重构配置管理器以支持打包环境路径处理 将LLM分析器从OpenAI迁移至智谱AI API 替换Playwright截图功能为Selenium实现 更新默认配置中的API端点和模型
227 lines
8.4 KiB
Python
227 lines
8.4 KiB
Python
"""
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大模型分析模块 - 调用LLM API分析评论情感
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支持智谱AI API
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"""
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import json
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import time
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import re
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from typing import Dict, Optional, Tuple, Any
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from zai import ZhipuAiClient
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from loguru import logger
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class LLMAnalyzer:
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"""大模型情感分析器"""
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SYSTEM_PROMPT = """你是一个专业的情感分析助手。你的任务是分析股吧/论坛评论的情感倾向,判断投资者对该股票的态度。
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评分规则:
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- 0-30: 极度悲观(利空、暴跌、绝望等情绪)
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- 30-39: 悲观(看空、担忧、谨慎等情绪)
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- 39-45: 偏悲观(谨慎观望、保守等情绪)
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- 45-55: 中立(观望、客观等情绪)
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- 55-65: 偏乐观(看好、希望等情绪)
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- 65-70: 乐观(看涨、信心等情绪)
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- 70-100: 极度乐观(利好、暴涨、兴奋等情绪)
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请直接输出一个JSON格式的结果,包含两个字段:
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- score: 0-100的整数评分
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- label: 简短的态度描述(如"极度悲观"、"悲观"、"偏悲观"、"中立"、"偏乐观"、"乐观"、"极度乐观")
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注意:
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1. 只返回JSON,不要有其他文字
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2. 如果无法判断,返回50和"无法判断"
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3. 分析要客观,不要被表面文字迷惑
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"""
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def __init__(self, config: Dict):
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self.config = config
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self.api_key = config.get('api_key', '')
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self.base_url = config.get('base_url', '')
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self.model = config.get('model', '')
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self.timeout = config.get('timeout', 120)
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self.retry_times = config.get('retry_times', 3)
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self.client = None
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self.last_result = None # 保存最后一次分析结果
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logger.info(f"LLM分析器配置 - base_url: {self.base_url}, model: {self.model}, timeout: {self.timeout}s, retry: {self.retry_times}次")
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if self.api_key:
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self._init_client()
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else:
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logger.warning("LLM API 未配置,api_key 为空")
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def _init_client(self):
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"""初始化智谱AI客户端"""
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try:
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logger.info(f"初始化智谱AI客户端: {self.base_url}")
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self.client = ZhipuAiClient(
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api_key=self.api_key,
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base_url=self.base_url
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)
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logger.info("智谱AI客户端初始化成功")
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except Exception as e:
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logger.error(f"初始化智谱AI客户端失败: {e}")
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def update_config(self, config: Dict):
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"""更新配置"""
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self.config.update(config)
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self.api_key = config.get('api_key', self.api_key)
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self.base_url = config.get('base_url', self.base_url)
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self.model = config.get('model', self.model)
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self.timeout = config.get('timeout', self.timeout)
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self.retry_times = config.get('retry_times', self.retry_times)
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if self.api_key:
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self._init_client()
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def analyze(self, comment: str) -> Tuple[Optional[int], Optional[str]]:
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"""
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分析单条评论
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返回 (score, label)
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"""
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if not self.client:
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logger.error("LLM客户端未初始化,请检查API配置")
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return None, "LLM未配置"
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if not comment or not comment.strip():
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logger.warning("评论内容为空")
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return None, "评论为空"
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logger.debug(f"开始分析评论: {comment[:50]}...")
