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external) How to Submit Application Materials: To begin the application process, please send an email using the subject line “Postdoctoral Position in Machine Learning for Advancing Mental Health” to Tina
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disciplines such as physics, statistics or math. Have acquired machine learning, generative AI and computer science. Welcome either wet or dry background or both. Be highly creative, rigorous, collegial and a
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relief. That thread is the need to manipulate objects in the physical world. Despite this being such an unassuming and seemingly innate skill, the fundamental principles of how one might unknot a tangled
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) seeks a postdoctoral researcher in the application of Data and Knowledge Science to smart and sustainable civil and industrial infrastructures and cyber-physical systems. Areas of particular interest
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stakeholders and objectives. Required Qualifications: Applicants must have received a PhD from an accredited university before the appointment start date. Demonstrates excellent written and verbal communication
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related to social learning, play, and AI. Potential of individual to add value to and gain benefit from the Stanford HAI community. Required Qualifications: Applicants should have a PhD in psychology
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perspectives necessary to design, conduct, sustain, and disseminate public impact research. We encourage applications from individuals from a broad diversity of PhD-granting institutions, backgrounds, and life
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greatest challenges. Contacts For enquires on projects and application process: Matteo Molè at mmole@stanford.edu (link sends e-mail) , office phone: +1 (650) 7362 754. Further information on research can be
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skills, expertise, and perspectives necessary to design, conduct, sustain, and disseminate public impact research. We encourage applications from individuals from a broad diversity of PhD-granting
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: Candidate must have a strong quantitative background, with a PhD in computational biology, bioinformatics, biomedical data science, biomedical engineering, computer science, electrical engineering, statistics