68

I have some data and when I import it I get the following unneeded columns I'm looking for an easy way to delete all of these

   'Unnamed: 24', 'Unnamed: 25', 'Unnamed: 26', 'Unnamed: 27',
   'Unnamed: 28', 'Unnamed: 29', 'Unnamed: 30', 'Unnamed: 31',
   'Unnamed: 32', 'Unnamed: 33', 'Unnamed: 34', 'Unnamed: 35',
   'Unnamed: 36', 'Unnamed: 37', 'Unnamed: 38', 'Unnamed: 39',
   'Unnamed: 40', 'Unnamed: 41', 'Unnamed: 42', 'Unnamed: 43',
   'Unnamed: 44', 'Unnamed: 45', 'Unnamed: 46', 'Unnamed: 47',
   'Unnamed: 48', 'Unnamed: 49', 'Unnamed: 50', 'Unnamed: 51',
   'Unnamed: 52', 'Unnamed: 53', 'Unnamed: 54', 'Unnamed: 55',
   'Unnamed: 56', 'Unnamed: 57', 'Unnamed: 58', 'Unnamed: 59',
   'Unnamed: 60'

They are indexed by 0-indexing so I tried something like

    df.drop(df.columns[[22, 23, 24, 25, 
    26, 27, 28, 29, 30, 31, 32 ,55]], axis=1, inplace=True)

But this isn't very efficient. I tried writing some for loops but this struck me as bad Pandas behaviour. Hence i ask the question here.

I've seen some examples which are similar (Drop multiple columns pandas) but this doesn't answer my question.

  • 2
    What do you mean, efficient? Is it running too slow? If your problem is that you don't want to get the indices of all the columns that you want to delete, please note that you can just give df.drop a list of column names: df.drop(['Unnamed: 24', 'Unnamed: 25', ...], axis=1) – Carsten Feb 16 '15 at 9:53
  • Would it not be easier to just subset the columns of interest: i.e. df = df[cols_of_interest], otherwise you could slice the df by columns and get the columns df.drop(df.ix[:,'Unnamed: 24':'Unnamed: 60'].head(0).columns, axis=1) – EdChum Feb 16 '15 at 9:56
  • 2
    I meant inefficient in terms of typing or 'bad code smell' – Peadar Coyle Feb 17 '15 at 11:03
  • Might be worth noting that in most cases it's easier just to keep the columns you want then delete the ones that you don't: df = df['col_list'] – sparrow Apr 27 '18 at 22:14
48

I don't know what you mean by inefficient but if you mean in terms of typing it could be easier to just select the cols of interest and assign back to the df:

df = df[cols_of_interest]

Where cols_of_interest is a list of the columns you care about.

Or you can slice the columns and pass this to drop:

df.drop(df.ix[:,'Unnamed: 24':'Unnamed: 60'].head(0).columns, axis=1)

The call to head just selects 0 rows as we're only interested in the column names rather than data

update

Another method would be simpler would be to use the boolean mask from str.contains and invert it to mask the columns:

In [2]:
df = pd.DataFrame(columns=['a','Unnamed: 1', 'Unnamed: 1','foo'])
df

Out[2]:
Empty DataFrame
Columns: [a, Unnamed: 1, Unnamed: 1, foo]
Index: []

In [4]:
~df.columns.str.contains('Unnamed:')

Out[4]:
array([ True, False, False,  True], dtype=bool)

In [5]:
df[df.columns[~df.columns.str.contains('Unnamed:')]]

