56 postdoc-in-system-identification-and-control-systems PhD positions at Monash University in Australia
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of $13,000 per annum The Opportunity The CSIRO Industry PhD Program (iPhD) is a four-year research training program, focusing on applied research that benefits industry by solving real-world challenges. It
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mental health services. The impact of substance use on mental health outcomes, including increased suicide risk, frequent hospital readmissions, and poorer recovery trajectories, is often underrecognised
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of up to AU$50,291 per annum. Start Date: July-August 2025 Additional financial support is available through research and teaching assistance work. The Research Opportunity This PhD research opportunity
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generation of particle detectors. Measuring the production of particles containing two heavy quarks to test our understanding of QCD Developing new particle identification detectors for a future upgrade of the
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I supervise a wide range of projects at the intersection of photonics and nanotechnology, investigating how we can efficiently control light on the nanoscale. Applications are in areas such as
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. The project is nested with the Victoria Heart Hospital at Monash Clayton Campus and is focussed on developing and implementing electronic Patient Reported Outcomes Measures (ePROM) systems for heart failure
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. Monash University strongly advocates diversity, equality, fairness and openness . We fully support the gender equity principles of the Athena SWAN Charter . This is an opportunity for an outstanding PhD
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known as Team COMPAS -- includes a number of amazing undergraduate and graduate students, postdocs, alumni, and other fantastic collaborators. Please contact me if you are interested in joining our group
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in organic and inorganic semiconductors ” (OPTEXC). As part of this program there is the opportunity for students to undertake fully funded joint degrees with the University of Bayreuth in Germany in
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(AI) technologies have advanced significantly, current software engineering methodologies remain insufficiently equipped to integrate responsible, reliable, and scalable AI-driven solutions into systems