Skip to content
Wednesday, April 15, 2026
Latest:
  • 79% of Firms Say Data Access Is Holding Back AI Ambitions – digit.fyi
  • Payments issued in Cash App $12.5 million unwanted text message class action settlement – Claim Depot
  • Our Favorite Management Tips on Organizational Change – Harvard Business Review
  • Sydney startup raises $5m on the tech that found downed pilot – Forbes Australia
  • ‘The Gen AI Playbook for Organizations’ wins 2025 HBR Prize – Harvard Gazette
The CDO Times

  • CDO TIMES Fractional Executives
    • Carsten Krause – Executive Profile Data and AI
  • Digital
    • Digital Trends
    • Emerging Technologies
    • Digital Strategy
    • Digital Transformation
    • Digital Strategy
      • Digital Platforms
      • Digital Transformation
    • Digital DNA
    • Digital Architecture
    • Marketing
    • Customer Journey Mapping
    • Customer Experience
    • Culture
  • Data & AI
    • Artificial Intelligence
    • AI Strategy
    • Trending
    • Chatbot
    • data strategy
    • Data Management Platform
    • Web3
    • ESG
    • Digital Experience Platform
  • Cybersecurity
    • Risk Management
    • Data Privacy
  • Industry
    • Sports & Entertainment
    • Medical Care
    • Food & Beverage
    • Retail
    • Supply Chain
    • Restaurant & Hospitality
    • Pharma & Healthcare
    • Film and Advertising
  • Events
    • NRF 2025 Showcase
  • Podcast
  • Log In
  • The AI Ready Leader
  • Services

Plasma Science and Fusion Center

Artificial IntelligenceEnergyMachine Learning

New prediction model could improve the reliability of fusion power plants

October 7, 2025 CDO TIMES BOT 0 Comments Aeronautical and astronautical engineering,  artificial intelligence,  Computer modeling,  Energy,  Fluid dynamics,  Fusion,  Laboratory for Information and Decision Systems (LIDS),  machine learning,  MIT Schwarzman College of Computing,  Nuclear power and reactors,  Plasma Science and Fusion Center,  Renewable energy,  Research,  School of Engineering,  sustainability 5 min read

The approach combines physics and machine learning to avoid damaging disruptions when powering down tokamak fusion machines.

Share this:

  • Share on X (Opens in new window) X
  • Share on Facebook (Opens in new window) Facebook
  • Share on LinkedIn (Opens in new window) LinkedIn
  • Share on Reddit (Opens in new window) Reddit
  • Share on Tumblr (Opens in new window) Tumblr

Like this:

Like Loading...
Read More
pictory

HeyGen
loader-image
Bigtincan
Fellsway Group
Shockoe
Optiv
SAP
Microsoft
Salesforce
CyberRisk Alliance
Room

Policies

  • Privacy Policy
  • Terms of use

About Us

  • About Us
  • Mission Vision
  • Careers

Contact Us

  • Contact Us
  • Become a Writer

Contact us

  • Contact Us
  • Become a Writer

About Us

  • About Us
  • Mission Vision
  • Careers

Copyright © 2026 The CDO TIMES. All rights reserved. 
"The CDO TIMES™", "HI + AI = ECI™" and "Elevated Collaborative Intelligence™" are proprietary trademarks of CKC Digital, LLC.
Unauthorized use is strictly prohibited. For licensing inquiries, contact  info@cdotimes.com.

 

Loading Comments...
 

You must be logged in to post a comment.

    %d