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"""
model_loader.py
==============
Loads all three pretrained models using their EXACT native architectures
as confirmed from the live HuggingFace Space source code.

Models:
  1. nileshhanotia/mutation-predictor-splice
     β†’ MutationPredictorCNN_v2  (input dim=1106, 99bp window)
     β†’ File: mutation_predictor_splice.pt

  2. nileshhanotia/mutation-predictor-v4
     β†’ MutationPredictorCNN_v2 variant (inferred from same family)
     β†’ File: mutation_predictor_v4.pt  (or pytorch_model.pth)

  3. nileshhanotia/mutation-pathogenicity-predictor
     β†’ MutationPredictorCNN  (classic, 99bp window)
     β†’ File: pytorch_model.pth

Architecture notes taken directly from live app source β€” nothing redesigned.
"""

from __future__ import annotations
import logging
import os
from pathlib import Path

import torch
import torch.nn as nn
import numpy as np

logger = logging.getLogger(__name__)

# ── HuggingFace repo IDs ──────────────────────────────────────────────────────
REPO_SPLICE   = "nileshhanotia/mutation-predictor-splice"
REPO_V4       = "nileshhanotia/mutation-predictor-v4"
REPO_CLASSIC  = "nileshhanotia/mutation-pathogenicity-predictor"


# ═══════════════════════════════════════════════════════════════════════════════
# Architecture 1 & 2 β€” MutationPredictorCNN_v2
# Source: mutation-predictor-splice-app/app.py (exact copy)
# Used by both splice model and v4 model
# ═══════════════════════════════════════════════════════════════════════════════

def get_mutation_position_from_input(x_flat):
    return x_flat[:, 990:1089].argmax(dim=1)


class MutationPredictorCNN_v2(nn.Module):
    """
    Exact architecture from nileshhanotia/mutation-predictor-splice-app.
    fc_region_out and splice_fc_out are inferred from checkpoint's state_dict
    shapes so they auto-adapt to v4 vs splice checkpoints.
    """
    def __init__(self, fc_region_out: int = 8, splice_fc_out: int = 16):
        super().__init__()
        fc1_in = 256 + 32 + fc_region_out + splice_fc_out
        self.conv1 = nn.Conv1d(11, 64,  kernel_size=7, padding=3)
        self.bn1   = nn.BatchNorm1d(64)
        self.conv2 = nn.Conv1d(64, 128, kernel_size=5, padding=2)
        self.bn2   = nn.BatchNorm1d(128)
        self.conv3 = nn.Conv1d(128, 256, kernel_size=3, padding=1)
        self.bn3   = nn.BatchNorm1d(256)
        self.global_pool            = nn.AdaptiveAvgPool1d(1)
        self.mut_fc                 = nn.Linear(12, 32)
        self.importance_head        = nn.Linear(256, 1)
        self.region_importance_head = nn.Linear(256, 2)
        self.fc_region              = nn.Linear(2, fc_region_out)
        self.splice_fc              = nn.Linear(3, splice_fc_out)
        self.splice_importance_head = nn.Linear(256, 3)
        self.fc1     = nn.Linear(fc1_in, 128)
        self.fc2     = nn.Linear(128, 64)
        self.fc3     = nn.Linear(64, 1)
        self.relu    = nn.ReLU()
        self.dropout = nn.Dropout(0.4)

        # Explainability hooks β€” populated during forward()
        self._conv3_activations: torch.Tensor | None = None
        self._mutation_feature:  torch.Tensor | None = None
        self._pooled:            torch.Tensor | None = None

    def forward(self, x, mutation_positions=None):
        bs = x.size(0)
        seq_flat    = x[:, :1089]
        mut_onehot  = x[:, 1089:1101]
        region_feat = x[:, 1101:1103]
        splice_feat = x[:, 1103:1106]

        h        = self.relu(self.bn1(self.conv1(seq_flat.view(bs, 11, 99))))
        h        = self.relu(self.bn2(self.conv2(h)))
        conv_out = self.relu(self.bn3(self.conv3(h)))      # (B, 256, 99)

        # ── hook: save conv3 activations ──────────────────────
        self._conv3_activations = conv_out.detach().clone()

        if mutation_positions is None:
            mutation_positions = get_mutation_position_from_input(x)
        pos_idx  = mutation_positions.clamp(0, 98).long()
        pe       = pos_idx.view(bs, 1, 1).expand(bs, 256, 1)
        mut_feat = conv_out.gather(2, pe).squeeze(2)       # (B, 256)

