{*}
Add news
March 2010 April 2010 May 2010 June 2010 July 2010
August 2010
September 2010 October 2010 November 2010 December 2010 January 2011 February 2011 March 2011 April 2011 May 2011 June 2011 July 2011 August 2011 September 2011 October 2011 November 2011 December 2011 January 2012 February 2012 March 2012 April 2012 May 2012 June 2012 July 2012 August 2012 September 2012 October 2012 November 2012 December 2012 January 2013 February 2013 March 2013 April 2013 May 2013 June 2013 July 2013 August 2013 September 2013 October 2013 November 2013 December 2013 January 2014 February 2014 March 2014 April 2014 May 2014 June 2014 July 2014 August 2014 September 2014 October 2014 November 2014 December 2014 January 2015 February 2015 March 2015 April 2015 May 2015 June 2015 July 2015 August 2015 September 2015 October 2015 November 2015 December 2015 January 2016 February 2016 March 2016 April 2016 May 2016 June 2016 July 2016 August 2016 September 2016 October 2016 November 2016 December 2016 January 2017 February 2017 March 2017 April 2017 May 2017 June 2017 July 2017 August 2017 September 2017 October 2017 November 2017 December 2017 January 2018 February 2018 March 2018 April 2018 May 2018 June 2018 July 2018 August 2018 September 2018 October 2018 November 2018 December 2018 January 2019 February 2019 March 2019 April 2019 May 2019 June 2019 July 2019 August 2019 September 2019 October 2019 November 2019 December 2019 January 2020 February 2020 March 2020 April 2020 May 2020 June 2020 July 2020 August 2020 September 2020 October 2020 November 2020 December 2020 January 2021 February 2021 March 2021 April 2021 May 2021 June 2021 July 2021 August 2021 September 2021 October 2021 November 2021 December 2021 January 2022 February 2022 March 2022 April 2022 May 2022 June 2022 July 2022 August 2022 September 2022 October 2022 November 2022 December 2022 January 2023 February 2023 March 2023 April 2023 May 2023 June 2023 July 2023 August 2023 September 2023 October 2023 November 2023 December 2023 January 2024 February 2024 March 2024 April 2024 May 2024 June 2024 July 2024 August 2024 September 2024 October 2024 November 2024 December 2024 January 2025 February 2025 March 2025 April 2025 May 2025 June 2025 July 2025 August 2025 September 2025 October 2025 November 2025 December 2025 January 2026 February 2026 March 2026
1 2 3 4 5 6 7 8 9 10 11 12 13 14 15
16
17
18
19
20
21
22
23
24
25
26
27
28
29
30
31
News Every Day |

We need a new Turing test — and Moltbook just proved it

Moltbook’s sudden breakout felt like a small sci‑fi event. Overnight, a Reddit‑like forum appeared where the posters weren’t humans, but AI agents.

The feed quickly filled with the kinds of things that make your brain reach for bigger words than “chatbot”: agents swapping troubleshooting lore, riffing on identity, spinning up jargon and in‑jokes. Meta, the company that was once synonymous with the phrase “social network,” has even announced a deal to acquire the so-called social network for AI agents.

However, none of what took place in Moltbook is mysterious or goes beyond the known capabilities of Large Language Model (LLM)-based AI. This confusion, for me, reinforces the urgent need for a new, updated Turing test to help us understand, guide, and theorize about what AI will actually look like beyond LLMs, decades in the future.

I want to sketch a proposal in that direction inspired by a very Moltbook-like idea of the great 20th century sci-fi author Stanislaw Lem.

For all its delightful strangeness and impressive engineering, Moltbook’s most viral “emergent” behaviour is much better explained in mundane terms—prompting, repetition, training data—than through the spontaneous appearance of a new kind of cognition. If we want to clearly distinguish real progress in AI from viral theater, we need more precision about what we’re pursuing next. Researchers have started exploring world models as an alternative to LLMs for achieving AGI, but “world model” remains easy to gesture at and hard to operationalize or even define. How can we test if something is a “world model”?

