Graph Neural Network Training Graph Neural Network Training
Machine Learning: Foundations, Methodologies, and Applications

Graph Neural Network Training

From Data Management Perspective

    • £87.99
    • £87.99

Publisher Description

Graph Neural Networks (GNNs) have revolutionized the way we learn representations from graph-structured data, becoming a cornerstone for applications in social networks, recommendation systems, biology, and beyond. However, mainstream GNNs rely heavily on message passing, an iterative process of propagating information between connected nodes. While powerful, this method often incurs significant computational costs, making efficient training a growing challenge as graph sizes scale up.

This book addresses these challenges by offering a comprehensive exploration of efficient GNN training through the lens of data management. It highlights how innovative techniques, rooted in decades of graph processing research, can optimize the entire training process without compromising performance. By focusing on system-level enhancements and practical solutions, it provides actionable strategies to overcome efficiency bottlenecks in large-scale GNN training.

Readers will gain a deeper understanding of the graph data lifecycle in GNN training, with examples that demonstrate how data management techniques can significantly enhance scalability and performance. The book is designed for a broad audience, including students, researchers, and professionals, offering clear explanations and practical insights for anyone looking to master efficient GNN training.

GENRE
Science & Nature
RELEASED
2026
26 May
LANGUAGE
EN
English
LENGTH
203
Pages
PUBLISHER
Springer Nature Singapore
SIZE
34.4
MB
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