The next was initially revealed in Asimov’s Addendum, September 11, 2025.
Study extra in regards to the AI Disclosures Venture right here.
1. The Rise and Rise of MCP
Anthropic’s Mannequin Context Protocol (MCP) was launched in November 2024 as a approach to make instruments and platforms model-agnostic. MCP works by defining servers and shoppers. MCP servers are native or distant finish factors the place instruments and assets are outlined. For instance, GitHub launched an MCP server that permits LLMs to each learn from and write to GitHub. MCP shoppers are the connection from an AI software to MCP servers—they permit an LLM to work together with context and instruments from completely different servers. An instance of an MCP consumer is Claude Desktop, which permits the Claude fashions to work together with hundreds of MCP servers.
In a comparatively brief time, MCP has develop into the spine of a whole lot of AI pipelines and functions. Main gamers like Anthropic and OpenAI have constructed it into their merchandise. Developer instruments akin to Cursor (a coding-focused textual content editor or IDE) and productiveness apps like Raycast additionally use MCP. Moreover, hundreds of builders use it to combine AI fashions and entry exterior instruments and knowledge with out having to construct a complete ecosystem from scratch.
In earlier work revealed with AI Frontiers, we argued that MCP can act as a fantastic unbundler of “context”—the information that helps AI functions present extra related solutions to shoppers. In doing so, it could possibly assist decentralize AI markets. We argued that, for MCP to really obtain its targets, it requires assist from:
- Open APIs: In order that MCP functions can entry third-party instruments for agentic use (write actions) and context (learn)
- Fluid reminiscence: Interoperable LLM reminiscence requirements, accessed by way of MCP-like open protocols, in order that the reminiscence context accrued at OpenAI and different main builders doesn’t get caught there, stopping downstream innovation
We broaden upon these two factors in a latest coverage notice, for these trying to dig deeper.
Extra usually, we argue that protocols, like MCP, are literally foundational “guidelines of the highway” for AI markets, whereby open disclosure and communication requirements are constructed into the community itself, somewhat than imposed after the very fact by regulators. Protocols are essentially market-shaping gadgets, architecting markets via the permissions, guidelines, and interoperability of the community itself. They will have a huge impact on how the business markets constructed on prime of them operate too.
1.1 However how is the MCP ecosystem evolving?
But we don’t have a transparent thought of the form of the MCP ecosystem in the present day. What are the most typical use instances of MCP? What kind of entry is being given by MCP servers and utilized by MCP shoppers? Is the information accessed by way of MCP “read-only” for context, or does it permit brokers to “write” and work together with it—for instance, by modifying information or sending emails?
To start answering these questions, we take a look at the instruments and context which AI brokers use by way of MCP servers. This provides us a clue about what’s being constructed and what’s getting consideration. On this article, we don’t analyze MCP shoppers—the functions that use MCP servers. We as an alternative restrict our evaluation to what MCP servers are making out there for constructing.
We assembled a big dataset of MCP servers (n = 2,874), scraped from Pulse.1 We then enriched it with GitHub star-count knowledge on every server. On GitHub, stars are much like Fb “likes,” and builders use them to indicate appreciation, bookmark initiatives, or point out utilization.
In apply, whereas there have been loads of MCP servers, we discovered that the highest few garnered many of the consideration and, seemingly by extension, many of the use. Simply the highest 10 servers had almost half of all GitHub stars given to MCP servers.
A few of our takeaways are:
- MCP utilization seems to be pretty concentrated. Because of this, if left unchecked, a small variety of servers and (by extension) APIs may have outsize management over the MCP ecosystem being created.
- MCP use (instruments and knowledge being accessed) is dominated by simply three classes: Database & Search (RAG), Pc & Internet Automation, and Software program Engineering. Collectively, they obtained almost three-quarters (72.6%) of all stars on GitHub (which we proxy for utilization).
- Most MCP servers assist each learn (entry context) and write (change context) operations, exhibiting that builders need their brokers to have the ability to act on context, not simply devour it.
2. Findings
To start out with, we analyzed the MCP ecosystem for focus threat.
2.1 MCP server use is concentrated
We discovered that MCP utilization is concentrated amongst a number of key MCP servers, judged by the variety of GitHub stars every repo obtained.
Regardless of there being hundreds of MCP servers, the highest 10 servers make up almost half (45.7%) of all GitHub stars given to MCP servers (pie chart beneath) and the highest 10% of servers make up 88.3% of all GitHub stars (not proven).

