Roman Yampolskiy

Roman Yampolskiy · 22,197 词 · 查看原文 ↗
历史与文明AI 与机器学习技术与编程音乐与艺术心理与人性
📋 章节目录
0:00 Introduction · 介绍
2:20 Existential risk of AGI · AGI 的存在风险
8:32 Ikigai risk · 生命贝风险
16:44 Suffering risk · 遭受风险
20:19 Timeline to AGI · AGI 时间表
24:51 AGI turing test · AGI图灵测试
30:14 Yann LeCun and open source AI · Yann LeCun 和开源人工智能
43:06 AI control · 人工智能控制
45:33 Social engineering · 社会工程
48:06 Fearmongering · 危言耸听
57:57 AI deception · 人工智能欺骗
1:04:30 Verification · 确认
1:11:29 Self-improving AI · 自我完善的人工智能
1:23:42 Pausing AI development · 暂停人工智能开发
1:29:59 AI Safety · 人工智能安全
1:39:43 Current AI · 当前人工智能
1:45:05 Simulation · 模拟
1:52:24 Aliens · 外星人
1:53:57 Human mind · 人的心灵
2:00:17 Neuralink · 神经链接
🔑 关键词
romanyampolskiyhumansdonsystemshumanpossiblecontrolsafetyagiintelligencetestcapabilitiesgoingselfsuperriskdoingsoftwarecapable
💬 精彩语录
"Correct. I don’t think developers know everything about what they are creating. They have lots of great knowledge, we’re making progress on explaining parts of a network. We can understand, “Okay, this note get excited, then this input is presented, this cluster of notes.” But we’re nowhere near close to understanding the full picture, and I think it’s impossible. You need to be able to survey an explanation. The size of those models prevents a single human from absorbing all this information, even if provided by the system. So either we’re getting model as an explanation for what’s happening and that’s not comprehensible to us or we’re getting compressed explanation, [inaudible 00:59:01] compression, where here, “Top 10 reasons you got fired.” It’s something, but it’s not a full picture."
正确的。我认为开发人员并不了解他们所创造的一切。他们拥有丰富的知识,我们在解释网络的各个部分方面正在取得进展。我们可以理解,“好吧,这个音符变得兴奋,然后呈现这个输入,这组音符。”但我们距离了解全貌还差得很远,而且我认为这是不可能的。您需要能够调查解释。这些模型的大小使得一个人无法吸收所有这些信息,即使是由系统提供的。因此,要么我们得到模型作为正在发生的事情的解释,而这对我们来说是无法理解的,要么我们得到压缩的解释,[听不清00:59:01]压缩,这里是“你被解雇的十大原因”。这是一些东西,但它不是全貌。
— Roman Yampolskiy (00:58:18)
"They can certainly be more creative. They can understand human biology better understand, understand our molecular structure, genome. Again, a lot of times torture ends, then individual dies. That limit can be removed as well."
他们当然可以更有创造力。他们可以更好地了解人类生物学、了解我们的分子结构、基因组。同样,很多时候酷刑结束,然后个人死亡。该限制也可以被删除。
— Roman Yampolskiy (00:19:11)
"Human level is general in the domain of expertise of humans. We know how to do human things. I don’t speak dog language. I should be able to pick it up if I’m a general intelligence. It’s an inferior animal. I should be able to learn that skill, but I can’t. A general intelligence, truly universal general intelligence, should be able to do things like that humans cannot do."
人类的水平在人类的专业领域是通用的。我们知道如何做人类的事情。我不会说狗语。如果我是一般智力的话我应该能够接受。这是一种低等动物。我应该能够学会这项技能,但我不能。通用智能,真正的通用通用智能,应该能够做人类做不到的事情。
— Roman Yampolskiy (00:22:39)
"So then I think about it, I usually think human with a paper and a pencil, not human with internet and another AI helping."
