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, molecular biology, and preferably with experience working with mammalian cells and mouse models of cancer, especially leukemia. There will be opportunities to work with physicians, translational researchers
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, molecular biology, and preferably with experience working with mammalian cells and mouse models of cancer, especially leukemia. There will be opportunities to work with physicians, translational researchers
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Biologists (3 positions available) The Stankovic Laboratory and Heller Laboratory at Stanford University School of Medicine invite applications for postdoctoral positions in stem cell biology, organoid model
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into the brain's algorithms of perception and cognition while serving as a key resource for aligning artificial intelligence models with human-like neural representations. As part of this project, we are seeking
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bioengineering, computer science, statistics, or mathematics OR a strong background in gene engineering and functional interrogation of hematopoietic stem and progenitor cells. Strong knowledge in bioinformatics
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, 056. The Buckwalter lab has an opening for a postdoctoral fellow, PhD, MD, or MD/PhD. We study chronic outcomes after stroke using mouse models and human studies, with a particular focus on post-stroke
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positions in stem cell biology, organoid model systems, and inner ear regeneration. The two laboratories, led by Dr. Konstantina Stankovic, Chair of the Department of Otolaryngology–Head & Neck Surgery (OHNS
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/or experience with large-scale data analysis, algorithm development, or computational modeling. Required Qualifications: Doctoral degree in linguistics, cognitive science, psychology, hearing and
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a unique opportunity to work in a cutting-edge, interdisciplinary environment, leveraging a novel in-vitro model of the human uterus and/or cutting edges machine learning techniques to make
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developments in sensor design, dataset transmission, data analysis, and numerical modeling to distinguish between normal and abnormal features. Here, the goal is to develop machine learning algorithms