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16c627e | 1 2 3 4 5 6 7 8 9 10 11 12 13 14 15 16 17 18 19 20 21 22 23 24 25 26 27 28 29 30 31 32 33 34 35 36 37 38 39 40 41 42 43 44 45 46 47 48 49 50 51 52 53 54 55 56 57 58 59 60 61 62 63 64 65 66 67 68 69 70 71 72 73 74 75 76 77 78 79 80 81 82 83 84 85 86 87 88 89 90 91 92 93 94 95 96 97 98 99 100 101 102 103 104 105 106 107 108 109 110 111 112 113 114 115 116 117 118 119 120 121 122 123 124 125 126 127 128 129 130 131 132 133 134 135 136 137 138 139 140 141 142 143 144 145 146 147 148 149 150 151 152 153 154 155 156 157 158 159 160 161 162 163 164 165 166 167 168 169 170 171 172 173 174 175 176 177 178 179 180 181 182 183 184 185 186 187 188 189 190 191 192 193 194 195 196 197 198 199 200 201 202 203 204 205 206 207 208 209 210 211 212 213 214 215 216 217 218 219 220 221 222 223 224 225 226 227 228 229 230 231 232 233 234 235 236 237 238 239 240 241 242 243 244 245 246 247 248 249 250 251 252 253 254 255 256 257 258 259 260 261 262 263 264 265 266 267 268 269 270 271 272 273 274 275 276 277 278 279 280 281 282 283 284 285 286 287 288 289 290 291 292 293 294 295 296 297 298 299 300 301 302 303 304 305 306 307 308 309 310 311 312 313 314 315 316 317 318 319 320 321 322 323 324 325 326 327 328 329 330 331 332 333 334 335 336 337 338 339 340 341 342 343 344 345 346 347 348 349 350 351 352 353 354 355 356 357 358 359 360 361 362 363 364 365 366 367 368 369 370 371 372 373 374 375 376 377 378 379 380 381 382 383 384 385 386 387 388 389 390 391 392 393 394 395 396 397 398 399 400 401 402 403 404 405 406 407 408 409 410 411 412 413 414 415 416 417 418 419 420 421 422 423 424 425 426 427 428 429 430 431 432 433 434 435 436 437 438 439 440 441 | """scripts/generate_sft_data.py - SFT dataset generator (master spec, sec. 1).
Locked configuration:
* Train split: 3,000 examples (default seed 42).
* Held-out split: 100 examples (seed 4242 - independent stream).
* Curriculum mix: 40% L1_warmup, 50% L2_target, 10% L3_stretch.
For each example:
1. Pick a curriculum level by the locked mixture.
2. Sample a noisy syndrome from Stim (SI1000 noise model).
3. Run PyMatching to get the canonical correction (Pauli frame).
4. Format the locked prompt + target completion.
5. Emit one JSONL record per sample. Records carry ``true_x_errors``,
``true_z_errors``, ``actual_observable_flip``, and curriculum info
so the SFT validation callback can compute every spec metric
(logical_correction_rate, exact_match_pymatching, hamming_overlap,
syndrome_consistency, ...) without re-sampling.
Output:
data/sft_dataset.jsonl - training set (3,000 rows)
data/sft_validation.jsonl - held-out validation (100 rows)
data/sft_dataset_sample.jsonl - 50-row preview for repo commit
Run::
python -m scripts.generate_sft_data \
--n 3000 --val-n 100 \
--out data/sft_dataset.jsonl \
--val-out data/sft_validation.jsonl
"""
from __future__ import annotations
import argparse
import json
import random
import sys
from pathlib import Path
from typing import Iterable
import numpy as np
import pymatching
from qubit_medic.config import (
PRIMARY_SEED,
SFT_DATASET_SIZE,
SFT_VAL_HOLDOUT,
level_by_name,
)
from qubit_medic.prompts import build_prompt, format_completion
from qubit_medic.server.physics import (
build_circuit,
build_dem,
extract_layout,
per_round_x_z_counts,
pymatching_predicted_pauli_frame,
rectify_pauli_frame_to_observable,
)
