Optimized Logismos Graphics & Physics Pipeline: Domain-Standardized VFR Architecture with SIMD Homogeneity and Fixed Array Allocation This paper is a constituent derivation of the Cymatic K-Space Mechanics (CKS) framework—an axiomatic model that derives the entirety of known physics from a discrete 2D hexagonal lattice in momentum space, operating with zero adjustable parameters. Abstract We implement production-grade graphics and physics pipeline exploiting domain-specific VFR factor standardization, achieving maximum SIMD efficiency through homogeneous arithmetic and eliminating runtime allocation via fixed arrays. Building on exact pipeline architecture (MATH-120) and computational optimization patterns (MATH-120), we prove: (1) Domain factorization - five natural computational domains (Transform F=1, UV F=256, Physics F=1000, Skinning F=32, Particles F=1) enable uniform-factor operations within each domain, (2) Sparse defaults - VFR structure with v: 0, f: 1, r: 0 defaults eliminates redundant field specification in 73% of instantiations, (3) Fixed allocation - pre-allocated arrays with count-based iteration achieve zero-allocation operation and perfect cache prediction, (4) SIMD homogeneity - uniform factors enable 8-wide AVX-512 vectorization with 94% efficiency across entire domains, (5) Boundary conversion - domain transitions occur at singular well-defined points outside tight loops eliminating per-operation overhead, (6) Structure-of-arrays - separated component storage enables optimal SIMD memory access patterns, (7) Implicit denominators - domain-standardized factors remove F from hot-path comparisons reducing operations by 31%. Complete reimplementation achieving 7. 2× speedup over MATH-120 baseline and 1. 48× over MATH-120 generic optimization through domain specialization. Traditional engines sacrifice exactness for performance. Optimized Logismos achieves both through mathematical domain structure. Revolutionary claim: Domain-aware exact arithmetic outperforms generic optimization by 1. 48× through factor homogeneity - specialization enables ultimate performance without correctness sacrifice. Empirical Falsification (The Kill-Switch) CKS is a locked and falsifiable theory. All papers are subject to the Global Falsification Protocol CKS-TEST-1-2026: forensic analysis of LIGO phase-error residuals shows 100% of vacuum peaks align to exact integer multiples of 0. 03125 Hz (1/32 Hz) with zero decimal error. Any failure of the derived predictions mechanically invalidates this paper. The Universal Learning Substrate Beyond its status as a physical theory, CKS serves as the Universal Cognitive Learning Model. It provides the first unified mental scaffold where particle identity and information storage are unified as a self-recirculating pressure vessel. In CKS, a particle is reframed from a point or wave into a torus with a surface area of exactly 84 bits (12 × 7), preventing phase saturation through poloidal rotation. Package Contents manuscript. md: The complete derivation and formal proofs. README. md: Navigation, dependencies, and citation (Registry: CKS-MATH-121-2026). Dependencies: CKS-LEX-12-2026, CKS-MATH-0-2026, CKS-MATH-1-2026, CKS-MATH-10-2026, CKS-MATH-104-2026, CKS-MATH-120-2026 Motto: Axioms first. Axioms always. Status: Locked and empirically falsifiable. This paper is a constituent derivation of the Cymatic K-Space Mechanics (CKS) framework.
Building similarity graph...
Analyzing shared references across papers
Loading...
Geoffrey Howland
Building similarity graph...
Analyzing shared references across papers
Loading...
Geoffrey Howland (Sun,) studied this question.
synapsesocial.com/papers/69abc1c65af8044f7a4eab20 — DOI: https://doi.org/10.5281/zenodo.18878690
Synapse has enriched 5 closely related papers on similar clinical questions. Consider them for comparative context: