Graph Data Modeling in Python A Practical Guide to Curating, Analyzing, and Modeling Data with Graphs.

Book Cover
Average Rating
Published
Birmingham : Packt Publishing, Limited, 2023.
Status
Available Online

Description

Learn how to transform, store, evolve, refactor, model, and create graph projections using the Python programming language Purchase of the print or Kindle book includes a free PDF eBook Key Features Transform relational data models into graph data model while learning key applications along the way Discover common challenges in graph modeling and analysis, and learn how to overcome them Practice real-world use cases of community detection, knowledge graph, and recommendation network Book DescriptionGraphs have become increasingly integral to powering the products and services we use in our daily lives, driving social media, online shopping recommendations, and even fraud detection. With this book, you'll see how a good graph data model can help enhance efficiency and unlock hidden insights through complex network analysis. Graph Data Modeling in Python will guide you through designing, implementing, and harnessing a variety of graph data models using the popular open source Python libraries NetworkX and igraph. Following practical use cases and examples, you'll find out how to design optimal graph models capable of supporting a wide range of queries and features. Moreover, you'll seamlessly transition from traditional relational databases and tabular data to the dynamic world of graph data structures that allow powerful, path-based analyses. As well as learning how to manage a persistent graph database using Neo4j, you'll also get to grips with adapting your network model to evolving data requirements. By the end of this book, you'll be able to transform tabular data into powerful graph data models. In essence, you'll build your knowledge from beginner to advanced-level practitioner in no time. What you will learn Design graph data models and master schema design best practices Work with the NetworkX and igraph frameworks in Python Store, query, ingest, and refactor graph data Store your graphs in memory with Neo4j Build and work with projections and put them into practice Refactor schemas and learn tactics for managing an evolved graph data model Who this book is for If you are a data analyst or database developer interested in learning graph databases and how to curate and extract data from them, this is the book for you. It is also beneficial for data scientists and Python developers looking to get started with graph data modeling. Although knowledge of Python is assumed, no prior experience in graph data modeling theory and techniques is required.

More Details

Format
Language
English
ISBN
1804619345, 9781804619346

Notes

General Note
Description based upon print version of record.
Description
Learn how to transform, store, evolve, refactor, model, and create graph projections using the Python programming language Purchase of the print or Kindle book includes a free PDF eBook Key Features Transform relational data models into graph data model while learning key applications along the way Discover common challenges in graph modeling and analysis, and learn how to overcome them Practice real-world use cases of community detection, knowledge graph, and recommendation network Book DescriptionGraphs have become increasingly integral to powering the products and services we use in our daily lives, driving social media, online shopping recommendations, and even fraud detection. With this book, you'll see how a good graph data model can help enhance efficiency and unlock hidden insights through complex network analysis. Graph Data Modeling in Python will guide you through designing, implementing, and harnessing a variety of graph data models using the popular open source Python libraries NetworkX and igraph. Following practical use cases and examples, you'll find out how to design optimal graph models capable of supporting a wide range of queries and features. Moreover, you'll seamlessly transition from traditional relational databases and tabular data to the dynamic world of graph data structures that allow powerful, path-based analyses. As well as learning how to manage a persistent graph database using Neo4j, you'll also get to grips with adapting your network model to evolving data requirements. By the end of this book, you'll be able to transform tabular data into powerful graph data models. In essence, you'll build your knowledge from beginner to advanced-level practitioner in no time. What you will learn Design graph data models and master schema design best practices Work with the NetworkX and igraph frameworks in Python Store, query, ingest, and refactor graph data Store your graphs in memory with Neo4j Build and work with projections and put them into practice Refactor schemas and learn tactics for managing an evolved graph data model Who this book is for If you are a data analyst or database developer interested in learning graph databases and how to curate and extract data from them, this is the book for you. It is also beneficial for data scientists and Python developers looking to get started with graph data modeling. Although knowledge of Python is assumed, no prior experience in graph data modeling theory and techniques is required.
Local note
O'Reilly O'Reilly Online Learning: Academic/Public Library Edition

Table of Contents

Table of Contents PI Introducing Graphs in the Real World Working with Graph Data Models Data Model Transformation - Relational to Graph Databases Building a Knowledge Graph Working with Graph Databases Pipeline Development Refactoring and Evolving Schemas Perfect Projections Common Errors and Debugging.

Discover More

Reviews from GoodReads

Loading GoodReads Reviews.

Citations

APA Citation, 7th Edition (style guide)

Hutson, G., & Jackson, M. (2023). Graph Data Modeling in Python: A Practical Guide to Curating, Analyzing, and Modeling Data with Graphs . Packt Publishing, Limited.

Chicago / Turabian - Author Date Citation, 17th Edition (style guide)

Hutson, Gary and Matt. Jackson. 2023. Graph Data Modeling in Python: A Practical Guide to Curating, Analyzing, and Modeling Data With Graphs. Birmingham: Packt Publishing, Limited.

Chicago / Turabian - Humanities (Notes and Bibliography) Citation, 17th Edition (style guide)

Hutson, Gary and Matt. Jackson. Graph Data Modeling in Python: A Practical Guide to Curating, Analyzing, and Modeling Data With Graphs Birmingham: Packt Publishing, Limited, 2023.

