Sort by
Refine Your Search
-
Listed
-
Category
-
Employer
- Curtin University
- Queensland University of Technology
- University of Adelaide
- Monash University
- University of Southern Queensland
- CSIRO
- Murdoch University
- Swinburne University of Technology
- Nature Careers
- University of Melbourne
- Australian Rotary Health PhD Scholarships
- Data61 PhD Scholarships
- Griffith University
- 3 more »
- « less
-
Field
-
environment with members of the School of Mechanical, Medical and Process Engineering at QUT as well as being supported by the academics and expert industries within the ARC Training Centre.
-
, Chicago, and the University of Saskatchewan. Our research team and Murdoch University are committed to creating a friendly and diverse learning environment. We are proud to welcome equal opportunities
-
on clinical trials Well-developed planning and organisational skills, with the ability to prioritise multiple tasks and set and meet deadlines Capacity to work in a collegiate manner in a team environment and
-
open to domestic and international students, offering a unique chance to engage in cutting-edge research in a dynamic environment. Responsibilities: Conduct experimental research on magnetocaloric
-
skills in creating digital environments or working with virtual reality or augmented reality. Preference will be given to applicants who have experience in or established careers in the live performing
-
to be prepared for the problem-based environments they will face upon entering their respective fields. They will engage with a distinguished national cohort of peers from diverse disciplines and
-
UTI episode by age 65. This project will provide evidence for an emerging role for pharmacists to lead AMS activities in collaboration with other health professionals in RACH environments to improve
-
you will receive: a QUT Tuition Fee Sponsorship single Overseas Health Cover. You will have the opportunity to engage in QUT's vibrant research environment, while undertaking your own innovative
-
reliable. This project will be supported by a robust infrastructure and an intellectually stimulating environment within our machine learning group. The PhD student will be supervised by two highly
-
-users interact with infrastructure and the built environment, improve diagnosis of risks and reduce the time required for maintenance, optimize the infrastructure performance, support information-driven