Data Engineer

Hays Specialist Recruitment Limited
Newton Abbot
4 days ago
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Your new company This company is a well-respected charity and registered social landlord dedicated to providing high-quality, affordable homes and supporting thriving communities across South Devon. The organisation now manages over 4,000 homes spanning areas from Dartmoor National Park to the urban centres of Teignbridge, the South Hams, West Devon, Mid Devon, East Devon, and Exeter. As a non-profit housing provider, they deliver a full range of housing and tenant support services, including property repairs and maintenance, rent management, financial advice, and neighbourhood development initiatives. Its work is focused on raising service standards, adapting to evolving community needs, and helping residents access opportunities that improve their wellbeing and quality of life. The organisation's vision-"Homes people love, a landlord you can trust"-is reflected in its values of being friendly, accessible, collaborative, and committed to continuous improvement. The business works closely with tenants, partners, and local stakeholders to build sustainable, inclusive communities. Your new roleThe purpose of this role is to lead the development and operation of the organisation's data engineering capability, ensuring that data is efficiently extracted from source systems, transformed through robust ETL/ELT processes, and loaded into well-structured data models that support strategic reporting, analytics, and Bu...

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