Cardesc
๐ณ Cardesc - is a universal financial transaction demo page with data logging for educational purposes.
Install / Use
/learn @oldnum/CardescREADME
About ๐
๐ณ Cardesc - is a universal financial transaction demo page with data logging for educational purposes.
Requirements โ๏ธ
- Python 3
Installation โ๏ธ
apt update && apt upgrade
git clone https://github.com/oldnum/cardesc
cd cardesc
pip install -r requirements.txt
python main.py
Demo Results ๐
- Sending demo results to Telegram bot API for the user CHAT_ID
Disclaimer ๐ฐ
The information presented here is intended solely for educational and research purposes. It helps to better understand how systems work and how to apply secure practices in software development. ๐
The author does not endorse or encourage the use of this information for illegal purposes ๐จ
Use this knowledge responsibly and follow best practices in software development. ๐
Donation ๐ฐ
- ๐ BTC:
bc1qqxzd80fgzqyy4wjfqsweplfmw3av7hxp07eevx - ๐ ETH:
0x20be839c0b9d888e5DD153Cc55A4b93bb8496c48 - ๐ USDT (TRC20):
TY6SjeCBE4TRedVCbqk3XLqk5F4UMSGYqw
Related Skills
claude-opus-4-5-migration
111.3kMigrate prompts and code from Claude Sonnet 4.0, Sonnet 4.5, or Opus 4.1 to Opus 4.5
model-usage
352.5kUse CodexBar CLI local cost usage to summarize per-model usage for Codex or Claude, including the current (most recent) model or a full model breakdown. Trigger when asked for model-level usage/cost data from codexbar, or when you need a scriptable per-model summary from codexbar cost JSON.
TrendRadar
51.2kโญAI-driven public opinion & trend monitor with multi-platform aggregation, RSS, and smart alerts.๐ฏ ๅๅซไฟกๆฏ่ฟ่ฝฝ๏ผไฝ ็ AI ่ๆ ็ๆงๅฉๆไธ็ญ็น็ญ้ๅทฅๅ ท๏ผ่ๅๅคๅนณๅฐ็ญ็น + RSS ่ฎข้ ๏ผๆฏๆๅ ณ้ฎ่ฏ็ฒพๅ็ญ้ใAI ๆบ่ฝ็ญ้ๆฐ้ป + AI ็ฟป่ฏ + AI ๅๆ็ฎๆฅ็ดๆจๆๆบ๏ผไนๆฏๆๆฅๅ ฅ MCP ๆถๆ๏ผ่ต่ฝ AI ่ช็ถ่ฏญ่จๅฏน่ฏๅๆใๆ ๆๆดๅฏไธ่ถๅฟ้ขๆต็ญใๆฏๆ Docker ๏ผๆฐๆฎๆฌๅฐ/ไบ็ซฏ่ชๆใ้ๆๅพฎไฟก/้ฃไนฆ/้้/Telegram/้ฎไปถ/ntfy/bark/slack ็ญๆธ ้ๆบ่ฝๆจ้ใ
mcp-for-beginners
15.8kThis open-source curriculum introduces the fundamentals of Model Context Protocol (MCP) through real-world, cross-language examples in .NET, Java, TypeScript, JavaScript, Rust and Python. Designed for developers, it focuses on practical techniques for building modular, scalable, and secure AI workflows from session setup to service orchestration.
