df = df.groupby(df.index).sum()

I have a dataframe with 3.8 million rows (single column), and I'm trying to group them by index. But it takes forever to finish the computation. Are there any alternative ways to deal with a very large data set? Thanks in advance!!!!

I'm writing in Python.

The data looks like as below. The index is the customer ID. I want to group the qty_liter by the Index.

df = df.groupby(df.index).sum()

But this line of code is taking toooo much time.....

enter image description here

the info about this df is below:


<class 'pandas.core.frame.DataFrame'> Index: 3842595 entries, -2147153165 to \N Data columns (total 1 columns): qty_liter object dtypes: object(1) memory usage: 58.6+ MB

  • 2
    Can you show df.info()? – chrisb Jun 22 '17 at 16:09
  • save out the index as the first column, and then this one liner in the terminal will achiever what you want awk 'BEGIN{FS=OFS=","}{a[$1]+=$2}END{ for (i in a) print i,a[i]}' – aws_apprentice Jun 22 '17 at 16:18
  • 2
    How many unique groups do you have? Even with 3.8 million unique indices, it computes the sum in less than a second (I tried with floats). – ayhan Jun 22 '17 at 16:27
  • Do you care about the index info in the output dataframe? Could there be any negative value in qty_liter? – Divakar Jun 22 '17 at 17:13
  • 2
    The problem is that neither the index nor column value are numeric - I'd check into however you created this frame – chrisb Jun 22 '17 at 18:44

The problem is that your data are not numeric. Processing strings takes a lot longer than processing numbers. Try this first:

df.index = df.index.astype(int)
df.qty_liter = df.qty_liter.astype(float)

Then do groupby() again. It should be much faster. If it is, see if you can modify your data loading step to have the proper dtypes from the beginning.

Your Answer

By clicking "Post Your Answer", you acknowledge that you have read our updated terms of service, privacy policy and cookie policy, and that your continued use of the website is subject to these policies.

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