<aside> <img src="/icons/news_blue.svg" alt="/icons/news_blue.svg" width="40px" />

Getting Started

Start Here

Module 0 - Overview

0.0 → Introduction to AI and its Evolution

0.1 → Machine Learning vs Deep Learning

0.2 → Tokens VS Parameters in Models

0.3 → What can AI realistically achieve today?

0.4 → 25 Papers That Completely Transformed the Computer World

Module 1 - Foundations of Artificial Intelligence

1.1 → Neuron & Perceptron

1.2 → Multi-Layer Perceptron

1.3 → Artificial Neural Network (ANN)

Module 2 - Deep Learning & Neural Network Architectures

2.1 → Convolutional Neural Networks (CNNs)

2.2 → Recurrent Neural Networks (RNNs)

2.3 → Long Short-Term Memory (LSTM) & (GRU)

2.4 → Encoder-Decoder Architectures and Attention Models

2.5 → Transfer Learning

2.6 → Activation Functions

Module 4 - Language Model Architectures

4.1 → Variational Auto-Encoders (VAEs)

4.2 → Generative Adversarial Networks (GANs)

4.3 → Transformers & Language Models

4.4 → Hugging Face Models

Module 5 - Large Language Model

5.1 → Large Language Models (LLMs)

5.2 → How ChatGPT works?

5.3 → Large Language Models

5.4 → State-of-the-art LLMs

5.5 → How difficult it is to build LLMs?

Module 6 - RAG and LangChain

6.1 → What is Retrieval-Augmented Generation?

6.2 → How does RAG differ from traditional generative models?

6.3 → Steps and Tools to build RAG System

6.4 → What is LangChain?

6.5 → Architecture of LangChain

6.6 → How to develop applications using LangChain?

6.7 → [Use Cases] - One

6.8 → [Use Cases] - Two

6.9 → [Use Cases] - Three

6.10 → [Use Cases] - Four

Module 7 - LLMs on Cloud - AWS, GCP, Azure

7.1 → What to know on Cloud for LLMs?

7.2 → AWS for LLMs

7.3 → GCP for LLMs

7.4 → Azure for LLMs

7.5 → Operationalizing ML models and challenges

Module 8 - Infrastructure, Implementation & Tools

8.1 → Building vs Buying AI

8.2 → How to Build Your Private Language Model?

8.3 → AI Project Management

8.4 → [Case Study] - AI Implementation

Module 9 - Business, Strategies & Stories

9.1 → AI Strategy and Leadership

9.2 → AI Ethics and Societal Implications

9.3 → Framework for AI Product Development

9.4 → [Case Study] - Google

9.5 → [Case Study] - Amazon

9.6 → [Case Study] - OpenAI

9.7 → [Case Study] - Netflix

9.8 → [Case Study] - AI Graveyard Companies → Failed

Module 10 - Future Directions

10.1 → The AI Hype vs Reality

10.2 → Trends in AI

10.3 → AI Certifications or No Certifications

10.4 → 1000+ AI Product Ideas across 21 Industries

10.5 → Final Word

Module 11 - Profile/Personal Brand

11.1 → Resume Building

11.2 → Projects and Portfolio

11.3 → Career Transition to AI

11.4 → How to get a Job in AI or how to get promoted?

11.5 → How to start your freelance work?

11.6 → Data Engineer VS AI Product Manager, Which profile to choose?

Bonus →

Interaction Event and Community Building

[Checklist] 9 Steps to AI Fundamentals Success

[Download any Book]

</aside>