Sort by
Refine Your Search
-
Petascale EM Imaging Specialist The Princeton Neuroscience Institute is searching for an accomplished scientist to lead acquisitions of petascale image datasets via volume electron microscopy (EM
-
support for campus infrastructure systems, including Active Directory, username/password issues, storage, email, backup, encryption, and for the University's teaching and learning applications and tools
-
, storage, email, backup, encryption, and for the University’s teaching and learning applications and tools, including Canva Assist with installation and troubleshooting of VPN and other remote access
-
to help run a new microscopy facility. This facility will house roughly a dozen advanced light microscopes, with a particular focus on light microscopy approaches for both imaging and active
-
user access management (network, username/password/multi-factor, systems) and data management (storage, encryption, backups, and security permissions) Assist users with technical requests and setups
-
and mathematical approaches to signal analysis, information theory, computational biology and image processing. The term of appointment is one year with the possibility of renewal pending satisfactory
-
facility will house roughly a dozen advanced light microscopes, with a particular focus on light microscopy approaches for both imaging and active interfacing with living cells and organisms. The shared
-
or ANSYS Fluent; fabricate particle sorting devices in cleanroom. Set up microfluidic imaging system, run particle sorting experiments, analyze fluorescence image data and evaluate performance metrics
-
to 15 pages writing sample and/or up to 10 design images (photos or renderings) and/or video/audio reel with cue points. e.Visual Arts: Up to 20 still images OR up to 10 minutes of video OR up to 10 still
-
to examples of performance (10 minutes total). Video is optional. *Theater: Up to 15 pages writing sample and/or up to 10 design images (photos or renderings) and/or video/audio reel with cue points. *Visual