2.1 Orchestrator in workflow:
- New run_orchestrator_node() in workflow_integration.py loads agents from DB,
supports route/sequential/debate/pipeline modes
- New 'orchestrator' node type in workflow_engine.py execute_node dispatch
2.2 Tool-level human approval:
- AgentToolConfig extended with require_approval, approval_timeout_ms,
approval_default fields
- New ApprovalManager (approval_manager.py) with asyncio.Event-based
create/wait_for_decision/resolve pattern
- AgentRuntime run() and run_stream() intercept tool execution,
wait for approval decision before executing
- New POST /api/v1/approval/{id}/resolve REST endpoint
- Frontend: approval_required SSE event handling, approval dialog UI
with approve/deny/skip buttons
Co-Authored-By: Claude Opus 4.6 <noreply@anthropic.com>
1028 lines
44 KiB
Python
1028 lines
44 KiB
Python
"""
|
||
Agent Runtime 核心 —— 自主 ReAct 循环。
|
||
|
||
流程:
|
||
1. 接收用户输入 → 追加到消息列表
|
||
2. 调用 LLM(携带 tools schema)
|
||
3. 如果 LLM 返回工具调用 → 执行工具 → 结果追加到消息列表 → 回到 2
|
||
4. 如果 LLM 返回文本 → 作为最终回答返回
|
||
5. 超过 max_iterations → 强制终止
|
||
"""
|
||
from __future__ import annotations
|
||
|
||
import json
|
||
import logging
|
||
import time
|
||
from typing import Any, AsyncGenerator, Callable, Dict, List, Optional, Protocol, TypedDict
|
||
|
||
from app.agent_runtime.schemas import (
|
||
AgentConfig,
|
||
AgentResult,
|
||
AgentStep,
|
||
)
|
||
from app.agent_runtime.context import AgentContext
|
||
from app.agent_runtime.memory import AgentMemory
|
||
from app.agent_runtime.tool_manager import AgentToolManager
|
||
from app.core.exceptions import WorkflowExecutionError
|
||
from app.services.agent_learning_service import (
|
||
extract_pattern_from_result,
|
||
format_pattern_hint,
|
||
load_relevant_patterns,
|
||
save_learning_pattern,
|
||
)
|
||
|
||
logger = logging.getLogger(__name__)
|
||
|
||
|
||
class LLMCallMetrics(TypedDict, total=False):
|
||
"""一次 LLM 调用的度量数据"""
|
||
agent_id: Optional[str]
|
||
session_id: str
|
||
user_id: Optional[str]
|
||
model: str
|
||
provider: Optional[str]
|
||
prompt_tokens: int
|
||
completion_tokens: int
|
||
total_tokens: int
|
||
latency_ms: int
|
||
iteration_number: int
|
||
step_type: str # think / final
|
||
tool_name: Optional[str]
|
||
status: str # success / error
|
||
error_message: Optional[str]
|
||
|
||
# 可重试的 API 异常
|
||
_RETRYABLE_ERRORS = (
|
||
"timed out",
|
||
"timeout",
|
||
"connection error",
|
||
"temporarily unavailable",
|
||
"server disconnected",
|
||
"rate limit",
|
||
"too many requests",
|
||
"internal server error",
|
||
"service unavailable",
|
||
)
|
||
|
||
|
||
class AgentRuntime:
|
||
"""
|
||
自主 Agent 运行时。
|
||
|
||
用法:
|
||
runtime = AgentRuntime(config)
|
||
result = await runtime.run("帮我写个Python脚本")
|
||
"""
|
||
|
||
def __init__(
|
||
self,
|
||
config: Optional[AgentConfig] = None,
|
||
context: Optional[AgentContext] = None,
|
||
memory: Optional[AgentMemory] = None,
|
||
tool_manager: Optional[AgentToolManager] = None,
|
||
execution_logger: Optional[Any] = None,
|
||
on_tool_executed: Optional[Callable[[str], Any]] = None,
|
||
on_llm_call: Optional[Callable[[Dict[str, Any]], Any]] = None,
|
||
):
|
||
self.config = config or AgentConfig()
|
||
self.context = context or AgentContext(
|
||
system_prompt=self.config.system_prompt,
|
||
user_id=self.config.user_id,
|
||
)
|
||
_mem_scope = self.config.memory_scope_id or self.config.user_id or self.config.name
|
||
self.memory = memory or AgentMemory(
|
||
scope_id=_mem_scope,
|
||
max_history=self.config.memory.max_history_messages,
|
||
persist=self.config.memory.persist_to_db,
|
||
)
|
||
self.tool_manager = tool_manager or AgentToolManager(
|
||
include_tools=self.config.tools.include_tools,
|
||
exclude_tools=self.config.tools.exclude_tools,
|
||
)
|
||
self.execution_logger = execution_logger
|
||
self.on_tool_executed = on_tool_executed
|
||
self.on_llm_call = on_llm_call
|
||
self._memory_context_loaded = False
|
||
self._llm_invocations = 0
|
||
# 自主学习作用域:bare 聊天用 "bare",Agent 用 "agent"
|
||
self._learning_scope_kind = "bare" if "bare" in str(_mem_scope) else "agent"
|
||
|
||
# 预算回调:供 WorkflowEngine 注入,使 Agent 内部计数计入工作流预算
|
||
# 返回 True 表示预算充足;返回 False 或抛出异常表示超限
|
||
self.on_llm_invocation: Optional[Callable[[], Any]] = None
|
||
|
||
async def run(self, user_input: str) -> AgentResult:
|
||
"""
|
||
执行 Agent 单轮对话。
