iwla (Intelligent Web Log Analyzer) is basically a clone of [awstats](http://www.awstats.org). The main problem with awstats is that it's a very monolothic project with everything in one big PERL file. In opposite, iwla has been though to be very modular : a small core analysis and a lot of filters. It can be viewed as UNIX pipes. Philosophy of iwla is : add, update, delete ! That's the job of each filter : modify statistics until final result. It's written in Python.
Nevertheless, iwla is only focused on HTTP logs. It uses data (robots definitions, search engines definitions) and design from awstats. Moreover, it's not dynamic, but only generates static HTML page (with gzip compression option).
-c : Clean output (database and HTML) before starting
-i : Read data from stdin instead of conf.analyzed_filename
-f : Read data from FILE instead of conf.analyzed_filename
-d : Loglevel in ['DEBUG', 'INFO', 'WARNING', 'ERROR', 'CRITICAL']
Basic usage
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In addition to command line, iwla read parameters in default_conf.py. User can override default values using _conf.py_ file. Each module requires its own parameters.
Main values to edit are :
* **analyzed_filename** : web server log
* **domaine_name** : domain name to filter
* **pre_analysis_hooks** : List of pre analysis hooks
* **post_analysis_hooks** : List of post analysis hooks
**Warning** : The order in hooks list is important : Some plugins may requires others plugins, and the order of display_hooks is the order of displayed blocks in final result.
* **multimedia_files** : Multimedia extensions (not accounted as downloaded files)
* **css_path** : CSS path (you can add yours)
* **compress_output_files** : Files extensions to compress in gzip during display build
Plugins
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As previously described, plugins acts like UNIX pipes : statistics are constantly updated by each plugin to produce final result. We have three type of plugins :
* **Pre analysis plugins** : Called before generating days statistics. They are in charge to filter robots, crawlers, bad pages...
* **Post analysis plugins** : Called after basic statistics computation. They are in charge to enlight them with their own algorithms
* **Display plugins** : They are in charge to produce HTML files from statistics.
To use plugins, just insert their file name (without _.py_ extension) in _pre_analysis_hooks_, _post_analysis_hooks_ and _display_hooks_ lists in conf.py.
Plugins can defines required configuration values (self.conf_requires) that must be set in conf.py (or can be optional). They can also defines required plugins (self.requires).
The two functions to overload are _load(self)_ that must returns True or False if all is good (or not). It's called after _init_. The second is _hook(self)_ that is the body of plugins.
For display plugins, a lot of code has been wrote in _display.py_ that simplify the creation on HTML blocks, tables and bar graphs.