Software Engineer (Signal Processing and AI)

Matchtech
London
1 year ago
Applications closed

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Our client, a leader in defence and security technology, is seeking a Software Engineer with a focus on Signal Processing and AI to join their team. This permanent role offers an exciting opportunity to work on cutting-edge solutions that safeguard naval forces worldwide.Key Responsibilities:Software architectural design using UML and the Enterprise Architect toolSoftware implementation and testing in C++, including unit and continuous integration testingSonar signal processing algorithm implementation, integration, and optimisationArtificial Intelligence algorithm implementation, integration, and optimisationDeveloping high-quality, well-thought-out codePeer reviewing design and code, contributing to a learning-focused communityIntegration, defect analysis, and resolution to assist verification teamsManaging assigned tasks and stories in a product backlog using Azure DevOps, including estimating remaining workPeriodic verbal reporting on progress and contributing to sprint planning and retrospectivesJob Requirements:Experience in C++ developmentUnderstanding of multi-threaded designExperience in signal processing and/or AI/ML techniquesKnowledge of UML design techniquesFamiliarity with the full software development lifecycleUnderstanding of machine learning (advantageous)Experience with Python (advantageous)Knowledge of packaging tools and repositories such as Conan and Nexus (advantageous)Benefits:Our client supports flexible working arrangements, including hybrid models, remote work, and on-site options. Offering a 9-day fortnight working pattern, providing extended weekends every other week. Flexible start and finish times, as well as Time Off in Lieu (TOIL), contribute to a supportive and balanced work environment.If you are a skilled Software Engineer looking to contribute to the future of naval warfare, we encourage you to apply now and join our client's innovative team! Please reach out to me for more details

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