Credit Controller

Nursling
1 month ago
Applications closed

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Due to ambitious growth and expansion, an exciting opportunity has become available for a Credit Controller to join a well-established and dynamic business based in Nursling.

As a Credit Controller, you will deliver high standards in the financial administration of the business whilst ensuring the smooth and effective maintenance of the client ledger. The role will primarily involve managing the company's credit control activities and ensuring timely collection of outstanding payments and debts.

Package & Benefits of Credit Controller

  • Salary up to £28K per annum dependant on experience

  • Staff discounts and bonus scheme

  • 30 days annual leave including bank holidays

  • Pension scheme

  • Cycle to work scheme

  • Team building events

  • Free parking

  • Ongoing training/development

    Main duties of the Credit Controller

  • Provide high-quality customer service via phone and email, ensuring prompt and thorough responses to inquiries.

  • Monitor customer balances, release orders, and regularly assess credit limits using a global business intelligence provider.

  • Prepare and provide ad hoc reports as requested, and compile information for debt collection agencies.

  • Review and improve procedures and systems, and cover other accounting functions as needed.

  • Perform additional tasks as delegated by the Finance Team Manager or other designated personnel.

    Key competencies of the Credit Controller

  • Previous finance or accounts experience or relevant qualification

  • Keen interest in Credit Control and ability to build strong relationships with clients

  • IT literate with sound knowledge of Microsoft Office suite, including proficient use of Excel

  • Highly numerate with excellent attention to detail, accuracy, and a methodical approach

  • Excellent communication skills and ability to confidently communicate at all levels

  • Approachable, committed, flexible and adaptable individual with a positive attitude

  • Enthusiastic and professional approach, able to work on own initiative and as part of a team

    This role would suit candidates with a Finance Assistant or Accounts Assistant background.

    If you are a finance professional looking to work in an enjoyable and authentic business environment, please APPLY NOW

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