--- summary: "Run OpenClaw with LM Studio" read_when: - You want to run OpenClaw with open source models via LM Studio - You want to set up and configure LM Studio title: "LM Studio" --- LM Studio runs llama.cpp (GGUF) or MLX models locally, as a GUI app or the headless `llmster` daemon. For install and product docs, see [lmstudio.ai](https://lmstudio.ai/). ## Quick start Install LM Studio (desktop) or `llmster` (headless), then start the server: ```bash lms server start --port 1234 ``` Or run the headless daemon: ```bash lms daemon up ``` If using the desktop app, enable JIT for smooth model loading; see the [LM Studio JIT and TTL guide](https://lmstudio.ai/docs/developer/core/ttl-and-auto-evict). ```bash export LM_API_TOKEN="your-lm-studio-api-token" ``` If LM Studio authentication is disabled, leave the API key blank during setup. See [LM Studio Authentication](https://lmstudio.ai/docs/developer/core/authentication). ```bash openclaw onboard ``` Choose `LM Studio`, then pick a model at the `Default model` prompt. Change the default model later: ```bash openclaw models set lmstudio/qwen/qwen3.5-9b ``` LM Studio model keys use an `author/model-name` format (e.g. `qwen/qwen3.5-9b`); OpenClaw model refs prepend the provider: `lmstudio/qwen/qwen3.5-9b`. Find the exact key for a model by running the command below and looking at the `key` field: ```bash curl http://localhost:1234/api/v1/models ``` ## Non-interactive onboarding ```bash openclaw onboard --non-interactive --accept-risk --auth-choice lmstudio ``` Or specify base URL, model, and API key explicitly: ```bash openclaw onboard \ --non-interactive \ --accept-risk \ --auth-choice lmstudio \ --custom-base-url http://localhost:1234/v1 \ --lmstudio-api-key "$LM_API_TOKEN" \ --custom-model-id qwen/qwen3.5-9b ``` `--custom-model-id` takes the model key as returned by LM Studio (e.g. `qwen/qwen3.5-9b`), without the `lmstudio/` provider prefix. Pass `--lmstudio-api-key` (or set `LM_API_TOKEN`) for authenticated servers; omit it for unauthenticated servers and OpenClaw stores a local non-secret marker instead. `--custom-api-key` is still accepted for compatibility, but `--lmstudio-api-key` is preferred. This writes `models.providers.lmstudio` and sets the default model to `lmstudio/`. Providing an API key also writes the `lmstudio:default` auth profile. Interactive setup can additionally prompt for a preferred load context length and applies it across the discovered models it saves to config. ## Configuration ### Streaming usage compatibility LM Studio doesn't always emit an OpenAI-shaped `usage` object on streamed responses. OpenClaw recovers token counts from llama.cpp-style `timings.prompt_n` / `timings.predicted_n` metadata instead. Any OpenAI-compatible endpoint resolved as a local endpoint (loopback host) gets this same fallback, which covers other local backends such as vLLM, SGLang, llama.cpp, LocalAI, Jan, TabbyAPI, and text-generation-webui. ### Thinking compatibility When LM Studio's `/api/v1/models` discovery reports model-specific reasoning options, OpenClaw exposes matching `reasoning_effort` values (`none`, `minimal`, `low`, `medium`, `high`, `xhigh`) in model compat metadata. Some LM Studio builds advertise a binary UI option (`allowed_options: ["off", "on"]`) while rejecting those literal values on `/v1/chat/completions`; OpenClaw normalizes that binary shape to the six-level scale before sending requests, including for older saved config that still has `off`/`on` reasoning maps. ### Explicit configuration ```json5 { models: { providers: { lmstudio: { baseUrl: "http://localhost:1234/v1", apiKey: "${LM_API_TOKEN}", api: "openai-completions", models: [ { id: "qwen/qwen3-coder-next", name: "Qwen 3 Coder Next", reasoning: false, input: ["text"], cost: { input: 0, output: 0, cacheRead: 0, cacheWrite: 0 }, contextWindow: 128000, maxTokens: 8192, }, ], }, }, }, } ``` ### Disabling preload LM Studio supports just-in-time (JIT) model loading, loading models on first request. OpenClaw preloads models through LM Studio's native load endpoint by default, which helps when JIT is disabled. To let LM Studio's JIT, idle TTL, and auto-evict behavior own model lifecycle instead, disable OpenClaw's preload step: ```json5 { models: { providers: { lmstudio: { baseUrl: "http://localhost:1234/v1", api: "openai-completions", params: { preload: false }, models: [{ id: "qwen/qwen3.5-9b" }], }, }, }, } ``` ### LAN or tailnet host Use the LM Studio host's reachable address, keep `/v1`, and make sure LM Studio is bound beyond loopback on that machine: ```json5 { models: { providers: { lmstudio: { baseUrl: "http://gpu-box.local:1234/v1", apiKey: "lmstudio", api: "openai-completions", models: [{ id: "qwen/qwen3.5-9b" }], }, }, }, } ``` `lmstudio` automatically trusts its configured endpoint for model requests, including loopback, LAN, and tailnet hosts (except metadata/link-local origins). Any custom/local OpenAI-compatible provider entry gets the same exact-origin trust. Requests to a different private host or port still require `models.providers..request.allowPrivateNetwork: true`; set it to `false` to opt out of the default trust. ## Troubleshooting ### LM Studio not detected Make sure LM Studio is running: ```bash lms server start --port 1234 ``` If authentication is enabled, also set `LM_API_TOKEN`. Verify the API is reachable: ```bash curl http://localhost:1234/api/v1/models ``` ### Authentication errors (HTTP 401) - Check that `LM_API_TOKEN` matches the key configured in LM Studio. - See [LM Studio Authentication](https://lmstudio.ai/docs/developer/core/authentication). - If the server does not require authentication, leave the key blank during setup. ## Related - [Model selection](/concepts/model-providers) - [Ollama](/providers/ollama) - [Local models](/gateway/local-models)