Persistent skill rating for debate across 6 dimensions
2Sense (Debate Fingerprint) is a platform that scores debate performance across six dimensions (Logic, Structure, Responsiveness, Persuasion, Emotional Control, Clarity) on a 0-1000 scale, creating a persistent skill profile. It uses LLMs to evaluate arguments and track improvement over time, helping debaters practice and measure their skills like a chess rating.
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