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I am trying to create a new array with an existing array's elements. I keep getting:ValueError: Setting void-array with object members using buffer.

import numpy as np
import datetime

date =, 4, 5)
results = [(date,0,1,2,3), (date,5,1,5,6), (date,3,4,4,7)] 
stock_dt = np.dtype([('date', object),
                     ('open', np.int8),
                     ('high', np.int8),
                     ('low', np.int8),
                     ('close', np.int8)])

d = np.array(results, dtype=stock_dt)
matches = []
for item in d:
    if item['high'] == 1:

rec = np.array(matches, dtype=stock_dt)

print rec
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2 Answers 2

up vote 1 down vote accepted

The problem is that matches is not a list of tuples, so you cant make a structured array out of it. Instead it's a list of structured arrays, which need to be merged back into a single structured array. You can use numpy.lib.recfunctions.stack_arrays for this:

In [21]: import numpy.lib.recfunctions as rfn

In [22]: rfn.stack_arrays(matches,usemask=False)
array([(, 4, 5), 0, 1, 2, 3),
       (, 4, 5), 5, 1, 5, 6)], 
      dtype=[('date', 'O'), ('open', 'i1'), ('high', 'i1'), ('low', 'i1'), ('close', 'i1')])

You could also consider doing away with the loop entirely:

In [23]: d[d['high'] == 1]
array([(, 4, 5), 0, 1, 2, 3),
       (, 4, 5), 5, 1, 5, 6)], 
      dtype=[('date', 'O'), ('open', 'i1'), ('high', 'i1'), ('low', 'i1'), ('close', 'i1')])

Which should be faster, to boot.

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How could I use multiple arguments using your second answer? –  Wallace Mar 28 '13 at 2:45
What d[d['high'] == 1] is doing is indexing the array d using a list of booleans created by d['high'] == 1. To use multiple criteria you can use the & and | operators, like d[(d['high'] == 1) & (d['low'] == 2)]. Beware of making those too complex though, since it can get unreadable quickly. –  Brendan Dolan-Gavitt Mar 28 '13 at 2:54
Perfect! Thanks for your help!! –  Wallace Mar 28 '13 at 2:59


rec = np.array(matches, dtype=stock_dt)


rec = np.array(matches)

When you're iterating over matches you aren't dealing with tuples anymore so you shouldn't pass dtype=stock_dt to np.array again.

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I'm still getting same Error –  Wallace Mar 28 '13 at 2:38

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