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Apprendre Reshaping | Important Functions
NumPy in a Nutshell
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NumPy in a Nutshell

NumPy in a Nutshell

1. Getting Started with NumPy
2. Dimensions in Arrays
3. Indexing and Slicing
4. Important Functions

book
Reshaping

Sometimes situations arise when we need to somehow change our array, for example, change the size of the array or go from an array of one dimension to an array of another dimension, but with the same data that was originally used. But it is not always convenient to recreate the array from scratch, so some functions modify the array as we need it.

Let's have a look at some of them:

  • np.reshape() - this function changes the shape of an N-dimensional array while maintaining the same total number of elements;
  • np.transpose() - this function transposes the array, essentially swapping its axes;
  • np.concatenate() - this function creates a new array by appending arrays one after another along the specified axis;
  • np.resize() - this function is used to resize an array, creating a copy of the original array with the specified size.

Reshape one-dimensional array into a two-dimensional array:

123456
import numpy as np array = np.array([1, 2, 3, 4, 5, 6, 7, 8, 9, 10, 11, 12]) new_array = array.reshape(4, 3) print(new_array)
copy

Reshape one-dimensional into a three-dimensional array:

123456
import numpy as np array = np.array([1, 2, 3, 4, 5, 6, 7, 8, 9, 10, 11, 12]) new_array = array.reshape(2, 3, 2) print(new_array)
copy
Tâche

Swipe to start coding

Consider the following array: [11, 56, 78, 45, 1, 5]. You should obtain the following array: [[11, 56], [78, 45], [1, 5]].

Please use the .reshape() method.

Solution

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Section 4. Chapitre 1
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book
Reshaping

Sometimes situations arise when we need to somehow change our array, for example, change the size of the array or go from an array of one dimension to an array of another dimension, but with the same data that was originally used. But it is not always convenient to recreate the array from scratch, so some functions modify the array as we need it.

Let's have a look at some of them:

  • np.reshape() - this function changes the shape of an N-dimensional array while maintaining the same total number of elements;
  • np.transpose() - this function transposes the array, essentially swapping its axes;
  • np.concatenate() - this function creates a new array by appending arrays one after another along the specified axis;
  • np.resize() - this function is used to resize an array, creating a copy of the original array with the specified size.

Reshape one-dimensional array into a two-dimensional array:

123456
import numpy as np array = np.array([1, 2, 3, 4, 5, 6, 7, 8, 9, 10, 11, 12]) new_array = array.reshape(4, 3) print(new_array)
copy

Reshape one-dimensional into a three-dimensional array:

123456
import numpy as np array = np.array([1, 2, 3, 4, 5, 6, 7, 8, 9, 10, 11, 12]) new_array = array.reshape(2, 3, 2) print(new_array)
copy
Tâche

Swipe to start coding

Consider the following array: [11, 56, 78, 45, 1, 5]. You should obtain the following array: [[11, 56], [78, 45], [1, 5]].

Please use the .reshape() method.

Solution

Switch to desktopPassez à un bureau pour une pratique réelleContinuez d'où vous êtes en utilisant l'une des options ci-dessous
Tout était clair ?

Comment pouvons-nous l'améliorer ?

Merci pour vos commentaires !

Section 4. Chapitre 1
Switch to desktopPassez à un bureau pour une pratique réelleContinuez d'où vous êtes en utilisant l'une des options ci-dessous
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