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Andy Stewart (@manateelazycat) “早上听了OpenCode创始人Dax的播客 太长了,只记得一点 他说,AI之前的话,如果一个工” — TopicDigg

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Andy Stewart
@manateelazycat
懒猫微服CEO、前Deepin CTO、不端不装 仗剑走天涯 懒猫微服购买链接 懒猫微服有啥用?
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早上听了OpenCode创始人Dax的播客 太长了,只记得一点 他说,AI之前的话,如果一个工程师写一些Hacking Way的代码,第一次无所谓了,如果第二次、第三次依然要用Hacking Way的代码,大多数工程师就会选择重构,因为他们认为不重构的话,这就是巨大的技术债务 但是在AI以后,AI Agent隐藏了这些Hacking Way的代码,隐藏的过程会让工程师认为代码很健壮,这些都是未来AI软件工程的潜在风险 这个播客还是值得听的,可是,但是,OpenCode多增加和VTE协议的兼容性吧,特别是和ghostty-web这个库的兼容性,每天很多朋友都会跟我报,Light OS渲染的bug,其实这些都是OpenCode的兼容性bug🤡
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Why is the creator of OpenCode pretty skeptical about AI productivity gains, and the hype around AI? A very conversation @thdxr (and lots of truth bombs:) Timestamps: 00:00 Intro 07:03 Dax’s path into tech 09:04 Early startup experience 13:16 Getting involved with open source 16:13 OpenCode 23:17 Anthropic banning OpenCode 30:34 From terminal to GUI 32:34 OpenCode’s business model 36:33 Why inference is profitable 39:11 GPU bottlenecks 40:54 AI hype 45:50 AI spending 48:47 Dax’s memo 55:41 Dax’s skepticism of predictions 58:58 Engineering culture at OpenCode 1:02:38 How building works at OpenCode 1:05:36 Taste and quality 1:11:32 Dax’s work setup 1:12:35 The role of engineers and EMs 1:15:50 Advice for engineers 1:18:12 Book recommendation Brought to you by: • @AntithesisHQ – verify your system’s correctness without human review or traditional integration tests – and avoid bugs or outages • @WorkOS – everything you need to make your app enterprise ready • @turbopuffer – a vector and full-text search engine built on object storage. It’s fast, cheap, and extremely scalable Three interesting thoughts from Dax: 1. No AI-native coding agent company is “winning” by being better with AI. Dax says that none of OpenCode’s competitors are crushing them, and that nobody is using AI so well that others cannot compete. 2. Most software engineers profit from AI as time gained, not increased output — unless you change incentives! Dax says the natural way for software engineers to “cash out” their AI tooling gains is with time savings, by doing the same work as before, but faster. Until compensation and motivation structures change, most teams should expect output to stay flat while engineers go home earlier. There’s nothing wrong with this, but AI vendors sell a different outcome to CFOs: increased output. 3. AI code generation mutes the “guilt” of doing the wrong thing, but this builds up tech debt. Pre-AI, writing a hack felt bad, the second time it felt really bad, and by the third time you’d often just refactor in order to fix up the code. Now, the agent hides the hack, which skews devs’ judgment and results in less tech debt being cleaned up.
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