Search icon CANCEL
Arrow left icon
Explore Products
Best Sellers
New Releases
Books
Videos
Audiobooks
Learning Hub
Conferences
Free Learning
Arrow right icon
Python for Finance
Python for Finance

Python for Finance: Apply powerful finance models and quantitative analysis with Python , Second Edition

eBook
€22.99 €32.99
Paperback
€41.99
Subscription
Free Trial
Renews at €18.99p/m

What do you get with Print?

Product feature icon Instant access to your digital eBook copy whilst your Print order is Shipped
Product feature icon Paperback book shipped to your preferred address
Product feature icon Download this book in EPUB and PDF formats
Product feature icon Access this title in our online reader with advanced features
Product feature icon DRM FREE - Read whenever, wherever and however you want
Table of content icon View table of contents Preview book icon Preview Book

Python for Finance

Chapter 1. Python Basics

In this chapter, we will discuss basic concepts and several widely used functions related to Python. This chapter plus the next one (Chapter 2, Introduction to Python Modules) are only the chapters exclusively based on Python techniques. Those two chapters serve as a review for readers who have some basic Python knowledge. There is no way that a beginner, with no prior Python knowledge, could master Python by reading just those two chapters. For a new learner who wants to learn Python in more detail, he/she could find many good books. From Chapter 3, Time Value of Money onward, we will use Python, which will help in explaining or demonstrating various finance concepts, running regression, and processing data related to economics, finance, and accounting. Because of this, we will offer more Python-related techniques and usages in each of the upcoming chapters.

In particular, in this chapter, we will discuss the following topics:

  • Python installation
  • Variable assignment, empty space, and writing our own programs
  • Writing a Python function
  • Data input
  • Data manipulation
  • Data output

Python installation

In this section, we will discuss how to install Python. More specifically, we will discuss two methods: installing Python via Anaconda and installing Python directly.

There are several reasons why the first method is preferred:

  • First, we can use a Python editor called Spyder, which is quite convenient for writing and editing our Python programs. For example, it has several windows (panels): one for the console, where we can type our commands directly; one for the program editor, where we can write and edit our programs; one for Variable Explorer,where we can view our variables and their values; and one for help, where we can seek help.
  • Second, different colors for codes or comment lines will help us avoid some obvious typos and mistakes.
  • Third, when installing Anaconda, many modules are installed simultaneously. A module is a set of programs written by experts, professionals, or any person around a specific topic. It could be viewed as a toolbox for a specific task. To speed up the process of developing new tools, a new module usually depends on the functions embedded in other, already developed modules. This is called module dependency. One disadvantage of such a module dependency is how to install them at the same time. For more information about this, see Chapter 2, Introduction to Python Modules.

Installation of Python via Anaconda

We could install Python in several ways. The consequence is that we will have different environments for writing a Python program and running a Python program.

The following is a simple two-step approach. First, we go to http://continuum.io/downloads and find an appropriate package; see the following screenshot:

Installation of Python via Anaconda

For Python, different versions coexist. From the preceding screenshot, we see that there exist two versions, 3.5 and 2.7.

For this book, the version is not that critical. The old version had fewer problems while the new one usually has new improvements. Again, module dependency could be a big headache; see Chapter 2, Introduction to Python Modules for more detail. The version of Anaconda is 4.2.0. Since we will launch Python through Spyder, it might have different versions as well.

Launching Python via Spyder

After Python is installed via Anaconda, we can navigate to Start (for a Windows version) |All Programs |Anaconda3(32-bit), as shown in the following screenshot:

Launching Python via Spyder

After we click Spyder, the last entry in the preceding screenshot, we will see the following four panels:

Launching Python via Spyder

The top-left panel (window) is our program editor, where we write our programs. The bottom-right panel is the IPython console, where we cantype our simple commands. IPython is the default one. To know more about IPython, just type a question mark; see the following screenshot:

Launching Python via Spyder

Alternatively, we could launch Python console by clicking Consoles on the menu bar and then Open a Python console. After that, the following window will appear:

Launching Python via Spyder

From the image with four panels, the top-right panel is our help window, where we can seek help. The middle one is called Variable Explorer, where the names of variables and their values are shown. Depending on personal preference, users will scale those panels or reorganize them.

Direct installation of Python

For most users, knowing how to install Python via Anaconda is more than enough. Just for completeness, here the second way to install Python is presented.

The following steps are involved:

  1. First, go to www.python.org/download:
    Direct installation of Python
  2. Depending on your computer, choose the appropriate package, for example, Python version 3.5.2. For this book, the version of Python is not important. At this stage, a new user could just install Python with the latest version. After installation, we will see the following entries for a Windows version:
    Direct installation of Python
  3. To launch Python, we could click IDLE (Python 3.5. 32 bit) and get to see the following screen:
    Direct installation of Python
  4. From the IPython shown in the screenshot with four panels, or from the Python console panel or from the previous screenshot showing Python Shell, we could type various commands, as shown here:
    >>>pv=100
    >>>pv*(1+0.1)**20
    672.7499949325611
    >>> import math
    >>>math.sqrt(3)
    1.7320508075688772
    >>>
    
  5. To write a Python program, we click File, then New File:
    Direct installation of Python
  6. Type this program and then save it:
    Direct installation of Python
  7. Click Run, then Run module. If no error occurs, we can use the function just like other embedded functions, as shown here:
    Direct installation of Python

Variable assignment, empty space, and writing our own programs

First, for Python language, an empty space or spaces is very important. For example, if we accidently have a space before typing pv=100, we will see the following error message:

Variable assignment, empty space, and writing our own programs

The name of the error is called IndentationError. The reason is that, for Python, indentation is important. Later in the chapter, we will learn that a proper indentation will regulate/define how we write a function or why a group of codes belongs to a specific topic, function, or loop.

