maxed-mcp
MCP server providing deterministic accounting tools for AI agents, including bank statement parsing, document classification, money math, and webhook verification.
README
maxed-mcp
One Model Context Protocol server that fronts the deterministic tools in the open-source accounting suite, so an AI agent can call them the same way it calls any other MCP tool.
Agents are good at judgement and bad at arithmetic, parsing, and signature checks. This server hands the deterministic, auditable work to the libraries built for it: parse a bank statement, classify a document, validate a workpaper against the open spec, do exact money math, and verify a webhook signature. Every tool returns structured JSON and a uniform error envelope. Nothing here is generative, and nothing is faked: when a backing tool is not installed, the tool says so and tells the agent how to install it, rather than inventing an answer.
This is the agentic front door to the suite. The parsers and validators live in their own repositories and stay the single source of truth for their behavior; maxed-mcp shells out to the ones that ship a CLI and parses their JSON, and computes the small pure primitives (money math, HMAC) in-process, mirroring the semantics of their canonical sibling libraries.
Tools
| Tool | What it does | Backend |
|---|---|---|
list_capabilities |
List every tool and whether its backend is installed on this host. | in-process |
normalize_bank_statement |
Parse CSV / OFX / QFX / MT940 / CAMT / QIF / text into normalized transaction JSON. | statement-normalizer CLI |
normalize_ofx |
Parse an OFX/QFX or CSV bank export into normalized transaction JSON. | ofx-normalizer ofxnorm (Go) |
classify_document |
Classify accounting document text: w2, form_1099, invoice, bank_statement, receipt, or unknown. |
doc-classifier-kit CLI |
validate_workpaper |
Validate a document against a cpa-workpaper-spec JSON Schema. | spec validator |
money_allocate |
Split an amount across ratios or evenly, with no lost minor units. | money-rs semantics |
money_apply_rate |
Apply a rate (tax, tip, share) with explicit rounding. | money-rs semantics |
verify_webhook_hmac |
Constant-time verify a Stripe / hex / base64 webhook HMAC signature. | webhook-hmac-verifier semantics |
money_* and verify_webhook_hmac are computed in-process and are always
available; they faithfully mirror the rules of the canonical Rust and Go
libraries so an agent gets the same answer either way. The four parser and
validator tools shell out to a sibling CLI; call list_capabilities first to
see which are installed.
Install
pip install maxed-mcp
# Make the two Python-backed tools available out of the box:
pip install "maxed-mcp[suite]" # adds statement-normalizer + doc-classifier-kit
Optional backends for the remaining shell-backed tools:
normalize_ofx: build the Go binary and put it onPATH(go install github.com/maxed-oss/ofx-normalizer/cmd/ofxnorm@latest).validate_workpaper: pointCPA_WORKPAPER_SPEC_DIRat acpa-workpaper-speccheckout (the directory containingvalidator/validate.py).
Run
maxed-mcp # start the server on stdio
python -m maxed_mcp # equivalent
The server speaks MCP over stdio, so it plugs into any MCP client. Register it with a client like this (the exact file differs per client):
{
"mcpServers": {
"maxed": {
"command": "maxed-mcp",
"env": {
"CPA_WORKPAPER_SPEC_DIR": "/path/to/cpa-workpaper-spec"
}
}
}
}
Backend resolution
Each shell-backed tool resolves its command in this order:
- an explicit environment variable (a full command line):
MAXED_MCP_STATEMENT_NORMALIZER,MAXED_MCP_DOC_CLASSIFIER,MAXED_MCP_OFXNORM,MAXED_MCP_CPA_WORKPAPER_VALIDATE; - the tool's console-script (or
ofxnormbinary) onPATH; - a fallback:
python -m ...for the Python tools, or a siblingcpa-workpaper-spec/checkout for the validator (CPA_WORKPAPER_SPEC_DIR).
If nothing resolves, the tool returns {"ok": false, "error": {"code": "tool_unavailable", ...}} with an install hint instead of failing opaquely.
Response shape
Every tool returns a JSON object. Success carries "ok": true plus tool
fields; failure carries "ok": false and an error object:
{ "ok": false, "error": { "code": "tool_unavailable", "message": "...", "detail": { "hint": "..." } } }
See AGENT.md for the condensed machine interface,
llms.txt for the machine-readable tool reference, and
examples/agent_call_example.py for a full,
runnable in-process client that calls every tool.
Development
pip install -e ".[dev,suite]"
pytest -q
The test suite exercises the in-process tools directly and the shell-backed
tools against the installed Python siblings; tools whose backend is not present
assert the graceful tool_unavailable path.
License
Apache-2.0.
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