Data Engineer

Seek and Code
Manchester
6 days ago
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Seek and Code are working with a Manchester-based business looking for someone to own and evolve their analytics capability. This is a hybrid role that sits across data engineering and analytics, helping shape how data is used across the organisation.


This is a hands‑on role where you’ll design and build the data foundations that power reporting and insight across the company, while partnering closely with teams across finance, operations, and commercial.


What you’ll be doing:

  • Designing and building core data models and analytics layers
  • Developing and maintaining ELT pipelines using dbt and SQL
  • Owning business‑critical metrics, dashboards, and reporting
  • Working directly with stakeholders to translate business questions into reliable analytical outputs
  • Helping move the business from reactive reporting to more forward‑looking analytics

Core technical skills:

  • SQL - Strong query writing and performance optimisation
  • Data modelling – Dimensional modelling, star/snowflake schemas, and semantic layer design
  • Modern data warehouse patterns – Experience with mart design and layered architectures (e.g. medallion)

Nice to have:

  • dbt – Building and maintaining transformation pipelines (up‑skill opportunity)
  • Experience with semantic layer tools such as Cube.dev or dbt Semantic Models
  • Python for data wrangling, automation, or statistical work
  • Experience with BI tools such as Metabase, Looker, Power BI, or similar

What they’re looking for:

  • Someone who can turn business questions into clear, structured analytics
  • Strong planning and organisational skills
  • A self‑starter comfortable working independently and meeting deadlines
  • Confidence working directly with stakeholders across the business
  • A strong focus on data quality, security, and maintainable SQL/data pipelines

This is a great opportunity for someone who enjoys building robust analytics foundations while working closely with the wider business to drive better decision‑making.


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