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I am new to python. I have a big array, a, with dimensions such as (43200, 4000) and I need to save this, as I need it for future processing. when I try to save it with a np.savetxt, the txt file is too large and my program runs into memory error as I need to process 5 files of same size. Is there any way to save huge arrays so that it will take less memory?

Thanks.

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3  
Did you try np.savetxt('file.npy.gz')? It will take longer to save and to subsequently load (because of compression), but it should drastically reduce the size of the file. –  wflynny Sep 10 '13 at 18:13
    
@Bill thanks for reply, just tried with np.savetxt('file.npy.gz'), and it reduce my file size but could not able to load the data back. –  user2766019 Sep 10 '13 at 20:31
    
Are you sure you loaded the file with the same file extension that you saved it with? np.loadtxt('file.npy.gz'). –  wflynny Sep 10 '13 at 21:03
    
thanks it work, actually i was loading it in read mode. –  user2766019 Sep 10 '13 at 21:46

2 Answers 2

up vote 3 down vote accepted

You can use PyTables to create a Hierarchical Data Format (HDF) file to store the data. This provides some interesting in-memory options that link the object you're working with to the file it's saved in.

Here is another StackOverflow questions that demonstrates how to do this: "How to store a NumPy multidimensional array in PyTables."

If you are willing to work with your array as a Pandas DataFrame object, you can also use the Pandas interface to PyTables / HDF5, e.g.:

import pandas
import numpy as np
a = np.ones((43200, 4000)) # Not recommended.
x = pandas.HDFStore("some_file.hdf")

x.append("a", pandas.DataFrame(a)) # <-- This will take a while.
x.close()

# Then later on...
my_data = pandas.HDFStore("some_file.hdf") # might also take a while
usable_a_copy = my_data["a"] # Be careful of the way changes to
                             # `usable_a_copy` affect the saved data.

copy_as_nparray = usable_a_copy.values

With files of this size, you might consider whether your application can be performed with a parallel algorithm and potentially applied to only subsets of the large arrays rather than needing to consume all of the array before proceeding.

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Saving your data to text file is hugely inefficient. Numpy has built-in saving commands save, and savez/savez_compressed which would be much better suited to storing large arrays.

Depending on how you plan to use your data, you should also look into HDF5 format (h5py or pytables), which allows you to store large data sets, without having to load it all in memory.

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