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I'm using h5py with LZF compression to store NumPy arrays in HDF5 files.

It works well, and my compressed files are much more portable than the uncompressed ones. However, if I try to view the compressed files using applications like vitables and HDFView, I get the following errors:

"Error: problems reading records. The dataset seems to be compressed with the None library. Check that it is installed in your system, please" in vitables and

"ncsa.hdf.hdf5lib.exceptions.HDF5Exception: ncsa.hdf.hdf5lib.exceptions.HDF5LibraryException: Can't open directory or file" in HDFView.

I can browse the file structures OK in both appications, but opening an array produces an error. If I turn off compression, the problem goes away. As an example, after running the code below, opening array_1 gives me the error, but array_2 doesn't.

import numpy as np, h5py

h5_path = r'D:\test.h5'

f = h5py.File(h5_path, 'w')

# Create fake data
data = (np.random.random(1E6)*100).astype(int)

# Save with compression
dset1 = f.create_dataset(r'/path/to/arrays/array_1', data=data, 

# Save without compression
dset2 = f.create_dataset(r'/path/to/arrays/array_2', data=data)

# Set some object properties
dset1.attrs['Description'] = 'Compressed array.'
dset2.attrs['Description'] = 'Uncompressed array.'


Is this behaviour expected, or am I doing something wrong?

If vitables and HDFView can't open compressed arrays, is there an alternative viewer that can?

Thanks very much!

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1 Answer 1

up vote 1 down vote accepted

While h5py comes with LZF, HDF5 itself is not generally distributed or compiled with LZF. Instead, you can use gzip, which is included with all HDF5 versions and so can be opened on any system:

dset1 = f.create_dataset(r'/path/to/arrays/array_1', data=data, 

HDFView can open arrays compressed with gzip.

Additionally, if you use gzip, you can use compression_opts to set the compression level (an integer between 0 and 9):

dset1 = f.create_dataset(r'/path/to/arrays/array_1', data=data, 
                         compression='gzip', compression_opts=9)
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Great - using 'gzip' gives me even better compression ratios and seems to work well with both HDFView and vitables. Thanks very much! –  JamesS Jul 29 at 16:53

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