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Buffer of Thoughts: Thought-Augmented Reasoning with Large Language Models

Papers Read on AI

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Intro

The chapter presents the Buffer of Thoughts (BOT) framework as a novel approach to improve the accuracy, efficiency, and resilience of large language models in reasoning tasks. By incorporating a meta-buffer, thought templates, and a buffer manager, BOT demonstrates superior performance on various tasks, highlighting its generalization capability and robustness.

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