25 computer-science-quantum-phd-student Postdoctoral positions at Iowa State University
Sort by
Refine Your Search
-
Chemistry Preferred Qualifications: Strong skills in organic synthesis Prior research experience in catalysis and/or supramolecular chemistry Department/Program & College Description: The Department
-
engineering. This includes training students for engineering careers in aviation starting as early as 1928, housing one of five NASA centers of excellence in Computational Fluid Dynamics in the 1970’s, building
-
verbal communication skills. Department/Program & College Description: The Department of Civil, Construction, and Environmental Engineering is dedicated to creating resilient buildings and bridges, safer
-
Position Title: Postdoc Social Sciences Research and Teaching Appointment Type: Post Doc/Trainee Job Description: Summary of Duties and Responsibilities: The primary responsibilities
-
. Required Minimum Qualifications: PhD in Chemical Engineering with 10+ years Experience working with fluorescent carbon nanotube-based sensors. Preferred Qualifications: Experience with biomass degradation
-
Laboratory is a world leader in catalysis, polymer upcycling, separations, computational chemistry, rare earths, quantum materials, synthesis, and additive manufacturing. Ames Laboratory is the leader
-
performed in state-of-the-art labs with advanced equipment and facilities in Ames, IA, and will involve a collaboration with the University of Wisconsin. Required Minimum Qualifications: PhD in immunology
-
Food Protection Consortium, working with plastic packaging and recycling to evaluate contamination, regulation, and properties. Required Minimum Qualifications: PhD Preferred Qualifications: Experience
-
and facilities in Ames, IA, and collaborative institutions across the US. Required Minimum Qualifications: PhD in Microbiology, Molecular Biology, or a related field. Strong verbal and written
-
Postdoctoral Researcher in Crop Genetic Resources and Informatics to apply genome informatics and quantitative genetic approaches to trait analysis in specialty (pecan) and field (maize and cotton) crops