Data Strategy Analyst

AI Connect | Data & AI Delivery Partner
Leicester
20 hours ago
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Data Strategy Analyst - International Motorsport

London (3 days in-office)

Regular international travel to race weekends

£45,000 - £55,000 + benefits


AI Connect are incredibly excited to be supporting a global motorsport organisation on a high-profile data and AI initiative that will be visible on the international broadcasting stage.

This is a rare opportunity for a Business Analyst or Data Strategy Analyst who enjoys sitting at the intersection of technology, data, and real-world decision-making. You’ll help shape how AI and Google Cloud are applied to live motorsport environments, working closely with technical teams, racing teams, and senior stakeholders.


The Role

You’ll act as the bridge between the business and software teams, helping define high-impact problems and shaping AI-led solutions using Google Cloud technologies.

A major part of the role involves working with racing teams, editorial, digital, and marketing stakeholders, helping translate complex technology into clear business value. This role includes regular international travel and has the opportunity for TV appearances if that’s something that would interest you.


What You’ll Be Doing

  • Identifying and defining high-value business problems where AI and data can have real impact
  • Translating ideas into clear user stories, backlogs, and solution outlines
  • Leading workshops and ideation sessions with racing and technical teams
  • Working closely with software engineers and project managers to shape delivery
  • Communicating progress and outcomes to senior stakeholders
  • Supporting live projects at international race events
  • Representing the work through presentations, events, or conference speaking opportunities


What We’re Looking For

  • Proven experience as a Business Analyst or Data Strategy Analyst in a technology-driven environment
  • Strong experience working with engineering teams and structured project delivery
  • Excellent stakeholder management and communication skills
  • Confidence operating in fast-paced, evolving environments
  • Familiarity with Google Cloud and AI-driven solutions (hands-on or conceptual)
  • Comfortable being visible, collaborative, and engaged with non-technical audiences


Why This Role Stands Out

  • Your work will influence decisions live, during global events 🌍
  • Regular international travel is part of the role
  • Opportunities for on-screen involvement, interviews, and speaking engagements
  • You’ll help shape how AI is applied in elite performance environments
  • This is a strategic role with real influence, not a document-only BA position


This is a genuinely unique opportunity for someone who wants to work close to the action and see the impact of their work in real time.

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