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Research FieldEngineering Additional Information Benefits Benefits A PhD programme of high quality training : 4 reasons to apply SEED is a programme of excellence that is aware of its responsibilities
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FieldPhysics Additional Information Benefits Benefits A PhD programme of high quality training : 4 reasons to apply SEED is a programme of excellence that is aware of its responsibilities: to provide a programme
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to propose improvements in operational policies and storage capacities. To develop the project, The PhD student will be provided with adequate computer equipment and access to high-performance computing
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. A target result would be a music generation system that can perform real-time, high-quality generation on a single GPU, while being trained on only 10 hours of data. Another direction consists in
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of rehabilitation exercises) will develop an improved computer vision-based approach for functional capacity evaluation (FCE), namely, the assessment of a person’s ability to perform daily living activities or work
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LanguagesENGLISHLevelExcellent Research FieldComputer science Additional Information Benefits Benefits A PhD programme of high quality training : 4 reasons to apply SEED is a programme of excellence that is aware of its
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Additional Information Benefits Benefits A PhD programme of high quality training : 4 reasons to apply SEED is a programme of excellence that is aware of its responsibilities: to provide a programme of high
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Research FieldCommunication sciencesComputer science Additional Information Benefits Benefits A PhD programme of high quality training : 4 reasons to apply SEED is a programme of excellence that is aware
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) LanguagesENGLISHLevelExcellent Research FieldCommunication sciencesComputer science Additional Information Benefits Benefits A PhD programme of high quality training : 4 reasons to apply SEED is a programme of excellence that is
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datasets [2]. Fine-tuning on labelled SAR data images [4]. Model performance will be compared against traditional ViTs and CNNs in terms of accuracy, computational efficiency, and robustness in detecting