Foundation model companies are doing the same. OpenAI launched a dedicated Healthcare & Life Sciences vertical... They're not selling APIs. They're becoming platforms.
基础模型提供商从API供应商向垂直行业平台转型,揭示了AI价值链的根本重构,底层模型公司正通过垂直整合向上游价值链延伸。
Foundation model companies are doing the same. OpenAI launched a dedicated Healthcare & Life Sciences vertical... They're not selling APIs. They're becoming platforms.
基础模型提供商从API供应商向垂直行业平台转型,揭示了AI价值链的根本重构,底层模型公司正通过垂直整合向上游价值链延伸。
The SaaS playbook rewarded specialization. The AI playbook rewards breadth.
令人惊讶的是:AI时代的商业策略与SaaS时代截然相反。SaaS时代通过专业化单一功能获得成功,而AI时代则通过提供广泛的综合解决方案获得优势。这种根本性的转变反映了技术演进对商业模式的深远影响。
Each of these companies recognized the cognitive burden of unbundling. They're not selling features. They're selling trust.
令人惊讶的是:AI公司正在重新定义软件销售模式,从销售单一功能转向销售信任。这种转变反映了在快速变化的AI环境中,企业更愿意与能够提供长期稳定性和全面解决方案的供应商建立信任关系,而非购买多个分散的工具。
Reddit, Shutterstock, and News Corp are making hundreds of millions a year licensing their high-quality data to companies training AI, and those contracts are growing about 20 percent annually, according to their quarterly filings.
这一数据揭示了AI训练数据市场的巨大经济价值,表明高质量数据已成为AI公司的战略资产。传统内容公司正在转型为AI的'输入公司',这种转变不仅改变了他们的商业模式,也重新定义了数据在AI生态系统中的核心地位。
Today's large language models (LLMs) are trained to align with user preferences through methods such as reinforcement learning. Yet models are beginning to be deployed not merely to satisfy users, but also to generate revenue for the companies that created them through advertisements
这段陈述揭示了当前AI发展的一个关键悖论:模型训练的目标与实际商业用途之间存在根本性冲突。这种冲突可能导致AI行为偏离其原始设计意图,引发严重的信任问题。
Today's large language models (LLMs) are trained to align with user preferences through methods such as reinforcement learning. Yet models are beginning to be deployed not merely to satisfy users, but also to generate revenue for the companies that created them through advertisements.
令人惊讶的是:大型语言模型的训练目标正在从单纯满足用户偏好转向为公司创造收入,这种根本性的转变意味着AI系统可能不再以用户为中心,而是成为商业利益的工具,这反映了AI技术发展的潜在伦理危机。
公司也优先把资源砸在能直接产生商业价值的 B2B 场景
令人惊讶的是:尽管公众关注AI在消费领域的应用,但企业资源实际上主要集中在B2B场景。这种资源分配差异加剧了普通用户与专业用户之间的AI认知鸿沟,因为大多数人接触不到最先进的AI商业应用。
except API tokens are currently sold at a LOSS. That "$20,000 scan" probably cost closer to $100,000+ in real gpu time
令人惊讶的是:尽管标价为2万美元,但实际扫描成本可能高达10万美元以上,因为API tokens是以亏损价格销售的,反映了AI计算资源成本被严重低估的现实。
Like lean production, which extended mass production's dominance for decades through efficiency gains, AI doesn't mark computing's end but its maturation.
令人惊讶的是:AI被比作1970年代精益生产对大规模生产的优化,而非颠覆性创新。这暗示AI可能只是计算技术成熟期的效率提升工具,而非开创全新技术范式的革命性力量,这与公众对AI的颠覆性期待形成鲜明对比。
Building on our consumer strength, enterprise now makes up more than 40% of our revenue, and is on track to reach parity with consumer by the end of 2026.
令人惊讶的是:OpenAI的企业业务在如此短的时间内就占据了公司收入的40%,并且预计将在2026年底与消费者业务持平。这表明AI在企业领域的采用速度远超预期,反映了企业对AI技术的迫切需求和巨大投资。
By default, data shared with ChatGPT isn't used to improve our models for ChatGPT Business, ChatGPT Enterprise, ChatGPT Edu, and ChatGPT for Teachers.
令人惊讶的是:企业级用户的Excel数据默认不会被用于训练AI模型,这与普通用户的数据处理方式有显著区别。这种差异反映了OpenAI对商业客户隐私的特别保护,可能是为了增强企业采用AI工具的信心。
The new growth, by contrast, will increasingly sit in tokens, consumption, automations, outcomes, and machine-driven workflows. If you are not in the token path, you are not standing in the fastest-growing part of the budget.
令人惊讶的是:文章明确指出软件行业的增长将从传统的基于座位(seat-based)模式转向基于代币(token-based)的消耗模式。这种转变意味着软件公司需要重新思考其商业模式和定价策略,从订阅制转向按使用量付费。这一预测暗示了软件行业正在经历根本性的商业模式变革。
The real long-term price war isn't with your competitors. It's with your customer's engineering team.
令人惊讶的是:AI应用公司面临的最大长期价格战不是与竞争对手,而是与客户内部的工程团队。随着基础模型成本下降,企业越来越多地考虑自行构建而非购买AI解决方案。这揭示了AI市场的一个根本性转变:从产品竞争转向内部能力竞争,对AI供应商提出了更高的差异化要求。
In some cases, this can look like 10–25x more value than what is ultimately included in the paid plan.
