News
In this talk, we will introduce a state-of-the-art scientific machine learning paradigm - differentiable physics (DiffPhys ... Bio: Romit Maulik is an Assistant Professor of Data Science in the ...
In business, AI and machine learning ... the evolution of data-driven decision making, as it can become a critical tool for making informed decisions based on real-time information rather than ...
Physics-informed model creates reconstructions based on experimental data, revealing plasma asymmetries and helping optimize ...
Machine learning is becoming an essential part of a physicist’s toolkit. How should new students learn to use it? When Radha Mastandrea started her undergraduate physics program ... to process data ...
In contrast, the author's machine learning algorithm is equipped with atmospheric physics equations that can produce more accurate results faster and with less data. Hurricanes, or tropical ...
Not only do artificial neural networks play a key role in generative AI tools, they are also vital for the kind of complex data analysis done in particle physics, astrophysics, and more.
Yet for decades scientists have been seeking to change that via machine-learning approaches that emulate the brain’s adaptive computational prowess. The 2024 Nobel Prize in Physics was awarded ...
Artificial intelligence (AI) and machine learning (ML) are becoming more ... faster and more data-driven decisions. As we consider ways to leverage new technological capabilities and breakthroughs ...
A study published in Physical Review Letters outlines a new approach for extracting information ... define the best labels? Machine learning provides a powerful, data-driven solution." ...
Some results have been hidden because they may be inaccessible to you
Show inaccessible results