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I have the file in following format:

0,0.104553357966
1,0.213014562052
2,0.280656379048
3,0.0654249076288
4,0.312223429689
5,0.0959008911106
6,0.114207780917
7,0.105294501195
8,0.0900673766572
9,0.23941317105
10,0.0598239513149
11,0.541701803956
12,0.093929580526

I want to plot these point using ipython plot function doing the following:

   In [40]: mean_data = load("/Users/daydreamer/data/mean")

But it fails saying the following:

---------------------------------------------------------------------------
IOError                                   Traceback (most recent call last)
/Users/daydreamer/<ipython-input-40-8f1329559411> in <module>()
----> 1 mean_data = load("/Users/daydreamer/data/mean")

/Library/Frameworks/Python.framework/Versions/2.7/lib/python2.7/site-packages/numpy-1.6.1-py2.7-macosx-10.5-fat3.egg/numpy/lib/npyio.pyc in load(file, mmap_mode)
    354             except:
    355                 raise IOError, \
--> 356                     "Failed to interpret file %s as a pickle" % repr(file)
    357     finally:
    358         if own_fid:

IOError: Failed to interpret file '/Users/daydreamer/data/mean' as a pickle

How do I fix this?
Thank you

share|improve this question
    
numpy.load isn't for loading ascii data. It's for loading numpy's internal binary format or a pickled numpy array. You want numpy.loadtxt or numpy.genfromtxt (the latter handles missing values) –  Joe Kington Jan 30 '12 at 20:36
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1 Answer

up vote 6 down vote accepted

The numpy.load routine is for loading pickled .npy or .npz binary files, which can be created using numpy.save and numpy.savez, respectively. Since you have text data, these are not the routines you want.

You can load your comma-separated values with numpy.loadtxt.

import numpy as np
mean_data = np.loadtxt("/Users/daydreamer/data/mean", delimiter=',')

Full Example

Here's a complete example (using StringIO to simulate the file I/O).

import numpy as np
import StringIO

s = """0,0.104553357966
1,0.213014562052
2,0.280656379048
3,0.0654249076288
4,0.312223429689
5,0.0959008911106
6,0.114207780917
7,0.105294501195
8,0.0900673766572
9,0.23941317105
10,0.0598239513149
11,0.541701803956
12,0.093929580526"""

st = StringIO.StringIO(s)
a = np.loadtxt(st, delimiter=',')

Now we have:

>>> a
array([[  0.        ,   0.10455336],
       [  1.        ,   0.21301456],
       [  2.        ,   0.28065638],
       [  3.        ,   0.06542491],
       [  4.        ,   0.31222343],
       [  5.        ,   0.09590089],
       [  6.        ,   0.11420778],
       [  7.        ,   0.1052945 ],
       [  8.        ,   0.09006738],
       [  9.        ,   0.23941317],
       [ 10.        ,   0.05982395],
       [ 11.        ,   0.5417018 ],
       [ 12.        ,   0.09392958]])
share|improve this answer
    
maybe you should also indicate, for completness, that load is meant to load pickled .npy , or .npz binary files. –  joaquin Jan 30 '12 at 20:37
    
@joaquin That is a good suggestion; thank you! I have updated the answer to incorporate your suggestion. –  David Alber Jan 30 '12 at 20:46
    
Unbelievable, I was just about to do something just like this and I see someone has already gone through the exact same thing here. Nice! –  lukecampbell Jan 30 '12 at 20:58
    
Thanks for the wonderful explanation, that works! –  daydreamer Jan 30 '12 at 22:19
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