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- Universitat Politècnica de Catalunya (UPC)- BarcelonaTECH
- Institut d'Investigacio Biomedica de Bellvitge (IDIBELL)
- Autonomous University of Madrid (Universidad Autónoma de Madrid)
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to this research line, planning protocols, overseeing data collection, facilitating communication between teams, and ensuring ethical and regulatory compliance. Implement data-analysis models to predict cognitive
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effectiveness and toxicity of the treatments. Other duties: Develop and validate cancer risk prediction models using deep neural networks based on semistructured data. Develop and validate learning strategies
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environment. Development of models to diagnose and predict battery performance and ageing. Participation in national and international research projects related with energy storage and its integration in
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. The work is part of the regional project “Optimizing Renewable Energy Integration: FPGA-Based Model Predictive Control (MPC) for Grid Stability” (Ref. SI4/PJI/2024-00238), funded by Comunidad de Madrid and
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to review the surveillance and control systems for L. monocytogenes. LISTADOS will advance the state of the art by linking two relatively recent findings: the phenotypic differences between Lineages I and II
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and refine the RG-based model to enhance its biological interpretability and robustness across different tumor types; to extend the model to simulate and predict solid tumor response to innovative
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engineered mouse prostate cancer models to uncover mechanisms of progression towards advanced, therapy resistant prostate cancer. The group uses computational approaches for cross-species analysis
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PID-based control systems to measure net cooling power. Correlate empirical thermal measurements with high-precision optical data. Develop predictive models of radiative cooling performance using FEM
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-sensor monitoring (temperature, humidity and acoustics) and predictive modeling (AI) of the properties of the mixtures (both poured and 3D printed concrete). The mission is to optimize curing processes
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experiments and interpret results. Contribute to biomarker discovery and predictive model development. Support data visualization, reporting, and dissemination of findings in publications. Requirements PhD in