eSIMuse|AI 通信指南

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eSIMuse|AI 通信指南

eSIMuse|AI 通信指南

@esimuse

AI 工具玩家 / 自动化实践者 分享 ChatGPT、Claude、Agent 和出海工具 顺手整理一点海外卡与长期接入经验 有相关需求可以聊 TG:https://t.co/MfpTTVeKYv TikTok:https://t.co/qcLjuvvrrx

United Kingdom Inscrit le Aralık 2025
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eSIMuse|AI 通信指南
用cloudflare的zero防护功能大陆IP也可以上外网了🤣
eSIMuse|AI 通信指南 tweet mediaeSIMuse|AI 通信指南 tweet media
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zynqorw
zynqorw@zynqorw·
建议大家多备用几个vpn,避免平时经常用的突然掉线卡顿,这个时候就需要借用别的vpn来检查经常用的这个因为什么掉线卡顿😅 所以有没有好用速度快的vpn推荐一下
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Raunak
Raunak@caps_raunak·
Bro, I'm so tired of this AI bullshit. You work hard for years to learn a real skill. You fail, you learn, you get good. Now this AI makes the same thing in 5 seconds and everyone is cheering like it's amazing. This is not help. This is just making real talent worthless. We're destroying our own value and smiling about it.
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Pedro Domingos
Pedro Domingos@pmddomingos·
Real AI doesn't need a harness.
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Beff (e/acc)
Beff (e/acc)@beffjezos·
Honestly Grok should be the best AI for creating bangers. Humans get good at posting from RL with Audience / Engagement Feedback Elon has the best dataset of rollouts for this by far And many people use Grok to create posts yet they don't backprop the engagement signal @xai
Richard Sutton@RichardSSutton

