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educational programs, we are now seeking a postdoctoral researcher to work on privacy for data-driven models and high-dimensional data. The position is full-time for two years, starting on 1st September, or as
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, demonstrated experience of coding in programming languages such as R and Python is considered particularly advantageous. Examples of computationally intensive methods central to IAS and IDA are data-driven text
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antibacterial substances. The selected proteins are represented by bacteria from different phyla, such as proteobacteria and bacteroidetes. The present study will be performed using a blend of X-ray
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spectrum of activities across nine different departments and is central to the technical education and research conducted at Linnaeus University. The Department of Forestry and Wood Technology offers a wide
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cell programming applications. This position involves both experimental and computational work. The experimental work includes the use of CRISPR-based transcriptional control, single-cell omics
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to make a difference. Do you want to be involved and contribute to our development? Together, we can create a sustainable future through knowledge and innovation. We believe that knowledge and new
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fundamental and applied research in different areas of Human-Computer Interaction (HCI) such as visualization, human-centered design, privacy, graphical design, and human-centered AI. We are looking
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/councils, EU framework program or industry. Qualifications To be eligible for this postdoctoral position, you must hold a PhD in Structural Engineering, Civil Engineering, or a closely related field, with a
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The Faculty of Technology has a broad range of activities spanning nine different departments through which Linnaeus University conducts education and research. The educational programs in
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programming in, for example, R or Python. Particularly valuable is a research background in ecology, biodiversity, systems biology, or related areas, as well as experience working with time-series data, dynamic