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This question is an exact duplicate of:

I am trying to plot a pseudo color graph with python but it keeps crashing. There is a rocket dancing but nothing more happens.

import numpy as np
import matplotlib
import pylab as pl

coef = np.load('corrcoef.npz') #22277 x 22277

pl.pcolor(coef)
pl.colorbar()
pl.show()

It plots the graph for smaller matrices. It works fine on other computers so I am not sure if this is my fault or the computer's. It is a mac with 8Gb of Ram. When I try to run it on a Linux machine with the same amount of ram i get a MemoryError

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marked as duplicate by tcaswell, plaes, David Z, Yann, Rubens May 15 '13 at 16:30

This question has been asked before and already has an answer. If those answers do not fully address your question, please ask a new question.

    
If that was a matrix of uint8_t, it would still be over 470MB. I'm not surprised pylab is complaining. Try saving it straight to file (not using show) if you just want to see the figure. –  sapi May 14 '13 at 10:58
    
How do i do that? –  user1663930 May 14 '13 at 10:59
    
Have a look at this question –  sapi May 14 '13 at 11:08
2  
I doubt you need all that data - there sure as hell aren't 4 gigapixels in the final figure. Preprocess it. –  sapi May 14 '13 at 12:05
4  
Haven't you already asked this question? –  Schorsch May 14 '13 at 12:17
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1 Answer

Due to physical limitations both of your hardware and your brain, you can't analyze large data sets exactly like you would small ones, so it's necessary to rethink your process a bit.

You say you need to plot every pixel of a 22,300 x 22,300 array, but no screen will show this and your nervous system could never take in all in anyway. Say it takes your nervous system 0.01 sec to observe each pixel (which is probably an underestimate), it would take you 57 days to observe this data the way you suggest you need to.

Instead, think about what you want to know about the data and find a way to get at this without plotting the entire thing. Some simple examples of how to do this would be to average neighboring cells, or look for extrema (max and min), etc. Doing this over 100x100 grids will make your final plot 223x223 which is easily manageable.

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