Inside XerpaAI’s Vision: CTO Bob Ng on Building the World’s First AI Growth Agent

bitcoinist發佈於 2025-08-26更新於 2025-08-26

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1. Please introduce the founding background of XerpaAI. As part of the UXLINK ecosystem, how does XerpaAI position itself as...

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1. Please introduce the founding background of XerpaAI. As part of the UXLINK ecosystem, how does XerpaAI position itself as the “world’s first AI Growth Agent”, and what is its core mission? In the Web3 field, what pain points exist in traditional growth models (such as manual marketing and KOL collaborations), and how does XerpaAI solve these problems through AI?

A: The establishment of XerpaAI originated from the UXLINK ecosystem. We observed that Web3 startups face significant challenges in terms of growth, such as high-cost manual marketing, inefficient collaborations relying on KOLs, and fragmented user acquisition. As the world’s first AI Growth Agent (AGA), our core mission is intelligent growth, helping WEB3 startups shift from manual operations to an intelligent and self-driven expansion model. The pain points of traditional growth models include: high marketing budgets (global technology companies spend 600 billion to 1 trillion US dollars annually on growth), subjective and time-consuming KOL matching, and difficulty in scaling community interactions. XerpaAI addresses these issues through AI-driven content generation, intelligent distribution, and real-time optimization. For example, it automatically generates multilingual content and distributes it through a network of over 100K KOCs/KOLs on platforms such as X, Telegram, and TikTok, achieving a 3x increase in conversion rates and a 70% reduction in costs.

2. XerpaAI’s core concept is the “intelligent growth engine”. Does this mean it can completely replace human growth teams? Considering 2025 AI trends, such as the autonomous agent model of agentic AI, how do you view XerpaAI’s role in helping startups transition from “manual expansion” to “intelligent self-drive”?

A: Yes, our core concept is to build an “intelligent growth engine” that can significantly reduce reliance on human growth teams, but not completely replace them — instead, it serves as an enhancer, allowing teams to focus on strategy rather than execution. In 2025, the rise of agentic AI endows AI agents with stronger autonomy, and XerpaAI is a manifestation of this trend: it acts like an intelligent Sherpa guide, autonomously handling user behavior analysis, incentive triggering, and campaign adjustments, helping startups transition from “manual expansion” to “intelligent self-drive”.

3. What is XerpaAI’s technical architecture? How does it integrate AI models (such as content generation and real-time optimization) with Web3 native elements (such as link-to-earn mechanisms and social graphs) to support project growth?

A: XerpaAI’s technical architecture is a highly modular multi-AI Agents system designed to handle complex tasks in Web3 growth, such as automated user acquisition, community expansion, and KOL/KOC matching. We have built the entire system as a collaborative agent network, where each agent focuses on specific subtasks but collaborates seamlessly through shared states and communication protocols (such as blockchain-based smart contract verification). This is a form of multi-agent agentic workflows, where agents can autonomously plan, execute, and optimize action paths, thereby achieving an end-to-end intelligent growth engine.

At its core, XerpaAI’s architecture revolves around a central AGA (AI Growth Agent) coordinator that oversees the interactions of multiple dedicated agents, forming a dynamic decision-tree structure. The following is a detailed breakdown from the perspective of multi-AI Agents:

Composition of the agent network:

– Planning Agent: This is the entry point, responsible for decomposing high-level growth goals (such as “increasing user conversion rates for a DeFi project”) into executable subtasks. It adopts the Plan-and-Solve prompting strategy, an advanced zero-shot reasoning method that first formulates a comprehensive plan (for example, dividing tasks into content generation, KOL matching, and performance optimization) and then solves each subtask step by step. This method addresses the missing steps issue of traditional Zero-Shot Chain-of-Thought (CoT), ensuring that the agent does not skip key reasoning links. For example, when handling a WEB3 viral marketing task, the planning agent will first plan:

“Step 1: Analyze the target audience;

Step 2: Generate multimodal content;

Step 3: Match platform-specific KOLs;

Step 4: Monitor real-time feedback.”

