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Cornell University, Department of Clinical Sciences Position ID: Cornell -Department of Clinical Sciences -MEDONCO [#30232] Position Title: Position Type: Tenured/Tenure-track faculty Position
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and meet program goals. Ability to relate to and communicate effectively with staff, community leaders, students, and others. Technology Skills - Microsoft Office suite, database, internet, and virtual
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We Need Required Qualifications: Bachelor's degree in computer science or related field or equivalent combination of education and experience. Three (3)+ years of experience of building production
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that includes the College of Agriculture and Life Sciences (CALS), where these two positions reside, the Cornell Ann S. Bowers College of Computing and Information Science , and the School of Industrial and
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; Leadership Skills for Success Department Background: The College of Agriculture and Life Sciences (CALS) is a pioneer of purpose-driven science and Cornell University’s second largest college. We work across
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to the development of innovative solutions to address novel global ecological and conservation challenges. This position will also collaborate closely with the CAPS Conservation Science Program to translate research
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project on carbon governance and digital agriculture. This person will conduct research on emerging developments in remote sensing, computer science, biogeochemistry, carbon governance, and finance
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This position will serve as the Student and Family Support Specialist for Cornell Cooperative Extension Association of Jefferson County in support of the 4-H Afterschool Program. The 4-H afterschool
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This position will serve as the Student and Family Support Specialist for Cornell Cooperative Extension Association of Jefferson County in support of the 4-H Afterschool Program. The 4-H afterschool
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variety of genetic, molecular and cell biology techniques, including cloning, protein biochemistry, structural biology, computer programming, machine learning, tissue culture, fluorescence imaging, genetic