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Theoretically optimal learning via algorithmic information theory and Solomonoff induction

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CI PyPI version Python 3.9+ License


Universal Learning

🌟 Theoretically optimal learning via algorithmic information theory and Solomonoff induction

Solomonoff, R. J. (1964) - "A Formal Theory of Inductive Inference"

📦 Installation

pip install universal-learning

🎓 About the Implementation

Implemented by Benedict Chen - bringing foundational AI research to modern Python.

📧 Contact: benedict@benedictchen.com


💰 Support This Work - Donation Appreciated!

This implementation represents hundreds of hours of research and development. If you find it valuable, please consider donating:

💳 DONATE VIA PAYPAL - CLICK HERE

Your support helps maintain and expand these research implementations! 🙏

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