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 have a dictionary that I need to convert to a NumPy structured array. I'm using the arcpy function NumPyArraytoTable, so a NumPy structured array is the only data format that will work.

Based on this thread: Writing to numpy array from dictionary and this thread: How to convert Python dictionary object to numpy array

I've tried this:

result = {0: 1.1181753789488595, 1: 0.5566080288678394, 2: 0.4718269778030734, 3: 0.48716683119447185, 4: 1.0, 5: 0.1395076201641266, 6: 0.20941558441558442}

names = ['id','data']
formats = ['f8','f8']
dtype = dict(names = names, formats=formats)
array=numpy.array([[key,val] for (key,val) in result.iteritems()],dtype)

But I keep getting expected a readable buffer object

The method below works, but is stupid and obviously won't work for real data. I know there is a more graceful approach, I just can't figure it out.

totable = numpy.array([[key,val] for (key,val) in result.iteritems()])
array=numpy.array([(totable[0,0],totable[0,1]),(totable[1,0],totable[1,1])],dtype)
share|improve this question
add comment

1 Answer 1

up vote 7 down vote accepted

You could use np.array(result.items(), dtype=dtype):

import numpy as np
result = {0: 1.1181753789488595, 1: 0.5566080288678394, 2: 0.4718269778030734, 3: 0.48716683119447185, 4: 1.0, 5: 0.1395076201641266, 6: 0.20941558441558442}

names = ['id','data']
formats = ['f8','f8']
dtype = dict(names = names, formats=formats)
array = np.array(result.items(), dtype=dtype)

print(repr(array))

yields

array([(0.0, 1.1181753789488595), (1.0, 0.5566080288678394),
       (2.0, 0.4718269778030734), (3.0, 0.48716683119447185), (4.0, 1.0),
       (5.0, 0.1395076201641266), (6.0, 0.20941558441558442)], 
      dtype=[('id', '<f8'), ('data', '<f8')])

If you don't want to create the intermediate list of tuples, result.items(), and would rather use the more memory-friendly result.iteritems(), then you could use np.fromiter:

array = np.fromiter(result.iteritems(), dtype=dtype, count=len(result))

Why the list [key,val] does not work:

By the way, your attempt,

numpy.array([[key,val] for (key,val) in result.iteritems()],dtype)

was very close to working. If you change the list [key, val] to the tuple (key, val), then it would have work. Of course,

numpy.array([(key,val) for (key,val) in result.iteritems()],dtype)

is the same thing as

numpy.array(result.items(),dtype)

np.array treats lists differently than tuples: Robert Kern explains:

As a rule, tuples are considered "scalar" records and lists are recursed upon. This rule helps numpy.array() figure out which sequences are records and which are other sequences to be recursed upon; i.e. which sequences create another dimension and which are the atomic elements.

Since (0.0, 1.1181753789488595) is considered one of those atomic elements, it should be a tuple, not a list.

share|improve this answer
    
that works, Thanks! –  user2200772 Mar 22 '13 at 21:13
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.