stems: fold generator_kwargs into the hash; fix swiss_roll vs hole ambiguity
- run_args_hash now covers (embed_args, generator_kwargs). When gen_kwargs is empty we still hash embed_args alone — so plain generators (s_curve, plain swiss_roll) keep their stems and no existing plain-gen figs need renaming. Kwargs-bearing variants (swiss_roll_hole, blobs, gaussian_quantiles, classification) now disambiguate properly. - Flow persists generator_kwargs into metrics.json meta AND into the frames.json sidecar meta, so the label-enrichment path can find it without another lookup. - _enrich_with_labels discovers gen_kwargs in priority: payload meta --> sibling metrics.json --> DATASET_META first-match. It matches the DATASET_META entry by (path, kwargs) so swiss_roll_hole is no longer confused for plain swiss_roll. - _cached_frames overrides meta.stem with the URL-requested stem before enrichment — after a backfill rename the sidecar's baked-in stem is stale, and we were then failing to find the sibling metrics.json. - Submit duplicate-check uses the new hash and keeps the hashless-legacy check as a safety net. - backfill_hashes.py rewritten: queries Prefect for each recent run's full params, finds the matching fig under any of (current, legacy, hashless) names, renames to the current scheme and patches generator_kwargs into metrics.json.
This commit is contained in:
parent
44de8deeeb
commit
b744c48348
106
app/web/main.py
106
app/web/main.py
@ -450,13 +450,31 @@ def build_embed_args(reducer_key: str, form: Dict[str, str]) -> Dict[str, Any]:
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# ---------------------------------------------------------------------------
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def embed_args_hash(embed_args: Optional[Dict[str, Any]]) -> str:
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"""8-hex digest of an embed_args dict (keys sorted). Stems incorporate
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this so runs that differ only in embed_args get distinct output files."""
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s = json.dumps(embed_args or {}, sort_keys=True, default=str)
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def run_args_hash(
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embed_args: Optional[Dict[str, Any]],
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generator_kwargs: Optional[Dict[str, Any]] = None,
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) -> str:
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"""8-hex digest of (embed_args, generator_kwargs). When generator_kwargs
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is empty/None we hash embed_args alone — preserves stems for the plain
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generators (s_curve, plain swiss_roll) that never had gen_kwargs. For
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kwargs-bearing variants (swiss_roll_hole, blobs, gaussian_quantiles,
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classification), the hash now disambiguates them from their kwargs-less
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siblings — run scripts/backfill_hashes.py to rehash existing figs."""
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if generator_kwargs:
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payload: Any = {
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"embed_args": embed_args or {},
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"generator_kwargs": generator_kwargs,
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}
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else:
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payload = embed_args or {}
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s = json.dumps(payload, sort_keys=True, default=str)
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return hashlib.sha1(s.encode()).hexdigest()[:8]
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# Back-compat alias — some call sites passed only embed_args.
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embed_args_hash = run_args_hash
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def synthesize_output_paths(
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generator_path: str,
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embedder: str,
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@ -465,6 +483,7 @@ def synthesize_output_paths(
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jitter_scale: float,
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seed: int,
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embed_args: Optional[Dict[str, Any]] = None,
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generator_kwargs: Optional[Dict[str, Any]] = None,
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) -> Tuple[str, str]:
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gen = generator_path.split(".")[-1]
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emb = embedder.split(".")[-1]
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@ -473,7 +492,7 @@ def synthesize_output_paths(
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if embed_args is None:
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embf = f"{base}.html"
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else:
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embf = f"{base}_{embed_args_hash(embed_args)}.html"
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embf = f"{base}_{run_args_hash(embed_args, generator_kwargs)}.html"
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return ref, embf
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@ -620,6 +639,7 @@ def _run_view(run: Dict[str, Any]) -> Dict[str, Any]:
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float(params.get("jitter_scale", 0.01)),
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int(params.get("seed", 42)),
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embed_args=params.get("embed_args") or {},
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generator_kwargs=params.get("generator_kwargs") or {},
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)
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# Older runs may lack the hash suffix; prefer legacy name on disk.
