Take the 2-minute tour ×
Stack Overflow is a question and answer site for professional and enthusiast programmers. It's 100% free, no registration required.

I am using the below code to read an array from a csv file.

na_orders = np.loadtxt(orders_file, delimiter=',', skiprows=0,dtype='i4,i4,i4,S5,S4,f4')

this return a one dimentional

[(2011, 1, 10, 'A', 'B', 1500.0) (2011, 1, 13, 'A', 'S', 1500.0)
 (2011, 1, 13, 'I', 'B', 4000.0) (2011, 1, 26, 'G', 'B', 1000.0)
 (2011, 2, 2, 'X', 'S', 4000.0) (2011, 2, 10, 'X', 'B', 4000.0)
 (2011, 3, 3, 'G', 'S', 1000.0) (2011, 3, 3, 'I', 'S', 2200.0)
 (2011, 6, 3, 'I', 'S', 3300.0) (2011, 5, 3, 'I', 'B', 1500.0)
 (2011, 6, 10, 'AL', 'B', 1200.0) (2011, 8, 1, 'G', 'B', 55.0)
 (2011, 8, 1, 'G', 's', 55.0) (2011, 12, 20, 'A', 'S', 1200.0)]

I want a 2d array that will split each one of the elements into different columns

share|improve this question
1  
If you work with different types of data, pandas might be a better fit. –  root Mar 31 '13 at 18:06
add comment

1 Answer 1

up vote 1 down vote accepted

Use the dtype=object constructor:

>>> import numpy as np
>>> l = [(2011, 1, 10, 'A', 'B', 1500.0), ..., (2011, 12, 20, 'A', 'S', 1200.0),]
>>> a = np.array(l, dtype='object')
>>> a
array([[2011, 1, 10, A, B, 1500.0],
...
       [2011, 12, 20, A, S, 1200.0]], dtype=object)
>>> a.shape
(14, 6)
>>> sum(a[:, -1])
26510.0

Such an array will not be as efficient as an array of primitive values, but it will support all operations normally supported by numpy arrays, while still providing for different types in different columns.

share|improve this answer
add comment

Your Answer

 
discard

By posting your answer, you agree to the privacy policy and terms of service.

Not the answer you're looking for? Browse other questions tagged or ask your own question.