Big Data in Astronomy Big Data in Astronomy

Big Data in Astronomy

Scientific Data Processing for Advanced Radio Telescopes

Linghe Kong y otros
    • USD 164.99
    • USD 164.99

Descripción editorial

Big Data in Radio Astronomy: Scientific Data Processing for Advanced Radio Telescopes provides the latest research developments in big data methods and techniques for radio astronomy. Providing examples from such projects as the Square Kilometer Array (SKA), the world’s largest radio telescope that generates over an Exabyte of data every day, the book offers solutions for coping with the challenges and opportunities presented by the exponential growth of astronomical data. Presenting state-of-the-art results and research, this book is a timely reference for both practitioners and researchers working in radio astronomy, as well as students looking for a basic understanding of big data in astronomy. Bridges the gap between radio astronomy and computer science Includes coverage of the observation lifecycle as well as data collection, processing and analysis Presents state-of-the-art research and techniques in big data related to radio astronomy Utilizes real-world examples, such as Square Kilometer Array (SKA) and Five-hundred-meter Aperture Spherical radio Telescope (FAST)

GÉNERO
Ciencia y naturaleza
PUBLICADO
2020
13 de junio
IDIOMA
EN
Inglés
EXTENSIÓN
438
Páginas
EDITORIAL
Elsevier Science
VENDEDOR
Elsevier Ltd.
TAMAÑO
54.3
MB

Más libros de Linghe Kong, Tian Huang, Yongxin Zhu & Shenghua Yu

WiFi signal-based user authentication WiFi signal-based user authentication
2023
Knowledge Science, Engineering and Management Knowledge Science, Engineering and Management
2022
Knowledge Science, Engineering and Management Knowledge Science, Engineering and Management
2022
Knowledge Science, Engineering and Management Knowledge Science, Engineering and Management
2022
Security and Organization within IoT and Smart Cities Security and Organization within IoT and Smart Cities
2020
When Compressive Sensing Meets Mobile Crowdsensing When Compressive Sensing Meets Mobile Crowdsensing
2019