
My neighbor runs purchasing for a regional grocery chain. Sixteen stores across three states. We were grilling last weekend and she starts telling me about February. One of their main produce distributors had a warehouse fire. No warning obviously. Suddenly forty percent of their fresh vegetables disappeared from the supply pipeline overnight.
Here’s what got me though. She said they recovered in four days. Four days from total chaos to basically normal operations. I asked how. She laughed and said five years ago it would’ve taken three weeks minimum. The difference now is they actually know what’s happening across their network in real time. Their team started using AI solutions in supply chain operations about eighteen months back and she said it completely changed how fast they can spot problems and reroute orders. Before that they were basically flying blind – calling vendors manually, checking spreadsheets, hoping someone noticed issues before stores ran out of product. Now the system flags potential shortages before they become actual shortages. Doesn’t prevent every problem obviously. But it shrinks the damage window dramatically.
Weird thing about supply chain management – how many businesses run on gut feelings and historical patterns. We ordered this much last October so we’ll order the same this October. This vendor was reliable for five years so they’ll stay reliable.
That worked when the world was predictable. Doesn’t work anymore. Pandemic shutdowns. Container chaos. Weather disasters. Political tensions disrupting trade. The hits keep coming faster from unexpected directions. Yet I talk to operations people who still lack basic visibility. They know what shipped yesterday. Can’t tell you what’s likely going wrong next week. That gap is where disruptions live.
Let me be concrete because vague advice helps nobody.
You cannot plan around problems you don’t see coming. Sounds obvious. Most companies fail here anyway. They have data scattered across seventeen different systems that don’t talk to each other. Purchasing knows one thing. Logistics knows another. Warehousing knows a third. Nobody has the complete picture. First step is always connecting these information silos. Boring work. Essential work.
| What companies typically do | What actually helps during disruptions |
| Pick cheapest vendor and forget about them | Know your vendors’ capacity constraints and backup options |
| Single source for cost efficiency | Multiple qualified sources even if slightly more expensive |
| Communicate only when ordering | Regular check-ins that surface problems early |
| Treat logistics as commodity service | Partnerships where carriers prioritize your freight |
| Wait for annual reviews to assess performance | Continuous monitoring with fast feedback loops |
My neighbor’s grocery chain survived their produce crisis because they already had relationships with three backup distributors. Not contracts sitting in a drawer. Actual working relationships where people knew each other and could make phone calls that got answered immediately.
Traditional planning focuses on forecasting what customers will want. How many units. Which products. What timing. That matters obviously. But smarter planning also asks: what happens if our main container ship gets delayed two weeks? What if that Texas warehouse floods again? What if our biggest supplier suddenly can’t deliver?
Running these scenarios regularly – actually gaming them out with real numbers – changes how you think about inventory buffers and supplier diversity. Most companies only do this after a disaster. The good ones do it constantly.
Everybody talks about AI and machine learning and predictive analytics. Fine. These tools help when implemented properly. They spot patterns humans miss. They process more variables than spreadsheets. They flag anomalies faster than manual review.
But technology only works if underlying operations make sense. Garbage processes with fancy software still produce garbage. I’ve seen companies spend millions on planning systems and then ignore them because “that’s not how we do things.” Technology amplifies whatever you already have. Good operations become great. Bad operations become expensive bad operations.
Complete supply chain transformation sounds overwhelming because it is. Nobody does it all at once. Better approach: pick your biggest vulnerability. The supplier that scares you. The route with constant problems. The inventory that always surprises you.
Fix that one thing. Build visibility there. Create backup options. Test your response plan. Then pick the next thing. Resilience builds incrementally.
My neighbor didn’t overhaul everything at once. Started with produce because spoilage costs hit hardest. Got that working. Moved to dairy. Then frozen. Three years of steady improvement, not one dramatic transformation. Now when warehouses burn down – apparently they do – her team knows what to do and has options within hours instead of weeks. That’s smarter operational planning. Not perfect prediction. Not preventing every problem. Just seeing issues faster and having more ways to respond.









