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Data Analyst

KLEEMANN UK
Ashford
1 week ago
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As part of our drive toward data‑driven operational excellence, we are excited to invite applications for a Data Analyst role based in Ashford. Join a global leader in the lift and elevator industry and help transform our systems and analytics functions. 📊🚀


Scope of the Role

As the Data Analyst within the KLEEMANN UK Group, you will support the Finance Division and broader business teams by managing data systems, analysing complex data sets, and delivering actionable insights through Power BI dashboards and analytical reports. This position is crucial in optimising reporting systems, enhancing data accuracy, and supporting strategic decision‑making across the business.


Key Responsibilities
Financial & Operational Business Reporting

  • Assist the Finance team in developing financial models for budgeting, forecasting, and ad hoc strategic planning.
  • Support the improvement of financial and operational reports across both local operations and the wider Group.

Data Systems Management

  • Maintain, support, and assist in the training and upgrade of financial systems/software in coordination with the Finance team.
  • Collaborate with internal stakeholders and external vendors during system upgrades and troubleshooting.
  • Analyse datasets to verify data integrity and validate internal control systems established by the Financial Controller.

Business Analytics

  • Collect and analyse complex business data to monitor performance and identify key business drivers.
  • Serve as a Superuser in the integration and visualisation of Power BI dashboards using data from multiple internal and external systems.
  • Recommend system enhancements and process improvements through written reports and business cases.
  • Assist in documenting and implementing improved workflow processes to drive productivity and efficiency.

Basic Qualifications

  • Bachelor’s degree in a relevant field (e.g., Data Analytics, Finance, IT, Business Systems).
  • Minimum 5–7 years of experience in a data analysis or business intelligence role.
  • Advanced proficiency in Power BI and Power Apps.
  • Hands‑on experience with ERP systems such as Sage, Infor, or Microsoft Dynamics.
  • Strong analytical and problem‑solving skills with attention to detail.
  • Ability to communicate complex technical information clearly to non‑technical stakeholders.

What We Offer

  • Continuous Systematic Training: We invest in your professional growth through ongoing training and development programs.
  • Group Life Insurance: We care about your well‑being and provide comprehensive insurance coverage.

KLEEMANN UK Group is an Equal Opportunities Employer. We are committed to fostering a diverse and inclusive workplace where every individual’s contribution is valued and respected. If you require any reasonable adjustments during the recruitment process, please let us know.


If you’re passionate about data, systems optimisation, and turning insights into impact, we’d love to hear from you. Apply today and become part of our global success story.


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