MI/Data Analyst

McCabe & Barton
London
1 week ago
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Job Description

MI/Data Analyst

London-based (3 days on-site) | Salary: £60-70k + excellent benefits package


About the Role

A leading financial services client in London is seeking a talented MI/Data Analyst to join their Information Security team. In this strategic position, you'll drive technology compliance initiatives by producing insightful management information through sophisticated dashboards and reporting. Collaborating with senior stakeholders, you'll help shape and inform critical decision-making for executive leadership.


Key Responsibilities

  • Design and maintain advanced data visualization dashboards using PowerBI
  • Analyze complex datasets to identify trends, compliance gaps, and actionable insights
  • Spearhead automation initiatives to enhance reporting efficiency
  • Present compelling data narratives to diverse stakeholder groups
  • Mentor junior team members and contribute to best practices


Requirements

  • 2-4 years' proven experience in Finance/Technology environments
  • Demonstrated experience analyzing and reporting on IT function data
  • Advanced PowerBI expertise with portfolio of successful implementations
  • Practical knowledge of IT metrics and DevSecOps frameworks
  • Strong analytical mi...

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