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- """
- Trace 和 Step 数据模型
- Trace: 一次完整的 LLM 交互(单次调用或 Agent 任务)
- Step: Trace 中的一个原子操作
- """
- from dataclasses import dataclass, field
- from datetime import datetime
- from typing import Dict, Any, List, Optional, Literal
- import uuid
- StepType = Literal[
- "llm_call", # LLM 调用
- "tool_call", # 工具调用
- "tool_result", # 工具结果
- "conclusion", # 中间/最终结论
- "feedback", # 人工反馈
- "memory_read", # 读取记忆(经验/技能)
- "memory_write", # 写入记忆
- ]
- @dataclass
- class Trace:
- """
- 执行轨迹 - 一次完整的 LLM 交互
- 单次调用: mode="call", 只有 1 个 Step
- Agent 模式: mode="agent", 多个 Steps 形成 DAG
- """
- trace_id: str
- mode: Literal["call", "agent"]
- # Prompt 标识(可选)
- prompt_name: Optional[str] = None
- # Agent 模式特有
- task: Optional[str] = None
- agent_type: Optional[str] = None
- # 状态
- status: Literal["running", "completed", "failed"] = "running"
- # 统计
- total_steps: int = 0
- total_tokens: int = 0
- total_cost: float = 0.0
- # 上下文
- uid: Optional[str] = None
- context: Dict[str, Any] = field(default_factory=dict)
- # 时间
- created_at: datetime = field(default_factory=datetime.now)
- completed_at: Optional[datetime] = None
- @classmethod
- def create(
- cls,
- mode: Literal["call", "agent"],
- **kwargs
- ) -> "Trace":
- """创建新的 Trace"""
- return cls(
- trace_id=str(uuid.uuid4()),
- mode=mode,
- **kwargs
- )
- def to_dict(self) -> Dict[str, Any]:
- """转换为字典"""
- return {
- "trace_id": self.trace_id,
- "mode": self.mode,
- "prompt_name": self.prompt_name,
- "task": self.task,
- "agent_type": self.agent_type,
- "status": self.status,
- "total_steps": self.total_steps,
- "total_tokens": self.total_tokens,
- "total_cost": self.total_cost,
- "uid": self.uid,
- "context": self.context,
- "created_at": self.created_at.isoformat() if self.created_at else None,
- "completed_at": self.completed_at.isoformat() if self.completed_at else None,
- }
- @dataclass
- class Step:
- """
- 执行步骤 - Trace 中的一个原子操作
- Step 之间通过 parent_ids 形成 DAG 结构
- """
- step_id: str
- trace_id: str
- step_type: StepType
- sequence: int # 在 Trace 中的顺序
- # DAG 结构(支持多父节点)
- parent_ids: List[str] = field(default_factory=list)
- # 类型相关数据
- data: Dict[str, Any] = field(default_factory=dict)
- # 时间
- created_at: datetime = field(default_factory=datetime.now)
- @classmethod
- def create(
- cls,
- trace_id: str,
- step_type: StepType,
- sequence: int,
- data: Dict[str, Any] = None,
- parent_ids: List[str] = None,
- ) -> "Step":
- """创建新的 Step"""
- return cls(
- step_id=str(uuid.uuid4()),
- trace_id=trace_id,
- step_type=step_type,
- sequence=sequence,
- parent_ids=parent_ids or [],
- data=data or {},
- )
- def to_dict(self) -> Dict[str, Any]:
- """转换为字典"""
- return {
- "step_id": self.step_id,
- "trace_id": self.trace_id,
- "step_type": self.step_type,
- "sequence": self.sequence,
- "parent_ids": self.parent_ids,
- "data": self.data,
- "created_at": self.created_at.isoformat() if self.created_at else None,
- }
- # Step.data 结构说明
- #
- # llm_call:
- # {
- # "messages": [...],
- # "response": "...",
- # "model": "gpt-4o",
- # "prompt_tokens": 100,
- # "completion_tokens": 50,
- # "cost": 0.01,
- # "tool_calls": [...] # 如果有
- # }
- #
- # tool_call:
- # {
- # "tool_name": "search_blocks",
- # "arguments": {...},
- # "llm_step_id": "..." # 哪个 LLM 调用触发的
- # }
- #
- # tool_result:
- # {
- # "tool_call_step_id": "...",
- # "result": "...",
- # "duration_ms": 123
- # }
- #
- # conclusion:
- # {
- # "content": "...",
- # "is_final": True/False
- # }
- #
- # feedback:
- # {
- # "target_step_id": "...",
- # "feedback_type": "positive" | "negative" | "correction",
- # "content": "..."
- # }
- #
- # memory_read:
- # {
- # "skills": [...],
- # "experiences": [...],
- # "skills_count": 3,
- # "experiences_count": 5
- # }
- #
- # memory_write:
- # {
- # "experience_id": "...",
- # "condition": "...",
- # "rule": "..."
- # }
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