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Lab. As such, we are looking for candidates who are interested in launching a project from the ground-up, are effective in small teams, and are excellent communicators. Successful candidates will join a
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large-language model applications in healthcare systems, systematically identifying ineffective clinical processes, bioinformatics analyses of population health, as well as more conventional outcomes
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the experiments, conducting rodent surgeries, collecting and analyzing data, performing literature searches, and communicating the results by writing and publishing scientific manuscripts and giving presentations
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) which will be structured according to research and professional interests. Stanford HAI (link is external) is also committed to creating a diverse community of scholars who are engaged in contributing
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communicate by flexibly reasoning about what other agents know and want. Recently, we have been exploring how this framework of inferential social learning can be applied to develop socially intelligent
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partnered with HAI. Stanford HAI (link is external) is also committed to creating a diverse community of scholars who are engaged in contributing to the understanding and advancement of Human-Centered AI
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communication skills. Commitment to collaborative, multidisciplinary research. Preferred Qualifications: Background in rheumatology, autoimmune disease research, or chronic pain. Familiarity with
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team of PIs (Barone, Voskoboynik, Palumbi, Lowe) at Stanford's Hopkins Marine Station (Pacific Grove, CA) and actively engage with the Stanford synthetic biology community. A key aspect of this role
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and interpersonal communication skills, and a demonstrated interest in addressing social justice issues through data-driven research. The postdoc will work in partnership with Principal Investigator
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blockade (Phillips, Matusiak, et al, Nature Communications, 2021). We do research at the forefront of spatial biology and offer training in immunology, human histology, statistics, computer vision, grant