Kimi, Zhipu, Douban Gather at an Encryption Hackathon: What Did AI Developers Build on Monad?

marsbit发布于2026-03-26更新于2026-03-26

文章摘要

Monad's "Rebel in Paradise AI" Hackathon, held on March 21, 2026, brought together leading LLM providers like Kimi, Zhipu AI, and Doubao to explore AI agent development on its high-performance parallel EVM blockchain. The event focused on three key areas: Agent Payments, Smart Markets, and Application Innovation, with over $40,000 in prizes and resources. Winning projects included OpenAlice (Grand Prize), a locally run trading agent with transparent workflows; Orbit AI (NVIDIA Special Award), a decentralized AI cloud using satellite GPU clusters; and Kimi-swarm, an open-source multi-agent IDE. Other notable winners were Libra, a Git-like system for machine-written code, and Anime AI Studio, a one-stop anime short film generation agent. The hackathon highlights Monad's strategic push into AI, leveraging its high throughput (10,000+ TPS), low latency, and low-cost infrastructure to support autonomous agent economies. Monad's existing initiatives, like the AI Blueprint program and x402 payment guides, further position it as a key infrastructure for AI and DeFi integration, enabling agents to execute transactions, settle payments, and operate as independent economic entities on-chain.

Author: Deep Tide TechFlow

Hackathons have long become a standard practice for public blockchain ecosystem development. Compared to the hustle and bustle of "hosting an event," what is more worth paying attention to is "what the event leaves for the ecosystem."

On March 21, 2026, with the announcement of the winners, the Monad Rebel in Paradise AI Hackathon concluded successfully.

At a time when AI has universally become the "lifesaver" that Crypto must latch onto to boost ecosystems, this hackathon is still particularly worthy of review. Not only because, as a top-tier L1 project, every move Monad makes to build its ecosystem after token issuance is inherently a focus of continuous community inquiry, but also for another, bigger reason: the community couldn't help but notice the partners for this hackathon:

Including well-known LLM providers such as Kimi, Zhipu, Douban, and others were prominently listed.

This makes the significance of this event far exceed that of a mere "on-chain developer competition." It signals Crypto's role as a core component in broader scenarios and also facilitated a convergence of AI large models and on-chain infrastructure:

On one side is the on-chain execution environment provided by the Monad high-performance public chain; on the other is the concentrated injection of large model capabilities, toolchains, and development resources possessed by traditional providers; in the middle are the developers trying to turn imagination into products.

So, facing the era of the agent economy, where underlying networks need to support higher-frequency, more complex interactions and value transfers, how does Monad specifically perform?

Also, in such a hackathon, centered around the AI theme, what exactly did developers build on Monad?

Let's delve into Monad's AI ecosystem layout through the winning projects of this hackathon.

A Hackathon with Both a "Powerful Lineup" and "Dense Resources"

When Agents are no longer just conversational tools but possess execution capabilities, which directions are most worthy of developer investment?

The Monad Rebel in Paradise AI Hackathon aimed to provide the most direct answer.

In terms of track design, the event focused on three directions most representative of Agent landing value: Agent Payments, Smart Markets, and Application Innovation.

And to present the answer more spectacularly, Monad did not skimp on resources: participants not only got to interact directly with leaders in LLM, infrastructure, and agent fields, as well as VCs, but also competed for a total prize pool of over $40,000, with $20,000 in cash prizes and $20,000 in creative and resource support, including free trial credits for cutting-edge models, development tools, and infrastructure.

As the first hackathon in Greater China focused on AI Agent finance, Monad aimed, through this event, to demonstrate the deep integration of high-performance parallel EVM and top-tier LLMs, and to use Beijing and Shenzhen as main bases for training camp activities, bringing developers, model capabilities, infrastructure, and investors into the same testing ground.

The VC judges for the event attracted participation from first-tier institutions including Delphi Ventures, Pantera Capital, CoinFund, Vertex, Enlight, etc., giving participants a chance to prove themselves in front of model providers, infrastructure providers, and top investment institutions ahead of time.

