Python Wikibooks
Python Wikibooks
Python Wikibooks
org/wiki/Python_Programming/Print_version
Table of contents
Introduction
Overview
Getting Python
Interactive mode
Python concepts
Basic syntax
Data types
Numbers
Strings
Lists
Tuples
Dictionaries
Sets
Operators
Control Flow
Functions
Scoping
Exceptions
Input and output
Modules
Classes
MetaClasses
Files (I/O)
Databases
Extracting info from web pages
Threading
Extending with C
Extending with C++
WSGI web programming
References
Authors
Authors
License
Overview
Python is a high-level, structured, open-source programming language that can be used for a wide variety of
programming tasks. Python was created by Guido Van Rossum in the early 1990s, its following has grown
steadily and interest is increased markedly in the last few years or so. It is named after Monty Python's
Flying Circus comedy program.
Python is used extensively for system administration (many vital components of Linux Distributions are
written in it), also its a great language to teach programming to novice. NASA has used Python for its
software systems and has adopted it as the standard scripting language for its Integrated Planning System.
Python is also extensively used by Google to implement many components of its Web Crawler and Search
Engine & Yahoo! for managing its discussion groups.
Python within itself is an interpreted programming language that is automatically compiled into bytecode
before execution (the bytecode is then normally saved to disk, just as automatically, so that compilation need
not happen again until and unless the source gets changed). It is also a dynamically typed language that
includes (but does not require one to use) object oriented features and constructs.
The most unusual aspect of Python is that whitespace is significant; instead of block delimiters (braces →
"{}" in the C family of languages), indentation is used to indicate where blocks begin and end.
For example, the following Python code can be interactively typed at an interpreter prompt, display the
famous "Hello World!" on the user screen:
Another great Python feature is its availability for all Platforms. Python can run on Microsoft Windows,
Macintosh & all Linux distributions with ease. This makes the programs very portable, as any program
written for one Platform can easily be used at another.
Python provides a powerful assortment of built-in types (e.g., lists, dictionaries and strings), a number of
built-in functions, and a few constructs, mostly statements. For example, loop constructs that can iterate over
items in a collection instead of being limited to a simple range of integer values. Python also comes with a
powerful standard library, which includes hundreds of modules to provide routines for a wide variety of
services including regular expressions and TCP/IP sessions.
Python 2 vs Python 3: Several years ago, the Python developers made the decision to come up with
a major new version of Python. Initially called “Python 3000”, this became the 3.x series of versions
of Python. What was radical about this was that the new version is backward-incompatible with
Python 2.x: certain old features (like the handling of Unicode strings) were deemed to be too
unwieldy or broken to be worth carrying forward. Instead, new, cleaner ways of achieving the same
things were added.
Getting Python
In order to program in Python you need the Python interpreter. If it is not already installed or if the version
you are using is obsolete, you will need to obtain and install Python using the methods below:
Python 2 vs Python 3
In 2008, a new version of Python (version 3) was published that was not entirely backward compatible.
Developers were asked to switch to the new version as soon as possible but many of the common external
modules are not yet (as of Aug 2010) available for Python 3. There is a program called 2to3 to convert the
source code of a Python 2 program to the source code of a Python 3 program. Consider this fact before you
start working with Python.
In order to run Python from the command line, you will need to have the python directory in your PATH.
Alternatively, you could use an Integrated Development Environment (IDE) for Python like DrPython[1]
(http://drpython.sourceforge.net/), eric[2] (http://www.die-offenbachs.de/eric/index.html), PyScripter[3]
(http://mmm-experts.com/Products.aspx?ProductID=4), or Python's own IDLE (which ships with every
version of Python since 2.3).
The PATH variable can be modified from the Window's System control panel. To add the PATH in Windows
7:
1. Go to Start.
If you prefer having a temporary environment, you can create a new command prompt short-cut that
automatically executes the following statement:
PATH %PATH%;c:\python27
If you downloaded a different version (such as Python 3.1), change the "27" for the version of Python you
have (27 is 2.7.x, the current version of Python 2.)
Cygwin
By default, the Cygwin installer for Windows does not include Python in the downloads. However, it can be
selected from the list of packages.
Gentoo GNU/Linux
Gentoo is an example of a distribution that installs Python by default - the package system Portage depends
on Python.
Ubuntu GNU/Linux
Users of Ubuntu will notice that Python comes installed by default, only it sometimes is not the latest
version. If you would like to update it, click here (http://appnr.com/install/python).
Arch GNU/Linux
Arch does not install python by default, but is easily available for installation through the package manager
to pacman. As root (or using sudo if you've installed and configured it), type:
This will be update package databases and install python. Other versions can be built from source from the
Arch User Repository.
Some platforms do not have a version of Python installed, and do not have pre-compiled binaries. In these
cases, you will need to download the source code from the official site (http://www.python.org/download/).
Once the download is complete, you will need to unpack the compressed archive into a folder.
To build Python, simply run the configure script (requires the Bash shell) and compile using make.
Other Distributions
Python, which is also referred to as CPython, is written in the C Programming language. The C source code
is generally portable, that means CPython can run on various platforms. More precisely, CPython can be
made available on all platforms that provide a compiler to translate the C source code to binary code for that
platform.
Apart from CPython there are also other implementations that run on top of a virtual machine. For example,
on Java's JRE (Java Runtime Environment) or Microsoft's .NET CLR (Common Language Runtime). Both
can access and use the libraries available on their platform. Specifically, they make use of reflection
(http://en.wikipedia.org/wiki/Reflection_(computer_programming)) that allows complete inspection and use
of all classes and objects for their very technology.
CPython ships with IDLE; however, IDLE is not considered user-friendly.[1] For Linux, KDevelop and
Spyder are popular. For Windows, PyScripter is free, quick to install, and comes included with
PortablePython (http://www.portablepython.com/).
There are several commercial IDEs such as Komodo, BlackAdder, Code Crusader, Code Forge, and
PyCharm. However, for beginners learning to program, purchasing a commercial IDE is unnecessary.
Keeping Up to Date
Python has a very active community and the language itself is evolving continuously. Make sure to check
python.org (http://www.python.org) for recent releases and relevant tools. The website is an invaluable asset.
Public Python-related mailing lists are hosted at mail.python.org (http://mail.python.org). Two examples of
such mailing lists are the Python-announce-list to keep up with newly released third party-modules or
software for Python and the general discussion list Python-list. These lists are mirrored to the Usenet
newsgroups comp.lang.python.announce & comp.lang.python.
Notes
1. The Things I Hate About IDLE That I Wish Someone Would Fix (http://inventwithpython.com
/blog/2011/11/29/the-things-i-hate-about-idle-that-i-wish-someone-would-fix/) .
Interactive mode
Python has two basic modes: normal and interactive. The normal mode is the mode where the scripted and
finished .py files are run in the Python interpreter. Interactive mode is a command line shell which gives
immediate feedback for each statement, while running previously fed statements in active memory. As new
lines are fed into the interpreter, the fed program is evaluated both in part and in whole.
To start interactive mode, simply type "python" without any arguments. This is a good way to play around
and try variations on syntax. Python should print something like this:
$ python
Python 3.0b3 (r30b3:66303, Sep 8 2008, 14:01:02) [MSC v.1500 32 bit (Intel)] on win32
Type "help", "copyright", "credits" or "license" for more information.
>>>
(If Python doesn't run, make sure your path is set correctly. See Getting Python.)
The >>> is Python's way of telling you that you are in interactive mode. In interactive mode what you type is
immediately run. Try typing 1+1 in. Python will respond with 2. Interactive mode allows you to test out and
see what Python will do. If you ever feel the need to play with new Python statements, go into interactive
mode and try them out.
>>> 5
5
>>> print (5*7)
35
>>> "hello" * 4
'hellohellohellohello'
>>> "hello".__class__
<type 'str'>
However, you need to be careful in the interactive environment to avoid confusion. For example, the
following is a valid Python script:
if 1:
print("True")
print("Done")
If you try to enter this as written in the interactive environment, you might be surprised by the result:
>>> if 1:
... print("True")
... print("Done")
File "<stdin>", line 3
print("Done")
^
SyntaxError: invalid syntax
What the interpreter is saying is that the indentation of the second print was unexpected. You should have
entered a blank line to end the first (i.e., "if") statement, before you started writing the next print statement.
For example, you should have entered the statements as though they were written:
if 1:
print("True")
print("Done")
>>> if 1:
... print("True")
...
True
>>> print("Done")
Done
>>>
Interactive mode
Instead of Python exiting when the program is finished, you can use the -i flag to start an interactive session.
This can be very useful for debugging and prototyping.
python -i hello.py
Python programs are nothing more than text files, and they may be edited with a standard text editor
program.[1] What text editor you use will probably depend on your operating system: any text editor can
create Python programs. However, it is easier to use a text editor that includes Python syntax highlighting.
Hello, World!
The first program that beginning programmers usually write is the "w:Hello, World!" program. This
program simply outputs the phrase "Hello, World!" then terminates itself. Let's write "Hello, World!" in
Python!
Open up your text editor and create a new file called hello.py containing just this line (you can copy-paste
if you want):
print('Hello, world!')
This program uses the print function, which simply outputs its parameters to the terminal. By default,
print appends a newline character to its output, which simply moves the cursor to the next line.
Now that you've written your first program, let's run it in Python! This process differs slightly depending on
your operating system.
Windows
Create a folder on your computer to use for your Python programs, such as C:\pythonpractice, and
save your hello.py program in that folder.
In the Start menu, select "Run...", and type in cmd. This will cause the Windows terminal to open.
Type cd \pythonpractice to change directory to your pythonpractice folder, and hit Enter.
Type hello.py to run your program!
If it didn't work, make sure your PATH contains the python directory. See Getting Python.
Mac
Create a folder on your computer to use for your Python programs. A good suggestion would be to
name it pythonpractice and place it in your Home folder (the one that contains folders for
Documents, Movies, Music, Pictures, etc). Save your hello.py program into this folder.
Open the Applications folder, go into the Utilities folder, and open the Terminal program.
Type cd pythonpractice to change directory to your pythonpractice folder, and hit Enter.
Type python ./hello.py to run your program!
Linux
Create a folder on your computer to use for your Python programs, such as ~/pythonpractice, and
save your hello.py program in that folder..
Open up the terminal program. In KDE, open the main menu and select "Run Command..." to open
Konsole. In GNOME, open the main menu, open the Applications folder, open the Accessories folder,
and select Terminal.
Type cd ~/pythonpractice to change directory to your pythonpractice folder, and hit Enter.
Type python ./hello.py to run your program!
Linux (advanced)
Create a folder on your computer to use for your Python programs, such as ~/pythonpractice.
Open up your favorite text editor and create a new file called hello.py containing just the following 2
lines (you can copy-paste if you want):[2]
#! /usr/bin/python
print('Hello, world!')
Note that this mainly should be done for complete, compiled programs, if you have a script that you made
and use frequently, then it might be a good idea to put it somewhere in your home directory and put a link to
it in /usr/bin. If you want a playground, a good idea is to invoke mkdir ~/.local/bin and then put scripts
in there. To make ~/.local/bin content executable the same way /usr/bin does type $PATH =
$PATH:~/local/bin (you can add this line into you're shell rc file for exemple ~/.bashrc)
Result
Hello, world!
Exercises
1. Modify the hello.py program to say hello to someone from your family or your friends (or to Ada
Lovelace).
2. Change the program so that after the greeting, it asks, "How did you get here?".
3. Re-write the original program to use two print statements: one for "Hello" and one for "world". The
program should still only print out on one line.
Solutions
Notes
1. Sometimes, Python programs are distributed in compiled form. We won't have to worry about that for
quite a while.
2. A Quick Introduction to Unix/My First Shell Script explains what a hash bang line does.
Basic syntax
There are five fundamental concepts in Python.
Case Sensitivity
All variables are case-sensitive. Python treats 'number' and 'Number' as separate, unrelated entities.
Because whitespace is significant, remember that spaces and tabs don't mix, so use only one or the other
when indenting your programs. A common error is to mix them. While they may look the same in editor, the
interpreter will read them differently and it will result in either an error or unexpected behavior. Most decent
text editors can be configured to let tab key emit spaces instead.
Python's Style Guideline described that the preferred way is using 4 spaces.
Tips: If you invoked python from the command-line, you can give -t or -tt argument to python to make
python issue a warning or error on inconsistent tab usage.
This will issue an error if you have mixed spaces and tabs.
Objects
In Python, like all object oriented languages, there are aggregations of code and data called Objects, which
typically represent the pieces in a conceptual model of a system.
Objects in Python are created (i.e., instantiated) from templates called Classes (which are covered later, as
much of the language can be used without understanding classes). They have "attributes", which represent
the various pieces of code and data which comprise the object. To access attributes, one writes the name of
the object followed by a period (henceforth called a dot), followed by the name of the attribute.
An example is the 'upper' attribute of strings, which refers to the code that returns a copy of the string in
which all the letters are uppercase. To get to this, it is necessary to have a way to refer to the object (in the
following example, the way is the literal string that constructs the object).
'bob'.upper
Code attributes are called "methods". So in this example, upper is a method of 'bob' (as it is of all strings).
To execute the code in a method, use a matched pair of parentheses surrounding a comma separated list of
whatever arguments the method accepts (upper doesn't accept any arguments). So to find an uppercase
version of the string 'bob', one could use the following:
'bob'.upper()
Scope
In a large system, it is important that one piece of code does not affect another in difficult to predict ways.
One of the simplest ways to further this goal is to prevent one programmer's choice of names from
preventing another from choosing that name. Because of this, the concept of scope was invented. A scope is
a "region" of code in which a name can be used and outside of which the name cannot be easily accessed.
There are two ways of delimiting regions in Python: with functions or with modules. They each have
different ways of accessing the useful data that was produced within the scope from outside the scope. With
functions, that way is to return the data. The way to access names from other modules lead us to another
concept.
Namespaces
It would be possible to teach Python without the concept of namespaces because they are so similar to
attributes, which we have already mentioned, but the concept of namespaces is one that transcends any
particular programming language, and so it is important to teach. To begin with, there is a built-in function
dir() that can be used to help one understand the concept of namespaces. When you first start the Python
interpreter (i.e., in interactive mode), you can list the objects in the current (or default) namespace using this
function.
Python 2.3.4 (#53, Oct 18 2004, 20:35:07) [MSC v.1200 32 bit (Intel)] on win32
Type "help", "copyright", "credits" or "license" for more information.
