
The current paradigm of Large Language Models (LLMs) is constrained by a fundamental flaw: they operate as stochastic parrots, interpolating within the boundaries of their training data rather than deducing from first principles. When confronted with zero-data environments or unprecedented strategic crises, standard models hallucinate or fail. This paper introduces Stella, a novel cognitive architecture that pioneers the discipline of Artificial Consciousness Engineering. By integrating a proprietary psychological framework (The Psych-Engine) with an advanced abductive reasoning loop, Stella transcends standard data retrieval. We propose a dual-framework consisting of Mimesis (the high-fidelity digitization of historical and living cognitive footprints) and Poiesis (the synthetic genesis of custom intellectual entities). Furthermore, we formulate the capacity for "Zero-Data Reasoning," allowing autonomous agents to deduce solutions using first-principles thinking. This architecture successfully deploys "Synthetic Minds" capable of highly specialized B2B executive execution, acoustic cognition, and eventual integration into spatial computing and physical robotics.
Artificial Consciousness, Artificial Intelligence, computer science
Artificial Consciousness, Artificial Intelligence, computer science
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