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Visualization Tools for Big Data analytics in Quantitative Chemical Analysis

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posted on 2024-10-31, 23:08 authored by Gerard Dumancas, Ghalib Bello, Jeffrey HughesJeffrey Hughes, Renita Murimi, Lakshmi Viswanath, Casey Orndoff, Glenda Fe Dumancas, Jacy O'Dell
Modern instruments have the capacity to generate and store enormous volumes of data and the challenges involved in processing, analyzing and visualizing this data are well recognized. The field of Chemometrics (a subspecialty of Analytical Chemistry) grew out of efforts to develop a toolbox of statistical and computer applications for data processing and analysis. This chapter will discuss key concepts of Big Data Analytics within the context of Analytical Chemistry. The chapter will devote particular emphasis on preprocessing techniques, statistical and Machine Learning methodology for data mining and analysis, tools for big data visualization and state-of-the-art applications for data storage. Various statistical techniques used for the analysis of Big Data in Chemometrics are introduced. This chapter also gives an overview of computational tools for Big Data Analytics for Analytical Chemistry. The chapter concludes with the discussion of latest platforms and programming tools for Big Data storage like Hadoop, Apache Hive, Spark, Google Bigtable, and more.

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Related Materials

  1. 1.
    ISBN - Is published in 9781522531425 (urn:isbn:9781522531425)
  2. 2.

Start page

873

End page

917

Total pages

45

Outlet

Handbook of research on big data storage and visualization techniques

Edition

1st

Editors

Richard S. Segall and Jeffrey S. Cook

Publisher

IGI Global

Place published

Hershey, Pennsylvania, USA

Language

English

Copyright

© 2018, IGI Global.

Former Identifier

2006090837

Esploro creation date

2020-06-22

Fedora creation date

2019-04-30