Overview
Hands-On Graph Neural Networks Using Python is your essential guide to the rapidly evolving field of graph neural networks (GNNs). Whether you're diving into graph theory basics or tackling sophisticated GNN architectures like Graph Convolutional Networks or Graph Attention Networks, this book provides clear explanations and practical applications to help you leverage graph analytics for real-world projects.
What this Book will help me do
- Gain a foundational understanding of graph theory and its application to machine learning.
- Learn to create, preprocess, and manage graph-based datasets efficiently in Python.
- Develop the expertise to implement key graph neural network architectures, including GCNs and GATs.
- Master techniques to solve problems such as node classification, link prediction, and graph classification.
- Apply GNNs in real-world scenarios like traffic forecasting, recommender systems, and anomaly detection.
Author(s)
Maxime Labonne is a seasoned data scientist with industry experience in applying machine learning to complex data structures, including graph analytics. Known for a practical hands-on teaching style, Maxime aims to demystify cutting-edge algorithms and empower readers to innovate with confidence. His extensive expertise and passion for education shine through in this comprehensive guide.
Who is it for?
This book caters to data scientists, machine learning practitioners, and developers keen on advancing their knowledge of graph neural networks. If you have a fundamental understanding of Python programming and machine learning basics, you'll find this resource invaluable for practical applications and research. Whether you're beginning your GNN journey or deepening your expertise, this book meets you where you are.