When deleting a column in a DataFrame I use:

del df['column_name']

And this works great. Why can't I use the following?

del df.column_name

As you can access the column/Series as df.column_name, I expect this to work.

  • 1
    Note this question is being discussed on Meta. – R.M. May 22 at 16:37

14 Answers 14


As you've guessed, the right syntax is

del df['column_name']

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.

  • 21
    I realize this is a super old "answer", but my curiosity is piqued - why is that a syntactic limitation of Python? class A(object): def __init__(self): self.var = 1 sets up a class, then a = A(); del a.var works just fine... – dwanderson Oct 4 '16 at 14:24
  • 8
    @dwanderson the difference is that when a column is to be removed, the DataFrame needs to have its own handling for "how to do it". In the case of del df[name], it gets translated to df.__delitem__(name) which is a method that DataFrame can implement and modify to its needs. In the case of del df.name, the member variable gets removed without a chance for any custom-code running. Consider your own example - can you get del a.var to result in a print of "deleting variable"? If you can, please tell me how. I can't :) – Yonatan Dec 22 '16 at 8:27
  • 6
    @Yonatan You can use either docs.python.org/3/reference/datamodel.html#object.__delattr__ or descriptors for that: docs.python.org/3/howto/descriptor.html – Eugene Pakhomov Jan 19 '17 at 16:06
  • @EugenePakhomov good point. I was answering in python 2, indeed python 3 gives more flexibility in such matters. Thanks for clarifying. – Yonatan Jan 22 '17 at 19:03
  • 5
    @Yonatan Eugene's comment applies to Python 2 also; descriptors have been in Python 2 since 2.2 and it is trivial to satisfy your requirement ;) – C S Jun 20 '17 at 12:38

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

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

where 1 is the axis number (0 for rows and 1 for columns.)

To delete the column without having to reassign df you can do:

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

Finally, to drop by column number instead of by column label, try this to delete, e.g. the 1st, 2nd and 4th columns:

df = df.drop(df.columns[[0, 1, 3]], axis=1)  # df.columns is zero-based pd.Index 
  • 60
    Is this recommended over del for some reason? – beardc Dec 10 '13 at 20:13
  • 3
    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 :) – beardc Dec 11 '13 at 19:58
  • 15
    Though this method of deletion has its merits, this answer does not really answer the question being asked. – Paul May 28 '14 at 12:59
  • 79
    True @Paul, but due to the title of the question, most people arriving here will do so via trying to work out how to delete a column. – LondonRob May 28 '14 at 16:43
  • 17
    @beardc another advantage of drop over del is that drop allows you to drop multiple columns at once, perform the operation inplace or not, and also delete records along any axis (especially useful for a 3-D matrix or Panel) – hobs Apr 14 '16 at 20:17


columns = ['Col1', 'Col2', ...]
df.drop(columns, inplace=True, axis=1)

This will delete one or more columns in-place. Note that inplace=True was added in pandas v0.13 and won't work on older versions. You'd have to assign the result back in that case:

df = df.drop(columns, axis=1)
  • 2
    A note about this answer: if a 'list' is used, the square brackets should be dropped: df.drop(list,inplace=True,axis=1) – edesz Jun 14 '17 at 23:31
  • 1
    this should really be the accepted answer, because it makes clear the superiority of this method over del -- can drop more than one column at once. – dbliss Jul 4 '17 at 21:27

Drop by index

Delete first, second and fourth columns:

df.drop(df.columns[[0,1,3]], axis=1, inplace=True)

Delete first column:

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

There is an optional parameter inplace so that the original data can be modified without creating a copy.


