Using Streaming Data and ML to cut Overstocks and Stockouts

Introduction

Minorista breaks the moment when your inventory starts to lag.  Not because demand is unpredictable—but because the data describing it is late, fragmented, and inconsistent. When stock positions are updated in batches across multiple ERPs and warehouses, every downstream decision—forecasting, replenishment, allocation—starts from a stale baseline. 

This is the real playground for streaming data.

The Problem

A large UK outdoor apparel retailer faced a critical issue: key decisions were being made on outdated inventory data, driven by batch-based systems and delayed synchronization across backend platforms.

In a large, multi-channel retail setup, inventory is constantly moving—sales, returns, transfers, inbound shipments. But if systems reconcile these movements only in periodic batches:

  • E-commerce shows items that are already sold out in stores
  • Stores operate without visibility into warehouse stock
  • Replenishment engines overcompensate with higher safety stock
  • Teams rely on manual fixes during peak periods

The result is predictable: latency between systems slows decision-making, leading to stockouts where demand is high, excess inventory where it isn’t, and slower responses when speed matters most.

Batch Updates to Continuous Inventory Flow

The ‘Wow Factor’ was what made the inventory a live stream of events.

Every stock movement—sale, return, transfer—is captured and propagated in near real time across systems.

This was enabled by:

  • Event-driven pipelines (streaming platforms, message queues)
  • Change Data Capture (CDC) from ERP systems
  • A canonical inventory model that standardizes SKUs and locations
  • Low-latency data layers for fast reads across channels

Our outcome was a single operational view of inventory that updates continuously and is accessible to e-commerce, stores, and replenishment systems.

How Does This Inventory Flow Lead to Replenishment

The logic of Replenishment depends on three things: current stock, demand signals, and lead times. When inventory data is delayed, systems compensate with buffers—usually in the form of inflated safety stock.

With Streaming Data:

  • Stock positions are accurate to the minute
  • Demand signals (sales velocity, returns) are updated continuously
  • Forecasts adjust faster to real-world changes (weather, promotions, local spikes)

What Changes in Practice

    1. Lower safety stock without increasing risk: With streaming data, retailers can reduce risk by no longer having to guess stock levels and replenishment timing, freeing up less capital tied up in inventory.
    2.  Faster, more accurate reorder decisions: Instead of periodic replenishment runs, systems can trigger decisions continuously or at shorter intervals. This automatically adjusts reorder points, resulting in purchase orders and transfers that reflect demand. 
    3. Inventory Turnover: When stock is more closely aligned with demand, slower-moving inventory is identified more quickly, and fast-moving SKUs are replenished faster. This improves sell-through rates and overall turnover. 
    4. Smarter ML-driven forecasting: The veracity of ML models depends heavily on data freshness, as models learn from near real-time demand patterns and forecast errors reduce during volatile periods.
Real-Time-Inventory-Impact-Loop
A real-time inventory layer sits at the center of operations, enabling consistent availability across channels, reducing order cancellations, aligning store and warehouse decisions, and supporting scalability during peak demand.

Omnichannel Impact: Connecting Inventory to Customer Experience

Replenishment doesn’t operate in isolation—it directly shapes how inventory behaves across channels. With a unified, near real-time view of stock, ecommerce platforms reflect actual product availability, reducing instances where customers order items that are no longer in stock.

In stores, teams gain visibility into warehouse and cross-location inventory, enabling better assistance to customers and fewer missed sales opportunities. For order fulfillment, accurate and current inventory data ensures that orders are routed correctly—whether it’s ship-from-store, warehouse dispatch, or click-and-collect—minimizing delays and cancellations.

Closing Note

Smarter replenishment is ultimately a data problem before it becomes a forecasting or operational one. When inventory data moves from delayed, batch updates to continuous streams, every dependent system—forecasting, allocation, fulfillment—becomes more responsive and reliable.

The result is not just improved efficiency, but a more consistent and dependable retail experience—where decisions are made on what is happening now, not what happened yesterday.

Wahbe Rezek

Asesor, IA y Deep Tech

Wahbe, radicado en Ámsterdam, cuenta con una sólida experiencia en gestión de proyectos y cambios de TI, destacando su paso por el Ayuntamiento de Ámsterdam e ING. En 2019, se convirtió en Gerente de Programas en la división de Mercados Financieros de ING, especializándose en IA. Desde finales de 2022, Wahbe fundó Future Focus, ofreciendo servicios de consultoría e implementación de IA, y asistiendo a clientes en la maximización del potencial de la inteligencia artificial. Además, se desempeña como Asesor de IA y Deep Tech en Innovature, donde proporciona perspectivas estratégicas y orientación sobre tecnologías de IA de vanguardia.

Image of Wahbe Rezek

Jesper Bågeman

Socio, Tecnología

Jesper es un entusiasta de la tecnología comprometido a impulsar un cambio positivo a través de la tecnología. Lidera con tres principios fundamentales: fomentar alianzas genuinas con los clientes, integrar la sostenibilidad en las operaciones y priorizar el empoderamiento y el bienestar de los miembros del equipo. La dedicación de Jesper a estos valores garantiza que ofrezca resultados impactantes.

Image of Jesper Bågeman

Tiby Kuruvila

Jefe Asesor

Tiby es un experto en tecnología respetado, reconocido por sus contribuciones en gestión de proyectos y desarrollo tecnológico. Su dedicación al avance tecnológico y a la gestión de relaciones con los clientes lo ha establecido como un activo valioso para impulsar el crecimiento empresarial y mantener la satisfacción del cliente en diversos sectores.

Image of Tiby, on of Innovature's Co-founders

Meghna George

Gerente de Recursos Humanos

Meghna se dedica a moldear las prácticas de Recursos Humanos y a fomentar una cultura de crecimiento y empoderamiento, guiando a Innovature hacia un futuro más brillante. Con una impresionante trayectoria en Recursos Humanos, Meghna ha liderado con éxito servicios compartidos de RR. HH. y ha gestionado la cartera de HRBP para grandes unidades de entrega. Su experiencia abarca la planificación estratégica, la gestión del cambio y el desarrollo de empleados, lo que la convierte en una fuerza fundamental para impulsar la excelencia organizacional.

Image of Meghna George, the HR manager

Unnikrishnan S

Vicepresidente

Unnikrishnan aporta una gran experiencia en la entrega de proyectos de software impactantes y en la implementación de iniciativas tecnológicas estratégicas. Su amplio conocimiento en gestión de proyectos, operaciones y compromiso con el cliente produce consistentemente resultados significativos, convirtiéndolo en un líder de confianza en el campo de las TI.

Image of Unnikrishnan S, Vice President of Innovature

Gijo Sivan

Director Ejecutivo, Global

Gijo tiene su sede en Japón y cuenta con veinte años de experiencia en tecnología web moderna, análisis de big data, computación en la nube y minería de datos. Juega un papel fundamental en la formación de la reputación global de la empresa, particularmente dentro de la industria de TI japonesa, y aporta una amplia experiencia en ventas, gestión de entregas, gestión de socios, operaciones y consultoría tecnológica.

Image of Gijo Sivan, Global CEO of Innovature

Ravindranath A V

Director ejecutivo, India y América

Ravindranath es un ejecutivo experimentado y de gran renombre por su dominio global en estrategia de TI, infraestructura y entrega de servicios de software. Con un enfoque en la innovación, transforma los conceptos de negocio de los clientes en soluciones prácticas en diversas industrias como la banca, el comercio minorista, la educación y las telecomunicaciones.

Image of Ravindranath, CEO of Innovature Americas