Jump to content

Complex and Adaptive Systems Laboratory

From Wikipedia, the free encyclopedia
This is an old revision of this page, as edited by Doopa (talk | contribs) at 14:28, 12 October 2011 (Created page with 'Complex and Adaptive Systems Laboratory is a interdisciplinary research institute in University College Dublin. It is formed around four research clusters. The i...'). The present address (URL) is a permanent link to this revision, which may differ significantly from the current revision.
(diff) ← Previous revision | Latest revision (diff) | Newer revision → (diff)

Complex and Adaptive Systems Laboratory is a interdisciplinary research institute in University College Dublin. It is formed around four research clusters. The institute houses research groups from a number of Schools within UCD, notably computer science.

Natural Computing and Optimisation.

Led by Prof. Mike O'Neill this cluster studies computational systems inspired by the Natural World, including complex, physical, social and biological systems, and optimisation and model induction methods in their broader sense. The main facets of the cluster are: nature-inspired problem solving, understanding natural systems, exploiting natural processes as computational machines, and developing the next generation of optimisation and model induction methods.

Groups in this cluster develop and apply methods to a broad range of problem domains including Finance, Computer Science, Design, Architecture, Music, Sound Synthesis, Bioinformatics, Engineering and Telecommunications.

Networks and Data Analysis

The Networks and Data Analysis cluster is concerned with the analysis of complex data from and about networks. These networks may be social networks (in the broadest sense), biological networks, sensor networks or communications networks. The defining characteristic of the research in this cluster is the significance of the network structure in the data. The research concerns the discovery of interesting structure in the data and the fusion of data from different sources.

Security and Trust.

The Security and Trust cluster seeks to combine fundamental mathematics, computer science and engineering, with practical software engineering expertise and knowledge of human behaviour, to study problems in the areas of security and trust. Research topics include cryptography, security, privacy, trust, voting issues, information security, network coding and network information theory, watermarking, steganography, error correction, modulation, signal processing.

Simulation Science and Extreme Events

This cluster aims to study and link the broad common underpinning causes of extreme weather, market crashes, social fads, and global epidemics using simulation science as the tool of discovery.