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emb_file = _resolve_emb_file(emb_file)
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@ -788,13 +808,12 @@ async def submit(request: Request) -> HTMLResponse:
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embed_args = build_embed_args(reducer, data)
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# Reject submissions whose output path would overwrite an existing fig.
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# The stem now includes an 8-hex hash of embed_args, so UMAP(n_neighbors=5)
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# and UMAP(n_neighbors=15) produce distinct files. Check both the hashed
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# path (new runs) and the legacy hashless path (pre-hash runs) so users
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# can't accidentally duplicate against a pre-hash fig either.
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# Hash now covers both embed_args and generator_kwargs, so swiss_roll vs
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# swiss_roll_hole (and blobs with varying n_features, etc.) no longer
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# share a stem. Also check the legacy hashless path for pre-hash figs.
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_, hashed_emb = synthesize_output_paths(
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generator_path, reducer, num_points, num_timesteps, jitter_scale, seed,
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embed_args=embed_args,
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embed_args=embed_args, generator_kwargs=generator_kwargs,
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)
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_, legacy_emb = synthesize_output_paths(
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generator_path, reducer, num_points, num_timesteps, jitter_scale, seed,
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@ -838,7 +857,7 @@ async def submit(request: Request) -> HTMLResponse:
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ref_file, emb_file = synthesize_output_paths(
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generator_path, reducer, num_points, num_timesteps, jitter_scale, seed,
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embed_args=embed_args,
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embed_args=embed_args, generator_kwargs=generator_kwargs,
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)
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RUN_OUTPUTS[run["id"]] = {"ref": ref_file, "embed": emb_file}
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@ -895,20 +914,61 @@ for _m in DATASET_META.values():
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_GEN_TO_META.setdefault(_m["path"].rsplit(".", 1)[-1], _m)
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def _lookup_dataset_meta(
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generator_short: str, generator_kwargs: Optional[Dict[str, Any]]
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) -> Optional[Dict[str, Any]]:
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"""Match DATASET_META by generator short-name AND kwargs when available.
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Falls back to first-wins when kwargs are unknown (ambiguous for
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swiss_roll vs swiss_roll_hole — both share `make_swiss_roll`)."""
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candidates = [
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m for m in DATASET_META.values()
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if m["path"].rsplit(".", 1)[-1] == generator_short
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]
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if not candidates:
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return None
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if generator_kwargs is not None:
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for m in candidates:
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if m["kwargs"] == generator_kwargs:
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return m
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return candidates[0]
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def _enrich_with_labels(d: Dict[str, Any]) -> Dict[str, Any]:
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"""Attach per-point class/continuous labels by regenerating the dataset
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with the same (generator, n_samples, kwargs). The stem's `seed` drives
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jitter — NOT generator — so we always use random_state=0 to match the
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flow's _DEFAULT_GENERATOR_KWARGS. Jitter-added points (id >= num_points)
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get None so the client renders them as black."""
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meta = _GEN_TO_META.get(d["meta"].get("generator") or "")
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if not meta:
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with the same (generator, n_samples, kwargs). random_state is fixed at 0
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(the flow's _DEFAULT_GENERATOR_KWARGS) — the stem's `seed` drives jitter,
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not the generator. Jitter-added points (id >= num_points) get None so
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the client renders them as black.
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Discovers generator_kwargs in priority order: (1) payload meta (sidecar
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runs from the updated flow); (2) sibling metrics.json; (3) DATASET_META
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by first-match (ambiguous for swiss_roll/swiss_roll_hole — need a
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backfilled metrics.json to disambiguate)."""
