token-enhancer
Health Gecti
- License — License: MIT
- Description — Repository has a description
- Active repo — Last push 0 days ago
- Community trust — 45 GitHub stars
Code Uyari
- network request — Outbound network request in proxy.py
Permissions Gecti
- Permissions — No dangerous permissions requested
This tool is a local proxy and MCP server that fetches web pages and strips away HTML noise, scripts, and ads. It returns clean text to an AI agent's context window, drastically reducing token usage without relying on an external LLM.
Security Assessment
The overall risk is Low. The tool acts as a proxy, meaning its core function is to make outbound network requests to external websites based on the URLs your agent provides. This is expected behavior, not a vulnerability. It does not request dangerous system permissions, and no hardcoded secrets or API keys were found in the codebase. It runs locally and does not appear to execute hidden shell commands or access unauthorized sensitive data. Because it fetches live web content, you should still be mindful of what URLs your agents are configured to access.
Quality Assessment
The project is actively maintained, with its last code push occurring today. It uses the standard, highly permissive MIT license. It has garnered 45 GitHub stars, which indicates a fair amount of early community interest and trust for a niche developer tool. The repository is well-documented, offering clear instructions for multiple integration methods including Claude Desktop, Cursor, and LangChain.
Verdict
Safe to use.
A local proxy that strips web pages down to clean text before they enter your AI agent's context window. 704K tokens → 2.6K tokens. No LLM required.
Token Enhancer
A local proxy that strips web pages down to clean text before they enter your AI agent's context window.
One fetch of Yahoo Finance: 704,760 tokens → 2,625 tokens. 99.6% reduction.
No API key. No LLM. No GPU. Just Python.
The Problem
AI agents waste most of their token budget loading raw HTML pages into context. A single Yahoo Finance page is 704K tokens of navigation bars, ads, scripts, and junk. Your agent pays for all of it before any reasoning happens.
The Solution
Token Enhancer sits between your agent and the web. It fetches the page, strips the noise, caches the result, and returns only clean data.
| Source | Raw Tokens | After Proxy | Reduction |
|---|---|---|---|
| Yahoo Finance (AAPL) | 704,760 | 2,625 | 99.6% |
| Wikipedia article | 154,440 | 19,479 | 87.4% |
| Hacker News | 8,662 | 859 | 90.1% |
| GitHub repo page | 171,234 | 6,976 | 95.9% |
Install
pip install xelektron-token-enhancer
Quick Start (from source)
git clone https://github.com/xelektron/token-enhancer.git
cd token-enhancer
chmod +x install.sh
./install.sh
source .venv/bin/activate
python3 test_all.py --live
Usage
As a standalone proxy
source .venv/bin/activate
python3 proxy.py
Then in another terminal:
curl -s http://localhost:8080/fetch \
-H "content-type: application/json" \
-d '{"url": "https://finance.yahoo.com/quote/AAPL/"}' \
| python3 -m json.tool
As an MCP Server (Claude Desktop, Cursor, OpenClaw)
This is the plug and play option. Your AI agent discovers the tools automatically and uses them on its own.
pip install xelektron-token-enhancer
Claude Desktop: Add to your config file
Mac: ~/Library/Application Support/Claude/claude_desktop_config.json
Windows: %APPDATA%\Claude\claude_desktop_config.json
{
"mcpServers": {
"token-enhancer": {
"command": "python3",
"args": ["-m", "mcp_server"]
}
}
}
Cursor: Add to .cursor/mcp.json in your project:
{
"mcpServers": {
"token-enhancer": {
"command": "python3",
"args": ["-m", "mcp_server"]
}
}
}
Once connected, your agent gets three tools:
fetch_clean fetches any URL and returns clean text (86 to 99% smaller)
fetch_clean_batch fetches multiple URLs at once
refine_prompt optional prompt cleanup, shows both versions so you decide
As a LangChain Tool
from langchain.tools import tool
import requests
@tool
def fetch_clean(url: str) -> str:
"""Fetch a URL and return clean text with HTML noise removed."""
r = requests.post("http://localhost:8080/fetch", json={"url": url})
return r.json()["content"]
Add fetch_clean to your agent's tool list. Start python3 proxy.py first.
Features
Data Proxy (Layer 2)
Fetches any URL, strips HTML/JSON noise, returns clean text. Caches results so repeat fetches are instant. Handles HTML, JSON, and plain text.
Prompt Refiner (Layer 1, opt in)
Strips filler words and hedging while protecting tickers, dates, money values, negations, and conversation references. You see both versions and choose.
MCP Server
Plug into Claude Desktop, Cursor, OpenClaw, or any MCP client. Agent discovers the tools and uses them automatically.
API Endpoints (proxy mode)
| Endpoint | Method | Description |
|---|---|---|
/fetch |
POST | Fetch URL, strip noise, return clean data |
/fetch/batch |
POST | Fetch multiple URLs at once |
/refine |
POST | Opt in prompt refinement |
/stats |
GET | Session statistics |
Run Tests
python3 test_all.py # Layer 1 only (offline)
python3 test_all.py --live # Layer 1 + Layer 2 (needs internet)
Roadmap
- Layer 1: Prompt refiner
- Layer 2: Data proxy with caching
- MCP server integration
- LangChain tool example
- Browser fallback (Playwright) for bot blocked sites
- Authenticated session management
- Layer 3: Output/history compression
- CLI tool
- Dashboard UI
Requirements
Python 3.10+. No API keys. No GPU.
License
MIT
Yorumlar (0)
Yorum birakmak icin giris yap.
Yorum birakSonuc bulunamadi