I am new to the IPython parallel package but really want to get it going. What I have is a 4D numpy array which I want to run through slices,rows,columns and process the 4th dimension (time). The processing is a minimization routine that takes a bit of time which is why I would like to parallelize it.
from IPython.parallel import Client from numpy import * from matplotlib.pylab import * c = Client() v = c.load_balanced_view() v.block=False def process( src, freq, d ): # Get slice, row, col sl,r,c = src # Get data mm = d[:,sl,c,r] # Call fitting routine <fiting routine that requires freq, mm and outputs multiple parameters> return <output parameters??> ## Create the mask of what we are going to process mask = zeros(d.shape) mask[sl][ nonzero( d[0,sl] > 10*median(d) ) ] = 1 # find all non-zero points in the mask points = array(nonzero( mask == 1)).transpose() # Call async asyncresult = v.map_async( process, points, freq=freq, d=d )
My function "process" requires two parameters: 1) freq is a numpy array (100,1) and 2) d which is (100, 50, 110, 110) or so. I want to retrieve several parameters from the fitting.
All the examples I have seen that use map_async have simple lambda functions etc and the outputs seem to be trivial.
What I want is to apply "process" to every point in d where the mask is not zero and to have maps of the output parameters in the same space. [Added: I am getting "process() takes exactly 3 arguments (1 given) ].
(Step 2 of this might be required as I am passing a huge numpy array "d" to each process. But once I figure out the data passing I should hopefully be able to figure out a more efficient way of doing this.)
Thanks for any help.