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How to (1) batch select all arrays under a hdf5 file, then (2) apply calculations on those arrays and finally (3) batch create new arrays in another hdf5 file?

for example:

import numpy
import tables

file = openFile('file1',"r")

array1 = file.root.array1
array1_cal = (array1 <= 1)

array2 = file.root.array2
array2_cal = (array2 <= 1)

I have 100+ arrays under a single hdf5 file and several hdf5 files, how can I batch process them? Thanks a lot.

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What is the structure of your HDF file? For example, are all the arrays hanging off the root? Did you want that structure to be replicated in the new file? – dtlussier May 10 '12 at 17:19
up vote 2 down vote accepted

With PyTables you can use the walkNodes function to recursively iterate through nodes. Here is an example:

# Recursively print all the nodes hanging from '/detector'.
print "Nodes hanging from group '/detector':"
for node in h5file.walkNodes('/detector', classname='EArray'):
    data = node[:]
    // do some calculation 
    // store new array in second file 
share|improve this answer

Use h5py, the Python interface to HDF5. h5py allows you to use HDF5 files, groups and datasets using traditional Python and NumPy metaphors.

see http://code.google.com/p/h5py/ and http://alfven.org/wp/hdf5-for-python/

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