Sort by
Refine Your Search
-
Employer
-
Field
-
the project lead peer reviewed outputs relevant to acoustic tracking and project modelling objectives, and other objectives as appropriate. About you The University values courage and creativity; openness and
-
: developing and testing new approaches to water resources modelling, application of Bayesian inference methods to environmental problems, machine learning and data science applications, undertaking analysis and
-
discipline knowledge and developments. Demonstrated ability to undertake high quality academic research and conduct independent research with limited supervision. Demonstrated track record of publications and
-
analysis reports. Research publications in high-quality journals and conferences. This exciting role will contribute to the Centre for Augmented Reasoning’s objective to build world-class research and
-
Reasoning’s objective to build world-class research and engineering capability in machine learning while demonstrating the potential and impact of this knowledge for industries in Australia. To be successful
-
-reviewed publications relevant to project objectives support occasional teaching activities and contribute to the supervision of undergraduate and postgraduate students. The ARC-funded project is an
-
, synthesis and curation, and assist CIs with overall project coordination lead the preparation of peer-reviewed publications relevant to project objectives support occasional teaching activities and contribute
-
preparation of peer-reviewed publications relevant to project objectives support occasional teaching activities and contribute to the supervision of undergraduate and postgraduate students. The ARC-funded
-
countries; practical experience desirable. At (Level B) A track record of significant involvement with the profession and/or industry. Demonstrated track record in research with outcomes of high quality and
-
and Ar-Ar geochronology, fission-track and (U-Th-Sm)/He thermochronology, vitrinite reflectance, and thermal history models. New relational data models data for incorporating methods such as include