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I want to subtract row with nan values from all rows in a Dataframe. For this I am using

dataframe.sub(row, axis= 1)

this ignores nan values, i.e. if either of the values in two rows is nan, the result is nan. I want that if either of the values is not nan, the subtraction should proceed taking the nan value to be 0. If both are not nan, the result should be the difference.If both are nan, the result should be nan. For example, subtraction of the following two rows should be as below,

[1, 2, nan, nan, 5] - [nan, 5, 1, nan, 2] = [1 , -3, -1, nan, 3]

How can I do this?

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  • @JoeR yes , thank you – banad Jul 31 '16 at 4:44
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    Can you just use DataFrame.fillna(0)? – Joe T. Boka Jul 31 '16 at 4:47
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    fillna() (docs linked) will return a copy of the dataframe with NaNs filled to the specified value. You might look into that. – jedwards Jul 31 '16 at 4:47
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I want that if either of the values is not nan, the subtraction should proceed taking the nan value to be 0. If both are not nan, the result should be the difference.

Use fillna to set nan-values to 0, then apply a mask to reset the result to nan where both input values were nan.

import pandas as pd
import numpy as np
# sample data
nan = np.nan
df = pd.DataFrame({ 'a': [1, 2, nan, nan, 5],
                    'b': [nan, 5, 1, nan, 2] })
# get all rows with both values nan
nan_mask = df.a.isnull() & df.b.isnull()
# calculate with all nans set to 0
result = df.a.fillna(0) - df.b.fillna(0)
# set rows with both nans to nan
result[nan_mask] = nan
print list(result)
=> [1.0, -3.0, -1.0, nan, 3.0]

Update

If you are looking for a more concise solution it turns out that df.sub(other, fill_value=0.0) achieves the same thing:

df = pd.DataFrame({ 'a': [1, 2, nan, nan, 5],
                    'b': [nan, 5, 1, nan, 2]})
result = df.a.sub(df.b, fill_value=0.0)
=> [1.0, -3.0, -1.0, nan, 3.0]

From the docs:

fill_value : None or float value, default None (NaN) Fill missing (NaN) values with this value. If both Series are missing, the result will be missing

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    downvote all you like but please add a comment so I can improve the answer. – miraculixx Jul 31 '16 at 4:58

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