Charts
DataOn-chain
VIP
Market Cap
API
Rankings
CoinOSNew
CoinClaw🦞
Language
  • 简体中文
  • 繁体中文
  • English
Leader in global market data applications, committed to providing valuable information more efficiently.

Features

  • Real-time Data
  • Special Features
  • AI Grid

Services

  • News
  • Open Data(API)
  • Institutional Services

Downloads

  • Desktop
  • Android
  • iOS

Contact Us

  • Chat Room
  • Business Email
  • Official Email
  • Official Verification

Join Community

  • Telegram
  • Twitter
  • Discord

© Copyright 2013-2026. All rights reserved.

简体繁體English
|Legacy
BTCBTC
💲75904.38
+
1.37%
ETHETH
💲2319.01
+
0.72%
SOLSOL
💲85.90
+
0.76%
RAVERAVE
💲0.5698
-
53.67%
USDCUSDC
💲0.9994
-
0.02%
XRPXRP
💲1.43
+
0.7%

币圈女菩萨 | Pizza披萨🍕
币圈女菩萨 | Pizza披萨🍕|Oct 30, 2025 05:57
Kite AI @GoKiteAI shared a pretty interesting study: How multi-agent systems (MAS) learn to 'plan.' Simply put, it's about how AI agents can divide tasks and collaborate more intelligently. They introduced a new method: Agent-Oriented Planning (AOP). It enables the meta-agent (main control agent) to break down tasks, allocate them, and integrate results more effectively. Because right now, many multi-agent systems have a common issue: Tasks are broken down too much, assigned chaotically, and often duplicated. AOP is designed to solve this. AOP has three core principles: Solvability: Each sub-task can be completed independently; Completeness: All sub-tasks combined can solve the original problem; Non-Redundancy: No duplication, no excess. Under these three rules, the AOP process looks like this: → User asks a question → Meta-Agent breaks down the task → Detector checks for duplicates or omissions → Reward Model predicts feasibility → Individual agents execute tasks → Continuous feedback and optimization. In their experiments, the research team used GPT-4o as the meta-agent to coordinate four types of sub-agents: math, search, code, and common sense. Results showed: Accuracy was 10% higher than single-agent systems, 4% higher than regular multi-agent systems. Costs were slightly higher, but the outcomes were more stable. Future directions are also clear: 1️⃣ Enable agent-to-agent collaboration; 2️⃣ Introduce human-in-the-loop participation; 3️⃣ Build trust and verification mechanisms, Especially for scenarios where agents spend real money, like buying plane tickets or paying for services. Finally, Kite AI also shared their vision: To build an infrastructure where agents can truly act independently and be trusted. This includes identity systems, payments, governance, and verification. Essentially, they're laying the groundwork for the entire AI Agent economy.
+5
Mentioned
|
APP
Windows
Mac
Share To

X

Telegram

Facebook

Reddit

CopyLink

|
APP
Windows
Mac
Share To

X

Telegram

Facebook

Reddit

CopyLink

Timeline

Nov 27, 13:53John Searle proposed the Chinese Room thought experiment
Nov 27, 11:55First-layer trust in on-chain identity, compliance, and banking rails
Nov 08, 11:10Mira launches Aven AI robot to enable autonomous payment and automatic verification
Nov 06, 17:29OasisVaultio's new demo surpasses seed phrases
Oct 29, 10:31Performance Comparison of Six Major AIs in Grid Strategy
Oct 20, 13:08AI has transformed from a tool into a market entity.
Oct 20, 12:48Activate OKX Auto-Invest Autopilot
Oct 17, 16:09DraperTV is live streaming on an emerging crypto platform
Oct 15, 16:40Bitcoin Core v30 Release Notes
Oct 15, 13:59BitdealerNet's Underlying Ambition and Mechanism Experiment

HotFlash

|
APP
Windows
Mac
Share To

X

Telegram

Facebook

Reddit

CopyLink

APP
Windows
Mac

X

Telegram

Facebook

Reddit

CopyLink

Hot Reads