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用随机数创建二维数组的简单方法(Python)

[英]Simple way of creating a 2D array with random numbers (Python)

I know that an easy way to create a NxN array full of zeroes in Python is with:我知道在 Python 中创建一个充满零的 NxN 数组的简单方法是:

[[0]*N for x in range(N)]

However, let's suppose I want to create the array by filling it with random numbers:但是,假设我想通过用随机数填充数组来创建数组:

[[random.random()]*N for x in range(N)]

This doesn't work because each random number that is created is then replicated N times, so my array doesn't have NxN unique random numbers.这不起作用,因为创建的每个随机数都被复制了 N 次,所以我的数组没有 NxN 唯一的随机数。

Is there a way of doing this in a single line, without using for loops?有没有办法在一行中做到这一点,而不使用 for 循环?

You could use a nested list comprehension:您可以使用嵌套列表理解:

>>> N = 5
>>> import random
>>> [[random.random() for i in range(N)] for j in range(N)]
[[0.9520388778975947, 0.29456222450756675, 0.33025941906885714, 0.6154639550493386, 0.11409250305307261], [0.6149070141685593, 0.3579148659939374, 0.031188652624532298, 0.4607597656919963, 0.2523207155544883], [0.6372935479559158, 0.32063181293207754, 0.700897108426278, 0.822287873035571, 0.7721460935656276], [0.31035121801363097, 0.2691153671697625, 0.1185063432179293, 0.14822226436085928, 0.5490604341460457], [0.9650509333411779, 0.7795665950184245, 0.5778752066273084, 0.3868760955504583, 0.5364495147637446]]

Or use numpy (non-stdlib but very popular):或者使用numpy (非标准库但非常流行):

>>> import numpy as np
>>> np.random.random((N,N))
array([[ 0.26045197,  0.66184973,  0.79957904,  0.82613958,  0.39644677],
       [ 0.09284838,  0.59098542,  0.13045167,  0.06170584,  0.01265676],
       [ 0.16456109,  0.87820099,  0.79891448,  0.02966868,  0.27810629],
       [ 0.03037986,  0.31481138,  0.06477025,  0.37205248,  0.59648463],
       [ 0.08084797,  0.10305354,  0.72488268,  0.30258304,  0.230913  ]])

(PS It's a good idea to get in the habit of saying list when you mean list and reserving array for numpy ndarray s. There's actually a built-in array module with its own array type, so that confuses things even more, but it's relatively seldom used.) (PS 当你的意思是list并为 numpy ndarray s 保留array时,养成说list的习惯是个好主意。实际上有一个内置的array模块,它有自己的array类型,所以更容易混淆,但它相对很少使用。)

Just use [random.random() for i in range(N)] inside your list comprehension.只需在列表理解中使用[random.random() for i in range(N)]

Demo:演示:

>>> import random
>>> N = 3
>>> [random.random() for i in range(N)]
[0.24578599816668256, 0.34567935734766164, 0.6482845150243465]
>>> M = 3
>>> [[random.random() for i in range(N)] for j in range(M)]
[[0.9883394519621589, 0.6533595743059281, 0.866522328922242], [0.5906410405671291,         0.4429977939796209, 0.9472377762689498], [0.6883677407216132,     0.8215813727822125, 0.9770711299473647]]

This is how you create a 2d array:这是创建二维数组的方式:

k = np.random.random ([3,4]) * 10
k.astype(int)

You can use list comprehensions.您可以使用列表推导式。

[[random.random() for x in xrange(N)] for y in xrange(N)]

https://docs.python.org/2/tutorial/datastructures.html#list-comprehensions https://docs.python.org/2/tutorial/datastructures.html#list-comprehensions

For large multi dimensional arrays, I suggest you use numpy though.对于大型多维数组,我建议您使用 numpy。

It can be done without a loop.它可以在没有循环的情况下完成。 Try this simple line of code for generating a 2 by 3 matrix of random numbers with mean 0 and standard deviation 1.试试这行简单的代码,生成一个 2 x 3 的随机数矩阵,均值为 0,标准差为 1。

The syntax is :语法是:

import numpy

numpy.random.normal(mean, standard deviation, (rows,columns))

example :例子 :

numpy.random.normal(0,1,(2,3))

Use this simple function from numpy:使用 numpy 中的这个简单函数:

Array of size (4,4) filled with numbers 1-4用数字 1-4 填充的大小为 (4,4) 的数组

 np.random.randint(1, 5, size=(4, 4))


 [1 2 1 2]
 [2 2 2 4]
 [4 1 1 2]
 [4 2 2 4]

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