1

I am trying to delete Columns that have more than 3 or k consecutive NaNs. New to pandas. Any help is appreciated.

Data looks like

200  2000 7632
123  NaN  1232
98   NaN  12324
4231 NaN  673
87   76   1000
0

3 Answers 3

2

You can do something like this:

df=pd.DataFrame()
df['col1']=[np.nan,1,2,np.nan,3,np.nan,np.nan]
df['col2']=[np.nan,np.nan,np.nan,np.nan,1,2,3]
df['col3']=[1,2,3,4,np.nan,np.nan,np.nan]
print(df)

   col1  col2  col3
0   NaN   NaN   1.0
1   1.0   NaN   2.0
2   2.0   NaN   3.0
3   NaN   NaN   4.0
4   3.0   1.0   NaN
5   NaN   2.0   NaN
6   NaN   3.0   NaN

df_filtered=df.loc[:,(df.notna().cumsum().shift().apply(lambda x: x.value_counts()).fillna(0)<3).all()]
print(df_filtered)

  col1
0   NaN
1   1.0
2   2.0
3   NaN
4   3.0
5   NaN
6   NaN

Note: this eliminates if it has 3 or more, to eliminate from 4, you must replace the 3 with 4

2

Maybe not the most efficient solution, but easy to implement using more-itertools: for each column try to locate the first tuple of 3 NaNs, if found add this column to list of columns to drop.

import pandas as pd
import more_itertools as mit

df = pd.DataFrame({'col1': [1,2,3,4], 'col2': [None,None,5,None], 'col3': [6,None,None,None]})

to_drop = []
for c in df:
  try:
    next(mit.locate(df[c].isna(), lambda *x: all(x) == True, 3))
    to_drop.append(c)
  except:
    pass
df = df.drop(to_drop, 1)
print(df)

Result:

   col1  col2
0     1   NaN
1     2   NaN
2     3   5.0
3     4   NaN
1

You can use this simple example:

import pandas as pd
import numpy as np

df = pd.DataFrame({'col1':[1,2,3,4], 'col2':[None,None,None,5], 'col3':[6, None, None, 5] })

df:

    col1    col2    col3
0   1       NaN     6.0
1   2       NaN     NaN
2   3       NaN     NaN
3   4       5.0     5.0

EDIT

Drop consecutive NaNs:

bad_cols=[]
for col in list(df):
    for i in range(df.shape[0]-2):
        w = df.loc[i:i+2, col]
        if np.sum(w.isna()) == 3:
            bad_cols.append(col)
            break
df.drop(bad_cols, axis=1, inplace=True)

df:

    col1    col3
0   1       6.0
1   2       NaN
2   3       NaN
3   4       5.0
2
  • This does not find consecutive NaNs. Any 3 or more NaNs in a column will result in its deletion.
    – foglerit
    Oct 6, 2019 at 19:53
  • @foglerit I Corrected my answer. Oct 7, 2019 at 5:10

Your Answer

By clicking “Post Your Answer”, you agree to our terms of service and acknowledge you have read our privacy policy.

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