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Protocols and Energy – O’Reilly


The AI Frontiers article (reproduced beneath) builds on a earlier Asimov Addendum article written by Tim O’Reilly, entitled: “Disclosures. I don’t suppose that phrase means what you suppose it means.” I (Ilan) suppose it’s necessary to first very briefly undergo components of Tim’s authentic piece to assist recap why we—at the AI Disclosures Mission—care about protocols in AI markets:

On the AI Disclosures Mission, we’re more and more coming to see disclosures via the lens of networking protocols and requirements. Each networking protocol will also be considered a system of disclosures. However these disclosures are excess of only a warning label, or a mandated set of reviews. They’re a type of structured communication that allows impartial, decentralized motion.

Tim then notes why this issues for AI’s “market construction”:

The race for first mover benefit by the massive centralized AI suppliers like OpenAI and their enterprise mannequin of offering AI entry via metered API subscriptions suggests a hub and spoke railroad design, whereas a world of open weight AI fashions related by new modes of standardized communication might look extra like a highway system, or immediately’s World Extensive Net.

If we wish a world the place everybody, not simply AI mannequin builders and people constructing on prime of their centralized networks, is ready to innovate and to supply their work to others with out paying a tax to entry centralized networks, we’d like a system of disclosures that allows interoperability and discovery.

On this strategy, protocols, as a kind of disclosure, can architect more healthy AI markets, not after issues are already too far gone, however via it working as foundational “guidelines of the highway… that allow interoperability”:

Briefly, we have to cease pondering of disclosures as some type of mandated transparency that acts as an inhibition to innovation. As a substitute, we must always perceive them as an enabler. The extra management rests with techniques whose possession is proscribed, and whose conduct is self and opaque, the extra permission is required to innovate. The extra we now have constructed “the rule of regulation” (i.e. requirements) into our techniques, the extra distributed innovation can flourish.

Now, on to the primary course!

Protocols and Energy

As AI fashions change into commodities, tech giants are racing to lock in customers by hoarding their information. Open protocols, backed by open APIs, can facilitate broad information sharing and more healthy AI markets.

Initially revealed in AI Frontiers: https://ai-frontiers.org/articles/open-protocols-prevent-ai-monopolies

Can we head off AI monopolies earlier than they harden? As AI fashions change into commoditized, incumbent Huge Tech platforms are racing to rebuild their moats on the utility layer, round context: the sticky user- and project-level information that makes AI functions genuinely helpful. With the fitting context-aware AI functions, every extra user-chatbot dialog, file add, or coding interplay improves outcomes; higher outcomes entice extra customers; and extra customers imply extra information. This context flywheel—a wealthy, structured user- and project-data layer—can drive up switching prices, making a lock-in impact when gathered information is trapped throughout the platform.

Protocols stop lock-in. We argue that open protocols—exemplified by Anthropic’s Mannequin Context Protocol (MCP)—function a strong rulebook, serving to to maintain API-exposed context fluid and to stop Huge Tech from utilizing information lock-in to increase their monopoly energy. Nevertheless, as an API wrapper, MCP can entry solely what a selected service (similar to GitHub or Slack) occurs to reveal via its API.

To completely allow open, wholesome, and aggressive AI markets, we’d like complementary measures that guarantee protocols can entry the total spectrum of consumer context, together with via:

Assured entry, for licensed builders, to user-owned information, via open APIs at main platforms.Transportable reminiscence that separates a consumer’s agentic reminiscence from particular functions.Knowledge utilization guardrails governing how AI providers can leverage consumer information.

Drawing on the instance of open-banking rules, we present that safety and information requirements are required for any of those proposals to be realized.

Architecting an open, interoperable AI stack via the protocol layer is about supporting broad worth creation reasonably than worth seize by a number of companies. Coverage efforts similar to the EU’s Normal-Goal AI Code of Observe do matter; however, finally, it’s software program structure that almost all instantly and decisively shapes market outcomes.

Protocols—the shared requirements that allow totally different techniques talk with each other—perform as a deeper de facto regulation, enabling impartial, decentralized, and safe motion in digital markets.

Don’t be afraid, learn on…Supply: https://modelcontextprotocol.io/docs/be taught/structure

From Commoditized Fashions to Context-Wealthy Functions

From fashions to providers. In a fevered race to blitzscale its method to AI dominance, OpenAI took an early lead. ChatGPT turned the fastest-growing utility in historical past, and it was straightforward to imagine that the subsequent step was to show it right into a platform. OpenAI tried to change into a developer platform, first with plugins after which with its GPT Retailer.

