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Profile First Stage Researcher (R1) Positions PhD Positions Application Deadline 22 Apr 2026 - 23:59 (Europe/Copenhagen) Country Denmark Type of Contract Temporary Job Status Full-time Hours Per Week 37
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motivated candidate with a strong background in statistics and/or machine learning. Areas of particular interest include, but are not limited to: Causal Discovery and Causal Inference Extreme Value Theory
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that aims to redesign how students learn programming through AI-driven, dialogue based, and pedagogically grounded tools. The PhD candidate will contribute to a cross-faculty collaboration spanning the TECH
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of joint or co-supervised PhD arrangements with the Technical University of Denmark and/or the University of Groningen (subject to eligibility and institutional approval) Participate in international
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(DInSAR). Minute surface uplift and subsidence signals will be automatically detected using machine-learning workflows, enabling systematic, user-independent identification of drainage events every 6–12
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Systems at The Technical Faculty of IT and Design invites applications for PhD stipends or integrated stipends in the field of Machine Learning for Intelligent Hearing Assistance in Complex Acoustic
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Field Computer science Researcher Profile First Stage Researcher (R1) Application Deadline 26 May 2026 - 21:59 (UTC) Country Denmark Type of Contract Permanent Job Status Full-time Is the job funded
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of this PhD project is to develop machine learning algorithms that perform efficiently and coherently across both classical and quantum computing platforms. The PhD project falls under the collaboration between