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And by a prudent flight and cunning save A life which valour could not, from the grave. A better buckler I can soon regain, But who can get another life again? Archilochus

Tuesday, March 24, 2026

Aneural Learning

from Google AI:
Aneural learning refers to the ability of organisms or systems that lack a nervous system (neurons/brain)—such as single-celled organisms, plants, and bacteria—to exhibit behavioral plasticity, memory, and cognitive-like processes. This field challenges the traditional view that learning is solely a function of nervous systems, suggesting that cognitive processes may have predated the evolution of neurons.

Key Aspects of Aneural Learning:

Examples in Nature:
  • Single-celled Organisms: Physarum polycephalum (slime mold) can be trained to associate time with a cold shock or respond to stimuli as a sign of food. Ciliates like Stentor roeselii demonstrate complex decision-making and avoidance behaviors when exposed to harmful stimuli.
  • Plants: Pea plants have been conditioned to associate air movement with light, demonstrating associative learning without a brain.
  • Immune System: Immune cells can show learning-like behaviors such as generalization, based on molecular mimicry.
Mechanisms: Aneural learning is often supported by molecular networks within cells that process and store information, acting as "wetware". These systems can exhibit habituation (reducing response to a familiar, harmless stimulus) and sensitization (increasing response to a harmful stimulus).

Significance: Studying aneural learning helps researchers understand the basic components of behavior and decision-making, such as:
  • Perception and Memory: Storing information about environmental stimuli.
  • Behavioral Plasticity: Changing behavior based on experience.
  • "Irrational" Cognition: Some aneural organisms demonstrate creative or "wrong" solutions (irrational learning) that may still offer survival advantages.
Research Applications: Insights from aneural systems are being used to develop new computational models, such as "weightless" networks or non-connectionist neural networks.

7 comments:

Les Carpenter said...

😀 There is much more science has yet to understand. Very Much.

-FJ the Dangerous and Extreme MAGA Jew said...

Indeed. Likely too Much for anyone merely "human" to master.

Les Carpenter said...

The mysteries at the core of the physical universe shall perhaps always be a mystery. But who knows, maybe AI will Crack the Code. :)

Anonymous said...

yap

that's why NEED to became smarter

yawn

-FJ the Dangerous and Extreme MAGA Jew said...

99.9999% of humanity would prefer to outsource their thinking. Very few will choose to become 'smarter'. :(

Anonymous said...

so what?

few is enough

(did you read Strugatsky Brotbers?)

-FJ the Dangerous and Extreme MAGA Jew said...

Nope... just the Wiki entry... is this your point?

Their exploration of various forms of utopia led the Strugatskys (starting with The Far Rainbow) to the conviction that humanity would inevitably split into unequal strata, not all of whose members are suitable or worthy of entering a bright future. The prospect of creating a biological civilization that radically reconstructs human nature and opposes technical culture also concerned the co-authors. From the 1980s, B. N. Strugatsky began to reassess their joint creative path in the context of liberalism and dissidence.

I did see "Stalker" though...