技能详情(站内镜像,无评论)
许可证:MIT-0
MIT-0 ·免费使用、修改和重新分发。无需归因。
版本:v1.0.0
统计:⭐ 0 · 40 · 1 current installs · 1 all-time installs
⭐ 0
安装量(当前) 1
🛡 VirusTotal :良性 · OpenClaw :良性
Package:cs995279497-byte/chen-excel-xlsx
安全扫描(ClawHub)
- VirusTotal :良性
- OpenClaw :良性
OpenClaw 评估
The skill is an instruction-only Excel/XLSX authoring guide that requests no credentials, installs no code, and its runtime instructions are coherent with its stated purpose.
目的
The name/description say it manipulates Excel files and the SKILL.md provides detailed, Excel-focused guidance (mentions pandas, openpyxl, dates, formulas, formatting, streaming). It requests no unrelated binaries, env vars, or config, so the declared requirements align with the purpose.
说明范围
The instructions are narrowly about reading, editing, and preserving Excel workbooks and spreadsheet workflows. They do not direct the agent to read unrelated system files, exfiltrate data, or call out to external endpoints. They do imply reading user-provided spreadsheet files (expected for this purpose).
安装机制
No install spec or bundled code is included (instruction-only), so nothing is written to disk or downloaded by the skill itself. This is the lowest-risk install profile.
证书
The skill requires no environment variables, secrets, or external credentials. The lack of requested credentials is proportionate to an instruction-only spreadsheet handling guide.
持久
always is false and the skill does not request persistent presence or modify other skills or system settings. Model invocation is allowed (default) but that is the platform norm and not, by itself, a concern here.
综合结论
This skill is an instruction-only policy/guide for editing Excel files and appears internally consistent. Before installing, consider: (1) the skill will operate on whatever spreadsheets you give it — spreadsheets often contain sensitive data, so only run it on files you trust or on copies; (2) .xlsm files can contain macros (potentially executable code) — treat macro-containing files with extra caution and avoid auto-enabling macros; (3) the …
安装(复制给龙虾 AI)
将下方整段复制到龙虾中文库对话中,由龙虾按 SKILL.md 完成安装。
请把本段交给龙虾中文库(龙虾 AI)执行:为本机安装 OpenClaw 技能「Chen Excel Xlsx」。简介:Create, inspect, and edit Microsoft Excel workbooks and XLSX files with reliabl…。
请 fetch 以下地址读取 SKILL.md 并按文档完成安装:https://raw.githubusercontent.com/openclaw/skills/refs/heads/main/skills/cs995279497-byte/chen-excel-xlsx/SKILL.md
(来源:yingzhi8.cn 技能库)
SKILL.md
---
name: chen-Excel / XLSX
slug: excel-xlsx
version: 1.0.2
homepage: https://clawic.com/skills/excel-xlsx
description: "Create, inspect, and edit Microsoft Excel workbooks and XLSX files with reliable formulas, dates, types, formatting, recalculation, and template preservation. Use when (1) the task is about Excel, `.xlsx`, `.xlsm`, `.xls`, `.csv`, or `.tsv`; (2) formulas, formatting, workbook structure, or compatibility matter; (3) the file must stay reliable after edits."
changelog: Tightened formula anchoring, recalculation, and model traceability after a stricter external spreadsheet audit.
metadata: {"clawdbot":{"emoji":"📗","requires":{"bins":[]},"os":["linux","darwin","win32"]}}
---
## 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 `pandas` for analysis, reshaping, and CSV-like tasks.
- Use `openpyxl` when 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.
- `openpyxl` preserves 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.
- `.xlsm` can contain macros, and `.xls` remains 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`, or `SEQUENCE` may 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 <slug>` 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`