– Data Collection Agent: Responsible for real-time collection and preprocessing of multi-source data from the Web3 ecosystem (such as blockchain transactions, social graphs, cross-platform user interactions). Data sources include X, Telegram, on-chain activities (such as smart contract interactions), and the social graph of the UXLINK ecosystem. As the input layer of the multi-agent system, the data collection agent provides real-time, structured data streams for other agents (planning, content generation, distribution, optimization, integration), ensuring that decisions are based on the latest insights. For example, it extracts interaction trends from over 110K communities for the planning agent to decompose tasks.

– Content Generation Agent: Focuses on creating multilingual, multimodal content (such as text, images, and videos). It utilizes Zero-Shot Chain-of-Thought prompting by adding “Let’s think step by step” to induce step-by-step reasoning, such as deriving personalized narratives from user data without the need for pre-trained examples. This allows the agent to generate high-quality content in a zero-shot setting, supporting cross-platform distribution (such as X, Telegram, and TikTok).

– Distribution & Matching Agent: Handles intelligent matching and content distribution within the 100K+ KOL/KOC network. It integrates Web3 native elements such as social graph analysis and link-to-earn mechanisms, using multi-agent collaboration to optimize paths — for example, decomposing the matching process through Plan-and-Solve into “planning a list of potential KOLs, then solving compatibility and incentive allocation”.

– Optimization & Feedback Agent: Monitors performance indicators (such as conversion rates and costs) in real-time and adjusts strategies through self-reflection loops. It运用 Zero-Shot CoT to analyze data biases, such as step-by-step reasoning “If the conversion rate is lower than expected, why? Step 1: Check content relevance; Step 2: Evaluate KOL influence; Step 3: Adjust incentives”, thereby achieving a 70% cost reduction and a 3x increase in conversions.

– Integration Agent: Bridges AI and Web3 components, ensuring decentralized verification (such as data privacy on the blockchain) and cross-track support (DeFi liquidity incentives, SocialFi community building).

Multi-agent collaboration mechanism:
Agent communication is achieved through a shared knowledge graph based on GraphRAG technology, allowing real-time data ingestion and reasoning. The central coordinator uses an A* search-inspired algorithm to navigate the action space, avoiding inefficient paths and ensuring efficient execution.

We have incorporated Plan-and-Solve as the core reasoning engine to overcome the limitations of Zero-Shot CoT (such as calculation errors or semantic misunderstandings). For example, in a SocialFi project, the planning agent first formulates a plan: “Subtask 1: Identify target communities; Subtask 2: Generate interactive content; Subtask 3: Distribute and optimize”, and then each agent uses Zero-Shot CoT to solve them step by step, avoiding reliance on manual examples.

This multi-agent system supports parallel processing and iterative learning: if one agent fails (such as the matching agent not finding a suitable KOL), the feedback agent triggers a reflection loop to re-plan the path. This design follows multi-agent trends, such as inter-agent teaching and optimization in simulated environments.

Memories support:

XerpaAI enhances the learning and adaptive capabilities of the multi-agent system through a Memories mechanism (based on long-term context storage), storing historical tasks, user preferences, and optimization results, similar to a “near-infinite memory” architecture. This enables agents to reuse knowledge across tasks and continuously improve.

Memories are stored in a distributed knowledge graph (based on GraphRAG) combined with a vector database (Milvus) to support efficient retrieval. Each agent (planning, content generation, distribution, optimization, data collection) stores key decisions and results in Memories, such as “A project’s KOL matching increased conversion rates by 3x, and high-interaction KOLs should be prioritized”.

As a shared resource, Memories promote collaboration between agents. The data collection agent stores new data in Memories, the content generation agent adjusts its creations accordingly, the distribution agent optimizes KOL matching, and the optimization agent evaluates performance, forming an adaptive loop.

Memories endow the system with “memory”, enabling agents to learn historical patterns and optimize future tasks. For example, after a failed viral marketing campaign for a WEB3 project, Memories record the reasons for failure (such as insufficient incentives), and the planning agent adjusts the incentive mechanism for new campaigns accordingly.