>>> dir()
['__builtins__', '__doc__', '__name__']
This function can also be used to show the names available within a module namespace. To demonstrate
this, first we can use the type() function to show what __builtins__ is:
>>> type(__builtins__)
<type 'module'>
Since it is a module, we can list the names within the __builtins__ namespace, again using the dir()
function (note the complete list of names has been abbreviated):
>>> dir(__builtins__)
['ArithmeticError', ... 'copyright', 'credits', ... 'help', ... 'license', ... 'zip']
>>>
Namespaces are a simple concept. A namespace is a place in which a name resides. Each name within a
namespace is distinct from names outside of the namespace. This layering of namespaces is called scope. A
name is placed within a namespace when that name is given a value. For example:
>>> dir()
['__builtins__', '__doc__', '__name__']
>>> name = "Bob"
>>> import math
>>> dir()
['__builtins__', '__doc__', '__name__', 'math', 'name']
Note that I was able to add the "name" variable to the namespace using a simple assignment statement. The
import statement was used to add the "math" name to the current namespace. To see what math is, we can
simply:
>>> math
<module 'math' (built-in)>
Since it is a module, it also has a namespace. To display the names within this namespace, we:
>>> dir(math)
['__doc__', '__name__', 'acos', 'asin', 'atan', 'atan2', 'ceil', 'cos', 'cosh', 'degrees', 'e',
'exp', 'fabs', 'floor', 'fmod', 'frexp', 'hypot', 'ldexp', 'log', 'log10', 'modf', 'pi', 'pow',
'radians', 'sin', 'sinh', 'sqrt', 'tan', 'tanh']
>>>
If you look closely, you will notice that both the default namespace, and the math module namespace have a
'__name__' object. The fact that each layer can contain an object with the same name is what scope is all
about. To access objects inside a namespace, simply use the name of the module, followed by a dot,
followed by the name of the object. This allow us to differentiate between the __name__ object within the
current namespace, and that of the object with the same name within the math module. For example:
Data types
Data types determine whether an object can do something, or whether it just would not make sense. Other
programming languages often determine whether an operation makes sense for an object by making sure the
object can never be stored somewhere where the operation will be performed on the object (this type system
is called static typing). Python does not do that. Instead it stores the type of an object with the object, and
checks when the operation is performed whether that operation makes sense for that object (this is called
dynamic typing).
Python's built-in (or standard) data types can be grouped into several classes. Sticking to the hierarchy
scheme used in the official Python documentation these are numeric types, sequences, sets and mappings
(and a few more not discussed further here). Some of the types are only available in certain versions of the
language as noted below.
boolean: the type of the built-in values True and False. Useful in conditional expressions, and
anywhere else you want to represent the truth or falsity of some condition. Mostly interchangeable
with the integers 1 and 0. In fact, conditional expressions will accept values of any type, treating
special ones like boolean False, integer 0 and the empty string "" as equivalent to False, and all
other values as equivalent to True. But for safety’s sake, it is best to only use boolean values in these
places.
Numeric types:
int: Integers; equivalent to C longs in Python 2.x, non-limited length in Python 3.x
long: Long integers of non-limited length; exists only in Python 2.x
float: Floating-Point numbers, equivalent to C doubles
complex: Complex Numbers
Sequences:
str: String; represented as a sequence of 8-bit characters in Python 2.x, but as a sequence of Unicode
characters (in the range of U+0000 - U+10FFFF) in Python 3.x
byte: a sequence of integers in the range of 0-255; only available in Python 3.x
byte array: like bytes, but mutable (see below); only available in Python 3.x
list
tuple
Sets:
set: an unordered collection of unique objects; available as a standard type since Python 2.6
frozen set: like set, but immutable (see below); available as a standard type since Python 2.6
Mappings:
dict: Python dictionaries, also called hashmaps or associative arrays, which means that an element of
the list is associated with a definition, rather like a Map in Java
In general, data types in Python can be distinguished based on whether objects of the type are mutable or
immutable. The content of objects of immutable types cannot be changed after they are created.
str
list
bytes
set
tuple
dict
frozen set
Only mutable objects support methods that change the object in place, such as reassignment of a sequence
slice, which will work for lists, but raise an error for tuples and strings.
It is important to understand that variables in Python are really just references to objects in memory. If you
assign an object to a variable as below
a = 1
s = 'abc'
l = ['a string', 456, ('a', 'tuple', 'inside', 'a', 'list')]
all you really do is make this variable (a, s, or l) point to the object (1, 'abc', ['a string', 456, ('a',
'tuple', 'inside', 'a', 'list')]), which is kept somewhere in memory, as a convenient way of
accessing it. If you reassign a variable as below
a = 7
s = 'xyz'
l = ['a simpler list', 99, 10]
you make the variable point to a different object (newly created ones in our examples). As stated above, only
mutable objects can be changed in place (l[0] = 1 is ok in our example, but s[0] = 'a' raises an error).
This becomes tricky, when an operation is not explicitly asking for a change to happen in place, as is the
case for the += (increment) operator, for example. When used on an immutable object (as in a += 1 or in s
+= 'qwertz'), Python will silently create a new object and make the variable point to it. However, when
used on a mutable object (as in l += [1,2,3]), the object pointed to by the variable will be changed in
place. While in most situations, you do not have to know about this different behavior, it is of relevance
when several variables are pointing to the same object. In our example, assume you set p = s and m = l,
then s += 'etc' and l += [9,8,7]. This will change s and leave p unaffected, but will change both m and
l since both point to the same list object. Python's built-in id() function, which returns a unique object
identifier for a given variable name, can be used to trace what is happening under the hood.
Typically, this behavior of Python causes confusion in functions. As an illustration, consider this code:
u=append_to_sequence(t)
m=append_to_sequence(l)
print('t = ', t)
print('u = ', u)
print('l = ', l)
print('m = ', m)
m = [1, 2, 3, 9, 9, 9]
myseq is a local variable of the append_to_sequence function, but when this function gets called, myseq will
nevertheless point to the same object as the variable that we pass in (t or l in our example). If that object is
immutable (like a tuple), there is no problem. The += operator will cause the creation of a new tuple, and
myseq will be set to point to it. However, if we pass in a reference to a mutable object, that object will be
manipulated in place (so myseq and l, in our case, end up pointing to the same list object).
Links:
Python 2.x: octals can be entered by prepending a 0 (0732 is octal 732, or 474 in decimal)
Python 3.x: octals can be entered by prepending a 0o or 0O (0o732 is octal 732, or 474 in
decimal)
Complex numbers are entered by adding a real number and an imaginary one, which is entered by appending
a j (i.e. 10+5j is a complex number. So is 10j). Note that j by itself does not constitute a number. If this is
desired, use 1j.
Strings can be either single or triple quoted strings. The difference is in the starting and ending delimiters,
and in that single quoted strings cannot span more than one line. Single quoted strings are entered by
entering either a single quote (') or a double quote (") followed by its match. So therefore
Triple quoted strings are like single quoted strings, but can span more than one line. Their starting and
ending delimiters must also match. They are entered with three consecutive single or double quotes, so
Also, the parenthesis can be left out when it's not ambiguous to do so:
Note that one-element tuples can be entered by surrounding the entry with parentheses and adding a comma
like so:
['abc', 1,2,3]
Dicts are created by surrounding with curly braces a list of key/value pairs separated from each other by a
colon and from the other entries with commas:
Any of these composite types can contain any other, to any depth:
Null object
The Python analogue of null pointer known from other programming languages is None. None is not a null
pointer or a null reference but an actual object of which there is only one instance. One of the uses of None
is in default argument values of functions, for which see Python
Programming/Functions#Default_Argument_Values. Comparisons to None are usually made using is rather
than ==.
if item is None:
...
another = None
Links:
Exercises
1. Write a program that instantiates a single object, adds [1,2] to the object, and returns the result.
1. Find an object that returns an output of the same length (if one exists?).
2. Find an object that returns an output length 2 greater than it started.
3. Find an object that causes an error.
2. Find two data types X and Y such that X = X + Y will cause an error, but X += Y will not.
Numbers
Python 2.x supports 4 numeric types - int, long, float and complex. Of these, the long type has been dropped
in Python 3.x - the int type is now of unlimited length by default. You don’t have to specify what type of
variable you want; Python does that automatically.
Int: The basic integer type in python, equivalent to the hardware 'c long' for the platform you are using
in Python 2.x, unlimited in length in Python 3.x.
Long: Integer type with unlimited length. In python 2.2 and later, Ints are automatically turned into
long ints when they overflow. Dropped since Python 3.0, use int type instead.
Float: This is a binary floating point number. Longs and Ints are automatically converted to floats
when a float is used in an expression, and with the true-division / operator.
Complex: This is a complex number consisting of two floats. Complex literals are written as a + bj
where a and b are floating-point numbers denoting the real and imaginary parts respectively.
In general, the number types are automatically 'up cast' in this order:
Int → Long → Float → Complex. The farther to the right you go, the higher the precedence.
>>> x = 5
>>> type(x)
<type 'int'>
>>> x = 187687654564658970978909869576453
>>> type(x)
<type 'long'>
>>> x = 1.34763
>>> type(x)
<type 'float'>
>>> x = 5 + 2j
>>> type(x)
<type 'complex'>
The result of divisions is somewhat confusing. In Python 2.x, using the / operator on two integers will return
another integer, using floor division. For example, 5/2 will give you 2. You have to specify one of the
operands as a float to get true division, e.g. 5/2. or 5./2 (the dot specifies you want to work with float) will
yield 2.5. Starting with Python 2.2 this behavior can be changed to true division by the future division
statement from __future__ import division. In Python 3.x, the result of using the / operator is always
true division (you can ask for floor division explicitly by using the // operator since Python 2.2).
>>> 5/2
2
>>> 5/2.
2.5
>>> 5./2
2.5
>>> from __future__ import division
>>> 5/2
2.5
>>> 5//2
2
Strings
String operations
Equality
Two strings are equal if they have exactly the same contents, meaning that they are both the same length and
each character has a one-to-one positional correspondence. Many other languages compare strings by
identity instead; that is, two strings are considered equal only if they occupy the same space in memory.
Python uses the is operator to test the identity of strings and any two objects in general.
Examples:
Numerical
There are two quasi-numerical operations which can be done on strings -- addition and multiplication. String
addition is just another name for concatenation. String multiplication is repetitive addition, or concatenation.
So:
>>> c = 'a'
>>> c + 'b'
'ab'
>>> c * 5
'aaaaa'
Containment
There is a simple operator 'in' that returns True if the first operand is contained in the second. This also
works on substrings
>>> x = 'hello'
>>> y = 'ell'
>>> x in y
False
>>> y in x
True
Note that 'print x in y' would have also returned the same value.
Much like arrays in other languages, the individual characters in a string can be accessed by an integer
representing its position in the string. The first character in string s would be s[0] and the nth character
would be at s[n-1].
>>> s = "Xanadu"
>>> s[1]
'a'
Unlike arrays in other languages, Python also indexes the arrays backwards, using negative numbers. The
last character has index -1, the second to last character has index -2, and so on.
>>> s[-4]
'n'
We can also use "slices" to access a substring of s. s[a:b] will give us a string starting with s[a] and ending
with s[b-1].
>>> s[1:4]
'ana'
>>> print s
>>> s[0] = 'J'
Traceback (most recent call last):
File "<stdin>", line 1, in ?
TypeError: object does not support item assignment
>>> s[1:3] = "up"
Traceback (most recent call last):
File "<stdin>", line 1, in ?
TypeError: object does not support slice assignment
>>> print s
Xanadu
Xanadu
Another feature of slices is that if the beginning or end is left empty, it will default to the first or last index,
depending on context:
>>> s[2:]
'nadu'
>>> s[:3]
'Xan'
>>> s[:]
'Xanadu'
To understand slices, it's easiest not to count the elements themselves. It is a bit like counting not on your
fingers, but in the spaces between them. The list is indexed like this:
Element: 1 2 3 4
Index: 0 1 2 3 4
-4 -3 -2 -1
So, when we ask for the [1:3] slice, that means we start at index 1, and end at index 3, and take everything in
between them. If you are used to indexes in C or Java, this can be a bit disconcerting until you get used to it.
String constants
String constants can be found in the standard string module such as; either single or double quotes may be
used to delimit string constants.
String methods
There are a number of methods or built-in string functions:
capitalize
center
count
decode
encode
endswith
expandtabs
find
index
isalnum
isalpha
isdigit
islower
isspace
istitle
isupper
join
ljust
lower
lstrip
replace
rfind
rindex
rjust
rstrip
split
splitlines
startswith
strip
swapcase
title
translate
upper
zfill
is*
isalnum(), isalpha(), isdigit(), islower(), isupper(), isspace(), and istitle() fit into this category.
The length of the string object being compared must be at least 1, or the is* methods will return False. In
other words, a string object of len(string) == 0, is considered "empty", or False.
isalnum returns True if the string is entirely composed of alphabetic and/or numeric characters (i.e. no
punctuation).
isalpha and isdigit work similarly for alphabetic characters or numeric characters only.
isspace returns True if the string is composed entirely of whitespace.
islower, isupper, and istitle return True if the string is in lowercase, uppercase, or titlecase
respectively. Uncased characters are "allowed", such as digits, but there must be at least one cased
character in the string object in order to return True. Titlecase means the first cased character of each
word is uppercase, and any immediately following cased characters are lowercase. Curiously,
'Y2K'.istitle() returns True. That is because uppercase characters can only follow uncased characters.
Likewise, lowercase characters can only follow uppercase or lowercase characters. Hint: whitespace is
uncased.
Example:
>>> '2YK'.istitle()
False
>>> 'Y2K'.istitle()
True
>>> '2Y K'.istitle()
True
Returns the string converted to title case, upper case, lower case, inverts case, or capitalizes, respectively.
The title method capitalizes the first letter of each word in the string (and makes the rest lower case). Words
are identified as substrings of alphabetic characters that are separated by non-alphabetic characters, such as
digits, or whitespace. This can lead to some unexpected behavior. For example, the string "x1x" will be
converted to "X1X" instead of "X1x".
The swapcase method makes all uppercase letters lowercase and vice versa.
The capitalize method is like title except that it considers the entire string to be a word. (i.e. it makes the
first character upper case and the rest lower case)
Example:
s = 'Hello, wOrLD'
print s # 'Hello, wOrLD'
print s.title() # 'Hello, World'
print s.swapcase() # 'hELLO, WoRld'
print s.upper() # 'HELLO, WORLD'
print s.lower() # 'hello, world'
print s.capitalize() # 'Hello, world'
count
Hint: .count() is case-sensitive, so this example will only count the number of lowercase letter 'o's. For
example, if you ran:
Returns a copy of the string with the leading (lstrip) and trailing (rstrip) whitespace removed. strip removes
both.
import string
s = 'www.wikibooks.org'
print s
print s.strip('w') # Removes all w's from outside
print s.strip(string.lowercase) # Removes all lowercase letters from outside
print s.strip(string.printable) # Removes all printable characters
Outputs:
www.wikibooks.org
.wikibooks.org
.wikibooks.
left, right or center justifies a string into a given field size (the rest is padded with spaces).
>>> s = 'foo'
>>> s
'foo'
>>> s.ljust(7)
'foo '
>>> s.rjust(7)
' foo'
>>> s.center(7)
' foo '
join
map may be helpful here: (it converts numbers in seq into strings)
The find and index methods return the index of the first found occurrence of the given subsequence. If it is
not found, find returns -1 but index raises a ValueError. rfind and rindex are the same as find and index
except that they search through the string from right to left (i.e. they find the last occurrence)
Because Python strings accept negative subscripts, index is probably better used in situations like the one
shown because using find instead would yield an unintended value.
replace
Replace works just like it sounds. It returns a copy of the string with all occurrences of the first parameter
replaced with the second parameter.
Outputs:
Hello, world
HellX, wXrld
Notice, the original variable (string) remains unchanged after the call to replace.
expandtabs
Replaces tabs with the appropriate number of spaces (default number of spaces per tab = 8; this can be
changed by passing the tab size as an argument).
s = 'abcdefg\tabc\ta'
print s
print len(s)
t = s.expandtabs()
print t
print len(t)
Outputs:
abcdefg abc a
13
abcdefg abc a
17
Notice how (although these both look the same) the second string (t) has a different length because each tab
is represented by spaces not tab characters.
v = s.expandtabs(4)
print v
print len(v)
Outputs:
abcdefg abc a
13
Please note each tab is not always counted as eight spaces. Rather a tab "pushes" the count to the next
multiple of eight. For example:
s = '\t\t'
print s.expandtabs().replace(' ', '*')
print len(s.expandtabs())
Output:
****************
16
s = 'abc\tabc\tabc'
print s.expandtabs().replace(' ', '*')
print len(s.expandtabs())
Outputs:
abc*****abc*****abc
19
split, splitlines
The split method returns a list of the words in the string. It can take a separator argument to use instead of
whitespace.
