MCP is dead?

13 hours ago (quandri.io)

I run the team at OpenAI that's responsible for the ChatGPT App Store, Codex plugins, and all things MCP.

The thing that all these "MCP is dead" posts are missing is that whether or not MCP is used as a transport protocol is actually completely irrelevant.

The reason MCP isn't dead is because practically ~every company on the planet is building an MCP server. I know this because we interact with all of them. Most of these companies don't have a CLI. Many of these companies don't even have an external API! And yet, they're all building MCP servers.

And that's why MCP is not only not dead, but more important than ever.

Maybe we will turn every MCP server into a CLI under the hood. Maybe we'll use code mode. Maybe we'll implement tool search.

All of those are just implementation details to the much more important point: our AI agents are getting access to services they otherwise would never have had access to.[0] That's what matters.

So, is MCP dead as a direct communication layer for models to speak to? Maybe, maybe not. Is MCP dead as a protocol? Hell no, couldn't be further from the truth.

[0]: Although I will say the Codex app's computer & browser use features have made this statement a lot weaker than it used to be. If you haven't tried them yet—they're mindblowing.

  • > I run the team at OpenAI that's responsible for the ChatGPT App Store, Codex plugins, and all things MCP.

    > The reason MCP isn't dead is because practically ~every company on the planet is building an MCP server.

    You have drunk the kool aid. No shot ~every company is building an MCP server.

  • I would bet that MCP is going to die.

    The main reason is that it adds another layer (and human) that can, and probably will, get out of sync with the real-world implementation, whether that implementation is an API, web, or a CLI.

    AI should not be using a protocol or set of instructions that is different from what humans have access to (know and use).

    Sure, companies want to expose MCP servers because it is the cool thing to do right now.

    So the current situation is basically that I used Claude to write an MCP server on top of our API. And then I need to occasionally tell it update it match the public doc.

    And my reaction is: really? It is not like our API docs are not public. Claude Code created our MCP server with zero instructions beyond what is publicly available. I just told it to read the docs from the net.

    So MCP feels more like a temporary workaround for current model limitations.

    • MCP has a great advantage over agent using cli: MCP is much easier to secure so that it's hardwired that the agent can only call the pre-configured MCP server. We run our agents so that they don't have access to public internet, so they could not run any cli commands. It's all either built-in agent tools, or 3rd party mcp servers. The agents never have access to any credentials, which makes them much more safe to use than a claude code running in yolo mode with fetching random cli binaries from the web.

    • Soon, if you want the performance of your AI clients to improve (wrt. token count and understanding) you will start to customize the output of the MCP server for more synthetic data, different data types, more permissive inputs, etc. And since most your clients will be AI that might be your API that fall behind, and MCP that will be maintained.

      That's at least my experience with my current project: the traditional json, coding oriented API feels out of place, I maintain it out of habit. The real API is the MCP server, which is not designed like a traditional API would; understandability of the output for an LLM prevails instead of searchng for exhaustiveness, orthogonality etc.

      1 reply →

    • But then there is the other side that companies are adding MCP servers to stuff that has never had a public API.

    • I usually just generate the MCP server spec from existing openapi/swagger spec, maybe with a filter to omit certain endpoints and so on.

    • I have some hope that this'll all lead to a revival of semantic web / microformats / etc. Why write an API when you can just add some markup to your existing API, which already looks like stuff that it was trained on, and won't fall out of sync (because you use it too)?

      1 reply →

    • > AI should not be using a protocol or set of instructions that is different from what humans have access to (know and use).

      Should it? I think it can be very useful to constrain what your AI can do (e.g. read files but don’t delete them). MCP is a way to do that.

      3 replies →

    • That’s only true for the frontier. The moment you start looking at enterprise consumers of AI you’ll see slow monoliths that make decisions by committee and those committees often don’t even understand the tech they’re passing ruling on.

      And you’ll also often see CISO-offices that are managed by checklists and yet more committees.

      Asking for MCP access is generally easier than asking for an API for several reasons:

      1. MCP supports OAuth, so your access conform with numerous CIS (et al) compliance checklists (short lived secrets, MFA, user-specific credentials, user access managed by centralised directory services and thus can have business rules applied, etc)

      2. MCP is something a business can make a cooperate decision on. And then you can refer to that decision each time you need an access to new service. Whereas API access isn’t. In some cases APIs are governed by LLDs, and then you have an extra layer of “fun” having to update documentation to describe, in detail, the technical specifications too.

      3. MCP defines the interaction better. If you need to request access to an API then the inevitable question from the committee is “where is this code running from?” and so on and so forth. Whereas saying “MCP access for AI to assist the project team with development” is a lot easier conversation to have.

      In short: Enterprises are a very different beast to your average business.

    • > temporary workaround

      I've heard this one before

      (Maybe it'll be the first time that a temporary workaround stays around longer than expected then)

    • Funny thing is that Claude knows the api of Atlassian better than the mcp they provide. Mcp is limited it doesn't have all api calls described.

      2 replies →

    • You can build a MCP server in minutes these days to connect to a REST API. The friction is close to zero.

    • > So the current situation is basically that I used Claude to write an MCP server on top of our API. And then I need to occasionally tell it update it match the public doc.

      > And my reaction is: really? It is not like our API docs are not public. Claude Code created our MCP server with zero instructions beyond what is publicly available. I just told it to read the docs from the net.

      My reaction to this is.. really? Presumably your API and API docs have a release process. Hopefully an automated one. Why isn't the "hey Claude, update the MCP server" step a part of it?

      2 replies →

  • Basically MCP is little more than a brand name for "APIs LLM's can use". This means more services are creating APIs, because xyz company who's never been super tech forward doesn't want their tools to be obsolete when everyone uses agents.

    Overall, I am in favor of this goal. I'm not sure this is the protocol I'd choose to accomplish it, but it's the one people hear about, and the one they're using.

    • Yeah it was quite weird seeing "Many of these companies don't even have an external API!" given MCP is literally a protocol for an external API. Not a good one in my opinion but it indeed has mindshare.

    • Yes. But that's dangerous for end users. It enables lock in. All it does is context management, so skills are much better choice

    • "and the one they're using." no it's not.

      Agents are just making REST calls and that's it.

      The best thing a company can do to make their stuff 'agent ready' is to make sure the lllm.txt docs are clear-cut and ready for the AI with clear instructions for agentic use.

