Business Intelligence Manager, LATAM

Alchemy Global Talent Solutions
City of London
4 months ago
Applications closed

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Join the thriving business intelligence and investigations sector as a Manager overseeing strategic intelligence operations across Latin America and the Iberian Peninsula. Based in London, this role offers a dynamic platform to apply your regional expertise in a fast-paced, global environment. This is a fantastic opportunity to make a meaningful impact in international due diligence and intelligence work.


What You’ll Be Doing:

  • Manage strategic intelligence and enhanced due diligence projects across Latin America, Spain, and Portugal.
  • Conduct detailed public domain research using a variety of databases and sources.
  • Commission and carry out discreet human source enquiries to support investigations.
  • Draft comprehensive, client-ready reports and develop supporting visuals.
  • Brief clients and stakeholders on project findings and deliverables.
  • Develop and maintain a robust human source network across the LatAm region.
  • Prepare project proposals aligned with client needs and risk profiles.
  • Support business development efforts through strategic insights and proposal input.
  • Coordinate multiple investigative projects simultaneously while meeting deadlines.
  • Maintain strong stakeholder relationships with external partners and internal teams.
  • Identify commercial and regulatory risks for clients operating in the region.
  • Ensure adherence to ethical standards and data privacy regulations throughout all projects.


What We’re Looking For:

  • Fluency in English and Spanish or Portuguese (ideally both).
  • At least 2 years’ experience in business intelligence, banking, legal, or related fields.
  • Strong communication skills with experience in writing detailed reports for clients.
  • Demonstrated ability to conduct complex investigations using public and proprietary data sources.
  • Previous work in or knowledge of LatAm and Iberian Peninsula risk environments preferred.
  • Ability to multitask under pressure and meet deadlines in a high-performance setting.

Interested? Reach out to Alchemy Global Talent Solutions today.

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