Note that in neither case is the separator included in the split strings, but empty strings are allowed.
The splitlines method breaks a multiline string into many single line strings. It is analogous to split('\n') (but
accepts '\r' and '\r\n' as delimiters as well) except that if the string ends in a newline character, splitlines
ignores that final character (see example).
>>> s = """
... One line
... Two lines
... Red lines
... Blue lines
... Green lines
... """
>>> s.split('\n')
['', 'One line', 'Two lines', 'Red lines', 'Blue lines', 'Green lines', '']
>>> s.splitlines()
['', 'One line', 'Two lines', 'Red lines', 'Blue lines', 'Green lines']
Exercises
1. Write a program that takes a string, (1) capitalizes the first letter, (2) creates a list containing each
word, and (3) searches for the last occurrence of "a" in the first word.
2. Run the program on the string "Bananas are yellow."
3. Write a program that replaces all instances of "one" with "one (1)". For this exercise capitalization
does not matter, so it should treat "one", "One", and "oNE" identically.
4. Run the program on the string "One banana was brown, but one was green."
External links
"String Methods" chapter (http://docs.python.org/2/library/stdtypes.html?highlight=rstrip#string-
methods) -- python.org
Python documentation of "string" module (http://docs.python.org/2/library/string.html) -- python.org
Lists
A list in Python is an ordered group of items (or elements). It is a very general structure, and list elements
don't have to be of the same type: you can put numbers, letters, strings and nested lists all on the same list.
Overview
Lists in Python at a glance:
List creation
There are two different ways to make a list in Python. The first is through assignment ("statically"), the
second is using list comprehensions ("actively").
Plain creation
To make a static list of items, write them between square brackets. For example:
[ 1,2,3,"This is a list",'c',Donkey("kong") ]
Observations:
1. The list contains items of different data types: integer, string, and Donkey class.
2. Objects can be created 'on the fly' and added to lists. The last item is a new instance of Donkey class.
Creation of a new list whose members are constructed from non-literal expressions:
a = 2
b = 3
myList = [a+b, b+a, len(["a","b"])]
List comprehensions
Using list comprehension, you describe the process using which the list should be created. To do that, the list
is broken into two pieces. The first is a picture of what each element will look like, and the second is what
you do to get it.
listOfWords = ["this","is","a","list","of","words"]
To take the first letter of each word and make a list out of it using list comprehension, we can do this:
List comprehension supports more than one for statement. It will evaluate the items in all of the objects
sequentially and will loop over the shorter objects if one object is longer than the rest.
List comprehension supports an if statement, to only include members into the list that fulfill a certain
condition:
In version 2.x, Python's list comprehension does not define a scope. Any variables that are bound in an
evaluation remain bound to whatever they were last bound to when the evaluation was completed. In version
3.x Python's list comprehension uses local variables:
This is exactly the same as if the comprehension had been expanded into an explicitly-nested group of one
or more 'for' statements and 0 or more 'if' statements.
You can initialize a list to a size, with an initial value for each element:
>>> zeros=[0]*5
>>> print zeros
[0, 0, 0, 0, 0]
>>> foos=['foo']*3
>>> print foos
['foo', 'foo', 'foo']
But there is a caveat. When building a new list by multiplying, Python copies each item by reference. This
poses a problem for mutable items, for instance in a multidimensional array where each element is itself a
list. You'd guess that the easy way to generate a two dimensional array would be:
listoflists=[ [0]*4 ] *5
What's happening here is that Python is using the same reference to the inner list as the elements of the outer
list. Another way of looking at this issue is to examine how Python sees the above definition:
>>> innerlist=[0]*4
>>> listoflists=[innerlist]*5
>>> print listoflists
[[0, 0, 0, 0], [0, 0, 0, 0], [0, 0, 0, 0], [0, 0, 0, 0], [0, 0, 0, 0]]
>>> innerlist[2]=1
>>> print listoflists
[[0, 0, 1, 0], [0, 0, 1, 0], [0, 0, 1, 0], [0, 0, 1, 0], [0, 0, 1, 0]]
Assuming the above effect is not what you intend, one way around this issue is to use list comprehensions:
List Attributes
To find the length of a list use the built in len() method.
>>> len([1,2,3])
3
>>> a = [1,2,3,4]
>>> len( a )
4
Combining lists
Lists can be combined in several ways. The easiest is just to 'add' them. For instance:
Another way to combine lists is with extend. If you need to combine lists inside of a lambda, extend is the
way to go.
>>> a = [1,2,3]
>>> b = [4,5,6]
>>> a.extend(b)
>>> print a
[1, 2, 3, 4, 5, 6]
The other way to append a value to a list is to use append. For example:
>>> p=[1,2]
>>> p.append([3,4])
>>> p
[1, 2, [3, 4]]
>>> # or
>>> print p
[1, 2, [3, 4]]
However, [3,4] is an element of the list, and not part of the list. append always adds one element only to the
end of a list. So if the intention was to concatenate two lists, always use extend.
Much like the slice of a string is a substring, the slice of a list is a list. However, lists differ from strings in
that we can assign new values to the items in a list.
>>> list[1] = 17
>>> list
[2, 17, 'usurp', 9.0,'n']
We can even assign new values to slices of the lists, which don't even have to be the same length
It's even possible to append things onto the end of lists by assigning to an empty slice:
With slicing you can create copy of list because slice returns a new list:
but this is shallow copy and contains references to elements from original list, so be careful with mutable
types:
>>> list_copy[2].append('something')
>>> original
[1, 'element', ['something']]
Non-Continuous slices
It is also possible to get non-continuous parts of an array. If one wanted to get every n-th occurrence of a list,
one would use the :: operator. The syntax is a:b:n where a and b are the start and end of the slice to be
operated upon.
[0, 1, 2, 3, 4, 5, 6, 7, 8, 9]
>>> list[::2]
[0, 2, 4, 6, 8]
>>> list[1:7:2]
[1, 3, 5]
Comparing lists
Lists can be compared for equality.
Lists can be compared using a less-than operator, which uses lexicographical order:
Sorting lists
Sorting lists is easy with a sort method.
Note that the list is sorted in place, and the sort() method returns None to emphasize this side effect.
If you use Python 2.4 or higher there are some more sort parameters:
sort(cmp,key,reverse)
cmp : method to be used for sorting key : function to be executed with key element. List is sorted by
return-value of the function reverse : sort(reverse=True) or sort(reverse=False)
Note that unlike the sort() method, sorted(list) does not sort the list in place, but instead returns the sorted
list. The sorted() function, like the sort() method also accepts the reverse parameter.
Iteration
Iteration over lists:
Read-only iteration over a list, AKA for each element of the list:
list1 = [1, 2, 3, 4]
for item in list1:
print item
list1 = [1, 2, 3, 4]
for i in range(0, len(list1)):
list1[i]+=1 # Modify the item at an index as you see fit
print list
Removing
Removing aka deleting an item at an index (see also #pop(i)):
list = [1, 2, 3, 4]
list.pop() # Remove the last item
list.pop(0) # Remove the first item , which is the item at index 0
print list
list = [1, 2, 3, 4]
del list[1] # Remove the 2nd element; an alternative to list.pop(1)
print list
Keeping only items in a list satisfying a condition, and thus removing the items that do not satisfy it:
list = [1, 2, 3, 4]
newlist = [item for item in list if item >2]
print newlist
Aggregates
There are some built-in functions for arithmetic aggregates over lists. These include minimum, maximum,
and sum:
list = [1, 2, 3, 4]
print max(list), min(list), sum(list)
average = sum(list) / float(len(list)) # Provided the list is non-empty
# The float above ensures the division is a float one rather than integer one.
print average
The max and min functions also apply to lists of strings, returning maximum and minimum with respect to
alphabetical order:
Copying
Copying AKA cloning of lists:
# By contrast
list1 = [1, 'element']
list2 = list1
list2[0] = 2 # Modifies the original list
print list1[0] # Displays 2
The above does not make a deep copy, which has the following consequence:
list1 = [1, [2, 3]] # Notice the second item being a nested list
list2 = list1[:] # A shallow copy
list2[1][0] = 4 # Modifies the 2nd item of list1 as well
print list1[1][0] # Displays 4 rather than 2
import copy
list1 = [1, [2, 3]] # Notice the second item being a nested list
list2 = copy.deepcopy(list1) # A deep copy
list2[1][0] = 4 # Leaves the 2nd item of list1 unmodified
print list1[1][0] # Displays 2
Links:
Clearing
Clearing a list:
Clearing using a proper approach makes a difference when the list is passed as an argument:
def workingClear(ilist):
del ilist[:]
def brokenClear(ilist):
ilist = [] # Lets ilist point to a new list, losing the reference to the argument list
list1=[1, 2]; workingClear(list1); print list1
list1=[1, 2]; brokenClear(list1); print list1
Keywords: emptying a list, erasing a list, clear a list, empty a list, erase a list.
List methods
append(x)
See pop(i)
pop(i)
Remove the item in the list at the index i and return it. If i is not given, remove the the last item in the list
and return it.
operators
in
The operator 'in' is used for two purposes; either to iterate over every item in a list in a for loop, or to check
if a value is in a list returning true or false.
Subclassing
In a modern version of Python [which one?], there is a class called 'list'. You can make your own subclass of
it, and determine list behaviour which is different from the default standard.
Exercises
1. Use a list comprehension to construct the list ['ab', 'ac', 'ad', 'bb', 'bc', 'bd'].
2. Use a slice on the above list to construct the list ['ab', 'ad', 'bc'].
3. Use a list comprehension to construct the list ['1a', '2a', '3a', '4a'].
4. Simultaneously remove the element '2a' from the above list and print it.
5. Copy the above list and add '2a' back into the list such that the original is still missing it.
6. Use a list comprehension to construct the list ['abe', 'abf', 'ace', 'acf', 'ade', 'adf', 'bbe', 'bbf', 'bce', 'bcf',
'bde', 'bdf']
External links
Python documentation, chapter "Sequence Types" (http://docs.python.org/2/library
/stdtypes.html?highlight=rstrip#sequence-types-str-unicode-list-tuple-bytearray-buffer-xrange) --
python.org
Python Tutorial, chapter "Lists" (http://docs.python.org/2/tutorial/introduction.html#lists) --
python.org
}}
Dictionaries
A dictionary in Python is a collection of unordered values accessed by key rather than by index. The keys
have to be hashable: integers, floating point numbers, strings, tuples, and frozensets are hashable, while lists,
dictionaries, and sets other than frozensets are not. Dictionaries were available as early as in Python 1.4.
Overview
Dictionaries in Python at a glance:
Dictionary notation
Dictionaries may be created directly or converted from sequences. Dictionaries are enclosed in curly braces,
{}
Operations on Dictionaries
The operations on dictionaries are somewhat unique. Slicing is not supported, since the items have no
intrinsic order.
Exercises
Write a program that:
1. Asks the user for a string, then creates the following dictionary. The values are the letters in the string,
with the corresponding key being the place in the string.
2. Replaces the entry whose key is the integer 3, with the value "Pie".
3. Asks the user for a string of digits, then prints out the values corresponding to those digits.
External links
Python documentation, chapter "Dictionaries" (http://docs.python.org/2/tutorial
/datastructures.html#dictionaries) -- python.org
Python documentation, The Python Standard Library, 5.8. Mapping Types (http://docs.python.org
/2/library/stdtypes.html#typesmapping) -- python.org
Sets
Starting with version 2.3, Python comes with an implementation of the mathematical set. Initially this
implementation had to be imported from the standard module set, but with Python 2.6 the types set and
frozenset became built-in types. A set is an unordered collection of objects, unlike sequence objects such as
lists and tuples, in which each element is indexed. Sets cannot have duplicate members - a given object
appears in a set 0 or 1 times. All members of a set have to be hashable, just like dictionary keys. Integers,
floating point numbers, tuples, and strings are hashable; dictionaries, lists, and other sets (except frozensets)
are not.
Overview
Constructing Sets
One way to construct sets is by passing any sequential object to the "set" constructor.
We can also add elements to sets one by one, using the "add" function.
Note that since a set does not contain duplicate elements, if we add one of the members of s to s again, the
add function will have no effect. This same behavior occurs in the "update" function, which adds a group of
elements to a set.
Note that you can give any type of sequential structure, or even another set, to the update function,
regardless of what structure was used to initialize the set.
The set function also provides a copy constructor. However, remember that the copy constructor will copy
the set, but not the individual elements.
>>> s2 = s.copy()
>>> s2
set([32, 9, 12, 14, 54, 26])
Membership Testing
We can check if an object is in the set using the same "in" operator as with sequential data types.
>>> 32 in s
True
>>> 6 in s
False
>>> 6 not in s
True
We can also test the membership of entire sets. Given two sets and , we check if is a subset or a
superset of .
Note that "issubset" and "issuperset" can also accept sequential data types as arguments
Note that the <= and >= operators also express the issubset and issuperset functions respectively.
Like lists, tuples, and string, we can use the "len" function to find the number of items in a set.
Removing Items
There are three functions which remove individual items from a set, called pop, remove, and discard. The
first, pop, simply removes an item from the set. Note that there is no defined behavior as to which element it
chooses to remove.
>>> s = set([1,2,3,4,5,6])
>>> s.pop()
1
>>> s
set([2,3,4,5,6])
>>> s.remove(3)
>>> s
set([2,4,5,6])
>>> s.remove(9)
Traceback (most recent call last):
File "<stdin>", line 1, in ?
KeyError: 9
If you wish to avoid this error, use "discard." It has the same functionality as remove, but will simply do
nothing if the element isn't in the set
We also have another operation for removing elements from a set, clear, which simply removes all elements
from the set.
>>> s.clear()
>>> s
set([])
We can also have a loop move over each of the items in a set. However, since sets are unordered, it is
undefined which order the iteration will follow.
>>> s = set("blerg")
>>> for n in s:
... print n,
...
r b e l g
Set Operations
Python allows us to perform all the standard mathematical set operations, using members of set. Note that
each of these set operations has several forms. One of these forms, s1.function(s2) will return another set
which is created by "function" applied to and . The other form, s1.function_update(s2), will change
to be the set created by "function" of and . Finally, some functions have equivalent special operators.
For example, s1 & s2 is equivalent to s1.intersection(s2)
Intersection
Union
The union is the merger of two sets. Any element in or will appear in their union.
Symmetric Difference
The symmetric difference of two sets is the set of elements which are in one of either set, but not in both.
Set Difference
Python can also find the set difference of and , which is the elements that are in but not in .
Multiple sets
Starting with Python 2.6, "union", "intersection", and "difference" can work with multiple input by using the
set constructor. For example, using "set.intersection()":
frozenset
A frozenset is basically the same as a set, except that it is immutable - once it is created, its members cannot
be changed. Since they are immutable, they are also hashable, which means that frozensets can be used as
members in other sets and as dictionary keys. frozensets have the same functions as normal sets, except none
of the functions that change the contents (update, remove, pop, etc.) are available.
