step2_evaluate_only.py 10 KB

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  1. """
  2. 步骤2:仅评估已生成的AIME题目
  3. 运行方法:
  4. python data_generation/step2_evaluate_only.py <generated_data_path>
  5. 参数:
  6. - generated_data_path: 生成数据的路径
  7. 说明:
  8. - 使用AIME 2025年真题作为参考
  9. - 数据集来源:math-ai/aime25(JSONL格式)
  10. 示例:
  11. python data_generation/step2_evaluate_only.py data_generation/generated_data/aime_generated_20251011_042741.json
  12. """
  13. import json
  14. import os
  15. import sys
  16. from datetime import datetime
  17. from hello_agents import SimpleAgent, HelloAgentsLLM
  18. from hello_agents.tools import LLMJudgeTool, WinRateTool
  19. def run_evaluation(generated_data_path: str):
  20. """
  21. 运行评估流程
  22. Args:
  23. generated_data_path: 生成数据的路径
  24. """
  25. print("\n" + "="*80)
  26. print("🎯 步骤2: 评估已生成的AIME题目")
  27. print("="*80)
  28. print(f"\n配置信息:")
  29. print(f" - 生成数据: {generated_data_path}")
  30. print(f" - 评估参考: AIME 2025真题")
  31. # 检查文件是否存在
  32. if not os.path.exists(generated_data_path):
  33. print(f"\n❌ 错误:文件不存在: {generated_data_path}")
  34. return
  35. # 加载生成数据以获取题目数量
  36. with open(generated_data_path, 'r', encoding='utf-8') as f:
  37. generated_data = json.load(f)
  38. num_problems = len(generated_data)
  39. print(f" - 题目数量: {num_problems}")
  40. # 创建评估结果目录
  41. timestamp = datetime.now().strftime("%Y%m%d_%H%M%S")
  42. evaluation_dir = f"data_generation/evaluation_results/{timestamp}"
  43. os.makedirs(evaluation_dir, exist_ok=True)
  44. os.makedirs(os.path.join(evaluation_dir, "llm_judge"), exist_ok=True)
  45. os.makedirs(os.path.join(evaluation_dir, "win_rate"), exist_ok=True)
  46. # 创建LLM
  47. llm = HelloAgentsLLM()
  48. # # ========== LLM Judge评估 ==========
  49. print(f"\n🎯 步骤2.1: LLM Judge评估 (vs AIME 2025)")
  50. llm_judge_result = None
  51. try:
  52. llm_judge_tool = LLMJudgeTool(llm=llm)
  53. llm_judge_result_json = llm_judge_tool.run({
  54. "generated_data_path": generated_data_path,
  55. "reference_year": 2025,
  56. "max_samples": num_problems,
  57. "output_dir": os.path.join(evaluation_dir, "llm_judge"),
  58. "judge_model": "gpt-4o"
  59. })
  60. llm_judge_result = json.loads(llm_judge_result_json)
  61. print(f"\n✅ LLM Judge评估完成!")
  62. print(f" 平均总分: {llm_judge_result['metrics']['average_total_score']:.2f}/5.0")
  63. print(f" 通过率: {llm_judge_result['metrics']['pass_rate']:.2%}")
  64. except Exception as e:
  65. print(f"\n❌ LLM Judge评估失败: {e}")
  66. import traceback
  67. traceback.print_exc()
  68. # ========== Win Rate评估 ==========
  69. print(f"\n🏆 步骤2.2: Win Rate评估 (vs AIME 2025)")
  70. win_rate_result = None
  71. try:
  72. win_rate_tool = WinRateTool(llm=llm)
  73. win_rate_result_json = win_rate_tool.run({
  74. "generated_data_path": generated_data_path,
  75. "reference_year": 2025,
  76. "num_comparisons": min(num_problems, 20), # 最多20次对比
  77. "output_dir": os.path.join(evaluation_dir, "win_rate"),
  78. "judge_model": "gpt-4o"
  79. })
  80. win_rate_result = json.loads(win_rate_result_json)
  81. print(f"\n✅ Win Rate评估完成!")
