Book Excerpt: The Python Standard Library by Example
Chapter 3: Algorithms
Python includes several modules for implementing algorithms elegantly and concisely using whatever style is most appropriate for the task. It supports purely procedural, object-oriented, and functional styles. All three styles are frequently mixed within different parts of the same program.
functools includes functions for creating function decorators, enabling aspect-oriented programming and code reuse beyond what a traditional object-oriented approach supports. It also provides a class decorator for implementing all rich comparison APIs using a shortcut and partial objects for creating references to functions with their arguments included.
The itertools module includes functions for creating and working with iterators and generators used in functional programming. The operator module eliminates the need for many trivial lambda functions when using a functional programming style by providing function-based interfaces to built-in operations, such as arithmetic or item lookup.
contextlib makes resource management easier, more reliable, and more concise for all programming styles. Combining context managers and the with statement reduces the number of try:finally blocks and indentation levels needed, while ensuring that files, sockets, database transactions, and other resources are closed and released at the right time.
3.1 functools—Tools for Manipulating Functions
Purpose Functions that operate on other functions.
Python Version 2.5 and later
The functools module provides tools for adapting or extending functions and other callable objects, without completely rewriting them.
3.1.1 Decorators
The primary tool supplied by the functools module is the class partial, which can be used to “wrap” a callable object with default arguments. The resulting object is itself callable and can be treated as though it is the original function. It takes all the same arguments as the original, and it can be invoked with extra positional or named arguments as well. A partial can be used instead of a lambda to provide default arguments to a function, while leaving some arguments unspecified.
Partial Objects
This example shows two simple partial objects for the function myfunc(). The output of show_details() includes the func, args, and keywords attributes of the partial object.
import functools
def myfunc(a, b=2):
"""Docstring for myfunc()."""
print ’ called myfunc with:’, (a, b)
return
def show_details(name, f, is_partial=False):
"""Show details of a callable object."""
print ’%s:’ % name
print ’ object:’,f
if not is_partial:
print ’ __name__:’, f.__name__
if is_partial:
print ’ func:’, f.func
print ’ args:’, f.args
print ’ keywords:’, f.keywords
return
show_details(’myfunc’, myfunc)
myfunc(’a’, 3)
print
# Set a different default value for ’b’, but require
# the caller to provide ’a’.
p1 = functools.partial(myfunc, b=4)
show_details(’partial with named default’, p1, True)
p1(’passing a’)
p1(’override b’, b=5)
print
# Set default values for both ’a’ and ’b’.
p2 = functools.partial(myfunc, ’default a’, b=99)
show_details(’partial with defaults’, p2, True)
p2()
p2(b=’override b’)
print
print ’Insufficient arguments:’
p1()
At the end of the example, the first partial created is invoked without passing a value for a, causing an exception.
$ python functools_partial.pymyfunc: object: <function myfunc at 0x100d9bf50> __name__: myfunc called myfunc with: (’a’, 3)
partial with named default: object: <functools.partial object at 0x100d993c0> func: <function myfunc at 0x100d9bf50> args: () keywords: {’b’: 4} called myfunc with: (’passing a’, 4) called myfunc with: (’override b’, 5)partial with defaults: object: <functools.partial object at 0x100d99418> func: <function myfunc at 0x100d9bf50> args: (’default a’,) keywords: {’b’: 99} called myfunc with: (’default a’, 99) called myfunc with: (’default a’, ’override b’)
Insufficient arguments: Traceback (most recent call last): File "functools_partial.py", line 51, in <module> p1() TypeError: myfunc() takes at least 1 argument (1 given)
Realizing the promise of Apache® Hadoop® requires the effective deployment of compute, memory, storage and networking to achieve optimal results. With its flexibility and multitude of options, it is easy to over or under provision the server infrastructure, resulting in poor performance and high TCO. Join us for an in depth, technical discussion with industry experts from leading Hadoop and server companies who will provide insights into the key considerations for designing and deploying an optimal Hadoop cluster.
Sponsored by AMD
If you already use virtualized infrastructure, you are well on your way to leveraging the power of the cloud. Virtualization offers the promise of limitless resources, but how do you manage that scalability when your DevOps team doesn’t scale? In today’s hypercompetitive markets, fast results can make a difference between leading the pack vs. obsolescence. Organizations need more benefits from cloud computing than just raw resources. They need agility, flexibility, convenience, ROI, and control.
Stackato private Platform-as-a-Service technology from ActiveState extends your private cloud infrastructure by creating a private PaaS to provide on-demand availability, flexibility, control, and ultimately, faster time-to-market for your enterprise.
Sponsored by ActiveState
| Containers—Not Virtual Machines—Are the Future Cloud | Jun 17, 2013 |
| Lock-Free Multi-Producer Multi-Consumer Queue on Ring Buffer | Jun 12, 2013 |
| Weechat, Irssi's Little Brother | Jun 11, 2013 |
| One Tail Just Isn't Enough | Jun 07, 2013 |
| Introduction to MapReduce with Hadoop on Linux | Jun 05, 2013 |
| Android's Limits | Jun 04, 2013 |
- Containers—Not Virtual Machines—Are the Future Cloud
- Lock-Free Multi-Producer Multi-Consumer Queue on Ring Buffer
- Linux Systems Administrator
- Introduction to MapReduce with Hadoop on Linux
- Senior Perl Developer
- Technical Support Rep
- Weechat, Irssi's Little Brother
- UX Designer
- One Tail Just Isn't Enough
- Android's Limits
Featured Jobs
| Linux Systems Administrator | Houston and Austin, Texas | Host Gator |
| Senior Perl Developer | Austin, Texas | Host Gator |
| Technical Support Rep | Houston and Austin, Texas | Host Gator |
| UX Designer | Austin, Texas | Host Gator |
| Web & UI Developer (JavaScript & j Query) | Austin, Texas | Host Gator |
Free Webinar: Hadoop
How to Build an Optimal Hadoop Cluster to Store and Maintain Unlimited Amounts of Data Using Microservers
Realizing the promise of Apache® Hadoop® requires the effective deployment of compute, memory, storage and networking to achieve optimal results. With its flexibility and multitude of options, it is easy to over or under provision the server infrastructure, resulting in poor performance and high TCO. Join us for an in depth, technical discussion with industry experts from leading Hadoop and server companies who will provide insights into the key considerations for designing and deploying an optimal Hadoop cluster.
Some of key questions to be discussed are:
- What is the “typical” Hadoop cluster and what should be installed on the different machine types?
- Why should you consider the typical workload patterns when making your hardware decisions?
- Are all microservers created equal for Hadoop deployments?
- How do I plan for expansion if I require more compute, memory, storage or networking?



1 hour 10 min ago
5 hours 21 min ago
5 hours 25 min ago
1 day 55 min ago
1 day 2 hours ago
1 day 2 hours ago
1 day 5 hours ago
1 day 6 hours ago
1 day 6 hours ago
1 day 6 hours ago