Python

您所在的位置:网站首页 pandas string Python

Python

2022-10-05 04:47| 来源: 网络整理| 查看: 265

Python is a great language for doing data analysis, primarily because of the fantastic ecosystem of data-centric python packages. Pandas is one of those packages and makes importing and analyzing data much easier.Pandas str.cat() is used to concatenate strings to the passed caller series of string. Distinct values from a different series can be passed but the length of both the series has to be same. .str has to be prefixed to differentiate it from the Python’s default method. 

Syntax: Series.str.cat(others=None, sep=None, na_rep=None)Parameters: others: Series, index, data frame or list of strings to concatenate sep: Separator to be put between the two strings na_rep: None or string value to replace in place of null valuesReturn type: Series with concatenated string values  

To download the Csv file used, click here.In the following examples, the data frame used contains data on some NBA players. The image of data frame before any operations is attached below.  

  Example #1: Concatenating column with separatorIn this example, the Team column is concatenated at the end of Name column with separator “, “. The Name column is overwritten with the new series and the data frame is then displayed.  

Python3

# importing pandas moduleimport pandas as pd # importing csv from linkdata = pd.read_csv("https://media.geeksforgeeks.org/wp-content/uploads/nba.csv") # making copy of team columnnew = data["Team"].copy() # concatenating team with name column# overwriting name columndata["Name"]= data["Name"].str.cat(new, sep =", ") # displaydata

Output: As shown in the output image, every string in the Team column having same index as string in Name column have been concatenated with separator “, “.  

  Example #2: Handling Null valuesThe most important part in analyzing data is handling null values. str.cat() provides a way to handle null values through na_rep parameter. Whatever is passed to this parameter will be replaced at every occurrence of null value. In this example, college column is concatenated with team column. “No college” is passed to na_rep parameter to replace null with this string. 

Python3

# importing pandas moduleimport pandas as pd # importing csv from linkdata = pd.read_csv("https://media.geeksforgeeks.org/wp-content/uploads/nba.csv") # making copy of team columnnew = data["Team"].copy() # string to replace null values withna_string ="No College" # concatenating team with name column# overwriting name columndata["College"]= data["College"].str.cat(new, sep =", ", na_rep = na_string) # displaydata

Output: As it can be seen in the data frame, at index position 4 and 5, there was NULL value which has been replaced with “No College” and the string from Team column have been concatenated successfully.  

 

My Personal Notes arrow_drop_up


【本文地址】


今日新闻


推荐新闻


CopyRight 2018-2019 办公设备维修网 版权所有 豫ICP备15022753号-3