HDF datasets from h5py implement a subset of the functionality of numpy arrays, but have the advantage that only the data you actually access will be read into memory. I therefore want to work with datasets for as long as I can, and only convert them into arrays when I need some functionality that they lack. To that end, I've tried to define a wrapper class which initially contains a dataset and forwards everything to that, but which catches name errors and converts its dataset into an array when this happens. My current implementation is:
class DArr: def __init__(self, dset): self.arr = dset def __getitem__(self, args): try: return self.arr.__getitem__(args) except: self.arr = np.array(self.arr) return self.arr.__getitem__(args) def __getattr__(self, name): try: return self.arr.__getattr__(name) except: self.arr = np.array(self.arr) return self.arr.__getattr__(name)
However, this fails when
self.arr has become a
numpy.array, as these apparently do not have a
__getattr__ I can forward to. What is the correct way to do this kind of forwarding? The goal is that a
DArr should behave just like a
numpy.array from the user's point of view.