Unlike existing books that focus primarily on theory, this practitioner-oriented guide emphasizes real-world implementation using the latest Python frameworks including PyTorch Geometric, DGL, and GraphScope. You'll master core architectures like Graph Convolutional Networks, GraphSAGE, and Graph Attention Networks, then advance to cutting-edge topics including heterogeneous graphs, temporal networks, and large-scale distributed training.
The book provides hands-on experience with complete MLOps pipelines, covering model serving, monitoring, and production deployment strategies. Each chapter includes specific framework recommendations and detailed implementation guidance for building recommendation systems, molecular modeling applications, fraud detection systems, and social network analysis tools.
Perfect for Python developers, data scientists, and machine learning engineers seeking to leverage graph-structured data, this book bridges the gap between academic research and practical application. With comprehensive coverage of scaling techniques, performance optimization, and real-world case studies, you'll gain the expertise needed to deploy graph neural networks in production environments successfully.
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