Senior Data Engineer Retail & Vending Technology

Marks Sattin
Manchester
2 days ago
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Job Description

Marks Sattin is partnered with a leading European retail and vending technology company that is building a brand-new data function and looking for an experienced Senior Data Engineer to help shape, design, and deliver a modern data platform from the ground up. This is a true greenfield opportunity where you'll build an Azure data platform from scratch and play a key role in a rapidly growing, highly profitable organisation. You'll work closely with senior leadership and have the opportunity to make a significant impact from day one.This is a true greenfield opportunity where you'll build an Azure data platform from scratch and play a key role in a rapidly growing, highly profitable organisation. You'll work closely with senior leadership and have the opportunity to make a significant impact from day one.

Role Responsibilities

  • Design and build a modern Azure-based data platform (Data Lake, ingestion pipelines, modelling, transformation).
  • Lead data-driven projects across the organisation, ensuring timely delivery.
  • Automate ingestion from ERP, CRM, bespoke operational systems, and high-volume transactional machine data (1,000+ transactions per hour).
  • Build and optimise a centralised data warehouse to support reporting and operational insights.
  • Evaluate the current data estate, identify gaps, and rebuild or enhance where required.
  • Explore advanced use cases such as dynamic pricing (regional, seasonal, behavioural) and operational optimisation.

Skills & Experience Required

  • Proven experience as a Data Engineer or in a similar role.
  • Strong Azure background, ideally including Data Factory, Data Lake, Databricks, Synapse (or similar).
  • Solid understanding of SQL, Python, ETL/ELT, data warehousing, and data modelling.
  • Experience integrating multiple systems into a centralised platform.
  • Familiarity with ERP, CRM, and e-commerce environments.
  • Power BI, DAX, and Dynamics experience is beneficial.
  • Experience working in an ITIL environment.
  • Strong documentation, problem-solving, and communication skills.

If this sounds like the type of opportunity that excites you and you want to be part of a growing team, please share your most recent CV.

We are happy to provide application and/or accessibility support, please contact your Marks Sattin or Grafton consultant directly to discuss your needs. We're committed to protecting the privacy of all our candidates and clients, please visit https://privacy and https://en/privacy-policy-1 for our privacy policy.

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