Assume that we deposit $100 in the bank today. What will be the value 3 years later if the bank offers us an annual deposit rate of 1.5%? The related codes is shown here:

>>>pv=100
>>>pv
    100
>>>pv*(1+0.015)**3
    104.56783749999997
>>>

In the preceding codes, ** means a power function. For example, 2**3 has a value of 8. To view the value of a variable, we simply type its name; see the previous example. The formula used is given here:

Variable assignment, empty space, and writing our own programs

Here, FV is the future value, PV is the present value, R is the period deposit rate while n is the number of periods. In this case, R is the annual rate of 0.015 while n is 3. At the moment, readers should focus on simple Python concepts and operations.

In Chapter 3, Time Value of Money, this formula will be explained in detail. Since Python is case-sensitive, an error message will pop up if we type PV instead of pv; see the following code:

>>>PV
NameError: name 'PV' is not defined
>>>Traceback (most recent call last):
  File "<stdin>", line 1, in <module>

Unlike some languages, such as C and FORTRAN, for Python a new variable does not need to be defined before a value is assigned to it. To show all variables or function, we use the dir() function:

>>>dir()
['__builtins__', '__doc__', '__loader__', '__name__', '__package__', '__spec__', 'pv']
>>>

To find out all built-in functions, we type dir(__builtings__). The output is shown here:

Variable assignment, empty space, and writing our own programs

Writing a Python function

Assume that we are interested in writing a Python function for equation (1).

After launching Spyder, click File, then New File. We write the following two lines, as shown in the left panel. The keyword def is for function,fv_f is the function name, and the three values of pv, r , and n in the pair of parentheses are input variables.

The colon (:) indicates the function hasn't finished yet. After we hit the Enter key, the next line will be automatically indented.

After we enter return pv*(1+r)**n and hit the Enter key twice, this simple program is completed. Obviously, for the second line, ** represents a power function.

Assume that we save it under c:/temp/temp.py:

Writing a Python function

To run or debug the program, click the arrow key under Run on the menu bar; see the preceding top-right image. The compiling result is shown by the bottom image right (the second image on top right). Now, we can use this function easily by calling it with three input values:

>>>fv_f(100,0.1,2)
     121.00000000000001
>>>fv_f(100,0.02,20)
    148.59473959783548

If some comments are added by explaining the meanings of input variables, the formula used, plus a few examples, it will be extremely helpful for other users or programmers. Check the following program with comments:

def pv_f(fv,r,n):
    """Objective: estimate present value
                     fv
    formula  : pv=-------------
                   (1+r)^n
          fv: fture value
          r : discount periodic rate
          n : number of periods

    Example #1  >>>pv_f(100,0.1,1)
                   90.9090909090909
    
    Example #2: >>>pv_f(r=0.1,fv=100,n=1)
                    90.9090909090909
    """
    return fv/(1+r)**n

The comments or explanations are included in a pair of three double quotation marks (""" and """). The indentation within a comment is not consequential. When compiling, the underlying software will ignore all comments. The beauty of those comments is that we can use help(pv_f) to see them, as illustrated here:

Writing a Python function

In Chapter 2, Introduction to Python Modules, we will show how to upload a financial calculator written in Python, and in Chapter 3, Time Value of Money, we will explain how to generate such a financial calculator.

Python loops

In this section, we discuss a very important concept: loop or loops. A loop is used to repeat the same task with slightly different input or other factors.

Python loops, if...else conditions

Let's look at a simple loop through all the data items in an array:

>>>import numpy as np
>>>cashFlows=np.array([-100,50,40,30])
>>>for cash in cashFlows:
...    print(cash)
... 
-100
50
40
30

One type of data is called a tuple, where we use a pair of parentheses, (), to include all input values. One feature of a tuple variable is that we cannot modify its value. This special property could be valuable if some our variables should never be changed.A tuple is different from a dictionary, which stores data with key-value pairs. It is not ordered and it requires that the keys are hashable. Unlike a tuple, the value for a dictionary can be modified.

Note that for Python, the subscription for a vector or tuple starts from 0. If x has a length of 3, the subscriptions will be 0, 1 and 2:

>>> x=[1,2,3]
>>>x[0]=2
>>>x
>>>
     [2, 2, 3]
>>> y=(7,8,9)
>>>y[0]=10
>>>
TypeError: 'tuple' object does not support item assignment
>>>Traceback (most recent call last):
  File "<stdin>", line 1, in <module>

>>>type(x)
>>>
<class'list'>
>>>type(y)
>>>
<class'tuple'>
>>>

Assuming that we invest $100 today and $30 next year, the future cash inflow will be $10, $40, $50, $45, and $20 at the end of each year for the next 5 years, starting at the end of the second year; see the following timeline and its corresponding cash flows:

-100    -30       10       40        50         45       20
|--------|---------|--------|---------|----------|--------|
0        1         2        3         4          5        6

What is the Net Present Value (NPV) if the discount rate is 3.5%? NPVis defined as the present values of all benefits minus the present values of all costs. If a cash inflow has a positive sign while a cash outflow has a negative sign, then NPV can be defined conveniently as the summation of the present values of all cash flows. The present value of one future value is estimated by applying the following formula:

Python loops, if...else conditions

Here,PV is the present value, FV is the future value,R is the period discount rate and n is the number of periods. In Chapter 3, Time Value of Money, the meaning of this formula will be explained in more detail. At the moment, we just want to write annpv_f() function which applies the preceding equation n times, where n is the number of cash flows. The complete NPV program is given here:

def npv_f(rate, cashflows):
       total = 0.0
       for i in range(0,len(cashflows)):
             total += cashflows[i] / (1 + rate)**i
       return total

In the program, we used a for loop. Again, the correct indentation is important for Python. Lines from 2 to 5 are all indented by one unit, thus they belong to the same function, called npv_f. Similarly, line 4 is indented two units, that is, after the second column (:), it belongs to the forloop. The command of total +=a is equivalent to total=total +a.

