I'm trying to better understand how numpy's memmap handles views of very large files. The script below opens a memory mapped 2048^3 array, and copies a downsampled 128^3 view of it
import numpy as np from time import time FILE = '/Volumes/BlackBox/test.dat' array = np.memmap(FILE, mode='r', shape=(2048,2048,2048), dtype=np.float64) t = time() for i in range(5): view = np.array(array[::16, ::16, ::16]) t = ((time() - t) / 5) * 1000 print "Time (ms): %i" % t
Usually, this prints
Time (ms): 80 or so. However, if I change the view assignment to
view = np.array(array[1::16, 2::16, 3::16])
and run it three times, I get the following:
Time (ms): 9988 Time (ms): 79 Time (ms): 78
Does anybody understand why the first invocation is so much slower?