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Audit Data Analytics Manager - AI and Automation

RSM UK
Glasgow
2 weeks ago
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Audit Data Analytics Manager - AI and Automation

Join RSM UK as an Audit Data Analytics Manager - AI and Automation.

About RSM UK

RSM is one of the world's largest networks of audit, tax and consulting firms, delivering big ideas and premium service to help middle-market businesses thrive.

We are a fast-growing firm with big ambitions -- we have a clear goal to become the premium adviser to the middle market, globally. This vision touches everything we do, motivating and inspiring us to become better every day.

Job Description

We are looking for a Manager with a focus on AI and Automation to lead the practical implementation of AI and intelligent automation across our audit practice. You’ll work with our AI Lab, Gen AI Champion, and technical teams to turn innovation into real-world audit solutions, enhancing efficiency, quality, and client experience.

You’ll make an impact by:

  • Leading the development and deployment of AI and automation tools across audit engagements
  • Supporting adoption of Gen AI tools, ensuring quality and compliance
  • Driving RPA and machine learning initiatives to streamline processes
  • Coaching ADA team members in AI techniques and building audit-tech capabilities
  • Collaborating with technical teams to integrate AI into audit workflows
  • Acting as the AI contact for clients, showcasing practical benefits
  • Sharing solutions across RSM’s international AI and automation teams
  • Ensuring regulatory compliance and audit quality in AI implementations
  • Developing training and supporting firm-wide adoption of AI tools
  • Translating AI Lab innovations into business value
Requirements

We are looking for someone with:

  • 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 Offer

This role offers a unique opportunity to be at the forefront of AI and automation implementation within one of the world's largest professional services networks, working with cutting-edge technology whilst maintaining a practical focus on delivering business value.

We offer a flexible reward and benefits package that will help you have a fulfilling experience, both in and out of work, including:

  • Opportunities to work with RSM's dedicated AI Lab and access cutting-edge AI and automation technologies
  • Collaboration with international RSM AI and automation teams
  • Access to AI and automation training and support for relevant certifications and continuous learning
  • Clear progression pathways within RSM's expanding digital organisation
  • Hybrid working and flexible benefits
Diversity and Inclusion

We are an equal opportunities employer and welcome applications from all qualified candidates.


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