# --------------------------------------------------------------------------- #
# Optional reasoning helper #
# --------------------------------------------------------------------------- #
# Earlier revisions emitted a short reasoning sentence before the canonical
# format line. The step-5 / step-15 raw outputs showed Qwen copying that too
# eagerly: it spent the whole 128-token eval budget on generic analysis and
# never reached ``X_ERRORS=[...] Z_ERRORS=[...]``. SFT warmup needs to teach
# the parser contract first, so the active target below is format-line-only.
def _build_reasoning(px: list[int], pz: list[int]) -> str:
"""Deterministic 1-sentence reasoning that matches the format line."""
if not px and not pz:
return ("All stabilizer measurements report no detector firings, "
"indicating no data-qubit errors.")
if px and not pz:
ids = ", ".join(str(q) for q in sorted(set(px)))
return f"Z-stabilizer firings localize X-errors to qubit(s) {ids}."
if pz and not px:
ids = ", ".join(str(q) for q in sorted(set(pz)))
return f"X-stabilizer firings localize Z-errors to qubit(s) {ids}."
x_ids = ", ".join(str(q) for q in sorted(set(px)))
z_ids = ", ".join(str(q) for q in sorted(set(pz)))
return (f"X-stabilizer firings localize Z-errors to qubit(s) {z_ids}, "
f"and Z-stabilizer firings localize X-errors to qubit(s) {x_ids}.")
# Quota-based generation (master spec, section 1, plus the dataset-audit
# fix): instead of weighted sampling + global rejection (which biased L1
# down because L1 produces mostly trivial syndromes), we generate a fixed
# count per level with per-level non-empty floors. This guarantees the
# 40/50/10 curriculum split exactly while still hitting an overall
# non-empty fraction in the 65-75% target band.
LEVEL_QUOTAS_TRAIN: dict[str, int] = {
"L1_warmup": 1200, # 40% of 3000
"L2_target": 1500, # 50%
"L3_stretch": 300, # 10%
}
LEVEL_QUOTAS_VAL: dict[str, int] = {
"L1_warmup": 40, # 40% of 100
"L2_target": 50, # 50%
"L3_stretch": 10, # 10%
}
# Per-level minimum non-empty correction fraction. The math (with the
# configured 40/50/10 quota mix) gives:
# L1 0.50 + L2 0.80 + L3 0.90 = 0.40*0.50 + 0.50*0.80 + 0.10*0.90 = 0.69
# which lands solidly inside the audit's 65-75% target band. ``None``
# would mean "accept all draws naturally" but the natural non-empty rate
# at L1's p=0.0005 (~3.5%) is too low to satisfy the audit, so we enforce
# an explicit floor here too.
PER_LEVEL_NONEMPTY_FLOOR: dict[str, float | None] = {
"L1_warmup": 0.50, # ~600 non-empty + 600 empty per 1200
"L2_target": 0.80, # ~1200 non-empty + 300 empty per 1500
"L3_stretch": 0.90, # ~270 non-empty + 30 empty per 300
}
# Held-out validation runs from a disjoint seed stream so it is truly
# independent of the train split.
VALIDATION_SEED_OFFSET: int = 4_242
def _quotas_from_total(total: int, base: dict[str, int]) -> dict[str, int]:
"""Scale ``base`` quota proportions to sum to ``total``.
When the user passes ``--n`` or ``--val-n`` overriding the default
sizes, we keep the 40/50/10 curriculum proportions and absorb any
rounding remainder into the largest level (L2) so the file row count
matches ``total`` exactly.
