Data Analyst

Fareham
10 months ago
Applications closed

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Data Analyst - Up to £45k - Fareham area

We're looking for a Data Analyst to take ownership of reporting and insights, helping our business make smarter, data-driven decisions.

If you're confident with AWS QuickSight (or other BI Tools), love working with stakeholders, and enjoy turning data into compelling stories, this role is for you.

What You'll Do:

Own AWS QuickSight reporting - develop reports, datasets, and dashboards.
Deliver data-driven insights to guide business decisions, answering key questions like:
Should we offer this new product?
Why are customers cancelling their orders?
What's the potential for our new initiative?
Collaborate with engineers to ensure data is available and features are measurable.
Bridge the gap between data teams and stakeholders, translating insights into clear recommendations.
What You Need:

Experience of a BI tool, ideally AWS QuickSight
Great communication and presentation skills
Nice-to-Have (but not essential):

Basic Python for data manipulation.
Familiarity with machine learning in QuickSight.
What's in It for You?

£40,000 - £45,000, 25 days holiday
The opportunity to shape data-driven strategy in an exciting, growing business
Interested? Contact or call (phone number removed) to learn more.

Spectrum IT Recruitment (South) Limited is acting as an Employment Agency in relation to this vacancy

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