Visualizing Streaming Data; Anthony Aragues; 2017

Visualizing Streaming Data Upplaga 1

av Anthony Aragues
Machine learning and computerized data analysis is incredibly powerful, but humans still excel at "getting a sense of things"--the ability to recognize ill-defined or novel patterns or anomalies. With the rise of real-time streaming data, it's important to give people access to data as it arrives, in ways that enable users or analysts to recognize that "something is going on." This book provides both conceptual guidance and programming tools to do just that. Streaming data is a fast-moving part of the data field: tools for analysis on streaming and real-time data are at the cutting edge, and visualization of these types of data hasn't caught up. This guide helps close the gap by showing application designers, data scientists, data miners, data journalists, and system administrators several ways to create visualizations that bring context and a sense of time to streaming text data.
Machine learning and computerized data analysis is incredibly powerful, but humans still excel at "getting a sense of things"--the ability to recognize ill-defined or novel patterns or anomalies. With the rise of real-time streaming data, it's important to give people access to data as it arrives, in ways that enable users or analysts to recognize that "something is going on." This book provides both conceptual guidance and programming tools to do just that. Streaming data is a fast-moving part of the data field: tools for analysis on streaming and real-time data are at the cutting edge, and visualization of these types of data hasn't caught up. This guide helps close the gap by showing application designers, data scientists, data miners, data journalists, and system administrators several ways to create visualizations that bring context and a sense of time to streaming text data.
Upplaga: 1a upplagan
Utgiven: 2017
ISBN: 9781491978016
Förlag: O'Reilly Media
Format: Häftad
Språk: Engelska
Sidor: 160 st
Machine learning and computerized data analysis is incredibly powerful, but humans still excel at "getting a sense of things"--the ability to recognize ill-defined or novel patterns or anomalies. With the rise of real-time streaming data, it's important to give people access to data as it arrives, in ways that enable users or analysts to recognize that "something is going on." This book provides both conceptual guidance and programming tools to do just that. Streaming data is a fast-moving part of the data field: tools for analysis on streaming and real-time data are at the cutting edge, and visualization of these types of data hasn't caught up. This guide helps close the gap by showing application designers, data scientists, data miners, data journalists, and system administrators several ways to create visualizations that bring context and a sense of time to streaming text data.
Machine learning and computerized data analysis is incredibly powerful, but humans still excel at "getting a sense of things"--the ability to recognize ill-defined or novel patterns or anomalies. With the rise of real-time streaming data, it's important to give people access to data as it arrives, in ways that enable users or analysts to recognize that "something is going on." This book provides both conceptual guidance and programming tools to do just that. Streaming data is a fast-moving part of the data field: tools for analysis on streaming and real-time data are at the cutting edge, and visualization of these types of data hasn't caught up. This guide helps close the gap by showing application designers, data scientists, data miners, data journalists, and system administrators several ways to create visualizations that bring context and a sense of time to streaming text data.
Begagnad bok (0 st)
Begagnad bok (0 st)