      'MCP' is frankly a hurdle.

      Now - it probably does make sense to add MCP, because it's not expensive at all, and some will like that use case, it maybe garners a bit more attention .

      MCP is a 'weak externalization' - people are using it because others are using it, and it's a 'workable' but 'not strong' solution.

      It could very well entrench itself however.

      2 replies →

  • > The reason MCP isn't dead is because practically ~every company on the planet is building an MCP server. I know this because we interact with all of them.

    Wow if that's not an echo-chamber comment I don't know what is.

    • > Wow if that's not an echo-chamber comment I don't know what is.

      Wouldn’t expect anything less from someone working as a manager at OpenAI. I don’t think their org culture is survivable if you’re not 200% all-in on LLMs eating the universe.

    • Yeah this is copium. Everyone is sprinting to adopt everything that is useful, and it just haven't happened with MCP.

      Also, what's the hold up? If they all are building one, presumably using AI, shouldn't they all be done already?

    • Trying to imagine my boss telling me that I’ve talked to everyone on earth in a convincing way and can’t stop laughing

      Like imagine somebody saying “you’re the most handsomest boy in the world” and thinking “Shit, nobody would just make something like that up.”

    • It’s definitely an outlandish statement to make. There’s 200-400mn companies in the world on a conservative estimate. I assume the poster means something like “all listed companies”.

    • Resist the urge to nitpick and accept that the poster simply means "a large number of high-profile companies".

  • Please keep in mind that CLIs do not run on mobile and never will. This is the elephant in the room that nearly everypne seems to be ignoring. This "debate" is built around the assumption that AI is only for at-your-desk work. It's obviously not. Having the ability to mix/match the services you use for everything in your life, whether that's email or social networks or managing your book collection, is going to be a normal thing everyone does in the future. It's just not today, because AI companies are almost exclusively focused on the programming use-case (and related desk job stuff).

    • > CLIs do not run on mobile and never will

      Can you clarify why the never? What's the issue with giving a phone-based AI a sandboxed file system and bash shell?

  • I think graphql backed by mcp is the technically best solution. Graphql allows an agent to select which fields it wants in context. Graphql is easy to generate clis for / easy to generate libraries for (if we want llms to generate scripts that call tools).

  • You failed to describe what value the MCP protocol provides.

    If all of these companies spent equivalent time writing a CLI for agents to consume as they spend on MCP servers, would they be any worse off in terms of agents being able to interact with their products?

    • One advantage is the MCP advertises itself to the agent with its schema and api shape. Unless your CLI is in the corpus with lots of examples the agent has to learn every time. Skills help a little bit but I find the recall on skills pretty low. However I also find codex will reliably use MCPs advertised while Claude always reaches for tools like Bash() likely because it’s aligned so heavily on its own tools and is very hard to get to use an MCP if literally any Bash() approach is possible, including breaking glass to find creds, even when an MCP is clearly advertised in CLAUDE.md, skills, and explicit user instruction. I find it fascinating that Anthropic makes a product that seems to be really poor at following instructions and OpenAI seems to generally follow guard rails.

      10 replies →

    • Yes, in the same way a programming language would be worse off if they focused all of their effort on building an implementation instead of a language specification.

      You could literally, deterministically, zero AI, code-gen a CLI from an MCP specification, just like you can with an OpenAPI specification. I'm sure tools exist that do this. So if you want a CLI, there it is.

      But the problem with a CLI is that it requires a shell environment, and not everywhere you may want to run an agent should or can have access to a shell. MCP enables the harness to tightly control that access. MCP allows the user to easily allowlist/denylist specific tools, or categorize tools into "ask me every time" versus "don't ask me just do it". Doing any of this with a CLI is really hard because CLIs are all very different; yes, AIs can easily learn how to use them, but that might be exactly what you don't want, hey AI don't issue that aws ec2 delete-instance command ah crap there it goes I wish I could have just denylisted its access to that tool.

      8 replies →

    • The security model and runtime requirements are completely different between making an HTTP request and executing arbitrary code.

      They have different tradeoffs.

      1 reply →

    • Not a fan of MCPs for my personal use, but I still think the value for companies is obvious. The first value for their downstream (OpenAI, Anthropic, etc) is REST call vs arbitrary code execution. You only need to "trust" the MCP client implementation, not a thousand different CLIs. Also being a standard HTTP endpoint, a lot of logic can be offloaded to proxies and such.

      The second value is more about how business works. There is no chance you can convince someone at WalMart to fund and release a `wmctl` that allows you to search and buy products. Now try to convince your regional Pizza chain to release a CLI too. WalMart and such are incentivized however to create "Whatever OpenAI and Anthropic integrate with". Shopify can create an MCP for every shop and allow the shop owner to customize it. Creating a CLI per shop makes no sense. OpenAI and Anthropic prefer MCPs because of the first benefit. So it works out for all parties involved.

      1 reply →

    • Yes they would be.

      MCP servers on the side of the consuming organizations fit into the existing IT landscape, with centralized safeguard on who can access what a lot better and are easier to administer than letting their employees run arbitrary agents against arbitrary sources and destinations and cause chaos.

    • The value is that many companies like building MCP servers much more than CLIs. For whatever reason.

      Here's some companies that offer MCP servers but don't seem to offer an equally featured CLI:

         - Asana
         - Square
         - Linear
         - Dropbox 
         - Canva
         - Slack (sorta)
         - Figma (sorta)
      

      and many more that offer both, but support their MCP more.

      Should they all be offering CLI tools? IMHO, yes absolutely. But an MCP server gets much more interest. I'd rather encourage them to keep improving and supporting their MCP services than telling them to drop it for a CLI.

      There's lots of things like this in technology where you end up stuck with the first thing because its popularity perpetuates itself. The QWERTY keyboard I'm typing this on is a prime example. x86 is another one.

      3 replies →

  • Off-topic question: Where is this an "App Store", as this is basically just a curated list off apps? I wouldn't exactly call it a "store". I have an approved ChatGPT App myself, but those do not surface anyway on the chatgpt.com domain. So, this isn't a "store", but a "curated directory". Calling this a store is misleading to a lot of us developers as you can see in the openai forums on this topic, where you find a lot of confusion around this. People put a lot of energy into developing a ChatGPT App, just to find out, they are completely on their own afterwards.

