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'm using cPickle to save my Database into file. The code looks like that:

def Save_DataBase():
import cPickle
from scipy import *
from numpy import *
a=Results.VersionName
#filename='D:/results/'+a[a.find('/')+1:-a.find('/')-2]+Results.AssType[:3]+str(random.randint(0,100))+Results.Distribution+".lft"
filename='D:/results/pppp.lft'
plik=open(filename,'w')


DataOutput=[[[DataBase.Arrays.Nodes,DataBase.Arrays.Links,DataBase.Arrays.Turns,DataBase.Arrays.Connectors,DataBase.Arrays.Zones],
             [DataBase.Nodes.Data,DataBase.Links.Data,DataBase.Turns.Data,DataBase.OrigConnectors.Data,DataBase.DestConnectors.Data,DataBase.Zones.Data],
             [DataBase.Nodes.DictionaryPy2Vis,DataBase.Links.DictionaryPy2Vis,DataBase.Turns.DictionaryPy2Vis,DataBase.OrigConnectors.DictionaryPy2Vis,DataBase.DestConnectors.DictionaryPy2Vis,DataBase.Zones.DictionaryPy2Vis],
             [DataBase.Nodes.DictionaryVis2Py,DataBase.Links.DictionaryVis2Py,DataBase.Turns.DictionaryVis2Py,DataBase.OrigConnectors.DictionaryVis2Py,DataBase.DestConnectors.DictionaryVis2Py,DataBase.Zones.DictionaryVis2Py],
             [DataBase.Paths.List]],[Results.VersionName,Results.noZones,Results.noNodes,Results.noLinks,Results.noTurns,Results.noTrips,
                                     Results.Times.VersionLoad,Results.Times.GetData,Results.Times.GetCoords,Results.Times.CrossTheTime,Results.Times.Plot_Cylinder,
                                     Results.AssType,Results.AssParam,Results.tStart,Results.tEnd,Results.Distribution,Results.tVector]]



cPickle.dump(DataOutput, plik, protocol=0)
plik.close()`

And it works fine. Most of my Database rows are lists of a lists, vecor-like, or array-like data sets.

But now when I input data, an error occurs:

def Load_DataBase():
    import cPickle 
    from scipy import *
    from numpy import *  
    filename='D:/results/pppp.lft'
    plik= open(filename, 'rb')
    """ first cPickle load approach """
    A= cPickle.load(plik)
    """ fail """
    """ Another approach - data format exact as in Output step above , also fails"""
    [[[DataBase.Arrays.Nodes,DataBase.Arrays.Links,DataBase.Arrays.Turns,DataBase.Arrays.Connectors,DataBase.Arrays.Zones],
                 [DataBase.Nodes.Data,DataBase.Links.Data,DataBase.Turns.Data,DataBase.OrigConnectors.Data,DataBase.DestConnectors.Data,DataBase.Zones.Data],
                 [DataBase.Nodes.DictionaryPy2Vis,DataBase.Links.DictionaryPy2Vis,DataBase.Turns.DictionaryPy2Vis,DataBase.OrigConnectors.DictionaryPy2Vis,DataBase.DestConnectors.DictionaryPy2Vis,DataBase.Zones.DictionaryPy2Vis],
                 [DataBase.Nodes.DictionaryVis2Py,DataBase.Links.DictionaryVis2Py,DataBase.Turns.DictionaryVis2Py,DataBase.OrigConnectors.DictionaryVis2Py,DataBase.DestConnectors.DictionaryVis2Py,DataBase.Zones.DictionaryVis2Py],
                 [DataBase.Paths.List]],[Results.VersionName,Results.noZones,Results.noNodes,Results.noLinks,Results.noTurns,Results.noTrips,
                                         Results.Times.VersionLoad,Results.Times.GetData,Results.Times.GetCoords,Results.Times.CrossTheTime,Results.Times.Plot_Cylinder,
                                         Results.AssType,Results.AssParam,Results.tStart,Results.tEnd,Results.Distribution,Results.tVector]]= cPickle.load(plik)`

Error is (in both cases):

    Traceback (most recent call last):
  File "D:\programy\projekt_eclipse\src\Praca\wx_frame.py", line 342, in LoadDatabase_Handler
    Load_DataBase()
  File "D:\programy\projekt_eclipse\src\Praca\wx_frame.py", line 1804, in Load_DataBase
    A= cPickle.load(plik)
ImportError: No module named multiarray

Any Ideas?

