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learning with no more than five years post receipt of this degree, in Electrical/Electronics Engineering, telecommunications, or related field. Other requirements include: Proven track record of publications
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parameters. Applicants must hold a PhD degree or terminal degree from a recognized institution of higher learning with no more than five years post receipt of this degree, in Electrical/Electronics Engineering
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Electrical, Mechanical, or Material Engineering (or related field) OR 3-5 years of industry experience (Research and Development). Significant experience in haptic technologies. Hands-on Lab Building and Rapid
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Electrical, Mechanical, or Material Engineering (or related field) OR 3-5 years of industry experience (Research and Development). Significant experience in haptic technologies. Hands-on Lab Building and Rapid
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on the physical layer design of wireless communication systems and explore enabling technologies for 6G and beyond wireless networks. Applicants must hold a PhD degree in electrical/electronics engineering
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rehabilitation. The successful applicant will have the following technical experience in: PhD degree in Electrical, Mechanical, or Material Engineering (or related field) OR 3-5 years of industry experience
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explore enabling technologies for 6G and beyond wireless networks. Applicants must hold a PhD degree in electrical/electronics engineering, telecommunications or related field. Other requirements include
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, Electrical or Mechanical Engineering, Physics and Applied Physics or a related field. Working in a newly established fluid dynamics laboratory at NYU Abu Dhabi, candidates are expected to have a strong
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an appointment for three years. The position provides salary higher than internationally competitive rates for Post-Doctoral / Research Engineering / Research Associate positions, in addition to substantial
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in Robotics, Control Engineering, Machine Learning, AI, Mechanical or Electrical Engineering, or a closely related field. Strong focus on robot manipulation learning & control, and differential