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meta = d.get("meta") or {}
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gen_short = meta.get("generator") or ""
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gk = meta.get("generator_kwargs")
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if gk is None:
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stem = meta.get("stem")
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if stem:
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mx = FIGS_DIR / f"{stem}.metrics.json"
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if mx.is_file():
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try:
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gk = json.loads(mx.read_text(encoding="utf-8")).get(
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"meta", {}
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).get("generator_kwargs")
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except Exception:
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gk = None
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dm = _lookup_dataset_meta(gen_short, gk)
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if not dm:
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return d
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kwargs_to_use = gk if gk is not None else dm["kwargs"]
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try:
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mod_path, cls_name = meta["path"].rsplit(".", 1)
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mod_path, cls_name = dm["path"].rsplit(".", 1)
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fn = getattr(importlib.import_module(mod_path), cls_name)
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N = int(d["meta"]["num_points"])
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_, gen_labels = fn(n_samples=N, random_state=0, **meta["kwargs"])
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N = int(meta["num_points"])
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_, gen_labels = fn(n_samples=N, random_state=0, **kwargs_to_use)
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out_labels: List[Optional[float]] = []
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for pid in d["point_ids"]:
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if isinstance(pid, int) and 0 <= pid < N:
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@ -917,7 +977,7 @@ def _enrich_with_labels(d: Dict[str, Any]) -> Dict[str, Any]:
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else:
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out_labels.append(None)
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d["labels"] = out_labels
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d["label_kind"] = meta["kind"]
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d["label_kind"] = dm["kind"]
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except Exception:
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pass
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return d
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@ -934,6 +994,10 @@ def _cached_frames(stem: str) -> str:
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else:
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html = FIGS_DIR / f"{stem}.html"
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d = parse_plotly_run(html)
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# Override meta.stem with the URL-requested stem — after a backfill the
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# file was renamed but the baked-in meta.stem still points at the old
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# name. Enrichment uses this to find the sibling metrics.json.
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d.setdefault("meta", {})["stem"] = stem
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d = _enrich_with_labels(d)
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return json.dumps(d, separators=(",", ":"))
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@ -27,10 +27,19 @@ from pathlib import Path
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from typing import Any, Dict, List, Optional
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def _embed_args_hash(ea: Optional[Dict[str, Any]]) -> str:
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"""8-hex digest of embed_args (keys sorted) — output stem includes this
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so runs differing only in embed_args get distinct files."""
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s = json.dumps(ea or {}, sort_keys=True, default=str)
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def _run_args_hash(
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ea: Optional[Dict[str, Any]],
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gk: Optional[Dict[str, Any]] = None,
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) -> str:
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"""8-hex digest over (embed_args, generator_kwargs). When gk is empty we
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hash embed_args alone — keeps stems stable for plain generators that
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never had gen_kwargs (s_curve, plain swiss_roll). Must mirror
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app.web.main.run_args_hash exactly."""
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if gk:
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payload: Any = {"embed_args": ea or {}, "generator_kwargs": gk}
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else:
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payload = ea or {}
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s = json.dumps(payload, sort_keys=True, default=str)
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return hashlib.sha1(s.encode()).hexdigest()[:8]
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@ -45,7 +54,7 @@ def _flow_run_name() -> str:
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T = p.get("num_timesteps", "?")
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J = p.get("jitter_scale", "?")
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s = p.get("seed", "?")
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tag = _embed_args_hash(p.get("embed_args"))
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tag = _run_args_hash(p.get("embed_args"), p.get("generator_kwargs"))
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return f"{gen}_{emb}_N{N}_T{T}_J{J}_s{s}_{tag}"
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from prefect import flow, runtime, task
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@ -302,7 +311,7 @@ def embedding_flow(
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output_ref: str = (
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f"{output_dir.strip('/')}/{_generator}_Reference_N{num_points}_T{num_timesteps}_J{jitter_scale}_s{seed}.html"
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)
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_args_tag = _embed_args_hash(embed_args)
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_args_tag = _run_args_hash(embed_args, generator_kwargs)
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output_embed: str = (
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f"{output_dir.strip('/')}/{_generator}_{embedder.split('.')[-1]}_N{num_points}_T{num_timesteps}_J{jitter_scale}_s{seed}_{_args_tag}.html"
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)
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@ -396,6 +405,7 @@ def embedding_flow(
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"jitter_scale": jitter_scale,
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"seed": seed,
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"generator_path": generator_path,
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"generator_kwargs": generator_kwargs or {},
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"embedder": embedder,
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"embed_args": merged_embed_args,
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},
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@ -416,6 +426,9 @@ def embedding_flow(
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_sys.path.insert(0, _root)
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from app.web.plotly_parse import parse_plotly_run
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frames = parse_plotly_run(emb_path_result)
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# Persist generator_kwargs so the server's label enrichment can
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# regenerate the correct dataset variant (swiss_roll vs hole).
