From financial-analysis
Cleans messy spreadsheet data: trims whitespace, fixes casing, converts numbers-as-text, standardizes dates, removes duplicates, flags mixed-type columns. Works in Excel (Office JS) or on .xlsx files (Python/openpyxl).
How this skill is triggered — by the user, by Claude, or both
Slash command
/financial-analysis:clean-data-xlsThe summary Claude sees in its skill listing — used to decide when to auto-load this skill
Clean messy data in the active sheet or a specified range.
Clean messy data in the active sheet or a specified range.
Excel.run(async (context) => {...})). Read via range.values, write helper-column formulas via range.formulas = [["=TRIM(A2)"]]. The in-place vs helper-column decision still applies.A1:F200), use it| Issue | What to look for |
|---|---|
| Whitespace | leading/trailing spaces, double spaces |
| Casing | inconsistent casing in categorical columns (usa / USA / Usa) |
| Number-as-text | numeric values stored as text; stray $, ,, % in number cells |
| Dates | mixed formats in the same column (3/8/26, 2026-03-08, March 8 2026) |
| Duplicates | exact-duplicate rows and near-duplicates (case/whitespace differences) |
| Blanks | empty cells in otherwise-populated columns |
| Mixed types | a column that's 98% numbers but has 3 text entries |
| Encoding | mojibake (é, ’), non-printing characters |
| Errors | #REF!, #N/A, #VALUE!, #DIV/0! |
Show a summary table before changing anything:
| Column | Issue | Count | Proposed Fix |
|---|
=TRIM(A2), =VALUE(SUBSTITUTE(B2,"$","")), =UPPER(C2), =DATEVALUE(D2)), write the formula in an adjacent helper column rather than computing the result in Python and overwriting the original. This keeps the transformation transparent and auditable.npx claudepluginhub nvmohinani/financial_services --plugin financial-analysisCleans messy spreadsheet data: trims whitespace, fixes casing, converts numbers-as-text, standardizes dates, removes duplicates, flags mixed-type columns. Works in Excel (Office JS) or on .xlsx files (Python/openpyxl).
Cleans CSV/TSV/Excel files: normalizes headers, trims whitespace, removes duplicates, fixes row lengths, validates data using qsv tools.
Writes clear, step-by-step instructions for cleaning messy datasets, specifying standardisation, correction, and removal steps for analysis readiness.