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Python for Finance

Python for Finance

3.5 (33)
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Python for Finance

Python for Finance

3.5 (33)

Overview of this book

This book uses Python as its computational tool. Since Python is free, any school or organization can download and use it. This book is organized according to various finance subjects. In other words, the first edition focuses more on Python, while the second edition is truly trying to apply Python to finance. The book starts by explaining topics exclusively related to Python. Then we deal with critical parts of Python, explaining concepts such as time value of money stock and bond evaluations, capital asset pricing model, multi-factor models, time series analysis, portfolio theory, options and futures. This book will help us to learn or review the basics of quantitative finance and apply Python to solve various problems, such as estimating IBM’s market risk, running a Fama-French 3-factor, 5-factor, or Fama-French-Carhart 4 factor model, estimating the VaR of a 5-stock portfolio, estimating the optimal portfolio, and constructing the efficient frontier for a 20-stock portfolio with real-world stock, and with Monte Carlo Simulation. Later, we will also learn how to replicate the famous Black-Scholes-Merton option model and how to price exotic options such as the average price call option.
Table of Contents (17 chapters)
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16
Index

Graph of up-and-out and up-and-in parity

It is a good idea to use the Monte Carlo simulation to present such parity. The following code is designed to achieve this. To make our simulation clearer, we deliberately choose just five simulations:

import p4f
import scipy as sp
import matplotlib.pyplot as plt
#
s =9.25              # stock price at time zero
x =9.10              # exercise price
barrier=10.5         # barrier
T =0.5               # maturity date (in years)
n_steps=30           # number of steps
r =0.05              # expected annual return
sigma = 0.2          # volatility (annualized) 
sp.random.seed(125)  # seed()
n_simulation = 5     # number of simulations 
#
dt =T/n_steps
S = sp.zeros([n_steps], dtype=float) 
time_= range(0, int(n_steps), 1) 
c=p4f.bs_call(s,x,T,r,sigma) 
sp.random.seed(124)
outTotal, inTotal= 0.,0. 
n_out,n_in=0,0

for j in range(0, n_simulation):
    S[0]= s
    inStatus=False
    outStatus=True
    for i in time_[:-1]:
        e=sp.random.normal()
   ...

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