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Verification Engineer

Round-Peg Solutions (RPS)
Oxford
7 months ago
Applications closed

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We are a managed service provider who have exclusively partnered up with an exciting Aerospace company near Oxford to handle their entire recruitment process as they search for a Verification Lead Software Engineer to join them on a long-term contract basis. They manufacture revolutionary technology supporting the ever-growing advanced air mobility sector out of their state-of-the-art facility. You will have the opportunity to work in a fantastic work environment. It will initially begin as a 6-month contract with the opportunity to continue on an ongoing basis.


The successful Verification Lead Software Engineer will have the following responsibilities:

  • Leading requirements-based testing for both low level unit testing and Hardware-in-the-loop test environments.
  • Developing the primary unit and HiL test environments to achieve quicker and higher quality results.
  • Fulfilling tests, capturing results and logging of any resolution or improvement actions.
  • Owning the software test plan to meet the timing goals of company development projects and for final flight certification.
  • Peer reviewing of artefacts produced during the development of the system.
  • Supporting communication between the software development team and the wider project team.
  • Collaborating with internal and external stakeholders and coordinating cross-team activities.
  • Responsible for the verification aspects of the software development process for Design Assurance Level (DAL) A of RTCA DO-178C.

The Verification Lead Software Engineer will ideally have the following skills or experience:

  • Degree or equivalent in software or electrical engineering
  • Previous experience in the verification of embedded software in safety critical products, e.g. to RTCA DO-178C (or DO-178B) DAL A or B or ISO26262 ASIL D/C.
  • Experience developing code in C programming language.
  • Experience of scripting, for example in Python.
  • Unit testing using for example: LDRA, Cantata, VectorCAST etc.
  • Verification of model-based software using MATLAB.
  • Familiarity with Agile software development & DevOps methodologies and industry best practices for software development
  • Experience with requirements and lifecycle management tools such as DOORS, Polarion, codeBeamer or Dimensions CM


Compensation: Competitive rates (Inside IR35)

If you are looking to join an exciting company on their journey to revolutionise the aerospace industry, apply on the link below.

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