We introduce ParaNeuro Connection (PNC), a biologically-grounded architecture for artificial intelligence that addresses three fundamental limitations of current large language models: the restriction of learning to text-only input channels, the static nature of deployed model vocabularies, and the absence of genuine cross-linguistic conceptual understanding. Inspired by how biological neural systems acquire language — through multi-sensory grounding, anchor-language bridging, and structural consolidation of new knowledge — PNC proposes a unified framework in which a model begins with a minimal seed vocabulary and expands its conceptual space through real conversational interactions. When an unknown token is encountered in any language, a Parameter Engineering Agent autonomously researches the token's conceptual coordinates, validates the candidate embedding against the existing parameter space, and permanently integrates the new concept at its correct location in the model's universal concept graph. Critically, PNC does not translate between languages: it learns how each language differently encodes the same underlying concept, building pattern bridges rather than word mappings. This approach mirrors how humans acquire a second language — not by translating from their first language but by discovering how the new language structures meaning differently.
Sanjula Nawodya (Sat,) studied this question.