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Graph Data Processing with Cypher

Graph Data Processing with Cypher

By : Ravindranatha Anthapu
4.7 (10)
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Graph Data Processing with Cypher

Graph Data Processing with Cypher

4.7 (10)
By: Ravindranatha Anthapu

Overview of this book

While it is easy to learn and understand the Cypher declarative language for querying graph databases, it can be very difficult to master it. As graph databases are becoming more mainstream, there is a dearth of content and guidance for developers to leverage database capabilities fully. This book fills the information gap by describing graph traversal patterns in a simple and readable way. This book provides a guided tour of Cypher from understanding the syntax, building a graph data model, and loading the data into graphs to building queries and profiling the queries for best performance. It introduces APOC utilities that can augment Cypher queries to build complex queries. You’ll also be introduced to visualization tools such as Bloom to get the most out of the graph when presenting the results to the end users. After having worked through this book, you’ll have become a seasoned Cypher query developer with a good understanding of the query language and how to use it for the best performance.
Table of Contents (18 chapters)
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1
Part 1: Cypher Introduction
4
Part 2: Working with Cypher
9
Part 3: Advanced Cypher Concepts

Working with count stores

Neo4j maintains certain data statistics as count stores. For example, there are node count stores that maintain the counts of nodes for each label type. Since our dataset is small, we will use PROFILE to understand how much work the database would be doing in terms of db hits, with and without count stores, for a given type of work. We will also take a look at how to leverage count stores to build more performant queries.

Let’s look at a sample node count store query:

PROFILE MATCH (n:Patient)
RETURN count(n)

This is a very basic query, and it leverages count stores instead of counting the nodes that have the Patient label.

We can see from the screenshot, the database uses NodeCountFromCountStore@neo4j, which looks for the totals from the count store. We can see that it takes one db hit. The performance is constant, no matter how large the database grows.

Figure 8.19 – A query using the node count store

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