pub struct RequestBody {Show 30 fields
pub messages: Vec<Message>,
pub model: String,
pub frequency_penalty: Option<f32>,
pub logit_bias: Option<HashMap<String, Value>>,
pub logprobs: Option<bool>,
pub top_logprobs: Option<u8>,
pub max_tokens: Option<u32>,
pub max_completion_tokens: Option<u32>,
pub reasoning_effort: Option<ReasoningEffort>,
pub n: Option<u8>,
pub presence_penalty: Option<f32>,
pub response_format: Option<ResponseFormat>,
pub seed: Option<i64>,
pub stop: Option<Stop>,
pub stream: Option<bool>,
pub temperature: Option<f32>,
pub top_p: Option<f32>,
pub tools: Option<Vec<Tool>>,
pub tool_choice: Option<ToolChoice>,
pub user: Option<String>,
pub store: Option<bool>,
pub metadata: Option<HashMap<String, Value>>,
pub parallel_tool_calls: Option<bool>,
pub modalities: Option<Vec<String>>,
pub prediction: Option<PredictionConfig>,
pub audio: Option<AudioConfig>,
pub service_tier: Option<String>,
pub stream_options: Option<StreamOptions>,
pub web_search_options: Option<WebSearchOptions>,
pub reasoning: Option<OpenRouterReasoning>,
}
Fields§
§messages: Vec<Message>
A list of messages comprising the conversation so far. Example Python code.
model: String
ID of the model to use. See the model endpoint compatibility table for details on which models work with the Chat API.
frequency_penalty: Option<f32>
Number between -2.0 and 2.0. Positive values penalize new tokens based on their existing frequency in the text so far, decreasing the model’s likelihood to repeat the same line verbatim.
See more information about frequency and presence penalties.
logit_bias: Option<HashMap<String, Value>>
Modify the likelihood of specified tokens appearing in the completion.
Accepts a json object that maps tokens (specified by their token ID in the tokenizer) to an associated bias value from -100 to 100. Mathematically, the bias is added to the logits generated by the model prior to sampling. The exact effect will vary per model, but values between -1 and 1 should decrease or increase likelihood of selection; values like -100 or 100 should result in a ban or exclusive selection of the relevant token.
logprobs: Option<bool>
Whether to return log probabilities of the output tokens or not. If true, returns the log probabilities of each output token returned in the content
of message
. This option is currently not available on the gpt-4-vision-preview
model.
top_logprobs: Option<u8>
An integer between 0 and 20 specifying the number of most likely tokens to return at each token position, each with an associated log probability. logprobs
must be set to true
if this parameter is used.
max_tokens: Option<u32>
The maximum number of tokens that can be generated in the chat completion.
The total length of input tokens and generated tokens is limited by the model’s context length. Example Python code for counting tokens.
This value is now deprecated in favor of max_completion_tokens.
max_completion_tokens: Option<u32>
An upper bound for the number of tokens that can be generated for a completion, including visible output tokens and reasoning tokens.
reasoning_effort: Option<ReasoningEffort>
o-series models only
Constrains effort on reasoning for reasoning models. Currently supported values are low
, medium
, and high
.
Reducing reasoning effort can result in faster responses and fewer tokens used on reasoning in a response.
n: Option<u8>
How many chat completion choices to generate for each input message. Note that you will be charged based on the number of generated tokens across all of the choices. Keep n
as 1
to minimize costs.
presence_penalty: Option<f32>
Number between -2.0 and 2.0. Positive values penalize new tokens based on whether they appear in the text so far, increasing the model’s likelihood to talk about new topics.
See more information about frequency and presence penalties.
response_format: Option<ResponseFormat>
An object specifying the format that the model must output. Compatible with gpt-4-1106-preview
and gpt-3.5-turbo-1106
.
Setting to { "type": "json_object" }
enables JSON mode, which guarantees the message the model generates is valid JSON.
Important: when using JSON mode, you must also instruct the model to produce JSON yourself via a system or user message. Without this, the model may generate an unending stream of whitespace until the generation reaches the token limit, resulting in a long-running and seemingly “stuck” request. Also note that the message content may be partially cut off if finish_reason="length"
, which indicates the generation exceeded max_tokens
or the conversation exceeded the max context length.
seed: Option<i64>
This feature is in Beta.
If specified, our system will make a best effort to sample deterministically, such that repeated requests
with the same seed
and parameters should return the same result.
Determinism is not guaranteed, and you should refer to the system_fingerprint
response parameter to monitor changes in the backend.
stop: Option<Stop>
Up to 4 sequences where the API will stop generating further tokens.
stream: Option<bool>
If set, partial message deltas will be sent, like in ChatGPT.
Tokens will be sent as data-only server-sent events
as they become available, with the stream terminated by a data: [DONE]
message. Example Python code.
temperature: Option<f32>
What sampling temperature to use, between 0 and 2. Higher values like 0.8 will make the output more random, while lower values like 0.2 will make it more focused and deterministic.
We generally recommend altering this or top_p
but not both.
top_p: Option<f32>
An alternative to sampling with temperature, called nucleus sampling, where the model considers the results of the tokens with top_p probability mass. So 0.1 means only the tokens comprising the top 10% probability mass are considered.
We generally recommend altering this or temperature
but not both.
tools: Option<Vec<Tool>>
A list of tools the model may call. Currently, only functions are supported as a tool. Use this to provide a list of functions the model may generate JSON inputs for.
tool_choice: Option<ToolChoice>
§user: Option<String>
A unique identifier representing your end-user, which can help OpenAI to monitor and detect abuse. Learn more.
store: Option<bool>
Whether or not to store the output of this chat completion request for use in our model distillation or evals products.
metadata: Option<HashMap<String, Value>>
Developer-defined tags and values used for filtering completions in the dashboard.
parallel_tool_calls: Option<bool>
Whether to enable parallel function calling during tool use.
modalities: Option<Vec<String>>
Output types that you would like the model to generate for this request. Most models are capable of generating text, which is the default: [“text”]
prediction: Option<PredictionConfig>
Configuration for a Predicted Output, which can greatly improve response times when large parts of the model response are known ahead of time.
audio: Option<AudioConfig>
Parameters for audio output. Required when audio output is requested with modalities: [“audio”]
service_tier: Option<String>
Specifies the latency tier to use for processing the request. This parameter is relevant for customers subscribed to the scale tier service.
stream_options: Option<StreamOptions>
Options for streaming response. Only set this when you set stream: true.
web_search_options: Option<WebSearchOptions>
This tool searches the web for relevant results to use in a response.
reasoning: Option<OpenRouterReasoning>
Open router compatible field https://openrouter.ai/announcements/reasoning-tokens-for-thinking-models
Implementations§
Source§impl RequestBody
impl RequestBody
pub fn first_user_message(&self) -> Option<&Message>
pub fn first_user_message_text(&self) -> Option<String>
pub fn first_system_message(&self) -> Option<&Message>
pub fn first_system_message_text(&self) -> Option<String>
pub fn last_user_message(&self) -> Option<&Message>
pub fn last_user_message_text(&self) -> Option<String>
pub fn last_system_message(&self) -> Option<&Message>
pub fn last_system_message_text(&self) -> Option<String>
Trait Implementations§
Source§impl Clone for RequestBody
impl Clone for RequestBody
Source§fn clone(&self) -> RequestBody
fn clone(&self) -> RequestBody
1.0.0 · Source§fn clone_from(&mut self, source: &Self)
fn clone_from(&mut self, source: &Self)
source
. Read more