Aggregate Functions
You can also calculate aggregate statistics of NumPy arrays, like minimum, maximum, mean, product, sum, etc. These ase realized in NumPy as arrays methods.
Method | Description |
---|---|
.mean() | Returns the arithmetic mean |
.sum() | Returns the sum of elements |
.prod() | Returns the product of all elements |
.min() | Returns the minimum of an array |
.max() | Returns the maximum of an array |
.std() | Returns the standard deviation of array elements |
.var() | Returns the variance of array elements |
For example, assume we have two arrays: prices
and sales
, representing goods' prices and quantity of each good being sold, respectively. Using multiplication and .sum()
method we can easily calculate the total revenue.
12345678910# Import the library import numpy as np # Two arrays prices = np.array([15, 60, 40, 5]) sales = np.array([7, 3, 5, 15]) # Revenue per good rev_per_good = prices * sales # Total revenue print("Total revenue is", rev_per_good.sum())
Kiitos palautteestasi!
Kysy tekoälyä
Kysy tekoälyä
Kysy mitä tahansa tai kokeile jotakin ehdotetuista kysymyksistä aloittaaksesi keskustelumme
Awesome!
Completion rate improved to 2.7
Aggregate Functions
Pyyhkäise näyttääksesi valikon
You can also calculate aggregate statistics of NumPy arrays, like minimum, maximum, mean, product, sum, etc. These ase realized in NumPy as arrays methods.
Method | Description |
---|---|
.mean() | Returns the arithmetic mean |
.sum() | Returns the sum of elements |
.prod() | Returns the product of all elements |
.min() | Returns the minimum of an array |
.max() | Returns the maximum of an array |
.std() | Returns the standard deviation of array elements |
.var() | Returns the variance of array elements |
For example, assume we have two arrays: prices
and sales
, representing goods' prices and quantity of each good being sold, respectively. Using multiplication and .sum()
method we can easily calculate the total revenue.
12345678910# Import the library import numpy as np # Two arrays prices = np.array([15, 60, 40, 5]) sales = np.array([7, 3, 5, 15]) # Revenue per good rev_per_good = prices * sales # Total revenue print("Total revenue is", rev_per_good.sum())
Kiitos palautteestasi!