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I am using the h5py python package to read files in HDF5 format. (e.g. somefile.h5) I would like to write the contents of a dataset to a text file.

For example, I would like to create a text file with the following contents: 1,20,31,75,142,324,78,12,3,90,8,21,1

I am able to access the dataset in python using this code:

import h5py
f     = h5py.File('/Users/Me/Desktop/thefile.h5', 'r')
group = f['/level1/level2/level3']
dset  = group['dsetname']

My naive approach is too slow, because my dataset has over 20000 entries:

# write all values to file        
for index in range(len(dset)):
        # do not add comma after last value
        if index == len(dset)-1: txtfile.write(repr(dset[index]))
        else:                    txtfile.write(repr(dset[index])+',')
txtfile.close()
    return None

Is there a faster way to write this to a file? Perhaps I could convert the dataset into a NumPy array or even a Python list, and then use some file-writing tool?

(I could experiment with concatenating the values into a larger string before writing to file, but I'm hoping there's something entirely more elegant)

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In Python, it's almost always a bad idea to use range(len(dset)). Always prefer iterators, especially because for large dset, range is actually creating and allocating a len(dset) list of integers. –  Seth Johnson Jun 16 '11 at 16:55
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3 Answers

Building a large string has the huge advantage of saving the need for the goofy "last-time switch" thanks to the excellent join method of strings: to replace your whole loop,

txtfile.write(','.join(repr(item) for item in dset))

I'm not sure how much more elegant you demand your code to be...;-)

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Your original suspicion was correct, first convert it to a Numpy array, and then dump that array to ASCII.

my_data = my_h5_group['dsetname'].value # is now a Numpy array
my_data.tofile("my_data.txt")

This will be dramatically faster than iterating over the group object itself.

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maybe use h5dump on the HDF5 file?

I use (bash)

(h5dump -y -o /dev/stderr -d $dataset $infile >$errorout) 2>&1 | sed -e 's/, /\n/g' -e 's/,$//' | sed 's/ //g' > $outfile 2> $errorout
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sudo apt-get install hdf5-tools –  Yauhen Yakimovich Jan 31 at 14:55
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