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A Python Primer for Matlab Users

Why would you want to use Python over Matlab?

Let me qualify that a bit. Matlab is a very useful programming environment for numerical problems. For a very particular set of problems, Matlab is an awesome tool. For many other problems however, it is just about unusable. For example, you would not write a complex GUI program in Matlab, you would not write your blogging engine in Matlab and you would not write a web service in Matlab. You can do all that and more in Python.

Python as a Matlab replacement

The biggest strength of Matlab is its matrix engine. Most of the data you work with in Matlab are matrices and there is a host of functions available to manipulate and visualize those matrices. Python, by itself, does not have a convenient matrix engine. However, there are three packages (think Matlab Toolboxes) out there that will add this capability to Python:

  • Numpy (the matrix engine)
  • Scipy (matrix manipulation)
  • Matplotlib (plotting)

You can either grab the individual installers for Python, Numpy, Scipy and Matplotlib from their respective websites, or get them pre-packaged from pythonxy() or EPD.

A 30,000 foot overview

Like Matlab, Python is interpreted, that is, there is no need for a compiler and code can be executed at any time as long as Python is installed on the machine. Also, code can be copied from one machine to another and will run without change.

Like Matlab, Python is dynamically typed, that is, every variable can hold data of any type, as in:

# Python
a = 5         # a number
a = [1, 2, 3] # a list
a = 'text'    # a string

Contrast this with C, where you can not assign different data types to the same variable:

// C
int a = 5;
float b[3] = {1.0, 2.0, 3.0};
char c[] = "text";

Unlike Matlab, Python is strongly typed, that is, you can not add a number to a string. In Matlab, adding a single number to a string will convert that string into an array of numbers, then add the single number to each of the numbers in the array. Python will simply throw an error.

% Matlab
a = 'text'
b = a + 5 % [121 106 125 121]
# Python
a = 'text'
b = a + 5 # TypeError: Can't convert 'int' object to str implicitly

Unlike Matlab, every Python file can contain as many functions as you like. Basically, you can organize your code in as many files as you want. To access functions from other files, use import filename.

Unlike Matlab, Python is very quick to start. In fact, most operating systems automatically start a new Python process whenever you run a Python program and quit that process once the program has finished. Thus, every Python program behaves as if it indeed were an independent program. There is no need to wait for that big Matlab mother ship to start before writing or executing code.

Unlike Matlab, the source code of Python is readily available. Every detail of Python's inner workings is available to everyone. It is thus feasible and encouraged to actively participate in the development of Python itself or some add-on package. Furthermore, there is no dependence on some company deciding where to go next with Python.

Reading Python

When you start up Python, it is a rather empty environment. In order to do anything useful, you first have to import some functionality into your workspace. Thus, you will see a few lines of import statements at the top of every Python file. Moreover, Python has namespaces, so if you import numpy, you will have to prefix every feature of Numpy with its name, like this:

import numpy
a = numpy.zeros(10, 1)

This is clearly cumbersome if you are planning to use Numpy all the time. So instead, you can import all of Numpy into the global environment like this:

from numpy import *
a = ones(30, 1)

Better yet, there is a pre-packaged namespace that contains the whole Numpy-Scipy-Matplotlib stack in one piece:

from pylab import *
a = randn(100, 1)
plot(a)
show()

Note that Python does not plot immediately when you type plot(). Instead, it will collect all plotting information and only show it on the screen once you type show().

So far, the code you have seen should look pretty familiar. A few differences:

  • No semicolons at the end of lines; In order to print stuff to the console, use the print() function instead.
  • No end anywhere. In Python, blocks of code are identified by indentation and they always start with a colon like so:
sum = 0
for n in [1, 2, 3, 4, 5]:
    sum = sum + n
print(sum)
  • Function definitions are different. They use the def keyword instead of function. You don't have to name the output variable names in the definition and instead use return().
# Python
def abs(number):
    if number > 0:
        return number
    else:
        return -number
% Matlab
function [out] = abs(number)
    if number > 0
        out = number
    else
        out = -number
    end
end
  • There is no easy way to write out a list or matrix. Since Python only gains a matrix engine by importing Numpy, it does not have a convenient way of writing arrays or matrices. This sounds more inconvenient than it actually is, since you are probably using mostly functions like zeros() or randn() anyway and those work just fine. Also, many places accept Python lists (like this [1, 2, 3]) instead of Numpy arrays, so this rarely is a problem. Note that you must use commas to separate items and can not use semicolons to separate lines.
# create a numpy matrix:
m = array([[1, 2, 3],
           [4, 5, 6],
           [7, 8, 9]])
# create a Python list:
l = [1 2 3]
  • Arrays access uses brackets and is numbered from 0. Thus, ranges exclude the last number (see below). Mostly, this just means that array access does not need any +1 or -1 when indexing arrays anymore.
a = linspace(1, 10, 10)
one = a[0]
two = a[1]

# "6:8" is a range of two elements:
a[6:8] = [70, 80] # <-- a Python list!

Common traps

  • Array slicing does not copy.
a = array([1 2 3 4 5])
b = a[1:4] # [2 3 4]
b[1] = rand() # this will change a and b!
# make a copy like this:
c = array(a[1:4], copy=True) # copy=True can be omitted
c[1] = rand() # changes only c
  • Arrays retain their data type. You can slice them, you can dice them, you can do math on them, but a 16 bit integer array will never lose its data type. Use new = array(old, dtype=double) to convert an array of any data type to the default double type (like in Matlab).
# pretend this came from a wave file:
a = array([1000, 2000, 3000, 4000, 5000], dtype=int16)
a = a * 10 # int16 only goes to 32768!
# a is now [10000, 20000, 30000, -25536, -15536]

Going further

Now you should be able to read Python code reasonably well. Numpy, Scipy and Matplotlib are actually modeled after Matlab in many ways, so many functions will have a very similar name and functionality. A lot of the numerical code you write in Python will look very similar to the equivalent code in Matlab. For a more in-depth comparison of Matlab and Python syntax, head over to the Numpy documentation for Matlab users.

However, since Python is a general purpose programming language, it offers some more tools. To begin with, there are a few more data types like associative arrays, tuples (unchangeable lists), proper strings and a full-featured object system. Then, there is a plethora of add-on packages, most of which actually come with your standard installation of Python. For example, there are internet protocols, GUI programming frameworks, real-time audio interfaces, web frameworks and game development libraries. Even this very blog is created using a Python static site generator.

Lastly, Python has a great online documentation site including a tutorial, there are many books on Python and there is a helpful Wiki on Python. There is also a tutorial and documentation for Numpy, Scipy and Matplotlib.

A great way to get to know any programming language is to solve the first few problems on project euler.

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