  82. print(f" Win Rate: {win_rate_result['metrics']['win_rate']:.2%}")
  83. except Exception as e:
  84. print(f"\n❌ Win Rate评估失败: {e}")
  85. import traceback
  86. traceback.print_exc()
  87. # ========== 生成综合报告 ==========
  88. comprehensive_report_path = None
  89. if llm_judge_result or win_rate_result:
  90. print("\n" + "="*80)
  91. print("📊 步骤2.3: 生成综合报告")
  92. print("="*80)
  93. comprehensive_report_path = os.path.join(evaluation_dir, "comprehensive_report.md")
  94. # 生成综合报告
  95. report = generate_comprehensive_report(
  96. generated_data_path,
  97. llm_judge_result,
  98. win_rate_result
  99. )
  100. with open(comprehensive_report_path, 'w', encoding='utf-8') as f:
  101. f.write(report)
  102. print(f"\n✅ 综合报告已保存: {comprehensive_report_path}")
  103. # ========== 完成 ==========
  104. print("\n" + "="*80)
  105. print("🎉 评估流程完成!")
  106. print("="*80)
  107. print(f"\n📁 输出文件:")
  108. print(f" - 评估结果目录: {evaluation_dir}")
  109. if llm_judge_result:
  110. print(f" - LLM Judge报告: {llm_judge_result.get('report_file', 'N/A')}")
  111. if win_rate_result:
  112. print(f" - Win Rate报告: {win_rate_result.get('report_file', 'N/A')}")
  113. if comprehensive_report_path:
  114. print(f" - 综合报告: {comprehensive_report_path}")
  115. print(f"\n💡 下一步:")
  116. if comprehensive_report_path:
  117. print(f" 1. 查看综合报告: {comprehensive_report_path}")
  118. print(f" 2. 运行人工验证: python data_generation/human_verification_ui.py {generated_data_path}")
  119. def generate_comprehensive_report(
  120. generated_data_path: str,
  121. llm_judge_result: dict,
  122. win_rate_result: dict
  123. ) -> str:
  124. """生成综合评估报告"""
  125. # 加载生成数据
  126. with open(generated_data_path, 'r', encoding='utf-8') as f:
  127. generated_data = json.load(f)
  128. report = f"""# AIME数据生成与评估综合报告
  129. ## 1. 基本信息
  130. - **生成时间**: {datetime.now().strftime("%Y-%m-%d %H:%M:%S")}
  131. - **生成题目数量**: {len(generated_data)}
  132. - **参考AIME年份**: 2025
  133. - **生成数据路径**: {generated_data_path}
  134. ## 2. 数据生成统计
  135. ### 主题分布
  136. """
  137. # 统计主题分布
  138. topic_counts = {}
  139. for item in generated_data:
  140. topic = item.get('topic', 'Unknown')
  141. topic_counts[topic] = topic_counts.get(topic, 0) + 1
  142. report += "| 主题 | 数量 | 占比 |\n"
  143. report += "|------|------|------|\n"
  144. for topic, count in sorted(topic_counts.items(), key=lambda x: x[1], reverse=True):
  145. percentage = count / len(generated_data) * 100
  146. report += f"| {topic} | {count} | {percentage:.1f}% |\n"
  147. # LLM Judge结果
  148. if llm_judge_result:
  149. report += "\n## 3. LLM Judge评估结果\n\n"
  150. report += f"""**总体评分**:
  151. - 平均总分: {llm_judge_result['metrics']['average_total_score']:.2f}/5.0
  152. - 通过率: {llm_judge_result['metrics']['pass_rate']:.2%}
  153. - 优秀率: {llm_judge_result['metrics']['excellent_rate']:.2%}
  154. **各维度评分**:
  155. | 维度 | 平均分 |
  156. |------|--------|
  157. | 正确性 | {llm_judge_result['metrics']['dimension_averages']['correctness']:.2f}/5.0 |