For the NPV function, we use a for loop. Note that the subscription of a vector in Python starts from zero, and the intermediate variable i starts from zero as well. We could call this function easily by entering two sets of input values. The output is shown here:

>>>r=0.035
>>>cashflows=[-100,-30,10,40,50,45,20]
>>>npv_f(r,cashflows)
14.158224763725372 

Here is another npv_f() function with a function called enumerate(). This function willgenerate a pair of indices, starting from0, and its corresponding value:

def npv_f(rate, cashflows):
      total = 0.0
      for i, cashflow in enumerate(cashflows):
               total += cashflow / (1 + rate)**i
      return total

Here is an example illustrating the usage of enumerate():

x=["a","b","z"]
for i, value in enumerate(x):
      print(i, value)

Unlike the npv_f function specified previously, the NPV function from Microsoft Excel is actually a PV function, meaning that it can be applied only to the future values. Its equivalent Python program, which is called npv_Excel, is shown here:

def npv_Excel(rate, cashflows):
       total = 0.0
       for i, cashflow in enumerate(cashflows):
                total += cashflow / (1 + rate)**(i+1)
       return total

The comparisons are shown in the following table. The result from the Python program is shown in the left panel while the result by calling the Excel NPV function is shown in the right panel. Please pay enough attention to the preceding program shown itself and how to call such a function:

Python loops, if...else conditions

By using a loop, we can repeat the same task with different inputs. For example, we plan to print a set of values. The following is such an example for a while loop:

i=1
while(i<10):
      print(i)
      i+=1

The following program will report a discount (or any number of discount rates), making its corresponding NPV equal zero. Assume the cash flow will be 550, -500, -500, -500, and 1000 at time 0, at the end of each year of the next 4 years. In Chapter 3, Time Value of Money, we will explain the concept of this exercise in more detail.

Write a Python program to find out which discount rate makes NPV equal zero. Since the direction of cash flows changes twice, we might have two different rates making NPV equal zero:

cashFlows=(550,-500,-500,-500,1000)
r=0
while(r<1.0):
     r+=0.000001
     npv=npv_f(r,cashFlows)
     if(abs(npv)<=0.0001):
            print(r)

The corresponding output is given here:

0.07163900000005098
0.33673299999790873

Later in the chapter, a forloop is used to estimate the NPV of a project.

When we need to use a few math functions, we can import the math module first:

>>>import math
>>>dir(math)
['__doc__', '__loader__', '__name__', '__package__', '__spec__', 'acos', 'acosh', 'asin', 'asinh', 'atan', 'atan2', 'atanh', 'ceil', 'copysign', 'cos', 'cosh', 'degrees', 'e', 'erf', 'erfc', 'exp', 'expm1', 'fabs', 'factorial', 'floor', 'fmod', 'frexp', 'fsum', 'gamma', 'gcd', 'hypot', 'inf', 'isclose', 'isfinite', 'isinf', 'isnan', 'ldexp', 'lgamma', 'log', 'log10', 'log1p', 'log2', 'modf', 'nan', 'pi', 'pow', 'radians', 'sin', 'sinh', 'sqrt', 'tan', 'tanh', 'trunc']
>>>math.pi
3.141592653589793
>>>

The sqrt(), square root, function is contained in the math module. Thus, to use the sqrt() function, we need to use math.sqrt(); see the following code:

>>>sqrt(2)
NameError: name 'sqrt' is not defined
>>>Traceback (most recent call last):
  File "<stdin>", line 1, in <module>
math.sqrt(2)
1.4142135623730951
>>>

If we want to call those functions directly, we can use from math import *; see the following code:

>>>from math import *
>>>sqrt(3)
1.7320508075688772
>>>

To learn about individual embedded functions, we can use thehelp() function;see the following code:

>>>help(len)
Help on built-in function len in module builtins:
len(obj, /)
    Return the number of items in a container.
>>>

Data input

Let's generate a very simple input dataset first, as shown here. Its name and location is c:/temp/test.txt. The format of the dataset is text:

a b
1 2
3 4

The code is shown here:

>>>f=open("c:/temp/test.txt","r")
>>>x=f.read()
>>>f.close()

The print() function could be used to show the value of x:

>>>print(x)
a b
1 2
3 4
>>>

For the second example, let's download the daily historical price for IBM from Yahoo!Finance first. To do so, we visit http://finance.yahoo.com:

Data input

Enter IBM to find its related web page. Then click Historical Data, then click Download:

Data input

Assume that we save the daily data as ibm.csv under c:/temp/. The first five lines are shown here:

Date,Open,High,Low,Close,Volume,Adj Close
2016-11-04,152.399994,153.639999,151.869995,152.429993,2440700,152.429993
2016-11-03,152.509995,153.740005,151.800003,152.369995,2878800,152.369995
2016-11-02,152.479996,153.350006,151.669998,151.949997,3074400,151.949997
2016-11-01,153.50,153.910004,151.740005,152.789993,3191900,152.789993

The first line shows the variable names: date, open price, high price achieved during the trading day, low price achieved during the trading day, close price of the last transaction during the trading day, trading volume, and adjusted price for the trading day. The delimiter is a comma. There are several ways of loading the text file. Some methods are discussed here:

  • Method I: We could use read_csv from the pandas module:
    >>> import pandas as pd
    >>> x=pd.read_csv("c:/temp/ibm.csv")
    >>>x[1:3]
             Date        Open        High         Low       Close   Volume  \
    1  2016-11-02  152.479996  153.350006  151.669998  151.949997  3074400   
    2  2016-11-01  153.500000  153.910004  151.740005  152.789993  3191900   
    
    Adj.Close
    1  151.949997
    2  152.789993>>>
  • Method II: We could use read_table from the pandas module; see the following code:
    >>> import pandas as pd
    >>> x=pd.read_table("c:/temp/ibm.csv",sep=',')

Alternatively, we could download the IBM daily price data directly from Yahoo!Finance; see the following code:

>>> import pandas as pd
>>>url=url='http://canisius.edu/~yany/data/ibm.csv'
>>> x=pd.read_csv(url)
>>>x[1:5]
         Date        Open        High         Low       Close   Volume  \
1  2016-11-03  152.509995  153.740005  151.800003  152.369995  2843600   
2  2016-11-02  152.479996  153.350006  151.669998  151.949997  3074400   
3  2016-11-01  153.500000  153.910004  151.740005  152.789993  3191900   
4  2016-10-31  152.759995  154.330002  152.759995  153.690002  3553200   

