Finance Data Analyst

Accountable Recruitment
Manchester
3 days ago
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Data Analyst

Altrincham | Hybrid

£50,000 - £60,000

This is not a 'sit quietly and build spreadsheets' kind of Data Analyst role.

You'll be joining a PE-backed business on a serious growth curve, working alongside an experienced, high-calibre leadership team who actually use data to make decisions. They're building fast, scaling smart, and want people who are hungry to grow with them.

As the Data Analyst, you'll sit right at the centre of the action - turning complex data into crystal-clear insights that shape strategy, unlock growth, and keep the whole business moving forward. If you've worked in consulting or professional services, you'll feel right at home: multiple stakeholders, fast decisions, and data that genuinely matters.

You'll report into the Growth Operations Manager, within the Office of the Chief Growth Officer (CGO) - meaning visibility, influence, and a front-row seat to strategic decision-making.



What you'll actually be doing



Cross-Sell & Growth Analytics

You'll help the business spot where growth is hiding - and then prove it with data.

  • Identify cross-sell opportunities across Practices by uncovering complementary client relationships

  • Track cross-sell initiatives and show senior leaders what's working...

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