Sort by
Refine Your Search
-
Listed
-
Employer
-
Field
-
, including the demonstrated ability to confidently and effectively work with colleagues, project team leaders, and industry partners. High level of communication skills. Mandatory Qualifications: PhD
-
team environment, including the demonstrated ability to confidently and effectively work with colleagues, project team leaders, and industry partners. High level of communication skills. Mandatory
-
publications, data, collaborators, and leadership experience to advance your next step in academia, biotech, or industry. Conveniently based at Perth children’s Hospital, this is a full time, 3 year position
-
-generation sequencing data analysis and cross-disciplinary research high-level skills in communication, leadership, and collaboration a developing network of academic, industry, and professional partners. Pre
-
workplace. The size, breadth and quality of our education and research programs - including significant industry, government and community collaborations - offers you vast scope and opportunity for a long
-
) literacy and engagement in Australia. We offer a uniquely rewarding workplace. The size, breadth and quality of our education and research programs - including significant industry, government and community
-
of high-quality outcomes in research. Clear evidence of the desire and ability to achieve research excellence. Significant involvement with the profession and/or industry is desirable. Ability to work in a
-
Group and the Nuclear Analysis Section of Reactor Operations. At UNSW, you will become part of a vibrant materials research community within in the School of Mechanical and manufacturing Engineering, and
-
an outstanding career environment We offer a uniquely rewarding workplace. The size, breadth and quality of our education and research programs - including significant industry, government and community
-
the project prepare materials for publications in journals and conferences collaborate with industry partners and leaders in the field of FPGA-based machine learning accelerators About you The University values