A community-driven registry for the Claude Code ecosystem. Not affiliated with Anthropic.
Are you the author? Sign in to claim
gnomon-mcp
The pointer on a sundial that turns shadow into time.
A small MCP server for the boring-but-essential utilities every model needs: dates, calendars, arithmetic, unit conversion. Use it so your assistant stops "next-token guessing" math and date math.
LLMs are bad at arithmetic and date math by default. They produce plausible answers that are often wrong by a small amount — exactly the kind of mistake that's hard to notice in a long response. gnomon-mcp exposes deterministic Python implementations through MCP so your model can compute instead of guess.
Anywhere the next plausible token is not the right answer. Concretely:
calc.now for a snapshot; calendar with until/since/diff for elapsed time; parse for natural-language dates ("next thursday").calendar with add / business_days.calc_convert. Never eyeball "kg → lb" or "°C → °F".calendar, calc) take a list and return a list in order. One call, N results.The rule of thumb: if you'd ask a colleague to "just double-check that number," call gnomon instead.
Time and math already have several MCP servers — the official Time reference (timezone-only), mcp-time and mcp-datetime (date formatting / timezone), calculator-server (math + units, no dates), and bundles like agent-utils-mcp (regex / hashing / JWT). gnomon's lane is narrower:
calendar(ops) and calc(expressions) take lists; one tool call covers a whole table column instead of N calls.now(). One call returns 18 fields — ISO week, quarter, fiscal year, day-of-year, is_weekend, … — instead of just {iso, tz}."next thursday", "in 3 hours") without a separate NLP server.If you only need timezone conversion, the official Time server is enough. If you want a broad utility bundle (regex, hashing, encoding, JWT), agent-utils-mcp is a better fit. gnomon is for the boring date-arithmetic-and-arithmetic core, batched.
Two tools:
now(tz?) — standalone. Returns a rich dict snapshot of the current moment. One call gets you everything about "right now".calendar(ops) — batch dispatcher. Each item picks its own op. Designed for table-row workloads (e.g. one call computes time-elapsed for every row).now(tz?) returns:
{
"iso": "2026-05-25T14:30:45+00:00",
"date": "2026-05-25",
"time": "14:30:45",
"unix": 1779345045,
"tz": "UTC",
"year": 2026, "month": 5, "month_name": "May", "day": 25,
"weekday": "Monday", "weekday_num": 0, # 0=Monday
"day_of_year": 145, "week_of_year": 22, # ISO week
"quarter": 2, "fiscal_year_us_gov": 2026, # FY starts Oct 1
"hour": 14, "minute": 30, "second": 45,
"is_weekend": False,
}
calendar(ops) operations:
| Op | Params | Returns |
|---|---|---|
diff | start, end, unit | end - start — time elapsed between two known dates |
until | target, unit, tz? | target - now — time left to a future point (negative if past) |
since | source, unit, tz? | now - source — time elapsed since a past point (negative if future) |
add | date, n, unit | ISO of date + n units (seconds|...|weeks, plus months|years calendar-aware) |
weekday | date | "Monday".."Sunday" |
business_days | start, end | count of Mon-Fri days (start inclusive, end exclusive) |
parse | natural, tz? | ISO from natural language ("next thursday", "in 3 hours") |
format | date, fmt | strftime-formatted string |
Units for diff/until/since: seconds, minutes, hours, days, weeks.
Example — compute several things in one call:
calendar([
{"op": "until", "target": "2026-12-31", "unit": "days"}, # days left in year
{"op": "since", "source": "2026-01-01", "unit": "days"}, # days elapsed in year
{"op": "diff", "start": "2026-01-01", "end": "2026-12-31", "unit": "days"},
{"op": "weekday", "date": "2026-05-25"}, # "Monday"
{"op": "add", "date": "2026-05-25", "n": 1, "unit": "months"},
{"op": "parse", "natural": "next thursday", "tz": "America/Los_Angeles"},
])
| Tool | Purpose |
|---|---|
calc(expressions) | Evaluate a list of Python expressions and return a list of results. Math (sqrt, sin, log, pi, e, ...), stats (mean, median, stdev, variance), and useful builtins (abs, round, min, max, sum, range, sorted, ...) are pre-loaded. Batch in / batch out, order preserved. |
calc_convert(value, from_unit, to_unit) | Unit conversion via Pint (meter → foot, kg → lb, degC → degF, etc.). |
Examples:
calc(["2 + 3 * 4"]) # [14]
calc(["sqrt(16)", "sin(pi/2)"]) # [4.0, 1.0]
calc(["mean([1, 2, 3, 4])"]) # [2.5]
calc(["sum(range(101))"]) # [5050]
calc(["(25 / 100) * 100"]) # [25.0]
The same logic — if the model is likely to bluff it, expose a deterministic version — points at several more primitives worth building. None of these are implemented yet; they are candidates, listed roughly in order of bang-for-buck:
count(text, unit) for chars / words / lines / sentences / LLM tokens. Agents constantly miscount "how long is this" and "will this fit in the context window."regex_find(pattern, text) and regex_sub(pattern, repl, text). Models hallucinate which substrings match a regex; a real engine ends the argument.jq(path, json) / jsonpath(path, json). Reading values out of a nested blob by path, without typos.hash(text, algo) (sha256, md5, blake2), encode(text, scheme) / decode(text, scheme) (base64, hex, url, jwt-payload). All things models confidently invent wrong.money(expr) evaluated under Python's Decimal with explicit rounding. calc is float-based and quietly unsafe for currency.calendar.business_days with a country (or calendar) parameter so US/UK/IN holidays are excluded. The current implementation only knows weekends.cron_describe("0 9 * * 1-5") → human English; cron_next(expr, n) → next N firing times. Models routinely misread cron fields.count_tokens(text, model) via tiktoken / Anthropic tokenizer. Lets an agent budget its own prompts and outputs instead of guessing.If you want one of these, open an issue (or a PR — each is a small self-contained module that fits the existing tools/ layout).
