Communication compression is a crucial technique for modern distributed
...
Transfer learning can be seen as a data- and compute-efficient alternati...
The Bayes error rate (BER) is a fundamental concept in machine learning ...
Despite the great successes achieved by deep neural networks (DNNs), rec...
Recent success of deep neural networks (DNNs) hinges on the availability...
Developing machine learning models can be seen as a process similar to t...
In our experience working with domain experts who are using today's Auto...
The k-Nearest Neighbors (kNN) classifier is a fundamental non-parametric...
Transfer learning has been recently popularized as a data-efficient
alte...
As machine learning systems become pervasive, safeguarding their securit...