16

I have a 227x4 DataFrame with country names and numerical values to clean (wrangle ?).

Here's an abstraction of the DataFrame:

import pandas as pd
import random
import string
import numpy as np
pdn = pd.DataFrame(["".join([random.choice(string.ascii_letters) for i in range(3)]) for j in range (6)], columns =['Country Name'])
measures = pd.DataFrame(np.random.random_integers(10,size=(6,2)), columns=['Measure1','Measure2'])
df = pdn.merge(measures, how= 'inner', left_index=True, right_index =True)

df.iloc[4,1] = 'str'
df.iloc[1,2] = 'stuff'
print(df)

  Country Name Measure1 Measure2
0          tua        6        3
1          MDK        3    stuff
2          RJU        7        2
3          WyB        7        8
4          Nnr      str        3
5          rVN        7        4

How do I replace string values with np.nan in all columns without touching the country names?

I tried using a boolean mask:

mask = df.loc[:,measures.columns].applymap(lambda x: isinstance(x, (int, float))).values
print(mask)

[[ True  True]
 [ True False]
 [ True  True]
 [ True  True]
 [False  True]
 [ True  True]]

# I thought the following would replace by default false with np.nan in place, but it didn't
df.loc[:,measures.columns].where(mask, inplace=True)
print(df)

  Country Name Measure1 Measure2
0          tua        6        3
1          MDK        3    stuff
2          RJU        7        2
3          WyB        7        8
4          Nnr      str        3
5          rVN        7        4


# this give a good output, unfortunately it's missing the country names
print(df.loc[:,measures.columns].where(mask))

  Measure1 Measure2
0        6        3
1        3      NaN
2        7        2
3        7        8
4      NaN        3
5        7        4

I have looked at several questions related to mine ([1], [2], [3], [4], [5], [6], [7], [8]), but could not find one that answered my concern.

3
  • "A meta-question, Is it normal that it takes me more than 3 hours to formulate a question here (including research) ?" – Yes. The success of Stack Overflow and the entire Stack Exchange network is predicated on the high quality of its content, both questions and answers. You can't throw together a high quality question in a couple of minutes. Personally, I'd put the required effort more on the order of days than hours. I certainly have spent an entire day or more on an answer, and I expect the asker to expend at least an order of magnitude more effort, since he's the one getting the benefit. – Jörg W Mittag Oct 29 '17 at 17:57
  • Side note: meta-questions should be asked on Meta Stack Overflow. – Jörg W Mittag Oct 29 '17 at 17:58
  • @JörgWMittag I was just counting the time put to write the question after I gave up trying on my own. If I had to count that it would be in days indeed. I'll make a question in meta when I have a few more hours in front of me. I was feeling dumb taking so much time to ask my question. But I feel better now and the quality of the answer is a proof that it was well worth the effort. Thank you! – Malik Koné Oct 29 '17 at 18:09
11

Assign only columns of interest:

cols = ['Measure1','Measure2']
mask = df[cols].applymap(lambda x: isinstance(x, (int, float)))

df[cols] = df[cols].where(mask)
print (df)
  Country Name Measure1 Measure2
0          uFv        7        8
1          vCr        5      NaN
2          qPp        2        6
3          QIC       10       10
4          Suy      NaN        8
5          eFS        6        4

A meta-question, Is it normal that it takes me more than 3 hours to formulate a question here (including research) ?

In my opinion yes, create good question is really hard.

4
  • I like you asnwer, but why df2= df.loc[:,measures.columns].where(mask, inplace=True) does not do the replacement ? While df.loc[:,measures.columns].where(mask) prints out correctly. – Malik Koné Oct 29 '17 at 14:45
  • Because inplace always return None, so df2 is None – jezrael Oct 29 '17 at 14:47
  • I've edited the question.. I don't understand why df.loc[:,measures.columns].where(mask, inplace=True) does not modify df ? – Malik Koné Oct 29 '17 at 15:11
  • 1
    I think there is problem with assign to copy of df, same problem like fillna in this. If change your code to df[measures.columns].where(mask) get warning. – jezrael Oct 29 '17 at 15:11
9
cols = ['Measure1','Measure2']
df[cols] = df[cols].applymap(lambda x: x if not isinstance(x, str) else np.nan)

or

df[cols] = df[cols].applymap(lambda x: np.nan if isinstance(x, str) else x)

Result:

In [22]: df
Out[22]:
  Country Name  Measure1  Measure2
0          nBl      10.0       9.0
1          Ayp       8.0       NaN
2          diz       4.0       1.0
3          aad       7.0       3.0
4          JYI       NaN      10.0
5          BJO       9.0       8.0
6
  • But why the negation x if not isinstance(x, str) instead of x if isinstance(int,float) else np.nan` ? – Malik Koné Oct 29 '17 at 15:04
  • 1
    That will replace all numbers with nan if you dont need negation then x: np.nan if isinstance(x, str) else x – Bharath Oct 29 '17 at 15:06
  • I don't want to replace number.. I want to replace non numbers with nan – Malik Koné Oct 29 '17 at 15:07
  • @MalikKoné, I think you want to use Bharath shetty's solution – MaxU Oct 29 '17 at 15:09
  • All three answers are very interesting for me... My focus is on understanding I don't have to optimization of physical resources yet. :o) – Malik Koné Oct 29 '17 at 15:15
8

Use numeric with errors coerce i.e

cols = ['Measure1','Measure2']
df[cols] = df[cols].apply(pd.to_numeric,errors='coerce')
 Country Name  Measure1  Measure2
0          PuB       7.0       6.0
1          JHq       2.0       NaN
2          opE       4.0       3.0
3          pxl       3.0       6.0
4          ouP       NaN       4.0
5          qZR       4.0       6.0
4
  • 2
    I think we can get rid of lambda in this case: df[cols] = df[cols].apply(pd.to_numeric, errors='corece') – MaxU Oct 29 '17 at 15:15
  • @Bharathshetty, your answer is too good (if that is possible). I will indeed coerce the string to numeric values but this was not clear to me when I formulated the question. My focus was on how to use the boolean mask and why the inplace did not work. – Malik Koné Oct 29 '17 at 18:21
  • 1
    @Bharathshetty I think one should read errors=coerce instead of errors=corece – Malik Koné Oct 29 '17 at 18:29
  • That was a small typo. Sorry for that – Bharath Oct 30 '17 at 6:05

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