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sequencing technologies to investigate somatic mutations and epimutations, exploring their roles in aging and age-related diseases. · Multi-omics Technology Development: Developing and implementing innovative
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multiple research projects, ensuring the accuracy, consistency, and integrity of data in alignment with study protocols, institutional policies, and ethical standards. ●Design, develop, and manage research
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. Responsibilities: 70% – Database Management & Collection ●Lead and oversee quantitative and qualitative data collection activities across multiple research projects, ensuring the accuracy, consistency, and integrity
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external audiences and ensures alignment with University brand standards. Reporting to the MCC Marketing and Communications Manager, this role also works closely with leadership and staff from clinical
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labs, or related educational settings. Rochester campuses to support lab operations and coordination. Strong organizational skills and the ability to manage complex schedules, equipment, and multiple
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for multiple ICI research projects such as the MN Autism Developmental Disabilities Monitoring (ADDM) project, Learn the Signs, Act Early (LTSAE), MN Leadership Education in Neurodevelopmental and Related
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schedule social media and digital content. Manages multiple projects simultaneously with attention to detail Follow College of Veterinary Medicine project management systems to optimize customer service. 10
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, figures, and routine visual content Brand Stewardship & Asset Management (10%) Help steward and evolve IonE’s visual identity in alignment with UMN standards; participate in brand refreshes, maintain
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sciences research and rotational output including the management of long-range cropping sequences for active research, rotational land activity, and livestock research feed stocks. This position works
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on applying, developing and implementing novel statistical and computational methods for integrative data analysis, causal inference, and machine/deep learning with GWAS/sequencing data and other types of omic