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learning theory to join the research team of Prof. Muhammad Umar B. Niazi. The position focuses on the design and implementation of incentive mechanisms for sociotechnical and cyber-physical-human systems
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have a PhD in engineering or related field. Excellent experimental and numerical analysis skills (Programming, Abaqus, Ansys) are required. For consideration, applicants need to submit a cover letter
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. Qualifications Applicants must hold a PhD degree in electrical/electronics engineering, telecommunications or related field. Other requirements include: Strong background in communication theory, signal processing
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. To be considered, all applicants must submit Cover letter Curriculum vitae with complete publication list BSc, MSc and PhD transcripts Research statement elaborating how you plan to contribute
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. If you have any questions, please email Prof. Khalil Ramadi at kramadi@nyu.edu . The terms of employment are very competitive and include housing and educational subsidies for children. Applications will
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functional aspects of C. elegans metabolism covering all required mass spectrometry and chromatography applications as part of a project using a variety of other analytical techniques. The Fabio Piano
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developing new treatments and diagnostics for cardiovascular, neurologic, and metabolic diseases. The successful applicant will join a number of fascinating projects on engineering novel approaches to modulate
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the research team of Prof. M. Umar B. Niazi. The position focuses on the development of digital twins using physics-informed learning approaches, with specific applications to intelligent transportation
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be provided through a local partner. Install, configure, and support end‑user devices (Windows, macOS, iOS, Android, printers, peripherals). Supporting core software solutions (Canvas, Salesforce
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recognition in healthy neurotypical adults. The successful applicant will drive a project on the relative contribution of lexical and sublexical information during the early stages of the word recognition