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.
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_baseencoding (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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