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12 Commits

Author SHA1 Message Date
26a76b030d feat: UI重构 - 历史对话列表页 + 新建按钮顶部右侧 + 删除功能 2026-04-26 10:15:51 +08:00
daccc625c3 revert: 撤回错误的修改,恢复原版本
用户指出SiliconFlow平台确实支持标准tool消息类型,之前的修改是错误的

版本: v3.0.7
2026-04-15 10:01:59 +08:00
a2a7fd46c3 chore: 版本号更新到v3.0.6 2026-04-15 09:52:31 +08:00
baf5913bfb fix: SiliconFlow平台Function Calling第二轮调用兼容
问题:SiliconFlow平台不支持标准tool消息类型,第二轮调用返回参数无效

修复:将tool消息转换为user消息格式
- 收集所有tool消息的内容
- 合并为一个用户消息发送给模型
- 添加明确的提示让模型直接根据结果回答

版本: v3.0.6
2026-04-15 09:52:19 +08:00
ae08e01e55 fix: Kimi模型伪工具调用格式过滤
修复Kimi-K2.5模型在第二轮调用时输出伪工具调用格式的问题:
- 添加系统提示告诉模型直接根据工具结果回答
- 过滤 <|tool_calls_section_begin|> 等内部格式标记
- 清理多余空行

版本: v3.0.1
2026-04-15 09:45:08 +08:00
9048d94e33 fix: 添加详细日志诊断工具调用消息格式 2026-04-15 02:25:05 +08:00
291de733a4 fix: chat_with_tool_results不重复添加tool结果,修正消息格式 2026-04-15 01:03:10 +08:00
10f67a807a fix: get_agent_config添加supports_vision和supports_function_calling字段 2026-04-14 19:20:17 +08:00
d9ac2c78f6 feat: 对话区左侧显示Agent信息 2026-04-14 19:14:31 +08:00
4ac67b5816 feat: v3.0 Function Calling模式 - LLM自主调用工具 2026-04-14 18:39:12 +08:00
527885f3d6 fix: 工具按钮放附件右边、输入框左边 2026-04-14 17:19:52 +08:00
c21270195a feat: 工具按钮放输入框右边,面板向上弹出 2026-04-14 17:15:56 +08:00
6 changed files with 864 additions and 673 deletions

