Hi all I made this function that gives the sum of the first n terms of the Taylor expansion for arctan: I'm using mpmath module with this, mpf is the arbitrary precision float type.
def atantaylor(x,n): #Taylor series expansion of arctan about 0 for n terms, evaluated at x sum = 0 xt = x xsq = x**2 for j in range(n): nterm = ((-1)**j * xt) /(2.0*j+1) xt = xt * xsq sum += nterm return sum
I want to make this run on a few cores so I made another function that sums from term n to n+cs, ideally so I can run a few of these in parallel to make it faster:
def taylor1(x,n,cs): #Sum of Taylor series of atan from n to n + cs - 1 sum = mpf(0) #Find term n xt = mpf(x **(2*n + 1)) xsq = mpf(x**2) #Loop from n to n + cs - 1 for j in range(n, n+cs): nterm = ((-1)**j * xt) /(2.0*j+1) xt = xt * xsq sum += nterm print "term %d is %r" % (j, nterm) print sum return sum
The idea here is that I can run a few processes with intervals [0, cs] [cs, cs*2] [cs*2, cs*3].
I'm pretty new to multiprocessing and I have the following code mimicked from this tutorial here
def mp_atan(x, n, nprocs): #nprocs must be a factor of n so each worker can receive the same number of tasks that are integer value if n % nprocs != 0: print "please give an n that is a multiple of nprocs" return 0 def worker(x, n, chunksize, out_q): a = tan_n(x, n, chunksize) out_q.put([a]) out_q = mp.Queue() chunksize = int(n / nprocs) procs =  for i in range(nprocs): p = mp.Process( target = worker, args=(x, chunksize * i, chunksize, out_q,) ) procs.append(p) p.start() #sum results sum = 0 for i in range(nprocs): sum += out_q.get() #wait for all workers to finish for p in procs: p.join() return sum
I'm getting an EOFError and "pickle.PicklingError: Can't pickle : it's not found as mc.worker"
Is there anyway to get this up and running?