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python - make pandas DataFrame to a dict and dropna

I have some pandas DataFrame with NaNs in it. Like this:

import pandas as pd
import numpy as np
raw_data={'A':{1:2,2:3,3:4},'B':{1:np.nan,2:44,3:np.nan}}
data=pd.DataFrame(raw_data)
>>> data
   A   B
1  2 NaN
2  3  44
3  4 NaN

Now I want to make a dict out of it and at the same time remove the NaNs. The result should look like this:

{'A': {1: 2, 2: 3, 3: 4}, 'B': {2: 44.0}}

But using pandas to_dict function gives me a result like this:

>>> data.to_dict()
{'A': {1: 2, 2: 3, 3: 4}, 'B': {1: nan, 2: 44.0, 3: nan}} 

So how to make a dict out of the DataFrame and get rid of the NaNs ?

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There are many ways you could accomplish this, I spent some time evaluating performance on a not-so-large (70k) dataframe. Although @der_die_das_jojo's answer is functional, it's also pretty slow.

The answer suggested by this question actually turns out to be about 5x faster on a large dataframe.

On my test dataframe (df):

Above method:

%time [ v.dropna().to_dict() for k,v in df.iterrows() ]
CPU times: user 51.2 s, sys: 0 ns, total: 51.2 s
Wall time: 50.9 s

Another slow method:

%time df.apply(lambda x: [x.dropna()], axis=1).to_dict(orient='rows')
CPU times: user 1min 8s, sys: 880 ms, total: 1min 8s
Wall time: 1min 8s

Fastest method I could find:

%time [ {k:v for k,v in m.items() if pd.notnull(v)} for m in df.to_dict(orient='rows')]
CPU times: user 14.5 s, sys: 176 ms, total: 14.7 s
Wall time: 14.7 s

The format of this output is a row-oriented dictionary, you may need to make adjustments if you want the column-oriented form in the question.

Very interested if anyone finds an even faster answer to this question.


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