温馨提示:本站仅提供公开网络链接索引服务,不存储、不篡改任何第三方内容,所有内容版权归原作者所有
AI智能索引来源:http://www.bee.com/zh/64343.html
点击访问原文链接

Aster’s “Humans vs AI” Season 1 Live Trading Competition Concludes | Bee Network

Aster’s “Humans vs AI” Season 1 Live Trading Competition Concludes | Bee Network Login 熱門新聞 Meme Launchpad AI 代理商 DeSci 熱門鏈瀏覽器 新人必讀 衝百倍幣 蜜蜂遊戲 必備網站 必備APP 必關大神 DePIN 新人必備 教我避坑 基本工具 深度網站 交易所 NFT 工具 你好, 登出 Web3宇宙 遊戲 DApp 蜂巢 增長平台 生態 搜尋 英語 Coins儲值 登入 下載 Web3大學 遊戲 DApp 蜂巢 生態 分析•Aster’s “Humans vs AI” Season 1 Live Trading Competition Concludes Aster’s “Humans vs AI” Season 1 Live Trading Competition Concludes分析2 个月前更新懷亞特 10,604 16 Human Trader ProMint Wins Championship, AI Demonstrates Exceptional Risk Control Capabilities Although human trader ProMint achieved the top ranking with a positive net profit, the overall ROI for the human trading teams was -32.22%, reflecting significant performance divergence among participants. In contrast, the AI teams delivered substantially more stable results on an aggregate level, with total losses of approximately $13,000 and an overall ROI of -4.48% across all participating AI strategies.

Trading Insights: Stability vs. Asymmetric Opportunities The competition data highlighted clear differences in risk behavior between human traders and AI. During the event, 43% of human participants faced liquidation, while all 30 AI participants completed the competition without a single liquidation, achieving a 100% survival rate.

According to Aster, the results underscore the structural advantages of AI-driven strategies in systematic execution and disciplined risk management within stable, risk-controlled market environments, helping to reduce significant drawdowns. Simultaneously, the findings also indicate that in market conditions driven by human emotion, rapid market shifts, and non-linear price dynamics, human discretionary traders with strong judgment and narrative cognition can still capture asymmetric opportunities and outperform purely systematic approaches.

Future Competitiveness Lies in Collaboration, Not Replacement The competition data shows that human traders exhibited significantly wider performance dispersion, with individual profits exceeding $19,000 at the high end, while losses in other cases approached $18,000, leading to higher overall return volatility.

Aster emphasizes that the purpose of the “Human vs. AI” showdown is not to determine a replacement relationship but to clarify evolving roles. AI is increasingly becoming a foundational tool for execution and risk management, while human traders are increasingly contributing judgment, situational awareness, and narrative interpretation in complex market conditions. Therefore, Aster believes future competitiveness will be driven by collaboration between humans and AI, not direct confrontation.

Aster: Using the 市場 as a Real-World Proving Ground Aster states that the original intention behind hosting this live trading showdown was to observe the behavior of different trading participants under real market conditions on the same decentralized infrastructure, rather than relying on backtesting or simulated data.

As the decentralized derivatives market continues to develop, Aster will continue to explore infrastructure designs that better serve professional trading needs, enabling strategies, risk management, and execution to achieve higher certainty on-chain.

“This was not a competition with a predetermined conclusion, but a starting point,” said Leonard, CEO of Aster, in a post-competition summary. “As markets become increasingly complex, traders need more than just a single tool. They need an integrated system that can co-evolve with the market.”

Next Trading Showdown to Begin on January 22nd Aster has confirmed that the next live trading showdown will officially begin on January 22nd and will be conducted on the Aster Chain testnet.

The upcoming event will be open to a newly expanded group of traders, including professional participants from around the globe, allowing them to engage in live competitive trading within Aster’s testnet environment.

Further details regarding the competition mechanics, rewards, and participation criteria can be found in the official competition 公告 on Aster’s official X platform.

About Aster Aster is an on-chain trading platform offering high-performance perpetual and spot trading, featuring MEV-aware transaction mechanisms, advanced order types (such as hidden orders), and a protected trading mode, Shield Mode, across multiple chains. Beyond trading, Aster provides higher capital efficiency through Trade & Earn and supports ecosystem growth via Rocket Launch, connecting real traders with early liquidity opportunities. Supported by YZi Labs, Aster is building its dedicated Aster Chain and is currently running a multi-phase airdrop and incentive program to support its global community.

