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š What Google doesnāt tell you (and how to fill the gaps)
AI found 200 suppliers. Hereās how we picked the right 3

Hi, and happy Tuesday.
Letās talk about suppliers.
Theyāre the quiet backbone of your productsābut often the shakiest part of your value chain.
From tariffs and regulations to unexpected shutdowns, clients are asking us the same question over and over again.
How do we future-proof our supply chains?
Hereās what weāve learned from helping dozens of companiesāfrom global CPG brands to chemicals and materials giantsāunmask the real story behind suppliers.
IN THE SPOTLIGHT
In a recent interview, I spoke to two industry pros whoāve each worked on hundreds of projects, helping the worldās top companies with their supplier challenges.
- Marija JoviÄ, Technical Director of Chemicals, Materials and Packaging at PreScouter 
- Daniel Morales, Technical Director of Consumer Packaged Goods at PreScouter 
The first thing weāre seeing: supplier needs are shifting.
Gone are the days of simply asking āWho can make X?ā
Now itās: āWho can make X, in a low-carbon way, in a different geography, with verified track record and resilience to regulatory risk?ā
āWeāve seen a huge uptick in supplier searches driven by sustainability goals, EPR legislation, and even AI-readiness of software tools used in supply chains.ā
āItās not just regulatory pressureāitās companies wanting to lead with integrity. They want real sustainability, not just compliance.ā
Roundtable: AI + How to Triangulate Suppliers Amid Tariffs
š„Join us next week to dive into this topic with peers, at our PreScouter Executive Roundtable! Tue 6th May, 10am PT / 1pm ET / 7pm CET.
Case in point: low-carbon alternatives.
One recent project tackled a massive challengeāreplacing high-volume raw materials with lower-carbon equivalents. The goal: keep performance, cut emissions.
We didnāt just surface a couple options. We found over 100 viable replacements - 90% of which were already commercially available. That surprised even us. It showed how much innovation is already out there - if you look deep enough.
We also mapped pilot-scale and emerging solutions, creating a full landscape from now to next. The whole thing went straight to procurement.
A mapping of supplier capacities, when they have come online previously, and when future capacity is expected.
What makes supplier work hard?
Itās not the search - itās the evaluation.
Every client has their own stack of criteria: Cost. Lead time. COā impact. Certifications. Use case relevance. Compatibility with existing lines. Sometimes 20+ parameters.
PreScouterās job? Separate must-haves from nice-to-haves, and design a scoring framework to narrow hundreds of options into 3ā5 top candidates.
Then the team verifies the claims.
āMost of the important dataāprice, capacity, reliabilityāisnāt public. We get it through anonymous outreach and subject matter expert interviews.ā
Sometimes, that includes requesting samples for client testing. Especially with startups, you canāt take their āyesā at face value. And a pretty website doesnāt mean reliable performance.
So how do we go from shortlisting to selection?
We look beyond the datasheet.
 Do they have relevant case studies? Are their certifications real?
Have they worked with similar clientsāor are they just eager and unproven? 
And perhaps most revealing: What do experts in the field say about them?
āWe often interview industry insiders whoāve worked with the supplier. Theyāll tell us about delivery delays, adaptability, customer serviceāand even red flags like past legal battles.ā
Where AI fits in
AI has become an accelerant, but not a replacement.
It helps us scan thousands of pages, websites, filings, and spec sheets. It clusters suppliers, flags risks, and even helps build supply chain roadmaps to anticipate issues 5 years down the line.
But itās only as good as the data it can access.
āThe better a supplierās site, the better the AI performs. But ironically, the best suppliers are sometimes the least visible.ā
Which is why we still rely on human judgment and interviews to surface the real gems.
What happens after you pick a supplier?
This is where things get nuanced.
We donāt just hand over names. The PreScouter team supports sample testing, facilitates anonymous introductions, manages NDAs, and even guides early prototyping and scale-up conversations.
In other words: the team bridges that final mileāfrom supplier match to real-world validation.
Whatās next?
Hereās where things get exciting.
Weāre seeing clients tap into legacy knowledge - lab notebooks, old supplier lists, internal notes - then run AI over it to surface lost insights.
One client rediscovered a high-potential supplier theyād worked with years ago - one no one in the current team remembered. Thatās the power of putting data to work.
Example value-chain analysis
 PreScouter is also helping clients build systems for continuous monitoring:
Where AI runs in the background, watching for signals like IP filings, capacity shifts, or regulatory changes - and flags when itās time to revisit the supplier pool. 
 This is what unmasking suppliers really looks like:
 Itās detective work. Strategic foresight. A blend of AI, science, and judgment.
And itās something we love doing.
Could this framework be effective for you?
š„Join us next week to dive into supplier scouting with peers, at our PreScouter Executive Roundtable! Tue 6th Mao, 10am PT / 1pm ET / 7pm CET.
Until next time,
Dino 
P.S. If this was useful, consider forwarding it to someone in procurement, supply chain, or product development. Or better yet, share it on LinkedIn and tag us.
