Navigation Algorithm Design Engineer

Innovate Recruitment Ltd
Bedford
1 year ago
Applications closed

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Job Title: Navigation Algorithm Design EngineerLocation: StevenageSalary: Up to £55,000 (depending on experience)Security Clearance: Up to SC levelKey Skills: MATLAB, Mathematical, Real time, navigation, algorithm designAbout Us:Looking to join a world-leading missile systems company, specialising in the design, development, and manufacture of advanced missiles and missile systems for a variety of defence applications? With a focus on innovation and technological advancement, we invest heavily in research and development to stay at the forefront of missile technology.The Role:So, what will you be doing as a Navigation Algorithm Design Engineer?As part of the Guidance, Control, and Navigation Department, you'll have the opportunity to contribute to a variety of contract and research projects, influencing multiple areas of the company’s product development.Navigation algorithms are integral to our system design, and through this role, you’ll gain a deep understanding of how our department supports weapon system innovation, while collaborating closely with other key disciplines.You’ll be involved in developing algorithms at various stages of the product lifecycle, including: * Research studies for future algorithmic advancements, both internally and externally funded * Feasibility and concept studies for new missile systems * Support for development and assessment programs * Enhancements ...

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