13 software-engineering-model-driven-engineering-phd-position Fellowship positions at Genentech
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The Position A healthier future. It’s what drives us to innovate. To continuously advance science and ensure everyone has access to the healthcare they need today and for generations to come
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The Position A healthier future. It’s what drives us to innovate. To continuously advance science and ensure everyone has access to the healthcare they need today and for generations to come
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The Position We are seeking an independent and motivated researcher for a Postdoctoral Fellowship in Aviv Regev’s lab to apply develop edge algorithms for analysis of single cell genomics profiles
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the Sterne-Weiler Lab i n Computational Biology / Discovery Oncology. The postdoctoral position is focused on developing and applying foundational AI models to investigate clinically relevant cancer
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The Position A healthier future. It’s what drives us to innovate. To continuously advance science and ensure everyone has access to the healthcare they need today and for generations to come
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The Position A healthier future. It’s what drives us to innovate. To continuously advance science and ensure everyone has access to the healthcare they need today and for generations to come
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The Position A Postdoctoral fellow position is available for a highly motivated and independent candidate to join our Therapeutic Modalities group at Genentech, under the mentorship of Dr. Claudo
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The Position We advance science so that we all have more time with the people we love. The Lamba Lab in the Department of Ophthalmology and Immunology (OPTI) at Genentech is seeking a self-motivated
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The Position We are seeking an independent and motivated researcher for a joint Postdoctoral Fellowship in the labs of Aviv Regev and Tommaso Biancalani. The successful candidate will develop and
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discovery. This position in particular focuses on sequence-to-function deep genomics modeling, with the goal of developing performant models that make generalizable out-of-distribution predictions