Hướng dẫn list to array python

To convert a Python list to a NumPy array, use either of the following two methods:

Nội dung chính

  • NumPy vs Python Lists
  • How to Convert a 1D Python List to a NumPy Array?
  • Method 1: np.array[]
  • Method 2: np.asarray[]
  • [Video] How to Convert a List of Lists to a NumPy Array?
  • Convert List of Lists to 2D Array
  • Convert a List of Lists With Different Number of Elements
  • Where to Go From Here?
  • Video liên quan

  1. The np.array[] function that takes an iterable and returns a NumPy array creating a new data structure in memory.
  2. The np.asarray[] function that takes an iterable as argument and converts it to the array. The difference to np.array[] is that np.asarray[] doesnt create a new copy in memory if you pass a NumPy array. All changes made on the original array are reflected on the NumPy array.

Exercise: Create array b from array a using both methods. Then change a value in array a. What happens at array b?

  • NumPy vs Python Lists
  • How to Convert a 1D Python List to a NumPy Array?
    • Method 1: np.array[]
    • Method 2: np.asarray[]
  • [Video] How to Convert a List of Lists to a NumPy Array?
  • Convert List of Lists to 2D Array
  • Convert a List of Lists With Different Number of Elements
  • Where to Go From Here?

NumPy vs Python Lists

The Python built-in list data type is powerful. However, the NumPy array has many advantages over Python lists. What are they?

Advantages NumPyAdvantages Python Lists
Multi-dimensional Slicing Library-Independent
Broadcasting Functionality Intuitive
Processing Speed Less Complicated
Memory Footprint Heterogeneous List Data Allowed
Many Convenience Methods Arbitrary Data Shape [Non-Square Matrix]

To read more about the advantages of a NumPy array over a Python list, read my detailed blog tutorial.

How to Convert a 1D Python List to a NumPy Array?

Problem: Given a one-dimensional Python list. How to convert it to a NumPy array?

Example: You have the following 1D Python list of integers.

lst = [0, 1, 100, 42, 13, 7]

You want to convert it into a NumPy array.

array[[ 0, 1, 100, 42, 13, 7]]

Method 1: np.array[]

The simplest way to convert a Python list to a NumPy array is to use the np.array[] function that takes an iterable and returns a NumPy array.

import numpy as np lst = [0, 1, 100, 42, 13, 7] print[np.array[lst]]

The output is:

# [ 0 1 100 42 13 7]

This creates a new data structure in memory. Changes on the original list are not visible to the variable that holds the NumPy array:

lst = [0, 1, 100, 42, 13, 7] a = np.array[lst] lst.append[999] print[a] # [ 0 1 100 42 13 7]

The element 999 which is now part of list lst is not part of array a.

Method 2: np.asarray[]

An alternative is to use the np.asarray[] function that takes one argumentthe iterableand converts it to the NumPy array. The difference to np.array[] is that it doesnt create a new copy in memory IF you pass a NumPy array. All changes made on the original array are reflected on the NumPy array! So be careful.

lst = [0, 1, 100, 42, 13, 7] a = np.array[lst] b = np.asarray[a] a[0] = 99 print[b] # [ 99 1 100 42 13 7]

The array b is created using the np.asarray[] function, so if you change a value of array a, the change will be reflected on the variable b [because they point to the same object in memory].

[Video] How to Convert a List of Lists to a NumPy Array?

Convert List of Lists to 2D Array

Problem: Given a list of lists in Python. How to convert it to a 2D NumPy array?

Example: Convert the following list of lists

[[1, 2, 3], [4, 5, 6]]

into a NumPy array

[[1 2 3] [4 5 6]]

Solution: Use the np.array[list] function to convert a list of lists into a two-dimensional NumPy array. Heres the code:

# Import the NumPy library import numpy as np # Create the list of lists lst = [[1, 2, 3], [4, 5, 6]] # Convert it to a NumPy array a = np.array[lst] # Print the resulting array print[a] ''' [[1 2 3] [4 5 6]] '''

Try It Yourself: Heres the same code in our interactive code interpreter:

Hint: The NumPy method np.array[] takes an iterable as input and converts it into a NumPy array.

Convert a List of Lists With Different Number of Elements

Problem: Given a list of lists. The inner lists have a varying number of elements. How to convert them to a NumPy array?

Example: Say, youve got the following list of lists:

[[1, 2, 3], [4, 5], [6, 7, 8]]

What are the different approaches to convert this list of lists into a NumPy array?

Solution: There are three different strategies you can use. [source]

[1] Use the standard np.array[] function.

# Import the NumPy library import numpy as np # Create the list of lists lst = [[1, 2, 3], [4, 5], [6, 7, 8]] # Convert it to a NumPy array a = np.array[lst] # Print the resulting array print[a] ''' [list[[1, 2, 3]] list[[4, 5]] list[[6, 7, 8]]] '''

This creates a NumPy array with three elementseach element is a list type. You can check the type of the output by using the built-in type[] function:

>>> type[a]

[2] Make an array of arrays.

# Import the NumPy library import numpy as np # Create the list of lists lst = [[1, 2, 3], [4, 5], [6, 7, 8]] # Convert it to a NumPy array a = np.array[[np.array[x] for x in lst]] # Print the resulting array print[a] ''' [array[[1, 2, 3]] array[[4, 5]] array[[6, 7, 8]]] '''

This is more logical than the previous version because it creates a NumPy array of 1D NumPy arrays [rather than 1D Python lists].

[3] Make the lists equal in length.

# Import the NumPy library import numpy as np # Create the list of lists lst = [[1, 2, 3], [4, 5], [6, 7, 8, 9]] # Calculate length of maximal list n = len[max[lst, key=len]] # Make the lists equal in length lst_2 = [x + [None]*[n-len[x]] for x in lst] print[lst_2] # [[1, 2, 3, None], [4, 5, None, None], [6, 7, 8, 9]] # Convert it to a NumPy array a = np.array[lst_2] # Print the resulting array print[a] ''' [[1 2 3 None] [4 5 None None] [6 7 8 9]] '''

You use list comprehension to pad None values to each inner list with smaller than maximal length.

Related Articles

  • How to Convert a List of Lists to a NumPy array?
  • What are Advantages of NumPy arrays over Python lists?

Where to Go From Here?

Enough theory. Lets get some practice!

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