|
||
|
||
流程:加载记忆 → 追加用户消息 → ReAct 循环 → 保存记忆 → 返回结果。
|
||
"""
|
||
max_iter = max(1, self.config.llm.max_iterations)
|
||
self.context.iteration = 0
|
||
self.context.tool_calls_made = 0
|
||
|
||
# 1. 首次运行时加载长期记忆到 system prompt
|
||
if not self._memory_context_loaded:
|
||
await self._inject_memory_context(user_input)
|
||
self._memory_context_loaded = True
|
||
|
||
# 2. 追加用户消息
|
||
self.context.add_user_message(user_input)
|
||
|
||
# 3. ReAct 循环
|
||
llm = _LLMClient(self.config.llm)
|
||
tool_schemas = self.tool_manager.get_tool_schemas()
|
||
has_tools = self.tool_manager.has_tools()
|
||
steps: List[AgentStep] = []
|
||
_self_review_attempted = False # 防止无限修正循环
|
||
|
||
# 构建 LLM 调用回调(包装 on_llm_call,补充上下文)
|
||
llm_callback_ctx = {"step_type": "think", "tool_name": None}
|
||
|
||
def _llm_callback(metrics: Dict[str, Any]):
|
||
if self.on_llm_call:
|
||
metrics.update({
|
||
"session_id": self.context.session_id,
|
||
"user_id": self.config.user_id,
|
||
"step_type": llm_callback_ctx["step_type"],
|
||
"tool_name": llm_callback_ctx["tool_name"],
|
||
})
|
||
self.on_llm_call(metrics)
|
||
|
||
while self.context.iteration < max_iter:
|
||
self.context.iteration += 1
|
||
|
||
# 裁剪过长历史
|
||
messages = self.memory.trim_messages(self.context.messages)
|
||
|
||
# 预算检查:LLM 调用次数(在调用 LLM 之前检查,避免浪费额度)
|
||
budget = self.config.budget
|
||
if self._llm_invocations >= budget.max_llm_invocations:
|
||
err = f"已超过 LLM 调用预算({budget.max_llm_invocations} 次)"
|
||
logger.warning(err)
|
||
steps.append(AgentStep(iteration=self.context.iteration, type="final", content=err))
|
||
await self.memory.save_context(user_input, err, self.context.messages)
|
||
return AgentResult(success=False, content=err, truncated=True,
|
||
iterations_used=self.context.iteration,
|
||
tool_calls_made=self.context.tool_calls_made,
|
||
steps=steps, error=err)
|
||
|
||
# 调用外部 LLM 预算回调(WorkflowEngine 注入,将 Agent 的 LLM 计入工作流预算)
|
||
if self.on_llm_invocation:
|
||
try:
|
||
self.on_llm_invocation()
|
||
except Exception as e:
|
||
err = f"LLM 调用超出工作流预算: {e}"
|
||
logger.warning(err)
|
||
steps.append(AgentStep(iteration=self.context.iteration, type="final", content=err))
|
||
await self.memory.save_context(user_input, err, self.context.messages)
|
||
return AgentResult(success=False, content=err, truncated=True,
|
||
iterations_used=self.context.iteration,
|
||
tool_calls_made=self.context.tool_calls_made,
|
||
steps=steps, error=str(e))
|
||
|
||
# 调用 LLM
|
||
try:
|
||
response = await llm.chat(
|
||
messages=messages,
|
||
tools=tool_schemas if has_tools and self.context.iteration == 1 else
|
||
(tool_schemas if has_tools else None),
|
||
iteration=self.context.iteration,
|
||
on_completion=_llm_callback,
|
||
)
|
||
except Exception as e:
|
||
err_str = str(e)
|
||
logger.error("LLM 调用失败 (iteration=%s): %s", self.context.iteration, err_str)
|
||
if self.context.iteration < max_iter and self._is_retryable(err_str):
|
||
steps.append(AgentStep(
|
||
iteration=self.context.iteration,
|
||
type="tool_result",
|
||
content=f"LLM 调用失败(可重试): {err_str}",
|
||
))
|
||
continue
|
||
return AgentResult(
|
||
success=False,
|
||
content=f"LLM 调用失败: {err_str}",
|
||
iterations_used=self.context.iteration,
|
||
tool_calls_made=self.context.tool_calls_made,
|
||
error=err_str,
|
||
)
|
||
|
||
# 记录 LLM 调用次数(内部计数)
|
||
self._llm_invocations += 1
|
||
|
||
# 解析工具调用
|
||
tool_calls = self._extract_tool_calls(response)
|
||
content = self._extract_content(response)
|
||
reasoning = getattr(response, "reasoning_content", None) or (
|
||
response.get("reasoning_content") if isinstance(response, dict) else None
|
||
)
|
||
|
||
if not tool_calls:
|
||
# LLM 直接返回文本 → 结束
|
||
self.context.add_assistant_message(content)
|
||
final_text = content or "(模型未返回有效内容)"
|
||
|
||
# 输出质量自检(默认关闭,Agent 节点可开启)
|
||
if self.config.self_review_enabled and not _self_review_attempted:
|
||
review = await self._self_review(final_text, task_context=user_input)
|
||
steps.append(AgentStep(
|
||
iteration=self.context.iteration,
|
||
type="tool_result",
|
||
content=f"self_review: score={review['score']:.2f} passed={review['passed']}",
|
||
tool_name="self_review",
|
||
tool_input={"content": final_text[:200]},
|
||
tool_result=json.dumps(review, ensure_ascii=False),
|
||
))
|
||
if review["passed"]:
|
||
