Profile PictureRajamanickam Antonimuthu
$4

ebook- Python for AI Developers: A Beginner's Guide to Artificial Intelligence Programming

Add to cart

ebook- Python for AI Developers: A Beginner's Guide to Artificial Intelligence Programming

$4

Note: This ebook is included in the AI Course which you can get with a discount using the coupon code QPT.

Jumpstart your AI journey with the power of Python! This beginner-friendly guide takes you from Python basics to building real-world AI applications. Learn essential programming skills, explore powerful libraries like NumPy, Pandas, and Scikit-learn, and dive into machine learning, deep learning, NLP, and computer vision. With hands-on practice, expert tips, and step-by-step projects, this book is your perfect launchpad into the world of artificial intelligence—no prior experience required!

Chapter 1: Introduction to Python for AI

🔹 1.1 Why Python for AI Development? 

🔹 1.2 Installing Python and Setting Up Your Development Environment 

🔹 1.3 Introduction to Jupyter Notebooks and Google Colab 

🔹 1.4 Python Basics Recap: Let’s Get Coding! 

🎯 Hands-On Practice 

🚀 What’s Next? 

Chapter 2: Core Python Programming 

🔹 2.1 Control Flow: If-Else, Loops 

🔹 2.2 Functions and Modules 

🔹 2.3 Object-Oriented Programming (OOP) in Python 

🔹 2.4 Exception Handling 

🧪 Practice Time 

🚀 What’s Next? 

Chapter 3: Essential Python Libraries for AI 

🔹 3.1 NumPy: Handling Arrays and Matrices 

🔹 3.2 Pandas: Data Analysis and DataFrames 

🔹 3.3 Matplotlib & Seaborn: Data Visualization 

🔹 3.4 Scikit-learn: Introduction to Machine Learning 

🧪 Practice Time 

🚀 What’s Next? 

Chapter 4: Working with Data

🔹 4.1 Loading and Preprocessing Datasets

🔹 4.2 Handling Missing Data and Outliers

🔹 4.3 Feature Engineering and Scaling

🧪 Practice Time 

📌 Quick Tips for Better Data Handling

🚀 What’s Next?

Chapter 5: Introduction to Machine Learning with Python

🔹 5.1 Supervised vs. Unsupervised Learning

🔹 5.2 Building a Simple Machine Learning Model with Scikit-learn

🔹 5.3 Evaluating Model Performance

🛠️ Other Useful Metrics

💡 Pro Tips 

🧪 Practice Time

🚀 What’s Next?

Chapter 6: Deep Learning with Python 

🔹 6.1 Introduction to Neural Networks

🔹 6.2 Using TensorFlow and PyTorch 

🔸 6.3 Building a Simple Neural Network 

🔹 6.4 Training and Evaluating Deep Learning Models

🔹 Bonus: PyTorch Version (Optional for Advanced Users) 

🧪 Practice Time 

📌 Quick Tips 

🚀 What’s Next? 

Chapter 7: Natural Language Processing (NLP) with Python 

🔹 7.1 Tokenization and Text Processing 

🔹 7.2 Word Embeddings and Transformers 

🔹 7.3 Building an NLP Model with Hugging Face

🧪 Practice Time 

📌 Quick Tips 

🚀 What’s Next? 

Chapter 8: Computer Vision with Python 

🔹 8.1 Working with OpenCV

🔹 8.2 Image Classification with TensorFlow/Keras

🔹 8.3 Object Detection Basics

🧪 Practice Time

📌 Quick Tips

🚀 What’s Next? 

Chapter 9: AI Model Deployment 

🔹 9.1 Saving and Loading AI Models 

🔹 9.2 Deploying Models with Flask 

🔹 9.3 Deploying with FastAPI (Modern & Fast 🚀) 

🔹 9.4 Running AI Models in the Cloud 

🧪 Practice Time 

📌 Quick Tips 

🚀 What’s Next? 

Chapter 10: Advanced AI Topics & Next Steps 

🔹 10.1 Reinforcement Learning (RL) Overview 

🔹 10.2 Generative AI & Large Language Models (LLMs) 

🔹 10.3 Trends and Future of AI 

🔹 10.4 Career Roadmap in AI 

🧭 Your Learning Journey: What’s Next? 

🧪 Final Challenge 

🧠 Final Thoughts 

Note: This ebook is included in the AI Course, which you can get with a discount using the coupon code QPT.

Add to cart

ebook useful to learn python for AI Development

Copy product URL