Manglify
Manglify is a lightweight, fast, and open-source Python 3.13 obfuscator designed to provide decent protection for your Python code.
Install / Use
/learn @ImInTheICU/ManglifyREADME
Manglify
Manglify is a lightweight, fast, and open-source Python 3.12 obfuscator designed to provide decent protection for your Python code.
Features
- Lightweight: Minimal resource usage, easy to set up and run.
- Fast: Obfuscation process is fast, efficient, and has multiple layers.
- Decent Protection: Provides a reasonable level of obfuscation for Python 3.13+ code. Having multiple layers of protection.
- Open Source: Fully open-source under the GPL-3.0 license.
Requirements
- Python 3.13 or later (it may be cross-compatible with older Python versions, but not guaranteed)
Note
I will be updating this shortly. I am releasing this beta version for anyone looking for a decent Python 3.12 obfuscator. Currently, it offers decent protection, but soon I’ll update it to provide much stronger protection. If you have any questions, feel free to reach out on Discord at pingulovesu.
License
Manglify is licensed under the GPL-3.0 license. See LICENSE for details.
Authors
<a href="https://github.com/ImInTheICU/Manglify/graphs/contributors"><img src="https://contrib.rocks/image?repo=ImInTheICU/Manglify"/></a>
Feel free to contribute, report issues, or suggest improvements to help make Manglify better!
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