251 high-performance-computing positions at The University of Queensland in Australia
Sort by
Refine Your Search
-
Listed
-
Category
-
Field
-
and committees, perform administrative functions, provide support to colleagues, and uphold university values. This is a teaching focused position. Further information can be found by viewing UQ’s
-
. The successful candidate will play a key part in ensuring the smooth running of the farm while supporting the delivery of high-quality practical learning experiences and research outcomes. Key responsibilities
-
demonstrates a well-rounded record of excellence across teaching, research and high-level government/industry engagement, with the ability to secure competitive grant funding. Applicants with experience in
-
Academic Services Division This is a full time, continuing position with a salary in the range $102,565 to $111,686 (HEW 7) plus a generous super allowance of up to 17%. Lead a high-performing team
-
project team, produce high-quality research outputs, seek and manage research funding, publish in reputable journals, utilise best practice research methodologies, and participate in project discussions
-
education program in the Gladstone region. In this pivotal academic role, you will provide strategic and operational leadership for teaching and learning, working closely with students, staff, clinicians, and
-
oversee staff development and training, coordinate scheduling, and ensure compliance with hospital policies and procedures. At UQ VETS, we take pride in delivering high-quality patient care in a fast-paced
-
engagement, and creating a cohesive and high-performing academic environment. Your leadership will directly shape the development of future-ready graduates and contribute to research that improves health
-
matters across UQ. This is a high-impact opportunity to partner with senior leaders, influence policy, support organisational change, and lead the resolution of sensitive workplace issues with
-
technologies that support decarbonisation and clean energy goals. The successful applicant will contribute to the computational modelling and design of Prussian blue analogues, spin-crossover metal-organic