Crucial concept in AI proper now is probably not coming from a analysis paper, a mannequin launch, or a benchmark. It might be coming from a short essay published by Microsoft CEO Satya Nadella.
In it, Nadella argues that the way forward for the agency will rely upon one thing he calls the interplay between human capital and token capital: the information, judgment, relationships, and ingenuity of individuals on one facet, and the AI functionality organizations construct and personal on the opposite.
The terminology is new. The underlying remark shouldn’t be. Over the past a number of months, in a sequence of articles that started with the argument that large language models were never designed to run companies, continued via the concept that enterprise AI must move from answers to outcomes, and finally arrived on the conclusion that enterprise AI is still waiting for its equivalent of the World Wide Web, I’ve been making a associated level: The central problem of enterprise AI shouldn’t be intelligence itself—it’s structure.
What makes Nadella’s essay attention-grabbing is that it arrives at most of the identical conclusions from a very completely different course.
As a result of in case you comply with his argument rigorously, it results in a conclusion that a lot of the enterprise AI trade nonetheless appears reluctant to confront: the way forward for enterprise AI shouldn’t be the mannequin. It’s the studying loop.
The shift from intelligence to compounding intelligence
Essentially the most revealing sentence in Nadella’s essay could also be this one:
“The actual alternative shouldn’t be in selecting the perfect mannequin however as an alternative in constructing a studying loop on high of fashions the place human capital and token capital compound.”
That may be a refined assertion. And a profound one.
For the final two years, enterprise AI conversations have largely revolved round mannequin functionality. Which mannequin causes higher? Which mannequin writes higher code? Which mannequin has the biggest context window? Which mannequin tops the benchmark rankings?
These questions matter. However they implicitly assume that intelligence itself is the scarce useful resource. More and more, it isn’t.
The frontier fashions being developed by OpenAI, Anthropic, Google, Meta, xAI, and others proceed to enhance at exceptional pace. Each few months, capabilities that appeared extraordinary turn into atypical.
The intelligence layer is changing into plentiful. And when a useful resource turns into plentiful, consideration shifts to the system that organizes it. Electrical energy turned infrastructure. Computing turned infrastructure. Networking turned infrastructure. The identical factor seems to be occurring to intelligence.
As I argued not too long ago in “The next enterprise AI breakthrough will look obvious in retrospect,” a very powerful query is changing into much less about which mannequin is smartest and extra about how intelligence is organized, deployed, ruled, measured, and repeatedly improved contained in the enterprise.
That may be a basically completely different query.
The corporate veteran drawback
One other concept in Nadella’s essay deserves consideration: He argues that organizations ought to be capable to substitute a general-purpose mannequin with out dropping the experience gathered inside their techniques.
His phrase is memorable: The corporate ought to retain its “firm veteran” experience. Once more, this sounds apparent . . . however it’s surprisingly uncommon in at the moment’s AI architectures.
Most enterprise AI initiatives nonetheless rely closely on capabilities that stay contained in the mannequin itself. Enhance the mannequin and also you enhance the system. Substitute the mannequin and also you danger dropping conduct, adaptation, and gathered studying.
Nadella is pointing towards a distinct structure: one by which the sturdy asset shouldn’t be the mannequin, it’s the studying system surrounding the mannequin.
That is remarkably just like what occurred in earlier platform transitions: Firms don’t rebuild their ERP techniques each time databases enhance. They don’t redesign their CRM methods each time processors turn into quicker. The sturdy asset lives above the infrastructure.
AI seems to be transferring in the identical course: The mannequin improves, the training loop persists.
The return of suggestions
Essentially the most hanging a part of Nadella’s essay is that it quietly reintroduces an idea that has been surprisingly absent from a lot of the AI dialog:
- Suggestions
- Non-public evaluations
- Non-public reinforcement studying environments
- Enchancment towards enterprise outcomes slightly than benchmark scores
These concepts share a standard theme: They’re all mechanisms for connecting motion to end result. And that’s exactly the place many enterprise AI techniques nonetheless battle.
In “After the illusion: what enterprise AI must become,” I argued that the trade had optimized AI to reply questions when corporations really need techniques that change outcomes. The excellence sounds semantic till you notice that outputs will be generated with out ever realizing whether or not they mattered. Outcomes can’t.
The second a system begins measuring whether or not its actions moved the group nearer to its aims, one thing modifications: The system stops being merely generative, and it turns into adaptive. And adaptation compounds.
This isn’t a brand new concept in laptop science. Programs comparable to DeepMind’s AlphaGo and AlphaZero demonstrated years in the past that suggestions loops can produce extraordinary capabilities when intelligence is linked on to aims slightly than merely to prediction.
What’s new is the potential of making use of related rules to enterprises themselves.
The ecosystem query
The ultimate part of Nadella’s essay could also be a very powerful: he argues {that a} world the place all worth accrues to a handful of basis fashions shouldn’t be economically or politically steady.
He’s proper: Each profitable computing period finally produced an ecosystem. The PC created software program corporations. The online created digital companies. The cloud created whole industries. The platform turned useful as a result of worth gathered on high of it, not as a result of all worth remained trapped inside it. This argument aligns carefully with what I described in “Enterprise AI is in 1991. Where’s its web?”
The web labored earlier than the net: TCP/IP existed, e-mail existed, FTP existed. . . . What was lacking was the layer that made these applied sciences consumable by atypical organizations.
Enterprise AI at the moment feels remarkably related. The infrastructure is actual. The capabilities are actual. However the layer that enables organizations to construct sturdy worth on high of that infrastructure stays incomplete.
The businesses that finally outline the following part of enterprise AI is probably not those constructing probably the most highly effective fashions: They could be the ones constructing the techniques that enable each group to transform intelligence into compounding institutional information.
The following query
For this reason I feel Nadella’s essay issues. Not as a result of it gives solutions, however as a result of it asks the fitting query: If intelligence is changing into plentiful, the place does sturdy benefit come from?
His reply is the training loop, and I feel he’s completely proper. The following chapter of enterprise AI is not going to be outlined by which mannequin wins—it will likely be outlined by which architectures enable organizations to show human information into techniques that study, enhance, and compound over time.
The businesses that determine that out is not going to merely be utilizing AI, they are going to be constructing a brand new type of organizational capital.
And that will turn into a very powerful asset of the AI period.

