feedzop-word-mark-logo
searchLogin
Feedzop
homeFor YouIndiaIndia
You
bookmarksYour BookmarkshashtagYour Topics
Trending
Terms of UsePrivacy PolicyAboutJobsPartner With Us

© 2026 Advergame Technologies Pvt. Ltd. ("ATPL"). Gamezop ® & Quizzop ® are registered trademarks of ATPL.

Gamezop is a plug-and-play gaming platform that any app or website can integrate to bring casual gaming for its users. Gamezop also operates Quizzop, a quizzing platform, that digital products can add as a trivia section.

Over 5,000 products from more than 70 countries have integrated Gamezop and Quizzop. These include Amazon, Samsung Internet, Snap, Tata Play, AccuWeather, Paytm, Gulf News, and Branch.

Games and trivia increase user engagement significantly within all kinds of apps and websites, besides opening a new stream of advertising revenue. Gamezop and Quizzop take 30 minutes to integrate and can be used for free: both by the products integrating them and end users

Increase ad revenue and engagement on your app / website with games, quizzes, astrology, and cricket content. Visit: business.gamezop.com

Property Code: 5571

Home / Technology / AI Learns to Discover: New Technique Unleashes Problem-Solving Power

AI Learns to Discover: New Technique Unleashes Problem-Solving Power

6 Feb

Summary

  • New AI technique trains models during problem-solving, not just before.
  • Optimized a critical GPU kernel to run 2x faster than human experts.
  • Cost of $500 per discovery problem, suited for high-value assets.
AI Learns to Discover: New Technique Unleashes Problem-Solving Power

A groundbreaking AI technique called Test-Time Training to Discover (TTT-Discover) is challenging traditional AI development paradigms. Developed by researchers from Stanford, Nvidia, and Together AI, this method enables AI models to train and update their weights in real-time while attempting to solve a problem, rather than relying on pre-trained, static parameters.

This approach is particularly effective for complex discovery problems that lie outside a model's original training data. Unlike 'frozen' models that search within their learned knowledge, TTT-Discover treats each problem as a unique environment for mastery. This allows the AI to learn from its failures and partial successes, laser-focusing on finding optimal solutions.

TTT-Discover requires a continuous reward signal for incremental progress, differentiating it from standard reinforcement learning. While experiments showed a cost of approximately $500 per discovery run, this method is deemed economical for high-impact, low-frequency decisions. Examples include optimizing critical GPU kernels, potentially achieving double the speed of human-expert solutions, or finding faster routes in logistics.

The researchers have released the TTT-Discover code, which works with open-weights models like gpt-oss-120b. This allows companies to run the discovery loop securely within their own infrastructure. Implementation is feasible for enterprises already using reinforcement learning, with tools like Tinker API further reducing setup complexity.

Disclaimer: This story has been auto-aggregated and auto-summarised by a computer program. This story has not been edited or created by the Feedzop team.
TTT-Discover is a novel AI technique that allows models to continue training and update their weights in real-time while solving a problem.
Unlike traditional 'frozen' models with static parameters, TTT-Discover trains during inference, enabling it to tackle complex, out-of-distribution problems.
TTT-Discover can optimize GPU kernels and solve complex optimization problems, with an approximate cost of $500 per problem, making it suitable for high-value assets.

Read more news on

Technologyside-arrowNvidiaside-arrowArtificial Intelligence (AI)side-arrow
•
trending

Hetmyer's visa delays World Cup

trending

Ola Uber Rapido strike

trending

West Indies face Scotland again

trending

Pakistan beats Netherlands in T20

trending

Mark Watt confident facing Windies

trending

T20 World Cup 2026

trending

Van Beek: Beat India, Pakistan

trending

T20 World Cup 2026 details

trending

Jasdeep Singh's dream wickets

You may also like

Least Privilege Key for AI Agent Security

4 Feb • 21 reads

article image

OpenAI Plans Human-Only Social Media

29 Jan • 55 reads

article image

AI Nudify Apps Thrive on App Stores

28 Jan • 45 reads

article image

DeepSeek's Open Source AI Fuels Developing Nations

8 Jan • 192 reads

AI Data Centers Fuel Applied Digital's Revenue Surge

8 Jan • 179 reads

article image