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Python for Finance

You're reading from   Python for Finance If your interest is finance and trading, then using Python to build a financial calculator makes absolute sense. As does this book which is a hands-on guide covering everything from option theory to time series.

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Product type Paperback
Published in Apr 2014
Publisher
ISBN-13 9781783284375
Length 408 pages
Edition 1st Edition
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Author (1):
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Yuxing Yan Yuxing Yan
Author Profile Icon Yuxing Yan
Yuxing Yan
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Table of Contents (14) Chapters Close

Preface 1. Introduction and Installation of Python FREE CHAPTER 2. Using Python as an Ordinary Calculator 3. Using Python as a Financial Calculator 4. 13 Lines of Python to Price a Call Option 5. Introduction to Modules 6. Introduction to NumPy and SciPy 7. Visual Finance via Matplotlib 8. Statistical Analysis of Time Series 9. The Black-Scholes-Merton Option Model 10. Python Loops and Implied Volatility 11. Monte Carlo Simulation and Options 12. Volatility Measures and GARCH Index

Using Pandas and statsmodels

We give a few examples in the following section for the two modules we are going to use intensively in the rest of the book. Again, the Pandas module is for data manipulation and the statsmodels module is for the statistical analysis.

Using Pandas

In the following example, we generate two time series starting from January 1, 2013. The names of those two time series (columns) are A and B:

>>>import numpy as np
>>>import pandas as pd
>>>dates=pd.date_range('20130101',periods=5)
>>>np.random.seed(12345)
>>>x=pd.DataFrame(np.random.rand(5,2),index=dates,columns=('A','B'))

First, we import both NumPy and Pandas modules. The pd.date_range() function is used to generate an index array. The x variable is a Pandas' data frame with dates as its index. Later in this chapter, we will discuss pd.DataFrame(). The columns() function defines the names of those columns. Because the seed() function is...

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