ExcelMCPAdvanced
Fast, multi-sheet Excel retrieval and writing via MCP, supporting efficient data access with patch-based navigation and formula support.
README
Excel MCP Server — Advanced
Fast, multi-sheet Excel retrieval and writing via the Model Context Protocol. Built on python-calamine for speed; openpyxl only where calamine cannot reach (formula extraction, writing).
Tools
| Tool | Purpose |
|---|---|
excel_list_sheets |
List all sheet names in a workbook |
excel_get_sheet_size |
Get rows × cols — O(1) for .xlsx, O(n) otherwise |
excel_get_sheet_full |
Read an entire sheet as a markdown table |
excel_get_sheet_patches_truncated |
Auto-detect data regions (patches), return them truncated with IDs |
excel_get_sheet_patches_by_id |
Return full data for specific patch IDs |
excel_get_sheet_cell_ranges |
Return data for explicit A1-notation ranges |
excel_write_workbook |
Write {sheet: markdown_table} data to an .xlsx file |
Typical Workflows
Deep analysis (recommended for large files)
excel_list_sheets(file)
→ excel_get_sheet_size(file, sheet) # check dimensions first (O(1))
→ excel_get_sheet_patches_truncated(file, sheet) # get patch IDs + shape
→ excel_get_sheet_patches_by_id(file, sheet, [ids…]) # pull full data for relevant patches
Quick overview
excel_get_sheet_patches_truncated(file, sheet, top_n_patches=5)
Small sheet
excel_get_sheet_full(file, sheet)
Targeted extraction
excel_get_sheet_cell_ranges(file, sheet, ["A1:D20", "G5:J15"])
Sheet Size
excel_get_sheet_size returns {rows, cols, cells, method}:
{"sheet_name": "Sales", "rows": 150001, "cols": 12, "cells": 1800012, "method": "xml_dimension_tag"}
Speed:
.xlsx/.xlsm: readsworkbook.xml(~2 KB) + the first 8 KB of the sheet XML to extract the<dimension ref="A1:E150001"/>element. A 200 MB file with 2 million rows takes the same time as a 10-row file..xls/.xlsb/.ods: calamine row iteration — O(n rows) but never loads the full sheet into memory.
Patch IDs
A patch is a contiguous rectangular block of non-empty cells, separated from other patches by completely empty rows or columns.
Patch IDs encode their location: {Sheet}_P{n}_{TopLeft}_{BottomRight}
- Example:
Sales_P01_A1_E15000,Forecast_P03_B5_BD10 - The bounding box is embedded in the ID, so
excel_get_sheet_patches_by_idrequires no shared state between calls.
Content Modes
Both values and hybrid are supported on all read tools via the content parameter.
| Mode | Behaviour |
|---|---|
values (default) |
Computed cell values. Fast — calamine only. |
hybrid |
Formula cells show the raw formula (=SUM(A1:A10)); hardcoded cells show values. Slightly slower — requires an extra openpyxl pass. |
Truncation
excel_get_sheet_patches_truncated truncates large patches to keep context manageable:
| Order ID | Date | Customer | ... (truncated 50 cols) | Amount |
|----------|------------|------------|-------------------------|---------|
| 10001 | 2024-01-01 | Apex Corp | ... | $150.00 |
| 10002 | 2024-01-02 | Beta LLC | ... | $200.00 |
| ... | ... | ... | ... (truncated 14,995) | ... |
| 24995 | 2024-12-30 | Charlie Inc| ... | $150.00 |
| 24996 | 2024-12-31 | Delta Co | ... | $350.00 |
Control via:
truncate_top_n— rows/cols shown at head and tail (default 3)truncate_threshold— dimension must exceed this to trigger truncation (default 10)
Writing
excel_write_workbook accepts a dict of {sheet_name: markdown_table} and coerces cell values:
| Input string | Excel type |
|---|---|
=SUM(A1:A10) |
Formula |
42, 3.14 |
Numeric |
TRUE / FALSE |
Boolean |
15% |
0.15 (numeric) |
| `` (empty) | Blank cell |
| anything else | String |
Installation
git clone <repo>
cd Excel-MCP-Server-Advanced
python -m venv .venv && source .venv/bin/activate
pip install -e .
Supported formats: .xlsx, .xls, .xlsb, .ods (read); .xlsx (write).
MCP Client Configuration
Add to your MCP client config (e.g. Claude Desktop claude_desktop_config.json):
{
"mcpServers": {
"excel": {
"command": "/path/to/.venv/bin/excel-mcp-server"
}
}
}
Development
# Generate test workbook
python tests/create_test_excel.py
# Run tests
python tests/test_tools.py
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