Is Active Inference our way to superintelligence?

Is Active Inference our way to superintelligence?

MIT scholars and AI experts back this theory. Here’s a breakdown of their research on how Active Inference will drive AI forward.

Before we dive in, a quick word:

Hey everyone, it’s been a while since I published an article. This piece kicks off a new series of insights I’ll be sharing in the coming weeks. Join me on this journey! And if you haven’t yet, please subscribe to the Lighthouse newsletter , where I share inspiring achievements, the latest in AI and tech, and personal growth hacks designed to empower you and your teams to thrive in the Age of AI.


There is no denying that our world is increasingly being dominated by AI. From generative models that craft everything from artworks to new medicines, tools like ChatGPT, DALL-E, and others have propelled us into an era of rapid technological progress and innovation. Yet, despite these advances, these AI systems often fall short of reaching deeper levels of understanding and capability.

Are we merely scratching the surface with AI?

What does the next frontier of AI look like?

Active Inference and the Free Energy Principle answer these questions.

In the broad field of artificial intelligence research, these concepts are mainly discussed in academic settings and are typically presented in complex, scholarly language. Moving beyond the limitations of conventional AI systems that rely on static datasets and predetermined outputs, these principles focus on a revolutionary approach: an AI that learns and adapts continuously, in real-time.

MIT’s Thomas Parr, Giovanni Pezzulo, and Karl J. Friston are just some of the scholars who believe Active Inference is the key to fast-tracking the development of a genuine and super-intelligent AI. Let’s break down this concept and explore how it could transform the AI landscape and enable us to leap our technological capabilities into new realms of possibility.

What is Active Inference?

Active Inference is an approach in AI that models the brain’s way of minimizing surprises from sensory input. It’s based on the Free Energy Principle, introduced by neuroscientist Karl Friston, which argues that the brain is continuously predicting sensory inputs and updating its predictions based on what it actually perceives. This minimizes the free energy, or the difference between what the system expects and what it experiences, allowing for a more accurate understanding of the environment.

This method stands out because it integrates perception, cognition, and action into a unified framework. Instead of reacting to the world, Active Inference enables systems to anticipate and shape their interactions with the environment.

What sets Active Inference apart from traditional AI?

While typical AI systems rely on large sets of data and often need to be updated or retrained with new information to stay current, Active Inference AI is dynamic. It actively seeks out information to continuously improve its understanding of the world.

Let’s compare this to Large Language Models (LLMs) like ChatGPT.

LLMs produce responses based on data they’ve been fed during training. Once they’re trained, they don’t learn or adapt unless they’re retrained with new data, which can be slow and costly.

Here is a visualization from Giovanni Pezzulo’s article on the difference between Generative AI and Active Inference that compares two ways to predict a travel destination. Gen AI uses transformer networks that focus on important parts of data to make predictions. Active Inference uses a network that continuously updates its predictions based on new information and interactions, similar to how our brain works when we plan a route or decide where to go.

Active Inference operates like a curious learner, always looking for new information and using it to make better predictions about what might happen next. This means it doesn’t just wait for new data but goes out and finds it. This approach allows Active Inference to adapt to new situations much more like a human would, continuously learning and evolving.

Denise Holt explains this difference more deeply in her article “Unlocking the Future of AI: Active Inference vs. LLMs.”

She points out that while LLMs are good at creating text based on what they’ve already seen, they don’t truly understand or adapt to new situations unless they are specifically programmed to do so. Active Inference, however, integrates learning and adapting as a continuous process, much like how humans interact with the world.

This shows the potential of Active Inference in developing AI systems that need to operate in unpredictable environments or learn new tasks without being explicitly retrained.

Real-world innovative solutions

Situational awareness, adaptability, and autonomy.

These are the core advantages that Active Inference brings to AI systems.

The practical applications of Active Inference AI are shaping up to revolutionize our interaction with technology across multiple domains. By enabling AI systems to learn and adapt continuously, this approach is particularly suited to creating tools that can respond to complex, dynamic environments in real-time.

Consider an advanced property management system empowered by Active Inference.

This system could:

  • Monitor Energy Consumption: Analyze patterns across a network of buildings, adjusting HVAC systems dynamically to optimize energy use while maintaining tenant comfort.
  • Respond to Peak Demands: Predict potential spikes or drops in energy needs during peak times or unexpected weather conditions, managing resources proactively.
  • Enhance Maintenance: Predict maintenance issues before they occur, autonomously scheduling repairs to prevent disruptions.

The shift towards systems that can self-adapt and learn from interactive experiences without needing explicit reprogramming represents a significant leap forward. Tools developed with Active Inference AI will not only be more efficient but also more robust, capable of handling the unpredictable nuances of real-world applications.

