Finance Data Analyst

Cooper Parry Finance Recruitment
Blairgowrie
4 days ago
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Cooper Parry are delighted to be recruiting on an exclusive basis on behalf of our established client; a fast-scaling, forward-thinking organisation for a Finance Data Analyst to join their team on a permanent basis. This job offers a salary of £40,000 - £50,000 depending on experience and also offers bonus, competitive pension and hybrid working (minimum 2 days a week in the office based near Coupar Angus). 


The Opportunity


Working within the finance collections team, you will actively support the business by providing an effective and professional knowledge covering large complex data set reporting and analysis, management reporting and creation of dashboards.

Your responsibilities will include:


  • Monitoring the debt recovery process, analysing trends & reporting back to management
  • Prepare reports and dashboards that provide insights into debt trends and performance metrics
  • Maintain and update process flows and process documentation
  • Identify trends, patterns, and anomalies within the financial data to provide actionable insights
  • Produce and maintain regular reports to inform both financial and non-financial decision-making
  • Assist in the continuous improvement of finance data processes, identifying inefficiencies and recommending solutions
  • Be involved in automation of repetitive manual tasks to improve efficiency & reduce errors
  • Take ownership of controls & checks in place already to ensure daily tasks are completed
  • Work cross-functionally to respond to data-related queries, providing support and training where necessary


The Candidate


You will ideally be educated to Degree level within a relevant subject (Finance, Maths, Statistics, Data Science etc). You will have previous experience working within a data environment. You will possess advanced Excel skills and ideally have experience with Dashboards / Power BI. You will be highly numerate with strong analytical skills. You will be able to work in a fast paced environment accurately and be confident in looking for errors within data. You will have strong communication skills and enjoy problem solving, investigation and analysis who can work on your own initiative. 


Benefits and conditions 


  • Salary of £40,000 - £50,000 depending on experience
  • Annual bonus up to 10%
  • Hybrid working (a minimum of 2 days a week in the office)
  • Competitive pension
  • Career progression for the right individual


Next steps?


If you consider yourself to be a commercially minded Finance Data Analyst, this could be a great role for you! Apply with your full CV to the position asap!  

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