Exercises
Reference
Operators
Basics
Python math works like you would expect.
>>> x = 2
>>> y = 3
>>> z = 5
>>> x * y
6
>>> x + y
5
>>> x * y + z
11
>>> (x + y) * z
25
Powers
There is a built in exponentiation operator **, which can take either integers, floating point or complex
numbers. This occupies its proper place in the order of operations.
>>> 2**8
256
"/" does "true division" for floats and complex numbers; for example, 5.0/2.0 is 2.5.
For Python 3.x, "/" does "true division" for all types.[1][2]
Dividing by or into a floating point number (there are no fractional types in Python) will cause Python to use
true division. To coerce an integer to become a float, 'float()' with the integer as a parameter
>>> x = 5
>>> float(x)
5.0
This can be generalized for other numeric types: int(), complex(), long().
Beware that due to the limitations of floating point arithmetic, rounding errors can cause unexpected results.
For example:
Modulo
The modulus (remainder of the division of the two operands, rather than the quotient) can be found using
the % operator, or by the divmod builtin function. The divmod function returns a tuple containing the
quotient and remainder.
>>> 10%7
3
Negation
Unlike some other languages, variables can be negated directly:
>>> x = 5
>>> -x
-5
Comparison
Numbers, strings and other types can be compared for equality/inequality and ordering:
>>> 2 == 3
False
>>> 3 == 3
True
>>> 2 < 3
True
>>> "a" < "aa"
True
Identity
The operators is and is not test for object identity: x is y is true if and only if x and y are references to
the same object in memory. x is not y yields the inverse truth value. Note that an identity test is more
stringent than an equality test since two distinct objects may have the same value.
For the built-in immutable data types (like int, str and tuple) Python uses caching mechanisms to improve
performance, i.e., the interpreter may decide to reuse an existing immutable object instead of generating a
new one with the same value. The details of object caching are subject to changes between different Python
versions and are not guaranteed to be system-independent, so identity checks on immutable objects like
'hello' is 'hello', (1,2,3) is (1,2,3), 4 is 2**2 may give different results on different machines.
Augmented Assignment
There is shorthand for assigning the output of an operation to one of the inputs:
>>> x = 2
>>> x # 2
2
>>> x *= 3
>>> x # 2 * 3
6
>>> x += 4
>>> x # 2 * 3 + 4
10
>>> x /= 5
>>> x # (2 * 3 + 4) / 5
2
>>> x **= 2
>>> x # ((2 * 3 + 4) / 5) ** 2
4
>>> x %= 3
>>> x # ((2 * 3 + 4) / 5) ** 2 % 3
1
Boolean
or:
if a or b:
do_this
else:
do_this
and:
if a and b:
do_this
else:
do_this
not:
if not a:
do_this
else:
do_this
The order of operations here is: "not" first, "and" second, "or" third. In particular, "True or True and False or
False" becomes "True or False or False" which is True.
Caution, Boolean operators are valid on things other than Booleans; for instance "1 and 6" will return 6.
Specifically, "and" returns either the first value considered to be false, or the last value if all are considered
true. "or" returns the first true value, or the last value if all are considered false.
Exercises
1. Use Python to calculate .
References
1. [http://www.python.org/doc/2.2.3/whatsnew/node7.html What's New in Python 2.2
2. PEP 238 -- Changing the Division Operator (http://www.python.org/dev/peps/pep-0238/)
Flow control
Python Programming/Flow control
Functions
Function Calls
A callable object is an object that can accept some arguments (also called parameters) and possibly return an
object (often a tuple containing multiple objects).
A function is the simplest callable object in Python, but there are others, such as classes or certain class
instances.
Defining Functions
...
>>> t = functionname(24,24) # Result: 48
If a function takes no arguments, it must still include the parentheses, but without anything in them:
def functionname():
statement1
statement2
...
The arguments in the function definition bind the arguments passed at function invocation (i.e. when the
function is called), which are called actual parameters, to the names given when the function is defined,
which are called formal parameters. The interior of the function has no knowledge of the names given to the
actual parameters; the names of the actual parameters may not even be accessible (they could be inside
another function).
def square(x):
return x*x
A function can define variables within the function body, which are considered 'local' to the function. The
locals together with the arguments comprise all the variables within the scope of the function. Any names
within the function are unbound when the function returns or reaches the end of the function body.
def first2items(list1):
return list1[0], list1[1]
a, b = first2items(["Hello", "world", "hi", "universe"])
print a + " " + b
Declaring Arguments
When calling a function that takes some values for further processing, we need to send some values as
Function Arguments. For example:
If any of the formal parameters in the function definition are declared with the format "arg = value," then
you will have the option of not specifying a value for those arguments when calling the function. If you do
not specify a value, then that parameter will have the default value given when the function executes.
>>> display_message("message")
mess
>>> display_message("message", 6)
messag
Links:
Python allows you to declare two special arguments which allow you to create arbitrary-length argument
lists. This means that each time you call the function, you can specify any number of arguments above a
certain number.
def function(first,second,*remaining):
statement1
statement2
...
When calling the above function, you must provide value for each of the first two arguments. However,
since the third parameter is marked with an asterisk, any actual parameters after the first two will be packed
into a tuple and bound to "remaining."
If we declare a formal parameter prefixed with two asterisks, then it will be bound to a dictionary containing
any keyword arguments in the actual parameters which do not correspond to any formal parameters. For
example, consider the function:
If we call this function with any keyword arguments other than max_length, they will be placed in the
dictionary "entries." If we include the keyword argument of max_length, it will be bound to the formal
parameter max_length, as usual.
Links:
Objects passed as arguments to functions are passed by reference; they are not being copied around. Thus,
passing a large list as an argument does not involve copying all its members to a new location in memory.
Note that even integers are objects. However, the distinction of by value and by reference present in some
other programming languages often serves to distinguish whether the passed arguments can be actually
changed by the called function and whether the calling function can see the changes.
Passed objects of mutable types such as lists and dictionaries can be changed by the called function and the
changes are visible to the calling function. Passed objects of immutable types such as integers and strings
cannot be changed by the called function; the calling function can be certain that the called function will not
change them. For mutability, see also Data Types chapter.
An example:
def tryToTouchAnInteger(iint):
iint += 1 # No outside effect; lets the local iint to point to a new int object,
# losing the reference to the int object passed as an argument
print "iint inside:",iint # 4 if iint was 3 on function entry
list1 = [1, 2]
appendItem(list1, 3)
print list1 # [1, 2, 3]
replaceItems(list1, [3, 4])
print list1 # [3, 4]
set1 = set([1, 2])
clearSet(set1 )
print set1 # set([])
int1 = 3
tryToTouchAnInteger(int1)
print int1 # 3
An argument cannot be declared to be constant, not to be changed by the called function. If an argument is
of an immutable type, it cannot be changed anyway, but if it is of a mutable type such as list, the calling
function is at the mercy of the called function. Thus, if the calling function wants to make sure a passed list
does not get changed, it has to pass a copy of the list.
An example:
def evilGetLength(ilist):
length = len(ilist)
del ilist[:] # Muhaha: clear the list
return length
list1 = [1, 2]
print evilGetLength(list1) # list1 gets cleared
print list1
list1 = [1, 2]
print evilGetLength(list1[:]) # Pass a copy of list1
print list1
Calling Functions
A function can be called by appending the arguments in parentheses to the function name, or an empty
matched set of parentheses if the function takes no arguments.
foo()
square(3)
bar(5, x)
x = foo()
y = bar(5,x)
As shown above, when calling a function you can specify the parameters by name and you can do so in any
order
display_message("message", end=3)
This above is valid and start will have the default value of 0. A restriction placed on this is after the first
named argument then all arguments after it must also be named. The following is not valid
Closures
A closure is a nested function with an after-return access to the data of the outer function, where the nested
function is returned by the outer function as a function object. Thus, even when the outer function has
finished its execution after being called, the closure function returned by it can refer to the values of the
variables that the outer function had when it defined the closure function.
An example:
Closures are possible in Python because functions are first-class objects. A function is merely an object of
type function. Being an object means it is possible to pass a function object (an uncalled function) around as
argument or as return value or to assign another name to the function object. A unique feature that makes
closure useful is that the enclosed function may use the names defined in the parent function's scope.
Lambda Expressions
A lambda is an anonymous (unnamed) function. It is used primarily to write very short functions that are a
hassle to define in the normal way. A function like this:
... return a + b
...
>>> add(4, 3)
7
Lambda is often used as an argument to other functions that expects a function object, such as sorted()'s 'key'
argument.
>>> sorted([[3, 4], [3, 5], [1, 2], [7, 3]], key=lambda x: x[1])
[[1, 2], [7, 3], [3, 4], [3, 5]]
The lambda form is often useful as a closure, such as illustrated in the following example:
Note that the lambda function can use the values of variables from the scope in which it was created (like
pre and post). This is the essence of closure.
Links:
Generator Functions
When discussing loops, you can across the concept of an iterator. This yields in turn each element of some
sequence, rather than the entire sequence at once, allowing you to deal with sequences much larger than
might be able to fit in memory at once.
You can create your own iterators, by defining what is known as a generator function. To illustrate the
usefulness of this, let us start by considering a simple function to return the concatenation of two lists:
def concat(a, b) :
return a + b
#end concat
def concat(a, b) :
for i in a :
yield i
#end for
for i in b :
yield i
#end b
#end concat
Notice the use of the yield statement, instead of return. We can now use this something like
and print out an awful lot of numbers, without using a lot of memory at all.
You can still pass a list or other sequence type wherever Python expects an iterator (like to an
argument of your concat function); this will still work, and makes it easy not to have to worry about
the difference where you don’t need to.
External Links
Scoping
Variables
Variables in Python are automatically declared by assignment. Variables are always references to objects,
and are never typed. Variables exist only in the current scope or global scope. When they go out of scope,
the variables are destroyed, but the objects to which they refer are not (unless the number of references to
the object drops to zero).
Scope is delineated by function and class blocks. Both functions and their scopes can be nested. So therefore
def foo():
def bar():
x = 5 # x is now in scope
return x + y # y is defined in the enclosing scope later
y = 10
return bar() # now that y is defined, bar's scope includes y
>>> foo()
15
>>> bar()
Traceback (most recent call last):
File "<pyshell#26>", line 1, in -toplevel-
bar()
NameError: name 'bar' is not defined
The name 'bar' is not found because a higher scope does not have access to the names lower in the hierarchy.
It is a common pitfall to fail to lookup an attribute (such as a method) of an object (such as a container)
referenced by a variable before the variable is assigned the object. In its most common form:
Here, to correct this problem, one must add y = [] before the for loop.
Exceptions
Python handles all errors with exceptions.
An exception is a signal that an error or other unusual condition has occurred. There are a number of built-in
exceptions, which indicate conditions like reading past the end of a file, or dividing by zero. You can also
define your own exceptions.
Raising exceptions
Whenever your program attempts to do something erroneous or meaningless, Python raises exception to
such conduct:
>>> 1 / 0
Traceback (most recent call last):
File "<stdin>", line 1, in ?
ZeroDivisionError: integer division or modulo by zero
This traceback indicates that the ZeroDivisionError exception is being raised. This is a built-in exception
-- see below for a list of all the other ones.
Catching exceptions
In order to handle errors, you can set up exception handling blocks in your code. The keywords try and
except are used to catch exceptions. When an error occurs within the try block, Python looks for a
matching except block to handle it. If there is one, execution jumps there.
try:
print 1/0
except ZeroDivisionError:
print "You can't divide by zero, you're silly."
If you don't specify an exception type on the except line, it will cheerfully catch all exceptions. This is
generally a bad idea in production code, since it means your program will blissfully ignore unexpected errors
as well as ones which the except block is actually prepared to handle.
def f(x):
return g(x) + 1
def g(x):
if x < 0: raise ValueError, "I can't cope with a negative number here."
else: return 5
try:
print f(-6)
except ValueError:
print "That value was invalid."
In this code, the print statement calls the function f. That function calls the function g, which will raise an
exception of type ValueError. Neither f nor g has a try/except block to handle ValueError. So the exception
raised propagates out to the main code, where there is an exception-handling block waiting for it. This code
prints:
Sometimes it is useful to find out exactly what went wrong, or to print the python error text yourself. For
example:
try:
the_file = open("the_parrot")
except IOError, (ErrorNumber, ErrorMessage):
if ErrorNumber == 2: # file not found
print "Sorry, 'the_parrot' has apparently joined the choir invisible."
else:
print "Congratulation! you have managed to trip a #%d error" % ErrorNumber
print ErrorMessage
Custom Exceptions
Code similar to that seen above can be used to create custom exceptions and pass information along with
them. This can be extremely useful when trying to debug complicated projects. Here is how that code would
look; first creating the custom exception class:
class CustomException(Exception):
def __init__(self, value):
self.parameter = value
def __str__(self):
return repr(self.parameter)
try:
raise CustomException("My Useful Error Message")
except CustomException, (instance):
print "Caught: " + instance.parameter
Exceptions could lead to a situation where, after raising an exception, the code block where the exception
occurred might not be revisited. In some cases this might leave external resources used by the program in an
unknown state.
finally clause allows programmers to close such resources in case of an exception. Between 2.4 and 2.5
version of python there is change of syntax for finally clause.
Python 2.4
try:
result = None
try:
result = x/y
except ZeroDivisionError:
print "division by zero!"
print "result is ", result
finally:
print "executing finally clause"
Python 2.5
try:
result = x / y
except ZeroDivisionError:
print "division by zero!"
else:
print "result is", result
finally:
print "executing finally clause"
Exceptions are good for more than just error handling. If you have a complicated piece of code to choose
which of several courses of action to take, it can be useful to use exceptions to jump out of the code as soon
as the decision can be made. The Python-based mailing list software Mailman does this in deciding how a
message should be handled. Using exceptions like this may seem like it's a sort of GOTO -- and indeed it is,
but a limited one called an escape continuation. Continuations are a powerful functional-programming tool
and it can be useful to learn them.
Just as a simple example of how exceptions make programming easier, say you want to add items to a list
but you don't want to use "if" statements to initialize the list we could replace this:
if hasattr(self, 'items'):
self.items.extend(new_items)
else:
self.items = list(new_items)
Using exceptions, we can emphasize the normal program flow—that usually we just extend the list—rather
than emphasizing the unusual case:
try:
self.items.extend(new_items)
except AttributeError:
self.items = list(new_items)
Python has two functions designed for accepting data directly from the user:
input()
raw_input()
There are also very simple ways of reading a file and, for stricter control over input, reading from stdin if
necessary.
raw_input()
raw_input() asks the user for a string of data (ended with a newline), and simply returns the string. It can
also take an argument, which is displayed as a prompt before the user enters the data. E.g.
prints out
Example: in order to assign the user's name, i.e. string data, to a variable "x" you would type
Once the user inputs his name, e.g. Simon, you can call it as x
prints out
input()
input() uses raw_input to read a string of data, and then attempts to evaluate it as if it were a Python
program, and then returns the value that results. So entering
[1,2,3]
would return a list containing those numbers, just as if it were assigned directly in the Python script.
which yields the correct answer in list form. Note that no inputted statement can span more than one line.
input() should not be used for anything but the most trivial program. Turning the strings returned from
raw_input() into python types using an idiom such as:
x = None
while not x:
try:
x = int(raw_input())
except ValueError:
print 'Invalid Number'
is preferable, as input() uses eval() to turn a literal into a python type. This will allow a malicious person to
run arbitrary code from inside your program trivially.
