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focuses on resource allocation among competing alternatives. Specifically, he studies how organizational features, such as the structure of the decision-making process and the composition of the decision
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Job Description This is a Lead Researcher or Associate Scientist opportunity with the Babu Group in the Department of Structural Biology and the G Protein-Coupled Receptor (GPCR) Collaborative. As a
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crystallinity beyond the limitations of SHG and conventional methods. Advance complementary harmonic imaging (CHI) by combining polarization-resolved SHG and THG to access structural information inaccessible
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imaging and spectroscopy modalities Ultrafast and in situ/operando techniques Advanced detector technologies and correlative approaches that reveal structure–function relationships Contribute to and enhance
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target groups Strong organizational, time-management, and structured thinking skills Excellent knowledge of MS Office Fluent spoken and written German and English essential We Offer Excellent framework
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Intro: Are you interested in playing a role in groundbreaking science? Do you want to contribute to the development of laboratory techniques that help research understand cell structure, cell
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An independent, structured, and proactive working style with a strong motivation for continuous development We Offer Excellent framework conditions: state-of-the-art equipment and opportunities for international
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(Ariane Mora) , generative and geometric ML for programmable biology (Alex Tong ), ML for cell and tissue biology (Xinyi Zhang ) and structural systems virology (Jason Nomburg ), complemented by our
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geometric ML for programmable biology (Alex Tong ), ML for cell and tissue biology (Xinyi Zhang ) and structural systems virology (Jason Nomburg ), complemented by our platform for AI-driven autonomous
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hybrid models that combine deep learning with mechanistic models; foundation models of genome regulation using single-cell and spatial multi-omics data; AI-based modeling of biomolecule structures