import pandas as pd # 文件路径 table1_path = "/root/.openclaw/media/inbound/é_¾åº_æ_æ_å_è_ç³_æ_1.0---4d1d9fe3-1e36-4df1-baf6-d826fcf7a05e.xlsx" table2_path = "/root/.openclaw/media/inbound/â_¼ï_LV1-å_ç_å_è_åº_-ç¼_å_é_è_ç_è_é---5b90d819-abf3-4882-8772-ed8f3e0b449f.xlsx" # 剩下的480行 output_path = "/root/.openclaw/workspace-xiaoban/匹配完成的LV1下册词汇表.xlsx" # 读取表格 df1 = pd.read_excel(table1_path) df2 = pd.read_excel(table2_path) print(f"表一总条数:{len(df1)}") print(f"待处理的下册表总条数:{len(df2)}") # 创建映射 word_map = {} for _, row in df1.iterrows(): word = str(row['单词']).strip() word_map[word] = { '难度(D)': row['难度(D)'], '实现成本(T)': row['实现成本(T)'], '单词系数': row['单词系数'] } # 匹配字段 def get_value(word, col): key = str(word).strip() return word_map.get(key, {}).get(col, None) df2['难度(D)'] = df2['单词'].apply(lambda x: get_value(x, '难度(D)')) df2['实现成本(T)'] = df2['单词'].apply(lambda x: get_value(x, '实现成本(T)')) df2['单词系数'] = df2['单词'].apply(lambda x: get_value(x, '单词系数')) # 保存 df2.to_excel(output_path, index=False) # 统计 match_count = df2['难度(D)'].notna().sum() print(f"\n处理完成!结果已保存到:{output_path}") print(f"成功匹配条数:{match_count}") print(f"未匹配条数:{len(df2) - match_count}")