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well as proficiency in MATLAB, Python, or similar for real-time data analysis. Knowledge of implantable neural interfaces, electrophysiology, and stimulation technologies is also essential. Informal enquiries may be
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, with proven experience in software development. Proficiency in programming languages such as Python is essential, and experience working with high-performance computing or cloud-based environments is
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, computer science, statistics, or a related field together with strong programming skills in Python, R, or similar languages, and proficiency in high-performance computing. You will have experience in large-scale
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), have good organisational and communication skills and have experience running research studies in humans. Experience with data analysis and basic experience using programming languages (e.g. R, Python
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in Python, or demonstrated ability to rapidly acquire fluent knowledge of new programming languages, libraries, and platforms. A background and/or interest in mathematics or computer science would be
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demonstrated ability to analyse and interpret complex multidimensional data. Experience of programming in Python, or demonstrated ability to rapidly acquire fluent knowledge of new programming languages
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programming (e.g. Python) and an excellent academic track record commensurate with career stage. They will also have excellent communication skills, including the ability to write for publication, present
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. Proficiency in programming languages such as Python and/or C/C++ is essential, along with strong communication skills. These should include the ability to write for publication, present research proposals and
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to produce optimal designs. Applicants should have skills in modelling, familiarity with partial differential equations, and be familiar with python. They will have, or be close to completing, a PhD in
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-learning methods and develop hybrid ones for high-resolution load forecasting (based in Python). • Define different scenarios and clusters based on different features. • Visualizing the results