PS. Now I've solved the problem, say partially :/ I needed to change the format of arrays. I've tried to trace the error, but I couldn't. The variable causing error is this (long :) ) :

[[  0.00000000e+00   0.00000000e+00   0.00000000e+00   0.00000000e+00
    0.00000000e+00   0.00000000e+00   0.00000000e+00   0.00000000e+00]
 [  1.00000000e+00   0.00000000e+00   0.00000000e+00   2.00000000e+01
    0.00000000e+00   5.00000000e+02   2.00000000e+01   0.00000000e+00]
 [  2.00000000e+00   0.00000000e+00   1.00000000e+03   2.00000000e+01
    0.00000000e+00   5.00000000e+02   2.00000000e+01   3.52875186e+04]
 [  3.00000000e+00   0.00000000e+00   2.00000000e+03   2.00000000e+01
    0.00000000e+00   5.00000000e+02   2.00000000e+01   2.24880978e+04]
 [  4.00000000e+00   0.00000000e+00   3.00000000e+03   2.00000000e+01
    0.00000000e+00   5.00000000e+02   2.00000000e+01   2.24880978e+04]
 [  5.00000000e+00   0.00000000e+00   4.00000000e+03   2.00000000e+01
    0.00000000e+00   5.00000000e+02   2.00000000e+01   2.24880978e+04]
 [  6.00000000e+00   0.00000000e+00   5.00000000e+03   2.00000000e+01
    0.00000000e+00   5.00000000e+02   2.00000000e+01   2.24880978e+04]
 [  7.00000000e+00   0.00000000e+00   6.00000000e+03   2.00000000e+01
    0.00000000e+00   5.00000000e+02   2.00000000e+01   2.24880978e+04]
 [  8.00000000e+00   0.00000000e+00   7.00000000e+03   2.00000000e+01
    0.00000000e+00   5.00000000e+02   2.00000000e+01   3.59846476e+04]
 [  9.00000000e+00   0.00000000e+00   8.00000000e+03   2.00000000e+01
    0.00000000e+00   5.00000000e+02   2.00000000e+01   0.00000000e+00]
 [  1.00000000e+01   1.00000000e+03   0.00000000e+00   2.00000000e+01
    0.00000000e+00   5.00000000e+02   2.00000000e+01   3.97583022e+04]
 [  1.10000000e+01   1.00000000e+03   1.00000000e+03   2.00000000e+01
    0.00000000e+00   5.00000000e+02   2.00000000e+01   1.84929461e+04]
 [  1.20000000e+01   1.00000000e+03   2.00000000e+03   2.00000000e+01
    0.00000000e+00   5.00000000e+02   2.00000000e+01   8.76891311e+03]
 [  1.30000000e+01   1.00000000e+03   3.00000000e+03   2.00000000e+01
    0.00000000e+00   5.00000000e+02   2.00000000e+01   5.10636164e+03]
 [  1.40000000e+01   1.00000000e+03   4.00000000e+03   2.00000000e+01
    0.00000000e+00   5.00000000e+02   2.00000000e+01   2.45841100e+03]
 [  1.50000000e+01   1.00000000e+03   5.00000000e+03   2.00000000e+01
    0.00000000e+00   5.00000000e+02   2.00000000e+01   4.22093915e+03]
 [  1.60000000e+01   1.00000000e+03   6.00000000e+03   2.00000000e+01
    0.00000000e+00   5.00000000e+02   2.00000000e+01   9.20282091e+03]
 [  1.70000000e+01   1.00000000e+03   7.00000000e+03   2.00000000e+01
    0.00000000e+00   5.00000000e+02   2.00000000e+01   1.86566159e+04]
 [  1.80000000e+01   1.00000000e+03   8.00000000e+03   2.00000000e+01
    0.00000000e+00   5.00000000e+02   2.00000000e+01   3.80902598e+04]
 [  1.90000000e+01   2.00000000e+03   0.00000000e+00   2.00000000e+01
    0.00000000e+00   5.00000000e+02   2.00000000e+01   2.23193676e+04]
 [  2.00000000e+01   2.00000000e+03   1.00000000e+03   2.00000000e+01
    0.00000000e+00   5.00000000e+02   2.00000000e+01   1.16000116e+04]
 [  2.10000000e+01   2.00000000e+03   2.00000000e+03   2.00000000e+01
    0.00000000e+00   5.00000000e+02   2.00000000e+01   9.05680012e+03]
 [  2.20000000e+01   2.00000000e+03   3.00000000e+03   2.00000000e+01
    0.00000000e+00   5.00000000e+02   2.00000000e+01   6.89123867e+03]
 [  2.30000000e+01   2.00000000e+03   4.00000000e+03   2.00000000e+01
    0.00000000e+00   5.00000000e+02   2.00000000e+01   4.98898168e+03]
 [  2.40000000e+01   2.00000000e+03   5.00000000e+03   2.00000000e+01
    0.00000000e+00   5.00000000e+02   2.00000000e+01   7.44216130e+03]
 [  2.50000000e+01   2.00000000e+03   6.00000000e+03   2.00000000e+01
    0.00000000e+00   5.00000000e+02   2.00000000e+01   1.23593332e+04]
 [  2.60000000e+01   2.00000000e+03   7.00000000e+03   2.00000000e+01