Because of this nearly all of real-world MCP customers are seemingly counting on the identical few companies made out there by way of a handful of APIs. This focus seemingly stems from community results and sensible utility: All builders gravitate towards servers that clear up common issues like net shopping, database entry, and integration with broadly used platforms like GitHub, Figma, and Blender. This focus sample appears typical of developer-tool ecosystems. Just a few well-executed, broadly relevant options are inclined to dominate. In the meantime, extra specialised instruments occupy smaller niches.
2.2 The highest 10 MCP servers actually matter
Subsequent, the highest 10 MCP servers are proven within the desk beneath, together with their star depend and what they do.
Among the many prime 10 MCP servers, GitHub, Repomix, Context7, and Framelink are constructed to help with software program improvement: Context7 and Repomix by gathering context, GitHub by permitting brokers to work together with initiatives, and Framelink by passing on the design specs from Figma on to the mannequin. The Blender server permits brokers to create 3D fashions of something, utilizing the favored open supply Blender software. Lastly, Activepieces and MindsDB join the agent to a number of APIs with one standardized interface: in MindsDB’s case, primarily to learn knowledge from databases, and in Activepieces to automate companies.

The dominance of agentic shopping, within the type of Browser Use (61,000 stars) and Playwright MCP (18,425 stars), stands out. This displays the basic want for AI techniques to work together with net content material. These instruments permit AI to navigate web sites, click on buttons, fill out kinds, and extract knowledge identical to a human would. Agentic shopping has surged, regardless that it’s far much less token-efficient than calling an API. Searching brokers usually must wade via a number of pages of boilerplate to extract slivers of knowledge a single API request may return. As a result of many companies lack usable APIs or tightly gate them, browser-based brokers are sometimes the best—typically the one—approach to combine, underscoring the boundaries of in the present day’s APIs.
A few of the prime servers are unofficial. Each the Framelink and Blender MCP are servers that work together with only a single software, however they’re each “unofficial” merchandise. Because of this they don’t seem to be formally endorsed by the builders of the appliance they’re integrating with—those that personal the underlying service or API (e.g., GitHub, Slack, Google). As an alternative, they’re constructed by impartial builders who create a bridge between an AI consumer and a service—usually by reverse-engineering APIs, wrapping unofficial SDKs, or utilizing browser automation to imitate consumer interactions.
It’s wholesome that third-party builders can construct their very own MCP servers, since this openness encourages innovation. Nevertheless it additionally introduces an middleman layer between the consumer and the API, which brings dangers round belief, verification, and even potential abuse. With open supply native servers, the code is clear and will be vetted. Against this, distant third-party servers are more durable to audit, since customers should belief code they will’t simply examine.
At a deeper stage, the repos that at the moment dominate MCP servers spotlight three encouraging details in regards to the MCP ecosystem:
- First, a number of distinguished MCP servers assist a number of third-party companies for his or her performance. MindsDB and Activepieces function gateways to a number of (usually competing) service suppliers via a single server. MindsDB permits builders to question completely different databases like PostgreSQL, MongoDB, and MySQL via a single interface, whereas Taskmaster permits the agent to delegate duties to a spread of AI fashions from OpenAI, Anthropic, and Google, all with out altering servers.
- Second, agentic shopping MCP servers are getting used to get round doubtlessly restrictive APIs. As famous above, Browser Use and Playwright entry web companies via an online browser, serving to to bypass API restrictions, however they as an alternative run up in opposition to anti-bot protections. This circumvents the constraints that APIs can impose on what builders are capable of construct.
- Third, some MCP servers do their processing on the developer’s laptop (regionally), making them much less depending on a vendor sustaining API entry. Some MCP servers examined right here can run completely on a neighborhood laptop with out sending knowledge to the cloud—that means that no gatekeeper has the facility to chop you off. Of the ten MCP servers examined above, solely Framelink, Context7, and GitHub depend on only a single cloud-only API dependency that may’t be run regionally end-to-end in your machine. Blender and Repomix are utterly open supply and don’t require any web entry to work, whereas MindsDB, Browser Use, and Activepieces have native open supply implementations.
2.3 The three classes that dominate MCP use
Subsequent, we grouped MCP servers into completely different classes based mostly on their performance.
After we analyzed what varieties of servers are hottest, we discovered that three dominated: Pc & Internet Automation (24.8%), Software program Engineering (24.7%), and Database & Search (23.1%).

Widespread use of Software program Engineering (24.7%) MCP servers aligns with Anthropic’s financial index, which discovered that an outsize portion of AI interactions had been associated to software program improvement.
The recognition of each Pc & Internet Automation (24.8%) and Database & Search (23.1%) additionally is sensible. Earlier than the appearance of MCP, net scraping and database search had been extremely built-in functions throughout platforms like ChatGPT, Perplexity, and Gemini. With MCP, nonetheless, customers can now entry that very same search performance and join their brokers to any database with minimal effort. In different phrases, MCP’s unbundling impact is very seen right here.
2.4 Brokers work together with their environments
Lastly, we analyzed the capabilities of those servers: Are they permitting AI functions simply to entry knowledge and instruments (learn), or as an alternative do agentic operations with them (write)?
Throughout all however two of the MCP server classes checked out, the preferred MCP servers supported each studying (entry context) and writing (agentic) operations—proven in turquoise. The prevalence of servers with mixed learn and write entry means that brokers are usually not being constructed simply to reply questions based mostly on knowledge but additionally to take motion and work together with companies on a consumer’s behalf.

