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 / Anthropic Solves AI Agent 'Bloat' With Lazy Loading

Anthropic Solves AI Agent 'Bloat' With Lazy Loading

16 Jan

•

Summary

  • AI tools now load only when needed, dramatically reducing context usage.
  • This 'lazy loading' feature solves the 'startup tax' problem for AI agents.
  • Tool Search significantly boosts AI model accuracy and reasoning ability.
Anthropic Solves AI Agent 'Bloat' With Lazy Loading

Anthropic's latest update to its Model Context Protocol (MCP) introduces Tool Search, a feature designed to significantly reduce context window consumption for AI agents. Released in late 2024 as an open-source standard, MCP enables AI models to connect to external tools. However, a substantial 'startup tax' emerged, with agents pre-loading extensive tool documentation, often consuming over 67k tokens and reducing usable context.

Tool Search implements 'lazy loading,' a technique where tool definitions are dynamically fetched only when required. This approach dramatically slashes token usage, with internal testing showing an 85% reduction. By avoiding the need to process vast, irrelevant documentation, AI models can focus their attention mechanisms more effectively on user prompts and relevant tasks.

This architectural shift from brute-force loading to selective fetching signals a maturation in AI infrastructure. By adopting standard software engineering practices like lazy loading, Anthropic is paving the way for more complex and capable AI agents. The update not only conserves resources but also demonstrably improves AI model accuracy, moving the ecosystem towards greater efficiency and expanded functionality.

trending

Chelsea beats West Ham 3-2

trending

Liverpool, Newcastle face injury woes

trending

WWE Royal Rumble in Riyadh

trending

Barcelona faces Elche in LaLiga

trending

Goretzka staying at Bayern Munich

trending

ICC T20 World Cup squads

trending

Gold, silver ETFs crashed

trending

Curran, Pandya T20Is stats compared

trending

Suryakumar Yadav T20I record

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.
MCP is an open-source standard released by Anthropic that allows AI models and agents to connect to external tools in a structured format.
Tool Search uses 'lazy loading' to fetch AI tool definitions only when they are needed, instead of preloading all available tools.
It solves the 'startup tax' or 'bloat' problem, where agents used excessive context to load unnecessary tool documentation, thereby improving efficiency and accuracy.

Read more news on

Technologyside-arrowAnthropicside-arrowArtificial Intelligence (AI)side-arrow

You may also like

AI Protocol's Flaw Leaves Systems Ripe for Attack

27 Jan • 17 reads

article image

CEOs Fear Revenue Slump: Tech Fears Grip Business Leaders

21 Jan • 120 reads

article image

AI Bubbles: Which Will Burst First?

19 Jan • 101 reads

article image

AI Bubble Fears Rise: Will 2026 Be the Burst?

15 Jan • 93 reads

article image

AI Data Centers Fuel Applied Digital's Revenue Surge

8 Jan • 148 reads

article image