I am subclassing Numpy's ndarray class, adding some meta-data and additional methods. I'm trying to follow the instructions in this article and that one. However, some Numpy (or Scipy) functions return the base class "ndarray" instead of my custom subclass. Other Numpy functions DO return my subclass, and I don't know what's the reason for the difference. How can I make all the numpy/scipy functions return my subclass? here's what I did:
class Signal(np.ndarray): def __new__(cls, filename): #print "In __new__" #TEMP DEBUG ret = np.fromfile(filename, dtype = np.int32) ret = ret.view(cls) # convert to my class, i.e. Signal ret.parse_filename(filename) return ret def __array_finalize__(self, obj): #print "in __array_finalize__" #TEMP DEBUG if obj is None: return # shouldn't actually happen. # copy meta-fields from source, if it has them (otherwise put None's) self.filename = getattr(obj, "filename", None) self.folder = getattr(obj, "folder", None) self.label = getattr(obj, "label", None) self.date = getattr(obj, "date", None) self.time = getattr(obj, "time", None) #etc
here are some usage examples:
these work as expected -
>>> s = Signal(filename) >>> s2 = s[10:20] >>> type (s2) <class '__main__.Signal'> >>> s3 = s + 17 >>> type (s3) <class '__main__.Signal'> >>> s4 = np.sqrt(s) >>> type(s4) <class '__main__.Signal'>
however, what about these?
>>> s5 = log10(s) >>> type(s5) <type 'numpy.ndarray'> >>> s6 = np.fft.fft(s) >>> type(s6) <type 'numpy.ndarray'>
looking into the code of
log10 I can see that they use
asarray(), which strips the subclass and returns an ndarray, explaining the behavior. Therefore, my question isn't "why, technically, this happens" but more a design question - how should I write my code so this doesn't happen?
p.s. I'm a newbie both at Python and here on Stack Overflow, so please excuse any obvious mistakes or inappropriateness...