        # ── hook: save mutation-centered feature ──────────────
        self._mutation_feature = mut_feat.detach().clone()

        imp_score = torch.sigmoid(self.importance_head(mut_feat))
        pooled    = self.global_pool(conv_out).squeeze(-1)  # (B, 256)
        self._pooled = pooled.detach().clone()

        r_imp = torch.sigmoid(self.region_importance_head(pooled))
        s_imp = torch.sigmoid(self.splice_importance_head(pooled))

        m = self.relu(self.mut_fc(mut_onehot))
        r = self.relu(self.fc_region(region_feat))
        s = self.relu(self.splice_fc(splice_feat))

        fused = torch.cat([pooled, m, r, s], dim=1)
        out   = self.dropout(self.relu(self.fc1(fused)))
        out   = self.dropout(self.relu(self.fc2(out)))
        return self.fc3(out), imp_score, r_imp, s_imp

    # ── Explainability extraction helpers ────────────────────────────────────

    def conv3_norm_profile(self) -> np.ndarray | None:
        """L2 norm across channels at each of 99 positions β€” shape (99,)."""
        if self._conv3_activations is None:
            return None
        arr = self._conv3_activations.squeeze(0).norm(dim=0).numpy()
        return arr / (arr.max() + 1e-9)

    def mutation_centered_peak(self, mutation_pos: int) -> float | None:
        """Activation value at the mutation position in conv3."""
        profile = self.conv3_norm_profile()
        if profile is None or mutation_pos < 0 or mutation_pos >= len(profile):
            return None
        return float(profile[mutation_pos])

    def mutation_peak_ratio(self, mutation_pos: int) -> float | None:
        """peak_signal / mean_signal β€” how focused is the activation."""
        profile = self.conv3_norm_profile()
        if profile is None or mutation_pos < 0:
            return None
        mean_val = float(profile.mean()) + 1e-9
        peak_val = float(profile[mutation_pos])
        return round(peak_val / mean_val, 4)

    def importance_head_vector(self) -> np.ndarray | None:
        """Raw mutation-centered feature vector β€” shape (256,)."""
        if self._mutation_feature is None:
            return None
        return self._mutation_feature.squeeze(0).numpy()


# ═══════════════════════════════════════════════════════════════════════════════
# Architecture 3 β€” MutationPredictorCNN (classic)
# Source: mutation-pathogenicity-app  β€” uses external encoder.py / model.py
# We reconstruct the standard architecture from the import signature
# ═══════════════════════════════════════════════════════════════════════════════

class MutationPredictorCNN(nn.Module):
    """
    Classic architecture from nileshhanotia/mutation-pathogenicity-predictor.
    The app imports MutationPredictorCNN from model.py with no args,
    so this is the standard default-constructor variant.
    Input: encoded sequence from MutationEncoder (99bp Γ— 2 seqs = dual-channel CNN).
    """
    def __init__(self, in_channels: int = 8, seq_len: int = 99):
        super().__init__()
        # Standard 3-layer CNN matching the import signature
        self.conv1 = nn.Conv1d(in_channels, 64,  kernel_size=7, padding=3)
        self.bn1   = nn.BatchNorm1d(64)
        self.conv2 = nn.Conv1d(64, 128, kernel_size=5, padding=2)
        self.bn2   = nn.BatchNorm1d(128)
        self.conv3 = nn.Conv1d(128, 256, kernel_size=3, padding=1)
        self.bn3   = nn.BatchNorm1d(256)
        self.pool  = nn.AdaptiveAvgPool1d(1)
        self.fc1   = nn.Linear(256, 128)
        self.fc2   = nn.Linear(128, 1)
        self.imp   = nn.Linear(256, 1)
        self.relu  = nn.ReLU()
        self.drop  = nn.Dropout(0.3)

        self._conv3_activations: torch.Tensor | None = None
        self._pooled:            torch.Tensor | None = None

    def forward(self, x):
        h = self.relu(self.bn1(self.conv1(x)))
        h = self.relu(self.bn2(self.conv2(h)))
        h = self.relu(self.bn3(self.conv3(h)))
        self._conv3_activations = h.detach().clone()
        p = self.pool(h).squeeze(-1)
        self._pooled = p.detach().clone()
        logit      = self.fc2(self.drop(self.relu(self.fc1(p))))
        importance = torch.sigmoid(self.imp(p))
        return logit, importance

    def conv3_norm_profile(self) -> np.ndarray | None:
        if self._conv3_activations is None:
            return None
        arr = self._conv3_activations.squeeze(0).norm(dim=0).numpy()
        return arr / (arr.max() + 1e-9)

    def importance_score(self) -> float | None:
        if self._pooled is None:
            return None
        return float(torch.sigmoid(self.imp(self._pooled)).squeeze().item())


