ai-product-strategy by refoundai/lenny-skills
npx skills add https://github.com/refoundai/lenny-skills --skill ai-product-strategy帮助用户运用来自 94 位产品负责人和 AI 实践者的框架,做出关于 AI 产品的战略决策。
当用户寻求 AI 产品战略方面的帮助时:
Aishwarya Naresh Reganti:"在 AI 的所有进步中,一个容易陷入的误区是不断思考解决方案的复杂性,却忘记了你试图解决的问题。从最小影响用例开始,以掌握当前能力。"
Adriel Frederick:"在处理算法产品时,你的工作是弄清楚算法应该负责什么,人应该负责什么,以及决策的框架。" 这个边界是核心的产品经理决策。
Alex Komoroske:"LLM 是神奇的万能胶带——社会直觉的精华。它们使得编写'足够好'的软件成本显著降低,但增加了边际推理成本。" 理解新的成本结构。
Asha Sharma:"你必须为趋势而构建,而不是为你当前的现状而构建。" AI 能力变化很快——构建灵活的架构,以便在模型改进时可以更换。
Alex Komoroske:"即使在 99% 的准确率下,如果它有 1% 的时间会'打用户的脸',那也不是一个可行的产品。设计时要假设 AI 会存在不确定性且不完全准确。"
Aishwarya Naresh Reganti:"重要的不是第一个拥有智能体。而是构建正确的飞轮以随时间改进。" 记录人类行为,为系统改进创建数据循环。
Amjad Masad:"未来的产品将由许多不同的模型组成——这是一个相当繁重的工程项目。" 针对不同任务使用专门的模型(推理 vs 速度 vs 编码)。
Albert Cheng:"我们运行国际象棋引擎进行评估。LLM 将其翻译成自然语言。为正确的任务使用正确的技术。" 不要在确定性算法表现出色的地方使用 LLM。
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Alexander Embiricos:"当前的限制因素是人类的打字速度和在提示上的多任务处理能力。构建'默认有用'的系统,无需持续提示。"
Aishwarya Naresh Reganti:"大多数人忽略了非确定性。你不知道用户会如何使用自然语言行为,你也不知道 LLM 会如何回应。" 为可变性而构建。
Aparna Chennapragada:"有效的智能体具备(1)处理高阶任务时不断增强的自主性,(2)处理复杂多步骤工作流的能力,以及(3)自然的、通常是异步的交互。"
Aishwarya Naresh Reganti:"领导者必须亲自动手——不是去实现,而是重建直觉。要坦然接受你的直觉可能不正确。" 每天留出时间以保持与时俱进。
要查看来自 94 位嘉宾的全部 179 条见解,请参阅 references/guest-insights.md
每周安装量
921
代码仓库
GitHub 星标数
546
首次出现
2026年1月29日
安全审计
安装于
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github-copilot692
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Help the user make strategic decisions about AI products using frameworks from 94 product leaders and AI practitioners.
When the user asks for help with AI product strategy:
Aishwarya Naresh Reganti: "In all the advancements of AI, one slippery slope is to keep thinking about solution complexity and forget the problem you're trying to solve. Start with minimal impact use cases to gain a grip on current capabilities."
Adriel Frederick: "When working on algorithmic products, your job is figuring out what the algorithm should be responsible for, what people are responsible for, and the framework for making decisions." This boundary is the core PM decision.
Alex Komoroske: "LLMs are magical duct tape—distilled intuition of society. They make writing 'good enough' software significantly cheaper but increase marginal inference costs." Understand the new cost structure.
Asha Sharma: "You have to build for the slope instead of the snapshot of where you are." AI capabilities change fast—build flexible architectures that can swap models as they improve.
Alex Komoroske: "Even at 99% accuracy, if it punches the user in the face 1% of the time, that's not a viable product. Design assuming the AI will be squishy and not fully accurate."
Aishwarya Naresh Reganti: "It's not about being first to have an agent. It's about building the right flywheels to improve over time." Log human actions to create data loops for system improvement.
Amjad Masad: "Future products will be made of many different models—it's quite a heavy engineering project." Use specialized models for different tasks (reasoning vs speed vs coding).
Albert Cheng: "We run chess engines for evaluations. LLMs translate that into natural language. Use the right technology for the right task." Don't use LLMs where deterministic algorithms excel.
Alexander Embiricos: "The current limiting factor is human typing speed and multitasking on prompts. Build systems that are 'default useful' without constant prompting."
Aishwarya Naresh Reganti: "Most people ignore the non-determinism. You don't know how users will behave with natural language, and you don't know how the LLM will respond." Build for variability.
Aparna Chennapragada: "Effective agents have (1) increasing autonomy to handle higher-order tasks, (2) ability to handle complex multi-step workflows, and (3) natural, often asynchronous interaction."
Aishwarya Naresh Reganti: "Leaders have to get hands-on—not implementing, but rebuilding intuitions. Be comfortable that your intuitions might not be right." Block time daily to stay current.
For all 179 insights from 94 guests, see references/guest-insights.md
Weekly Installs
921
Repository
GitHub Stars
546
First Seen
Jan 29, 2026
Security Audits
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Installed on
opencode778
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claude-code672
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