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-qualified student with postgraduate degrees in finance, economics, statistics, mathematics, or related disciplines. Research will cover topics in: (1) Financial Econometrics and Forecasting (2) Applications
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, in addition to, optimisation of data processing and statistical analysis pipelines and writing of custom MATLAB scripts for signal analysis. Prior experience in neuroimaging and/or electrophysiology
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to join the Complex Software Lab in the School of Computer Science and Statistics at Trinity College Dublin. The successful candidate will work on a project examining rugby dynamics by means of video
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of statistical techniques, and in the manipulation of ecological data. Ability to speak effectively to a wide range of audiences. Self motivated ability to write reports to deadline and write for a range of
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the development of high-fidelity finite element models to investigate surface wave propagation in soft biological tissues, forming the foundation for subsequent statistical and machine learning
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of high-fidelity finite element models to investigate surface wave propagation in soft biological tissues, forming the foundation for subsequent statistical and machine learning frameworks that integrate
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13 Months, Specific Purpose, Whole-Time Post Position Summary The Statistics, Data & Analysis Unit (SDAU) of the CRF-UCC supports patient-focus research in the areas of study design, study conduct
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experimentation in optical, wireless and cloud technologies. The position will be based in the School of Computer Science and Statistics,Trinity College Dublin, Ireland, and in the ADAPT centre. The researcher will
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the School’s existing research and teaching activities. The post will also support the School’s close links with the two other E3 Schools: Computer Science and Statistics, and Engineering, and enhance
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applying quantitative or statistical approaches to geoscientific problems. *Demonstrated experience in innovative applications of supervised and unsupervised machine learning and geostatistical techniques