Do you know how to get the index or column of a DataFrame as a NumPy array or python list?
To get a NumPy array, you should use the values
attribute:
In [1]: df = pd.DataFrame({'A': [1, 2, 3], 'B': [4, 5, 6]}, index=['a', 'b', 'c']); df
A B
a 1 4
b 2 5
c 3 6
In [2]: df.index.values
Out[2]: array(['a', 'b', 'c'], dtype=object)
This accesses how the data is already stored, so there's no need for a conversion.
Note: This attribute is also available for many other pandas' objects.
In [3]: df['A'].values
Out[3]: Out[16]: array([1, 2, 3])
To get the index as a list, call tolist
:
In [4]: df.index.tolist()
Out[4]: ['a', 'b']
And similarly, for columns.
You can use df.index
to access the index object and then get the values in a list using df.index.tolist()
. Similarly, you can use df['col'].tolist()
for Series.


12

3
df.index.tolist()
doesn't return an instance method. It returns a list of indices. It is a method defined on pandas index. While calling values first is a possibility, delegating the job to numpy is not a correction  just an alternative. – ayhan May 20 '17 at 8:08
If you are dealing with a multiindex dataframe, you may be interested in extracting only the column of one name of the multiindex. You can do this as
df.index.get_level_values('name_sub_index')
and of course name_sub_index
must be an element of the FrozenList
df.index.names
Current as of v0.24.0+, 2019.
Deprecate your usage of .values
in favour of these methods!
From v0.24.0 onwards, we will have two brand spanking new, preferred methods for obtaining NumPy arrays from Index
, Series
, and DataFrame
objects: they are to_numpy()
, and .array
. Regarding usage, the docs mention:
We haven’t removed or deprecated
Series.values
orDataFrame.values
, but we highly recommend and using.array
or.to_numpy()
instead.
See this section of the v0.24.0 release notes for more information.
df.index.to_numpy()
# array(['a', 'b'], dtype=object)
df['A'].to_numpy()
# array([1, 4])
By default, a view is returned. Any modifications made will affect the original.
v = df.index.to_numpy()
v[0] = 1
df
A B
1 1 2
b 4 5
If you need a copy instead, use to_numpy(copy=True
);
v = df.index.to_numpy(copy=True)
v[1] = 123
df
A B
a 1 2
b 4 5
Note that this function also works for DataFrames (while .array
does not).
array
Attribute
This attribute returns an ExtensionArray
object that backs the Index/Series.
pd.__version__
# '0.24.0rc1'
# Setup.
df = pd.DataFrame([[1, 2], [4, 5]], columns=['A', 'B'], index=['a', 'b'])
df
A B
a 1 2
b 4 5
df.index.array
# <PandasArray>
# ['a', 'b']
# Length: 2, dtype: object
df['A'].array
# <PandasArray>
# [1, 4]
# Length: 2, dtype: int64
From here, it is possible to get a list using list
:
list(df.index.array)
# ['a', 'b']
list(df['A'].array)
# [1, 4]
or, just directly call .tolist()
:
df.index.tolist()
# ['a', 'b']
df['A'].tolist()
# [1, 4]
Regarding what is returned, the docs mention,
For
Series
andIndex
es backed by normal NumPy arrays,Series.array
will return a newarrays.PandasArray
, which is a thin (nocopy) wrapper around anumpy.ndarray
.arrays.PandasArray
isn’t especially useful on its own, but it does provide the same interface as any extension array defined in pandas or by a thirdparty library.
So, to summarise, .array
will return either
 The existing
ExtensionArray
backing the Index/Series, or  If there is a NumPy array backing the series, a new
ExtensionArray
object is created as a thin wrapper over the underlying array.
Rationale for adding TWO new methods
These functions were added as a result of discussions under two GitHub issues GH19954 and GH23623.
Specifically, the docs mention the rationale:
[...] with
.values
it was unclear whether the returned value would be the actual array, some transformation of it, or one of pandas custom arrays (likeCategorical
). For example, withPeriodIndex
,.values
generates a newndarray
of period objects each time. [...]
These two functions aim to improve the consistency of the API, which is a major step in the right direction.
Lastly, .values
will not be deprecated in the current version, but I expect this may happen at some point in the future, so I would urge users to migrate towards the newer API, as soon as you can.
Since pandas v0.13 you can also use get_values
:
df.index.get_values()

5Is there a difference between this and .values? (I updated version info, since this function appears from the 0.13.0 docs.) – Andy Hayden Dec 12 '14 at 3:12

@Andy Hayden: Isn't one difference that .get_values is the official way to get only the current values while .values (e.g. on a multiindex) may return index values for which the rows or columns have been deleted? – Ezekiel Kruglick Oct 8 '15 at 22:07

@EzekielKruglick so it's always a copy? The linked to documentation is very light, I didn't think you get dupes like that (even if they're in the MI they won't be in the .values) would be great to see an example which demonstrates this! – Andy Hayden Oct 8 '15 at 22:16

@AndyHayden: I think I was reading your comment wrong. You're right, .values is good, .level gives outdated and get_values gives you the current values properly excluding dropped rows/cols. Original github issue: github.com/pydata/pandas/issues/3686 But I just checked and it looks like .values (of course!) gives up to date info just in a different form than I thought was what we were talking about – Ezekiel Kruglick Oct 8 '15 at 22:34

1@AndyHayden No, there is no difference.
get_values
just calls.values
. It is more characters to type. – cs95 Jan 23 at 20:48
I converted the pandas dataframe
to list
and then used the basic list.index()
. Something like this:
dd = list(zone[0]) #Where zone[0] is some specific column of the table
idx = dd.index(filename[i])
You have you index value as idx
.
.values
will NO LONGER BE the preferred method for accessing underlying numpy arrays. See this answer. – cs95 Jan 23 at 9:59