Senior Data Engineer

Levick Stanley
London
1 week ago
Applications closed

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Senior Data Engineer

Location: Central London

Working Model: Hybrid, 1-2 days onsite

Salary: Competitive

A forward-thinking leader in the Financial Sector/Private Equity space is on the lookout for a Senior Data Engineer to take ownership of their modern Azure-based data platform. With strong backing from leadership and close collaboration across tech, finance, and operations, this role offers a real opportunity to shape how data is used to drive decisions across the business.

You’ll be enhancing an existing data warehouse and extending it with new system integrations, ensuring data remains reliable, accessible, and impactful.

What You’ll Be Doing

  • Manage and evolve the Azure data warehouse environment, ensuring scalability, performance, and resilience.
  • Build and maintain ETL workflows, orchestrating seamless data movement and transformation from multiple sources.
  • Develop and optimise Power BI reports and dashboards used across the business.
  • Engage with internal teams to understand reporting needs, translate them into data models, and deliver user-friendly outputs.
  • Collaborate with both internal stakeholders and third-party partners to ensure the data estate remains secure, accurate, and future-ready.


What You’ll Bring

  • Extensive experience in data engineering (5+ years), ideally in senior or lead roles.
  • Solid command of SQL and Python, with a proven track record in building solutions using Azure Databricks and Synapse Analytics.
  • Proficiency in Microsoft Azure’s data and integration services, and experience working with APIs to enable cloud-based data flows.
  • Strong experience in dimensional modelling and formal database design.
  • A good understanding of data governance, quality, and security principles.
  • Ability to work both independently and collaboratively, with a problem-solving mindset and attention to detail.


Bonus Points For:

  • Exposure to NoSQL databases and unstructured data environments.
  • Familiarity with Azure Logic Apps or similar integration tools.
  • Knowledge of data privacy regulations and security frameworks (e.g., GDPR, ISO27001).
  • Experience using DevOps practices to automate testing and deployment.


Apply today!

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