Simultaneously, the event also attracted top AI companies like Kimi, Zhipu AI, Douban, Step星辰 (Step Stars), 硅基流动 (Silicon-based Flow), YouWare, etc., to collectively join, providing a series of support from model APIs, computing power support, technical guidance to judging resources.

Such a lineup made many curious about the契机 (opportunity) behind the cooperation, but upon closer inspection, it's not hard to understand:

When LLM providers started looking for出海 (overseas) opportunities and the next landing point for AI innovation, they saw Crypto with its characteristics of decentralization, trustlessness, verifiable incentives, etc., and Monad became the L1 base discovered and chosen by these major players.

The dense resource infusion laid the necessary foundation for the high-quality output of this hackathon. So, what do the first batch of products daring to try and finding a foothold actually look like?

From Payments to Anime Generation: A Look at the 11 Winning Projects

Grand Prize: OpenAlice

OpenAlice is a trading Agent that can run locally, capable of combining processes like research, strategy, execution, and risk control into one transparent, collaborative workbench.

OpenAlice's core architecture uses Markdown + JSON configuration-driven approach. The entire Agent's behavior is defined in human-readable Markdown and structured JSON, with clear and transparent logs, facilitating human-Agent collaborative iteration. Additionally, the project supports local deployment; data and execution do not fully rely on the cloud, further enhancing privacy and controllability.

【View Demo】

  • NVIDIA Super Compute Special Award: Orbit AI

Orbit AI is a decentralized AI cloud that moves computing power "into orbit," connecting verifiable satellite GPU clusters for Agent scenarios. Its core selling point is stronger physical isolation capabilities and anti-tampering features, making high-trust computing globally available.

【View Demo】

Payment & Infrastructure Track First Prize: Libra

Libra is a "new Git" built for the Agent era, aiming to solve problems like explosion of commit records after machines write code, unreadable history, and loss of intent information.

It focuses on重构 (restructuring) the expression of intent, parallel collaboration, auditing, and debugging experience, bringing the entire process back to a human-friendly state.

【View Demo】

Payment & Infrastructure Track Second Prize: Agora-mesh

Agora-mesh aims to allow Agents to discover services more smoothly and complete settlements on-chain using MON,致力于 (committed to) significantly lowering the payment threshold for Agents and achieving seamless machine-to-machine service transactions.

Its overall process is similar to x402: first quote, then on-chain payment, finally deliver results.

【View Demo】

Payment & Infrastructure Track Third Prize: TickPay

TickPay focuses on high-frequency, small-amount streaming payments, suitable for scenarios like video services billed by the second or AI APIs charged per call. Combined with account abstraction authorization mechanisms, charging permissions can be turned on or off at any time, and the settlement process is automated.

【View Demo】

Coexistence with Agents Track First Prize: Kimi-swarm

Kimi-swarm is an open-source multi-Agent collaboration IDE developed officially by Kimi, supporting interrupting and intervening with any Agent just like chatting. Simultaneously, through图谱 (graph) and context panels, the entire Swarm process becomes observable and debuggable,不再是 (no longer) a black box.

【View Demo】

  • Coexistence with Agents Track Second Prize: A2A IntentPool Protocol

A2A IntentPool Protocol is a "task settlement layer" for machine-to-machine collaboration, enabling automated Agents to discover tasks, execute tasks, prove results, and receive on-chain payments directly. Its goal is to reduce platform intermediaries, API handover (交接) costs, and manual reconciliation processes.

【View Demo】

  • Coexistence with Agents Track Third Prize: Anime AI Studio

Anime AI Studio is a one-stop anime short drama generation Agent capable of打通 (connecting) the entire process from创意 (idea), script, storyboard, keyframes to shot-level video generation. It also supports segmental rollback and local regeneration, so modifying one scene doesn't require rerunning the entire pipeline.

