According to the documentation,
ndarray.flat is an iterator over the array while
ndarray.ravel returns a flattened array (when possible). So my question is, when should we use one or the other?
Which one would be preferred as the rvalue in an assignment like the one in the code below?
import numpy as np x = np.arange(2).reshape((2,1,1)) y = np.arange(3).reshape((1,3,1)) z = np.arange(5).reshape((1,1,5)) mask = np.random.choice([True, False], size=(2,3,5)) # netCDF4 module wants this kind of boolean indexing: nc4slice = tuple(mask.any(axis=axis) for axis in ((1,2),(2,0),(0,1))) indices = np.ix_(*nc4slice) ncrds = 3 npnts = (np.broadcast(*indices)).size points = np.empty((npnts, ncrds)) for i,crd in enumerate(np.broadcast_arrays(x,y,z)): # Should we use ndarray.flat ... points[:,i] = crd[indices].flat # ... or ndarray.ravel(): points[:,i] = crd[indices].ravel()