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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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coordinates multiple large-scale research projects and globally unique data resources, such as FinnGen, nationwide health registry data and the Finnish Twin Study and leads the molecular profiling of cancer
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primary focus for this group would be computational morphometry of human model systems. Applications for other areas of computational biology, such as integration of multi-modal, large-scale data sets and
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education programs, a dynamic academic health center and entry into the Big 12 Conference, UC’s momentum has never been stronger. UC’s annual budget stands at $1.85 billion, and its endowment totals $2
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. They will work in highly-technical, multi-disciplinary teams and offer deep technical understanding of cloud computing technologies, DevOps practices, networking, IT and Big Data solutions and business
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pharmacology related to all organ systems at a level relevant to M1 and M2 students. *Teaching using multiple methods of pedagogy, including case-based instruction, large- and small-group discussion, lecture
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the Research Facilitator team and the FSTM's financial controllers to provide consistent, strategic project support Further information: Please contact the team leader of the Research Facilitators team, Your
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large European, Danish and American grants including, “Recursive and Exact New Quantum Theory” (ERC-Synergy), “New Structures in Low-Dimensional Topology” (Simons Collaboration) & “Topological Photonic
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Faculty Positions in School of Al for Science / School of Electronic and Computer Engineering, PKUSZ
of artificial intelligence and fundamental sciences. It focuses on developing a dual-track mentorship system, pioneering a research paradigm that merges scientific first principles with big data, and fostering
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learning, focusing on identifying abrupt shifts in the properties of data over time. These shifts, commonly referred to as change-points, indicate transitions in the underlying distribution or dynamics of a