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, to the extent permitted by the JHU equivalency formula. Preferred Qualifications Technical training or AA. Minimum Skills & Abilities Able to operate basic office equipment, e.g. photo copier, fax machine
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language models (LLMs) and machine learning to develop AI-powered health screening tools. Tasks will largely be remote but may require collaboration with interdisciplinary teams, including public health
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information in an appropriate manner requiring good oral and written communication skills. Has operating knowledge of the personal computer to help maintain the mouse colony database and to communicate with
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reports, donor updates, and policy briefs. Document and maintain reproducible workflows and code using version control systems. Contribute to the development of methods for machine learning-based
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and practice of basic laboratory biology techniques, and ability to learn, adapt, and carry out established written protocols independently. Strong organizational and computer skills, meticulous
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engineering systems analysis/optimization, or computational algorithms § Familiarity with multiple computer languages, including Python. § Ability to develop prototypes of tools needed to analyze data. Â
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summarizes accounting transactions. Assembles documents for computer input, verifying and ascribing dates of credit, accuracy of account numbers and allocations, total cash received, and segregation of gift
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(such as Cartesian coordinate measuring machines, laser trackers, terrestrial laser scanners, X-ray computed tomography systems). These test procedures are then absorbed into national and international
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concerts and performances. Machines and/or equipment used on the job Operate a variety of machines and equipment including automobiles, vans, office equipment, radio, telephone. Must qualify with Baton / OC
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. Document and maintain reproducible workflows and code using version control systems. Contribute to the development of methods for machine learning-based classification of risk factors for SF medicine