Ekyam has announced the launch of its Retail Intelligence Operating System (riOS) on Google Cloud Marketplace, marking a significant step forward in helping retailers modernize their data foundations and unlock AI-native capabilities. With this launch, retailers can seamlessly connect operational systems, standardize enterprise-wide data, and activate advanced AI applications such as natural language–driven analytics and intelligent operations designed to directly impact profitability and P&L performance.
By making riOS available through Google Cloud Marketplace, Ekyam simplifies how retail and commerce organizations deploy a unified data layer. As a result, businesses can reduce system fragmentation, lower engineering overhead, and accelerate readiness for large-scale AI initiatives across merchandising, planning, fulfillment, and customer experience. Moreover, the marketplace availability provides a faster and more secure procurement and deployment path, allowing retailers to move from experimentation to production-grade AI use cases with greater confidence.
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Building a Unified Data Foundation for Modern Retail
Today’s retailers continue to struggle with fragmented technology stacks, where each system operates with its own data formats, schemas, and definitions. Consequently, this lack of standardization limits real-time visibility, disrupts forecasting accuracy, and prevents organizations from establishing a true single source of truth. In turn, AI initiatives often stall before delivering meaningful outcomes.
Ekyam directly addresses these challenges by offering a comprehensive set of capabilities. First, the platform provides universal connectors for leading retail systems, enabling rapid data ingestion without the need for custom-built integrations. Next, its canonical retail data model standardizes critical data domains, including product, order, inventory, and customer information. In addition, Ekyam applies a semantic layer and knowledge graph to contextualize relationships across the retail value chain, ensuring data remains meaningful and actionable. Finally, AI-powered insights and operational assistants leverage this unified data layer to deliver analytics, recommendations, and automated retail operations guided by natural language.
Accelerating AI-Driven Retail Operations
With riOS now available on Google Cloud Marketplace, retailers can consolidate siloed data, modernize their data infrastructure, and deploy advanced AI applications without lengthy data engineering cycles or disruptive architectural overhauls. This approach also enables agentic commerce, allowing intelligent systems to act autonomously while remaining aligned with business objectives.
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“Retailers need connected, standardized and contextualized data before AI can deliver on its promise,” said Mariah Chase, CEO of Ekyam. “Our collaboration with Google Cloud helps accelerate that journey by giving brands an enterprise-ready platform to unify their data and activate AI across their business from day one.”
The platform’s semantic standardization and chronicle model further ensure high-integrity, temporally aware data. As a result, retailers can support advanced analytics, GPT-based operational assistants, and predictive workflows with greater accuracy and trust.
“Bringing Ekyam to Google Cloud Marketplace will help customers quickly deploy, manage, and grow the company’s unified retail data platform on Google Cloud’s trusted, global infrastructure,” said Dai Vu, Managing Director, Marketplace & ISV GTM Programs at Google Cloud. “Ekyam can now securely scale and support companies using its riOS solution to enable AI-driven operations for modern retail across their Google Cloud environments.”
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