352 lines
8.6 KiB
Markdown
352 lines
8.6 KiB
Markdown
# llmfit REST API Guide
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This document is for agent/client builders integrating with `llmfit serve`.
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## Purpose
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`llmfit serve` exposes node-local model fit analysis (same core data used by TUI/CLI) over HTTP and serves a local web dashboard.
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Primary use case:
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- Query each node in a cluster for top runnable models.
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- Aggregate externally (scheduler/controller/UI) for placement decisions.
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## Start the server
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```sh
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llmfit serve --port 8787
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```
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Global flags still apply:
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```sh
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llmfit --memory 24G --ram 64G --cpu-cores 16 --max-context 8192 serve --port 8787
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```
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Hardware overrides (`--memory`, `--ram`, `--cpu-cores`) are reflected in API responses, making the server report the overridden values instead of the detected hardware.
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## Base URL
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Default local base URL:
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```text
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http://127.0.0.1:8787
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```
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To expose outside localhost, pass `--host 0.0.0.0`.
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### Unix domain socket
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For same-host consumers that should not touch the network at all (e.g. a
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sidecar in a `hostNetwork` Kubernetes pod, where a TCP bind would land on the
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node's loopback), listen on a Unix socket instead:
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```sh
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llmfit serve --unix-socket /run/llmfit/llmfit.sock
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```
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The socket is created with mode `0660`; a stale socket file from a previous
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instance is replaced automatically. All HTTP endpoints are identical:
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```sh
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curl --unix-socket /run/llmfit/llmfit.sock http://localhost/api/v1/system
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```
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`--unix-socket` conflicts with `--host`/`--port` and is unix-platforms only.
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If you are building from source and want the dashboard embedded in `llmfit`, build web assets first:
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```sh
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cd llmfit-web && npm ci && npm run build
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```
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## Endpoints
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### `GET /`
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Web dashboard entrypoint (same-origin UI for fit exploration).
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### `GET /health`
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Liveness probe.
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Example response:
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```json
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{
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"status": "ok",
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"node": {
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"name": "worker-1",
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"os": "linux"
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}
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}
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```
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---
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### `GET /api/v1/system`
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Returns node identity + detected hardware.
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Example response shape:
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```json
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{
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"node": {
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"name": "worker-1",
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"os": "linux"
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},
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"system": {
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"total_ram_gb": 62.23,
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"available_ram_gb": 41.08,
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"cpu_cores": 14,
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"cpu_name": "Intel(R) Core(TM) Ultra 7 165U",
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"has_gpu": false,
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"gpu_vram_gb": null,
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"gpu_name": null,
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"gpu_count": 0,
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"unified_memory": false,
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"backend": "CPU (x86)",
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"gpus": []
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}
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}
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```
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---
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### `GET /api/v1/models`
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Returns filtered/sorted model-fit rows for this node.
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Envelope shape:
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```json
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{
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"node": { "name": "worker-1", "os": "linux" },
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"system": { "...": "..." },
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"total_models": 23,
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"returned_models": 10,
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"filters": { "...": "echo of query state" },
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"models": [
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{
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"name": "Qwen/Qwen2.5-Coder-7B-Instruct",
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"provider": "Qwen",
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"parameter_count": "7B",
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"params_b": 7.0,
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"context_length": 32768,
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"use_case": "Coding",
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"category": "Coding",
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"release_date": "2025-03-14",
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"is_moe": false,
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"fit_level": "good",
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"fit_label": "Good",
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"run_mode": "gpu",
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"run_mode_label": "GPU",
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"score": 86.5,
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"score_components": {
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"quality": 87.0,
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"speed": 81.2,
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"fit": 90.1,
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"context": 88.0
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},
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"estimated_tps": 42.5,
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"runtime": "llamacpp",
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"runtime_label": "llama.cpp",
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"best_quant": "Q5_K_M",
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"memory_required_gb": 5.8,
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"memory_available_gb": 12.0,
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"utilization_pct": 48.3,
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"notes": [],
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"gguf_sources": []
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}
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]
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}
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```
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---
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### `GET /api/v1/models/top`
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Key scheduling endpoint. Same schema as `/api/v1/models`, but defaults to top 5 runnable entries.
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Important behavior:
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- Defaults `limit=5`.
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- Excludes `too_tight` rows unless explicitly overridden (and top endpoint still keeps runnable semantics).
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---
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### `GET /api/v1/models/{name}`
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Path-constrained search. Equivalent to a text search scoped by `{name}`.
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Useful for:
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- Client-side drilldown after selecting a model family.
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## Query parameters
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Supported on `/api/v1/models` and `/api/v1/models/top` (also `/api/v1/models/{name}`):
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- `limit` (or alias `n`): max rows returned.
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- `perfect`: `true|false` (when `true`, only perfect fits).
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- `min_fit`: `perfect|good|marginal|too_tight`.
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- `runtime`: `any|mlx|llamacpp`.
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- `use_case`: `general|coding|reasoning|chat|multimodal|embedding`.