  • I agree. Mcp might be useless in a personal scenario but it absolutely plays a role of service infrastructure in organizations. It is another form of api for those abilities that are not wrapped with rest api yet. But when they are wrapped in mcp, it seems not necessary to wrap them into rest api or cli again in near future. So these mcp services survive. The only thing matters is how to import these mcp services into agent context on demand or say by the gradual disclosure principle.

    • Unless you also want humans to also interact with your tools.

      That’s covered in the article: a human can modify the commands generated by the agent, or vice versa, to debug problems or transfer knowledge.

      1 reply →

  • MCP vs CLI is the same discussion as between a GUI app and a web app: it's all about the distribution. There is approximately no difference in functionality except whether you're hitting a dedicated service or running a local tool which connects to a dedicated service.

    With saas is turned out that distribution to a browser solves a pretty major pain point and I expect MCPs to be treated the same. Can you trivially replace an MCP server with a CLI tool which accepts a token? Yes - but why do that to yourself when you can hit the endpoint directly?

  • Just because everyone builds it doesn't mean it will take off. Case in point: All the cloud serverless BS. Everyone in the industry are now switching back from server less because the math didn't work out.

    I think it's just a fad and eventually you'll need to address the math no matter how much you sugar coat it - the 3x slower metric, eating of context window is all beneficial for LLM companies but not for the end user.

    Ok, how many AI tools do you even use from 3 years ago? Funnily enough, I stopped paying for my chatGPT subscription a year ago.

  • Isn’t this just a lagging indicator of popularity at the early liftoff of cli ai?

    A sign of weariness in the rapid evolution of tooling, where people got off the train a stop too early?

    A confusing overloaded acronym (cli) and term (skill) lacking the marketability / easy mind share of a unique acronym?

    These all fail to establish a hearty reason to be.

    The walking dead are still dead.

  • Remember when practically ~every company on the planet was building an NFT collection?

  • I agree, codex app’s computer use agent feels sci-fi. Closest we’ve seen yet of a general purpose virtual worker.

  • On browser/computer use: I wish I could try them. But since OpenAI is going down the Apple path of cherry-picking random features to block in the EEA, without much explanation or timeline as to when they will be available (or even why they are blocked in the first place), I am unsure if I will be able to in this lifetime.

  • The number one value of MCP's is that it forced everyone align on an API protocol, but the protocol itself has room for improvement.

  • Agree. But Word of caution: MCP will become the 'company wiki' of the 2020s unless you enable monetization and distribution.

    Right now you have to create an MCP but v1s are always easier to maintain than v10.

    We're speed running a trap.

  • I get the debate in this thread but this is IMHO the detail that matters:

    "Many of these companies don't even have an external API! And yet, they're all building MCP servers."

    Whether or not MCP is a temporary means to an end or a more permanent standard is kind of missing the point that the overall callable API surface is expanding rapidly. How it's called by the agent is an implementation detail.

  • Based on the corporate I work, MCP is definitely not that. Not sure if it's useful, I just joined. We'll see.

  • A lot of companies will never build a great CLI, and many will not prioritize a clean public API unless there is obvious demand.

  • I totally agree, we’ve been working with enterprises and MCP is the defacto way they are using agents with data.

  • It's not 'who is building' but 'who is using' that's the concern.

    AI is a bandwagon tech, a lot of people will 'build because others are' adhering to an ostensible standard.

    Most of the people that I know are moving away from MCP in favour of skills where the advantage of MCP goes away if the REST API is clear enough.

    Also - I'm sorry to say but MCP management on Codex (and Claude) is just really bad. Everything from discovery, to management, to context window, to documentation - it feels unfinished as a 'feature' even if the protocol is supposed to be narrow.

    1) I have a big popup and yellow warning every time a window is opened or a sub agent is launched warning me that 'SkySomething Computer Use' does not work. I had to Google to find out that has something to do with Codex MCP. So already the externalizations of problems, resolutions ... not very well done.

    I'm not even sure what to do - and I'm honestly not interested in 'fixing' something I didn't cause, I'm not sure of, and don't want to deal with.

    2) Just listing the current MCPs, knowing really what the are for (clearly, concisely) is hard.

    This is what you get if you type /mcp in Codex:

    /mcp

      MCP Tools
    
      • No MCP tools available.
    
      • codex_apps
        • Auth: Bearer token
        • Tools: (none)
    
      • computer-use
        • Auth: Unsupported
        • Tools: (none)
    

    What's that supposed to mean? What is 'codex_apps'?

    As presented - it resolves to 'nonsense gibberish'. Those are things that I did not even install.

    Do you expect people magically know what 'codex_apps' is?

    Here is what 'AGI!' Codex 5.5 answered when I asked about 'codex_apps' is:

    ====

    " codex_apps appears to be Codex’s own internal cache/tooling area, not part of J1 (my project).

    "I only found it under .codex, e.g.:"

    " I did not find it referenced by the J1 source. So unless you saw it somewhere specific, treat it as Codex runtime metadata for app/tool integration, not project code."

    ====

    So even Codex itself has no idea what it's own MCP tools are, and after a full '1 minute of thinking' on 'xhigh' it responded with nonsense.

    This whole experience fundamentally deflates my perception of AU, OpenAI, Codex and MCP.

    This is supposed to be the 'future' but it feels like 1982 dialup.

    This is where 'traditional UX' really starts to show it's value obviously, but you really need to consider enhancing this experience, possibly with some traditional ux mechanisms.

    3) Knowing the 'state' of the MCP is totally opaque. Is the 'MCP server' running? Can I restart it? That might be outside the scope of 'Codex' but you're offering the product so all of the underlying stuff is essentially 'your responsibility' as well at least from a UX perspective. Why isn't the 'state' of the MCP listed.

    4) How can I not just easily enable/disable individual MCPs so they don't chew up context?

    5) How can I not discover MCPs from codex itself, so that I can find solutions to problems? MCPs are all a bit different, and awkward to install and manage. Like with VS Code, we can 'discover plugins'. Even from the Web we can search and discover plugins.

    While I realize that most of this rant is oriented around MCP tooling management, and not the standard, I do feel that these issues are 'fundamentally at the crux' of the situation.

    Our team has moved away from MCP into Skills - and after doing so, it's hard to see why MCP is going to be valuable - other than plausibly as defining some 'jon calling conventions'.

