-
& Astron,Schl of Posted Date 08/29/2025 Job Title Post-Doctoral Associate Job ID 370102 Location Twin Cities Department Health Informatics, ACA Inst Posted Date 08/29/2025 Job Title Post-Doctoral Associate
-
training and degree-seeking programs supported by the Regents Tuition Benefit Program Low-cost medical, dental, and pharmacy plans Healthcare and dependent care flexible spending accounts University HSA
-
Employee Class Civil Service Add to My Favorite Jobs Email this Job About the Job This is temporary Civil Service position that will conduct research in the Sarkar Lab in Biomedical Engineering. Duties
-
sessions for assigned crews. Work with Engineering Services to update and maintain utility drawings. Locate and distribute appropriate drawings for crew needs. Act as the Lead Planner for training other
-
Sciences (CFANS) Job duties Deposits (20%)– Prepare and submit departmental deposits, primarily check deposits so as to ensuring same-day completion, documentation, and approvals. This includes but is not
-
building automation networks. • Knowledge and skill using a personal computer • Knowledge of Microsoft Office suite including Word, Excel and PowerPoint. • Excellent oral and written communication skills
-
drugs on biology and metastasis of breast cancer and in vivo imaging to monitor response to targeted therapies. Specific responsibilities/duties include: Research – 65%: Conduct research under the PI’s
-
faculty member at the Associate Professor level from candidates with a Ph.D or equivalent degree specializing in biomedical engineering, electrical & computer engineering, neuroscience, or related fields
-
compliance, and strategic communications to enhance research excellence and collaborative science. This position will also directly supervise approximately 2-4 employees who lead components of MBiC operations
-
Qualifications: Bachelor’s degree in a related field (web development/design, information technology, computer science, human-computer interaction) and four years of experience in digital/IT accessibility analysis