Assignment title: Information
Challenges and Opportunities with Big Data (2015).
Ferguson, R. B. (2012). How much data is too much data to
mine? Sloan
Review.http://sloanreview.mit.edu/improvisations/2012/06/08/how-
much-data- is-too- much-data- to-mine/#.ULbDb2f4IVo
Fujitsu (2015). The White Book of Big Data: The definitive guide to
the revolution in business analytics.
ISO/IEC JTC 1 Information Technology Big Data, Preliminary
Report, 1-36.
Kaisler, S., Armour, F., Espinosa, J.A., and Money, W.
(2013). Big data: Issues and challenge moving forward. 46th
Hawaii International Conference on Systems Sciences, 1-
10.
Mehrotra, P., Pryor, L., Bailey, F. and Cotnoir, M.
(2014). Supporting "Big Data" Analysis and Analytiics at the NSAS
Supercomputing Facility. NAS Technical Report: NAS-2014- 02.
Raghupathi, W. and Raghupathi, V. (2014). Big data analytics
in healthcare: Promise and potential. Health and Information
Science and Systems, 2(3), 1-10.
The case for this module revolves around the question of
large-scale data and the implications of database
capabilities for organizational data management. As we've
said, the change from data as a scarce resource to data as
overabundance is still a major concern for organizations.
Here, you'll have a chance to consider the value of data and
information. Data storage and management was seldom
considered a particularly exciting topic; however, when data
is used for making better decisions and/or enhancing
organizational performance, it is amazing how quickly
organizational (and personal) interest can be created.
The new state of having rather too much data to fit into the
established databases is increasingly called "big data." Big
data arises from a combination of cheap storage, multiple
data input streams, and a general sense that with all of this,
there ought to be valuable data in there somewhere. Here
are a couple of sources that begin to discuss these issues;
you can undoubtedly find more:
Challenges and Opportunities with Big Data (2015).
Mehrotra, P., Pryor, L., Bailey, F. and Cotnoir, M.
(2014). Supporting "Big Data" Analysis and Analytiics at the NSAS
Supercomputing Facility. NAS Technical Report: NAS-2014- 02.
Kaisler, S., Armour, F., Espinosa, J.A., and Money, W.
(2013). Big data: Issues and challenge moving forward. 46th
Hawaii International Conference on Systems Sciences, 1-
10.
The trick to coping with "big data" is, of course, better data
analytics -- that is, that set of statistical mining, and related
analytical tools that can be used to identify patterns in the
data, assess a variety of associations, and generally
illuminate the knowledge that might otherwise be buried in
the mounds of numbers. Today, analytics is a rapidly
expanding field.
Raghupathi, W. and Raghupathi, V. (2014). Big data analytics
in healthcare: Promise and potential. Health and Information
Science and Systems, 2(3), 1-10.
ISO/IEC JTC 1 Information Technology Big Data, Preliminary
Report, 1-36.
Fujitsu (2015). The White Book of Big Data: The definitive guide to
the revolution in business analytics.
So the case for this module revolves around the challenges
of "big data" -- that is, how to manage it, create reasonable
analysis strategies, and at the same time avoid becoming
totally dependent on it. Data makes a very good servant, but
not a very attractive master.
Case Assignment
When you've had a chance to read these articles, anything
from the Background that is helpful to you, or anything else
you may have come across, please write a 3- to 5-page
paper discussing the question:
Problems and Opportunities created by having too
much data, and what to do about them
Your paper should be between three and five pages. Take a
definite stand on the issues, and develop your supporting
argument carefully. Using material from the background
information and any other sources you can find to support
specific points in your argument is highly recommended;
avoid making assertions for which you can find no support
other than your own opinion.
Your paper is to be structured as a point/counterpoint
argument, in the following manner.
Begin this paper by stating your position on this question clearly and
concisely
Citing appropriate sources, present the reasons why you take this
position. Be sure to make the most effective case you can.
Then present the best evidence you can, again cite appropriate sources,
against your position -- that is, establish what counterarguments can be
made to your original position.
Finally, review your original position in light of the counterarguments,
showing how they are inadequate to rebut your original statement.
By the end of your paper, you should be able to
unequivocally re-affirm your original position.
Proper references and cites are a must!!!!