Article Categories
- All Categories
-
Data Structure
-
Networking
-
RDBMS
-
Operating System
-
Java
-
MS Excel
-
iOS
-
HTML
-
CSS
-
Android
-
Python
-
C Programming
-
C++
-
C#
-
MongoDB
-
MySQL
-
Javascript
-
PHP
-
Economics & Finance
Selected Reading
Python Pandas – How to select DataFrame rows on the basis of conditions
We can set conditions and fetch DataFrame rows. These conditions can be set using logical operators and even relational operators.
At first, import the required pandas libraries −
import pandas as pd
Let us create a DataFrame and read our CSV file −
dataFrame = pd.read_csv("C:\Users\amit_\Desktop\SalesRecords.csv")
Fetching dataframe rows with registration price less than 1000. We are using relational operator for this −
dataFrame[dataFrame.Reg_PriceExample
Following is the code −
import pandas as pd # reading csv file dataFrame = pd.read_csv("C:\Users\amit_\Desktop\SalesRecords.csv") print("DataFrame...\n",dataFrame) # count the rows and columns in a DataFrame print("\nNumber of rows and column in our DataFrame = ",dataFrame.shape) # fetching dataframe rows with registration price less than 1000 resData = dataFrame[dataFrame.Reg_PriceOutput
This will produce the following output −
DataFrame... Car Date_of_Purchase Reg_Price 0 BMW 10/10/2020 1000 1 Lexus 10/12/2020 750 2 Audi 10/17/2020 750 3 Jaguar 10/16/2020 1500 4 Mustang 10/19/2020 1100 5 Lamborghini 10/22/2020 1000 Number of rows and column in our DataFrame = (6, 3) DataFrame... Car Date_of_Purchase Reg_Price 1 Lexus 10/12/2020 750 2 Audi 10/17/2020 750
Advertisements
