I am trying to save an array of data along with header information. Currently, I am using numpy.savez() to save the header information (a dictionary) in one array, and the data in another.

    data = [[1,2,3],[4,5,6]]
    header = {'TIME': time, 'POSITION': position}
    np.savez(filename, header=header, data=data)

When I try to load and read the file, however, I can't index the header dictionary.

    arrays = np.load(filename)
    header = arrays('header')
    data = arrays('data')
    print header['TIME']

I get the following error:

    ValueError: field named TIME not found.

Before saving, the header is type 'dict'. After saving/loading, it is type 'numpy.ndarray'. Can I convert it back to a dictionary? Or is there a better way to achieve the same result?

  • What are time and position? If they are arrays, why don't you just save them directly: np.savez(filename, data=data, TIME=time, POSITION=position) – askewchan Mar 11 '14 at 3:08
  • They are just numerical values. My header dictionary has several parameters: sample rate, time duration, etc. I could use the approach you suggest, but I was hoping to send it all as a single dictionary. – user3403779 Mar 11 '14 at 3:14
up vote 13 down vote accepted

np.savez saves only numpy arrays. If you give it a dict, it will call np.array(yourdict) before saving it. So this is why you see something like type(arrays['header']) as np.ndarray:

arrays = np.load(filename)
h = arrays['header'] # square brackets!!

>>> h
array({'POSITION': (23, 54), 'TIME': 23.5}, dtype=object)

You'll notice if you look at it though, that it is a 0-dimensional, single-item array, with one dict inside:

>>> h.shape
()
>>> h.dtype
dtype('O') # the 'object' dtype, since it's storing a dict, not numbers.

so you could work around by doing this:

h = arrays['header'][()]

The mysterious indexing gets the one value out of a 0d array:

>>> h
{'POSITION': (23, 54), 'TIME': 23.5}
  • That did the trick! Cheers! – user3403779 Mar 11 '14 at 3:20

As in @askewchan's comment, why not np.savez( "tmp.npz", data=data, **d ) ?

import numpy as np

data = np.arange( 3 )
time = 23.5
position = [[23, 54], None]
d = dict( TIME=time, POSITION=position )

np.savez( "tmp.npz", data=data, **d )

d = np.load( "tmp.npz" )
for key, val in sorted( d.items() ):
    print key, type(val), val  # note d.TIME is a 0-d array


This is not your question at all, but the following little class Bag is nice, and you can bag.<tab> in IPython:

#...............................................................................
class Bag( dict ):
    """ a dict with d.key short for d["key"]
        d = Bag( k=v ... / **dict / dict.items() / [(k,v) ...] )  just like dict
    """
        # aka Dotdict

    def __init__(self, *args, **kwargs):
        dict.__init__( self, *args, **kwargs )
        self.__dict__ = self

    def __getnewargs__(self):  # for cPickle.dump( d, file, protocol=-1)
        return tuple(self)


d = Bag( np.load( "tmp.npz" ))
if d.TIME > 0:
    print "time %g  position %s" % (d.TIME, d.POSITION)
  • I never knew that [()] trick to index zero dimensional arrays. Witchcraft! – electrogas Nov 27 '17 at 5:44

Your Answer

By clicking "Post Your Answer", you acknowledge that you have read our updated terms of service, privacy policy and cookie policy, and that your continued use of the website is subject to these policies.

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