-1

Hello guys I have been trying to drop 2 columns of Excel data frame on pandas, using a drop command like this

energy = energy.drop(energy.columns[[0 , 1]], axis= 1 )

however, I could not make it to avoid the columns from view. and finally i sense the columns I am supposed to delete comes as a multi level index on my machine. finally I have tried to drop one of the level from it like this

energy.index = energy.index.droplevel(2)

But still i cant manage to how I should avoid these columns.

I have attached a screen copy of my work enter image description here

2

4 Answers 4

1

Instead of dropping the columns, you could subset your data frame like so:

In [3]: mydf = pd.DataFrame({"A":[1,2,3,4],"B":[4,3,2,1], "C":[3,4,5,3],"D":[6,4,3,2]})
In [4]: mydf
Out[4]:
   A  B  C  D
0  1  4  3  6
1  2  3  4  4
2  3  2  5  3
3  4  1  3  2
In [5]: mydf[mydf.columns[2:]]
Out[5]:
   C  D
0  3  6
1  4  4
2  5  3
3  3  2

This will work if you're trying to remove the first 2 columns for example. It works by creating a list with df.columns which you then subset and apply to your dataframe. You would then likely want to set the new dataframe to a variable. If the columns that you want to drop are nonadjacent you can loop through a list of columns to drop:

In [7]: mydf1 = mydf.copy()
In [8]: for col in ["A","D"]:
   ...:     mydf1 = mydf1.drop(col,axis=1)

In [9]: mydf1
Out[9]:
   B  C
0  4  3
1  3  4
2  2  5
3  1  3
1

Try simply renaming the columns

Say you have

In: df.columns 

Out: MultiIndex(levels=[['BURGLARY', 'GRAND LARCENY', 'GRAND LARCENY OF MOTOR 
     VEHICLE', 'TMAX', 'TMIN'], ['count', 'mean']],
     labels=[[0, 1, 2, 3, 4], [0, 0, 0, 1, 1]])

Then

In: df.columns = ['Burglary', 'Grand Larceny', 'Grand Larceny on Motor Vehicle', 
    'TMAX', 'TMIN']

And voila

In: df.columns

Out: Index(['BURGLARY', 'GRAND LARCENY', 'GRAND LARCENY OF MOTOR VEHICLE', 
     'TMAX',
     'TMIN'],
     dtype='object')
0

If you really want to remove columns you can use del:

>>> df = pd.DataFrame({'A':range(3),'B':list('abc'), 'C':range(3,6), 'D':list('gde')})
>>> for x in ['A', 'B']:
...     del df[x]
... 
>>> df
   C  D
0  3  g
1  4  d
2  5  e
-1

This might help

energy.drop(energy.columns[[0,1]] , axis=1, inplace=True)

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.