Recommended: no install — run on demand via uv:
uvx gnomon-mcp # serves stdio MCP, ready for any client
uvx gnomon-mcp --demo # call every tool once and print the results (no MCP client needed)
Or install globally:
pip install gnomon-mcp
All recipes assume uvx gnomon-mcp. If you prefer a pinned install, swap the command for gnomon-mcp (with no uvx).
claude mcp add gnomon -- uvx gnomon-mcp
Or edit ~/.claude.json / a project .mcp.json:
{
"mcpServers": {
"gnomon": { "command": "uvx", "args": ["gnomon-mcp"] }
}
}
claude_desktop_config.json:
{
"mcpServers": {
"gnomon": { "command": "uvx", "args": ["gnomon-mcp"] }
}
}
~/.cursor/mcp.json (or .cursor/mcp.json in a project):
{
"mcpServers": {
"gnomon": { "command": "uvx", "args": ["gnomon-mcp"] }
}
}
~/.continue/config.yaml:
mcpServers:
- name: gnomon
command: uvx
args: ["gnomon-mcp"]
Spawn uvx gnomon-mcp as a subprocess and speak MCP over stdin/stdout. That is the entire integration.
For team-shared instances or agents that can't spawn a local subprocess:
uvx gnomon-mcp --transport streamable-http --host 0.0.0.0 --port 8000
# also supported: --transport sse
Then point your MCP client at http://<host>:8000/mcp (or /sse for the SSE transport).
The MCP tool descriptions are intentionally terse to keep persistent context cost minimal (~150 tokens for all four tools). The richer "when to reach for gnomon" guidance lives in a Claude Code skill that loads on demand.
The plugin wires both the MCP server and the skill in one shot. Inside Claude Code:
/plugin marketplace add lihtness/gnomon-mcp
/plugin install gnomon@gnomon-mcp
That registers gnomon as an MCP server (auto-starts via uvx) and installs the on-demand skill. Skill body loads only when the task triggers it — persistent context stays ~150 tokens for the four tool descriptions plus ~40 tokens for the skill's name + summary.
If you've already wired the MCP server with claude mcp add gnomon -- uvx gnomon-mcp and only want the skill:
mkdir -p ~/.claude/skills/gnomon
curl -fsSL https://raw.githubusercontent.com/lihtness/gnomon-mcp/main/skills/gnomon/SKILL.md \
-o ~/.claude/skills/gnomon/SKILL.md
For agents without skill support, paste this short version into your system prompt or CLAUDE.md:
You have gnomon: deterministic tools for dates and math. Use them instead
of guessing.
- `now` — current moment (your training cutoff isn't today).
- `calendar(ops)` — batch date math: diff/until/since/add/weekday/
business_days/parse (natural language)/format.
- `calc(expressions)` — batch Python eval; math + statistics + common
builtins pre-loaded.
- `calc_convert(value, from, to)` — unit conversion via Pint.
Both batch tools take a list and return a list. Prefer one batched call
over many small ones.
git clone https://github.com/lihtness/gnomon-mcp
cd gnomon-mcp
pip install -e ".[dev]"
pytest
MIT
Run Claude Code as an MCP server so any agent can delegate coding tasks to it
Browser automation using accessibility snapshots instead of screenshots
Secure MCP server for MySQL database interaction, queries, and schema management
English-first Korean equity intelligence MCP — DART filings, foreign-holder 5%-rule flows, activist filings, KRX news. F