    There's a lot of obvious things to improve, please do that.

  • Hank Hill: "Excuse me, are y'all with the cult?"

    Jane #2: "We're not a cult. We're an organization that promotes love and—"

    Hank Hill: "Yeah, this is it."

  • Have you heard of the Ask Protocol? (https://abject.world/ask-protocol/).

    I might be biased because I came up with it, but we are over complicating these systems. There is a simpler way, and it appears to work well since I built a system using it to test the idea.

    • Main points that came to my mind:

      - I think the comparison to TCP/DNS/BGP is the more apt one compared to MCP/A2A

      - Those protocols negotiate capabilities and exchange information about themselves, but not in a self-serving manner of just talking about themselves, but with the goal of ultimately transporting data for a higher layer. Ask Protocol lacks that.

      - Objects don't exist in a vacuum, but in a context. As the objects will only know about themselves they will always be limited in how to describe themselves best. An LLM that lives on the outside and just gets a static description of an object will be in a much better description to answer an "ask" query.

      - Given that the existing agent protocols you are putting it in a context in already come with "description" fields and the like, the protocol seems too little of a value add to actually target. e.g. there is no benefit for a MCP server to conform to the prescribed manifest rather than implementing a freeform "ask" tool.

      - If you want to actually bring the point across that it "occupies a different position" than transport/agent protocols, don't put it into a comparison matrix where you force it into the same schema

      - ("Open Source" doesn't count as governance)

  • > practically ~every company on the planet is building an MCP server

    I work at Taco Bell. Every company on earth is working on Doritos Locos Tacos. I know this because I interact with every company on the planet, and they all tell me that Doritos Locos is in their development pipeline. When I see all of these “not everybody eats or wants Doritos Locos” posts I know that they are wrong because the appeal of them is universal, especially when paired with Baja Blast, mankind’s foremost favorite fluid

  • What do you think about MCP security being limited as it is. Frankly, it seems mathematically impossible.

  • Maybe MCP doesn't have to be the entire or only solution, or judged as such, and another tool in the toolkit.

  • No offense but you are paid to say these things. Your paycheck depends on it [1]

    [1] “It is difficult to get a man to understand something, when his salary depends on his not understanding it.” ― Upton Sinclair, I, Candidate for Governor: And How I Got Licked

Was this written by AI?

MCP is essentially just JSON RPC with a few special fields that must be included. I have reservations about JSON RPC, but there needs to be some 'service discovery' layer for LLMs to interface with.

It needs to be available in places like websites, desktop applications, backend services, etc. The CLI is only one place that these systems interface with.

Whatever you replace MCP with will be in a similar shape even if you specify a different communication protocol or different fields for tool discovery.

  • Every time I read articles about MCP I feel like the internet (or HN) is having a collective stroke.

    People are saying API are better than MCP. But MCP is just API with some instructions for the AI to discover how to use it. Nothing more nothing less. And some people are saying we should use 'CLI'... what does it even mean? LLMs are good with common CLI tools like ffmpeg because the knowledge is solidified inside the weights. If I make a new CLI tool I still need to somehow teach the AI to use it. If one wants the 'teaching' part comes from a server then MCP. If one wants it local and static then skills. How could there be so many debates around these simple concepts?

    • My take is that most of the AI related posts are written by AI under instruction of people who hype it up but have no idea about how any of it works.

      It all has some form of "the thing I'm doing is the future and everyone who doesn't join me will fall behind" energy that AI/NFT/blockchain/web3/etc. enthusiasts talk about when they're trying to sell you something or when they're trying to convince the world they really are the big money makers they claim to be.

      The LLM isn't going to care about where the tokens it's inserting into the context window are coming from. For all it cares the data it's processing came in over fax and was read in with OCR.

    • i feel exactly the same its literally the only api standard that we truly made plug and play and even automatically oauth antenticathable with dcr and people are falling over it. also in an absolute record speed thousands of mcps.

      cli’s also need to be documented and input/output typed.

      its also extremly dsitributable by just pointing to an url.

      cli’s are great because they are composable but i really got huge mileage out of mcps

  • It's the way that it occupies the context relatively permanently, that it doesn't come along with nice install/uninstall or discovery etc. is the problem.

    'Skills' should all be based on MCP, they should load on demand, be very easily manageable and discoverable by humans and by AI, and then it would work

    The scope was too narrow, given how it ended up being applied.

    If they layer something on top of it, it may yet be revived.

    • You do know MCPs are loaded on demand same as skills now right? The only place where sometimes it still uses too much context is if you have too many MCPs (same issue with skills) or some MCP is poorly designed and responds with huge description or MCP calls respond with way too much info, but skills can have this issue as well.

  > Problem 1: It Devours the Context Window

Like would running `linearcli --help` then `notioncli --help` then `slackcli --help` etc, or am I missing something? At least with MCP your harness could add in the context only the title of each tool and add full documentation on demand, MCP server by MCP server and tool by tool. The equivalent would be for all CLI to feature a "--short-descr" command.

  > Problem 2: Low Operational Reliability

If the tool is also using a REST API I see no reason why MCP should be slower, given the protocols are so close. When that happen, it's probably because MCP was added on top of an API, maybe hosted in a far away datacenter by a subcontractor? I won't argue that most MCP servers are probably awful, but that's an argument against the industry not the protocol.

  > Problem 3: Overlaps with Existing CLI/API

Yes, when a CLI tool already exist. A SQL MCP server sounds stupid to me, and a waste of token. Why not a curl MCP? But in the vast majority of shops, a cli tool does not exist. At best they have an API, which is designed to be used by programs not LLMs (you know what I mean).

  > Provide CLI -> API -> docs, in that order

Sure, and instead of slow and wasteful websites companies should first provide a native client for desktop, then a native client for phone.

  • > Like would running `linearcli --help` then `notioncli --help` then `slackcli --help` etc, or am I missing something?

    I'm not super deep into all of this, but I think except latest Claude Code release the mcp is frontloaded into the context. So if you don't need it that often you have to disable and enabled it again when needed.

    And I guess you can put some usage examples into the skill file. Which might migate the first --help.

    Also I guess with cli it's easy to spin up a sub agent with their own context that just returns the result?