File Input
File Objects
Python includes a built-in file type. Files can be opened by using the file type's constructor:
f = file('test.txt', 'r')
This means f is open for reading. The first argument is the filename and the second parameter is the mode,
which can be 'r', 'w', or 'rw', among some others.
The most common way to read from a file is simply to iterate over the lines of the file:
f = open('test.txt', 'r')
for line in f:
print line[0]
f.close()
This will print the first character of each line. Note that a newline is attached to the end of each line read this
way.
print line
The advantage is, that the opened file will close itself after reading each line.
Because files are automatically closed when the file object goes out of scope, there is no real need to close
them explicitly. So, the loop in the previous code can also be written as:
c = f.read(1)
while len(c) > 0:
if len(c.strip()) > 0: print c,
c = f.read(1)
This will read the characters from f one at a time, and then print them if they're not whitespace.
A file object implicitly contains a marker to represent the current position. If the file marker should be
moved back to the beginning, one can either close the file object and reopen it or just move the marker back
to the beginning with:
f.seek(0)
Like many other languages, there are built-in file objects representing standard input, output, and error.
These are in the sys module and are called stdin, stdout, and stderr. There are also immutable copies of these
in __stdin__, __stdout__, and __stderr__. This is for IDLE and other tools in which the standard files have
been changed.
You must import the sys module to use the special stdin, stdout, stderr I/O handles.
import sys
For finer control over input, use sys.stdin.read(). In order to implement the UNIX 'cat' program in Python,
you could do something like this:
import sys
for line in sys.stdin:
print line,
Note that sys.stdin.read() will read from standard input till EOF. (which is usually Ctrl+D.)
Also important is the sys.argv array. sys.argv is an array that contains the command-line arguments passed to
the program.
This array can be indexed,and the arguments evaluated. In the above example, sys.argv[2] would contain the
string "there", because the name of the program ("program.py") is stored in argv[0]. For more complicated
Output
Note on Python version: The following uses the syntax of Python 2.x. Much of the following is not going to
work with Python 3.x. In particular, Python 3.x requires round brackets around arguments to "print".
To print multiple things on the same line separated by spaces, use commas between them, like this:
Hello, World
While neither string contained a space, a space was added by the print statement because of the comma
between the two objects. Arbitrary data types can be printed this way:
print 1,2,0xff,0777,(10+5j),-0.999,map,sys
1 2 255 511 (10+5j) -0.999 <built-in function map> <module 'sys' (built-in)>
Objects can be printed on the same line without needing to be on the same line if one puts a comma at the
end of a print statement:
for i in range(10):
print i,
0 1 2 3 4 5 6 7 8 9
To end the printed line with a newline, add a print statement without any objects.
for i in range(10):
print i,
print
for i in range(10,20):
print i,
0 1 2 3 4 5 6 7 8 9
10 11 12 13 14 15 16 17 18 19
If the bare print statement were not present, the above output would look like:
0 1 2 3 4 5 6 7 8 9 10 11 12 13 14 15 16 17 18 19
You can use similar syntax when writing to a file instead of to standard output, like this:
This will print to any object that implements write(), which includes file objects.
Omitting newlines
To avoid adding spaces and newlines between objects' output with subsequent print statements, you can do
one of the following:
Concatenation: Concatenate the string representations of each object, then later print the whole thing at
once.
print str(1)+str(2)+str(0xff)+str(0777)+str(10+5j)+str(-0.999)+str(map)+str(sys)
Write function: You can make a shorthand for sys.stdout.write and use that for output.
import sys
write = sys.stdout.write
write('20')
write('05\n')
2005
You may need sys.stdout.flush() to get that text on the screen quickly.
Examples
print "Hello"
print "Hello", "world"
Separates the two words with a space.
print "Hello", 34
Prints elements of various data types, separating them by a space.
print "Hello " + 34
Throws an error as a result of trying to concatenate a string and an integer.
File Output
file1 = open("TestFile.txt","w")
for i in range(1,10+1):
print >>file1, i
file1.close()
With "w", the file is opened for writing. With ">>file", print sends its output to a file rather than standard
output.
file1 = open("TestFile.txt","w")
for i in range(1,10+1):
if i>1:
file1.write("-")
file1.write(str(i))
file1.close()
file1 = open("TestFile.txt","a")
External Links
7. Input and Output (http://www.python.org/doc/current/tutorial/inputoutput.html) in The Python
Tutorial, python.org
6.6. The print statement (http://docs.python.org/2/reference/simple_stmts.html#print) in The Python
Language Reference, python.org
2. Built-in Functions #open (http://docs.python.org/2/library/functions.html#open) in The Python
Standard Library at Python Documentation, python.org
5. Built-in Types #file.write (http://docs.python.org/2/library/stdtypes.html?highlight=write#file.write)
in The Python Standard Library at Python Documentation, python.org
27.1. sys — System-specific parameters and functions (http://docs.python.org/2/library/sys.html) in
Python Documentation, python org -- mentions sys.stdout, and sys.stderr
2.3.8 File Objects (http://docs.python.org/release/2.3.5/lib/bltin-file-objects.html) in Python Library
Reference, python.org, for "flush"
5.6.2. String Formatting Operations (http://docs.python.org/2/library/stdtypes.html#string-formatting-
operations) in The Python Standard Library at Python Documentation, python.org -- for "%i", "%s"
and similar string formatting
7.2.2. The string format operator (http://infohost.nmt.edu/tcc/help/pubs/python25/web/str-
format.html), in Python 2.5 quick reference, nmt.edu, for "%i", "%s" and similar string formatting
Modules
Modules are a simple way to structure a program. Mostly, there are modules in the standard library and there
are other Python files, or directories containing Python files, in the current directory (each of which
constitute a module). You can also instruct Python to search other directories for modules by placing their
paths in the PYTHONPATH environment variable.
Importing a Module
Modules in Python are used by importing them. For example,
import math
This imports the math standard module. All of the functions in that module are namespaced by the module
name, i.e.
import math
print math.sqrt(10)
The first statement means whitespace is added to the current scope (but nothing else is). The second
statement means that all the elements in the math namespace is added to the current scope.
Python files
Shared Objects (under Unix and Linux) with the .so suffix
DLL's (under Windows) with the .pyd suffix
directories
Modules are loaded in the order they're found, which is controlled by sys.path. The current directory is
always on the path.
Directories should include a file in them called __init__.py, which should probably include the other files in
the directory.
Creating a Module
From a File
The easiest way to create a module by having a file called mymod.py either in a directory recognized by the
PYTHONPATH variable or (even easier) in the same directory where you are working. If you have the
following file mymod.py
class Object1:
def __init__(self):
self.name = 'object 1'
you can already import this "module" and create instances of the object Object1.
import mymod
myobject = mymod.Object1()
from mymod import *
myobject = Object1()
From a Directory
It is not feasible for larger projects to keep all classes in a single file. It is often easier to store all files in
directories and load all files with one command. Each directory needs to have a __init__.py file which
contains python commands that are executed upon loading the directory.
Suppose we have two more objects called Object2 and Object3 and we want to load all three objects with
one command. We then create a directory called mymod and we store three files called Object1.py,
Object2.py and Object3.py in it. These files would then contain one object per file but this not required
(although it adds clarity). We would then write the following __init__.py file:
The first three commands tell python what to do when somebody loads the module. The last statement
defining __all__ tells python what to do when somebody executes from mymod import *. Usually we want
to use parts of a module in other parts of a module, e.g. we want to use Object1 in Object2. We can do this
easily with an from . import * command as the following file Object2.py shows:
from . import *
class Object2:
def __init__(self):
self.name = 'object 2'
self.otherObject = Object1()
We can now start python and import mymod as we have in the previous section.
External links
Python Documentation (http://docs.python.org/tutorial/modules.html)
Classes
Classes are a way of aggregating similar data and functions. A class is basically a scope inside which
various code (especially function definitions) is executed, and the locals to this scope become attributes of
the class, and of any objects constructed by this class. An object constructed by a class is called an instance
of that class.
Defining a Class
class ClassName:
"Here is an explanation about your class"
pass
The capitalization in this class definition is the convention, but is not required by the language. It's usually
good to add at least a short explanation of what your class is supposed to do. The pass statement in the code
above is just to say to the python interpreter just go on and do nothing. You can remove it as soon as you are
adding your first statement.
Instance Construction
The class is a callable object that constructs an instance of the class when called. Let's say we create a class
Foo.
class Foo:
f = Foo()
Class Members
In order to access the member of an instance of a class, use the syntax <class instance>.<member>. It is also
possible to access the members of the class definition with <class name>.<member>.
Methods
A method is a function within a class. The first argument (methods must always take at least one argument)
is always the instance of the class on which the function is invoked. For example
If this code were executed, nothing would happen, at least until an instance of Foo were constructed, and
then bar were called on that instance.
Invoking Methods
Calling a method is much like calling a function, but instead of passing the instance as the first parameter
like the list of formal parameters suggests, use the function as an attribute of the instance.
>>> f = Foo()
>>> f.setx(5)
>>> f.bar()
It is possible to call the method on an arbitrary object, by using it as an attribute of the defining class instead
of an instance of that class, like so:
>>> Foo.setx(f,5)
>>> Foo.bar(f)
As shown by the method setx above, the members of a Python class can change during runtime, not just
their values, unlike classes in languages like C or Java. We can even delete f.x after running the code above.
Another effect of this is that we can change the definition of the Foo class during program execution. In the
code below, we create a member of the Foo class definition named y. If we then create a new instance of
Foo, it will now have this new member.
>>> Foo.y = 10
>>> g = Foo()
>>> g.y
10
>>> vars(g)
{}
At first, this output makes no sense. We just saw that g had the member y, so why isn't it in the member
dictionary? If you remember, though, we put y in the class definition, Foo, not g.
>>> vars(Foo)
{'y': 10, 'bar': <function bar at 0x4d6a3c>, '__module__': '__main__',
'setx': <function setx at 0x4d6a04>, '__doc__': None}
And there we have all the members of the Foo class definition. When Python checks for g.member, it first
checks g's vars dictionary for "member," then Foo. If we create a new member of g, it will be added to g's
dictionary, but not Foo's.
>>> g.setx(5)
>>> vars(g)
{'x': 5}
Note that if we now assign a value to g.y, we are not assigning that value to Foo.y. Foo.y will still be 10, but
g.y will now override Foo.y
>>> g.y = 9
>>> vars(g)
{'y': 9, 'x': 5}
>>> vars(Foo)
{'y': 10, 'bar': <function bar at 0x4d6a3c>, '__module__': '__main__',
'setx': <function setx at 0x4d6a04>, '__doc__': None}
>>> g.y
9
>>> Foo.y
10
Note that f.y will also be 10, as Python won't find 'y' in vars(f), so it will get the value of 'y' from vars(Foo).
Some may have also noticed that the methods in Foo appear in the class dictionary along with the x and y. If
you remember from the section on lambda functions, we can treat functions just like variables. This means
that we can assign methods to a class during runtime in the same way we assigned variables. If you do this,
though, remember that if we call a method of a class instance, the first parameter passed to the method will
always be the class instance itself.
We can also access the members dictionary of a class using the __dict__ member of the class.
>>> g.__dict__
{'y': 9, 'x': 5}
If we add, remove, or change key-value pairs from g.__dict__, this has the same effect as if we had made
those changes to the members of g.
>>> g.__dict__['z'] = -4
>>> g.z
-4
New style classes were introduced in python 2.2. A new-style class is a class that has a built-in as its base,
most commonly object. At a low level, a major difference between old and new classes is their type. Old
class instances were all of type instance. New style class instances will return the same thing as
x.__class__ for their type. This puts user defined classes on a level playing field with built-ins. Old/Classic
classes are slated to disappear in Python 3. With this in mind all development should use new style classes.
New Style classes also add constructs like properties and static methods familiar to Java programmers.
Old/Classic Class
Properties
>>> sp = SpamWithProperties()
>>> sp.egg
'MyEgg'
>>> sp.egg = "Eggs With Spam"
>>> sp.egg
'Eggs With Spam'
>>>
Static Methods
Static methods in Python are just like their counterparts in C++ or Java. Static methods have no "self"
argument and don't require you to instantiate the class before using them. They can be defined using
staticmethod()
>>> StaticSpam.NoSpam()
'You can\'t have have the spam, spam, eggs and spam without any spam... that\'s disgusting'
Inheritance
Like all object oriented languages, Python provides for inheritance. Inheritance is a simple concept by which
a class can extend the facilities of another class, or in Python's case, multiple other classes. Use the
following format for this:
class ClassName(superclass1,superclass2,superclass3,...):
...
The subclass will then have all the members of its superclasses. If a method is defined in the subclass and in
the superclass, the member in the subclass will override the one in the superclass. In order to use the method
defined in the superclass, it is necessary to call the method as an attribute on the defining class, as in
Foo.setx(f,5) above:
Once again, we can see what's going on under the hood by looking at the class dictionaries.
>>> vars(g)
{}
>>> vars(Bar)
{'y': 9, '__module__': '__main__', 'bar': <function bar at 0x4d6a04>,
'__doc__': None}
>>> vars(Foo)
{'x': 10, '__module__': '__main__', 'bar': <function bar at 0x4d6994>,
'__doc__': None}
When we call g.x, it first looks in the vars(g) dictionary, as usual. Also as above, it checks vars(Bar) next,
since g is an instance of Bar. However, thanks to inheritance, Python will check vars(Foo) if it doesn't find x
in vars(Bar).
Special Methods
There are a number of methods which have reserved names which are used for special purposes like
mimicking numerical or container operations, among other things. All of these names begin and end with
two underscores. It is convention that methods beginning with a single underscore are 'private' to the scope
they are introduced within.
__init__
One of these purposes is constructing an instance, and the special name for this is '__init__'. __init__() is
called before an instance is returned (it is not necessary to return the instance manually). As an example,
class A:
def __init__(self):
print 'A.__init__()'
a = A()
outputs
A.__init__()
__init__() can take arguments, in which case it is necessary to pass arguments to the class in order to create
an instance. For example,
class Foo:
def __init__ (self, printme):
print printme
foo = Foo('Hi!')
outputs
Hi!
Here is an example showing the difference between using __init__() and not using __init__():
class Foo:
def __init__ (self, x):
print x
foo = Foo('Hi!')
class Foo2:
def setx(self, x):
print x
f = Foo2()
Foo2.setx(f,'Hi!')
outputs
Hi!
Hi!
__del__
Similarly, '__del__' is called when an instance is destroyed; e.g. when it is no longer referenced.
Representation
outputs
apple
__repr__
This function is much like __str__(). If __str__ is not present but this one is,
this function's output is used instead for printing. __repr__ is used to return a
representation of the object in string form. In general, it can be executed to get
back the original object.
For example:
class Bar:
def __init__ (self, iamthis):
self.iamthis = iamthis
def __repr__(self):
return "Bar('%s')" % self.iamthis
bar = Bar('apple')
bar
outputs (note the difference: now is not necessary to put it inside a print)
Bar('apple')
Attributes
__getattr___
__delattr__
Operator Overloading
Operator overloading allows us to use the built-in Python syntax and operators to call functions which we
define.
Binary Operators
If a class has the __add__ function, we can use the '+' operator to add instances
of the class. This will call __add__ with the two instances of the class passed
as parameters, and the return value will be the result of the addition.
