In NumPy, how can you efficiently make a 1-D object into a 2-D object where the singleton dimension is inferred from the current object (i.e. a list should go to either a 1xlength or lengthx1 vector)?
# This comes from some other, unchangeable code that reads data files. my_list = [1,2,3,4] # What I want to do: my_numpy_array[some_index,:] = numpy.asarray(my_list) # The above doesn't work because of a broadcast error, so: my_numpy_array[some_index,:] = numpy.reshape(numpy.asarray(my_list),(1,len(my_list))) # How to do the above without the call to reshape? # Is there a way to directly convert a list, or vector, that doesn't have a # second dimension, into a 1 by length "array" (but really it's still a vector)?