Product Data Scientist/Analyst

Harnham - Data & Analytics Recruitment
London, United Kingdom
Today
£60,000 – £80,000 pa

Salary

£60,000 – £80,000 pa

Job Type
Permanent
Work Location
Hybrid
Seniority
Mid
Education
Degree
Posted
30 Apr 2026 (Today)

Benefits

Bonus Competitive annual leave package Pension scheme Healthcare support Employee discounts and perks Regular team socials and recognition initiatives Strong learning and development opportunities

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 aProduct 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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