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We maintain partnerships with selected university research centers that are particularly active and recognised in our fields of interest.  This ensures a constant technology transfer, and an update of our R&D department. It is a key element in maintaining VADIS level of technological excellence.

Currently we have the following partnership in place.

 

IRIDIA, ULB  (Machine Learning)

This is the laboratory of Artificial Intelligence of the ULB. Our collaboration there concerns predictive modelling and the text mining algorithms.

ISYS, UCL (Information Systems)

Our collaboration with ISYS concerns the clustering of graphs, as well as other topics where ISYS research is strong. In particular on issues from human-machine interactions to knowledge management through databases design and management, data cleansing, data mining, decision-support systems, object and agent-oriented technologies, or development methodologies of information and knowledge systems.

INMA, UCL (Mathematical Engineering)

Our collaboration with INMA concerns issues on Large Graphs and Networks. Our interest is on questions related to the classification, equilibria calculation, visualization, and stochastic analysis of large networks. In particular, our interest is on both theoretical and practical aspects of topics such as data-mining, web-searching, analysis of telephone, traffic and electricity networks, hierarchical reduction of large scale networks, and analysis of dynamical properties of large networks.

 
Highlights
Rank: the turnkey predictive modeling software

boite22Vadis launches Rank, a turnkey solution for building predictive models (a winner of international KDD contests...)

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VADIS winner of ECML PKDD08 contest

ecml08_2

Vadis is the second winner of the spam detection contest of ECML PKDD 2008. Come and see us at ECML conference!

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VADIS "Top Winner" of PAKDD 2007

VADIS is a "Top Winner" of the 11th Pacific-Asia Conference on Knowledge Discovery in Databases competition, using its own predictive modeling toolbox.

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