I just picked up Pandas to do with some data analysis work in my biology research. Turns out one of the proteins I'm analyzing is called 'NA'.

I have a matrix with pairwise 'HA, M1, M2, NA, NP...' on the column headers, and the same as "row headers" (for the biologists who might read this, I'm working with influenza).

When I import the data into Pandas directly from a CSV file, it reads the "row headers" as 'HA, M1, M2...' and then NA gets read as NaN. Is there any way to stop this? The column headers are fine - 'HA, M1, M2, NA, NP etc...'

  • for the stupid hack solution, you can do search/replace in the csv and rename NA to something like NA_safe.
    – flies
    May 16, 2013 at 21:23

2 Answers 2


Turn off NaN detection this way: pd.read_csv(filename, keep_default_na=False)

I originally suggested na_filter=False, which gets the job done. But, if I understand Jeff's comments below, this is a cleaner solution.


In [1]: pd.read_csv('test')
Out[1]:[4]: pd.read_csv('test', keep_default_na=False)
Out[4]:1   2
2   3
  • perhaps also worth mentioning na_values :) May 16, 2013 at 19:57
  • Yes. Speaking of, it seems odd to me that neither na_values=None (the default) nor na_values=[] suppresses NaN detection in this case.
    – Dan Allan
    May 16, 2013 at 20:02
  • 6
    FYI na_filter is a different type of option, meant to 'turn off' nan detection entirely, whereas na_values allows new/different values to be detected, and to complicate things, keep_na_filter allows you to NOT use the default na values...! maybe need an example in the docs / cookbook!
    – Jeff
    May 16, 2013 at 21:15
  • 3
    also to note, turning off nan detection results in the dtype of the column (if it say has mixed string/ints) to be object, not in general a good thing, you DO want to convert to base types whenever possible for efficiency
    – Jeff
    May 16, 2013 at 21:17
  • Jeff, is keep_na_filter a thing? I can't find it in the read_csv docs, but I think I know what you meant. If my revised answer is not optimal, I will happily accept edits. Thanks.
    – Dan Allan
    May 17, 2013 at 13:37

Just ran into this issue--I specified a str converter for the column instead, so I could keep na elsewhere: pd.read_csv(... , converters={ "file name": str, "company name": str})

  • This will help in avoiding NA to nan in one specific column. Aug 6, 2020 at 14:42

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