Senior Data Analyst

Loqbox
London
3 days ago
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Who we are

Money, it's a big problem for many. Our mission is to give everyone access to a richer life, helping everyone to enjoy a happier, healthier relationship with money. We've already helped over a million people by giving them the tools they need to achieve their goals, feel good and do a little better — from building their credit scores to growing their savings, to just understanding how it all works. Rapid experimentation to find what works, and learn as much as we can, is at the heart of our growth story.


What you'll do

As a Senior Data Analyst, you know that it’s not just about the data we have, but what we do with it that counts. In this key role, you will use your product analytics expertise and strategic thinking to shape Loqbox’s product roadmap and user experience while helping to scale and strengthen our data team. You'll transform complex user behaviors into insights that underpin product decisions across all our features. You’ll collaborate closely with Product Managers, Engineers, User Research and Design to optimize the user journey, increase retention, and maximize the value we provide to our members.


You will:

  • Analyze complex conversion funnels to identify friction in the user journey.
  • Lead end-to-end experimentation from hypothesis generation and power analysis to interpreting results and recommending product changes.
  • Build models to identify "aha!" moments, predict churn, and segment users based on their engagement patterns to inform personalized product experiences.
  • Partner with engineering teams to champion observability and outcomes, ensure robust event tracking and maintain data quality in our Redshift data warehouse.
  • Support and guide product teams in establishing metrics and leading indicators for our business objectives.
  • Use tools like Count to present complex findings to stakeholders at all levels, translating behavioral data into clear, actionable recommendations for the product roadmap.
  • Support the team’s technical growth by working with other analysts on dbt and Git best practices, code reviews, and statistical rigor.


Who you are

  • You have at least 4 years experience in analytics with a track record of driving measurable product improvements.
  • You're an expert in SQL and comfortable using Python or R for data manipulation and analysis. Brownie points for familiarity with dbt and version control.
  • You have experience with product analytics platforms (such as GA4 or PostHog) and can talk about event schemas and sources.
  • You're skilled at stakeholder management and can leverage diverse communication channels to influence decision-making.
  • You have a grounding in statistics that enables you to lead in experimental design and A/B testing methodologies.
  • You are a strong collaborator, communicator and team player who wants to develop your skills as a mentor and leader.
  • You're passionate about continuous learning, especially when it comes to tools and trends that allow you to make an impact with data.
  • You are motivated by a love of your work and a connection to the mission of the business.

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