Senior Data Engineer

VIQU IT
Bolton, Greater Manchester, United Kingdom
2 months ago
Applications closed

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Senior Data Engineer
Lancashire – Permanent – Hybrid
Competitive Salary

VIQU have partnered with a leading organisation seeking a Senior Data Engineer to join their Data and Platform Engineering team during an exciting period of cloud and data platform transformation. In this hands-on role, you will design, build, and deliver modern data platforms within a cloud-first, Data Mesh environment, work closely with product managers, architects, and engineers, take ownership of your projects, and mentor junior colleagues, making a real impact on both the technology and the team.

Key Responsibilities:

• Lead the design, development, and delivery of cloud-based data platforms and data products as a Senior Data Engineer.
• Own the full data product lifecycle, from initial design through to decommissioning.
• Build and maintain robust ETL / ELT pipelines using SQL, Python, and modern tooling.
• Collaborate closely with product managers, architects, and engineers to solve complex technical and business challenges.
• Act as the go-to technical expert for junior engineers, providing mentorship, code reviews, and quality assurance.
• Produce clear, well-documented solutions for both technical and non-technical audiences.
• Support CI/CD, environment control (dev/test/prod), and effective change management practices.
• Contribute to cloud platform development, with a strong preference for GCP (BigQuery), within a Data Mesh architecture.

Key Requirements:

• 5+ years’ experience as a Data Engineer with a strong focus on ETL / ELT.
• Advanced SQL and Python development skills.
• Hands-on experience with DBT, GIT, Terraform, Docker, IAM, and Airflow (Composer).
• Proven experience working on cloud platforms – ideally GCP (BigQuery), but Azure or AWS also considered.
• Strong understanding of Data Mesh, Test Driven Design, and Agile delivery.
• Experience with documentation, CI/CD pipelines, and multi-environment controls.
• Excellent communication skills and the ability to lead by example within engineering teams.
• Experience supporting mergers, integrations, or large-scale organisational change is highly desirable.

Senior Data Engineer
London – Permanent – Hybrid
Competitive Salary

Apply today to speak with VIQU in confidence or contact Belle Hegarty at .
Know someone exceptional for this position? Refer them and receive up to £1,000 if successful (terms apply).
Follow us on LinkedIn @VIQU IT Recruitment for more exciting opportunities

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