  158. | 清晰度 | {llm_judge_result['metrics']['dimension_averages']['clarity']:.2f}/5.0 |
  159. | 难度匹配 | {llm_judge_result['metrics']['dimension_averages']['difficulty_match']:.2f}/5.0 |
  160. | 完整性 | {llm_judge_result['metrics']['dimension_averages']['completeness']:.2f}/5.0 |
  161. """
  162. # Win Rate结果
  163. if win_rate_result:
  164. report += "\n## 4. Win Rate评估结果\n\n"
  165. report += f"""**胜率统计**:
  166. - Win Rate: {win_rate_result['metrics']['win_rate']:.2%}
  167. - Loss Rate: {win_rate_result['metrics']['loss_rate']:.2%}
  168. - Tie Rate: {win_rate_result['metrics']['tie_rate']:.2%}
  169. **对比次数**:
  170. - 总对比次数: {win_rate_result['metrics']['total_comparisons']} 次
  171. - 胜出次数: {win_rate_result['metrics']['wins']} 次
  172. - 失败次数: {win_rate_result['metrics']['losses']} 次
  173. - 平局次数: {win_rate_result['metrics']['ties']} 次
  174. """
  175. # 综合结论
  176. report += "\n## 5. 综合结论\n\n"
  177. if llm_judge_result and win_rate_result:
  178. overall_avg_score = llm_judge_result['metrics']['average_total_score']
  179. overall_win_rate = win_rate_result['metrics']['win_rate']
  180. if overall_avg_score >= 4.5 and overall_win_rate >= 0.48:
  181. report += "✅ **结论**: 生成数据质量**优秀**,达到或超过AIME真题水平。\n"
  182. elif overall_avg_score >= 4.0 and overall_win_rate >= 0.45:
  183. report += "✅ **结论**: 生成数据质量**良好**,接近AIME真题水平。\n"
  184. else:
  185. report += "⚠️ **结论**: 生成数据质量**需要改进**,与AIME真题仍有差距。\n"
  186. report += f"\n**整体指标**:\n"
  187. report += f"- LLM Judge得分: {overall_avg_score:.2f}/5.0\n"
  188. report += f"- Win Rate: {overall_win_rate:.2%}\n"
  189. # 改进建议
  190. report += "\n## 6. 改进建议\n\n"
  191. if llm_judge_result:
  192. avg_score = llm_judge_result['metrics']['average_total_score']
  193. if avg_score >= 4.5:
  194. report += "- ✅ 继续保持当前的生成策略\n"
  195. report += "- ✅ 可以考虑增加生成数量\n"
  196. elif avg_score >= 4.0:
  197. report += "- 🔄 优化题目生成的提示词\n"
  198. report += "- 🔄 增加质量过滤步骤\n"
  199. else:
  200. report += "- ⚠️ 需要重新设计生成提示词\n"
  201. report += "- ⚠️ 考虑使用更强的生成模型\n"
  202. report += "- ⚠️ 增加人工审核环节\n"
  203. # 下一步行动
  204. report += "\n## 7. 下一步行动\n\n"
  205. report += "1. **人工验证**: 运行人工验证界面,对生成的题目进行人工审核\n"
  206. report += f" ```bash\n python data_generation/human_verification_ui.py {generated_data_path}\n ```\n\n"
  207. report += "2. **质量筛选**: 根据评估结果筛选高质量题目\n\n"
  208. report += "3. **迭代优化**: 根据评估反馈优化生成策略\n"
  209. report += f"\n---\n\n*报告生成时间: {datetime.now().strftime('%Y-%m-%d %H:%M:%S')}*\n"
  210. return report
  211. def main():
  212. if len(sys.argv) < 2:
  213. print("用法: python step2_evaluate_only.py <generated_data_path>")
  214. print("\n说明:")
  215. print(" - 使用AIME 2025年真题作为参考")
  216. print(" - 数据集来源: math-ai/aime25(JSONL格式)")
  217. print(" - 需要安装: pip install pandas pyarrow datasets")
  218. print("\n示例:")
  219. print("python step2_evaluate_only.py data_generation/generated_data/aime_generated_20251011_042741.json")
  220. sys.exit(1)
  221. generated_data_path = sys.argv[1]
  222. run_evaluation(generated_data_path)
  223. if __name__ == "__main__":
  224. main()