hackcv
行业资讯
行业资讯精选 83Andrej Karpathy

Farzapedia, personal wikipedia of Farza, good example following my Wiki LLM tweet. I really like this approach to personalization in a number of ways, compared to "status quo" of an AI that allegedly gets better the more you use it or something: 1. Explicit. The memory artifact is explicit and navigable (the wiki), you can see exactly what the AI does and does not know and you can inspect and manage this artifact, even if you don't do the direct text writing (the LLM does). The knowledge of you is not implicit and unknown, it's explicit and viewable. 2. Yours. Your data is yours, on your local computer, it's not in some particular AI provider's system without the ability to extract it. You're in control of your information. 3. File over app. The memory here is a simple collection of files in universal formats (images, markdown). This means the data is interoperable: you can use a very large collection of tools/CLIs or whatever you want over this information because it's just files. The agents can apply the entire Unix toolkit over them. They can natively read and understand them. Any kind of data can be imported into files as input, and any kind of interface can be used to view them as the output. E.g. you can use Obsidian to view them or vibe code something of your own. Search "File over app" for an article on this philosophy. 4. BYOAI. You can use whatever AI you want to "plug into" this information - Claude, Codex, OpenCode, whatever. You can even think about taking an open source AI and finetuning it on your wiki - in principle, this AI could "know" you in its weights, not just attend over your data. So this approach to personalization puts *you* in full control. The data is yours. In Universal formats. Explicit and inspectable. Use whatever AI you want over it, keep the AI companies on their toes! :) Certainly this is not the simplest way to get an AI to know you - it does require you to manage file directories and so on, but agents also make it quite simple and they can help you a lot. I imagine a number of products might come out to make this all easier, but imo "agent proficiency" is a CORE SKILL of the 21st century. These are extremely powerful tools - they speak English and they do all the computer stuff for you. Try this opportunity to play with one.· 个人维基的优秀示例

<p>Farzapedia, personal wikipedia of Farza, good example following my Wiki LLM tweet.<br> <br> I really like this approach to personalization in a number of ways, compared to "status quo" of an AI that allegedly gets better the more you use it or something:<br> <br> 1. Explicit. The memory artifact is explicit and navigable (the wiki), you can see exactly what the AI does and does not know and you

📎 发布于 04-05 07:28🔗 阅读原文(rss.xcancel.com
相关推荐
行业资讯精选 65

被拖欠持续督导费用,多家券商发布“催缴”公告

近期,多家券商发布公告称,拟单方解除与新三板挂牌企业的督导协议,原因是相关企业未按协议约定向券商支付持续督导费用,有企业甚至“拖欠”费用长达6年。按照相关规定,若主办券商单方解除协…

📎 36氪🕒 07-14 08:12🔗 36kr.com
行业资讯精选 82

电力市场化交易比例抬升,售电公司迎行业大洗牌

7月,全国多地电力迎峰度夏期,叠加AI需求带动,我国电力需求猛增,但整个产业链条上并非所有节点都能分享产业红利,售电公司正迎来大洗牌。近期,全国多地接连发布售电公司退出电力市场公示…

📎 36氪🕒 07-14 08:06🔗 36kr.com

本站内容由 LLM 精选聚合,原文版权归 Andrej Karpathy 所有 · 摘录仅供参考