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The Institute of Molecular Systems Biology at ETH Zurich is inviting applications for a Full Stack Web Developer for Life Science Research in the laboratory of Prof. Pedro Beltrao . The Beltrao
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projects, we transfer cutting-edge science to production-ready software. Specifically, we develop genomic database, web applications, and APIs to facilitate real-time monitoring of pathogen variants and
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modern, visually appealing web layouts and UI components Produce data visualizations (static, animated, or interactive) using tools like d3.js Collaborate with developers to ensure designs translate
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for key program deliverables. Drive the development of high-impact deliverables, such as the annual report and the Phase III Outline Proposal. Coordinate input across projects, synthesize insights, and
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one or more of the following areas: User interface or interaction design Web-based prototyping Qualitative or quantitative research methods Excellent organizational and communication skills are required
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engineering biological feedback systems, including biomolecular controllers, stochastic biochemical reaction networks, and programmable cellular circuits. The successful candidate will contribute
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metadata and documentation to support data discovery and use Begin developing a web-based platform to provide users an overview of the available data Coordinate with researchers in climate science
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100%, Basel, fixed-term The highly competitive Bio-Engineering Systems for Therapeutics (BEST) postdoc program, part of the Next-gen Bioengineers initiative, is run jointly by ETH Zurich and Roche
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transdisciplinary knowledge. Job description We offer a full doctoral student position in our research group. The doctorate will be conducted within the Einstein School’s doctoral program and is expected to be
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for the renewable energy sector via the M2A European Training Network (ETN), funded by the European Commission’s Horizon 2020 Marie Skłodowska-Curie programme. Project background M2A puts forward a robust methodology