I have a large dataset of compound data in a hdf file. The Type of the compound data looks as following:

```
numpy.dtype([('Image', h5py.special_dtype(ref=h5py.Reference)),
('NextLevel', h5py.special_dtype(ref=h5py.Reference))])
```

With that I create a dataset with references to an image and another dataset at each position. These datasets have the dimensions n x n, with n typically at least 256, but more likely >2000. I have to initially fill each position of these datasets with the same value:

```
[[(image.ref, dataset.ref)...(image.ref, dataset.ref)],
.
.
.
[(image.ref, dataset.ref)...(image.ref, dataset.ref)]]
```

I try to avoid filling it with two for-loops like:

```
for i in xrange(0,n):
for j in xrange(0,n):
daset[i,j] =(image.ref, dataset.ref)
```

because the performance is very bad.
So I'm searching for something like `numpy.fill`

, `numpy.shape`

, `numpy.reshape`

, `numpy.array`

, `numpy.arrange`

, `[:]`

and so on. I tried those functions in various ways, but they all seem to work only with number and string datatypes.
Is there any way to fill these datasets in a faster way then the for-loops?

Thank you in advance.