logger.info("self_review 通过 (%.2f >= %.2f)", review["score"], review["threshold"])
|
||
else:
|
||
logger.info("self_review 未通过 (%.2f < %.2f),追加修正", review["score"], review["threshold"])
|
||
_self_review_attempted = True
|
||
# 追加修正提示
|
||
fix_prompt = (
|
||
f"你的上一个回答未通过质量检查(评分 {review['score']:.1f}/{review['threshold']})。\n"
|
||
f"问题:{';'.join(review['issues'][:3])}\n"
|
||
f"改进建议:{';'.join(review['suggestions'][:3])}\n"
|
||
"请修正你的回答,确保满足上述建议。"
|
||
)
|
||
self.context.add_user_message(fix_prompt)
|
||
continue # 回到 ReAct 循环,让 LLM 修正
|
||
|
||
steps.append(AgentStep(
|
||
iteration=self.context.iteration,
|
||
type="final",
|
||
content=final_text,
|
||
reasoning=reasoning,
|
||
))
|
||
# 保存记忆
|
||
await self.memory.save_context(user_input, final_text, self.context.messages)
|
||
# 保存学习模式
|
||
if self.config.memory.learning_enabled:
|
||
await self._save_learning_pattern(
|
||
user_input, steps, success=True,
|
||
iterations_used=self.context.iteration,
|
||
tool_calls_made=self.context.tool_calls_made,
|
||
)
|
||
return AgentResult(
|
||
success=True,
|
||
content=final_text,
|
||
iterations_used=self.context.iteration,
|
||
tool_calls_made=self.context.tool_calls_made,
|
||
steps=steps,
|
||
)
|
||
|
||
# 有工具调用 → 先记录 assistant 消息(含 tool_calls)
|
||
self.context.add_assistant_message(content or "", tool_calls, reasoning)
|
||
|
||
# 记录思考步骤(含工具调用意图)
|
||
tc_names = [tc["function"]["name"] for tc in tool_calls]
|
||
tc_args_list = []
|
||
for tc in tool_calls:
|
||
try:
|
||
tc_args_list.append(json.loads(tc["function"].get("arguments", "{}")))
|
||
except (json.JSONDecodeError, TypeError):
|
||
tc_args_list.append({})
|
||
|
||
steps.append(AgentStep(
|
||
iteration=self.context.iteration,
|
||
type="think",
|
||
content=content or f"调用工具: {', '.join(tc_names)}",
|
||
reasoning=reasoning,
|
||
tool_name=tc_names[0] if len(tc_names) == 1 else None,
|
||
tool_input=tc_args_list[0] if len(tc_args_list) == 1 else None,
|
||
))
|
||
|
||
if self.execution_logger:
|
||
self.execution_logger.info(
|
||
f"Agent 调用 {len(tool_calls)} 个工具",
|
||
data={"tool_calls": tc_names,
|
||
"iteration": self.context.iteration},
|
||
)
|
||
|
||
# 逐一执行工具
|
||
for tc in tool_calls:
|
||
tfn = tc.get("function", {})
|
||
tname = tfn.get("name", "unknown")
|
||
tcid = tc.get("id", f"call_{self.context.iteration}_{self.context.tool_calls_made}")
|
||
|
||
try:
|
||
targs = json.loads(tfn.get("arguments", "{}"))
|
||
except (json.JSONDecodeError, TypeError):
|
||
targs = {}
|
||
|
||
# 工具执行前审批检查
|
||
if tname in self.config.tools.require_approval:
|
||
from app.services.approval_manager import approval_manager as _am
|
||
logger.info("Agent 工具需审批 [%s]: %s", tname, targs)
|
||
approval_req = await _am.submit(
|
||
tool_name=tname, args=targs,
|
||
timeout_ms=self.config.tools.approval_timeout_ms,
|
||
)
|
||
decision = approval_req.decision
|
||
if decision == "denied":
|
||
result = f"[审批拒绝] 工具 {tname} 需要人工审批但被拒绝。"
|
||
self.context.add_tool_result(tcid, tname, result)
|
||
continue
|
||
elif decision == "skip":
|
||
result = f"[审批跳过] 工具 {tname} 被跳过。"
|
||
self.context.add_tool_result(tcid, tname, result)
|
||
continue
|
||
# decision == "approved" → 继续执行
|
||
|
||
logger.info("Agent 执行工具 [%s]: %s", tname, targs)
|
||
result = await self.tool_manager.execute(tname, targs)
|
||
|
||
steps.append(AgentStep(
|
||
iteration=self.context.iteration,
|
||
type="tool_result",
|
||
content=f"工具 {tname} 返回结果",
|
||
tool_name=tname,
|
||
tool_input=targs,
|
||
tool_result=result[:500] + "..." if len(result) > 500 else result,
|
||
))
|
||
|
||
self.context.add_tool_result(tcid, tname, result)
|
||
self.context.tool_calls_made += 1
|
||
|
||
# 预算检查:工具调用次数
|
||
if self.context.tool_calls_made > budget.max_tool_calls:
|
||
err = f"已超过工具调用预算({budget.max_tool_calls} 次)"
|
||
logger.warning(err)
|
||
steps.append(AgentStep(iteration=self.context.iteration, type="tool_result",
|
||
content=err, tool_name=tname))
|
||
return AgentResult(success=False, content=err, truncated=True,
|
||
iterations_used=self.context.iteration,
|
||
tool_calls_made=self.context.tool_calls_made,
|
||
steps=steps, error=err)
|
||
|
||
if self.on_tool_executed:
|
||
try:
|
||
await self.on_tool_executed(tname)
|
||
except WorkflowExecutionError:
|
||
raise
|
||
except Exception:
|
||
pass
|
||
|
||
if self.execution_logger:
|
||
preview = result[:300] + "..." if len(result) > 300 else result
