Finance Business Partner

Stratford-upon-Avon
8 months ago
Applications closed

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Finance Business Partner
Stratford-upon-Avon
SF Recruitment are delighted to be partnering with a large organisation in the recruitment of a Finance Business Partner to join the FP&A Team.

Hybrid working - 1-2 days in the office.
Generous annual bonus and pension scheme
Extensive and full benefits package.

We are seeking a Part qualified or Qualified ACCA/ACA/CIMA Accountant with a track record in financial analysis/finance business partnering/FP&A and MI analysis.
This is a niche and very exciting opportunity.

You will be analysing complex data and working with internal stakeholders to build relationships, challenge assumptions and understand profitability performance.
This role is a unique opportunity to understand core performance metrics and facilitate key commercial decision making.

The successful candidates:

You will have commercial and business partnering experience, be able to influence and engage with stakeholders. You will also enjoy networking and have the confidence to challenge and ask questions to understand the story of the meaning behind the numbers.
You will also need to have technical knowledge and strong excel skills.
Experience using SQL or similar modelling tool highly desirable.

Duties will include

Supporting financial business planning by adapting models and processes to support business change
Providing accurate management information and data analysis to support business performance, budget planning and decision making
Support business areas with reforecasting to ensure robust financial plans are delivered and monitored.
Assist in the implementation of operational modelling tolls, analysis and reporting mechanisms,
Drive continuous improvement in FP&A

Interviews commencing mid-June - for more information, please apply today.

If this role is of interest, please apply today

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