IPATool-py: download ipa easily

Overview

IPATool-py

Python version of IPATool!

Installation

pip3 install -r requirements.txt

Usage

Quickstart: download app with specific bundleId into DIR:

python3 main.py lookup -b com.touchingapp.potatsolite -c JP download -e APPLE_EMAIL -p APPLE_PWD -o DIR

Specific usage:

  1. Query app info:

    python3 main.py lookup -b com.touchingapp.potatsolite -c JP
    
  2. Download app with specific appVerId (salableAdamId):

    python3 main.py downlaod -i 123456 -e APPLE_EMAIL -p APPLE_PWD
    

    Can also supply an optional output dir (e.g. ipa_output):

    python3 main.py downlaod -i 123456 -e APPLE_EMAIL -p APPLE_PWD -o ipa_output
    
  3. Get history version (supply an appVerId for target app):

    python3 main.py historyver -i 123456 -e APPLE_EMAIL -p APPLE_PWD
    
  4. Chain multiple command, last command's output will be passed to next command (so you don't need to supply some arguments like appVerId)

    python3 main.py lookup -b com.touchingapp.potatsolite -c JP historyver -e APPLE_EMAIL -p APPLE_PWD
    
  5. Use json output for program using

    python3 main.py --json lookup -b com.touchingapp.potatsolite -c JP historyver -e APPLE_EMAIL -p APPLE_PWD
    

Development

  • All requests' reqBody and respBody are modeled using modified JSONSchema2PoPo2 (see my NyaMisty/JSONSchema2PoPo2), you can regenerate the binding by cd into reqs/schemas and execute python3 -m schema_defs

Credit

  • Thanks @majd's ipatool, which is written in swift
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