However it hasn’t all gone in line with plan. OpenAI’s fashions don’t appear so particular anymore. Open-source fashions like Kimi K2 (by Moonshot AI) have aggressive capabilities and are free to make use of. Sensing the turning tide, application-specific firms like Perplexity struck gold by taking off-the-shelf fashions from a number of suppliers, scaffolding them for particular makes use of, and charging for premium entry whereas avoiding vendor lock-in. Cursor, an AI‑first code editor, went from $0 to over $100 million ARR in 18 months, proof that context‑pushed retrieval-augmented technology (RAG), with a local AI design, can beat incumbents sitting on extra consumer information. Entrance-end customers can now simply select their most popular mannequin inside these functions. And, utilizing platforms like OpenRouter, builders may even change fashions dynamically in response to pricing or options.

Context rising. As basis fashions commoditize, competitors is shifting up the stack, to the applying layer, the place proprietary consumer and venture information—generally known as context—is the key sauce. Tech giants are racing to surround and personal this context solely: dialog histories, reminiscence shops, workspaces, codebases, paperwork, and anything that helps their brokers predict and help higher. OpenAI, Google, and different mannequin distributors lean on chatbot interplay logs as sources of persistent reminiscence, whereas utility specialists like Anysphere (which makes Cursor) and Perplexity equally harness venture and consumer information to spice up their fashions’ usefulness.

This forces a vital resolution in the marketplace: will AI functions develop primarily based on closed requirements that allow a number of gatekeepers dictate phrases and extract outsized rents, or on open requirements that hold context moveable and structure permissionless?

The early open net. The stakes are excessive. Born on open protocols, the online advanced into ecosystems of functions dominated by Amazon, Google, and Meta. At first, they beat rivals just by working higher. Google was one of the best at matching searchers with info and advertisements; Amazon surfaced one of the best merchandise at low costs; and Fb matched its customers with a novel feed crafted solely from content material shared by their pals and folks they selected to comply with.

From innovation to extraction. However success conferred sturdy energy that was abused. As development slowed, the profitable firms shifted from creating worth to extracting it. In our previous work, we described this course of utilizing the language of financial rents: winners first achieve “Schumpeterian rents” for innovation, however, as soon as markets mature, these flip into extractive rents geared toward preserving dominance and squeezing customers and builders. Cory Doctorow frames this course of vividly as “enshittification.” AI’s enshittification might contain weaker security guardrails, greater costs, much less consumer privateness, and lower-quality info or agentic help. Briefly, when industrial incentives go unchecked, fashions get tuned to serve suppliers’ pursuits over these of customers.

Makes an attempt by OpenAI to construct a platform by locking in builders and customers resemble Fb’s failed try to construct a platform. However, as Invoice Gates is stated to have commented: “This isn’t a platform. A platform is when the financial worth of all people that makes use of it, exceeds the worth of the corporate that creates it. Then it’s a platform.” That type of platform is sort of at all times enabled by open requirements. Against this, when an organization blocks others from linking suitable merchandise to its ecosystem, it incentivizes prospects to make use of a number of providers directly (`multi-homing’), and invitations further scrutiny from regulators.

The promise of protocols. Anthropic has taken a distinct route, creating MCP as an open protocol, a shared algorithm that anybody can use without cost. MCP standardizes how AI functions request info and actions from exterior providers, thereby facilitating equitable developer entry to exterior instruments and information context. That is how networked markets develop: by enabling an structure of participation via which each new entrant makes the market extra helpful for everybody else.

MCP’s take-up has been explosive. As we speak there are effectively over 5,000 MCP servers that can connect with the a whole lot of AI apps which have built-in MCP. Confronted with speedy adoption by third-party builders, AI mannequin builders like OpenAI and Google have introduced that they too will help MCP. However these identical incumbents are already pushing again.

How Person Context Is Powering a New Period of Tech Monopolies—and Competitors

Context creates worth. AI techniques thrive on context: the consumer information that lets an AI system tailor its conduct to customers, their requests, and the duties at hand. When correctly mined, this consumer information permits for customized and environment friendly predictions. Consider a context-free, factory-settings AI mannequin as a borrowed cellphone: the {hardware} is highly effective, however, with out your contacts, messages, location, and logins, it may possibly’t actually aid you.

Context has many layers: throughout time, as a dwelling “state,” such that every consumer immediate builds on what got here earlier than; and throughout folks, as a multi-user setting (say, in a Slack thread or collaborative doc). We emphasize two layers: micro-context captures whom the system helps proper now (related to their preferences, language, and present question). Alternatively, macro-context covers the duty surroundings, because the exterior body that shapes what a wise reply appears like. This contains venture information and stay information feeds.

Huge AI firms are utilizing context to develop their moats and lock in customers via a minimum of two approaches. The primary is thru product bundling. Examples embrace OpenAI’s push into search, analysis, and coding (together with via acquisitions); Google’s threading Gemini into Workspace; Microsoft’s embedding Copilot throughout its 365 productiveness apps. Bundling aggregates the information floor and raises switching prices.

