From NLP to LLMs – A Hands-On Guide for Beginners
Published 7/2025
Duration: 1h 52m | .MP4 1280x720 30 fps(r) | AAC, 44100 Hz, 2ch | 703.95 MB
Genre: eLearning | Language: English
Published 7/2025
Duration: 1h 52m | .MP4 1280x720 30 fps(r) | AAC, 44100 Hz, 2ch | 703.95 MB
Genre: eLearning | Language: English
Unlocking Language with AI - Your First Step into NLP and LLMs
What you'll learn
- Understanding NLP and Introducing Transformers
- Understanding Pre-Trained LLMs
- Deep Dive into Transformer Architecture
- Familiarizing popularly used LLMs (Llama, BERT, GPT)
- LLM training vs Fine-tuning for custom tasks
- Importance of designing effective prompt design
- Ethics, Safety and Future Scope
- Capstone Project for creating and deploying your very first Local LLM model
Requirements
- Basic knowledge of Python
- Overview of AI-Ecosystem
Description
Course Overview
Natural Language Processing (NLP) has evolved rapidly, transforming how machines understand and generate human language. At the forefront of this revolution are Large Language Models (LLMs), which power everything from chatbots to advanced AI systems. This beginner-friendly course takes you on a guided journey from the foundations of NLP to building and deploying your very own LLM-powered application.
What’s in this course?
This course provides a step-by-step introduction to NLP, the rise of transformer-based models, and the practical use of pre-trained LLMs like BERT, GPT, and Llama. Whether you're a student, developer, or enthusiast, you'll gain a practical understanding of how modern language models work and how to leverage them using Python.
Through engaging lectures, live demos, and real-world examples, you’ll learn:
How NLP has evolved and the limitations of early rule-based methods
The inner workings of transformer architecture
Key differences between popular LLMs like BERT and GPT
How to interact with LLMs using Hugging Face
Prompt engineering techniques to guide model outputs
How to integrate LLMs into real applications and optimize them for deployment
Ethical challenges and the future scope of language models
How to build and deploy your first LLM-powered chatbot using Flask
Special Note:
This course emphasizes hands-on implementation using Python and vs code. Every concept is paired with a hands-on demonstration, ensuring you not only understand the theory but also gain practical skills in using LLMs effectively.
Course Structure:
Lectures
Demos
Real World Examples/Applications
Capstone Project
Course Contents:
Course Introduction
Getting started with NLP and limitations of traditional approaches
"Attention is All You Need"-Rise of Transformers
Deep Dive into Transformer Architecture
Familiarizing popularly used LLMs (Llama, BERT, GPT)
LLM training vs Fine-tuning for custom tasks
Importance of designing effective prompt design
Zero-shot vs Few-shot learning
Optimizing deployment cost and latency
Bias, Toxicity and Fairness challenges
Mitigating risks to enhance safety
Future scope for LLMs
Capstone project - Creating and Deploying your very first Local LLM model
By the end of this course, you’ll be confident in understanding and working with Large Language Models. You’ll be able to build, fine-tune, and integrate LLMs into real-world applications and responsibly navigate their ethical implications.
Who this course is for:
- Beginners in NLP & LLMs
- AI/ML Engineers
- Data Scientists & Developers working with text data and model integration
- Tech Leads & Product Managers exploring LLM applications in products
- AI/GenAI Enthusiasts curious to build and deploy their first LLM-based project
More Info