Column selection, addition, deletion

Delete column column-name:



df = DataFrame.from_items([('A', [1, 2, 3]), ('B', [4, 5, 6]), ('C', [7,8, 9])], orient='index', columns=['one', 'two', 'three'])

print df:

   one  two  three
A    1    2      3
B    4    5      6
C    7    8      9

df.drop(df.columns[[0]], axis=1, inplace=True) print df:

   two  three
A    2      3
B    5      6
C    8      9

three = df.pop('three') print df:

A    2
B    5
C    8
  • 1
    How can I pop a row in pandas? – Kennet Celeste Feb 9 '17 at 16:10
  • 2
    @Yugi You can use a transposed dataframe for that. ex - df.T.pop('A') – Clock Slave Mar 18 '17 at 11:21
  • @ClockSlave That doesn't modify the original df. You could do df = df.T; df.pop(index); df = df.T but this seems excessive. – cs95 May 23 at 17:28

The actual question posed, missed by most answers here is:

Why can't I use del df.column_name?

At first we need to understand the problem, which requires us to dive into python magic methods.

As Wes points out in his answer del df['column'] maps to the python magic method df.__delitem__('column') which is implemented in pandas to drop the column

However, as pointed out in the link above about python magic methods:

In fact, del should almost never be used because of the precarious circumstances under which it is called; use it with caution!

You could argue that del df['column_name'] should not be used or encouraged, and thereby del df.column_name should not even be considered.

However, in theory, del df.column_name could be implemeted to work in pandas using the magic method __delattr__. This does however introduce certain problems, problems which the del df['column_name'] implementation already has, but in lesser degree.

Example Problem

What if I define a column in a dataframe called "dtypes" or "columns".

Then assume I want to delete these columns.

del df.dtypes would make the __delattr__ method confused as if it should delete the "dtypes" attribute or the "dtypes" column.

Architectural questions behind this problem

  1. Is a dataframe a collection of columns?
  2. Is a dataframe a collection of rows?
  3. Is a column an attribute of a dataframe?

Pandas answers:

  1. Yes, in all ways
  2. No, but if you want it to be, you can use the .ix, .loc or .iloc methods.
  3. Maybe, do you want to read data? Then yes, unless the name of the attribute is already taken by another attribute belonging to the dataframe. Do you want to modify data? Then no.


You cannot do del df.column_name because pandas has a quite wildly grown architecture that needs to be reconsidered in order for this kind of cognitive dissonance not to occur to its users.


Don't use df.column_name, It may be pretty, but it causes cognitive dissonance

Zen of Python quotes that fits in here:

There are multiple ways of deleting a column.

There should be one-- and preferably only one --obvious way to do it.

Columns are sometimes attributes but sometimes not.

Special cases aren't special enough to break the rules.

Does del df.dtypes delete the dtypes attribute or the dtypes column?

In the face of ambiguity, refuse the temptation to guess.

  • "In fact, __del__ should almost never be used because of the precarious circumstances under which it is called; use it with caution!" is completely irrelevant here, as the method being used here is __delattr__. – pppery Feb 22 '18 at 19:27
  • 1
    @ppperry you're miss-quoting. it's the del builtin that is meant, not the .__del__ instance method. The del builtin is mapping to __delattr__ and __delitem__ which is what I am building my argument on. So maybe you want to re-read what I wrote. – firelynx Feb 23 '18 at 10:01
  • __ ... __ gets intrerpreted as bold markup by StackExchange – pppery Feb 25 '18 at 20:20
  • "Don't use df.column_name, It may be pretty, but it causes cognitive dissonance" What does this mean? I am not a psychologist so I have to look this up to understand what you mean. Also, quoting The Zen is meaningless because there are hundreds of valid ways to do the same thing in pandas. – cs95 May 23 at 17:26

A nice addition is the ability to drop columns only if they exist. This way you can cover more use cases, and it will only drop the existing columns from the labels passed to it:

Simply add errors='ignore', for example.:

df.drop(['col_name_1', 'col_name_2', ..., 'col_name_N'], inplace=True, axis=1, errors='ignore')
  • This is new from pandas 0.16.1 onward. Documentation is here.

from version 0.16.1 you can do

df.drop(['column_name'], axis = 1, inplace = True, errors = 'ignore')
  • 3
    And this also supports dropping multiple columns, some of which need not exist (i.e. without raising error errors= 'ignore') df.drop(['column_1','column_2'], axis=1 , inplace=True,errors= 'ignore'), if such an application desired! – muon Oct 21 '16 at 19:57

