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Process Assurance Engineer

Cirrus Selection Limited
Filton
9 months ago
Applications closed

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Process Assurance Engineer - Software QualityLocation: BristolSalary: Up to £55,000Are you a software quality engineer looking to take your career to the next level? If you are, and you’re interested in working with a company offering the chance to work on cutting-edge projects, career growth, and the chance to make a real impact on national security, then this is the role for you.As the Process Assurance Engineer, you will join a Bristol-based Software Quality Assurance team, where you will be able to develop your process-centric quality assurance skills across a wider Quality Assurance community. The role focuses on software quality assurance through adherence to processes and standards.Working on a diverse range of programmes, and supporting project activities within the software development teams, you will help ensure that hi-tech systems are developed to the required level of quality and delivered to trusted partners around the world during increasingly uncertain times. This is an excellent opportunity to make a difference and be able to build a career in Quality.Headline Benefits: A bonus of up to £2,500, Paid Overtime, Strong pension, 25 days annual leave with the option to accrue 15 additional days flexi leave, enhanced parental leave, hybrid working (2-4 days a week on-site depending on workload)Process Assurance Engineer experience required: * You will ideally have an understanding and background in software development – full life cycle – and quality assurance within a process-based design and development environment. * You will have knowledge of software processes, including national and international standards and assurance requirements. * You have a collaborative but objective approach with an ability to influence change when required. * You have the ability to lead Project Quality Assessments, identify risks and critical issues and provide input to monthly reports. * You will ideally have an Engineering Degree, or equivalent, with an understanding of new and appropriate technologies. Relevant experience will be considered in lieu. * Experience or knowledge of DOORS, RTC/EWM, Rhapsody, MATLAB/Simulink would be beneficial though not essential.The business believes in offering all staff the best platform to succeed, supporting career development and personal assistance. They hold numerous awards on the back of this work and have a range of employee networks and internal communities that include Parents and Carers, Armed Forces, Gender Equality, Neurodiversity, Pride, Ethnic Diversity and many more. They care about their staff and are passionate about what they do and why they do it.Their order book stretches for many years, and they have healthy profits and a range of new long-term projects. They’re stable with steady, controlled growth, offer dynamic working, and fantastic opportunities to grow and develop your career.Cirrus Selection offers the services of an Employment Agency for permanent recruitment and the services of an Employment Business for contract recruitment

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