Senior Product Data Analyst

Xcede
London
6 days ago
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Senior Product Data Analyst – Experimentation Focus
London (Hybrid)
£70,000 – £90,000 + Bonus
No Sponsorship Available
A fast-growing, venture-backed tech business is looking for a Senior Product Data Analyst to join their team, focusing on customer experience, product analytics, and experimentation.
This role sits at the intersection of product, data, and operations, using data to optimise customer journeys, improve engagement, and drive measurable business impact.
What you’ll be doing
Analysing customer behaviour and product interactions to identify opportunities for improvement
Designing and running experiments to optimise features, journeys, and performance
Building dashboards and defining KPIs to track product and operational success
Working closely with product, engineering, and operations teams to influence decision-making
Translating complex data into clear, actionable insights
What we’re looking for
Strong experience in product analytics and experimentation
Advanced SQL skills and solid Python capability
Experience working with modern data stacks including dbt
Background in a high-growth tech company or startup environment
Strong analytical mindset with the ability to work with complex datasets
Excellent stakeholder management and communication skills
This is a great opportunity to join a high-performing team where data plays a central role in shaping product and customer strategy, with real ownership and impact from day one.

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