News
Transforming graphs for neural network processing. Every graph is composed of nodes and edges. For example, in a social network, nodes can represent users and their characteristics (e.g., name, ...
7d
Tech Xplore on MSNNew framework reduces memory usage and boosts energy efficiency for large-scale AI graph analysisBingoCGN, a scalable and efficient graph neural network accelerator that enables inference of real-time, large-scale graphs ...
Other than giving us an appreciation how little difference going eight miles an hour over the speed limit makes, that ETA service is a remarkable invention — and one that takes a hell of a lot of ...
Graph neural networks (GNNs) are a relatively recent development in the field of machine learning. Like traditional graphs, a core principle of GNNs is that they model the dependencies and ...
Integrating physics and AI: Novel graph neural network models enhance precipitation forecasting. Institute of Atmospheric Physics, Chinese Academy of Sciences. Journal Geophysical Research Letters DOI ...
The best way to understand neural networks is to build one for yourself. Let's get started with creating and training a neural network in Java. Artificial neural networks are a form of deep ...
A technical paper titled “Accelerating Defect Predictions in Semiconductors Using Graph Neural Networks” was published by researchers at Purdue University, Indian Institute of Technology (IIT) Madras, ...
Some results have been hidden because they may be inaccessible to you
Show inaccessible results