Achieving superintelligence

Moving from today’s AI to systems that operate like the human brain involves new technology and a complete reimagining of AI’s role in our society. Everything I’ve learned about Active Inference converge on a singular point:

Active Inference is a pathway to achieving genuine artificial intelligence.

It promises to catalyze innovations that forge deeper connections between humans and machines, paving the way for AI that supports and enhances human endeavors. Embracing Active Inference could well define the future landscape of technology and innovation, setting the stage for a new era where AI and human intelligence amplify each other in unprecedented ways.


#AI #GenAI #Technology #ActiveInference #Verses

Dan Mapes

Founder and President of VERSES AI and The Spatial Web Foundation/Best selling author of The Spatial Web

4 个月

Great analysis, Matt. The SDK for Active Inference AI from VERSES AI is currently in beta with NASA, Volvo and others. We should have a more general release in Q1, 2025. For those interested in a deeper look at Active Inference and a chance to hear Dr. Karl Friston speak about it, the following short video might be of interest. Ecosystems of Intelligence - a path to AGI https://www.youtube.com/watch?v=cA7oZuBXQ7o

Matt Leta Cyrankiewicz Active Inference significantly enhances AI capabilities by enabling systems to learn and adapt in real-time, akin to human learning. This approach, inspired by the brain's strategy to minimize surprises, could lead to a new era of AI that predicts, learns, and evolves more effectively than traditional AI models.

Ikram Rana

Digital Solutions Consultant & Founder | Specializing in Custom Software/App Development & AI Integration for Business Growth | Transforming Challenges into Opportunities with Technology!

4 个月

?It’s exciting to see how this approach can revolutionize AI learning and adaptability.

Monia Ciocioni

Brand Ambassador presso Hermes University |Editorialista Moondo |Creo Reti Commerciali |Docente Formatore Universitario |Linkedin Expert |Responsabile della Formazione COS |Marketing HR e Sales

4 个月

Thanks for the easy to digest article! ??

Allan Fine

LinkedIn Lead Generation Expert | Helping Businesses Achieve 5-15 Warm Leads Weekly | Content Marketing Specialist | We help business owners improve their lead gen and sales development | ??DM me today!??

4 个月

The continuous learning aspect of Active Inference sets it apart...this could revolutionize AI as we know it.

要查看或添加评论,请登录

Matt Leta的更多文章

  • Innovation is Bullshit

    Innovation is Bullshit

    Forget the fluff — this is about building innovation that delivers real, measurable results. The innovation conundrum…

    10 条评论
  • Time-traveling CEOs and the art of future-proofing

    Time-traveling CEOs and the art of future-proofing

    Imagine if CEOs could time travel. They’d zip to the future, see the next big trends, then return to implement…

    13 条评论
  • Your next big idea might come from a quick win

    Your next big idea might come from a quick win

    In the fast-paced world of innovation, we often fixate on breakthrough ideas and transformative projects. But what if I…

    14 条评论
  • 9 must-know AI strategies to innovate

    9 must-know AI strategies to innovate

    AI took the world by storm, transforming everything in its path. As a leader, you're faced with a critical decision:…

    16 条评论
  • Overcoming Emotional Resistance to Achieve Business Success

    Overcoming Emotional Resistance to Achieve Business Success

    Written by our guest author Amina Zamani Imagine you’re at your desk with a clear vision of the life you desire —…

    19 条评论
  • Leading innovation with balance and flexibility

    Leading innovation with balance and flexibility

    Innovation in business requires a delicate balance. Too much freedom can lead to unfocused efforts and wasted resources.

    18 条评论
  • The death of tech jobs? 1-hour innovation process to a green economy

    The death of tech jobs? 1-hour innovation process to a green economy

    Having spent last days in New York during the UN Summit of the Future and subsequent New York Climate Week, I can’t…

    16 条评论
  • Research: The Winning CRM for the Age of AI

    Research: The Winning CRM for the Age of AI

    In our ongoing commitment to staying at the forefront of business technology, our team conducted an extensive research…

    25 条评论
  • Exclusive Preview: Key Findings from the Next State of the Future Report

    Exclusive Preview: Key Findings from the Next State of the Future Report

    The Millennium Project is a global network dedicated to unpacking the complexities of our future. Their annual State of…

    15 条评论
  • The LEAP Guide Expansion III: On Robots

    The LEAP Guide Expansion III: On Robots

    In the ever-evolving business and technology landscape, automation and artificial intelligence (AI) have emerged as…

    19 条评论

社区洞察

其他会员也浏览了