所以我想了一下,我通常认为人类有一张纸和一支铅笔,而不是有互联网和另一个人工智能帮助的人类。
— Roman Yampolskiy (00:23:59)
"Well, some people think that if they’re that smart, they’re always good. They really do believe that. It just benevolence from intelligence. So they’ll always want what’s best for us. Some people think that they will be able to detect problem behaviors and correct them at the time when we get there. I don’t think it’s a good idea. I am strongly against it, but yeah, there are quite a few people who in general are so optimistic about this technology, it could do no wrong. They want it developed as soon as possible, as capable as possible."
嗯,有些人认为,如果他们那么聪明,他们总是好的。他们确实相信这一点。只不过是出于智慧的仁慈而已。所以他们总是想要对我们最好的。有些人认为,当我们到达那里时,他们将能够发现问题行为并纠正它们。我认为这不是一个好主意。我强烈反对它,但是,是的,有相当多的人总体上对这项技术非常乐观,它不会做错。他们希望它尽快开发出来,能力尽可能强。
— Roman Yampolskiy (00:28:44)
🎙️ 完整对话(423 条)
Lex Fridman (00:00:00)
If we create general superintelligences, I don’t see a good outcome long-term for humanity. So there is X-risk, existential risk, everyone’s dead. There is S-risk, suffering risks, where everyone wishes they were dead. We have also idea for I-risk, ikigai risks, where we lost our meaning. The systems can be more creative. They can do all the jobs. It’s not obvious what you have to contribute to a world where superintelligence exists. Of course, you can have all the variants you mentioned, where we are safe, we are kept alive, but we are not in control. We are not deciding anything. We’re like animals in a zoo. There is, again, possibilities we can come up with as very smart humans and then possibilities something a thousand times smarter can come up with for reasons we cannot comprehend.
如果我们创造通用超级智能,我认为从长远来看不会给人类带来好的结果。所以存在X风险,存在风险,每个人都死了。有S风险,即痛苦风险,每个人都希望自己死掉。我们也有 I-risk、ikigai 风险的想法,但我们在这些风险中失去了意义。该系统可以更具创造性。他们可以完成所有的工作。你必须为这个项目做出什么贡献并不明显
Lex Fridman (00:00:54)
The following is a conversation with Roman Yampolskiy, an AI safety and security researcher and author of a new book titled AI: Unexplainable, Unpredictable, Uncontrollable. He argues that there’s almost 100% chance that AGI will eventually destroy human civilization. As an aside, let me say that I’ll have many often technical conversations on the topic of AI, often with engineers building the state-of-the-art AI systems. I would say those folks put the infamous P(doom) or the probability of AGI killing all humans at around one to 20%, but it’s also important to talk to folks who put that value at 70, 80, 90, and is in the case of Roman, at 99.99 and many more nines percent.
以下是与人工智能安全研究员、新书《人工智能:不可解释、不可预测、不可控制》的作者 Roman Yampolskiy 的对话。他认为,AGI 最终有几乎 100% 的可能毁灭人类文明。顺便说一句,我会进行很多关于人工智能主题的技术对话,通常是与构建团队的工程师进行对话。
Lex Fridman (00:01:46)
I’m personally excited for the future and believe it will be a good one in part because of the amazing technological innovation we humans create, but we must absolutely not do so with blinders on ignoring the possible risks, including existential risks of those technologies. That’s what this conversation is about. This is the Lex Fridman podcast. To support it, please check out our sponsors in the description. Now dear friends, here’s Roman Yampolskiy. Existential risk of AGI
我个人对未来感到兴奋,并相信这将是一个美好的未来,部分原因是我们人类创造了令人惊叹的技术创新,但我们绝对不能盲目地忽视可能的风险,包括这些技术的生存风险。这就是这次谈话的内容。这是莱克斯·弗里德曼播客。为了支持它,请查看我们的赞助商
Lex Fridman (00:02:20)
What to you is the probability that super intelligent AI will destroy all human civilization?
你认为超级智能人工智能毁灭所有人类文明的可能性有多大?
Lex Fridman (00:02:26)
What’s the timeframe?
