telecheck - Simple CLI Tool For Generating Available Telegram Usernames

  •        6

Just fill an issue and describe it. I'll check it ASAP! or send an email to sepand@qpage.ir. Remember to write a few tests for your code before sending pull requests.

https://github.com/sepandhaghighi/telecheck

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