Sort by
Refine Your Search
-
Category
-
Program
-
Field
-
European language Excellent communication, organization, and interpersonal skills Attention to detail and accuracy Knowledge of digital image technology, photographic processes and ability to evaluate analog
-
surgery Image analysis software and systems (e.g. FIJI/ImageJ, EyeWire) Light microscopy Experience with tilt series EM tomography Princeton University is an Equal Opportunity and all qualified applicants
-
of digital image technology, photographic processes and ability to evaluate analog and digital image quality Interest in learning new technologies Ability to take initiative, solve problems and prioritize work
-
related areas at the interface of computer/data science and the life sciences. Applicants must hold a Ph.D. in Engineering, Computer Science, Physics, Chemistry, Neuroscience, Quantitative Biology or
-
, materials science and engineering, chemical engineering, or in a relevant engineering field, with an extensive background and training in the operation of a wide range of spectroscopic and imaging techniques
-
data sets (genomics, proteomics, imaging, neuroscience), and related areas at the interface of computer/data science and the life sciences. Applicants must hold a Ph.D. in Engineering, Computer
-
. in chemistry, physics, materials science and engineering, chemical engineering, or in a relevant engineering field, with an extensive background and training in the operation of a wide range of
-
: 278613309 Department Engineering & Applied Science Category Research and Laboratory Job Type Full-Time Overview The School of Engineering and Applied Science operates a Machine Shop to support the research
-
VPCL communication strategy which presents a compelling and consistent image of the VPCL mission, vision, strategies, goals and accomplishments to various constituent groups. This position will work
-
part of the core PLI team, which includes top-tier faculty, research fellows, scientists, software engineers, postdocs, and graduate students. Fellows will have access to the AI Lab GPU cluster (300