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Bundle format:
{
"quantile": q,
"sigma_model": xgb_booster,
"emb_tag": "wt"|"peptideclm"|"chemberta",
"alpha": 0.1,
"adaptive": True,
}
Binding affinity bundles additionally store "target_emb_tag": "wt" since
both binder and target embeddings are concatenated for the sigma model.
"""
import argparse
import sys
import numpy as np
import pandas as pd
import joblib
import xgboost as xgb
import torch
from pathlib import Path
from typing import Optional
sys.path.insert(0, str(Path(__file__).parent))
DEVICE = torch.device("cuda" if torch.cuda.is_available() else "cpu")
WEIGHT_ROOT = Path(__file__).parent
# Properties to skip
SKIP_PROPS = {"half_life", "halflife"}
def should_skip(model_dir: Path) -> bool:
return any(part in SKIP_PROPS for part in model_dir.parts)
# Embedding tag inference
def infer_emb_tag(folder_name: str) -> Optional[str]:
n = folder_name.lower()
if "chemberta" in n: return "chemberta"
if "peptideclm" in n: return "peptideclm"
if "smiles" in n: return "peptideclm"
if "wt" in n: return "wt"
return None
def is_binding_affinity(model_dir: Path) -> bool:
return "binding_affinity" in model_dir.parts
def infer_binding_emb_tags(folder_name: str):
"""
Returns (binder_emb_tag, target_emb_tag) for binding affinity folders.
Folder convention: {target_emb}_{binder_emb}_{pooled|unpooled}
e.g. wt_wt_unpooled, chemberta_smiles_unpooled, peptideclm_smiles_unpooled
"""
n = folder_name.lower()
# target is always ESM2 (wt)
target_emb = "wt"
# binder emb from folder name
if "chemberta" in n: binder_emb = "chemberta"
elif "peptideclm" in n: binder_emb = "peptideclm"
else: binder_emb = "wt"
return binder_emb, target_emb
SEQ_CANDIDATES = ["sequence", "smiles", "seq", "peptide", "molecule"]
PRED_CANDIDATES = ["y_prob", "y_pred", "pred_prob", "pred_score", "score", "pred", "prediction"]
TRUE_CANDIDATES = ["y_true", "label", "true_label", "affinity", "y", "target"]
def resolve_col(df, candidates, label):
cl = {c.lower(): c for c in df.columns}
for c in candidates:
if c.lower() in cl:
return cl[c.lower()]
raise ValueError(f"Cannot find {label} column. Available: {list(df.columns)}")
_embedders = {}
def get_embedder(emb_tag: str):
if emb_tag in _embedders:
return _embedders[emb_tag]
if emb_tag == "wt":
from inference_new import WTEmbedder
emb = WTEmbedder(DEVICE)
elif emb_tag == "peptideclm":
from inference_new import SMILESEmbedder
emb = SMILESEmbedder(
DEVICE,
vocab_path=str(WEIGHT_ROOT / "tokenizer/new_vocab.txt"),
splits_path=str(WEIGHT_ROOT / "tokenizer/new_splits.txt"),
)
elif emb_tag == "chemberta":
from inference_new import ChemBERTaEmbedder
emb = ChemBERTaEmbedder(DEVICE)
else:
raise ValueError(f"Unknown emb_tag: {emb_tag}")
_embedders[emb_tag] = emb
return emb
@torch.no_grad()
def embed_sequences(sequences: list, emb_tag: str) -> np.ndarray:
embedder = get_embedder(emb_tag)
vecs = []
for seq in sequences:
v = embedder.pooled(seq.strip())
vecs.append(v.cpu().float().numpy())
return np.vstack(vecs).astype(np.float32)
# Sigma model, simple XGB
def fit_sigma_model(X: np.ndarray, residuals: np.ndarray) -> xgb.Booster:
dtrain = xgb.DMatrix(X, label=residuals)
params = {
"objective": "reg:squarederror",
"max_depth": 4,
"eta": 0.05,
"subsample": 0.8,
"colsample_bytree": 0.3,
"min_child_weight": 5,
"tree_method": "hist",
"device": "cuda" if torch.cuda.is_available() else "cpu",
"seed": 1986,
}
return xgb.train(params, dtrain, num_boost_round=200, verbose_eval=False)