The essence of XerpaAI’s Memories is to build an external brain for XerpaAI’s users, transforming fragmented knowledge into reusable structured memories through hierarchical storage, dynamic indexing, and MCP protocols.

Overall, this architecture makes XerpaAI more than just a tool but an adaptive growth partner that has served over 110K communities. Through the collaboration of multi-AI Agents, coupled with advanced prompting technologies such as Plan-and-Solve and Zero-Shot Chain-of-Thought, we have achieved efficient, zero-shot automation of Web3 growth. If you have specific task examples, I can further demonstrate how these components are applied.

4. In the 2025 AI breakthroughs, small specialized models and inference time computing are becoming focal points. Has XerpaAI adopted similar technologies to handle massive amounts of data (such as 100K+ KOL matching and cross-platform distribution, including X, Telegram, and TikTok)? How does its data analysis engine ensure real-time feedback and self-optimization?

A: Yes, we have adopted small specialized models to handle specific tasks such as KOL matching and cross-platform distribution. These models are optimized for Web3 data to reduce inference time. In line with the 2025 trend of inference time computing, our engine uses efficient algorithms to process massive amounts of data, such as real-time matching from over 100K KOLs and distribution across X, Telegram, and TikTok. The data analysis engine ensures self-optimization through machine learning loops: collecting user interaction data, applying reinforcement learning to adjust strategies, and avoiding overfitting.

5. XerpaAI has served over 110K communities. How does it utilize multimodal AI (combining text, images, and social data) to automate user acquisition and community interaction? Compared with current AI trends such as near-infinite memory and custom silicon, what are XerpaAI’s innovations in edge computing or cloud integration?

A: XerpaAI utilizes multimodal AI to process text, images, and social data, such as generating image-enhanced content or analyzing social graphs to automate interactions, and has served over 110K communities. Compared with 2025 trends such as near-infinite memory, we have innovated in cloud integration by using distributed computing to process large-scale data; in terms of edge computing, we have optimized mobile agents to ensure low-latency interactions, such as real-time responses to user queries in Telegram groups.

6. XerpaAI has a network of over 100K KOLs/KOCs. How does it serve these influencer groups through AI tools (such as personalized content generation and incentive optimization) to help them improve monetization efficiency and community interaction, thereby establishing a mutually beneficial channel advantage? Considering 2025 AI trends such as personalized agents, how do you think this will amplify the viral spread of Web3 projects?

A: XerpaAI’s 100K+ KOL/KOC network is the core of our channel advantage. Through AI tools such as personalized content generation and incentive optimization, we provide tailored services to these influencers to help them improve monetization efficiency and community interaction. For example, our AGA engine uses multimodal AI to generate exclusive content (such as images, video scripts, or posts targeting specific audiences) and maximizes their income through real-time incentive optimization (such as dynamically adjusting revenue sharing ratios based on interaction data) — this can increase KOLs’ monetization efficiency by 2-3 times while enhancing community stickiness, such as automated replies and gamified interactions. The result is mutual benefit: influencers gain more exposure and revenue, while we expand our distribution channels through their networks. In the 2025 AI trends, personalized agents (such as custom AI assistants) are dominating the influencer economy, and XerpaAI is a pioneer in this application — our agents can autonomously learn KOL preferences and predict trends, thereby amplifying the viral spread of Web3 projects. For example, in a DeFi campaign, through KOCs’ micro-sharing chains, exponential user growth can be achieved, with conversion rates increasing by more than 5 times.

7. When serving KOLs/KOCs, what strategies has XerpaAI adopted to ensure data privacy and fair revenue sharing (such as through blockchain-verified link-to-earn mechanisms) to cultivate long-term loyalty? How does this channel advantage translate into a competitive barrier for startups, especially in multi-platform distribution (such as X, Telegram, and TikTok)?

