python基本语法1.5--调用numpy库的性能影响

import timeit

sum_by_for = """
for d in data:
    s += d
"""

sum_by_sum = """
sum(data)
"""

sum_by_numpy_sum = """
import numpy
numpy.sum(data)
"""

def timeit_using_list(n, loops):
    list_setup = """
data =[1] * {}
s = 0
""".format(n)
    print('list result:')
    print(timeit.timeit(sum_by_for, list_setup, number = loops))
    print(timeit.timeit(sum_by_sum, list_setup, number = loops))
    print(timeit.timeit(sum_by_numpy_sum, list_setup, number = loops))

def timeit_using_array(n, loops):
    array_setup = """
import array
data = array.array('L', [1] * {})
s = 0
""".format(n)
    print('array result:')
    print(timeit.timeit(sum_by_for, array_setup, number = loops))
    print(timeit.timeit(sum_by_sum, array_setup, number = loops))
    print(timeit.timeit(sum_by_numpy_sum, array_setup, number = loops))

def timeit_using_numpy(n, loops):
    numpy_setup = """
import numpy
data = numpy.array([1] * {})
s = 0
""".format(n)
    print('numpy result:')
    print(timeit.timeit(sum_by_for, numpy_setup, number = loops))
    print(timeit.timeit(sum_by_sum, numpy_setup, number = loops))
    print(timeit.timeit(sum_by_numpy_sum, numpy_setup, number = loops))

if __name__ == '__main__':
    timeit_using_list(30000, 500)
    timeit_using_array(30000, 500)
    timeit_using_numpy(30000, 500)
原文地址:https://www.cnblogs.com/xiaoyingying/p/7689848.html