Adj Close  
1  152.369995
2  151.949997
3  152.789993
4  153.690002>>>

We could retrieve data from an Excel file by using the ExcelFile() function from thepandas module. First, we generate an Excel file with just a few observations; see the following screenshot:

Data input

Let's call this Excel file stockReturns.xlxs and assume that it is saved under c:/temp/. The Python code is given here:

>>>infile=pd.ExcelFile("c:/temp/stockReturns.xlsx")
>>> x=infile.parse("Sheet1")
>>>x
date  returnAreturnB
0  2001     0.10     0.12
1  2002     0.03     0.05
2  2003     0.12     0.15
3  2004     0.20     0.22
>>>

To retrieve Python datasets with an extension of .pkl or .pickle, we can use the following code. First, we download the Python dataset called ffMonthly.pkl from the author's web page at http://www3.canisius.edu/~yany/python/ffMonthly.pkl.

Assume that the dataset is saved under c:/temp/. The function called read_pickle() included in the pandas module can be used to load the dataset with an extension of .pkl or .pickle:

>>> import pandas as pd
>>> x=pd.read_pickle("c:/temp/ffMonthly.pkl")
>>>x[1:3]
>>>
Mkt_RfSMBHMLRf
196308  0.0507 -0.0085  0.0163  0.0042
196309 -0.0157 -0.0050  0.0019 -0.0080
>>>

The following is the simplest if function: when our interest rate is negative, print a warning message:

if(r<0):
    print("interest rate is less than zero")

Conditions related to logical AND and OR are shown here:

>>>if(a>0 and b>0):
  print("both positive")
>>>if(a>0 or b>0):
  print("at least one is positive")

For the multiple if...elif conditions, the following program illustrates its application by converting a number grade to a letter grade:

grade=74
if grade>=90:
    print('A')
elif grade >=85:
    print('A-')
elif grade >=80:
    print('B+')
elif grade >=75:
    print('B')
elif grade >=70:
    print('B-')
elif grade>=65:
    print('C+')
else:
    print('D')

Note that it is a good idea for such multiple if...elif functions to end with an else condition since we know exactly what the result is if none of those conditions are met.

Data manipulation

There are many different types of data, such as integer, real number, or string. The following table offers a list of those data types:

Data types

Description

Bool

Boolean (TRUE or FALSE) stored as a byte

Int

Platform integer (normally either int32 or int64)

int8

Byte (-128 to 127)

int16

Integer (-32768 to 32767)

int32

Integer (-2147483648 to 2147483647)

int64

Integer (9223372036854775808 to 9223372036854775807)

unit8

Unsigned integer (0 to 255)

unit16

Unsigned integer (0 to 65535)

unit32

Unsigned integer (0 to 4294967295)

unit64

Unsigned integer (0 to 18446744073709551615)

float

Short and for float6

float32

Single precision float: sign bit23 bits mantissa; 8 bits exponent

float64

52 bits mantissa

complex

Shorthand for complex128

complex64

Complex number; represented by two 32-bit floats (real and imaginary components)

complex128

Complex number; represented by two 64-bit floats (real and imaginary components)

Table 1.1 List of different data types

In the following examples, we assign a value to r, which is a scalar, and several values to pv, which is an array (vector).The type() function is used to show their types:

>>> import numpy as np
>>> r=0.023
>>>pv=np.array([100,300,500])
>>>type(r)
<class'float'>
>>>type(pv)
<class'numpy.ndarray'>

To choose the appropriate decision, we use the round()function; see the following example:

>>> 7/3
2.3333333333333335
>>>round(7/3,5)
2.33333
>>>

For data manipulation, let's look at some simple operations:

>>>import numpy as np
>>>a=np.zeros(10)                      # array with 10 zeros 
>>>b=np.zeros((3,2),dtype=float)       # 3 by 2 with zeros 
>>>c=np.ones((4,3),float)              # 4 by 3 with all ones 
>>>d=np.array(range(10),float)         # 0,1, 2,3 .. up to 9 
>>>e1=np.identity(4)                   # identity 4 by 4 matrix 
>>>e2=np.eye(4)                        # same as above 
>>>e3=np.eye(4,k=1)                    # 1 start from k 
>>>f=np.arange(1,20,3,float)           # from 1 to 19 interval 3 
>>>g=np.array([[2,2,2],[3,3,3]])       # 2 by 3 
>>>h=np.zeros_like(g)                  # all zeros 
>>>i=np.ones_like(g)                   # all ones

Some so-called dot functions are quite handy and useful:

>>> import numpy as np
>>> x=np.array([10,20,30])
>>>x.sum()
60

Anything after the number sign of # will be a comment. Arrays are another important data type:

>>>import numpy as np
>>>x=np.array([[1,2],[5,6],[7,9]])      # a 3 by 2 array
>>>y=x.flatten()
>>>x2=np.reshape(y,[2,3]              ) # a 2 by 3 array

We could assign a string to a variable:

>>> t="This is great"
>>>t.upper()
'THIS IS GREAT'
>>>

To find out all string-related functions, we use dir(''); see the following code:

>>>dir('')
['__add__', '__class__', '__contains__', '__delattr__', '__dir__', '__doc__', '__eq__', '__format__', '__ge__', '__getattribute__', '__getitem__', '__getnewargs__', '__gt__', '__hash__', '__init__', '__iter__', '__le__', '__len__', '__lt__', '__mod__', '__mul__', '__ne__', '__new__', '__reduce__', '__reduce_ex__', '__repr__', '__rmod__', '__rmul__', '__setattr__', '__sizeof__', '__str__', '__subclasshook__', 'capitalize', 'casefold', 'center', 'count', 'encode', 'endswith', 'expandtabs', 'find', 'format', 'format_map', 'index', 'isalnum', 'isalpha', 'isdecimal', 'isdigit', 'isidentifier', 'islower', 'isnumeric', 'isprintable', 'isspace', 'istitle', 'isupper', 'join', 'ljust', 'lower', 'lstrip', 'maketrans', 'partition', 'replace', 'rfind', 'rindex', 'rjust', 'rpartition', 'rsplit', 'rstrip', 'split', 'splitlines', 'startswith', 'strip', 'swapcase', 'title', 'translate', 'upper', 'zfill']
>>>