To override the augmented assignment operators, merely add 'i' in front of the
normal binary operator, i.e. for '+=' use '__iadd__' instead of '__add__'. The
function will be given one argument, which will be the object on the right side
of the augmented assignment operator. The returned value of the function will
then be assigned to the object on the left of the operator.
It is important to note that the augmented assignment operators will also use
the normal operator functions if the augmented operator function hasn't been
set directly. This will work as expected, with "__add__" being called for "+="
Unary Operators
Unary operators will be passed simply the instance of the class that they are Unary Operator
called on. Override Functions
Function Operator
>>> FakeNumber.__neg__ = lambda A : A.n + 6
>>> -d __pos__ +A
13
__neg__ -A
__inv__ ~A
__abs__ abs(A)
__len__ len(A)
Item Operators
It is also possible in Python to override the indexing and slicing operators. This Item Operator
allows us to use the class[i] and class[a:b] syntax on our own objects. Override Functions
Function Operator
The simplest form of item operator is __getitem__. This takes as a parameter
the instance of the class, then the value of the index. __getitem__ C[i]
__setitem__ C[i] = v
>>> class FakeList:
... def __getitem__(self,index): __delitem__ del C[i]
... return index * 2
... __getslice__ C[s:e]
>>> f = FakeList()
>>> f['a'] C[s:e] =
__setslice__
v
'aa'
We can do the same thing with slices. Once again, each syntax has a different
parameter list associated with it.
Keep in mind that one or both of the start and end parameters can be blank in
slice syntax. Here, Python has default value for both the start and the end, as
show below.
>> f[:]
'0 to 2147483647'
Note that the default value for the end of the slice shown here is simply the
largest possible signed integer on a 32-bit system, and may vary depending on
your system and C compiler.
Other Overrides
Programming Practices
The flexibility of python classes means that classes can adopt a varied set of behaviors. For the sake of
understandability, however, it's best to use many of Python's tools sparingly. Try to declare all methods in
the class definition, and always use the <class>.<member> syntax instead of __dict__ whenever possible.
Look at classes in C++ and Java to see what most programmers will expect from a class.
Encapsulation
Since all python members of a python class are accessible by functions/methods outside the class, there is no
way to enforce encapsulation short of overriding __getattr__, __setattr__ and __delattr__. General practice,
however, is for the creator of a class or module to simply trust that users will use only the intended interface
and avoid limiting access to the workings of the module for the sake of users who do need to access it. When
using parts of a class or module other than the intended interface, keep in mind that the those parts may
change in later versions of the module, and you may even cause errors or undefined behaviors in the
module.since encapsulation is private.
Doc Strings
When defining a class, it is convention to document the class using a string literal at the start of the class
definition. This string will then be placed in the __doc__ attribute of the class definition.
Docstrings are a very useful way to document your code. Even if you never write a single piece of separate
documentation (and let's admit it, doing so is the lowest priority for many coders), including informative
docstrings in your classes will go a long way toward making them usable.
Several tools exist for turning the docstrings in Python code into readable API documentation, e.g., EpyDoc
(http://epydoc.sourceforge.net/using.html).
Don't just stop at documenting the class definition, either. Each method in the class should have its own
docstring as well. Note that the docstring for the method explode in the example class Documented above
has a fairly lengthy docstring that spans several lines. Its formatting is in accordance with the style
suggestions of Python's creator, Guido van Rossum in PEP 8 (http://www.python.org/dev/peps/pep-0008/).
To a class
It is fairly easy to add methods to a class at runtime. Lets assume that we have a class called Spam and a
function cook. We want to be able to use the function cook on all instances of the class Spam:
class Spam:
def __init__(self):
self.myeggs = 5
def cook(self):
print "cooking %s eggs" % self.myeggs
cooking 5 eggs
To an instance of a class
It is a bit more tricky to add methods to an instance of a class that has already been created. Lets assume
again that we have a class called Spam and we have already created eggs. But then we notice that we wanted
to cook those eggs, but we do not want to create a new instance but rather use the already created one:
class Spam:
def __init__(self):
self.myeggs = 5
eggs = Spam()
def cook(self):
print "cooking %s eggs" % self.myeggs
import types
f = types.MethodType(cook, eggs, Spam)
eggs.cook = f
eggs.cook()
Now we can cook our eggs and the last statement will output:
cooking 5 eggs
Using a function
We can also write a function that will make the process of adding methods to an instance of a class easier.
All we now need to do is call the attach_method with the arguments of the function we want to attach, the
instance we want to attach it to and the class the instance is derived from. Thus our function call might look
like this:
Note that in the function add_method we cannot write instance.fxn = f since this would add a function
called fxn to the instance.
Metaclasses
In Python, classes are themselves objects. Just as other objects are instances of a particular class, classes
themselves are instances of a metaclass.
Python3
Class Factories
The simplest use of Python metaclasses is a class factory. This concept makes use of the fact that class
definitions in Python are first-class objects. Such a function can create or modify a class definition, using the
same syntax one would normally use in declaring a class definition. Once again, it is useful to use the model
of classes as dictionaries. First, let's look at a basic class factory:
Of course, just like any other data in Python, class definitions can also be modified. Any modifications to
attributes in a class definition will be seen in any instances of that definition, so long as that instance hasn't
overridden the attribute that you're modifying.
You can also delete class definitions, but that will not affect instances of the class.
The metaclass for all standard Python types is the "type" object.
>>> type(object)
<type 'type'>
>>> type(int)
<type 'type'>
>>> type(list)
<type 'type'>
Just like list, int and object, "type" is itself a normal Python object, and is itself an instance of a class. In this
>>> type(type)
<type 'type'>
It can be instantiated to create new class objects similarly to the class factory example above by passing the
name of the new class, the base classes to inherit from, and a dictionary defining the namespace to use.
Metaclasses
It is possible to create a class with a different metaclass than type by setting its __metaclass__ attribute when
defining. When this is done, the class, and its subclass will be created using your custom metaclass. For
example
class CustomMetaclass(type):
def __init__(cls, name, bases, dct):
print "Creating class %s using CustomMetaclass" % name
super(CustomMetaclass, cls).__init__(name, bases, dct)
class BaseClass(object):
__metaclass__ = CustomMetaclass
class Subclass1(BaseClass):
pass
By creating a custom metaclass in this way, it is possible to change how the class is constructed. This allows
you to add or remove attributes and methods, register creation of classes and subclasses creation and various
other manipulations when the class is created.
More resources
References
1. http://www.python.org/dev/peps/pep-3115/
2. http://eli.thegreenplace.net/2011/08/14/python-metaclasses-by-example/
Reflection
A Python script can find out about the type, class, attributes and methods of an object. This is referred to as
reflection or introspection. See also Metaclasses.
Type
The type method enables to find out about the type of an object. The following tests return True:
type(3) is int
type('Hello') is str
type([1, 2]) is list
type([1, [2, 'Hello']]) is list
type({'city': 'Paris'}) is dict
Isinstance
Determines whether an object is an instance of a class.
isinstance(3, int)
isinstance([1, 2], list)
Note that isinstance provides a weaker condition than a comparison using #Type.
Duck typing
Duck typing provides an indirect means of reflection. It is a technique consisting in using an object as if it
was of the requested type, while catching exceptions resulting from the object not supporting some of the
features of the class or type.
Callable
For an object, determines whether it can be called. A class can be made callable by providing a __call__()
method.
Examples:
callable(2)
Returns False. Ditto for callable("Hello") and callable([1, 2]).
callable([1,2].pop)
Returns True, as pop without "()" returns a function object.
callable([1,2].pop())
Returns False, as [1,2].pop() returns 2 rather than a function object.
Dir
Returns the list of attributes of an object, which includes methods.
Examples:
dir(3)
dir("Hello")
dir([1, 2])
Getattr
Returns the value of an attribute of an object, given the attribute name passed as a string.
An example:
getattr(3, "imag")
External links
2. Built-in Functions (http://docs.python.org/2/library/functions.html), docs.python.org
How to determine the variable type in Python? (http://stackoverflow.com/questions/402504/how-to-
determine-the-variable-type-in-python), stackoverflow.com
Differences between isinstance() and type() in python (http://stackoverflow.com/questions/1549801
/differences-between-isinstance-and-type-in-python), stackoverflow.com
W:Reflection (computer_programming)#Python, Wikipedia
W:Type introspection#Python, Wikipedia
Regular Expression
Python includes a module for working with regular expressions on strings. For more information about
writing regular expressions and syntax not specific to Python, see the regular expressions wikibook.
Python's regular expression syntax is similar to Perl's
To start using regular expressions in your Python scripts, import the "re" module:
import re
Overview
Regular expression functions in Python at a glance:
import re
if re.search("l+","Hello"): print 1 # Substring match suffices
if not re.match("ell.","Hello"): print 2 # The beginning of the string has to match
if re.match(".el","Hello"): print 3
if re.match("he..o","Hello",re.I): print 4 # Case-insensitive match
print re.sub("l+", "l", "Hello") # Prints "Helo"; replacement AKA substitution
print re.sub(r"(.*)\1", r"\1", "HeyHey") # Prints "Hey"; backreference
The match and search functions do mostly the same thing, except that the match function will only return a
result if the pattern matches at the beginning of the string being searched, while search will find a match
anywhere in the string.
>>> import re
>>> foo = re.compile(r'foo(.{,5})bar', re.I+re.S)
>>> st1 = 'Foo, Bar, Baz'
>>> st2 = '2. foo is bar'
>>> search1 = foo.search(st1)
>>> search2 = foo.search(st2)
>>> match1 = foo.match(st1)
>>> match2 = foo.match(st2)
In this example, match2 will be None, because the string st2 does not start with the given pattern. The other
3 results will be Match objects (see below).
Here we use the search function of the re module, rather than of the pattern object. For most cases, its best to
compile the expression first. Not all of the re module functions support the flags argument and if the
expression is used more than once, compiling first is more efficient and leads to cleaner looking code.
The compiled pattern object functions also have parameters for starting and ending the search, to search in a
substring of the given string. In the first example in this section, match2 returns no result because the pattern
does not start at the beginning of the string, but if we do:
What if we want to search for multiple instances of the pattern? Then we have two options. We can use the
start and end position parameters of the search and match function in a loop, getting the position to start at
from the previous match object (see below) or we can use the findall and finditer functions. The findall
function returns a list of matching strings, useful for simple searching. For anything slightly complex, the
finditer function should be used. This returns an iterator object, that when used in a loop, yields Match
objects. For example:
If you're going to be iterating over the results of the search, using the finditer function is almost always a
better choice.
Match objects
Match objects are returned by the search and match functions, and include information about the pattern
match.
The group function returns a string corresponding to a capture group (part of a regexp wrapped in ()) of the
expression, or if no group number is given, the entire match. Using the search1 variable we defined above:
>>> search1.group()
'Foo, Bar'
>>> search1.group(1)
', '
Capture groups can also be given string names using a special syntax and referred to by
matchobj.group('name'). For simple expressions this is unnecessary, but for more complex expressions it
can be very useful.
You can also get the position of a match or a group in a string, using the start and end functions:
>>> search1.start()
0
>>> search1.end()
8
>>> search1.start(1)
3
>>> search1.end(1)
5
This returns the start and end locations of the entire match, and the start and end of the first (and in this case
only) capture group, respectively.
Replacing
Another use for regular expressions is replacing text in a string. To do this in Python, use the sub function.
sub takes up to 3 arguments: The text to replace with, the text to replace in, and, optionally, the maximum
number of substitutions to make. Unlike the matching and searching functions, sub returns a string,
consisting of the given text with the substitution(s) made.
>>> import re
>>> mystring = 'This string has a q in it'
>>> pattern = re.compile(r'(a[n]? )(\w) ')
>>> newstring = pattern.sub(r"\1'\2' ", mystring)
>>> newstring
"This string has a 'q' in it"
This takes any single alphanumeric character (\w in regular expression syntax) preceded by "a" or "an" and
wraps in in single quotes. The \1 and \2 in the replacement string are backreferences to the 2 capture groups
in the expression; these would be group(1) and group(2) on a Match object from a search.
The subn function is similar to sub, except it returns a tuple, consisting of the result string and the number of
replacements made. Using the string and expression from before:
Splitting
The split function splits a string based on a given regular expression:
>>> import re
>>> mystring = '1. First part 2. Second part 3. Third part'
>>> re.split(r'\d\.', mystring)
['', ' First part ', ' Second part ', ' Third part']
Escaping
The escape function escapes all non-alphanumeric characters in a string. This is useful if you need to take an
unknown string that may contain regexp metacharacters like ( and . and create a regular expression from it.
>>> re.escape(r'This text (and this) must be escaped with a "\" to use in a regexp.')
'This\\ text\\ \\(and\\ this\\)\\ must\\ be\\ escaped\\ with\\ a\\ \\"\\\\\\"\\ to\\ use\\ in\\ a\\ regexp\\.'
Flags
The different flags use with regular expressions:
Makes the ^ and $ characters match at the beginning and end of each
re.M re.MULTILINE
line, rather than just the beginning and end of the string
re.S re.DOTALL Makes the . character match every character including newlines.
Makes \w, \W, \b, \B, \d, \D, \s, \S dependent on Unicode
re.U re.UNICODE
character properties
Ignores whitespace except when in a character class or preceded by an
non-escaped backslash, and ignores # (except when in a character class
re.X re.VERBOSE or preceded by an non-escaped backslash) and everything after it to the
end of a line, so it can be used as a comment. This allows for cleaner-
looking regexps.
Pattern objects
If you're going to be using the same regexp more than once in a program, or if you just want to keep the
regexps separated somehow, you should create a pattern object, and refer to it later when
searching/replacing.
import re
foo = re.compile(r'foo(.{,5})bar', re.I+re.S)
The first argument is the pattern, which matches the string "foo", followed by up to 5 of any character, then
the string "bar", storing the middle characters to a group, which will be discussed later. The second, optional,
argument is the flag or flags to modify the regexp's behavior. The flags themselves are simply variables
referring to an integer used by the regular expression engine. In other languages, these would be constants,
but Python does not have constants. Some of the regular expression functions do not support adding flags as
a parameter when defining the pattern directly in the function, if you need any of the flags, it is best to use
the compile function to create a pattern object.
The r preceding the expression string indicates that it should be treated as a raw string. This should normally
be used when writing regexps, so that backslashes are interpreted literally rather than having to be escaped.
External links
Python re documentation (http://docs.python.org/library/re.html) - Full documentation for the re
module, including pattern objects and match objects
GUI Programming
There are various GUI toolkits to start with.
Tkinter
Tkinter, a Python wrapper for Tcl/Tk, comes bundled with Python (at least on Win32 platform though it can
be installed on Unix/Linux and Mac machines) and provides a cross-platform GUI. It is a relatively simple
to learn yet powerful toolkit that provides what appears to be a modest set of widgets. However, because the
Tkinter widgets are extensible, many compound widgets can be created rather easily (e.g. combo-box,
scrolled panes). Because of its maturity and extensive documentation Tkinter has been designated as the de
facto GUI for Python.