|
||
self.execution_logger.info(
|
||
f"工具 {tname} 执行完成",
|
||
data={"tool_name": tname, "result_preview": preview},
|
||
)
|
||
|
||
# 达到最大迭代次数
|
||
last_content = ""
|
||
for m in reversed(self.context.messages):
|
||
if m.get("role") == "assistant" and m.get("content"):
|
||
last_content = m["content"]
|
||
break
|
||
|
||
logger.warning("Agent 达到最大迭代次数 (%s)", max_iter)
|
||
await self.memory.save_context(user_input, last_content or "(已达最大迭代次数)", self.context.messages)
|
||
# 保存学习模式(即便截断,工具调用模式仍有参考价值)
|
||
if self.config.memory.learning_enabled:
|
||
await self._save_learning_pattern(
|
||
user_input, steps, success=True,
|
||
iterations_used=self.context.iteration,
|
||
tool_calls_made=self.context.tool_calls_made,
|
||
)
|
||
if last_content:
|
||
steps.append(AgentStep(
|
||
iteration=self.context.iteration,
|
||
type="final",
|
||
content=last_content,
|
||
))
|
||
return AgentResult(
|
||
success=True,
|
||
content=last_content or "已达最大迭代次数,但模型未返回最终回答。",
|
||
truncated=True,
|
||
iterations_used=self.context.iteration,
|
||
tool_calls_made=self.context.tool_calls_made,
|
||
steps=steps,
|
||
)
|
||
|
||
async def run_stream(self, user_input: str) -> AsyncGenerator[dict, None]:
|
||
"""
|
||
流式执行 Agent 单轮对话。
|
||
|
||
与 run() 逻辑相同,但在每个关键步骤 yield SSE 事件:
|
||
- think: LLM 思考中,准备调用工具
|
||
- tool_call: 即将执行工具
|
||
- tool_result: 工具执行完毕
|
||
- final: 最终回答
|
||
- error: 出错/预算超限
|
||
"""
|
||
max_iter = max(1, self.config.llm.max_iterations)
|
||
self.context.iteration = 0
|
||
self.context.tool_calls_made = 0
|
||
|
||
# 1. 首次运行时加载长期记忆到 system prompt
|
||
if not self._memory_context_loaded:
|
||
await self._inject_memory_context(user_input)
|
||
self._memory_context_loaded = True
|
||
|
||
# 2. 追加用户消息
|
||
self.context.add_user_message(user_input)
|
||
|
||
# 3. ReAct 循环
|
||
llm = _LLMClient(self.config.llm)
|
||
tool_schemas = self.tool_manager.get_tool_schemas()
|
||
has_tools = self.tool_manager.has_tools()
|
||
steps: List[AgentStep] = []
|
||
_self_review_attempted = False
|
||
|
||
llm_callback_ctx = {"step_type": "think", "tool_name": None}
|
||
|
||
def _llm_callback(metrics: Dict[str, Any]):
|
||
if self.on_llm_call:
|
||
metrics.update({
|
||
"session_id": self.context.session_id,
|
||
"user_id": self.config.user_id,
|
||
"step_type": llm_callback_ctx["step_type"],
|
||
"tool_name": llm_callback_ctx["tool_name"],
|
||
})
|
||
self.on_llm_call(metrics)
|
||
|
||
while self.context.iteration < max_iter:
|
||
self.context.iteration += 1
|
||
messages = self.memory.trim_messages(self.context.messages)
|
||
|
||
# 预算检查:LLM 调用次数(在调用 LLM 之前检查,避免浪费额度)
|
||
budget = self.config.budget
|
||
if self._llm_invocations >= budget.max_llm_invocations:
|
||
err = f"已超过 LLM 调用预算({budget.max_llm_invocations} 次)"
|
||
logger.warning(err)
|
||
yield {"type": "error", "content": err, "iteration": self.context.iteration,
|
||
"truncated": True}
|
||
await self.memory.save_context(user_input, err, self.context.messages)
|
||
return
|
||
|
||
# 调用外部 LLM 预算回调(WorkflowEngine 注入)
|
||
if self.on_llm_invocation:
|
||
try:
|
||
self.on_llm_invocation()
|
||
except Exception as e:
|
||
err = f"LLM 调用超出工作流预算: {e}"
|
||
logger.warning(err)
|
||
yield {"type": "error", "content": err, "iteration": self.context.iteration,
|
||
"truncated": True}
|
||
return
|
||
|
||
# think 事件:告知前端 Agent 正在思考(让 UI 即时反馈,避免假死感)
|
||
yield {"type": "think", "content": "", "reasoning": None, "iteration": self.context.iteration}
|
||
|
||
# 调用 LLM
|
||
try:
|
||
response = await llm.chat(
|
||
messages=messages,
|
||
tools=tool_schemas if has_tools and self.context.iteration == 1 else
|
||
(tool_schemas if has_tools else None),
|
||
iteration=self.context.iteration,
|
||
on_completion=_llm_callback,
|
||
)
|
||
except Exception as e:
|
||
err_str = str(e)
|
||
logger.error("LLM 调用失败 (iteration=%s): %s", self.context.iteration, err_str)
|
||
if self.context.iteration < max_iter and self._is_retryable(err_str):
|
||
yield {"type": "error", "content": f"LLM 调用失败(可重试): {err_str}",
|
||
"iteration": self.context.iteration}
|
||
continue
|
||
yield {"type": "error", "content": f"LLM 调用失败: {err_str}",
|
||
"iteration": self.context.iteration}
|
||
return
|
||
|
||
# 记录 LLM 调用次数(内部计数)
|
||
self._llm_invocations += 1
|
||
|
||
# 解析工具调用
|
||
tool_calls = self._extract_tool_calls(response)
|
||
