Advanced Aggregation [1/2]
Sometimes one aggregate function is not enought to make complete conclusions. For instance, we may need to get not only minimal, but also maximal value per group. Can pandas
handle it? Surely, it can!
If you want to apply more than one aggregate function to each group, use the .agg()
method. Pass a list of function names (as strings!) you want to apply to each group as the parameter. For instance, we can get the minimal and maximal price for each value of the 'roomh'
column (number of rooms).
12345678# Importing the library import pandas as pd # Reading the file df = pd.read_csv('https://codefinity-content-media.s3.eu-west-1.amazonaws.com/f2947b09-5f0d-4ad9-992f-ec0b87cd4b3f/data4.csv') # Minimal and maximal prices for each dwelling type print(df.groupby('roomh')['valueh'].agg(['min', 'max']))
Takk for tilbakemeldingene dine!
Spør AI
Spør AI
Spør om hva du vil, eller prøv ett av de foreslåtte spørsmålene for å starte chatten vår
Awesome!
Completion rate improved to 2.56
Advanced Aggregation [1/2]
Sveip for å vise menyen
Sometimes one aggregate function is not enought to make complete conclusions. For instance, we may need to get not only minimal, but also maximal value per group. Can pandas
handle it? Surely, it can!
If you want to apply more than one aggregate function to each group, use the .agg()
method. Pass a list of function names (as strings!) you want to apply to each group as the parameter. For instance, we can get the minimal and maximal price for each value of the 'roomh'
column (number of rooms).
12345678# Importing the library import pandas as pd # Reading the file df = pd.read_csv('https://codefinity-content-media.s3.eu-west-1.amazonaws.com/f2947b09-5f0d-4ad9-992f-ec0b87cd4b3f/data4.csv') # Minimal and maximal prices for each dwelling type print(df.groupby('roomh')['valueh'].agg(['min', 'max']))
Takk for tilbakemeldingene dine!