# Sampling Parameters This doc describes the sampling parameters of the SGLang Runtime. It is the low-level endpoint of the runtime. If you want a high-level endpoint that can automatically handle chat templates, consider using the [OpenAI Compatible API](https://docs.sglang.ai/backend/openai_api_completions.html). ## `/generate` Endpoint The `/generate` endpoint accepts the following parameters in JSON format. For in detail usage see the [native api doc](https://docs.sglang.ai/backend/native_api.html). * `prompt`: The input prompt. Can be a single prompt or a batch of prompts. * `input_ids`: Alternative to `text`. Specify the input as token IDs instead of text. * `sampling_params`: The sampling parameters as described in the sections below. * `return_logprob`: Whether to return log probabilities for tokens. * `logprob_start_len`: If returning log probabilities, specifies the start position in the prompt. Default is "-1" which returns logprobs only for output tokens. * `top_logprobs_num`: If returning log probabilities, specifies the number of top logprobs to return at each position. * `stream`: Whether to stream the output. * `lora_path`: Path to LoRA weights. * `custom_logit_processor`: Custom logit processor for advanced sampling control. For usage see below. ## Sampling params ### Core Parameters * `max_new_tokens`: The maximum output length measured in tokens. * `stop`: One or multiple [stop words](https://developer.nvidia.com/blog/how-to-get-better-outputs-from-your-large-language-model/#let_the_model_know_when_to_stop). Generation will stop if one of these words is sampled. * `stop_token_ids`: Provide stop words in form of token ids. Generation will stop if one of these token ids is sampled. * `temperature`: [Temperature](https://developer.nvidia.com/blog/how-to-get-better-outputs-from-your-large-language-model/#predictability_vs_creativity) when sampling the next token. `temperature = 0` corresponds to greedy sampling, higher temperature leads to more diversity. * `top_p`: [Top-p](https://developer.nvidia.com/blog/how-to-get-better-outputs-from-your-large-language-model/#predictability_vs_creativity) selects tokens from the smallest sorted set whose cumulative probability exceeds `top_p`. When `top_p = 1`, this reduces to unrestricted sampling from all tokens. * `top_k`: [Top-k](https://developer.nvidia.com/blog/how-to-get-better-outputs-from-your-large-language-model/#predictability_vs_creativity) randomly selects from the `k` highest-probability tokens. * `min_p`: [Min-p](https://github.com/huggingface/transformers/issues/27670) samples from tokens with probability larger than `min_p * highest_token_probability`. ### Penalizers To use penalizers you will need to `--disable-overlap`. Please note that this might degrade performance. * `frequency_penalty`: Penalizes tokens based on their frequency in generation so far. Must be between `-2` and `2` where negative numbers encourage repeatment of tokens and positive number encourages sampling of new tokens. The scaling of penalization grows linearly with each appearance of a token. * `presence_penalty`: Penalizes tokens if they appeared in the generation so far. Must be between `-2` and `2` where negative numbers encourage repeatment of tokens and positive number encourages sampling of new tokens. The scaling of the penalization is constant if a token occured. * `repetition_penalty`: Penalizes tokens if they appeared in prompt or generation so far. Must be between `0` and `2` where numbers smaller than `1` encourage repeatment of tokens and numbers larger than `2` encourages sampling of new tokens. The penalization scales multiplicatively. * `min_new_tokens`: Forces the model to generate at least `min_new_tokens` until a stop word or EOS token is sampled. Note that this might lead to unintended behavior for example if the distribution is highly skewed towards these tokens. ### Constrained decoding Please refer to our dedicated guide on [constrained decoding](https://docs.sglang.ai/backend/structured_outputs.html#Native-API-and-SGLang-Runtime-(SRT)) for the following parameters. * `json_schema` * `regex` * `ebnf` ### Other options * `n`: Specifies the number of output sequences to generate per request. (Generating multiple outputs in one request (n > 1) is discouraged; separate requests offer better control and efficiency.) * `spaces_between_special_tokens`: Whether or not to add spaces between special tokens during detokenization. * `no_stop_trim`: Don't trim stop words or EOS token from the generated text. * `ignore_eos`: Don't stop generation when EOS token is sampled. * `skip_special_tokens`: Remove special tokens during decoding. * `custom_params`: Used when employing `CustomLogitProcessor`. For usage see below. ### Custom Logit Processor Launch a server with `--enable-custom-logit-processor` flag on. ``` python -m sglang.launch_server --model-path meta-llama/Meta-Llama-3-8B-Instruct --port 30000 --enable-custom-logit-processor ``` Define a custom logit processor that will always sample a specific token id. ```python from sglang.srt.sampling.custom_logit_processor import CustomLogitProcessor class DeterministicLogitProcessor(CustomLogitProcessor): """A dummy logit processor that changes the logits to always sample the given token id. """ def __call__(self, logits, custom_param_list): # Check that the number of logits matches the number of custom parameters assert logits.shape[0] == len(custom_param_list) key = "token_id" for i, param_dict in enumerate(custom_param_list): # Mask all other tokens logits[i, :] = -float("inf") # Assign highest probability to the specified token logits[i, param_dict[key]] = 0.0 return logits ``` Send a request ```python import requests response = requests.post( "http://localhost:30000/generate", json={ "text": "The capital of France is", "custom_logit_processor": DeterministicLogitProcessor().to_str(), "sampling_params": { "temperature": 0.0, "max_new_tokens": 32, "custom_params": {"token_id": 5}, }, }, ) print(response.json()) ```