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Shay 79a4125d24 feat(bench): bench cost — $/1000 turns + latency, with disclosed assumptions
benchmarks/cost.py measures CORE per-turn cost honestly:

Measured (no estimation):
  - turns, wall_seconds_total, cpu_seconds_total
  - latency stats: min / median / p95 / max in ms
  - throughput in turns per second

Derived with disclosed assumptions:
  - USD per 1000 turns at AWS t3.medium on-demand
    ($0.0416/hr, source cited in CloudReference.source_note)
  - Frontier pricing comparison: Anthropic Claude Sonnet 4.5 /
    Haiku 4.5 and OpenAI GPT-4o, public per-token rates with
    source notes, derived using a conservative 20-in / 40-out
    tokens-per-turn assumption.

Explicitly NOT reported:
  - Joules per turn. Honest energy measurement requires RAPL
    (Linux) or IOKit/powermetrics (macOS) with privileged access
    that a plain Python process cannot get. Reporting a fabricated
    figure from a hand-waved TDP would violate "speculation is not
    evidence." cpu_seconds_total is the available proxy.

CLI:
  core bench --suite cost --runs 100

Measured numbers (100 turns, "What is truth?", warmup 5):
  median latency: 444.88 ms
  p95 latency:    447.10 ms
  throughput:     2.61 turns/s
  $/1000 turns:   $0.0044
  vs frontier:    48–149× cheaper depending on provider

CLAIMS.md Tier 4 cost/latency rows updated with real numbers
replacing TBDs. evals/reports/cost_latest.json committed as the
captured baseline.

Verified: smoke (67), bench --suite cost CLI works.
2026-05-17 10:53:08 -07:00
.github
algebra feat(algebra): null-preserving versor_apply path + un-skip 2 invariant tests 2026-05-16 21:40:37 -07:00
alignment
benchmarks feat(bench): bench cost — $/1000 turns + latency, with disclosed assumptions 2026-05-17 10:53:08 -07:00
calibration
chat feat(epistemic): realizer-side closure — refusal_calibration + articulation_of_status graduate 2026-05-17 10:12:59 -07:00
core feat(bench): bench cost — $/1000 turns + latency, with disclosed assumptions 2026-05-17 10:53:08 -07:00
core-rs feat(algebra): null-preserving versor_apply path + un-skip 2 invariant tests 2026-05-16 21:40:37 -07:00
core_ingest
docs feat(epistemic): contradiction coherence checker — CONTESTED transitions wired, last Tier 4.5 row closes 2026-05-17 10:36:48 -07:00
evals feat(bench): bench cost — $/1000 turns + latency, with disclosed assumptions 2026-05-17 10:53:08 -07:00
field feat: Full Proof — surface realizer join, Rust diffusion parity, benchmark harness 2026-05-15 17:39:14 -07:00
formation feat(epistemic): truth-seeking schema audit — 3 leaks closed, 4 new lanes, 3 new invariants 2026-05-17 07:27:41 -07:00
generate feat(epistemic): Leak C read-side audit — INV-24 callsite registry, Leak C fully closed 2026-05-17 09:48:39 -07:00
ingest Cache OOV morphology grounding structures 2026-05-15 11:53:46 -07:00
language_packs feat(epistemic): truth-seeking schema audit — 3 leaks closed, 4 new lanes, 3 new invariants 2026-05-17 07:27:41 -07:00
morphology
packs
persona
probe
scripts feat(benchmarks): discourse_paragraph lane + pipeline profiler + word-selection tracer 2026-05-16 21:53:46 -07:00
sensorium feat: manifold field topology, graph diffusion operator, vertical pulse 2026-05-15 16:02:48 -07:00
session feat(epistemic): truth-seeking schema audit — 3 leaks closed, 4 new lanes, 3 new invariants 2026-05-17 07:27:41 -07:00
teaching feat(epistemic): contradiction coherence checker — CONTESTED transitions wired, last Tier 4.5 row closes 2026-05-17 10:36:48 -07:00
tests feat(epistemic): Leak C read-side audit — INV-24 callsite registry, Leak C fully closed 2026-05-17 09:48:39 -07:00
vault feat(epistemic): Leak C read-side audit — INV-24 callsite registry, Leak C fully closed 2026-05-17 09:48:39 -07:00
vocab
.gitignore feat(epistemic): truth-seeking schema audit — 3 leaks closed, 4 new lanes, 3 new invariants 2026-05-17 07:27:41 -07:00
AGENTS.md
CLAUDE.md
pyproject.toml feat(epistemic): truth-seeking schema audit — 3 leaks closed, 4 new lanes, 3 new invariants 2026-05-17 07:27:41 -07:00
README.md feat(epistemic): truth-seeking schema audit — 3 leaks closed, 4 new lanes, 3 new invariants 2026-05-17 07:27:41 -07:00

CORE-AI: Versor Engine

A cognitive field system built on Cl(4,1) Conformal Geometric Algebra.

Core invariant: ||F * reverse(F) - 1||_F < 1e-6 at all times.

