Science
Machine-learning helps sort out massive materials’ databases – Mirage News
EPFL and MIT scientists have used machine-learning to organize the chemical diversity found in the ever-growing databases for the popular metal-organic…

EPFL and MIT scientists have used machine-learning to organize the chemical diversity found in the ever-growing databases for the popular metal-organic framework materials.Metal-organic frameworks (MOFs) are a class of materials that contain nano-sized pores. These pores give MOFs record-breaking internal surface areas, which can measure up to 7,800 m2 in a single gram of material. As a result, MOFs are extremely versatile and find multiple uses: separating petrochemicals and gases, mimicking DN…
-
Business19 hours ago
Why is Alphabet stock worth less than Nvidia, Microsoft, Apple, and Amazon even though it is the most profitable S&P 500 company?
-
Noosa News18 hours ago
‘Sunny, benign’ school holiday weather after morning showers in parts of Queensland
-
General13 hours ago
Developer warns wind energy capacity may not be ready by WA coal deadline
-
Noosa News16 hours ago
Tips to improve engagement – Proctor