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or Raisers Edge preferred - Superior interpersonal skills and a positive attitude, with focus on customer satisfaction - Proficiency with general Data Entry and Microsoft Office and ability to use multiple
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, enhancement, and integrity. Represent the division as part of the University’s Data Governance Committee. Ensure coordination of data projects with the Division of Computing & Information Technology (C&IT
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scientific writing and communication. Stay current on funding trends and best practices in scientific writing by engaging in ongoing learning and professional development opportunities. Manage multiple writing
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for coordinating all operational aspects and overseeing the day-to-day operations of the assigned fellowship program in the Wayne State University Graduate Medical Education (GME) Office. Ensures compliance with
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support personnel. Distribute and review work. Train in appropriate office methods and procedures. - Perform related work as assigned. Unique duties: Qualifications: - High school graduate with
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exceptional educational opportunities which prepare students for success in a global society. Essential functions (job duties): Receive, issue, store, distribute, and inventory a variety of materials, equipment
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. Strong organizational and time-management skills required. Maturity, sound judgment and ability to handle multiple tasks simultaneously in a deadline-oriented environment. Preferred qualifications: School
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scheduled inventory counts. Resolves discrepancies and determines root cause of inaccuracies. Orders and maintains proper stock levels and supply records. Receives, issues and distributes a variety of
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inclusion creates exceptional educational opportunities which prepare students for success in a global society. Essential functions (job duties): Participates in mission of the Program and development
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of research data, contributing to the development of tools that enhance data-driven projects. Essential Functions: Assist in developing research database learning models for research-driven computer vision