Google has revealed new benchmark results for its custom TensorFlow processing unit, or TPU. In inference workloads, the company's ASIC positively smokes hardware from Intel, Nvidia. Share on Facebook ...
Nvidia doesn't think Google's TPU-versus-GPU comparison last week told the whole story on what its graphics cards can bring to the table. What changes when Pascal enters the picture? Share on Facebook ...
Hardware support is now available for TensorFlow from NVIDIA and Movidius, intended to accelerate the use of deep neural networks for machine learning applications. Each framework has advantages and ...
At the most basic level, Nvidia designs graphics processing units (GPUs). Originally designed for rendering video game graphics, these chips are extraordinarily good at a more lucrative task: running ...
This is new: TensorFlow 2.18 integrates the current version 2.0 of NumPy and, with Hermetic CUDA, will no longer require local CUDA libraries during the build. The ...
Some results have been hidden because they may be inaccessible to you
Show inaccessible results