Decomposed Automation Correction
Decomposed automation correction aims to improve the accuracy and efficiency of automated systems, particularly in complex tasks like text-to-SQL conversion and scientific research. Current research focuses on leveraging large language models (LLMs) and other AI techniques, such as neural networks, reinforcement learning, and finite automata, to decompose complex problems into smaller, more manageable sub-tasks for improved correction. This approach holds significant promise for enhancing the reliability and usability of automated systems across diverse fields, from manufacturing and logistics to healthcare and scientific discovery.
Papers
April 18, 2022
April 1, 2022
February 26, 2022
February 19, 2022
February 15, 2022
February 12, 2022
January 25, 2022
January 14, 2022
January 7, 2022
December 17, 2021
December 8, 2021