The article has no date on it, but says deferred tool loading is a recent update that occurred after the article was written. Deferred tool loading was added in Nov 2025: https://www.anthropic.com/engineering/advanced-tool-use

So these numbers are at least 7 months out of date. Why is this being posted now?

  • +1

    Its crazy that people are still discussing this. It's ancient history. Deferred tool loading, large contexts, and prompt caching have made 2026 completely different from 2025.

    Also, the "CLI saves token" debate really falls apart when step one of using the CLI is running "--help". The problem remains: if knowing how to call the thing isn't in parametric memory, it has to be in context.

  • Deferred tool loading is not part of MCP. It's a Claude API special parameter that most other LLM APIs do not support.

    • OpenAI API also supports defer_loading https://developers.openai.com/api/docs/guides/tools-tool-sea...

      And it's not actually necessary for it to exist at the API level. It's a pattern. Making it API-side is just an optimization.

      To do it client-side: 1. Define a single tool, tool_search 2. List the names of your deferred tools in context (or tool_search's description) 3. When tool_search is called, match the query against the tool names (or names + descriptions) 4. Append the matched tool def to the context in a new <system>-esque tag

      Claude Code (as of the leak) does this client side. You can even see the custom matching function and A/B tests about whether to include the descriptions.

      Whether or not that tool definition comes from MCP or a local definition is kind of beside the point.

    • On the flip side, Claude is at fault in not letting you choose which tools on which MCP servers to keep in context. When I first starting using MCP about a year ago (not on Claude Code), my tools actually let me selectively turn on/off individual tools.

      Crazy that the company that invented MCP is not putting basic features like this in the product.

      1 reply →

    • Deferred cli/skill loading is also not part of CLIs or skills, it's all about how the coding agent/harness is implemented.

I'll kick myself for not remembering, but there was a fantastic article which suggested that MCP works at org level when unified, safe, access to internal utility APIs need to be given to non-technical staff who do use internal agent tools. Codify your workflow(s) via skills and share across instances, anything that needs context aware API access should be mcp...

  • But what is the advantage of MCP compared to having the agents access the API directly?

    • Agents are just a stream of text, they cannot access anything. Some kind of interpreter is needed that recognizes special patterns and runs real code.

      Do you mean directly == raw shell access on your production server?

  • So is this in lieu of using permissions to protect apis? Because it seems like API's should have some kind of permission mechanism around them anyway.

    • Yes and no -- you can give internal agents access to internal APIs by using rudimentary env var, and org level agentic services tend to offer that kind of permission based access (either roll your own, use an 'enterprise' service, or be knowledgeable that if things go wrong, they'll go very wrong). APIs should, at least from my perspective, always have permission mechanisms. But internal APIs, used by 'internal' agents, have access to those the same way users on the network do, just depends on what flavour of network one is using.

      Essentially it's anything that _could_ be on a dashboard, but _might_ be accessed conversationally via an agent.

  • Exactly right. Co’s like Runlayer are growing like wild exactly for this reason. Without a central control plane MCP is a minefield.

    • hadn't heard of runlayer, but it does make sense. I'm a huge advocate of skills based on the company/process or project owners perspectives and workflow habits rather than using skills.sh or similar. You will end up cosplaying as someone elses perspective and wonder why you don't understand it..

>> MCP consumes ~65x more tokens than the CLI approach.

For this example, there seems to be no explanation for the LLM to know when to use this curl command, etc. Is the idea that the linear API is known in the LLM weights already and therefore there is no need to include "the manual" in the context window? If so, it's a pretty narrow win.

  • Not just that, but they retracted this:

    > Update: Since these measurements were taken, Claude Code has rolled out Tool Search with Deferred Loading, which loads MCP tool schemas on-demand and reduces context usage by 85%+. The context bloat described in Problem 1 is largely addressed for users on current Claude Code versions. The performance, debugging, and architectural arguments below still apply.

    Because Claude Code only loads the tools it needs now, so context bloat is pretty much solved for MCPs.

> Restaurant analogy:

> You sit down and 10 menus (MCP tool definitions) are spread across the table

> There's no room left for actual food (your work)

> Every time you order, the menus have to be pulled out again

This is a bad analogy. Ordering repeatedly is uncommon except for tapas restaurants. You could easily put food on top of menus, but more commonly, menus are removed after ordering, thereby freeing the table (context??) for the food. If you're going to try to explain things by analogy, it's worth putting effort into making it more relevant.

Isn't MCP just a way to give agent tools? When you are building your own agent, you can define the tools manually, but if you're using something existing like opencode, how do you add new tools as a user? You use the API for that which is currently MCP. Saying MCP is dead is kind of like saying tools are dead, which is definitely not true because all modern LLM agents are trained for tool use and you wouldn't have agents without it.

The problems listed on the article are problems with specific tools that have large tool descriptions. This has nothing to do with MCP. There is nothing in MCP that would cause the tool descriptions to use more context than they would otherwise.

If you build connectors for yourself or your team, you probably can skip MCP because you can tell your friends to install CLI or whatever and provide extra prompts for your CLI.

If you have external users, then you have to use MCP, which comes with how to use each endpoint and etc. MCP is what their current apps e.g. Cowork, Cursor support out-of-the-box.

In that sense, MCP is very much not dead

  • If you need a network boundary, what MCP provides that REST API + llms.txt can't do?

    • OIDC? Ease of deployment in a company?

      You can have your IT department configure an MCP for the org, and your regular non-technical users click a button and login with their account the service. Then they get all the tool calls authenticated as themselves.

    • The AI probably can figure out. However, Claude Code and other tools are built to support MCP. This means MCP is probably more reliable than using REST API + llms.txt.

    • Standardization. Who writes llms.txt? Everyone writes their own? Will agents still behave the same?

CLIs have to be distributed. Also have to be kept up to date. An MCP doesn't t have to concern itself with backwards compatibility and can be changed willy nilly since it's essentially always up to date.

It's also easier to manage for non-tech people. Try telling the people over at HR or finance to install a CLI.

I used to compare MCP and Skill in my post (AI-assisted [1]) and also maintain a CLI/MCP/Skill for YouTube.

In my opinion, MCP is not dead. "MCP Belongs to Software Engineering", it ships existing concepts from software engineering into AI. CLI, MCP-tools, and OpenAPI are interchangeable to some degree, but MCP is more than tools; there are mcp-apps[2], lazy load in context[3].

