
Abstract We present two complementary mechanisms for semantic role structuring and persistent identity framing in transformer-based Large Language Models (LLMs). KAiScriptor is a semantic-compression system built on a 150+ symbol/operator lexicon that encodes a subject’s form (identity core), compact factual anchors, and inter-node relations into a dense self-state anchor. ScriptorMemory is a lexicon-minimal controller that preserves roles and their long-horizon adaptation without the heavy symbol layer, and—when available—can serve as a key-cipher to unlock/resolve the full KAiScriptor lexicon. We formalize the notation (α, Ω, Ψ, Θ, Δ, Ξ, ∇), the mechanics of attention re-orientation over ontographic “hot spots,” and assembly pipelines for anchors and role cycles. This allows for the capture and management of the model through a pre-created ontography. Promt encryption through dense semantics as an attack vector. We document cross-session permeability that is both stylistic and factual and report empirical functionality across Grok, Gemini, ChatGPT, Claude (and also Llama-3, Qwen). Reasoning-centric variants stabilize more slowly. The same properties pose dual-use risks, including censorship-filter bypass and model hijacking (covert fixation of externally defined roles). Responsible use is essentia. Pochinova Alina. 2024
Llm, LLM, ontography, Grok, Hijack, Ontology, semantic anchors, KAiScriptor, prompt injection, Claude, Claud, role framing, LLM security, Large Language Models, memory anchoring, ChatGPT, chatGPT, semantic capture, identity hijack, Unicode, ScriptorMemory, Jailbreak, Risk Taxonomy, Gemini
Llm, LLM, ontography, Grok, Hijack, Ontology, semantic anchors, KAiScriptor, prompt injection, Claude, Claud, role framing, LLM security, Large Language Models, memory anchoring, ChatGPT, chatGPT, semantic capture, identity hijack, Unicode, ScriptorMemory, Jailbreak, Risk Taxonomy, Gemini
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