feedzop-word-mark-logo
searchLogin
Feedzop
homeFor YouUnited StatesUnited States
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 / Engram Unlocks AI's True Reasoning Power

Engram Unlocks AI's True Reasoning Power

18 Jan

•

Summary

  • Engram decouples AI memory storage from computation, easing hardware demands.
  • This method uses knowledge lookups, freeing GPU capacity for complex reasoning.
  • Engram promises linear memory scaling across GPUs with minimal overhead.
Engram Unlocks AI's True Reasoning Power

A novel AI training method named Engram has been introduced by DeepSeek in collaboration with Peking University. This innovative system decouples memory storage from computational processes, directly addressing the performance and cost bottlenecks caused by high-bandwidth memory requirements in traditional large language models.

Engram allows AI models to efficiently retrieve essential information through hashed N-grams, a technique that ensures static memory access independent of the current context. The retrieved data is then refined using a context-aware gating mechanism, enabling models to handle long context inputs more efficiently and supporting system-level prefetching with minimal performance impact.

This approach has demonstrated measurable improvements on a 27-billion-parameter model, offering predictable gains without additional computational cost. Engram's design facilitates linear memory scaling across multiple GPUs, potentially alleviating pressure on expensive memory hardware and mitigating volatile DRAM price swings.

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.
Engram is a training method that separates AI memory storage from computation, allowing for more efficient knowledge retrieval and complex reasoning.
Engram uses efficient lookups for static information, minimizing the need for high-speed memory and freeing up GPU capacity for advanced tasks.
Engram enables linear memory scaling across multiple GPUs with minimal overhead, potentially reducing hardware costs and improving performance.

Read more news on

Technologyside-arrowArtificial Intelligence (AI)side-arrow
trending

Michigan 100-vehicle pileup closes I-196

trending

NFL head coach firings

trending

Snow squalls hit Ontario

trending

Russia's Kamchatka snow disaster

trending

NFL Playoffs: Divisional Games

trending

US markets closed Monday

trending

West Michigan school closings

trending

Stock market indices traded red

trending

Orlando weather: Cold front arrives

You may also like

Lam Research Rockets 141% on AI Chip Demand Surge

2 Jan • 112 reads

article image

Shadow AI: Enterprise's Costly Blind Spot

2 Jan • 99 reads

article image

AI Friends: Teens Swap Real Bonds for Chatbots

22 Dec, 2025 • 169 reads

article image

China Leads AI Race: Open Models Challenge US Dominance

21 Dec, 2025 • 186 reads

article image

AI Learns to Reason Like a Linguist?

14 Dec, 2025 • 214 reads

article image