# Filling a 2D matrix in numpy using a for loop

I'm a Matlab user trying to switch to Python.

Using Numpy, how do I fill in a matrix inside a `for` loop?

For example, the matrix has 2 columns, and each iteration of the `for` loop adds a new row of data.

In Matlab, this would be:

``````n = 100;
matrix = nan(n,2); % Pre-allocate matrix
for i = 1:n
matrix(i,:) = [3*i, i^2];
end
``````

First you have to install numpy using

``````\$ pip install numpy
``````

Then the following should work

``````import numpy as np
n = 100
matrix = np.zeros((n,2)) # Pre-allocate matrix
for i in range(1,n):
matrix[i,:] = [3*i, i**2]
``````

A faster alternative:

``````col1 = np.arange(3,3*n,3)
col2 = np.arange(1,n)
matrix = np.hstack((col1.reshape(n-1,1), col2.reshape(n-1,1)))
``````

Even faster, as Divakar suggested

``````I = np.arange(n)
matrix = np.column_stack((3*I, I**2))
``````
• Or `I = np.arange(n)` and then `np.column_stack((3*I, I**2))`. Oct 24, 2016 at 19:54
• Thanks for the tip :-) Oct 24, 2016 at 19:56
• Keep in mind that these are not matrices, despite the variable name. They are arrays. Arrays are used in the same way matrices are, but work differently in a number of ways, such as supporting less than two dimensions and using element-by-element operations by default. Numpy provides a matrix class, but you shouldn't use it because most other tools expect a numpy array. Oct 25, 2016 at 21:20

This is very pythonic form to produce a list, which you can easily swap e.g. for np.array, set, generator etc.

``````n = 10

[[i*3, i**2] for i, i in zip(range(0,n), range(0,n))]
``````

If you want to add another column it's no problem. Simply

``````[[i*3, i**2, i**(0.5)] for i, i in zip(range(0,n), range(0,n))]
``````