Principal Pipeline Engineer

ATTB - The Big Jobsite
London
10 months ago
Applications closed

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Role:Principal Pipeline Engineer

Location:London, UK

Salary:Competitive + Car Allowance + Bonus + Benefits

Work Arrangement:Hybrid

About the Role

We are seeking an experienced Principal Pipeline Engineer to lead pipeline engineering efforts across various project phases, from front-end design and detailed engineering to construction and commissioning. This role provides a fantastic opportunity to contribute to major energy projects while working in a collaborative and innovative environment.


About the Company

A market-leading advisory firm providing technical and strategic services to the global energy sector. The company is committed to delivering high-quality solutions that support sustainable and efficient energy infrastructure.


Key Responsibilities

  1. Lead pipeline engineering activities, ensuring technical excellence and compliance with project budgets and deadlines.
  2. Ensure all designs adhere to company procedures through rigorous review and approval processes.
  3. Collaborate with multidisciplinary teams to optimise engineering solutions.
  4. Prepare estimates and schedules for pipeline engineering projects.
  5. Maintain a strong focus on Health, Safety, Sustainability, and Environmental responsibilities, ensuring compliance with company policies and client standards.
  6. Monitor project progress against schedules (SPI) and track hours spent versus earned value (CPI).
  7. Provide leadership, training, and mentorship to junior engineers and team members.

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