The repo is public. The thesis is *decoding, not generating* with
wrong=0 as the load-bearing invariant. The demo any visitor can run
to see the loop turn end-to-end on the canonical pack:
git clone https://github.com/AssetOverflow/core
cd core && uv pip install -e .
core demo flywheel
Four falsifiable scenes:
1. RATIFY — apply_composition_claim writes source JSONL; RAT-1
auto-compile regenerates compositions.jsonl + bumps
manifest.composition_checksum
2. LOAD — composition_registry picks up the new entry on the
next runtime turn
3. SOLVE — "Lilibeth fills 6 baskets where each basket holds
50 strawberries. How many strawberries does Lilibeth
have?" admits via matcher → injector → admission →
candidate-graph and produces answer=300
4. HAZARD — case 0050 (wrong=0 canary) remains refused; no SAFE
composition category can convert it
All four scenes byte-deterministic. The canonical pack is read-only
throughout; the demo mutates only a synthetic test pack in a
tempfile.TemporaryDirectory. One-time recognizer seed is idempotent
(same content_digest each run → no duplicate proposal log entries).
Exit code 0 iff all scenes pass; --json for CI integration.
Also adds:
- README "Watch the flywheel turn — one command" section pointing
to the demo + the coverage CLI (per-shape histogram + hazard pin)
- ProposalLog entry for the multiplicative_aggregate recognizer
with extract_values=True (one-time operator seed)
Files:
- evals/flywheel_demo/run_tour.py (new) — the four-scene tour
- evals/flywheel_demo/__init__.py (new)
- core/cli.py — `flywheel` added to `core demo` choices + dispatch
- README.md — new "Quick Start" subsection
- teaching/proposals/proposals.jsonl — seeded recognizer