使用DataFrame删除行和列的实例讲解
时间:2019-04-14
本文章向大家介绍使用DataFrame删除行和列的实例讲解,主要包括使用DataFrame删除行和列的实例讲解使用实例、应用技巧、基本知识点总结和需要注意事项,具有一定的参考价值,需要的朋友可以参考一下。
本文通过一个csv实例文件来展示如何删除Pandas.DataFrame的行和列
数据文件名为:example.csv
内容为:
date | spring | summer | autumn | winter |
---|---|---|---|---|
2000 | 12.2338809 | 16.90730113 | 15.69238313 | 14.08596223 |
2001 | 12.84748057 | 16.75046873 | 14.51406637 | 13.5037456 |
2002 | 13.558175 | 17.2033926 | 15.6999475 | 13.23365247 |
2003 | 12.6547247 | 16.89491533 | 15.6614647 | 12.84347867 |
2004 | 13.2537298 | 17.04696657 | 15.20905377 | 14.3647912 |
2005 | 13.4443049 | 16.7459822 | 16.62218797 | 11.61082257 |
2006 | 13.50569567 | 16.83357857 | 15.4979282 | 12.19934363 |
2007 | 13.48852623 | 16.66773283 | 15.81701437 | 13.7438216 |
2008 | 13.1515319 | 16.48650693 | 15.72957287 | 12.93233587 |
2009 | 13.45771543 | 16.63923783 | 18.26017997 | 12.65315943 |
2010 | 13.1945485 | 16.7286889 | 15.42635267 | 13.8833583 |
2011 | 14.34779417 | 16.68942103 | 14.17658043 | 12.36654197 |
2012 | 13.6050867 | 17.13056773 | 14.71796777 | 13.29255243 |
2013 | 13.02790787 | 17.38619343 | 16.20345497 | 13.18612133 |
2014 | 12.74668163 | 16.54428687 | 14.7367682 | 12.87065125 |
2015 | 13.465904 | 16.50612317 | 12.44243663 | 11.0181384 |
season | spring | summer | autumn | winter |
slope | 0.0379691374 | -0.01164689167 | -0.07913844113 | -0.07765274553 |
删除行
In [1]: import numpy as np import pandas as pd odata = pd.read_csv('example.csv') odata Out[1]: date spring summer autumn winter 0 2000 12.2338809 16.9073011333 15.6923831333 14.0859622333 1 2001 12.8474805667 16.7504687333 14.5140663667 13.5037456 2 2002 13.558175 17.2033926 15.6999475 13.2336524667 3 2003 12.6547247 16.8949153333 15.6614647 12.8434786667 4 2004 13.2537298 17.0469665667 15.2090537667 14.3647912 5 2005 13.4443049 16.7459822 16.6221879667 11.6108225667 6 2006 13.5056956667 16.8335785667 15.4979282 12.1993436333 7 2007 13.4885262333 16.6677328333 15.8170143667 13.7438216 8 2008 13.1515319 16.4865069333 15.7295728667 12.9323358667 9 2009 13.4577154333 16.6392378333 18.2601799667 12.6531594333 10 2010 13.1945485 16.7286889 15.4263526667 13.8833583 11 2011 14.3477941667 16.6894210333 14.1765804333 12.3665419667 12 2012 13.6050867 17.1305677333 14.7179677667 13.2925524333 13 2013 13.0279078667 17.3861934333 16.2034549667 13.1861213333 14 2014 12.7466816333 16.5442868667 14.7367682 12.8706512467 15 2015 13.465904 16.5061231667 12.4424366333 11.0181384 16 season spring summer autumn winter 17 slope 0.037969137402 -0.0116468916667 -0.0791384411275 -0.0776527455294
.drop()方法如果不设置参数inplace=True,则只能在生成的新数据块中实现删除效果,而不能删除原有数据块的相应行。