时间表是怎样的?
Lex Fridman (00:02:27)
Let’s say a hundred years, in the next hundred years.
假设一百年,未来一百年。
Lex Fridman (00:02:30)
So the problem of controlling AGI or superintelligence in my opinion, is like a problem of creating a perpetual safety machine. By analogy with perpetual motion machine, it’s impossible. Yeah, we may succeed and do good job with GPT-5, six, seven, but they just keep improving, learning, eventually self-modifying, interacting with the environment, interacting with malevolent actors. The difference between cybersecurity, narrow AI safety and safety for general AI for superintelligence, is that we don’t get a second chance. With cybersecurity, somebody hacks your account, what’s the big deal? You get a new password, new credit card, you move on. Here, if we’re talking about existential risks, you only get one chance. So you are really asking me what are the chances that we’ll create the most complex software ever on the first try with zero bugs and it’ll continue to have zero bugs for a hundred years or more.
因此,在我看来,控制 AGI 或超级智能的问题就像创建一个永久安全机器的问题。类比永动机,这是不可能的。是的,我们可能会成功并在 GPT-5、六、七方面做得很好,但它们只是不断改进、学习、最终自我修改、与环境交互、与恶意行为者交互。区别
Lex Fridman (00:03:38)
So there is an incremental improvement of systems leading up to AGI. To you, it doesn’t matter if we can keep those safe. There’s going to be one level of system at which you cannot possibly control it.
因此,系统的逐步改进导致了 AGI。对你来说,我们是否能保证它们的安全并不重要。系统的某个级别将是你无法控制的。
Roman Yampolskiy (00:03:57)
I don’t think we so far have made any system safe at the level of capability they display. They already have made mistakes. We had accidents. They’ve been jail broken. I don’t think there is a single large language model today, which no one was successful at making do something developers didn’t intend it to do.
我认为到目前为止,我们还没有使任何系统达到其所展示的能力水平的安全性。他们已经犯了错误。我们发生过事故。他们已经越狱了。我认为当今没有一个大型语言模型能够成功地完成开发人员不希望它做的事情。
Lex Fridman (00:04:21)
There’s a difference between getting it to do something unintended, getting it to do something that’s painful, costly, destructive, and something that’s destructive to the level of hurting billions of people or hundreds of millions of people, billions of people, or the entirety of human civilization. That’s a big leap.
让它做一些意想不到的事情,让它做一些痛苦的、代价高昂的、破坏性的事情,以及伤害数十亿人或数亿人、数十亿人或整个人类文明的破坏性事情,这之间是有区别的。这是一个很大的飞跃。
Roman Yampolskiy (00:04:39)
Exactly, but the systems we have today have capability of causing X amount of damage. So when we fail, that’s all we get. If we develop systems capable of impacting all of humanity, all of universe, the damage is proportionate.
确实如此,但我们今天拥有的系统有能力造成 X 数量的损害。所以当我们失败时,这就是我们得到的一切。如果我们开发出能够影响全人类、全宇宙的系统,那么造成的损害是成比例的。
Lex Fridman (00:04:55)
What to you are the possible ways that such mass murder of humans can happen?
您认为这种大规模屠杀人类的可能方式是什么?
Roman Yampolskiy (00:05:03)
It’s always a wonderful question. So one of the chapters in my new book is about unpredictability. I argue that we cannot predict what a smarter system will do. So you’re really not asking me how superintelligence will kill everyone. You’re asking me how I would do it. I think it’s not that interesting. I can tell you about the standard nanotech, synthetic, bio, nuclear. Superintelligence will come up with something completely new, completely super. We may not even recognize that as a possible path to achieve that goal.
