python 数据类_python数据类

 2023-09-15 阅读 24 评论 0

摘要:前言之前有写过一篇python元类的笔记,元类主要作用就是在要创建的类中使用参数metaclass=YourMetaclass调用自定义的元类,这样就可以为所有调用了这个元类的类添加相同的属性了。python数据类初识用docker拉个python:3.7的镜像作为实验环境类python。使用da

前言

之前有写过一篇python元类的笔记,元类主要作用就是在要创建的类中使用参数metaclass=YourMetaclass调用自定义的元类,这样就可以为所有调用了这个元类的类添加相同的属性了。

python数据类初识

用docker拉个python:3.7的镜像作为实验环境

类python。使用dataclass装饰器创建数据类

>>> from dataclasses import dataclass

>>> @dataclass

... class DataClassTest:

... first_name: str

python 类 self。... last_name: str

...

>>> p = DataClassTest('vickey', 'wu')

>>> p.first_name

'vickey'

python和java,>>> p.last_name

'wu'

>>> p

DataClassTest(first_name='vickey', last_name='wu')

>>> p == DataClassTest('vickey', 'wu')

python爬虫教程。True

>>> p.first_name = 'wiki'

>>> p

DataClassTest(first_name='wiki', last_name='wu')

从上面例子可以看到,如果使用dataclass装饰器来定义数据类,则必须声明参数类型,数据类默认可以修改参数的值类型,如果不希望更改则使用@dataclass(frozen=True)即可,这样上面的 参数值就不可更改了,更改会报错dataclasses.FrozenInstanceError: cannot assign to field 'first_name'。

数据类型python,当不确定参数到底用哪种类型,或可以是多种类型时则可以用下面的Any来声明

>>> from dataclasses import dataclass

>>> from typing import Any

>>> @dataclass

... class W:

python有什么用、... n:Any

... v: float = 18

...

>>> w = W('vickey')

>>> w

python3,W(n='vickey', v=18)

>>> w = W(19)

>>> w

W(n=19, v=18)

不使用dataclass装饰器的普通类

如何用python爬数据,>>> class RegularClassTest:

... def __init__(self, first_name, last_name):

... self.first_name = first_name

... self.last_name = last_name

...

python类的调用。>>> pp = RegularClassTest('vickey', 'wu')

>>> pp.first_name

'vickey'

>>> pp.last_name

'wu'

python类调用另一个类?>>> pp

>>> pp == RegularClassTest('vickey', 'wu')

False

从1和2两个例子对比可以看出,使用@dataclass后有几个优势(不限于此):

无需定义__init__函数,只需定义参数及参数类型即可。

python五大数据类型,打印出来的对象描述信息更清晰了。而未使用dataclass的类需要再添加__repr__函数显示才友好。(看下面的例子)

实例化后的实例可以用==判断出是否与类实例相等,而未使用dataclass的类需要再添加__eq__函数才能判断。(看下面的例子)

3 不使用dataclass装饰器实现数据类相同功能

>>> class RegularClassTest2:

... def __init__(self, first_name, last_name):

python获取数据类型。... self.first_name = first_name

... self.last_name = last_name

... def __repr__(self):

... return (f'{self.__class__.__name__}'

... f'(first_name={self.first_name!r}, last_name={self.last_name!r})')

python八大数据类型?... def __eq__(self, other):

... if other.__class__ is not self.__class__:

... return NotImplemented

... return (self.first_name, self.last_name) == (other.first_name, other.last_name)

...

>>> r = RegularClassTest2('2', '1')

>>> r

RegularCard(first_name='2', last_name='1')

>>> r == RegularClassTest2('2', '1')

True

>>>

通过在普通类中添加__repr__和__eq__就可以具有上面提到的数据类的第2,3个优势,但还是需要__init__函数。虽然上面提到不使用dataclass也可以达到部分效果,参考文章作者也说明了各自的好处与不足,感兴趣的童鞋查看原文,这里就不记录了。

数据类参数调用函数赋值

from dataclasses import dataclass, field

from typing import List

# 数据类rank参数为牌大小,suit为花色

@dataclass

class PlayingCard:

rank: str

suit: str

# 生成13牌的4种花色

RANKS = '2 3 4 5 6 7 8 9 10 J Q K A'.split()

