3

I have a pairwise df:

raw_data = {0: [5,4,6,8,9], 
        1: [4,8,1,2,5], 
        2: [42, 52, 36, 24, 73], 
        3: [0, 0, 0, 2, 1],
        4: [2, 2, 0, 2, 0]}
df = pd.DataFrame(raw_data, columns = [0,1,2,3,4])

I want to set any zero to the value of its pair, for example theres a 0 at col 0 row 3 so its pair would be at col 3 row 0 which is value 8 in this example.

I can do it by iteration:

for i in df.index:
    for j in df.columns:
        if df.loc[i,j] == 0:
            df.loc[i,j] = df.loc[j,i]

But its slow. Can I apply a function or a df method to do this quickly?

Thanks!

3

Call replace 0s with NaNs and pd.DataFrame.fillna using the transpose of df.

df[df != 0].fillna(df.T).astype(int)

   0  1   2   3   4
0  5  4  42   8   2
1  4  8  52   2   2
2  6  1  36  24  73
3  8  2  24   2   2
4  9  5  73   1   0
3

Using where/mask we nullify where the first argument is True and fill it in with the alternative in the second argument.

df.where(df.astype(bool), df.T)

Or,

df.mask(df.eq(0), df.T)

    0   1   2   3   4
0   5   4   6   8   9
1   4   8   1   2   5
2  42  52  36  24  73
3   8   2  24   2   1
4   2   2  73   2   0

And per @cᴏʟᴅsᴘᴇᴇᴅ's suggestion, the Numpy equivalent

pd.DataFrame(np.where(df, df, df.T), df.index, df.columns)

    0   1   2   3   4
0   5   4   6   8   9
1   4   8   1   2   5
2  42  52  36  24  73
3   8   2  24   2   1
4   2   2  73   2   0
3
  • 1
    Ah this is so elegant. You can add the numpy equivalent too pd.DataFrame(np.where(df == 0, df.T, df))
    – cs95
    Apr 15 '18 at 1:46
  • I tweaked it a tiny bit
    – piRSquared
    Apr 15 '18 at 1:50
  • Nice, forgot numpy could test the truthiness of ints (unlike pandas which needs a boolean mask).
    – cs95
    Apr 15 '18 at 1:52
3

You can assign it by Boolean

df[df==0]=df.T
df
Out[364]: 
   0  1   2   3   4
0  5  4  42   8   2
1  4  8  52   2   2
2  6  1  36  24  73
3  8  2  24   2   2
4  9  5  73   1   0
1
  • @LiamMcIntyre df==0 this will return boolean , then we can assign the value to the True value
    – BENY
    Apr 15 '18 at 4:05

Your Answer

By clicking “Post Your Answer”, you agree to our terms of service, privacy policy and cookie policy

Not the answer you're looking for? Browse other questions tagged or ask your own question.