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management of PhD program serving over 160 students and over 200 faculty. Serve as backup to the NGG Coordinator as needed. Carry out 5 core functions: 1. Assist with data management and scheduling related
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Coordinator (Hybrid Eligible) Job Profile Title Administrative Coordinator Job Description Summary Assist the NGG Coordinator with high level administrative duties for successful management of PhD program
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genetic medicine. Requirements: We are looking for highly motivated postdoctoral fellow with demonstrated ability to lead a research project and work independently. Interested candidates should have a PhD
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applicants are qualified for the position by either having graduated from a CAMPEP-accredited MS or PhD graduate program, or possessing a PhD in physics or related discipline and having completed a CAMPEP
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for Penn’s large and vibrant MD-PhD program (aka Medical Scientist Training Program or MSTP), one of the largest and mostly highly regarded programs of its kind in the country. In addition, we provide
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://www.cbica.upenn.edu/, CBICA), Director, Christos Davatzikos, PhD. The Data Analyst Sr. will: * Design experiments, test hypotheses, and build statistical/machine learning models. * Conduct exploratory as
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Administration Recruit NRT Fellows and build pipeline from MSI network, PREM and Penn programs such as SEAS Bridge to PhD. Coordinate PhD NRT Fellow selection with PI and co-PI. Manage programing & host monthly
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rank will be commensurate with experience and qualifications. The posting will remain open until filled. Qualifications Qualifications for the Division Chief position include DMD/DDS/MD and/or PsyD/PhD
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for Research Master’s degrees and PhDs across the natural sciences, social sciences, and humanities. Approximately 1,200 doctoral students and 350 Research Master’s students seek degrees in the 33 Graduate
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://www.cbica.upenn.edu/, CBICA), Director, Christos Davatzikos, PhD. The Data Analyst Sr. will: * Design experiments, test hypotheses, and build statistical/machine learning models. * Conduct exploratory as