Sort by
Refine Your Search
-
work that underpins the scientific research of the collaboration. Research Title: Process Modeling using Physically Informed Machine Learning The work will entail: § Designing and training physics
-
other associates to develop optimized photonic test structures that will be incorporated in PIC process flows and enable extraction of key physical parameters associated with PIC performance, including
-
/ Mechanical Engineering / Electrical Engineering /Physics/Chemical Engineering/Chemistry - Strong oral and written communication skills - Experience in: - Reliability testing and modeling
-
educational environment. After more than 130 years, Johns Hopkins remains a world leader in both teaching and research. Faculty members and their research colleagues at the university's Applied Physics
-
, nanoscale science, neutron science, physical science, physics, and statistics. This collection of information is needed to facilitate administrative functions of the PREP Program. Routine Uses: NIST will use
-
Master's degree in Physics, Electrical Engineering, Mechanical Engineering, or a related field. § 3 years of relevant experience after the Master's degree or a Doctorate degree in Physics, Electrical
-
qualified candidate would have a Ph.D. in physics, materials science, engineering, or a related field and already have expertise in at least some of the following areas: scanning microscopy, instrumentation
-
. - Provide input for CHIPS quarterly progress reports. Qualifications § Ph. D. in physics, Engineering, or a related field § Experience with the following: o Optical metrology instrument and detector
-
motivated individual with a background in physics or mechanical engineering to work both in our cold atom vacuum standard (CAVS) lab and our vacuum calibration lab, both of which are responsible for vacuum
-
teaching and research. Faculty members and their research colleagues at the university's Applied Physics Laboratory have each year since 1979 won Johns Hopkins more federal research and development funding