cyzhh/MMOS
Mix of Minimal Optimal Sets (MMOS) of dataset has two advantages for two aspects, higher performance and lower construction costs on math reasoning.
This project offers curated datasets and specialized large language models designed to improve how AI models solve complex math problems. It takes diverse mathematical reasoning examples as input and produces more accurate and efficient problem-solving AI models. Data scientists and AI researchers focused on enhancing AI's mathematical capabilities would find this valuable.
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Use this if you are developing or fine-tuning AI models that need to excel at arithmetic reasoning, math word problems, or automated theorem proving.
Not ideal if you are looking for a general-purpose AI model for text generation or simple question-answering outside of mathematical domains.
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Python
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Last pushed
Jul 27, 2024
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