• Home
  • About
  • Events Calendar
  • Blueprint Guidelines
  • Privacy Policy
  • Manage Email Delivery
  • NextGenInfra.io
No Result
View All Result
Converge Digest
Thursday, June 11, 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 » MIT Researchers Develop Energy-Efficient Photonic AI Processor 

MIT Researchers Develop Energy-Efficient Photonic AI Processor 

February 9, 2025
in All
A A

Researchers from MIT have developed a fully integrated photonic processor that performs deep neural network computations using light, potentially enabling ultrafast and energy-efficient AI applications. Unlike traditional hardware that relies on electronic components, this new chip integrates both linear and nonlinear operations optically, eliminating the need for external digital processors. The photonic processor successfully completed a machine-learning classification task in less than half a nanosecond with more than 92% accuracy, making it a promising alternative for computationally intensive fields like lidar, astronomy, and telecommunications.

The breakthrough was achieved by integrating nonlinear optical function units (NOFUs) into the chip, overcoming a major limitation of previous optical neural networks. The system encodes neural network parameters into light and processes data through programmable beamsplitters and NOFUs, maintaining ultra-low latency. Fabricated using commercial CMOS foundry processes, the chip has the potential for large-scale production and integration into existing technologies. The research, led by MIT’s Quantum Photonics and AI Group, was published in Nature Photonics and was supported by the U.S. National Science Foundation, the U.S. Air Force Office of Scientific Research, and NTT Research.

  • Institution: MIT, in collaboration with various researchers.
  • Technology: Fully integrated photonic processor for deep neural network computations.
  • Performance: Achieved over 92% accuracy with processing speeds under half a nanosecond.
  • Key Innovation: Integration of nonlinear operations optically using NOFUs.
  • Potential Applications: Lidar, astronomy, high-speed telecommunications.
  • Manufacturing: Fabricated using commercial CMOS processes for scalability.
  • Publication: Research published in Nature Photonics.
  • Funding: Supported by the U.S. NSF, U.S. Air Force Office of Scientific Research, and NTT Research.

Source: Adam Zewe, MIT News (Original Article).

ShareTweetShareSummarizeSummarize
Previous Post

Cloudflare Expands Network, Powers Over 20% of Internet Traffic in 2024

Next Post

CoreWeave Becomes First Cloud Provider to Offer NVIDIA GB200 NVL72 AI Instances

Jim Carroll

Jim Carroll

Editor and Publisher, Converge! Network Digest, Optical Networks Daily - Covering the full stack of network convergence from Silicon Valley

Related Posts

Optical

Colt and Ciena Achieve 800GbE Quantum-Safe Across the Atlantic

June 10, 2026
All

AWS Launches Graviton5 CPU with 192 Cores for Agentic AI

June 10, 2026
Research

Dell’Oro: AI Infrastructure Spending Pushes 2026 Data Center Capex Above $1 Trillion

June 10, 2026
Semiconductors

TDK Acquires Fabric8Labs to Scale Advanced Cooling for AI Data Centers

June 10, 2026
Quantum

Xanadu Sets New Benchmark for Ultra-Low-Loss Photonic Chip Packaging

June 10, 2026
Research

Dell’Oro: Campus Ethernet Switch Revenue Climbs in 1Q 2026

June 10, 2026
Next Post

CoreWeave Becomes First Cloud Provider to Offer NVIDIA GB200 NVL72 AI Instances

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