"""
base_sum = sum(base.values())
if base_sum == 0:
return {k: 0 for k in base}
scaled = {k: int(round(v * total / base_sum)) for k, v in base.items()}
diff = total - sum(scaled.values())
if diff != 0:
# Largest level absorbs the remainder.
target = max(scaled, key=scaled.get)
scaled[target] += diff
return scaled
def _build_caches() -> dict[str, dict]:
"""Pre-compile circuits / matchers once per level."""
caches: dict[str, dict] = {}
for name in LEVEL_QUOTAS_TRAIN.keys():
lvl = level_by_name(name)
c = build_circuit(lvl)
dem = build_dem(c)
m = pymatching.Matching.from_detector_error_model(dem)
layout = extract_layout(c)
n_x, n_z = per_round_x_z_counts(layout)
caches[name] = {
"level": lvl,
"circuit": c,
"dem": dem,
"matching": m,
"layout": layout,
"n_x_stab": n_x,
"n_z_stab": n_z,
}
return caches
# Per-level seed offsets so each level draws an independent shot stream
# from a distinct RNG. Without this, switching from L1 to L2 with the
# same `seed` would produce identical syndromes (Stim's RNG is per-sampler).
_LEVEL_SEED_OFFSETS: dict[str, int] = {
"L1_warmup": 0,
"L2_target": 100_000,
"L3_stretch": 200_000,
}
# Safety cap on shots per level. With L1 floor=0.50 at p=0.0005 (~3.5%
# natural non-empty rate) we expect ~17k shots; 1M is a generous ceiling
# that triggers a descriptive error if generation can't converge -- e.g.
# someone bumped a level's floor too aggressively for its physical error
# rate.
_MAX_SHOTS_PER_LEVEL: int = 1_000_000
# Stim's compile_detector_sampler is the slow step (~ms per call); once
# compiled, sample(N) is essentially free. We sample in chunks of this
# size to amortise the compile cost across thousands of shots.
_SHOT_BATCH_SIZE: int = 4096
def _level_shot_stream(cache: dict, base_seed: int):
"""Yield ``(det_row, obs_row)`` tuples lazily from a level's circuit.
Compiles the detector sampler exactly ONCE per level and then pulls
shots in batches of :data:`_SHOT_BATCH_SIZE`. ``det_row`` is a
``np.uint8`` 1-D array (the detector activations); ``obs_row`` is the
1-D observables vector for the same shot.
Determinism: the same ``base_seed`` always produces the same shot
sequence regardless of batch size (Stim's per-sampler RNG advances
deterministically across each ``sample()`` call).
"""
sampler = cache["circuit"].compile_detector_sampler(seed=base_seed)
while True:
det, obs = sampler.sample(_SHOT_BATCH_SIZE, separate_observables=True)
for i in range(_SHOT_BATCH_SIZE):
yield det[i].astype(np.uint8), obs[i]
def _generate_split(
*,
quotas: dict[str, int],
seed: int,
caches: dict[str, dict],
out_path: Path,
rng: random.Random,
) -> tuple[int, int, int]:
"""Quota-based generator with per-level non-empty floors.
Returns ``(n_written, n_syndrome, n_errors)``.
For each level in ``quotas`` we generate exactly ``quotas[level]`` rows.
Within each level, :data:`PER_LEVEL_NONEMPTY_FLOOR` controls the
non-empty/empty split:
* ``floor=None`` -> accept every draw until the quota is filled
(mostly empty for low-p levels).
* ``floor=f`` -> accept exactly ``round(level_n * f)`` non-empty
rows and ``level_n - round(level_n * f)`` empty rows. Surplus on
either side is dropped, draws continue until both sub-quotas are
filled or :data:`_MAX_SHOTS_PER_LEVEL` is exceeded.
Stim sampling is batched per level (single ``compile_detector_sampler``
call, chunked ``sample()``) so generation is ~1 second per level even
when the floor demands tens of thousands of shots.
