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Python集合类型(list tuple dict set generator)图文详解

高洛峰
高洛峰asal
2017-03-20 10:24:001948semak imbas

Python内嵌的集合类型有list、tuple、set、dict。

列表list:看似数组,但比数组强大,支持索引、切片、查找、增加等功能。

元组tuple:功能跟list差不多,但一旦生成,长度及元素都不可变(元素的元素还是可变),似乎就是一更轻量级、安全的list。

字典dict:键值对结构哈希表,跟哈希表的性质一样,key无序且不重复,增删改方便快捷。

set:无序且不重复的集合,就是一个只有键没有值的dict,Java的HashSet就是采用HashMap实现,但愿python不会是这样,毕竟set不需要value,省去了很多指针。

 

Generator:

称之为生成器,或者列表推导式,是python中有一个特殊的数据类型,实际上并不是一个数据结构,只包括算法和暂存的状态,并且具有迭代的功能。 

先看看它们的内存使用情况,分别用生成器生成100000个元素的set, dict, generator, tuple, list。消耗的内存dict, set, list, tuple依次减少,生成的对象大小也是一样。由于generator并不生成数据表,所以不需要消耗内存:

import sys
from memory_profiler import profile

@profile
def create_data(data_size):
    data_generator = (x for x in xrange(data_size))
    data_set = {x for x in xrange(data_size)}
    data_dict = {x:None for x in xrange(data_size)}
    data_tuple = tuple(x for x in xrange(data_size))
    data_list = [x for x in xrange(data_size)]
    return data_set, data_dict, data_generator, data_tuple, data_list

data_size = 100000
for data in create_data(data_size):
    print data.__class__, sys.getsizeof(data)

Line #    Mem usage    Increment   Line Contents
================================================
    14.6 MiB      0.0 MiB   @profile
                            def create_data(data_size):
    14.7 MiB      0.0 MiB       data_generator = (x for x in xrange(data_size))
    21.4 MiB      6.7 MiB       data_set = {x for x in xrange(data_size)}
    29.8 MiB      8.5 MiB       data_dict = {x:None for x in xrange(data_size)}
    33.4 MiB      3.6 MiB       data_tuple = tuple(x for x in xrange(data_size))
    38.2 MiB      4.8 MiB       data_list = [x for x in xrange(data_size)]
    38.2 MiB      0.0 MiB       return data_set, data_dict, data_generator, data_tuple, data_list
 
<type &#39;set&#39;> 4194528
<type &#39;dict&#39;> 6291728
<type &#39;generator&#39;> 72
<type &#39;tuple&#39;> 800048
<type &#39;list&#39;> 824464

再看看查找性能,dict,set是常数查找时间(O(1)),list、tuple是线性查找时间(O(n)),用生成器生成指定大小元素的对象,用随机生成的数字去查找:

import time
import sys
import random
from memory_profiler import profile

def create_data(data_size):
    data_set = {x for x in xrange(data_size)}
    data_dict = {x:None for x in xrange(data_size)}
    data_tuple = tuple(x for x in xrange(data_size))
    data_list = [x for x in xrange(data_size)]
    return data_set, data_dict, data_tuple, data_list

def cost_time(func):
    def cost(*args, **kwargs):
        start = time.time()
        r = func(*args, **kwargs)
        cost = time.time() - start
        print &#39;find in %s cost time %s&#39; % (r, cost)
        return r, cost  #返回数据的类型和方法执行消耗的时间
    return cost

@cost_time
def test_find(test_data, data):
    for d in test_data:
        if d in data:
            pass
    return data.__class__.__name__

data_size = 100
test_size = 10000000
test_data = [random.randint(0, data_size) for x in xrange(test_size)]
#print test_data
for data in create_data(data_size):
    test_find(test_data, data)

输出:
----------------------------------------------
find in <type &#39;set&#39;> cost time 0.47200012207
find in <type &#39;dict&#39;> cost time 0.429999828339
find in <type &#39;tuple&#39;> cost time 5.36500000954
find in <type &#39;list&#39;> cost time 5.53399991989

