| name | xlsx |
| description | Read, create, or edit Excel spreadsheets (.xlsx/.xlsm) — sheet data, formulas, styles, charts, multi-sheet workbooks — and bulk .csv/.tsv tables; use whenever a spreadsheet is the input or the deliverable (extract/analyze data, add columns/formulas/formatting/charts, clean messy tables, build from scratch), but not for Google Sheets API or Word/PDF/script outputs. |
| tags | ["tool","office"] |
| requires | {"sandbox":"shell"} |
Excel (.xlsx) workbooks
Work in the workspace dir (where uploads land) by writing short Python run via
exec. Two libraries, both preinstalled — pick by task:
After exec completes, use the Generated artifacts URL from the tool result in
the final answer so the user can download the workbook.
- pandas — bulk tabular read/write/analysis. Use for "load this sheet,
compute, dump a table". Drops all formatting and formulas.
- openpyxl — cells, formulas, styles, charts, merged cells, multi-sheet,
number formats. Use whenever formatting, formulas, or fidelity matter.
THE critical gotcha: openpyxl writes formulas but never computes them
ws["B10"] = "=SUM(B2:B9)" stores the formula string. openpyxl has no formula
engine — the cached value stays empty (or stale, on an edited file). So:
- A workbook you create/edit with openpyxl opens fine in Excel/LibreOffice (they
recompute on open), but its cached values are wrong until then.
- Anything reading cached values first —
data_only=True, another
pandas/openpyxl pass, or a downstream tool — sees blanks/stale data.
Pick by what the deliverable needs:
- Static numbers (most common). If the user just needs correct values and
the sheet need not stay live, compute in Python and write the number, not
a formula string:
ws["B10"] = sum(c.value for c in ws["B2:B9"][0]). Correct
immediately, no recalc needed.
- Live model (formulas that recompute on the user's later edits). Write real
formulas, and reference cells not literals (
=B5*(1+$B$6), not =B5*1.05).
openpyxl can't set the cached value too, so either recalc with LibreOffice if
present (gate it — often absent):
command -v soffice >/dev/null && \
soffice --headless --convert-to xlsx --outdir /tmp out.xlsx \
>/dev/null 2>&1 && cp /tmp/out.xlsx out.xlsx
--convert-to xlsx reopens and recalculates, repopulating cached values. If
soffice is missing, say so and warn the user the formulas populate when they
open the file in Excel — never assume soffice exists.
Reading
import pandas as pd
df = pd.read_excel("in.xlsx")
sheets = pd.read_excel("in.xlsx", sheet_name=None)
df = pd.read_excel("in.xlsx", dtype={"id": str})
To read computed results of formulas (not the formula text), use openpyxl
with data_only=True — returns the value Excel last cached:
from openpyxl import load_workbook
wb = load_workbook("in.xlsx", data_only=True)
val = wb["Sheet1"]["B10"].value
Gotcha: never save() a workbook loaded with data_only=True — that discards
every formula permanently (verified: the cell becomes None). Load twice if you
need both formulas and values.
Large file: load_workbook(path, read_only=True) streams rows cheaply.
Creating
from openpyxl import Workbook
from openpyxl.styles import Font, PatternFill, Alignment
wb = Workbook(); ws = wb.active; ws.title = "Summary"
ws.append(["Region", "Sales"])
for r in [("West", 120), ("East", 95)]:
ws.append(r)
ws["B4"] = "=SUM(B2:B3)"
ws["A1"].font = Font(bold=True)
ws["A1"].fill = PatternFill("solid", fgColor="DDDDDD")
ws["A1"].alignment = Alignment(horizontal="center")
ws["B2"].number_format = "#,##0"
ws.column_dimensions["A"].width = 18
ws.freeze_panes = "A2"
wb.create_sheet("Detail")
wb.save("out.xlsx")
Bulk data is faster via pandas, then style with openpyxl after:
df.to_excel("out.xlsx", index=False, sheet_name="Data")
Editing (preserve existing formatting)
load_workbook keeps styles, formulas, merged cells, charts intact — edit only
what you touch. Do NOT round-trip through pandas to preserve formatting (pandas
rewrites the whole sheet, losing styles).
from openpyxl import load_workbook
wb = load_workbook("in.xlsx")
ws = wb["Sheet1"]
ws["C2"] = "Updated"
wb.save("in.xlsx")
Match the file's existing conventions (font, number formats, colors) rather than
imposing new ones — an established template wins over any default.
When inserting/deleting rows or columns (ws.insert_rows, ws.delete_cols),
openpyxl does not rewrite formulas that reference shifted cells. Re-point
affected formulas yourself, or avoid structural shifts in formula-heavy sheets.
Charts
from openpyxl.chart import BarChart, Reference
ch = BarChart(); ch.title = "Sales"
data = Reference(ws, min_col=2, min_row=1, max_row=3)
cats = Reference(ws, min_col=1, min_row=2, max_row=3)
ch.add_data(data, titles_from_data=True); ch.set_categories(cats)
ws.add_chart(ch, "E2")
LineChart / PieChart / ScatterChart follow the same shape.
Verifying you produced clean output
After writing, reload and scan for error strings — these mean broken formulas
that recalc surfaced (#REF! bad reference, #DIV/0! zero denominator,
#VALUE! type mismatch, #NAME? unknown function, #N/A):
from openpyxl import load_workbook
wb = load_workbook("out.xlsx", data_only=True)
errs = [f"{s}!{c.coordinate}={c.value}"
for s in wb.sheetnames for row in wb[s].iter_rows() for c in row
if isinstance(c.value, str) and c.value.startswith("#")]
print(errs or "clean")
This only catches errors in cached values. If you wrote formulas and couldn't
recalc (no soffice), cached values are blank, so the check is meaningful only
after a recalc or after Excel opens the file. Writing computed numbers (option 1)
sidesteps this.
CSV / TSV
df = pd.read_csv("in.csv")
df.to_csv("out.csv", index=False)
For messy input (junk rows, header not on row 1, ragged columns): inspect raw
lines first, then pd.read_csv(..., skiprows=, header=, usecols=, on_bad_lines="skip").
Raw OOXML (rarely needed)
openpyxl covers essentially all xlsx features; reach for raw XML only for the
narrow cases it can't express (e.g. preserving an exotic part it drops on
re-save). An .xlsx is a ZIP: xl/workbook.xml, xl/worksheets/sheet1.xml,
xl/sharedStrings.xml, plus [Content_Types].xml and _rels/. Unzip with
stdlib zipfile, edit the part, re-zip — keep [Content_Types].xml and every
.rels consistent, keep IDs unique, and don't pretty-print into value-bearing
text nodes. Correctness check = it opens in Excel with no repair prompt.