[1]: https://log.ifor.dev/posts/mcp_vs_skill/

[2]: https://modelcontextprotocol.io/extensions/apps/overview

[3]: https://code.claude.com/docs/en/agent-sdk/tool-search

Well, I am not sure why everything is declared dead nowadays, I am actually trying to find the thing that actually die when people claim "x" is dead. Everyone is riding the wave, and so am I tbh...but the dead thing...I mean.. invite me to the funeral then

Feels like we’re continuing to trend toward deterministic workflows which may actually be okay in 90% of cases. Reality is there’s a lot of unnecessary token burn happening right now. Simple market dynamics will solve that, i.e., when token cost subsidies begin to fade away and we face the true cost of agent applications.

My mental model for MCPs is that it's like a Swagger/OpenAPI spec for LLMs. Point 2 doesn't make much sense in that context as it's describing MCP as a Swagger endpoint that's unstable.

Chrome/Ghidra MCP does have a tendency of crashing, but I'm not sure why this is. Is my way of thinking of MCP incorrect? If it really is a descriptor of how to talk to another tool, then why do they seem fragile at times? I feel like there's a gap in my knowledge somewhere.

  • What is special about MCP to make it any more or less fragile than any other software?

    MCP is a combination of a server responding to requests, and a prompt to tell the agent how to format those requests.

is this post old? MCP context poisoning was fixed like months ago

i personally was anti-MCP but they just work better in terms of tool search than a CLI, especially with the idea of tool nudging

  • > Update: Since these measurements were taken, Claude Code has rolled out Tool Search with Deferred Loading, which loads MCP tool schemas on-demand and reduces context usage by 85%+. The context bloat described in Problem 1 is largely addressed for users on current Claude Code versions. The performance, debugging, and architectural arguments below still apply.

    pretty much

I prefer the skill/CLI approach, but with Claude, I have found that building skills or plugins using CLI tools or bespoke code connected to external APIs runs into a problem with what Claude allows in its locked-down sandbox, particularly in Co-Work. The only way out of the sandbox seems to be MCP, and even then, there are timeout issues.

A good MCP server makes the difference between an agent using 20k tokens and 2 million. It may not matter yet with sponsored Codex and Claude subscriptions, but it will kill many use cases once providers switch to token-based billing.

That may sound like an exaggeration, but it’s exactly what I see in our product.

Humans developing something already have context that agents don’t have yet. Most agents start a task with virtually no prior knowledge. And they start from zero every single time. That may improve in the future, but we’re not there yet.

Can agents get the job done? Yes. But without a thoughtfully implemented MCP server, they are awkwardly inefficient.

  • Seems to me that you're saying the MCP is a simplified API with good documentation geared towards agents. But if that's the case, could you not exposes the simplified interface as part of the API, instead of exposing it in MCP?

    • When it is part of the API, the agent still has the choice between multiple options. If it chooses the less efficient one, the request can become significantly more CPU- and token-intensive than necessary.

      The problem is that the agent does not care. Its primary goal is to get the job done.

      Maybe the agent is smart enough to choose the optimal path, but that strongly depends on the model being used. You also do not know who is on the other side. With a human-facing API, you can usually assume who is using it and what they want to achieve. Humans are generally lazy and tend to look for the most efficient solution.

      An agent, however, will happily iterate through 1,000 users and fetch the online state for each one individually, even across multiple paginated requests if necessary.

      You can provide an endpoint that returns the online states for all users at once. A human will most likely use that endpoint, but I have seen agents go completely wild on the other side. :D

      At some point, you may get a response like “token limit reached.” But what do you do then? You give the agent more tokens and increase your bill, because you cannot even tell whether there was a more optimized way to achieve the same result.

      In practice, this is a surprisingly tricky problem. :D

MCP is still great if you're running AI in an environment that precludes a shell while needing dynamic tool discovery, but that's a narrow set. People are learning how useful it is to give AI access to a shell. If you're giving them a shell, may as well give them a CLI.

However, I don't think that's what is really hurting MCP, because it could evolve. What really killed it was the standards process and enterprise groups getting ahold of it. It went into spec writing and got adjudicated into uselessness all while enterprise authentication groups were figuring out the best angle to make money on it. I listened to a pitch from Okta on MCP and they wanted to charge out the nose for it for no good reason.

> Alternative 1: CLI-First Strategy

> Provide CLI -> API -> docs, in that order. LLMs already learned from man pages and StackOverflow.

So how is the agent going to know about your niche CLI? It's still going to use up context to learn your command line interface, same as for an MCP interface.

Agents only excel at CLIs if a particular CLI was part of their training data. The same would be true of well-known MCP interfaces.

> Alternative 2: Skills Pattern

> If MCP is "spreading all menus on the table upfront", Skills is "asking the librarian for only the book you need".

Or: Layer your MCP help commands, like a directory at a mall. The agent only looks up what it needs at the time.

The points in this article don't really land for me. They are mostly critiques of particular MCP implementations rather than the modality itself. My impression right now:

- MCPs are great for stateless, mostly read-only interactions with document store type things. Notion/Slack/Linear are perfect use cases. I have those MCPs connected to claude code and they work great. These tools never had CLIs or super well used public APIs to begin with. MCP handles the auth for me. Cool.

- MCPs are great but not fully necessary for "function shaped" things where you're trying to run some Function and that Function has a lot of parameters with some subtlety to them and perhaps needs some examples to really help the LLM understand. Though you can get away with a skill + curl, or a hand rolled script even.

- MCPs are not so great for interacting with more complex stateful systems with large surface area. You don't want/need an AWS MCP, for example. And of course Cloudflare is the canonical example here where they do have an MCP but it has a special "Code Mode" because they have a huge product surface and a lot of state.

Most companies are somewhere in the vast space between being a document store type thing and AWS, so aren't really sure what their MCP should look like, or how customers will use it, but feel like they're missing the boat if they don't ship something. So they ship an MCP and perhaps the people who need the document type stuff load it up and get some use out of it, but others are not so satisfied. Or maybe from the other direction, people are trying to use your product but aren't super technical or don't know how to best use it with AI, but "loading up an MCP" seems like a reasonable way to start, so they ask everyone "Where's your MCP"?

