核心概念
Enhancing Large Language Model performance through prompt selection and augmentation for code generation.
統計
Our algorithm demonstrates an improvement in performance on the GSM8K and SVAMP benchmarks, with increases of 0.3% and 1.1% respectively.
In simulated tabletop environments, our algorithm surpasses the Code-as-Policies approach by achieving a 3.4% increase in successful task completions.
引用
"Our approach incorporates a multi-stage example augmentation scheme combined with an example selection scheme."
"This algorithm also offers important benefits for industrial process automation by streamlining the development and deployment process."