Main Takeaway: PyData NYC 2018 From a simple broadcasting operation in numpy to an apply in pandas (and the immutability of inplace=False), ... PyData Chicago 2016 Fizz Buzz is a ubiquitous, nearly trivial problem used to weed out developer job applicants.
Joel Grus Learning Data Science Using Functional Python -
PyData NYC 2018 From a simple broadcasting operation in numpy to an apply in pandas (and the immutability of inplace=False), ... PyData Chicago 2016 Fizz Buzz is a ubiquitous, nearly trivial problem used to weed out developer job applicants. Talk In 2016 I wrote a blog post called Fizz Buzz in Tensorflow, which went modestly viral.
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- PyData NYC 2018 From a simple broadcasting operation in numpy to an apply in pandas (and the immutability of inplace=False), ...
- PyData Chicago 2016 Fizz Buzz is a ubiquitous, nearly trivial problem used to weed out developer job applicants.
- Talk In 2016 I wrote a blog post called Fizz Buzz in Tensorflow, which went modestly viral.
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