Senior Data Engineer

Method Resourcing
City of London
6 days ago
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This range is provided by Method Resourcing. Your actual pay will be based on your skills and experience — talk with your recruiter to learn more.


Senior Data Engineer | Snowflake | dbt | Tableau | Hybrid 3 days per week into Central London | £75,000-£80,000 + Benefits

We’re supporting a fast-growing digital business undergoing a major data transformation, and they’re looking for a Senior Data Engineer to spearhead the shift from a legacy analytics platform to a scalable, future‑ready modern data stack. This role sits right at the heart of the company’s growth strategy—turning data from an operational burden into a high-value product capability that unlocks predictive analytics, AI, and new commercial opportunities.


This is a genuinely pivotal hire: you’ll architect the new stack, rebuild the foundations, and shape how data powers the business for years to come.


What you’ll be doing:



  • Designing and implementing the end‑to‑end modern data architecture (Fivetran → Snowflake → dbt → Tableau).
  • Building robust, automated data pipelines with strong governance and observability.
  • Establishing a unified data warehouse to support performance, creative, and operational data.
  • Partnering closely with analytics, product, and technology teams to scale predictive modelling and AI initiatives.
  • Leading the migration away from Datorama and overseeing knowledge transfer to internal teams.
  • Acting as the strategic engineering voice ensuring performance, scalability, security, and long‑term resiliency.

Experience & Skills my client are looking for:



  • Proven experience with ingestion tools such as Fivetran, Airbyte, Stitch, or Rivery.
  • Experience in cloud data warehousing—Snowflake preferred (BigQuery or Redshift also relevant).
  • Strong dbt experience for modelling, testing, documentation, and best practices.
  • Hands‑on work with visualisation platforms like Tableau.
  • SQL experience, with solid Python for orchestration and automation.
  • A strategic mindset with a hands‑on, delivery‑focused approach—someone who builds fast, iterates, and drives outcomes.
  • 27 days holiday + BHs.
  • Private medical.
  • Birthday off.
  • Permanent Health Insurance.
  • Life assurance x4 salary.
  • + many more such as gym membership, childcare, wedding gifts, & events.

If this sounds of interest, please apply, and send your CV to for more information.


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