In [2]: data = odata.drop([16,17]) odata Out[2]: date spring summer autumn winter 0 2000 12.2338809 16.9073011333 15.6923831333 14.0859622333 1 2001 12.8474805667 16.7504687333 14.5140663667 13.5037456 2 2002 13.558175 17.2033926 15.6999475 13.2336524667 3 2003 12.6547247 16.8949153333 15.6614647 12.8434786667 4 2004 13.2537298 17.0469665667 15.2090537667 14.3647912 5 2005 13.4443049 16.7459822 16.6221879667 11.6108225667 6 2006 13.5056956667 16.8335785667 15.4979282 12.1993436333 7 2007 13.4885262333 16.6677328333 15.8170143667 13.7438216 8 2008 13.1515319 16.4865069333 15.7295728667 12.9323358667 9 2009 13.4577154333 16.6392378333 18.2601799667 12.6531594333 10 2010 13.1945485 16.7286889 15.4263526667 13.8833583 11 2011 14.3477941667 16.6894210333 14.1765804333 12.3665419667 12 2012 13.6050867 17.1305677333 14.7179677667 13.2925524333 13 2013 13.0279078667 17.3861934333 16.2034549667 13.1861213333 14 2014 12.7466816333 16.5442868667 14.7367682 12.8706512467 15 2015 13.465904 16.5061231667 12.4424366333 11.0181384 16 season spring summer autumn winter 17 slope 0.037969137402 -0.0116468916667 -0.0791384411275 -0.0776527455294 In [3]: data Out[3]: date spring summer autumn winter 0 2000 12.2338809 16.9073011333 15.6923831333 14.0859622333 1 2001 12.8474805667 16.7504687333 14.5140663667 13.5037456 2 2002 13.558175 17.2033926 15.6999475 13.2336524667 3 2003 12.6547247 16.8949153333 15.6614647 12.8434786667 4 2004 13.2537298 17.0469665667 15.2090537667 14.3647912 5 2005 13.4443049 16.7459822 16.6221879667 11.6108225667 6 2006 13.5056956667 16.8335785667 15.4979282 12.1993436333 7 2007 13.4885262333 16.6677328333 15.8170143667 13.7438216 8 2008 13.1515319 16.4865069333 15.7295728667 12.9323358667 9 2009 13.4577154333 16.6392378333 18.2601799667 12.6531594333 10 2010 13.1945485 16.7286889 15.4263526667 13.8833583 11 2011 14.3477941667 16.6894210333 14.1765804333 12.3665419667 12 2012 13.6050867 17.1305677333 14.7179677667 13.2925524333 13 2013 13.0279078667 17.3861934333 16.2034549667 13.1861213333 14 2014 12.7466816333 16.5442868667 14.7367682 12.8706512467 15 2015 13.465904 16.5061231667 12.4424366333 11.0181384
如果inplace=True则原有数据块的相应行被删除
In [4]: odata.drop(odata.index[[16,17]],inplace=True) odata Out[4]: date spring summer autumn winter 0 2000 12.2338809 16.9073011333 15.6923831333 14.0859622333 1 2001 12.8474805667 16.7504687333 14.5140663667 13.5037456 2 2002 13.558175 17.2033926 15.6999475 13.2336524667 3 2003 12.6547247 16.8949153333 15.6614647 12.8434786667 4 2004 13.2537298 17.0469665667 15.2090537667 14.3647912 5 2005 13.4443049 16.7459822 16.6221879667 11.6108225667 6 2006 13.5056956667 16.8335785667 15.4979282 12.1993436333 7 2007 13.4885262333 16.6677328333 15.8170143667 13.7438216 8 2008 13.1515319 16.4865069333 15.7295728667 12.9323358667 9 2009 13.4577154333 16.6392378333 18.2601799667 12.6531594333 10 2010 13.1945485 16.7286889 15.4263526667 13.8833583 11 2011 14.3477941667 16.6894210333 14.1765804333 12.3665419667 12 2012 13.6050867 17.1305677333 14.7179677667 13.2925524333 13 2013 13.0279078667 17.3861934333 16.2034549667 13.1861213333 14 2014 12.7466816333 16.5442868667 14.7367682 12.8706512467 15 2015 13.465904 16.5061231667 12.4424366333 11.0181384
