I want to get a list of the column headers from a Pandas DataFrame. The DataFrame will come from user input, so I won't know how many columns there will be or what they will be called.

For example, if I'm given a DataFrame like this:

    y  gdp  cap
0   1    2    5
1   2    3    9
2   8    7    2
3   3    4    7
4   6    7    7
5   4    8    3
6   8    2    8
7   9    9   10
8   6    6    4
9  10   10    7

I would get a list like this:

['y', 'gdp', 'cap']

25 Answers 25


You can get the values as a list by doing:


Also you can simply use (as shown in Ed Chum's answer):


There is a built-in method which is the most performant:


.columns returns an Index, .columns.values returns an array and this has a helper function .tolist to return a list.

If performance is not as important to you, Index objects define a .tolist() method that you can call directly:


The difference in performance is obvious:

%timeit df.columns.tolist()
16.7 µs ± 317 ns per loop (mean ± std. dev. of 7 runs, 100000 loops each)

%timeit df.columns.values.tolist()
1.24 µs ± 12.3 ns per loop (mean ± std. dev. of 7 runs, 1000000 loops each)

For those who hate typing, you can just call list on df, as so:

  • That last option is very idiomatic, it makes reading code hard for me...
    – dzieciou
    Commented Apr 28, 2023 at 6:31

I did some quick tests, and perhaps unsurprisingly the built-in version using dataframe.columns.values.tolist() is the fastest:

In [1]: %timeit [column for column in df]
1000 loops, best of 3: 81.6 µs per loop

In [2]: %timeit df.columns.values.tolist()
10000 loops, best of 3: 16.1 µs per loop

In [3]: %timeit list(df)
10000 loops, best of 3: 44.9 µs per loop

In [4]: % timeit list(df.columns.values)
10000 loops, best of 3: 38.4 µs per loop

(I still really like the list(dataframe) though, so thanks EdChum!)


Extended Iterable Unpacking (Python 3.5+): [*df] and Friends

Unpacking generalizations (PEP 448) have been introduced with Python 3.5. So, the following operations are all possible.

df = pd.DataFrame('x', columns=['A', 'B', 'C'], index=range(5))

   A  B  C
0  x  x  x
1  x  x  x
2  x  x  x
3  x  x  x
4  x  x  x

If you want a list....

# ['A', 'B', 'C']

Or, if you want a set,

# {'A', 'B', 'C'}

Or, if you want a tuple,

*df,  # Please note the trailing comma
# ('A', 'B', 'C')

Or, if you want to store the result somewhere,

*cols, = df  # A wild comma appears, again
# ['A', 'B', 'C']

... if you're the kind of person who converts coffee to typing sounds, well, this is going consume your coffee more efficiently ;)

P.S.: if performance is important, you will want to ditch the solutions above in favour of

# ['A', 'B', 'C']

This is similar to Ed Chum's answer, but updated for v0.24 where .to_numpy() is preferred to the use of .values. See this answer (by me) for more information.

Visual Check

Since I've seen this discussed in other answers, you can use iterable unpacking (no need for explicit loops).


print(*df, sep='\n')

Critique of Other Methods

Don't use an explicit for loop for an operation that can be done in a single line (list comprehensions are okay).

Next, using sorted(df) does not preserve the original order of the columns. For that, you should use list(df) instead.

Next, list(df.columns) and list(df.columns.values) are poor suggestions (as of the current version, v0.24). Both Index (returned from df.columns) and NumPy arrays (returned by df.columns.values) define .tolist() method which is faster and more idiomatic.

Lastly, listification i.e., list(df) should only be used as a concise alternative to the aforementioned methods for Python 3.4 or earlier where extended unpacking is not available.


It gets even simpler (by Pandas 0.16.0):


will give you the column names in a nice list.

>>> list(my_dataframe)
['y', 'gdp', 'cap']

To list the columns of a dataframe while in debugger mode, use a list comprehension:

>>> [c for c in my_dataframe]
['y', 'gdp', 'cap']

By the way, you can get a sorted list simply by using sorted:

>>> sorted(my_dataframe)
['cap', 'gdp', 'y']

That's available as my_dataframe.columns.


It's interesting, but df.columns.values.tolist() is almost three times faster than df.columns.tolist(), but I thought that they were the same:

In [97]: %timeit df.columns.values.tolist()
100000 loops, best of 3: 2.97 µs per loop

In [98]: %timeit df.columns.tolist()
10000 loops, best of 3: 9.67 µs per loop
  • 2
    Timings have already been covered in this answer. The reason for the discrepancy is because .values returns the underlying numpy array, and doing something with numpy is almost always faster than doing the same thing with pandas directly.
    – cs95
    Commented Apr 3, 2019 at 9:48

A DataFrame follows the dict-like convention of iterating over the “keys” of the objects.


