I’ve spent enough years in the supply chain trenches to recognize a very expensive irony: we pour millions into advanced AI expecting supply chain nirvana, yet we fuel these state-of-the-art engines with fragmented, low-quality data. It is a spectacular way to waste an IT budget. I have seen firsthand how this “Garbage-In, Garbage-Out” cycle blinds us, rendering our priciest technologies virtually useless. We must stop treating our most valuable asset as a mere digital byproduct of transient software applications. I believe the only way to stop operating in the blind is to achieve “Data Readiness”—the strategic discipline where businesses actively structure and prioritize critical data so it is immediately accessible, high-quality, and actionable.
If you are tired of watching your ROI vanish into the ether while your teams struggle to get basic insights from their data, I urge you to read on. In this article, I share with you how severely this data readiness crisis is sabotaging our supply chains. Then, I lay out seven guiding principles to help you shift from digital chaos to rapid, informed decision-making. Lastly, I offer you a concrete, 5-step data readiness strategy to finally empower both decision-makers and your AI. Let’s get to work.
- 1. Our Lack of Data Readiness Is Why Supply Chains Lack Visibility and Operate in the Blind
- 2. Seven Principles for Data Readiness: The Shift from Digital Chaos to On-Demand Insights
- a. Data is a Permanent Strategic Asset
- b. Open Standards Drive On-Demand Access
- c. Enterprise-Led Data Security Policies
- d. A Single Source of Truth Across Boundaries
- e. Shared, Measurable Definitions Eliminate Ambiguity
- f. Unified Shipping Data Through a “Golden Thread” Identifier Across the Entire Lifecycle
- g. Rapid, Informed Decisions Are the True Measure of Progress
- 3. The 5-Step Data Ready Strategy to Empower Decision-Makers and AI
1. Our Lack of Data Readiness Is Why Supply Chains Lack Visibility and Operate in the Blind
When I look at modern supply chains, the root cause of our visibility crisis is glaringly obvious: our data is trapped in disconnected silos. Because we have historically allowed individual software applications to dictate how data is stored and formatted, we are left with complex, conflicting data models that cannot communicate. I constantly see procurement, logistics, and warehouse teams arguing over whose spreadsheet is correct during a disruption. The reason – no unified data structure. Without a data-ready foundation, we cannot track a shipment’s lifecycle or anticipate bottlenecks, forcing us to operate entirely in the blind. What we have is a data readiness gap. The reasons for these disconnects are as follows:
The Reasons Our Supply Chains Have a Data Readiness Gap
- Limited Interoperability. The sheer volume of disconnected sources within supply chains—from disparate carrier portals to legacy internal systems—refuse to speak the same language. These silos create a fragmented landscape where “the truth” depends entirely on which department you ask.
- Data Treated as a Software Byproduct. Because supply chains have historically prioritized software over data, departments struggle with their messy, substandard information. This application-centric mindset leaves data trapped in silos where it becomes incomplete, ambiguous, duplicated, and obsolete.
- Disjointed Shipping Data. Supply chain data, especially shipment-related data, is fragmented across countless systems like order fulfillment, TMS, and financial platforms. This creates a significant “linking” challenge for analysts and AI-powered systems.
- Isolated Analytics. Fragmented supply chain data forces data analytics into functional silos where BI dashboards merely report “what happened” in isolation. Then using different data sets, planners guess “what is likely to happen”.
- Slow-moving Insights. Too often, senior executives are left waiting for an “urgent” report that’s already three days late and two days irrelevant. As a result, too many “make-or-break” decisions rely on a mix of gut instinct and slow-motion analysis.
For a detailed breakdown of this data readiness gap, see my article, The Data Readiness Gap: Why Your Supply Chain is Blind and How to Fix It.
“Because we have historically allowed individual software applications to dictate how data is stored and formatted, we are left with complex, conflicting data models that cannot communicate.”
2. Seven Principles for Data Readiness: The Shift from Digital Chaos to On-Demand Insights
To break free from this digital chaos, we must fundamentally shift our approach and stop prioritizing software implementations over data integrity. We need to move forward with a disciplined, strategic approach to achieve a data-ready supply chain. More specifically, this needs to be a business-led approach. Data Readiness at its essence is where a business actively defines, structures, and prioritizes data so it is immediately accessible, high-quality, and actionable. To help supply chains achieve data readiness, I have identified seven guiding principles below. By following these principles, you will defrag your digital landscape, establishing a true single source of truth. Most importantly, you will empower both decision-makers and AI to seamlessly access data for rapid, informed decisions.
For a detailed explanation of these seven principles of data readiness, keep reading.
a. Data is a Permanent Strategic Asset
First, business leadership must fully realize they are the owners of their enterprise data, and start treating it as a permanent strategic asset. Because software and automation are transient, we can no longer be application-centric, allowing singular software systems exclusive control over our corporate data.
