basics of AI, ML, and NLP:

To understand AI deeply, it’s important to explore its three core components:

1. AI (Artificial Intelligence):

The broader concept of machines being able to carry out smart tasks.

2. ML (Machine Learning):

A subset of AI where machines learn patterns from data and make predictions or decisions without being explicitly programmed.

3. NLP (Natural Language Processing):

This is how machines understand, interpret, and respond to human language. It’s what powers voice assistants, chatbots, and AI-generated content.

Introduction to LLMs (Large Language Models):

Large Language Models (LLMs) like GPT-4 or Google’s PaLM are advanced AI models trained on huge amounts of text data. These models:

   • 
Understand context
   •  Generate human-like text
   •  Translate languages
   •  Summarize information
   •  Answer complex questions

LLMs form the backbone of modern Generative AI tools. LangChain uses these LLMs to build intelligent, dynamic AI applications — like AI-powered chatbots, automation tools, and decision systems.

Why Learn This Module?

Understanding the foundation of AI, ML, NLP, and LLMs helps you:

   •  Build a strong conceptual base
   •  Stay ahead in the AI-driven future
   •  Prepare for practical projects using LangChain

Whether you’re a developer, data enthusiast, or tech entrepreneur, this module equips you with the knowledge to confidently enter the world of Generative AI & LangChain.

Evolution of AI: From Rule-Based to Generative AI

•  Brief history of AI: Symbolic AI → Machine Learning → Deep Learning → Generative AI
  How AI evolved to understand context, learn from data, and now generate content
  Real-world examples of each stage

Applications of Generative AI in Real Life

  Content creation (blog posts, design, marketing)
  Customer support (AI chatbots like ChatGPT)
  Healthcare (medical report summaries, diagnostics)
  Education (AI tutors, smart assessment tools)
  Coding & Development (AI code generators)

Course Video in English