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Senior Data Analyst

RedCloud
City of London
1 week ago
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About RedCloud
RedCloud is fixing a $2 trillion supply chain gap by connecting key parts of the trade network with a digital platform that delivers predictive market insight. The company became publicly listed on Nasdaq in March 2025 and operates across Africa, the Middle East, Europe and Latin America. The Role


Responsibilities

  • Develop and deliver a robust FMCG‑focused data offering aligned with commercial objectives of FMCG customers.
  • Analyse operational and customer data (pricing, availability, SKU) to uncover trends, correlations and actionable insights.
  • Support Revenue Growth Management by analysing pricing, promotions, discounts and profitability models.
  • Conduct hypothesis testing, trend analysis and predictive modelling to enable data‑driven decisions.
  • Manage and present customer insights, segmentation and supply chain analytics.
  • Leverage SQL, Python, Power BI, ThoughtSpot, VBA and AWS for data analysis and visualisation.
  • Collaborate with internal teams and partners to ensure narratives are accurate and actionable.
  • Build credibility by ensuring data integrity and consistency in all reports and presentations.
  • Explore opportunities to monetise RedCloud’s data, creating new business opportunities.

Qualifications

  • Proven experience in FMCG data analytics with focus on e‑commerce, revenue growth management, category management and supply chain.
  • Proficiency with SQL, Python, Power BI, ThoughtSpot and VBA.
  • Experience with retail e‑commerce analytics, Nielsen, IRI or similar tools.
  • Strong statistical background for hypothesis testing, trend analysis and segmentation studies.
  • Experience with cloud platforms.
  • Familiarity with FMCG revenue growth management practices, pricing models and distribution strategies.
  • Ability to translate complex data into clear, actionable narratives for stakeholders.
  • Excellent communication and presentation skills.
  • Proactive, strategic thinker focused on driving value through data.
  • Experience with predictive analytics and forecasting.

Benefits

  • 25 days annual leave, increasing to 26 days after 12 months.
  • Enhanced company pension matched up to 5% & salary sacrifice.
  • Healthcare cashplan with Medicash.
  • Private healthcare with Aviva.
  • Life insurance with AIG.
  • Happl benefit platform for discounts on entertainment, food and fitness.
  • Stock / equity.

Even if you don’t meet every requirement, we still encourage you to apply. Your unique experiences and perspectives might be just what we’re looking for.


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