Sort by
Refine Your Search
-
Listed
-
Category
-
Program
-
Field
-
. MCHRI and its program leaders have internationally recognised reputations as research leaders. The education of our PhD students is a core element of our training program. We aim to graduate students who
-
across all program elements You will identify as an Indigenous Australian and bring: Relevant postgraduate qualifications or extensive experience Strong experience engaging with Indigenous communities
-
elements are accurately presented to students and the government through the publication of the University Handbook. You’ll also be responsible for ensuring data integrity through configuration
-
less advanced than for other forms of data. Our research is revolutionising the analysis of time series data. But it is early days, and many more impactful challenges are yet to be overcome. This project
-
", ICML 2021 - "High Performance Logistic Regression for Privacy-Preserving Genome Analysis", BMC Medical Genomics 2021 - "Privacy-Preserving Classification of Personal Text Messages with Secure Multi-Party
-
are expected to be both (a) evidence of validated (or otherwise) replicated studies, and (more importantly) (b) an analysis of factors underlying the multi-dimensional space of experimental methodologies
-
Lease Registers. You will also be involved in preparing the annual financial statements of the University. You will work across departments to provide timely financial analysis, technical accounting
-
statistical analysis, manuscript preparation, curriculum development, and sustained teaching effectiveness. At Level C, you will demonstrate leadership in research, a substantial publication record, success in
-
virtualisation, Linux SOE and Oracle Database services Manage and mentor technical teams to meet strategic goals Guide infrastructure planning, risk analysis and deployment optimisation Ensure security, compliance
-
). "Single factor analysis in MML mixture modelling", pp96-109, 2nd Pacific-Asia Conference on Knowledge Discovery and Data Mining (PAKDD98), Lecture Notes in Artificial Intelligence (LNAI) 1394, Melbourne