Senior C++ Engineer

g2 Recruitment
Manchester
1 year ago
Applications closed

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Senior C++ Engineer - Engine / Graphics development


My well-backed client has a superb new opening for a Senior C++ Engineer to join them on a permanent basis.


This role offers full remote working however candidates must be based in the UK or EU.


Candidates must have at least 5 years commercial C++ development experience with proven time served engineering modern C++ features.


You will be developing new and existing features for a 3D scene editor that heavily utilises complex 3D maths and graphics. Experience here is of benefit, however this role is more likely to focus on integrating AI (Machine Learning) and Blender tools. Additional python experience is therefore of benefit.


Additional QT experience is also of benefit.


Salary to £70,000 / €85,000 dependent on experience.


Please send an up-to-date CV if interested for more details.


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