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When deleting a column in a DataFrame I use del DF['column-name'] and all is well. Why does del DF.column_name not work also?

I am using v0.9.1.

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4 Answers 4

up vote 60 down vote accepted

It's difficult to make del df.column_name work simply as the result of syntactic limitations in Python. del df[name] gets translated to df.__delitem__(name) under the covers by Python

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The best way to do this in pandas is to use drop:

DF = DF.drop('column_name', 1)

or, alternatively:

DF.drop('column_name', axis=1, inplace=True)

Finally, to drop by index instead of by name, try this to delete, e.g. the 1st, 2nd and 4rd columns:

DFdrop([DF.columns[[0, 1, 3]]], axis=1) # Note: zero indexed
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21  
Might be useful to note that this operation is not performed in-place. So, in many cases, you will want to use DF = DF.drop('column_name',1). –  Christian O'Reilly Oct 4 '13 at 19:58
    
Changed my response thanks to @ChristianO'Reilly's comment. –  LondonRob Dec 9 '13 at 12:54
3  
Is this recommended over del for some reason? –  Bird Jaguar IV Dec 10 '13 at 20:13
    
@BirdJaguarIV I don't know of any performance improvement, but readability-wise, drop is a more SQL-like description of the operation in question. Couldn't del potentially be interpreted as setting all the values in that column to NaN? –  LondonRob Dec 11 '13 at 12:20
2  
I hadn't thought of reading it that way, but I guess I'm more used to pythonisms than I am to SQL. Maybe depends on who's going to be reading it? I'm also a fan of saving keystrokes when possible, all else equal :) –  Bird Jaguar IV Dec 11 '13 at 19:58
df.drop([Column Name or list],inplace=True,axis=1)

will delete one or more columns inplace.

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5  
inplace seems to have been added pandas 0.13.1 and won't work on older versions –  user19192 Apr 22 at 19:17

It's good practice to always use the [] notation, one reason is that attribute notation (df.column_name) does not work for numbered indices:

In [1]: df = DataFrame([[1, 2, 3], [4, 5, 6]])

In [2]: df[1]
Out[2]: 
0    2
1    5
Name: 1

In [3]: df.1
  File "<ipython-input-3-e4803c0d1066>", line 1
    df.1
       ^
SyntaxError: invalid syntax
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