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models that are more efficient, inherently multimodal, and capable of processing information at an unprecedented scale. Key research questions include (but not limited to): Non-Autoregressive and Diffusion
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. The successful candidate will be joining the Ultracold Quantum Gases group led by Prof. Dr.Leticia Tarruell . The Fermi-Hubbard model is a cornerstone model of condensed matter physics. It describes the physics
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areas of nanoscience and nanotechnology. Job Title: Specialist Technician in Preclinical Disease Modelling and Therapy Research area or group: Nanomedicine Group Description of Group/Project
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. Please, check out our Recruitment Policy The role We are seeking a highly motivated bioinformatician to join the Evolutionary Processes Modeling group. The selected candidate will be involved in
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the boundaries of what's possible in Large Language Models (LLMs), AI-Generated Content (AIGC), and the fundamental infrastructure that powers them. This is not just another research position. You will
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, control and maintenance of the inventory of biological samples (mammalian cells, microorganisms, worms, model organisms, antibodies, etc.) of the Unit. Assist in the purchasing process, registration
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the molecular and cellular mechanisms underlying female fertility, using a combination of molecular biology, imaging, and model systems to understand how oocytes maintain viability and functionality. The lab is
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Center for Genetically Engineered Mice and the Key Laboratory of Model Animal and Disease Research of the Ministry of Education. The School of Life Sciences, originating in 1914 as China's first university
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, Azure) Exposure to GPU computing for data analysis Knowledge of AI/ML approaches relevant to omics data Practical understanding of biostatistics and statistical modeling Experience delivering
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methods to accelerate the discovery and optimization of novel materials, and actively develop large-scale materials models (AI for Science) to transform the R&D process through AI-driven paradigms. In