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- Richard EversonProfessor of Machine Learning, University of ExeterVerified email at exeter.ac.uk
- Jonathan FieldsendProfessor of Computational Intelligence, Department of Computer Science, University of ExeterVerified email at exeter.ac.uk
- Dragan SavicUniversity of Exeter & Univ. of Belgrade; KWR Water Research https://www.kwrwater.nlVerified email at exeter.ac.uk
- Ed KeedwellProfessor of Artificial Intelligence, University of Exeter, UKVerified email at exeter.ac.uk
- Matthew J. CravenUniversity of PlymouthVerified email at plymouth.ac.uk
- Stefano CagnoniUniversity of ParmaVerified email at ce.unipr.it
- Alexander E.I. BrownleeSenior Lecturer, University of Stirling, previously Loughborough, Robert GordonVerified email at cs.stir.ac.uk
- John McCallProfessor Emeritus, School of Computing Engineering and Technology, Robert Gordon UniversityVerified email at rgu.ac.uk
- Giovanni IaccaUniversity of TrentoVerified email at unitn.it
- Mathew WalterPlymouth UniversityVerified email at plymouth.ac.uk
- Jaume BacarditProfessor of Artificial Intelligence, Newcastle UniversityVerified email at newcastle.ac.uk
- Matthew B JohnsUniversity of ExeterVerified email at exeter.ac.uk
- Asiya KhanAssociate ProfessorVerified email at plymouth.ac.uk
- Kimberly TamUniversity of PlymouthVerified email at plymouth.ac.uk
- Milan RadovanovicPhysical Geography, environment, space weather, climate changeVerified email at gi.sanu.ac.rs
- Dejana JakovljevićPhD research associate, Geographical Institute "Jovan Cvijić" SASAVerified email at gi.sanu.ac.rs
- Raziyeh FarmaniUniversity of ExeterVerified email at exeter.ac.uk
- Enrico Fortunato CreacoUniversità degli Studi di PaviaVerified email at unipv.it
- Zoran KapelanProfessor of Urban Water InfrastructureVerified email at tudelft.nl
- Lydia Vamvakeridou-LyroudiaKWR Netherlands and Centre for Water Systems, University of Exeter, UKVerified email at kwrwater.nl
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