Powered by Bitpipe Software Quality Research Library

 RESEARCH LIBRARY HOME   WHITE PAPERS   PRODUCTS   MULTIMEDIA   IT DOWNLOADS 
SEARCH the Research Library: HELP   |  WHAT'S POPULAR
sponsored by Sybase, Inc.
Posted:  01 Jul 2008
Published:  25 Apr 2008
Format:  PDF
Length:  8   Page(s)
Type:  White Paper
Language:  English


ABSTRACT:
This white paper explains structured, semi-structured, and unstructured data, while increasing your awareness of the complex content of the requirements environment.

  • Structured data is data whose structure can be understood by some external mechanism by exclusively looking at the meta data. Each structured data element must have an atomic data type and therefore have a name that ends in any class word except for ‘Object' and ‘Text'. For example, Gross Sales Amount ends in the atomic class word ‘Amount' and is therefore structured. It is important to note that structured data has nothing to do with whether the data can be physically stored in a database.
  • Semi-structured data is data whose structure can be understood by some external mechanism by looking at the data. As with structured data, it also must be one of the atomic data types. A column heading in Excel for example, is typically a semi-structured data element. The only difference between structured and semi-structured is that with semi-structured the values can only be understood by examining the contents instead of just the meta data. Semi-structured data is one small step away from structured data, and has the same inherent characteristics of structured data.
  • Unstructured data is data whose structure cannot be understood by some external mechanism by looking at the meta data or content. Examples of unstructured data are documents, music, and images. There is substantially more unstructured data than structured data. The two class words ‘Object' and ‘Text' are unstructured data types.


Author

Steve Hoberman
Author
Steve Hoberman is a world-recognized thought-leader in the field of data modeling. He is a popular presenter at conferences, and the author of Data Modeler's Workbench and Data Modeling made simple.



BROWSE RELATED RESOURCES
Data Modeling | Email | Information Management | Information Retrieval Software | Metadata | Metadata Standards | Structured Data

View All Resources sponsored by Sybase, Inc.

Library Home |  White Papers |  Products |  Multimedia |  IT Downloads |  Partner with Us
 

Bitpipe Definitions: A B C D E F G H I J K L M N O P Q R S T U V W X Y Z Other
What's Popular at Bitpipe? Daily Top 50 Reports | Daily Top 100 Topics | Popular Report Topics | Popular Product Topics
Software Quality Research Library Copyright © 1998-2008 Bitpipe, Inc. All Rights Reserved.
Designated trademarks and brands are the property of their respective owners.
Use of this web site constitutes acceptance of the Bitpipe Terms and Conditions and Privacy Policy.
webmaster@techtarget.com