Mobile browser feature detection using multiple backends
Project description
Introduction
mobile.sniffer is Python framework for abstracting mobile browser detection and feature database access.
When rendering web pages for mobile phones one must deal with varying handset features: different screen sizes and shapes, different supported file formats, different sets of web browser features. Also, the fact that you know the user is browsing on a mobile phone is most critical for building successful mobile web user experience.
mobile.sniffer provides two phase mobile phone detection (a.k.a sniffing)
mobile detection - this simply detects whether a browser is a mobile phone based or not. This is done in mobile/sniffer/detect.py module. This is useful to redirect to your visitors from a web site to a mobile site if they are using a mobile phone to arrive on your web site.
mobile handset feature extraction - the handset database is looked for a mobile web browser user agent match. Since there might be version changes, local varieties, etc. in user agent strings, heurestics are applied to the string matching. If a database entry is found, with certain match accuracy, it’s records like device screen width and height are made available to the web server so that it can tailor HTML, image and video output suitable for this particular mobile phone.
Mobile detection can be done with a fast regular expression match. Mobile handset feature extraction always requires a some sort of database of mobile phone entries and mobile.sniffer framework provides abstraction of these databases.
Features
Easily plug-in mobile redirects to your Python based web sites
Able to source data from multiple sniffing backends leading better handset coverage
Automatically download, parse and cache complex RDF based WAP profiles
Very convenient Python API designed by professionals
Open source
Unit test coverage
The code is Django, WSGI and Zope/Plone compatible.
Supported sniffing backends
ApexVertex. Commercially available from mFabrik.
DeviceAtlas. Commercially available.
WAP profiles. User agents post a link to their WAP profile data, which is an XML file and maintained by the handset manufacturer. (note: as WAP is deprecating protocol these are not supported on newer smartphones)
Installation
mobile.sniffer is distributed as Python egg in PyPi repository.
You can install it using standard Python egg installation methods
easy_install
pip
buildout
Dependencies
You might need to install additional libraries depending on what handset database you use
Wurfl: pywurlf library and python-Levenshtein
WAP profiles: Django (for database abstraction) and rdflib
Apex Vertex: Django (for database abstraction)
Usage examples
There is no single standard to name properties queried from the handset database. For legacy reasons, we use DeviceAtlas database column names (keys) and then map them to database-dependent keys.
Redirection example
detect_mobile_browser(user_agent) will return True of False whether the HTTP request was made by a mobile phone.
Example:
from mobile.sniffer.detect import detect_mobile_browser from mobile.sniffer.utilities import get_user_agent # Get HTTP_USER_AGENT from HTTP request object ua = get_user_agent(self.request) if ua: # Apply reg if detect_mobile_browser(ua): # Redirect the visitor from a web site to a mobile site pass else: # A regular web site visitor pass else: # User agent header is missing from HTTP request return False
Feature extraction example
This example will work out of the box with the included pywurlf database.
Example:
try: from mobile.sniffer.wurlf.sniffer import WurlfSniffer # Wrapper sniffer instance # All start-up delay goes on this line sniffer = WurlfSniffer() except ImportError, e: import traceback traceback.print_exc() logger.exception(e) logger.error("Could not import Wurlf sniffer... add pywurfl and python-Lehvenstein to buildout.cfg eggs section") sniffer = None def sniff_request(request): """ @param request: Request can be Django, WSGI or Zope HTTPRequest object """ if not sniffer: # We failed to initialize Wurfl return None user_agent = sniffer.sniff(request) if user_agent == None: # No match in the handset database, return None else: return user_agent # mobile.sniffer.wurlf.sniffer.UserAgent object def web_or_mobile(request) ua = sniff_request(request) # How certain we must be about UA # match to make decisions # float 0...1, the actual value is UA search algorithm specific # We use JaroWinkler as the default algorithm certainty_threshold = 0.7 if ua.get("is_wireless_device") and ua.getCertainty() > certainty_threshold: # Mobile code pass else: # Webby code pass
Match-making process for Wurfl
Since Wurfl is the default backend the process of finding UA record is explained more carefully
Wurlf database is usually loaded during the start-up (slow operation) - it is possible to make this to use lazy initialization pattern
The search algorithm is initialized with certain match threshold - all matches below this threshold will be ignored. The default search algorithm is JaroWinkler from Lehvenstein Python package.
When the user agent is searched
Take in HTTP request User-Agent header
Go through all entries in database
Match this entry against incoming User-Agent using the search algorithm
First search pass is doing using exact string matches (no algorithm involved). In this case exposed certainty will be 1.1.
If there was no match in the first pass, do the second pass using the search algorithm
If match is found and threshold is exceed return this user agent record
User agent record is retrofitted with the information how accurate the match was (ua.getCertainty() method exposes this)
Chained example
Use all available handset information sources to accurately get device data. Matching is done on property level - if one data source lacks the property information the next data source is tried. Finally if the handset is unknown, but it publishes WAP profile information, the profile is downloaded and analyzed and saved for further requests.
Example:
from mobile.sniffer.chain import ChainedSniffer from mobile.sniffer.apexvertex.sniffer import ApexVertexSniffer from mobile.sniffer.wapprofile.sniffer import WAPProfileSniffer from mobile.sniffer.deviceatlas.sniffer import DeviceAtlasSniffer # Create all supported sniffers da = DeviceAtlasSniffer(da_api_file) apex = ApexVertexSniffer() wap = WAPProfileSniffer() # Preferred order of sniffers sniffer = ChainedSniffer([apex, da, wap]) ua = sniffer.sniff(request) # Sniff HTTP_USER_AGENT, HTTP_PROFILE and many other fields property = ua.get("usableDisplayWidth") # This will look up data from all the databases in the chain
Automatic database installers
Proprietary handset databases do not publicly distribute their APIs or data. mobile.sniffer deals with the problem by automatic installation wrappers. Also, these handset database APIs are not open source compatible which makes it further difficult to use them in open source projects. Instead of manually download and set up bunch of files each time you deploy your code on a new server, just make call to one magical Python function which will take care of all of this for you.
Source code and issue tracking
The project is hosted at Google Code project repository.
Commercial support and development
This package is licenced under open source GPL 2 license.
Commercial CMS and mobile development support options are available from Web and Mobiel web site.
Our top class Python developers are ready to help you with any software development needs.
0.9.2
It’s spellt Leveshtein [miohtama]
0.9.1
Depend on Levehstein [miohtama]
0.9
Major product rework [miohtama]
0.1.1
Updated README to describe detection and redirects [miohtama]
0.1
Initial release
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