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Data Engineering Manager - TWE 519997 in London

Energy Jobline ZR
City of London
6 days ago
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Overview

Energy Jobline is the largest and fastest growing global Energy Job Board and Energy Hub. We have an audience reach of over 7 million energy professionals, 400,000+ monthly advertised global energy and engineering jobs, and work with the leading energy companies worldwide.


We focus on the Oil & Gas, Renewables, Engineering, Power, and Nuclear markets as well as emerging technologies in EV, Battery, and Fusion. We are committed to ensuring that we offer the most exciting career opportunities from around the world for our jobseekers.


Join Our Mission

Shape the future. Make an impact.


We’re a strategy and technology consultancy that blends data, analytics, and AI to solve complex challenges for businesses and government. Our teams combine engineering precision with strategic insight to deliver solutions that improve efficiency, performance, and real-world outcomes.


About the Role

You’ll guide our data engineering and analytics engineering teams, ensuring that our platforms and pipelines are robust, efficient, and designed for scale.


Your Responsibilities Will Include

  • Designing and optimising ELT pipelines and workflows using modern tools (e.g., Airflow, SQL, Python).
  • Leading the development of large-scale data platforms and warehouses (Snowflake, Redshift).
  • Mentoring engineers and nurturing a culture of technical excellence.
  • Embedding governance, quality, and scalability into every data solution.
  • Translating complex technical concepts into actionable business insights.
  • Driving innovation in data modelling, orchestration, and transformation automation.

About You

You’ll thrive in this role if you:



  • Bring 7+ years of experience in data or analytics engineering.
  • Have advanced expertise in data pipelines, schema design, and transformations.
  • Are fluent in modern cloud data platforms and distributed infrastructure.
  • Have experience leading and developing engineering teams.

What We Offer

  • £5,000 annual professional development allowance
  • Matched pension contributions up to 6%
  • Private healthcare
  • Share options
  • 25 days annual leave (+ bank holidays, with buy/sell options)
  • Flexible working, including one month of work abroad per year
  • Central office with regular social events and premium facilities
  • Discounts on tech, travel, fitness, and retail

Our Culture

We’re a collaborative, mission-driven company where technical and strategic minds work side by side. You’ll join a team that values innovation, autonomy, and impact—where learning is fast, ideas are heard, and your work shapes the direction of entire industries.


We believe drives innovation. We welcome applicants from all backgrounds, experiences, and perspectives.


If you are interested in applying for this job please press the Apply Button and follow the application process. Energy Jobline wishes you the very best of luck in your next career move.


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