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of data-driven state-of-the-art image analysis techniques, including novel segmentation and image registration methods, applied on a combination of large-scale private and public datasets. Welcome
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methods and AI methods on large-scale data. The position is part of the SciLifeLab and Wallenberg National Program for Data-Driven Life Science (DDLS). Data-driven life science (DDLS) uses data
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studies in relation to a specific research aim. At large, PhD studies include a number of doctoral courses, reviewing literature, conducting research studies, and interacting with industrial companies. As a
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and accuracy. Additional qualifications Previous experience with large-scale genetic data analysis, bioinformatics, programming and implementation of aDNA bioinformatic pipelines is advantageous
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spoken and written, is a requirement. The work of a PhD student is driven by curiosity, passion for innovation and creativity, and ability to work independently. Your workplace The Department of Computer
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, fall 2024. Salary and employment benefits The salary of PhD students is determined according to a locally negotiated salary progression. More information about employment benefits at Linköping University
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for Life Laboratory (http://www.scilifelab.se/ ). Visit the group website for more information (http://www.carlssonlab.org/ ). The PhD student will be part of a data-driven life science research school
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specimens, and large-scale remote monitoring of organisms or habitats. The PhD project in computational microbial ecology will utilize a data-driven approach to reconstruct the nitrogen (N) cycle based
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, high-throughput imaging of biological specimens, and large-scale remote monitoring of organisms or habitats. The PhD project in computational microbial ecology will utilize a data-driven approach to
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lacking. In this project, we use geocoded data on all individuals in a large number of Swedish cities from 1880 to 2020 to study these questions. The geocoding of census data for the period before 1990 is