49 phd-position-in-image-processing Postdoctoral positions at Carnegie Mellon University
Sort by
Refine Your Search
-
for extracorporeal life support (ECLS) in animals. The student must have (1) a Biomedical Engineering PhD, (2) significant experience testing various anticoagulants during ECLS in animals, (3) experience writing and
-
sensors is important Qualifications: PhD in Mechanical Engineering, Chemistry, Bioengineering or related field Experience designing and validating diagnostic or analytical assays, including protocol
-
-solving skills Organization and planning skills Strong oral and written communication skills Qualifications: PhD in a related field required Experience working on and publishing refereed papers on problems
-
-solving skills Organization and planning skills Strong oral and written communication skills Qualifications: PhD in a related field required Experience working on and publishing refereed papers on problems
-
scientist position is available immediately in the automated science laboratory at Carnegie Mellon University. The primary area of interest for this posting is in the synthesis and characterization
-
university’s creative, dedicated and close-knit community. We place emphasis on practical problem solving, interdisciplinary learning, a transformative spirit, and collaboration From creative writing
-
Learning Squared project, run by the Human-Computer Interaction Institute at Carnegie Mellon University aims to double the rate of math learning in middle school students, particularly those who have been
-
support the mission of the university through their work. Qualifications: PhD degree in Mechanical Engineering, Biomedical Engineering or a related field 1-3 years of experience Research and hands
-
timely sources of data to understand the labor impacts of AI. The researcher will deploy an empirical approach to measure and better understand the relationship between business processes and technology
-
timely sources of data to understand the labor impacts of AI. The researcher will deploy an empirical approach to measure and better understand the relationship between business processes and technology