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Electrochemistry is funded by the Australian Research Council through a Discovery Project entitled “Molecular Engineering of Locally Concentrated Ionic Liquid Electrolytes”. The purpose of this scholarship is to
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project within an NHMRC-funded program focused on dementia research. Using a systems biology framework, the project will integrate genomic and lifestyle data to identify key molecular pathways and risk
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the area of microbially induced calcium carbonate precipitation is limited due to poor understanding of bio-mineral reaction kinetics at molecular level; highlighting the need for unpinning the role
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compartmental models for RSV developed within the STAMP-RSV program by tailoring an established software library for individual simulation to the Australian RSV transmission context. Information to parameterise
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, using toxic molecular reactants rather than renewable electricity. One obvious solution toward integrating renewable electricity into chemical manufacturing is to electrify industrial organic reactions
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simulations predict millions to hundreds of millions of stellar-mass black holes roaming through our Galaxy. However, there are only ~100 found so far. It is not currently clear whether this stark gap is due
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, there is an urgent demand for accurate data on ion-beam collisions with atomic and molecular targets for the development and maintenance of fusion reactors, treatment planning in hadron therapy, and
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Scholarship (Project 89) application STUDENT ID NUMBER: xx. Please attach a copy of your Curtin admission offer letter to expedite this process. Step 4: Register your interest with your Vietnamese institution
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results accurately and draw meaningful conclusions to inform further research and process improvements. Background in modelling and simulation using simulation software. Background in Techno-economic
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learning in simulated and indoor/outdoor environment. Reasonable results can be achieved in high signal-to-noise ratio environments; further research is required to improve deep learning in fast variation