209

If I have a dataframe with the following columns:

1. NAME                                     object
2. On_Time                                      object
3. On_Budget                                    object
4. %actual_hr                                  float64
5. Baseline Start Date                  datetime64[ns]
6. Forecast Start Date                  datetime64[ns] 

I would like to be able to say: here is a dataframe, give me a list of the columns which are of type Object or of type DateTime?

I have a function which converts numbers (Float64) to two decimal places, and I would like to use this list of dataframe columns, of a particular type, and run it through this function to convert them all to 2dp.

Maybe:

For c in col_list: if c.dtype = "Something"
list[]
List.append(c)?
2
  • 4
    When I came to this question, I was looking for a way to create exactly the list in the top. df.dtypes does that. Aug 17 '18 at 6:19
  • 1
    Visitors may also be interested in this different but related question on how to find all object types within each column: How could I detect subtypes in pandas object columns?.
    – jpp
    Feb 2 '19 at 17:18

13 Answers 13

339

If you want a list of columns of a certain type, you can use groupby:

>>> df = pd.DataFrame([[1, 2.3456, 'c', 'd', 78]], columns=list("ABCDE"))
>>> df
   A       B  C  D   E
0  1  2.3456  c  d  78

[1 rows x 5 columns]
>>> df.dtypes
A      int64
B    float64
C     object
D     object
E      int64
dtype: object
>>> g = df.columns.to_series().groupby(df.dtypes).groups
>>> g
{dtype('int64'): ['A', 'E'], dtype('float64'): ['B'], dtype('O'): ['C', 'D']}
>>> {k.name: v for k, v in g.items()}
{'object': ['C', 'D'], 'int64': ['A', 'E'], 'float64': ['B']}
5
  • 5
    This is useful as a Data Quality check, where one ensures that columns are of the type that one expects.
    – NYCeyes
    Apr 14 '16 at 15:18
  • 2
    this doesn't work if all your dataframe columns are returning object type, regardless of their actual contents Jul 17 '17 at 23:46
  • 2
    @user5359531 that doesn't mean it's not working, that actually means your DataFrame columns weren't cast to the type you think they should be, which can happen for a variety of reasons.
    – Marc
    Sep 5 '17 at 13:56
  • 7
    If you are just selecting columns by data type, then this answer is obsolete. Use select_dtypes instead
    – Ted Petrou
    Nov 3 '17 at 16:58
  • 1
    How do you index this grouped dataframe afterwards?
    – Allen Wang
    Jul 31 '18 at 0:43
127

As of pandas v0.14.1, you can utilize select_dtypes() to select columns by dtype

In [2]: df = pd.DataFrame({'NAME': list('abcdef'),
    'On_Time': [True, False] * 3,
    'On_Budget': [False, True] * 3})

In [3]: df.select_dtypes(include=['bool'])
Out[3]:
  On_Budget On_Time
0     False    True
1      True   False
2     False    True
3      True   False
4     False    True
5      True   False

In [4]: mylist = list(df.select_dtypes(include=['bool']).columns)

In [5]: mylist
Out[5]: ['On_Budget', 'On_Time']
37

Using dtype will give you desired column's data type:

dataframe['column1'].dtype

if you want to know data types of all the column at once, you can use plural of dtype as dtypes:

dataframe.dtypes
2
  • 1
    This should be the accepted answer, it prints the data types in almost exactly the format OP wants. Dec 1 '17 at 17:25
  • 1
    Question was about listing only the specific datatype for example using df.select_dtypes(include=['Object','DateTime']).columns as discussed below
    – DfAC
    Jan 27 '18 at 12:47
32
list(df.select_dtypes(['object']).columns)

This should do the trick

2
  • 1
    Cleanest answer here.
    – alofgran
    Sep 24 '20 at 17:43
  • the .columns can be removed
    – M3105
    May 25 at 18:38
29

You can use boolean mask on the dtypes attribute:

In [11]: df = pd.DataFrame([[1, 2.3456, 'c']])

In [12]: df.dtypes
Out[12]: 
0      int64
1    float64
2     object
dtype: object

In [13]: msk = df.dtypes == np.float64  # or object, etc.

In [14]: msk
Out[14]: 
0    False
1     True
2    False
dtype: bool

You can look at just those columns with the desired dtype:

In [15]: df.loc[:, msk]
Out[15]: 
        1
0  2.3456

Now you can use round (or whatever) and assign it back:

In [16]: np.round(df.loc[:, msk], 2)
Out[16]: 
      1
0  2.35

In [17]: df.loc[:, msk] = np.round(df.loc[:, msk], 2)

In [18]: df
Out[18]: 
   0     1  2
0  1  2.35  c
2
  • I'd love to be able to write a function which takes in the name of a dataframe, and then returns a dictionary of lists, with the dictionary key being the datatype and the value being the list of columns from the dataframe which are of that datatype.
    – yoshiserry
    Mar 18 '14 at 8:05
  • def col_types(x,pd):
    – itthrill
    Aug 28 '18 at 3:03
9

The most direct way to get a list of columns of certain dtype e.g. 'object':

df.select_dtypes(include='object').columns

For example:

>>df = pd.DataFrame([[1, 2.3456, 'c', 'd', 78]], columns=list("ABCDE"))
>>df.dtypes

A      int64
B    float64
C     object
D     object
E      int64
dtype: object

To get all 'object' dtype columns:

>>df.select_dtypes(include='object').columns

Index(['C', 'D'], dtype='object')

For just the list:

>>list(df.select_dtypes(include='object').columns)

['C', 'D']   
0
8

use df.info(verbose=True) where df is a pandas datafarme, by default verbose=False

1
  • there can be memory issues if the table is large
    – Koo
    Jan 15 '20 at 10:55
4

If you want a list of only the object columns you could do:

non_numerics = [x for x in df.columns \
                if not (df[x].dtype == np.float64 \
                        or df[x].dtype == np.int64)]

and then if you want to get another list of only the numerics:

numerics = [x for x in df.columns if x not in non_numerics]
2

If after 6 years you still have the issue, this should solve it :)

cols = [c for c in df.columns if df[c].dtype in ['object', 'datetime64[ns]']]
0

I came up with this three liner.

Essentially, here's what it does:

  1. Fetch the column names and their respective data types.
  2. I am optionally outputting it to a csv.

inp = pd.read_csv('filename.csv') # read input. Add read_csv arguments as needed
columns = pd.DataFrame({'column_names': inp.columns, 'datatypes': inp.dtypes})
columns.to_csv(inp+'columns_list.csv', encoding='utf-8') # encoding is optional

This made my life much easier in trying to generate schemas on the fly. Hope this helps

0

for yoshiserry;

def col_types(x,pd):
    dtypes=x.dtypes
    dtypes_col=dtypes.index
    dtypes_type=dtypes.value
    column_types=dict(zip(dtypes_col,dtypes_type))
    return column_types
0

I use infer_objects()

Docstring: Attempt to infer better dtypes for object columns.

Attempts soft conversion of object-dtyped columns, leaving non-object and unconvertible columns unchanged. The inference rules are the same as during normal Series/DataFrame construction.

df.infer_objects().dtypes

0
df = pd.DataFrame({'float': [1.0],
                   'int': [1],
                   'bool_1': [False],
                   'datetime': [pd.Timestamp('20180310')],
                   'bool_2': [True],
                   'string': ['foo']})
df.dtypes

# float              float64
# int                  int64
# bool_1                bool
# datetime    datetime64[ns]
# bool_2                bool
# string              object
# dtype: object


[column for column, is_type in (df.dtypes==bool).items() if is_type]
# ['bool_1', 'bool_2']

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