Dzung Phan, Vinicius Lima
INFORMS 2023
The advancement of large language models (LLMs) has led to a greater challenge of having a rigorous and systematic evaluation of complex tasks performed, especially in enterprise applications. Therefore, LLMs need to be able to benchmark enterprise datasets for various tasks. This work presents a systematic exploration of benchmarking strategies tailored to LLM evaluation, focusing on the utilization of domain-specific datasets and consisting of a variety of NLP tasks. The proposed evaluation framework encompasses 25 publicly available datasets from diverse enterprise domains like financial services, legal, cyber security, and climate and sustainability. The diverse performance of 13 models across different enterprise tasks highlights the importance of selecting the right model based on the specific requirements of each task. Code and prompts are available on GitHub.
Dzung Phan, Vinicius Lima
INFORMS 2023
Ben Fei, Jinbai Liu
IEEE Transactions on Neural Networks
Tim Erdmann, Stefan Zecevic, et al.
ACS Spring 2024
Imran Nasim, Melanie Weber
SCML 2024