SUITS = '♣ ♢ ♡ ♠'.split()

def make_french_deck():

print([PlayingCard(r, s) for s in SUITS for r in RANKS])

print('################## list generated by fuction make_french_deck')

return [PlayingCard(r, s) for s in SUITS for r in RANKS]

# 参考源码typing.List

# List(yourclass):https://docs.python.org/3/library/typing.html#typing.ForwardRef

# 使用field的default_factory调用参数名为make_french_deck的函数,这个函数会生成一个list,然后赋值参数cards

@dataclass

class Deck:

cards: List[PlayingCard] = field(default_factory=make_french_deck)

print('################# called class Deck with para cards')

print(Deck())

output

################# called class Deck with para cards

[PlayingCard(rank='2', suit='♣'), PlayingCard(rank='3', suit='♣'), PlayingCard(rank='4', suit='♣'), PlayingCard(rank='5', suit='♣'), PlayingCard(rank='6', suit='♣'), PlayingCard(rank='7', suit='♣'), PlayingCard(rank='8', suit='♣'), PlayingCard(rank='9', suit='♣'), PlayingCard(rank='10', suit='♣'), PlayingCard(rank='J', suit='♣'), PlayingCard(rank='Q', suit='♣'), PlayingCard(rank='K', suit='♣'), PlayingCard(rank='A', suit='♣'), PlayingCard(rank='2', suit='♢'), PlayingCard(rank='3', suit='♢'), PlayingCard(rank='4', suit='♢'), PlayingCard(rank='5', suit='♢'), PlayingCard(rank='6', suit='♢'), PlayingCard(rank='7', suit='♢'), PlayingCard(rank='8', suit='♢'), PlayingCard(rank='9', suit='♢'), PlayingCard(rank='10', suit='♢'), PlayingCard(rank='J', suit='♢'), PlayingCard(rank='Q', suit='♢'), PlayingCard(rank='K', suit='♢'), PlayingCard(rank='A', suit='♢'), PlayingCard(rank='2', suit='♡'), PlayingCard(rank='3', suit='♡'), PlayingCard(rank='4', suit='♡'), PlayingCard(rank='5', suit='♡'), PlayingCard(rank='6', suit='♡'), PlayingCard(rank='7', suit='♡'), PlayingCard(rank='8', suit='♡'), PlayingCard(rank='9', suit='♡'), PlayingCard(rank='10', suit='♡'), PlayingCard(rank='J', suit='♡'), PlayingCard(rank='Q', suit='♡'), PlayingCard(rank='K', suit='♡'), PlayingCard(rank='A', suit='♡'), PlayingCard(rank='2', suit='♠'), PlayingCard(rank='3', suit='♠'), PlayingCard(rank='4', suit='♠'), PlayingCard(rank='5', suit='♠'), PlayingCard(rank='6', suit='♠'), PlayingCard(rank='7', suit='♠'), PlayingCard(rank='8', suit='♠'), PlayingCard(rank='9', suit='♠'), PlayingCard(rank='10', suit='♠'), PlayingCard(rank='J', suit='♠'), PlayingCard(rank='Q', suit='♠'), PlayingCard(rank='K', suit='♠'), PlayingCard(rank='A', suit='♠')]

