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"""
Lightning Module for the binding model.
"""

import torch
from torch import nn
from lightning import LightningModule
from dpacman.utils.models import set_seed
from .loss import calculate_loss, auprc_zeros_vs_ones_from_logits, auroc_zeros_vs_ones_from_logits

set_seed()

class LocalCNN(nn.Module):
    def __init__(self, dim: int = 256, kernel_size: int = 3, dropout=0.1):
        super().__init__()
        padding = kernel_size // 2
        self.conv = nn.Conv1d(dim, dim, kernel_size=kernel_size, padding=padding)
        self.act = nn.GELU()
        self.ln = nn.LayerNorm(dim)
        
        self.dropout = nn.Dropout(dropout)

    def forward(self, x: torch.Tensor):
        # x: (batch, L, dim)
        out = self.conv(x.transpose(1, 2))  # → (batch, dim, L)
        out = self.act(out)
        out = self.dropout(out) # dropout before the layer norm
        out = out.transpose(1, 2)  # → (batch, L, dim)
        return self.ln(out + x)  # residual


class CrossModalBlock(nn.Module):
    def __init__(self, dim: int = 256, heads: int = 8, dropout: float = 0.1):
        super().__init__()
        # self-attention for both sides
        self.sa_binder = nn.MultiheadAttention(dim, heads, batch_first=True, dropout=dropout)
        self.sa_glm = nn.MultiheadAttention(dim, heads, batch_first=True, dropout=dropout)
        self.do_sa_b = nn.Dropout(dropout)
        self.do_sa_g = nn.Dropout(dropout)
        # first layer norms
        self.ln_b1 = nn.LayerNorm(dim)
        self.ln_g1 = nn.LayerNorm(dim)
        # first feed forward networks
        self.ffn_b1 = nn.Sequential(
            nn.Linear(dim, dim * 4), nn.GELU(), nn.Dropout(dropout), nn.Linear(dim * 4, dim)
        )
        self.ffn_g1 = nn.Sequential(
            nn.Linear(dim, dim * 4), nn.GELU(), nn.Dropout(dropout), nn.Linear(dim * 4, dim)
        )
        self.do_ffn_b1 = nn.Dropout(dropout)
        self.do_ffn_g1 = nn.Dropout(dropout)
        
        self.ln_b2 = nn.LayerNorm(dim)
        self.ln_g2 = nn.LayerNorm(dim)
        
        # 2) reciprocal cross-attn: g<-b and b<-g
        # DNA/GLM updated by attending to Binder
        self.cross_g2b_1_RCA = nn.MultiheadAttention(dim, heads, batch_first=True, dropout=dropout)
        self.do_rca_g = nn.Dropout(dropout)
        self.ln_g3_RCA  = nn.LayerNorm(dim)
        self.ffn_g2_RCA  = nn.Sequential(nn.Linear(dim, dim*4), nn.GELU(), nn.Dropout(dropout), nn.Linear(dim*4, dim))
        self.do_ffn_g2  = nn.Dropout(dropout)
        self.ln_g4_RCA  = nn.LayerNorm(dim)

        # Binder updated by attending to DNA/GLM
        self.cross_b2g_1_RCA = nn.MultiheadAttention(dim, heads, batch_first=True, dropout=dropout)
        self.do_rca_b = nn.Dropout(dropout)
        self.ln_b3_RCA = nn.LayerNorm(dim)
        self.ffn_b2_RCA  = nn.Sequential(nn.Linear(dim, dim*4), nn.GELU(), nn.Dropout(dropout), nn.Linear(dim*4, dim))
        self.do_ffn_b2  = nn.Dropout(dropout)
        self.ln_b4_RCA  = nn.LayerNorm(dim)