# Standard model dir fitting
def fit_standard(model_dir: Path, alpha: float, dry_run: bool) -> str:
val_path = model_dir / "val_predictions.csv"
if not val_path.exists():
val_path = model_dir / "oof_predictions.csv"
if not val_path.exists():
return "skip (no val/oof CSV)"
emb_tag = infer_emb_tag(model_dir.name)
if emb_tag is None:
return "skip (cannot infer emb_tag)"
try:
df = pd.read_csv(val_path)
seq_col = resolve_col(df, SEQ_CANDIDATES, "sequence")
pred_col = resolve_col(df, PRED_CANDIDATES, "pred")
true_col = resolve_col(df, TRUE_CANDIDATES, "true")
except Exception as e:
return f"error: {e}"
sequences = df[seq_col].astype(str).tolist()
y_pred = df[pred_col].values.astype(np.float64)
y_true = df[true_col].values.astype(np.float64)
mask = np.isfinite(y_pred) & np.isfinite(y_true)
sequences = [s for s, m in zip(sequences, mask) if m]
y_pred, y_true = y_pred[mask], y_true[mask]
n = len(y_pred)
if n < 30:
return f"skip (only {n} samples)"
if dry_run:
return f"would fit (n={n}, emb={emb_tag})"
try:
X = embed_sequences(sequences, emb_tag)
except Exception as e:
return f"error embedding: {e}"
residuals = np.abs(y_true - y_pred).astype(np.float32)
sigma_model = fit_sigma_model(X, residuals)
sigma_cal = np.clip(sigma_model.predict(xgb.DMatrix(X)).astype(np.float64), 1e-6, None)
norm_scores = (residuals / sigma_cal)
level = min(1.0, np.ceil((n + 1) * (1 - alpha)) / n)
q = float(np.quantile(norm_scores, level))
lo, hi = y_pred - q * sigma_cal, y_pred + q * sigma_cal
coverage = float(np.mean((y_true >= lo) & (y_true <= hi)))
avg_width = float(np.mean(hi - lo))
bundle = {"quantile": q, "sigma_model": sigma_model,
"emb_tag": emb_tag, "alpha": alpha, "adaptive": True}
joblib.dump(bundle, model_dir / "mapie_calibration.joblib")
return f"ok (n={n}, emb={emb_tag}, q={q:.4f}, cov={coverage:.3f}, avg_width={avg_width:.3f})"
# Binding affinity fitting
def fit_binding_affinity(model_dir: Path, alpha: float, dry_run: bool) -> str:
val_path = model_dir / "val_predictions.csv"
if not val_path.exists():
return "skip (no val_predictions.csv)"
binder_emb, target_emb = infer_binding_emb_tags(model_dir.name)
try:
df = pd.read_csv(val_path)
except Exception as e:
return f"error reading CSV: {e}"
# Binding affinity CSV has both sequence (binder) and target_sequence
cl = {c.lower(): c for c in df.columns}
if "sequence" not in cl or "target_sequence" not in cl:
return f"skip (missing sequence/target_sequence columns, have: {list(df.columns)})"
binder_seqs = df[cl["sequence"]].astype(str).tolist()
target_seqs = df[cl["target_sequence"]].astype(str).tolist()
try:
pred_col = resolve_col(df, PRED_CANDIDATES, "pred")
true_col = resolve_col(df, TRUE_CANDIDATES, "true")
except Exception as e:
return f"error: {e}"
y_pred = df[pred_col].values.astype(np.float64)
y_true = df[true_col].values.astype(np.float64)
mask = np.isfinite(y_pred) & np.isfinite(y_true)
binder_seqs = [s for s, m in zip(binder_seqs, mask) if m]
target_seqs = [s for s, m in zip(target_seqs, mask) if m]
y_pred, y_true = y_pred[mask], y_true[mask]
n = len(y_pred)
if n < 30:
return f"skip (only {n} samples)"
if dry_run:
return f"would fit (n={n}, binder_emb={binder_emb}, target_emb={target_emb})"
try:
X_binder = embed_sequences(binder_seqs, binder_emb) # (n, H_b)
X_target = embed_sequences(target_seqs, target_emb) # (n, H_t)
X = np.concatenate([X_target, X_binder], axis=1) # (n, H_t+H_b)
except Exception as e:
return f"error embedding: {e}"