View File

@@ -1,6 +1,6 @@
"""
AI对话系统 v2.0.0 - 主应用
支持大模型池、Agent管理、渠道独立绑定、思考功能开关
AI对话系统 v3.0.0 - 主应用
支持大模型池、Agent管理、渠道独立绑定、思考功能开关、Function CallingLLM自主调用工具
"""
from fastapi import FastAPI, WebSocket, WebSocketDisconnect, Depends, HTTPException, Request
from fastapi.responses import HTMLResponse, JSONResponse
@@ -122,6 +122,7 @@ async def get_providers(db: Session = Depends(get_db)):
"thinking_model": p.thinking_model,
"supports_vision": p.supports_vision,
"vision_model": p.vision_model,
"supports_function_calling": p.supports_function_calling,
"max_tokens": p.max_tokens,
"temperature": p.temperature,
"is_active": p.is_active,
@@ -646,17 +647,19 @@ async def get_conversations(db: Session = Depends(get_db)):
user = conv_service.get_or_create_user(MAIN_USER_ID, display_name="主用户", user_type='web')
conversations = conv_service.get_user_conversations(user.id)
return {
"conversations": [
{
"id": c.conversation_id,
"title": c.title or "新对话",
"created_at": c.created_at.isoformat(),
"updated_at": c.updated_at.isoformat()
}
for c in conversations
]
}
# 为每个对话计算消息数量
result = []
for c in conversations:
msg_count = db.query(Message).filter(Message.conversation_id == c.id).count()
result.append({
"id": c.conversation_id,
"title": c.title or "新对话",
"created_at": c.created_at.isoformat(),
"updated_at": c.updated_at.isoformat(),
"message_count": msg_count
})
return {"conversations": result}
@app.get("/api/conversations/latest")
@@ -692,6 +695,26 @@ async def create_conversation(db: Session = Depends(get_db)):
}
@app.get("/api/conversations/{conversation_id}")
async def get_conversation(conversation_id: str, db: Session = Depends(get_db)):
"""获取单个对话详情"""
conv_service = ConversationService(db)
conversation = conv_service.get_conversation(conversation_id)
if not conversation:
raise HTTPException(status_code=404, detail="会话不存在")
msg_count = db.query(Message).filter(Message.conversation_id == conversation.id).count()
return {
"id": conversation.conversation_id,
"title": conversation.title or "新对话",
"created_at": conversation.created_at.isoformat(),
"updated_at": conversation.updated_at.isoformat(),
"message_count": msg_count
}
@app.get("/api/conversations/{conversation_id}/messages")
async def get_messages(conversation_id: str, db: Session = Depends(get_db)):
"""获取会话消息"""
@@ -832,7 +855,7 @@ async def websocket_endpoint(websocket: WebSocket, user_id: str):
conversation_id = data.get("conversation_id")
enable_thinking = data.get("enable_thinking", True)
agent_id_override = data.get("agent_id")
disabled_tools = data.get("disabled_tools", []) # 禁用的工具列表
# v3.0: 移除 disabled_tools由LLM自主决定
if agent_id_override:
agent = agent_service.get_agent(agent_id_override)
@@ -846,48 +869,41 @@ async def websocket_endpoint(websocket: WebSocket, user_id: str):
if not message.strip() and not files:
continue
# 处理文件内容,添加到消息
image_contents = [] # 图片内容(用于视觉模型)
text_contents = [] # 文本文件内容
image_paths = [] # 图片服务器路径(用于历史记录显示)
# 处理文件内容
image_contents = []
text_contents = []
image_paths = []
if files:
for f in files:
if f.get('type') and f['type'].startswith('image/'):
# 图片:记录 base64 数据,用于视觉模型
image_contents.append({
'name': f['name'],
'type': f['type'],
'data': f.get('content', '') # base64 数据
'data': f.get('content', '')
})
# 记录服务器路径(用于历史记录)
if f.get('serverPath'):
image_paths.append({
'name': f['name'],
'type': f['type'],
'url': f['serverPath'] # 服务器文件路径
'url': f['serverPath']
})
# 不添加文件名文本,图片信息保存在 extra_data 中
elif f.get('content'):
# 文本文件:直接添加内容,不带文件名前缀
text_contents.append(f['content'][:3000])
if len(f['content']) > 3000:
text_contents[-1] += "...(内容过长已截断)"
# 如果有文本文件内容,追加到消息后面
if text_contents:
