• Home
  • About
  • Events Calendar
  • Blueprint Guidelines
  • Privacy Policy
  • Manage Email Delivery
  • NextGenInfra.io
  • buzzwords
  • Archives
  • Milestones
  • On This Day
  • Video Search
Converge Digest
Wednesday, July 15, 2026
  • Home
  • About
  • Events Calendar
  • Blueprint Guidelines
  • Privacy Policy
  • Manage Email Delivery
  • NextGenInfra.io
  • buzzwords
  • Archives
  • Milestones
  • On This Day
  • Video Search
No Result
View All Result
Converge Digest
No Result
View All Result

Home » Cisco builds an AI server powered by NVIDIA

Cisco builds an AI server powered by NVIDIA

September 11, 2018
in All
A A

Cisco announced a new server in its UCS product family designed for artificial intelligence (AI) and machine learning (ML).

The new Cisco UCS C480 ML server speeds up deep learning, a compute-intensive form of machine learning that uses neural networks and large data sets to train computers for complex tasks, by integrating NVIDIA’s Tesla V100 Tensor Core GPUs.

“Over the next few years, apps powered by artificial intelligence and machine learning will become mainstream in the enterprise. While this will solve many complex business issues, it will also create new challenges for IT,” said Roland Acra, SVP and GM for Cisco’s Data Center Business Group. “Today’s powerful addition to the Cisco UCS lineup will power AI initiatives across a wide range of industries. Our early-access customers in the financial sector are exploring ways to improve fraud detection and enhance algorithmic trading. Meanwhile in healthcare, they’re interested in better insights and diagnostics, improving medical image classification, and speeding drug

“We believe the power of machine learning should be available for all organizations, whether in the cloud or on-premises, and we’re excited to continue our collaborative efforts with Cisco,” said David Aronchick, Product Manager at Google Cloud. “We’re pleased to see Cisco creating hybrid cloud solutions for machine learning, and also contributing code to the Google-led open source project, Kubeflow.  Organizations running Kubeflow on the new UCS C480 deep learning server will benefit from consistent machine learning tools that work great both on-premises and on Google Cloud.”

Tags: Blueprint columns
ShareTweetShareSummarizeSummarize
Previous Post

Ericsson and Intel showcase 5G ecosystem

Next Post

Verizon opens more 5G labs

Staff

Staff

Related Posts

Blueprints

Blueprint: Brazil looks to municipal Wi-Fi 6E

February 21, 2023
All

Blueprint: Building wholesale networks with OTN

December 20, 2022
All

Oracle opens cloud region in Chicago

December 20, 2022
All

BT trials C-RAN in Leeds

December 19, 2022
All

T-Mobile builds cloud native 5G converged core with Cisco

December 15, 2022
All

Meta halts data center expansion construction in Denmark

December 15, 2022
Next Post

T-Mobile awards $3.5 billion 5G contract to Ericsson

Please login to join discussion

Categories

  • 5G / 6G / Wi-Fi
  • AI Infrastructure
  • All
  • Automotive Networking
  • Blueprints
  • Clouds and Carriers
  • Corporate Strategies
  • CPO
  • Data Centers
  • Enterprise
  • Explainer
  • Feature
  • Hot Start-ups
  • Last Mile / Middle Mile
  • Legal / Regulatory
  • Optical
  • Optical I/O
  • Pluggable Optics
  • Quantum
  • Research
  • Security
  • Semiconductors
  • Silicon Photonics
  • Space Networking & Orbital Data Centers
  • Subsea
  • Sustainability
  • Video
  • Webinars
Converge Digest

A private dossier for networking and telecoms

Follow Us

  • Home
  • About
  • Events Calendar
  • Blueprint Guidelines
  • Privacy Policy
  • Manage Email Delivery
  • NextGenInfra.io
  • buzzwords
  • Archives
  • Milestones
  • On This Day
  • Video Search

© 2026 Converge Digest - A private dossier for networking and telecoms.

No Result
View All Result
  • Home
  • About
  • Events Calendar
  • Blueprint Guidelines
  • Privacy Policy
  • Manage Email Delivery
  • NextGenInfra.io
  • buzzwords
  • Archives
  • Milestones
  • On This Day
  • Video Search

© 2026 Converge Digest - A private dossier for networking and telecoms.

This website uses cookies. By continuing to use this website you are giving consent to cookies being used. Visit our Privacy and Cookie Policy.
Go to mobile version