Advanced Sourcing Yesterday — No Gen-AI Needed!

Back in late 2018 and early 2019, before the GENizah Artificial Idiocy craze began, the doctor did a sequence of AI Series (totalling 22 articles) on Spend Matters on AI in X Today, Tomorrow, and The Day After Tomorrow for Procurement, Sourcing, Sourcing Optimization, Supplier Discovery, and Supplier Management. All of which was implemented, about to be implemented, capable of being implemented, and most definitely not doable with, Gen-AI.

To make it abundantly clear that you don’t need Gen-AI for any advanced enterprise back-office (fin)tech application, and that, in fact, you should never even consider it for advanced tech in these categories (because it cannot reason, cannot guarantee consistency, and confidence on the quality of its outputs can’t even be measured), we’re going to talk about all the advanced features enabled by Assisted and Augmented Intelligence (as we don’t really have true appercipient [cognitive] intelligence or autonomous intelligence, and we’d need at least autonomous intelligence to really call a system artificially intelligent — the doctor described the levels in a 2020 Spend Matters article on how Artificial intelligence levels show AI is not created equal. Do you know what the vendor is selling?) that have been available for years (if you looked for, and found, the right best-of-breed systems [many of which are the hidden gems in the Mega Map]). And we’re going to continue with Sourcing. (Find our series on Advanced Procurement — No Gen-AI Needed! Yesterday, Today, and Tomorrow at the following links.)

Unlike prior series, we’re going to mention some of the traditional, sound, ML/AI technologies that are, or can, be used to implement the advanced capabilities that are currently found, or will soon be found, in Source-to-Pay technologies that are truly AI-enhanced. (Which, FYI, might not match one-to-one with what the doctor chronicled five years ago because, like time, tech marches on.)

Today we start with AI-Enhanced Sourcing that was available yesterday (and, in fact, for at least the past 5 years if you go back and read the doctor‘s original series, which will provide a lot more detail on each capability we’re discussing. (This article sort of corresponds with AI in Sourcing Today that was published in January, 2019 on Spend Matters.)

YESTERDAY

Workflow / Project Automation

Once a sourcing project is defined, which typically consists of identifying the required products and demand, the critical requirements of the supplier pool, the RFI, the RFP/Q, the evaluation criteria and weightings, the award rules, and the initial award offers, the entire project is easily automated using rules-based automation. Best-of-breed platforms will integrate fuzzy matching to identify additional suppliers who provide similar SKUs, RFI/P/Q templates which will automatically be pulled in and modified based upon the particular items in the category and organizational risk/compliance rules using semantic characteristic matching (traditional NLP will be fine), and built in “cherry-pick” algorithms that will compute standard award scenarios (lowest price, max 3 suppliers, geo-split, etc.) and create a default recommendation — which only requires math and traditional analytics.

Auto-Fill

For the better part of the past decade, the best platform auto-fills not just successive rounds, but auto-fills / pre-populates all of the supplier, item, and RFI data based on available information in all integrated systems — be it from past events, the supplier master, the forecasting platform, or market(place) data (for products).

This just requires rules-based automation and workflow with reg-ex pattern matching, and simple trend analysis and market data matching for price / demand population. Easy peasy on the tech ladder.

Outlier Identification

As we wrote years ago, it only takes one bad data element to make a good sourcing process go bad. Just one. One bid too low that takes a buyer down the wrong path. One risk rating too high that steers a buyer away from what would be their best supplier. One demand error that steers the best supplier away. But all of these “outliers” can be easily detected with traditional mathematical clustering algorithms used as the back-bone of machine learning — k-means, nearest neighbour, etc. — and identifying any values too far off the norm and then alerting the buyer to (have the supplier) correct them.

Rule-Based Auto-Award Identification

For simple scenarios where it’s always lowest cost, simple mathematical calculations can identify the supplier-item awards, and these can be limited to a max # of suppliers as then it’s just computing some combinations. No “AI” required.

SUMMARY

Now, we realize this was very brief, but again, that’s because this is not new tech, that was available long before Gen-AI, which should be native in the majority (if not the entirety) to any true best-of-breed Sourcing platform, that is easy to understand — and that was described in detail in the doctor‘s 2019 article for those who wish to dive deeper. The whole point was to explain how traditional ML methods enable all of this, with ease, it just takes human intelligence (HI!) to define and code it.