"""
n_with_syndrome = n_with_errors = 0
out_path.parent.mkdir(parents=True, exist_ok=True)
# Buffer all records in memory then shuffle before writing. This is
# critical: per-level generation produces L1-block / L2-block / L3-block
# contiguously, which (a) makes SFTTrainer's first batches all-L1 even
# though Trainer shuffles per-epoch, and (b) makes the validation
# callback's "first N samples" display all-L1 -- hiding model behaviour
# on L2/L3 prompts. A deterministic shuffle keyed off `rng` (the
# caller-passed random.Random) gives us level-mixed streams while
# keeping `--seed N` fully reproducible.
records: list[dict] = []
for level_name, level_n in quotas.items():
cache = caches[level_name]
layout = cache["layout"]
floor = PER_LEVEL_NONEMPTY_FLOOR.get(level_name)
if floor is None:
target_nonempty = None
target_empty = None
else:
target_nonempty = int(round(level_n * floor))
target_empty = level_n - target_nonempty
level_nonempty = 0
level_empty = 0
shots_drawn = 0
level_seed = seed + _LEVEL_SEED_OFFSETS.get(level_name, 0)
shots = _level_shot_stream(cache, level_seed)
while (level_nonempty + level_empty) < level_n:
if shots_drawn >= _MAX_SHOTS_PER_LEVEL:
raise RuntimeError(
f"[gen] level {level_name}: exceeded "
f"_MAX_SHOTS_PER_LEVEL={_MAX_SHOTS_PER_LEVEL} with "
f"only {level_nonempty} non-empty + {level_empty} "
f"empty rows (target: {target_nonempty} non-empty + "
f"{target_empty} empty). Either lower "
f"PER_LEVEL_NONEMPTY_FLOOR[{level_name!r}] or "
f"raise the level's physical error rate in "
f"qubit_medic/config.py."
)
det_row, obs_row = next(shots)
shots_drawn += 1
# Optimal correction via PyMatching (X + Z Pauli frame).
px_stim, pz_stim = pymatching_predicted_pauli_frame(
cache["matching"], det_row, layout,
)
pm_obs = int(cache["matching"].decode(det_row)[0])
px_stim, pz_stim = rectify_pauli_frame_to_observable(
px_stim, pz_stim, pm_obs, layout,
)
# LLM ID space (consecutive 0..N-1).
px = layout.stim_to_llm(px_stim)
pz = layout.stim_to_llm(pz_stim)
is_nonempty = bool(px or pz)
# Per-level quota acceptance:
if floor is None:
pass # accept anything until level_n is filled
elif is_nonempty:
if level_nonempty >= target_nonempty:
continue # surplus non-empty for this level
else:
if level_empty >= target_empty:
continue # surplus empty for this level
actual_obs = int(obs_row[0]) if obs_row.shape[0] else 0
prompt = build_prompt(
distance=cache["level"].distance,
rounds=cache["level"].rounds,
p=cache["level"].p,
syndrome_bits=det_row.tolist(),
num_x_stabilizers=cache["n_x_stab"],
num_z_stabilizers=cache["n_z_stab"],
num_data_qubits=layout.num_data_qubits,
)
completion = format_completion(px, pz)
record = {
"prompt": prompt,
"completion": completion,
"level": level_name,
"distance": cache["level"].distance,
"rounds": cache["level"].rounds,
"p": cache["level"].p,
"num_data_qubits": int(layout.num_data_qubits),
"num_x_stabilizers": int(cache["n_x_stab"]),
"num_z_stabilizers": int(cache["n_z_stab"]),
"syndrome_bits": [int(b) for b in det_row.tolist()],
"true_x_errors": list(map(int, px)),
"true_z_errors": list(map(int, pz)),
"actual_observable_flip": actual_obs,
"pymatching_observable_pred": pm_obs,
"had_syndrome": bool(det_row.any()),
"had_errors": bool(px or pz),
}
records.append(record)
if record["had_errors"]:
n_with_errors += 1
level_nonempty += 1
else:
level_empty += 1
if record["had_syndrome"]:
n_with_syndrome += 1
print(f" [{level_name}] {level_nonempty} non-empty + "
f"{level_empty} empty (drew {shots_drawn} shots, "
f"natural non-empty rate "
f"~{level_nonempty / max(1, shots_drawn):.1%})")