Create a list of keys/columns - object method to_list() and the Pythonic way:


Basic iteration on a DataFrame returns column labels:

[column for column in my_dataframe]

Do not convert a DataFrame into a list, just to get the column labels. Do not stop thinking while looking for convenient code samples.

xlarge = pd.DataFrame(np.arange(100000000).reshape(10000,10000))
list(xlarge) # Compute time and memory consumption depend on dataframe size - O(N)
list(xlarge.keys()) # Constant time operation - O(1)

In the Notebook

For data exploration in the IPython notebook, my preferred way is this:


Which will produce an easy to read alphabetically ordered list.

In a code repository

In code I find it more explicit to do


Because it tells others reading your code what you are doing.

948 ns ± 19.2 ns per loop (mean ± std. dev. of 7 runs, 1000000 loops each)
14.2 µs ± 79.1 ns per loop (mean ± std. dev. of 7 runs, 100000 loops each)
1.88 µs ± 11.7 ns per loop (mean ± std. dev. of 7 runs, 1000000 loops each)
12.3 µs ± 27.4 ns per loop (mean ± std. dev. of 7 runs, 100000 loops each)
163 µs ± 20.6 µs per loop (mean ± std. dev. of 7 runs, 10000 loops each)
  • 1
    An explanation would be in order. E.g., what is the summary and conclusion? Please respond by editing (changing) your answer, not here in comments (without "Edit:", "Update:", or similar - the answer should appear as if it was written today). Commented Oct 22, 2021 at 12:48

Its very simple.

Like you can do it as:


  • Is this a new answer?
    – jtlz2
    Commented Dec 2, 2022 at 9:36

The simplest option would be: list(my_dataframe.columns) or my_dataframe.columns.tolist()

No need for the complex stuff above :)


For a quick, neat, visual check, try this:

for col in df.columns:
    print col

As answered by Simeon Visser, you could do



list(my_dataframe) # For less typing.

But I think most the sweet spot is:


It is explicit and at the same time not unnecessarily long.

import pandas as pd

# create test dataframe
df = pd.DataFrame('x', columns=['A', 'B', 'C'], index=range(2))



['A', 'B', 'C']

I feel the question deserves an additional explanation.

As fixxxer noted, the answer depends on the Pandas version you are using in your project. Which you can get with pd.__version__ command.

If you are for some reason like me (on Debian 8 (Jessie) I use 0.14.1) using an older version of Pandas than 0.16.0, then you need to use:

df.keys().tolist() because there isn’t any df.columns method implemented yet.

The advantage of this keys method is that it works even in newer version of Pandas, so it's more universal.

n = []
for i in my_dataframe.columns:
print n

If the DataFrame happens to have an Index or MultiIndex and you want those included as column names too:

names = list(filter(None, df.index.names + df.columns.values.tolist()))

It avoids calling reset_index() which has an unnecessary performance hit for such a simple operation.

I've run into needing this more often because I'm shuttling data from databases where the dataframe index maps to a primary/unique key, but is really just another "column" to me. It would probably make sense for pandas to have a built-in method for something like this (totally possible I've missed it).


This is the easiest way to reach your goal.


and if you are Lazy, try this >



its the simple code for you :

for i in my_dataframe:

just do it


It's worth pointing out that there's almost no reason to convert the column headers into a list. DataFrame.columns will return an Index/MultiIndex object that can be indexed, sliced and appended similar to a list. In fact, since it's similar to a numpy array, you can index using a list (which you can't do with a list).

Some common tasks:

df = pd.DataFrame({'A': range(5), 'B': range(6, 11), 'C': list('abcde')})

first_col_header = df.columns[0]                        # 1st column header
first_third_headers =  df.columns[[0,2]]                # 1st and 3rd column headers
df.columns = df.columns[:-1].append(pd.Index(['col5'])) # append a value
np.tile(df.columns, 2)      # == list(df)*2             # repeat headers
df.columns.repeat(2)        # == [c for c in df for _ in range(2)]

However, if you're here because you want to convert a values in a column into a list, then tolist() is your friend:

lst = df['B'].tolist()

If you are using pandas, then use the following

import pandas as pd
df = pd.read_csv(r'iris.csv')
# Dataframe show all columns

You can enable the commented print(df.head(2)) to see headers and 2 rows of data.


Even though the solution that was provided previously is nice, I would also expect something like frame.column_names() to be a function in Pandas, but since it is not, maybe it would be nice to use the following syntax. It somehow preserves the feeling that you are using pandas in a proper way by calling the "tolist" function: frame.columns.tolist()


listHeaders = [colName for colName in my_dataframe]

  • Your answer could be improved with additional supporting information. Please edit to add further details, such as citations or documentation, so that others can confirm that your answer is correct. You can find more information on how to write good answers in the help center.
    – Community Bot
    Commented Oct 28, 2021 at 2:28

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