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常见问题本文会介绍不少的 Python 代码加速运行的技巧。在深入代码优化细节之前,需要了解一些代码优化基本原则。

第一个基本原则:不要过早优化
第二个基本原则:权衡优化的代价
第三个原则:不要优化那些无关紧要的部分
# 不推荐写法。代码耗时:26.8秒
import math
size = 10000
for x in range(size):
for y in range(size):
z = math.sqrt(x) + math.sqrt(y)
# 推荐写法。代码耗时:20.6秒
import math
def main(): # 定义到函数中,以减少全部变量使用
size = 10000
for x in range(size):
for y in range(size):
z = math.sqrt(x) + math.sqrt(y)
main()
# 不推荐写法。代码耗时:14.5秒
import math
def computeSqrt(size: int):
result = []
for i in range(size):
result.append(math.sqrt(i))
return result
def main():
size = 10000
for _ in range(size):
result = computeSqrt(size)
main()
# 第一次优化写法。代码耗时:10.9秒
from math import sqrt
def computeSqrt(size: int):
result = []
for i in range(size):
result.append(sqrt(i)) # 避免math.sqrt的使用
return result
def main():
size = 10000
for _ in range(size):
result = computeSqrt(size)
main()
# 第二次优化写法。代码耗时:9.9秒
import math
def computeSqrt(size: int):
result = []
sqrt = math.sqrt # 赋值给局部变量
for i in range(size):
result.append(sqrt(i)) # 避免math.sqrt的使用
return result
def main():
size = 10000
for _ in range(size):
result = computeSqrt(size)
main()
# 推荐写法。代码耗时:7.9秒
import math
def computeSqrt(size: int):
result = []
append = result.append
sqrt = math.sqrt # 赋值给局部变量
for i in range(size):
append(sqrt(i)) # 避免 result.append 和 math.sqrt 的使用
return result
def main():
size = 10000
for _ in range(size):
result = computeSqrt(size)
main()
# 不推荐写法。代码耗时:10.4秒
import math
from typing import List
class DemoClass:
def __init__(self, value: int):
self._value = value
def computeSqrt(self, size: int) -> List[float]:
result = []
append = result.append
sqrt = math.sqrt
for _ in range(size):
append(sqrt(self._value))
return result
def main():
size = 10000
for _ in range(size):
demo_instance = DemoClass(size)
result = demo_instance.computeSqrt(size)
main()
# 推荐写法。代码耗时:8.0秒
import math
from typing import List
class DemoClass:
def __init__(self, value: int):
self._value = value
def computeSqrt(self, size: int) -> List[float]:
result = []
append = result.append
sqrt = math.sqrt
value = self._value
for _ in range(size):
append(sqrt(value)) # 避免 self._value 的使用
return result
def main():
size = 10000
for _ in range(size):
demo_instance = DemoClass(size)
demo_instance.computeSqrt(size)
main()
# 不推荐写法,代码耗时:0.55秒
class DemoClass:
def __init__(self, value: int):
self.value = value
@property
def value(self) -> int:
return self._value
@value.setter
def value(self, x: int):
self._value = x
def main():
size = 1000000
for i in range(size):
demo_instance = DemoClass(size)
value = demo_instance.value
demo_instance.value = i
main()
# 推荐写法,代码耗时:0.33秒
class DemoClass:
def __init__(self, value: int):
self.value = value # 避免不必要的属性访问器
def main():
size = 1000000
for i in range(size):
demo_instance = DemoClass(size)
value = demo_instance.value
demo_instance.value = i
main()
# 不推荐写法,代码耗时:6.5秒
def main():
size = 10000
for _ in range(size):
value = range(size)
value_list = [x for x in value]
square_list = [x * x for x in value_list]
main()
# 推荐写法,代码耗时:4.8秒
def main():
size = 10000
for _ in range(size):
value = range(size)
square_list = [x * x for x in value] # 避免无意义的复制
main()
# 不推荐写法,代码耗时:0.07秒
def main():
size = 1000000
for _ in range(size):
a = 3
b = 5
temp = a
a = b
b = temp
main()
# 推荐写法,代码耗时:0.06秒
def main():
size = 1000000
for _ in range(size):
a = 3
b = 5
a, b = b, a # 不借助中间变量
main()
# 不推荐写法,代码耗时:2.6秒
import string
from typing import List
def concatString(string_list: List[str]) -> str:
result = ''
for str_i in string_list:
result += str_i
return result
def main():
string_list = list(string.ascii_letters * 100)
for _ in range(10000):
result = concatString(string_list)
main()
# 推荐写法,代码耗时:0.3秒
import string
from typing import List
def concatString(string_list: List[str]) -> str:
return ''.join(string_list) # 使用 join 而不是 +
def main():
string_list = list(string.ascii_letters * 100)
for _ in range(10000):
result = concatString(string_list)
main()
# 不推荐写法,代码耗时:0.05秒
from typing import List
def concatString(string_list: List[str]) -> str:
abbreviations = {'cf.', 'e.g.', 'ex.', 'etc.', 'flg.', 'i.e.', 'Mr.', 'vs.'}
abbr_count = 0
result = ''
for str_i in string_list:
if str_i in abbreviations:
result += str_i
return result
def main():
for _ in range(10000):
string_list = ['Mr.', 'Hat', 'is', 'Chasing', 'the', 'black', 'cat', '.']
result = concatString(string_list)
main()
# 推荐写法,代码耗时:0.03秒
from typing import List
def concatString(string_list: List[str]) -> str:
abbreviations = {'cf.', 'e.g.', 'ex.', 'etc.', 'flg.', 'i.e.', 'Mr.', 'vs.'}
abbr_count = 0
result = ''
for str_i in string_list:
if str_i[-1] == '.'and str_i in abbreviations: # 利用 if 条件的短路特性
result += str_i
return result
def main():
for _ in range(10000):
string_list = ['Mr.', 'Hat', 'is', 'Chasing', 'the', 'black', 'cat', '.']
result = concatString(string_list)
main()
# 不推荐写法。代码耗时:6.7秒
def computeSum(size: int) -> int:
sum_ = 0
i = 0
while i < size:
sum_ += i
i += 1
return sum_
def main():
size = 10000
for _ in range(size):
sum_ = computeSum(size)
main()
# 推荐写法。代码耗时:4.3秒
def computeSum(size: int) -> int:
sum_ = 0
for i in range(size): # for 循环代替 while 循环
sum_ += i
return sum_
def main():
size = 10000
for _ in range(size):
sum_ = computeSum(size)
main()
# 推荐写法。代码耗时:1.7秒
def computeSum(size: int) -> int:
return sum(range(size)) # 隐式 for 循环代替显式 for 循环
def main():
size = 10000
for _ in range(size):
sum = computeSum(size)
main()
# 不推荐写法。代码耗时:12.8秒
import math
def main():
size = 10000
sqrt = math.sqrt
for x in range(size):
for y in range(size):
z = sqrt(x) + sqrt(y)
main()
# 推荐写法。代码耗时:7.0秒
import math
def main():
size = 10000
sqrt = math.sqrt
for x in range(size):
sqrt_x = sqrt(x) # 减少内层 for 循环的计算
for y in range(size):
z = sqrt_x + sqrt(y)
main()
# 推荐写法。代码耗时:0.62秒
import numba
@numba.jit
def computeSum(size: float) -> int:
sum = 0
for i in range(size):
sum += i
return sum
def main():
size = 10000
for _ in range(size):
sum = computeSum(size)
main()
以上就是Python脚本代码加速运行优化技巧的详细内容,更多关于Python运行优化的资料请关注其它相关文章!