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algorithms Extend the superstructure to tackle AC-PF problems of different complexities and assess its convergence in inference Investigate scaling and performance bottlenecks Explore hybrid ML-classical
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flexibility, rising uncertainties and complexity from rapid changing energy landscape. The successful candidate will have experience in: electrical and energy systems modelling, analyses, operation or planning
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geometries. Current simulation-based approaches require complex 3D meshes and are often too slow for practical medical use. This project aims to create accurate and rapid surrogate models by combining physics
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in complex digital projects - Conocimientos en testing de usabilidad y análisis de métricas UX mediante herramientas especializadas (Maze, Useberry) // Knowledge of usability testing and UX metrics
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communication skills. Ability to convey complex concepts in a clear and understandable manner. Familiarity with research methodologies, data analysis, and literature review. Strong interpersonal skills
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complexities and assess its convergence in inference Investigate scaling and performance bottlenecks Explore hybrid ML-classical approaches, the application of meta learning, and the integration of convex
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, completing an honors thesis or senior capstone, or serving as a lead research assistant on a complex analytical project. The candidate must be self-directed and detail-oriented, with preference for those with
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criteria Selection will be based on an applicant's: Potential to make a significant contribution to mental-health research and approaches Capacity to communicate complex ideas and theory, and the ability
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schizophrenia research and approaches Capacity to communicate complex ideas and theory, and to undertake research in a clinical setting. The selection of applications for the award is undertaken by an assessment
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, or machine-learning frameworks is an asset Strong analytical skills with a solid understanding of data evaluation, modeling, and interpretation of complex datasets Ability to work independently as