Senior Data Engineer

Bucks Skills Hub
Milton Keynes
1 week ago
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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 data engineering standards, architectural patterns and best practices across teams.
  • Develop and maintain data models that support analytics, operational reporting and data products, promoting the effective use and reuse of data across the business.
  • Collaborate with teams to develop, support and improve data products and services aligned with business goals.
  • Work closely with technical and non technical stakeholders to gather requirements, clarify issues and translate needs into practical data solution.

Candidate Profile

Requirements include:



  • Strong technical knowledge and experience with the following technologies: Microsoft Dataverse, Azure Data Factory, Azure Data Lake, Azure Synapse Analytics, Power BI, Purview.
  • Strong Proficiency in Python, Spark, Advanced SQL.
  • Deep understanding of data integration patterns and ingestion frameworks e.g. CDC.
  • Able to think strategically about data architecture and modelling.
  • Knowledge of data quality, lineage and metadata management frameworks and tooling.
  • Understanding of data security, encryptions and compliance requirements.
  • Strong analytical and problem‑solving skills.

For the full role profile please click the document attached.


Why work for us?

We want you to enjoy your work and flourish in your role. Our working environment is friendly and supportive, and we encourage everyone to understand personal differences and treat each other with respect. We are a diverse organisation, employing skilled and motivated people from all backgrounds and helping them to reach their full potential, through training and development. Sustainability is important to us, and we work hard to reduce our carbon footprint, whether that's in our buildings through lighting and heating, or encouraging staff to recycle and reduce paper consumption.


Our employee benefits include:



  • A substantial suite of training and development.
  • Flexible working arrangements.
  • A generous benefits package which includes gym discounts, pension plan, season ticket travel loans and health and dental plans.

We are a disability confident employer.


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