📢 Gate Square Exclusive: #WXTM Creative Contest# Is Now Live!
Celebrate CandyDrop Round 59 featuring MinoTari (WXTM) — compete for a 70,000 WXTM prize pool!
🎯 About MinoTari (WXTM)
Tari is a Rust-based blockchain protocol centered around digital assets.
It empowers creators to build new types of digital experiences and narratives.
With Tari, digitally scarce assets—like collectibles or in-game items—unlock new business opportunities for creators.
🎨 Event Period:
Aug 7, 2025, 09:00 – Aug 12, 2025, 16:00 (UTC)
📌 How to Participate:
Post original content on Gate Square related to WXTM or its
Web3 Exploration AI Agent: The Innovative Path from Manus to MC
Exploration and Development of AI Agents in the Web3 Field
Recently, a global first universal AI Agent product named Manus has attracted widespread attention. Developed by the Chinese startup Monica, this product demonstrates strong capabilities in independent thinking, planning, and executing complex tasks, providing new ideas and inspiration for the development of AI Agents.
AI Agent Overview
An AI Agent is a computer program capable of autonomously making decisions and executing tasks based on the environment, input, and predefined goals. Its core components include a large language model (LLM) as the "brain", observation and perception mechanisms, reasoning processes, action execution, and memory and retrieval functions.
The design patterns of AI Agent mainly have two development routes: one emphasizes planning ability, while the other emphasizes reflective ability. Among them, the ReAct pattern is currently the most widely used design pattern, with a typical process that includes three steps: thinking, acting, and observing, forming a cyclical process.
According to the number of agents, AI Agents can be divided into Single Agent and Multi Agent. Single Agents mainly rely on the combination of LLM and tools, while Multi Agents complete complex tasks through collaboration among Agents with different role positioning.
The Current State of AI Agents in Web3
In the Web3 industry, the development of AI Agents has experienced fluctuations. Currently, prominent exploration directions include:
From the perspective of economic models, the launch platform model is currently the most likely to achieve a self-sustaining economic loop. However, this model also faces the challenge of insufficient asset attractiveness, especially in the current market environment.
The Integration of MCP and Web3
The emergence of Model Context Protocol (MCP) has brought new exploration directions for AI Agents in Web3:
These directions, although theoretically capable of injecting decentralized trust mechanisms and economic incentives into AI Agent applications, still face challenges in terms of technical implementation and efficiency.
Outlook
The integration of AI and Web3 is an inevitable trend. Although there are still many challenges at present, continuous exploration and innovation will drive the development of this field. We need to maintain patience and confidence, looking forward to the emergence of a milestone product that can break external doubts and demonstrate the practicality of Web3.