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I am trying to execute this code:

for i in Fil:  
    for k in DatArr:  
        a = np.zeros(0)  
        for j in Bui:  
            a = np.hstack([a,DatDifCor[k][i,j]])  

But it gives me this error:

Traceback (most recent call last):  
  File "<ipython console>", line 5, in <module>  
  File "C:\Python26\lib\site-packages\numpy\core\", line 258, in hstack  
    return _nx.concatenate(map(atleast_1d,tup),1)  

I thought it was due to a lack of RAM memory in the first place, but then I tried in on a PC with 48 Gb of RAM and it gave the same error. Have I reached the maximum size for a NumPy.array?

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64 Bit operating system? – tillsten May 11 '11 at 14:24
i run it on a windows 64 bit os, but python seems not to cope with this ... – ruben baetens May 12 '11 at 9:10

1 Answer 1

up vote 2 down vote accepted

A MemoryError always means that an attempt to allocate memory failed. Trying to create an array bigger than the maximum array size results in a ValueError:

>>> a = numpy.arange(500000000)
>>> numpy.hstack((a, a))
Traceback (most recent call last):
  File "<stdin>", line 1, in <module>
  File "/usr/lib/pymodules/python2.6/numpy/core/", line 258, in hstack
    return _nx.concatenate(map(atleast_1d,tup),1)
ValueError: array is too big.

Note that 48 GB are also a finite ammount of memory, and that your operating system (or even the hardware platform) might restrict the size of a single process to 4 GB.

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@Sven: The Python process i run increases the RAM usage from 5.85 GB (used by different Modelica simulations) to 7.40 GB (out of 48 GB) whereafter i get the MemoryError, which means the process uses 'only' 1.55 GB ... – ruben baetens May 11 '11 at 14:23
@rubae: This doesn't outrule that you are running out of memory. If the process uses 1.55 GB and tries to allocate 3 GB, you'll get a MemoryError if processes are limited to 4 GB. I suggest to add some debug output to the loop that shows the size of the array hstack() is going to create. – Sven Marnach May 11 '11 at 14:26
@Sven: ah, i just found out that i am using a 32bit version of Python(x,y) / Spyder on a 64bit computer, maybe the problem is solves by installing the 64bit version ... – ruben baetens May 11 '11 at 14:50
@Sven: do you know a proper way t ofind out how much memory is exactly required in e.g. this process in the loop with hstack() ? Apparantly there is no decent 64 bit version for Python(x,y), for Numpy, etcetera. (?) – ruben baetens May 12 '11 at 7:50
@rubae: The new array created by your hstack() call will occupy a.nbytes + DatDifCor[k][i,j].nbytes bytes, provided both the objects you stack are NumPy arrays of the same dtype. The old array a will only be freed after the new one is created. – Sven Marnach May 12 '11 at 7:57

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