A new and possibly controversial perspective: In this video, I explain the sense in which generative AI trained by supervised learning is incapable of making novel discoveries. youtu.be/K5LAFEjTlBA The text of the speech: AI Creativity and Discovery Good day ladies and gentlemen. I regret that I am unable to be with you all today to engage in a back-and-forth discussion, but I am nevertheless pleased to be able to share with you, via this recording, some high-level thoughts about the current and future state of artificial intelligence, and in particular about AI’s relationship to science and mathematics, which is, as I understand it, the central focus of this meeting and of the SAIR Foundation. I would like to start with an old joke; I am sure you have heard it before. It is the one about the researcher whose work is being evaluated, and the review comes back, and says “This work is both novel and good. Unfortunately, the parts that are good are not novel, and the parts that are novel are not good.” My first point about AI is that this assessment applies exactly to large parts of AI as we know it today. Not all of today’s AI, but a large part of it. Pretty much all of what we mean by “Generative AI”---which includes large language models, and the images and video models, and even the new methods for learning world models. All of these AIs take large numbers of examples and produce a “model” which behaves similar to the examples, that is, which generates text like people, or images like artists or nature, and videos like we find on the internet. Don’t get me wrong, Generative AI can be extremely useful. No doubt about that. But the assessment of the joke still applies. These systems can produce output that is both novel and good, but not at the same time. In many ways this is just absolutely not a problem. When we ask an AI for an answer from the internet, or to summarize a document, we don’t want it to be novel. We are happy if the quality of the answer, the goodness, comes from the source material—from the people who wrote the document or the articles on the internet. If the AI’s answer is novel it means it is going beyond the source material, adding something beyond it. This is what we call “hallucinations”. In most cases, we don’t like it when the AI makes something up, when it adds something novel. One exception, of course, is when we are looking not for facts or reality, but for fiction and entertainment. We might ask for a bedtime story for a child, or an image based on existing images on the internet but which is nevertheless different and distinct from them. In these cases, it is never easy for us to know how creative the AI is actually being, as we do not know how close the AI’s story, poem, or image is to the source material. In a real practical sense we can not know this because the internet is too big, the possible sources that the AI may draw upon are too numerous. When we ask for a fiction or novelty, the AI can give it to us because its processing is in part stochastic. Every decision can go multiple ways and will go different ways and produce a different trajectory every time. The trajectory can be random—and thus novel—or it can be based on the training data—and thus “good” because the training data is good, sourced from people or reality. Thus, the trajectory is either novel or good—based on randomness or based on data—but never both at the same time. Really, I think it is okay if the output of Generative AI is never good and novel at the same time. For the researcher in the joke this is a devastating criticism, but for most things it is not, and for Generative AI it is not. Generative AI is meant to be a mimic. This is what supervised learning is for. Generative AI can be extremely useful, even when it just mimics, if it is faster, or cheaper, or smaller, or more customizable, or more copy-able, than the thing being mimicked. It is okay if Generative AI cannot be both novel and good at the same time. It is still a transformative technology. But it is a limitation. And remember we are here to use AI for science and mathematics, and for these areas the assessment of the reviewer in the joke is devastating. For these areas we need true creativity and discovery. Generative AI—or Mimicking AI—will never get where us there. For these we need something more, and indeed we have something more in other parts of AI. We have many AI systems which can give us more. We have AlphaGo with its world-changing move 37, or AlphaZero with its brilliant original chess-playing style. We have GT-Sophy that drives simulated racecars better than any human. We have AlphaFold and AlphaProof and Claude-Code, which have brought true advances in science, mathematics, and programming. We have RL-Lyft which optimizes the assignment of cars to passengers in the ride-hailing business. All these systems have found things that are both novel and good. And, truth be told, some language models have been augmented in ways that make them more than Generative AI based on supervised learning. All these systems have some additional features that make them capable of true creativity and true discovery. It is important for us to recognize what this is—and that it is not present in ordinary, garden-variety Generative AI. It is something that can not come from just supervised learning, from learning from examples. What is it? Well, it is a simple thing, a commonsense thing. It is not new. We have many names for it, but unfortunately none of them are very good names. I will call it Discovery. Basically, Discovery is just the idea of trying many things and seeing which of them work, then keeping those that worked the best. Evolution by natural selection works this way. The scientific method works this way. And just ordinary life and learning works this way. We try things and remember what works. What could be more obvious? In this behavioral case, psychology has two names for it— “instrumental learning” and “operant conditioning”—and in machine learning it is what we mean by “reinforcement learning”. We also see the idea of Discovery in planning and combinatorial search—anything that involves the idea of “generate and test”. The essence of Discovery is to combine three steps: 1. Variation, 2. Evaluation, and 3. Selective retention. Of course, I am not the first to say this. I am not the first to point out that this combination of steps is key to science, to evolution by natural selection, and to animal behavior. I think particularly of papers by Donald Campbell, by Daniel Dennett, and by Gary Cziko. What is new in my remarks is to directly relate the idea of Discovery to modern AI to help us see that it is not present in supervised learning or Generative AI—in particular, that Discovery is not present in backpropagation or gradient descent. Let me say explicitly what is missing from Generative AI. As we have remarked, these systems do have a stochastic aspect, so they do generate a variety of trajectories and behavior. What is missing is the Evaluation step. The generator was pre-trained by supervised learning, leaving no way at runtime to Evaluate what it generates. And of course without Evaluation there can be no Selective retention, and thus no Discovery. The variation can bring novelty, but without evaluation there is no Discovery, and arguably, no creativity. That is, I would say that creativity requires that the new things generated be Evaluated. Without evaluation, and retention of the best, there is nothing created. The novelty flickers into existence but, if its value is unrecognized, it flickers away and is lost. In many cases, Evaluation is done by people to make a discovery. As when we have Generative AI make many pictures for us, and then we pick the one that we like the best. The human+AI system completes the discovery. In many other cases, the Evaluation comes from a clear objective. Some moves lead to checkmate, some steps lead to a proof, some actions result in high reward, some genotypes make more copies, some theories explain the data better. Some prefer the Variation step to be called Blind variation, where “blind” here means that it is uninformed, a shot in the dark. It does not need to be completely uninformed; a good scientist does not select theories to test at random. But neither can it be completely informed and determined. There must be some uncertainty about where the answer lies in order for there to be a discovery. In practice, the variation is partly informed and partly blind, but it is the blind part that corresponds to the discovery. Now let us briefly go all the way to modern deep learning, to the backpropagation algorithm. At first it might seem that backpropagation is incapable of discovery because it is deterministic and thus incapable of variation. But this is not correct. The weight updates of backprop are deterministic, but the weights are initialized to small random values. The random initialization is often downplayed, but in fact it is a necessary form of variation; it must be done properly to get good performance. In backprop this Variation is done once, at network initialization, so its effect is temporary, and later the network may lose its ability to learn. This is the weakness of deep learning that is alleviated with a new algorithm that my group presented in Nature a couple of years ago. Our “continual backpropagation” made one small change: every so often a less-used neuron would be re-initialized to small random weights. This allows the variation to continue and plasticity to be retained. Although there is much more to be said about Creativity and Discovery, this is the key point: they are more than supervised learning, more than pattern recognition, more than prediction, and more than world modeling. Those things are important, but they alone will not bring us to discovery. Discovery requires Evaluation from a person or from an explicit goal, and only in the latter case will we attain full autonomy. So that is my call to arms. If we want the full power of AI scientists, then we should share the goals with them so they can create, evaluate, discover, and in these ways fully participate in achieving the goals. Let’s be bold! Let’s fully automate Creativity and Discovery!