    0.00000000e+00   5.00000000e+02   2.00000000e+01   1.14424233e+04]
 [  2.70000000e+01   2.00000000e+03   8.00000000e+03   2.00000000e+01
    0.00000000e+00   5.00000000e+02   2.00000000e+01   1.91864355e+04]
 [  2.80000000e+01   3.00000000e+03   0.00000000e+00   2.00000000e+01
    0.00000000e+00   5.00000000e+02   2.00000000e+01   2.07766798e+04]
 [  2.90000000e+01   3.00000000e+03   1.00000000e+03   2.00000000e+01
    0.00000000e+00   5.00000000e+02   2.00000000e+01   8.61849685e+03]
 [  3.00000000e+01   3.00000000e+03   2.00000000e+03   2.00000000e+01
    0.00000000e+00   5.00000000e+02   2.00000000e+01   1.09785208e+04]
 [  3.10000000e+01   3.00000000e+03   3.00000000e+03   2.00000000e+01
    0.00000000e+00   5.00000000e+02   2.00000000e+01   8.99736773e+03]
 [  3.20000000e+01   3.00000000e+03   4.00000000e+03   2.00000000e+01
    0.00000000e+00   5.00000000e+02   2.00000000e+01   9.06209122e+03]
 [  3.30000000e+01   3.00000000e+03   5.00000000e+03   2.00000000e+01
    0.00000000e+00   5.00000000e+02   2.00000000e+01   9.48702707e+03]
 [  3.40000000e+01   3.00000000e+03   6.00000000e+03   2.00000000e+01
    0.00000000e+00   5.00000000e+02   2.00000000e+01   1.04653099e+04]
 [  3.50000000e+01   3.00000000e+03   7.00000000e+03   2.00000000e+01
    0.00000000e+00   5.00000000e+02   2.00000000e+01   6.25314801e+03]
 [  3.60000000e+01   3.00000000e+03   8.00000000e+03   2.00000000e+01
    0.00000000e+00   5.00000000e+02   2.00000000e+01   1.67608539e+04]
 [  3.70000000e+01   4.00000000e+03   0.00000000e+00   2.00000000e+01
    0.00000000e+00   5.00000000e+02   2.00000000e+01   2.07766798e+04]
 [  3.80000000e+01   4.00000000e+03   1.00000000e+03   2.00000000e+01
    0.00000000e+00   5.00000000e+02   2.00000000e+01   6.82241178e+03]
 [  3.90000000e+01   4.00000000e+03   2.00000000e+03   2.00000000e+01
    0.00000000e+00   5.00000000e+02   2.00000000e+01   8.05149043e+03]
 [  4.00000000e+01   4.00000000e+03   3.00000000e+03   2.00000000e+01
    0.00000000e+00   5.00000000e+02   2.00000000e+01   9.55692239e+03]
 [  4.10000000e+01   4.00000000e+03   4.00000000e+03   2.00000000e+01
    0.00000000e+00   5.00000000e+02   2.00000000e+01   1.19199226e+04]
 [  4.20000000e+01   4.00000000e+03   5.00000000e+03   2.00000000e+01
    0.00000000e+00   5.00000000e+02   2.00000000e+01   8.43876335e+03]
 [  4.30000000e+01   4.00000000e+03   6.00000000e+03   2.00000000e+01
    0.00000000e+00   5.00000000e+02   2.00000000e+01   4.90454231e+03]
 [  4.40000000e+01   4.00000000e+03   7.00000000e+03   2.00000000e+01
    0.00000000e+00   5.00000000e+02   2.00000000e+01   6.03525083e+03]
 [  4.50000000e+01   4.00000000e+03   8.00000000e+03   2.00000000e+01
    0.00000000e+00   5.00000000e+02   2.00000000e+01   1.67608539e+04]
 [  4.60000000e+01   5.00000000e+03   0.00000000e+00   2.00000000e+01
    0.00000000e+00   5.00000000e+02   2.00000000e+01   2.07766798e+04]
 [  4.70000000e+01   5.00000000e+03   1.00000000e+03   2.00000000e+01
    0.00000000e+00   5.00000000e+02   2.00000000e+01   6.07842319e+03]
 [  4.80000000e+01   5.00000000e+03   2.00000000e+03   2.00000000e+01
    0.00000000e+00   5.00000000e+02   2.00000000e+01   6.48191278e+03]
 [  4.90000000e+01   5.00000000e+03   3.00000000e+03   2.00000000e+01
    0.00000000e+00   5.00000000e+02   2.00000000e+01   1.06547361e+04]
 [  5.00000000e+01   5.00000000e+03   4.00000000e+03   2.00000000e+01
    0.00000000e+00   5.00000000e+02   2.00000000e+01   1.27500595e+04]
 [  5.10000000e+01   5.00000000e+03   5.00000000e+03   2.00000000e+01
    0.00000000e+00   5.00000000e+02   2.00000000e+01   9.62319628e+03]
 [  5.20000000e+01   5.00000000e+03   6.00000000e+03   2.00000000e+01
    0.00000000e+00   5.00000000e+02   2.00000000e+01   6.50364667e+03]
 [  5.30000000e+01   5.00000000e+03   7.00000000e+03   2.00000000e+01
    0.00000000e+00   5.00000000e+02   2.00000000e+01   6.48651846e+03]