for content in text_contents:
message += f"\n\n{content}"
# 保存图片和文件信息到 extra_data(用于历史记录)
# 保存文件信息到 extra_data
extra_data_for_msg = None
if image_paths:
# 图片保存服务器路径URL历史记录可以显示
extra_data_for_msg = {
'images': image_paths,
'files': [{'name': f['name'], 'type': f['type']} for f in files if not f['type'].startswith('image/')]
}
elif image_contents:
# 没有服务器路径但有问题(可能上传失败)
extra_data_for_msg = {
'images': [{'name': i['name'], 'type': i['type']} for i in image_contents],
'files': [{'name': f['name'], 'type': f['type']} for f in files if not f['type'].startswith('image/')]
@@ -896,8 +912,9 @@ async def websocket_endpoint(websocket: WebSocket, user_id: str):
# 1. 获取Agent配置
agent_config = agent_service.get_agent_config(current_agent_id)
agent_tools = agent_config.get('agent', {}).get('tools', [])
supports_function_calling = agent_config.get('provider', {}).get('supports_function_calling', False)
# 2. 获取或创建会话(先有 conversation_id
# 2. 获取或创建会话
if conversation_id:
conversation = conv_service.get_conversation(conversation_id)
else:
@@ -908,12 +925,12 @@ async def websocket_endpoint(websocket: WebSocket, user_id: str):
"conversation_id": conversation_id
})
# 3. 广播用户消息(前端立即看到)
# 3. 广播用户消息
await manager.send_to_user(MAIN_USER_ID, {
"type": "user_message",
"conversation_id": conversation_id,
"message": {
"id": None, # 临时,后面会保存
"id": None,
"role": "user",
"content": message,
"source": "web",
@@ -921,118 +938,45 @@ async def websocket_endpoint(websocket: WebSocket, user_id: str):
}
})
# 4. 执行搜索并发送搜索结果
search_context = None
search_results_for_client = None # 用于发送给前端和保存
logger.info(f"检查搜索条件: agent_tools={agent_tools}, disabled_tools={disabled_tools}")
if 'search' in agent_tools and 'search' not in disabled_tools:
logger.info("搜索条件满足,开始执行搜索")
tool_service = ToolService(db)
search_tool = tool_service.get_default_tool('search')
logger.info(f"获取到搜索工具: {search_tool.name if search_tool else 'None'}")
if search_tool and search_tool.config.get('api_key'):
import httpx
import time
start_time = time.time()
try:
logger.info(f"执行搜索: query={message}")
tavily_url = "https://api.tavily.com/search"
config = search_tool.config
payload = {
"api_key": config.get('api_key'),
"query": message,
"max_results": config.get('max_results', 5),
"search_depth": config.get('search_depth', 'basic')
}
with httpx.Client(timeout=30) as client:
resp = client.post(tavily_url, json=payload)
search_result = resp.json()
duration_ms = int((time.time() - start_time) * 1000)
if search_result.get("results"):
# 构建搜索上下文给LLM
max_for_llm = config.get('max_results', 5)
search_context = "\n\n【搜索结果】\n"
for i, r in enumerate(search_result["results"][:max_for_llm], 1):
search_context += f"{i}. {r.get('title', 'N/A')}\n {r.get('content', r.get('snippet', 'N/A'))[:200]}\n 来源: {r.get('url', 'N/A')}\n"
logger.info(f"搜索完成: {len(search_result['results'])} 条结果,使用 {min(len(search_result['results']), max_for_llm)}")
# 发送搜索结果给前端(按配置的数量)
max_display = config.get('max_results', 5)
search_results_for_client = [
{
"title": r.get('title', 'N/A'),
"snippet": r.get('content', r.get('snippet', ''))[:150],
"url": r.get('url', 'N/A')
}
for r in search_result["results"][:max_display]
]
await websocket.send_json({
"type": "search_results",
"conversation_id": conversation_id,
"results": search_results_for_client,
"query": message
})
# 更新统计和日志
tool_service.increment_stats(search_tool.id, True)
tool_service.log_usage({
'tool_id': search_tool.id,
'tool_type': 'search',
'query': message,
'success': True,
'result_summary': f'{len(search_result["results"])} results',
'conversation_id': conversation_id,
'agent_id': current_agent_id,