Harvard Citation (style guide)

Hutson, G. and Jackson, M. (2023). Graph data modeling in python: a practical guide to curating, analyzing, and modeling data with graphs. Birmingham: Packt Publishing, Limited.

MLA Citation, 9th Edition (style guide)

Hutson, Gary., and Matt Jackson. Graph Data Modeling in Python: A Practical Guide to Curating, Analyzing, and Modeling Data With Graphs Packt Publishing, Limited, 2023.

Note! Citations contain only title, author, edition, publisher, and year published. Citations should be used as a guideline and should be double checked for accuracy. Citation formats are based on standards as of August 2021.

Staff View

Grouped Work ID
4bcd20e7-7237-bd13-6882-9729277073d1-eng
Go To Grouped Work View in Staff Client

Grouping Information

Grouped Work ID4bcd20e7-7237-bd13-6882-9729277073d1-eng
Full titlegraph data modeling in python a practical guide to curating analyzing and modeling data with graphs
Authorhutson gary
Grouping Categorybook
Last Update2025-01-24 12:33:29PM
Last Indexed2025-05-22 03:14:55AM

Book Cover Information

Image Sourcegoogle_isbn
First LoadedDec 20, 2024
Last UsedMay 22, 2025

Marc Record

First DetectedDec 16, 2024 11:26:51 PM
Last File Modification TimeDec 17, 2024 08:26:17 AM
SuppressedRecord had no items

MARC Record

LEADER04452cam a22004217a 4500
001on1388498286
003OCoLC
00520241217082337.0
006m     o  d        
007cr cnu||||||||
008230701s2023    enk     o     000 0 eng d
020 |a 1804619345
020 |a 9781804619346|q (electronic bk.)
035 |a (OCoLC)1388498286
037 |a 9781804618035|b O'Reilly Media
037 |a 10251259|b IEEE
040 |a EBLCP|b eng|c EBLCP|d UKAHL|d ORMDA|d OCLCQ|d UPM|d IEEEE|d OCLCF|d OCLCO|d N$T
049 |a MAIN
050 4|a QA76.73.P98
08204|a 005.13/3|2 23/eng/20230711
1001 |a Hutson, Gary.
24510|a Graph Data Modeling in Python|h [electronic resource] :|b A Practical Guide to Curating, Analyzing, and Modeling Data with Graphs.
260 |a Birmingham :|b Packt Publishing, Limited,|c 2023.
300 |a 1 online resource (236 p.)
500 |a Description based upon print version of record.
5050 |a Table of Contents PI Introducing Graphs in the Real World Working with Graph Data Models Data Model Transformation - Relational to Graph Databases Building a Knowledge Graph Working with Graph Databases Pipeline Development Refactoring and Evolving Schemas Perfect Projections Common Errors and Debugging.
520 |a Learn how to transform, store, evolve, refactor, model, and create graph projections using the Python programming language Purchase of the print or Kindle book includes a free PDF eBook Key Features Transform relational data models into graph data model while learning key applications along the way Discover common challenges in graph modeling and analysis, and learn how to overcome them Practice real-world use cases of community detection, knowledge graph, and recommendation network Book DescriptionGraphs have become increasingly integral to powering the products and services we use in our daily lives, driving social media, online shopping recommendations, and even fraud detection. With this book, you'll see how a good graph data model can help enhance efficiency and unlock hidden insights through complex network analysis. Graph Data Modeling in Python will guide you through designing, implementing, and harnessing a variety of graph data models using the popular open source Python libraries NetworkX and igraph. Following practical use cases and examples, you'll find out how to design optimal graph models capable of supporting a wide range of queries and features. Moreover, you'll seamlessly transition from traditional relational databases and tabular data to the dynamic world of graph data structures that allow powerful, path-based analyses. As well as learning how to manage a persistent graph database using Neo4j, you'll also get to grips with adapting your network model to evolving data requirements. By the end of this book, you'll be able to transform tabular data into powerful graph data models. In essence, you'll build your knowledge from beginner to advanced-level practitioner in no time. What you will learn Design graph data models and master schema design best practices Work with the NetworkX and igraph frameworks in Python Store, query, ingest, and refactor graph data Store your graphs in memory with Neo4j Build and work with projections and put them into practice Refactor schemas and learn tactics for managing an evolved graph data model Who this book is for If you are a data analyst or database developer interested in learning graph databases and how to curate and extract data from them, this is the book for you. It is also beneficial for data scientists and Python developers looking to get started with graph data modeling. Although knowledge of Python is assumed, no prior experience in graph data modeling theory and techniques is required.
590 |a O'Reilly|b O'Reilly Online Learning: Academic/Public Library Edition
650 0|a Python (Computer program language)|9 71333
650 0|a Graphic methods.|9 40649
7001 |a Jackson, Matt.
77608|i Print version:|a Hutson, Gary|t Graph Data Modeling in Python|d Birmingham : Packt Publishing, Limited,c2023
85640|u https://library.access.arlingtonva.us/login?url=https://learning.oreilly.com/library/view/~/9781804618035/?ar|x O'Reilly|z eBook
938 |a Askews and Holts Library Services|b ASKH|n AH41546082
938 |a ProQuest Ebook Central|b EBLB|n EBL30607327
938 |a EBSCOhost|b EBSC|n 3635749
994 |a 92|b VIA
999 |c 359481|d 359481