Data Engineer

Michael Page Technology
London
2 weeks ago
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We are seeking a skilled Data Engineer to join a fast-paced analytics team within the technology industry. This temporary role, based in London, requires a strong technical background to support data processing and integration tasks.

Client Details

A global technology leader known for pioneering innovation across consumer electronics and digital solutions, this organisation is driven by a mission to create products and services that improve everyday life. It offers a forward-thinking, people-centred culture focused on excellence, creativity and continuous development

Description

  • Design and implement cloud-based data warehouse solutions that unify dispersed data sources while complying with rigorous security standards.
  • Align front-end interaction logs with underlying data models to enable precise monitoring and analysis of user behaviour.
  • Build and optimise resilient ETL/ELT pipelines to support smooth data ingestion, transformation, and storage processes.
  • Create and manage dynamic dashboards (e.g., Tableau, Power BI, Looker) that turn complex datasets into clear, actionable insights for stakeholders.
  • Collaborate with international data partners to strengthen data literacy and enhance data accessibility across regional teams.

Profile

  • At least five years of hands-on experien...

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