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statistics Excellent background in statistical/machine learning Experience in computer vision is a plus Strong motivation for medical and societal applications of computational methods Knowledge of biology and
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within a Research Infrastructure? No Offer Description Calculation of magnetic properties using machine learning. Details: https://www.science.hr/jobs/158953/calculation-of-magnetic-properties-u
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-dimensional Euclidean spaces - Machine learning - Distributed computing - Complexity (communication, queries, memory) - Continuous optimization The specific topic can be refined based on the candidates' skills
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(Project IRP INANOMEP of the CNRS, France-Belgium). The synergy between non-linear optics, theoretical chemistry, and machine learning gives a pronounced interdisciplinary character to the project
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The successful candidates will work at the machine learning group at UiT and will formally be affiliated with the Department of Mathematics and Statistics and collaborate closely with researchers at the Department
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, involves the development of multidisciplinary skills, especially in the electronics, transducers and machine learning fields. The activity will be carried out in collaboration with Italian and non-EU
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interactions between veterinarians and horse owners, along with how results are communicated to veterinarians, taking into account the machine learning approaches used for diagnosis. 6 | SCIENTIFIC SUPERVISION
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, Agriculture Engineering (not agronomy), or Biosystems Engineering Basic knowledge in sensing technologies and measurement systems. Basic knowledge in machine learning, deep learning and/or data fusion and
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and measurement systems. Basic knowledge in machine learning, deep learning and/or data fusion and modelling tools, and eager to learn about more advanced modelling techniques. User of engineering
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data analyses, Machine Learning (using Python), and/or listening tests is considered a bonus. What we offer We offer a doctoral scholarship for a period of two years. Following a positive evaluation, the