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]
0    2
1    5
Name: 1

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

In pandas 0.16.1+ you can drop columns only if they exist per the solution posted by @eiTanLaVi. Prior to that version, you can achieve the same result via a conditional list comprehension:

df.drop([col for col in ['col_name_1','col_name_2',...,'col_name_N'] if col in df], 
        axis=1, inplace=True)

Pandas 0.21+ answer

Pandas version 0.21 has changed the drop method slightly to include both the index and columns parameters to match the signature of the rename and reindex methods.

df.drop(columns=['column_a', 'column_c'])

Personally, I prefer using the axis parameter to denote columns or index because it is the predominant keyword parameter used in nearly all pandas methods. But, now you have some added choices in version 0.21.

  • df.drop(['column_a', 'column_c'], axis=1) | it is working for me for now – Indrajeet Gour Apr 22 '18 at 5:03


A lot of effort to find a marginally more efficient solution. Difficult to justify the added complexity while sacrificing the simplicity of df.drop(dlst, 1, errors='ignore')

df.reindex_axis(np.setdiff1d(df.columns.values, dlst), 1)

Deleting a column is semantically the same as selecting the other columns. I'll show a few additional methods to consider.

I'll also focus on the general solution of deleting multiple columns at once and allowing for the attempt to delete columns not present.

Using these solutions are general and will work for the simple case as well.

Consider the pd.DataFrame df and list to delete dlst

df = pd.DataFrame(dict(zip('ABCDEFGHIJ', range(1, 11))), range(3))
dlst = list('HIJKLM')


   A  B  C  D  E  F  G  H  I   J
0  1  2  3  4  5  6  7  8  9  10
1  1  2  3  4  5  6  7  8  9  10
2  1  2  3  4  5  6  7  8  9  10


['H', 'I', 'J', 'K', 'L', 'M']

The result should look like:

df.drop(dlst, 1, errors='ignore')

   A  B  C  D  E  F  G
0  1  2  3  4  5  6  7
1  1  2  3  4  5  6  7
2  1  2  3  4  5  6  7

Since I'm equating deleting a column to selecting the other columns, I'll break it into two types:

  1. Label selection
  2. Boolean selection

Label Selection

We start by manufacturing the list/array of labels that represent the columns we want to keep and without the columns we want to delete.

  1. df.columns.difference(dlst)

    Index(['A', 'B', 'C', 'D', 'E', 'F', 'G'], dtype='object')
  2. np.setdiff1d(df.columns.values, dlst)

    array(['A', 'B', 'C', 'D', 'E', 'F', 'G'], dtype=object)
  3. df.columns.drop(dlst, errors='ignore')

    Index(['A', 'B', 'C', 'D', 'E', 'F', 'G'], dtype='object')
  4. list(set(df.columns.values.tolist()).difference(dlst))

    # does not preserve order
    ['E', 'D', 'B', 'F', 'G', 'A', 'C']
  5. [x for x in df.columns.values.tolist() if x not in dlst]

    ['A', 'B', 'C', 'D', 'E', 'F', 'G']

Columns from Labels
For the sake of comparing the selection process, assume:

 cols = [x for x in df.columns.values.tolist() if x not in dlst]

Then we can evaluate

  1. df.loc[:, cols]
  2. df[cols]
  3. df.reindex(columns=cols)
  4. df.reindex_axis(cols, 1)

Which all evaluate to:

   A  B  C  D  E  F  G
0  1  2  3  4  5  6  7
1  1  2  3  4  5  6  7
2  1  2  3  4  5  6  7

Boolean Slice

We can construct an array/list of booleans for slicing

  1. ~df.columns.isin(dlst)
  2. ~np.in1d(df.columns.values, dlst)
  3. [x not in dlst for x in df.columns.values.tolist()]
  4. (df.columns.values[:, None] != dlst).all(1)

