# Numpy where() on a 2D matrix

I have a matrix like this

``````t = np.array([[1,2,3,'foo'],
[2,3,4,'bar'],
[5,6,7,'hello'],
[8,9,1,'bar']])
``````

I want to get the indices where the rows contain the string 'bar'

In a 1d array

``````rows = np.where(t == 'bar')
``````

should give me the indices [0,3] followed by broadcasting:-

``````results = t[rows]
``````

should give me the right rows

But I can't figure out how to get it to work with 2d arrays.

• What happens instead? What have you tried? – jonrsharpe Jun 14 '14 at 12:20
• Just to check, is this actually how you created your array? Note that what you've done gives an array of strings. If you want a mix of strings and integers, you'll have a record array and it will behave differently. – Andrew Jaffe Jun 14 '14 at 15:15
• I did it as above and gone dtype='<U5' which I guess is the smallest datatype numpy managed to fit this array type in. Jaime's answer worked though I had never thought about the row,cols separation before – Delta_Fore Jun 16 '14 at 22:31

For the general case, where your search string can be in any column, you can do this:

``````>>> rows, cols = np.where(t == 'bar')
>>> t[rows]
array([['2', '3', '4', 'bar'],
['8', '9', '1', 'bar']],
dtype='|S11')
``````

You have to slice the array to the col you want to index:

``````rows = np.where(t[:,3] == 'bar')
result = t1[rows]
``````

This returns:

`````` [[2,3,4,'bar'],
[8,9,1,'bar']]
``````