Product Manager - Internal Tools

Recruited
London
1 week ago
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What’s the Opportunity?


Our client, a market leader in digital comparison and affiliate marketing, is looking for aProduct Managerto take ownership of a bespokeinternal insights and recommendation tool. This tool is critical to business success, providing contextual, relevant, and actionable insights to drive data-led decision-making across multiple verticals, including gaming, sports, and personal finance.

This is a high-impact role withdirect exposure to senior leadership, including the founder, offering the opportunity to shape a product that influences the entire organization.


What Will You Be Doing?


  • Own the strategy and developmentof an internal insights platform that enables product teams to make data-driven decisions.
  • Work cross-functionallywith engineering, UX, and leadership to define and implement the product roadmap.
  • Develop and prioritize featuresbased on business impact, user needs, and stakeholder input.
  • Ensure adoption and usabilityby working closely with internal teams and continuously iterating on feedback.
  • Analyse and interpret datafrom web traffic, SEO, conversion rates, and engagement metrics to enhance insights.
  • Collaborate with the founderand senior leadership, presenting product updates and key insights to drive business decisions.
  • Act as the bridgebetween data science, product management, and commercial teams to ensure data is actionable and impactful.
  • Push back when necessaryand effectively manage stakeholder expectations, balancing speed with strategic vision.


What Experience Do You Need?


  • Strongexperience in internal tools or data products, preferably within a digital-first or platform business.
  • Proven experiencein product management, working on tools that leverageweb traffic data, SEO insights, and conversion metrics
  • Background inB2B SaaS, BI tools, or platform services
  • Ability to work in ahigh-exposure environment, presenting directly to C-level executives and managing expectations effectively.
  • Understanding ofSEO principles, including domain ranking and search engine algorithms.
  • Adata-driven mindset, with experience using analytics to shape product strategy and decision-making.
  • Strong communication skills and the ability towork closely with engineers and UX designersto deliver impactful products.


Bonus Points If You Have:


  • Understanding of AI, machine learning, or automation within a data product context.
  • A background inengineering or data science(not essential, but beneficial).


The Offer


  • Salary: £90k + 10% bonus + benefits
  • Hybrid working– 1 day per week in the London office
  • Clear career progressionin a fast-growing company with direct leadership exposure.


If you’re astrategic, data-driven Product Managerwith a passion for building high-impact internal tools, apply now or reach out to

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