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or an interest in automation and programming. You know how to take the lead in your project, but you are also happy to support others in their work. Ideally, you have experience with machine learning
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bioinformatics and proteomics approaches. You will analyze bulk and clonal protein expression data from large melanoma cohorts, integrate molecular, histological, and clinical data through machine learning (ML)/AI
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to perform within project timescales. You should have project management skills demonstrable from previous project experience. Competences in data analytics, machine learning / AI (for example in Python and
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project partnership, able to perform within project timescales. You should have project management skills demonstrable from previous project experience. Competences in data analytics, machine learning / AI
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; Demonstrated interest in research on the intersection of society and AI, preferably as it relates to forms of algorithmic bias; Experience with machine learning or computational modeling; Strong quantitative
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sciences, or a related field. You have a strong background in quantitative research methods, including statistical modelling, data analysis, machine learning, and/or GIS analysis. You have proven expertise
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handled, positioned, and assembled to function effectively. Current most advanced chip assembly machines run at tens of thousands of products per hour. In order to keep up with the market demands, micro
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will collaborate with the various members of the Building on Digital Identity project (including computer scientists, programmers, UX researchers and designers). On the legal side, Professor Pieter
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for the analysis and integration of –omics data. The group has a strong track record in (integrative) computational omics analysis, algorithm development, machine learning and scientific data infrastructure
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-of-the-art, advanced methods, such as novel algorithms, sensor synergy, AI/machine learning and modelling, to improve understanding of complex processes, feedbacks and potential impacts. Priority will be given