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@@ -673,10 +673,8 @@ class Planner:
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messages = [{"role": "user", "content": prompt}]
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print("--- 正在生成计划 ---")
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- response_text = ""
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# 使用流式输出来获取完整的计划
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- for chunk in self.llm_client.think(messages=messages):
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- response_text += chunk
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+ response_text = self.llm_client.think(messages=messages) or ""
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print(f"✅ 计划已生成:\n{response_text}")
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@@ -756,9 +754,7 @@ class Executor:
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messages = [{"role": "user", "content": prompt}]
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- response_text = ""
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- for chunk in self.llm_client.think(messages=messages):
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- response_text += chunk
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+ response_text = self.llm_client.think(messages=messages) or ""
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# 更新历史记录,为下一步做准备
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history += f"步骤 {i+1}: {step}\n结果: {response_text}\n\n"
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@@ -1094,9 +1090,7 @@ class ReflectionAgent:
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def _get_llm_response(self, prompt: str) -> str:
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"""一个辅助方法,用于调用LLM并获取完整的流式响应。"""
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messages = [{"role": "user", "content": prompt}]
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- response_text = ""
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- for chunk in self.llm_client.think(messages=messages):
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- response_text += chunk
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+ rresponse_text = self.llm_client.think(messages=messages) or ""
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return response_text
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```
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