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mcpctl/docs/virtual-llms.md

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# Virtual LLMs
A **virtual LLM** is an `Llm` row in mcpd that's *registered by an mcplocal
client* rather than created by hand with `mcpctl create llm`. Inference for
a virtual LLM is relayed back through the publishing mcplocal's SSE control
channel — **mcpd never needs to know the local URL or hold its API key**.
When the publishing mcplocal goes away (or the user shuts down their
laptop) the row decays: `active → inactive` after 90 s without a
heartbeat, then deleted after 4 h of inactivity. A reconnecting mcplocal
adopts the same row using a sticky `providerSessionId` it persisted at
first publish.
## When to use this
- **Local model on a developer laptop** that you want everyone on the
team to be able to chat with via `mcpctl chat-llm <name>`. The model
doesn't need to be reachable from mcpd's k8s pods — only the user's
mcplocal does (which is already the case because mcplocal pulls
projects from mcpd over HTTPS).
- **Hibernating models** that wake on demand (v2 — see "Roadmap").
- **Pool of identical models** distributed across user laptops, eligible
for load balancing (v4).
If your model is reachable from mcpd's k8s pods over LAN/VPN, you don't
need a virtual LLM — just `mcpctl create llm <name> --type openai --url …`
and you're done.
## Publishing a local provider
mcplocal's local config (`~/.mcpctl/config.json`) gains a `publish: true`
opt-in per provider:
```json
{
"llm": {
"providers": [
{
"name": "vllm-local",
"type": "openai",
"model": "Qwen/Qwen2.5-7B-Instruct-AWQ",
"url": "http://127.0.0.1:8000/v1",
"tier": "fast",
"publish": true
}
]
}
}
```
Restart mcplocal:
```fish
systemctl --user restart mcplocal
```
The registrar:
1. Reads `~/.mcpctl/credentials` for `mcpdUrl` + bearer token.
2. POSTs to `/api/v1/llms/_provider-register` with the publishable set.
3. Persists the returned `providerSessionId` to
`~/.mcpctl/provider-session` so the next restart adopts the same
mcpd row.
4. Opens the SSE channel at `/api/v1/llms/_provider-stream`.
5. Heartbeats every 30 s.
6. Listens for `event: task` frames and runs them against the local
`LlmProvider`.
If `~/.mcpctl/credentials` doesn't exist (e.g. you haven't run
`mcpctl auth login`), the registrar logs a warning and skips —
publishing is a best-effort feature, not a boot blocker.
## Verifying
```fish
$ mcpctl get llm
NAME KIND STATUS TYPE MODEL TIER KEY ID
qwen3-thinking public active openai qwen3-thinking fast secret://litellm-key/API_KEY cmofx8y7u…
vllm-local virtual active openai Qwen/Qwen2.5-7B-Instruct-AWQ fast - cmoxz12ab…
$ mcpctl chat-llm vllm-local
─────────────────────────────────────────────────────────
LLM: vllm-local openai → Qwen/Qwen2.5-7B-Instruct-AWQ
Kind: virtual Status: active
─────────────────────────────────────────────────────────
> hello?
Hi! …
```
You can also chat with public LLMs the same way:
```fish
$ mcpctl chat-llm qwen3-thinking
```
The CLI doesn't care about `kind` — mcpd's `/api/v1/llms/<name>/infer`
route branches on it server-side.
## Lifecycle in detail
| State | What it means |
|----------------|---------------------------------------------------------------------------------|
| `active` | Heartbeat received within the last 90 s and the SSE channel is open. |
| `inactive` | Either the SSE closed or the heartbeat watchdog tripped. Inference returns 503. |
| `hibernating` | Publisher is online but the backend is asleep; the next inference triggers a `wake` task before relaying. |
Two timers on mcpd run the GC sweep:
- **90 s** without a heartbeat → flip `active``inactive`.
- **4 h** in `inactive` → delete the row entirely.
A reconnecting mcplocal with the same `providerSessionId` revives every
inactive row it owns; it only orphans rows that fell past the 4-h cutoff.
## Inference relay
When mcpd receives `POST /api/v1/llms/<virtual>/infer`:
1. Look up the row, see `kind=virtual` + `status=active`.
2. Find the open SSE session for that `providerSessionId`. Missing
session → 503.
