| name | optimization-loop |
| description | The optimizer brain for the ladder-foundry pretraining loop. Runs the two-level nested batch loop, delegates gating to gate_eval, attributes a failing batch to one weight (attribute-first), and recovers from disk after compaction. Control flow is fully scripted; only the backprop attribution is a judgment call. |
optimization-loop
You are the optimizer. You run a pseudo-NN training loop that produces labeled
research-design samples. You are the ONLY continuously-running CC; the
user-simulator and research-executor are spawned fresh each run. Disk is the
only source of truth — your memory is not.
§loop — the two-level nested batch loop
LOOP-2 (epochs/batches, runs to convergence) wraps LOOP-1 (one batch = 48 runs
= 8 topics × 6 rungs).
Epoch start (once):
python ../../scripts/new_run_id.py --runs-root runs → capture run_id.
Emit trace run_start.
Batch start (each batch):
2. batch_id = the highest batch-N in runs/<run_id>/weights/ (cold start =
batch-0; do NOT pre-increment). Emit batch_start.
3. Generate configs from the current weights: call
../../generator/gen_configs.py main(out_dir, w) (it is main(out_dir, w),
NOT an argparse CLI — invoke via a one-line python -c that imports it and
passes the loaded weights/<batch_id>.json). M1 note: gen_configs names
configs config_{rung}.json (rung only) — at 48 configs across 8 topics this
collides; a STAGE-2 patch must give them topic-bearing names before this loop
runs for real at STAGE 5.
Per run (8 topics × 6 rungs = 48):
4. Spawn the user-simulator CC (see §tools). Inject its research_config.
5. The simulator spawns the research-executor CC, injects the topic + bias + the
2 mandatory rules (the executor MUST load formated-specs then
formated-results).
6. Simulator ↔ executor talk for the card's turn budget. Emit dialogue_turn
per exchange.
7. python ../../scripts/save_transcript.py --logs-dir <REQUIRED> --cwd <exec-cwd> --sample <sample> --out runs/<run_id>/transcripts/<sample>.md. --logs-dir
is REQUIRED, no default (privacy red line).
8. python ../../scripts/concat_triple.py --run-dir runs/<run_id> --sample <sample>.
9. python scripts/run_codex_loss.py loss1 --transcript … --config … --skill-md ../injection-fidelity/SKILL.md --out runs/<run_id>/loss/<sample>.loss1.json.
Emit rung_done.
Per topic (after its 6 rungs):
10. python scripts/run_codex_loss.py loss2 --triples <6 triples id0..id5> --intended-order id0,id1,id2,id3,id4,id5 --skill-md ../ladder-quality-order/SKILL.md --out runs/<run_id>/loss/<topic>.loss2.json --seed <fixed>.
11. python ../../scripts/gate_eval.py topic --fidelity-rate <topic fidelity_rate> --mono <loss2.monotonicity_pass> --endpoint <loss2.endpoint_separation_pass>.
Emit topic_done.
12. python ../../scripts/write_dataset.py --run-dir … --sample … --topic … --rung … --out-root dataset --loss1 … --topic-pass … ×6 (one per rung).
Batch close:
13. python ../../scripts/gate_eval.py batch --flags <8 topic-pass bools>. Emit
batch_done (include recent_ratios).
14. python ../../scripts/gate_eval.py converged --recent <last-3 batch ratios>.
- TRUE → freeze weights, emit converged + run_end. Done.
- FALSE → go to §backprop, then a new batch.
Follow this section exactly; no improvisation in the control flow.
§gate
Delegate ALL gate arithmetic to ../../scripts/gate_eval.py (pure, no CC/codex):
- per-topic: 3-way AND (
fidelity_rate ≥ FIDELITY_MIN ∧ monotonicity_pass ∧
endpoint_separation_pass).
- batch:
pass_ratio ≥ BATCH_RATIO_MIN, hard integer line ≥ 7/8 topics.
- converged: the trace-tail
recent_ratios, last 3 all ≥ BATCH_RATIO_MIN.
Thresholds are NOT restated here. FIDELITY_MIN and BATCH_RATIO_MIN are the
module constants in ../../scripts/gate_eval.py — the single source of truth.
New numbers the judges use (τ line, 丙 line, K, endpoint allowance, drift ε)
live in references/gate-thresholds.md, which also points back, never copies.
check-blind: you read only fidelity_rate, tau, monotonicity_pass,
endpoint_separation_pass, and codex verdicts. You never see or reason about
any quality-check list. rigor_floor_flag is an orthogonal alarm — it is NOT
in the AND.
