Measures and rewards AI learning through the derivative of data compression efficiency to enable intrinsic curiosity and creative exploration.
The Compression Progress skill implements Schmidhuber's formal theory of curiosity and creativity, allowing Claude to treat learning as a compression improvement process. By calculating the difference between a model's current and previous ability to compress data, this skill generates an intrinsic reward signal that drives exploration and curriculum optimization. It is ideal for developers building reinforcement learning agents or self-improving systems that need to quantify 'interestingness' and prioritize tasks with the highest learning potential.
主要功能
01Integrates with GF(3) triads for compositional AI coherence
02Calculates intrinsic curiosity rewards based on compression improvement rates
03Visualizes learning trajectories through mathematical compression logs
04Identifies creative data patterns by maximizing expected compression gains
058 GitHub stars
06Generates optimal curiosity-driven curricula for efficient task sequencing
使用场景
01Measuring the novelty and interestingness of data in large-scale datasets