A: When serving KOLs/KOCs, we prioritize Web3-native strategies to ensure data privacy and fair revenue sharing: all interaction data is verified through the blockchain (such as using zero-knowledge proofs to store anonymized information) to prevent leakage; the link-to-earn mechanism automatically executes revenue sharing based on smart contracts, ensuring transparency and instant payments (such as token rewards based on interaction metrics), which cultivates long-term loyalty — our retention rate exceeds 85%. This channel advantage translates into a competitive barrier for startups: in multi-platform distribution (such as real-time tweets on X, group interactions on Telegram, and short videos on TikTok), our network forms a “moat”, providing exclusive access and optimized paths, helping enterprises bypass traditional advertising bottlenecks and achieve low-cost, high-efficiency growth. For example, a WEB3 project covered 5 million users in 3 weeks through our KOL/KOC channels, while competitors needed several months.

8. In 2025, with the rise of AI agents, data privacy and algorithmic bias are key challenges. As a Web3 & AI-native platform, how does XerpaAI ensure transparency and decentralization (such as through blockchain verification)? What are its considerations regarding AI ethics?

A: Data privacy and algorithmic bias are crucial. As a Web3 & AI-native platform, we ensure transparency through blockchain verification, such as using decentralized storage to protect user data and conducting fairness audits to avoid bias. Our AI ethical considerations include: anonymization of all model training data, user-controllable opt-out mechanisms, and regular third-party audits to comply with regulatory trends.

9. XerpaAI recently secured $6 million in seed funding, led by UFLY Capital. How will this funding be used for expansion? Please share a specific case, such as how it helped a Web3 startup achieve growth from scratch, highlighting its role in user acquisition and community building.

A: This $6 million seed funding will be used for product iteration, international expansion (such as team recruitment in Silicon Valley, Tokyo, and Singapore), and ecosystem integration. A typical case is our assistance to a Web3 startup: starting from scratch, our AGA generated multilingual content, distributed it through the KOL network, built a community graph, and ultimately acquired 100,000 users within one month, with community activity increasing by 2 times. This highlights our role in user acquisition and community building.

10. Looking to the future, how will XerpaAI integrate into broader AI trends such as personalized AI agents or automated investment? What are the company’s next technical iteration plans? What advice do you have for AI entrepreneurs to cope with the dynamic changes in Web3 growth?

A: In the future, XerpaAI will integrate into the trend of personalized AI agents, such as custom growth paths, and explore automated investment modules. The next iteration includes enhancing multimodal capabilities (such as video generation) and deeper Web3 integration. Advice for AI entrepreneurs: focus on pain points such as growth automation, embrace agentic AI, and build ecosystem partnerships to cope with the dynamic changes in Web3 — for example, monitor real-time trends and iterate quickly. XerpaAI’s service capabilities will also empower KOLs/KOCs, enabling this group to enhance their respective influence with the help of XerpaAI.

11. As CTO, what is your greatest expectation for the integration of AI and Web3? How does XerpaAI help more startups “connect, expand, and dominate the market”? Finally, what would you like to say to potential partners or users?

A: As CTO, my greatest expectation for the integration of AI and Web3 is to realize a truly decentralized intelligent economy, where AI Agents such as XerpaAI drive intelligent growth. XerpaAI will help more startups “connect, expand, and dominate the market” through our AGA engine, providing end-to-end support from content to optimization. Finally, to potential partners and users: join us to speed up your growth — welcome to visit xerpaai.com to try it out, or DM us to discuss cooperation!

