Senior Data Engineering Consultant

Tenth Revolution Group
City of London
2 months ago
Applications closed

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Senior Data Engineer - Remote-First - UK-Based - Up to £60,000

Are you a passionate Data Engineer looking to make a real impact in a fast-growing, values-driven tech company? We're working with a leading Microsoft Cloud specialist that's renowned for its inclusive culture, commitment to excellence, and collaborative ethos.

This is a fantastic opportunity to join a high-performing agile team where your strengths will be recognised and nurtured. You'll be hands‑on with cutting‑edge Azure technologies, helping clients unlock the full potential of their data.

Work Style: Remote‑first with occasional travel to client sites and company events

Location: UK-based

Employment Type: Permanent, Full‑Time

What You'll Be Doing
  • Delivering full lifecycle data solutions: acquisition, engineering, modelling, analysis, and visualisation
  • Leading client workshops and translating business needs into technical solutions
  • Designing and implementing scalable ETL/ELT pipelines using Azure tools (Fabric, Databricks, Synapse, Data Factory)
  • Building data lakes with medallion architecture
  • Migrating legacy on‑prem data systems to the cloud
  • Creating impactful dashboards and reports using Power BI
  • Supporting and evolving data solutions post‑deployment
Requirements
  • Proven experience in Data Engineering or Data Warehouse Development
  • Strong hands‑on skills with Azure data tools and SQL/Python
  • Knowledge of medallion lakehouse design and large‑scale data integration
  • Experience with Power BI or SSIS, SSAS, SSRS, and data modelling
  • Ability to write complex queries, stored procedures, and notebooks
  • Exposure to MDX/DAX and BI concepts
  • A collaborative mindset and strong communication skills
Benefits
  • Competitive salary
  • 25 days holiday + monthly home working allowance
  • Private health insurance
  • Enhanced parental leave and life assurance
  • Perks including Perkbox, CycleScheme, and electric car scheme
  • A chance to work for a World Class Best Company
  • Remote Working


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