Researchers have developed a new "emotionally aware" AI-based model for classifying mental health conditions, which could ...
Simulating catalytic reactivity under operative conditions poses a significant challenge due to the dynamic nature of the catalysts and the high computational cost of electronic structure calculations ...
Physics-informed machine learning bridges the gap between the high fidelity of mechanistic models and the adaptive insights of artificial intelligence. In chemical reaction network modeling, this ...
A machine learning (ML)-based model may aid in-hospital community-acquired pneumonia (CAP) mortality prediction, according to study findings published in Respiratory Medicine. Res ...
As semiconductor technologies advance, device structures are becoming increasingly complex. New materials and architectures introduce intricate physical effects requiring accurate modeling to ensure ...
The biopharmaceutical industry is rapidly moving from empirical, trial and error process development toward digitalized and ...
11don MSN
Even weak ocean models can provide valuable information for environmental forecasts, study shows
Oxygen depletion in the western Baltic Sea is not uncommon. Oxygen-poor conditions regularly occur in deeper waters, placing ...
RTID system reduces unnecessary temporary diverting ileostomy use in rectal cancer surgery without increasing anastomotic ...
A machine learning-powered simulation is giving researchers a new window into the processes that create some of the universe’s heaviest elements.
A machine learning model developed by researchers at the Johns Hopkins Kimmel Cancer Center filters out the biological noise ...
Some of the universe’s heaviest elements are born in chaos, in matter flung outward when neutron stars collide or massive ...
Some results have been hidden because they may be inaccessible to you
Show inaccessible results