性能追求第二部分:Perl 与 Python
运行了一个玩具性能示例后,我们现在将稍微偏离主题并将性能与
进行对比
一些 python 实现。首先让我们设置计算阶段,并提供命令行
python 脚本的功能。
import argparse import time import math import numpy as np import os from numba import njit from joblib import parallel, delayed parser = argparse.argumentparser() parser.add_argument("--workers", type=int, default=8) parser.add_argument("--arraysize", type=int, default=100_000_000) args = parser.parse_args() # set the number of threads to 1 for different libraries print("=" * 80) print( f"\nstarting the benchmark for {args.arraysize} elements " f"using {args.workers} threads/workers\n" ) # generate the data structures for the benchmark array0 = [np.random.rand() for _ in range(args.arraysize)] array1 = array0.copy() array2 = array0.copy() array_in_np = np.array(array1) array_in_np_copy = array_in_np.copy()
这是我们的参赛者:
for i in range(len(array0)): array0[i] = math.cos(math.sin(math.sqrt(array0[i])))
np.sqrt(array_in_np, out=array_in_np) np.sin(array_in_np, out=array_in_np) np.cos(array_in_np, out=array_in_np)
def compute_inplace_with_joblib(chunk): return np.cos(np.sin(np.sqrt(chunk))) #parallel function for joblib chunks = np.array_split(array1, args.workers) # split the array into chunks numresults = parallel(n_jobs=args.workers)( delayed(compute_inplace_with_joblib)(chunk) for chunk in chunks )# process each chunk in a separate thread array1 = np.concatenate(numresults) # concatenate the results
@njit def compute_inplace_with_numba(array): np.sqrt(array,array) np.sin(array,array) np.cos(array,array) ## njit will compile this function to machine code compute_inplace_with_numba(array_in_np_copy)
这是计时结果:
in place in ( base python): 11.42 seconds in place in (python joblib): 4.59 seconds in place in ( python numba): 2.62 seconds in place in ( python numpy): 0.92 seconds
numba 出奇的慢!?难道是由于 mohawk2 在 irc 交流中关于此问题指出的编译开销造成的吗?
为了测试这一点,我们应该在执行基准测试之前调用compute_inplace_with_numba一次。这样做表明 numba 现在比 numpy 更快。
in place in ( base python): 11.89 seconds in place in (python joblib): 4.42 seconds in place in ( python numpy): 0.93 seconds in place in ( python numba): 0.49 seconds
n 产生以下计时结果:<p> <br></p><pre class="brush:php;toolbar:false">Time in base R: 1.30 seconds
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