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
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
News Every Day |

This is the next big thing in corporate AI

For the past two years, artificial intelligence strategy has largely meant the same thing everywhere: pick a large language model, plug it into your workflows, and start experimenting with prompts. That phase is coming to an end.

Not because language models aren’t useful, with their obvious limitations they are, but because they are rapidly becoming commodities. When everyone has access to roughly the same models, trained on roughly the same data, the real question stops being who has the best AI and becomes who understands their world best.

That’s where world models come in. 

From rented intelligence to owned understanding

Large language models look powerful, but they are fundamentally rented intelligence. You pay a monthly fee to OpenAI, Anthropic, Google or some other big tech, you access them through APIs, you tune them lightly, and you apply them to generic tasks: summarizing, drafting, searching, assisting. They make organizations more efficient, but they don’t make them meaningfully different. 

A world model is something else entirely. 

A corporate world model is an internal system that represents how a company’s environment actually behaves — its customers, operations, constraints, risks, and feedback loops — and uses that representation to predict outcomes, test decisions, and learn from experience.

This distinction matters. You can rent fluency. You cannot rent understanding.

What a “world model” really means for a company

Despite the academic origins of the term, world models are not abstract research toys. Executives already rely on crude versions of them every day:

  • Supply chain simulations
  • Demand forecasting systems
  • Risk and pricing models
  • Digital twins of factories, networks, or cities

Digital twins, in particular, are early and incomplete world models: static, expensive, and often brittle, but directionally important. 

What AI changes is not the existence of these models, but their nature. Instead of being static and manually updated, AI-driven world models can be:

  • Adaptive, learning continuously from new data
  • Probabilistic, rather than deterministic
  • Causal, not just descriptive
  • Action-oriented, able to simulate “what happens if…” scenarios

This is where reinforcement learning, simulation, and multimodal learning start to matter far more than prompt engineering.

A concrete example: logistics and supply chains

Consider global logistics: an industry that already runs on thin margins, tight timing, and constant disruption.

A language model can:

  • Summarize shipping reports
  • Answer questions about delays 
  • Draft communications to customers
  • A world model can do something far more valuable.

It can simulate how a port closure in Asia affects inventory levels in Europe, how fuel price fluctuations cascade through transportation costs, how weather events alter delivery timelines, and how alternative routing decisions change outcomes weeks in advance. In other words, it can reason about the system, not just describe it.

This is why companies like Amazon have invested heavily in internal simulation environments and decision models rather than relying on generic AI tools. 

In logistics, the competitive advantage doesn’t come from just talking about the supply chain better. It comes from anticipating it better.

Why building a world model is hard (and why that’s the point)

If this sounds complex, it’s because it is. Building a useful world model is not a matter of buying software or hiring a few prompt engineers. It requires capabilities many organizations have postponed developing.

At a minimum, companies need:

  • High-quality, well-instrumented data, not just large volumes of it
  • Clear definitions of outcomes, not vanity metrics
  • Feedback loops that connect decisions to real-world consequences
  • Cross-functional alignment, because no single department “owns” reality
  • Time and patience, since world models improve through iteration, not demos

This is exactly why most companies won’t do it — and why those that do will pull away. The hardest part of AI is not the models, but the systems and incentives around them

Why LLMs alone are not enough

Language models remain invaluable, but in a specific role. They are excellent interfaces between humans and machines. They explain, translate, summarize, and communicate. 

What they don’t do well is reason about how the world works.

LLMs learn from text, which is an indirect, biased, and incomplete representation of reality. They reflect how people talk about systems, not how those systems behave. This is why hallucinations are not an accident, but a structural limitation. As Yann LeCun has argued repeatedly, language alone is not a sufficient substrate for intelligence

In architectures that matter going forward, LLMs will play along with world models, not replace them. 

The strategic shift executives should make now

The most important AI decision leaders can make today is not which model to choose, but what parts of their reality they want machines to understand.

That means asking different questions:

  • Where do our decisions consistently fail?
  • What outcomes matter but aren’t well measured?
  • Which systems behave in ways we don’t fully understand?
  • Where would simulation outperform intuition?

Those questions are less glamorous than launching a chatbot. But they are far more consequential.

The companies that win will model their own reality

Large language models flatten the playing field. Everyone gets access to impressive capabilities at roughly the same time.

World models tilt it again.

In the next decade, competitive advantage will belong to organizations that can encode their understanding of the world (their world) into systems that learn, adapt, and improve. Not because those systems talk better, but because they understand better.

AI will not replace strategy. But strategy will increasingly belong to those who can model reality well enough to explore it before acting.

Every company will need its own world model. The only open question is who starts building theirs first.

Ria.city






Read also

Open Books in Logan Square to close March 1 amid financial challenges

Jay fields

One of the Greatest Movies Ever Is Airing for Free for the First Time in Decades

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