content = self._extract_content(response)
|
||
reasoning = getattr(response, "reasoning_content", None) or (
|
||
response.get("reasoning_content") if isinstance(response, dict) else None
|
||
)
|
||
|
||
if not tool_calls:
|
||
# LLM 直接返回文本 → 结束
|
||
self.context.add_assistant_message(content)
|
||
final_text = content or "(模型未返回有效内容)"
|
||
|
||
# 输出质量自检(默认关闭)
|
||
if self.config.self_review_enabled and not _self_review_attempted:
|
||
review = await self._self_review(final_text, task_context=user_input)
|
||
yield {
|
||
"type": "tool_result",
|
||
"content": f"self_review: score={review['score']:.2f} passed={review['passed']}",
|
||
"tool_name": "self_review",
|
||
"iteration": self.context.iteration,
|
||
"session_id": self.context.session_id,
|
||
}
|
||
if review["passed"]:
|
||
logger.info("self_review 通过 (%.2f >= %.2f)", review["score"], review["threshold"])
|
||
else:
|
||
logger.info("self_review 未通过 (%.2f < %.2f),追加修正", review["score"], review["threshold"])
|
||
_self_review_attempted = True
|
||
yield {
|
||
"type": "think",
|
||
"content": f"自检未通过({review['score']:.1f}),正在修正:{';'.join(review['suggestions'][:2])}",
|
||
"iteration": self.context.iteration,
|
||
"session_id": self.context.session_id,
|
||
}
|
||
fix_prompt = (
|
||
f"你的上一个回答未通过质量检查(评分 {review['score']:.1f}/{review['threshold']})。\n"
|
||
f"问题:{';'.join(review['issues'][:3])}\n"
|
||
f"改进建议:{';'.join(review['suggestions'][:3])}\n"
|
||
"请修正你的回答,确保满足上述建议。"
|
||
)
|
||
self.context.add_user_message(fix_prompt)
|
||
continue # 回到 ReAct 循环,让 LLM 修正
|
||
|
||
yield {
|
||
"type": "final",
|
||
"content": final_text,
|
||
"reasoning": reasoning,
|
||
"iteration": self.context.iteration,
|
||
"iterations_used": self.context.iteration,
|
||
"tool_calls_made": self.context.tool_calls_made,
|
||
"session_id": self.context.session_id,
|
||
}
|
||
await self.memory.save_context(user_input, final_text, self.context.messages)
|
||
# 保存学习模式
|
||
if self.config.memory.learning_enabled:
|
||
await self._save_learning_pattern(
|
||
user_input, steps, success=True,
|
||
iterations_used=self.context.iteration,
|
||
tool_calls_made=self.context.tool_calls_made,
|
||
)
|
||
return
|
||
|
||
# 有工具调用 → 先记录 assistant 消息
|
||
self.context.add_assistant_message(content or "", tool_calls, reasoning)
|
||
|
||
# yield think 事件
|
||
tc_names = [tc["function"]["name"] for tc in tool_calls]
|
||
tc_args_list = []
|
||
for tc in tool_calls:
|
||
try:
|
||
tc_args_list.append(json.loads(tc["function"].get("arguments", "{}")))
|
||
except (json.JSONDecodeError, TypeError):
|
||
tc_args_list.append({})
|
||
|
||
yield {
|
||
"type": "think",
|
||
"content": content or f"调用工具: {', '.join(tc_names)}",
|
||
"reasoning": reasoning,
|
||
"tool_names": tc_names,
|
||
"iteration": self.context.iteration,
|
||
}
|
||
|
||
steps.append(AgentStep(
|
||
iteration=self.context.iteration,
|
||
type="think",
|
||
content=content or f"调用工具: {', '.join(tc_names)}",
|
||
reasoning=reasoning,
|
||
tool_name=tc_names[0] if len(tc_names) == 1 else None,
|
||
tool_input=tc_args_list[0] if len(tc_args_list) == 1 else None,
|
||
))
|
||
|
||
if self.execution_logger:
|
||
self.execution_logger.info(
|
||
f"Agent 调用 {len(tool_calls)} 个工具",
|
||
data={"tool_calls": tc_names, "iteration": self.context.iteration},
|
||
)
|
||
|
||
# 逐一执行工具
|
||
for tc in tool_calls:
|
||
tfn = tc.get("function", {})
|
||
tname = tfn.get("name", "unknown")
|
||
tcid = tc.get("id", f"call_{self.context.iteration}_{self.context.tool_calls_made}")
|
||
|
||
try:
|
||
targs = json.loads(tfn.get("arguments", "{}"))
|
||
except (json.JSONDecodeError, TypeError):
|
||
targs = {}
|
||
|
||
# yield tool_call 事件
|
||
yield {
|
||
"type": "tool_call",
|
||
"name": tname,
|
||
"input": targs,
|
||
"iteration": self.context.iteration,
|
||
}
|
||
|
||
# 工具执行前审批检查(流式:先 create → yield 事件带 ID → 等待决定)
|
||
if tname in self.config.tools.require_approval:
|
||
from app.services.approval_manager import approval_manager as _am
|
||
logger.info("Agent 工具需审批 [%s]: %s", tname, targs)
|
||
approval_req = _am.create(tool_name=tname, args=targs)
|
||
yield {
|
||
"type": "approval_required",
|
||
"approval_id": approval_req.approval_id,
|
||
"tool_name": tname,
|
||
"args": targs,
|
||
"iteration": self.context.iteration,
|
||
}
|
||
decision = await _am.wait_for_decision(
|
||
approval_req.approval_id,
