ReTechPrime

The Intelligence
Layer retail Needs

Most retailers already have the data to transform how they operate. The constraint is the intelligence layer above it. We build it — starting with a focused Proof of Concept.

Inventory Intelligence Supply Chain AI Store Operations Merchandising AI Personalisation Generative AI Data Engineering Oracle Retail Integration Inventory Intelligence Supply Chain AI Store Operations Merchandising AI Personalisation Generative AI Data Engineering Oracle Retail Integration
Years Combined Retail Experience
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AI Solution Domains Across the Value Chain
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PoC-First Delivery Model. Every Engagement.
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Enterprise System Integrations — Oracle, Blue Yonder & More
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Where Retail Intelligence
Breaks Down

Retail generates more operational data per trading day than most industries produce in a month. The intelligence layer above it hasn’t kept pace.

01

Reactive Replenishment & Allocation

By the time a stockout or overstock position is visible in reporting, the commercial damage is already accumulating. Demand signals need to drive replenishment in near-real-time.

02

Planning Cycles That Can't Keep Pace

Weekly cadences and manual spreadsheet consolidation cannot respond to the speed at which market conditions and customer demand patterns now shift.

03

Fragmented Store Intelligence

Store teams make decisions on staffing, compliance, and inventory based on fragmented, delayed information across disconnected systems.

04

Intelligence Locked in Unstructured Data

A significant proportion of operational intelligence lives in PDFs, supplier emails, audit reports, and promotion briefs. Extracting and acting on it manually is slow and error-prone.

05

AI That Doesn't Connect to Systems of Record

Standalone AI projects rarely deliver lasting value. When AI outputs don’t connect into Oracle Retail, Blue Yonder, or ERP systems, the intelligence loop stays broken.

06

Models Without Retail Context

The most common reason retail AI fails is that the people building the models don’t understand what the numbers mean in a real retail trading environment.

Discover. Prove. Scale.

Every engagement follows the same discipline — because it’s the only approach that reliably delivers AI that works in production retail environments.

01
DISCOVER
We spend time inside your operations first. Understanding your data, your systems, your biggest commercial pain points, and where AI can deliver the most measurable impact. No assumptions. No pre-configured solutions.
02
PROVE
We define and deliver a focused, time-boxed Proof of Concept — built to production quality, integrated into your real systems, and measured against agreed commercial outcomes. You see what the AI actually does before any larger commitment.
03
SCALE
When the PoC proves its value — and it's designed so it will — we scale the solution. Building out full capability, expanding to additional domains, and embedding AI into operational workflows and systems of record.

Eight Domains.
One Value Chain.

Each solution is available standalone or as part of a broader programme — always starting with a defined PoC.

01

Demand Forecasting & Inventory Intelligence

AI-driven forecasting calibrated for retail seasonality, promotions, and NPI — connected directly into Oracle AIP, RDF, and Blue Yonder SCPO.

02

AI-Powered Merchandising & Planning

Assortment intelligence, price optimisation, promotional effectiveness, and AI-assisted OTB management for faster, better-informed decisions.

03

Supply Chain AI & Optimisation

Replenishment intelligence, dynamic allocation, exception management, and end-to-end supply chain visibility — integrated into Oracle and Blue Yonder.

04

Store Operations AI

Real-time inventory accuracy, computer vision for planogram compliance, task intelligence, and staffing optimisation at store level.

05

Customer & Personalisation AI

Segmentation, next-best-action, churn prediction, and personalised promotion targeting connected into Oracle ORCE and loyalty platforms.

06

Generative AI & Copilot Solutions

AI Brief Ingestion, product content generation, planning narrative, supplier communication automation, and conversational copilots for buying and planning teams.

07

AI Strategy & Readiness Advisory

A structured assessment giving retailers an honest picture of data quality, integration gaps, organisational readiness, and prioritised AI roadmap.

08

Data Engineering & AI Platforms

The data lake, pipeline, MLOps, and real-time streaming infrastructure that makes reliable AI delivery possible at enterprise scale.

Connected Intelligence

AI that integrates into the systems that run your operation

Agent
Architecture

Four capabilities underpin every solution we build: Ingestion & Structuring, Reasoning & Decision Support, Orchestration & Workflow Integration, and Monitoring & Continuous Learning. The intelligence loop closes at the point of decision — not in a separate reporting tool.

Four Capabilities.
Every Solution.

Ingestion & Structuring

Connecting and structuring data from POS, warehouse, supplier, and planning systems — including unstructured sources like supplier emails, PDFs, and audit documents — into the clean, contextual data layer AI models need.

Reasoning & Decision Support

AI models that understand retail context — seasonal patterns, promotional dynamics, category-specific demand behaviours — and generate recommendations that teams can act on with confidence.

Orchestration & Workflow Integration

Translating AI outputs into actions within Oracle Retail, Blue Yonder, OMS, WMS, and store execution platforms — so the intelligence loop closes at the point of decision, not in a separate tool.

Monitoring & Continuous Learning

AI systems that learn from outcome data, flag degradation in model performance before it affects business decisions, and improve over time as trading patterns and operating models evolve.

Retail Practitioners Building AI

01

We understand retail context before we build the model

Our founders have spent their careers inside retail merchandising, supply chain, and store operations. We know what a demand forecast needs to account for in Q4, and why allocation decisions behave differently during promotions.

02

We build AI that connects into your enterprise systems

Retail AI that doesn't integrate into Oracle Retail, Blue Yonder, or your systems of record is a standalone tool people will stop using.

03

We start with a Proof of Concept. Every time.

Every engagement starts with a defined, time-boxed PoC — built to production quality, measured against commercial outcomes.

04

Our solutions are built to be maintained, not just deployed

AI models degrade when trading patterns change. We build monitoring and retraining systems.

Our Orientation

From data to decisions - retail done right.

The AI market is full of technology companies who have identified retail as a target vertical. We came the other way — and that shapes everything about how we work