Data Analyst – Financial Services | Manchester | FTC | Circa £50k | Hybrid

Futureheads Recruitment | B Corp
Manchester
1 month ago
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Overview

We’re looking for a Data Analyst with Financial Services experience to join a consultancy who are partnered with a leading organisation in the Financial Services sector, based in Manchester. You’ll be in the office 3 days per week, in a collaborative team that values insight-driven decision making.

Base pay range

This range is provided by Futureheads Recruitment | B Corp. Your actual pay will be based on your skills and experience — talk with your recruiter to learn more.

Employment details

  • Fixed-Term Contract (FTC)
  • Hybrid working: 3 days in Manchester office

What you’ll be doing

  • Turning raw data into actionable insights for stakeholders across the business
  • Writing complex queries in SQL (core requirement)
  • Supporting reporting, MI, and dashboard builds
  • Adding value with Python skills (a nice-to-have, not a must)

What we’re looking for

  • Previous experience in the Financial Services sector
  • Strong SQL background, confident working with large data sets
  • Analytical mindset with a knack for problem-solving
  • Available to start ASAP

Seniority level

  • Mid-Senior level

Employment type

  • Full-time


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