feat: 增强OpenAIProvider以支持工具调用参数的JSON格式,优化请求体构建逻辑,排除内部模型额外键

This commit is contained in:
ooodc 2026-04-27 09:21:50 +08:00
parent 60cc8e507c
commit 9e17cd35da

View File

@ -9,6 +9,11 @@ use crate::bus::message::ContentBlock;
use super::{ChatCompletionRequest, ChatCompletionResponse, LLMProvider, ToolCall};
use super::traits::Usage;
const INTERNAL_MODEL_EXTRA_KEYS: &[&str] = &[
"tool_call_arguments_json",
"mock_response_content",
];
fn convert_content_blocks(blocks: &[ContentBlock]) -> Value {
if blocks.len() == 1 {
if let ContentBlock::Text { text } = &blocks[0] {
@ -81,16 +86,34 @@ impl OpenAIProvider {
.unwrap_or(false)
}
fn serialize_tool_arguments(&self, arguments: &Value) -> Value {
if self.uses_json_tool_arguments() {
arguments.clone()
} else {
Value::String(
serde_json::to_string(arguments).unwrap_or_else(|_| "null".to_string()),
)
fn normalize_tool_arguments(&self, arguments: &Value) -> Value {
match arguments {
Value::String(raw) => serde_json::from_str(raw).unwrap_or_else(|_| arguments.clone()),
_ => arguments.clone(),
}
}
fn serialize_tool_arguments(&self, arguments: &Value) -> Value {
let normalized = self.normalize_tool_arguments(arguments);
if self.uses_json_tool_arguments() {
normalized
} else {
match normalized {
Value::String(raw) => Value::String(raw),
value => Value::String(
serde_json::to_string(&value).unwrap_or_else(|_| "null".to_string()),
),
}
}
}
fn request_model_extra(&self) -> impl Iterator<Item = (&String, &Value)> {
self.model_extra.iter().filter(|(key, _)| {
!INTERNAL_MODEL_EXTRA_KEYS.iter().any(|internal| internal == &key.as_str())
})
}
fn build_request_body(&self, request: &ChatCompletionRequest) -> Value {
let mut body = json!({
"model": self.model_id,
@ -142,7 +165,7 @@ impl OpenAIProvider {
"max_tokens": request.max_tokens.or(self.max_tokens),
});
for (key, value) in &self.model_extra {
for (key, value) in self.request_model_extra() {
body[key] = value.clone();
}
@ -408,6 +431,78 @@ mod tests {
let tool_calls = messages[0]["tool_calls"].as_array().unwrap();
assert_eq!(tool_calls[0]["function"]["arguments"], json!({"expression": "1+1"}));
assert!(body.get("tool_call_arguments_json").is_none());
}
#[test]
fn test_build_request_body_preserves_raw_json_string_arguments() {
let provider = OpenAIProvider::new(
"test".to_string(),
"key".to_string(),
"https://example.com/v1".to_string(),
HashMap::new(),
120,
"gpt-test".to_string(),
None,
None,
HashMap::new(),
);
let request = ChatCompletionRequest {
messages: vec![Message {
role: "assistant".to_string(),
content: vec![ContentBlock::text("calling tool")],
reasoning_content: None,
tool_call_id: None,
name: None,
tool_calls: Some(vec![ToolCall {
id: "call_1".to_string(),
name: "calculator".to_string(),
arguments: Value::String("{\"expression\":\"1+1\"}".to_string()),
}]),
}],
temperature: None,
max_tokens: None,
tools: None,
};
let body = provider.build_request_body(&request);
let messages = body["messages"].as_array().unwrap();
let tool_calls = messages[0]["tool_calls"].as_array().unwrap();
assert_eq!(tool_calls[0]["function"]["arguments"], "{\"expression\":\"1+1\"}");
}
#[test]
fn test_build_request_body_omits_internal_model_extra_keys() {
let provider = OpenAIProvider::new(
"test".to_string(),
"key".to_string(),
"https://example.com/v1".to_string(),
HashMap::new(),
120,
"gpt-test".to_string(),
None,
None,
HashMap::from([
("tool_call_arguments_json".to_string(), Value::Bool(true)),
("mock_response_content".to_string(), Value::String("stub".to_string())),
("parallel_tool_calls".to_string(), Value::Bool(true)),
]),
);
let request = ChatCompletionRequest {
messages: vec![Message::user("hello")],
temperature: None,
max_tokens: None,
tools: None,
};
let body = provider.build_request_body(&request);
assert!(body.get("tool_call_arguments_json").is_none());
assert!(body.get("mock_response_content").is_none());
assert_eq!(body["parallel_tool_calls"], Value::Bool(true));
}
#[test]