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This paper presents an overview of the results of the project undertaken by the Warsaw University of Technology Institute of Computer Science as a part of research agreement with France Telecom. The project goal was to create a set of tools - both software and methods, that could be used to speed up and improve a process of creating ontologies. In the course of the project a new ontology building methodology has been devised, new text mining algorithms optimized for extracting information useful for building an ontology from text corpora have been proposed and an universal text mining toolkit - TOM Platform - have been implemented.