Data Analyst

Service Box
Hove
1 day ago
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Location: Hove – Service-Box


Service-Box is growing and we’re looking for a Data Analyst to help us turn our data into clear, actionable insight for the business. You’ll work closely with our Chief Data Officer and external data consultants, building dashboards and reports that support commercial and operational decision-making.


Responsibilities

  • Build and maintain Tableau dashboards and reports for stakeholders across the business
  • Work with Salesforce and other data sources to create reliable, well-structured datasets
  • Perform data analysis to answer business questions and support decision-making
  • Help define and document data definitions, metrics, and reporting standards
  • Support ongoing improvement of our reporting stack (Tableau, Salesforce, SQL-based sources)
  • Collaborate with senior stakeholders to understand requirements and translate them into reporting solutions

Qualifications

  • 1–3 years’ experience in a data/analytics role (or strong placement/graduate experience with a portfolio)
  • Hands-on experience building dashboards in Tableau (essential)
  • Exposure to Salesforce data (e.g. reports, objects, fields) or similar CRM
  • Basic SQL skills – able to write simple queries and work with relational data
  • Strong Excel/Google Sheets skills
  • Good understanding of data quality, validation, and basic data modelling concepts
  • Clear communicator – able to explain insights to non-technical stakeholders

Nice to Have

  • Experience working with sales, operations, or SaaS/tech business data
  • Experience working with APIs or ETL tools to move and transform data
  • Experience in other BI tools (e.g. Power BI, Looker)

Personal Attributes

  • Curious, analytical mindset with strong attention to detail
  • Comfortable working in a fast-moving, growing business
  • Proactive, willing to learn and take ownership of problems
  • Able to work independently but also collaborate effectively with a remote/part-time data lead

What You’ll Get

  • £35k–£45k salary, commensurate with experience
  • Unlimited free classes at Rox Life & Reformer Pilates, right downstairs
  • Flexible working hours within an office-first culture
  • A supportive team that values initiative and rapid execution
  • The chance to make a visible impact in a high-growth, agile company

If you’re keen to roll up your sleeves and bring marketing campaigns to life, we’d love to hear from you.


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