删除列
del方法
In [5]: del odata['date'] odata Out[5]: spring summer autumn winter 0 12.2338809 16.9073011333 15.6923831333 14.0859622333 1 12.8474805667 16.7504687333 14.5140663667 13.5037456 2 13.558175 17.2033926 15.6999475 13.2336524667 3 12.6547247 16.8949153333 15.6614647 12.8434786667 4 13.2537298 17.0469665667 15.2090537667 14.3647912 5 13.4443049 16.7459822 16.6221879667 11.6108225667 6 13.5056956667 16.8335785667 15.4979282 12.1993436333 7 13.4885262333 16.6677328333 15.8170143667 13.7438216 8 13.1515319 16.4865069333 15.7295728667 12.9323358667 9 13.4577154333 16.6392378333 18.2601799667 12.6531594333 10 13.1945485 16.7286889 15.4263526667 13.8833583 11 14.3477941667 16.6894210333 14.1765804333 12.3665419667 12 13.6050867 17.1305677333 14.7179677667 13.2925524333 13 13.0279078667 17.3861934333 16.2034549667 13.1861213333 14 12.7466816333 16.5442868667 14.7367682 12.8706512467 15 13.465904 16.5061231667 12.4424366333 11.0181384
.pop()方法
.pop方法可以将所选列从原数据块中弹出,原数据块不再保留该列
In [6]: spring = odata.pop('spring') spring Out[6]: 0 12.2338809 1 12.8474805667 2 13.558175 3 12.6547247 4 13.2537298 5 13.4443049 6 13.5056956667 7 13.4885262333 8 13.1515319 9 13.4577154333 10 13.1945485 11 14.3477941667 12 13.6050867 13 13.0279078667 14 12.7466816333 15 13.465904 Name: spring, dtype: object In [7]: odata Out[7]: summer autumn winter 0 16.9073011333 15.6923831333 14.0859622333 1 16.7504687333 14.5140663667 13.5037456 2 17.2033926 15.6999475 13.2336524667 3 16.8949153333 15.6614647 12.8434786667 4 17.0469665667 15.2090537667 14.3647912 5 16.7459822 16.6221879667 11.6108225667 6 16.8335785667 15.4979282 12.1993436333 7 16.6677328333 15.8170143667 13.7438216 8 16.4865069333 15.7295728667 12.9323358667 9 16.6392378333 18.2601799667 12.6531594333 10 16.7286889 15.4263526667 13.8833583 11 16.6894210333 14.1765804333 12.3665419667 12 17.1305677333 14.7179677667 13.2925524333 13 17.3861934333 16.2034549667 13.1861213333 14 16.5442868667 14.7367682 12.8706512467 15 16.5061231667 12.4424366333 11.0181384
.drop()方法
drop方法既可以保留原数据块中的所选列,也可以删除,这取决于参数inplace
In [8]: withoutSummer = odata.drop(['summer'],axis=1) withoutSummer Out[8]: autumn winter 0 15.6923831333 14.0859622333 1 14.5140663667 13.5037456 2 15.6999475 13.2336524667 3 15.6614647 12.8434786667 4 15.2090537667 14.3647912 5 16.6221879667 11.6108225667 6 15.4979282 12.1993436333 7 15.8170143667 13.7438216 8 15.7295728667 12.9323358667 9 18.2601799667 12.6531594333 10 15.4263526667 13.8833583 11 14.1765804333 12.3665419667 12 14.7179677667 13.2925524333 13 16.2034549667 13.1861213333 14 14.7367682 12.8706512467 15 12.4424366333 11.0181384 In [9]: odata Out[9]: summer autumn winter 0 16.9073011333 15.6923831333 14.0859622333 1 16.7504687333 14.5140663667 13.5037456 2 