# Deterministic shuffle: same `seed` -> same row order, but no longer
# blocked by level. SFTTrainer's per-epoch shuffle still applies on top
# of this; the buffer-shuffle ensures every batch (and every eval
# display window) sees a representative L1/L2/L3 mix.
rng.shuffle(records)
with out_path.open("w") as f:
for record in records:
f.write(json.dumps(record) + "\n")
return len(records), n_with_syndrome, n_with_errors
def main(argv: Iterable[str] = ()) -> int:
parser = argparse.ArgumentParser(description=__doc__)
parser.add_argument("--n", type=int, default=SFT_DATASET_SIZE,
help=f"train split size (default {SFT_DATASET_SIZE})")
parser.add_argument("--val-n", type=int, default=SFT_VAL_HOLDOUT,
help=f"held-out validation size (default {SFT_VAL_HOLDOUT})")
parser.add_argument("--out", type=str, default="data/sft_dataset.jsonl")
parser.add_argument("--val-out", type=str, default="data/sft_validation.jsonl")
parser.add_argument("--sample-out", type=str,
default="data/sft_dataset_sample.jsonl",
help="optional small JSONL committed to the repo")
parser.add_argument("--sample-size", type=int, default=50)
parser.add_argument("--seed", type=int, default=PRIMARY_SEED,
help=f"deterministic seed (default {PRIMARY_SEED})")
parser.add_argument("--no-validation", action="store_true",
help="skip writing the held-out validation split")
args = parser.parse_args(list(argv))
train_path = Path(args.out)
val_path = Path(args.val_out)
sample_path = Path(args.sample_out)
sample_path.parent.mkdir(parents=True, exist_ok=True)
caches = _build_caches()
print(f"prepared caches for {len(caches)} levels")
# ---- training split ------------------------------------------------ #
train_quotas = _quotas_from_total(args.n, LEVEL_QUOTAS_TRAIN)
train_rng = random.Random(args.seed)
print(f"writing TRAIN split: n={args.n}, seed={args.seed}, "
f"quotas={train_quotas} -> {train_path}")
train_written, train_syn, train_err = _generate_split(
quotas=train_quotas, seed=args.seed, caches=caches,
out_path=train_path, rng=train_rng,
)
print(f" wrote {train_written}; syndrome-fraction={train_syn / max(1, train_written):.3f}; "
f"non-empty-correction-fraction={train_err / max(1, train_written):.3f}")
# ---- validation split (disjoint seed stream) ---------------------- #
if not args.no_validation:
val_quotas = _quotas_from_total(args.val_n, LEVEL_QUOTAS_VAL)
val_seed = args.seed + VALIDATION_SEED_OFFSET
val_rng = random.Random(val_seed)
print(f"writing VAL split: n={args.val_n}, seed={val_seed}, "
f"quotas={val_quotas} -> {val_path}")
val_written, val_syn, val_err = _generate_split(
quotas=val_quotas, seed=val_seed, caches=caches,
out_path=val_path, rng=val_rng,
)
print(f" wrote {val_written}; syndrome-fraction={val_syn / max(1, val_written):.3f}; "
f"non-empty-correction-fraction={val_err / max(1, val_written):.3f}")
# ---- sample preview (for repo commit / eyeball QC) ---------------- #
sample_records: list[dict] = []
with train_path.open() as src:
for line in src:
sample_records.append(json.loads(line))
if len(sample_records) >= args.sample_size:
break
with sample_path.open("w") as sf:
for r in sample_records:
sf.write(json.dumps(r) + "\n")
print(f"wrote {len(sample_records)} sample records to {sample_path}")
# ---- self-audit (fail fast on bad regen) -------------------------- #
# Run the same audit train_sft.py runs at startup, so a regen that
# silently produced bad data exits non-zero immediately rather than
# waiting until the next training launch. Lazy import so we don't
# pull in train_sft's heavy ML deps at import time.
if not args.no_validation:
try:
from scripts.train_sft import audit_sft_dataset
except ImportError as exc:
print(f"[gen] could not run self-audit: {exc}", file=sys.stderr)
return 0
print() # blank line before banner
audit_sft_dataset(str(train_path), str(val_path))
return 0
if __name__ == "__main__":
sys.exit(main(sys.argv[1:]))
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