Aerospace Systems Engineer

Daniel Owen Ltd
London
1 month ago
Applications closed

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Systems Engineer

Job Type:Aeronautical and Aerospace

Start Date:Flexible

Duration:Permanent

Location:London and South East

Salary:From £45,000 (Negotiable)

Our client is an industry-leading aerospace company, with a global brand and customer database that is focused on excellence and the highest safety standards. They are looking for a skilled and detail-oriented systems engineer, with an analytical mindset, a strong passion for aviation, and the strive to produce revolutionary products at the forefront of the role. With the ability to work with cutting-edge technology and contribute to sustainable positive change within the aerospace industry, this job is the ideal opportunity to grow your career to the heights you desire.

Responsibilities for the Systems Engineer

  1. Develop and manage system requirements and architectures.
  2. Conduct system modelling, simulations and performance analysis.
  3. Participate in technical design reviews and analysis to scope out areas of improvement.
  4. Work closely with production engineering and production departments to oversee the smooth integration of design requirements into a manufactured product.
  5. Collaborate with software, mechanical and electrical engineering teams to ensure seamless implementation of all systems into the aircraft.
  6. Liaise with a variety of other positions such as senior managers, stakeholders, suppliers and technicians.
  7. Participate in any relevant training to meet the role's requirements.

Essential skills, knowledge and experience required for the Systems Engineer

  1. A degree in aerospace engineering or related STEM field, ideally at 2:1 or above.
  2. Experience in the aerospace sector is desirable.
  3. Experience in producing technical reports and documentation.
  4. Understanding of safety-critical systems and regulatory compliance.
  5. Excellent problem-solving and analytical skills.
  6. Good knowledge of computer and mathematical modelling programmes such as MATLAB, CAD, etc.
  7. Strong teamwork skills to collaborate with a variety of departments and specialties.
  8. Ability to work to deadlines and meet required standards.

Benefits of the Systems Engineer Role:

  1. Competitive salary.
  2. Strong career development and opportunities to progress.
  3. Skill development.
  4. Bonuses and incentives.
  5. Paid time off.
  6. Retirement and financial benefits.

About us:

Daniel Owen is an established recruitment consultancy specializing in the placement of quality temporary and permanent workers to all roles in the Built Environment. Working with some of the UK's largest and most respected construction, maintenance, and engineering companies.

If you are interested in hearing more about the Systems Engineer role, please contact Josh on (phone number removed).

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