MCP Beancount Tool
Enables interaction with local Beancount accounting ledgers through structured tools for viewing accounts, balances, and transactions, as well as inserting/removing transactions and answering natural-language questions via BeanQuery. Provides deterministic, validated, and auditable financial data operations with offline-first functionality.
README
MCP Beancount Tool — Project Documentation
Description
- Build an MCP server that integrates with Beancount 3.2.0 to expose safe, structured tools for: viewing accounts, balances, income sheet (income statement), and transactions; inserting new transactions; removing transactions; and answering natural‑language questions via BeanQuery.
- Provide deterministic, validated, and auditable interactions with a local Beancount ledger, suitable for MCP‑compatible clients (e.g., IDE agents or chat assistants) operating offline.
- Emphasize correctness (balanced postings, type‑checked inputs), safety (file locking, atomic writes, backups), and usability (clear schemas and messages). Each created transaction receives a stable unique identifier to support safe updates/deletions.
Requirements
- Functional
- List accounts: return name, type, open/close metadata, currencies, and optional tags/commodities.
- Balances: compute account and roll‑up balances at a date or over a period; optionally convert using available price data.
- Income sheet: produce an income statement (Income/Expenses and net result) for a specified period.
- List transactions: filter by date range, account(s), payee, narration, tags, and metadata; include postings and totals.
- Insert transaction: accept structured input (date, flag, payee, narration, postings, metadata), enforce balance; assign
txn_id(UUID) if missing; validate with Beancount before persisting. - Remove transaction: delete by
txn_id(required for deletion); refuse ambiguous deletes; validate resulting ledger. - Query (BeanQuery): execute read‑only BeanQuery strings and return typed rows/columns.
- Natural‑language Q&A: map NL questions to safe BeanQuery templates (read‑only); return results and the generated query for transparency.
- Dry‑run mode for mutations to preview effects without writing.
- Non‑functional
- Local‑first and offline; no network dependencies during normal operation.
- Performance targets appropriate for 100k+ postings; avoid re‑parsing on trivial reads when possible.
- Deterministic output formats and stable ordering for repeatability.
- Clear, actionable errors (parse issues, validation failures, unbalanced postings, ambiguous matches).
- Strong auditability: atomic writes, automatic timestamped backups, and file locking to prevent concurrent corruption.
- Technical
- Beancount 3.2.0 for parsing, validation, and query (
beancount.loader,beancount.core.*,beancount.query). - Language/runtime: Python 3.11+.
- MCP server SDK (Python) using the latest
modelcontextprotocol/python-sdk; expose tools with JSON‑schema input/output; define stable tool names and schemas. - Transport: HTTP transport from the MCP Python SDK (server runs over HTTP).
- Testing:
pytest; sample fixture ledgers; golden files for tool responses where applicable. - Cross‑platform file locking and atomic replace on write; UTF‑8 encoding.
- Configuration via file and environment: main ledger path, default currency, price/commodities options, locale/timezone.
- Beancount 3.2.0 for parsing, validation, and query (
- Security & Privacy
- Operate only on configured ledger roots; reject path traversal/out‑of‑scope files.
- Sanitize and bound NL→BeanQuery generation to read‑only, parameterized templates; never perform writes from NL intents.
- Never transmit ledger data over network; logs must redact sensitive fields when necessary.
Tasks
- Project scaffolding
- Initialize Python project with
uv, dependency pins (Beancount 3.2.0), and basic packaging. - Add configuration loader (env + config file) for ledger path and options.
- Set up
pytestwith sample fixture ledgers for repeatable tests. - Provide a minimal example ledger at
tests/fixtures/example.beancountfor testing.
- Initialize Python project with
- MCP server foundation
- Integrate the latest
modelcontextprotocol/python-sdk. - Use HTTP transport for the server; document default port and configuration.
- Scaffold server entrypoint and lifecycle (no business logic yet).
- Define tool manifests with JSON schemas for inputs/outputs and consistent error models.
- Integrate the latest
- Ledger loading & validation
- Implement loader using
beancount.loaderwith include handling, cache, and diagnostics capture. - Provide a validation layer to surface Beancount errors/warnings in a structured form.
- Implement loader using
- Read‑only tools
list_accounts: enumerate accounts with metadata and inferred types.balance: compute balances at date/period; include options for cost/value and conversions when price data exists.income_sheet: generate period income statement (Income, Expenses, Net) with grouping and totals.list_transactions: filters (date/account/payee/tag/metadata) and pagination; include postings.query: execute BeanQuery safely; return columns + typed rows.
- Mutation tools
insert_transaction: define input schema; normalize/validate postings; auto‑assigntxn_id; pretty‑format; atomic write with backup; re‑load to verify.remove_transaction: requiretxn_id; locate uniquely; remove; atomic write; re‑load to verify.- Introduce optional
dry_runflag for both mutations; return proposed diff.
- Natural‑language layer
- Implement a rule/template‑based NL→BeanQuery mapper for common intents (balances, spending by category, income by month, etc.).
- Validate generated queries as read‑only; expose the final query in responses for transparency.
- Reliability & UX
- Add file locking, atomic replace, and timestamped backups; configurable backup retention.
- Normalize amounts/commodities and present deterministic output ordering.
- Structured, user‑facing error messages with remediation hints.
- Testing & examples
- Unit tests for each tool, including edge cases (unbalanced inserts, ambiguous deletes, parse errors).
- End‑to‑end tests against fixture ledgers and golden responses.
- Example configuration and sample queries in docs.
- Packaging & release
- Package as a Python distribution; pin dependencies; provide entrypoint for MCP server.
- Versioning and changelog; minimal quickstart documentation for MCP clients.
MCP SDK & Transport
- SDK: Use the latest
modelcontextprotocol/python-sdk(installed asmodelcontextprotocol). - Transport: HTTP transport. The server will expose an HTTP endpoint for MCP clients; default host/port and CORS/security considerations will be documented alongside configuration. No stdio transport is planned for the default setup.
Development (uv)
- Create and sync the environment:
uv sync(installs project and dev dependencies)
- Run tests:
uv run -m pytest
- Lint (if desired):
uv run ruff check .
Example configuration
tests/fixtures/mcp-beancount.tomldemonstrates a minimal config pointing at the bundled example ledger. Copy and adjust paths before runninguv run mcp-beancount --config <file>.
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