talk-data.com talk-data.com

R

Speaker

Ravindranatha Anthapu

2

talks

author

Filter by Event / Source

Talks & appearances

2 activities · Newest first

Search activities →
Building Neo4j-Powered Applications with LLMs

Dive into building applications that combine the power of Large Language Models (LLMs) with Neo4j knowledge graphs, Haystack, and Spring AI to deliver intelligent, data-driven recommendations and search outcomes. This book provides actionable insights and techniques to create scalable, robust solutions by leveraging the best-in-class frameworks and a real-world project-oriented approach. What this Book will help me do Understand how to use Neo4j to build knowledge graphs integrated with LLMs for enhanced data insights. Develop skills in creating intelligent search functionalities by combining Haystack and vector-based graph techniques. Learn to design and implement recommendation systems using LangChain4j and Spring AI frameworks. Acquire the ability to optimize graph data architectures for LLM-driven applications. Gain proficiency in deploying and managing applications on platforms like Google Cloud for scalability. Author(s) Ravindranatha Anthapu, a Principal Consultant at Neo4j, and Siddhant Agarwal, a Google Developer Expert in Generative AI, bring together their vast experience to offer practical implementations and cutting-edge techniques in this book. Their combined expertise in Neo4j, graph technology, and real-world AI applications makes them authoritative voices in the field. Who is it for? Designed for database developers and data scientists, this book caters to professionals aiming to leverage the transformational capabilities of knowledge graphs alongside LLMs. Readers should have a working knowledge of Python and Java as well as familiarity with Neo4j and the Cypher query language. If you're looking to enhance search or recommendation functionalities through state-of-the-art AI integrations, this book is for you.

Graph Data Processing with Cypher

This comprehensive guide, "Graph Data Processing with Cypher," provides a clear and practical approach to mastering Cypher for querying Neo4j graph databases. Packed with real-world examples and detailed explanations, you'll learn how to model graph data, write and optimize Cypher queries, and leverage advanced features to extract meaningful insights from your data. What this Book will help me do Master the Cypher query language, from basics to advanced graph traversal techniques. Develop graph data models based on real-world business requirements and efficiently load data. Optimize Cypher queries for performance through query profiling and tuning techniques. Enhance Cypher's capabilities using APOC utilities for advanced data processing. Create impactful visualizations of graph data using tools like Neo4j Bloom. Author(s) Ravindranatha Anthapu has vast expertise in graph databases and years of professional experience working with Cypher and Neo4j. He brings a hands-on and accessible approach to teaching technical concepts, aiming to empower developers to effectively use graph databases. Through a passion for knowledge-sharing, Ravindranatha ensures readers feel both supported and challenged in their learning journey. Who is it for? This book is ideal for database administrators, developers, and architects, especially those who work with graph databases or want to transition into this domain. Beginners with basic Cypher knowledge and professionals aiming to advance their graph modeling and query optimization skills will find this resource invaluable. It is especially beneficial for individuals seeking to harness the full potential of Neo4j graph databases through Cypher.