'duration_ms': duration_ms
})
except Exception as e:
duration_ms = int((time.time() - start_time) * 1000)
logger.error(f"搜索失败: {e}")
tool_service.increment_stats(search_tool.id, False)
tool_service.log_usage({
'tool_id': search_tool.id,
'tool_type': 'search',
'query': message,
'success': False,
'error_message': str(e),
'conversation_id': conversation_id,
'duration_ms': duration_ms
})
# 5. 保存用户消息到数据库
extra_data_to_save = None
if search_results_for_client:
extra_data_to_save = {'search_results': search_results_for_client, 'search_query': message}
if extra_data_for_msg:
if extra_data_to_save:
extra_data_to_save.update(extra_data_for_msg)
else:
extra_data_to_save = extra_data_for_msg
# 4. 保存用户消息
user_msg = conv_service.add_message(
conversation_id=conversation.id,
role='user',
content=message,
source='web',
extra_data=extra_data_to_save
extra_data=extra_data_for_msg
)
# 6. 获取对话历史(包含刚保存的用户消息)
# 5. 获取对话历史
history = conv_service.get_conversation_history(conversation_id, limit=agent_config['agent'].get('max_history', 20))
# 7. 如果有搜索结果,添加到消息中
if search_context:
modified_system_prompt = agent_config['agent'].get('system_prompt', '') + "\n\n如果提供了搜索结果,请基于搜索结果回答用户问题,并注明信息来源。"
agent_config['agent']['system_prompt'] = modified_system_prompt
history.append({"role": "system", "content": f"以下是搜索到的相关信息,请参考这些内容回答用户问题:{search_context}"})
# 6. 构建工具 schemaFunction Calling
tools_schema = []
if supports_function_calling and agent_tools:
# 搜索工具
if 'search' in agent_tools:
tool_service = ToolService(db)
search_tool = tool_service.get_default_tool('search')
if search_tool and search_tool.config.get('api_key'):
tools_schema.append({
"type": "function",
"function": {
"name": "web_search",
"description": "搜索互联网获取实时信息、新闻、数据等。当用户询问需要最新信息的问题时使用此工具。",
"parameters": {
"type": "object",
"properties": {
"query": {
"type": "string",
"description": "搜索关键词或问题"
}
},
"required": ["query"]
}
}
})
# 8. 调用LLM返回回复
# 7. 调用LLMFunction Calling模式
if not agent_config or not agent_config.get('provider'):
await websocket.send_json({
"type": "error",
@@ -1041,17 +985,184 @@ async def websocket_endpoint(websocket: WebSocket, user_id: str):
continue
try:
response, thinking_content = await llm_service.chat(
messages=history,
provider_config=agent_config['provider'],
agent_config=agent_config['agent'],
enable_thinking=enable_thinking,
images=image_contents # 传递图片数据给多模态模型
)
response = None
thinking_content = None
tool_calls_record = []
# 第一阶段让LLM决定是否调用工具
if tools_schema:
response, thinking_content, tool_calls = await llm_service.chat_with_tools(
messages=history,
provider_config=agent_config['provider'],
agent_config=agent_config['agent'],
tools=tools_schema,
enable_thinking=enable_thinking,
images=image_contents
)
# 如果LLM请求调用工具
if tool_calls:
logger.info(f"LLM请求调用工具: {tool_calls}")
# 发送工具调用通知给前端
await websocket.send_json({
"type": "tool_calls",
"conversation_id": conversation_id,
"tool_calls": [
{"name": tc['name'], "arguments": tc['arguments']}
for tc in tool_calls
]
})
# 执行工具调用
tool_results = []
tool_service = ToolService(db)
search_tool = tool_service.get_default_tool('search')
for tc in tool_calls:
if tc['name'] == 'web_search':
query = tc['arguments'].get('query', message)
logger.info(f"执行搜索: query={query}")
import httpx
import time
start_time = time.time()
try:
tavily_url = "https://api.tavily.com/search"
config = search_tool.config
payload = {
"api_key": config.get('api_key'),
"query": query,
"max_results": config.get('max_results', 5),
"search_depth": config.get('search_depth', 'basic')
}
with httpx.Client(timeout=30) as client:
resp = client.post(tavily_url, json=payload)
