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microfluidic fabrication and experiments 3D printing machine learning. Demonstrated programming skills (Matlab, C++, or Python). Desired Demonstrated ability to work independently and to formulate and tackle
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learning models (i.e. keeping an eye on the system’s "brain" to quickly spot when it starts to struggle or behave unexpectedly). Our goal is to create tools that continuously evaluate the performance
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. Understanding of or curiosity about machine learning, AI, or cloud computing tools used in agricultural analytics. Interest or experience in working with industry, government, or multidisciplinary research teams
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(if applicable) Names and contact details of 2 academic referees Once you have discussed your EOI with a named supervisor, please submit your Expression of Interest Form and indicate that you are applying for a
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Location: Turning Point, 110 Church Street, Richmond Employment Type: Full-time Duration: 3-year fixed-term appointment Remuneration: There are various scholarships offered by Monash University to support
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the Project Title to indicate which project you are applying for. It is likely to be tax exempt, subject to Taxation Office approval. Applying: Expression of interest Expressions of interest should be submitted
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. Informal enquiries are welcome via E-mail (a.troisi@liverpool.ac.uk). If you are still awaiting your PhD to be awarded you will be appointed at Grade 6, spine point 30. Upon written confirmation that you
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I supervise a wide range of projects stellar astronomy. They include modelling stars in 1D or 3D, deciphering the origin of the elements (stellar nucleosynthesis), and observing using optical
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The objective of this project is to integrate novel vision and AI based techniques for developing digital twin models for structural health monitoring. Computer vision based 3D displacement measurement, crack
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learning is able to achieve reasonable accuracies when the signal to noise ratio is high. To tackle real-time implementation and environment with low signal-to-noise ratio, more effective deep learning is