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logger.debug(f"使用模型: {self.model}, 超时设置: {self.timeout}秒")
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for attempt in range(self.retry_times):
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try:
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logger.info(f"API调用尝试 {attempt + 1}/{self.retry_times}")
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logger.debug("发送请求到智谱AI API")
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response = self.client.chat.completions.create(
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model="glm-4.7-flash",
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messages=[
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{"role": "system", "content": self.SYSTEM_PROMPT},
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{"role": "user", "content": f"请分析以下评论的情感倾向:\n\n{comment}"}
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],
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thinking={
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"type": "disabled", # 禁用深度思考模式
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},
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temperature=0.3,
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max_tokens=500
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)
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# 处理 deepseek-r1 的特殊结构(可能有 reasoning_content)
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message = response.choices[0].message
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# 获取推理过程(如果有)
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reasoning = getattr(message, 'reasoning_content', None)
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if reasoning:
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logger.debug(f"推理过程: {reasoning[:100]}...")
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# 获取最终回答
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result_text = message.content.strip() if message.content else ""
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logger.debug(f"API返回原始内容: {result_text[:100]}...")
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score, label = self._parse_response(result_text)
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# 保存最后结果
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self.last_result = {
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'score': score,
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'label': label,
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'reasoning': reasoning,
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'raw_response': result_text
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}
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if score is not None:
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logger.info(f"分析完成: {score}分 - {label}")
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return score, label
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except Exception as e:
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logger.warning(f"API调用失败 (尝试 {attempt + 1}/{self.retry_times}): {type(e).__name__}: {e}")
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logger.debug(f"错误详情: {str(e)}")
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if attempt < self.retry_times - 1:
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wait_time = 2 ** attempt
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logger.info(f"等待 {wait_time} 秒后重试...")
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time.sleep(wait_time) # 指数退避
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logger.error(f"所有 {self.retry_times} 次重试均失败")
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return None, "分析失败"
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def _parse_response(self, response: str) -> Tuple[Optional[int], Optional[str]]:
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"""解析LLM返回的结果"""
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try:
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# 尝试直接解析JSON
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result = json.loads(response)
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score = result.get('score', 50)
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label = result.get('label', '无法判断')
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# 验证分数范围
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score = max(0, min(100, int(score)))
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logger.debug(f"JSON解析成功: {score} - {label}")
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return score, label
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except json.JSONDecodeError:
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logger.debug("JSON解析失败,尝试文本提取")
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# 尝试从文本中提取
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numbers = re.findall(r'\b(\d{1,3})\b', response)
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if numbers:
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score = int(numbers[0])
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score = max(0, min(100, score))
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# 提取标签
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label_match = re.search(r'"([^"]+)"', response)
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if label_match:
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label = label_match.group(1)
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else:
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label = response.split('\n')[0][:20] if response else '无法判断'
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logger.debug(f"文本提取成功: {score} - {label}")
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return score, label
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logger.warning("无法解析响应")
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return None, "解析失败"
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def get_last_result(self) -> Optional[Dict[str, Any]]:
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"""获取最后一次分析结果"""
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return self.last_result
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def analyze_batch(self, comments: list, delay: float = 1.0) -> list:
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"""
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批量分析评论
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delay: 每次调用之间的延迟(秒)
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"""
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logger.info(f"开始批量分析 {len(comments)} 条评论,每次间隔 {delay} 秒")
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results = []
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success_count = 0
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fail_count = 0
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for i, comment in enumerate(comments):
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logger.info(f"正在分析第 {i + 1}/{len(comments)} 条评论")
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score, label = self.analyze(comment)
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if score is not None:
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success_count += 1
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logger.debug(f"第 {i + 1} 条评论分析成功: {score}分 - {label}")
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else:
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fail_count += 1
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logger.warning(f"第 {i + 1} 条评论分析失败: {label}")
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results.append({
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'content': comment,
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'score': score,
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'label': label
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})
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if delay > 0 and i < len(comments) - 1:
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logger.debug(f"等待 {delay} 秒后继续...")
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time.sleep(delay)
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logger.info(f"批量分析完成,成功 {success_count} 条,失败 {fail_count} 条")
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return results
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def is_configured(self) -> bool:
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"""检查是否已配置"""
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return bool(self.client and self.api_key)
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