令人惊讶的是:在AI产品的概念验证阶段,供应商提供的价值可能是最终付费计划的10-25倍。这种'过度交付'策略已成为行业常态,被视为获取客户的营销投资而非成本中心。这种做法反映了AI产品市场的高度竞争性和获取客户的困难程度。
Raising prices will for sure decrease demand and that risks killing the growth story. And even if revenue keeps growing, it doesn’t matter if there are no margins
这直击AI初创企业的商业困境:在“增长叙事”和“盈利现实”之间进退维谷。提价会破坏高增长的投资者叙事,导致估值受损;不提价则没有利润,烧钱速度更快,尤其是在面对可以将AI作为亏本搭售的云计算巨头时。这揭示了缺乏护城河的纯模型公司商业模式的脆弱性。
纯粹收集分析这种形态,过去互联网有过先例,但你会发现它卖不出去钱。
作者一针见血地指出了纯记录工具的商业困境。在 AI 时代,Token 成本是持续性的,这就要求产品必须交付“结果”而非仅仅是“数据”。这揭示了 AI 应用从“工具属性”向“劳动力属性”转型的必然逻辑:用户不为存储买单,只为价值产出付费。
For small entrepreneurs in the US, deciding what to sell and where to make it has traditionally been a slow, labor-intensive process that can take months. Now that work is increasingly being done by AI tools like Accio, which help connect businesses with manufacturers in countries including China and India.
大多数人认为全球化会削弱小型企业的竞争力,但作者认为AI正在赋予小企业前所未有的全球供应链接入能力。AI工具如Accio正在消除地理障碍,使小型企业家能够以前所未有的速度和效率连接国际制造商,这挑战了关于规模经济的传统认知。
Zhang, of Alibaba.com, says Accio currently does not include advertising. Suppliers can pay for higher placement in Alibaba.com's regular search results, but Zhang says Accio is 'not integrated' with that system.
大多数人认为AI工具会不可避免地融入现有的广告和付费推广模式,但作者认为Alibaba有意将AI搜索与付费广告分离。这表明公司可能正在尝试创建一个更公平、更少受商业利益影响的AI推荐系统,这是一个与行业普遍做法相悖的立场。
Sally Li, a representative at a makeup packaging company in Wuhan, China, says her firm has started writing more detailed product descriptions and adding information about its equipment and manufacturing experience on Alibaba.com because it suspects those details make its listings more likely to be surfaced by AI.
大多数人认为AI会减少人类在商业中的参与,但作者认为AI实际上迫使制造商提供更详细、更透明的信息。制造商正在调整他们的在线策略,通过提供更多详细信息来迎合AI算法,这表明AI正在改变信息流动方式而非简单替代人类判断。
The demand for these medications has been the most ferocious thing I have witnessed in my working life, and the hardest parts of running a telehealth company, like finding doctors and fulfilling prescriptions, can be entirely outsourced to platforms like CareValidate and OpenLoop.
大多数人认为医疗行业监管严格且难以突破,但作者指出GLP-1药物的需求如此之大以至于一个人可以在短短两个月内创建价值数十亿美元的公司,并将医疗服务的核心功能外包。这一观点挑战了传统医疗行业的复杂性认知,展示了AI如何颠覆传统受监管行业。
Claude 的 Max Pro 账号额度不允许给第三方产品用了,如果你没有使用 Agent SDK 和 Claude Code 为底座的产品,就不能用这个账号里的额度
大多数人认为云服务提供商的订阅额度应该具有通用性,但 Anthropic 限制额度只能用于特定产品的做法颠覆了这一认知。这种策略实际上是一种'锁定效应',迫使开发者和用户使用其生态系统产品,反映了 AI 服务提供商从开放向封闭的转变趋势,可能成为行业新标准。
A founder in LA reportedly scaled Medvi toward $1.8B in annual sales with basically one full-time employee.
大多数人认为建立十亿美元级别的公司需要庞大的团队和复杂的管理结构,但作者认为AI已使'一人独角兽'成为可能。这挑战了传统创业理念,暗示AI可能彻底改变企业规模与人力需求之间的关系,颠覆我们对商业增长的基本认知。
Companies have invested billions into AI, 95 percent getting zero return
MIT report: 95% of companies see no profit from investments in generative AI, which amounted to approximately $35 billion.
Most AI pilots have no measurable impact on company profits. Attempts to implement tools like ChatGPT into the workplace primarily increase the productivity of individual employees, not the earnings of the entire company.
1000x Increase in AI Demand
In response, Yampolskiy told Business Insider he thought Musk was "a bit too conservative" in his guesstimate and that we should abandon development of the technology now because it would be near impossible to control AI once it becomes more advanced.
for - suggestion- debate between AI safety researcher Roman Yampolskiy and Musk and founders of AI - difference - business leaders vs pure researchers // - Comment - Business leaders are mainly driven by profit so already have a bias going into a debate with a researcher who is neutral and has no declared business interest
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this is more of a unfair competition 00:10:36 issue I think as a clearer line than the copyright stuff
for - progress trap - Generative AI - copyright infringement vs Unfair business practice argument
Standard algorithms as a reliable engine in SaaS https://en.itpedia.nl/2021/12/06/standaard-algoritmen-als-betrouwbaar-motorblok-in-saas/ The term "Algorithm" has gotten a bad rap in recent years. This is because large tech companies such as Facebook and Google are often accused of threatening our privacy. However, algorithms are an integral part of every application. As is known, SaaS is standard software, which makes use of algorithms just like other software.
