A Nordic deep-tech startup has introduced a breakthrough in synthetic intelligence with the creation of the primary useful “digital nervous system” able to autonomous studying. IntuiCell, a spin-out from Lund College, revealed on March 19, 2025, that they’ve efficiently engineered AI that learns and adapts like organic organisms, doubtlessly rendering present AI paradigms out of date in lots of functions.
The innovation represents a major departure from conventional static machine studying fashions by replicating the core rules of how studying happens in organic nervous programs. Not like typical AI that depends on huge datasets and backpropagation algorithms, IntuiCell’s know-how allows machines to study by direct interplay with their setting.
“IntuiCell has decoded how studying happens in biology and engineered it as software program for the primary time,” the corporate said in its announcement, describing the breakthrough as “transferring past static machine studying fashions (the mainstay of conventional AI) by creating a totally useful ‘digital nervous system’ able to scaling naturally to human-level intelligence.”
The corporate demonstrated their innovation with “Luna,” a robotic canine that learns to manage its physique and stand by trial and error, much like a new child animal. Video footage launched by the corporate exhibits Luna instructing herself to face with none pre-programmed intelligence or directions, relying solely on the digital nervous system to study from expertise.
“Not like conventional AI fashions which might be certain by static coaching information, the robotic canine – dubbed Luna – perceives, processes, and improves itself by direct interplay with its world,” in keeping with the corporate’s press launch.
How the Know-how Works
On the coronary heart of IntuiCell’s innovation is a elementary shift in how machines study. Not like typical AI programs that course of huge datasets by static algorithms, IntuiCell’s method mimics the organic mechanisms that enable people and animals to study naturally.
Viktor Luthman, CEO and Co-Founding father of IntuiCell, highlighted this distinction in the course of the announcement. In line with Luthman, conventional AI has develop into proficient at information processing however falls wanting real intelligence, whereas their bio-inspired system allows machines to evolve and work together with their setting in unprecedented methods.
The system’s structure represents a major departure from normal neural networks. IntuiCell has developed know-how that features equally to a organic spinal twine, creating the foundational infrastructure for autonomous studying. This types half of a bigger system designed to copy the processing capabilities of the thalamocortex, the mind area chargeable for sensory processing and world modeling.
Fairly than counting on backpropagation algorithms and big coaching datasets, IntuiCell’s digital nervous system employs recurrent networks with a decentralized studying algorithm that mirrors mind processes. This structure permits AI brokers to amass data by direct expertise and adapt to new conditions in actual time—capabilities which were elusive in conventional machine studying.
The sensible software of this know-how displays its organic inspiration. As a substitute of programming behaviors or feeding information by typical algorithms, IntuiCell plans to make use of canine trainers to show their AI brokers new expertise. This method represents a radical shift from typical AI improvement practices, emphasizing real-world interplay over computational scale. As Dr. Udaya Rongala, Researcher and Co-Founder, defined, their work stems from three many years of neuroscience analysis targeted on understanding intelligence because it emerges from the nervous system’s construction and dynamics.
“The obsession with brute-force scaling, billions of parameters, extra compute, and extra information is an artifact of a basically improper method to attaining intelligence,” Rongala famous. “IntuiCell will not be chasing a bigger-is-better paradigm. Intelligence will not be our end-goal, however our start line.”
IntuiCell’s know-how goals to create “the primary real-world teachable programs; machines that study from us, in the identical approach as we’d train a brand new talent to an animal.” The corporate envisions its digital nervous system changing into “the infrastructure for all non-biological intelligence – empowering others to resolve real-world issues we can’t foresee right now, and not using a reliance on huge coaching datasets.”

(Supply: IntuiCell)
Analysis Basis and Crew Experience
The corporate’s basis is constructed upon three many years of neuroscience analysis at Lund College. Professor Henrik Jörntell, a co-founder of IntuiCell and neurophysiology professor on the college, has led what the corporate describes as “the one lab on the earth able to recording intracellular single-neuron exercise throughout your complete nervous system,” offering a novel scientific basis for IntuiCell’s know-how.
The management group contains skilled entrepreneurs and researchers with experience throughout neuroscience, AI, robotics, and enterprise. Along with Luthman, Jörntell, and Rongala, the founding group contains Dr. Jonas Enander, a medical physician with neuroscience experience; Linus Mårtensson, lead developer chargeable for translating analysis into software program; and Robin Mellstrand, COO with background in AI-driven know-how corporations.
IntuiCell has secured €3.5M in funding from traders together with Navigare Ventures and SNÖ Ventures. The corporate expects to finish improvement of the total digital nervous system inside the subsequent two years, with the last word aim of enabling any agent, bodily or digital, with “lifelong studying and adaptation to the unknown – capabilities as soon as thought-about distinctive to organic creatures.”
Whereas the total realization of IntuiCell’s imaginative and prescient stays years away, their demonstration with Luna gives compelling early proof of their know-how’s potential to remodel AI improvement by creating programs able to really autonomous studying and adaptation by real-world interplay.