|
||
timeout_ms=self.config.tools.approval_timeout_ms,
|
||
)
|
||
if decision == "denied":
|
||
result = f"[审批拒绝] 工具 {tname} 需要人工审批但被拒绝。"
|
||
yield {"type": "tool_result", "name": tname, "result": result, "iteration": self.context.iteration}
|
||
self.context.add_tool_result(tcid, tname, result)
|
||
continue
|
||
elif decision == "skip":
|
||
result = f"[审批跳过] 工具 {tname} 被跳过。"
|
||
yield {"type": "tool_result", "name": tname, "result": result, "iteration": self.context.iteration}
|
||
self.context.add_tool_result(tcid, tname, result)
|
||
continue
|
||
# decision == "approved" → 继续执行
|
||
|
||
logger.info("Agent 执行工具 [%s]: %s", tname, targs)
|
||
result = await self.tool_manager.execute(tname, targs)
|
||
|
||
# yield tool_result 事件
|
||
yield {
|
||
"type": "tool_result",
|
||
"name": tname,
|
||
"result": result[:500] + "..." if len(result) > 500 else result,
|
||
"iteration": self.context.iteration,
|
||
}
|
||
|
||
steps.append(AgentStep(
|
||
iteration=self.context.iteration,
|
||
type="tool_result",
|
||
content=f"工具 {tname} 返回结果",
|
||
tool_name=tname,
|
||
tool_input=targs,
|
||
tool_result=result[:500] + "..." if len(result) > 500 else result,
|
||
))
|
||
|
||
self.context.add_tool_result(tcid, tname, result)
|
||
self.context.tool_calls_made += 1
|
||
|
||
# 预算检查:工具调用次数
|
||
if self.context.tool_calls_made > budget.max_tool_calls:
|
||
err = f"已超过工具调用预算({budget.max_tool_calls} 次)"
|
||
logger.warning(err)
|
||
yield {"type": "error", "content": err, "iteration": self.context.iteration,
|
||
"truncated": True}
|
||
return
|
||
|
||
if self.on_tool_executed:
|
||
try:
|
||
await self.on_tool_executed(tname)
|
||
except WorkflowExecutionError:
|
||
raise
|
||
except Exception:
|
||
pass
|
||
|
||
if self.execution_logger:
|
||
preview = result[:300] + "..." if len(result) > 300 else result
|
||
self.execution_logger.info(
|
||
f"工具 {tname} 执行完成",
|
||
data={"tool_name": tname, "result_preview": preview},
|
||
)
|
||
|
||
# 达到最大迭代次数
|
||
last_content = ""
|
||
for m in reversed(self.context.messages):
|
||
if m.get("role") == "assistant" and m.get("content"):
|
||
last_content = m["content"]
|
||
break
|
||
|
||
logger.warning("Agent 达到最大迭代次数 (%s)", max_iter)
|
||
await self.memory.save_context(user_input, last_content or "(已达最大迭代次数)", self.context.messages)
|
||
# 保存学习模式(即便截断,工具调用模式仍有参考价值)
|
||
if self.config.memory.learning_enabled:
|
||
await self._save_learning_pattern(
|
||
user_input, steps, success=True,
|
||
iterations_used=self.context.iteration,
|
||
tool_calls_made=self.context.tool_calls_made,
|
||
)
|
||
yield {
|
||
"type": "final",
|
||
"content": last_content or "已达最大迭代次数,但模型未返回最终回答。",
|
||
"iteration": self.context.iteration,
|
||
"iterations_used": self.context.iteration,
|
||
"tool_calls_made": self.context.tool_calls_made,
|
||
"truncated": True,
|
||
"session_id": self.context.session_id,
|
||
}
|
||
|
||
async def _inject_memory_context(self, query: str = "") -> None:
|
||
"""加载长期记忆并注入 system prompt。"""
|
||
mem_text = await self.memory.initialize(query=query)
|
||
enriched = self.config.system_prompt.rstrip("\n")
|
||
|
||
if mem_text:
|
||
enriched += "\n\n" + mem_text
|
||
|
||
# 注入学习模式提示(历史工具使用建议)
|
||
if self.config.memory.learning_enabled:
|
||
pattern_hint = await self._inject_learning_patterns(query)
|
||
if pattern_hint:
|
||
enriched += "\n\n" + pattern_hint
|
||
|
||
self.context.set_system_prompt(enriched)
|
||
logger.info("Agent 已注入长期记忆上下文")
|
||
|
||
async def _inject_learning_patterns(self, query: str) -> str:
|
||
"""查询学习模式,返回格式化的提示文本。"""
|
||
from app.core.database import SessionLocal
|
||
db = None
|
||
try:
|
||
db = SessionLocal()
|
||
patterns = load_relevant_patterns(
|
||
db, self._learning_scope_kind, self.memory.scope_id, query
|
||
)
|
||
return format_pattern_hint(patterns, query)
|
||
except Exception as e:
|
||
logger.warning("加载学习模式失败: %s", e)
|
||
return ""
|
||
finally:
|
||
if db:
|
||
db.close()
|
||
|
||
async def _save_learning_pattern(
|
||
self, query: str, steps: List[AgentStep],
|
||
success: bool, iterations_used: int, tool_calls_made: int,
|
||
) -> None:
|
||
"""从执行结果中提取模式并保存。"""
|
||
from app.core.database import SessionLocal
|
||
db = None
|
||
try:
|
||
db = SessionLocal()
|
||
pattern_data = extract_pattern_from_result(
|
||
query=query,
|
||
steps=steps,
|
||
success=success,
|
||
