| # llama-server Development Documentation | |
| This document provides an in-depth technical overview of `llama-server`, intended for maintainers and contributors. | |
| If you are an end user consuming `llama-server` as a product, please refer to the main [README](./README.md) instead. | |
| ## Backend | |
| ### Overview | |
| The server supports two primary operating modes: | |
| - **Inference mode**: The default mode for performing inference with a single loaded GGUF model. | |
| - **Router mode**: Enables management of multiple inference server instances behind a single API endpoint. Requests are automatically routed to the appropriate backend instance based on the requested model. | |
| The core architecture consists of the following components: | |
| - `server_context`: Holds the primary inference state, including the main `llama_context` and all active slots. | |
| - `server_slot`: An abstraction over a single “sequence” in llama.cpp, responsible for managing individual parallel inference requests. | |
| - `server_routes`: Middleware layer between `server_context` and the HTTP interface; handles JSON parsing/formatting and request routing logic. | |
| - `server_http_context`: Implements the HTTP server using `cpp-httplib`. | |
| - `server_queue`: Thread-safe queue used by HTTP workers to submit new tasks to `server_context`. | |
| - `server_response`: Thread-safe queue used by `server_context` to return results to HTTP workers. | |
| - `server_response_reader`: Higher-level wrapper around the two queues above for cleaner code. | |
| - `server_task`: Unit of work pushed into `server_queue`. | |
| - `server_task_result`: Unit of result pushed into `server_response`. | |
| - `server_tokens`: Unified representation of token sequences (supports both text and multimodal tokens); used by `server_task` and `server_slot`. | |
| - `server_prompt_checkpoint`: For recurrent (e.g., RWKV) and SWA models, stores snapshots of KV cache state. Enables reuse when subsequent requests share the same prompt prefix, saving redundant computation. | |
| - `server_models`: Standalone component for managing multiple backend instances (used in router mode). It is completely independent of `server_context`. | |
| ```mermaid | |
| graph TD | |
| API_User <--> server_http_context | |
| server_http_context <-- router mode --> server_models | |
| server_http_context <-- inference mode --> server_routes | |
| server_routes -- server_task --> server_queue | |
| subgraph server_context | |
| server_queue --> server_slot | |
| server_slot -- server_task_result --> server_response | |
| server_slot[multiple server_slot] | |
| end | |
| server_response --> server_routes | |
| ``` | |
| ### Batching | |
| The server context maintains a single batch shared across all slots. When `update_slots()` is invoked, the system iterates through all active slots to populate this batch. For each slot, either a generated token from the previous decoding step or available prompt tokens are added to the batch. | |
| Batching constraints apply: slots can only be batched together if they share compatible configurations. For instance, slots using a specific LoRA adapter can be batched with each other, but not with slots using a different LoRA adapter or no adapter at all. | |
| Once the batch reaches capacity or all slots have been processed, `llama_decode` is called to execute the inference. This operation represents the primary computational bottleneck in `update_slots()`. | |
| Following decoding, the system either retrieves embeddings or samples the next token using `common_sampler_sample`. If a slot has remaining prompt tokens to process, it yields until the next `update_slots()` iteration. | |
| ### Thread Management | |
| `server_context` runs on a dedicated single thread. Because it is single-threaded, heavy post-processing (especially after token generation) should be avoided, as it directly impacts multi-sequence throughput. | |
| Each incoming HTTP request is handled by its own thread managed by the HTTP library. The following operations are performed in HTTP worker threads: | |
| - JSON request parsing | |
| - Chat template application | |
| - Tokenization | |
| - Conversion of `server_task_result` into final JSON response | |
| - Error formatting into JSON | |
| - Tracking of partial/incremental responses (e.g., streaming tool calls or reasoning steps) | |
| **Best practices to follow:** | |
| - All JSON formatting and chat template logic must stay in the HTTP layer. | |
| - Avoid passing raw JSON between the HTTP layer and `server_slot`. Instead, parse everything into native C++ types as early as possible. | |
| ### Example trace of a request | |
| Here is an example trace of an API request for text completion: | |
| - A request arrives at the HTTP layer. | |
| - The request is routed to the corresponding handler inside `server_routes`. In this case, `handle_completions_impl` is invoked. | |
| - The handler parses the input request, constructs a new `server_task`, and passes it to `server_res_generator`. | |
| - `server_res_generator` creates a new `task_result_state` for each task: | |