To create a very simple Tkinter window frame one only needs the following lines of code:
import Tkinter
root = Tkinter.Tk()
root.mainloop()
import Tkinter
class App:
def __init__(self, master):
button = Tkinter.Button(master, text="I'm a Button.")
button.pack()
if __name__ == '__main__':
root = Tkinter.Tk()
app = App(root)
root.mainloop()
PyGTK
See also book PyGTK For GUI Programming
PyGTK (http://www.pygtk.org/) provides a convenient wrapper for the GTK+ (http://www.gtk.org) library
for use in Python programs, taking care of many of the boring details such as managing memory and type
casting. The bare GTK+ toolkit runs on Linux, Windows, and Mac OS X (port in progress), but the more
extensive features — when combined with PyORBit and gnome-python — require a GNOME
(http://www.gnome.org) install, and can be used to write full featured GNOME applications.
PyQt
PyQt is a wrapper around the cross-platform Qt C++ toolkit (http://web.archive.org/web/20060514211039
/http://www.trolltech.com/products/qt). It has many widgets and support classes
(http://www.riverbankcomputing.com/static/Docs/PyQt4/html/classes.html) supporting SQL, OpenGL,
SVG, XML, and advanced graphics capabilities. A PyQt hello world example:
class App(QApplication):
def __init__(self, argv):
super(App, self).__init__(argv)
self.msg = QLabel("Hello, World!")
self.msg.show()
if __name__ == "__main__":
import sys
app = App(sys.argv)
sys.exit(app.exec_())
wxPython
Bindings for the cross platform toolkit wxWidgets (http://www.wxwidgets.org/). WxWidgets is available on
Windows, Macintosh, and Unix/Linux.
import wx
class test(wx.App):
def __init__(self):
wx.App.__init__(self, redirect=False)
def OnInit(self):
frame = wx.Frame(None, -1,
"Test",
pos=(50,50), size=(100,40),
style=wx.DEFAULT_FRAME_STYLE)
button = wx.Button(frame, -1, "Hello World!", (20, 20))
self.frame = frame
self.frame.Show()
return True
if __name__ == '__main__':
app = test()
app.MainLoop()
wxPython (http://wxpython.org/)
Dabo
Dabo is a full 3-tier application framework. Its UI layer wraps wxPython, and greatly simplifies the syntax.
import dabo
dabo.ui.loadUI("wx")
class TestForm(dabo.ui.dForm):
def afterInit(self):
self.Caption = "Test"
self.Position = (50, 50)
self.Size = (100, 40)
self.btn = dabo.ui.dButton(self, Caption="Hello World",
> self.Sizer.append(self.btn, halign="center", border=20)
if __name__ == '__main__':
app = dabo.ui.dApp()
app.MainFormClass = TestForm
app.start()
Dabo (http://dabodev.com/)
pyFltk
pyFltk (http://pyfltk.sourceforge.net/) is a Python wrapper for the FLTK (http://www.fltk.org/), a lightweight
cross-platform GUI toolkit. It is very simple to learn and allows for compact user interfaces.
Other Toolkits
PyKDE (http://www.riverbankcomputing.co.uk/pykde/index.php) - Part of the kdebindings package, it
provides a python wrapper for the KDE libraries.
PyXPCOM (http://developer.mozilla.org/en/docs/PyXPCOM) provides a wrapper around the Mozilla
XPCOM (http://developer.mozilla.org/en/docs/XPCOM) component architecture, thereby enabling the
use of standalone XUL (http://developer.mozilla.org/en/docs/XUL) applications in Python. The XUL
toolkit has traditionally been wrapped up in various other parts of XPCOM, but with the advent of
libxul and XULRunner (http://developer.mozilla.org/en/docs/XULRunner) this should become more
feasible.
Authors
Authors of Python textbook
Quartz25
Jesdisciple
Hannes Röst
David Ross
Lawrence D’Oliveiro
License
GNU Free Documentation License
Version 1.3, 3 November 2008 Copyright (C) 2000, 2001, 2002, 2007, 2008 Free Software Foundation, Inc.
<http://fsf.org/>
Everyone is permitted to copy and distribute verbatim copies of this license document, but changing it is not
allowed.
0. PREAMBLE
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We have designed this License in order to use it for manuals for free software, because free software needs
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include PNG, XCF and JPG. Opaque formats include proprietary formats that can be read and edited only by
proprietary word processors, SGML or XML for which the DTD and/or processing tools are not generally
available, and the machine-generated HTML, PostScript or PDF produced by some word processors for
output purposes only.
The "Title Page" means, for a printed book, the title page itself, plus such following pages as are needed to
hold, legibly, the material this License requires to appear in the title page. For works in formats which do not
have any title page as such, "Title Page" means the text near the most prominent appearance of the work's
title, preceding the beginning of the body of the text.
The "publisher" means any person or entity that distributes copies of the Document to the public.
A section "Entitled XYZ" means a named subunit of the Document whose title either is precisely XYZ or
contains XYZ in parentheses following text that translates XYZ in another language. (Here XYZ stands for
a specific section name mentioned below, such as "Acknowledgements", "Dedications", "Endorsements", or
"History".) To "Preserve the Title" of such a section when you modify the Document means that it remains a
section "Entitled XYZ" according to this definition.
The Document may include Warranty Disclaimers next to the notice which states that this License applies to
the Document. These Warranty Disclaimers are considered to be included by reference in this License, but
only as regards disclaiming warranties: any other implication that these Warranty Disclaimers may have is
void and has no effect on the meaning of this License.
2. VERBATIM COPYING
You may copy and distribute the Document in any medium, either commercially or noncommercially,
provided that this License, the copyright notices, and the license notice saying this License applies to the
Document are reproduced in all copies, and that you add no other conditions whatsoever to those of this
License. You may not use technical measures to obstruct or control the reading or further copying of the
copies you make or distribute. However, you may accept compensation in exchange for copies. If you
distribute a large enough number of copies you must also follow the conditions in section 3.
You may also lend copies, under the same conditions stated above, and you may publicly display copies.
3. COPYING IN QUANTITY
If you publish printed copies (or copies in media that commonly have printed covers) of the Document,
numbering more than 100, and the Document's license notice requires Cover Texts, you must enclose the
copies in covers that carry, clearly and legibly, all these Cover Texts: Front-Cover Texts on the front cover,
and Back-Cover Texts on the back cover. Both covers must also clearly and legibly identify you as the
publisher of these copies. The front cover must present the full title with all words of the title equally
prominent and visible. You may add other material on the covers in addition. Copying with changes limited
to the covers, as long as they preserve the title of the Document and satisfy these conditions, can be treated
as verbatim copying in other respects.
If the required texts for either cover are too voluminous to fit legibly, you should put the first ones listed (as
many as fit reasonably) on the actual cover, and continue the rest onto adjacent pages.
If you publish or distribute Opaque copies of the Document numbering more than 100, you must either
include a machine-readable Transparent copy along with each Opaque copy, or state in or with each Opaque
copy a computer-network location from which the general network-using public has access to download
using public-standard network protocols a complete Transparent copy of the Document, free of added
material. If you use the latter option, you must take reasonably prudent steps, when you begin distribution of
Opaque copies in quantity, to ensure that this Transparent copy will remain thus accessible at the stated
location until at least one year after the last time you distribute an Opaque copy (directly or through your
agents or retailers) of that edition to the public.
It is requested, but not required, that you contact the authors of the Document well before redistributing any
large number of copies, to give them a chance to provide you with an updated version of the Document.
4. MODIFICATIONS
You may copy and distribute a Modified Version of the Document under the conditions of sections 2 and 3
above, provided that you release the Modified Version under precisely this License, with the Modified
Version filling the role of the Document, thus licensing distribution and modification of the Modified
Version to whoever possesses a copy of it. In addition, you must do these things in the Modified Version:
A. Use in the Title Page (and on the covers, if any) a title distinct from that of the Document, and from
those of previous versions (which should, if there were any, be listed in the History section of the
Document). You may use the same title as a previous version if the original publisher of that version
gives permission.
B. List on the Title Page, as authors, one or more persons or entities responsible for authorship of the
modifications in the Modified Version, together with at least five of the principal authors of the
Document (all of its principal authors, if it has fewer than five), unless they release you from this
requirement.
C. State on the Title page the name of the publisher of the Modified Version, as the publisher.
D. Preserve all the copyright notices of the Document.
E. Add an appropriate copyright notice for your modifications adjacent to the other copyright notices.
F. Include, immediately after the copyright notices, a license notice giving the public permission to use
the Modified Version under the terms of this License, in the form shown in the Addendum below.
G. Preserve in that license notice the full lists of Invariant Sections and required Cover Texts given in the
Document's license notice.
H. Include an unaltered copy of this License.
I. Preserve the section Entitled "History", Preserve its Title, and add to it an item stating at least the title,
year, new authors, and publisher of the Modified Version as given on the Title Page. If there is no
section Entitled "History" in the Document, create one stating the title, year, authors, and publisher of
the Document as given on its Title Page, then add an item describing the Modified Version as stated in
the previous sentence.
J. Preserve the network location, if any, given in the Document for public access to a Transparent copy
of the Document, and likewise the network locations given in the Document for previous versions it
was based on. These may be placed in the "History" section. You may omit a network location for a
work that was published at least four years before the Document itself, or if the original publisher of
the version it refers to gives permission.
K. For any section Entitled "Acknowledgements" or "Dedications", Preserve the Title of the section, and
preserve in the section all the substance and tone of each of the contributor acknowledgements and/or
dedications given therein.
L. Preserve all the Invariant Sections of the Document, unaltered in their text and in their titles. Section
numbers or the equivalent are not considered part of the section titles.
M. Delete any section Entitled "Endorsements". Such a section may not be included in the Modified
version.
N. Do not retitle any existing section to be Entitled "Endorsements" or to conflict in title with any
Invariant Section.
O. Preserve any Warranty Disclaimers.
If the Modified Version includes new front-matter sections or appendices that qualify as Secondary Sections
and contain no material copied from the Document, you may at your option designate some or all of these
sections as invariant. To do this, add their titles to the list of Invariant Sections in the Modified Version's
license notice. These titles must be distinct from any other section titles.
You may add a section Entitled "Endorsements", provided it contains nothing but endorsements of your
Modified Version by various parties—for example, statements of peer review or that the text has been
approved by an organization as the authoritative definition of a standard.
You may add a passage of up to five words as a Front-Cover Text, and a passage of up to 25 words as a
Back-Cover Text, to the end of the list of Cover Texts in the Modified Version. Only one passage of
Front-Cover Text and one of Back-Cover Text may be added by (or through arrangements made by) any one
entity. If the Document already includes a cover text for the same cover, previously added by you or by
arrangement made by the same entity you are acting on behalf of, you may not add another; but you may
replace the old one, on explicit permission from the previous publisher that added the old one.
The author(s) and publisher(s) of the Document do not by this License give permission to use their names
for publicity for or to assert or imply endorsement of any Modified Version.
5. COMBINING DOCUMENTS
You may combine the Document with other documents released under this License, under the terms defined
in section 4 above for modified versions, provided that you include in the combination all of the Invariant
Sections of all of the original documents, unmodified, and list them all as Invariant Sections of your
combined work in its license notice, and that you preserve all their Warranty Disclaimers.
The combined work need only contain one copy of this License, and multiple identical Invariant Sections
may be replaced with a single copy. If there are multiple Invariant Sections with the same name but different
contents, make the title of each such section unique by adding at the end of it, in parentheses, the name of
the original author or publisher of that section if known, or else a unique number. Make the same adjustment
to the section titles in the list of Invariant Sections in the license notice of the combined work.
In the combination, you must combine any sections Entitled "History" in the various original documents,
forming one section Entitled "History"; likewise combine any sections Entitled "Acknowledgements", and
any sections Entitled "Dedications". You must delete all sections Entitled "Endorsements".
6. COLLECTIONS OF DOCUMENTS
You may make a collection consisting of the Document and other documents released under this License,
and replace the individual copies of this License in the various documents with a single copy that is included
in the collection, provided that you follow the rules of this License for verbatim copying of each of the
documents in all other respects.
You may extract a single document from such a collection, and distribute it individually under this License,
provided you insert a copy of this License into the extracted document, and follow this License in all other
respects regarding verbatim copying of that document.
If the Cover Text requirement of section 3 is applicable to these copies of the Document, then if the
Document is less than one half of the entire aggregate, the Document's Cover Texts may be placed on covers
that bracket the Document within the aggregate, or the electronic equivalent of covers if the Document is in
electronic form. Otherwise they must appear on printed covers that bracket the whole aggregate.
8. TRANSLATION
Translation is considered a kind of modification, so you may distribute translations of the Document under
the terms of section 4. Replacing Invariant Sections with translations requires special permission from their
copyright holders, but you may include translations of some or all Invariant Sections in addition to the
original versions of these Invariant Sections. You may include a translation of this License, and all the
license notices in the Document, and any Warranty Disclaimers, provided that you also include the original
English version of this License and the original versions of those notices and disclaimers. In case of a
disagreement between the translation and the original version of this License or a notice or disclaimer, the
original version will prevail.
9. TERMINATION
You may not copy, modify, sublicense, or distribute the Document except as expressly provided under this
License. Any attempt otherwise to copy, modify, sublicense, or distribute it is void, and will automatically
terminate your rights under this License.
However, if you cease all violation of this License, then your license from a particular copyright holder is
reinstated (a) provisionally, unless and until the copyright holder explicitly and finally terminates your
license, and (b) permanently, if the copyright holder fails to notify you of the violation by some reasonable
means prior to 60 days after the cessation.
Moreover, your license from a particular copyright holder is reinstated permanently if the copyright holder
notifies you of the violation by some reasonable means, this is the first time you have received notice of
violation of this License (for any work) from that copyright holder, and you cure the violation prior to 30
days after your receipt of the notice.
Termination of your rights under this section does not terminate the licenses of parties who have received
copies or rights from you under this License. If your rights have been terminated and not permanently
reinstated, receipt of a copy of some or all of the same material does not give you any rights to use it.
The Free Software Foundation may publish new, revised versions of the GNU Free Documentation License
from time to time. Such new versions will be similar in spirit to the present version, but may differ in detail
to address new problems or concerns. See http://www.gnu.org/copyleft/.
Each version of the License is given a distinguishing version number. If the Document specifies that a
particular numbered version of this License "or any later version" applies to it, you have the option of
following the terms and conditions either of that specified version or of any later version that has been
published (not as a draft) by the Free Software Foundation. If the Document does not specify a version
number of this License, you may choose any version ever published (not as a draft) by the Free Software
Foundation. If the Document specifies that a proxy can decide which future versions of this License can be
used, that proxy's public statement of acceptance of a version permanently authorizes you to choose that
version for the Document.
11. RELICENSING
"Massive Multiauthor Collaboration Site" (or "MMC Site") means any World Wide Web server that
publishes copyrightable works and also provides prominent facilities for anybody to edit those works. A
public wiki that anybody can edit is an example of such a server. A "Massive Multiauthor Collaboration" (or
"MMC") contained in the site means any set of copyrightable works thus published on the MMC site.
"CC-BY-SA" means the Creative Commons Attribution-Share Alike 3.0 license published by Creative
Commons Corporation, a not-for-profit corporation with a principal place of business in San Francisco,
California, as well as future copyleft versions of that license published by that same organization.
"Incorporate" means to publish or republish a Document, in whole or in part, as part of another Document.
An MMC is "eligible for relicensing" if it is licensed under this License, and if all works that were first
published under this License somewhere other than this MMC, and subsequently incorporated in whole or in
part into the MMC, (1) had no cover texts or invariant sections, and (2) were thus incorporated prior to
November 1, 2008.
The operator of an MMC Site may republish an MMC contained in the site under CC-BY-SA on the same
site at any time before August 1, 2009, provided the MMC is eligible for relicensing.
