token-saver-mcp

token-saver-mcp

Automatically reduces token usage in Claude Code sessions using algorithmic optimizations like code compression, smart file reading, output summarization, and prompt rewriting, with no extra API calls or cost.

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README

token-saver-mcp

An MCP server plugin for Claude Code that automatically reduces token usage across your sessions. All optimizations are purely algorithmic — no extra API calls, no added cost.

Tools

Tool What it does
compress_text Strips comments (//, /* */, #, <!-- -->), blank lines & whitespace from code/prose. String-aware: never corrupts URLs, #hashtag/#fff hex colors, or markers inside string literals; comments inside template-literal ${} expressions are stripped
smart_read_file Reads only relevant sections of a file. Structure-aware across JS/TS, Python, Go, Rust, Java & C#: returns the complete enclosing function/class/interface around keyword matches, with a configurable fallback window. Rejects binary files
summarize_output Truncates long command output / logs to a token budget. Preserves error/failure lines anywhere in the output, keeps head + tail, collapses duplicate lines
summarize_diff Compacts a unified git diff: keeps file headers, hunk headers & changed lines; strips context lines and index/mode noise. Renames and binary files are annotated
count_tokens Counts token usage for any text (cl100k_base encoding)
generate_claudeignore Generates a .claudeignore covering Node, Python, Rust, Go, Java, Ruby, PHP & Terraform artifacts plus modern tooling caches (Turbo, Vercel, Nuxt, SvelteKit, Storybook), seeded from your existing .gitignore
optimize_prompt Rewrites verbose prompts to be concise (~40 filler-phrase rules). Fenced code blocks and inline code are passed through untouched

All tools return plain text with a compact stats footer — results are deliberately not JSON-wrapped, since JSON escaping of newlines and quotes would inflate the very token count this server exists to reduce.

Note on token counts: the server uses the cl100k_base encoding (via tiktoken), which is OpenAI's tokenizer. Claude's tokenizer differs, so all counts are approximations — typically within ~10–20% of Claude's actual usage. Relative savings percentages are unaffected.

Benchmark results

Measured against real code fixtures and realistic prompt inputs. See benchmark/BENCHMARK.md for full methodology.

Tool Avg token reduction Best case
compress_text 31% 53% on JS with JSDoc
smart_read_file 44%* 81% extracting one function from a module
summarize_output 76% 84% on long build output
summarize_diff 50% 53% on a multi-file diff with renames
optimize_prompt 28% 52% on heavily padded prompts
count_tokens accuracy tool — no reduction metric
generate_claudeignore structural correctness tool — no reduction metric

* the smart_read_file average includes tiny synthetic fixtures used as multi-language correctness tests; on realistic files it ranges 38–81%.

Run the benchmark yourself:

npm run benchmark

Installation

1. Clone and install

git clone <your-repo-url> token-saver-mcp
cd token-saver-mcp
npm install

2. Add to Claude Code

claude mcp add token-saver -- node /absolute/path/to/token-saver-mcp/src/index.js

Or manually edit ~/.claude.json under mcpServers:

{
  "mcpServers": {
    "token-saver": {
      "command": "node",
      "args": ["/absolute/path/to/token-saver-mcp/src/index.js"]
    }
  }
}

3. Verify

claude mcp list

You should see token-saver listed as connected.


Usage examples

Use smart_read_file on src/api/routes.js, focus on "authentication" and "middleware"
Generate a .claudeignore for my project at /home/user/myapp and write it to disk
Count tokens in this output: [paste output]
Compress this before sending: [paste code]

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