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R1同日发布，展示了中国AI的竞争力；科技界普遍期待监管松绑，支持特朗普的科技精英包括马斯克和Andreessen均将AI监管视为障碍。","date":"2025-01-20","entities":{"benchmarks":[],"concepts":[],"models":[],"organizations":[],"people":[]},"id":"events/trump-ai-deregulation-2025","significance":"葛洪曰：两套AI治理哲学在2025年初正面交锋：一方认为不受约束的AI竞争才能保证美国领先，另一方认为没有安全保障的领先是对全人类的威胁。特朗普的选择很明确：速度优先。这个选择的后果——无论好坏——将在未来十年逐渐显现。","tags":["特朗普","美国政策","AI监管","行政令","去监管","拜登AI令","国家安全"],"tier":"LIEZHUAN","title":"特朗普AI去监管：美国选择速度胜于安全","translation_key":"events/trump-ai-deregulation-2025","type":"AIEvent","url":"/zh/events/trump-ai-deregulation-2025/","year":"2025"},{"category":"capability-unlock","context":"2024年底，GPT-4o视觉能力已成熟，计算机视觉与鼠标键盘控制技术已有充分基础；Anthropic在2024年10月率先发布Computer Use API，开放了AI控制桌面的能力；大量初创公司（Cognition Devin等）在2024年演示了AI自主完成编程任务的原型；浏览器自动化工具（Playwright、Puppeteer）为AI提供了现成的接口。","date":"2025-01-23","entities":{"benchmarks":[],"concepts":[],"models":[],"organizations":[],"people":[]},"id":"events/ai-agents-emerge-2025","significance":"葛洪曰：昔者墨子作木鸢，谓能飞三日而坠，世人讥之；今之Operator，能订餐、能填表、能代君购书，亦\"代为\"也，所代者非飞，乃人世诸事耳。此非工具之升级，乃主仆之移位——君授以意，仆具其形，所为之事，不复由人手矣。Anthropic先开其门（Computer Use），OpenAI继之以Operator，Deep Research又扩之于学究之业——三步之后，\"AI助理\"之义已非昔比，天下或将重新问之：何事当属人？何事当属机？","tags":["AI智能体","OpenAI Operator","Claude计算机使用","自主AI","MCP","深度研究","智能体化"],"tier":"SHIJIA","title":"智能体AI的崛起：从聊天机器人到自主行动者","translation_key":"events/ai-agents-emerge-2025","type":"AIEvent","url":"/zh/events/ai-agents-emerge-2025/","year":"2025"},{"category":"model-release","context":"2025年1月20日，DeepSeek R1以极低成本实现了与o1相当的推理能力，在全球AI圈引发震动；OpenAI o3-mini于1月31日发布，是OpenAI对R1的直接回应——不是打价格战，而是强调\"能力+互联网接入+低价格\"的组合优势，尤其在STEM领域。","date":"2025-01-31","entities":{"benchmarks":["AIME","GPQA Diamond","Codeforces"],"concepts":["Reasoning","API Pricing","Web Browsing","STEM","Cost Efficiency"],"models":["o3-mini","o1","o1-mini"],"organizations":["OpenAI"],"people":["Sam Altman"]},"id":"events/openai-o3-mini-2025","significance":"葛洪曰：2025年1月，DeepSeek R1以低成本震惊天下；OpenAI o3-mini应之，不以价格胜，而以\"能力+互联网接入+低价格\"三者兼备胜。昔者子贡能言利口，说服鲁国君臣；今AI以低成本说服用户，其策略不同而目的一也。夫推理模型之商品化，此其端也；天下从此知，AI之锋芒可及于人人，不必为少数特权者所专。","tags":["OpenAI","o3-mini","Reasoning","Cost Efficiency","API","OpenAI"],"tier":"SHIJIA","title":"OpenAI o3-mini：低成本推理模型发布","translation_key":"events/openai-o3-mini-2025","type":"AIEvent","url":"/zh/events/openai-o3-mini-2025/","year":"2025"},{"category":"governance","context":"2025年初，DeepSeek R1震撼全球AI格局仅两周；特朗普刚刚就职并撤销拜登AI安全行政令；欧盟AI法案已获通过，即将实施；全球对AI治理的共识在国家利益面前正在分裂；马克龙希望将法国定位为AI治理第三极，游离于中美之外。","date":"2025-02-10","entities":{"benchmarks":[],"concepts":[],"models":[],"organizations":[],"people":[]},"id":"events/paris-ai-summit-2025","significance":"葛洪曰：布莱切利是AI国家在同一份文件上签字的时刻。巴黎是他们意识到自己根本分歧的时刻——美国和英国拒签，各国宣告各自的AI战略。如果布莱切利是AI治理的元年，巴黎则是多极化的元年。