Metal-organic frameworks (MOFs) are an incredibly diverse group of highly porous hybrid materials, which are interesting for a wide range of possible applications. For a meaningful theoretical ...
Machine learning is a subfield of artificial intelligence, which explores how to computationally simulate (or surpass) humanlike intelligence. While some AI techniques (such as expert systems) use ...
The authors devise an efficient quantum approach to address the van der Waals interactions due to photoexcitations by approximating the Bethe-Salpeter equation. Both attractive/repulsive forces can ...
Getting value from data science requires more than developing the perfect algorithm. In fact, analysis is only one step in the analytics value chain. This class will teach data scientists how to move ...
However, by the late 1970s, there was disappointment that the two main approaches to computing in medicine — rule-based systems and matching, or pattern recognition, systems — had not been as ...
This course covers three major algorithmic topics in machine learning. Half of the course is devoted to reinforcement learning with the focus on the policy gradient and deep Q-network algorithms. The ...
Who is the Master's in Artificial Intelligence and Machine Learning program for? The Drexel School of Computer and Information Sciences' Master of Science in Artificial Intelligence and Machine ...
Across modern data-intensive disciplines, the union of numerical computation, statistics, and machine learning has become ...