Audit Data Analytics Senior Manager...

Michael Page Finance
Cardiff
3 days ago
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Job Description

The Audit Data Analytics Senior Manager role in Cardiff is an excellent opportunity to lead and enhance data-driven auditing processes for a Top-20 accountancy firm. This position requires expertise in accounting and finance, with a focus on leveraging data analytics to deliver effective solutions.

Client Details

The company is a well-established organisation within the UK accountancy market, known for its robust accounting and finance practices. As a medium-sized firm, it prides itself on maintaining a strong presence in the national market & abroad, offering innovative solutions to its clients.

Description

  • Oversee the integration of data analytics into audit processes to improve efficiency and accuracy.
  • Lead and manage a team of professionals in delivering high-quality audit services.
  • Identify opportunities to enhance client services through advanced data analysis techniques.
  • Develop and implement strategies for data-driven decision-making in accounting and finance.
  • Ensure compliance with professional standards and regulatory requirements.
  • Collaborate with internal and external stakeholders to deliver tailored solutions.
  • Provide training and mentoring to team members to build analytics capabilities.
  • Prepare and present insightful reports to clients and senior management.

    Profile

    A successful Audit Data Analytics Senior Manager should have:

  • Expert knowledge of Power BI or similar data visualisation tools.
  • A strong background in accounting and finance, particularly in audit and data analytics.
  • Proficiency in data analysis tools and software relevant to the professional services industry.
  • Proficiency in low-code development platforms.
  • A proven ability to lead teams and manage multiple projects effectively.
  • Excellent problem-solving skills and attention to detail.
  • A professional qualification in accounting or a related field.
  • Strong communication skills for client and stakeholder engagement.

    Job Offer

  • Competitive salary ranging from £57,000 to £73,000 per annum.
  • Opportunity to work in a respected professional services firm in Cardiff.
  • Engaging and challenging projects in accounting and finance.
  • Potential for professional growth and career development.
  • Supportive and collaborative work environment.

    Join the team as an Audit Data Analytics Senior Manager and take the next step in your professional services career. Apply today to make a meaningful impact in Cardiff!

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