Data Lake Architecture: Designing the Data Lake and Avoiding the Garbage Dump by Bill Inmon
Author:Bill Inmon [Inmon, Bill]
Language: eng
Format: azw3
Publisher: Technics Publications
Published: 2016-03-30T16:00:00+00:00
Fig 7.8 Different types of data in the application data pond
Subsets of Data in the Application Data Pond
On occasion, the analyst may wish to select data from application data that have already been integrated. This too is a possibility. Fig 7.9 shows that a subset of data from an application can be selected and stored in the application data pond.
Fig 7.9 Choosing an application subset to store in the application data pond
As an example of data that can be selected, suppose the application database contains all telephone calls made in the month of May. The analyst may wish to select all phone calls greater than three minutes made on May 15. In doing so, the analyst greatly narrows down the work the system has to do in order to find the data they are looking for.
Download
This site does not store any files on its server. We only index and link to content provided by other sites. Please contact the content providers to delete copyright contents if any and email us, we'll remove relevant links or contents immediately.
Computer Vision & Pattern Recognition | Expert Systems |
Intelligence & Semantics | Machine Theory |
Natural Language Processing | Neural Networks |
Algorithms of the Intelligent Web by Haralambos Marmanis;Dmitry Babenko(7880)
Hadoop in Practice by Alex Holmes(5675)
Jquery UI in Action : Master the concepts Of Jquery UI: A Step By Step Approach by ANMOL GOYAL(5528)
Life 3.0: Being Human in the Age of Artificial Intelligence by Tegmark Max(4541)
Functional Programming in JavaScript by Mantyla Dan(3733)
The Age of Surveillance Capitalism by Shoshana Zuboff(3446)
Big Data Analysis with Python by Ivan Marin(3189)
Blockchain Basics by Daniel Drescher(2909)
Test-Driven Development with Java by Alan Mellor(2739)
The Rosie Effect by Graeme Simsion(2731)
WordPress Plugin Development Cookbook by Yannick Lefebvre(2655)
Data Augmentation with Python by Duc Haba(2589)
Hands-On Machine Learning for Algorithmic Trading by Stefan Jansen(2571)
Applied Predictive Modeling by Max Kuhn & Kjell Johnson(2501)
Dawn of the New Everything by Jaron Lanier(2450)
Principles of Data Fabric by Sonia Mezzetta(2400)
The Infinite Retina by Robert Scoble Irena Cronin(2365)
The Art Of Deception by Kevin Mitnick(2317)
Rapid Viz: A New Method for the Rapid Visualization of Ideas by Kurt Hanks & Larry Belliston(2218)