Product Data Scientist/Analyst

Harnham - Data & Analytics Recruitment
London
1 day ago
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Job Description

Job Title: Product Data Scientist - Hybrid - Up to £80,000

Location: London (Hybrid, 2 days p/w in office)

Salary: Up to £80,000 + benefits

Contract: Permanent

The Company

A well-established and fast-growing organisation going through an exciting period of digital transformation. With a strong customer focus, they use data and technology to deliver meaningful products and services to a wide audience. The business is scaling its data capabilities and is investing heavily in analytics to drive smarter decisions and long-term growth.

The Role

As a Product Data Scientist, you'll work closely with teams across the business to unlock insight, guide product strategy, and influence decision-making. You'll use advanced analytics, experimentation, and data storytelling to identify opportunities, improve customer experiences, and drive measurable impact.

Key Responsibilities:

  • Analyse user behaviour to uncover insights, identify pain points, and influence product direction.
  • Design experiments and support a culture of testing, learning, and iteration.
  • Define and align key business metrics, ensuring consistency and accuracy across teams.
  • Build and maintain dashboards and tools to empower stakeholders with self-serve insights.
  • Conduct deep-dive analyses to support strategic initiatives and provide clear recommendations.
  • Collaborate across functions to close data gaps and drive analytics best practice.
  • Stay current on industry trends and champion innovative approaches to product data science.

The Candidate

  • Proven experience in analytical roles, ideally within a digital-first or tech-led business.
  • Skilled in SQL, Python or R, plus familiarity with BI tools (e.G. Looker, Tableau, Lightdash).
  • Ability to translate business challenges into clear analytical projects and recommendations.
  • Strong data storytelling and presentation skills, with confidence engaging senior stakeholders.
  • Curious, proactive, and detail-oriented problem solver.
  • Team player with strong collaboration skills.

What's on Offer

  • Salary up to £80,000 + bonus
  • Hybrid working (2 days per week in London office)
  • Competitive annual leave package
  • Pension scheme and healthcare support
  • Employee discounts and perks
  • Regular team socials and recognition initiatives
  • Strong learning and development opportunities

Apply Now If you're an experienced Product Data Scientist/Analyst looking to shape the future of data insight in a growing, forward-thinking organisation, apply today.

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