Report on Fungal Computing: Utilizing Mycelial Networks for Neuromorphic Information Processing
- Abstract
Recent pioneering research in the field of unconventional computing has demonstrated the potential of biological substrates to perform computational tasks. A significant breakthrough comes from the work of Professor Andrew Adamatzky and his team at the University of the West of England, Bristol, who have successfully utilized the mycelial networks of fungi, including the common shiitake mushroom (Lentinula edodes), as a functional neuromorphic computing device. This report details the principles, methodology, findings, and implications of this research, which aims to create sustainable, low-energy, and biodegradable computing systems by harnessing the innate electrophysiological properties of fungal mycelium.
- Introduction: The Need for Alternative Computing Paradigms
The dominance of silicon-based von Neumann architecture is increasingly challenged by physical limitations and high energy demands, especially for specialized tasks like pattern recognition and complex system simulation. Neuromorphic computing, which mimics the brain’s neural architecture, offers a promising alternative. Concurrently, the pursuit of sustainable electronics has led scientists to explore organic and biodegradable materials.
Fungal mycelium—the vast, root-like network of hyphae that constitutes the main growing body of a fungus—presents a unique candidate for this purpose. It is a self-assembling, regenerative, and resilient biological substrate with a complex, dynamically evolving network structure that bears a striking resemblance to artificial neural networks (ANNs) and even biological brains in its organizational complexity (Adamatzky, 2022).
- Methodology: From Fungus to Computer
The research, as published in the journal Biosystems, involved a series of electrophysiological experiments on various fungal species, including Ganoderma resinaceum and Lentinula edodes (shiitake) (Adamatzky et al., 2022).
3.1. Experimental Setup:
· Electrode Implantation: Researchers carefully inserted miniature, non-invasive electrodes into the mycelial network of living fungal samples.
· Signal Monitoring: These electrodes were used to both stimulate and record electrical activity (voltage spikes) from different parts of the mycelium.
· Data Analysis: The recorded spiking patterns were analyzed for their characteristics, such as spike duration, amplitude, and frequency.
3.2. Computational Principle:
The fundamental concept is that the mycelial network acts as a massively parallel,analog computing device.
· Information Carriers: Electrical spikes, or action potential-like impulses, travel through the mycelium. These spikes are believed to be a form of communication within the fungus, potentially used to report damage, coordinate growth, or respond to environmental stimuli.
· Logic Gates: By treating the presence of a spike as a logical ‘1’ and its absence as a ‘0’, the researchers were able to demonstrate that the mycelial network can implement basic Boolean logic gates. The complex, interconnected pathways of the mycelium can be configured through stimulation to perform operations like AND, OR, and XOR gates.
· Neuromorphic Circuits: Beyond simple digital logic, the mycelium’s behavior is inherently neuromorphic. The spikes resemble neuronal firing, and the network’s topology—with dense clusters of hyphae acting as processing hubs and connecting filaments as wires—mirrors the structure of a biological brain. This allows for more complex, state-dependent, and memristive (memory-resistive) information processing.
- Key Findings and Results
The experiments yielded several critical findings:
· Spiking Activity: The mycelial networks exhibited clear and reproducible patterns of electrical spiking. This activity was not random but could be correlated with external stimulation and the internal state of the fungus.
· Configurable Logic: The team successfully configured and implemented basic computing circuits within the mycelium. By selecting specific input and output points on the network, they could create pathways that corresponded to the truth tables of fundamental logic gates.
· Memristive Properties: A crucial discovery was that the mycelium displays memristive behavior. A memristor’s electrical resistance depends on the history of the voltage applied to it, allowing it to “remember” past states. This property is fundamental to learning and adaptation in neural networks, suggesting that fungal computers could, in theory, be trained and reconfigured over time (Adamatzky, 2023).
- Discussion and Implications
The transformation of shiitake mushrooms and other fungi into living computers has profound implications for multiple fields.
5.1. Sustainable and Biodegradable Electronics:
Fungal computers represent a cornerstone of the nascent field of”fungal electronics.” At the end of their lifecycle, these devices can simply be composted, offering a radical solution to the problem of electronic waste (e-waste) generated by conventional silicon chips.
5.2. Neuromorphic and Robotics Applications:
The complex,adaptive nature of the mycelial network makes it ideal for specific computing tasks where traditional computers are inefficient.
· Environmental Sensing: A mycelial network spread across a large area could act as a massive, distributed sensor for monitoring soil health, pollution, or structural integrity, processing this information in situ.
· Robotic Control Systems: “Fungus-brained” robots could exhibit more adaptive and resilient behaviors. A robot controlled by a mycelial network might process sensor data in a non-linear, brain-like way, potentially leading to more autonomous and intelligent decision-making in unpredictable environments.
5.3. Philosophical and Scientific Insights:
This research also blurs the boundaries between biology and technology,prompting new questions about intelligence and information processing in non-animal organisms. It suggests that primitive “cognition” and complex communication may be widespread in the natural world.
- Conclusion
The work of Adamatzky and his colleagues has successfully demonstrated that ordinary shiitake mushrooms and other fungi are far more than just food; they are sophisticated, living computational devices. By tapping into the electrophysiology of their mycelial networks, we can begin to develop a new class of computing that is sustainable, low-energy, and inherently capable of brain-like information processing. While this technology is in its infancy and cannot rival the speed of digital supercomputers for arithmetic tasks, it opens a transformative pathway for specialized applications in sensing, robotics, and adaptive systems, ultimately paving the way for a future where our electronics are grown, not manufactured.
- References
· Adamatzky, A. (2022). Towards fungal computer. Biosystems, 221, 104779. (This is a key theoretical paper outlining the concept).
· Adamatzky, A., Gandia, A., & Ayres, P. (2022). Fungal electronics. Biosystems, 212, 104588. (This paper details the experimental findings on electrical activity and logic gates in mycelium).
· Adamatzky, A. (2023). On memfractance and memristors in mycelium networks. Scientific Reports, 13, 10562. (This recent paper explores the critical memristive properties of mycelium).
· [Supporting Article for Context] Chivers, T. (2023, November). Scientists Are Turning Mushrooms Into Functional Living Computers. IFLScience. (This provides a more accessible summary of the research for the general public).







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