Difference between revisions of "IS480 Team wiki: 2013T2 GENShYFT Project Management"
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− | + | One of the various features that stand out in SingPath, is the Tournament feature. Although it is an existing feature, GENShYFT will be able to carry out live(tournament) testing in a real environment at various tertiary institutions like polytechnics. <br><br> | |
The live tournament not only serve as a platform to promote our client product, we will be able to get actual users to do the testing | The live tournament not only serve as a platform to promote our client product, we will be able to get actual users to do the testing | ||
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− | + | With this raw data collected from the tournaments, along with other data like the number of times the user logged into SingPath, challenges they have attempted, and such, we hope we would be able to predict which school the user is from and also the respective time the user might take to solve a problem in a challenge. | |
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Revision as of 12:11, 27 October 2013
Home | Project Overview | Project Management | Documentation | The Team |
X-Factor | Risk | Schedule | Metric | Minutes |
What is our X-Factor?
One of the various features that stand out in SingPath, is the Tournament feature. Although it is an existing feature, GENShYFT will be able to carry out live(tournament) testing in a real environment at various tertiary institutions like polytechnics.
The live tournament not only serve as a platform to promote our client product, we will be able to get actual users to do the testing
in an actual environment.
Most importantly, we will be retrieving important raw data that would help with our Predictive Analytics component.
With this raw data collected from the tournaments, along with other data like the number of times the user logged into SingPath, challenges they have attempted, and such, we hope we would be able to predict which school the user is from and also the respective time the user might take to solve a problem in a challenge.