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contribute to the diversity and excellence of our academic community. The Division of Advancement and Alumni Engagement utilizes resources, technology, and business for the purpose of constituent engagement
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contribute to the diversity and excellence of our academic community. INTRODUCTION: The Das lab in the Dept. of Cell Biology at Emory University School of Medicine (https://med.emory.edu/departments/cell
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responsibilities and financial documents PREFERRED QUALIFICATIONS: Bachelor’s degree in psychology, neuroscience, engineering, computer science, or related field. 1-2 years previous research experience in a
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contribute to the diversity and excellence of our academic community. JOB DESCRIPTION: Assist in scaling our AI team and technology stack, guiding AI and other innovation-related projects from conception
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quality frameworks. Work closely with various other data engineering teams to roll out new capabilities. Build process and tools to maintain AI / ML pipelines in production. Develop and enforce data
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contribute to the diversity and excellence of our academic community. The Division of Advancement and Alumni Engagement utilizes resources, technology, and business for the purpose of soliciting alumni, donor
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sciences educators who hold a graduate degree in the field of biology or microbiology from an accredited university or college. A terminal degree (PhD, EdD) is preferred, but not required. Priority will be
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the right to change remote work status with notice to employee. Emory University is dedicated to providing equal opportunities and equal access to all individuals regardless of race, color, religion, ethnic
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reserves the right to change this status with notice to employee. Emory University is dedicated to providing equal opportunities and equal access to all individuals regardless of race, color, religion
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, Computer Science or another quantitative field. Strong problem-solving and critical thinking skills. Knowledge of real world application of machine learning techniques (clustering, decision tree learning, artificial