• Home
  • About
  • Events Calendar
  • Blueprint Guidelines
  • Privacy Policy
  • Manage Email Delivery
  • NextGenInfra.io
No Result
View All Result
Converge Digest
Monday, June 1, 2026
  • Home
  • About
  • Events Calendar
  • Blueprint Guidelines
  • Privacy Policy
  • Manage Email Delivery
  • NextGenInfra.io
No Result
View All Result
Converge Digest
No Result
View All Result

Home » Intel Vision Accelerator targets AI inference on edge devices

Intel Vision Accelerator targets AI inference on edge devices

October 10, 2018
in All
A A

Intel unveiled its family of Intel Vision Accelerator Design Products targeted at artificial intelligence (AI) inference and analytics performance on edge devices. Two acceleration solutions are being introduced: one that features an array of Intel Movidius vision processors and one built on the high-performance Intel Arria 10 FPGA.

The devices could be used to build vision-based AI accelerator cards that collect and analyze data right on edge devices for real-time decision-making. AI workloads are offloaded from the system CPU.

“Until recently, businesses have been struggling to implement deep learning technology. For transportation, smart cities, healthcare, retail and manufacturing industries, it takes specialized expertise, a broad range of form factors and scalable solutions to make this happen. Intel’s Vision Accelerator Design Products now offer businesses choice and flexibility to easily and affordably accelerate AI at the edge to drive real-time insights,” stated Jonathan Ballon, Intel vice president and general manager, Internet of Things Group

Intel said developers it is working with have achieved up to 9.6X times using accelerator cards powered by these devices.

Tags: #AIBlueprint columnsIntel
ShareTweetShareSummarizeSummarize
Previous Post

Bloomberg: Hacked Supermicro Hardware Found in U.S. Telecom

Next Post

CNEX Labs raises $23M for SSD Controller architecture

Staff

Staff

Related Posts

Financials

Intel Appoints Client Computing Chief and CTO

May 4, 2026
All

Intel Q1 2026: AI Drives 22% Data Center Growth, Foundry Revenue Up

April 23, 2026
Semiconductors

Intel, Google Expand AI Infrastructure Pact Around Xeon and Custom IPUs

April 9, 2026
AI Infrastructure

SambaNova and Intel Advance Heterogeneous Architecture for Agentic AI Inference

April 8, 2026
Semiconductors

Intel Foundry Demos 19 μm GaN Chiplet with Integrated Logic 

April 8, 2026
All

Intel Confirms Role in Terafab Initiative

April 7, 2026
Next Post

Shasta Ventures adds execs from Symantec, Salesforce, InterWest

Please login to join discussion

Categories

  • 5G / 6G / Wi-Fi
  • AI Infrastructure
  • All
  • Automotive Networking
  • Blueprints
  • Clouds and Carriers
  • Data Centers
  • Enterprise
  • Explainer
  • Feature
  • Financials
  • Last Mile / Middle Mile
  • Legal / Regulatory
  • Optical
  • Quantum
  • Research
  • Security
  • Semiconductors
  • Space
  • Start-ups
  • Subsea
  • Sustainability
  • Video
  • Webinars

Archives

Tags

5G All AT&T Australia AWS Blueprint columns BroadbandWireless Broadcom China Ciena Cisco Data Centers Dell'Oro Ericsson FCC Financial Financials Huawei Infinera Intel Japan Juniper Last Mile Last Mille LTE Mergers and Acquisitions Mobile NFV Nokia Optical Packet Systems PacketVoice People Regulatory Satellite SDN Service Providers Silicon Silicon Valley StandardsWatch Storage TTP UK Verizon Wi-Fi
Converge Digest

A private dossier for networking and telecoms

Follow Us

  • Home
  • About
  • Events Calendar
  • Blueprint Guidelines
  • Privacy Policy
  • Manage Email Delivery
  • NextGenInfra.io

© 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

© 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