I made a little function using timeit just so I could be lazy and do less typing which isn't panning out as planned.
The (relevant) code:
def timing(function, retries=10000, formatSeconds=3, repeat=10): """Test how long a function takes to run. Defaults are set to run 10 times of 10000 tries each. Will display time as 1 of 4 types. 0 = Seconds, 1 = milliseconds, 2= microseconds and 3 = nanoseconds. Pass in paramaters as: (function, retries=10000,formatSeconds=3, repeat=10)""" t = timeit.Timer(lambda: function) result = t.repeat(repeat=repeat,number=retries) rlist = [i/retries for i in result]
It runs fine but it keeps returning:
timeprofile.timing(find_boundaries(numpy.asarray(Image.open( r'D:\Python\image\image4.jpg')),79)) 10 runs of 10000 cycles each: Best time: 137.94764 Worst:158.16651 Avg: 143.25466 nanosecs/pass
Now, if I do from the interpreter:
import timeit from timeit import Timer t = timeit.Timer(lambda: (find_boundaries(numpy.asarray(Image.open(r'D:\Python\image\image4.jpg')),79))) result = t.repeat(repeat=5,number=100) result = [i/100 for i in result]
I end up with
[0.007723014775432375, 0.007615270149786965, 0.0075242365377505395,
0.007420834966038683, 0.0074086862470653615], or about 8 milliseconds.
And if I run the profiler on the script, it also gives approximately the same result of about 8 milliseconds.
I'm not really sure what the problem is although I reckon it has something to do with the how it's calling the function. When I check the data in the debugger it shows the function as a dictionary with a len of 53, and each key contains 1 to 15 tuples with a pair of 2-3 digit numbers in each.
So, if anyone knows why it's doing that and would like to explain it to me, and how to fix it, that'd be great!