# SGLang Engine SGLang provides a direct inference engine without the need for an HTTP server. There are generally these use cases: - [Offline Batch Inference](#offline-batch-inference) - [Embedding Generation](#embedding-generation) - [Custom Server](#custom-server) - [Token-In-Token-Out for RLHF](#token-in-token-out-for-rlhf) - [Inference Using FastAPI](#inference-using-fastapi) ## Examples ### [Offline Batch Inference](./offline_batch_inference.py) In this example, we launch an SGLang engine and feed a batch of inputs for inference. If you provide a very large batch, the engine will intelligently schedule the requests to process efficiently and prevent OOM (Out of Memory) errors. ### [Embedding Generation](./embedding.py) In this example, we launch an SGLang engine and feed a batch of inputs for embedding generation. ### [Custom Server](./custom_server.py) This example demonstrates how to create a custom server on top of the SGLang Engine. We use [Sanic](https://sanic.dev/en/) as an example. The server supports both non-streaming and streaming endpoints. #### Steps 1. Install Sanic: ```bash pip install sanic ``` 2. Run the server: ```bash python custom_server ``` 3. Send requests: ```bash curl -X POST http://localhost:8000/generate -H "Content-Type: application/json" -d '{"prompt": "The Transformer architecture is..."}' curl -X POST http://localhost:8000/generate_stream -H "Content-Type: application/json" -d '{"prompt": "The Transformer architecture is..."}' --no-buffer ``` This will send both non-streaming and streaming requests to the server. ### [Token-In-Token-Out for RLHF](../token_in_token_out) In this example, we launch an SGLang engine, feed tokens as input and generate tokens as output. ### [Inference Using FastAPI](fastapi_engine_inference.py) This example demonstrates how to create a FastAPI server that uses the SGLang engine for text generation.