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1 Commits
| Author | SHA1 | Date | |
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| 81b305a6c5 |
@@ -24,15 +24,77 @@ def _should_stop_agent(astr_event) -> bool:
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return astr_event.is_stopped() or bool(astr_event.get_extra("agent_stop_requested"))
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def _truncate_tool_result(text: str, limit: int = 70) -> str:
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if limit <= 0:
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return ""
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if len(text) <= limit:
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return text
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if limit <= 3:
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return text[:limit]
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return f"{text[: limit - 3]}..."
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def _extract_chain_json_data(msg_chain: MessageChain) -> dict | None:
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if not msg_chain.chain:
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return None
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first_comp = msg_chain.chain[0]
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if isinstance(first_comp, Json) and isinstance(first_comp.data, dict):
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return first_comp.data
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return None
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def _record_tool_call_name(
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tool_info: dict | None, tool_name_by_call_id: dict[str, str]
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) -> None:
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if not isinstance(tool_info, dict):
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return
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tool_call_id = tool_info.get("id")
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tool_name = tool_info.get("name")
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if tool_call_id is None or tool_name is None:
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return
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tool_name_by_call_id[str(tool_call_id)] = str(tool_name)
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def _build_tool_call_status_message(tool_info: dict | None) -> str:
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if tool_info:
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return f"🔨 调用工具: {tool_info.get('name', 'unknown')}"
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return "🔨 调用工具..."
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def _build_tool_result_status_message(
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msg_chain: MessageChain, tool_name_by_call_id: dict[str, str]
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) -> str:
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tool_name = "unknown"
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tool_result = ""
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result_data = _extract_chain_json_data(msg_chain)
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if result_data:
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tool_call_id = result_data.get("id")
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if tool_call_id is not None:
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tool_name = tool_name_by_call_id.pop(str(tool_call_id), "unknown")
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tool_result = str(result_data.get("result", ""))
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if not tool_result:
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tool_result = msg_chain.get_plain_text(with_other_comps_mark=True)
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tool_result = _truncate_tool_result(tool_result, 70)
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status_msg = f"🔨 调用工具: {tool_name}"
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if tool_result:
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status_msg = f"{status_msg}\n📎 返回结果: {tool_result}"
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return status_msg
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async def run_agent(
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agent_runner: AgentRunner,
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max_step: int = 30,
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show_tool_use: bool = True,
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show_tool_call_result: bool = False,
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stream_to_general: bool = False,
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show_reasoning: bool = False,
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) -> AsyncGenerator[MessageChain | None, None]:
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step_idx = 0
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astr_event = agent_runner.run_context.context.event
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tool_name_by_call_id: dict[str, str] = {}
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while step_idx < max_step + 1:
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step_idx += 1
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@@ -90,6 +152,13 @@ async def run_agent(
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continue
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if astr_event.get_platform_id() == "webchat":
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await astr_event.send(msg_chain)
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elif show_tool_use and show_tool_call_result:
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status_msg = _build_tool_result_status_message(
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msg_chain, tool_name_by_call_id
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)
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await astr_event.send(
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MessageChain(type="tool_call").message(status_msg)
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)
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# 对于其他情况,暂时先不处理
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continue
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elif resp.type == "tool_call":
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@@ -97,25 +166,22 @@ async def run_agent(
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# 用来标记流式响应需要分节
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yield MessageChain(chain=[], type="break")
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tool_info = None
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if resp.data["chain"].chain:
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json_comp = resp.data["chain"].chain[0]
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if isinstance(json_comp, Json):
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tool_info = json_comp.data
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astr_event.trace.record(
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"agent_tool_call",
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tool_name=tool_info if tool_info else "unknown",
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)
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tool_info = _extract_chain_json_data(resp.data["chain"])
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astr_event.trace.record(
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"agent_tool_call",
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tool_name=tool_info if tool_info else "unknown",
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)
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_record_tool_call_name(tool_info, tool_name_by_call_id)
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if astr_event.get_platform_name() == "webchat":
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await astr_event.send(resp.data["chain"])
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elif show_tool_use:
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if tool_info:
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m = f"🔨 调用工具: {tool_info.get('name', 'unknown')}"
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else:
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m = "🔨 调用工具..."
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chain = MessageChain(type="tool_call").message(m)
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if show_tool_call_result and isinstance(tool_info, dict):
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# Delay tool status notification until tool_call_result.
