Software Engineer - Guildford

Guildford
3 weeks ago
Applications closed

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Software Engineer

Software Engineer

Software Engineer

Software Engineer

Software Engineer

Software Engineer

Do you enjoy working in an R&D Environment? Would like to work in area where science and coding collide? Would you like to work at company that offers chance to further develop programming skills but also deepen knowledge mathematics, physics or engineering? Then you may want to get in touch for more detail on this opportunity.

About the Role

Opportunity for experienced Software Engineer used to working in R&D type environment. You will be working on complex and scientific software for a broad range of worldwide clients from Edinburgh based development team. You will use your analytical and problem solving nature to get involved in such activities as; software coding, interface design and database development.

Experience Required

Advanced degree in Computer Science, Engineering, Physical Science or Mathematics

Programming experience in suitable language including: C, C++, Fortran

All candidates must display excellent numerical, problem solving, and organisational skills

Additional skills in any of the following also beneficial

C#, WinForms, WPF, Qt/QML framework, HTML5, experience with algorithmic problems (OpenCL, CUDA), Machine learning and AI, OpenGL, OpenGL Shaders, VTK, OSG, Vulkan, JIRA, TestRail, TFS, Git, Jenkins, csh/bash, batch files, cmake, PowerShell.

About the Company

Award winning and market leading engineering company which develops a set of software tools used by clients worldwide. Well established and successful they are looking to add to team of very talented professionals to keep moving forward.

Apply

Please apply online or send your CV directly to Chris Devine. If you have additional questions and wish to have a confidential discussion about this opportunity, feel free to give Chris a call on (phone number removed).

At Be-IT, we celebrate diversity and strive for inclusion. We welcome applications from all backgrounds, ensuring equal opportunity regardless of race, gender identity, ethnicity, nationality, disability, sexual orientation, or socioeconomic status

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