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information for three academic references (include phone, title, and email) Please upload all documents in the “Resume/Cover Letter” section of the application portal. BACKGROUND CHECKS/CLEARANCES Employment
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other fields of molecular/structural biology and biochemistry are also welcome to apply. Interested and qualified applicants should submit applications electronically and include a CV which includes a
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submitted electronically and include a cover letter and CV. Applicants may be asked to provide two reference letters to be submitted to jxz26@psu.edu , indicating “PSU postdoc” in the subject line. This is a
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related field, with experience in single-crystal growth and characterization preferred. Applicants must submit a cover letter, curriculum vitae, and a statement of research interests electronically
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letter, curriculum vitae, and a statement of research interests electronically. Additionally, three reference letters should be sent to ymshao@psu.edu . This is a term appointment funded for one year from
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research interests electronically. Additionally, three reference letters should be sent to rza1@psu.edu . This is a term appointment funded for one year from date of hire with the possibility of renewal
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calculations Materials modeling/electronic structure calculations Machine Learning/Deep Learning techniques. Education and Experience: A PhD in physics, astronomy, or a closely related field must be completed
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until the position is filled. Following a screening of initial application materials, candidates will be contacted by email asking for letters of reference to be sent. Informal inquiries about this search
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submitted electronically. Please provide: A current CV A personal statement describing why you are a qualified candidate for this position, including your short and long-term professional goals (1-2 pages) A
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, Robotics, Computer Vision, or related disciplines. Proven expertise and hands-on experience in one or more of the following areas: large language models (LLMs), end-to-end learning, AV localization