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Andrew Ng(@AndrewYNg)

AI-native software engineering teams operate very differently than traditional teams. The obvious di...

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AI-native software engineering teams operate very differently than traditional teams. The obvious di...
AI 深度提炼
  • AI-native 团队使用编码代理快速构建产品,工程师需承担更多角色。
  • 高效的团队中,工程师需要具备产品管理技能,PM 也需要了解工程。
  • 小团队通过即时沟通和多角色协作可以更快地推进项目。

结构提纲

AI 替你读一遍后整理出的核心层级。

  1. 介绍 AI-native 团队与传统团队的区别。

  2. 讨论编码代理如何加速产品开发。

  3. 工程师和 PM 的角色变化及重要性。

  4. 面对面沟通和小团队的优势。

思维导图

用一张图看清主题之间的关系。

正在生成思维导图…
查看大纲文本(无障碍 / 无 JS 友好)
  • AI-native 团队与传统团队的差异

金句 / Highlights

值得收藏与分享的关键句。

  • AI-native 团队使用编码代理来快速构建产品,这导致了许多其他操作方式的变化。

    第 2 段

    下载金句卡 PNG
  • 一些优秀的工程师现在扮演着比编写代码更广泛的角色,如产品经理、设计师甚至营销人员。

    第 3 段

    下载金句卡 PNG
  • 当工程师理解用户并能决定要构建什么时,他们可以非常迅速地执行。

    第 6 段

    下载金句卡 PNG
#AI#软件工程#团队协作
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AI-native software engineering teams operate very differently than traditional teams. The obvious difference is that AI-native teams use coding agents to build products much faster, but this leads to many other changes in how we operate. For example, some great engineers now play broader roles than just writing code. They are partly product managers, designers, sometimes marketers. Further, small teams who work in the same office, where they can communicate face-to-face, can move incredibly quickly. Because we can now build fast, a greater fraction of time must be spent deciding what to build. To deal with this project-management bottleneck, some teams are pushing engineer:product manager (PM) some teams are pushing engineer:product manager (PM) ratios downward from, say, 8:1 to as low as 1:1. But we can do even better: If we have one PM who decides what to build and one engineer who builds it, the communication between them becomes a bottleneck. This is why the fastest-moving teams I see tend to have engineers who know how to do some product work (and, optionally, some PMs who know how to do some engineering work). When an engineer understands users and can make decisions on what to build and build it directly, they can execute incredibly quickly. I’ve seen engineers successfully expand their roles to including making product decisions, and PMs expand their roles to building software. The tech industry has more engineers than PMs, but both are promising paths. If you are an engineer, you’ll find it useful to learn some product management skills, and if you’re a PM, please learn to build! Looking beyond the product-management bottleneck, I also see bottlenecks in design, marketing, legal compliance, and much more. When we speed up coding 10x or 100x, everything else becomes slow in comparison. For example, some of my teams have built great features so quickly that the marketing organization was left scrambling to figure out how to communicate them to users — a marketing bottleneck. Or when a team can build software in a day that the legal department needs a week to review, that’s a legal compliance bottleneck. In this way, agentic coding isn’t just changing the workflow of software engineering, it’s also changing all the teams around it. When smaller, AI-enabled teams can get more done, generalists excel. Traditional companies need to pull together people from many specialties — engineering, product management, design, marketing, legal, etc. — to execute projects and create value. This has resulted in large teams of specialists who work together. But if a team of 2 persons is to get work done that require 5 different specialities, then some of those individuals must play roles outside a single speciality. In some small teams, individuals do have deep specializations. For example, one might be a great engineer and another a great PM. But they also understand the other key functions needed to move a project forward, and can jump into thinking through other kinds of problems as needed. Of course, proficiency with AI tools is a big help, since it helps us to think through problems that involve different roles. Even in a two-person team, to move fast, communication bottlenecks also must be minimized. This is why I value teams that work in the same location. Remote teams can perform well too, but the highest speed is achieved by having everyone in the room, able to communicate instantaneously to solve problems. This post focuses on AI-native teams with around 2-10 persons, but not everything can be done by a small team. I'll address the coordination of larger teams in the future. I realize these shifts to job roles are tough to navigate for many people. At the same time, I am encouraged that individuals and small teams who are willing to learn the relevant skills are now able to get far more done than was possible before. This is the golden age of learning and building! Original text: [deeplearning.ai/the-batch/issu ]

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