| - `task_result_state` stays in the HTTP layer, responsible for keeping track of the current state of the response (e.g., parsing tool calls or thinking messages). | |
| - `server_task` is moved into `server_queue` inside `server_context`. | |
| - `server_context` launches the task by moving it into an available slot (see `launch_slot_with_task()`). | |
| - `update_slot()` processes the task as described in the "Batching" section above. | |
| - Results may be sent using `send_partial_response` or `send_final_response`, which creates a new `server_task_result` and pushes it to the response queue. | |
| - At the same time, `server_res_generator` listens to the response queue and retrieves this response. | |
| - As the response is stateless, `server_res_generator` calls `response->update()` to update the response with the current state. | |
| - `server_res_generator` then calls `response->to_json()` and passes the response to the HTTP layer. | |
| ### Testing | |
| `llama-server` includes an automated test suite based on `pytest`. | |
| The framework automatically starts a `llama-server` instance, sends requests, and validates responses. | |
| For detailed instructions, see the [test documentation](./tests/README.md). | |
| ### Notable Related PRs | |
| - Initial server implementation: https://github.com/ggml-org/llama.cpp/pull/1443 | |
| - Parallel decoding support: https://github.com/ggml-org/llama.cpp/pull/3228 | |
| - Refactor introducing `server_queue` and `server_response`: https://github.com/ggml-org/llama.cpp/pull/5065 | |
| - Reranking endpoint: https://github.com/ggml-org/llama.cpp/pull/9510 | |
| - Multimodal model support (`libmtmd`): https://github.com/ggml-org/llama.cpp/pull/12898 | |
| - Unified KV cache handling: https://github.com/ggml-org/llama.cpp/pull/16736 | |
| - Separation of HTTP logic into dedicated files: https://github.com/ggml-org/llama.cpp/pull/17216 | |
| - Large-scale code base split into smaller files: https://github.com/ggml-org/llama.cpp/pull/17362 | |
| - Introduction of router mode: https://github.com/ggml-org/llama.cpp/pull/17470 | |
| - Speculative decoding: https://github.com/ggml-org/llama.cpp/pull/17808 and rework in https://github.com/ggml-org/llama.cpp/pull/17808 | |
| - INI presets: https://github.com/ggml-org/llama.cpp/pull/17859 (+ refactoring: https://github.com/ggml-org/llama.cpp/pull/18169) | |
| - Sleeping mode: https://github.com/ggml-org/llama.cpp/pull/18228 | |
| ## Web UI | |
| The project includes a web-based user interface for interacting with `llama-server`. It supports both single-model (`MODEL` mode) and multi-model (`ROUTER` mode) operation. | |
| The SvelteKit-based Web UI is introduced in this PR: https://github.com/ggml-org/llama.cpp/pull/14839 | |
| ### Features | |
| - **Chat interface** with streaming responses | |
| - **Multi-model support** (ROUTER mode) - switch between models, auto-load on selection | |
| - **Modality validation** - ensures selected model supports conversation's attachments (images, audio) | |
| - **Conversation management** - branching, regeneration, editing with history preservation | |
| - **Attachment support** - images, audio, PDFs (with vision/text fallback) | |
| - **Configurable parameters** - temperature, top_p, etc. synced with server defaults | |
| - **Dark/light theme** | |
| ### Tech Stack | |
| - **SvelteKit** - frontend framework with Svelte 5 runes for reactive state | |
| - **TailwindCSS** + **shadcn-svelte** - styling and UI components | |
| - **Vite** - build tooling | |
| - **IndexedDB** (Dexie) - local storage for conversations | |
| - **LocalStorage** - user settings persistence | |
| ### Architecture | |
| The WebUI follows a layered architecture: | |
| ``` | |
| Routes → Components → Hooks → Stores → Services → Storage/API | |
| ``` | |
| - **Stores** - reactive state management (`chatStore`, `conversationsStore`, `modelsStore`, `serverStore`, `settingsStore`) | |
| - **Services** - stateless API/database communication (`ChatService`, `ModelsService`, `PropsService`, `DatabaseService`) | |
| - **Hooks** - reusable logic (`useModelChangeValidation`, `useProcessingState`) | |
| For detailed architecture diagrams, see [`tools/server/webui/docs/`](webui/docs/): | |
| - `high-level-architecture.mmd` - full architecture with all modules | |
| - `high-level-architecture-simplified.mmd` - simplified overview | |
| - `data-flow-simplified-model-mode.mmd` - data flow for single-model mode | |
| - `data-flow-simplified-router-mode.mmd` - data flow for multi-model mode | |
| - `flows/*.mmd` - detailed per-domain flows (chat, conversations, models, etc.) | |
| ### Development | |
| ```sh | |
| # make sure you have Node.js installed | |
| cd tools/server/webui | |
| npm i | |
| # run dev server (with hot reload) | |
| npm run dev | |
| # run tests | |
| npm run test | |
| # build production bundle | |
| npm run build | |
| ``` | |
| After `public/index.html.gz` has been generated, rebuild `llama-server` as described in the [build](#build) section to include the updated UI. | |
| **Note:** The Vite dev server automatically proxies API requests to `http://localhost:8080`. Make sure `llama-server` is running on that port during development. | |