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feature filtering procedure to deal with the large feature set necessary to predict the thermoelectric ZT of a material. - Improve the already existing experimental dataset. - Apply different machine
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, takes place in the frame of the SF-PLANT project of PEPR SupraFusion which aims at assessing the impact of high temperature superconductors in the design of fusion power plants. The prediction of plasma
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will incorporate predictions of changes in local energy use and consumption, as well as the specific characteristics of the use cases studied (port applications). Objectives The main objective of this 12
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small portion of the tumor. Once the diagnosis is made, few criteria are available to predict treatment efficacy. Cancer therapies increasingly rely on biological and morphological criteria
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techniques during ex vivo testing and during monitoring of the animal's response to material integration should provide sufficient data to enable the construction of predictive tools. Currently, experimental
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Inria, the French national research institute for the digital sciences | Bron, Rhone Alpes | France | 22 days ago
attention, prediction and learning, as well as the intricate coupling between action and perception. Our research combines (1) cross-species in-vivo observations of brain electrical and neurotransmitter
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lactate, offering a unique insight into biochemical activity within tumor tissue. The joint exploitation of these two modalities could significantly improve the prediction of tumor progression, but requires
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designed to be interrogated by electrochemistry in a unique multiscale approach (ensemble vs. single object levels), to investigate how controlled spatial organization at the nanoscale can favor their
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.) together with advanced artificial intelligence methods. The main objectives are to: ➔ design and experiment with multimodal AI models to improve the diagnosis and prediction of battery aging; ➔ explore and
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data in order to predict the effects of ionizing radiation on living matter and to contribute to the development of innovative radiotherapies. These developments are carried out within a multi-scale