@VincentLogic: After a two-year hiatus, this blogger came back with a bombshell. He broke down the entire AI industry chain into 12 layers, from the bottom-most energy and chips all the way to the future "AI-native economic ecosystem." This video is worth watching repeatedly, especially the final definition of "AI Native companies" – it's very insightful.

X AI KOLs Timeline News

Summary

Blogger VincentLogic released a video that deconstructs the AI industry chain into 12 layers, from energy and chips to the AI-native economic ecosystem, providing a systematic analytical framework.

After a two-year hiatus, this blogger came back with a bombshell. 💣 He broke down the entire AI industry chain into 12 layers, from the bottom-most energy and chips all the way to the future "AI-native economic ecosystem." This video is worth watching repeatedly, especially the final definition of "AI Native companies" – it's very insightful. 👇 https://t.co/rZVp2lUFtQ
Original Article
View Cached Full Text

Cached at: 05/14/26, 04:40 PM

After a two-year hiatus, this blogger dropped a bombshell on their return. 💣

They broke down the entire AI industry chain into 12 layers, from the most fundamental energy and chips all the way up to the future “AI-native economic ecosystem.”

This video is worth rewatching, especially the definition of “AI Native companies” at the end—highly insightful. 👇 https://t.co/rZVp2lUFtQ

Similar Articles

@VincentLogic: This video is essentially a 'must-watch' checklist for AI engineers! It clearly explains the 10 core papers that have shaped today's AI industry, ranging from the foundational Transformer architecture to LoRA fine-tuning, RAG, Agents, and even the latest MCP protocol. If you want to dive deeper into how…

X AI KOLs Timeline

This article recommends a video that systematically explains the 10 core papers shaping today's AI industry, covering Transformer, LoRA, RAG, Agents, and the MCP protocol, aiming to help engineers clarify the technological lineage.

@leslieloser_: Had the privilege of meeting @Zhm20220917, the best at AI transformation in Jiangsu, Zhejiang, and Shanghai, for a few hours. Became even more certain about the following --In the AI era, those closer to production who understand the industry will reap huge startup dividends; understanding AI and boundaries is 20%, understanding production and industry is 80% --Small teams refuse inno…

X AI KOLs Timeline

The article shares insights on entrepreneurial dividends in the AI era, emphasizing that understanding industry and production is more critical than mastering AI technology. Companies prioritize actual problem-solving capabilities over the models themselves.

@lifesinger: 听闻字节全面收缩在 AI 应用层的投入,应用层聚焦到豆包,硬件层押注 PICO+ AI 硬件。 原因是:烧不起,以 2025 年的投入去烧 AI 应用,字节现金流撑不过 2027 年。 巧合的是,最近还听闻有几家 ARR 过亿美元的 AI…

X AI KOLs Timeline

听闻字节全面收缩在 AI 应用层的投入,应用层聚焦到豆包,硬件层押注 PICO+ AI 硬件。 原因是:烧不起,以 2025 年的投入去烧 AI 应用,字节现金流撑不过 2027 年。 巧合的是,最近还听闻有几家 ARR 过亿美元的 AI 应用公司,开始在默默裁员,公司现金流压力非常大,很难持续。 还有一个偶然看到的新闻是,百万粉丝博主 Dan Koe 的创业产品 Eden,因烧钱太快,决定大幅裁员,产品停止迭代。 这一切都在揭示一个规律: 用互联网的思维去做 AI 产品创业,死路一条。因为 AI 产品没有规模效应,追求 DAU 等互联网时代的规模指标,会是有钱的 AI 产品存活不下去的主因。 没钱的 AI 产品创业公司,因为没钱可烧,无法追求规模,反而有机会看见真相。然后逐步赚取到真正的利润,有机会一步一步长大。 尊重经营,尊重时间。每个 AI 产品的创业者,可能都得重新审视这八个字。

@runes_leo: At Sequoia Ascent on 4/30, Karpathy compressed this year’s most valuable explanation of AI into three core arguments. You’ll see AI differently after reading this. 1. AI Isn’t Just “Faster,” It’s a New Paradigm For the past two years, the narrative has been that AI speeds things up. Karpathy says this is a misunderstanding...

X AI KOLs Timeline

This article summarizes Karpathy’s core points at the Sequoia Ascent conference, highlighting that AI is a paradigm shift restructuring workflows rather than merely an acceleration tool. It introduces the concept of a "jagged edge" for model capabilities based on verifiability and economic viability, and predicts that future software will evolve into an agent-native architecture where LLMs serve as the logic layer and traditional code functions as sensors and actuators.

@dongxi_nlp: A very valuable article, the last 6 takeaways are worth pondering. Among them, the last two: 5. The data industry is far from developed. Anthropic and OpenAI spend over $10 million on a single environment, while Chinese AI labs have a 'build rather than buy' mentality. 6. Countless...

X AI KOLs Timeline

The article summarizes the current state of the AI data industry, pointing out that the data industry is not yet mature. Anthropic and OpenAI spend over $10 million on a single environment, while Chinese AI labs tend to build rather than buy. In addition, many labs have access to Huawei chips but still crave more Nvidia chips.