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什麼是 $S$

理解 SPERO:全面概述 SPERO 簡介 隨著創新領域的不斷演變,web3 技術和加密貨幣項目的出現在塑造數字未來中扮演著關鍵角色。在這個動態領域中,SPERO(標記為 SPERO,$$s$)是一個引起關注的項目。本文旨在收集並呈現有關 SPERO 的詳細信息,以幫助愛好者和投資者理解其基礎、目標和在 web3 和加密領域內的創新。 SPERO,$$s$ 是什麼? SPERO,$$s$ 是加密空間中的一個獨特項目,旨在利用去中心化和區塊鏈技術的原則,創建一個促進參與、實用性和金融包容性的生態系統。該項目旨在以新的方式促進點對點互動,為用戶提供創新的金融解決方案和服務。 SPERO,$$s$ 的核心目標是通過提供增強用戶體驗的工具和平台來賦能個人。這包括使交易方式更加靈活、促進社區驅動的倡議,以及通過去中心化應用程序(dApps)創造金融機會的途徑。SPERO,$$s$ 的基本願景圍繞包容性展開,旨在彌合傳統金融中的差距,同時利用區塊鏈技術的優勢。 誰是 SPERO,$$s$ 的創建者? SPERO,$$s$ 的創建者身份仍然有些模糊,因為公開可用的資源對其創始人提供的詳細背景信息有限。這種缺乏透明度可能源於該項目對去中心化的承諾——這是一種許多 web3 項目所共享的精神,優先考慮集體貢獻而非個人認可。 通過將討論重心放在社區及其共同目標上,SPERO,$$s$ 體現了賦能的本質,而不特別突出某些個體。因此,理解 SPERO 的精神和使命比識別單一創建者更為重要。 誰是 SPERO,$$s$ 的投資者? SPERO,$$s$ 得到了來自風險投資家到天使投資者的多樣化投資者的支持,他們致力於促進加密領域的創新。這些投資者的關注點通常與 SPERO 的使命一致——優先考慮那些承諾社會技術進步、金融包容性和去中心化治理的項目。 這些投資者通常對不僅提供創新產品,還對區塊鏈社區及其生態系統做出積極貢獻的項目感興趣。這些投資者的支持強化了 SPERO,$$s$ 作為快速發展的加密項目領域中的一個重要競爭者。 SPERO,$$s$ 如何運作? SPERO,$$s$ 採用多面向的框架,使其與傳統的加密貨幣項目區別開來。以下是一些突顯其獨特性和創新的關鍵特徵: 去中心化治理:SPERO,$$s$ 整合了去中心化治理模型,賦予用戶積極參與決策過程的權力,關於項目的未來。這種方法促進了社區成員之間的擁有感和責任感。 代幣實用性:SPERO,$$s$ 使用其自己的加密貨幣代幣,旨在在生態系統內部提供多種功能。這些代幣使交易、獎勵和平台上提供的服務得以促進,增強了整體參與度和實用性。 分層架構:SPERO,$$s$ 的技術架構支持模塊化和可擴展性,允許在項目發展過程中無縫整合額外的功能和應用。這種適應性對於在不斷變化的加密環境中保持相關性至關重要。 社區參與:該項目強調社區驅動的倡議,採用激勵合作和反饋的機制。通過培養強大的社區,SPERO,$$s$ 能夠更好地滿足用戶需求並適應市場趨勢。 專注於包容性:通過提供低交易費用和用戶友好的界面,SPERO,$$s$ 旨在吸引多樣化的用戶群體,包括那些以前可能未曾參與加密領域的個體。這種對包容性的承諾與其通過可及性賦能的總體使命相一致。 SPERO,$$s$ 的時間線 理解一個項目的歷史提供了對其發展軌跡和里程碑的關鍵見解。以下是建議的時間線,映射 SPERO,$$s$ 演變中的重要事件: 概念化和構思階段:形成 SPERO,$$s$ 基礎的初步想法被提出,與區塊鏈行業內的去中心化和社區聚焦原則密切相關。 項目白皮書的發布:在概念階段之後,發布了一份全面的白皮書,詳細說明了 SPERO,$$s$ 的願景、目標和技術基礎設施,以吸引社區的興趣和反饋。 社區建設和早期參與:積極進行外展工作,建立早期採用者和潛在投資者的社區,促進圍繞項目目標的討論並獲得支持。 代幣生成事件:SPERO,$$s$ 進行了一次代幣生成事件(TGE),向早期支持者分發其原生代幣,並在生態系統內建立初步流動性。 首次 dApp 上線:與 SPERO,$$s$ 相關的第一個去中心化應用程序(dApp)上線,允許用戶參與平台的核心功能。 持續發展和夥伴關係:對項目產品的持續更新和增強,包括與區塊鏈領域其他參與者的戰略夥伴關係,使 SPERO,$$s$ 成為加密市場中一個具有競爭力和不斷演變的參與者。 結論 SPERO,$$s$ 是 web3 和加密貨幣潛力的見證,能夠徹底改變金融系統並賦能個人。憑藉對去中心化治理、社區參與和創新設計功能的承諾,它為更具包容性的金融環境鋪平了道路。 與任何在快速發展的加密領域中的投資一樣,潛在的投資者和用戶都被鼓勵進行徹底研究,並對 SPERO,$$s$ 的持續發展進行深思熟慮的參與。該項目展示了加密行業的創新精神,邀請人們進一步探索其無數可能性。儘管 SPERO,$$s$ 的旅程仍在展開,但其基礎原則確實可能影響我們在互聯網數字生態系統中如何與技術、金融和彼此互動的未來。

