91 3-phd-positions-in-computer-science-artificial-intelligence Fellowship positions at Hong Kong Polytechnic University
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Department of Mechanical Engineering Postdoctoral Fellow / Research Associate / Research Assistant (Full-time/Part-time) (several posts) (Ref. 250806012) [Appointment period: each for three
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Department of Land Surveying and Geo-Informatics Postdoctoral Fellow / Research Associate / Research Assistant (Ref. 250603024) (1) Postdoctoral Fellow / Research Associate (two posts) (2
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Department of Biomedical Engineering Postdoctoral Fellow / Research Associate / Research Assistant (two posts) (Ref. 250516001) [Appointment period: each for twelve to twenty-four months] Duties
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Department of Electrical and Electronic Engineering Senior Research Fellow / Senior Project Fellow / Research Fellow / Project Fellow / Postdoctoral Fellow / Research Associate / Project Associate
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”. Qualifications For the post of Research Fellow, applicants should have a doctoral degree in Optical, Electronic or Electrical Engineering or an engineering-related discipline plus at least three years of
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Department of Industrial and Systems Engineering Postdoctoral Fellow / Research Associate / Research Assistant (Full-time/Part-time) (Ref. 250623003) (1) Postdoctoral Fellow (Full-time/Part-time) (2
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Department of Mechanical Engineering Postdoctoral Fellow / Research Associate / Research Assistant (Ref. 250806011) Duties The appointees will assist the project leader in the research project
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Department of Electrical and Electronic Engineering Postdoctoral Fellow / Research Associate (Full-time/Part-time) / Research Assistant (Full-time/Part-time) (Ref. 250708006) (1) Postdoctoral Fellow
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Department of Land Surveying and Geo-Informatics Postdoctoral Fellow (Ref. 250723007) [Appointment period: eight months] Duties The appointee will assist the project leader in the research project
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research using methods such as sensing technique, 3D printing, human-computer interaction, simulation, and/or machine learning to address challenges in machinery motion planning and construction safety