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Data Science Pipeline in Python
--client
chipy
--show
chipy_oct_2014
--room Braintree_new_HQ 8894 --force
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Marks
Author(s):
Kevin Goetsch
Location
Braintree *new* HQ
Date
oct Thu 09
Days Raw Files
Start
19:00
First Raw Start
error-in-template
Duration
0:20:00
Offset
None
End
19:20
Last Raw End
Chapters
Total cuts_time
None min.
http://www.chipy.org/
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In my view, the core of Data Science is the development of predictive models (recommendation engines, fraud detection, churn prediction, etc.). While predictive models can be built in a number of languages I choose to do my work in Python because the Data Science Pipeline is more than just building models. I'll talk about the larger model development process and how I use Python to automate and document my work.
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