Data Engineer

Proactive Appointments
High Wycombe
4 days ago
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Data Engineer

Location: High Wycombe 

Salary: £40,000 - £45,000 

Permanent – Hybrid working (2 days on site)

Overview

We are seeking a skilled Data Engineer to design, build and optimise scalable data solutions that support organisational operations, analytics and strategic decision-making.

Key skills/experience

  • Substantial experience of data solution architecture in a large, complex organisation.
  • Experience with Oracle DBMS.
  • Experience with SQL Server DBMS
  • Microsoft Azure, Microsoft Fabric and Dataverse.
  • Develop and maintain robust data pipelines and ETL workflows.
  • Design and optimise relational and non-relational databases.
  • Implement scalable data storage, orchestration frameworks and master data management processes.
  • Ensure data quality, integrity, security and GDPR compliance.
  • Contribute to enterprise data architecture and governance frameworks.
  • Monitor performance and troubleshoot data infrastructure issues.
  • Lead technical data planning within change programmes and advise on best practice tools and standards.
  • Identify and introduce emerging technologies to enhance organisational data capability.

About You

  • Proven experience in data engineering, ETL development and database optimisation.
  • Strong understanding of data modelling, governance and regulatory compliance.
  • Experience working in complex organisational environments.
  • Strong analytical skills with the ability to translate business requirements into technical solutions.
  • This is an excellent opportunity to play a key role in shaping enterprise data strategy within a forward-thinking organisation.

Apply now to be part of an exciting digital transformation journey.

Due to the volume of applications received for positions, it will not be possible to respond to all applications and only applicants who are considered suitable for interview will be contacted. 

Proactive Appointments Limited operates as an employment agency and employment business and is an equal opportunities organisation

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