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The Faculty of Science invites applications for a POSTDOCTORAL RESEARCHER IN MACHINE LEARNING FOR NATURE CONSERVATION starting from August 2025 or as agreed. The Postdoctoral Researcher will be
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doctoral researcher is expected to: Advance the BIOBANG project’s objectives as part of a dynamic interdisciplinary team. Conduct doctoral studies and research leading to a completed PhD thesis within 4
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strong publication record and a solid background in computational RNA biology, particularly in alternative splicing regulation, are our top priorities. Expertise in machine learning and human omics data
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estimation and data fusion, AI and machine learning techniques, collaborative positioning methods for threat localization, etc.. The researcher will participate in all the PhD-related activities (attending
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8 Mar 2025 Job Information Organisation/Company LUT University Research Field Computer science » Other Engineering » Computer engineering Engineering » Other Researcher Profile Established
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is likely to explore how Artificial Intelligence (AI) and Machine Learning (ML) technologies can enhance organizational resilience by addressing the critical challenge of decision-making under
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, are our top priorities. Expertise in machine learning and human omics data analysis is highly advantageous. The ideal candidate should demonstrate a high level of independence while also valuing
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considered case-by-case. 6. How to apply To apply and learn more about available positions, please visit Offered PhD Positions | Dream . You can access the PDF version of this call here . The deadline
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-related salary element. Our requirements a PhD in environmental sciences, geography, hydrology, remote sensing, ecology, or a related field; the doctoral degree may not have been completed more than five
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, including programming, HPC environments, and compilers Knowledge of machine learning and artificial intelligence techniques, including computational aspects of large-scale models (e.g. foundation models