Home / Token cost / Pypi:joplin

The Pypi:joplin MCP server costs 4,440 tokens before the first call.

Connect Pypi:joplin and its 32 tool definitions are loaded into the model's context on every request — 2.2% of a 200k window spent before your agent does anything.

QUICK ANSWER The Pypi:joplin MCP server's tool definitions consume 4,440 tokens — 2.3× the median MCP server (1,905 tokens). A scoped grant exposing only the tools you use cuts that roughly in proportion.

MEASURED FROM SCHEMAS 32 tools · 4,440 tokens · 2.2% of 200k · 0.4% of 1M Method →

What that buys before your agent starts working.

Tool definitions are overhead: they occupy context on every request and compete with your code, documents and conversation history for the same window.

200K WINDOW 2.2%
1M WINDOW 0.4%

Corpus context: Pypi:joplin ranks #1088 of 3,213 measured MCP servers by definition cost. The median is 1,905 tokens, p90 is 7,952, and the heaviest (Fusionauth) is 183,337 — 92% of a 200k window on its own.

Where the 4,440 tokens go.

Each row is one tool definition as a tools/list entry — name, description and input schema — counted with o200k_base. Average: 139 tokens per tool.

ToolCategoryTokens% of server
search_notes Read 409 9.2%
update_note Write 245 5.5%
create_note Write 243 5.5%
get_notes_by_tag Read 239 5.4%
list_all_notes Read 237 5.3%
get_notebook_notes Read 217 4.9%
list_notebooks Read 204 4.6%
list_all_resources Read 203 4.6%
get_resource_notes Read 193 4.3%
list_all_revisions Read 193 4.3%
get_note_attachments Read 192 4.3%
list_tags Read 181 4.1%
get_revision Read 152 3.4%
update_resource Write 117 2.6%
get_notebook_by_id Read 111 2.5%
upload_attachment Write 111 2.5%
rename_tag Write 110 2.5%
get_tag_by_id Read 96 2.2%
update_notebook Write 94 2.1%
add_tags_to_note Write 89 2.0%
remove_tags_from_note Destructive 81 1.8%
download_attachment Read 80 1.8%
create_notebook Write 77 1.7%
move_note_to_notebook Write 74 1.7%
delete_resource Destructive 73 1.6%
prepend_to_note Read 66 1.5%
append_to_note Read 65 1.5%
get_note Read 64 1.4%
get_resource_metadata Read 60 1.4%
delete_tag Destructive 58 1.3%
delete_notebook Destructive 54 1.2%
delete_note Destructive 52 1.2%

Most agents use a handful of these tools. They pay for all 32.

A PolicyLayer grant exposes only the tools you allow — ungranted definitions are filtered out of the tool list, so they never enter the context window. Estimates below assume typical-weight tools (139 tokens each).

Grant scopeDefinition costReduction
All 32 tools (no gateway) 4,440 tokens
3 granted tools ~416 tokens −91%
5 granted tools ~694 tokens −84%
10 granted tools ~1,388 tokens −69%

Pypi:joplin token-cost questions.

How many tokens does the Pypi:joplin MCP server use?+

Its 32 tool definitions total 4,440 tokens — 2.2% of a 200k context window — measured with tiktoken o200k_base over the serialised tools/list payload. Exact counts vary slightly by client and model.

Why does Pypi:joplin consume tokens before I send a message?+

MCP clients load every connected server's tool definitions — name, description, and input schema — into the model's context so it knows what it can call. That payload is charged against your context window on every request, whether or not a tool is used.

How do I reduce Pypi:joplin's token usage?+

Expose fewer tools. A PolicyLayer grant scopes Pypi:joplin to only the tools you allow — ungranted definitions are filtered out of the tool list, so they never enter the context window. A grant of 3 typical tools costs roughly 416 tokens, a 91% reduction.

Does deferred tool loading fix this?+

Partially, in some clients. Claude Code defers MCP tool schemas behind a tool-search step by default, and VS Code has experimental grouping — but you still pay tokens per search and reload, and Cursor, Windsurf and Gemini CLI load definitions upfront. Reducing the exposed tool set cuts the cost in every client.

How these numbers were measured.

01
Serialisation

Each tool is serialised as a tools/list entry — name, description, input schema — from the schemas in the PolicyLayer scan database. Clients differ slightly in framing, so treat counts as close estimates.

02
Tokeniser

tiktoken o200k_base (GPT-4o/o-series). Anthropic's current tokeniser isn't published, so Claude's exact counts will differ; for English text and JSON schemas the totals are close enough to treat these as estimates.

03
Deferred loading

Some clients now defer schema loading (Claude Code's tool search; VS Code experimental grouping). You still pay per search and reload — and Cursor, Windsurf and Gemini CLI load everything upfront.

Computed 07-06-2026 from the PolicyLayer scan database over all 32 catalogued Pypi:joplin tools. Counts refresh with every site build.

Expose only the tools you use — the rest never enter your context.

A PolicyLayer grant scopes Pypi:joplin to the tools you actually allow. Ungranted definitions never load, and every call that does run is checked against policy first.

Free to start. No card required.

4,600+ MCP servers and 31,000+ tools scanned and risk-classified.

// GET IN TOUCH

Have a question or want to learn more? Send us a message.

Message sent.

We'll get back to you soon.