Researchers explored how large language models (LLMs) can assist astronomy research but warned of ethical challenges, including hallucinations and over-reliance on these tools. They emphasize the need ...
*Important notice: arXiv publishes preliminary scientific reports that are not peer-reviewed and, therefore, should not be regarded as conclusive, guide clinical practice/health-related behavior, or ...
As LLMs reshape astronomy research, scientists are discovering both groundbreaking benefits and serious risks—can AI enhance productivity without compromising scientific integrity? Image Credit: ...
Georgetown University researchers reveal how AI is reshaping climate research worldwide, with China at the forefront of driving technological advances to combat climate change. Perspective: Climate ...
In a paper published in the journal Information, researchers in Germany and Portugal examined the potential of chat generative pre-trained transformers (ChatGPTs) to aid in secure software development ...
Building trustworthy AI: A new study delves into how large language models can better recognize their limitations and express knowledge faithfully, paving the way for more reliable and honest AI ...
In a paper published in the journal Scientific Data, researchers addressed the limitations of artificial intelligence (AI) models in exploring materials by creating a dataset of exactly 1,453,493 ...
A new machine learning model not only improves the prediction accuracy of disturbances in drone formations but also enhances operator decision-making through explainability, helping UAV swarms stay in ...
Once submitted, we will try and place you in contact with a suitable Project Management supplier within 48 hours.
Once submitted, we will try and place you in contact with a suitable AI Servers supplier within 48 hours.
Despite their power, larger AI models are prone to surprising errors, generating wrong answers with confidence—researchers call for new strategies to improve reliability in critical areas. Research: ...
This breakthrough in dynamic job allocation helps optimize the coordination of harvesters and transport vehicles, reducing costs and increasing efficiency even in unpredictable farm environments.