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systems. Your work will help to define the quality and features of our algorithms. Armed with your innovative spirit and project experience, you will manifest fresh ideas and novel approaches
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documents in pdf format: cover letter, a curriculum vitae including a publication list, a synopsis of major accomplishments, and a concise statement of future research agenda and teaching interests, along
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, Geneve 1211, Switzerland Subject Area: Theoretical Physics / Mathematical physics Appl Deadline: (posted 2024/09/29, listed until 2025/09/01) Position Description: Apply Position Description We invite
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. The application package should include the following documents in pdf format: cover letter, a curriculum vitae including a publication list, a synopsis of major accomplishments (up to 2 pages), a concise statement
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multilingual and multicultural. The application package should include the following documents in pdf format: cover letter, a curriculum vitae including a publication list, a synopsis of major accomplishments
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-cultural. The application package should include the following documents in pdf format: cover letter, curriculum vitae, publications list, concise statement of research and teaching interests as
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Institute. Applications should include a cover letter, a CV with a list of research outputs, a concise statement of research (3 pages) and teaching interests (1 page), and the names and contact information
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Publication list Contact details of two refereesPlease send your application to [nicola.serra+sinergia@uzh.ch]. Further information about [Department of Mathematical Modeling and Machine Learning or Department
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posted 2022/03/31, updated 2025/08/13, listed until 2025/10/01) Position Description: Apply Position Description The Condensed Matter Theory and Quantum Computing Group at the University of Basel led by
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. Integrate various datasets, such as tree species annotations, climate, and topography, into deep learning algorithms. Test deep learning models (Transformers and CNNs) for optimal accuracy using large