Senior Data Engineer

Hays Specialist Recruitment Limited
Salisbury
4 days ago
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Your new companyLast year saw Landmarc sign a new 10-year contract with the MOD which has provided the opportunity and platform to embark on a significant Digital Transformation programme.The digital transformation programme is designed to revolutionise operations by resetting the technology requirements to ensure that Landmarc is well-placed to deliver maximum value on the new contract term. By leveraging advanced data and reporting tools, the programme aims to enhance performance and efficiency across all departments, digitising operations to streamline processes and reduce manual workloads, complimented by introducing some new leadership roles to refresh and bring in innovative perspectives.Landmarc is committed to doing things differently, fostering a culture of innovation that prioritises customer and user focus and delivers technology quickly and efficiently.Your new roleAs the Senior Data Engineer, you will design and deliver scalable and efficient data architectures to meet our evolving data needs. You will oversee the development of semantic data models, ensuring seamless collaboration with Data Analysts. Your role will integrate data quality measures into all phases of the data lifecycle, establishing a proactive approach to data integrity and reliability. As the senior technical leader of the data engineering team, you will ensure our ELT processes adhere to best practices, lead the team, and ensure data availability and pipe...

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