The second is thru constructing context as a central product characteristic. OpenAI now presents persistent reminiscence that shops private particulars (e.g., “has a toddler” or “recognized with ADHD”) to form future replies. Meta has introduced it would gather cross-site consumer information to personalize its AI assistants. Google now remembers your writing fashion, so it may possibly tune its AI-generated Gmail replies. By binding the app and its context to the mannequin, firms lock in customers and starve rivals. Such bundling is fertile floor for enshittification.

Importantly, this course of depends on Huge AI firms’ gathering specific consumer alerts—their prompts, docs, API calls—and distilling them into an inferred, implicit preferences profile that lets their mannequin ship extra related, environment friendly predictions inside every consumer’s distinctive workspace.

Can Protocols Create a Stage Enjoying Discipline?

The MCP pipeline. Anthropic’s MCP standardizes how AI functions request instruments, information, and actions from exterior providers via a common adapter. As a substitute of customized integrations for every pairing (Cursor → GitHub; Claude → Google Drive), any AI app (each an MCP shopper) can use any MCP-compatible service (or MCP server), making fashions extra interchangeable. MCP additionally creates an agentic interface that permits an AI agent to determine what to do, primarily based on the language of duties, not endpoints. This reduces the MxN integration tax, permits small companies to lease reasonably than construct tooling, and weakens vertical exclusives.

Protocols and Power Figure 2Why connectivity can change into a “laborious” downside. Supply: https://www.shakudo.io/weblog/mcp-model-context-protocol

As a result of MCP is client-agnostic, any AI app can use any exterior service, which in flip makes switching between fashions far simpler — both by switching between mannequin service suppliers that help MCP, or by constructing an impartial MCP shopper and utilizing any mannequin service. When an AI app’s context is moveable, fashions change into extra interchangeable.

MCP is the final word unbundler of context: any suitable AI app can attain any service that exposes an MCP server, permitting an enriched immediate to then be despatched to the mannequin. However providers should nonetheless decide in, by making their content material accessible via APIs.

This shifts the aggressive gravity “up the stack,” away from the mannequin builders and to the applying that develops the profitable context flywheel. App-level information portability and governance—together with pricing, permissioning, and any preferential entry into Huge Tech–managed information sources—then turns into the brand new battleground.

Though MCP reduces integration friction, interoperability alone doesn’t guarantee market competitors. We’ve seen this earlier than: open protocols like HTTP (for net looking) and SMTP (for e mail) enabled permissionless entry of recent functions, but markets nonetheless tipped. Google is now the dominant e mail and browser supplier due to its superior merchandise and cross-app integrations.

MCP’s Impression on the AI Market So Far

Incumbents have rushed to insert AI into each legacy product: the quickest go-to-market technique with the shallowest integration. Meta surfaces an assistant in almost each app. This has solely made constructing cleaner, MCP-enabled functions much more enticing. AI-native instruments like Perplexity supply additional encouragement to builders, displaying that customers will choose a personalized expertise over a retrofitted one (just like the AI-layered Google Search).

Unsurprisingly, the variety of new MCP servers has rocketed, as we famous earlier. Nevertheless, such integrations may additionally be boosting utilization of incumbent mannequin builders’ chatbots as they achieve entry to extra instruments. MCP’s affect has been impeded by its weak safety. MCP servers’ exterior authentication and authorization stay a cussed MxN integration downside. Furthermore, for repeated manufacturing workflows, code-based frameworks could also be extra environment friendly than an inference‑solely workflow.

Lastly, there are early indicators that AI mannequin builders might resist interoperability extra broadly, regardless of the elevated utilization it generates for them, if it finally ends up reinforcing the context moats for utility builders. Anthropic quickly reduce off the coding utility Windsurf’s direct (first-party) entry to its high-performing Claude fashions. Windsurf was rising too fashionable and was set to be acquired by OpenAI, a direct competitor to Anthropic.

MCP Versus Walled Gardens: The API Gatekeeping Drawback

APIs are the gateway via which an MCP shopper—the AI functions—can entry third-party information and instruments, thereby breaking down a platform’s “walled backyard” of proprietary providers and datasets. However MCP can liberate context solely when a third-party service presents a sufficiently wealthy API (and retains it open). As a result of platform homeowners management these APIs, they’ve an incentive to constrain what MCP can contact, to guard their aggressive edge. This manifests in two methods:

