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In which Boris Gorelik shares his favorite talks and workshops from EuroSciPy 2018.
Recently, I was asked to determine the extent to which seasonality influenced a particular time series. No problem, right? The statsmodels Python package has a seasonal_decompose function that seemed pretty […]
The data science team at Automattic loves to share what they’re reading. Be sure to share your great data science reads in the comments!
Demet Dagdelen shares her thoughts on the results of the 2018 Stack Overflow Developer Survey.
Yanir Seroussi shares a few of the best practices our data scientists use in their work for Automattic.