Columns from Boolean
For the sake of comparison

bools = [x not in dlst for x in df.columns.values.tolist()]
  1. df.loc[: bools]

Which all evaluate to:

   A  B  C  D  E  F  G
0  1  2  3  4  5  6  7
1  1  2  3  4  5  6  7
2  1  2  3  4  5  6  7

Robust Timing


setdiff1d = lambda df, dlst: np.setdiff1d(df.columns.values, dlst)
difference = lambda df, dlst: df.columns.difference(dlst)
columndrop = lambda df, dlst: df.columns.drop(dlst, errors='ignore')
setdifflst = lambda df, dlst: list(set(df.columns.values.tolist()).difference(dlst))
comprehension = lambda df, dlst: [x for x in df.columns.values.tolist() if x not in dlst]

loc = lambda df, cols: df.loc[:, cols]
slc = lambda df, cols: df[cols]
ridx = lambda df, cols: df.reindex(columns=cols)
ridxa = lambda df, cols: df.reindex_axis(cols, 1)

isin = lambda df, dlst: ~df.columns.isin(dlst)
in1d = lambda df, dlst: ~np.in1d(df.columns.values, dlst)
comp = lambda df, dlst: [x not in dlst for x in df.columns.values.tolist()]
brod = lambda df, dlst: (df.columns.values[:, None] != dlst).all(1)


res1 = pd.DataFrame(
        'loc slc ridx ridxa'.split(),
        'setdiff1d difference columndrop setdifflst comprehension'.split(),
    ], names=['Select', 'Label']),
    columns=[10, 30, 100, 300, 1000],

res2 = pd.DataFrame(
        'isin in1d comp brod'.split(),
    ], names=['Select', 'Label']),
    columns=[10, 30, 100, 300, 1000],

res = res1.append(res2).sort_index()

dres = pd.Series(index=res.columns, name='drop')

for j in res.columns:
    dlst = list(range(j))
    cols = list(range(j // 2, j + j // 2))
    d = pd.DataFrame(1, range(10), cols)
    dres.at[j] = timeit('d.drop(dlst, 1, errors="ignore")', 'from __main__ import d, dlst', number=100)
    for s, l in res.index:
        stmt = '{}(d, {}(d, dlst))'.format(s, l)
        setp = 'from __main__ import d, dlst, {}, {}'.format(s, l)
        res.at[(s, l), j] = timeit(stmt, setp, number=100)

rs = res / dres


                          10        30        100       300        1000
Select Label                                                           
loc    brod           0.747373  0.861979  0.891144  1.284235   3.872157
       columndrop     1.193983  1.292843  1.396841  1.484429   1.335733
       comp           0.802036  0.732326  1.149397  3.473283  25.565922
       comprehension  1.463503  1.568395  1.866441  4.421639  26.552276
       difference     1.413010  1.460863  1.587594  1.568571   1.569735
       in1d           0.818502  0.844374  0.994093  1.042360   1.076255
       isin           1.008874  0.879706  1.021712  1.001119   0.964327
       setdiff1d      1.352828  1.274061  1.483380  1.459986   1.466575
       setdifflst     1.233332  1.444521  1.714199  1.797241   1.876425
ridx   columndrop     0.903013  0.832814  0.949234  0.976366   0.982888
       comprehension  0.777445  0.827151  1.108028  3.473164  25.528879
       difference     1.086859  1.081396  1.293132  1.173044   1.237613
       setdiff1d      0.946009  0.873169  0.900185  0.908194   1.036124
       setdifflst     0.732964  0.823218  0.819748  0.990315   1.050910
ridxa  columndrop     0.835254  0.774701  0.907105  0.908006   0.932754
       comprehension  0.697749  0.762556  1.215225  3.510226  25.041832
       difference     1.055099  1.010208  1.122005  1.119575   1.383065
       setdiff1d      0.760716  0.725386  0.849949  0.879425   0.946460
       setdifflst     0.710008  0.668108  0.778060  0.871766   0.939537
slc    columndrop     1.268191  1.521264  2.646687  1.919423   1.981091
       comprehension  0.856893  0.870365  1.290730  3.564219  26.208937
       difference     1.470095  1.747211  2.886581  2.254690   2.050536
       setdiff1d      1.098427  1.133476  1.466029  2.045965   3.123452
       setdifflst     0.833700  0.846652  1.013061  1.110352   1.287831

