I have a pandas Series object with each value being a DataFrame. I am trying convert this into a single DataFrame with all of the Series values (individual DataFrame) stacked on top of each other. How can I achieve this without a loop?

A toy example below to generate the test object (results).

import pandas as pd
import numpy as np
numrows = 10000

def toy_function(x):
    silly_sequence = np.random.uniform(10, 100, (x+1))
    toy = pd.DataFrame({'ID':pd.Series(np.random.random_integers(1,20,3)),'VALUE':pd.Series((np.median(silly_sequence),np.mean(silly_sequence), np.max(silly_sequence)))})

    return toy

results = pd.DataFrame({'ID':range(numrows)})['ID'].apply(toy_function)

results is of Series type and each element is a DataFrame like so:

In [1]: results[1]
   ID      VALUE
0  17  40.035398
1   8  40.035398
2  20  66.483083

I am looking for a way to stack results[1], results[2] etc. on top of each other to yield a DataFrame like this:

   ID      VALUE
0  17  40.035398
1   8  40.035398
2  20  66.483083
4  12  25.035398
5   1  25.135398
6  19  65.553083

Try using pd.concat. At the very least, pd.concat(series.values.tolist()) should work.

Its default is to take a list of pandas dataframes or series and return them tacked end on end. http://pandas.pydata.org/pandas-docs/stable/merging.html

  • 3
    The .values is not needed. You can just pass series.tolist()
    – joris
    May 27 '15 at 8:07
  • What if I want to expand/save the original index and the DFs have different length?
    – Dalar
    Feb 12 '20 at 9:24
  • I tried this solution having some empty dataframes,unfortunately concat delete those empty dataframe. My solution was to fill those dataframes with nans before perform concat operation. Like this: if len(data) == 0: data = data.append(dict(zip(data.columns, [np.NaN]*data.shape[1])), ignore_index=True)
    – solopiu
    Aug 31 at 10:06

Concatenate results and ignore your index while doing so:

df_stacked = pd.concat([r for r in results], ignore_index=True)

Your Answer

By clicking “Post Your Answer”, you agree to our terms of service, privacy policy and cookie policy

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