DevOps Engineer for Data Management | |
| Workplace | Geneva - Lake Geneva region - Switzerland |
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Geneva, Switzerland IT-SD-DMS-2026-55-GRAP Ideal start date: 01/06/2026
Before 01/04/2026 at 23:59 (Geneva Time) What you’ll doThe CERN IT Storage and Data Management group (IT-SD) operates the core services used by LHC and non-LHC experiments to store and manage their data, to enable data archival, reconstruction and analysis and to distribute them to archiving and computing facilities around the world (Worldwide LHC Computing Grid). The group also contributes to data management services operated in the LHC experiments.As successful candidate you will work on Rucio, which is an open source data management platform that has been adopted by two major LHC experiments at CERN (ATLAS and CMS) and also by a handful of Small and Medium Experiments (SHiP, AMS02). Specifically, you will work on a project that allows better integration between Rucio and the services provided by the CERN IT department, in particular, you will work on the implementation and operation of the Rucio Open Data interfaces. Open Data is part of CERN’s Open Science mission to make research data publicly available and to empower citizens around the world to explore data produced by the LHC. Your responsibilities
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Ideal start date: 01/06/2026 Contract duration (in months): 24 Job flexibility: Hybrid Employment conditions
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Your CERN DepartmentThe IT Department designs, operates, and evolves CERN’s core computing and digital infrastructure. It provides the large-scale data processing, storage, networking, and collaboration services that enable CERN’s scientific programme. The Department supports the LHC and non-LHC experiments, accelerator systems, and the wider CERN community, while advancing new computing technologies through research, development, and strategic partnerships.of CERNDiscover a world where the impossible is made possible!At CERN, the European Organization for Nuclear Research, we are pushing the frontiers of science and technology. Our groundbreaking work brings together not only physicists but also a diverse range of professionals from engineering, technical, scientific, and administrative fields. Together, we foster an environment where innovation and collaboration thrive. Every day, we face exciting new challenges and opportunities to contribute to cutting-edge research that shapes our understanding of the universe. We meet these challenges through the diverse perspectives within our teams, ensuring every contribution is valued and driving our shared sense of inclusion and purpose. Diversity is a core value of CERN since its foundation, and it remains central to our mission and continued success. If you are ready to be part of a dynamic, inclusive community pushing the boundaries of knowledge, CERN is the place where your curiosity and skills can thrive. Be part of our mission to uncover what lies at the heart of the universe! TAKE PART! Ready To apply?Be prepared with our resources and tips
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In your application, please refer to myScience.ch and reference JobID 69457. | |
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