Senior Data Engineer

ICAEW
Milton Keynes
1 week ago
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Senior Data EngineerMilton KeynesHybrid Permanent Full time - 35 hours per week £59,000 - £66,000

Join the ICAEW

At ICAEW, you'll be part of an organisation that's shaping the future of business, finance and the accountancy profession on a global scale. Our bold 2030 Strategy puts members, innovation, sustainability and trust at the heart of everything we do-creating an exciting, forward-looking environment where your work has real impact. We invest in our people through our benefits package, continuous development and a supportive, inclusive culture that empowers you to grow and thrive. If you're looking for a role with purpose, influence and opportunity, ICAEW is a place where your future can truly take shape.

Role Profile

We are seeking a Senior Data Engineer to support the design and delivery of a modern data platform for ICAEW. The role will play a critical part in the transformation of the data infrastructure through the design, build and scaling of data pipelines and platforms to drive analytics, reporting and data driven decision making.

Responsibilities include:* Design and deliver a resilient, scalable and secure cloud data platform, working with an external supplier and internal teams to build data pipelines, ingestion frameworks and integrations.

* Promote...

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