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Graph Data Modeling in Python

You're reading from   Graph Data Modeling in Python A practical guide to curating, analyzing, and modeling data with graphs

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Product type Paperback
Published in Jun 2023
Publisher Packt
ISBN-13 9781804618035
Length 236 pages
Edition 1st Edition
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Authors (2):
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Gary Hutson Gary Hutson
Author Profile Icon Gary Hutson
Gary Hutson
Matt Jackson Matt Jackson
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Matt Jackson
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Table of Contents (16) Chapters Close

Preface 1. Part 1: Getting Started with Graph Data Modeling
2. Chapter 1: Introducing Graphs in the Real World FREE CHAPTER 3. Chapter 2: Working with Graph Data Models 4. Part 2: Making the Graph Transition
5. Chapter 3: Data Model Transformation – Relational to Graph Databases 6. Chapter 4: Building a Knowledge Graph 7. Part 3: Storing and Productionizing Graphs
8. Chapter 5: Working with Graph Databases 9. Chapter 6: Pipeline Development 10. Chapter 7: Refactoring and Evolving Schemas 11. Part 4: Graphing Like a Pro
12. Chapter 8: Perfect Projections 13. Chapter 9: Common Errors and Debugging 14. Index 15. Other Books You May Enjoy

The use of graphs across various industries

Graph data science is prevalent across a wide array of industries.

The main areas where graphs are being used effectively are as follows:

  • Finance: To look at fraud detection and portfolio risk.
  • Government: To aid with intelligence profiling and supply chain analytics.
  • Life sciences: For looking at patient journeys through a hospital (the transition of a patient through various services), drug response rates, and the transition of infections through a population.
  • Network & IT: Security networks and user access management (nodes on a network represent each user logging into a network).
  • Telecoms: Through network optimization and churn prediction.
  • Marketing: Mainly for customer and market segmentation purposes.
  • Social media analysis: We work for a company that specializes in platform moderation, online harm protection, and brand defense. By creating graphs to defend against attacks on brands, we can find vulnerable people or moderate the most severe type of content.

In terms of graphs in industry, they are pervasive due to the reasons we have already explored in this chapter. The ability to quickly link nodes and edges, and create relationships between them, is the reason why more problems in data science are being modeled as graphs or network science problems. In addition, the underlying data can be queried at a rapid rate. This can be done instead of using traditional database solutions, which, as we have already identified, are slow to query compared to GDBs.

Following this, in the next section, we will introduce the main two driving packages for graph analytics and modeling. We will show you the basic usage of the packages. In the subsequent chapters, we will keep building on why these packages are powerful.

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Graph Data Modeling in Python
Published in: Jun 2023
Publisher: Packt
ISBN-13: 9781804618035
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