Financial Data Analyst

HAYS
Christchurch
1 month ago
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We need a Financial Data Analyst to lead the way and shape smarter processes.

Looking for a role where your technical skills make a real impact? My client is modernising its financial reporting across a diverse portfolio; from renewable energy to hospitality, and we need a Financial Data Analyst to lead the way and shape smarter processes.
Your new company 
This privately owned group has enjoyed a rich history, with significant growth and change in their recent history, now with over 40 legal entities across a variety of sectors including property, hospitality, agriculture and renewable energy. This is an excellent opportunity for a Financial Data Analyst to join the business, located in Christchurch, and contribute to the success and growth of this excellent business.  

Your new role You’ll play a key role in automating and improving financial and KPI reporting across the Group, freeing up time for the finance team to focus on analysis and strategy rather than manual data handling. 
Key responsibilities:

Automate and modernise reporting processes and lay the foundation for future innovation and scalability. Consolidate and validate data from multiple entities, strengthening confidence in financial outputs. Build scalable Excel, Power Query and Power Pivot reporting tools, which will give leadership clear insights across a complex, multi-entity environment. Support the property system upgrade and maintain data integrity Collaborate on budgeting, management reporting and process improvements


What you’ll need to succeedAdvanced Excel and Power BI skills (Power Query, Power Pivot, Power Automate)Experience with multi-entity financial data and accounting principlesWorkflow automation skills (Power Automate or similar)Attention to detail and data accuracyHands-on problem-solving approach
What you'll get in return

In return, you will be working in a lovely rural setting, with a good benefits package including:

  • 4 days in office, with the ability to work 1 day from home (Tues, Wed or Thurs)
  • 6% pension contribution
  • 22 days holiday + Christmas closedown + 8 bank holidays
  • Flexible start time from 8am-9am to suit
  • Employee assistance programme 
  • Ample free parking on site


What you need to do now
If you're interested in this role, click 'apply now' to forward an up-to-date copy of your CV, or call us now. If this job isn't quite right for you, but you are looking for a new position, please contact us for a confidential discussion about your career. #Emily Oakes # 4756962

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