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Audit Data Analytics Manager - AI and Automation

RSM UK
Reading
2 weeks ago
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Overview

Audit Data Analytics Manager - AI and Automation at RSM UK. This role leads the practical implementation of AI and intelligent automation across the audit practice, working with the AI Lab, Gen AI Champion, and technical teams to turn innovation into real-world audit solutions that improve efficiency, quality, and client experience.

Responsibilities
  • AI Implementation: Lead the development and deployment of AI and automation tools across audit engagements
  • Generative AI: Support adoption of Gen AI tools, ensuring quality and compliance
  • Automation Leadership: Drive RPA and machine learning initiatives to streamline processes
  • Team Management: Coach ADA team members in AI techniques and build audit-tech capabilities
  • Collaboration: Work with technical teams to integrate AI into audit workflows
  • Client Engagement: Act as the AI contact for clients, showcasing practical benefits
  • Global Network: Share solutions across RSM’s international AI and automation teams
  • Quality Assurance: Ensure regulatory compliance and audit quality in AI implementations
  • Training & Adoption: Develop training and support firm-wide adoption of AI tools
  • Innovation Bridge: Translate AI Lab innovations into business value
What we are looking for / Qualifications
  • ACA, ACCA, CIMA or equivalent, with audit experience
  • Experience implementing AI, automation, or RPA in professional services
  • Familiarity with AI platforms and data tools
  • Strong team management and cross-functional collaboration skills
  • Ability to translate tech into business applications
  • Skilled at explaining AI benefits to clients and teams
  • Passion for emerging technologies and practical implementation
  • Experience driving digital transformation
What we can offer
  • Opportunity to be at the forefront of AI and automation implementation within one of the world\'s largest professional services networks
  • Hybrid working and flexible benefits including 27 days holiday and wellbeing support
  • Access to AI Lab, Gen AI Champion, AI Solutions Architect, and cutting-edge technologies
  • Collaboration with international AI and automation teams and global initiatives
  • Training and certifications with support for continuous learning
  • Clear progression pathways within a growing digital organisation, with potential international assignments
Diversity and Inclusion

RSM is committed to creating a sense of belonging for people of all identities, backgrounds, and cultures. Diverse teams bring a broader range of ideas and insights to work, helping us understand client needs and strengthen inclusion.

Location and type
  • Location: Slough, Reading, Uxbridge, and other UK locations
  • Employment type: Full-time
  • Seniority level: Mid-Senior level

We are an equal opportunity employer. Referrals increase your chances of interviewing at RSM UK.


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