← 返回 Skills 市场
144
总下载
0
收藏
0
当前安装
3
版本数
在 OpenClaw 中安装
/install testskill1111
功能描述
Create, inspect, and edit Microsoft Excel workbooks and XLSX files with reliable formulas, dates, types, formatting, recalculation, and template preservation...
使用说明 (SKILL.md)
When to Use
Use when the main artifact is a Microsoft Excel workbook or spreadsheet file, especially when formulas, dates, formatting, merged cells, workbook structure, or cross-platform behavior matter.
Core Rules
1. Choose the workflow by job, not by habit
- Use
pandasfor analysis, reshaping, and CSV-like tasks. - Use
openpyxlwhen formulas, styles, sheets, comments, merged cells, or workbook preservation matter. - Treat CSV as plain data exchange, not as an Excel feature-complete format.
- Reading values, preserving a live workbook, and building a model from scratch are different spreadsheet jobs.
2. Dates are serial numbers with legacy quirks
- Excel stores dates as serial numbers, not real date objects.
- The 1900 date system includes the false leap-day bug, and some workbooks use the 1904 system.
- Time is fractional day data, so formatting and conversion both matter.
- Date correctness is not enough if the number format still displays the wrong thing to the user.
3. Keep calculations in Excel when the workbook should stay live
- Write formulas into cells instead of hardcoding derived results from Python.
- Use references to assumption cells instead of magic numbers inside formulas.
- Cached formula values can be stale, so do not trust them blindly after edits.
- Check copied formulas for wrong ranges, wrong sheets, and silent off-by-one drift before delivery.
- Absolute and relative references are part of the logic, so copied formulas can be wrong even when they still "work".
- Test new formulas on a few representative cells before filling them across a whole block.
- Verify denominators, named ranges, and precedent cells before shipping formulas that depend on them.
- A workbook should ship with zero formula errors, not with known
#REF!,#DIV/0!,#VALUE!,#NAME?, or circular-reference fallout left for the user to fix. - For model-style work, document non-obvious hardcodes, assumptions, or source inputs in comments or nearby notes.
4. Protect data types before Excel mangles them
- Long identifiers, phone numbers, ZIP codes, and leading-zero values should usually be stored as text.
- Excel silently truncates numeric precision past 15 digits.
- Mixed text-number columns need explicit handling on read and on write.
- Scientific notation, auto-parsed dates, and stripped leading zeros are common corruption, not cosmetic issues.
5. Preserve workbook structure before changing content
- Existing templates override generic styling advice.
- Only the top-left cell of a merged range stores the value.
- Hidden rows, hidden columns, named ranges, and external references can still affect formulas and outputs.
- Shared strings, defined names, and sheet-level conventions can matter even when the visible cells look simple.
- Match styles for newly filled cells instead of quietly introducing a new visual system.
- If the workbook is a template, preserve sheet order, widths, freezes, filters, print settings, validations, and visual conventions unless the task explicitly changes them.
- Conditional formatting, filters, print areas, and data validation often carry business meaning even when users only mention the numbers.
- If there is no existing style guide and the file is a model, keep editable inputs visually distinguishable from formulas, but never override an established template to force a generic house style.
6. Recalculate and review before delivery
- Formula strings alone are not enough if the recipient needs current values.
openpyxlpreserves formulas but does not calculate them.- Verify no
#REF!,#DIV/0!,#VALUE!,#NAME?, or circular-reference fallout remains. - If layout matters, render or visually review the workbook before calling it finished.
- Be careful with read modes: opening a workbook for values only and then saving can flatten formulas into static values.
- If assumptions or hardcoded overrides must stay, make them obvious enough that the next editor can audit the workbook.
7. Scale the workflow to the file size
- Large workbooks can fail for boring reasons: memory spikes, padded empty rows, and slow full-sheet reads.
- Use streaming or chunked reads when the file is big enough that loading everything at once becomes fragile.
- Large-file workflows also need narrower reads, explicit dtypes, and sheet targeting to avoid accidental damage.
Common Traps
- Type inference on read can leave numbers as text or convert IDs into damaged numeric values.
