Data Engineer

Zazu-Digital
London
1 week ago
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Data Engineer


Are you ready to make an impact in one of the UK's most dynamic and transformative public sector organisations? We are recruiting for the role ofData Engineerwithin the in-house digital product and services department of a groundbreaking public sector entity that is redefining the way data is leveraged to drive decision-making and innovation.


The Role: Data Engineer


TheData Engineerwill be responsible for designing, building, and maintaining the organisation’s data infrastructure. This role will focus on developing and optimising data pipelines, virtualised environments, and business intelligence solutions.The successful candidate will have expertise in Denodo, SQL, Qlik, Power BI, and Master Data Management (MDM), ensuring high-quality data is available to support strategic decision-making.



Responsibilities

Strategic:

  • Lead the development of a modern data infrastructure, ensuring scalability, reliability, and security.
  • Define and implement best practices for data integration and virtualisation using Denodo.
  • Drive data governance and Master Data Management (MDM) strategies, ensuring data consistency across systems.

Operational:

  • Develop and maintain data pipelines, ensuring efficient data processing and integration.
  • Build and support BI and reporting solutions using Qlik and Power BI.
  • Implement ETL/ELT processes, optimising data ingestion and transformation.
  • Work with Azure cloud technologies to enhance data infrastructure.
  • Monitor and resolve data integrity, security, and performance issues.

Leadership:

  • Mentor and support junior data engineers, fostering best practices.
  • Collaborate with cross-functional teams, including architects, analysts, and business stakeholders.
  • Promote a data-driven culture, supporting the organisation’s digital transformation.



About You

To be successful in this role, you should have:

  • Expertise in Denodo and data virtualisation, enabling real-time data integration.
  • Strong SQL skills, with experience in complex database management.
  • Proficiency in Qlik and Power BI, developing dashboards and reports.
  • Knowledge of Master Data Management (MDM) principles.
  • Experience working in an Agile environment, collaborating with technical and business teams.
  • Strong analytical and problem-solving skills, capable of working with large datasets.

Desirable Skills:

  • Familiarity with cloud platforms such as Azure, AWS, or GCP.
  • Experience with additional data integration and transformation tools.



What’s on Offer

  • Competitive salary
  • One of the best pension schemes available
  • Highly flexible working model, including hybrid working (minimum one day in the office per week)
  • Opportunities for professional development and career progression
  • A collaborative and innovative working environment



Apply nowto be part of a pioneering team that is shaping the future of data-driven decision-making.

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