Learner and leader curious about tech x edu, future of work, and education. Director of Technology and Co-Founder @Ed3dao | Founder of Peck Education LLC
So excited to begin exploring the new frontier of web3 and its pending impacts on education, the future of work, and technology. Join me via wordpress or https://t.co/duYiXzRHz0. https://t.co/qxiWwEg7RU
⚡️Satya is describing the new balance sheet of the firm.
The old firm owned people, processes, software, customer relationships, brand, data, and IP.
The new firm will own a compounding cognition loop.
Every workflow becomes a training surface. Every decision becomes a trace. Every expert judgment becomes reusable signal. Every internal correction becomes model improvement. Every model run becomes a chance to turn human judgment into institutional intelligence.
That is what “token capital” really means.
It is accumulated machine-operable cognition. A company’s expertise becomes executable, queryable, evaluable, improvable, and portable across models.
That is a massive shift.
The most important line is the one about switching out the generalist model without losing the company veteran expertise. That is the entire enterprise AI war. Model providers want the firm’s knowledge to flow into the model layer.
Enterprises need that knowledge to stay inside their own loop.
Whoever owns the loop owns the future economic rent.
Satya is laying out Microsoft’s answer to the frontier-model monopoly problem.
If all company knowledge flows upward into a few foundation models, the foundation model labs become landlords of the entire economy. They absorb everyone’s expertise, commoditize every workflow, and capture the value created by every firm’s learning process. That equilibrium will trigger political backlash, customer resistance, regulatory pressure, and corporate revolt.
So Microsoft’s doctrine is: every company should build its own AI learning system on top of frontier models, while Microsoft owns the infrastructure where that happens.
That is elegant and self-serving.
Microsoft does not need to own the single best frontier model forever. It needs to own the enterprise control plane: identity, security, permissions, data, workflow, evals, agents, memory, developer tools, cloud, compliance, and model routing. If the model becomes swappable, the platform underneath the firm’s learning loop becomes the durable asset.
Satya is quietly saying the frontier model alone is unstable. A world of a few models eating every company’s expertise breaks the political economy. A world where every company builds firm-specific AI capital on top of models is more stable, more defensible, and much better for Microsoft.
The “human capital gets more valuable” line is partly true and partly corporate diplomacy.
High-agency humans become more valuable. People with taste, judgment, relationships, domain intuition, ambition, and the ability to direct agentic systems become much more valuable.
Routine cognitive labor loses bargaining power.
The future firm does not need every human equally. It needs humans who can generate high-quality signal for the loop. The human becomes a trainer, judge, strategist, relationship node, taste layer, and goal-setter. The work that cannot feed the loop or direct the loop gets compressed.
This also connects directly to the Anthropic crisis.
If frontier model access can be restricted, pulled, nationality-gated, or subordinated to state power, then enterprises cannot allow their intelligence layer to live entirely inside one external model. They need portability. They need private evals. They need internal memory. They need their own traces. They need model-agnostic learning systems.
The model can change.
The firm’s cognition loop has to survive.
That is the new sovereignty test.
A company that only buys AI access is a renter.
A company that turns its workflows, judgments, corrections, and outcomes into a private learning loop is building capital.
The deeper implication: the future economy splits between firms that compound cognition and firms that leak cognition.
Firms that compound cognition will get stronger every time they operate.
Models are getting smaller and faster in a way that is hard to comprehend. The implications we're only beginning to understand, though a safe bet is we're moving towards a world of ambient AI.
📍 Local AI Worker, Not Local Authority
I tested Gemma 4 12B on one M2 Pro Mac mini.
11.9B Q4_K_M
100% GPU
~14.4 tok/sec
8.1 GB resident
It works.
But the real takeaway is not “local AI replaces cloud AI.”
It is this:
local models are now fast enough to become private workers behind a governed backend relay.
They should annotate artifacts, pre-process memory candidates, and QA visual specs.
They should not touch credentials, MCP secrets, or backend-only tools.
The model does the local perception.
The relay keeps the authority.
My first piece just published with District Administration
Most AI conversations in schools assume everyone is solving the same problem.
Principals and superintendents need fundamentally different frames for AI. One is operational. One is systemic.
Until you name the gap, implementation stalls.
Check out the full article here: https://t.co/SmtFaxWpjS
I don’t think people have fully absorbed just how big the declines in student enrollment are going to be.
Eight states are projected to experience DOUBLE DIGIT declines by 2031.
@sarahdingwang@clairevo I've been following @jessegenet for a while (@clairevo more recently) and appreciate how they're thinking about AI as a tool to solve problems. Was a super interesting conversation and brough a very different perspective to the value of AI to the table.
The more enterprises I talk to about AI agent transformation, the more it’s clear that there is going to be a new type of role in most enterprises going forward. The job is to be the agent deployer and manager in teams. Here’s the rough JD:
This person will need to figure out what are the highest leverage set of workflows on a team are (either existing or new ones) where agents can actually drive significantly more value for the team and company.
In general, it’s going to be in areas where if you threw compute (in the form of agents) at a task you could either execute it 100X faster or do it 100X more times than before. Examples would be processing orders of magnitude more leads to hand them off to reps with extra customer signal, automating a contracting review and intake process, streamlining a client onboarding process to reduce as many straps as possible, setting up knowledge bases than the whole company taps into, and so on.
This person’s job is to figure out what the future state workflow needs to look like to drive this new form of automation, and how to connect up the various existing or new systems in such a way that this can be fulfilled. The gnarly part of the work is mapping structured and unstructured data flows, figuring out the ideal workflow, getting the agent the context it needs to do the work properly, figuring out where the human interfaces with the agent and at what steps, manages evals and reviews after any major model or data change, and runs and manages the agents on an ongoing basis tracking KPIs, and so on.
The person must be good at mapping the process and understanding where the value could be unlocked and be relatively technical, and has full autonomy to connect up business systems and drive automation. This means they’re comfortable with skills, MCP, CLIs, and so on, and the company believes it’s safe for them to do so. But also great operationally and at business.
It may be an existing person repositioned, or a totally net new person in the company. There will likely need to be one or more of these people on every team, so it’s not a centralized role per se. It may rile up into IT or an AI team, or live in the function and just have checkpoints with a central function.
This would also be a fantastic job for next gen hires who are leaning into AI, and are technical, to be able to go into. And for anyone concerned about engineers in the future, this will be an obvious area for these skills as well.
>be AI twitter
> post the biggest thing ever in AI
> world is upending
> insert dicaprio inception meme
> you can save yourself by reading my newsletter
@karelvuong@samjvuong Sure! We starting purchasing them for him when he was about 6months. They would send a kit, I think, quarterly with increasingly complex toys (for lack of better word). We stopped when he hit 2 because we had so many toys and really ran out of space.
Teachers are using AI to plan lessons faster.
Students are using AI to finish assignments faster.
Via @EdWeekEdTech
61% of teachers now use AI in their work.
52% of teens say AI on assignments should be encouraged.
Let that tension sink in
I've gotten more done in 30 minutes with Hermes via @NousResearch than I did in 3 weeks with @openclaw. Borrowing from @Zeneca but it just works. Looking forward to building a Chief of Staff.