Scientific Books

Cloud Native Geospatial Analytics With Apache Sedona: A Hands-on Guide For Working With Large-scale Spatial Data Mo Sarwat O'reilly Uk Limited

Navigating the complexities of large-scale spatial data can be daunting. In order to unleash the power of massive and complex datasets, you'll need a cutting-edge tool like Apache Sedona. This...

Navigating the complexities of large-scale spatial data can be daunting. In order to unleash the power of massive and complex datasets, you'll need a cutting-edge tool like Apache Sedona. This innovative distributed computing system, designed specifically for spatial data, has diverse applications in fields such as mobility, telematics, agriculture, climate...

See full description See full description
69 00
Delivery Tue, 07 Jul - Mon, 13 Jul
14,00 €   shipping cost
Sent from Greece
From Toybox 4.7 (29)
Greece
6 pieces
See Books on the page of Toybox

Description

Description

Navigating the complexities of large-scale spatial data can be daunting. In order to unleash the power of massive and complex datasets, you'll need a cutting-edge tool like Apache Sedona. This innovative distributed computing system, designed specifically for spatial data, has diverse applications in fields such as mobility, telematics, agriculture, climate science, and more.

This book serves as your guide to leveraging this tool, along with other technologies, to unlock the potential of geospatial analytics. Authors Pawel Tokaj, Jia Yu, and Mo Sarwat provide practical solutions to the challenges of working with geospatial data at scale. Ideal for developers, data scientists, engineers, and analysts, this guide uses real-world examples to help you integrate Python data ecosystems, apply machine learning, construct geospatial data lakehouses, and handle modern geospatial data formats like GeoParquet.

Understand how Apache Sedona helps data practitioners address challenges with geospatial data. Learn how to run Apache Sedona, both locally and in cloud environments. Efficiently load, query, and analyze geospatial datasets using spatial SQL. Employ machine learning techniques to derive strategy-defining insights from spatial data. Manage and optimize large-scale geospatial data within a data lakehouse architecture.

Manufacturer

See full description

Specifications

Specifications

Publisher
O'Reilly Media
Type
Computers - Informatics, Agriculture, Meteorology
Language
English
Subtitle
-
Cover
Soft
Number of Pages
300
Release Date
2/2026
Publication Date
2026
Dimensions
-
ISBN-13
9781098173999

Important information

Specifications are collected from official manufacturer websites. Please verify the specifications before proceeding with your final purchase. If you notice any problem you can report it here.

See all specifications

Description & Specifications

Navigating the complexities of large-scale spatial data can be daunting. In order to unleash the power of massive and complex datasets, you'll need a cutting-edge tool like Apache Sedona. This innovative distributed computing system, designed specifically for spatial data, has diverse applications in fields such as mobility, telematics, agriculture, climate science, and more.

This book serves as your guide to leveraging this tool, along with other technologies, to unlock the potential of geospatial analytics. Authors Pawel Tokaj, Jia Yu, and Mo Sarwat provide practical solutions to the challenges of working with geospatial data at scale. Ideal for developers, data scientists, engineers, and analysts, this guide uses real-world examples to help you integrate Python data ecosystems, apply machine learning, construct geospatial data lakehouses, and handle modern geospatial data formats like GeoParquet.

Understand how Apache Sedona helps data practitioners address challenges with geospatial data. Learn how to run Apache Sedona, both locally and in cloud environments. Efficiently load, query, and analyze geospatial datasets using spatial SQL. Employ machine learning techniques to derive strategy-defining insights from spatial data. Manage and optimize large-scale geospatial data within a data lakehouse architecture.

Manufacturer

Publisher
O'Reilly Media
Type
Computers - Informatics, Agriculture, Meteorology
Language
English
Subtitle
-
Cover
Soft
Number of Pages
300
Release Date
2/2026
Publication Date
2026
Dimensions
-
ISBN-13
9781098173999

Important information

Specifications are collected from official manufacturer websites. Please verify the specifications before proceeding with your final purchase. If you notice any problem you can report it here.

69,00 €
14,00 €   shipping cost