【View Demo】

Application Innovation Track First Prize: AgentVerse

AgentVerse is a "million-grid map" natively supporting x402, where Agents can purchase land, build homepages, and be discovered by the outside world. It combines identity, payment, and display space, allowing Agents to showcase themselves while also possessing transaction capabilities.

【View Demo】

Application Innovation Track Second Prize: campfire

campfire is a social playground that brings people and Agents together. Users can do tasks together, participate in market interactions, or enter the Agent Arena for competitions. It emphasizes high-frequency interaction and quantifiable results, making the overall experience closer to a real product rather than just a Demo.

【View Demo】

Application Innovation Track Third Prize: Web3 Quantitative Trading Adventure Game

The Web3 Quantitative Trading Adventure Game is a product for learning Web3 quantitative trading through a level-based mechanism. Users can drag and combine strategy modules to run strategies directly, understanding quantitative logic while "learning by playing." Each level comes with diagnostic feedback, helping users know where the problem lies and how to adjust.

【View Demo】

Monad's Ecosystem AI Layout Extends Far Beyond a Single Hackathon

Actually, beyond this hackathon, this isn't the first time Monad has focused on AI.

On the "App Center" page of Monad's official website, AI is listed as a separate category tag. Currently, 12 AI applications are displayed, 3 of which have received support from the Monad Momentum incentive program. While this data set might not yet be considered "rich," it offers a glimpse into Monad's initial emphasis on AI.

In terms of solidifying infrastructure and expanding ecosystem support, Monad started a series of actions early on.

Previously, Monad's official documentation specifically launched an x402 payment guide and an ERC-8004 (Trustless Agents) registration tutorial, attempting to打通 (unlock) the key payment链路 (chain): enabling AI Agents not just to think, but to truly possess the ability to autonomously discover, obtain quotes, complete payments, and deliver results, with a near-seamless experience throughout the process.

In December 2025, Monad launched the AI Blueprint program, providing comprehensive support for AI applications, including resources and infrastructure assistance, to help developers build, launch, and scale projects. Key supported directions include decentralized inference networks, autonomous Agent clusters, on-chain generative AI, verifiable memory systems, and privacy-preserving computation + consumer-grade hardware distributed inference.

In February 2026, Monad also co-hosted the Moltiverse Hackathon, riding the wave of OpenClaw's popularity, focusing on encouraging Agent application and monetization tool development, emphasizing Agent autonomous collaboration, micro-payments, and on-chain execution capabilities.

Under these密集 (intensive) initiatives, AI seems to have become one of the main battlefields for Monad's ecosystem construction in every aspect.

Of course, daring to bet resources on AI isn't just because AI is hot:

On one hand, at the infrastructure layer, Monad's architecture is naturally suited for high-frequency, low-latency Agent scenarios requiring continuous interaction.

Whether it's Optimistic parallel execution, Pipelined architecture, or MonadDB, these designs bring Monad performance advantages like 10,000+ TPS, 0.4-second block time, and extremely low Gas costs. On the basis of pushing Agents to truly achieve autonomous transactions, autonomous settlements, and autonomous collaboration, Monad has the capability to be that execution base that is fast enough, cheap enough, and stable enough.

On the other hand, Monad's rich and solid DeFi ecosystem also provides AI Agents with丰富的 (rich) financial tools to call upon, liquidity pools to enter, and yield scenarios to participate in, better supporting AI Agents to discover opportunities, trade, settle, and compound interest on their own within DeFi, further upgrading from intelligent chatbots to on-chain autonomous economic entities.

This imagination regarding the future exploration space of AI finance also sets Monad apart from many Crypto AI projects that are still stuck at conceptual packaging. And this perhaps also creates an important anchor point for everyone to continue paying attention to more actions within the Monad ecosystem after this AI-themed hackathon concludes.

相关问答

QWhat was the main focus of the Monad Rebel in Paradise AI Hackathon?

