Analytics Engagement Manager - Sports Management

City of London
1 month ago
Applications closed

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Analytics Engagement Manager - Sports Clients
Permanent
£80K - £100K
Hybrid - 2 days in the office per week based in London

Are you passionate about analytics, data-driven decision-making, and the world of sports? We are seeking an Analytics Engagement Manager to oversee data management and analytics solutions for our sports clients. This is a fantastic opportunity to work at the intersection of advanced analytics, machine learning, and business strategy, ensuring seamless integration and long-term success for our clients.

Responsibilities include:

  • Lead and oversee client initiatives and projects, ensuring seamless execution.
  • Own the problem solution - structure and deliver advanced analytics solutions.
  • Collaborate with client stakeholders to frame business projects and leverage data for
    optimal outcomes.
  • Manage a team of consultants and analysts to drive analytics success.
  • Communicate with C-level stakeholders and translate data insights into actionable business
    strategies.

    Skills and Experience:

  • Degree-educated in a numerate subject (Math, Statistics, Economics, Computer Engineering,
    or Business Administration)
  • 6+ years of experience working on Analytics / Data Science / BI projects.
  • Strong understanding of Customer Data Platform tools, Paid Media Platforms, and Marketing
    Automation Platforms.
  • Proven problem-solving ability with a case-based solution approach.
  • Ability to leverage data & analytics to solve business challenges and drive meaningful
    outcomes.
  • Excellent communication skills, with the ability to present insights to an executive
    audience.
  • Interest in sports analytics would be an added benefit

    Please apply today and be part of a dynamic, fast-paced environment where analytics drive real-world success!

    CBSbutler is operating and advertising as an Employment Agency for permanent positions and as an Employment Business for interim / contract / temporary positions. CBSbutler is an Equal Opportunities employer and we encourage applicants from all backgrounds

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