Senior C# Software Engineer

IC Resources
Oxford
1 year ago
Applications closed

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Senior C# Software Engineer - Oxford

Salary: Up to 60k per year + Excellent Benefits

IC Resources are delighted to be partnering with a leading manufacturer of semiconductor devices used to power anything from Smartphones to Artificial Intelligence, 5G communications to autonomous vehicles, all are made possible through advances in semiconductor processes. They are looking for a Senior C# Software Engineer to implement and maintain there code base used to control high quality and leading edge machinery.

What’s Required?

For this Senior C# Software Engineering role, we’re interested in people from a variety of backgrounds, but your experience may include some of the following:

  • Experience in C# on Windows O/S
  • Knowledge of coding in Python
  • WPF Winform experience is essential 
  • Writing software to control robotic/machinery
  • Effective communicator

If you’re a Senior C# Software Engineer looking for an exciting new challenge within a great company, then please apply today to learn more!

To find out more about this and other Software opportunities across the UK, please contact Mitch Wheaton at IC Resources.

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