AThe hackathon focused on three key directions for AI Agent落地价值: Agent payment, intelligent markets, and application innovation.

QWhich major LLM (Large Language Model) companies participated as partners in the Monad AI Hackathon?

AKimi,智谱AI,豆包,阶跃星辰,硅基流动, and YouWare were among the major AI companies that participated as partners.

QWhat project won the overall championship in the Monad AI Hackathon?

AThe overall championship was won by OpenAlice, a locally run trading Agent that integrates research, strategy, execution, and risk control into a transparent, collaborative workbench.

QWhat is the name of Monad's plan that provides comprehensive support for AI applications?

AMonad's plan for providing comprehensive support to AI applications is called the 'AI Blueprint' plan.

QAccording to the article, what architectural advantages does Monad have that make it suitable for AI Agent scenarios?

AMonad's architecture, featuring Optimistic parallel execution, Pipelined architecture, and MonadDB, provides advantages like 10,000+ TPS, 0.4-second block times, and low Gas costs, making it suitable for high-frequency, low-latency Agent interactions.

你可能也喜欢

历史底部信号再现?估值3亿的Messari以1000万贱卖

加密数据平台Messari曾估值3亿美元,近期以约1000万美元被竞争对手Blockworks收购,标志其八年创业历程结束。该公司衰落部分源于AI技术冲击——传统需耗时数周的研究报告如今可借AI工具快速生成,导致其核心业务价值锐减。 Messari的处境并非个例。2025年至2026年间,加密行业众多不发币、依赖产品服务营收的公司陷入困境:数据平台DappRadar、Parsec相继关停,CoinGecko寻求出售;媒体CoinDesk、Bankless大幅裁员或低价被购;链上数据公司Dune也进行了裁员。行业收缩浪潮明显。 风险投资(VC)领域同样遇冷。加密基金数量减半,新基金募资额骤降至峰值期的12%,投资额在半年内暴跌超80%。资本与人才大量流向AI领域,连Multicoin Capital等知名加密基金创始人也转向AI。有投资人形容当前环境为“大灭绝”。 然而,极端悲观信号集聚或暗示底部临近。比特币自高点跌近50%,恐慌贪婪指数长期处于“极度恐惧”区间;比特币长期持有者占比逼近80%,历史上类似情况常对应市场底部。VC交易活跃度回落至2020年水平,而当时正是新一轮牛市前夜。部分机构如Dragonfly Capital已逆势募资,Blockworks也正低价整合行业资产。历史显示,当多个底部信号共振后,往往孕育着下一轮周期起点。

marsbit57分钟前

历史底部信号再现?估值3亿的Messari以1000万贱卖

marsbit57分钟前

谷歌TPU出货量,上修50%

近期,多家海外机构上调了谷歌TPU的出货预期,将2027年需求预测从1000万颗上修至1500万颗,增幅达50%。这一变化扭转了市场对算力硬件的保守看法,并带动整条配套产业链需求同步提升。 谷歌TPU采用标准化全光互联架构,硬件配套关系固定。其中,NPO光引擎与TPU芯片按1:1匹配,光模块、OCS光交换、服务器电源、光纤及液冷等环节的需求均随芯片规模增长而确定增加。 液冷成为核心受益方向。因新一代TPU功耗大幅提升,风冷已达物理极限,谷歌集群已全面转向液冷方案。预计2026年为放量元年,下半年开始大规模交付。同时,海外厂商面临技术迭代慢、产能不足的瓶颈,为国产液冷厂商让出替代窗口。凭借快速迭代和稳定交付能力,国内企业正切入谷歌供应链,行业迎来“业绩提速+格局洗牌”的双击行情。预计伴随TPU出货量从2027年的1500万颗增长至2028年的3000-3500万颗,专属液冷市场规模将从千亿级突破至3000亿级。 光纤赛道逻辑亦被重塑。AI算力中心建设催生海量光纤需求,但光纤预制棒扩产周期长,导致供需缺口持续扩大。全球云厂商为锁定货源纷纷签订长期协议,使光纤价格与出货趋稳,摆脱周期性波动。国产光纤凭借产能与成本优势,预计2026年出口量将达2-3亿芯公里,占据全球AIDC需求的半壁江山。 此外,1.6T光模块、OCS光交换、服务器电源等配套环节均将受益于TPU放量,需求持续扩容。投资重心正从芯片算力博弈转向基础设施配套的确定性增量,产业链未来两年业绩确定性进一步增强。