100个元素的大小的集合,分别查找1000W次,差距非常明显。不过这些随机数,都是能在集合中查找得到。修改一下随机数方式,生成一半是能查找得到,一半是查找不到的。从打印信息可以看出在有一半最坏查找例子的情况下,list、tuple表现得更差了。

def randint(index, data_size):
    return random.randint(0, data_size) if (x % 2) == 0 else random.randint(data_size, data_size * 2)

test_data = [randint(x, data_size) for x in xrange(test_size)]

输出:
----------------------------------------------
find in <type &#39;set&#39;> cost time 0.450000047684
find in <type &#39;dict&#39;> cost time 0.397000074387
find in <type &#39;tuple&#39;> cost time 7.83299994469
find in <type &#39;list&#39;> cost time 8.27800011635

元素的个数从10增长至500,统计每次查找10W次的时间,用图拟合时间消耗的曲线,结果如下图,结果证明dict, set不管元素多少,一直都是常数查找时间,dict、tuple随着元素增长,呈现线性增长时间:

import matplotlib.pyplot as plot
from numpy import *

data_size = array([x for x in xrange(10, 500, 10)])
test_size = 100000
cost_result = {}
for size in data_size:
    test_data = [randint(x, size) for x in xrange(test_size)]
    for data in create_data(size):
        name, cost = test_find(test_data, data) #装饰器函数返回函数的执行时间
        cost_result.setdefault(name, []).append(cost)

plot.figure(figsize=(10, 6))
xline = data_size
for data_type, result in cost_result.items():
    yline = array(result)
    plot.plot(xline, yline, label=data_type)

plot.ylabel(&#39;Time spend&#39;)
plot.xlabel(&#39;Find times&#39;)

plot.grid()

plot.legend()
plot.show()

Python集合类型(list tuple dict set generator)图文详解

迭代的时间,区别很微弱,dict、set要略微消耗时间多一点:

@cost_time
def test_iter(data):
    for d in data:
        pass
    return data.__class__ .__name__

data_size = array([x for x in xrange(1, 500000, 1000)])
cost_result = {}
for size in data_size:
    for data in create_data(size):
        name, cost = test_iter(data)
        cost_result.setdefault(name, []).append(cost)

#拟合曲线图
plot.figure(figsize=(10, 6))
xline = data_size
for data_type, result in cost_result.items():
    yline = array(result)
    plot.plot(xline, yline, label=data_type)  

plot.ylabel(&#39;Time spend&#39;)
plot.xlabel(&#39;Iter times&#39;)

plot.grid()

plot.legend()
plot.show()

Python集合类型(list tuple dict set generator)图文详解

删除元素消耗时间图示如下,随机删除1000个元素,tuple类型不能删除元素,所以不做比较:


Python集合类型(list tuple dict set generator)图文详解

随机删除一半的元素,图形就呈指数时间(O(n2))增长了:

Python集合类型(list tuple dict set generator)图文详解

添加元素消耗的时间图示如下,统计以10000为增量大小的元素个数的添加时间,都是线性增长时间,看不出有什么差别,tuple类型不能添加新的元素,所以不做比较:

@cost_time
def test_dict_add(test_data, data):
    for d in test_data:
        data[d] = None
    return data.__class__ .__name__

@cost_time
def test_set_add(test_data, data):
    for d in test_data:
        data.add(d)
    return data.__class__ .__name__

@cost_time
def test_list_add(test_data, data):
    for d in test_data:
        data.append(d)
    return data.__class__ .__name__

#初始化数据,指定每种类型对应它添加元素的方法
def init_data():
    test_data = {
        &#39;list&#39;: (list(), test_list_add),
        &#39;set&#39;: (set(), test_set_add),
        &#39;dict&#39;: (dict(), test_dict_add)
    }
    return test_data

#每次检测10000增量大小的数据的添加时间
data_size = array([x for x in xrange(10000, 1000000, 10000)])
cost_result = {}
for size in data_size:
    test_data = [x for x in xrange(size)]
    for data_type, (data, add) in init_data().items():
        name, cost = add(test_data, data) #返回方法的执行时间
        cost_result.setdefault(data_type, []).append(cost)

plot.figure(figsize=(10, 6))
xline = data_size
for data_type, result in cost_result.items():
    yline = array(result)
    plot.plot(xline, yline, label=data_type)

plot.ylabel(&#39;Time spend&#39;)
plot.xlabel(&#39;Add times&#39;)

plot.grid()

plot.legend()
plot.show()

Python集合类型(list tuple dict set generator)图文详解

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