For example, from the preceding list we see a function called split. After typinghelp(''.split), we will have related help information:

>>>help(''.split)
Help on built-in function split:

split(...) method of builtins.str instance
S.split(sep=None, maxsplit=-1) -> list of strings

    Return a list of the words in S, using sep as the
delimiter string. If maxsplit is given, at most maxsplit
splits are done. If sep is not specified or is None, any
whitespace string is a separator and empty strings are
removed from the result.
>>>

We could try the following example:

>>> x="this is great"
>>>x.split()
['this', 'is', 'great']
>>>

Matrix manipulation is important when we deal with various matrices:

Data manipulation

The condition for equation (3) is that matrices A and B should have the same dimensions. For the product of two matrices, we have the following equation:

Data manipulation

Here,A is an n by k matrix (n rows and k columns), while B is a k by m matrix. Remember that the second dimension of the first matrix should be the same as the first dimension of the second matrix. In this case, it is k. If we assume that the individual data items in C, A, and B are Ci,j (the ith row and the jth column), Ai,j, and Bi,j, we have the following relationship between them:

Data manipulation

The dot() function from the NumPy module could be used to carry the preceding matrix multiplication:

>>>a=np.array([[1,2,3],[4,5,6]],float)    # 2 by 3
>>>b=np.array([[1,2],[3,3],[4,5]],float)  # 3 by 2
>>>np.dot(a,b)                            # 2 by 2
>>>print(np.dot(a,b))
array([[ 19.,  23.],
[ 43.,  53.]])
>>>

We could manually calculate c(1,1): 1*1 + 2*3 + 3*4=19.

After retrieving data or downloading data from the internet, we need to process it. Such a skill to process various types of raw data is vital to finance students and to professionals working in the finance industry. Here we will see how to download price data and then estimate returns.

Assume that we have n values of x1, x2, … and xn. There exist two types of means: arithmetic mean and geometric mean; see their genetic definitions here:

Data manipulation
Data manipulation

Assume that there exist three values of 2,3, and 4. Their arithmetic and geometric means are calculated here:

>>>(2+3+4)/3.
>>>3.0
>>>geo_mean=(2*3*4)**(1./3)
>>>round(geo_mean,4) 
2.8845

For returns, the arithmetic mean's definition remains the same, while the geometric mean of returns is defined differently; see the following equations:

Data manipulation
Data manipulation

In Chapter 3, Time Value of Money, we will discuss both means again.

We could say that NumPy is a basic module while SciPy is a more advanced one. NumPy tries to retain all features supported by either of its predecessors, while most new features belong in SciPy rather than NumPy. On the other hand, NumPy and SciPy have many overlapping features in terms of functions for finance. For those two types of definitions, see the following example:

>>> import scipy as sp
>>> ret=sp.array([0.1,0.05,-0.02])
>>>sp.mean(ret)
0.043333333333333342
>>>pow(sp.prod(ret+1),1./len(ret))-1 
0.042163887067679262

Our second example is related to processing theFama-French 3 factor time series. Since this example is more complex than the previous one, if a user feels it is difficult to understand, he/she could simply skip this example. First, a ZIP file called F-F_Research_Data_Factor_TXT.zip could be downloaded from Prof. French's Data Library. After unzipping and removing the first few lines and annual datasets, we will have a monthly Fama-French factor time series. The first few lines and last few lines are shown here:

DATE    MKT_RFSMBHMLRF
192607    2.96   -2.30   -2.87    0.22
192608    2.64   -1.40    4.19    0.25
192609    0.36   -1.32    0.01    0.23

201607    3.95    2.90   -0.98    0.02
201608    0.49    0.94    3.18    0.02
201609    0.25    2.00   -1.34    0.02

Assume that the final file is called ffMonthly.txt under c:/temp/. The following program is used to retrieve and process the data:

import numpy as np
import pandas as pd
file=open("c:/temp/ffMonthly.txt","r")
data=file.readlines()
f=[]
index=[]
for i in range(1,np.size(data)):
    t=data[i].split()
    index.append(int(t[0]))
    for j in range(1,5):
        k=float(t[j])
        f.append(k/100)
n=len(f) 
f1=np.reshape(f,[n/4,4])
ff=pd.DataFrame(f1,index=index,columns=['Mkt_Rf','SMB','HML','Rf'])

To view the first and last few observations for the dataset called ff, the functions of .head() and .tail()can be used:

Data manipulation

Data output

The simplest example is given here:

>>>f=open("c:/temp/out.txt","w")
>>>x="This is great"
>>>f.write(x)
>>>f.close()

For the next example, we download historical stock price data first, then write data to an output file:

import re
from matplotlib.finance import quotes_historical_yahoo_ochl
ticker='dell'
outfile=open("c:/temp/dell.txt","w")
begdate=(2013,1,1)
enddate=(2016,11,9)
p=quotes_historical_yahoo_ochl
(ticker,begdate,enddate,asobject=True,adjusted=True)
outfile.write(str(p))
outfile.close()

To retrieve the file, we have the following code:

>>>infile=open("c:/temp/dell.txt","r")
>>>x=infile.read()

One issue is that the preceding saved text file contains many unnecessary characters, such as [ and]. We could apply a substitution function called sub() contained in the Python module;see the simplest example given here:

>>> import re
>>>re.sub("a","9","abc")
>>>
'9bc'
>>>

In the preceding example, we will replace the letter a with9. Interested readers could try the following two lines of code for the preceding program:

p2= re.sub('[\(\)\{\}\.<>a-zA-Z]','', p)
outfile.write(p2)

