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ROS Practical experience in hardware and simulation-based implementations Fluency in both written and spoken English Previous experience in robot learning research will be considered a strong merit
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simulations Experience of work in the maritime sector or marine management Swedish language skills (spoken and written) Your tasks As a PhD student, your responsibilities will include: Plan and conduct research
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many people gathering. Both internal and external radiation exposure that occurs in this situations will be simulated and calculated. This calculation basis will be used to assess the usability
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of researchers (senior scientists, post-doctoral fellows, graduate students and research engineers) with different areas of expertise. The research program is multidisciplinary with competence in computational
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The application should consist of: A Curriculum Vitae (CV); A copy of a degree/diploma, and transcript of records with grades (translated into English or Swedish); Master’s thesis (or a draft thereof) and/or
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sustainability efforts. Both research areas will be conducted in collaboration with the institutional and industry partners of the multidisciplinary competence center and shall utilize in example simulations
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the work duties. Attached to application should be: 1) curriculum vitae, 2) copies of degrees and transcripts of academic records, 3) link to, or copy of master thesis, and 4) two listed references with
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University transcripts with grades. Copy of degree certificate. Essays or academic publications. Any other document that demonstrates merit. Starting date is January 2026 or on a mutually agreed upon date
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who are not Swedish citizens need to submit an attested copy of their passport’s information page containing their photograph and personal details. Read about the PhD education at SLU at https
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Networks. The project encompasses several challenges in the gene regulatory network (GRN) field, from simulating realistic networks and data to accurate inference of GRNs from noisy gene expression data