search_result = resp.json()
duration_ms = int((time.time() - start_time) * 1000)
if search_result.get("results"):
# 构建搜索结果
search_content = []
for i, r in enumerate(search_result["results"][:5], 1):
search_content.append({
"title": r.get('title', 'N/A'),
"content": r.get('content', r.get('snippet', ''))[:300],
"url": r.get('url', 'N/A')
})
tool_results.append({
"tool_call_id": tc['id'],
"content": json.dumps(search_content)
})
# 发送搜索结果给前端
await websocket.send_json({
"type": "search_results",
"conversation_id": conversation_id,
"results": [
{"title": r.get('title'), "snippet": r.get('content', '')[:150], "url": r.get('url')}
for r in search_result["results"][:5]
],
"query": query
})
# 记录日志
tool_service.increment_stats(search_tool.id, True)
tool_service.log_usage({
'tool_id': search_tool.id,
'tool_type': 'search',
'query': query,
'success': True,
'result_summary': f'{len(search_result["results"])} results',
'conversation_id': conversation_id,
'agent_id': current_agent_id,
'duration_ms': duration_ms
})
tool_calls_record.append({
"name": "web_search",
"query": query,
"results_count": len(search_result["results"])
})
except Exception as e:
logger.error(f"搜索失败: {e}")
duration_ms = int((time.time() - start_time) * 1000)
tool_service.increment_stats(search_tool.id, False)
tool_service.log_usage({
'tool_id': search_tool.id,
'tool_type': 'search',
'query': query,
'success': False,
'error_message': str(e),
'conversation_id': conversation_id,
'duration_ms': duration_ms
})
tool_results.append({
"tool_call_id": tc['id'],
"content": json.dumps({"error": str(e)})
})
# 将工具调用消息添加到历史
# 注意:这里需要将 assistant 的 tool_calls 消息添加到历史
# 但我们用的是简化的历史格式,需要重新构建
# 第二阶段将工具结果返回给LLM
if tool_results:
# 重新获取完整历史(包含工具调用)
history_with_tools = history.copy()
# 添加 assistant 的 tool_calls 消息
history_with_tools.append({
"role": "assistant",
"content": None,
"tool_calls": [
{
"id": tc['id'],
"type": "function",
"function": {
"name": tc['name'],
"arguments": json.dumps(tc['arguments'])
}
}
for tc in tool_calls
]
})
# 添加工具结果
for tr in tool_results:
history_with_tools.append({
"role": "tool",
"tool_call_id": tr['tool_call_id'],
"content": tr['content']
})
response, thinking_content = await llm_service.chat_with_tool_results(
messages=history_with_tools,
provider_config=agent_config['provider'],
agent_config=agent_config['agent'],
enable_thinking=enable_thinking
)
# 如果不支持 Function Calling 或没有工具,直接调用普通 chat
if response is None:
response, thinking_content = await llm_service.chat(
messages=history,
provider_config=agent_config['provider'],
agent_config=agent_config['agent'],
enable_thinking=enable_thinking,
images=image_contents
)
logger.info(f"LLM响应: response长度={len(response)}, thinking长度={len(thinking_content) if thinking_content else 0}")
# 保存AI回复
extra_data_to_save = None
if tool_calls_record:
extra_data_to_save = {'tool_calls': tool_calls_record}
assistant_msg = conv_service.add_message(
conversation_id=conversation.id,
role='assistant',
@@ -1059,7 +1170,8 @@ async def websocket_endpoint(websocket: WebSocket, user_id: str):
source='web',
thinking_content=thinking_content if thinking_content else None,
agent_id=current_agent_id,
model_used=agent_config['provider'].get('default_model')
model_used=agent_config['provider'].get('default_model'),
extra_data=extra_data_to_save
)
# 发送AI回复
@@ -1074,6 +1186,7 @@ async def websocket_endpoint(websocket: WebSocket, user_id: str):
"source": "web",
"agent_id": current_agent_id,
"agent_name": agent_config['agent'].get('display_name'),
"tool_calls": tool_calls_record, # v3.0: 返回工具调用记录
"created_at": assistant_msg.created_at.isoformat()
}
})

