I'm loading a CSV file (if you want the specific file, it's the training csv from http://www.kaggle.com/c/loan-default-prediction). Loading the csv in numpy takes dramatically more time than in pandas.

timeit("genfromtxt('train_v2.csv', delimiter=',')", "from numpy import genfromtxt",  number=1)

timeit("pandas.io.parsers.read_csv('train_v2.csv')", "import pandas",  number=1)

I'll also mention that the numpy memory usage fluctuates much more wildly, goes higher, and has significantly higher memory usage once loaded. (2.49 GB for numpy vs ~600MB for pandas) All datatypes in pandas are 8 bytes, so differing dtypes is not the difference. I got nowhere near maxing out my memory usage, so the time difference can not be ascribed to paging.

Any reason for this difference? Is genfromtxt just way less efficient? (And leaks a bunch of memory?)


numpy version 1.8.0

pandas version 0.13.0-111-ge29c8e8

  • 4
    Basically, yes. genfromtxt is just way less efficient. It's not that it leaks memory, just that it essentially reads everything in in python lists and then converts to a numpy array. pandas.read_csv is just that much more efficient. Not to plug my own answer, but see here: stackoverflow.com/questions/8956832/… for a comparison of the various numpy text loading approaches. (That answer deliberately leaves pandas.read_csv out, but it's similar in performance to the last example.) – Joe Kington Jan 31 '14 at 18:08
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    If that's really the case, maybe I'll see what I can do about submitting a patch to numpy. As it stands, loading the DataFrame followed by df.as_matrix() was ~15s total, compared to 102 for genfromtxt – Kurt Spindler Jan 31 '14 at 18:10
  • And thank you for the pointer to your other question, that is informative. – Kurt Spindler Jan 31 '14 at 18:13
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    Here's the original article on read_csv from Wes who wrote it: wesmckinney.com/blog/?p=543 – Jeff Jan 31 '14 at 18:24
  • 1
    @JoeKington Perhaps you can post you comments as an answer... – Saullo G. P. Castro Feb 1 '14 at 16:35

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