Explore the updated edition with new chapters on LLMs, Temporal Graphs, and updated Pytorch Geometric examples to enhance your data science skills.
Key Features
Master new graph ML techniques with updated Pytorch Geometric examples
Explore case studies that demonstrate real-world applications of GML
Leverage graphs for advanced tasks in LLMs and Temporal learning
Book DescriptionGraph Machine Learning, Second Edition not only revises but expands on its successful first edition, providing you with the latest tools and techniques in graph machine learning. This edition introduces comprehensive updates across all chapters, new chapters on trending topics like LLMs and Temporal Graph Learning, and real-world case studies that illustrate the practical applications of these concepts.
From basic graph theory to advanced machine learning models, the book guides you through understanding how data can be represented as graphs to uncover complex patterns and relationships hidden in your data. This edition emphasizes practical application with updated code examples using Pytorch Geometric, making it easier for you to implement what you learn.
The expanded content includes detailed chapters on using graph machine learning for dynamic and evolving data and integrating graph theory with Large Language Models (LLMs) for enriched data interaction and analysis. By the end of this book, you’ll not only be versed in the theory of graph machine learning but also adept at applying it to solve real challenges in innovative ways.What you will learn
Implement graph ML algorithms with some examples in PyTorch Geometric
Apply graph analysis to dynamic datasets using Temporal Graph ML
Enhance NLP and text analytics with graph-based techniques
Solve complex real-world problems with graph machine learning
Build and scale graph-powered ML applications effectively
Deploy and scale out your application seamlessly
Who this book is forThis book is ideal for data scientists, ML professionals, and graph specialists looking to deepen their knowledge of graph data analysis or expand their machine learning toolkit. Prior knowledge of Python and basic machine learning principles is recommended.
Table of Contents
Getting Started with Graphs
Graph Machine Learning
Unsupervised Graph Learning
Supervised Graph Learning
Common Applications of Machine Learning on Graphs
Social Network Graphs
Text Analytics and Natural Language Processing (NLP) using Graphs
Graph Analysis for Credit Card Transactions
Building a data-driven Graph-Powered Application
Novel Trends on Graphs
LLMs and Graphs
Real-world scenarios (tentative)
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