Favorites

Python in Practice: Create Better Programs Using Concurrency, Libraries, and Patterns b yMark Summerfield

This post was published 6 years ago. Download links are most likely obsolete.
If that's the case, try asking the author to reupload.

Python in Practice: Create Better Programs Using Concurrency, Libraries, and Patterns (Repost)

Python in Practice: Create Better Programs Using Concurrency, Libraries, and Patterns b yMark Summerfield
English | ISBN: 0321905636 | 2013 | 336 pages | PDF | 2 MB

“Whether you are an experienced programmer or are starting your career, Python in Practice is full of valuable advice and example to help you improve your craft by thinking about problems from different perspectives, introducing tools, and detailing techniques to create more effective solutions.”

–Doug Hellmann, Senior Developer, DreamHost

If you’re an experienced Python programmer, Python in Practice will help you improve the quality, reliability, speed, maintainability, and usability of all your Python programs.

Mark Summerfield focuses on four key themes: design patterns for coding elegance, faster processing through concurrency and compiled Python (Cython), high-level networking, and graphics. He identifies well-proven design patterns that are useful in Python, illuminates them with expert-quality code, and explains why some object-oriented design patterns are irrelevant to Python. He also explodes several counterproductive myths about Python programming–showing, for example, how Python can take full advantage of multicore hardware.

All examples, including three complete case studies, have been tested with Python 3.3 (and, where possible, Python 3.2 and 3.1) and crafted to maintain compatibility with future Python 3.x versions. All code has been tested on Linux, and most code has also been tested on OS X and Windows. All code may be downloaded at www.qtrac.eu/pipbook.html.

Coverage includes
Leveraging Python’s most effective creational, structural, and behavioral design patterns
Supporting concurrency with Python’s multiprocessing, threading, and concurrent.futures modules
Avoiding concurrency problems using thread-safe queues and futures rather than fragile locks
Simplifying networking with high-level modules, including xmlrpclib and RPyC
Accelerating Python code with Cython, C-based Python modules, profiling, and other techniques
Creating modern-looking GUI applications with Tkinter
Leveraging today’s powerful graphics hardware via the OpenGL API using pyglet and PyOpenGL

No comments have been posted yet. Please feel free to comment first!

    Load more replies

    Join the conversation!

    Login or Register
    to post a comment.