AI的未来不会由单一规则体系塑造，而是由相互竞争的体系共同决定。","tags":["巴黎AI峰会","马克龙","AI治理","国际","中美","AI安全","法国"],"tier":"LIEZHUAN","title":"巴黎AI行动峰会：分裂的世界谈判AI的未来","translation_key":"events/paris-ai-summit-2025","type":"AIEvent","url":"/zh/events/paris-ai-summit-2025/","year":"2025"},{"category":"model-release","context":"2025年2月，推理模型军备竞赛进入白热化：OpenAI o3（2024年12月）以87.5% ARC-AGI震惊业界，o3-mini（1月31日）以低价API入场，DeepSeek R1（1月20日）以开源低成本引发冲击；Anthropic选择不正面竞争benchmark，而是以\"真实世界编程体验\"为核心差异点——Extended Thinking允许模型在回答前思考数十个token，这种能力在复杂代码库重构任务中表现出色。","date":"2025-02-24","entities":{"benchmarks":["SWE-bench","HumanEval","TAU-bench","OSWorld"],"concepts":["Extended Thinking","Long-Thought Reasoning","AI Coding Agents","Cognitive Offloading"],"models":["Claude 3.7 Sonnet","Claude 3.5 Sonnet","Claude 3 Opus"],"organizations":["Anthropic"],"people":["Dario Amodei","Daniela Amodei"]},"id":"events/claude-37-sonnet-2025","significance":"葛洪曰：2025年2月，推理模型之战白热化，o3、R1各有所长；Anthropic不出于benchmark之争，而出于\"真实世界编程体验\"之途，其智亦深矣。昔者匠人制器，不急于数量，而急于精巧；今AI亦然，不急于答之速，而急于思之深。Extended Thinking使模型停顿思考数万token，然后作答，此亦合兵法\"谋定而后动\"之旨者也。","tags":["Claude 3.7 Sonnet","Anthropic","Extended Thinking","Coding","AI Agents","Long Context"],"tier":"SHIJIA","title":"Claude 3.7 Sonnet：Anthropic史上最强大模型","translation_key":"events/claude-37-sonnet-2025","type":"AIEvent","url":"/zh/events/claude-37-sonnet-2025/","year":"2025"},{"category":"model-release","context":"2025年3月，DeepSeek R1已将推理模型的成本预期彻底重置；OpenAI o3-mini于1月底发布，Anthropic Claude 3.7于2月末发布；谷歌在2024年Gemini 1.5推出后遭遇了\"Gemini图像事件\"（生成历史图像的政治敏感风波），急需在技术层面重建信誉；谷歌内部TPU v5e集群在2024年下半年大幅扩充，提供了充足的训练算力。","date":"2025-03-25","entities":{"benchmarks":[],"concepts":[],"models":[],"organizations":[],"people":[]},"id":"events/gemini-2-5-pro-2025","significance":"葛洪曰：昔者Transformer之发明，天下推为谷歌之盛；其后数年，谷歌反落OpenAI之后，致人疑其发明之力是否已尽。Gemini 2.5 Pro登顶LMArena，谷歌以是为答——发明者未必能用其发明，能用者未必为发明者；今合二者为一，乃天下之大事也。古人云\"工欲善其事，必先利其器\"——谷歌之器，终成谷歌之事。","tags":["Gemini 2.5 Pro","Google DeepMind","思考模型","LMArena","多模态","长上下文"],"tier":"SHIJIA","title":"Gemini 2.5 Pro：谷歌思考模型登顶排行","translation_key":"events/gemini-2-5-pro-2025","type":"AIEvent","url":"/zh/events/gemini-2-5-pro-2025/","year":"2025"},{"category":"model-release","context":"2025年4月，DeepSeek已证明高效稀疏架构（MoE）可以在保持性能的同时大幅降低推理成本；Meta已在2024年以Llama 3系列重建了开源模型生态的领导地位；Nvidia H100集群规模化使训练30T+ token的模型成为现实；Zuckerberg在2025年公开承诺Meta将不惜一切维持前沿开源AI地位。","date":"2025-04-05","entities":{"benchmarks":[],"concepts":[],"models":[],"organizations":[],"people":[]},"id":"events/llama-4-2025","significance":"葛洪曰：开源之辩，十年于兹矣。Llama 2开其端，Llama 3继其志，Llama 4以MoE之17亿激活参数示天下——边缘可部署，前沿可媲美。此非\"人人皆得AI\"之民主，乃\"家家皆得前沿AI\"之民主。昔者印刷术兴，士人始不以书为贵；Llama 4之旨，亦欲使企业不以模型为贵也。","tags":["Llama 4","Meta","开放权重","专家混合","MoE","多模态","Scout","Maverick","Behemoth"],"tier":"SHIJIA","title":"Llama 4：Meta押注开放权重与专家混合架构","translation_key":"events/llama-4-2025","type":"AIEvent","url":"/zh/events/llama-4-2025/","year":"2025"},{"category":"model-release","context":"2025年5月，Claude 3.7 Sonnet已于2月证明混合推理模式可行；Claude Code编程助手已积累数月用户反馈；Anthropic内部对\"长时间自主任务\"（multi-hour agentic workflows）的研究积累到临界点；GPT-4.1（4月）和Gemini 2.5 Pro（3月）带来强烈竞争压力；Anthropic正处于新一轮大规模融资完成后的加速阶段。","date":"2025-05-22","entities":{"benchmarks":[],"concepts":[],"models":[],"organizations":[],"people":[]},"id":"events/claude-4-2025","significance":"葛洪曰：昔人论剑，谓\"刚则折，柔则缺\"；Anthropic不然，谓\"刚柔相济，螺旋相生\"。Claude 4之证，在SWE-bench 72.5%、小时级自主工作流——安全非能力之敌，能力亦非安全之碍。二者并育而不相害，此理在AI始为众人所见。古之名匠铸剑，淬火与打磨并行；今之造AI，对齐与扩智亦并行也。","tags":["Claude 4","Anthropic","Opus 4","Sonnet 4","智能体AI","SWE-bench","Claude 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