For example, when a Warehouse Management System (WMS) generates daily inventory movement logs, an application-centric approach leaves this data locked inside the WMS as a mere operational byproduct. By contrast, a data-ready organization extracts these logs, treating them as a permanent asset to be combined with external supplier data for predictive, network-wide insights.
For more on this topic, see my article, A Data-Centric Business: The Best Way To Agility, One Truth, Simplicity, Technology Innovation.
b. Open Standards Drive On-Demand Access
Seamless data access is driven by open industry standards, breaking down proprietary barriers. Moreover, business leaders must prioritize their data by criticality in order to both achieve on-demand access to decisive insights and preserve the efficient use of resources. For example, rather than relying on a vendor’s proprietary interface that restricts data flow, an organization adopts open industry standards, allowing its systems to instantly pull critical, up-to-date inventory levels across all warehouses the moment a supply disruption occurs. No more waiting, no more dumb decisions. Without a doubt, if we are going to move away from “dumb integrations”, we need to minimize the use of proprietary data interfaces, thus, avoiding data lock-in that comes from customization.
For more on open data standards versus customized integrations, see my articles, The Reasons that Data Integrity Loses Value From Dumb Integrations and Data Interoperability For Supply Chains.
c. Enterprise-Led Data Security Policies
Without a doubt, the enterprise—not individual software applications or isolated departments—must set and enforce unified data security policies. This centralized approach streamlines data access while rigorously safeguarding our assets. For example, consider a scenario where a warehouse management system and a transportation management system dictate their own conflicting user access rules. The result is no or slow data access. However, under corporate-wide security policies, the enterprise overrides these data silos by implementing a single, unified digital identity framework that securely grants decision-makers immediate access to both systems.
For more on this topic, see my article, Best Use Of Digital Identity Technology In The Supply Chain.
d. A Single Source of Truth Across Boundaries
Supply chain decision-making now transcends organizations and departments. Robust data linkage across all systems and functions is needed to eliminate data duplication and establish a trusted Single Source of Truth (SSOT). For example, when a global disruption hits, procurement and logistics teams often argue over whose spreadsheet is correct. By establishing a seamlessly linked, cross-departmental data model, the enterprise has one undisputed view of inbound materials, eliminating conflicting reports. Below are the advantages of a supply chain having a Single Source of Truth.
The Enterprise-Wide Single Source of Truth (SSOT) Imperative
- 360-Degree Shipment Visibility: First, true supply chain visibility spans entire shipment lifecycles. It’s more than just “Where’s My Stuff?”visibility. It extends from initial forecast through execution and final payment. By establishing an SSOT, supply chains achieve a complete, 360-degree view of data that permanently eliminates operational blind spots. For more on this topic, see my article, The Best Shipment Visibility: One Source Of Truth Framework For Better Planning, Execution, Post-Analysis
- Exploit Data-Intensive Technology Like AI: AI and other data-intensive technologies are completely useless without a foundation of high-quality, unified data. An SSOT provides the rigorous data integrity required to fully exploit these advanced technologies, transforming raw information into rapid, actionable insights. For more on this topic, see my article, The Data Interoperability Challenge For Supply Chains: 12 Reasons For It And Why Tech Will Never Overcome It Alone.
- Insightful Data that is Accessible and Secure: To establish an effective, enterprise-wide SSOT, it must also be accessible and secure. This is where a corporate-level data management strategy is essential. However, data management must empower rather than restrict decision-makers. This is done by businesses enabling both rapid data access and smart enterprise-level data security. For more on this topic, Traditional Enterprise Data Management Is Floundering To Make Business Data More Valuable, Accessible, And Secure.
e. Shared, Measurable Definitions Eliminate Ambiguity
To prevent the “Garbage-In, Garbage-Out” cycle, data used for decision-making must possess a shared, measurable definition. Critical business terms need more specificity than everyday dictionary definitions. We must eliminate ambiguity so that our analytics and AI tools can deliver reliable insights.
For example, If a fulfillment center defines “On-Time Delivery” differently than the freight auditing software, AI tools as well as humans will generate conflicting insights. Establishing a shared business glossary with a measurable set of definitions eliminates this ambiguity and stops the “Garbage-In, Garbage-Out” cycle.
For more on this topic, see my article, Poor Operational Definitions Impede Supply Chain Tech Adoption.
f. Unified Shipping Data Through a “Golden Thread” Identifier Across the Entire Lifecycle
Because supply chain data, especially shipping data, is trapped in disjointed systems, critical decisions are made in isolation, leading to costly consequences. What we have is a missing link. What we need is a “golden thread”, a shipper-generated ID to unify all shipping data for a shipment – from forecasting and planning through execution, payment, and post-analysis. This shipper’s reference ID (such as a Transport Unit Identifier) binds the entire shipment lifecycle and associated shipping data. The use of this unifying ID, builds an Interlinked Shipping Data Framework, resulting in visibility over shipping data lifecycles. This is the way to deliver truly actionable insights, and finally unlock the full potential of AI and analytics for supply chains.
For example, a shipper or their representative assigns a standardized Transport Unit Identifier (TUID) to their shipment load requirement during their planning phase. As a result, a supply chain can track every shipment load seamlessly. This shipping data traceability goes from load tendering through carrier shipment execution, final freight payment, post-analysis performance reviews, and back to planning without ever losing the data linkage. For more on how you can implement an Interlinked Shipping Data Framework in your supply chain, see my article, Mastering The Shipping Data Life Cycle: The Way To A Complete View Of The Truth.
g. Rapid, Informed Decisions Are the True Measure of Progress
I firmly believe that we must stop measuring IT success by software deployments, system go-lives, or hardware milestones. Instead of IT milestones, the ultimate metric for any information technology initiative is its ability to deliver on-demand insights. If our data does not immediately empower decision-makers and AI to make rapid, informed decisions, the initiative has failed—regardless of how sophisticated the technology might be.
For example, when launching a new shipment visibility platform, business leadership must expand the project’s success criteria beyond milestone events such as the scheduled software release date. In this case, the true measure of ROI for the IT project becomes how rapidly a decision-maker can use the system to access on-demand data. With immediate access, a shipper can take action such as rerouting a delayed shipment, reducing decision time from days to minutes. For more insights on data-ready guidelines for IT, see my article, Data-Ready Guidelines for IT Projects: Delivering On-Demand, Cost-Effective Insights to Every Decision-Maker.
“Data Readiness at its essence is where a business actively defines, structures, and prioritizes data so it is immediately accessible, high-quality, and actionable.”
3. The 5-Step Data Ready Strategy to Empower Decision-Makers and AI
Recognizing the problem and adopting the principles is only the beginning; execution is where true transformation happens. To help organizations operationalize this shift, I have outlined a 5-Step Data Ready Strategy – a no-nonsense approach to move your organization from data chaos to a digital framework that produces on-demand, cost-effective insights. This data-first approach includes establishing enterprise-wide data-ready criteria for IT projects and driving consensus on key business terminology. Also, this checklist, see below, includes steps for executives to keep their data-ready strategy on track.
5-Step Data-Ready Strategy Checklist
- Executive Commitment: Pivoting IT strategy from software-first to data-first
- Setting the Standard: Defining “Data-Ready” protocols for IT projects.
- Commit to Universal Taxonomies: Establishing a common business terms and definitions for humans and AI
- Executive Stewardship: Empower the enterprise with a data-first strategy
- Reallocating IT Investment: Building data-ready infrastructure versus legacy application silos
For a detailed breakout of this data-ready strategy for businesses, see my article, The Data-Ready Shift: A 5-Step Strategy for Trusted, On-Demand, and Cost-Effective Insights.
“a 5-Step Data Ready Strategy – a no-nonsense approach to move your organization from data chaos to a digital framework that produces on-demand, cost-effective insights.”
More References:
- Shipping Data Quality: Poor Shipping Data – Here Are The 4 Reasons Impeding High Tech Visibility And Actionable Analytics
- Data Readiness for Decision-Making: Be Data Ready: It’s About Relevant Information — Targeted and Timely — for the Best Business Decisions
- Multi-Hop Reasoning: Multi-Hop Reasoning For Supply Chains: This Is The Way To Make Better Decisions And Avoid Unintended Consequences
- Data Readiness: Datactics’ article, What is Data Readiness and Why Is It Important?
- Data Interoperability: Logistics Data Interoperability: Advice To Make It Understandable, Usable, Secure
- Digital Transformation:Digital Supply Chain Transformations Require Innovation: Here Is Some Advice for Executives That Will Make It Happen
For more from SC Tech Insights, see the latest articles on Data Readiness.
Need help with an innovative solution to make your supply chain data ready? I’m Randy McClure, and I’ve spent many years solving data readiness challenges to help decision-makers gain better, faster insights and for organizations to leverage data-intensive technologies. As a supply chain tech advisor, I’ve implemented hundreds of successful projects across all transportation modes, working with the data of thousands of shippers, carriers, and 3rd party logistics (3PL) providers. I specialize in pilot projects and program management for emerging technologies. If you’re ready to modernize your data infrastructure or if you are a solution provider, let’s talk. To reach me, click here to access my contact form or you can find me on LinkedIn.
Greetings! As a supply chain tech advisor with 30+ years of hands-on experience, I take great pleasure in providing actionable insights and solutions to industry leaders. My focus is on supply chains leveraging emerging LogTech. I zero in on tech opportunities and those critical issues that are solvable, but not well addressed, offering industry executives clear paths to resolution. I have a wide range of experience to include successfully leading the development of 100s of innovative software solutions across supply chains and delivering business intelligence (BI) solutions to 1,000s of shippers. Click here for more info.