Entry threat. Providers can merely shut off API entry fully, or they’ll tremendously degrade entry. Current API paywalls and shutdowns at Reddit, Twitter, and Meta present how entry can vanish in a single day. Enterprise providers like Salesforce (which owns Slack), Atlassian, and Notion are now limiting API entry by Glean (a context platform) whilst they launch competing merchandise. In the meantime, Slack’s new API adjustments (supposedly to restrict how LLMs are capable of entry the app) will hurt builders basically.
Context-depth threat (the “personalization hole”). Platform APIs expose posts and information however not often the behavioral profiles that energy their very own personalization, leaving newcomers with a chilly‑begin handicap. Meta, for instance, personalizes its personal chatbot with Fb and Instagram historical past, however it presents third events neither its Graph API to fetch that full profile nor entry to detailed points of customers’ specific and implicit (inferred) profiles. Equally, OpenAI’s “reminiscence” characteristic is confined to ChatGPT. OpenAI doesn’t permit builders to entry a consumer’s “recollections” by way of an API, even with the consumer’s prior consent.Protocols and Power Figure 3Slack has made adjustments to its APIs. Supply: https://www.smartsuite.com/information/salesforce-restricts-slack-data-access-wunderkind-tim-glomb

To Save AI from Enshittification, Assist Protocol-Stage Interventions

Bettering protocols for the AI age. To interrupt API gatekeeping in AI markets, we’d like an structure that helps user-sanctioned information portability with the intention to improve third-party developer entry. Right here, portability means finish customers’ capacity to learn and switch their information throughout platforms—or to permit different builders to take action on their behalf. When portability is common, builders can entry the identical context (via MCP or any API) with out negotiating bespoke offers. To operationalize this strategy for AI markets, we advocate:

Open API entry for main platforms. If the information comes from the consumer, the consumer—and any developer the consumer authorizes—ought to have the ability to take it elsewhere. We advocate requiring that, with consumer consent, main platforms expose this user-owned contextual information via APIs to accredited builders at zero value. We suggest beginning with the platforms that management probably the most consumer context: “gatekeepers” designated by EU standards, plus main AI mannequin suppliers.

Such an strategy might draw inspiration from the EU’s open-banking regulation (particularly, its Second Cost Providers Directive, or PSD2), which holds that banks should present licensed fintechs with free, real-time entry to core account information and fee features. Licensed builders should first acquire a license by displaying correct safety and information requirements. Not like banking’s standardized information, although, AI context spans code repositories, conversations, behavioral patterns, and preferences. Within the case of AI, markets and regulators would want to give you a manner of defining “core consumer context” for these numerous information varieties and platforms.

Reminiscence as a conveyable service. Customers’ AI “reminiscence” must be accessible throughout platforms by way of APIs, with market-driven safety requirements embedded within the technical structure. Such MCP servers already exist, even when AI functions don’t help it.

The problem is much less technical than socio-economic. Reminiscence is deeply private and requires safe data-handling, but AI markets presently lack requirements and accreditation in these areas.

A market-driven strategy can be to embed these safety requirements into technical structure, as is finished with the FDX API normal for US open banking. Such embedding permits for safe and standardized sharing of monetary information between banks and third-party builders. Safety necessities like end-to-end encryption, OAuth-controlled entry to client-side keys, and granular topic-by-topic permissions are presently past MCP’s scope. However FDX’s safe and common API reveals what is feasible.

Protocols and Power Figure 4Not everyone seems to be proud of open banking within the U.S., together with JPMorgan’s CEO, Jamie Dimon (Learn on: https://www.cnbc.com/2025/07/28/jpmorgan-fintech-middlemen-plaid-data-requests-taxing-systems.html)Secure personalization, with out information exploitation. Open APIs rely upon customers’ trusting builders to deal with shared context responsibly. Trade-specific information utilization guidelines would additionally weaken incumbents’ benefits whereas creating safer applied sciences. Such utilization guidelines might begin with:
Knowledge firewalls. We advocate defending intimate consumer conversations from industrial concentrating on. An AI utility leveraging a identified consumer choice like “is vegetarian” for restaurant suggestions is useful; however exploiting therapy-like conversations for manipulative promoting have to be prevented.Erasure rights. Customers ought to have the ability to evaluate, edit, or delete their choice profiles and recollections at any time. ChatGPT already largely presents this.Privateness defaults. For delicate queries, we advocate that AI providers default to a non-public mode, with out long-term reminiscence enabled or advert concentrating on, except customers explicitly decide in to those settings for such queries.

Finally, management over consumer context—not uncooked mannequin energy—will determine who wins the AI industrial race. Open protocols can hold context fluid between opponents, however they’re solely as efficient as the information (and instruments) that they’ll securely entry. The selection is ours: design aggressive AI markets round open ideas, or settle for a brand new technology of platform monopolies.

Due to Alex Komoroske, Chris Riley, David Soria Parra, Guangya Liu, Benjamin Mathes, and Andrew Trask for studying and/or commenting on this text. Any errors are ours.



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