iterations_used=iterations_used,
|
||
tool_calls_made=tool_calls_made,
|
||
)
|
||
save_learning_pattern(
|
||
db, self._learning_scope_kind,
|
||
self.memory.scope_id, pattern_data,
|
||
)
|
||
except Exception as e:
|
||
logger.warning("保存学习模式失败: %s", e)
|
||
finally:
|
||
if db:
|
||
db.close()
|
||
|
||
async def _self_review(self, content: str, task_context: str = "") -> dict:
|
||
"""输出质量自检:用轻量 LLM 评判输出,返回 {score, passed, issues, suggestions}。"""
|
||
criteria = (
|
||
"回答必须准确、完整、切题。"
|
||
"包含具体可执行的步骤或代码示例。"
|
||
"无明显事实错误或遗漏。"
|
||
"格式清晰,便于阅读。"
|
||
)
|
||
try:
|
||
from app.agent_runtime.core import _LLMClient
|
||
from app.agent_runtime.schemas import AgentLLMConfig
|
||
|
||
review_config = AgentLLMConfig(
|
||
provider=getattr(self.config.llm, 'provider', 'deepseek'),
|
||
model="deepseek-v4-flash",
|
||
temperature=0.1,
|
||
max_tokens=800,
|
||
request_timeout=30.0,
|
||
)
|
||
if self.config.llm.api_key:
|
||
review_config.api_key = self.config.llm.api_key
|
||
if self.config.llm.base_url:
|
||
review_config.base_url = self.config.llm.base_url
|
||
|
||
client = _LLMClient(review_config)
|
||
|
||
judge_prompt = (
|
||
"你是严格的内容质量评审专家。请根据以下标准对内容进行评分。\n\n"
|
||
f"【评判标准】\n{criteria}\n\n"
|
||
f"【待评审内容】\n{content[:8000]}\n"
|
||
)
|
||
if task_context:
|
||
judge_prompt += f"\n【任务背景】\n{task_context[:2000]}\n"
|
||
|
||
judge_prompt += (
|
||
"\n请以 JSON 格式返回评审结果(严格只返回 JSON,不要任何其他文字):\n"
|
||
'{"score": 0.75, "passed": true, "issues": ["问题1"], '
|
||
'"suggestions": ["建议1"], "summary": "一句话总结"}\n\n'
|
||
"评分规则:1.0完美 0.8良好 0.6基本满足 0.4大部分未满足 0.2完全不满足\n"
|
||
"score >= 0.6 时 passed=true,否则 passed=false\n"
|
||
)
|
||
|
||
messages = [{"role": "user", "content": judge_prompt}]
|
||
resp = await client.chat(messages=messages, tools=None, iteration=0)
|
||
judge_text = getattr(resp, 'content', '') or (
|
||
resp.get('content', '') if isinstance(resp, dict) else str(resp)
|
||
)
|
||
|
||
# 解析 JSON
|
||
try:
|
||
judge_clean = judge_text.strip()
|
||
if judge_clean.startswith("```"):
|
||
lines = judge_clean.split("\n")
|
||
judge_clean = "\n".join(lines[1:-1] if lines[-1].strip() == "```" else lines[1:])
|
||
result = json.loads(judge_clean)
|
||
except json.JSONDecodeError:
|
||
import re as _sr_re
|
||
m = _sr_re.search(r'\{[^{}]*"score"\s*:\s*[\d.]+[^{}]*\}', judge_text, _sr_re.DOTALL)
|
||
if m:
|
||
try:
|
||
result = json.loads(m.group())
|
||
except json.JSONDecodeError:
|
||
result = {"score": 0.5, "passed": False, "issues": ["无法解析评审结果"], "suggestions": [], "summary": ""}
|
||
else:
|
||
result = {"score": 0.5, "passed": False, "issues": ["无法解析评审结果"], "suggestions": [], "summary": ""}
|
||
|
||
score = float(result.get("score", 0.5))
|
||
threshold = self.config.llm.self_review_threshold
|
||
passed = score >= threshold
|
||
|
||
return {
|
||
"score": score,
|
||
"passed": passed,
|
||
"threshold": threshold,
|
||
"issues": result.get("issues", []),
|
||
"suggestions": result.get("suggestions", []),
|
||
"summary": result.get("summary", ""),
|
||
}
|
||
except Exception as e:
|
||
logger.warning("self_review 执行失败: %s", e)
|
||
return {"score": 0.5, "passed": True, "issues": [], "suggestions": [], "error": str(e)}
|
||
|
||
@staticmethod
|
||
def _extract_tool_calls(response: Any) -> List[Dict[str, Any]]:
|
||
"""从 LLM 响应中提取工具调用列表。"""
|
||
if response is None:
|
||
return []
|
||
# OpenAI SDK 格式
|
||
if hasattr(response, "tool_calls") and response.tool_calls:
|
||
result = []
|
||
for tc in response.tool_calls:
|
||
result.append({
|
||
"id": tc.id,
|
||
"type": tc.type,
|
||
"function": {
|
||
"name": tc.function.name,
|
||
"arguments": tc.function.arguments,
|
||
},
|
||
})
|
||
return result
|
||
# 字典格式
|
||
if isinstance(response, dict):
|
||
tc_list = response.get("tool_calls") or []
|
||
if tc_list:
|
||
return tc_list
|
||
# 检查 content 中是否嵌入了 DSML
|
||
content = response.get("content") or ""
|
||
if "invoke" in content or "function_call" in content:
|
||
from app.services.llm_service import _parse_dsml_tool_invocations
|
||
dsml = _parse_dsml_tool_invocations(content)
|
||
if dsml:
|
||
return [
|
||
{
|
||
"id": f"dsml-{i}",
|
||
"type": "function",
|
||
"function": {
|
||
"name": inv["name"],
|
||
"arguments": json.dumps(inv["arguments"], ensure_ascii=False),
|
||
},
|
||
}
|
||
for i, inv in enumerate(dsml)
|
||
]
|
||
return []
|
||
|
||
@staticmethod
|
||
