Ziel
"Complex decision making in enterprises should involve mathematical optimization methods, because a “best choice” has to be made out of a huge number of feasible options. A mathematical description of such decision processes typically involves both “continuous” and “discrete” decisions. If the latter are present, the customary modelling approach is to use integer variables, which are also used to represent all possible nonlinearities, so that the remaining part of the model is linear. This leads to Mixed-Integer Linear Optimization (MILO) problems, which can be handled nowadays by many packages, but are often very difficult to solve.
Difficulty of MILO problems is often due to the fact that objective functions or constraints that are structurally nonlinear (e.g. quadratic) are linearized by introducing new integer variables. In many cases, it was observed that this is not the best way to proceed, as facing the nonlinearity directly without the new variables leads to much better results. Algorithmic technology for the resulting Mixed-Integer Nonlinear Optimization (MINO) problems is still at its early stage.
The present situation is that enterprises facing a MINO problem generally give up due to the lack of efficient solvers, or try to convert it to a MILO one often too hard to be solved in practice. On the other hand, in the academia there is now an increasing expertise in MINO, which is however hardly exported outside due to the lack of interaction with the industrial world. It is the purpose of this project to help satisfy the increasing demand for highly qualified researchers receiving, at the same time, a state-of-the-art scientific training from the academia and hands-on experience with real-world applications from the industry.
The researchers formed within this project, once recruited by an enterprise at the end of their training, will have the potential to apply all the available knowledge to optimize complex decision making in the real-world."
Aufforderung zur Vorschlagseinreichung
FP7-PEOPLE-2012-ITN
Andere Projekte für diesen Aufruf anzeigen
Finanzierungsplan
MC-ITN - Networks for Initial Training (ITN)Koordinator
40126 Bologna
Italien
Auf der Karte ansehen
Beteiligte (13)
00185 Roma
Auf der Karte ansehen
1098XG AMSTERDAM
Auf der Karte ansehen
8092 Zuerich
Auf der Karte ansehen
20090 Segrate
Auf der Karte ansehen
55100 LUCCA
Auf der Karte ansehen
2719EA Zoetermeer
Auf der Karte ansehen
44227 Dortmund
Auf der Karte ansehen
1348 Louvain La Neuve
Auf der Karte ansehen
50931 Koln
Auf der Karte ansehen
69117 Heidelberg
Auf der Karte ansehen
9020 Klagenfurt am Wörthersee
Auf der Karte ansehen
5037 AB Tilburg
Auf der Karte ansehen
91128 Palaiseau Cedex
Auf der Karte ansehen