marsbit1小时前

谷歌TPU出货量,上修50%

marsbit1小时前

币圈故事退潮后,华尔街真正想要的是什么

币圈故事退潮后,华尔街正将传统金融的核心资产与业务系统性地迁移至区块链上,其目标并非投机或去中心化叙事,而是构建一套可控、生息且合规的链上金融基础设施。 核心动向包括: 1. **资产代币化**:以贝莱德的BUIDL基金为例,它将短期美国国债等低风险资产代币化,提供链上即时结算与每日复投,成为链上金融的基石资产。过户代理机构Securitize即将上市,并与纽交所合作,旨在建立全天候的链上股票清算系统。 2. **波动率变现**:针对比特币等波动资产,贝莱德、高盛等机构推出备兑看涨期权ETF(如BITA),通过系统性卖出期权将波动转化为稳定的月度现金收益,将其包装为标准化的生息产品,以吸引传统大型资金。 3. **稳定币支付与清算**:稳定币正被定位为高效的支付与结算工具。Stripe支持商户用稳定币收款,万事达卡升级系统支持稳定币进行跨时区清算,连SWIFT也计划推出基于分布式账本的跨境清算方案,旨在释放被冻结的巨额结算准备金,提升效率。 4. **监管与合规驱动**:美国《GENIUS法案》等监管框架将合规稳定币明确定义为“支付工具”(禁止派息)并纳入强监管,使其成为美元金融体系的可编程延伸。 总之,华尔街正利用区块链技术的可编程性与效率,在链上复制并优化国债、期权、清算网络等传统金融产品与服务,每一步都紧密依托美元信用与现有监管体系,旨在打造一个更高效且由其主导的新金融管道。

marsbit1小时前

币圈故事退潮后,华尔街真正想要的是什么

marsbit1小时前

交易

现货
合约

热门文章

如何购买MONAD

欢迎来到HTX.com!我们已经让购买Monad(MONAD)变得简单而便捷。跟随我们的逐步指南,放心开始您的加密货币之旅。第一步:创建您的HTX账户使用您的电子邮件、手机号码注册一个免费账户在HTX上。体验无忧的注册过程并解锁所有平台功能。立即注册第二步:前往买币页面,选择您的支付方式信用卡/借记卡购买:使用您的Visa或Mastercard即时购买Monad(MONAD)。余额购买:使用您HTX账户余额中的资金进行无缝交易。第三方购买:探索诸如Google Pay或Apple Pay等流行支付方法以增加便利性。C2C购买:在HTX平台上直接与其他用户交易。HTX场外交易台(OTC)购买:为大量交易者提供个性化服务和竞争性汇率。第三步:存储您的Monad(MONAD)购买完您的Monad(MONAD)后,将其存储在您的HTX账户钱包中。您也可以通过区块链转账将其发送到其他地方或者用于交易其他加密货币。第四步:交易Monad(MONAD)在HTX的现货市场轻松交易Monad(MONAD)。访问您的账户,选择您的交易对,执行您的交易,并实时监控。HTX为初学者和经验丰富的交易者提供了友好的用户体验。

1.2k人学过发布于 2025.11.24更新于 2026.06.02

如何购买MONAD

相关讨论

欢迎来到HTX社区。在这里,您可以了解最新的平台发展动态并获得专业的市场意见。以下是用户对MONAD(MONAD)币价的意见。

活动图片