def _extract_content(response: Any) -> str:
|
||
"""从 LLM 响应中提取文本内容。"""
|
||
if response is None:
|
||
return ""
|
||
if hasattr(response, "content"):
|
||
return response.content or ""
|
||
if isinstance(response, dict):
|
||
return response.get("content") or ""
|
||
return str(response)
|
||
|
||
@staticmethod
|
||
def _is_retryable(err_str: str) -> bool:
|
||
"""判断错误是否可重试。"""
|
||
err_lower = err_str.lower()
|
||
return any(kw in err_lower for kw in _RETRYABLE_ERRORS)
|
||
|
||
|
||
class _LLMClient:
|
||
"""轻量 LLM 客户端包装,复用已有 LLMService 能力。"""
|
||
|
||
def __init__(self, config: Any):
|
||
from app.services.llm_service import llm_service
|
||
self._service = llm_service
|
||
self._config = config
|
||
|
||
async def chat(
|
||
self,
|
||
messages: List[Dict[str, Any]],
|
||
tools: Optional[List[Dict[str, Any]]] = None,
|
||
iteration: int = 1,
|
||
on_completion: Optional[Callable[[Dict[str, Any]], Any]] = None,
|
||
) -> Any:
|
||
"""
|
||
调用 LLM。
|
||
优先使用 llm_service.call_openai_with_tools(支持 ReAct 的多次工具调用)。
|
||
|
||
但为避免外层 ReAct 与内部 ReAct 冲突:
|
||
- 第 1 轮:使用标准 chat(无内部 ReAct),由外层 AgentRuntime 控制循环
|
||
- 后续轮次:也使用标准 chat,仅追加工具结果
|
||
"""
|
||
# 直接用 OpenAI/DeepSeek SDK 调用,由 AgentRuntime 控制循环
|
||
from openai import AsyncOpenAI
|
||
from app.core.config import settings
|
||
|
||
# 优先从配置读取,其次从 settings(.env 加载),最后 os.environ
|
||
api_key = self._config.api_key or settings.OPENAI_API_KEY or ""
|
||
base_url = self._config.base_url or settings.OPENAI_BASE_URL or ""
|
||
|
||
if not api_key or api_key == "your-openai-api-key":
|
||
# 尝试 DeepSeek
|
||
api_key = self._config.api_key or settings.DEEPSEEK_API_KEY or ""
|
||
base_url = self._config.base_url or settings.DEEPSEEK_BASE_URL or "https://api.deepseek.com"
|
||
|
||
if not api_key:
|
||
raise ValueError("未配置 API Key")
|
||
|
||
client = AsyncOpenAI(api_key=api_key, base_url=base_url)
|
||
|
||
kwargs: Dict[str, Any] = {
|
||
"model": self._config.model,
|
||
"messages": messages,
|
||
"temperature": self._config.temperature,
|
||
"timeout": self._config.request_timeout,
|
||
}
|
||
if self._config.max_tokens:
|
||
kwargs["max_tokens"] = self._config.max_tokens
|
||
if self._config.extra_body:
|
||
kwargs["extra_body"] = self._config.extra_body
|
||
if tools:
|
||
# Normalize tool schemas to OpenAI format: custom tools from the
|
||
# marketplace may be stored as {"name":..., "parameters":...}
|
||
# or {"function":{...}} without the required "type": "function".
|
||
normalized = []
|
||
for t in tools:
|
||
if isinstance(t, dict):
|
||
if t.get("type") == "function":
|
||
# Already in correct format: {"type":"function","function":{...}}
|
||
normalized.append(t)
|
||
elif "function" in t:
|
||
# Has function key but missing type: {"function":{...}}
|
||
normalized.append({"type": "function", "function": t["function"]})
|
||
else:
|
||
# Raw schema: {"name":..., "parameters":...}
|
||
normalized.append({"type": "function", "function": t})
|
||
else:
|
||
normalized.append(t)
|
||
kwargs["tools"] = normalized
|
||
kwargs["tool_choice"] = "auto"
|
||
|
||
start_time = time.perf_counter()
|
||
try:
|
||
response = await client.chat.completions.create(**kwargs)
|
||
latency_ms = int((time.perf_counter() - start_time) * 1000)
|
||
message = response.choices[0].message
|
||
|
||
# 提取 token 用量
|
||
usage = getattr(response, "usage", None)
|
||
prompt_tokens = usage.prompt_tokens if usage else 0
|
||
completion_tokens = usage.completion_tokens if usage else 0
|
||
total_tokens = usage.total_tokens if usage else 0
|
||
|
||
# 调用完成回调
|
||
if on_completion:
|
||
on_completion({
|
||
"model": self._config.model,
|
||
"provider": self._config.provider,
|
||
"prompt_tokens": prompt_tokens or 0,
|
||
"completion_tokens": completion_tokens or 0,
|
||
"total_tokens": total_tokens or 0,
|
||
"latency_ms": latency_ms,
|
||
"iteration_number": iteration,
|
||
"status": "success",
|
||
})
|
||
|
||
return message
|
||
except Exception as e:
|
||
latency_ms = int((time.perf_counter() - start_time) * 1000)
|
||
if on_completion:
|
||
on_completion({
|
||
"model": self._config.model,
|
||
"provider": self._config.provider,
|
||
"prompt_tokens": 0,
|
||
"completion_tokens": 0,
|
||
"total_tokens": 0,
|
||
"latency_ms": latency_ms,
|
||
"iteration_number": iteration,
|
||
"status": "error",
|
||
"error_message": str(e),
|
||
})
|
||
raise
|