Out[5]:
Empty DataFrame
Columns: [a, foo]
Index: []
  • I get errors when I try doing either ~df.columns... (TypeError: bad operand type for unary ~: 'str') or df.columns.str.contains... (AttributeError: 'Index' object has no attribute 'str'). Any ideas why this might be? – Dai Jun 3 '17 at 8:37
  • Downvoter care to explain – EdChum Jun 3 '17 at 12:35
  • @EdChum can I create df = df[cols_of_interest], where cols_of_interest adds a column name to it everytime a for loop iterates ? – user9238790 Feb 22 '18 at 9:52
  • @Victor no if you do that you overwrite your df with your new column you should append perhaps but I don't really understand your question, you should post a real question on SO rather than ask as a comment as it's poor form on SO – EdChum Feb 22 '18 at 9:54
  • @EdChum you're absolutely right. I have created the question and I am trying to solve it by searching different parts of SO. Here is the link ! any contribution will help stackoverflow.com/questions/48923915/… – user9238790 Feb 22 '18 at 9:55
165

The by far the simplest approach is:

yourdf.drop(['columnheading1', 'columnheading2'], axis=1, inplace=True)
  • I used this format in some of my code and I get a SettingWithCopyWarning warning? – KillerSnail Jan 8 '17 at 15:42
  • 2
    @KillerSnail, it is save to ignore. To avoid error, try: df = df.drop(['colheading1', 'colheading2'], axis=1) – Philipp Schwarz Jan 9 '17 at 13:55
  • 3
    The term axis explained: stackoverflow.com/questions/22149584/…. Essentially, axis=0 is said to be "column-wise" and axis=1 is "row-wise". – Rohmer Jun 16 '17 at 18:07
  • 2
    And inplace=True means that the DataFrame is modified in place. – Rohmer Jun 16 '17 at 18:07
  • 1
    @Killernail if you don't want the warning, do yourdf = yourdf.drop(['columnheading1', 'columnheading2'], axis=1) – Sashank Aryal Oct 12 '17 at 16:32
33

My personal favorite, and easier than the answers I have seen here (for multiple columns):

df.drop(df.columns[22:56], axis=1, inplace=True)

Or creating a list for multiple columns.

col = list(df.columns)[22:56]
df.drop(col, axis=1, inplace=1)
  • 6
    This should be the answer. Cleanest, easiest to read, with straightforward native Pandas indexing syntax. – Brent Faust Oct 5 '17 at 21:44
  • 1
    This answer should have the green tick next to it, not the others. – Siavosh Mahboubian Aug 20 at 23:41
18

This is probably a good way to do what you want. It will delete all columns that contain 'Unnamed' in their header.

for col in df.columns:
    if 'Unnamed' in col:
        del df[col]
  • this for col in df.columns: can be simplified to for col in df:, also the OP has not indicated what the naming scheme is for the other columns, they could all contain 'Unnamed', also this is inefficient as it removes the columns one at a time – EdChum Feb 16 '15 at 11:35
  • It's certainly not efficient, but as long as we're not working on huge dataframes it won't have a significant impact. The plus point of this method is that it's simple to remember and fast to code - while creating a list of the columns you want to keep can be pretty painful. – knightofni Feb 16 '15 at 11:45
10

You can do this in one line and one go:

df.drop([col for col in df.columns if "Unnamed" in col], axis=1, inplace=True)

This involves less moving around/copying of the object than the solutions above.

9

Not sure if this solution has been mentioned anywhere yet but one way to do is is pandas.Index.difference.

>>> df = pd.DataFrame(columns=['A','B','C','D'])
>>> df
Empty DataFrame
Columns: [A, B, C, D]
Index: []
>>> to_remove = ['A','C']
>>> df = df[df.columns.difference(to_remove)]
>>> df
Empty DataFrame
Columns: [B, D]
Index: []
1

The below worked for me:

for col in df:
    if 'Unnamed' in col:
        #del df[col]
        print col
        try:
            df.drop(col, axis=1, inplace=True)
        except Exception:
            pass
0

df = df[[col for col in df.columns if not ('Unnamed' in col)]]

  • 1
    This is similar to Peter's except that undesired columns are filtered out instead of dropped. – Sarah Feb 19 at 15:56
0

You can just pass the column names as a list with specifying the axis as 0 or 1

  • axis=1: Along the Rows
  • axis=0: Along the Columns
  • By default axis=0

    data.drop(["Colname1","Colname2","Colname3","Colname4"],axis=1)

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