Data Engineer (Marketing)

ThePlaceToBe
Leeds
1 month ago
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Location & Schedule

North Leeds – Hybrid – 3 days a week


About the role

As a Data Engineer you’ll join a small analytics team and play an important role delivering a wide range of projects for clients and internal teams.


Our solutions‑based team acts in bringing data together with multiple sources into centralised datasets to build models for the digital marketing client base.


What you’ll be doing day to day

  • Build and maintain data pipelines to integrate marketing platform APIs (Google Ads, Meta, TikTok, etc.)
  • Develop and optimise SQL queries and data transformation in BigQuery and AWS
  • Design and implement data models, combining first‑party customer data with marketing performance data
  • Develop, test and deploy machine learning models
  • Create technical documentation including diagrams, data dictionaries, and implementation guides to enable team knowledge sharing and project handovers
  • Support the BI and Analytics team members by creating reusable data sets

About you

To be considered for this Data Engineer role you must have a passion for all things Data, Marketing, Modelling and Analytics.


What we’re looking for

  • Proficient skill set within Python for building APIs, scripting and maintaining complex data/ML codebases
  • Strong skill set within SQL and experience using tools such as BigQuery
  • Working experience with Docker and knowledge of Linux to manage local dev containers, services, and cloud deployments
  • Confidence to take lead upon client and internal meetings
  • Experience within MLOps workflow, Python ML frameworks, Apache Beam would be beneficial
  • Digital Marketing Agency experience (not essential)
  • You must be able to commute to Leeds.asp; 3 days a week

Seniority level

Director


Employment type

Full‑time


Job function

Advertising and Marketing


Industries

Advertising Services and Marketing Services


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