4

I have a rather large pandas dataframe (1.7G) from which I am selecting some columns to do some computaton (find maximum value of the three selected columns). It seems that this operation is memory intensive. I am trying to find a way to avoid this memory overhead.

For the purpose to this question, I a simplifying the dataframe and using fake data. My code and the memory footprint is shown below,

from memory_profiler import profile
import pandas as pnd
import random


@profile
def main():
    cols = [chr(i) for i in range(65,91)]
    d = {}
    n = 1000000
    for c in cols:
        d[c] = [random.randint(0,100) for i in range(n)]
    df = pnd.DataFrame(d)
    items = ['A','F','G']
    a = df[items]
    b = a.max(axis=0)


if __name__ == "__main__":
    main()


Line #    Mem usage    Increment   Line Contents
================================================
     6     42.3 MiB      0.0 MiB   @profile
     7                             def main():
     8     42.3 MiB      0.0 MiB       cols = [chr(i) for i in range(65,91)]
     9     42.3 MiB      0.0 MiB       d = {}
    10     42.3 MiB      0.0 MiB       n = 1000000
    11    240.6 MiB    198.3 MiB       for c in cols:
    12    240.6 MiB      0.0 MiB           d[c] = [random.randint(0,100) for i in range(n)]
    13    446.7 MiB    206.1 MiB       df = pnd.DataFrame(d)
    14    446.7 MiB      0.0 MiB       items = ['A','F','G']
    15    469.7 MiB     23.1 MiB       a = df[items]
    16    469.8 MiB      0.1 MiB       b = a.max(axis=0)

In the above operation, it seems that df[items] uses up 23MB of memory. I am speculating that this because it is making a copy of the df and placing it in 'a'.

Is there a way get rid of this memory overhead when selecting columns?

1

Pandas returns copies for most operations. Certain selection operations can return a view, in that the memory may not be copied and is an underlying numpy view. This is in general controlled by numpy. A taking operation like you are doing, (e.g. a non-consecutive) slice, will never give a view.

However, more to the point, this doesn't actually matter, as soon as the reference to the variable is release the memory will be garbage collected.

What is your goal here?

  • I am dealing with a dataPanel that is 1.7G. When I do this selection operation at multiple place in my program, I end up with an overhead that causes my 8G machine to hang and freeze. – nitin Aug 8 '14 at 13:01
  • May be I should increase my memory on my machine – nitin Aug 8 '14 at 13:01
  • 2
    you could do that, or work with the data in a HDF file. Make sure your dtypes are correct (e.g. not object, except for strings). – Jeff Aug 8 '14 at 13:34
0

If you're just doing calculations, you probably don't need to select the columns out into new variables and create the copies.

Just apply the function directly - I guess this will take more CPU as it's calculating all the maxes, then just getting the ones you want, but doesn't create a new variable.

df.max()[['A','F','G']]

Or try a quick loop through the columns you need the max for, using simple selection of one column at a time to try to get a view returned (as you can't use the complex slice and get a view).

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.