The future of the firm is a learning loop in which human capital and token capital compound. With our new Frontier Co., our ambition is to help every enterprise build its own AI capability, and to… Frontier Co. launches to help enterprises build their own AI systems that continuously improve by turning knowledge, workflows, and judgment into learning loops. The initiative emphasizes capturing decision rationale as data and treating data and compute sovereignty as core strategy for competitive advantage. The future of the firm is a learning loop in which human capital and token capital compound. With our new Frontier Co., our ambition is to help every enterprise build its own AI capability, and to help create a frontier ecosystem where every organization can turn its knowledge, workflows, and judgment into its own AI systems that continuously improve. https://lnkd.in/gzav8TPa https://www.linkedin.com/redir/redirect?url=https%3A%2F%2Flnkd%2Ein%2Fgzav8TPa&urlhash=V-PJ&trk=public post-text Han Z. https://www.linkedin.com/in/hanzhang317?trk=public post comment actor-name 2h The line I'd underline is turning judgment into systems that keep improving. In most enterprises that judgment isn't written down anywhere. It lives with the person who just knows which exceptions to approve and which to escalate. A learning loop only compounds if it has labeled outcomes to learn from. So the practical first move is capturing the why behind decisions as they happen, not reconstructing it months later. The teams already treating that context as data, instead of leaving it in Slack threads and someone's memory, get a real head start. The infrastructure side of this loop matters more than people realize. Turning an organization's own knowledge and workflows into a compounding AI system means that knowledge, and the models trained on it, becomes one of the most sensitive assets a company owns. Where that training and inference actually runs, whose cloud, whose jurisdiction, whose hardware, is no longer just an IT decision, it's part of how much of that competitive advantage a company actually keeps. The firms that treat data and compute sovereignty as core strategy will compound faster and safer than the ones that just plug into someone else's platform. Jose Walter https://www.linkedin.com/in/jose-walter-30009586?trk=public post comment actor-name 4d The real shift isn’t that every firm will use AI — it’s that every firm will become a learning system. Frontier models give us intelligence, but only architecture turns intelligence into compounding capability. Human judgment becomes the governance layer; token capital becomes the memory layer; and the loop between them becomes the firm’s new operating system. Satya Nadella https://www.linkedin.com/in/satyanadella?trk=public post comment-text — reading "tokens per dollar per watt" alongside your "token capital" essay, a question on monetisation: do you see the go-to-market for LLMs as fundamentally token-based — priced and sold on consumption — or as inevitably shifting toward value and outcomes? Where the meter measures activity rather than the capability it produces, consumption pricing seems to sit in tension with the "token capital" you argue firms should own and compound. How do you reconcile the two? To share "private data" and store elsewhere with no control from within Enterprise. I am also feeling jittery why Enterprise need to purchase a " chip" for conducting olap and oltp. I have been in ERP, CRM and SxCM and peripherals systems area and help organizations strategy to implement Business and Digital Transformation. There is no business and operational models for Enterprises.. Crossed my "fingers". I had seen Microsoft launch of various products from 1992 till now apart other EA vendor products Anand George https://in.linkedin.com/in/anand-george-plantfce?trk=public post comment actor-name 3d This feels like another important signal that enterprise AI is moving from model access to deployed intelligence. In industrial settings, the customer’s "IQ" is not just in databases or workflows. A lot of it is still embedded in the engineering record: P&IDs, isometrics, line lists, datasheets, historian tags, work orders, and decades of plant-specific decisions. So the deployment challenge is not only building agents, but giving them evidence-backed context they can safely reason over. That is the layer we are exploring with PlantFCE Maps, turning static P&IDs into navigable, validated plant context that AI engineering teams can build on. In the race to adopt AI and integrate it with human capital, success depends on whether an organization has an inquisitive mindset toward enterprise-wide implementation. While management may say AI will be governed by a human layer, there are several critical aspects that still need to be addressed. The business must actively test and validate the governance layers it builds, otherwise, the entire framework risks becoming a superficial solution that creates noise instead of delivering measurable value. Paul Goldman https://www.linkedin.com/in/paulgoldman100?trk=public post comment actor-name 3d The learning loop framing is the right one, and it sharpens the question every enterprise should now put in writing: where does the loop live? When knowledge, workflows, and judgment compound inside a provider's intelligence layer, the capability belongs to the customer and the compounding may not. The vendors that answer that with contractual terms and portability at exit, rather than positioning language, will earn the decade. The learning loop framing is the sharp part, because human capital only compounds if you can tell whose judgment actually improved the system versus who just rode it. Once knowledge and workflows get encoded into a company's own AI, the scarce signal moves to the person who can spot when that system is confidently wrong. Most hiring and promotion rubrics still measure the workflow the Frontier Co is about to absorb rather than that judgment above it. Where are you seeing enterprises rebuild how they evaluate for that judgment as the loop takes hold? The vision is fascinating and partly understandable: the real advantage isn't the model itself, but the system you build around it. The metaphor of "the model as the engine and the car as what you build" is a good one. However, the Frontier Company initiative is also clever positioning: 6,000 engineers and $2.5 billion to become the architect of every large company's AI ecosystem. For a DBA and a data architect, the question is: how will protecting intellectual property and sensitive data translate into practice, especially with open source models and critical data? Nadella's answer is a strong signal, but the devil will be in the implementation details. See more comments https://www.linkedin.com/signup/cold-join?session redirect=https%3A%2F%2Fwww%2Elinkedin%2Ecom%2Fposts%2Fsatyanadella microsoft-frontier-company-ai-engineering-activity-7478474505619726337-ge7 &trk=public post see-more-comments