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. Two (2+) or more years of nursing leadership or Charge RN experience. Skills in quality management. Experience leading quality initiatives and project management within a shared governance model
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Lighting, Audio Modeling, Database, etc.) Knowledge of principles and practices of volunteer recruitment, supervision, motivation and evaluation. Knowledge, skill and ability in recruiting, training
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. The selected candidates will perform experiments using cell culture model systems, in vitro biochemistry model systems, and animal model systems. Opportunities to collaborate, teach, and supervise other
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are seeking a highly motivated and skilled Lead Anaplan Model Builder to join our growing Health Sciences Business Analytics team. In this role, you will play a key role in supporting our financial planning
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development. Experiments are performed independently and as part of a team. Under supervision the incumbent will perform laboratory bench experiments related to studies in mouse models of asthma using different
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become the first in their families to graduate from college. As a department within UC San Diego Academic Affairs, The Preuss School also serves as a model school to study and develop the best practices in
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research informatics, bioinformatics, biomedical data modeling and ontologies, biomedical natural language processing and information retrieval, health artificial intelligence and machine learning, privacy
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relating to database system design. Advanced database querying and modeling skills working with moderately complex databases. Familiarity with logical data design and data mapping or data conversion
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-disciplinary research projects. Proven publication record in neurodegenerative disease and experience in development or use of spatial transcriptomics. Employment is subject to a criminal background check. Must
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, bioinformatics, biomedical data modeling and ontologies, biomedical natural language processing and information retrieval, health artificial intelligence and machine learning, privacy technology, global health