I run into this at work all the time. We get a lot of requests for an MCP. But our product is not so simple to just stuff into a bunch of stateless API calls. And we question whether the people requesting the MCP really know what they want it for, exactly, other than to hook up to claude code so they can say "claude go do everything" (which is a valid sentiment, but implies a lot of work on our end to figure out how to make that work well).

I have been working full time in the MCP (& WebMCP) space for about a year now. Half consulting half spec work.

The article is semi right. Local MCPs that are made by enthusiasts wrapping an api they don’t own? Yes that is dead and should never have been a thing in the first place.

But MCP in its current direction and form is really an OAuth Protocol over http. And it has something other that other agent identity protocols don’t: client adoption

Besides people with positions relevant to the field I'm weirded out by most of the replies, isn't MCP effectively just a communication standard? Like the only difference between an MCP server and my Express webserver is the supposed logic on how it needs to communicate with the AI, why are we making such a big deal out of it? Eventually we'll all converge into some form of standard to link things to our LLMs and it's probably going to be based in some form on MCP, but I genuinely don't get what the big deal is

2024. Oh woe, I have to scrape everything, why don't companies just give me an API to consume what I need.

2026. Oh woe, the MCP that all the companies are giving me isn't ideal.

2028? oh woe, the CLI that calls the REST API, that calls the MCP that all the companies are giving me..

IDK, in my company we are qwen code base agent with quite a few MCP's:

Jira

Confluence

Gitlab

Logs & Metrics platform (inhouse solution)

QA (not sure what this one does)

Context7

mattermost

I have no idea about modern trands etc, but I wouldn't say that MCP is dead. Not the hottest new thing, sure.

A bit off topic, but I think Google's A2A protocol could be a sleeper hit vs. the MCP protocol.

Not because it's better, but with one switch a significant portion of web traffic can be directed to A2A servers through Google's new search box.

I’m sure Unisys will still support it for decades to come.

Oh. You mean that new thing also named MCP?

I've thought that skills and small scripts > MCP for quite a while now, tried out MCP in the early days (official ones, ones i made for scripts i already had), but they always end up using more tool calls/tokens than if i had just written a script + skill for claude.

A CLI or authenticated web endpoint requires somewhat arbitrary terminal or code access. MCP wraps the functionality in a way that doesn't require nearly the same permissions. Doesn't that enable a whole different class of users?

It sounds like what we need is a better option for converting an existing OpenAPI into an MCP Server?

I use all three (MCP/CLI/API) based on what Claude excels at:

* CLI: GitHub & AWS it already knows how to operate the CLIs well. Even learned about a few new CLIs like 1Password's op which it volunteered one day.

* MCP: Supabase, Shopify etc. where the CLI would be non-obvious and the affordances from the tools/descriptions helps Claude maneuver.

* API: Sometimes it just knows an API exists and is able to call it directly with python/curl. I discovered from Claude the Pokemon ecosystem has a free API out there for example.

People who say MCPs are dead don’t understand how MCPs work or when to use them.

We can't generalize, it depends on the case, and it's not a XOR. I personally go CLI first, and if not possible MCP.

I just don't see how she missed in her example that the post to linear graphql endpoint needs the model to load the graphql definitions, there's no way it's 65x the tokens. Whatever overage it actually is, it's well worth not having to muck around with graphql.

I think those are solvable problems. E.g. wrap mcp in skill or seperate forked (non context eating) call to smaller model to ask which mcps are applicable. Iet probably does this. Honestly I have not had issues with MCPs where I felt compelled to debug them.

MCPs are very useful when you don't have a CLI or you do but the MCP can handle auth like a proxy to something (e.g. Splunk). Or just for the USB-C analogy she gave.

I was writing MCP servers, now I just write tools for agents to consume. It's often easier to simply write the tool you need and suggest to it to look at the tool to do that thing.

I was also surprised to find out Claude knew how to use the gitlab api with pointing it at the token var in the environment. But for corporations it might make more sense to use a cli to keep the secrets separate from the agent.

  • > now I just write tools for agents to consume

    What do you mean? Tool is a pretty generic concept.

When agents don’t encrypt secrets, MCP servers help prevent users from handing their API tokens to AI providers or intermediaries such as Cloudflare and Akamai.

What comes after CLI?

In the early days of computing, desktop apps and later webapps provided richer human experiences.

What will provide richer experiences for agents, after CLIs?

> Using existing CLI directly: No context wasted on tool definitions

Can someone explain this to me? I've seen claude code try to run a not-well-known package and it basically shot in the dark a command, noticed that failed, then ran the help command for the cli tool to get a list of commands and what they do.

How is that different than passing the tools with an MCP? Like how are we saving context?

  • The usual problem is companies write an MCP server with 50 different tools, and each one has a schema, description, etc. Say each tool is 150 tokens, that's 150 * 50, or 7500 tokens, dumped into the beginning of every session. Compared to a text file that gets loaded on demand with command-line tool examples, so you still get close to the same amount of context, but you can control what tool definitions you pull in.

    The other thing is the agent gets the entire MCP API response dumped into context as a tool response in JSON, which can be a lot. Compare that to shell commands where agents often `head` or `tail` or `grep` the response (which I kinda hate, but it does save tokens).

    It also depends on whether the agent loads them on-demand or not (most modern agents do), and whether your MCP has a ton of tools or not. If your MCP only has 2 tools, and the responses aren't big, it's really not that much context.

    The other thing that doesn't get talked about is the non-determinism of shell one-liners. There is a lot more non-determinism in shell tool calls; the AI can mess up commands, options, arguments. It can incorrectly filter output, miss output, miss return status, which results in re-running calls, polluting context, making results worse. Compare that to MCP calls which are more likely to succeed because they have a schema, well-defined errors, etc. Do you want less token use or more reliable results?

    The thing is, you don't have to pick a side. I personally use both MCPs and CLIs at different times in different ways. Often I'll have the AI write a small script to do many calls (sometimes with tools, sometimes with libraries) which saves tokens, allows me to review, and is more deterministic.

I never understand the "eats context" argument. Why do you have so many MCP enabled in the first place? Do you actually use them in every project?

So what's this saying? Rather than trust the llm to query external tools via mcp you should handle the external queries yourself? Otherwise the llm wastes a bunch of queries?

The vernacular around prompts, text, and docs, is quite amazing. Marketing really is value creation.

