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Data Engineer

Calobra
London
18 hours ago
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🚀 New Role: Data Engineer / Analytics Engineer

đź’° ÂŁ75k | 4 days onsite | Central London


Hi There,


I’m working with a global market leader going through an exciting data and technology transformation. They’re looking for a hands-on Data Engineer who can bridge the gap between technical delivery and business insight.


This role sits within a highly agile team, building out the next generation of analytics capabilities and shaping the data strategy across the organisation.


🔹 Build dynamic, insight-driven Power BI solutions

🔹 Design and optimise Snowflake data models and ingestion pipelines

🔹 Implement CI/CD practices in Azure Pipelines and Git

🔹 Work with Python, SQL, and modern ETL tools (DBT, Dataflow)

🔹 Champion data governance, data quality, and analytics self-serve


It’s a brilliant opportunity for someone who loves solving complex data problems, enjoys autonomy, and wants to make a genuine impact in a fast-moving, global environment.


If you’re an experienced Data or Analytics Engineer ready for your next challenge, I’d love to share more details - accept this message and share a cv.


Thanks!

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