If you have Invariant Sections, Front-Cover Texts and Back-Cover Texts, replace the "with...Texts." line
with this:
with the Invariant Sections being LIST THEIR TITLES, with the
Front-Cover Texts being LIST, and with the Back-Cover Texts being LIST.
If you have Invariant Sections without Cover Texts, or some other combination of the three, merge those two
alternatives to suit the situation.
If your document contains nontrivial examples of program code, we recommend releasing these examples in
parallel under your choice of free software license, such as the GNU General Public License, to permit their
use in free software.
Both are very good free open source C++ 3D game Engine with a Python binding.
2D Game Programming
Pygame is a cross platform Python library which wraps SDL. It provides many features like Sprite
groups and sound/image loading and easy changing of an objects position. It also provides the
programmer access to key and mouse events. A full tutorial can be found in the free book "Making
Games with Python & Pygame" (http://inventwithpython.com/pygame).
Phil's Pygame Utilities (PGU) (http://www.imitationpickles.org/pgu/wiki/index) is a collection of
tools and libraries that enhance Pygame. Tools include a tile editor and a level editor (tile, isometric,
hexagonal). GUI enhancements include full featured GUI, HTML rendering, document layout, and
text rendering. The libraries include a sprite and tile engine (tile, isometric, hexagonal), a state engine,
a timer, and a high score system. (Beta with last update March, 2007. APIs to be deprecated and
isometric and hexagonal support is currently Alpha and subject to change.) [Update 27/02/08 Author
indicates he is not currently actively developing this library and anyone that is willing to develop their
own scrolling isometric library offering can use the existing code in PGU to get them started.]
Pyglet (http://www.pyglet.org/) is a cross-platform windowing and multimedia library for Python with
no external dependencies or installation requirements. Pyglet provides an object-oriented
programming interface for developing games and other visually-rich applications for Windows, Mac
OS X and Linux. Pyglet allows programs to open multiple windows on multiple screens, draw in
those windows with OpenGL, and play back audio and video in most formats. Unlike similar libraries
available, pyglet has no external dependencies (such as SDL) and is written entirely in Python. Pyglet
is available under a BSD-Style license.
Kivy (http://kivy.org/) Kivy is a library for developing multi-touch applications. It is completely
cross-platform (Linux/OSX/Win & Android with OpenGL ES2). It comes with native support for
many multi-touch input devices, a growing library of multi-touch aware widgets and hardware
accelerated OpenGL drawing. Kivy is designed to let you focus on building custom and highly
interactive applications as quickly and easily as possible.
Rabbyt (http://arcticpaint.com/projects/rabbyt/) A fast Sprite library for Python with game
development in mind. With Rabbyt Anims, even old graphics cards can produce very fast animations
of 2,400 or more sprites handling position, rotation, scaling, and color simultaneously.
See Also
10 Lessons Learned (http://www.gamedev.net/reference/articles/article2259.asp) - How To Build a
Game In A Week From Scratch With No Budget
Sockets
HTTP Client
import socket
s = socket.socket()
s.connect(('localhost', 80))
s.send('GET / HTTP/1.1\nHost:localhost\n\n')
s.recv(40000) # receive 40000 bytes
NTP/Sockets
Connecting to and reading an NTP time server, returning the time as follows
Files
Files, specifically file handles, are an important example of resources, and thus should generally be managed
using the with statement; see context managers section.
In rare cases – namely when a file is not only used within a single block of code – it is necessary to do
manual resource management using File.close(), but this is error-prone and requires great care to be
exception safe. In interactive use using explicit open() and File.close() results in immediate evaluation,
instead of the delayed evaluation of using a with statement.
File I/O
Read entire file:
with open('testit.txt') as f:
inputFileText = f.read()
print(inputFileText)
Notes:
The with statement ensures that the file is closed when execution exits the with clause.
Files are automatically opened in read-only text mode – no mode argument is necessary. Read-only
mode can be specified explicitly with the 'r' argument, and text mode (undocument) with 't', or
combined with 'rt'.
with open('testit.txt') as f:
inputFileText = f.read(123)
print(inputFileText)
When opening a file, one starts reading at the beginning of the file, if one would want more random access
to the file, it is possible to use seek() to change the current position in a file and tell() to get to know the
current position in the file. This is illustrated in the following example, using manual open and
>>> f = open('/proc/cpuinfo')
>>> f.tell()
0L
>>> f.read(10)
'processor\t'
>>> f.read(10)
': 0\nvendor'
>>> f.tell()
20L
>>> f.seek(10)
>>> f.tell()
10L
>>> f.read(10)
': 0\nvendor'
>>> f.close()
>>> f
<closed file '/proc/cpuinfo', mode 'r' at 0xb7d79770>
Here a file is opened, twice ten bytes are read, tell() shows that the current offset is at position 20, now
seek() is used to go back to position 10 (the same position where the second read was started) and ten bytes
are read and printed again. And when no more operations on a file are needed the close() function is used
to close the file we opened.
with open('testit.txt') as f:
for line in f:
print line
In this case readlines() will return an array containing the individual lines of the file as array entries.
Reading a single line can be done using the readline() function which returns the current line as a string.
This example will output an additional newline between the individual lines of the file, this is because one is
read from the file and print introduces another newline.
Write to a file requires the second argument of open() to be 'w', this will overwrite the existing contents of
the file if it already exists when opening the file:
Append to a file requires the second argument of open() to be 'a' (from append):
Note that this does not add a line break between the existing file content and the string to be added.
Testing Files
Determine whether path exists:
import os
os.path.exists('<path string>')
When working on systems such as Microsoft Windows, the directory separators will conflict with the path
string. To get around this, do the following:
import os
os.path.exists('C:\\windows\\example\\path')
import os
os.path.exists(r'C:\windows\example\path')
But there are some other convenient functions in os.path, where path.code.exists() only confirms
whether or not path exists, there are functions which let you know if the path is a file, a directory, a mount
point or a symlink. There is even a function os.path.realpath() which reveals the true destination of a
symlink:
>>> import os
>>> os.path.isfile('/')
False
>>> os.path.isfile('/proc/cpuinfo')
True
>>> os.path.isdir('/')
True
>>> os.path.isdir('/proc/cpuinfo')
False
>>> os.path.ismount("/")
True
>>> os.path.islink('/')
False
>>> os.path.islink('/vmlinuz')
True
>>> os.path.realpath('/vmlinuz')
'/boot/vmlinuz-2.6.24-21-generic'
import shutil
shutil.move('originallocation.txt', 'newlocation.txt')
shutil.copy('original.txt', 'copy.txt')
To perform a recursive copy it is possible to use copytree(), to perform a recursive remove it is possible to
use rmtree()
import shutil
shutil.copytree('dir1', 'dir2')
shutil.rmtree('dir1')
To remove an individual file there exists the remove() function in the os module:
import os
os.remove('file.txt')
Finding Files
Current Directory
Getting current working directory:
os.getcwd()
os.chdir(r'C:\')
External Links
os — Miscellaneous operating system interfaces (http://docs.python.org/2/library/os.html) in Python
documentation
glob — Unix style pathname pattern expansion (http://docs.python.org/2/library/glob.html) in Python
documentation
shutil — High-level file operations (http://docs.python.org/2/library/shutil.html) in Python
documentation
Brief Tour of the Standard Library (http://docs.python.org/2/tutorial/stdlib.html) in The Python
Tutorial
Database Programming
pyodbc
An example using the pyodbc Python package with a Microsoft Access file (although this database
connection could just as easily be a MySQL database):
import pyodbc
DBfile = '/data/MSAccess/Music_Library.mdb'
conn = pyodbc.connect('DRIVER={Microsoft Access Driver (*.mdb)};DBQ='+DBfile)
#use below conn if using with Access 2007, 2010 .accdb file
#conn = pyodbc.connect(r'Driver={Microsoft Access Driver (*.mdb, *.accdb)};DBQ='+DBfile)
cursor = conn.cursor()
cursor.close()
conn.close()
Many more features and examples are provided on the pyodbc website.
code create problem shown below. ImportError: DLL load failed: The specified procedure could not be
found.
SQLAlchemy in Action
SQLAlchemy has become the favorite choice for many large Python projects that use databases. A long,
updated list of such projects is listed on the SQLAlchemy site. Additionally, a pretty good tutorial can be
found there, as well. Along with a thin database wrapper, Elixir, it behaves very similarly to the ORM in
Rails, ActiveRecord.
See also
Python Programming/Databases
References
1. Hammond, M.; Robinson, A. (2000). Python Programming on Win32. O'Reilly. ISBN 1-56592-621-8.
2. Lemburg, M.-A. (2007). "Python Database API Specification v2.0". Python. http://www.python.org
/dev/peps/pep-0249/.
External links
SQLAlchemy (http://www.sqlalchemy.org/)
SQLObject (http://www.sqlobject.org/)
PEP 249 (http://www.python.org/dev/peps/pep-0249/) - Python Database API Specification v2.0
Database Topic Guide (http://www.python.org/doc/topics/database/) on python.org
SQLite Tutorial (http://talkera.org/python/python-database-programming-sqlite-tutorial/)
Python threads are used in cases where the execution of a task involves some waiting. One example would
be interaction with a service hosted on another computer, such as a webserver. Threading allows python to
execute other code while waiting; this is easily simulated with the sleep function.
Examples
A Minimal Example with Function Call
Make a thread that prints numbers from 1-10, waits for 1 sec between:
import threading
import time
def loop1_10():
for i in range(1, 11):
time.sleep(1)
print(i)
threading.Thread(target=loop1_10).start()
#!/usr/bin/env python
import threading
import time
from __future__ import print_function
class MyThread(threading.Thread):
def run(self):
print("{} started!".format(self.getName())) # "Thread-x started!"
time.sleep(1) # Pretend to work for a second
print("{} finished!".format(self.getName())) # "Thread-x finished!"
if __name__ == '__main__':
for x in range(4): # Four times...
mythread = MyThread(name = "Thread-{}".format(x + 1)) # ...Instantiate a thread and pass a unique ID to it
mythread.start() # ...Start the thread
time.sleep(.9) # ...Wait 0.9 seconds before starting another
Thread-1 started!
Thread-2 started!
Thread-1 finished!
Thread-3 started!
Thread-2 finished!
Thread-4 started!
Thread-3 finished!
Thread-4 finished!
Note: this example appears to crash IDLE in Windows XP (seems to work in IDLE 1.2.4 in Windows XP
though)
There seems to be a problem with this, if you replace sleep(1) with (2), and change range(4) to
range(10). Thread-2 finished is the first line before its even started. in WING IDE, Netbeans, Eclipse is
fine.
Extending with C
This gives a minimal Example on how to Extend Python with C. Linux is used for building (feel free to
extend it for other Platforms). If you have any problems, please report them (e.g. on the dicussion page), I
will check back in a while and try to sort them out.
This command installs you the python developement package and ensures that you can use the line
#include <Python.h> in the C source code. On other systems like openSUSE the needed package calls
python-devel and can be installed by using zypper:
https://docs.python.org/2/extending/index.html
https://docs.python.org/2/c-api/index.html
A minimal example
The minimal example we will create now is very similar in behaviour to the following python snippet:
def say_hello(name):
"Greet somebody."
print "Hello %s!" % name
#include <Python.h>
static PyObject*
say_hello(PyObject* self, PyObject* args)
{
const char* name;
Py_RETURN_NONE;
}
PyMODINIT_FUNC
inithello(void)
{
(void) Py_InitModule("hello", HelloMethods);
}
Microsoft Windows users can use MinGW to compile this from cmd.exe using a similar method to Linux
user, as shown above. Assuming gcc is in the PATH environment variable, type:
The module hello.pyd will end up in build\lib.win32-x.y, which is a Python Dynamic Module (similar
to a DLL).
An alternate way of building the module in Windows is to build a DLL. (This method does not need an
extension module file). From cmd.exe, type:
where XY represents the version of Python, such as "24" for version 2.4.
With VC8 distutils is broken. We will use cl.exe from a command prompt instead:
Change to the subdirectory where the file `hello.so` resides. In an interactive python session you can use the
module as follows.
#include <Python.h>
int
_fib(int n)
{
if (n < 2)
return n;
else
return _fib(n-1) + _fib(n-2);
}
static PyObject*
fib(PyObject* self, PyObject* args)
{
int n;
PyMODINIT_FUNC
initfib(void)
{
(void) Py_InitModule("fib", FibMethods);
}
Using SWIG
Creating the previous example using SWIG is much more straight forward. To follow this path you need to
get SWIG (http://www.swig.org/) up and running first. To install it on an Ubuntu system, you might need to
run the following commands
/*hellomodule.c*/
#include <stdio.h>
/*hello.i*/
%module hello
The next step is compiling (substitute /usr/include/python2.4/ with the correct path for your setup!).
Boost.Python comes bundled with the Boost C++ Libraries (http://www.boost.org/). To install it on an
Ubuntu system, you might need to run the following commands
#include <iostream>
#include <boost/python/module.hpp>
#include <boost/python/def.hpp>
using namespace boost::python;
BOOST_PYTHON_MODULE(hello)
{
def("say_hello", say_hello);
}
setup.py
#!/usr/bin/env python
setup(name="PackageName",
ext_modules=[
Extension("hello", ["hellomodule.cpp"],
libraries = ["boost_python"])
])
Change to the subdirectory where the file `hello.so` resides. In an interactive python session you can use the
module as follows.
// test.cpp
using namespace std;
/* PYTHON */
#include <boost/python.hpp>
#include <boost/python/module.hpp>
#include <boost/python/def.hpp>
namespace python = boost::python;
/* CGAL */
#include <CGAL/Cartesian.h>
#include <CGAL/Range_segment_tree_traits.h>
#include <CGAL/Range_tree_k.h>
typedef CGAL::Cartesian<double> K;
typedef CGAL::Range_tree_map_traits_2<K, char> Traits;
typedef CGAL::Range_tree_2<Traits> Range_tree_2_type;
void create_tree() {
Range_tree_2->make_tree(InputList.begin(),InputList.end());
Interval win(Interval(K::Point_2(1,2.1),K::Point_2(8.1,8.2)));
std::cout << "\n Window Query:\n";
Range_tree_2->window_query(win, std::back_inserter(OutputList));
std::vector<Key>::iterator current=OutputList.begin();
while(current!=OutputList.end()){
std::cout << " " << (*current).first.x() << "," << (*current).first.y()
<< ":" << (*current).second << std::endl;
current++;
}
std::cout << "\n Done\n";
}
// setup.py
#!/usr/bin/env python
setup(name="PackageName",
ext_modules=[
Extension("test", ["test.cpp"],
libraries = ["boost_python"])
])
library that an error has occurred and returning. In the following case, we have written a C++ function called
"afunction" which we want to call. The function takes an integer N and a vector of length N as input, we
have to convert the python list to a vector of strings before calling the function.
#include <vector>
using namespace std;
vector<string> mystrings(mapping_length);
for (int i=0; i<mapping_length; i++) {
mystrings[i] = boost::python::extract<char const *>(mapping[i]);
}
References
Language reference
The latest documentation for the standard python libraries and modules can always be found at The
Python.org documents section (http://www.python.org/doc/)
External links
Python books available for free download (http://www.techbooksforfree.com/perlpython.shtml)
Non-programmers python tutorial (http://www.honors.montana.edu/~jjc/easytut/easytut/) donated to
this project. Wiki version
Dive into Python (http://www.diveintopython.org/)