################## list generated by fuction make_french_deck

Deck(cards=[PlayingCard(rank='2', suit='♣'), PlayingCard(rank='3', suit='♣'), PlayingCard(rank='4', suit='♣'), PlayingCard(rank='5', suit='♣'), PlayingCard(rank='6', suit='♣'), PlayingCard(rank='7', suit='♣'), PlayingCard(rank='8', suit='♣'), PlayingCard(rank='9', suit='♣'), PlayingCard(rank='10', suit='♣'), PlayingCard(rank='J', suit='♣'), PlayingCard(rank='Q', suit='♣'), PlayingCard(rank='K', suit='♣'), PlayingCard(rank='A', suit='♣'), PlayingCard(rank='2', suit='♢'), PlayingCard(rank='3', suit='♢'), PlayingCard(rank='4', suit='♢'), PlayingCard(rank='5', suit='♢'), PlayingCard(rank='6', suit='♢'), PlayingCard(rank='7', suit='♢'), PlayingCard(rank='8', suit='♢'), PlayingCard(rank='9', suit='♢'), PlayingCard(rank='10', suit='♢'), PlayingCard(rank='J', suit='♢'), PlayingCard(rank='Q', suit='♢'), PlayingCard(rank='K', suit='♢'), PlayingCard(rank='A', suit='♢'), PlayingCard(rank='2', suit='♡'), PlayingCard(rank='3', suit='♡'), PlayingCard(rank='4', suit='♡'), PlayingCard(rank='5', suit='♡'), PlayingCard(rank='6', suit='♡'), PlayingCard(rank='7', suit='♡'), PlayingCard(rank='8', suit='♡'), PlayingCard(rank='9', suit='♡'), PlayingCard(rank='10', suit='♡'), PlayingCard(rank='J', suit='♡'), PlayingCard(rank='Q', suit='♡'), PlayingCard(rank='K', suit='♡'), PlayingCard(rank='A', suit='♡'), PlayingCard(rank='2', suit='♠'), PlayingCard(rank='3', suit='♠'), PlayingCard(rank='4', suit='♠'), PlayingCard(rank='5', suit='♠'), PlayingCard(rank='6', suit='♠'), PlayingCard(rank='7', suit='♠'), PlayingCard(rank='8', suit='♠'), PlayingCard(rank='9', suit='♠'), PlayingCard(rank='10', suit='♠'), PlayingCard(rank='J', suit='♠'), PlayingCard(rank='Q', suit='♠'), PlayingCard(rank='K', suit='♠'), PlayingCard(rank='A', suit='♠')])

上面的例子是类Deck调用了类外的一个函数make_french_deck来生成一个类Deck的列表类型参数cards,这个列表由传入类PlayingCard不同参数rank和suit而生成的类PlayingCard调用列表。这样就生成了13牌的4种花色的所有值。

数据类的继承

from dataclasses import dataclass

@dataclass

class Position:

name: str

lon: float = 0.0

lat: float = 0.0

@dataclass

class Capital(Position):

# 因为父类参数有默认值,所以子类的参数必须定义默认值,否则报错

# country: str

country: str = 'Unknown'

# 可以在子类重新定义父类的参数默认值

lat: float = 40.0

如果父类参数有默认值,子类的所有参数必须定义默认值,否则报错:TypeError: non-default argument 'country' follows default argument。报错原因相当于在子类初始化时def __init__(name: str, lon: float = 0.0, lat: float = 0.0, country: str):非默认参数没有在默认参数前面,因为python规定非默认参数必须在默认参数前面。

参数的顺序按照父类顺序,然后子类参数顺序。

总结

数据类是Python3.7的新特性之一。使用数据类就不必编写样板代码来为对象获得适当的初始化__init__,表示__repr__,和比较__eq__。

数据类参数必须声明参数类型,参数可以使用函数赋值。

在继承时如果父类参数有定义默认值,则子类参数必须也要定义默认值,继承后的参数顺序为父类参数,然后到子类参数。

除此之外,数据类和普通类区别不大,数据类定义参数后像普通类一样定义实例方法,一样调用。

公众号往期文章

python内置装饰器

python装饰器

scrapy-redis debug视频

scrapy-redis源码浅析

scrapy过滤重复数据和增量爬取

redis基础笔记

scrapy电影天堂实战(二)创建爬虫项目

scrapy电影天堂实战(一)创建数据库

scrapy基础笔记

在docker镜像中加入环境变量

笔记 | mongodb 入门操作

笔记 | python元类

笔记 | python2和python3使用super()

那些你在python3中可能没用到但应该用的东西

superset docker 部署

开机启动容器里面的程序

博客 | 三步部署hitchhiker-api

版权声明:本站所有资料均为网友推荐收集整理而来,仅供学习和研究交流使用。

原文链接:https://hbdhgg.com/5/58403.html

发表评论:

本站为非赢利网站,部分文章来源或改编自互联网及其他公众平台,主要目的在于分享信息,版权归原作者所有,内容仅供读者参考,如有侵权请联系我们删除!

Copyright © 2022 匯編語言學習筆記 Inc. 保留所有权利。

底部版权信息