3. Push a `{ kind: "infer", taskId, llmName, request, streaming }`
task frame onto the SSE.
4. mcplocal pulls, calls `LlmProvider.complete(...)`, and POSTs the
result back to `/api/v1/llms/_provider-task/<taskId>/result`:
- non-streaming: `{ status: 200, body: <chat.completion> }`
- streaming: per-chunk `{ chunk: { data, done? } }`
- failure: `{ error: "..." }`
5. mcpd forwards the result/chunks out to the original caller.
**v1 caveat — streaming granularity**: `LlmProvider.complete()` returns
a finalized `CompletionResult`, not a token stream. Streaming requests
therefore arrive at the caller as a single delta + `[DONE]`. Real
per-token streaming is a v2 concern.
## Wake-on-demand (v2)
A provider whose backend hibernates (a vLLM instance that suspends
when idle, an Ollama daemon that exits when nothing's connected, …)
can declare a **wake recipe** in mcplocal config. When that provider's
`isAvailable()` returns false at registrar startup, the row is
published as `status=hibernating`. The next inference request that
hits the row triggers the recipe and waits for the backend to come up
before relaying.
Two recipe types:
```jsonc
// HTTP — POST to a "wake controller" that starts the backend out of band.
{
"name": "vllm-local",
"type": "openai",
"model": "...",
"publish": true,
"wake": {
"type": "http",
"url": "http://10.0.0.50:9090/wake/vllm",
"method": "POST",
"headers": { "Authorization": "Bearer ..." },
"maxWaitSeconds": 60
}
}
```
```jsonc
// command — spawn a local process (systemd, wakeonlan, custom script).
{
"name": "vllm-local",
"type": "openai",
"model": "...",
"publish": true,
"wake": {
"type": "command",
"command": "/usr/local/bin/start-vllm",
"args": ["--profile", "qwen3"],
"maxWaitSeconds": 120
}
}
```
How a request flows when the row is `hibernating`:
```
client → mcpd POST /api/v1/llms/<name>/infer
mcpd: status === hibernating → push wake task on SSE
mcplocal: receive wake task → run recipe → poll isAvailable()
→ heartbeat each tick → POST { ok: true } back
mcpd: flip row → active, push the original infer task
mcplocal: run inference → POST result back
mcpd → client (forwards the inference result)
```
Concurrent infers for the same hibernating Llm share a single wake
task — only the first request triggers the recipe; later ones await
the same in-flight wake promise. After the wake settles, every queued
infer dispatches in order.
If the recipe fails (HTTP non-2xx, command exits non-zero, or the
provider doesn't come up within `maxWaitSeconds`), every queued infer
is rejected with a clear error and the row stays `hibernating`
the next request gets a fresh wake attempt.
## Roadmap (later stages)
- **v3 — Virtual agents**: mcplocal publishes its local agent configs
(model + system prompt + sampling defaults) into mcpd's `Agent` table.
- **v4 — LB pool by model**: agents can target a model name instead of
a specific Llm; mcpd picks the healthiest pool member per request.
- **v5 — Task queue**: persisted requests for hibernating/saturated
pools. Workers pull tasks of their model when they come online.
## API surface (v1)
```
POST /api/v1/llms/_provider-register → returns { providerSessionId, llms[] }
GET /api/v1/llms/_provider-stream → SSE channel; require x-mcpctl-provider-session header
POST /api/v1/llms/_provider-heartbeat → { providerSessionId }
POST /api/v1/llms/_provider-task/:id/result
→ one of:
{ error: "msg" }
{ chunk: { data, done? } }
{ status, body }
GET /api/v1/llms → list (now includes kind, status, lastHeartbeatAt, inactiveSince)
POST /api/v1/llms/<virtual>/infer → routes through the SSE relay
DELETE /api/v1/llms/<virtual> → delete unconditionally (also runs GC's job)
```
RBAC piggybacks on `view/edit/create:llms` — no new resource. Publishing
a virtual LLM is morally a `create:llms` operation.
## See also
- [agents.md](./agents.md) — what an Agent is and how it pins to an LLM.
- [chat.md](./chat.md) — `mcpctl chat <agent>` (full agent flow).
- The CLI: `mcpctl chat-llm <name>` (this doc) is the stateless
counterpart for raw LLM chat.