Sort by
Refine Your Search
-
Listed
-
Category
-
Program
-
Field
-
PhD Scholarship for The Impact of Future Human Values and Practices on Australia’s Net Zero and Digital Transitions Job No.: 679372 Location: Caulfield campus Employment Type: Full-time Duration
-
our world-class research community. Browse or search for projects and supervisors, read about our research strengths and initiate an application, all in one place. Browse Research projects Supervisors
-
PhD Scholarship – Modelling the social and political drivers of net zero transitions Job No.: 670767 Location: Clayton campus Employment Type: Full-time Duration: 3.5-year fixed-term appointment
-
addiction, and mental health issues. Turning Point operates a network of 26 helplines across the country, ensuring accessible and immediate support for individuals in need. These helplines serve as a vital
-
Cryptography for Cloud-Based File Sharing Systems Quantum-Resistant Cryptography for Network Encryptors Senetas network encryptors are specialised hardware and software appliances used to encrypt network traffic
-
% employer superannuation) Amplify your impact at a world top 50 University Join our inclusive, collaborative community Be surrounded by extraordinary ideas - and the people who discover them The Opportunity
-
future leaders Thrive in a community where bold ideas and educational excellence meet The Opportunity Join a dynamic academic environment as Lecturer (Practice) in General Practice and play an important
-
Level 08 (plus 17% employer superannuation) Amplify your impact at a world top 50 University Join our inclusive, collaborative community Be surrounded by extraordinary ideas - and the people who discover
-
such systems are limited to the learning errors due to the neural component. In this Ph.D. project, you will be exploring the use of Lipschitz Continuous Neural Networks to learn Lipschitz-bounded neural models
-
such systems are limited to the learning errors due to the neural component. In this Ph.D. project, you will be exploring the use of Physics-Informed Neural Networks to encode the symbolic knowledge