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Financial Data Analyst

FiberNet
Hounslow
4 days ago
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Financial Data Analyst

FiberNet, Hounslow, England, United Kingdom


Job Details

  • Job Title: Finance Data Analyst
  • Department: Business Performance / Finance
  • Reports To: Business Performance Manager
  • Location: Heathrow Airport
  • Employment type: Contract
  • Seniority level: Mid-Senior level
  • Job function: Information Technology
  • Industries: Security Guards and Patrol Services

Purpose of the Role

As the Data Analyst, you will serve as the guardian of rental revenue and contract-related data. You will drive operational performance through data insight, process optimisation, and the development of meaningful KPIs. Your role involves working cross-functionally to support decision-making, promote data-driven culture, and enhance commercial processes across the business.


What’s on Offer?

  • 18‑month Fixed Term Contract (FTC) to cover Mat
  • Salaries: £42,200 - £47,475 p/a
  • Work schedule: 3 days from the office, 2 days at home; Monday to Friday, 9am to 5:30pm

Key Responsibilities

  • Oversee rental revenue activities, including invoicing, rental movements, contract updates, and meter readings.
  • Serve as a process expert for commercial operations, particularly service order and rental flows.
  • Conduct in‑depth business analyses (profitability, reliability, etc.), identifying key insights, risks, and opportunities.
  • Design and maintain weekly/monthly KPI dashboards and dynamic Power BI reports to support daily operations.
  • Develop dashboards to track non‑rental costs such as transportation, preparation, and asset scrapping.
  • Support the creation and delivery of customer performance reports.
  • Collaborate with stakeholders to define and communicate business requirements.
  • Influence change by building strong cross‑functional relationships.
  • Contribute to special projects such as cost‑saving initiatives and fleet planning.

Compliance & Safety

  • Follow all safety policies and procedures, including ISO 9001, ISO 14001, and ISO 45001 standards.
  • Report hazards, unsafe conditions, and incidents in a timely manner.
  • Use all PPE and safety equipment correctly.
  • Support company initiatives to improve workplace safety and environmental practices.

Required Skills & Experience

  • Minimum 3 years experience in an analytical/data‑focused role.
  • Proficient in Excel, Power BI, PowerPoint, and other Microsoft Office tools.
  • Strong ability to analyse, model, and interpret data.
  • Visual storytelling skills: able to translate data into clear, impactful visuals.
  • Understanding of systems, data flow, and operational implications.
  • Experience building business cases and developing initiatives.
  • Comfortable working in a fast‑paced, operations‑driven environment.
  • Desirable: Degree in Business Analysis, Engineering, or Business Administration.
  • Desirable: SAP and EIS 3.0 knowledge.

Behavioural Competencies

  • Proactive and positive with a continuous improvement mindset.
  • Analytical, detail‑oriented, and results‑driven.
  • Adaptable and resilient in a dynamic environment.
  • Strong communication and interpersonal skills.
  • Ability to manage time effectively and work independently or collaboratively.
  • Comfortable managing multiple priorities and deadlines.


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