Python Pandas - 在兩個資料幀之間查詢不常見的行
若要查詢兩個資料幀之間不常見的行,可使用 concat() 方法。讓我們首先引入必要的庫並指定別名 −
import pandas as pd
使用兩列建立 DataFrame1 −
dataFrame1 = pd.DataFrame( { "Car": ['BMW', 'Lexus', 'Audi', 'Tesla', 'Bentley', 'Jaguar'], "Reg_Price": [1000, 1500, 1100, 800, 1100, 900] } )
使用兩列建立 DataFrame2 −
dataFrame2 = pd.DataFrame( { "Car": ['BMW', 'Lexus', 'Audi', 'Tesla', 'Bentley', 'Jaguar'], "Reg_Price": [1000, 1300, 1000, 800, 1100, 800] } )
查詢兩個資料幀之間不常見的行,並連線結果 −
print"\nUncommon rows between two DataFrames...\n",pd.concat([dataFrame1,dataFrame2]).drop_duplicates(keep=False)
示例
以下是程式碼 −
import pandas as pd # Create DataFrame1 dataFrame1 = pd.DataFrame( { "Car": ['BMW', 'Lexus', 'Audi', 'Tesla', 'Bentley', 'Jaguar'], "Reg_Price": [1000, 1500, 1100, 800, 1100, 900] } ) print"DataFrame1 ...\n",dataFrame1 # Create DataFrame2 dataFrame2 = pd.DataFrame( { "Car": ['BMW', 'Lexus', 'Audi', 'Tesla', 'Bentley', 'Jaguar'], "Reg_Price": [1000, 1300, 1000, 800, 1100, 800] } ) print"\nDataFrame2 ...\n",dataFrame2 # finding uncommon rows between two DataFrames and concat the result print"\nUncommon rows between two DataFrames...\n",pd.concat([dataFrame1,dataFrame2]).drop_duplicates(keep=False)
輸出
這將產生以下輸出 −
DataFrame1 ... Car Reg_Price 0 BMW 1000 1 Lexus 1500 2 Audi 1100 3 Tesla 800 4 Bentley 1100 5 Jaguar 900 DataFrame2 ... Car Reg_Price 0 BMW 1000 1 Lexus 1300 2 Audi 1000 3 Tesla 800 4 Bentley 1100 5 Jaguar 800 Uncommon rows between two DataFrames... Car Reg_Price 1 Lexus 1500 2 Audi 1100 5 Jaguar 900 1 Lexus 1300 2 Audi 1000 5 Jaguar 800
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