NVIDA Updates Free Deep Learning Software
Written by Mike James   
Monday, 15 May 2017

There was a time when NVIDA was thought of as a maker of hardware for high end games machines, but the need for powerful number crunching has propelled the GPU maker into new areas and now it is one of the leaders in AI. 

NVIDA has some help for you if parallel computation on a GPU is your concern. Of course it has to be an NVIDA GPU card you are targeting, but you wouldn't expect them to promote someone else's hardware, would you?

The first piece of news, however, is that the number of people interested in using the GPU for computation is growing very fast:

 

gpu

 

This is an indication of just how useful GPU approaches to general computation are. NVIDIA has been helping the interest along with its free SDK and it has just announced a new version with these improvements:

 

  • New CUDA 9 speeds up HPC and deep learning applications with support for Volta GPUs, up to 5x faster performance for libraries, a new programming model for thread management, and updates to debugging and profiling tools.

  • Developers of end-user applications such as AI-powered web services and embedded edge devices benefit from 3.5x faster deep learning inference with the new TensorRT 3. With built-in support for optimizing both Caffe and TensorFlow models, developers can take trained neural networks to production faster than ever.

  • Engineers and data scientists can benefit from 2.5x faster deep learning training using Volta optimizations for frameworks such as Caffe2, Microsoft Cognitive Toolkit, MXNet, PyTorch and TensorFlow.

Notice that most of these speed ups are credited to the latest Volta GPU architecture from NVIDA. Volta is designed specifically for data processing and AI in particular. With 640 Tensor cores it is claimed to offer 100 Teraflops per second. Google recently published some benchmarks which show that Tensorflow almost scales linearly with the number of Volta P100 GPUs actually used:

gputensor

You can't help but think "this would be good for graphics!"

Silly idea! Why waste computing power on graphics?

Can anyone remember what the G in GPU stands for these days?

gpulogo

More Information

NVIDIA Delivers New Deep Learning Software Tools for Developers

TensorFlow Benchmarks and a New High-Performance Guide

Related Articles

TPU Better Than GPU 

TensorFlow Reaches Version 1 

//No Comment - BB8 autonomous car 

NVIDIA's Neural Network Drives A Car 

A Billion Neuronal Connections On The Cheap 

To be informed about new articles on I Programmer, sign up for our weekly newsletter, subscribe to the RSS feed and follow us on Facebook or Linkedin.

 

Banner


Getting Ready For Santa
24/12/2025

The annual Santa tech-fest is well under way, with Santa trackers from both Google and NORAD counting down to the big day to see how Santa is doing on sorting out who's been naughty and who's been nic [ ... ]



AI - It's All Downhill From Here?
31/12/2025

AI is a complex beast, but it is based on some very simple and very powerful ideas that deserve to be better known as they throw much light not only on the way AI works but on the way the universe wor [ ... ]


More News

pico book

 

Comments




or email your comment to: comments@i-programmer.info

 

Last Updated ( Monday, 15 May 2017 )