Algorithm Engineer

Filton
1 week ago
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As an Algorithm Specialist, you will have the opportunity to work on complex and exciting concepts and products as part of a passionate team of specialist engineers; and be interacting with other subject areas like Simulation and Modelling, Image Processing, Software, Navigation Sensors, Hardware-in-the Loop, Systems Design & Validation, Seekers & Sensors, Datalinks and Technical Quality.

You’ll develop innovative algorithms in the areas of Control, Navigation, Guidance, Tracking, Data Fusion, and Mission Planning. You will be exposed to ground breaking technological innovations and play a meaningful role through the development of our complex weapon systems in all stages of the lifecycle.

Please note, we are currently recruiting for a number of projects including FCAS/Tempest.

What we're looking for from you:

  • Domain knowledge such as Flight Dynamics, Aerodynamics, Sensors, Servo Systems, Actuators, Autonomous Systems, Robotics, or Mechatronics

  • Algorithms knowledge such as Modern/Classical Control, Navigation, Data Fusion, Tracking and Guidance, Machine Learning

  • Tools and Libraries such as Matlab, Simulink, Python, C/C++, Py Torch, Open AI-Gym/Universe, Model based design

  • Experience of algorithm research and/or product development and support

  • A keen curiosity about innovative technologies and their applications

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