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vST for Large Language Models#

🤖 AI‑Ready Module • TriadicFrameworks
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Validation‑Space‑Time Framework for High‑Dimensional LLM Inference#

This artifact defines a substrate‑level framework for analyzing, validating, and comparing Large Language Models (LLMs) using the Validation‑Space‑Time (vST) system and the 1024D dimensional substrate. It provides a structured, invariant‑preserving method for interpreting latent trajectories, regime behavior, scaling patterns, and cross‑version drift in modern LLMs.

The goal is to offer a reproducible, model‑agnostic substrate for understanding high‑dimensional inference systems at scale.


1. Purpose#

LLMs operate in extremely high‑dimensional latent spaces (typically 768D–4096D). These spaces exhibit:

  • stable and unstable regions
  • regime transitions during inference
  • scaling‑law behavior across model sizes
  • drift across checkpoints and versions
  • projection‑compatible structure

This artifact applies the Resonance Substrate Model (RSM) and vST validation layers to:

  • classify latent‑trajectory regimes
  • analyze scaling behavior
  • detect drift across model versions
  • map coherence surfaces in latent space
  • project high‑dimensional structure into 3D–9D cores

The result is a unified, interpretable substrate for LLM behavior.


2. Contents#

This directory contains:

  • substrate_definition.md
    Defines the LLM substrate, dimensional primitives, and latent‑space structure.

  • latent_trajectory_regimes.md
    Describes stable, transitional, and dispersed regimes in LLM inference.

  • scaling_behavior_llms.md
    Maps LLM scaling laws onto the 3D–1024D dimensional ladder.

  • projection_and_alignment.md
    Defines invertible projection from high‑dimensional latent states into triadic cores.

  • validation_layers_vst_llm.md
    Extends vST (V₁–V₄) to LLM‑specific behavior.

  • drift_detection_llm.md
    Provides a substrate‑level framework for detecting cross‑version drift.

  • examples/
    Reproducible demonstrations of latent‑trajectory analysis and projection.

  • appendix/
    Terminology and references.

Each file is self‑contained and designed for clarity, reproducibility, and cross‑model comparison.


3. Scope#

This artifact is:

  • model‑agnostic
    Works with any transformer‑based LLM (GPT‑class, LLaMA‑class, Mistral‑class, etc.).

  • architecture‑independent
    Applies to decoder‑only, encoder‑decoder, and hybrid architectures.

  • training‑method independent
    Compatible with pretraining, fine‑tuning, RLHF, DPO, and mixture‑of‑experts systems.

  • substrate‑aligned
    Uses the same primitives, invariants, and validation layers as the rest of the RSM canon.


4. Intended Use#

This framework supports:

  • latent‑space analysis
  • cross‑version comparison
  • drift detection
  • scaling‑law evaluation
  • embedding‑space diagnostics
  • interpretability research
  • model‑alignment studies
  • reproducible inference analysis

It is not a performance benchmark or a training method.
It is a substrate‑level interpretability and validation framework.


5. Relationship to Other Artifacts#

This artifact extends:

  • Dimensional Substrate Structures (3D–1024D substrate)
  • Validation‑Space‑Time (vST)
  • Triadic Dimensional Cores (3D–9D)

It parallels:

  • vST for Protein Language Models
  • vST for Generative Models
  • vST for Multi‑Model Alignment

Each artifact stands alone but shares a common substrate grammar.


6. Citation#

A CITATION.cff file is included for formal citation.
A zenodo.json file is provided for DOI‑ready metadata.


7. License#

Released under the MIT License.

Updated

TriadicFrameworks — Documentation