Data Analyst

CRA GROUP RECRUITMENT AND PAYROLL LTD
Bromley
1 week ago
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Job Description

6 months contract with a Local Authority


Job Summary

  • The Public Protection Division at Bromley Council is seeking a skilled Data Analyst (BR10) on a temporary 26-week contract to support the transformation of the division’s data reporting capabilities.
  • The successful candidate will design and deliver reports and interactive dashboards in Power BI, extract and analyse data, and provide actionable insights to improve service delivery and operational efficiency.

Key Duties / Accountabilities (Sample)

  • Design and deliver custom reports and interactive dashboards in Power BI, including KPI reporting.
  • Extract, clean, and analyse datasets to uncover trends, patterns, and actionable insights.
  • Collaborate with service managers and partners (e.g., police, internal council teams) to produce Crime Needs Assessment Reports and Trend / Hotspot Analysis.
  • Advise on system configuration improvements, particularly code lists.
  • Recommend and implement enhancements to data collection processes.
  • Train internal staff on dashboard usage and interpretation.
  • Support data governance compliance, ensuring GDPR and local authority data-sharing protocols are met.
  • Champion a data-driven culture across the division.

Skills / Experience

  • Proven experience in data analysis, reporting, and visualisation.
  • Strong proficiency in Power BI (essential).
  • Knowledge of SQL and data manipulation techniques.
  • Ability to translate complex data into clear, practical insights.
  • Excellent communication and problem-solving skills.
  • Proactive and collaborative approach to working with multiple stakeholders.

Additional Information

  • The closing date : 16 / 01 / 2025.
  • Employment type : Temporary, 26 weeks.
  • Hours per week : 36 (2 days remote, 3 days in-office).
  • Location : Churchill Court, 2 Westmoreland Road, Bromley, Kent, BR1 1AS.

Requirements

  • Proven experience in data analysis, reporting, and visualisation.
  • Strong proficiency in Power BI (essential).
  • Knowledge of SQL and data manipulation techniques.
  • Ability to translate complex data into clear, practical insights.
  • Excellent communication and problem-solving skills.
  • Proactive and collaborative approach to working with multiple stakeholders.


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