Global Market Insights & Analytics Manager

ENI – Elizabeth Norman International
Greater London
3 months ago
Applications closed

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Job Title:Global Market Insights & Analytics Manager - FMCG Brand.

Location:London hybrid

Competitive Salary and bonus


About the Role

Are you passionate about transforming data into actionable insights that drive business success?


As the Global Market Insights & Analytics Manager, you’ll be at the forefront of data-driven decision-making for a global FMCG brand.


This role focuses on implementing and enhancing market intelligence strategies, using analytics to identify growth opportunities, and supporting global and regional leadership with clear, action-oriented insights. You’ll play a key role in elevating data solutions and fostering a data-driven culture within the company.


Key Responsibilities

  • Drive a unified view of market performance across regions, offering monthly and quarterly insights.
  • Translate complex data into compelling narratives to support strategic goals.
  • Collaborate with cross-functional teams to standardize global data assets and solutions.
  • Develop and advance the company's analytics toolkit, incorporating AI and innovative methodologies.
  • Champion a data-driven mindset, encouraging knowledge-sharing across teams.
  • Strengthen partnerships with third-party market intelligence agencies to ensure best-in-class delivery.


Experience required

  • 5+ years in market research or marketing analytics, particularly within the CPG industry.
  • Proven track record of leveraging data to solve business challenges and inform strategy.
  • Skilled in presenting complex data insights in a clear and impactful way for varied audiences.
  • Advanced Excel and PowerPoint skills; familiarity with tools like PowerBI or Tableau is a plus.
  • Strong stakeholder management, with the ability to build cross-functional relationships and influence.
  • Experience with core data sets (NIQ, Kantar, Circana).


Preferred Skills

  • Experience with both client-side and agency work is advantageous.
  • 5+ years of experience in market research and/or marketing analytics, with a strong focus on the FMCG sector
  • Proven track record of developing high impact market intelligence and reporting solutions, preferably multi-country and category, leveraging the latest technologies and data
  • Proven track record of using data and analytics to solve key business challenges and develop/inform business strategy.
  • Able to engage in a consultative manner with stakeholder at all levels when helping solve/manage content deliverables and critical business challenges.
  • Strong collaboration skills, ability to build relationships with cross-functional teams, influence across boundaries and outside of traditional reporting lines
  • Excellent communication and presentation skills, with the ability to translate complex data into clear and concise insights for a non-technical audience.


Desired skills:

  • A background in Advanced Analytics Capabilities, such as Marketing Effectiveness Measurement or Revenue Growth Management.


Apply now!


ENI welcome applications from all sections of society. Additionally, to ensure people with a disability, impairment, mental or physical health conditions can access and progress in employment. Please let us know if there are any adjustments needed in order to make your interview/screening process as seamless and comfortable as possible.

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