It is a good idea to generate Python datasets with an extension of .pickle since we can retrieve such data quite efficiently. The following is the complete Python code to generate ffMonthly.pickle. Here, we show how to download price data and then estimate returns:

import numpy as np
import pandas as pd
file=open("c:/temp/ffMonthly.txt","r")
data=file.readlines()
f=[]
index=[]
for i in range(1,np.size(data)):
    t=data[i].split()
    index.append(int(t[0]))
    for j in range(1,5):
        k=float(t[j])
        f.append(k/100)
n=len(f)
f1=np.reshape(f,[n/4,4])
ff=pd.DataFrame(f1,index=index,columns=['Mkt_Rf','SMB','HML','Rf'])
ff.to_pickle("c:/temp/ffMonthly.pickle")

Exercises

  1. Where can you download and install Python?
  2. Is Python case-sensitive?
  3. How do you assign a set of values to pv in the format of a tuple. Could we change its values after the assignment?
  4. Estimate the area of a circle if the diameter is 9.7 using Python.
  5. How do you assign a value to a new variable?
  6. How can you find some sample examples related to Python?
  7. How do you launch Python's help function?
  8. How can you find out more information about a specific function, such as print()?
  9. What is the definition of built-in functions?
  10. Is pow() a built-in function? How do we use it?
  11. How do we find all built-in functions? How many built-in functions are present?
  12. When we estimate the square root of 3, which Python function should we use?
  13. Assume that the present value of a perpetuity is $124 and the annual cash flow is $50; what is the corresponding discount rate? The formula is given here:
    Exercises
  14. Based on the solution of the previous question, what is the corresponding quarterly rate?
  15. For a perpetuity, the same cash flow happens at the same interval forever. A growing perpetuity is defined as follows: the future cash flow is increased at a constant growth rate forever. If the first cash flow happens at the end of the first period, we have the following formula:
    Exercises

    Here PV is the present value, C is the cash flow of the next period, g is a growth rate, and R is the discount rate. If the first cash flow is $12.50, the constant growth rate is 2.5 percent, and the discount rate is 8.5 percent. What is the present value of this growing perpetuity?

  16. For an n-day variance, we have the following formula:
    Exercises

    Here Exercisesis the daily variance and is Exercises is the daily standard deviation (volatility). If the volatility (daily standard deviation) of a stock is 0.2, what is its 10-day volatility?

  17. We expect to have $25,000 in 5 years. If the annual deposit rate is 4.5 percent, how much do we have to deposit today?
  18. The substitution function called sub() is from a Python module. Find out how many functions are contained in that module.
  19. Write a Python program to convert the standard deviation estimated based on daily data or monthly data to an annual one by using the following formulas:
    Exercises
    Exercises
  20. The Sharpe ratio is a measure of trade-off between benefit (excess return) and cost (total risk) for an investment such as a portfolio. Write a Python program to estimate the Sharpe ratio by applying the following formula:
    Exercises

    Here Exercises is the portfolio mean return, Exercises is the mean risk-free rate and σ is the risk of the portfolio. Again, at this moment, it is perfectly fine that a reader does not understand the economic meaning of this ratio since the Sharpe ratio will be discussed in more detail in Chapter 7, Multifactor Models and Performance Measures.

Summary

In this chapter, many basic concepts and several widely used functions related to Python werediscussed. In Chapter 2, Introduction to Python Modules, we will discuss a key component of the Python language: Python modules and theirrelated issues. A module is a set of programs written by experts, professionals, or any person around a specific topic. A module could be viewed as a toolbox for a specific task. The chapter willfocus on the five most important modules: NumPy, SciPy, matplotlib, statsmodels, and pandas.

Left arrow icon Right arrow icon

Key benefits

  • Understand the fundamentals of Python data structures and work with time-series data
  • Implement key concepts in quantitative finance using popular Python libraries such as NumPy, SciPy, and matplotlib
  • A step-by-step tutorial packed with many Python programs that will help you learn how to apply Python to finance

Description

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.

Who is this book for?

This book assumes that the readers have some basic knowledge related to Python. However, he/she has no knowledge of quantitative finance. In addition, he/she has no knowledge about financial data.

What you will learn

  • Become acquainted with Python in the first two chapters
  • Run CAPM, Fama-French 3-factor, and Fama-French-Carhart 4-factor models
  • Learn how to price a call, put, and several exotic options
  • Understand Monte Carlo simulation, how to write a Python program to
  • replicate the Black-Scholes-Merton options model, and how to price a few
  • exotic options
  • Understand the concept of volatility and how to test the hypothesis that
  • volatility changes over the years
  • Understand the ARCH and GARCH processes and how to write related
  • Python programs
Estimated delivery fee Deliver to Slovakia

Premium delivery 7 - 10 business days

€25.95
(Includes tracking information)

Product Details

Country selected
Publication date, Length, Edition, Language, ISBN-13
Publication date : Jun 30, 2017
Length: 586 pages
Edition : 2nd
Language : English
ISBN-13 : 9781787125698
Category :
Languages :
Concepts :
Tools :

What do you get with Print?

Product feature icon Instant access to your digital eBook copy whilst your Print order is Shipped
Product feature icon Paperback book shipped to your preferred address
Product feature icon Download this book in EPUB and PDF formats
Product feature icon Access this title in our online reader with advanced features
Product feature icon DRM FREE - Read whenever, wherever and however you want
Estimated delivery fee Deliver to Slovakia

Premium delivery 7 - 10 business days

€25.95
(Includes tracking information)

Product Details

Publication date : Jun 30, 2017
Length: 586 pages
Edition : 2nd
Language : English
ISBN-13 : 9781787125698
Category :
Languages :
Concepts :
Tools :

