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PsD-DRT-21-0057
Artificial intelligence & Data intelligence
The design of new materials is a field of growing interest, especially with the emergence of additive manufacturing processes, thin film deposition, etc. In order to create new materials to target properties of interest for an application area, it is often necessary to mix several raw materials.A physicochemical modeling of the reactions that occur during this mixing is often very difficult to obtain, especially when the number of raw materials increases. We want to free ourselves as much as possible from this modeling. From experimental data and business knowledge, the goal of this project is to create a symbolic AI capable of groping for the optimal mixture to achieve one or more given properties. The idea is to adapt existing methods of operations research, such as combinatorial optimization, in a context of imprecise knowledge.We will focus on different use cases such as electric batteries, solvents for photovoltaic cells and anti-corrosion materials.Within the project, you will: • Study the state of the art, • Propose one or several algorithms to prototype, and their evaluation, • Disseminate the resulting innovations to the consortium and the scientific community, through presentations, contributions to technical reports and / or scientific publications.Maximum duration: 18-24 months (regarding your experience).
Département Métrologie Instrumentation et Information (LIST)
Laboratoire Intelligence Artificielle et Apprentissage Automatique
Saclay
POLI Jean-Philippe
CEA
DRT/DM2I//LI3A
CEA SACLAYDIGITEO Labs SaclayBat 565 pce 2061PC 19291191 Gif-sur-Yvette
Phone number: 0169087856
Email: jean-philippe.poli@cea.fr
As soon as possible
Título | Post Doc - Combinatorial optimization of base materials for the design of new materials |
Employer | CEA Tech |
Job location | CEA, 17 rue des Martyrs, 38054 Grenoble |
Publicado | enero 21, 2021 |
Fecha límite de solicitud | No especificado |
Tipos de trabajo | Postdoctorado   |
Campos | Inteligencia Artificial,   Red Neuronal Artificial,   Minería de Datos,   Big Data,   Aprendizaje de Máquina   |