Product Data Scientist

London
3 weeks ago
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Product Data Scientist

Location: Remote - UK
Type of role- 6 Months contract with potential extension
Payrate - £435 Per Day - £590 Per Day Inside IR35

We're looking for experienced Senior Data Scientists to join a leading global streaming and technology platform, supporting their product, design, and engineering teams.

What You'll Work On

Designing and analysing A/B experiments across high-visibility product surfaces
Creating success metrics and shaping data-driven measurement strategies
Deep analytical work using SQL (BigQuery) + Python/R
Building dashboards in Tableau / Looker Studio
Delivering clear, actionable insights to senior stakeholders
Supporting either the User Platform (login, account systems, identity management).What We're Looking For

5+ years as a product-focused Data Scientist
Strong background in A/B testing and experimentation
High proficiency in SQL (BigQuery preferred)
Skilled in Python or R
Excellent communication and stakeholder management
Experience working in fast-paced consumer tech or streaming environments is a strong plus
This is an urgent vacancy where the hiring manager is shortlisting for an interview immediately. Please apply with a copy of your CV or send it khushboo. pandey @ randstad. Co. uk

Randstad Technologies is acting as an Employment Business in relation to this vacancy

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