Business Intelligence Manager, Transatlantic

Alchemy Global Talent Solutions
City of London
1 day ago
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Join a dynamic and growing Strategic Intelligence team within the consulting industry, based in London. We are seeking a Manager or Associate Director to independently lead high-level intelligence projects focused on the Transatlantic region (UK and North America). This is a fantastic opportunity for an experienced professional to contribute to cutting-edge commercial, regulatory, and geopolitical investigations while leveraging a global human source network.


What You’ll Be Doing:

  • Independently manage strategic intelligence investigations across the UK, US, and Canada.
  • Develop and structure lines of inquiry to assess commercial, regulatory, and political risks and opportunities.
  • Identify, engage, and manage human sources in and outside of existing networks.
  • Oversee and guide open-source research conducted by Analysts.
  • Assess the credibility and provenance of intelligence gathered from human sources.
  • Prepare and deliver verbal briefings tailored to commercial audiences, including private equity firms and multinational corporates.
  • Manage high-pressure client interactions with deal teams, legal teams, and C-suite executives.
  • Draft narrative-driven reports that synthesise intelligence findings and benchmark risks and opportunities.
  • Identify and develop intelligence source networks across diverse geographies and sectors.
  • Vet and cultivate relationships with new prospective human sources.
  • Contribute to the ongoing development of the team’s source development strategy.
  • Provide mentorship and guidance to junior team members.
  • Collaborate with internal stakeholders to enhance service offerings and client relationships.


What We’re Looking For:

  • Proven experience working in business intelligence, strategy consulting, regulatory, or political risk/geopolitical consulting.
  • Minimum 3-5 years of professional experience, with at least 2 years managing consulting projects or workstreams.
  • Strong commercial awareness and understanding of business models and value chains.
  • Foundational knowledge of political and regulatory trends across the UK and North America.
  • Excellent verbal and written communication skills, with experience preparing client-ready reports and briefings.
  • Ability to work autonomously and deliver high-quality results with minimal oversight.


Interested? Reach out to Alchemy Global Talent Solutions today.

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