Large language models (LLMs) have significantly transformed the landscape of artificial intelligence by demonstrating their ability in generating human-like text across diverse topics. However, despite their impressive capabilities, LLMs lack recent information and often employ imprecise language, which can be detrimental in domains where accuracy is crucial, such as climate change. In this study, we make use of recent ideas to harness the potential of LLMs by viewing them as agents that access multiple sources, including databases containing recent and precise information about organizations, institutions, and companies. We demonstrate the effectiveness of our method through a prototype agent that retrieves emission data from ClimateWatch (https://www.climatewatchdata.org/) and leverages general Google search. By integrating these resources with LLMs, our approach overcomes the limitations associated with imprecise language and delivers more reliable and accurate information in the critical domain of climate change. This work paves the way for future advancements in LLMs and their application in domains where precision is of paramount importance.
翻译:大规模语言模型(LLMs)通过在各种主题上生成人类化文本的能力,已经在人工智能领域中显著地改变了形势。然而,尽管它们具有令人印象深刻的能力,LLMs缺乏最新信息并经常使用不准确的语言,这在准确性至关重要的领域(例如气候变化)可能会带来不利影响。在本研究中,我们利用最近的思想,通过将LLMs视为可以访问多个来源的代理来利用LLMs的潜力,包括包含有关组织、机构和公司最新及准确信息的数据库。我们通过一个原型代理演示了我们方法的有效性,该代理从ClimateWatch(https://www.climatewatchdata.org/)检索排放数据并利用普通的Google搜索。通过将这些资源与LLMs集成,我们的方法克服了与不准确语言相关的限制,在气候变化关键领域中提供了更可靠和准确的信息。这项工作为LLMs的未来发展以及它们在准确性至关重要的领域中的应用铺平了道路。