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.