Sort by
Refine Your Search
-
Listed
-
Category
-
Employer
-
Field
-
). Our supervisory approach emphasises good communication, supervisory teams with a combination of relevant experience, expertise and skills, and a supportive and inclusive research culture where our
-
to develop a PhD study in partnership with community partners and may include; Evaluating the cultural and clinical effectiveness of combination nicotine replacement therapy (cNRT) delivered via mail
-
This exciting project combines CSIRO's and UON's unique characterisation and fabrication facilities to identify the key degradation mechanisms in Kardinia Energy's printed solar technology with
-
combination of professional experience and academic qualifications in IT, Engineering, AI/ML, or related disciplines. Meet the entry requirements for the relevant Higher Degree by Research at Swinburne
-
PhD Scholarship in ‘Using nanoparticles to enhance the immune response and improve vaccine efficacy’
response. These nanoparticles can either have the vaccine antigen attached to their surface, or be simply mixed with the antigen with a combination of other adjuvants to increase the vaccine response. We
-
relativistic quantum information (RQI). This highly challenging PhD experience will offer you the chance to work on world-class research combining quantum information theory with key aspects of quantum field
-
talented doctoral students to work closely with world-class research groups and benefit from the combined expertise and facilities offered at the two institutions, with a lead supervisor within each
-
talented doctoral students to work closely with world-class research groups and benefit from the combined expertise and facilities offered at the two institutions, with a lead supervisor within each
-
. The team will deeply probe this exciting development in electrochemical and material sciences. We will combine our expertise in electrochemistry and chemical catalysis with polymers, materials chemistry and
-
data requirements, and lower costs for large-scale modelling tasks. PINNs enhance predictive capabilities and efficiency by combining data-driven methods with physical principles. Unlike traditional