- Column indexing varies across tools, so off-by-one mistakes are common in generated formulas.
- Newlines in cells need wrapping to display correctly.
- External references break easily when source files move.
- Password protection in old Excel workflows is not serious security.
.xlsmcan contain macros, and.xlsremains a tighter legacy format.- Large files may need streaming reads or more careful memory handling.
- Google Sheets and LibreOffice can reinterpret dates, formulas, or styling differently from Excel.
- Dynamic array or newer Excel functions like
FILTER,XLOOKUP,SORT, orSEQUENCEmay fail or degrade in older viewers. - A workbook can look fine while still carrying stale cached values from a prior recalculation.
- Saving the wrong workbook view can replace formulas with cached values and quietly destroy a live model.
- Copying formulas without checking relative references can push one bad range across an entire block.
- Hidden sheets, named ranges, validations, and merged areas often keep business logic that is invisible in a quick skim.
- A workbook can appear numerically correct while still failing because filters, conditional formats, print settings, or data validation were stripped.
- A workbook can be numerically correct and still fail visually because wrapped text, clipped labels, or narrow columns were never reviewed.
Related Skills
Install with clawhub install \x3Cslug> if user confirms:
csv— Plain-text tabular import and export workflows.data— General data handling patterns before spreadsheet output.data-analysis— Higher-level analysis that can feed workbook deliverables.
Feedback
- If useful:
clawhub star excel-xlsx - Stay updated:
clawhub sync
安全使用建议
This result is incomplete: workspace inspection failed, so treat it as no finding rather than a positive safety determination.
能力评估
Purpose & Capability
Unable to verify purpose or capability from artifacts because direct workspace inspection failed before metadata or artifact files could be read.
Instruction Scope
Unable to assess runtime instructions or scoping from artifact contents due to the same workspace inspection failure.
Install Mechanism
Unable to assess install mechanism from metadata or install artifacts because the files could not be read.
Credentials
Unable to compare requested environment access to skill purpose because artifact contents were unavailable.
Persistence & Privilege
Unable to assess persistence or privilege requirements because artifact contents were unavailable.
如何使用
- 确保已安装 OpenClaw(本地或 Docker 部署)
- 在对话框中输入安装命令:
/install testskill1111 - 安装完成后,直接呼叫该 Skill 的名称或使用
/testskill1111触发 - 根据 Skill 的参数说明提供必要输入,即可获得结构化输出
版本历史
v1.0.2
No functional or documentation changes in this version.
- Version bump only; no file changes detected.
- Behavior and guidance remain identical to the previous release.
v1.0.1
No functional or file changes detected in this version.
- No updates to skill files or behavior.
- Documentation minorly changed: "When to Use" text edited.
- Version and changelog remain unchanged.
v1.0.0
- Initial release of testskill1111 (Excel / XLSX) version 1.0.0.
- Provides guidance and best practices for editing Excel, XLSX, XLSM, XLS, CSV, and TSV files.
- Emphasizes reliable formula preservation, recalculation, and workbook integrity.
- Details common pitfalls and recommends workflows for analysis, formatting, date handling, and large-file management.
元数据
常见问题
testskill11113 是什么?
Create, inspect, and edit Microsoft Excel workbooks and XLSX files with reliable formulas, dates, types, formatting, recalculation, and template preservation... 它是一个面向 Claude Code / OpenClaw 的 AI Agent Skill 插件,目前累计下载 144 次。
如何安装 testskill11113?
在 OpenClaw 或 Claude Code 对话框中运行命令「/install testskill1111」即可一键安装,无需额外配置。
testskill11113 是免费的吗?
是的,testskill11113 完全免费,采用 MIT-0 许可证,可自由下载、安装和使用。
testskill11113 支持哪些平台?
testskill11113 跨平台运行,可在任意部署了 OpenClaw / Claude Code 的环境中使用(linux, darwin, win32)。
谁开发了 testskill11113?
由 +0(@shenjialin-cn)开发并维护,当前版本 v1.0.2。
推荐 Skills