Evolution to Knowledge (E2K) is a set of Data to Knowledge (D2K) modules and itineraries
that perform genetic algorithms (GA) and genetics-based machine learning (GBML) related
tasks. The goal of E2K is two fold: simplify the process of building GA/GBML related tasks,
and provide a simple exploratory workbench for the evolutionary computation community to
help users to interact with evolutionary processes. It can help to create complex tasks or help
the newcomer to get familiarized and trained with the evolutionary methods and techniques
provided. Moreover, due to its integration into D2K, the creation of combined data mining and
evolutionary task can be effortlessly done via the visual programming paradigm provided by the
workflow environment and also wrap other evolutionary computation software.
For more information, contact:

Xavier Llora,
xllora@illigal.ge.uiuc.edu