Close
  • Latest News
  • Artificial Intelligence
  • Video
  • Big Data and Analytics
  • Cloud
  • Networking
  • Cybersecurity
  • Applications
  • IT Management
  • Storage
  • Sponsored
  • Mobile
  • Small Business
  • Development
  • Database
  • Servers
  • Android
  • Apple
  • Innovation
  • Blogs
  • PC Hardware
  • Reviews
  • Search Engines
  • Virtualization
Read Down
Sign in
Close
Welcome!Log into your account
Forgot your password?
Read Down
Password recovery
Recover your password
Close
Search
Logo
Logo
  • Latest News
  • Artificial Intelligence
  • Video
  • Big Data and Analytics
  • Cloud
  • Networking
  • Cybersecurity
  • Applications
  • IT Management
  • Storage
  • Sponsored
  • Mobile
  • Small Business
  • Development
  • Database
  • Servers
  • Android
  • Apple
  • Innovation
  • Blogs
  • PC Hardware
  • Reviews
  • Search Engines
  • Virtualization
More
    Home Cloud
    • Cloud

    Microsoft Expanding Azure’s GPU Processing Options for AI Workloads

    Written by

    Pedro Hernandez
    Published May 9, 2017
    Share
    Facebook
    Twitter
    Linkedin

      eWEEK content and product recommendations are editorially independent. We may make money when you click on links to our partners. Learn More.

      Microsoft is taking a cue from hardcore PC gamers and upgrading its graphics hardware. But rather than splash eye-catching visuals onto computer monitors, the software giant is accelerating artificial intelligence (AI) workloads on the cloud.

      The company announced this week that Azure customers using Microsoft’s GPU-assisted virtual machines for their AI applications will have newer, faster-performing options later this year.

      Capitalizing on the latest GPU innovations from computer graphics hardware maker Nvidia, Microsoft announced new ND-series Azure virtual machines, promising a big performance boost over the current offerings.

      Like Google and other companies using graphical processing units (GPUs) to drive artificial intelligence, Microsoft has enlisted the technology to accelerate machine learning, deep learning and other AI workloads on its cloud. GPUs are particularly suited for these tasks, courtesy of massively parallel microarchitectures that lend themselves to AI applications, which are also typically parallel in nature.

      “This new series, powered by Nvidia Tesla P40 GPUs based on the new Pascal Architecture, is excellent for training and inference,” said Corey Sanders, director of Compute at Microsoft Azure, in a May 8 announcement. “These instances provide over 2x the performance over the previous generation for FP32 (single precision floating point operations), for AI workloads utilizing CNTK [Microsoft Cognitive Toolkit], TensorFlow, Caffe, and other frameworks.”

      In addition to improved performance, the new virtual machines offer more headroom for customers with bigger AI ambitions.

      “The ND-series also offers a much larger GPU memory size (24GB), enabling customers to fit much larger neural net models,” continued Sanders. “Finally, like our NC-series, the ND-series will offer RDMA and InfiniBand connectivity so you can run large-scale training jobs spanning hundreds of GPUs.” InfiniBand is a high-throughput, low-latency networking standard favored by high performing computing (HPC) environments.

      ND-series virtual machines can also be used to accelerate some non-AI, HPC workloads. Candidates include DNA sequencing, protein analysis and graphics rendering, added Sanders.

      The current NC-series portfolio is getting an upgrade. Soon to be known as NCv2, the new offerings are powered by Nvidia Tesla P100 GPUs that have twice the computational performance of their predecessors, claimed Sanders.

      Technical specifications on the upcoming ND-series and NCv2-series virtual machines are available in this blog post.

      Meanwhile, Microsoft faces some stiffer competition as business demand for cloud-based AI solutions heat up.

      In February, Google announced that it was allowing its cloud customers in certain regions to attach Nvidia GPUs to their Google Compute Engine virtual machines. One obvious benefit is that customers no longer have to build or acquire their own GPU clusters and make room for them in their data centers. Another is the substantially shorter time it takes to train machine learning models using the system’s distributed approach.

      Last fall, Amazon began offering new EC2 (Elastic Compute Cloud) instances with up to 16 Nvidia GPUs. The company also launched a new deep learning AMI (Amazon Machine Image) containing the Caffe, MXNet, TensorFlow, Theano and Torch frameworks.

      Pedro Hernandez
      Pedro Hernandez
      Pedro Hernandez is a writer for eWEEK and the IT Business Edge Network, the network for technology professionals. Previously, he served as a managing editor for the Internet.com network of IT-related websites and as the Green IT curator for GigaOM Pro.

      Get the Free Newsletter!

      Subscribe to Daily Tech Insider for top news, trends & analysis

      Get the Free Newsletter!

      Subscribe to Daily Tech Insider for top news, trends & analysis

      MOST POPULAR ARTICLES

      Artificial Intelligence

      9 Best AI 3D Generators You Need...

      Sam Rinko - June 25, 2024 0
      AI 3D Generators are powerful tools for many different industries. Discover the best AI 3D Generators, and learn which is best for your specific use case.
      Read more
      Cloud

      RingCentral Expands Its Collaboration Platform

      Zeus Kerravala - November 22, 2023 0
      RingCentral adds AI-enabled contact center and hybrid event products to its suite of collaboration services.
      Read more
      Artificial Intelligence

      8 Best AI Data Analytics Software &...

      Aminu Abdullahi - January 18, 2024 0
      Learn the top AI data analytics software to use. Compare AI data analytics solutions & features to make the best choice for your business.
      Read more
      Latest News

      Zeus Kerravala on Networking: Multicloud, 5G, and...

      James Maguire - December 16, 2022 0
      I spoke with Zeus Kerravala, industry analyst at ZK Research, about the rapid changes in enterprise networking, as tech advances and digital transformation prompt...
      Read more
      Video

      Datadog President Amit Agarwal on Trends in...

      James Maguire - November 11, 2022 0
      I spoke with Amit Agarwal, President of Datadog, about infrastructure observability, from current trends to key challenges to the future of this rapidly growing...
      Read more
      Logo

      eWeek has the latest technology news and analysis, buying guides, and product reviews for IT professionals and technology buyers. The site’s focus is on innovative solutions and covering in-depth technical content. eWeek stays on the cutting edge of technology news and IT trends through interviews and expert analysis. Gain insight from top innovators and thought leaders in the fields of IT, business, enterprise software, startups, and more.

      Facebook
      Linkedin
      RSS
      Twitter
      Youtube

      Advertisers

      Advertise with TechnologyAdvice on eWeek and our other IT-focused platforms.

      Advertise with Us

      Menu

      • About eWeek
      • Subscribe to our Newsletter
      • Latest News

      Our Brands

      • Privacy Policy
      • Terms
      • About
      • Contact
      • Advertise
      • Sitemap
      • California – Do Not Sell My Information

      Property of TechnologyAdvice.
      © 2024 TechnologyAdvice. All Rights Reserved

      Advertiser Disclosure: Some of the products that appear on this site are from companies from which TechnologyAdvice receives compensation. This compensation may impact how and where products appear on this site including, for example, the order in which they appear. TechnologyAdvice does not include all companies or all types of products available in the marketplace.

      ×