Sort by
Refine Your Search
-
Listed
-
Category
-
Employer
- University of British Columbia
- Natural Sciences and Engineering Research Council of Canada
- University of Victoria
- University of Waterloo
- Dalhousie University
- Ryerson University
- Canadian Association for Neuroscience
- Fields Institute
- Nature Careers
- Northern Alberta Institute of Technology
- University of Saskatchewan
- 1 more »
- « less
-
Field
-
applicants who receive their PhD less than one year prior to their start date. Fellows from a diversity of disciplines — from groups who have traditionally been underrepresented in science, technology
-
, electric vehicles, net-zero homes and renewables. In September 2010, Toronto Metropolitan University announced the creation of the CUE. The intention was to provide a unique research and technology
-
A motivated Postdoctoral Fellow is sought to join a unique multidisciplinary team of imaging and ultrasound engineers (Bruce Pike, Sam Pichardo, Kartik Murari) and neuroscientists (Zelma Kiss
-
Supported by the Knut and Alice Wallenberg Foundation, the Wallenberg - NTU Presidential Postdoctoral Fellowship provides the opportunity for early career scientists, engineers and scholars from
-
fabrications, low-temperature cryogenic transport measurements, Design/Modeling of CNT quantum electronic devices Relevant Fields: Physics, Chemistry, Material Science Engineering, Chemical Engineering, Electric
-
Program has collaborated with faculty, students and universities by recognizing and supporting exceptional PhD students that address focused areas of interest in technology . Interested applicants must be
-
. Ideally, fellows pursue unconventional projects in new areas of science, engineering and social sciences. The fellowship was founded in 2002 by the late Swiss entrepreneur Dr. Branco Weiss. It is based
-
. The competition is open to students in all disciplines (natural sciences, engineering, humanities, social sciences and arts). Scholarships are not offered for studies in the medical sciences and the learning of new
-
(CDF) are for applicants who hold a doctoral degree from a non-biological discipline (e.g. physics, chemistry, mathematics, engineering or computer sciences) and who have not worked in the life sciences
-
developing quantum machine learning techniques. Relevant Fields: Physics, Electrical and Computer Engineering or equivalent field Required Skills: Strong condensed matter physics, statistical physics, quantum