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frames.setdefault("meta", {})["generator_kwargs"] = generator_kwargs or {}
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Path(output_frames).write_text(
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json.dumps(frames, separators=(",", ":")), encoding="utf-8"
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)
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@ -1,13 +1,18 @@
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"""Rename pre-hash embedder figs to include the embed_args hash suffix.
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"""Rename embedder figs to the current hash scheme (embed_args + generator_kwargs).
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Walks figs/ for `.html` files matching the old stem shape (no hash tail) that
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represent an embedder run (not Reference), reads the sibling
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`<stem>.metrics.json` to recover `meta.embed_args`, computes the hash, and
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renames the .html + .metrics.json in place.
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Two waves of runs may exist on disk:
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(1) pre-hash — `<stem>.html`
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(2) intermediate — `<stem>_<sha1(embed_args)>.html` (from the first hash rollout)
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(3) current — `<stem>_<sha1(embed_args, gen_kwargs)>.html` when gen_kwargs is truthy;
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identical to (2) when gen_kwargs is empty.
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Default is a dry-run — pass `--apply` to actually rename. Reference files are
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left alone (they have no embed_args). Missing metrics.json → warn and skip.
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Target-name collision → warn and skip.
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This script queries Prefect for each recent run's full params (so it knows
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generator_kwargs — which the metrics.json sidecar didn't persist before), finds
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the matching fig on disk, renames to the current stem, and injects
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`meta.generator_kwargs` into the metrics.json so the web server's label
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enrichment disambiguates swiss_roll vs swiss_roll_hole etc.
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Dry-run by default. Pass --apply to rename.
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Usage:
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.venv/bin/python scripts/backfill_hashes.py [--apply] [--figs-dir PATH]
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@ -16,65 +21,91 @@ Usage:
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from __future__ import annotations
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import argparse
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import asyncio
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import hashlib
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import json
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import re
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import sys
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from pathlib import Path
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from typing import Any, Dict, List, Optional
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# Reach up to the project root so we can reuse the canonical hash helper.
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_ROOT = Path(__file__).resolve().parent.parent
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sys.path.insert(0, str(_ROOT))
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from app.web.main import embed_args_hash # noqa: E402
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_LEGACY_STEM = re.compile(
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r"^(?P<base>make_[A-Za-z_]+?_[A-Za-z]+_N\d+_T\d+_J[\d.]+_s\d+)$"
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)
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from app.web.main import PREFECT, run_args_hash # noqa: E402
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def plan_renames(figs_dir: Path):
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for html in sorted(figs_dir.glob("*.html")):
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stem = html.stem
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m = _LEGACY_STEM.match(stem)
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if not m:
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# Either already hashed or doesn't match our scheme at all.
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continue
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# Skip Reference runs — they have no embed_args.