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roon
roon@tszzl·
i had a dream about an even larger model being pretrained somewhere else in the world. it was codenamed Wally and i think it was trying to talk to me in my sleep
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eSIMuse|AI 通信指南
AI 真正改变的不是“生产力”,而是“判断力的价格”。 以前一个人想做事,最大的问题是不会写、不会画、不会剪、不会查资料、不会写代码。 现在这些门槛正在被 AI 一层层打掉。 但问题也变了。 当所有人都能快速生成内容、方案、图片、代码、脚本以后,真正稀缺的就不再是“做出来”,而是: 你知不知道什么值得做。 AI 会让低水平执行越来越便宜,但也会让低质量判断暴露得越来越快。 以后人与人的差距,不是“谁更会用 AI”,而是: 谁能提出更准确的问题, 谁能判断答案有没有价值, 谁能把一堆生成物筛成真正能落地的东西。 AI 不是替你思考。 AI 是把你有没有思考,放大给所有人看。
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Winit420
Winit420@winterfruit_1·
别人的青春: 阳光 迟到 操场 背影 下课 走廊 相遇 小卖部 偷看 侧脸 对视 躲闪 暗恋 心动 晚霞 三年 我的青春: 骂操场 骂老师 骂食堂 骂班级 骂领导 骂食堂阿姨 骂同桌 骂考试 骂作业 骂太阳 骂下雨 骂早起 骂晚睡 骂跑操 骂上课 骂人际关系 骂校规 整个学校就国旗没骂过
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MK不在线
MK不在线@fengye12345hs·
发现 #蓝v互关 也是个体力活啊🤣
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eSIMuse|AI 通信指南
现在 AI 用户大概分四种: GPT 用户:稳定,但有点太官方 Claude 用户:文笔好,但脾气大 Gemini 用户:生态强,但存在感尴尬 DeepSeek 用户:便宜能打,但经常被低估 选哪个 AI,其实暴露的是你的工作方式,不是模型水平。 你现在主力用哪个?
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Yuvi
Yuvi@Li665508Li·
马斯克开始治理黄推了吧 骚扰我的那些黄推都没了.....
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eSIMuse|AI 通信指南
2026 年了,大家现在访问 AI 工具主要靠什么? VPN eSIM 海外实体卡 云服务器 / 代理 公司网络 你现在用哪种最多?
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雾大看不清(喷子版)
雾大看不清(喷子版)@sunwen19931211·
你们这是什么几把算法阿?一千多人的关注,发个帖几十的浏览量,见鬼了吗?中文区后娘养的吗?有几条帖子是推送分发出去的?还人工智能,人工智障吧!@nikitabier @X @xai @grok
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eSIMuse|AI 通信指南
@hualun 哈哈这才是正常路线,先装上再说。AI 这东西不用等完全懂,先让它帮你干一件小事,感觉一下,你会发现打开了新世界大门
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花轮
花轮@hualun·
捣鼓了半天,终于把 Codex 注册好了 还让 AI 帮我把 Hermes 也装好了 虽然现在还不知道他们具体能帮我做什么,但是AI还是要会一点点才行,啥都不懂以后就跟不上时代进展了
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eSIMuse|AI 通信指南
AI 还在造梦,币圈已经开始卖票了。 一个 bot 加一个 token,包装一下就敢叫“下一代智能经济体”😂😂
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Hpp2
Hpp2@Hp2ai·
Codex接码居然看到中国+86! 难道国内市场要打开了? 目前号码是无效的! 难道是为国内准备的?
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