GRAPES: Learning, processing and optimising shapes

GRAPES

GRAPES: Learning, processing and optimising shapes
GRAPES aims at significantly advancing the state of the art in a variety of fields ranging from Computational and Numerical Mathematics, to Geometric Modelling and CAD, up to Data Science and Machine Learning, in order to promote game changing approaches for generating, optimising, and learning 3D shapes. Research is articulated around 3 scientific work packages: 1. High-order methods and representations 2. Algebraic & numeric tools in shape optimisation and analysis 3. Machine Learning for shapes Concrete applications include simulation and fabrication, design and visualisation, manufacturing and 3D printing, retrieval and mining, reconstruction and urban planning. Our 15 PhD candidates shall benefit from both top-notch research as well as a strong innovation component through a nexus of intersectoral secondments and Network-wide workshops. Ιnnovation and technology transfer is supported by the active participation of SMEs, either as beneficiary, or as associate partners hosting secondments.
Status
Completed
Start Date
End Date
Type
European
Responsible
Ioannis Emiris
Partners
1. ATHINA-EREVNITIKO KENTRO KAINOTOMIAS STIS TECHNOLOGIES TIS PLIROFORIAS, TON EPIKOINONION KAI TIS GNOSIS
2. UNIVERSITAT DE BARCELONA
3. INSTITUT NATIONAL DE RECHERCHE EN INFORMATIQUE ET EN AUTOMATIQUE
4. JOHANNES KEPLER UNIVERSITAT LINZ
5. RWTH AACHEN UNIVERSITY
6. SINTEF AS
7. UNIVERSITY OF STRATHCLYDE
8. UNIVERSITA DELLA SVIZZERA ITALIANA
9. UNIVERSITA DEGLI STUDI DI ROMA TOR VERGATA
10. Vilnius University
11. GEOMETRY FACTORY SARL