Packt Subscriptions

See our plans and pricing
Modal Close icon
€18.99 billed monthly
Feature tick icon Unlimited access to Packt's library of 7,000+ practical books and videos
Feature tick icon Constantly refreshed with 50+ new titles a month
Feature tick icon Exclusive Early access to books as they're written
Feature tick icon Solve problems while you work with advanced search and reference features
Feature tick icon Offline reading on the mobile app
Feature tick icon Simple pricing, no contract
€189.99 billed annually
Feature tick icon Unlimited access to Packt's library of 7,000+ practical books and videos
Feature tick icon Constantly refreshed with 50+ new titles a month
Feature tick icon Exclusive Early access to books as they're written
Feature tick icon Solve problems while you work with advanced search and reference features
Feature tick icon Offline reading on the mobile app
Feature tick icon Choose a DRM-free eBook or Video every month to keep
Feature tick icon PLUS own as many other DRM-free eBooks or Videos as you like for just €5 each
Feature tick icon Exclusive print discounts
€264.99 billed in 18 months
Feature tick icon Unlimited access to Packt's library of 7,000+ practical books and videos
Feature tick icon Constantly refreshed with 50+ new titles a month
Feature tick icon Exclusive Early access to books as they're written
Feature tick icon Solve problems while you work with advanced search and reference features
Feature tick icon Offline reading on the mobile app
Feature tick icon Choose a DRM-free eBook or Video every month to keep
Feature tick icon PLUS own as many other DRM-free eBooks or Videos as you like for just €5 each
Feature tick icon Exclusive print discounts

Frequently bought together


Stars icon
Total 142.97
Python: End-to-end Data Analysis
€67.99
Python for Finance
€41.99
Python Machine Learning, Second Edition
€32.99
Total 142.97 Stars icon

Table of Contents

16 Chapters
1. Python Basics Chevron down icon Chevron up icon
2. Introduction to Python Modules Chevron down icon Chevron up icon
3. Time Value of Money Chevron down icon Chevron up icon
4. Sources of Data Chevron down icon Chevron up icon
5. Bond and Stock Valuation Chevron down icon Chevron up icon
6. Capital Asset Pricing Model Chevron down icon Chevron up icon
7. Multifactor Models and Performance Measures Chevron down icon Chevron up icon
8. Time-Series Analysis Chevron down icon Chevron up icon
9. Portfolio Theory Chevron down icon Chevron up icon
10. Options and Futures Chevron down icon Chevron up icon
11. Value at Risk Chevron down icon Chevron up icon
12. Monte Carlo Simulation Chevron down icon Chevron up icon
13. Credit Risk Analysis Chevron down icon Chevron up icon
14. Exotic Options Chevron down icon Chevron up icon
15. Volatility, Implied Volatility, ARCH, and GARCH Chevron down icon Chevron up icon
Index Chevron down icon Chevron up icon

Customer reviews

Most Recent
Rating distribution
Full star icon Full star icon Full star icon Half star icon Empty star icon 3.5
(33 Ratings)
5 star 39.4%
4 star 15.2%
3 star 15.2%
2 star 15.2%
1 star 15.2%
Filter icon Filter
Most Recent

Filter reviews by




N/A Feb 07, 2024
Full star icon Full star icon Full star icon Full star icon Full star icon 5
Excellent ! Can be a good textbook.
Feefo Verified review Feefo
vikas Dec 19, 2020
Full star icon Empty star icon Empty star icon Empty star icon Empty star icon 1
In the year 2020 mostly all commands have been moved here and there requires a lot of input and output is mostly useless. It has mostly plotting returns, which can be seen easily on any app, codes for CAPM do not work, buy anything else than this book.
Amazon Verified review Amazon
Ana Isabel Bezerra Cavalcanti Oct 15, 2020
Full star icon Full star icon Full star icon Full star icon Full star icon 5
Atendeu às minhas expectativas, em termos de pesquisas atuais e futuras.
Amazon Verified review Amazon
Flat World Feb 10, 2020
Full star icon Full star icon Full star icon Full star icon Full star icon 5
Step by step in a clear way. Finance topic is appealing to me.
Amazon Verified review Amazon
Giampiero Frischi Feb 05, 2020
Full star icon Full star icon Full star icon Empty star icon Empty star icon 3
it is very un profesional to sell a book , and the programs are either aut of date or they just dont run... fix all the bugs and update for free for everybodythat a book is published and the program samples have herrors and dont run ....
Amazon Verified review Amazon
Get free access to Packt library with over 7500+ books and video courses for 7 days!
Start Free Trial

FAQs

What is the delivery time and cost of print book? Chevron down icon Chevron up icon

Shipping Details

USA:

'

Economy: Delivery to most addresses in the US within 10-15 business days

Premium: Trackable Delivery to most addresses in the US within 3-8 business days

UK:

Economy: Delivery to most addresses in the U.K. within 7-9 business days.
Shipments are not trackable

Premium: Trackable delivery to most addresses in the U.K. within 3-4 business days!
Add one extra business day for deliveries to Northern Ireland and Scottish Highlands and islands

EU:

Premium: Trackable delivery to most EU destinations within 4-9 business days.

Australia:

Economy: Can deliver to P. O. Boxes and private residences.
Trackable service with delivery to addresses in Australia only.
Delivery time ranges from 7-9 business days for VIC and 8-10 business days for Interstate metro
Delivery time is up to 15 business days for remote areas of WA, NT & QLD.

Premium: Delivery to addresses in Australia only
Trackable delivery to most P. O. Boxes and private residences in Australia within 4-5 days based on the distance to a destination following dispatch.

India:

Premium: Delivery to most Indian addresses within 5-6 business days

Rest of the World:

Premium: Countries in the American continent: Trackable delivery to most countries within 4-7 business days

Asia:

Premium: Delivery to most Asian addresses within 5-9 business days

Disclaimer:
All orders received before 5 PM U.K time would start printing from the next business day. So the estimated delivery times start from the next day as well. Orders received after 5 PM U.K time (in our internal systems) on a business day or anytime on the weekend will begin printing the second to next business day. For example, an order placed at 11 AM today will begin printing tomorrow, whereas an order placed at 9 PM tonight will begin printing the day after tomorrow.


Unfortunately, due to several restrictions, we are unable to ship to the following countries:

  1. Afghanistan
  2. American Samoa
  3. Belarus
  4. Brunei Darussalam
  5. Central African Republic
  6. The Democratic Republic of Congo
  7. Eritrea
  8. Guinea-bissau
  9. Iran
  10. Lebanon
  11. Libiya Arab Jamahriya
  12. Somalia
  13. Sudan
  14. Russian Federation
  15. Syrian Arab Republic
  16. Ukraine
  17. Venezuela
What is custom duty/charge? Chevron down icon Chevron up icon

Customs duty are charges levied on goods when they cross international borders. It is a tax that is imposed on imported goods. These duties are charged by special authorities and bodies created by local governments and are meant to protect local industries, economies, and businesses.