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continue
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chain = MessageChain(type="tool_call").message(
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_build_tool_call_status_message(tool_info)
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)
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await astr_event.send(chain)
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continue
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@@ -202,6 +268,7 @@ async def run_live_agent(
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tts_provider: TTSProvider | None = None,
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max_step: int = 30,
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show_tool_use: bool = True,
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show_tool_call_result: bool = False,
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show_reasoning: bool = False,
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) -> AsyncGenerator[MessageChain | None, None]:
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"""Live Mode 的 Agent 运行器,支持流式 TTS
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@@ -211,6 +278,7 @@ async def run_live_agent(
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tts_provider: TTS Provider 实例
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max_step: 最大步数
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show_tool_use: 是否显示工具使用
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show_tool_call_result: 是否显示工具返回结果
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show_reasoning: 是否显示推理过程
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Yields:
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@@ -222,6 +290,7 @@ async def run_live_agent(
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agent_runner,
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max_step=max_step,
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show_tool_use=show_tool_use,
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show_tool_call_result=show_tool_call_result,
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stream_to_general=False,
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show_reasoning=show_reasoning,
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):
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@@ -250,7 +319,12 @@ async def run_live_agent(
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# 1. 启动 Agent Feeder 任务:负责运行 Agent 并将文本分句喂给 text_queue
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feeder_task = asyncio.create_task(
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_run_agent_feeder(
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agent_runner, text_queue, max_step, show_tool_use, show_reasoning
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agent_runner,
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text_queue,
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max_step,
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show_tool_use,
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show_tool_call_result,
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show_reasoning,
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)
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)
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@@ -336,6 +410,7 @@ async def _run_agent_feeder(
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text_queue: asyncio.Queue,
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max_step: int,
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show_tool_use: bool,
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show_tool_call_result: bool,
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show_reasoning: bool,
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) -> None:
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"""运行 Agent 并将文本输出分句放入队列"""
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@@ -345,6 +420,7 @@ async def _run_agent_feeder(
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agent_runner,
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max_step=max_step,
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show_tool_use=show_tool_use,
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show_tool_call_result=show_tool_call_result,
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stream_to_general=False,
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show_reasoning=show_reasoning,
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):
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@@ -100,6 +100,7 @@ DEFAULT_CONFIG = {
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"dequeue_context_length": 1,
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"streaming_response": False,
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"show_tool_use_status": False,
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"show_tool_call_result": False,
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"sanitize_context_by_modalities": False,
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"max_quoted_fallback_images": 20,
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"quoted_message_parser": {
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@@ -2306,6 +2307,9 @@ CONFIG_METADATA_2 = {
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"show_tool_use_status": {
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"type": "bool",
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},
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"show_tool_call_result": {
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"type": "bool",
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},
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"unsupported_streaming_strategy": {
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"type": "string",
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},
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@@ -2994,6 +2998,15 @@ CONFIG_METADATA_3 = {
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"provider_settings.agent_runner_type": "local",
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},
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},
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"provider_settings.show_tool_call_result": {
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"description": "输出函数调用返回结果",
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"type": "bool",
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"hint": "仅在输出函数调用状态启用时生效,展示结果前 70 个字符。",
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"condition": {
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"provider_settings.agent_runner_type": "local",
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"provider_settings.show_tool_use_status": True,
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},
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},
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"provider_settings.sanitize_context_by_modalities": {
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"description": "按模型能力清理历史上下文",
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"type": "bool",
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@@ -54,6 +54,7 @@ class InternalAgentSubStage(Stage):
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if isinstance(self.max_step, bool): # workaround: #2622
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self.max_step = 30
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self.show_tool_use: bool = settings.get("show_tool_use_status", True)
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self.show_tool_call_result: bool = settings.get("show_tool_call_result", False)
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self.show_reasoning = settings.get("display_reasoning_text", False)
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self.sanitize_context_by_modalities: bool = settings.get(
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"sanitize_context_by_modalities",
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@@ -240,6 +241,7 @@ class InternalAgentSubStage(Stage):
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tts_provider,
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self.max_step,
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self.show_tool_use,
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self.show_tool_call_result,
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show_reasoning=self.show_reasoning,
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),
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),
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@@ -269,6 +271,7 @@ class InternalAgentSubStage(Stage):
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agent_runner,
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self.max_step,
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self.show_tool_use,
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self.show_tool_call_result,
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show_reasoning=self.show_reasoning,
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),
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),
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@@ -297,6 +300,7 @@ class InternalAgentSubStage(Stage):
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agent_runner,
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self.max_step,
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self.show_tool_use,
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self.show_tool_call_result,
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stream_to_general,
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show_reasoning=self.show_reasoning,
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):
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@@ -251,6 +251,10 @@
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"show_tool_use_status": {
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"description": "Output Function Call Status"
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},
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"show_tool_call_result": {
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"description": "Output Tool Call Results",
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"hint": "Only takes effect when \"Output Function Call Status\" is enabled, and shows at most 70 characters."
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},
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"sanitize_context_by_modalities": {
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"description": "Sanitize History by Modalities",
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"hint": "When enabled, sanitizes contexts before each LLM request by removing image blocks and tool-call structures that the current provider's modalities do not support (this changes what the model sees)."
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@@ -254,6 +254,10 @@
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"show_tool_use_status": {
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"description": "输出函数调用状态"
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},
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"show_tool_call_result": {
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"description": "输出函数调用返回结果",
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"hint": "仅在启用“输出函数调用状态”时生效,且最多展示 70 个字符。"
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},
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"sanitize_context_by_modalities": {
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"description": "按模型能力清理历史上下文",
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"hint": "开启后,在每次请求 LLM 前会按当前模型提供商中所选择的模型能力删除对话中不支持的图片/工具调用结构(会改变模型看到的历史)"
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