Stack Overflow is a community of 4.7 million programmers, just like you, helping each other.

Join them; it only takes a minute:

Sign up
Join the Stack Overflow community to:
  1. Ask programming questions
  2. Answer and help your peers
  3. Get recognized for your expertise

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])+',')
    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)

share|improve this question
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

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...;-)

share|improve this answer

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

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

share|improve this answer

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
share|improve this answer
sudo apt-get install hdf5-tools – Yauhen Yakimovich Jan 31 '14 at 14:55

Your Answer


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.