I have a df like so:

import pandas
a=[['1/2/2014', 'a', '6', 'z1'], 
   ['1/2/2014', 'a', '3', 'z1'], 
   ['1/3/2014', 'c', '1', 'x3'],
df = pandas.DataFrame.from_records(a[1:],columns=a[0])

I want to flatten the df so it is one continuous list like so:

['1/2/2014', 'a', '6', 'z1', '1/2/2014', 'a', '3', 'z1','1/3/2014', 'c', '1', 'x3']

I can loop through the rows and extend to a list, but is a much easier way to do it?

  • possible duplicate of Comprehension for flattening a sequence of sequences?
    – hlt
    Aug 22, 2014 at 5:22
  • 5
    i looked at that above answer when searching for an answer. That question isn't a dataframe setting. If that answer solved my problem, I wouldn't have needed to post my question.
    – jason
    Aug 22, 2014 at 6:22

5 Answers 5


You can use .flatten() on the DataFrame converted to a NumPy array:


and you can also add .tolist() if you want the result to be a Python list.


In previous versions of Pandas, the values attributed was used instead of the .to_numpy() method, as mentioned in the comments below.

  • 16
    pandas now recommends using .to_numpy() instead of .values.
    – Frank
    Sep 28, 2019 at 19:08
  • 1
    @Frank Why? .values already exists, it's a numpy array under the hood. Why call a function?
    – endolith
    Jun 4, 2023 at 15:12
  • 1
    @endolith I'm just passing along what the docs say – ask them, not me. Some more context here: stackoverflow.com/a/54508052
    – Frank
    Jun 5, 2023 at 17:33

Maybe use stack?

array(['1/2/2014', 'a', '3', 'z1', '1/3/2014', 'c', '1', 'x3'], dtype=object)

(Edit: Incidentally, the DF in the Q uses the first row as labels, which is why they're not in the output here.)


You can try with numpy

import numpy as np
np.reshape(df.values, (1,df.shape[0]*df.shape[1]))

you can use the reshape method

  • Hi ahmed, you could improve your answer formatting your code, putting links to the official documentation and finally writing the output gotten using your answer.
    – Carmoreno
    Jul 20, 2021 at 23:50

The previously mentioned df.values.flatten().tolist() and df.to_numpy().flatten().tolist() are concise and effective, but I spent a very long time trying to learn how to 'do the work myself' via list comprehension and without resorting built-in functions.

For anyone else who is interested, try:

[ row for col in df for row in df[col] ]

Turns out that this solution to flattening a df via list comprehension (which I haven't found elsewhere on SO) is just a small modification to the solution for flattening nested lists (that can be found all over SO):

[ val for sublst in lst for val in sublst ]

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