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Graph Data Processing with Cypher

You're reading from   Graph Data Processing with Cypher A practical guide to building graph traversal queries using the Cypher syntax on Neo4j

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Product type Paperback
Published in Dec 2022
Publisher Packt
ISBN-13 9781804611074
Length 332 pages
Edition 1st Edition
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Author (1):
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Ravindranatha Anthapu Ravindranatha Anthapu
Author Profile Icon Ravindranatha Anthapu
Ravindranatha Anthapu
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Toc

Table of Contents (18) Chapters Close

Preface 1. Part 1: Cypher Introduction
2. Chapter 1: Introduction to Neo4j and Cypher FREE CHAPTER 3. Chapter 2: Components of Cypher 4. Part 2: Working with Cypher
5. Chapter 3: Loading Data with Cypher 6. Chapter 4: Querying Graph 7. Chapter 5: Filtering, Sorting, and Aggregations 8. Chapter 6: List Expressions, UNION, and Subqueries 9. Part 3: Advanced Cypher Concepts
10. Chapter 7: Working with Lists and Maps 11. Chapter 8: Advanced Query Patterns 12. Chapter 9: Query Tuning 13. Chapter 10: Using APOC Utilities 14. Chapter 11: Cypher Ecosystem 15. Chapter 12: Tips and Tricks 16. Index 17. Other Books You May Enjoy

Summary

In this chapter, we have seen how we can map the data to graph model using Arrows.app (https://arrows.app/#/local/id=jAGBmsu828g36qjzMAG4), along with working with the browser to load the data using LOAD CSV commands. Along the way, we looked at when to make a value a property or a node or use it an extra label that makes understanding our data much easier in a graph format.

We also discussed various commands for conditional data loading, such as using FOREACH to simulate an IF condition. We also looked at conditional data loading by combining a WHERE clause with a WITH clause.

Along the way, we discussed how the graph data model evolves as we keep considering more data being added to the database. This is made possible since Neo4j is a schemaless database. In a schema-strict database such as an RDBMS, we have to think through all the aspects of the data model before we can attempt to ingest the data. This makes data modeling iterations simpler and gives us the opportunity...

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