Data Analyst

Jobs via eFinancialCareers
Manchester
6 days ago
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Manchester - Hybrid working (2 days onsite per week). 6 month contract, inside IR35. We're working with a leading digital product team who are looking for a mid-level Data Analyst to join them on a contract basis. This role is embedded within a single product team and plays a key part in shaping how data is used at the very start of a product lifecycle. You'll be embedded within the product team, working closely with Engineers and a Product Manager on a key initiative focused on optimising a new in-app funnel. The goal is simple but impactful: increase user conversion and engagement. This is a hands-on, highly collaborative role where you'll help define what \"good tracking\" looks like, challenge assumptions and ensure the right data is in place to measure what's working.


What You'll Be Doing

  • Analysing the end-to-end user journey through an in-app funnel
  • Designing and validating tracking strategies across the funnel
  • Optimising conversion rates through insight and experimentation
  • Working closely with Product and Engineering to advise on what and how to track
  • Operating in a fast-moving environment where documentation is still evolving
  • Supporting experimentation by ensuring tracking is correctly implemented

What We're Looking For

  • Demonstrable experience as a Data Analyst
  • Strong business and product acumen - comfortable consulting with product teams
  • Proven experience in funnel analysis and optimisation

Technical Skills

  • Strong SQL (essential)
  • Python (nice to have)
  • Experience with tracking implementation (web/app)
  • Solid understanding of event tracking, funnels and experimentation
  • Experience working with Snowflake or similar data warehouses is desirable
  • Knowledge of database design/data warehousing and Tableau is a plus


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