Dec. 18, 2023, 4:29 a.m. | Tanya Malhotra

MarkTechPost www.marktechpost.com

Large Language Models (LLMs) are the latest advancement in the exponentially evolving field of Artificial Intelligence (AI). Though these models demonstrate incredible performance in tasks including text generation, question answering, text summarization, etc., there comes a challenge with the accuracy and security of the data they generate. These models can sometimes fabricate or produce inaccurate […]


The post Researchers From Stanford University Introduce A Unified AI Framework For Corroborative And Contributive Attributions In Large Language Models (LLMs) appeared first on …

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