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- `provider`: provider substring filter.
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- `search`: free-text filter (name/provider/params/use-case/category).
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- `sort`: `score|tps|params|mem|ctx|date|use_case`.
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- `include_too_tight`: include unrunnable rows (defaults true for `/models`, false for `/models/top`).
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- `max_context`: per-request context cap used by memory estimation.
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- `force_runtime`: `mlx|llamacpp|vllm` — override automatic runtime selection during analysis (e.g. get llama.cpp recommendations on Apple Silicon instead of MLX).
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## Error handling
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Invalid filter values return HTTP 400:
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```json
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{
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"error": "invalid min_fit value: use perfect|good|marginal|too_tight"
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}
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```
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Server errors return HTTP 500 with `{"error": "..."}`.
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## Client integration recommendations
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### 1) Polling pattern for schedulers
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For each node agent:
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1. Call `/health`.
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2. Call `/api/v1/system`.
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3. Call `/api/v1/models/top?limit=K&min_fit=good`.
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4. Attach node metadata and forward to your central scheduler.
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### 2) Conservative placement defaults
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For production placement, prefer:
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```text
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min_fit=good
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include_too_tight=false
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sort=score
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limit=5..20
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```
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### 3) Per-workload targeting
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Examples:
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- Coding workloads: `use_case=coding`
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- Embedding workloads: `use_case=embedding`
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- Runtime constrained to llama.cpp fleet: `runtime=llamacpp`
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### 4) Stable parsing
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Treat unknown fields as forward-compatible additions:
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- Parse required fields you depend on.
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- Ignore unknown fields.
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## Curl examples
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```sh
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curl http://127.0.0.1:8787/health
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curl http://127.0.0.1:8787/api/v1/system
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curl "http://127.0.0.1:8787/api/v1/models?limit=20&min_fit=marginal&sort=score"
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curl "http://127.0.0.1:8787/api/v1/models/top?limit=5&min_fit=good&use_case=coding"
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curl "http://127.0.0.1:8787/api/v1/models/Mistral?runtime=any"
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```
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---
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## MCP Server Mode
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llmfit can run as an MCP (Model Context Protocol) server over stdio, making it discoverable by AI agents (Claude, Cursor, etc.).
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### Start the MCP server
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```sh
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llmfit serve --mcp
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```
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Global hardware overrides still apply:
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```sh
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llmfit --memory 24G --ram 64G serve --mcp
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```
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### MCP client configuration
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Add to your MCP client config (e.g. `claude_desktop_config.json`):
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```json
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{
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"mcpServers": {
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"llmfit": {
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"command": "llmfit",
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"args": ["serve", "--mcp"]
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}
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}
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}
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```
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### Available tools
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| Tool | Description | Parameters |
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|------|-------------|------------|
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| `get_system_specs` | Node hardware info (RAM, GPU, CPU) | None |
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| `recommend_models` | Top models for this hardware | `limit?`, `use_case?`, `min_fit?`, `runtime?`, `license?`, `sort?` |
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| `search_models` | Free-text model search | `query`, `limit?` |
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| `plan_hardware` | Hardware requirements for a model | `model`, `context?`, `quant?`, `target_tps?` |
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| `get_runtimes` | Installed inference runtimes | None |
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| `get_installed_models` | Models in local runtimes | None |
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---
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## NATS Event Publishing
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When built with the `nats` feature, llmfit can publish hardware and model events to NATS for integration with coordination systems (e.g. Sympozium membrane).
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### Build with NATS support
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```sh
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cargo build --features nats
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```
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### Enable event publishing
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```sh
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llmfit serve --send-events --nats-url nats://localhost:4222
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llmfit serve --mcp --send-events # also works with MCP mode
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```
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The `NATS_URL` environment variable is also supported.
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### Event subjects
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Events are published to `llmfit.{event_type}.{hostname}`:
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| Subject | Trigger | Payload |
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|---------|---------|---------|
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| `llmfit.system.{hostname}` | Startup + every 60s | System hardware specs |
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| `llmfit.fit.{hostname}` | After fit analysis | Model fit summary |
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| `llmfit.plan.{hostname}` | After plan estimate | Plan estimate |
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| `llmfit.runtimes.{hostname}` | Startup + on query | Runtime availability |
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| `llmfit.installed.{hostname}` | Startup + on query | Installed models |
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### Event envelope
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All events are wrapped in a common envelope:
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```json
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{
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"timestamp": "1747058400",
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"hostname": "worker-1",
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"event_type": "system",
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"version": "1",
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"data": { ... }
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}
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```
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### Subscribe to events
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```sh
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nats sub 'llmfit.>' # all events from all nodes
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nats sub 'llmfit.system.>' # system specs from all nodes
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nats sub 'llmfit.system.worker-1' # system specs from specific node
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```
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---
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## Versioning notes
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Current API prefix is `v1`.
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If you build long-lived clients, pin to `/api/v1/...` and validate behavior with the local test script in `scripts/test_api.py`.
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