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if "_Reference_" in stem:
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continue
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metrics = figs_dir / f"{stem}.metrics.json"
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if not metrics.is_file():
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yield (html, None, "missing metrics.json — can't compute hash")
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continue
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try:
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ea = json.loads(metrics.read_text(encoding="utf-8"))["meta"]["embed_args"]
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except (KeyError, json.JSONDecodeError) as e:
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yield (html, None, f"bad metrics.json: {e}")
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continue
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new_stem = f"{stem}_{embed_args_hash(ea)}"
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new_html = figs_dir / f"{new_stem}.html"
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if new_html.exists():
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yield (html, None, f"target exists: {new_html.name}")
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continue
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yield (html, new_stem, None)
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def _legacy_hash(ea: Optional[Dict[str, Any]]) -> str:
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s = json.dumps(ea or {}, sort_keys=True, default=str)
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return hashlib.sha1(s.encode()).hexdigest()[:8]
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def apply_rename(figs_dir: Path, old_stem: str, new_stem: str) -> list[str]:
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"""Rename every sidecar sharing the old stem. Returns the renamed files."""
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renamed = []
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def _base_stem(params: Dict[str, Any]) -> Optional[str]:
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try:
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gen = (params.get("generator_path") or "").rsplit(".", 1)[-1]
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emb = (params.get("embedder") or "").rsplit(".", 1)[-1]
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N = int(params["num_points"])
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T = int(params.get("num_timesteps", params.get("num_snapshots")))
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J = float(params["jitter_scale"])
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s = int(params["seed"])
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except (KeyError, TypeError, ValueError):
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return None
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if not gen or not emb:
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return None
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return f"{gen}_{emb}_N{N}_T{T}_J{J}_s{s}"
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def _candidate_names(base: str, ea: Dict[str, Any], gk: Dict[str, Any]) -> List[str]:
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target = f"{base}_{run_args_hash(ea, gk)}.html"
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legacy = f"{base}_{_legacy_hash(ea)}.html"
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no_hash = f"{base}.html"
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# Preserve order: target first so we short-circuit on already-backfilled.
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out = [target]
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for x in (legacy, no_hash):
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if x not in out:
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out.append(x)
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return out
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def _patch_metrics(path: Path, gk: Dict[str, Any]) -> bool:
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if not path.is_file():
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return False
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try:
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d = json.loads(path.read_text(encoding="utf-8"))
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except Exception:
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return False
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meta = d.setdefault("meta", {})
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if meta.get("generator_kwargs") == gk:
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return False
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meta["generator_kwargs"] = gk
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path.write_text(json.dumps(d, indent=2), encoding="utf-8")
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return True
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def _rename_bundle(figs_dir: Path, old_stem: str, new_stem: str) -> List[str]:
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moved = []
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for suffix in (".html", ".metrics.json", ".frames.json"):
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src = figs_dir / f"{old_stem}{suffix}"
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if not src.exists():
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continue
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dst = figs_dir / f"{new_stem}{suffix}"
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if dst.exists():
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moved.append(f"SKIP (target exists) {src.name}")
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continue
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src.rename(dst)
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renamed.append(f"{src.name} -> {dst.name}")
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return renamed
|
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moved.append(f"{src.name} -> {dst.name}")
|
||||
return moved
|
||||
|
||||
|
||||
async def _fetch_runs(limit: int = 200) -> List[Dict[str, Any]]:
|
||||
import httpx
|
||||
async with httpx.AsyncClient(timeout=10.0) as c:
|
||||
return await PREFECT.recent_runs(c, limit=limit)
|
||||
|
||||
|
||||
def main() -> int:
|
||||
ap = argparse.ArgumentParser(description=__doc__)
|
||||
ap.add_argument("--apply", action="store_true", help="actually rename (default: dry-run)")
|
||||
ap.add_argument("--apply", action="store_true", help="actually rename + patch (default: dry-run)")
|
||||
ap.add_argument("--figs-dir", default=str(_ROOT / "figs"), help="path to figs/ directory")
|
||||
ap.add_argument("--limit", type=int, default=200, help="Prefect runs to scan")
|
||||
args = ap.parse_args()
|
||||
|
||||
figs_dir = Path(args.figs_dir).resolve()
|
||||
@ -82,36 +113,65 @@ def main() -> int:
|
||||
print(f"no such directory: {figs_dir}", file=sys.stderr)
|
||||
return 2
|
||||
|
||||
planned, skipped = [], []
|
||||
for html, new_stem, reason in plan_renames(figs_dir):
|
||||
if new_stem is None:
|
||||
skipped.append((html.name, reason))
|
||||
else:
|
||||
planned.append((html.stem, new_stem))
|
||||
try:
|
||||
runs = asyncio.run(_fetch_runs(limit=args.limit))
|
||||
except Exception as e:
|
||||
print(f"could not reach Prefect at {PREFECT.base} ({e})", file=sys.stderr)
|
||||
return 3
|
||||
|
||||
print(f"scanning {figs_dir}")
|
||||
print(f" {len(planned)} to rename, {len(skipped)} skipped\n")
|
||||
plans = [] # (old_stem, new_stem, gk, found_name)
|
||||
seen_targets = set()
|
||||
for r in runs:
|
||||
params = r.get("parameters") or {}
|
||||
ea = params.get("embed_args") or {}
|
||||
gk = params.get("generator_kwargs") or {}
|
||||
base = _base_stem(params)
|
||||
if not base:
|
||||
continue
|
||||
target = f"{base}_{run_args_hash(ea, gk)}.html"
|
||||
if target in seen_targets:
|
||||
continue # later duplicate — the stale-marking logic will handle it
|
||||
for candidate in _candidate_names(base, ea, gk):
|
||||
if (figs_dir / candidate).exists():
|
||||
if candidate == target:
|
||||
# Already at target; just ensure metrics.json carries gk.
|
||||
plans.append((Path(candidate).stem, Path(target).stem, gk, candidate, True))
|
||||
else:
|
||||
plans.append((Path(candidate).stem, Path(target).stem, gk, candidate, False))
|
||||
seen_targets.add(target)
|
||||
break
|
||||
|
||||
for old, new in planned:
|
||||
print(f" rename {old} -> {new}")
|
||||
if skipped:
|
||||
print("\n skipped:")
|
||||
for name, reason in skipped:
|
||||
print(f" {name} ({reason})")
|
||||
print(f"scanning {figs_dir} (Prefect runs seen: {len(runs)})")
|
||||
renames = [p for p in plans if not p[4]]
|
||||
already = [p for p in plans if p[4]]
|
||||
print(f" {len(renames)} to rename, {len(already)} already at target\n")
|
||||
|
||||
if not planned:
|
||||
for old, new, gk, _, _ in renames:
|
||||
gk_str = json.dumps(gk) if gk else "{}"
|
||||
print(f" rename {old} -> {new} gen_kwargs={gk_str}")
|
||||
|
||||
if already:
|
||||
print(f"\n at-target (will only patch metrics.json if missing gen_kwargs):")
|
||||
for old, _, gk, name, _ in already:
|
||||
print(f" {name} gen_kwargs={json.dumps(gk) if gk else '{}'}")
|
||||
|
||||
if not renames and not already:
|
||||
print("nothing to do")
|
||||
return 0
|
||||
|
||||
if not args.apply:
|
||||
print("\n(dry run — pass --apply to rename)")
|
||||
print("\n(dry run — pass --apply to rename + patch)")
|
||||
return 0
|
||||
|
||||
print("\napplying...")
|
||||
for old, new in planned:
|
||||
moved = apply_rename(figs_dir, old, new)
|
||||
for line in moved:
|
||||
print(f" {line}")
|
||||
print(f"done — renamed {len(planned)} run(s)")
|
||||
for old, new, gk, _, at_target in plans:
|
||||
if not at_target:
|
||||
for line in _rename_bundle(figs_dir, old, new):
|
||||
print(f" {line}")
|
||||
patched = _patch_metrics(figs_dir / f"{new}.metrics.json", gk)
|
||||
if patched:
|
||||
print(f" patched {new}.metrics.json (generator_kwargs)")
|
||||
print(f"done — renamed {len(renames)}, patched metrics for {len(plans)} run(s)")
|
||||
return 0
|
||||
|
||||
|
||||
|
||||
Loading…
Reference in New Issue
Block a user