Financial Data analyst

Infopro Digital
Bristol
5 days ago
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Infopro Digital is a B2B group specialising in information and technology with a presence in 20 countries and 4000 employees.


Infopro Digital are recruiting a talented and motivated Data Analyst to join our Finance Team on a permanent basis.


Employed by Haynes Group Limited, part of Infopro Digital's Automotive (IPDA) division, this job is located in our office in Sparkford, Somerset. Following a brief training period, the role can be completed on a hybrid working basis. This is a permanent full‑time role.


Responsibilities

Reporting directly to the Group Finance Director, this newly created role will transform raw data into structured financial and operational data flows, produce standardised reporting and enable data-driven decision making across IPDA. The role focuses on data accuracy, visualization and trend analysis.



  • Collect, clean and analyse financial data from multiple sources
  • Develop dashboards and reports for management and operational teams
  • Identify trends, variances and opportunities for margin optimisation
  • Support financial, sales and cost controllers with ad‑hoc analysis
  • Ensure data integrity and maintain financial databases
  • Collaborate with IT and finance teams to improve data systems and automation

Requirements

  • Degree in Finance, Business Analytics or Information Systems
  • 3–6 years of experience in financial analysis, business intelligence or data analytics
  • Experience in a multi‑entity, international environment; exposure to B2B or subscription business models is an advantage
  • Strong command of Excel and Power BI (or similar BI tools)
  • Knowledge of SQL or data modelling principles
  • Familiarity with CRM systems (Salesforce) and billing tools (Frisbi, Zuora, etc.)
  • Understanding of finance processes: revenue recognition, consolidation and performance reporting
  • Analytical and problem‑solving mindset, detail‑oriented
  • Ability to translate data into actionable insights for business stakeholders
  • Team player with strong communication and collaboration skills
  • Proactive, autonomous and able to manage priorities effectively
  • Comfortable working in an international and cross‑functional environment

Location

Hybrid working – attend the head office in Sparkford, Somerset, 2 days per week (subject to business requirements).


Benefits

  • Generous base salary
  • Bonus structure based on performance
  • Hybrid working
  • 25 days annual holiday allowance (rising to 30 days based on length of service)
  • 2 volunteer days
  • Additional days leave for birthday
  • Life assurance (4× life assurance cover from day 1 of employment)
  • Group pension scheme
  • Employee Assistance Programme
  • Health cash plan
  • Cycle to Work, gym discounts and more

Our foundations and values

At Infopro Digital, we are driven by entrepreneurial spirit, constant customer focus, promoting diversity, striving for significant impact and a collaborative culture. By joining us, you become part of a dynamic community that embraces these values daily, shaping the future with passion and commitment.


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