 [  5.40000000e+01   5.00000000e+03   8.00000000e+03   2.00000000e+01
    0.00000000e+00   5.00000000e+02   2.00000000e+01   1.67608539e+04]
 [  5.50000000e+01   6.00000000e+03   0.00000000e+00   2.00000000e+01
    0.00000000e+00   5.00000000e+02   2.00000000e+01   2.16862400e+04]
 [  5.60000000e+01   6.00000000e+03   1.00000000e+03   2.00000000e+01
    0.00000000e+00   5.00000000e+02   2.00000000e+01   9.88311307e+03]
 [  5.70000000e+01   6.00000000e+03   2.00000000e+03   2.00000000e+01
    0.00000000e+00   5.00000000e+02   2.00000000e+01   7.89923519e+03]
 [  5.80000000e+01   6.00000000e+03   3.00000000e+03   2.00000000e+01
    0.00000000e+00   5.00000000e+02   2.00000000e+01   8.16959736e+03]
 [  5.90000000e+01   6.00000000e+03   4.00000000e+03   2.00000000e+01
    0.00000000e+00   5.00000000e+02   2.00000000e+01   6.49942081e+03]
 [  6.00000000e+01   6.00000000e+03   5.00000000e+03   2.00000000e+01
    0.00000000e+00   5.00000000e+02   2.00000000e+01   6.24620368e+03]
 [  6.10000000e+01   6.00000000e+03   6.00000000e+03   2.00000000e+01
    0.00000000e+00   5.00000000e+02   2.00000000e+01   9.27811830e+03]
 [  6.20000000e+01   6.00000000e+03   7.00000000e+03   2.00000000e+01
    0.00000000e+00   5.00000000e+02   2.00000000e+01   1.13336356e+04]
 [  6.30000000e+01   6.00000000e+03   8.00000000e+03   2.00000000e+01
    0.00000000e+00   5.00000000e+02   2.00000000e+01   1.91853045e+04]
 [  6.40000000e+01   7.00000000e+03   0.00000000e+00   2.00000000e+01
    0.00000000e+00   5.00000000e+02   2.00000000e+01   3.67326624e+04]
 [  6.50000000e+01   7.00000000e+03   1.00000000e+03   2.00000000e+01
    0.00000000e+00   5.00000000e+02   2.00000000e+01   1.79192625e+04]
 [  6.60000000e+01   7.00000000e+03   2.00000000e+03   2.00000000e+01
    0.00000000e+00   5.00000000e+02   2.00000000e+01   9.35835049e+03]
 [  6.70000000e+01   7.00000000e+03   3.00000000e+03   2.00000000e+01
    0.00000000e+00   5.00000000e+02   2.00000000e+01   4.66349011e+03]
 [  6.80000000e+01   7.00000000e+03   4.00000000e+03   2.00000000e+01
    0.00000000e+00   5.00000000e+02   2.00000000e+01   1.88664273e+03]
 [  6.90000000e+01   7.00000000e+03   5.00000000e+03   2.00000000e+01
    0.00000000e+00   5.00000000e+02   2.00000000e+01   4.15546726e+03]
 [  7.00000000e+01   7.00000000e+03   6.00000000e+03   2.00000000e+01
    0.00000000e+00   5.00000000e+02   2.00000000e+01   9.26420582e+03]
 [  7.10000000e+01   7.00000000e+03   7.00000000e+03   2.00000000e+01
    0.00000000e+00   5.00000000e+02   2.00000000e+01   1.80179725e+04]
 [  7.20000000e+01   7.00000000e+03   8.00000000e+03   2.00000000e+01
    0.00000000e+00   5.00000000e+02   2.00000000e+01   3.69846102e+04]
 [  7.30000000e+01   8.00000000e+03   0.00000000e+00   2.00000000e+01
    0.00000000e+00   5.00000000e+02   2.00000000e+01   0.00000000e+00]
 [  7.40000000e+01   8.00000000e+03   1.00000000e+03   2.00000000e+01
    0.00000000e+00   5.00000000e+02   2.00000000e+01   3.66207833e+04]
 [  7.50000000e+01   8.00000000e+03   2.00000000e+03   2.00000000e+01
    0.00000000e+00   5.00000000e+02   2.00000000e+01   2.32529854e+04]
 [  7.60000000e+01   8.00000000e+03   3.00000000e+03   2.00000000e+01
    0.00000000e+00   5.00000000e+02   2.00000000e+01   2.32529854e+04]
 [  7.70000000e+01   8.00000000e+03   4.00000000e+03   2.00000000e+01
    0.00000000e+00   5.00000000e+02   2.00000000e+01   2.32529854e+04]
 [  7.80000000e+01   8.00000000e+03   5.00000000e+03   2.00000000e+01
    0.00000000e+00   5.00000000e+02   2.00000000e+01   2.32529854e+04]
 [  7.90000000e+01   8.00000000e+03   6.00000000e+03   2.00000000e+01
    0.00000000e+00   5.00000000e+02   2.00000000e+01   2.32529854e+04]
 [  8.00000000e+01   8.00000000e+03   7.00000000e+03   2.00000000e+01
    0.00000000e+00   5.00000000e+02   2.00000000e+01   3.70098656e+04]
 [  8.10000000e+01   8.00000000e+03   8.00000000e+03   2.00000000e+01
    0.00000000e+00   5.00000000e+02   2.00000000e+01   0.00000000e+00]]