View File

@@ -36,6 +36,9 @@ class LLMProvider(Base):
supports_vision = Column(Boolean, default=False) # 是否支持图片理解(多模态)
vision_model = Column(String(100), nullable=True) # 视觉模型名(如与默认模型不同)
# Function Calling 支持
supports_function_calling = Column(Boolean, default=False) # 是否支持函数调用(工具自主调用)
# 配额和限制
max_tokens = Column(Integer, default=4096)
temperature = Column(Float, default=0.7)

View File

@@ -137,6 +137,9 @@ class AgentService:
'api_key': provider.api_key if provider else None,
'supports_thinking': provider.supports_thinking if provider else False,
'thinking_model': provider.thinking_model if provider else None,
'supports_vision': provider.supports_vision if provider else False,
'vision_model': provider.vision_model if provider else None,
'supports_function_calling': provider.supports_function_calling if provider else False,
'default_model': provider.default_model if provider else 'auto',
'max_tokens': provider.max_tokens if provider else 4096,
'temperature': provider.temperature if provider else 0.7,

View File

@@ -382,5 +382,192 @@ class LLMService:
yield {"type": "content", "text": buffer}
async def chat_with_tools(
self,
messages: List[Dict],
provider_config: dict,
agent_config: dict,
tools: List[Dict] = None,
enable_thinking: bool = True,
images: List[Dict] = None
) -> Tuple[str, Optional[str], Optional[List[Dict]]]:
"""
支持Function Calling的对话
Args:
messages: 对话历史
provider_config: LLM Provider配置
agent_config: Agent配置
tools: 工具定义列表OpenAI Function Calling格式
enable_thinking: 是否启用思考
images: 图片数据列表
Returns:
Tuple[str, Optional[str], Optional[List[Dict]]]: (回复内容, 思考过程, 工具调用记录)
"""
api_base = provider_config.get('api_base')
api_key = provider_config.get('api_key')
model = agent_config.get('model_override') or provider_config.get('default_model', 'auto')
supports_function_calling = provider_config.get('supports_function_calling', False)
max_tokens = provider_config.get('max_tokens', 4096)
temperature = agent_config.get('temperature_override') or provider_config.get('temperature', 0.7)
# 如果不支持Function Calling直接调用普通chat
if not supports_function_calling or not tools:
response, thinking = await self.chat(messages, provider_config, agent_config, enable_thinking, images)
return response, thinking, None
# 构建消息
final_messages = messages.copy()
system_prompt = agent_config.get('system_prompt', '你是一个有用的AI助手。')
if final_messages and final_messages[0]['role'] != 'system':
final_messages.insert(0, {"role": "system", "content": system_prompt})
# 处理图片(多模态)
if images and len(images) > 0:
for i in range(len(final_messages) - 1, -1, -1):
if final_messages[i]['role'] == 'user':
original_text = final_messages[i]['content']
multimodal_content = [{"type": "text", "text": original_text if original_text else "请描述这张图片"}]
for img in images:
multimodal_content.append({
"type": "image_url",
"image_url": {"url": img['data']}
})
final_messages[i]['content'] = multimodal_content
break
# 第一次调用让LLM决定是否调用工具
url = f"{api_base.rstrip('/')}/chat/completions"
headers = {
"Authorization": f"Bearer {api_key}",
"Content-Type": "application/json"
