Interim Financial Accountant / Controller

Warrington
1 month ago
Applications closed

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Interim Financial Accountant / Controller
Circa £500/day (Outside IR35)
6-Month Contract | Warrington | Predominantly Site-Based

I am seeking a seasoned Interim Financial Accountant who can operate comfortably at Controller level, bringing clarity, rigour, and hands-on expertise to a challenging environment.

The Role:
You will join a business undertaking significant transformation, requiring rigour in terms of financial process, reporting and data integrity.
Your remit will be to get under the bonnet - untangling the numbers, building out structure, and delivering clarity. This is a project-led role, requiring someone who thrives on sorting out the mess and building solid foundations.

Key Responsibilities:

  • Lead on robust balance sheet reconciliations and financial controls.
  • Investigate and resolve issues across AP/AR, ensuring accuracy and alignment.
  • Bring rigour to requisition and accrual processes, including historic accruals.
  • Rebuild confidence in basic double-entry bookkeeping and general ledger integrity.
  • Work closely with the business to implement improved financial processes and reporting standards.

    What We're Looking For:
  • A qualified accountant (ACA, CIMA, ACCA).
  • A career interim with a strong track record in hands-on financial accounting.
  • Demonstrable experience of working in challenged finance environments.
  • A detail-oriented problem-solver who can work autonomously and proactively.
  • Someone comfortable being on-site, engaging with teams and processes directly.

    GRG Executive Search is committed to encouraging and celebrating applicants from different backgrounds, whatever their gender, ethnicity, race, religion, education, socioeconomic background, disability or sexual orientation to promote diversity and inclusion in the workplace.

    We receive a significant number of applications to our adverts. Whilst we always endeavour to respond to each application, this is not always possible. If you have not received a response from us within 10 working days, please consider your application unsuccessful on this occasion.

    By applying you will be registered as a candidate with Gleeson Recruitment Limited. Our

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