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Diving into Open Data with IPython Notebook & pandas
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pyconca
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pyconca2013
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Marks
Author(s):
Julia Evans
Location
Terrace
Date
aug Sat 10
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Start
16:30
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Duration
00:20:00
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None
End
16:50
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None min.
https://2013.pycon.ca/en/schedule/presentation/73/
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I'll walk you through Python's best tools for getting a grip on some new open data: IPython Notebook and pandas. I'll show you how to read in data, clean it up, graph it, and draw some conclusions, using some open data about the number of cyclists on Montréal's bike paths as an example.
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