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Sr Azure Data Engineer

Peaple Talent
Swindon
8 months ago
Applications closed

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Sr Azure Data Engineer | Swindon (hybrid) | £55,000-£75,000 Peaple Talent are very excited to have partnered with a leading financial services client, based in Swindon who are looking for a new Senior Data Engineer. As a Senior Data Engineer, you will join the experienced Data Engineering team helping them in the design, development, testing, and deployment of quality data analytics solutions and services. You will also be responsible for design and implementation of the data models. Responsibilities: Providing technical leadership by staying up to date on the latest technologies and trends. Using technical knowledge to help the team develop innovative and effective solutions. Designing and implementing data solutions. Requirements: A number of years commercial experience as a Data Engineer Experience in implementing Data / Dimensional models (Kimball / star schema ideally) Data Warehouse and Report Layer design Experience using Microsoft Azure Experience using Azure DevOps Pipelines, Azure Synapse and Azure Databricks Whats in it for you? Salary - £55,000 - £75,000 ⭐Bonus scheme - on target bonus -10% Pension scheme contribute up to 5% 25 days holiday bank holidays ❤️‍ A range of other flexible benefits to include private medical insurance, dental insurance and much more

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