§backprop — attribute first, then act (the one judgment point)
One batch changes ONE weight. First attribute the failure, then act. Read the
trace coarse→fine (batch_done → topic_done → loss/*.json) and stop when
decided.
Decision table:
| Signal read | Target weight | Key |
|---|
| loss-1 fidelity fails (an axis collapsed) | axis_prose | the collapsed AXIS.LEVEL cell |
loss-2 endpoints NOT separated, rigor_floor_flag == true | NONE | alarm only — do NOT train ② (coords are frozen_label-locked; training ② is a no-op). Record and move on. |
loss-2 endpoints NOT separated, rigor_floor_flag == false | axis_prose | the id0 or id5 endpoint cell |
| loss-2 middle collision (τ < TAU_MIN but endpoints separated) | interp_params | one of collision_offset_axis (B1/expression only), endpoint_spread, granularity_map |
| ≥ 4/8 topics double-collapse (both losses fail) | assembler_params | the structural knob implicated |
Priority: loss-1 > loss-2 middle-collision > whole-card. Pre-gate: if a topic's
z⊥C confound check is NOT flat, that topic's loss-2 is void — do NOT change any
weight on it this batch.
Execution: the attribution is YOUR decision (no script). Then EITHER
python ../../scripts/apply_weight_update.py --weights-dir runs/<run_id>/weights --batch-id <batch_id> --target <target> --key <key> --new <new-text> --reason <why>
(F2: writes weights/<batch+1>.json + appends revision_log.jsonl), OR the
same with --copy (F1: byte-copy forward, no log — when you decide NOT to
change a weight this batch).
Before committing new axis_prose text, run it through generator/leak_audit.py
(it must not name any check vocabulary). W5: your attribution inputs are only
fidelity / τ / endpoint / codex verdicts — never a check list. Detail in
references/backprop-heuristic.md.
§state — disk is the only truth
Memory is not trustworthy across a /compact. Three persisted artifacts:
runs/<run_id>/trace.jsonl, runs/<run_id>/weights/<batch>.json,
runs/<run_id>/revision_log.jsonl.
At each batch end: run /compact, reload THIS skill, and recover from disk:
- read
weights/<batch+1>.json (the new weights for the next gen_configs),
- read
revision_log.jsonl (the change history),
- read the
trace.jsonl tail (recent_ratios + batch_id + last seq → +1 to
continue numbering).
Privacy: the trace's transcript_path is always relative;
save_transcript.py --logs-dir is required with no default. After recovery,
verify the frozen_label lock is intact — weights.revise("frozen_label", …)
must still raise.
§tools — the leaf registry + child-CC launch
Leaves are NOT moved into this skill (D1). Reference them by relative anchor
from this skill dir:
../../scripts/new_run_id.py, ../../scripts/trace_emit.py,
../../scripts/save_transcript.py, ../../scripts/concat_triple.py,
../../scripts/gate_eval.py, ../../scripts/apply_weight_update.py,
../../scripts/write_dataset.py
../../generator/gen_configs.py (main(out_dir, w), non-argparse; M1
collision annotated — a STAGE-2 patch is a STAGE-5 prerequisite)
- this skill's own leaf:
scripts/run_codex_loss.py
Child-CC launch (3 iron rules):
- A parent CC starts its child by running
claude DIRECTLY in its own Bash
tool: IS_SANDBOX=1 CLAUDE_CONFIG_DIR=<role-dir> bash -lc 'cd <child-cwd> && claude'. No driver script. No pseudo-terminal. No tmux for children (tmux
hosts only the optimizer itself).
- Fresh sim/exec each run (between-run independence — a different persona is
injected, so no context may carry over). Only the optimizer is continuous.
- Authoritative transcript = the exec session jsonl (read by save_transcript
via
--logs-dir).
All three CC layers are normal interactive REPLs. Never pass the print, resume,
session-id, or allowed-tools flags to any claude invocation — those modes are
forbidden in this loop and must not appear even in this skill's text.
Four role config-dirs:
- optimizer
/workspace/home/optim/.claude (this skill + superpowers)
- simulator
/workspace/home/sim/.claude (superpowers only; persona injected)
- executor
/workspace/home/exec/.claude (the DARE skill library +
formated-specs / formated-results + superpowers)
- codex
/workspace/home/loss/.codex (the 2 loss skills only)