Finance Data Analyst - Contract

Bodhi
Chertsey
1 week ago
Create job alert
Finance Data Analyst - Day Rate Contract Inside IR35

3 days per week in the office, Chertsey Surrey


Key Skill - Advanced Excel - Pivot Tables, Vlookups, Formula etc


Profit and Loss



  • Customer segmentation Analysis. Understand the brief, report framework and metrics. Update the report, gather insights and issue within the agreed SLA’s.
  • Support Innovation Business Cases. Understand the brief, report framework and metrics. Update report, gather insights and issue within the agreed SLA’s
  • Production of Level Up Deep Dive Analysis: Understand the brief and reporting framework. Run the analysis and gather insights for Channel PIC’s line with agreed SLA’s
  • Always on Proposition: Understand brief and proposed report framework, deliver and maintain report in line with current business requirements and ensure delivery in line with SLA
  • Delivery and Service Proposition. Working with PIC, understand brief, identify data, agreed metrics, KPI’s and frequency and report framework. Ensure delivery in line with agreed SLA’s.
  • SKU Rationalisation and Range Management. Ensure the delivery of the reports in line with the agreed SLA. Monitor / review report framework and data to ensure fit for purpose. Gather insight for weekly / monthly reporting
  • Support multiple channels, D2C, EPP, SMB, Shop APP and ePromoter with reporting requirements.
  • Recommend ways to optimise report production to speed up production and efficiency
  • Provide training and guidance to help team engage with reports effectively

What we need for this role

  • Experience within e-commerce
  • Accounting based financial modelling / scenario modelling (must have)
  • Accountant / analytics / numbers background
  • Experience in working with digital data such as traffic, conversion, bounce rates etc…
  • Evidence of using digital tools to analyse data
  • Passion for metrics, strong analytical skills and the ability to get into the details, whilst also seeing and understanding the big picture
  • Technical Skills with analytical tools:
  • SQL
  • Looker
  • Advanced Excel (Power Pivot, formulae and Pivot Tables)
  • QLIK or similar tool, ability to create new reports within the tool
  • PowerPoint
  • Able to prioritise, deliverables and partners
  • Ability to problem solve and take ownership of a project
  • Good presentation skills and both verbal / written communication
  • High attention to detail
  • Able to work with accuracy in a fast pace and dynamic environment


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