这总是一个很好的问题。所以我的新书中有一章是关于不可预测性的。我认为我们无法预测更智能的系统会做什么。所以你真的不是在问我超级智能将如何杀死所有人。你问我该怎么做。我认为这没那么有趣。我可以告诉你标准的纳米技术、合成技术、生物技术、核技术。超级智能将来临
Lex Fridman (00:05:36)
So there is an unlimited level of creativity in terms of how humans could be killed, but we could still investigate possible ways of doing it. Not how to do it, but at the end, what is the methodology that does it. Shutting off the power and then humans start killing each other maybe, because the resources are really constrained. Then there’s the actual use of weapons like nuclear weapons or developing artificial pathogens, viruses, that kind of stuff. We could still think through that and defend against it. There’s a ceiling to the creativity of mass murder of humans here. The options are limited.
因此,就如何杀死人类而言,创造力是无限的,但我们仍然可以研究可能的方法。不是如何去做,而是最后,做这件事的方法论是什么。切断电源,然后人类可能会开始互相残杀,因为资源确实有限。然后是核武器或开发武器等武器的实际使用
Roman Yampolskiy (00:06:21)
They’re limited by how imaginative we are. If you are that much smarter, that much more creative, you’re capable of thinking across multiple domains, do novel research in physics and biology, you may not be limited by those tools. If squirrels were planning to kill humans, they would have a set of possible ways of doing it, but they would never consider things we can come up.
它们受到我们想象力的限制。如果你更聪明,更有创造力,你能够跨多个领域思考,在物理和生物学领域进行新颖的研究,你可能不会受到这些工具的限制。如果松鼠打算杀死人类,它们会有一套可能的方法,但它们永远不会考虑我们能想到的事情。
Lex Fridman (00:06:42)
So are you thinking about mass murder and destruction of human civilization or are you thinking of with squirrels, you put them in a zoo and they don’t really know they’re in a zoo? If we just look at the entire set of undesirable trajectories, majority of them are not going to be death. Most of them are going to be just things like brave new world where the squirrels are fed dopamine and they’re all doing some fun activity and the fire, the soul of humanity is lost because of the drug that’s fed to it, or literally in a zoo. We’re in a zoo, we’re doing our thing, we’re playing a game of Sims, and the actual players playing that game are AI systems. Those are all undesirable because the free will. The fire of human consciousness is dimmed through that process, but it’s not killing humans. So are you thinking about that or is the biggest concern literally the extinctions of humans?
那么你是在考虑大规模谋杀和对人类文明的破坏,还是在考虑松鼠,你把它们放在动物园里,而它们并不真正知道自己在动物园里?如果我们只看整套不良轨迹,大多数都不会死亡。其中大多数都会像《美丽新世界》那样,松鼠被喂食多巴胺,它们会
Roman Yampolskiy (00:07:45)
I think about a lot of things. So that is X-risk, existential risk, everyone’s dead. There is S-risk, suffering risks, where everyone wishes they were dead. We have also idea for I-risk, ikigai risks, where we lost our meaning. The systems can be more creative. They can do all the jobs. It’s not obvious what you have to contribute to a world where superintelligence exists. Of course, you can have all the variants you mentioned where we are safe, we’re kept alive, but we are not in control. We’re not deciding anything. We’re like animals in a zoo. There is, again, possibilities we can come up with as very smart humans and then possibilities, something a thousand times smarter can come up with for reasons we cannot comprehend. Ikigai risk
我想了很多事情。这就是 X 风险,存在风险,每个人都死了。有S风险,即痛苦风险,每个人都希望自己死掉。我们也有 I-risk、ikigai 风险的想法,但我们在这些风险中失去了意义。该系统可以更具创造性。他们可以完成所有的工作。你必须为超级智能存在的世界做出什么贡献并不明显。当然,你可以有
Lex Fridman (00:08:33)
I would love to dig into each of those X-risk, S-risk, and I-risk. So can you linger on I-risk? What is that?
我很乐意深入研究 X 风险、S 风险和 I 风险。那么你能在“I-risk”上徘徊吗?那是什么?
