Data Engineering Technical Lead

Vanguard
Manchester
2 days ago
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Data Engineering Technical Lead Location: Manchester Role Type: Permanent Work Setup: Hybrid - 3 days in office


Who We Are

Vanguard is one of the world's leading investment firms, dedicated to helping clients achieve lasting financial success. Established in 1975, its unique ownership structure—where funds own the company and investors own the funds—ensures all efforts are focused on client outcomes. Known for integrity, innovation, and low‑cost investing, Vanguard fosters an inclusive and collaborative culture that empowers employees to make a meaningful impact globally.


What you’ll do:

Deliver advanced data solutions by processing, storing, and serving data efficiently. Ensure high‑quality, secure, and scalable data pipelines. Perform deep analytical work on diverse data sources and mentor junior Data Engineers.



  • Design and develop ETL processes, database systems, and tools for real‑time and offline analytics.
  • Ensure data consistency and integrity; integrate large, complex datasets for business insights.
  • Convert business requirements into design and code, developing complex programs, queries, and reports while ensuring well‑structured, documented, and maintainable solutions.
  • Collaborate with internal clients and technical teams to implement effective data solutions.
  • Lead solution development, providing technical guidance and explaining considerations to team and clients.
  • Assess data quality, test code, and provide technical consulting and data analysis guidance.
  • Mentor junior data engineers, enforce quality standards, and contribute expertise across teams.
  • Test and deploy new software, perform regression testing, and resolve vendor‑related issues.
  • Apply experience in data analytics, programming, database administration, and data management.

What you bring:

  • Bachelor’s degree or equivalent experience
  • Strong senior data engineering background with deep understanding of medallion architecture.
  • Solid grasp of design principles (SOLID), design patterns, and OOP in Python as applied to data engineering.
  • Experience in enforcing data engineering standards, clean code practices, and code review approaches (Python + SQL).
  • Strong AWS experience: serverless services, cost optimization, infrastructure as code, and deployment fundamentals.

What’s Next:

If you are ready to take the next step, apply now. Successful applicants will be contacted directly by a recruiter to discuss the role more.


We are committed to creating an inclusive recruitment experience. If you require support or adjustments to the recruitment process, our Adjustment Concierge Service is here to help. Please feel free to contact us at to discuss how we can support you.


We welcome applications from all candidates and are committed to providing equal opportunities.


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