Data Analyst

Brighton
1 week ago
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We are looking for an experienced Data Analyst to join a fantastic business in a newly created role focused on analysing data and insights and relaying data effectively to multiple stakeholders in a clear and concise manner while making actionable recommendations for improvements.
The business is well established, very stable and has a reputation for staff retention, excellent workplace culture and offers a host of great benefits tailored to show how much they value their employees.
The Data Analyst will work to analyse various data using CRM Platforms and data visualisation tools.
As a Data Analyst you will:

  • Lead reporting, insights and analytics, working closely with the Data & Compliance team and a variety of stakeholders
  • Produce data visualisations
  • Monitor patterns and trends, reporting on data metrics
  • Develop data sources as required
    Skills & experience required:
  • CRM platform experience such as MS D365, Sales Hub or similar is essential
  • Proficient with data visualisation tools like Power BI, Looker, Tableau etc
  • Excellent all round communication skills, able to present complex data to a variety of audiences
  • A team player who is happy to work as part of small team to achieve necessary objectives
    Salary, hours and company benefits:
  • Up to £50,000
  • 34.5 hours a week, Monday to Thursday 9am to 5pm and 9am to 4.30pm on Fridays
  • Hybrid working (min. 2 days a week in the office)
  • Membership access to discounts for well known brands and discounted gym membership
  • Life Assurance
  • Contributory Pension Scheme
  • Cycle to work scheme
  • 24 days annual leave plus bank holidays
  • Interest free season ticket loans
  • Regular lunch get-togethers and company socials
  • Many more benefits teamed with an exceptional culture and team environment
    Wild Recruitment Ltd T/A First Recruitment Services is acting as an employment agency in relation to this vacancy

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