Lex Fridman (00:08:42)
So Japanese concept of ikigai, you find something which allows you to make money. You are good at it and the society says we need it. So you have this awesome job. You are podcaster gives you a lot of meaning. You have a good life. I assume you’re happy. That’s what we want more people to find, to have. For many intellectuals, it is their occupation, which gives them a lot of meaning. I’m a researcher, philosopher, scholar. That means something to me In a world where an artist is not feeling appreciated, because his art is just not competitive with what is produced by machines or a writer or scientist will lose a lot of that. At the lower level, we’re talking about complete technological unemployment. We’re not losing 10% of jobs. We’re losing all jobs. What do people do with all that free time? What happens then? Everything society is built on is completely modified in one generation. It’s not a slow process where we get to figure out how to live that new lifestyle, but it’s pretty quick.
所以日本的ikigai概念是,你找到能让你赚钱的东西。你很擅长,社会说我们需要它。所以你有这份很棒的工作。你是播客给了你很多意义。你生活得很好。我想你很高兴。这就是我们希望更多的人发现、拥有的东西。对于很多知识分子来说,这是他们的职业,这赋予了他们很多意义。我是一名研究员
Lex Fridman (00:09:56)
In that world, can’t humans do what humans currently do with chess, play each other, have tournaments, even though AI systems are far superior this time in chess? So we just create artificial games, or for us they’re real. Like the Olympics and we do all kinds of different competitions and have fun. Maximize the fun and let the AI focus on the productivity.
在那个世界里,人类就不能像人类目前在国际象棋中所做的那样,互相对弈,举办锦标赛,尽管人工智能系统这次在国际象棋方面远远优于人类?所以我们只是创造人造游戏,或者对我们来说它们是真实的。就像奥运会一样,我们参加各种不同的比赛并且玩得很开心。最大化乐趣,让AI专注于生产力。
Roman Yampolskiy (00:10:24)
It’s an option. I have a paper where I try to solve the value alignment problem for multiple agents and the solution to avoid compromise is to give everyone a personal virtual universe. You can do whatever you want in that world. You could be king. You could be slave. You decide what happens. So it’s basically a glorified video game where you get to enjoy yourself and someone else takes care of your needs and the substrate alignment is the only thing we need to solve. We don’t have to get 8 billion humans to agree on anything.
Lex Fridman (00:10:55)
Okay. So why is that not a likely outcome? Why can’t the AI systems create video games for us to lose ourselves in each with an individual video game universe?
Lex Fridman (00:11:08)
Some people say that’s what happened. We’re in a simulation.
Lex Fridman (00:11:12)
We’re playing that video game and now we’re creating what… Maybe we’re creating artificial threats for ourselves to be scared about, because fear is really exciting. It allows us to play the video game more vigorously.
Roman Yampolskiy (00:11:26)
Some people choose to play on a more difficult level with more constraints. Some say, okay, I’m just going to enjoy the game high privilege level. Absolutely.
Lex Fridman (00:11:35)
Okay, what was that paper on multi-agent value alignment?
Lex Fridman (00:11:38)
Personal universes.
Lex Fridman (00:11:43)
So that’s one of the possible outcomes, but what in general is the idea of the paper? So it’s looking at multiple agents. They’re human AI, like a hybrid system, whether it’s humans and AIs or is it looking at humans or just intelligent agents?
Roman Yampolskiy (00:11:55)
In order to solve value alignment problem, I’m trying to formalize it a little better. Usually we’re talking about getting AIs to do what we want, which is not well-defined are we’re talking about creator of a system, owner of that AI, humanity as a whole, but we don’t agree on much. There is no universally accepted ethics, morals across cultures, religions. People have individually very different preferences politically and such. So even if we somehow managed all the other aspects of it, programming those fuzzy concepts in, getting AI to follow them closely, we don’t agree on what to program in.
Lex Fridman (00:12:33)
So my solution was, okay, we don’t have to compromise on room temperature. You have your universe, I have mine, whatever you want, and if you like me, you can invite me to visit your universe. We don’t have to be independent, but the point is you can be, and virtual reality is getting pretty good. It’s going to hit a point where you can’t tell the difference, and if you can’t tell if it’s real or not, what’s the difference?
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