Kpi Analyst
by flyingtimes
根据用户给出的excel文件内容,从中分析kpi指标的情况,并按照分工的列表,分别生成markdown格式的报告
Skill Details
Repository Files
2 files in this skill directory
name: kpi-analyst description: 根据用户给出的excel文件内容,从中分析kpi指标的情况,并按照分工的列表,分别生成markdown格式的报告 allowed-tools: Read, Grep, Glob, Write, Search
kpi-analyst
Instructions
1、所有的运行中输出的临时程序、文件、代码统一放到当前项目根目录下的output/ 2、根据用户指定的输入xlsx文件,参考refrerence/xlsx.md,得到每一页中的所有内容,并将结果写入当前项目根目录下的output/{sheetname}.md 3、根据当前项目根目录下output/指标通报.md文件中的内容,找到各个地市的指标,并按照reference/分工.md中的负责人信息,分别生成给不同地市的负责人的指标通报,结果写入当前项目根目录下的output/{负责人}.md 4、检查是否正确的在当前项目根目录下的output/文件夹中存在各个负责人的输出文件,如果没有这个输出请再检查整个过程是否存在问题。
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