# Absolute residuals on held-out validation predictions.
# Equivalent to ResidualNormalisedScore.get_signed_conformity_scores()
# in MAPIE (Cordier et al. 2023), which computes |y - y_pred| / sigma_hat.
# We compute residuals first, then fit sigma_hat below, matching MAPIE's
# two-stage procedure (fit residual estimator → normalize → take quantile).
residuals = np.abs(y_true - y_pred).astype(np.float32)
# Fit sigma_hat: auxiliary XGBoost regressor trained on (embeddings, |residuals|).
# Corresponds to ResidualNormalisedScore's residual_estimator fitted on
# (X_res, |y_res - y_hat_res|) per the MAPIE tutorial. MAPIE fits sigma_hat
# on log-residuals and exponentiates predictions to ensure positivity; we
# instead clip sigma to 1e-6 for the same effect.
sigma_model = fit_sigma_model(X, residuals)
sigma_cal = np.clip(sigma_model.predict(xgb.DMatrix(X)).astype(np.float64), 1e-6, None)
# Normalized conformity scores: s_i = |y_i - y_hat_i| / sigma_hat(x_i).
# This is the ResidualNormalisedScore formula from MAPIE. Larger scores
# encode worse agreement between prediction and observation (Vovk et al. 2005).
norm_scores = residuals / sigma_cal
# Finite-sample corrected conformal quantile at level ceil((n+1)(1-alpha))/n.
# Guarantees marginal coverage >= 1-alpha under exchangeability
# (Lei et al. 2018, Theorem 1).
level = min(1.0, np.ceil((n + 1) * (1 - alpha)) / n)
q = float(np.quantile(norm_scores, level))
lo, hi = y_pred - q * sigma_cal, y_pred + q * sigma_cal
coverage = float(np.mean((y_true >= lo) & (y_true <= hi)))
avg_width = float(np.mean(hi - lo))
bundle = {
"quantile": q,
"sigma_model": sigma_model,
"emb_tag": binder_emb,
"target_emb_tag": target_emb,
"alpha": alpha,
"adaptive": True,
}
joblib.dump(bundle, model_dir / "mapie_calibration.joblib")
return (f"ok (n={n}, binder={binder_emb}, target={target_emb}, "
f"q={q:.4f}, cov={coverage:.3f}, avg_width={avg_width:.3f})")
MODEL_PATTERNS = [
"xgb_*", "enet_*", "svm_*", "svr_*", "mlp_*", "cnn_*", "transformer_*",
"wt_wt_*", "wt_smiles_*", "peptideclm_smiles_*", "chemberta_smiles_*",
]
def main():
parser = argparse.ArgumentParser()
parser.add_argument("--root", type=Path, required=True)
parser.add_argument("--alpha", type=float, default=0.1)
parser.add_argument("--prop", type=str, default=None,
help="Only process a specific property subfolder")
parser.add_argument("--dry-run", action="store_true")
parser.add_argument("--overwrite", action="store_true")
args = parser.parse_args()
search_root = args.root / args.prop if args.prop else args.root
model_dirs = []
for pat in MODEL_PATTERNS:
model_dirs.extend(sorted(search_root.rglob(pat)))
model_dirs = [d for d in model_dirs if d.is_dir()]
print(f"Found {len(model_dirs)} model dirs under {search_root}")
if args.dry_run:
print("DRY RUN\n")
counts = {"ok": 0, "skip": 0, "error": 0}
for model_dir in model_dirs:
rel = model_dir.relative_to(args.root)
if should_skip(model_dir):
print(f" SKIP {rel} (halflife — no sequence in OOF CSV)")
counts["skip"] += 1
continue
out = model_dir / "mapie_calibration.joblib"
if out.exists() and not args.overwrite:
try:
b = joblib.load(out)
if b.get("adaptive"):
print(f" OK {rel} (already adaptive)")
counts["ok"] += 1
continue
except Exception:
pass
print(f" FITTING {rel} ...", end=" ", flush=True)
if is_binding_affinity(model_dir):
status = fit_binding_affinity(model_dir, args.alpha, args.dry_run)
else:
status = fit_standard(model_dir, args.alpha, args.dry_run)
tag = "ok" if status.startswith("ok") else ("skip" if status.startswith("skip") else "error")
counts[tag] += 1
print(status)
print(f"\nDone. {counts}")
if __name__ == "__main__":
main() |