MaScQA: investigating materials science knowledge of large language models
Digital Discovery2023Vol. 3(2), pp. 313–327
Citations Over TimeTop 10% of 2023 papers
Abstract
Different materials science domains from which questions are present in Materials Science Question Answering (MaScQA) database.
Related Papers
- → An analysis of the AskMSR question-answering system(2002)315 cited
- Overview of Question-Answering(2002)
- → Natural Language Processing based New Approach to Design Factoid Question Answering System(2020)11 cited
- A Survey on Question and Answering Systems(2012)
- Susquehanna Chorale Spring Concert "Roots and Wings"(2017)