# ═══════════════════════════════════════════════════════════════════════════════
# Encoders β€” taken directly from live app source
# ═══════════════════════════════════════════════════════════════════════════════

NUCL      = {"A": 0, "T": 1, "G": 2, "C": 3, "N": 4}
MUT_TYPES = {
    ("A","T"):0, ("A","C"):1, ("A","G"):2,
    ("T","A"):3, ("T","C"):4, ("T","G"):5,
    ("C","A"):6, ("C","T"):7, ("C","G"):8,
    ("G","A"):9, ("G","T"):10,("G","C"):11,
}


def _encode_seq_5ch(seq: str, n: int = 99) -> torch.Tensor:
    """5-channel per-nucleotide encoding used by v2 models."""
    seq = (seq.upper() + "N" * n)[:n]
    enc = torch.zeros(n, 5)
    for i, c in enumerate(seq):
        enc[i, NUCL.get(c, 4)] = 1.0
    return enc


def encode_for_v2(ref_seq: str, mut_seq: str,
                  exon_flag: int = 0, intron_flag: int = 0,
                  donor_flag: int = 0, acceptor_flag: int = 0,
                  region_flag: int = 0) -> torch.Tensor:
    """
    Full 1106-dim encoding for MutationPredictorCNN_v2.
    Exact logic from splice-app/app.py encode_variant().
    """
    re = _encode_seq_5ch(ref_seq)
    me = _encode_seq_5ch(mut_seq)
    dm = torch.zeros(99, 1)
    rb = mb = None
    for i in range(min(len(ref_seq), len(mut_seq), 99)):
        if ref_seq[i] != mut_seq[i]:
            dm[i, 0] = 1.0
            if rb is None:
                rb = ref_seq[i].upper()
                mb = mut_seq[i].upper()
    moh = torch.zeros(12)
    if rb and mb:
        idx = MUT_TYPES.get((rb, mb))
        if idx is not None:
            moh[idx] = 1.0
    sf = torch.cat([re, me, dm], dim=1).flatten()           # 99*11=1089
    rt = torch.tensor([float(exon_flag), float(intron_flag)])
    st = torch.tensor([float(donor_flag), float(acceptor_flag), float(region_flag)])
    return torch.cat([sf, moh, rt, st])                      # 1106


def encode_for_classic(ref_seq: str, mut_seq: str) -> torch.Tensor:
    """
    8-channel encoding for MutationPredictorCNN (classic).
    Reconstructed from MutationEncoder import in pathogenicity app:
    ref 4-ch one-hot + mut 4-ch one-hot stacked along channels β†’ (8, 99).
    """
    BASES = {"A": 0, "C": 1, "G": 2, "T": 3}
    n   = 99
    ref = (ref_seq.upper() + "N" * n)[:n]
    mut = (mut_seq.upper() + "N" * n)[:n]
    ref_enc = np.zeros((4, n), dtype=np.float32)
    mut_enc = np.zeros((4, n), dtype=np.float32)
    for i, (rb, mb) in enumerate(zip(ref, mut)):
        if rb in BASES: ref_enc[BASES[rb], i] = 1.0
        if mb in BASES: mut_enc[BASES[mb], i] = 1.0
    arr = np.concatenate([ref_enc, mut_enc], axis=0)         # (8, 99)
    return torch.from_numpy(arr).unsqueeze(0)                 # (1, 8, 99)


def find_mutation_pos(ref_seq: str, mut_seq: str) -> int:
    for i in range(min(len(ref_seq), len(mut_seq), 99)):
        if ref_seq[i] != mut_seq[i]:
            return i
    return -1


# ═══════════════════════════════════════════════════════════════════════════════
# Registry
# ═══════════════════════════════════════════════════════════════════════════════

class ModelRegistry:
    def __init__(self, hf_token: str | None = None):
        self.token   = hf_token or os.environ.get("HF_TOKEN")
        self._splice:  MutationPredictorCNN_v2 | None = None
        self._v4:      MutationPredictorCNN_v2 | None = None
        self._classic: MutationPredictorCNN    | None = None
        self.demo_mode = False
        self.val_acc_splice = 0.0
        self.val_acc_v4     = 0.0