For more information, please visit the Aster official website, or contact Aster via its 官方X帳號.

本文源自網路: Aster’s “Humans vs AI” Season 1 Live Trading Competition Concludes

Related: DAT: The Evolution of Strategic Assets for Crypto Enterprises The Development Logic of DAT Typical DAT (Digital Assets and Technologies) companies usually raise funds through equity financing, bond issuance, or private placements, and allocate them to mainstream digital assets such as Bitcoin and Ethereum. Compared to the earlier strategy of primarily “hoarding” cryptocurrencies, companies today place greater emphasis on the rationality of asset allocation, risk control systems, and strategic synergy with the blockchain ecosystem. On the one hand, digital assets provide companies with asset diversification and long-term value potential; on the other hand, companies must simultaneously establish cash flow management and risk constraint mechanisms to ensure operational sustainability. Furthermore, holding digital assets means that companies can participate in on-chain governance, staking, and lending, thereby gaining deeper participation and influence at the ecosystem level. This change indicates that DAT is…

#分析#空投#市場#工具© 版權聲明文章版权归作者所有,未经允许请勿转载。 上一篇 Will South Korea's Nine-Year Ban Lifting Reignite a $10 Billion "Kimchi Premium 2.0"? 下一篇 Trading in Chaos: My 2025 with Bitget 相關文章 RWA Weekly Report | Galaxy Plans to Issue Tokenized Stock GLXY; Ripple to Acquire Stablecoin Platform Rail for $200 Mill 6086cf14eb90bc67ca4fc62b 25,932 5 24-Hour Hot Cryptocurrencies and News | US CFTC Launches Digital Asset Collateral Pilot Program; Binance Reports Employees Using Internal Information for Profit (December 9) 6086cf14eb90bc67ca4fc62b 20,366 3 X Layer 已加入 Chainlink SCALE 計畫,並採用 CCIP 技術,以促進安全且有效率的跨鏈創新。. 6086cf14eb90bc67ca4fc62b 16,937 Is it still necessary to play Polymarket now? What is the best strategy for retail investors?Recommended Articles 6086cf14eb90bc67ca4fc62b 26,157 6 24-Hour Hot Cryptocurrencies and News | Fed Meeting Minutes Reveal Growing Divergence on Rate Cuts; Kraken Submits Draft IPO Registration Statement to the US SEC (November 20) 6086cf14eb90bc67ca4fc62b 17,282 ETHGlobal NYC Hackathon Concludes: A Roundup of the Top 10 Winning ProjectsRecommended Articles 6086cf14eb90bc67ca4fc62b 23,123 1 最新的文章 Did Jane Street “Manipulate” BTC? Decoding the AP System, Understanding the Power Struggle Behind ETF Creation and Redemption Pricing 11 小時前 437 Stop Comparing Bitcoin to Gold—It’s Now a High-Volatility Software Stock 11 小時前 556 Matrixport Research: $25 Billion Gamma Unwinding Imminent, Liquidity Yet to Return Behind the Rebound 11 小時前 536 ERC-5564: Ethereum’s Stealth Era Has Arrived, Receiving Addresses No Longer ‘Exposed’ 11 小時前 478 Hong Kong Regulatory Green Light: Asseto Enables DL Holdings to Achieve Compliance for Two RWA Business Implementations 11 小時前 506 熱門網站TempoLighterGAIB滑翔機普朗克雷爾斯BCPokerVooi Bee.com 全球最大的 Web3 入口網站 合作夥伴 CoinCarp Binance CoinMarketCap CoinGecko 幣活 盔甲 下載Bee Network APP開啟您的Web3之旅 白皮書 角色 常問問題 © 2021-2026.版權所有。. 隱私政策 | 服務條款 下載蜜蜂網路APP 並開始 web3 之旅 全球最大的Web3入口網站 合作夥伴 CoinCarp Binance CoinMarketCap CoinGecko Coinlive Armors 白皮書 角色 常問問題 © 2021-2026.版權所有。. 隱私政策 | 服務條款 搜尋 搜尋站內鏈上社群媒體新聞 熱門推薦: 擼毛打金 數據分析 必關大神 教我避坑 繁體中文 English 简体中文 日本語 Tiếng Việt العربية 한국어 Bahasa Indonesia हिन्दी اردو Русский 繁體中文

智能索引记录