17.2033926 15.6999475 13.2336524667 3 16.8949153333 15.6614647 12.8434786667 4 17.0469665667 15.2090537667 14.3647912 5 16.7459822 16.6221879667 11.6108225667 6 16.8335785667 15.4979282 12.1993436333 7 16.6677328333 15.8170143667 13.7438216 8 16.4865069333 15.7295728667 12.9323358667 9 16.6392378333 18.2601799667 12.6531594333 10 16.7286889 15.4263526667 13.8833583 11 16.6894210333 14.1765804333 12.3665419667 12 17.1305677333 14.7179677667 13.2925524333 13 17.3861934333 16.2034549667 13.1861213333 14 16.5442868667 14.7367682 12.8706512467 15 16.5061231667 12.4424366333 11.0181384
当inplace=True时.drop()执行内部删除,不返回任何值,原数据发生改变
In [10]: withoutWinter = odata.drop(['winter'],axis=1,inplace=True) type(withoutWinter) Out[10]: NoneType In [11]: odata Out[11]: summer autumne 0 16.9073011333 15.6923831333 1 16.7504687333 14.5140663667 2 17.2033926 15.6999475 3 16.8949153333 15.6614647 4 17.0469665667 15.2090537667 5 16.7459822 16.6221879667 6 16.8335785667 15.4979282 7 16.6677328333 15.8170143667 8 16.4865069333 15.7295728667 9 16.6392378333 18.2601799667 10 16.7286889 15.4263526667 11 16.6894210333 14.1765804333 12 17.1305677333 14.7179677667 13 17.3861934333 16.2034549667 14 16.5442868667 14.7367682 15 16.5061231667 12.4424366333
总结,不论是行删除还是列删除,也不论是原数据删除,还是输出新变量删除,.drop()的方法都能达到目的,为了方便好记,熟练操作,所以应该尽量多使用.drop()方法
- Android 绿色应用公约
- React-Native组件之 TabBarIOS和TabBarIOS.Item
- [先行者周日课程-0305] web前端组件 之 拖动窗口
- react-native城市列表组件
- [前端常见病] 之 后端数据还没有,前端怎么进行?
- dependencies与devDependencies的区别
- [先行者课程] -- 用js实现倒计时功能的业务逻辑
- iOS如何实现多个环境一次打包
- 从原理到策略算法再到架构产品看推荐系统 | 附Spark实践案例
- MobX 在 React Native开发中的应用
- RCTEventEmitter使用
- Google V8 引擎
- 揭秘前端字符的戏精之路
- 跨语言嵌入模型的调查
- JavaScript 教程
- JavaScript 编辑工具
- JavaScript 与HTML
- JavaScript 与Java
- JavaScript 数据结构
- JavaScript 基本数据类型
- JavaScript 特殊数据类型
- JavaScript 运算符
- JavaScript typeof 运算符
- JavaScript 表达式
- JavaScript 类型转换
- JavaScript 基本语法
- JavaScript 注释
- Javascript 基本处理流程
- Javascript 选择结构
- Javascript if 语句
- Javascript if 语句的嵌套
- Javascript switch 语句
- Javascript 循环结构
- Javascript 循环结构实例
- Javascript 跳转语句
- Javascript 控制语句总结
- Javascript 函数介绍
- Javascript 函数的定义
- Javascript 函数调用
- Javascript 几种特殊的函数
- JavaScript 内置函数简介
- Javascript eval() 函数
- Javascript isFinite() 函数
- Javascript isNaN() 函数
- parseInt() 与 parseFloat()
- escape() 与 unescape()
- Javascript 字符串介绍
- Javascript length属性
- javascript 字符串函数
- Javascript 日期对象简介
- Javascript 日期对象用途
- Date 对象属性和方法
- Javascript 数组是什么
- Javascript 创建数组
- Javascript 数组赋值与取值
- Javascript 数组属性和方法
- curl在raw.githubusercontent.com下载文件时出现无法链接问题
- linux查看端口进程信息—lsof工具
- vscode配置:双击选中连字符
- 实现简单登陆注册功能流程分析
- centos系统中yum安装应用出现doesn't have enough cached
- Mac os上显示与隐藏文件
- windows启动tomcat闪退,乱码问题解决
- Homebrew的安装
- 小程序轮播中嵌入视频-关于swiper、video组件与block标签
- Pocket重建您的专注力
- redux-thunk
- 使用vuepress-6小时搭建一个完全免费的个人网站
- 使用item2+oh my zsh优化终端体验
- Svelte中文文档 1基础介绍
- 分布式事物TCC