Data Architect

CRA GROUP RECRUITMENT AND PAYROLL LTD
Essex
2 months ago
Applications closed

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Summary

  • The Data Analyst on a 3-month contract with a local authority will play a crucial role in analysing and synthesising data from various internal and external sources. This position supports service improvement strategy development policy formulation and service design. The role requires effective communication with stakeholders ensuring data governance compliance managing data quality and presenting actionable insights through compelling visualisations.

Responsibilities

  • Apply basic techniques to analyse data from multiple sources and synthesise findings.
  • Support service improvement and strategic initiatives through data-driven insights.
  • Collaborate with data professionals and domain experts to ensure robust analysis.
  • Present findings in a clear and actionable manner for technical and non-technical audiences.
  • Communicate effectively with stakeholders across all levels.
  • Build strong relationships and host discussions to define needs generate insights and promote data culture.
  • Advocate for the data team and manage differing perspectives constructively.

Requirements

  • Proven experience in data analysis data modelling and visualisation.
  • Familiarity with data governance frameworks and privacy legislation.
  • Hands‑on experience with tools such as SQL Python R Tableau Qlik and GIS software.
  • Strong stakeholder engagement and communication skills.

Essential Qualifications Required

  • Bachelors degree in Data Science Statistics Computer Science Mathematics or a related field.
  • Advanced degree or professional certifications (e.g. in data analytics data governance) preferred.

Additional Information

  • Working hours : 37 hours per week
  • Location : Civic Offices New Road Grays Essex RM176SL United Kingdom
  • The role is outside IR35

The role closes on 05th December 2025 apply ASAP.


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