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Senior Infrastructure Engineer

Expert Employment
Oxford
1 year ago
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A global engineering and animation company is seeking a Software Infrastructure Engineer to develop the systems that support application, computer vision, systems and embedded software teams. The Software Infrastructure Engineer should be motivated and keen to help build robust, high quality systems and work with interesting technology. Salary: up to £85,000 Hours: remotely, full time Location: Oxford Technical development environment includes C++ (MSVC, Clang, GCC), Python, C#, Ansible, Groovy, CMake, Mercurial, Git, Jenkins, Jira, Confluence, Zabbix, HashiCorp Vault, Apache, and Windows and Linux scripting. The ideal candidate would come from a Programming then DevOps background and have experience automating software development processes and systems administration tasks. Knowledge of the technologies listed above is not essential, but some experience working with C++ and Python would be very beneficial. Exposure to cloud and machine learning technologies may also be useful but similarly are not requirements.

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