> ## Documentation Index
> Fetch the complete documentation index at: https://supermemory.ai/docs/llms.txt
> Use this file to discover all available pages before exploring further.

# Self-Hosting Quickstart

> From zero to your first memory in under two minutes.

## Install

<Tabs>
  <Tab title="curl">
    ```bash theme={null}
    curl -fsSL https://supermemory.ai/install | bash
    ```
  </Tab>

  <Tab title="npx">
    ```bash theme={null}
    npx supermemory local
    ```
  </Tab>

  <Tab title="bunx">
    ```bash theme={null}
    bunx supermemory local
    ```
  </Tab>
</Tabs>

The installer detects your OS and architecture, downloads the right binary, verifies it, and (when run interactively) prompts you for an LLM API key. Supported platforms: macOS (Apple Silicon & Intel), Linux (x64 & arm64).

## Run

```bash theme={null}
supermemory-server
```

First boot sets everything up — the embedded Supermemory graph engine, local embeddings, and your credentials:

```
  ┌──────────────────────────────────────────────────┐
  │  url       http://localhost:6767                 │
  │  database  ./.supermemory                        │
  │  api key   sm_xxxxxxxxxxxxxxxxxxxxxxxxxxxxxx     │
  │  org id    xxxxxxxxxxxxxxxxxxxxxx                │
  └──────────────────────────────────────────────────┘
```

Save that API key — it's your bearer token for every request.

<Note>
  In production, Supermemory runs proprietary models tuned for long-horizon data understanding. Self-hosted, you bring any model: if no provider key is set, first boot launches an interactive setup wizard — pick a provider (OpenAI, Anthropic, Gemini, Groq, or any OpenAI-compatible endpoint like Ollama), paste your key, and it's saved encrypted for every future launch. After the LLM key, you can optionally pick an embedding model (press Enter to keep local `Xenova/bge-base-en-v1.5`). See [all providers](/self-hosting/configuration#llm-providers), [embeddings](/self-hosting/embeddings), and [fully-offline local models](/self-hosting/configuration#fully-offline-with-local-models).
</Note>

<Tip>
  **Docker / non-interactive:** set an LLM key via env and, if you don’t want local embeddings, set `SUPERMEMORY_EMBEDDING_PROVIDER` / `MODEL` / `DIMENSIONS`. There is no wizard without a TTY.
</Tip>

## Add your first memory

<Tabs>
  <Tab title="TypeScript">
    ```typescript theme={null}
    import Supermemory from "supermemory"

    const client = new Supermemory({
      apiKey: "sm_...",
      baseURL: "http://localhost:6767",
    })

    await client.memories.add({
      content: "I'm Dhravya. I love building dev tools and I'm allergic to peanuts.",
      containerTag: "user_dhravya",
    })
    ```
  </Tab>

  <Tab title="Python">
    ```python theme={null}
    from supermemory import Supermemory

    client = Supermemory(
        api_key="sm_...",
        base_url="http://localhost:6767",
    )

    client.memories.add(
        content="I'm Dhravya. I love building dev tools and I'm allergic to peanuts.",
        container_tag="user_dhravya",
    )
    ```
  </Tab>

  <Tab title="curl">
    ```bash theme={null}
    curl http://localhost:6767/v3/documents \
      -H "Authorization: Bearer sm_..." \
      -H "Content-Type: application/json" \
      -d '{
        "content": "I am Dhravya. I love building dev tools and I am allergic to peanuts.",
        "containerTag": "user_dhravya"
      }'
    ```
  </Tab>
</Tabs>

## Search it

<Tabs>
  <Tab title="TypeScript">
    ```typescript theme={null}
    const results = await client.search.memories({
      q: "what food should I avoid?",
      containerTag: "user_dhravya",
    })
    ```
  </Tab>

  <Tab title="Python">
    ```python theme={null}
    results = client.search.memories(
        q="what food should I avoid?",
        container_tag="user_dhravya",
    )
    ```
  </Tab>

  <Tab title="curl">
    ```bash theme={null}
    curl http://localhost:6767/v3/search \
      -H "Authorization: Bearer sm_..." \
      -H "Content-Type: application/json" \
      -d '{
        "q": "what food should I avoid?",
        "containerTag": "user_dhravya"
      }'
    ```
  </Tab>
</Tabs>

That's it. Everything in the [Memory API](/quickstart) — documents, memories, user profiles, spaces, filtering — works identically against your local server.

## Where things live

By default, all state lives in a single directory you can back up or move:

| Path                                           | Contents                                                                |
| ---------------------------------------------- | ----------------------------------------------------------------------- |
| `./.supermemory/` (or `$SUPERMEMORY_DATA_DIR`) | The Supermemory graph engine's data, auth secret, embedding model cache |
| `~/.supermemory/env`                           | API keys saved by the installer, loaded on every launch                 |

## Next steps

<CardGroup cols={3}>
  <Card title="Configuration" icon="settings" href="/self-hosting/configuration">
    LLM providers, local models, performance tuning
  </Card>

  <Card title="Embeddings" icon="waypoints" href="/self-hosting/embeddings">
    Local default, OpenAI / Gemini / Ollama, multilingual
  </Card>

  <Card title="Memory API" icon="book-open" href="/quickstart">
    The full API — it all works against your local server
  </Card>
</CardGroup>
