
For retail businesses, where net profit margins often hover around 3 percent, every efficiency gain is a lifeline. This makes artificial intelligence, especially agentic automation, a true game-changer. But as many companies rush to jump on the AI bandwagon, they’re hitting a wall: their data just isn’t ready.
The AI Promise: Efficiency for Razor-Thin Margins
AI isn’t merely about complex algorithms; its real power for retailers lies in transforming raw data into actionable insights that directly boost the bottom line. Agentic automation — AI systems that can independently take action based on data — is revolutionizing retail by:
- Optimizing Pricing: AI agents can constantly monitor competitor pricing, real-time demand, and inventory, dynamically adjusting prices. Zara, for instance, famously leverages AI to quickly optimize pricing and clear stock, preventing costly markdowns and boosting revenue by potentially up to 42 percent through dynamic pricing strategies.
- Automating Inventory: Retailers battle both overstocking and understocking. AI agents analyze sales, promotions and market trends to predict demand with incredible accuracy. Walmart uses AI to forecast demand across its network, minimizing stockouts and excess inventory, which translates to automated, precise replenishment orders.
- Streamlining Supply Chains: From predicting delays to optimizing delivery routes, AI agents can oversee the entire supply chain. UPS’s ORION system, powered by AI, optimizes routes by analyzing real-time logistics data, leading to significant fuel savings and reduced delays, directly lowering operational costs.
- Personalizing Customer Engagement: Beyond basic chatbots, agentic systems can trigger personalized offers based on real-time behavior. Starbucks’ Deep Brew AI system analyzes purchase patterns to personalize promotions, leading to an estimated 15 percent increase in customer retention. This isn’t just about cutting service costs; it’s about driving higher conversion and loyalty.
The AI Roadblock: Your Data Isn’t Ready
Despite the immense potential, most AI projects stall not because the technology doesn’t work, but because the data behind it is a mess. Before diving into AI, every organization, especially those in fast-paced retail, must ask:
- Is your data actually moving between systems the way it should? Fragmented data, stuck in silos across point-of-sale systems, e-commerce platforms, and CRMs, means AI can’t get the complete picture. Integrated, accessible data is fundamental for AI.
- Do you know where your data comes from and what it means? Without clear definitions and understanding of your data’s origin and context — its semantics — AI models can easily misinterpret information, leading to flawed decisions.
- Can you track how data flows from start to finish? Data lineage is crucial. If you can’t trace data from its source through all transformations, ensuring the quality and reliability of AI becomes impossible, and compliance with privacy regulations like GDPR or CCPA is severely hampered.
- Is your data set up in a way AI tools can actually use? Raw, unprepared data is useless to AI. It needs to be clean, consistent, and structured appropriately. This often requires significant effort in data preparation and feature engineering.
Treating Data as a Product: The Key to Scalable AI
To truly scale AI and unlock its full potential, retailers need to adopt a “data as a product” mindset. This means treating your data assets like internal products, each with a clear owner, defined quality standards, rich semantic context, comprehensive documentation, and easily consumable APIs.
This approach addresses the core challenges of AI readiness:
- Built-In Context and Semantics: Data products come with clear metadata and definitions. AI models don’t just see numbers; they understand that “price” means the final transaction price, or that a “customer_id” is a unique identifier. This semantic richness prevents AI misinterpretations.
- Security and Compliance by Design: By designing data products with security and compliance from the outset, access controls, anonymization techniques, and regulatory checks become inherent features. This makes secure data consumption for AI much more efficient and reduces risk.
- Scalability and Reusability: Data products are designed to be discovered and reused across multiple AI initiatives. This eliminates redundant, time-consuming data preparation for every new AI project, significantly accelerating AI development and deployment.
For retailers, the path to AI-driven efficiency isn’t just about buying the latest models, it’s about diligently preparing and managing your foundational enterprise data. By addressing these critical data questions and embracing a “data as a product” strategy, you can build a robust, secure and scalable data environment that truly fuels transformative AI and agentic automation, providing a decisive competitive edge.
Srujan Akula is the CEO and co-founder of The Modern Data Company, creator of DataOS.