Software Engineer, C#, C

Oxford
1 year ago
Applications closed

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A pioneering leader in advanced laser technology is seeking a Software Engineer with a passion for innovation and a knack for problem-solving to join their talented team.

In this role, the engineer will dive into creating new cutting-edge features interacting directly with hardware. The work will go beyond solely the development of desktop applications, as projects could overlap with machine learning and computer vision techniques as well as frontend UI work.

This role is ideal for someone with at least a year or two of experience, preferably with a background in developing desktop applications that interact with hardware. While web development experience is less relevant, proficiency in C# or C++ for broader desktop applications is welcome. A top graduate with some internship experience would also be considered.

The company operates a hybrid working policy due to working with large hardware systems

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