The Division of Social Science is seeking a high-caliber candidate to fill the position of Research Assistant to work with Prof. Chen Cheng (https://chencheng1.weebly.com/) and Prof. Jingyi Wang (https://sosc.hkust.edu.hk/people/jingyi-wang) in the joint Child Development Team at HKUST. The RA will work on projects in the field of developmental and family psychology, focusing on two key areas: 1) how children learn information to make sense of the world, and 2) how family relationships and dynamics shape children’s social-emotional development.
The appointee is mainly responsible for managing and overseeing the daily lab activities, running research studies with infants, toddlers, and children, coordinating with remote testing, and engaging in behavioral coding. Other duties include preparing research materials, recruiting/communicating with study participants, managing data sets, and performing statistical analysis.
Applicants should have a bachelor’s degree in psychology or related disciplines. Excellent command of written and spoken English and Chinese (including Cantonese and Mandarin) is required. The appointee is expected to demonstrate an ability to pay close attention to detail, should show passion in research with perseverance, and possess excellent organizational, communication, and interpersonal skills. Experience in working with young children is desirable. Familiarity or proficiency in HTML, JavaScript, R, Blender, or Mplus is an advantage. (Duration: 1 year)
Starting salary will be commensurate with qualifications and experience. Fringe benefits including annual leave, medical and dental benefits will be provided.
The position will be open until it is filled.
(Information provided by applicants will be used for recruitment and other employment-related purposes. Applicants should read the Personal Information Collection Statement before submission of application.)
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