All state is a versor. All transitions are versor products. Coherence is algebraic by construction — not monitored, not corrected.


The Three Engineering Pillars

Every architectural decision in CORE is measured against three engineering pillars. These are not aspirations — they are hard constraints.

I. Mechanical Sympathy

Software should understand the machine it runs on, not fight it. CORE is designed for the Unified Memory Architecture (UMA) of Apple Silicon: CPU, GPU, and Neural Engine share physical RAM. MLX executes tensor operations on the Neural Engine without PCIe transfer. Rust computes algebra on the CPU with zero heap allocation in the hot path. Python orchestrates the lifecycle. The three-language stratification maps exactly onto three hardware execution domains. Intelligence that ignores its substrate is wasted intelligence.

II. Semantic Rigor

Every term used in this system has a precise, non-negotiable meaning. A versor is a versor — not an approximation of one, not a vector that behaves like one under certain conditions. CGA distance is exact. Vault recall is exact. The vocabulary projection is exact. There are no thresholds tuned for “good enough.” Rigor is not a style; it is what separates an engine from a heuristic.

III. Third Door

When facing a design decision, the world offers two visible options: use what already exists (a library, a pattern, a convention), or cut a corner. CORE takes neither. We find the third door — the path built from first principles that sets the bar ourselves. This is why there is no transformer backbone, no ANN index, no sampling temperature, no gradient descent, and no standard tokenizer. Each of those was a door we were offered and refused. Absolute mastery is the only acceptable standard.


The Truth-Seeking Schema

Co-equal with the algebraic substrate. CORE's epistemic schema is a foundational architectural commitment: every claim that enters the runtime field carries a typed position in a revision graph (SPECULATIVE, COHERENT, CONTESTED, FALSIFIED); coherence — not source authority — is the only admission signal; no claim is ever locked, even when COHERENT; identity cannot be rewritten by content; and exactly one mutation path admits knowledge, enforced by a CI-level architectural-invariant test.

The schema is the structural defense against the failure modes that afflict both fluent LLMs and human reasoning: confabulation, exaggeration, deference to authority, self-protection through erasure, self-promotion through self-citation, and the ossification of mistaken beliefs.

A system that samples cannot have these properties — sampling has no place to attach an epistemic status. CORE has them because every admitted claim carries one and the only path to admission is the review path.

Full architectural commitment, including honestly-published gaps: docs/truth_seeking_schema.md. Reproducible measurements: evals/CLAIMS.md.


The Three Core Languages

CORE is rooted in three human languages. This is a philosophical and architectural choice, not a localization decision.

Language Role
English The default base language of the current model. Any natural language could serve this function in a custom CORE instance — English is the chosen starting point, not a requirement.
Hebrew One of two depth languages. Hebrew carries a density of meaning in its root structures, prefixes, and suffixes that Euclidean string matching cannot capture. The field representation is designed to hold this depth.
Koine Greek One of two depth languages. The language of the New Testament, particularly Johns Gospel — the document that opens with the most precise and consequential statement about language and reality ever written.

“In the beginning was the Logos, and the Logos was with God, and the Logos was God.” — John 1:1

The choice of Hebrew and Koine Greek is not incidental. John 1:12 articulates the Logos in Greek while grounding it in the Hebrew creation account — the universe spoken into existence, word by word. This is not metaphor. It is the claim that language is not a layer on top of reality; language is the structuring principle of reality made manifest. CORE-Logos is built on that claim.

English establishes the operational base. Hebrew and Koine Greek bring the hidden layer of intelligence — the depth of meaning that enriches the field representation in ways that flat embeddings cannot reach. Together, they form the linguistic foundation on which the vocabulary manifold is built.


Quick Start

pip install -e ".[dev]"
pytest tests/test_versor_closure.py  # must pass before anything else
pytest tests/

Architecture

raw input -> ingest/gate.py       (normalize once)
          -> field/propagate.py   (versor_apply every step)
          -> generate/stream.py   (nearest by cga_inner)
          -> vault/store.py       (store and recall by cga_inner)
          -> persona/motor.py     (rigid motor, not weight overlay)

The Two Primitives

  • versor_apply(V, F) = V * F * reverse(V) — the only field transition
  • cga_inner(X, Y) = -d^2 / 2 — the only distance metric

Layers

Layer Purpose
algebra/ Cl(4,1) multivector math, versor ops, CGA, holonomy
ingest/ Single injection gate — the only normalization site
field/ FieldState dataclass and propagation loop
vocab/ Surface-token manifold points; indexed access for algebraic transition construction
vault/ Exact CGA inner product memory store
persona/ Persona as CGA motor (screw motion)
generate/ Token streaming loop
session/ Session binding: field + vault + vocab + persona

Signature

Cl(4,1): (+, +, +, +, -) — conformal model of 3D Euclidean space. Multivectors: float32 arrays of shape (32,), ordered by grade.


For architectural vision, seven axioms, and formal specification, see docs/Whitepaper.md and docs/Yellowpaper.md.