数据流
计算机科学
人工智能
多核处理器
机器学习
计算机体系结构
深度学习
可扩展性
推论
人工神经网络
数据流体系结构
计算
分布式计算
并行计算
程序设计语言
操作系统
作者
Martı́n Abadi,Paul Barham,Jianmin Chen,Zhifeng Chen,Andy Davis,Jay B. Dean,Matthieu Devin,Sanjay Ghemawat,Geoffrey Irving,Michael Isard,Manjunath Kudlur,Josh Levenberg,Rajat Monga,Sherry Moore,Derek G. Murray,Benoit Steiner,Paul A. Tucker,Vijay Vasudevan,Pete Warden,Martin Wicke,Yuan Yu,Xiaoqiang Zheng
出处
期刊:Operating Systems Design and Implementation
日期:2016-11-02
卷期号:: 265-283
被引量:5998
标识
DOI:10.5555/3026877.3026899
摘要
TensorFlow is a machine learning system that operates at large scale and in heterogeneous environments. Tensor-Flow uses dataflow graphs to represent computation, shared state, and the operations that mutate that state. It maps the nodes of a dataflow graph across many machines in a cluster, and within a machine across multiple computational devices, including multicore CPUs, general-purpose GPUs, and custom-designed ASICs known as Tensor Processing Units (TPUs). This architecture gives flexibility to the application developer: whereas in previous parameter server designs the management of shared state is built into the system, TensorFlow enables developers to experiment with novel optimizations and training algorithms. TensorFlow supports a variety of applications, with a focus on training and inference on deep neural networks. Several Google services use TensorFlow in production, we have released it as an open-source project, and it has become widely used for machine learning research. In this paper, we describe the TensorFlow dataflow model and demonstrate the compelling performance that TensorFlow achieves for several real-world applications.
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