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to independently conduct research and to work in interdisciplinary collaborations excellent written and verbal communication skills in the English language We offer: cutting-edge research and training in the field
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Electrical Engineering Operations Research Appl Deadline: (posted 2025/06/24, listed until 2026/06/23) Position Description: Apply Position Description Overview As a Quantitative Research Intern at Susquehanna
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journals (during the PhD, you will initially work on a pre-specified subproject of your choosing, which allows you to develop your knowledge of the topic and research skills. As you gain experience, you will
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. or Ph.D. programs around the country, or pursue biomedical startup or industry careers. Responsibilities Research 80% - Run multiple projects in parallel, in collaboration with PhD students and postdocs
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. The successful candidates will also take part in the evaluation of methods, dissemination of research findings and development of grant proposals. The successful candidates will work as part of
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candidate will contribute to a pioneering body of work that equips STEM graduates with the entrepreneurial mindset needed to lead innovation in an increasingly technology-driven world. This research project
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—remains a critical challenge. This project will focus on designing AI-driven cognitive navigation solutions that can adaptively fuse multiple sensor sources under uncertainty, enabling safe and efficient
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an active, leading member of the Neuromuscular Research Laboratory team and work across multiple projects as well as develop their own research projects and grant proposals. Additionally, the candidate will
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education strong motivation to independently conduct research and to work in interdisciplinary collaborations excellent written and verbal communication skills in the English language We offer: cutting-edge
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qualifications As our new colleague in our research team your job will be to develop novel computational frameworks for machine learning. In particular, you will push the boundaries of Scalability, drawing upon