# Split dataframe into relatively even chunks according to length

I have to create a function which would split provided dataframe into chunks of needed size. For instance if dataframe contains 1111 rows, I want to be able to specify chunk size of 400 rows, and get three smaller dataframes with sizes of 400, 400 and 311. Is there a convenience function to do the job? What would be the best way to store and iterate over sliced dataframe?

Example DataFrame

``````import numpy as np
import pandas as pd

test = pd.concat([pd.Series(np.random.rand(1111)), pd.Series(np.random.rand(1111))], axis = 1)
``````
• You can just get the index ranges using `test.index[::400]` and use this to slice the df: `first = test.iloc[:400] second = test.iloc[400:800] third = test.iloc` Oct 27, 2015 at 11:52
• I have more than 50 files with >50k rows, I think I will have to generate additional index in a loop and use df.groupby()
– YKY
Oct 27, 2015 at 11:54
• You can look at `sklearn train_test_split` also Oct 27, 2015 at 11:58

You can take the floor division of a sequence up to the amount of rows in the dataframe, and use it to `groupby` splitting the dataframe into equally sized chunks:

``````n = 400
for g, df in test.groupby(np.arange(len(test)) // n):
print(df.shape)
# (400, 2)
# (400, 2)
# (311, 2)
``````
• how can I put each df produced from each iteration in a new df to use later Jun 23 at 17:27

A more pythonic way to break large dataframes into smaller chunks based on fixed number of rows is to use list comprehension:

``````n = 400  #chunk row size
list_df = [test[i:i+n] for i in range(0,test.shape,n)]

[i.shape for i in list_df]
``````

Output:

``````[(400, 2), (400, 2), (311, 2)]
``````
• how can I use this result afterwards? In my case, I have used your code to save my dataframe in chunks. I have code that creates a tfDIF oh my pandas dataframe, how can I apply this code so that my TfDIF is calculated not on the entire dataframe, but on each one of these chunks instead so that I avoid Memory Error? Dec 24, 2018 at 14:43