Data Scientist

London
4 months ago
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Senior Data Scientist / Product Analyst II - Engineering Platform

Location: London, UK (Hybrid)

The Mission

Behind every global streaming giant is a massive engine of internal tools and infrastructure. We are looking for a data expert to join our Platform Insights team. Your "customers" aren't the end listeners-they are the hundreds of world-class engineers building the applications used by millions. Your goal is to optimize the developer experience, ensuring our internal systems are fast, stable, and scalable.

What You'll Do

Drive Product Strategy: Partner with Product Managers and Engineers to define what "success" looks like for internal developer tools and cloud infrastructure.

Full-Stack Analytics: Define key metrics, build robust datasets, and create high-impact dashboards (SQL/Python).

Exploratory Research: Deep-dive into technical logs and user behavior to identify friction in the software development lifecycle.

Influence Change: Communicate technical insights to senior stakeholders to prioritize high-value infrastructure investments.

Who You Are

The Technical Analyst: You have 5+ years of experience in a quantitative role, with mastery of SQL and Python/R.

Domain Enthusiast: You have a genuine interest in how software is built-familiarity with CI/CD, Cloud Infrastructure (GCP/AWS), or Software Architecture is a major plus.

Bridge Builder: You can translate "complex system data" into clear, actionable business recommendations.

Quantitative Background: Degree in Computer Science, Stats, Math, Economics, or a related field.

Why This Role?

This isn't a standard marketing analytics role. You will be at the heart of technical innovation, helping one of the world's most admired tech companies scale to a billion users by empowering the people who build it. Please apply here or share your updated CV to (url removed)

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

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