4

I have a file in HDF5 format. It was created using the HDF5's C++ API using these:

struct SignalDefH5
{
    char  id   [128];
    char  name [ 64];
    char  units[ 16];
    float min;
    float max;
    hvl_t tags; /* This right there does not work in Pandas... */
};

struct TagDefH5
{
    char  tag [ 64];
    char  desc[256];
};

If I load the file using h5py, I get this:

>>> import h5py
>>> hfile = h5py.File('test.h5', 'r')
>>> signals = hfile['/signals']
>>> signals[0]
('id1', 'a pressure', 'bar', 0.0, 300.0, ['Pressure'])
>>> type(signals[0][5])
numpy.ndarray

However, if I use Pandas to load the same file, I get this:

>>> store = pd.HDFStore('test.h5')
>>> store.root.signals
/signals (Table(179,)) ''
  description := {
  "id": StringCol(itemsize=128, shape=(), dflt='', pos=0),
  "name": StringCol(itemsize=64, shape=(), dflt='', pos=1),
  "units": StringCol(itemsize=16, shape=(), dflt='', pos=2),
  "min": Float32Col(shape=(), dflt=0.0, pos=3),
  "max": Float32Col(shape=(), dflt=0.0, pos=4),
  "tags": StringCol(itemsize=64, shape=(), dflt='', pos=5)}
  byteorder := 'little'
  chunkshape := (234,)
>>> store.root.signals[0]
('id1', 'a pressure', 'bar', 0.0, 300.0, '\x02\x00\x00\x00\x00\x00\x00\x00\xf0f\x1e\x04\x00\x00\x00\x00\xba\nVT\xd1!\xa7\xdd\xb0\xe3\x9a\x02\x00\x00\x00\x00@\xecR\x1f\xa2\x7f\x00\x00}B\x178\x96\xa4u\xe6\xb0\xdd\x7f\x02\x00\x00\x00\x00 \x01')
>>> type(store.root.signals[0][5])
numpy.string_

Clearly there is a problem with the Pandas way: what did I do wrong?

  • Python version is 2.7.5.
  • h5py version is 2.4.0.
  • Pandas version is 0.16.0.
  • PyTables version is 3.1.1.
2
  • well, how did you create the file?
    – Jeff
    May 1, 2015 at 13:44
  • well pandas is not compatible with h5py it may work but if u created in pandas that makes a difference; so it does matter
    – Jeff
    May 1, 2015 at 14:02

1 Answer 1

5

Pandas HDF5 support uses PyTables. This provides a meta-data layer on top, which is itself (meaning PyTables) on top of raw HDF5. h5py is pretty-raw HDF5.

So the sub-field is not know to pandas, e.g. what it actually is. You are getting a raw-bytes string.

Nested structures like these are simply not supported. These don't map nicely to pandas structures. Further by creating this file in raw HDF5 you are missing lots of meta data that pandas needs to interpret the data.

Simply use PyTables/pandas to write your data. You can then maybe reverse engineer this format in c++.

4
  • 1
    I find it very odd that the raw HDF5 can guess the type fine but PyTables fails and there is not way to tell PyTables how to get it right... May 1, 2015 at 14:33
  • You are using an usupported nested type of structure.
    – Jeff
    May 1, 2015 at 14:35
  • 1
    It appears to be supported both by h5py and the C++ API. Is it just Pandas that does not support it? Is there really no way to tell it what data it is? Not trying to be awkward, just trying to understand. May 1, 2015 at 14:41
  • if PyTables does not support it, no. Not everything in the spec is actually supported by PyTables. Mainly as were not implemented, or they don't map well to higher level structures.
    – Jeff
    May 1, 2015 at 14:47

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