17

I have got a dataframe like this:

import pandas as pd
data = {
    'c1': ['Test1','Test2','NULL','Test3',' ','Test4','Test4','Test1',"Test3"],
    'c2': [' ','Test1',' ','NULL',' ','NULL','NULL','NULL','NULL'],
    'c3': [0,0,0,0,0,1,5,0,0],
    'c4': ['NULL', 'Test2', 'Test1','Test1', 'Test2', 'Test2','Test1','Test1','Test2']
}
df = pd.DataFrame(data)
df

The dataframe looks like this:

    c1      c2      c3      c4
0   Test1           0       NULL
1   Test2   Test1   0       Test2
2   NULL            0       Test1
3   Test3   NULL    0       Test1
4                   0       Test2
5   Test4   NULL    1       Test2
6   Test4   NULL    5       Test1
7   Test1   NULL    0       Test1
8   Test3   NULL    0       Test2

I want to drop all columns, that have more than 60 % of "empty" values. "Empty" means in my case that the values are for example: ' ', 'NULL' or 0. There are strings (c1, c2, c4) as well as integers (c3).

The result should be a dataframe with columns c1 and c4 only.

    c1      c4
0   Test1   NULL
1   Test2   Test2
2   NULL    Test1
3   Test3   Test1
4           Test2
5   Test4   Test2
6   Test4   Test1
7   Test1   Test1
8   Test3   Test2

I have no idea how to handle that problem. Only thing that comes to my mind is something like

df.loc[:, (df != 0).any(axis=0)]

to delete all columns where all values are 0, 'NULL' and so on.

1

3 Answers 3

19

Use DataFrame.isin for check all formats and then get mean for treshold and filter by boolean indexing with loc:

print (df.isin([' ','NULL',0]))
      c1     c2     c3     c4
0  False   True   True   True
1  False  False   True  False
2   True   True   True  False
3  False   True   True  False
4   True   True   True  False
5  False   True  False  False
6  False   True  False  False
7  False   True   True  False
8  False   True   True  False

print (df.isin([' ','NULL',0]).mean())
c1    0.222222
c2    0.888889
c3    0.777778
c4    0.111111
dtype: float64

df = df.loc[:, df.isin([' ','NULL',0]).mean() < .6]
print (df)
      c1     c4
0  Test1   NULL
1  Test2  Test2
2   NULL  Test1
3  Test3  Test1
4         Test2
5  Test4  Test2
6  Test4  Test1
7  Test1  Test1
8  Test3  Test2
6
  • Thank you very much for your answer. Trying your solution, I noticed, that there are also "real" empty cells. Therefore I added df = df.loc[:, df.isnull().mean() < .6]. Is there a way to combine it with your code (df = df.loc[:, df.isin([' ','NULL',0]).mean() < .6])?
    – Krypt
    Apr 12, 2018 at 13:22
  • 1
    @Krypt - my first idea is df = df.loc[:, df.isin([' ','NULL',0, np.nan]).mean() < .6], but not tested. Can you check it?
    – jezrael
    Apr 12, 2018 at 13:24
  • 1
    @Krypt - I just test it by data = { 'c1': ['Test1','Test2',np.nan,'Test3',' ','Test4','Test4','Test1',"Test3"], 'c2': [' ','Test1',' ','NULL',' ',np.nan,np.nan,'NULL',np.nan], 'c3': [0,0,0,0,0,1,5,0,0], 'c4': [np.nan, 'Test2', 'Test1','Test1', 'Test2', 'Test2','Test1','Test1','Test2'] } and working nice.
    – jezrael
    Apr 12, 2018 at 13:27
  • thanks again. I should've mentioned that I already tried it with np.nan (like you just suggested). It worked fine for any isolated example, but unfortunately not for my specific application in RapidMiner. The only thing that worked to get rid of those columns was df.isnull. Therefore I was looking for any solution to combine those two statements (df.isnull() and df.isin()) in "one line".
    – Krypt
    Apr 12, 2018 at 14:47
  • 3
    @Krypt - Please check df = df.loc[:, (df.isin([' ','NULL',0]) | df.isnull()).mean() <= .6]
    – jezrael
    Apr 12, 2018 at 14:50
19

you can drop the columns using dropna thresh parameter:

In [58]: df = df.replace([0,' ','NULL'],np.nan)
In[59]: df
Out[59]: 
      c1     c2   c3     c4
0  Test1    NaN  NaN    NaN
1  Test2  Test1  NaN  Test2
2    NaN    NaN  NaN  Test1
3  Test3    NaN  NaN  Test1
4    NaN    NaN  NaN  Test2
5  Test4    NaN  1.0  Test2
6  Test4    NaN  5.0  Test1
7  Test1    NaN  NaN  Test1
8  Test3    NaN  NaN  Test2

In [60]: df.dropna(thresh=df.shape[0]*0.6,how='all',axis=1)
Out[60]: 
      c1     c4
0  Test1    NaN
1  Test2  Test2
2    NaN  Test1
3  Test3  Test1
4    NaN  Test2
5  Test4  Test2
6  Test4  Test1
7  Test1  Test1
8  Test3  Test2
1
  • 1
    Threshold is defined as 'Require that many non-NA values'. So in this example, we may need to keep thresh=df.shape[0]*0.4
    – Murali
    Aug 27, 2020 at 15:14
1

Below given solution is very small and fast(in performance)

Step:1 we are finding percentage of null value in every column

Step:2 we are finding column names in list having more than 60% null values

Step:3 Drop columns having more than 60% null values

import pandas as pd

data = {
    'c1': ['Test1','Test2','NULL','Test3',' ','Test4','Test4','Test1',"Test3"],
    'c2': [' ','Test1',' ','NULL',' ','NULL','NULL','NULL','NULL'],
    'c3': [0,0,0,0,0,1,5,0,0],
    'c4': ['NULL', 'Test2', 'Test1','Test1', 'Test2', 'Test2','Test1','Test1','Test2']
}
df = pd.DataFrame(data)

# Below code gives percentage of null in every column
null_percentage = df.isnull().sum()/df.shape[0]*100

# Below code gives list of columns having more than 60% null
col_to_drop = null_percentage[null_percentage>60].keys()

output_df = df.drop(col_to_drop, axis=1)

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