}
payload = {
"model": model,
"messages": final_messages,
"temperature": temperature,
"max_tokens": max_tokens,
"tools": tools # 传入工具定义
}
logger.info(f"Function Calling调用: url={url}, model={model}, tools={len(tools)}")
tool_calls_record = [] # 记录工具调用
try:
async with httpx.AsyncClient(timeout=60.0) as client:
response = await client.post(url, headers=headers, json=payload)
if response.status_code != 200:
logger.error(f"API返回错误: status={response.status_code}, body={response.text[:500]}")
response.raise_for_status()
data = response.json()
if 'choices' not in data or len(data['choices']) == 0:
raise ValueError("API响应格式错误缺少choices")
message = data['choices'][0]['message']
# 检查是否有工具调用
if 'tool_calls' in message and message['tool_calls']:
logger.info(f"LLM请求调用工具: {len(message['tool_calls'])}")
# 将LLM的工具调用消息添加到历史
final_messages.append({
"role": "assistant",
"content": None,
"tool_calls": message['tool_calls']
})
# 记录工具调用
for tc in message['tool_calls']:
tool_calls_record.append({
"id": tc['id'],
"name": tc['function']['name'],
"arguments": json.loads(tc['function']['arguments'])
})
# 返回工具调用记录,由调用方执行工具
return None, None, tool_calls_record
# 没有工具调用,直接返回内容
content = message.get('content', '')
# 处理思考内容(如果有)
thinking_content = None
# 这里可以添加思考内容提取逻辑
return content, thinking_content, None
except httpx.HTTPStatusError as e:
logger.error(f"HTTP错误: {e.response.status_code}, {e.response.text}")
raise
except Exception as e:
logger.error(f"Function Calling调用异常: {type(e).__name__}: {e}")
raise
async def chat_with_tool_results(
self,
messages: List[Dict],
provider_config: dict,
agent_config: dict,
enable_thinking: bool = True
) -> Tuple[str, Optional[str]]:
"""
第二阶段调用:使用包含工具调用和结果的完整消息历史
Args:
messages: 已包含assistant tool_calls和tool结果的完整消息历史
provider_config: LLM Provider配置
agent_config: Agent配置
Returns:
Tuple[str, Optional[str]]: (回复内容, 思考过程)
"""
api_base = provider_config.get('api_base')
api_key = provider_config.get('api_key')
model = agent_config.get('model_override') or provider_config.get('default_model', 'auto')
max_tokens = provider_config.get('max_tokens', 4096)
temperature = agent_config.get('temperature_override') or provider_config.get('temperature', 0.7)
# 消息历史已经包含了assistant的tool_calls和tool结果直接使用
final_messages = messages.copy()
# 调用LLM生成最终回复
url = f"{api_base.rstrip('/')}/chat/completions"
headers = {
"Authorization": f"Bearer {api_key}",
"Content-Type": "application/json"
}
payload = {
"model": model,
"messages": final_messages,
"temperature": temperature,
"max_tokens": max_tokens
}
logger.info(f"工具结果返回LLM: url={url}, model={model}, 消息数={len(final_messages)}")
try:
async with httpx.AsyncClient(timeout=60.0) as client:
response = await client.post(url, headers=headers, json=payload)
if response.status_code != 200:
logger.error(f"API返回错误: status={response.status_code}, body={response.text[:500]}")
response.raise_for_status()
data = response.json()
content = data['choices'][0]['message']['content']
return content, None
except Exception as e:
logger.error(f"工具结果调用异常: {e}")
raise
# 全局实例
llm_service = LLMService()

