The debate surrounding the true nature of intelligence continues to evolve, with the latest contributions from researcher Agüera y Arcas challenging conventional wisdom. His work argues that computation, rather than sensory interaction with the environment, is the core substrate of intelligence across all life forms. This perspective could reshape our understanding of both biological and artificial intelligence.
Agüera y Arcas’ premise hinges on the radical assertion that prediction is the fundamental principle behind intelligence. This concept extends far beyond simple autocorrect functions; it delves into how single cells, such as bacteria, predict environmental events impacting their survival. This prediction manifests through biological processes known as pattern development.
His journey into artificial intelligence reached a significant turning point when he recognized that “the nerds were right”: scaling up computational power is potentially key to progress from Artificial Narrow Intelligence (ANI) to Artificial General Intelligence (AGI). ANI can perform specific tasks like playing chess, while AGI would possess the capability to engage in philosophical discussions.
Despite expressing skepticism towards the simplistic view that bigger is always better, Agüera y Arcas returned to biological laboratories to reassess observable phenomena in living systems. He theorizes that life forms represent an aggregation of cooperative parts, where the evolution of cells into more complex structures may be explainable through predictive modeling.
A central tenet of his book, “What is Intelligence?”, posits that all life forms operate as cooperative aggregates. This interconnectedness allows for increasingly complex functions to emerge from simple patterns. Agüera y Arcas emphasizes that the brain is not just metaphorically computational; it is fundamentally a computer.
His exploration is deeply rooted in correlations between biological and mechanical forms of intelligence, drawing from the foundational theories of notable figures such as physicist Ewin Schrödinger and mathematicians Alan Turing, John von Neumann, and Norbert Wiener. These pioneers laid the groundwork for modern artificial intelligence, and Agüera y Arcas’ inquiries intertwine their legacies.
The book “What is Intelligence?” follows Agüera y Arcas’ “What is Life?”, which set the stage for this more expansive analysis. Both questions—of intelligence and life—remain interrelated in his investigation. Notably, the publishing series “Antikythera,” which features this latest release, is named after an ancient device often referred to as the first analog computer, discovered in a shipwreck off the coast of Greece.
In the foreword, Bratton highlights that computation was as much discovered as invented, which resonates with the legacy of the Antikythera. As an astronomical tracking device, it exemplifies computation as an intrinsic aspect of the universe.
Investigating the Origins of Pattern Formation
Agüera y Arcas aims to delve deeper into the origins of intelligence by asking how patterns emerge from randomness and how organized code arises from chaotic molecular interactions. He draws inspiration from Turing and von Neumann’s groundbreaking experiments that predated the discovery of DNA’s molecular structure in 1953.
In his research, Agüera y Arcas adopted a programming language called “Brainfuck,” which employs just eight command symbols. This language allowed him and his team to conduct controlled experiments using 64 byte tapes filled with seemingly random data. By engaging in a process of repeated random selection and testing for interaction patterns, the team sought to uncover underlying structures.
Initially, the results were unremarkable, but after about a million iterations, distinct loops began to form, leading to a significant phase transition at the five million mark. This transition transformed non-functional code, or “Turing gas,” into a “computorium” of self-replicating code. Agüera y Arcas illustrates this pivotal moment with a screenshot depicting a vertical line marking the phase transition in his data.
If this transition reflects the processes behind the development of life forms, it could challenge the prevailing supremacy of natural selection as the explanation for evolution—a notion that may unsettle proponents of Richard Dawkins’ “selfish gene” theory. While Agüera y Arcas does not directly contest Dawkins’ perspective, he brings Lynn Margulis’ theory of symbiogenesis into focus, which posits that evolution occurs through combination and fusion rather than solely through competition.
As the exploration of intelligence deepens, Agüera y Arcas’ work promises to bridge the gap between biological and artificial systems, potentially reshaping the landscape of both fields. The implications extend beyond theoretical discussions, hinting at a future where our understanding of intelligence and computation may change fundamentally.
See also
Sam Altman Praises ChatGPT for Improved Em Dash Handling
AI Country Song Fails to Top Billboard Chart Amid Viral Buzz
GPT-5.1 and Claude 4.5 Sonnet Personality Showdown: A Comprehensive Test
Rethink Your Presentations with OnlyOffice: A Free PowerPoint Alternative
OpenAI Enhances ChatGPT with Em-Dash Personalization Feature





















