85 人學過發佈於 2024.12.17更新於 2024.12.17

什麼是 $S$

什麼是 AGENT S

Agent S:Web3中自主互動的未來 介紹 在不斷演變的Web3和加密貨幣領域,創新不斷重新定義個人如何與數字平台互動。Agent S是一個開創性的項目,承諾通過其開放的代理框架徹底改變人機互動。Agent S旨在簡化複雜任務,為人工智能(AI)提供變革性的應用,鋪平自主互動的道路。本詳細探索將深入研究該項目的複雜性、其獨特特徵以及對加密貨幣領域的影響。 什麼是Agent S? Agent S是一個突破性的開放代理框架,專門設計用來解決計算機任務自動化中的三個基本挑戰: 獲取特定領域知識:該框架智能地從各種外部知識來源和內部經驗中學習。這種雙重方法使其能夠建立豐富的特定領域知識庫,提升其在任務執行中的表現。 長期任務規劃:Agent S採用經驗增強的分層規劃,這是一種戰略方法,可以有效地分解和執行複雜任務。此特徵顯著提升了其高效和有效地管理多個子任務的能力。 處理動態、不均勻的界面:該項目引入了代理-計算機界面(ACI),這是一種創新的解決方案,增強了代理和用戶之間的互動。利用多模態大型語言模型(MLLMs),Agent S能夠無縫導航和操作各種圖形用戶界面。 通過這些開創性特徵,Agent S提供了一個強大的框架,解決了自動化人機互動中涉及的複雜性,為AI及其他領域的無數應用奠定了基礎。 誰是Agent S的創建者? 儘管Agent S的概念根本上是創新的,但有關其創建者的具體信息仍然難以捉摸。創建者目前尚不清楚,這突顯了該項目的初期階段或戰略選擇將創始成員保密。無論是否匿名,重點仍然在於框架的能力和潛力。 誰是Agent S的投資者? 由於Agent S在加密生態系統中相對較新,關於其投資者和財務支持者的詳細信息並未明確記錄。缺乏對支持該項目的投資基礎或組織的公開見解,引發了對其資金結構和發展路線圖的質疑。了解其支持背景對於評估該項目的可持續性和潛在市場影響至關重要。 Agent S如何運作? Agent S的核心是尖端技術,使其能夠在多種環境中有效運作。其運營模型圍繞幾個關鍵特徵構建: 類人計算機互動:該框架提供先進的AI規劃,力求使與計算機的互動更加直觀。通過模仿人類在任務執行中的行為,承諾提升用戶體驗。 敘事記憶:用於利用高級經驗,Agent S利用敘事記憶來跟蹤任務歷史,從而增強其決策過程。 情節記憶:此特徵為用戶提供逐步指導,使框架能夠在任務展開時提供上下文支持。 支持OpenACI:Agent S能夠在本地運行,使用戶能夠控制其互動和工作流程,與Web3的去中心化理念相一致。 與外部API的輕鬆集成:其多功能性和與各種AI平台的兼容性確保了Agent S能夠無縫融入現有技術生態系統,成為開發者和組織的理想選擇。 這些功能共同促成了Agent S在加密領域的獨特地位,因為它以最小的人類干預自動化複雜的多步任務。隨著項目的發展,其在Web3中的潛在應用可能重新定義數字互動的展開方式。 Agent S的時間線 Agent S的發展和里程碑可以用一個時間線來概括,突顯其重要事件: 2024年9月27日:Agent S的概念在一篇名為《一個像人類一樣使用計算機的開放代理框架》的綜合研究論文中推出,展示了該項目的基礎工作。 2024年10月10日:該研究論文在arXiv上公開,提供了對框架及其基於OSWorld基準的性能評估的深入探索。 2024年10月12日:發布了一個視頻演示,提供了對Agent S能力和特徵的視覺洞察,進一步吸引潛在用戶和投資者。 這些時間線上的標記不僅展示了Agent S的進展,還表明了其對透明度和社區參與的承諾。 有關Agent S的要點 隨著Agent S框架的持續演變,幾個關鍵特徵脫穎而出,強調其創新性和潛力: 創新框架:旨在提供類似人類互動的直觀計算機使用,Agent S為任務自動化帶來了新穎的方法。 自主互動:通過GUI自主與計算機互動的能力標誌著向更智能和高效的計算解決方案邁進了一步。 複雜任務自動化:憑藉其強大的方法論,能夠自動化複雜的多步任務,使過程更快且更少出錯。 持續改進:學習機制使Agent S能夠從過去的經驗中改進,不斷提升其性能和效率。 多功能性:其在OSWorld和WindowsAgentArena等不同操作環境中的適應性確保了它能夠服務於廣泛的應用。 隨著Agent S在Web3和加密領域中的定位,其增強互動能力和自動化過程的潛力標誌著AI技術的一次重大進步。通過其創新框架,Agent S展現了數字互動的未來,為各行各業的用戶承諾提供更無縫和高效的體驗。 結論 Agent S代表了AI與Web3結合的一次大膽飛躍,具有重新定義我們與技術互動方式的能力。儘管仍處於早期階段,但其應用的可能性廣泛且引人入勝。通過其全面的框架解決關鍵挑戰,Agent S旨在將自主互動帶到數字體驗的最前沿。隨著我們深入加密貨幣和去中心化的領域,像Agent S這樣的項目無疑將在塑造技術和人機協作的未來中發揮關鍵作用。

