##// END OF EJS Templates
Adding support for mpiexec as well as mpirun....
Adding support for mpiexec as well as mpirun. The mpiexec command is the preferred way of starting MPI jobs. We also support mpirun for backwards compatiblity.

File last commit:

r1395:1feaf0a3
r1880:e4c3c996
Show More
mcdriver.py
71 lines | 2.0 KiB | text/x-python | PythonLexer
#!/usr/bin/env python
# encoding: utf-8
"""Run a Monte-Carlo options pricer in parallel."""
from IPython.kernel import client
import numpy as N
from mcpricer import MCOptionPricer
tc = client.TaskClient()
rc = client.MultiEngineClient()
# Initialize the common code on the engines
rc.run('mcpricer.py')
# Push the variables that won't change
#(stock print, interest rate, days and MC paths)
rc.push(dict(S=100.0, r=0.05, days=260, paths=10000))
task_string = """\
op = MCOptionPricer(S,K,sigma,r,days,paths)
op.run()
vp, ap, vc, ac = op.vanilla_put, op.asian_put, op.vanilla_call, op.asian_call
"""
# Create arrays of strike prices and volatilities
K_vals = N.linspace(90.0,100.0,5)
sigma_vals = N.linspace(0.0, 0.2,5)
# Submit tasks
taskids = []
for K in K_vals:
for sigma in sigma_vals:
t = client.StringTask(task_string,
push=dict(sigma=sigma,K=K),
pull=('vp','ap','vc','ac','sigma','K'))
taskids.append(tc.run(t))
print "Submitted tasks: ", taskids
# Block until tasks are completed
tc.barrier(taskids)
# Get the results
results = [tc.get_task_result(tid) for tid in taskids]
# Assemble the result
vc = N.empty(K_vals.shape[0]*sigma_vals.shape[0],dtype='float64')
vp = N.empty(K_vals.shape[0]*sigma_vals.shape[0],dtype='float64')
ac = N.empty(K_vals.shape[0]*sigma_vals.shape[0],dtype='float64')
ap = N.empty(K_vals.shape[0]*sigma_vals.shape[0],dtype='float64')
for i, tr in enumerate(results):
ns = tr.ns
vc[i] = ns.vc
vp[i] = ns.vp
ac[i] = ns.ac
ap[i] = ns.ap
vc.shape = (K_vals.shape[0],sigma_vals.shape[0])
vp.shape = (K_vals.shape[0],sigma_vals.shape[0])
ac.shape = (K_vals.shape[0],sigma_vals.shape[0])
ap.shape = (K_vals.shape[0],sigma_vals.shape[0])
def plot_options(K_vals, sigma_vals, prices):
"""Make a contour plot of the option prices."""
import pylab
pylab.contourf(sigma_vals, K_vals, prices)
pylab.colorbar()
pylab.title("Option Price")
pylab.xlabel("Volatility")
pylab.ylabel("Strike Price")