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I can't easily understand the backend of what Pandas does.

For instance, I created a df of means. As I wanted, df.mean only took the mean of numeric columns, ignoring my object column such as "School Name". I noticed that when trying to create a dataframe of sums, the df.sum attempted to take the sum of objects like "School Name", and I saw in the docs that you could add the argument numeric_only=True. However, the docs state that both df.mean and df.sum "will attempt to use everything" first if you did not set that argument. So my question became, "why did df.mean work without setting the argument numeric_only?"

When trying to investigate df.mean, quickdocs took me over to cls.mean = _make_stat_function(...nanops.nanmean). OK, while trying to investigate nanmean there is no argument available for numeric_only. The only arguments defined for nanmean in the quickdocs are as follows: def nanmean(values, axis=None, skipna=True, mask=None).

So where could I find stuff like Pandas' implementation of df.mean? What process do I need to use if not quickdocs?

My question isn't about df.mean in particular but rather, what do I need to click to easily find the source code because it appears quickdocs skimped over some? Also I'm working in PyCharm.

  • It's probably because you can add strings, but you can't take the mean of strings. So pandas is able to sum the School Name, but not divide by the number of elements. – Nakor Jul 12 at 20:21
  • It's not an answer to your questions, but rather an intuition about the difference between the behaviors of .mean() and .sum(). By default the sum can allow different datatypes because 1+1==2, and 'a'+'b' == 'ab'. Both have logical answers to summation, so it's necessary to exclude non-numeric. However, mean([1,1]) == 1, but mean('ab')==??? so it's unnecessary to explicitly remove those – G. Anderson Jul 12 at 20:22
  • are you working in a jupyter notebook or console? if so pandas.DataFrame?? will show you the source code of that class – Paul H Jul 12 at 20:28
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    The full source code can be browsed and downloaded here: github.com/pandas-dev/pandas – Paul H Jul 12 at 20:29
  • Specifically, the docs for nanmean are in the nanops.py source – G. Anderson Jul 12 at 20:30

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