Alpha-Zero - Telegram Group Manager Bot Written In Python Using Pyrogram

Overview

Alpha Zero Bot

Telegram Group Manager Bot + Userbot Written In Python Using Pyrogram.

made-with-python built-with-love
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Ready to use method

A Support Group and ready-to-use running instance of this bot can be found on Telegram
AlphaZeroBot | Vnd Bot Support

⇝ Requirements ⇜

Python3.9 | Telegram API Key | Telegram Bot Token | MongoDB URI

⇝ Install Locally Or On A VPS ⇜

$ git clone https://github.com/VenujaTSB/Alpha-Zero
$ cd Alpha-Zero
$ pip3 install -U -r requirements.txt
$ cp sample_config.py config.py

Edit config.py with your own values

⇝ Run Directly ⇜

$ python3 -m Alpha

Deploy

Generating Pyrogram Session For Heroku

$ git clone https://github.com/VenujaTSB/Alpha-Zero
$ cd Alpha-Zero
$ pip3 install pyrogram TgCrypto
$ python3 str_gen.py

⇝ Docker ⇜

$ git clone https://github.com/VenujaTSB/Alpha-Zero
$ cd Alpha-Zero
$ cp sample_config.env config.env

Edit config.env with your own values

$ sudo docker build . -t Alpha
$ sudo docker run Alpha

⇝ Write new modules ⇜

# Add license text here, get it from below

from Alpha import app # This is bot's client
from Alpha import app2 # userbot client, import it if module is related to userbot
from pyrogram import filters # pyrogram filters
...


# For /help menu
__MODULE__ = "Module Name"
__HELP__ = "Module help message"


@app.on_message(filters.command("start"))
async def some_function(_, message):
    await message.reply_text("I'm already up!!")

# Many useful functions are in, Alpha/utils/, Alpha, and Alpha/core/

And put that file in Alpha/modules/, restart and test your bot.

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