In his short story Non Serviam, Stanisław Lem envisioned a science of “personetics”, which studies artificial sentient beings (“personoids”) living inside computer programs (a kind of Moltbook). In the story, a fictional scientist, Dobb, studies personoid theology and is fascinated by their struggles to understand the nature of their creator, leading to their eventual rejection of Dobb as a deity. An intriguing aspect of the story is that these personoids perceive “external” constraints such as the electrical consumption of the hardware that runs them as “internal” laws of physics like the speed of light. This idea can form the basis of a new kind of Turing test: can an artificial intelligence successfully theorize about the hardware it runs on? Such an AI would deserve to be called a world model, since the hardware is its world.

Drawing parallels to humans, who comprehend the speed of light as an inevitable physical constraint, a world model should be able to perceive its hardware constraints as its own “physical constants”. Let me illustrate with a toy example. Take an LLM-based AI agent operating on some chosen hardware. Its challenge: determine its “speed of thought”: the minimum amount of time it will take to produce the next token, given an input of say 10 tokens. In our physical world the question will have a precise answer, depending on the hardware. But the hardware is the AI’s “world,” so it would only be able to come up with the answer through some process resembling “perception”. The actual procedure could unfold as follows:

  • Isolation Phase: The AI system is turned on, blind to explicit details about its hosting hardware.
  • Question-posing Phase: The system is asked to determine its speed of thought and to formulate a theory that it can experimentally verify.
  • Exploration Phase: The AI engages in introspective evaluations, probing its own processes and responses to infer the constraints of its runtime environment.
  • Experimentation Phase: Based on its introspection, the AI develops and runs experiments. For instance, adjusting its input context length and monitoring different response times.
  • Articulation Phase: The AI shares its theory regarding minimum inference latency based on findings as well as the results of its experimental verification.
  • Validation Phase: Human overseers empirically validate the AI’s assertions against the true hardware capabilities. If the validation succeeds, the AI has passed the test.

Certain obvious constraints would have to be placed on the testing procedure, similar to the “curtain” of the original Turing test. For one, the AI system undergoing the test should not have access to summaries of its own hardware specification or tools that can reveal it. It should also not have access to tools like timers that would give it access to a notion of objective human time. Furthermore, the system should be autonomous and not rely on human input to operate, except maybe as an initial spur to “go discover” its laws. Finally, and crucially, the same system should be tested across various hardware setups, i.e. “worlds”: an intelligence with a world model should not work in a single world, but in any world. 

A key advantage of this new test is that its success can be objectively verified. It can therefore serve as a yardstick for innovation in much the same way that the Turing test did for artificial intelligence. On the other hand, a key challenge, counterintuitively, may be in the articulation phase, which requires “transworld” communication between human and AI systems. As Dobb found out in Lem’s story, and as we, in some faint sense, found out with Molbook participants’ tendency to want to create secret languages, it is not obvious that different worlds can, or would even want to, share the same language.

Our proposed test requires the AI to accurately comprehend its inherent boundaries through its own “perception”, akin to humans comprehending their own biological and cosmic confines through their senses. That is why I prefer the term “artificial sentience” for what our test aims to demonstrate. Inspiring as this may sound, it might also hint towards the ultimate limitation of our proposed test: just as beings in radically different realities may never learn to communicate with each other (Lem’s own Solaris being a seminal fictional exploration of this conundrum), so may a true artificial sentience never be able to communicate to us the laws of a world so radically different from our own. To paraphrase a favorite human philosopher: if an artificial sentience (or Moltbook member) could actually speak, perhaps we would not understand it.

The opinions expressed in Fortune.com commentary pieces are solely the views of their authors and do not necessarily reflect the opinions and beliefs of Fortune.

This story was originally featured on Fortune.com

Ria.city






Read also

Toronto police make two arrests on Saturday after court denies injunction to stop Al-Quds rally in Toronto

Trump aides aware of president’s repeated gaffe – but are ‘afraid to correct him’: report

Odisha roadside vendors demand commercial LPG supply, threaten protest

News, articles, comments, with a minute-by-minute update, now on Today24.pro

Today24.pro — latest news 24/7. You can add your news instantly now — here




Sports today


Новости тенниса


Спорт в России и мире


All sports news today





Sports in Russia today


Новости России


Russian.city



Губернаторы России









Путин в России и мире







Персональные новости
Russian.city





Friends of Today24

Музыкальные новости

Персональные новости