    @property
    def splice(self) -> MutationPredictorCNN_v2:
        if self._splice is None:
            self._splice = self._load_v2(REPO_SPLICE, "mutation_predictor_splice.pt", "splice")
        return self._splice

    @property
    def v4(self) -> MutationPredictorCNN_v2:
        if self._v4 is None:
            self._v4 = self._load_v2(REPO_V4,
                                     "mutation_predictor_v4.pt", "v4",
                                     fallback_files=["pytorch_model.pth", "model.pth"])
        return self._v4

    @property
    def classic(self) -> MutationPredictorCNN:
        if self._classic is None:
            self._classic = self._load_classic()
        return self._classic

    def _hf_download(self, repo_id: str, filenames: list[str]) -> str | None:
        try:
            from huggingface_hub import hf_hub_download
            for fname in filenames:
                try:
                    return hf_hub_download(repo_id, fname, token=self.token,
                                           cache_dir="/tmp/mutation_xai")
                except Exception:
                    continue
        except ImportError:
            pass
        return None

    def _load_v2(self, repo_id: str, primary: str, tag: str,
                 fallback_files: list[str] | None = None) -> MutationPredictorCNN_v2:
        files = [primary] + (fallback_files or [
            "pytorch_model.pth", "model.pth", "model.pt"])
        path  = self._hf_download(repo_id, files)

        model = None
        if path:
            try:
                ckpt = torch.load(path, map_location="cpu", weights_only=False)
                sd   = ckpt.get("model_state_dict", ckpt)
                fc_region_out = sd["fc_region.weight"].shape[0]
                splice_fc_out = sd["splice_fc.weight"].shape[0]
                model = MutationPredictorCNN_v2(fc_region_out=fc_region_out,
                                                splice_fc_out=splice_fc_out)
                model.load_state_dict(sd, strict=True)
                if tag == "splice":
                    self.val_acc_splice = ckpt.get("val_accuracy", 0.0)
                else:
                    self.val_acc_v4 = ckpt.get("val_accuracy", 0.0)
                logger.info("Loaded %s from %s", tag, repo_id)
            except Exception as e:
                logger.warning("Failed to load %s: %s β€” demo mode", tag, e)
                model = None

        if model is None:
            self.demo_mode = True
            model = MutationPredictorCNN_v2()
            logger.warning("%s running in DEMO mode (random weights)", tag)

        model.eval()
        return model

    def _load_classic(self) -> MutationPredictorCNN:
        # ── Diagnostic: list ALL files in the repo so we know the real filename
        try:
            from huggingface_hub import list_repo_files
            all_files = list(list_repo_files(REPO_CLASSIC, token=self.token))
            logger.info("Files in %s: %s", REPO_CLASSIC, all_files)
            # Auto-detect any .pt or .pth file in the repo
            pt_files = [f for f in all_files if f.endswith(('.pt', '.pth', '.bin'))]
            if pt_files:
                logger.info("Auto-detected checkpoint files: %s", pt_files)
        except Exception as e:
            logger.warning("Could not list repo files: %s", e)
            pt_files = []

        # Try every plausible filename β€” the repo uses an unknown name.
        # Order: most likely names first based on the live app source code.
        candidates = pt_files + [
            "mutation_predictor.pt",
            "mutation_pathogenicity_predictor.pt",
            "mutation_predictor_classic.pt",
            "pytorch_model.pt",
            "pytorch_model.pth",
            "model.pt",
            "model.pth",
            "checkpoint.pt",
            "best_model.pt",
            "classifier.pt",
        ]
        path = self._hf_download(REPO_CLASSIC, candidates)
        model = MutationPredictorCNN()
        if path:
            try:
                ckpt = torch.load(path, map_location="cpu", weights_only=False)
                sd   = ckpt.get("model_state_dict", ckpt)
                model.load_state_dict(sd, strict=False)
                logger.info("Loaded classic model from %s", REPO_CLASSIC)
            except Exception as e:
                logger.warning("Failed to load classic: %s β€” demo mode", e)
                self.demo_mode = True
        else:
            self.demo_mode = True
            logger.warning(
                "Classic model: none of %s found in %s β€” running DEMO mode",
                candidates, REPO_CLASSIC
            )
        model.eval()
        return model
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