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Assistant Professor in artificial intelligence (AI) with a focus on precision medicine (PA2025/1776)
creativity and a high degree of expertise in the field, for example in clinical medicine, epidemiology, bioinformatics or mathematical modelling including handling of large-scale data sets. We expect
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is close. Our cohesive campuses make it easy to meet, work together and exchange knowledge, which promotes a dynamic and open culture. The ongoing societal transformation and large green investments in
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evaluation of information systems, as part of the Hybrid Intelligence research group. The Department of Informatics is a compact, dynamic and highly international environment, where both collaboration and
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is close. Our cohesive campuses make it easy to meet, work together and exchange knowledge, which promotes a dynamic and open culture. The ongoing societal transformation and large green investments in
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of Economics, there is a large and active research group studying a range of topics in economics of education, such as the effects of early interventions in schools, incentives and goals for learning, mechanisms
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, SLU’s experimental sites and other parts of SLU, as well as nationally and internationally • collaborate and develop regional, national and international networks with the society at large • disseminate
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to drive work within a large-scale research infrastructure. This includes knowledge of diversity and equality issues, with a particular focus on gender equality. Of second highest importance
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advancements for improved species delimitation. Large-scale initiatives like the International Barcode of Life and the Earth Biogenome Project are already working on characterizing and sequencing the DNA of
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or coordinating large-scale research projects (e.g. EU-level collaborations). • Experience in interdisciplinary research or collaboration between academia and industry/society. • Curriculum development or program
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. What makes a problem computationally hard or easy? How can we show that every algorithm that solves a certain problem must necessarily consume a large amount of resources (such as time or memory, say