refactor: systematic tech debt cleanup (U1-U5) #8
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@ -31,4 +31,7 @@ EXPOSE 8001
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HEALTHCHECK --interval=30s --timeout=10s --start-period=30s --retries=3 \
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CMD python -c "import urllib.request; urllib.request.urlopen('http://localhost:8001/api/v1/health')"
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CMD ["uvicorn", "configs.geo_server:create_geo_app", "--factory", "--host", "0.0.0.0", "--port", "8001"]
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# ponytail: 与 docker-compose.yaml command 对齐,纯 `docker run` 启动完整 AgentKit
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# 而非 GEO 子系统。GEO 子系统应通过独立 image 或 ENTRYPOINT 参数切换。
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ENTRYPOINT ["agentkit"]
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CMD ["serve", "--host", "0.0.0.0", "--port", "8001"]
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@ -72,3 +72,9 @@ experts: {paths: ["./configs/experts"]}
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board: {max_rounds: 5, default_template: private_board, parallel_speech: true, history_compression_threshold: 20}
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logging: {level: INFO, format: text}
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router: {classifier: heuristic, auction_enabled: false}
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# OTel 可观测性 — 默认注释(OTel 为可选依赖,未安装时 telemetry/metrics.py 返回 NoOp)。
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# 启用:pip install opentelemetry-sdk opentelemetry-exporter-otlp,取消注释并指向 collector。
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# 未配置时所有指标(请求量/延迟/token 消耗)静默丢弃,形成监控盲区。
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# telemetry:
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# otlp_endpoint: http://localhost:4317 # OTLP gRPC 端点
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# service_name: fischer-agentkit
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@ -10,7 +10,6 @@ import enum
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import logging
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import re
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from dataclasses import dataclass, field
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from typing import Any
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logger = logging.getLogger(__name__)
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@ -48,7 +47,7 @@ _SKILL_EXECUTION_MODE_MAP: dict[str, ExecutionMode] = {
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}
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def _resolve_execution_mode(skill_config: Any) -> ExecutionMode:
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def _resolve_execution_mode(skill_config: object) -> ExecutionMode:
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"""Resolve ExecutionMode from skill config's execution_mode field."""
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mode_str = getattr(skill_config, "execution_mode", "react") or "react"
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return _SKILL_EXECUTION_MODE_MAP.get(mode_str, ExecutionMode.SKILL_REACT)
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@ -67,11 +66,11 @@ class SkillRoutingResult:
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"""Result of skill routing for a user message."""
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skill_name: str | None = None
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skill_config: Any = None
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skill_tools: list = field(default_factory=list)
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skill_config: object | None = None
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skill_tools: list[object] = field(default_factory=list)
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clean_content: str = ""
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system_prompt: str | None = None
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tools: list = field(default_factory=list)
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tools: list[object] = field(default_factory=list)
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model: str = "default"
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agent_name: str | None = None
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matched: bool = False
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@ -112,9 +111,9 @@ def format_preconditions_block(preconditions: list[str], header_level: int = 2)
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return "\n".join(lines)
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def collect_prompt_parts(config: Any, with_headers: bool = False) -> list[str]:
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def collect_prompt_parts(config: object, with_headers: bool = False) -> list[str]:
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"""从 skill config 的 prompt 字典中收集各部分文本。"""
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prompt = config.prompt or {}
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prompt = getattr(config, "prompt", None) or {}
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parts: list[str] = []
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for key in _PROMPT_KEYS:
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val = prompt.get(key)
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@ -167,12 +166,12 @@ def build_skill_system_prompt(skill_config) -> str | None:
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async def resolve_skill_routing(
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content: str,
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skill_registry: Any,
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default_tools: list,
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skill_registry: object,
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default_tools: list[object],
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default_system_prompt: str | None,
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default_model: str = "default",
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default_agent_name: str = "default",
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agent_tool_registry: Any = None,
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agent_tool_registry: object | None = None,
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session_id: str = "",
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) -> SkillRoutingResult:
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"""Resolve skill routing for a user message.
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@ -267,7 +266,7 @@ async def resolve_skill_routing(
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return result
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def _build_tools_description(tools: list) -> str:
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def _build_tools_description(tools: list[object]) -> str:
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"""Build a text description of tools for the system prompt."""
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lines = []
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for tool in tools:
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@ -994,7 +994,9 @@ class TeamOrchestrator:
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gateway = self._get_llm_gateway(lead)
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if not gateway:
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logger.warning("No LLM gateway available, skipping review")
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return True, "LLM 验收不可用,自动通过"
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# 优雅降级:不阻塞流程,但 [DEGRADED] 前缀让 review_result 事件
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# 和日志聚合可识别降级路径,便于运维监控验收失效频率。
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return True, "[DEGRADED] LLM 验收不可用,自动通过"
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content = result.get("content", str(result))
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# P1: prompt injection 防护 — 用 XML 标签包裹专家输出,指示 LLM 忽略其中指令
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@ -1039,8 +1041,8 @@ class TeamOrchestrator:
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except Exception as e:
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logger.warning(f"Review LLM call failed: {e}")
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# 降级:验收通过(标注降级原因,便于追踪)
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return True, "LLM 验收降级,自动通过"
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# 降级:不阻塞流程,但 [DEGRADED] 前缀让 review_result 事件可识别降级路径
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return True, "[DEGRADED] LLM 验收降级,自动通过"
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@staticmethod
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def _parse_risk_flags(content: str) -> list[str]:
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@ -14,9 +14,18 @@
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/>
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</div>
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<div v-if="message.content" ref="markdownRef" class="assistant-text__markdown" v-html="renderedContent"></div>
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<div
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v-if="message.content"
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ref="markdownRef"
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class="assistant-text__markdown"
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role="region"
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aria-live="polite"
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aria-atomic="false"
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aria-label="助手回复内容"
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v-html="renderedContent"
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></div>
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<div v-else-if="isLoading" class="assistant-text__loading">
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<div v-else-if="isLoading" class="assistant-text__loading" role="status" aria-label="助手正在思考">
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<a-spin size="small" />
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</div>
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@ -1234,8 +1234,8 @@ async def _handle_chat_message(
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ExecutionMode.PLAN_EXEC,
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):
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logger.warning(
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f"Execution mode {routing.execution_mode.value} not yet supported "
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f"in chat WebSocket, falling back to REACT"
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f"Execution mode {routing.execution_mode.value} not implemented "
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f"in chat WebSocket path, falling back to REACT"
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)
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# Execute Agent with streaming
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@ -15,7 +15,12 @@ from __future__ import annotations
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from pathlib import Path
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import jieba
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import pytest
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# jieba 是可选依赖(pyproject.toml 主依赖),但测试环境可能未安装。
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# importorskip 确保收集阶段不中断,符合 project_rules.md 的 pre-commit 门禁。
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pytest.importorskip("jieba")
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import jieba # noqa: E402 — 必须在 importorskip 之后
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from agentkit.rag_platform.termbase import TermEntry, Termbase
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