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Methods In this project we want to provide a better understanding of how cloudiness affects, and is affected by, environmental factors called “cloud controlling factors”. Success of this goal will be
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This PhD “Novel use of AI in Marine Monitoring” will focus on marine monitoring in NEOM Nature Reserve (NNR) within northern Saudi Arabia. The PhD will develop techniques for automation in surveying
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expand current technology to include automated live analysis, integrating machine learning algorithms capable of interpreting the complex behavioural patterns of mussels in response to environmental stress
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to address urgent challenges in animal conservation and welfare. However, existing technologies have mostly been developed for use in controlled laboratory settings and are often unsuitable for field
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(R2) Positions Postdoc Positions Country United Kingdom Application Deadline 8 Oct 2025 - 23:59 (Europe/London) Type of Contract Temporary Job Status Full-time Hours Per Week 36.5 Offer Starting Date 5
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About the ProjectProject details: Next-generation networks are rapidly outscaling the capabilities of traditional management paradigms. While early AI/ML models offered a degree of automation, they
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and external partners. Benefits: Automation of screening with ML can enable more regular eye screening for patients. This will reduce the undetected cases of retinopathy, enable retinal issues to be
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tuition fees covered). The aim of project is to develop a new experimental platform to control quantum states of light as they propagate through complex scattering media, with future applications to quantum
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, motivation, and motor control, as well as in pathological conditions like Parkinson's disease and addiction. However, real-time, wireless detection of DA with high precision remains a challenge. Existing
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large herbivores and off-road driving, using the RPI to control for climate-driven variability and incorporating data from allied ground monitoring. This should reveal landscape-scale recovery timeframes