12

I have a DataFrame full of floats (positive and negative) and some NaN. I'd like to replace every single float number with its sign:

if it's NaN -> it remains Nan
if positive -> replace with 1
if negative -> replace with -1
if zero -> leave it as 0

Any suggestions to make this massive replacement?

Thank you in advance

43

You can use np.sign:

df
Out[100]: 
     A
0 -4.0
1  2.0
2  NaN
3  0.0

import numpy as np
np.sign(df["A"])

Out[101]: 
0   -1.0
1    1.0
2    NaN
3    0.0
Name: A, dtype: float64

In order to apply to all columns, you can directly pass the dataframe:

df
Out[121]: 
          0         1         2         3
0 -2.932447 -1.686652       NaN -0.908441
1  1.254436  0.000000  0.072242  0.796944
2  2.626737  0.169639 -1.457195  1.169238
3  0.000000 -1.174251  0.660111  1.115518
4 -1.998091 -0.125095  0.000000 -0.506782

np.sign(df)
Out[122]: 
     0    1    2    3
0 -1.0 -1.0  NaN -1.0
1  1.0  0.0  1.0  1.0
2  1.0  1.0 -1.0  1.0
3  0.0 -1.0  1.0  1.0
4 -1.0 -1.0  0.0 -1.0
1
  • Is there a way to resolve the Pandas warning this gives? A value is trying to be set on a copy of a slice from a DataFrame. Try using .loc[row_indexer,col_indexer] = value instead Rather annoying that this pops up and I need to write extra code to temporarily hide warnings. Else, I have to write additional code like df['sign_A'] = -1; df.loc[np.sign(df['A'])==1, 'sign_A'] = 1; df.loc[np.sign(df['A'])==0, 'sign_A'] = 0 I just dislike how this requires extra code to dismiss the warning...Any resolutions would be appreciated Feb 18 '19 at 18:22
9

You can use boolean indexing:

import pandas as pd
import numpy as np

df = pd.DataFrame({'A':[-1,3,0,5],
                   'B':[4,5,6,5],
                   'C':[8,-9,np.nan,7]})

print (df)
   A  B    C
0 -1  4  8.0
1  3  5 -9.0
2  0  6  NaN
3  5  5  7.0
print (df > 0)
       A     B      C
0  False  True   True
1   True  True  False
2  False  True  False
3   True  True   True

print (df < 0)
       A      B      C
0   True  False  False
1  False  False   True
2  False  False  False
3  False  False  False

df[df > 0] = 1
df[df < 0] = -1

print (df)
   A  B    C
0 -1  1  1.0
1  1  1 -1.0
2  0  1  NaN
3  1  1  1.0
5
  • How does this method work when there is another column having a different datatype such as float? May 22 '16 at 17:59
  • I think OP says there are float and NaN. So I think there are only numeric values.
    – jezrael
    May 22 '16 at 18:04
  • You're right, but is there any way that this method would work in a generic case? May 22 '16 at 18:04
  • More general solution: df1 = df.fillna(1).apply(pd.to_numeric, errors='coerce') df1[df1 > 0] = 1 df1[df1 < 0] = -1 print (df1.fillna(df))
    – jezrael
    May 22 '16 at 18:22
  • @VedangMehta you can slice for column ranges or apply an operation only to a single column.
    – sobek
    May 22 '16 at 18:23
3

Code -

import pandas as pd


df = pd.DataFrame({'x' : [-5.3, 2.5, 0, float('nan')]})

df['x'] = df['x'].apply(func = lambda x : x if not x else x // abs(x))

print(df)

Output -

    x
0  -1
1   1
2   0
3 NaN
1
  • why do you create lambda function? .apply(modify) would work just fine
    – lejlot
    May 22 '16 at 17:43

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.