March 21, 2024, 3:15 p.m. | Ben Brubaker

Quanta Magazine www.quantamagazine.org

Large language models do better at solving problems when they show their work. Researchers are beginning to understand why.

The post How Chain-of-Thought Reasoning Helps Neural Networks Compute first appeared on Quanta Magazine

compute computer science language language models large language large language models magazine networks neural networks quanta quanta magazine reasoning researchers show thought work

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