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Audit Data Analytics Manager

Vitality Corporate Services
London
1 week ago
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About The Role
Team Group Internal Audit
Working Pattern - Hybrid 2days per week in either the Vitality London or Bournemouth offices.Full time hours.
We are happy to discuss flexible working!
Top 3 skills needed for this role:

  • Expertise in delivering data analytics solutions to support audit objectives within a dynamic environment to agreed timescales.
  • Proficiency in scripting, data interrogation and visualisation tools and techniques (e.g. Python, PowerBI, and AI enabled tools).
  • Ability to communicate complex technical concepts to both technical and non-technical stakeholders.

What this role is all about:
We're looking for a talented and experienced Audit Data Analytics Manager who thrives in a dynamic atmosphere and wants to make a real difference to help shape the deliverables of the Internal Audit team.
Your data analytics and audit expertise will be used to develop solutions to enable more effective and efficient audits, embed data analytics skills and techniques across the Internal Audit team; and identify emerging technologies and approaches to transform the audit services, while ensuring the processes and controls meet professional and regulatory standards.
Key Actions

  • Deliver the GIA strategic objectives specifically on the use of data analytics, continuous ...

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