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. Significant experience of developing deep learning methods using computational frameworks such as PyTorch, TensorFlow etc. Experience of working with molecular questions in the biosciences An interest and
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understand, process, translate and generate SL efficiently. We invite applications for a postdoctoral researcher with a strong background in deep learning, unsupervised models, NLP and/or sign language
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for applications in virtual reality, gaming, digital assistants, and social robotics. We build on recent breakthroughs in spontaneous speech synthesis and gesture generation based on deep generative models to train
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prior to the application deadline Research experience with deep learning architectures (e.g. Transformers, diffusion models, graph neural networks) applied to multimodal data. Proven expertise in time
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, correct batch effects, and preserve biologically meaningful signals. Clinical contextualization: acquire a deep understanding of breast‑cancer pathology and treatment pathways to evaluate how integrated
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design, including ground improvement techniques e.g. Deep Mixing or piled embankments. Experience working in industry-academic partnerships, especially related to high-speed rail. Proficiency in numerical
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bioinformatics methods have made significant strides, AI approaches - particularly deep learning - are revealing patterns and relationships in biological data that were previously inaccessible. As a postdoctoral
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physics, applied mathematics, machine learning, bioinformatics, biophysics, spectroscopy, image processing, ecological modeling, molecular biology, plant physiology, marine biology or an interest in gaining