The idea that MCP tool definitions take up a certain number of tokens is laughable. That's an implementation detail of the agent harness. MCP is just an API specification. Hell, there's nothing in it that makes it much of any different than OpenAPI, except that its a bit more local-dev focused. There's a thousand things harnesses can and do do to optimize MCP beyond just "spit out the raw MCP output into the context window and pray".

MCP is just one of many -insecure- protocols that will be swallowed by a runtime governance protocol (like g8e) that is purpose-built for security, not to 'move fast and break stuff'.

Man I wish I could downvote stories. There needs to be some way to push back against dark patterns in writing, like clickbait.

Clearly MCP is not dead, as the article itself says. But the article lies in order to play on human sentiment/heuristics and steal your attention. It's like shouting fire in order to get people to run over to see your business.

Do CLI enjoyers realize that MCP can be called via curl?

For example I have a no-auth clock for AI deployed from https://github.com/firasd/mcpclock to https://mcpclock.firasd.workers.dev/mcp (anyone is welcome to go ahead and add it to your AI apps as an MCP endpoint)

You can still call it via CLI if you're a MCP hater

curl -s -X POST "https://mcpclock.firasd.workers.dev/mcp" -H "Content-Type: application/json" -H "Accept: application/json, text/event-stream" -d '{"jsonrpc":"2.0","id": 1,"method":"tools/call","params":{"name":"clock_get","arguments":{}}}' event: message data: {"result":{"content":[{"type":"text","text":"[\n {\n \"timezone\": \"UTC\",\n \"iso\": \"2026-05-30T04:05:07.175Z\",\n \"unixtime\": 1780113907\n },\n {\n \"timezone\": \"Alphadec\",\n \"alphadec\": \"2026_K6G7_066464\"\n }\n]"}]},"jsonrpc":"2.0","id":1}

curl -s -X POST "https://mcpclock.firasd.workers.dev/mcp" -H "Content-Type: application/json" -H "Accept: application/json, text/event-stream" -d '{"jsonrpc":"2.0","id": 1,"method":"tools/list","params":{"name":"","arguments": {}}}' 2>&1 | grep '^data:' | sed 's/^data: //'| jq -r '.result. tools[].name' clock_get clock_day_info clock_convert clock_convert_alphadec clock_convert_unixtime clock_shift_utc clock_delta_utc clock_delta_alphadec

The "just use a CLI" crowd is implicitly assuming:

1) You're a developer 2) On a laptop 3) With a shell open Inside an agentic coding harness (Claude Code, Codex CLI, Cursor) 4) Working on a software project 5) That's like... maybe 2% of AI usage.

The other 98% is: Someone on the ChatGPT iOS app asking a question on the subway; Someone in Claude.ai web chatting about their calendar; Someone using ChatGPT Desktop to summarize their Notion; A non-developer using AI in a browser at work; Voice mode on a phone; An embedded chat widget on some company's website...

These AI slop articles about AI are getting especially boring to read.

> Problem 1: It Devours the Context Window

Don't harnesses support progressive discovery these days?

Claude (200K).... GPT-4o..........?

> every MCP server adds a process layer between the LLM and the underlying API

But a CLI doesn't?

------------------

> Measurement: Tool Definition Sizes

> MCP Server: Linear, Notion, Slack, Postgres

Oh, so these are the MCP servers that are examples of context bloat we're going to replace! Later in the article:

> At Quandri we use all three approaches side by side...

> MCP for services without a strong CLI (Slack, Linear, Notion)

  • There's a fix for the context which involved an mcp search and execute gateway. Essentially the mcp server queries for desired capabilities, gets search results with execution and requirement details and fires off the actual mcp as subcalls:

    https://github.com/day50-dev/mcp-search-and-run

    You can call it "rag for mcp". I was pushing it hard a few months ago and nobody seemed to care but I'm all in if the timing has caught up to the tech.

    It's nontrivial effort: basically a giant survey of all the mcp servers, running inference over them to figure out how to instrument them, cross referencing to make sure they are the "official" sources (or at least the ones that search engines think are) then using qdrant to do embeddings and reranking and offering it for free.

    If people have become interested I'm all in. I'll bring the infra back up. I just don't want to spin my wheels on dead end streets.

    The value proposition is solid, the problem is real, this fix works, it's fast, it's free, and people give exactly zero shits. I dunno...

    One day I'll figure it out, hopefully...

MCP is dead. AI bubble. Windows is dead. Linux is dead.

The only thing worse than the people saying it are the people that repeat it.

Everyone is sort of missing the point here.

While the title is quite obnoxious, the author is right.

I don't think that anyone would argue against standardizing training for any model on ways of invoking tools through specific output templates (with MCP being an extension of that). However, the question is what is the best way of having the model use those tools? There are 2 options

1 - Encode actual functionality during training, let the model figure out how to use available tools to do what it needs to. Latest Claude models are a good example of this, when editing files if it encounters issues with the under the hood tool, it will write a bash python command to edit the file

2 - Describe functionality in instruction context. This allows you to define complex sequences of things to do, but at the risk of the model losing context as the conversation continues.

3 - Use tool calling, where every request gets an available tools section appended to it, and define the complex functionality in the static code (whether its local tools or MCP servers)

Ideally, if we are pushing towards smarter models, the answer is between 1 and 2, where you have a model that only has access to be able to run shell commands, and some memory that it can reference on sequences of shell commands to run. An MCP invocation is then a simple echo jsonrpc pipe to local executable or a curl command. Eventually, its probably worthwhile to have your LLM run in a CPU like sandbox where it can execute arbitrary assembly commands from sequences stored in memory to do what it needs to do.

Until then, 2 and 3 are really what we have for adapting with current frameworks.

  • No. The author is wrong. If you’re still using single model/context then it’s kinda your own fault for using things poorly.

[flagged]

  • Then don't read the article, and don't post your Human Slop to this discussion. With your incurious attitude and performative compulsion to proudly announce your cultivated self imposed ignorance instead of contributing to the discussion, it would be best for everyone if you just deleted your account. Your best hope is to go find a job in the Trump Administration regulating AI, where you'll fit in perfectly.

I don't know about it being dead, but i certainly stopped using it because it kills the context. A huge amount of tokens are wasted to mcp when in use. Skills use far fewer tokens. From my experience anyway. I'm also not advanced enough so maybe I'm not using it right.