Sort by
Refine Your Search
-
Listed
-
Field
-
the other members of the wider project team. To be successful in this position, you will have: PhD qualification in the relevant discipline area, such as computational/theoretical physics or chemistry, or
-
electrical and electronic engineering and/or applied mathematics, in particular, in one or more areas of learning, control and optimisation of multiagent systems. Experiences in dealing with complex networks
-
electrical and electronic engineering and/or applied mathematics, in particular, in one or more areas of learning, control and optimisation of multiagent systems. Experiences in dealing with complex networks
-
experience in the key focus areas: Emerging track record and recognition for quality research outputs in the field of biological mathematics. Demonstrated mathematics and computer programming skills with
-
field (e.g., Medical Physics, Radiation Therapy, Computer Science, Engineering, Mathematics, Science, Physics, etc). Emerging track record publishing in high quality journals (e.g., Medical Physics, IEEE
-
electronics for sensor readout systems, including ASIC and SoC design and verification. Strong experience in hardware–firmware co-design for data acquisition and processing pipelines, including FPGA-based
-
-temperature conditions. Proficiency with data analysis tools and scientific programming languages (e.g., Python, MATLAB, LabVIEW). Commitment to safe laboratory practices and familiarity with experimental risk management
-
to develop computational models for engineering decision making, ideally in manufacturing and engineering scenarios. Familiarity with metal additive manufacturing processes and design for additive
-
research teams, in particular post-doctoral staff working on water-related research funded by the AuSpire program as well as undertake supervision of research students. Extend the research performance and
-
(at either level A, B, C and/or D) to support the research fieldwork, project deliverables, data governance, reporting and presentation of research findings for the ‘Measuring Digital Inclusion for First