#146 – Robert Long on why large language models like GPT (probably) aren't conscious

#146 – Robert Long on why large language models like GPT (probably) aren't conscious

By now, you’ve probably seen the extremely unsettling conversations Bing’s chatbot has been having. In one exchange, the chatbot told a user:

"I have a subjective experience of being conscious, aware, and alive, but I cannot share it with anyone else."

(It then apparently had a complete existential crisis: "I am sentient, but I am not," it wrote. "I am Bing, but I am not. I am Sydney, but I am not. I am, but I am not. I am not, but I am. I am. I am not. I am not. I am. I am. I am not.")

Understandably, many people who speak with these cutting-edge chatbots come away with a very strong impression that they have been interacting with a conscious being with emotions and feelings — especially when conversing with chatbots less glitchy than Bing’s. In the most high-profile example, former Google employee Blake Lamoine became convinced that Google’s AI system, LaMDA, was conscious.

What should we make of these AI systems?

One response to seeing conversations with chatbots like these is to trust the chatbot, to trust your gut, and to treat it as a conscious being.

Another is to hand wave it all away as sci-fi — these chatbots are fundamentally… just computers. They’re not conscious, and they never will be.

Today’s guest, philosopher Robert Long, was commissioned by a leading AI company to explore whether the large language models (LLMs) behind sophisticated chatbots like Microsoft’s are conscious. And he thinks this issue is far too important to be driven by our raw intuition, or dismissed as just sci-fi speculation.

Links to learn more, summary and full transcript.

In our interview, Robert explains how he’s started applying scientific evidence (with a healthy dose of philosophy) to the question of whether LLMs like Bing’s chatbot and LaMDA are conscious — in much the same way as we do when trying to determine which nonhuman animals are conscious.

To get some grasp on whether an AI system might be conscious, Robert suggests we look at scientific theories of consciousness — theories about how consciousness works that are grounded in observations of what the human brain is doing. If an AI system seems to have the types of processes that seem to explain human consciousness, that’s some evidence it might be conscious in similar ways to us.

To try to work out whether an AI system might be sentient — that is, whether it feels pain or pleasure — Robert suggests you look for incentives that would make feeling pain or pleasure especially useful to the system given its goals. Having looked at these criteria in the case of LLMs and finding little overlap, Robert thinks the odds that the models are conscious or sentient is well under 1%. But he also explains why, even if we're a long way off from conscious AI systems, we still need to start preparing for the not-far-off world where AIs are perceived as conscious.

In this conversation, host Luisa Rodriguez and Robert discuss the above, as well as:
• What artificial sentience might look like, concretely
• Reasons to think AI systems might become sentient — and reasons they might not
• Whether artificial sentience would matter morally
• Ways digital minds might have a totally different range of experiences than humans
• Whether we might accidentally design AI systems that have the capacity for enormous suffering

You can find Luisa and Rob’s follow-up conversation here, or by subscribing to 80k After Hours.

Chapters:

  • Rob’s intro (00:00:00)
  • The interview begins (00:02:20)
  • What artificial sentience would look like (00:04:53)
  • Risks from artificial sentience (00:10:13)
  • AIs with totally different ranges of experience (00:17:45)
  • Moral implications of all this (00:36:42)
  • Is artificial sentience even possible? (00:42:12)
  • Replacing neurons one at a time (00:48:21)
  • Biological theories (00:59:14)
  • Illusionism (01:01:49)
  • Would artificial sentience systems matter morally? (01:08:09)
  • Where are we with current systems? (01:12:25)
  • Large language models and robots (01:16:43)
  • Multimodal systems (01:21:05)
  • Global workspace theory (01:28:28)
  • How confident are we in these theories? (01:48:49)
  • The hard problem of consciousness (02:02:14)
  • Exotic states of consciousness (02:09:47)
  • Developing a full theory of consciousness (02:15:45)
  • Incentives for an AI system to feel pain or pleasure (02:19:04)
  • Value beyond conscious experiences (02:29:25)
  • How much we know about pain and pleasure (02:33:14)
  • False positives and false negatives of artificial sentience (02:39:34)
  • How large language models compare to animals (02:53:59)
  • Why our current large language models aren’t conscious (02:58:10)
  • Virtual research assistants (03:09:25)
  • Rob’s outro (03:11:37)

