This paper introduces the ConsciousLeaf 5D (CL5D) model, a novel computational framework that operates on principles of consciousness geometry rather than statistical learning from data. CL5D utilizes a dynamic 5D coordinate system (Attraction, Absorption, Expansion, Time, and Consciousness) to perform deterministic, domain-agnostic computation without training datasets, backpropagation, or gradient descent. We present the complete formal specification of the model and, for the first time, empirical benchmarks comparing its performance against a simulated traditional AI agent. The results demonstrate a 4,352.7x speed advantage for CL5D, alongside perfect determinism and zero-shot data efficiency—establishing a new paradigm for efficient, transparent, and scalable machine intelligence.
Mrinmoy Chakraborty (Sat,) studied this question.