20 algorithm-development-"Multiple"-"Prof"-"Prof"-"Simons-Foundation"-"St" positions at Heidelberg University
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Develop and implement strategies to ensure the success and growth of a $1M+ comprehensive annual giving program as an integral component of Heidelberg University’s overall institutional advancement
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on accessing appropriate support services. Responsible for the development and implementation of policies and procedures to ensure equal access for students with disabilities in compliance with Section 504
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Develops, implements, and evaluates comprehensive academic support services to enhance student retention, persistence, and academic success. Supervision Received: Reports to the Senior Director of
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, and manages student ambassadors who serve as campus tour guides Develops comprehensive training programs for student ambassadors covering campus knowledge, tour techniques, and customer service
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sensor data, with applications in disease modeling and the development of material science-based innovations. These efforts aim to optimize system performance and uncover novel biological insights in close
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the Metabolomics Core Technology Platform (MCTP). We seek an enthusiastic scientist who will operate, develop, and continuously advance spatial metabolomics services, facilitating cutting-edge research across
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primarily on the Heidelberg Tributary Loading Program (HTLP) and assist with sample collection and analysis in the laboratory associated with multiple projects. More specifically, this position will include
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Reporting to the Director of Athletics, the Coordinator of Recreation & Athletic Facilities and will provide help to develop a comprehensive campus recreation program including club sports
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project BEPREP (f/m/d) Your tasks: Apply and further develop machine learning methods for the analysis of health and climate data Conduct spatio-temporal analyses of patient and climate datasets to identify
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for Astronomy in Germany. The StarForML group focuses on developing robust machine learning tools for the evaluation of star formation observations. We aim to gain new insights into how star formation progresses