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Financial Analyst ( Hybrid )

VANRATH
Downpatrick
11 months ago
Applications closed

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FINANCIAL ANALYST - UK EMPLOYER OF THE YEAR Our client is rapidly growing with turnover increasing from £50m to £200m in the last 6 years so it is an exciting time to join this hugely successful, fast paced team. The Financial Analyst will provide the commercial team with weekly and monthly commercial reporting and robust analysis of business opportunities to enable the Commercial team to create revenue growth and margin enhancements in order to meet business targets. What's in it for you? Great salary Bonus Hybrid working - 3&2 Flexible hours ( core hours 10-4 ) - 37.5 hour week. 31 days holiday plus buy scheme Electric car scheme Free food products Excellent maternity leave Company events Company pension Cycle to work scheme Free parking Gym membership On-site parking Private medical insurance Referral programme Sick pay Wellness programme About You Part-Qualified accountant (or qualified by experience) with at least 2 years relevant experience working in a similar role. Strong financial modelling skills including use of pivot tables and manipulation of data. Structured and organised. Experience in providing commercial analysis and business evaluation opportunities. Confident to progress within a fast paced environment Information: For further information on this vacancy, or other Senior Accountancy opportunities in Northern Ireland, please contact ADRIAN HARRISON in strictest confidence. Skills: commercial accountant commercial finance analyst data analyst part qualified financial modelling Benefits: Work From Home

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