Tableau Developer / Data Engineer

Sanderson
London
3 months ago
Applications closed

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Tableau Developer/Engineer

£500/day Outside IR-35

Contract until the end of the financial year (March 26)

Start ASAP

Active SC required

Key Responsibilities

  • Dashboard Development: Design and build interactive Tableau dashboards and reports to provide actionable insights for stakeholders.
  • Data Engineering: Develop and maintain robust data pipelines, ensuring data integrity, scalability, and performance across multiple sources.
  • Data Integration: Work with structured and unstructured data from various internal and external systems, applying ETL best practices.
  • Collaboration: Partner with analysts, data scientists, and business teams to understand requirements and deliver high-quality solutions.
  • Performance Optimisation: Monitor and tune Tableau Server performance, ensuring efficient query execution and user experience.
  • Governance & Security: Implement data governance standards and ensure compliance with Home Office security protocols.

Essential Skills & Experience

  • Proven experience in Tableau development (Desktop and Server) with strong visualisation and storytelling skills.
  • Solid background in data engineering, including ETL processes and data pipeline development.
  • Proficiency in SQL and experience with relational databases (e.g....

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