Data Engineer

EG On The Move
Blackburn
6 days ago
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Company: EG On The Move

About the role:

We are looking for a driven data engineer who can take ownership of developing our Azure‑based data platform. You’ll build end‑to‑end ingestion, transformation, and modelling pipelines that deliver reliable, high‑quality data for analytics and decision‑making. You’ll work closely with engineers, analysts, and stakeholders to solve real data engineering challenges and deliver scalable, cloud‑native solutions across the business. This is a hands‑on role with plenty of responsibility, ideal for someone who wants to deepen their cloud skills and contribute to an evolving Azure data environment.

What you’ll do:

  • Designing, building, and optimising scalable Azure data pipelines using ADF, Databricks, Data Lake, Synapse, Event Hub, and Logic Apps.
  • Supporting the migration of existing Synapse workloads into a modern Azure Medallion architecture.
  • Ingesting structured, semi‑structured, and unstructured data from a wide range of sources, building metadata‑driven and reusable ingestion frameworks (ADF, Python).
  • Developing robust transformation pipelines in Databricks (PySpark/SQL), using Delta Lake for incremental loading, versioning, and schema evolution.
  • Embedding strong engineering standards including data quality, validation, lineage, error handling, and automated testing.
  • Collaborating with senior engineers, analysts, business partners, and external providers to define integration requirements and deliver reliable, scalable solutions.
  • Contributing to data modelling, metadata management, and consistent data structures that support analytics and reporting.
  • Working within agile delivery cycles participating in sprints, code reviews, CI/CD deployments, and continuous improvement of pipelines.
  • Maintaining and troubleshooting existing data processes to ensure reliability, performance, and cost efficiency.
  • Documenting pipelines, standards, and processes clearly for both technical and non-technical audiences.

What’s in it for you?

Whether you're looking to build a long-term career as we expand across the UK or seeking a job with top benefits, we've got you covered:

  • Bonus Incentive
  • Flexible hours — start anytime between 8–10 AM and work your 8‑hour day your way
  • 15% Food to Go Discounts – Greggs, Starbucks, Subway, Popeyes, Chaiiwala & Sbarro
  • Free on-Site Parking
  • On site Prayer and Ablution Facilities
  • Employee Assistance program
  • Support for mental and financial wellbeing
  • Life Insurance
  • Legal Assistance
  • Retail Discounts
  • Salary Sacrifice Pension

What we are looking for:

  • 3+ years’ experience in data engineering within a cloud or enterprise environment.
  • Hands‑on expertise with Azure Data Factory, Databricks, and Azure Data Lake.
  • Strong Python, PySpark, and advanced SQL skills for transformation, automation, and performance optimisation.
  • Good understanding of Medallion architecture, Delta Lake, and scalable cloud data design.
  • Experience integrating data from APIs, cloud platforms, and file‑based systems.
  • Familiarity with Git, DevOps practices, and CI/CD pipelines for data engineering deployments.
  • Knowledge of data testing, validation, and quality frameworks.

Be a part of it:

As EG On the Move grows, we’re excited to welcome talented individuals to our team. We are about building a workplace where expertise and growth come together. Here, your skills matter, and you’ll have the opportunity to make a real impact. Join us and be part of something meaningful!

Please note that this role requires a successful DBS check, which will be fully funded by EG On The Move.


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