fig, axes = plt.subplots(2, 2, figsize=(8, 6), sharey=True)
for i, (n, g) in enumerate([(n, g.xs(n)) for n, g in rs.groupby('Select')]):
    ax = axes[i // 2, i % 2]
    g.plot.bar(ax=ax, title=n)

This is relative to the time it takes to run df.drop(dlst, 1, errors='ignore'). It seems like after all that effort, we only improve performance modestly.

enter image description here

If fact the best solutions use reindex or reindex_axis on the hack list(set(df.columns.values.tolist()).difference(dlst)). A close second and still very marginally better than drop is np.setdiff1d.

    lambda x: pd.DataFrame(
        dict(idx=x.values, val=rs.lookup(x.values, x.index)),

                      idx       val
10     (ridx, setdifflst)  0.653431
30    (ridxa, setdifflst)  0.746143
100   (ridxa, setdifflst)  0.816207
300    (ridx, setdifflst)  0.780157
1000  (ridxa, setdifflst)  0.861622

The dot syntax works in JavaScript, but not in Python.

  • Python: del df['column_name']
  • JavaScript: del df['column_name'] or del df.column_name

Delete Column(s) from Multiple DataFrames

If you came here looking for information on how to drop a column (having the same name) from a list of DataFrames, then there are a few ways to do so.

One method is to iterate over the list and modify each DataFrame in-place:

# In-place assignment
for df in df_list:
    df.drop('colname', axis=1, inplace=True)


for df in df_list: df.pop('colname')

Alternatively, drop the column (not in-place) and assign the result back to that list position.

# Reassigning a copy back to the list
for i, df in enumerate(df_list):
    df_list[i] = df.drop('colname', axis=1, inplace=True)

Reproducible Code Sample

df1 = pd.DataFrame({'A': [1, 2, 3], 'B': [4, 5, 6]})
df2 = pd.DataFrame({'A': [4, 5, 7], 'C': ['a', 'b', 'c']})

   A  B
0  1  4
1  2  5
2  3  6

   A  C
0  4  a
1  5  b
2  7  c

df_list = [df1, df2]

# Drop column "A"
for df in df_list:
    df.drop('A', axis=1, inplace=True)

0  4
1  5
2  6

0  a
1  b
2  c

Why doesn't for df in df_list: df = df.drop('colname', axis=1) (i.e., reassignment inside the loop) work?

As mentioned in other answers, df.drop returns a copy by default. The copy is returned and re-assigned to the variable df, without any modification to the original. You would either have to modify df in-place with the inplace=True argument, or reassign the copy to that list element explicitly.

It is important to understand the difference between variables and objects. Variables hold references to objects. Variables can be reassigned to reference different objects, this has nothing to do with modifying the object itself. For a good primer on this topic, I recommend reading this article by Ned Batchelder.


Another way of Deleting a Column in Pandas DataFrame

if you're not looking for In-Place deletion then you can create a new DataFrame by specifying the columns using DataFrame(...) function as

my_dict = { 'name' : ['a','b','c','d'], 'age' : [10,20,25,22], 'designation' : ['CEO', 'VP', 'MD', 'CEO']}

df = pd.DataFrame(my_dict)

Create a new DataFrame as

newdf = pd.DataFrame(df, columns=['name', 'age'])

You get a result as good as what you get with del / drop

  • This is technically correct but it seems silly to have to list every column to keep instead of just the one (or few) columns you want to delete. – cs95 May 23 at 17:24

protected by cs95 Oct 4 '17 at 6:00

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