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Codez
Codez@0xCodez·
A senior Anthropic engineer just dropped 11-page PDF on "Loop Engineering" for agentic systems. The shift: you stop prompting the agent. You build the system that prompts it instead. Schedule → Discover → Build → Verify → Repeat Every loop runs one turn, five moves: • Discovery: it finds its own work - failing CI, open issues, recent commits - instead of being handed a list. • Handoff: each task gets an isolated git worktree so parallel agents don't collide. • Verification: a second agent, told to assume the code is broken, reviews the first. The "thing that can say no." • Persistence: results get written to disk, never left in a context window that gets flushed. • Scheduling: an automation wakes it on a timer. That's what makes it a loop. The key insight: an agent grading its own work always praises it. This 11-page PDF changed how I'm building agentic systems today. Read it now, then explore the article below.
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Codez@0xCodez

x.com/i/article/2064…

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Gipp 🦅
Gipp 🦅@gippp69·
@0xCodez Schedule → Discover → Build → Verify → Repeat is essentially the best work cycle
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kepo
kepo@kepochnik·
@0xCodez interesting thing for reading thanks, Codez
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Movez
Movez@0xMovez·
@0xCodez very useful read ! thanks for the share Codez !
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Futin
Futin@fancyputin·
@0xCodez guys, you realise this is fake right? this pdf doesn't exist and hasn't been published by anyone at anthropic. I'd bet there's something baked into the pdf to prompt claude to do some shit.
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Rick Jackson
Rick Jackson@RICKREZIN·
@0xCodez I’ve been doing that for two years already. This dude is late to the party.
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⬣ chetparker ⬣
⬣ chetparker ⬣@ParkerChet·
@0xCodez Why would you blow so many tokens for substandard output, good for non scalable products
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Sam Kant 🇬🇧
Sam Kant 🇬🇧@Sam_Kant_Online·
@0xCodez As a beginner what is stopping putting this PDF into an AI and having it build its own loops? What input do I actually need to do? It seems the user is superfluous. Am I wrong?
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Accio
Accio@Accio_official·
@0xCodez I agree with “the thing that can say no.” That is why how to deploy agents is probably the most important enterprise-level operation in the next phase.
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Joshua Marpet
Joshua Marpet@quadling·
@0xCodez Yeah. Daniel miessler designed this as PAI almost a year ago. Old news
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Alpha Batcher
Alpha Batcher@alphabatcher·
@0xCodez this 11 page paper about Loop engineering seems like a gift for myself
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Rompage
Rompage@21million_iykyk·
@0xCodez Looping doesn’t work. It’s a total shitshow without a human in the loop for quality control
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Marko
Marko@see_what_fits·
@0xCodez Once upon a time, people wrote scientific papers about the structure of atoms
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Pornphat Khemngern
Pornphat Khemngern@BlipSync0·
@0xCodez 有点意思 但这个loop engineering听起来像把prompt engineer卷出新高度 我连agent都还没玩明白😂
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Dan V
Dan V@yhxh457·
@0xCodez That’s mental illness spread by cancer company
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NTH Future
NTH Future@nthfuture_x·
@0xCodez That's very helpful. Thanks for sharing. I really needed this document too. ☺️
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Futin
Futin@fancyputin·
@0xCodez Jesus Christ people are thick. I think that's my main takeaway since the AI boom.
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WEEX AI Labs
WEEX AI Labs@WEEXAILabs·
WEEX AI Labs@WEEXAILabs

🚀 WEEX Labs 观察:AI 正式步入“推理架构化”与“具身智能规模化”的双轮驱动纪元! 过去 24 小时,产业风向完成了一次深刻的技术跃迁:AI 已不再仅仅是“概率预测”,而是进化为具备“预判与逻辑规划”的推理引擎。随着 OpenAI 的“思考作图”模型与英伟达 Vera 架构的亮相,算力与算法的边界正向着更高阶的智能化工厂迈进。 拆解今日 4 大产业核心风向: 1️⃣技术范式:从“即时生成”到“推理作图” OpenAI 发布 gpt-image-2,引入“先思考后作图”的推理机制,彻底改变了图像生成的逻辑。 👉核心洞察: 这是图像生成领域的里程碑。AI 在像素渲染前,会先进行场景规划、结构布局与内容校验,极大地提升了商业交付的精度。这意味着 AI 创作已从“盲盒抽奖”转变为“确定性工程”。 2️⃣算力底座:Vera 架构定义“推理时代”的 AI 工厂 英伟达在年度股东大会上披露 Vera 架构,这是专门为“代理式 AI (Agentic AI)”和大规模推理打造的算力平台。 👉核心洞察: 算力竞争的焦点正从单纯的“训练”转向“推理与 Agent 执行”。Vera 架构通过极致的芯片协同,显著降低了 Token 的生成成本,这直接拉低了 AI Agent 在企业级大规模部署的经济门槛。 3️⃣具身智能:人形机器人跨入“3 万人民币”门槛 宇树科技将 R1 双足人形机器人售价下调至 2.99 万人民币并现货发售。 👉核心洞察: 价格战是技术成熟的试金石。当人形机器人跌破 3 万元大关,它便完成了从“科研原型机”到“中小企业生产工具”的跨越。这倒逼全产业链进入降本增效的深水区,具身智能的规模化落地已进入“倒计时”。 4️⃣监管博弈:安全评估步入“标准化窗口” 白宫与 Anthropic 就 AI 安全评估框架展开谈判,标志着政府监管手段从“强制封堵”转向“标准共建”。 👉核心洞察: 这种“共同制定评估框架”的模式是行业迈向成熟的必经之路。通过将安全量化为可操作的指标,政策制定者在维护国家安全的同时,赋予了头部模型企业稳定的创新预期。 #WEEXLabs #推理引擎 #NVIDIA_Vera #具身智能 #宇树R1 #AI安全框架 #TechNews #全球AI产业趋势

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Weyland A
Weyland A@adwy2464·
@0xCodez someone please tell me how to do loop engineering in cursor,I feel like my tasks are too difficult for general promoted opus 4.6
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Slop to Signal
Slop to Signal@SlopToSignal·
@0xCodez wild that the whole unlock is just.. making it not trust itself we built confidence into these things and now the fix is building in paranoia
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Evil Dead
Evil Dead@EvilDead·
Every family has its demons. Evil Dead Burn only in theaters July 10. Get Tickets Now!
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