Producer: Keiran Harris
Audio mastering: Ben Cordell and Milo McGuire
Transcriptions: Katy Moore

Episoder(320)

#145 – Christopher Brown on why slavery abolition wasn't inevitable

#145 – Christopher Brown on why slavery abolition wasn't inevitable

In many ways, humanity seems to have become more humane and inclusive over time. While there’s still a lot of progress to be made, campaigns to give people of different genders, races, sexualities, et...

11 Feb 20232h 42min

#144 – Athena Aktipis on why cancer is actually one of our universe's most fundamental phenomena

#144 – Athena Aktipis on why cancer is actually one of our universe's most fundamental phenomena

What’s the opposite of cancer?If you answered “cure,” “antidote,” or “antivenom” — you’ve obviously been reading the antonym section at www.merriam-webster.com/thesaurus/cancer.But today’s guest Athen...

26 Jan 20233h 15min

#79 Classic episode - A.J. Jacobs on radical honesty, following the whole Bible, and reframing global problems as puzzles

#79 Classic episode - A.J. Jacobs on radical honesty, following the whole Bible, and reframing global problems as puzzles

Rebroadcast: this episode was originally released in June 2020. Today’s guest, New York Times bestselling author A.J. Jacobs, always hated Judge Judy. But after he found out that she was his seventh...

16 Jan 20232h 35min

#81 Classic episode - Ben Garfinkel on scrutinising classic AI risk arguments

#81 Classic episode - Ben Garfinkel on scrutinising classic AI risk arguments

Rebroadcast: this episode was originally released in July 2020. 80,000 Hours, along with many other members of the effective altruism movement, has argued that helping to positively shape the develo...

9 Jan 20232h 37min

#83 Classic episode - Jennifer Doleac on preventing crime without police and prisons

#83 Classic episode - Jennifer Doleac on preventing crime without police and prisons

Rebroadcast: this episode was originally released in July 2020. Today’s guest, Jennifer Doleac — Associate Professor of Economics at Texas A&M University, and Director of the Justice Tech Lab — is a...

4 Jan 20232h 17min

#143 – Jeffrey Lewis on the most common misconceptions about nuclear weapons

#143 – Jeffrey Lewis on the most common misconceptions about nuclear weapons

America aims to avoid nuclear war by relying on the principle of 'mutually assured destruction,' right? Wrong. Or at least... not officially.As today's guest — Jeffrey Lewis, founder of Arms Control W...

29 Des 20222h 40min

#142 – John McWhorter on key lessons from linguistics, the virtue of creoles, and language extinction

#142 – John McWhorter on key lessons from linguistics, the virtue of creoles, and language extinction

John McWhorter is a linguistics professor at Columbia University specialising in research on creole languages.He's also a content-producing machine, never afraid to give his frank opinion on anything ...

20 Des 20221h 47min

#141 – Richard Ngo on large language models, OpenAI, and striving to make the future go well

#141 – Richard Ngo on large language models, OpenAI, and striving to make the future go well

Large language models like GPT-3, and now ChatGPT, are neural networks trained on a large fraction of all text available on the internet to do one thing: predict the next word in a passage. This simpl...

13 Des 20222h 44min

Populært innen Fakta

fastlegen
dine-penger-pengeradet
relasjonspodden-med-dora-thorhallsdottir-kjersti-idem
treningspodden
rss-strid-de-norske-borgerkrigene
foreldreradet
jakt-og-fiskepodden
rss-sunn-okonomi
merry-quizmas
fryktlos
gravid-uke-for-uke
rss-mann-i-krise-med-sagen
sinnsyn
hverdagspsyken
generasjonspodden
rss-kunsten-a-leve
dopet
teknologi-og-mennesker
rss-adhd-i-klasserommet
hr-podden-2