The 2 exceptions are Database & Search (RAG) and Finance MCP servers, through which read-only entry is a typical permission given. That is seemingly as a result of knowledge integrity is crucial to making sure reliability.
3. The Significance of A number of Entry Factors
Just a few implications of our evaluation will be drawn out at this preliminary stage.
First, concentrated MCP server use compounds the dangers of API entry being restricted. As we mentioned in “Protocols and Energy,” MCP stays constrained by “what a specific service (akin to GitHub or Slack) occurs to show via its API.” Just a few highly effective digital service suppliers have the facility to close down entry to their servers.
One vital hedge in opposition to API gatekeeping is that lots of the prime servers strive to not depend on a single presentr. As well as, the next two safeguards are related:
- They provide native processing of knowledge on a consumer’s machine at any time when potential, as an alternative of sending the information for processing to a third-party server. Native processing ensures that performance can’t be restricted.
- If working a service regionally just isn’t potential (e.g., e mail or net search), the server ought to nonetheless assist a number of avenues of getting on the wanted context via competing APIs. For instance, MindsDB capabilities as a gateway to a number of knowledge sources, so as an alternative of counting on only one database to learn and write knowledge, it goes to nice lengths to assist a number of databases in a single unified interface, primarily making the backend instruments interchangeable.
Second, our evaluation factors to the truth that present restrictive API entry insurance policies are usually not sustainable. Internet scraping and bots, accessed by way of MCP servers, are in all probability getting used (a minimum of partly) to avoid overly restrictive API entry, complicating the more and more widespread apply of banning bots. Even OpenAI is coloring exterior the API traces, utilizing a third-party service to entry Google Search’s outcomes via net scraping, thereby circumventing its restrictive API.
Increasing structured API entry in a significant method is important. This ensures that reliable AI automation runs via steady, documented finish factors. In any other case, builders resort to brittle browser automation the place privateness and authorization haven’t been correctly addressed. Regulatory steering may push the market on this route, as with open banking within the US.
Lastly, encouraging higher transparency and disclosure may assist establish the place the bottlenecks within the MCP ecosystem are.
- Builders working fashionable MCP servers (above a sure utilization threshold) or offering APIs utilized by prime servers ought to report utilization statistics, entry denials, and rate-limiting insurance policies. This knowledge would assist regulators establish rising bottlenecks earlier than they develop into entrenched. GitHub may facilitate this by encouraging these disclosures, for instance.
- Moreover, MCP servers above sure utilization thresholds ought to clearly listing their dependencies on exterior APIs and what fallback choices exist if the first APIs develop into unavailable. This isn’t solely useful in figuring out the market construction, but additionally important data for safety and robustness for downstream functions.
The purpose is to not eradicate all focus within the community however to make sure that the MCP ecosystem stays contestable, with a number of viable paths for innovation and consumer selection. By addressing each technical structure and market dynamics, these recommended tweaks may assist MCP obtain its potential as a democratizing drive in AI improvement, somewhat than merely shifting bottlenecks from one layer to a different.
Footnotes
- For this evaluation, we categorized every repo into considered one of 15 classes utilizing GPT-5 mini. We then human-reviewed and edited the highest 50 servers that make up round 70% of the entire star depend in our dataset.
Appendix
Dataset
The total dataset, together with descriptions of the classes, will be discovered right here (constructed by Sruly Rosenblat):
https://huggingface.co/datasets/sruly/MCP-In-Observe
Limitations
There are a number of limitations to our preliminary analysis:
- GitHub stars aren’t a measure of obtain counts and even essentially a repo’s recognition.
- Solely the title and outline had been used when categorizing repos with the LLM.
- Categorization was topic to each human and AI errors and lots of servers would seemingly match into a number of classes.
- We solely used the Pulse listing for our dataset; different lists had completely different servers (e.g., Browser Use isn’t on mcpmarket.com).
- We excluded some repos from our evaluation, akin to those who had a number of servers and people we weren’t capable of fetch the star depend for. We might miss some fashionable servers by doing this.
MCP Server Use Over Time

Word: We had been solely capable of observe Browser Use’s repo till 40,000 stars; therefore the flat line for its graph. In actuality, roughly 21,000 stars had been added over the following few months. (The opposite graphs on this publish are correctly adjusted.)