Senior Product Analyst

Salt
London
1 month ago
Applications closed

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Salary: £75,000 - £80,000

Location: Hybrid/3 days in the London office


About the Opportunity

A leading global FinTech company is seeking a talentedProduct Analystto join its fast-paced, cross-functional team. The organisation operates digital platforms across mobile, web, and desktop. With a strong international presence and a rapidly expanding user base, the company is on a mission to deliver best-in-class experiences through data-driven decision-making and continuous product innovation.


This is an opportunity to work in an environment that values autonomy, creativity, and experimentation—ideal for those who want to make a tangible impact and shape product direction through insights.


Your Role in the Team’s Success

As a Product Analyst, you will leverage data to drive strategic product decisions, improve performance, and enhance user experience across the full customer acquisition journey—from initial touchpoints through to conversion and first trade.

You will be a key partner to product managers, engineers, and business stakeholders—delivering insights that directly contribute to business growth and customer satisfaction.


What You’ll Do

  • Analyse user behaviour, product usage, and conversion funnels across web and mobile platforms to identify opportunities for improvement.
  • Develop and maintain dashboards and reports to monitor key metrics such as engagement, retention, churn, and feature adoption.
  • Use segmentation, cohort analysis, and predictive modelling to uncover insights into the full customer journey.
  • Collaborate with data engineering to ensure data integrity and accuracy.
  • Support A/B testing and experimentation, including tagging, tracking, and post-test analysis.
  • Present findings to stakeholders in a clear, actionable format through reports, dashboards, and presentations.


What You’ll Need

  • Experience in a product analytics role, with a track record of influencing product decisions and driving outcomes.
  • Proficiency in SQL and either Python or R for data analysis.
  • Hands-on experience with product analytics tools (e.g., Google Analytics, Contentsquare, Firebase, or Appsflyer).
  • Strong skills in data visualisation using tools like Tableau or Looker.
  • Expertise in A/B testing, cohort analysis, and statistical evaluation.
  • Excellent analytical and communication skills, with a strong attention to detail.
  • Experience working in agile, cross-functional teams.
  • Familiarity with Google Tag Manager and BigQuery.

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