# Numpy select rows based on condition

I want to remove rows from a two dimensional `numpy` array using a condition on the values of the first row.

I am able to do this with regular python using two loops, but I would like to do it more efficiently with numpy, e.g. with `numpy.where`

I have been trying various things with `numpy.where` and `numpy.delete` but I struggle with applying a condition to the first column only.

Here is an example where I only want to keep the rows where the first value of each row is 6.

Input:

``````[[0,4],
[0,5],
[3,5],
[6,8],
[9,1],
[6,1]]
``````

Output:

``````[[6,8],
[6,1]]
``````
• You just need to use 2D indexing. `arr = arr[arr[:,0] == 6]` Sep 24, 2019 at 11:23
• Thanks, that is even short than using numpy.where Sep 24, 2019 at 11:32

``````mask = (z[:, 0] == 6)
``````

This is much more efficient than `np.where` because you can use the boolean mask directly, without having the overhead of converting it to an array of indices first.

One liner:

``````z[z[:, 0] == 6, :]
``````
• We can make it even more simple one liner, as without ":" it means just the row: z=z[z[:,0]==6] May 26, 2020 at 22:22

Program:

``````import numpy as np
np_array = np.array([[0,4],[0,5],[3,5],[6,8],[9,1],[6,1]])
rows=np.where(np_array[:,0]==6)
print(np_array[rows])
``````

Output:

``````[[6 8]
[6 1]]
``````

And If You Want to Get Into 2d List use

``````np_array[rows].tolist()
``````

Output of 2d List

``````[[6, 8], [6, 1]]
``````