Algorithm and Data Analysis Engineer

Civitanavi Systems
Bristol
1 year ago
Applications closed

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Company overview Civitanavi UK Ltd, a wholly owned subsidiary of Civitanavi Systems S.p.A., has been established to address major business opportunities in the UK and to bring the UK a sovereign capability in high grade inertial sensors and systems and GNSS products.  Civitanavi UK Ltd will be based in a brand new facility in Bristol, close to major aerospace and defence customers and travel links (hybrid working will be considered).  The UK business has already established a strong reputation with major UK primes and is now ready to recruit for a number of key roles. Civitanavi Systems is a professional yet dynamic company with a can-do attitude at all levels.  The business is hungry for ideas and passionate about delivering to the customer what they need when they need it, “We Care, We Perform, We Deliver” is not just a slogan, it is a driving principle.    Civitanavi Systems S.p.A. is fully owned by Honeywell. Candidates must be eligible to obtain UK security clearances   Hopefully this will focus the responses better. Job description Our Calibration team is looking for an Algorithm and Data Analysis Engineer in our Bristol (UK) office. The engineer will be responsible for developing innovative data analysis techniques for performance evaluation and failure detection, as well as conducting data analysis for engineering models and prototypes. This position requires close collaboration with the electronics, firmware, navigation, and mechanical engineering departments. The opportunity is open to engineers with a backround in Aerospace, Automation, Electronic, Biomedical engineering, or an equivalent scientific field, Physics or Mathematics. Responsibilities Conduct data analysis for engineering models and prototypes. Design and evaluate calibration algorithms for various types of sensors using Matlab/Simulink, with a specific focus on Inertial Measurement Units (IMUs). Develop innovative data analysis techniques enhancing automation using optimization algorithms and machine learning. Design Inertial Measurement Unit (IMU) model in Matlab/Simulink for simulation activities. Generate documentation related to design, implementation, and test and validation activities of the developed algorithms. Define the test procedures and profiles to collect data and analyze sensor performances. Skills and experience Master’s degree in Aerospace, Automation, Electronic, Biomedical engineering, or an equivalent scientific field, Physics or Mathematics. Consolidated knowledge of optimization algorithms, parametric estimation, numerical analysis, and signal processing fundamentals. Consolidated knowledge in the use of modeling tools such as Matlab/Simulink. Basic knowledge of C/C++ language. Ability to work autonomously and collaboratively in a team. Strong problem-solving skills and a results-driven attitude. Good knowledge of English in writing and speaking. Candidates must be eligible to obtain UK security clearances   Hopefully this will focus the responses better. Powered by JazzHR

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