Home Backend Development Python Tutorial Python data cleaning: data merging, conversion, filtering and sorting

Python data cleaning: data merging, conversion, filtering and sorting

Feb 13, 2017 pm 01:34 PM

Earlier we used pandas to perform some basic operations. Next, we will learn more about data operations.

Data cleaning has always been an extremely important part of data analysis.

Data merging

In pandas, data can be merged through merge.

import numpy as np
import pandas as pd
data1 = pd.DataFrame({'level':['a','b','c','d'],
         'numeber':[1,3,5,7]})

data2=pd.DataFrame({'level':['a','b','c','e'],
         'numeber':[2,3,6,10]})
print(data1)
Copy after login

The result is:

python 数据清洗之数据合并、转换、过滤、排序

##

print(data2)
Copy after login

The result is:


python 数据清洗之数据合并、转换、过滤、排序

##
print(pd.merge(data1,data2))
Copy after login

The result is:


python 数据清洗之数据合并、转换、过滤、排序
You can see that the fields used for the same label in data1 and data2 are displayed, while other fields are discarded. This is equivalent to the inner join connection operation in SQL.

In addition, there are connection methods such as outer, ringt, left, etc., which are represented by the keyword how.


data3 = pd.DataFrame({'level1':['a','b','c','d'],
         'numeber1':[1,3,5,7]})
data4=pd.DataFrame({'level2':['a','b','c','e'],
         'numeber2':[2,3,6,10]})
print(pd.merge(data3,data4,left_on='level1',right_on='level2'))
Copy after login

The result is:


python 数据清洗之数据合并、转换、过滤、排序
If the column in the two data frames When the names are different, we can connect the data together by specifying the two parameters letf_on and right_on

print(pd.merge(data3,data4,left_on='level1',right_on='level2',how='left'))
Copy after login

The result is:


python 数据清洗之数据合并、转换、过滤、排序Other detailed parameter description


python 数据清洗之数据合并、转换、过滤、排序

Overlapping data merging

Sometimes We will encounter overlapping data that needs to be merged. In this case, we can use the comebine_first function.

data3 = pd.DataFrame({'level':['a','b','c','d'],
         'numeber1':[1,3,5,np.nan]})
 data4=pd.DataFrame({'level':['a','b','c','e'],
         'numeber2':[2,np.nan,6,10]})
 print(data3.combine_first(data4))
Copy after login

The result is:


python 数据清洗之数据合并、转换、过滤、排序
You can see the results under the same tag The content of data3 is displayed first. If a certain data in a data frame is missing, the elements in another data frame will be filled in.


The usage here is similar to np.where (isnull(a),b,a)

Data reshaping and axial rotation

We mentioned this content in the previous pandas article. Data reshaping mainly uses the reshape function, and rotation mainly uses the unstack and stack functions.

data=pd.DataFrame(np.arange(12).reshape(3,4),
       columns=['a','b','c','d'],
       index=['wang','li','zhang'])
print(data)
Copy after login

The result is:


python 数据清洗之数据合并、转换、过滤、排序##

print(data.unstack())
Copy after login

The result is:


python 数据清洗之数据合并、转换、过滤、排序Data conversion

Delete duplicate row data

data=pd.DataFrame({'a':[1,3,3,4],
       'b':[1,3,3,5]})
print(data)
Copy after login

The result is:


python 数据清洗之数据合并、转换、过滤、排序

print(data.duplicated())
Copy after login

The result is:


python 数据清洗之数据合并、转换、过滤、排序It can be seen that the third row repeats the data of the second row, so the displayed result is True

另外用drop_duplicates方法可以去除重复行

print(data.drop_duplicates())
Copy after login

结果为:
python 数据清洗之数据合并、转换、过滤、排序

替换值

除了使用我们上一篇文章中提到的fillna的方法外,还可以用replace方法,而且更简单快捷

data=pd.DataFrame({'a':[1,3,3,4],
       'b':[1,3,3,5]})
print(data.replace(1,2))
Copy after login

结果为:

python 数据清洗之数据合并、转换、过滤、排序

多个数据一起换

print(data.replace([1,4],np.nan))
Copy after login

python 数据清洗之数据合并、转换、过滤、排序

数据分段


data=[11,15,18,20,25,26,27,24]
bins=[15,20,25]
print(data)
print(pd.cut(data,bins))
Copy after login

结果为:
[11, 15, 18, 20, 25, 26, 27, 24][NaN, NaN, (15, 20], (15, 20], (20, 25], NaN, NaN, (20, 25]]
Categories (2, object): [(15, 20] < (20, 25]]

可以看出分段后的结果,不在分段内的数据显示为na值,其他则显示数据所在的分段。

print(pd.cut(data,bins).labels)
Copy after login

结果为:

[-1 -1 0 0 1 -1 -1 1]

显示所在分段排序标签

print(pd.cut(data,bins).levels)
Copy after login

结果为:

Index([‘(15, 20]', ‘(20, 25]'], dtype='object')

显示所以分段标签

print(value_counts(pd.cut(data,bins)))
Copy after login

结果为:

python 数据清洗之数据合并、转换、过滤、排序

显示每个分段值得个数

此外还有一个qcut的函数可以对数据进行4分位切割,用法和cut类似。

排列和采样

我们知道排序的方法有好几个,比如sort,order,rank等函数都能对数据进行排序
现在要说的这个是对数据进行随机排序(permutation)

data=np.random.permutation(5)
print(data)
Copy after login

结果为:

[1 0 4 2 3]

这里的peemutation函数对0-4的数据进行随机排序的结果。
也可以对数据进行采样

df=pd.DataFrame(np.arange(12).reshape(4,3))
samp=np.random.permutation(3)
print(df)
Copy after login

结果为:

python 数据清洗之数据合并、转换、过滤、排序

print(samp)

结果为:
[1 0 2]

print(df.take(samp))

结果为:

python 数据清洗之数据合并、转换、过滤、排序

这里使用take的结果是,按照samp的顺序从df中提取样本。

更多python 数据清洗之数据合并、转换、过滤、排序相关文章请关注PHP中文网!

Statement of this Website
The content of this article is voluntarily contributed by netizens, and the copyright belongs to the original author. This site does not assume corresponding legal responsibility. If you find any content suspected of plagiarism or infringement, please contact admin@php.cn

Hot AI Tools

Undresser.AI Undress

Undresser.AI Undress

AI-powered app for creating realistic nude photos

AI Clothes Remover

AI Clothes Remover

Online AI tool for removing clothes from photos.

Undress AI Tool

Undress AI Tool

Undress images for free

Clothoff.io

Clothoff.io

AI clothes remover

Video Face Swap

Video Face Swap

Swap faces in any video effortlessly with our completely free AI face swap tool!

Hot Tools

Notepad++7.3.1

Notepad++7.3.1

Easy-to-use and free code editor

SublimeText3 Chinese version

SublimeText3 Chinese version

Chinese version, very easy to use

Zend Studio 13.0.1

Zend Studio 13.0.1

Powerful PHP integrated development environment

Dreamweaver CS6

Dreamweaver CS6

Visual web development tools

SublimeText3 Mac version

SublimeText3 Mac version

God-level code editing software (SublimeText3)

How to solve the permissions problem encountered when viewing Python version in Linux terminal? How to solve the permissions problem encountered when viewing Python version in Linux terminal? Apr 01, 2025 pm 05:09 PM

Solution to permission issues when viewing Python version in Linux terminal When you try to view Python version in Linux terminal, enter python...

How to avoid being detected by the browser when using Fiddler Everywhere for man-in-the-middle reading? How to avoid being detected by the browser when using Fiddler Everywhere for man-in-the-middle reading? Apr 02, 2025 am 07:15 AM

How to avoid being detected when using FiddlerEverywhere for man-in-the-middle readings When you use FiddlerEverywhere...

How to efficiently copy the entire column of one DataFrame into another DataFrame with different structures in Python? How to efficiently copy the entire column of one DataFrame into another DataFrame with different structures in Python? Apr 01, 2025 pm 11:15 PM

When using Python's pandas library, how to copy whole columns between two DataFrames with different structures is a common problem. Suppose we have two Dats...

How to teach computer novice programming basics in project and problem-driven methods within 10 hours? How to teach computer novice programming basics in project and problem-driven methods within 10 hours? Apr 02, 2025 am 07:18 AM

How to teach computer novice programming basics within 10 hours? If you only have 10 hours to teach computer novice some programming knowledge, what would you choose to teach...

How does Uvicorn continuously listen for HTTP requests without serving_forever()? How does Uvicorn continuously listen for HTTP requests without serving_forever()? Apr 01, 2025 pm 10:51 PM

How does Uvicorn continuously listen for HTTP requests? Uvicorn is a lightweight web server based on ASGI. One of its core functions is to listen for HTTP requests and proceed...

How to solve permission issues when using python --version command in Linux terminal? How to solve permission issues when using python --version command in Linux terminal? Apr 02, 2025 am 06:36 AM

Using python in Linux terminal...

How to get news data bypassing Investing.com's anti-crawler mechanism? How to get news data bypassing Investing.com's anti-crawler mechanism? Apr 02, 2025 am 07:03 AM

Understanding the anti-crawling strategy of Investing.com Many people often try to crawl news data from Investing.com (https://cn.investing.com/news/latest-news)...

See all articles