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MCP server for analyzing and optimizing context window token usage — audit tool definitions, compres
MCP server for analyzing and optimizing context window token usage — audit tool definitions, compres
token-lens-mcp is a well-structured MCP server for analyzing and optimizing token usage in context windows. The code demonstrates good security practices with no authentication mechanisms required (appropriate for a token analysis tool), no malicious patterns, no hardcoded credentials, and minimal code quality concerns. Permissions align appropriately with the server's purpose of analyzing tool definitions and schemas. Supply chain analysis found 4 known vulnerabilities in dependencies (0 critical, 3 high severity). Package verification found 1 issue.
4 files analyzed · 8 issues found
Security scores are indicators to help you make informed decisions, not guarantees. Always review permissions before connecting any MCP server.
This plugin requests these system permissions. Most are normal for its category.
Add this to your MCP configuration file:
{
"mcpServers": {
"io-github-mdfifty50-boop-token-lens": {
"args": [
"-y",
"token-lens-mcp"
],
"command": "npx"
}
}
}From the project's GitHub README.
MCP server for analyzing and optimizing context window token usage. MCP tool definitions consume 40-72% of context windows before any user work begins — this server helps you measure, compress, and eliminate that waste.
npx token-lens-mcp
Add to claude_desktop_config.json:
{
"mcpServers": {
"token-lens": {
"command": "npx",
"args": ["token-lens-mcp"]
}
}
}
claude mcp add token-lens -- npx token-lens-mcp
Analyze the token cost of your MCP tool definitions. Estimates tokens per tool using chars/4 approximation on the full JSON definition.
Params:
tools — Array of {name, description, schema} objectsReturns: Per-tool token cost (sorted by cost), total tokens, percentage of 128K/200K/1M context windows.
Given a task description, recommend the minimal set of tools needed. Uses keyword matching and category relevance scoring.
Params:
task_description — What you're trying to accomplishavailable_tools — Array of {name, description, category?}Returns: Recommended tools sorted by relevance, excluded tools, estimated tokens saved.
Compress verbose tool schemas to reduce token usage.
Params:
tool_name — Name of the toolschema — JSON Schema object to compresslevel — "light" | "medium" | "aggressive"Levels:
Returns: Compressed schema, original/compressed token counts, savings percentage.
Track which tools are actually called vs loaded during a session.
Params:
session_id — Unique session identifieraction — "register_tool" | "log_call" | "report"tool_name — Tool name (required for register_tool/log_call)tool_tokens — Token cost (for register_tool, default 50)Report returns: Loaded vs used counts, waste percentage, unused tools ranked by token cost.
Identify tools that can be safely removed based on usage patterns.
Params:
usage_history — Array of {tool_name, call_count, last_used_days_ago}Scoring: never_used (priority 3) > not_used_30_days (priority 2) > rarely_used (priority 1)
Returns: Removal candidates with reasons and estimated token savings.
Full context window health check combining audit, removal suggestions, and compression recommendations.
Params:
tools — Array of tool definitionsusage_history — Optional usage history arrayReturns: Executive summary with health grade (excellent/good/fair/poor), audit results, removal suggestions, compression opportunities, and actionable recommendations.
Best practices guide for reducing MCP context window bloat, including schema design tips, token budget guidelines, and dynamic tool loading strategies.
npm install
npm test
npm run dev # watch mode
MIT
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