Data Analyst

Aspire Jobs
Poole
2 weeks ago
Applications closed

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Data Analyst

Data Analyst

Data Analyst

Data Analyst

Data Analyst

Data Analyst

Location: Poole

Salary: to £50k DOE + annual discretionary bonus c 10% of annual salary

Hours: 8.30am-5pm Mon-Fri Office based

Benefits:25 days hols + Christmas shutdown, parking permit, onsite gym with exercise classes weekly. Modern open plan offices. New benefits package in 2026, regular socials, charity days, large staff room

Aspire Jobs are working exclusively with our client who have been established for over 40 years and who have a impressive growth plan for the next 3-5 years.

Now looking for an experienced, highly analytical and detail focused Data Analyst to help them work out what the data is currently doing for the business and helping set up and analyse new processes to make that more accessible.

The successful Data Analyst will

  • Be a real team player
  • Have excellent communication and presentation skills, with the ability to convey complex data insights to non-technical audiences.
  • Have proven experience in a Data Analyst or similar analytical role
  • Know how to design and put together a database and databases generally. This will include lots of reporting
  • Have experience of working out what the data is currently doing for the business and how to make it better
  • Strong analytical and problem-solving abilities with a keen attention to detail.
  • Have experience of d...

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