Data Science Manager

TechNET IT Recruitment Ltd
London
9 months ago
Applications closed

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Data Science Manager

Location:London (Hybrid)

Compensation:Upto £130,000


Are you a hands-on data scientist who thrives in fast-paced, high-performance environments?


We’re working with a world-leading private equity firm that sits at the intersection of cutting-edge analytics and strategic investment. They are seeking a Data Science Manager—someone who combines exceptional technical depth with commercial insight to influence billion-dollar decisions.

This is not a people management role—this is ahands-on, sleeves-rolled-upposition, ideal for someone who loves to code, lead from the front, and drive impact through data. You’ll be a pivotal part of a small, elite team responsible for delivering analytical firepower across deal sourcing, due diligence, and post-acquisition value creation.


What You’ll Be Doing

  • Leading complex analytics projects across portfolio companies and investment opportunities.
  • Scoping and delivering bespoke data science solutions that inform high-stakes decision-making.
  • Acting as a technical lead and mentor for junior contributors and contractors.
  • Building reusable IP: dashboards, codebases, tooling, and frameworks.
  • Collaborating with C-level execs and deal teams on high-impact commercial initiatives.


What We’re Looking For

  • A strong academic background in a STEM field (Master’s preferred).
  • Proven experience in data science, machine learning, or analytics in consulting, PE, or financial services.
  • Advanced Python and SQL skills; exposure to tools like Snowflake, Databricks, Power BI/Tableau.
  • A commercial mindset—someone who can connect analytical output with business outcomes.
  • Clear communicator who builds trust with senior stakeholders and thrives in ambiguity.

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