Turn Data and AI into Confident Decisions

Your ERP, OMS, PIM, and commerce platform each hold a piece of the truth. We unify them into a single decision layer that drives revenue, reduces friction, and scales with your business.
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Most B2B commerce organizations do not have an AI problem. They have a data problem that makes AI impossible.

Fragmented product data. Siloed ERP and OMS. Pricing signals that only exist in spreadsheets. You cannot build reliable intelligence on an unreliable foundation.

McFadyen fixes the data first. Then we build the decision layer on top of it. That is how AI becomes something your operations team actually trusts and uses.

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AI COMMERCE READINESS AUDIT

Most Data Is Partially AI-Ready. The Gap Is What Costs You.

The McFadyen AI Commerce Readiness Audit gives you an instant gap analysis across five dimensions — free at audit.mcfadyen.ai.
The Problem

Your Systems Have the Data. Your Operations Don't Have the Answers.

Distributors and manufacturers are sitting on more data than ever. Order history. Product attributes. Pricing rules. Customer behavior. All of it scattered across ERP systems, commerce platforms, PIMs, and spreadsheets that do not talk to each other.

The result is not a lack of insight. It is the wrong insight, at the wrong time, from the wrong source. Procurement decisions made on yesterday's inventory. Pricing exceptions handled manually. Merchandising driven by gut instead of behavior data.

AI does not fix this. It amplifies it. Clean data architecture fixes this.

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Our Point of View

Intelligence Is an Operating Model,
Not a Toolset

Sustainable AI adoption requires more than technology. It requires an operating model that aligns people, data, governance, and economics.

McFadyen’s approach is built on years of research and implementation experience, including our reference work AI Best Practices for Commerce, which outlines how organizations move from vision to execution—and from experimentation to dependable intelligence.

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Data Foundations Before AI Promises

The distributors and manufacturers getting ROI from AI in 2025 are not the ones with the best models. They are the ones who did the unglamorous work first: normalized product attributes, unified pricing signals, connected their ERP to their commerce platform.

That is where we start. Every time.

How We Engage

From Readiness to Production

AI & Data Readiness Assessment

Audit of data infrastructure across completeness, governance, quality, and AI-readiness


AI use case identification and ROI prioritization


Gap analysis before any platform or tooling recommendation


Connects directly to the free AI Commerce Readiness Audit at audit.mcfadyen.ai

Data Strategy

Unified data platform approach and architecture


AI infrastructure gap assessment and prioritization


Data governance model and ownership framework


Commerce-centered: focused on data that drives revenue, margin, and cost-to-serve

PIM & MDM Implementation

Product Information Management implementation — Akeneo, Salsify, inRiver


Master Data Management integration with ERP and commerce platforms


Platform-native PIM configuration for B2B catalog complexity


Data quality baseline and ongoing governance model

Unified Data Platform Design

Architecture connecting commerce, ERP, OMS, CRM, and PIM


Data pipeline design — Snowflake, dbt, Fivetran, Azure Synapse, Google BigQuery


ETL/ELT implementation for operational reporting and AI model consumption

BI and data warehouse integration (Tableau, Power BI, Looker)

Product Catalog Data Enrichment

AI-assisted attribute enrichment across large B2B catalogs


Description generation calibrated to brand voice and buyer language


Semantic tagging for AI search and faceted navigation


Multi-language translation with commerce-specific accuracy


MSDS, safety, and regulatory attribute population

Decision Intelligence Layer

Pricing decision support — demand signals, competitive positioning, margin optimization


Inventory and fulfillment intelligence — stock risk, replenishment signals


Customer journey analytics — behavioral cohort analysis and funnel diagnostics


Marketplace Performance Management (MPM) — seller scoring, assortment gaps, pricing intelligence


Churn risk scoring and next-best-action recommendations

AI Governance & Data Ownership

Data ownership model — who owns which assets, how quality is enforced


Governance controls for AI-consumed data pipelines


Output monitoring, audit logging, and explainability framework


Regulatory and compliance alignment for data-driven AI systems

Experimentation & Optimization Infrastructure

Experimentation platform integration and testing infrastructure design


A/B and multivariate testing with statistical confidence frameworks


Optimization velocity tooling — more tests, faster learnings


Commerce performance measurement — conversion, retention, margin, cost-to-serve

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Where Decision Intelligence Delivers Value

Embedded Across the Commerce Lifecycle

  • Intelligent product discovery and personalization, including AI-powered search and recommendations calibrated to account, contract, and buying history
  • Pricing, promotion, and demand insights, including margin optimization and competitive positioning signals
  • Inventory and fulfillment optimization, including real-time stock risk, replenishment triggers, and multi-warehouse routing
  • Customer service and support intelligence, including ticket deflection, exception routing, and escalation prediction
  • Experimentation and optimization prioritization, enabling data-driven velocity on what to test next

The organizations that win are not the ones running more AI experiments. They are the ones whose entire operation runs on better signals. That is what this solution builds.

AI in Practice
Marketplace Performance Management (MPM)

For marketplace operators, the MPM dashboard provides seller performance scoring, assortment gap analysis, and pricing intelligence across the full seller network, turning marketplace data into operational decisions. Contact us about MPM dashboards built on real client implementations.

AI in Practice
Customer Journey Analytics

Behavioral cohort analysis, funnel diagnostics, and session-level commerce analytics, turning buyer behavior data into actionable merchandising and experience decisions. Know which paths convert, which segments churn, and where friction is costing you revenue.

Client Success

Data Intelligence in Practice

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Bay Supply

Commerce Analytics and Dashboard Intelligence

Bay Supply needed visibility into commerce performance data to make faster, more confident merchandising and operations decisions. McFadyen built analytics dashboards that surfaced actionable signals from their commerce and order data.

  • Commerce performance dashboards connecting order, catalog, and customer data
  • Data quality baseline established as foundation for AI-readiness
  • Merchandising insights surfaced from behavioral and transaction data
Learn More
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Online Chemicals Marketplace

Marketplace Performance Intelligence

The leading chemical company marketplace required data infrastructure and performance dashboards to manage seller performance, assortment gaps, and pricing intelligence across a complex multi-seller environment.

  • Marketplace performance management dashboard implementation
  • Seller performance scoring and assortment analytics
  • Pricing intelligence across multi-seller catalog
Learn More
WHO THIS IS FOR

Built for the B2B Organizations Where Data Silos Are Costing Revenue

IT & Data Engineering Leaders

Own the data infrastructure that AI requires. Need architecture that unifies ERP, OMS, PIM, and commerce data into a single queryable layer — without a multi-year data lake project.

Commerce & Digital Leaders

Accountable for AI-driven personalization, search, and optimization outcomes — and blocked by fragmented product data, inconsistent pricing signals, and ungoverned data pipelines.

Operations & Analytics Leaders

Responsible for inventory, pricing, and fulfillment performance — and need decision intelligence that surfaces signals in time to act, not just reports that describe what already happened.
Your Data Is Either Working for You or Against You. Find Out Which.
Get an instant, prioritized gap analysis across five data and AI readiness dimensions — free at audit.mcfadyen.ai. No sales call required.
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