News
It uses a domain-specific compiler for linear algebra (XLA) to JIT-compile subgraphs of TensorFlow computations (data flow graphs). A version of XLA that supports Google Tensor Processing Units ...
Machine learning frameworks like Google’s TensorFlow ease the process of acquiring data, training models, serving predictions, and refining future results. Created by the Google Brain team and ...
James Vincent is a senior reporter who has covered AI, robotics, and more for eight years at The Verge. Google has announced a new module for its machine learning framework, TensorFlow, that lets ...
This allows TensorFlow programs to access all of the data companies process on Apache Spark. According to Yahoo, transferring TensorFlow programs to TensorFlowOnSpark is a relatively painless ...
Recently released TensorFlow v2.9 introduces a new API for the model, data, and space-parallel (aka spatially tiled) deep network training. DTensor aims to decouple sharding directives from the model ...
data center dual GPU. The first part of Google's paper discusses the various types of deep neural networks it deploys, the specific benchmarks it uses, and offers a diagram of the TPU's physical ...
LinkedIn today announced it has open sourced a tool it developed to convert Apache Spark-based Big Data into a format consumable by TensorFlow, the popular open source platform for machine learning.
Results that may be inaccessible to you are currently showing.
Hide inaccessible results