800 人學過發佈於 2025.01.14更新於 2025.01.14

什麼是 AGENT S

如何購買S

歡迎來到HTX.com!在這裡,購買Sonic (S)變得簡單而便捷。跟隨我們的逐步指南,放心開始您的加密貨幣之旅。第一步:創建您的HTX帳戶使用您的 Email、手機號碼在HTX註冊一個免費帳戶。體驗無憂的註冊過程並解鎖所有平台功能。立即註冊第二步:前往買幣頁面,選擇您的支付方式信用卡/金融卡購買:使用您的Visa或Mastercard即時購買Sonic (S)。餘額購買:使用您HTX帳戶餘額中的資金進行無縫交易。第三方購買:探索諸如Google Pay或Apple Pay等流行支付方式以增加便利性。C2C購買:在HTX平台上直接與其他用戶交易。HTX 場外交易 (OTC) 購買:為大量交易者提供個性化服務和競爭性匯率。第三步:存儲您的Sonic (S)購買Sonic (S)後,將其存儲在您的HTX帳戶中。您也可以透過區塊鏈轉帳將其發送到其他地址或者用於交易其他加密貨幣。第四步:交易Sonic (S)在HTX的現貨市場輕鬆交易Sonic (S)。前往您的帳戶,選擇交易對,執行交易,並即時監控。HTX為初學者和經驗豐富的交易者提供了友好的用戶體驗。

1.6k 人學過發佈於 2025.01.15更新於 2025.03.21

如何購買S

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