cPickle, or pickle are unable to load it. But when I do it manually with the console, the same file structure ( [[ ]] and all formats exaclty the same, values also e+00 format) Then it works fine ??????????? What the hell? Anyway I've solved the problem by changign data format :/

share|improve this question

5 Answers 5

You must be using a very old Python. Because 'import *' is only available at module level. Anyway, to answer your question:

Move these statements

import cPickle 
from scipy import *
from numpy import *

out of the Load_DataBase definition and you'll be fine. The exception was raised because cPickle can't find the meta information for the content of plik.

share|improve this answer

I had the same problem on a Windows XP machine with Code that worked fine under Linux. It may have to do with the different handling of text and binary files. When writing your data try to create the file object explicitly stating that you want binary mode, i.e.

plik=open(filename,'wb')

instead of

plik=open(filename,'w')

That worked for me.

share|improve this answer

Could you please post the full traceback as it might be useful to see where this error is coming from. Also, could you please provide a traceback for the save case, I wonder whether it happens during the serialization or somewhere earlier.

share|improve this answer

First of all check if $YOUR_PYTHON_INSTALLATION/lib/python-x.x/site-packages/numpy/core/multiarray.so file exists.

And it would be very useful if you posted full traceback, not only the error message.

share|improve this answer
    
I've checked it, it works fine, and the file exists, from numpy.core import multiarray as multiarray I've also reinstalled numpy it doesn't help. I post full traceback into question –  Rafal Jun 9 '10 at 15:58

Have you tried importing multiarray explicitly? pickle needs all the classes to be defined in order to import the data.

share|improve this answer
    
You mean: from numpy.core import multiarray as multiarray nope - it doesn't help. –  Rafal Jun 9 '10 at 10:43

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.