Lead Data Engineer

Method-Resourcing
London
1 day ago
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Lead Data Engineer | Permanent | London (Hybrid) | £90,000 - £110,000
Snowflake * dbt * Fivetran * SQL * Tableau
Are you an expert in automated data pipelines and ready to own a next-generation, enterprise data platform?
Method Resourcing have partnered exclusively with a

market-leading digital and creative technology organisation , backed by a global media network. This is a rare greenfield opportunity to design and deliver a modern data platform from scratch - at genuine enterprise scale.
You will own the architecture, tooling, and delivery of a next-generation data stack, building scalable, trusted pipelines that power advanced analytics, AI-driven optimisation, and future data products. This is a highly visible role with real influence across data strategy and platform direction.
What you'll bring
Proven experience leading the design and delivery of modern data platforms
Hands-on expertise with Snowflake, dbt, Fivetran (or similar), and Tableau
Strong experience ingesting data from marketing, advertising, or digital platforms
Advanced SQL skills; Python preferred
Deep understanding of data modelling, testing, and documentation (dbt)
Experience with orchestration, CI/CD, and cloud infrastructure (AWS preferred)
Strong knowledge of data quality, governance, lineage, and monitoring
A delivery-focused, ownership-driven mindset
Why this role
Full ownership of a greenfield, enterprise-scale data platform
Real architectural and tooling decision-making authority
Work beyond dashboards - AI, optimisation, and data products
Backed by a global organisation, operating with speed and autonomy
Clear progression and the opportunity to lead and mentor
Working pattern:
Hybrid - three days on site a week
Benefits:
30 days annual leave + bank holidays, plus your birthday off
Summer Fridays (3:30pm finish, June-August) and Recharge Days
Private healthcare, enhanced family leave, and long-term sabbaticals
Interviews are taking place next week. Apply now or contact me (Georgia) directly on for a confidential conversation.
Lead Data Engineer | Permanent | London (Hybrid) | £90,000 - £110,000
Snowflake * dbt * Fivetran * SQL * Tableau
RSG Plc is acting as an Employment Agency in relation to this vacancy.

TPBN1_UKTJ

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