Do I have to pay customs charges for the print book order? Chevron down icon Chevron up icon

The orders shipped to the countries that are listed under EU27 will not bear custom charges. They are paid by Packt as part of the order.

List of EU27 countries: www.gov.uk/eu-eea:

A custom duty or localized taxes may be applicable on the shipment and would be charged by the recipient country outside of the EU27 which should be paid by the customer and these duties are not included in the shipping charges been charged on the order.

How do I know my custom duty charges? Chevron down icon Chevron up icon

The amount of duty payable varies greatly depending on the imported goods, the country of origin and several other factors like the total invoice amount or dimensions like weight, and other such criteria applicable in your country.

For example:

  • If you live in Mexico, and the declared value of your ordered items is over $ 50, for you to receive a package, you will have to pay additional import tax of 19% which will be $ 9.50 to the courier service.
  • Whereas if you live in Turkey, and the declared value of your ordered items is over € 22, for you to receive a package, you will have to pay additional import tax of 18% which will be € 3.96 to the courier service.
How can I cancel my order? Chevron down icon Chevron up icon

Cancellation Policy for Published Printed Books:

You can cancel any order within 1 hour of placing the order. Simply contact customercare@packt.com with your order details or payment transaction id. If your order has already started the shipment process, we will do our best to stop it. However, if it is already on the way to you then when you receive it, you can contact us at customercare@packt.com using the returns and refund process.

Please understand that Packt Publishing cannot provide refunds or cancel any order except for the cases described in our Return Policy (i.e. Packt Publishing agrees to replace your printed book because it arrives damaged or material defect in book), Packt Publishing will not accept returns.

What is your returns and refunds policy? Chevron down icon Chevron up icon

Return Policy:

We want you to be happy with your purchase from Packtpub.com. We will not hassle you with returning print books to us. If the print book you receive from us is incorrect, damaged, doesn't work or is unacceptably late, please contact Customer Relations Team on customercare@packt.com with the order number and issue details as explained below:

  1. If you ordered (eBook, Video or Print Book) incorrectly or accidentally, please contact Customer Relations Team on customercare@packt.com within one hour of placing the order and we will replace/refund you the item cost.
  2. Sadly, if your eBook or Video file is faulty or a fault occurs during the eBook or Video being made available to you, i.e. during download then you should contact Customer Relations Team within 14 days of purchase on customercare@packt.com who will be able to resolve this issue for you.
  3. You will have a choice of replacement or refund of the problem items.(damaged, defective or incorrect)
  4. Once Customer Care Team confirms that you will be refunded, you should receive the refund within 10 to 12 working days.
  5. If you are only requesting a refund of one book from a multiple order, then we will refund you the appropriate single item.
  6. Where the items were shipped under a free shipping offer, there will be no shipping costs to refund.

On the off chance your printed book arrives damaged, with book material defect, contact our Customer Relation Team on customercare@packt.com within 14 days of receipt of the book with appropriate evidence of damage and we will work with you to secure a replacement copy, if necessary. Please note that each printed book you order from us is individually made by Packt's professional book-printing partner which is on a print-on-demand basis.

What tax is charged? Chevron down icon Chevron up icon

Currently, no tax is charged on the purchase of any print book (subject to change based on the laws and regulations). A localized VAT fee is charged only to our European and UK customers on eBooks, Video and subscriptions that they buy. GST is charged to Indian customers for eBooks and video purchases.

What payment methods can I use? Chevron down icon Chevron up icon

You can pay with the following card types:

  1. Visa Debit
  2. Visa Credit
  3. MasterCard
  4. PayPal
What is the delivery time and cost of print books? Chevron down icon Chevron up icon

Shipping Details

USA:

'

Economy: Delivery to most addresses in the US within 10-15 business days

Premium: Trackable Delivery to most addresses in the US within 3-8 business days

UK:

Economy: Delivery to most addresses in the U.K. within 7-9 business days.
Shipments are not trackable

Premium: Trackable delivery to most addresses in the U.K. within 3-4 business days!
Add one extra business day for deliveries to Northern Ireland and Scottish Highlands and islands

EU:

Premium: Trackable delivery to most EU destinations within 4-9 business days.

Australia:

Economy: Can deliver to P. O. Boxes and private residences.
Trackable service with delivery to addresses in Australia only.
Delivery time ranges from 7-9 business days for VIC and 8-10 business days for Interstate metro
Delivery time is up to 15 business days for remote areas of WA, NT & QLD.

Premium: Delivery to addresses in Australia only
Trackable delivery to most P. O. Boxes and private residences in Australia within 4-5 days based on the distance to a destination following dispatch.

India:

Premium: Delivery to most Indian addresses within 5-6 business days

Rest of the World:

Premium: Countries in the American continent: Trackable delivery to most countries within 4-7 business days

Asia:

Premium: Delivery to most Asian addresses within 5-9 business days

Disclaimer:
All orders received before 5 PM U.K time would start printing from the next business day. So the estimated delivery times start from the next day as well. Orders received after 5 PM U.K time (in our internal systems) on a business day or anytime on the weekend will begin printing the second to next business day. For example, an order placed at 11 AM today will begin printing tomorrow, whereas an order placed at 9 PM tonight will begin printing the day after tomorrow.


Unfortunately, due to several restrictions, we are unable to ship to the following countries:

  1. Afghanistan
  2. American Samoa
  3. Belarus
  4. Brunei Darussalam
  5. Central African Republic
  6. The Democratic Republic of Congo
  7. Eritrea
  8. Guinea-bissau
  9. Iran
  10. Lebanon
  11. Libiya Arab Jamahriya
  12. Somalia
  13. Sudan
  14. Russian Federation
  15. Syrian Arab Republic
  16. Ukraine
  17. Venezuela