Data Analyst - Product

Harnham - Data & Analytics Recruitment
London
3 days ago
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Data AnalystFully remoteUp to 55,000 + bonus + equity

This is an exciting opportunity to join a high-growth consumer platform at a pivotal moment as they scale their modern data function. You will have real ownership, the chance to shape analytical best practice, and the freedom to influence product strategy through high-impact insights.

The CompanyThey are a fast-growing digital subscription platform with a strong, mission-driven culture and an engaged global user base. The business has recently invested in modern data tooling and is building out a centralised data function to accelerate product development and growth. With a focus on understanding user behaviour, improving digital journeys, and enabling data-driven decision making, this is a key hire in a scaling product analytics team.

The RoleAs a Data Analyst, you will work closely with product managers, engineers, and cross-functional teams to deliver insights that drive product and business outcomes. You will:* Deliver clear, reliable analysis that informs product decisions and business priorities.* Lead SQL-based exploration, modelling, and validation to ensure accurate reporting.* Build and maintain dashboards that enable self-serve analytics.* Run discovery work on user behaviour across web and app journeys.* Audit and set up tracking to ensure high-quality event data.* Support exp...

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