View File

@@ -58,8 +58,8 @@
</div>
<div class="card-body">
<table class="table">
<thead><tr><th>名称</th><th>API地址</th><th>默认模型</th><th>思考</th><th>视觉</th><th>状态</th><th>操作</th></tr></thead>
<tbody id="providers-list"><tr><td colspan="7" class="text-center">加载中...</td></tr></tbody>
<thead><tr><th>名称</th><th>API地址</th><th>默认模型</th><th>思考</th><th>视觉</th><th>FC</th><th>状态</th><th>操作</th></tr></thead>
<tbody id="providers-list"><tr><td colspan="8" class="text-center">加载中...</td></tr></tbody>
</table>
</div>
</div>
@@ -164,6 +164,8 @@
<div class="thinking-config"><div class="row"><div class="col-md-6 form-check"><input type="checkbox" class="form-check-input" id="provider-supports-thinking"><label class="form-check-label">支持原生思考</label></div><div class="col-md-6"><label class="form-label">思考模型名</label><input type="text" class="form-control" id="provider-thinking-model"></div></div></div>
<hr><h6>视觉能力</h6>
<div class="thinking-config"><div class="row"><div class="col-md-6 form-check"><input type="checkbox" class="form-check-input" id="provider-supports-vision"><label class="form-check-label">支持图片理解</label></div><div class="col-md-6"><label class="form-label">视觉模型名</label><input type="text" class="form-control" id="provider-vision-model" placeholder="留空则使用默认模型"></div></div><small class="text-muted mt-2 d-block">启用后可上传图片让AI识别分析内容</small></div>
<hr><h6>Function Calling</h6>
<div class="thinking-config"><div class="form-check"><input type="checkbox" class="form-check-input" id="provider-supports-function-calling"><label class="form-check-label">支持函数调用</label></div><small class="text-muted mt-2 d-block">启用后LLM可自主决定何时调用工具更智能</small></div>
<div class="mt-3"><button type="button" class="btn btn-outline-primary" onclick="fetchProviderModels()"><i class="ri-refresh-line"></i> 获取模型</button><button type="button" class="btn btn-outline-secondary" onclick="testProviderConnection()"><i class="ri-link"></i> 测试连接</button></div>
<div class="mt-2" id="provider-models-preview"></div><div class="mt-2" id="provider-test-result"></div>
</form></div>
@@ -331,6 +333,7 @@
<td><strong>${p.name}</strong></td><td><small>${p.api_base||'-'}</small></td><td>${p.default_model||'auto'}</td>
<td>${p.supports_thinking?'<span class="badge bg-success">支持</span>':'<span class="badge bg-secondary">不支持</span>'}</td>
<td>${p.supports_vision?'<span class="badge bg-info">支持</span>':'<span class="badge bg-secondary">不支持</span>'}</td>
<td>${p.supports_function_calling?'<span class="badge bg-primary">支持</span>':'<span class="badge bg-secondary">不支持</span>'}</td>
<td>${p.is_active?'<span class="badge bg-success">启用</span>':'<span class="badge bg-secondary">禁用</span>'}</td>
<td><button class="btn btn-sm btn-outline-primary" onclick="editProvider(${p.id})"><i class="ri-edit-line"></i></button>
<button class="btn btn-sm btn-outline-danger" onclick="deleteProvider(${p.id},'${p.name}')"><i class="ri-delete-bin-line"></i></button></td>
@@ -349,6 +352,7 @@
document.getElementById('provider-active').checked = true;
document.getElementById('provider-supports-thinking').checked = false;
document.getElementById('provider-supports-vision').checked = false;
document.getElementById('provider-supports-function-calling').checked = false;
document.getElementById('provider-models-preview').innerHTML = '';
document.getElementById('provider-test-result').innerHTML = '';
new bootstrap.Modal(document.getElementById('providerModal')).show();
@@ -371,6 +375,7 @@
document.getElementById('provider-thinking-model').value = p.thinking_model || '';
document.getElementById('provider-supports-vision').checked = p.supports_vision;
document.getElementById('provider-vision-model').value = p.vision_model || '';
document.getElementById('provider-supports-function-calling').checked = p.supports_function_calling;
new bootstrap.Modal(document.getElementById('providerModal')).show();
}
@@ -389,7 +394,8 @@
supports_thinking: document.getElementById('provider-supports-thinking').checked,
thinking_model: document.getElementById('provider-thinking-model').value,
supports_vision: document.getElementById('provider-supports-vision').checked,
vision_model: document.getElementById('provider-vision-model').value
vision_model: document.getElementById('provider-vision-model').value,
supports_function_calling: document.getElementById('provider-supports-function-calling').checked
};
const res = await fetch(id ? `/api/v2/providers/${id}` : '/api/v2/providers', { method: id ? 'PUT' : 'POST', headers: {'Content-Type':'application/json'}, body: JSON.stringify(data) });
const result = await res.json();

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