##// END OF EJS Templates
split serialize step of Session.send into separate method...
split serialize step of Session.send into separate method This allows other objects to call it, and build serialized messages without sending.

File last commit:

r3666:a6a0636a
r3872:21b0f4cd
Show More
mcdriver.py
144 lines | 4.6 KiB | text/x-python | PythonLexer
#!/usr/bin/env python
"""Run a Monte-Carlo options pricer in parallel."""
#-----------------------------------------------------------------------------
# Imports
#-----------------------------------------------------------------------------
import sys
import time
from IPython.parallel import Client
import numpy as np
from mcpricer import price_options
from matplotlib import pyplot as plt
#-----------------------------------------------------------------------------
# Setup parameters for the run
#-----------------------------------------------------------------------------
def ask_question(text, the_type, default):
s = '%s [%r]: ' % (text, the_type(default))
result = raw_input(s)
if result:
return the_type(result)
else:
return the_type(default)
cluster_profile = ask_question("Cluster profile", str, "default")
price = ask_question("Initial price", float, 100.0)
rate = ask_question("Interest rate", float, 0.05)
days = ask_question("Days to expiration", int, 260)
paths = ask_question("Number of MC paths", int, 10000)
n_strikes = ask_question("Number of strike values", int, 5)
min_strike = ask_question("Min strike price", float, 90.0)
max_strike = ask_question("Max strike price", float, 110.0)
n_sigmas = ask_question("Number of volatility values", int, 5)
min_sigma = ask_question("Min volatility", float, 0.1)
max_sigma = ask_question("Max volatility", float, 0.4)
strike_vals = np.linspace(min_strike, max_strike, n_strikes)
sigma_vals = np.linspace(min_sigma, max_sigma, n_sigmas)
#-----------------------------------------------------------------------------
# Setup for parallel calculation
#-----------------------------------------------------------------------------
# The Client is used to setup the calculation and works with all
# engines.
c = Client(profile=cluster_profile)
# A LoadBalancedView is an interface to the engines that provides dynamic load
# balancing at the expense of not knowing which engine will execute the code.
view = c.load_balanced_view()
# Initialize the common code on the engines. This Python module has the
# price_options function that prices the options.
#-----------------------------------------------------------------------------
# Perform parallel calculation
#-----------------------------------------------------------------------------
print "Running parallel calculation over strike prices and volatilities..."
print "Strike prices: ", strike_vals
print "Volatilities: ", sigma_vals
sys.stdout.flush()
# Submit tasks to the TaskClient for each (strike, sigma) pair as a MapTask.
t1 = time.time()
async_results = []
for strike in strike_vals:
for sigma in sigma_vals:
ar = view.apply_async(price_options, price, strike, sigma, rate, days, paths)
async_results.append(ar)
print "Submitted tasks: ", len(async_results)
sys.stdout.flush()
# Block until all tasks are completed.
c.wait(async_results)
t2 = time.time()
t = t2-t1
print "Parallel calculation completed, time = %s s" % t
print "Collecting results..."
# Get the results using TaskClient.get_task_result.
results = [ar.get() for ar in async_results]
# Assemble the result into a structured NumPy array.
prices = np.empty(n_strikes*n_sigmas,
dtype=[('ecall',float),('eput',float),('acall',float),('aput',float)]
)
for i, price in enumerate(results):
prices[i] = tuple(price)
prices.shape = (n_strikes, n_sigmas)
strike_mesh, sigma_mesh = np.meshgrid(strike_vals, sigma_vals)
print "Results are available: strike_mesh, sigma_mesh, prices"
print "To plot results type 'plot_options(sigma_mesh, strike_mesh, prices)'"
#-----------------------------------------------------------------------------
# Utilities
#-----------------------------------------------------------------------------
def plot_options(sigma_mesh, strike_mesh, prices):
"""
Make a contour plot of the option price in (sigma, strike) space.
"""
plt.figure(1)
plt.subplot(221)
plt.contourf(sigma_mesh, strike_mesh, prices['ecall'])
plt.axis('tight')
plt.colorbar()
plt.title('European Call')
plt.ylabel("Strike Price")
plt.subplot(222)
plt.contourf(sigma_mesh, strike_mesh, prices['acall'])
plt.axis('tight')
plt.colorbar()
plt.title("Asian Call")
plt.subplot(223)
plt.contourf(sigma_mesh, strike_mesh, prices['eput'])
plt.axis('tight')
plt.colorbar()
plt.title("European Put")
plt.xlabel("Volatility")
plt.ylabel("Strike Price")
plt.subplot(224)
plt.contourf(sigma_mesh, strike_mesh, prices['aput'])
plt.axis('tight')
plt.colorbar()
plt.title("Asian Put")
plt.xlabel("Volatility")