Evolving Many Worlds: Towards Open-Ended Discovery in Petri Dish NCA via Population-Based Training
Uljad Berdica, Jakob Foerster, Frank Hutter, Arber Zela
TLDR
PBT-NCA uses meta-evolution to discover open-ended complexity and diverse self-organization strategies in Neural Cellular Automata.
Key contributions
- Introduces PBT-NCA, a meta-evolutionary algorithm for Petri Dish Neural Cellular Automata (PD-NCA).
- Employs a composite objective rewarding historical behavioral novelty and contemporary visual diversity.
- Spontaneously generates diverse emergent lifelike phenomena and self-organization strategies.
- Sustains effective complexity at the "edge of chaos" by actively penalizing monocultures.
Why it matters
This paper tackles the challenge of generating sustained, open-ended complexity in artificial life. PBT-NCA offers a robust method to prevent PD-NCA collapse, enabling autonomous discovery of diverse survival strategies and advancing true open-endedness.
Original Abstract
The generation of sustained, open-ended complexity from local interactions remains a fundamental challenge in artificial life. Differentiable multi-agent systems, such as Petri Dish Neural Cellular Automata (PD-NCA), exhibit rich self-organization driven purely by spatial competition; however, they are highly sensitive to hyperparameters and frequently collapse into uninteresting patterns and dynamics, such as frozen equilibria or structureless noise. In this paper, we introduce PBT-NCA, a meta-evolutionary algorithm that evolves a population of PD-NCAs subject to a composite objective that rewards both historical behavioral novelty and contemporary visual diversity. Driven by this continuous evolutionary pressure, PBT-NCA spontaneously generates a plethora of emergent lifelike phenomena over extended horizons-a hallmark of true open-endedness. Strikingly, the substrate autonomously discovers diverse morphological survival and self-organization strategies. We observe highly regular, coordinated periodic waves; spore-like scattering where homogeneous groups eject cell-like clusters to colonize distant territories; and fluid, shape-shifting macro-structures that migrate across the substrate, maintaining stable outer boundaries that enclose highly active interiors. By actively penalizing monocultures and dead states, PBT-NCA sustains a state of effective complexity that is neither globally ordered nor globally random, operating persistently at the "edge of chaos".
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