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qualitative, quantitative, and systematic review methods. Title: Beyond Mood: Advancing our Understanding of Cognition and Everyday Functioning in Depression Supervisors: Dr Elayne Ahern (Elayne.Ahern@ul.ie
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reach the market, current manufacturing and characterisation technologies in the industry will struggle to deliver them economically and safely for patients. This research program aims to provide
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perform an in vivo assessment of therapeutic efficacy. They must be engaged and dedicated to meet project deadlines and produce high-quality reliable data. This is a structured PhD and will require formal
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hosted at a different university but trained through a single, joint programme. Candidates may apply for one, two or all three positions via a common application (details below). Why join Noise 2050? 4
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networks become essential to manage network requests, while maintaining high availability and optimal resource utilization. One PhD studentship is available for work in the area of Digital Twins for optical
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systems able to make extremely high time frequency images of roots in situ in the field (https://doi.org/10.1093/jxb/erac427). The entire, multi-person project will interpret the dynamics of root properties
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into University of Galway’s community. Living allowance (Stipend): €25,000 per annum [tax-exempt scholarship award]. Computer equipment and funding for travel (e.g. to conferences) as well as attendance
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high second-class honours undergraduate degree (or equivalent), and: A master’s degree or equivalent, or extensive and relevant research, professional or practitioner experience. Applications from non
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the PREVENT study at the Global Brain Health Institute, at Trinity College Dublin (TCD). At TCD, we will conduct the 3rd wave of longitudinal testing (year 8), in a cohort of mid-life individuals at high- and
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the predictions of opaque models that are widely deployed in high-stakes decision making scenarios. Of particular interest to this project are example-based explanation methods that use individual data points