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Senior Data Analyst Technology (Product, Engineering, Design) · London ·

RedCloud
City of London
2 weeks ago
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About RedCloud

The global supply chain is broken—creating a $2 trillion inventory gap where essential consumer goods fail to reach the people who need them. Brands miss sales, distributors mismanage stock, and retailers face empty shelves. The result? Higher prices, slower growth, and lost opportunity across the board.

RedCloud is fixing this. Our RedAI digital trading platform, bulk and retail trading exchanges connect key parts of the supply chain—enabling bulk inventory exchange, streamlined digital payments, and generating vast quantities of aggregated market data. By applying AI and machine learning techniques, we deliver predictive market insight and trading recommendations straight back to the trading environment—facilitating smarter everyday business decisions for our customers, from factory to warehouse to store.

Headquartered in London, RedCloud became a publicly listed company on Nasdaq (RCT) in March 2025. With a diverse team spanning many nationalities and operations across Africa, the Middle East, Europe, and Latin America. We’re building a more connected and efficient global trade network. Our AI labs are busy exploring the next generation of smart AI agents and deeper FMCG market intelligence for the benefit of our customers across a growing operational footprint.

The role

We are looking for a Senior Data Analyst with a strong background in FMCG to drive data-driven strategies that enhance our FMCG partners' commercial objectives. The ideal candidate will leverage data to generate actionable insights for our customers.

Main Responsibilities
  • Develop and deliver a robust FMCG-focused data offering, aligning RedCloud’s data presentations with the commercial objectives of FMCG customers.
  • Analyse operational and customer data (pricing, availability, SKU) to uncover trends, correlations, and insights that can enhance business outcomes.
  • Support Revenue Growth Management by analysing and providing insights into pricing, promotions, discounts, and profitability models
  • Conduct hypothesis testing, trend analysis, and predictive modelling to help FMCG partners make informed, data-driven decisions.
  • Manage and present customer insights, segmentation, and supply chain analytics.
  • Leverage tools such as SQL, Python, Power BI, ThoughtSpot, VBA, and cloud platforms like AWS to conduct data analysis and visualisation.
  • Collaborate closely with internal teams and partners to ensure that data-driven narratives are accurate, actionable, and aligned with strategic goals.
  • Build credibility by ensuring data integrity and consistency in all reports and presentations, de-risking our data propositions.
  • Explore opportunities to monetise RedCloud’s data, creating new business opportunities while enhancing profitability for our partners.
What we are looking for in a candidate
  • Proven experience in data and analytics within the FMCG sector, with a strong focus on e-commerce, revenue growth management, category management and supply chain
  • Proficiency with data analysis tools like SQL, Python, Power BI, ThoughtSpot, and VBA.
  • Experience with retail and e-commerce analytics; knowledge of retail data, Nielsen, IRI data or e-commerce analytics tools to track product performance
  • Strong statistical background with the ability to perform hypothesis testing, identify trends, correlations, segmentation studies to derive insights from large datasets.
  • 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 and work closely with both internal and external stakeholders.
  • Excellent communication and presentation skills to deliver data-driven insights that align with FMCG partner objectives.
  • A proactive, strategic thinker focused on driving value through data and enhancing business profitability.
  • Experience with predictive analytics and forecasting
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.Benefits

Working with a pioneering provider of eCommerce solutions you will have the opportunity to join an international company who are growing massively, we encourage ambition and creativity.

Plus, you will get:

  • 25 Days Annual leave, increasing to 26 days after 12 months in the business
  • Enhanced CompanyPension (Matched up to 5% & Salary Sacrifice)
  • Healthcare Cashplan with Medicash
  • Private Healthcare with Aviva
  • Life Insurance with AIG
  • Happl, our benefit platform which provides access to pre-negotiated discounts on a wide variety of services including entertainment, food, and fitness.
  • Stock / Equity


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