Wave Computing has 30X faster deep learning training and 10-100X better performance

#artificialintelligence 

Wave Computing was founded with the vision of delivering deep learning computers with game-changing computational performance and energy efficiency. Their objective is to enable businesses to analyze complex data in real-time with more accurate results through a fluid discovery and improvement in Deep Neural Network (DNN) development and training with our family of computers. Wave developed a novel Dataflow Processing Unit (DPU) architecture as part of a strategy to natively support a new wave of dataflow model based deep learning frameworks such as Google's TensorFlow and Microsoft's CNTK. Wave's family of deep learning computers achieves its best-in-class DNN training and inference performance through its native support of dataflow model based deep learning frameworks, its CPU-less high bandwidth shared memory architecture, and DPU's 16,000 parallel processing elements power and massive memory bandwidth. This results in a family of computers that delivers more than 10x improvement in compute performance for DNN training and more than 100x improvement in performance for DNN inference.

Duplicate Docs Excel Report

Title
None found

Similar Docs  Excel Report  more

TitleSimilaritySource
None found