18 programming-"Multiple"-"U"-"U.S"-"Prof"-"O.P" research jobs at Johns Hopkins University
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Internal Number: 118030-en_US The Department of Neurology is seeking a Research Program Assistant to provide support, under the direction of Pediatric Neurology for multiple research projects for pediatric
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Internal Number: 118314-en_US The Department of Epidemiology is seeking a Research Program Assistant II (RPAII). This position will be responsible for overseeing recruitment, scheduling, and field site
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Johns Hopkins Molecular Psychiatry Program is seeking a Research Program Assistant II who will be responsible for the assistance of clinical and translational research, including the recruitment
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Abilities Able to effectively prioritize and work on multiple tasks with concurrent deadlines. Excellent time management skills and efficiency. Have initiative in anticipating and responding to program needs
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Internal Number: 117917-en_US Johns Hopkins Molecular Psychiatry Program is seeking a Research Program Assistant II who will be responsible for the assistance of clinical and translational research
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dialogue on AI governance. Manage multiple projects simultaneously, ensuring timelines are met and resources are effectively allocated. Collaboration & Knowledge Exchange Collaborate with policymakers
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Policy Systems" projects, supported by the Nexus Research Program, will focus on using co-design approaches to identify policy gaps, opportunities, and pathways for embedding universal health and social
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independently and manage multiple tasks. Highly attentive to detail and deadlines. Classified Title: Research Program Assistant Role/Level/Range: ACRO40/E/02/CB Starting Salary Range: $15.40 - $23.25 HRLY
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scholarship program and wide array of public health service activities. More information about the CIH can be found at Home - Johns Hopkins Center for Indigenous Health (jhu.edu) The goals of the Behavioral
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, aggregating them across multiple, pluralistic values if necessary, and fine-tuning models to satisfy those preferences. In the Normativity Lab we believe these approaches are likely to prove too limited