Verification Engineer

Filton
11 months ago
Applications closed

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Title: V&V Engineer
Location: Bristol (on-site, due to project classification)
Security Clearance: British Citizen or a Dual UK national with British citizenship

The project and opportunity:

Our client has a sub-system that is the beating heart, and brains of any given weapon system: it has to understand the threats to the protected assets, and plan and then manage engagements of those threats, in a complex and forever changing situation.
This project and our client provides the opportunity to interact with all areas of the organisation, to see the full product development life-cycle and deliver real capability to their customers, to protect their home nation and its allies for the future.

As a Validation and Verification Engineer, you'll support product development for the sub-system. Your day-to-day will be supporting and producing the definition of the Test scenarios and successful criteria to ensure the sub-system product meet its requirements.
The role will also involve production of the appropriate verification plans to agree with the equipment development approval and the method of verification used.

Who are you:

A Systems Design Engineer or Systems Engineer with experience in software based equipment.
Degree level educated, or equivalent industry experience
Hands-on experience of DOORS, Rhapsody (preferred but not essential) and Systems Machine Learning (SysML).
Training can be provided on some of these technologies and tools where needed.

Omega Resource Group is acting as an Employment Agency in relation to this vacancy

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