        # cross attention (binder queries, glm keys/values)
        # so the NDA path is updated by the transcription factors
        self.cross_g2b_2 = nn.MultiheadAttention(dim, heads, batch_first=True)
        self.do_g2b2 = nn.Dropout(dropout)
        self.ln_g5 = nn.LayerNorm(dim)
        self.ffn_g3 = nn.Sequential(
            nn.Linear(dim, dim * 4), nn.GELU(), nn.Dropout(dropout), nn.Linear(dim * 4, dim)
        )
        self.do_ffn_g3 = nn.Dropout(dropout)
        self.ln_g6 = nn.LayerNorm(dim)

    def forward(self, binder: torch.Tensor, glm: torch.Tensor, binder_kpm_mask=None, glm_kpm_mask=None):
        """
        binder: (batch, Lb, dim)
        glm:    (batch, Lg, dim) -- has passed through its local CNN beforehand
        returns: updated binder representation (batch, Lb, dim) and gLM representation
        """
        # 1) Self-attention and feed-forward networks for binder and DNA
        # binder: self-attn + ffn
        b = binder
        b_sa, _ = self.sa_binder(b, b, b, key_padding_mask=binder_kpm_mask)
        b = self.ln_b1(b + self.do_sa_b(b_sa))
        b_ff = self.ffn_b1(b)
        b = self.ln_b2(b + self.do_ffn_b1(b_ff))

        # glm: self-attn + ffn
        g = glm
        g_sa, _ = self.sa_glm(g, g, g, key_padding_mask=glm_kpm_mask)
        g = self.ln_g1(g + self.do_sa_g(g_sa))
        g_ff = self.ffn_g1(g)
        g = self.ln_g2(g + self.do_ffn_g1(g_ff))
        
        # 2a) Reciprocal Cross-Attention: 
        # DNA updated by attending to Binder (Q=g, K=b, V=b)
        # Binder updated by attending to DNA (Q=b, K=g, V=g)
        g_ca, _ = self.cross_g2b_1_RCA(
            g, b, b, key_padding_mask=binder_kpm_mask
            # torch MultiheadAttention expects key_padding_mask=True for PADs;
            # invert if your mask is True=keep:
            # key_padding_mask=(~binder_mask.bool()) if binder_mask is not None else None
        )
        g = self.ln_g3_RCA(g + self.do_rca_g(g_ca))
        g = self.ln_g4_RCA(g + self.do_ffn_g2(self.ffn_g2_RCA(g)))

        # 2b) Binder updated by attending to DNA/GLM (Q=b, K=g, V=g)
        b_ca, _ = self.cross_b2g_1_RCA(
            b, g, g, key_padding_mask=glm_kpm_mask
            # key_padding_mask=(~glm_mask.bool()) if glm_mask is not None else None
        )
        b = self.ln_b3_RCA(b + self.do_rca_b(b_ca))
        b = self.ln_b4_RCA(b + self.do_ffn_b2(self.ffn_b2_RCA(b)))

        # cross-attention: glm queries binder and glm embeddings are updated
        g_to_b_ca, _ = self.cross_g2b_2(g, b, b, key_padding_mask=binder_kpm_mask)
        g = self.ln_g5(g + self.do_g2b2(g_to_b_ca))
        g_ff = self.ffn_g3(g)
        g = self.ln_g6(g + self.do_ffn_g3(g_ff))
        return b, g  # (batch, Lb, dim)

class DimCompressor(nn.Module):
    """
    Learnable per-token compressor: maps any in_dim >= out_dim to out_dim (default 256).
    If in_dim == out_dim, behaves as identity.
    """

    def __init__(self, in_dim: int, out_dim: int = 256):
        super().__init__()
        if in_dim == out_dim:
            self.net = nn.Identity()
        else:
            hidden = max(out_dim * 2, (in_dim + out_dim) // 2)
            self.net = nn.Sequential(
                nn.LayerNorm(in_dim),
                nn.Linear(in_dim, hidden),
                nn.GELU(),
                nn.Linear(hidden, out_dim),
            )

    def forward(self, x: torch.Tensor) -> torch.Tensor:
        # x: (B, L, in_dim)
        return self.net(x)


class BindPredictor(LightningModule):
    def __init__(
        self,
        # input_dim: int = 256,                     # OLD: single input dim
        binder_input_dim: int = 1280,  # NEW: TF (binder) original dim (e.g., 1280)
        glm_input_dim: int = 256,  # NEW: DNA/GLM original dim (e.g., 256)
        compressed_dim: int = 256,  # NEW: learnable compressed dim
        hidden_dim: int = 256,
        heads: int = 8,
        num_layers: int = 4,
        lr: float = 1e-4,
        alpha: float = 20,
        gamma: float = 20,
        dropout: float = 0,
        use_local_cnn_on_glm: bool = True,
        weight_decay: float = 0.01,
        loss_type = "mixed"
    ):
        # Init
        super(BindPredictor, self).__init__()
        self.save_hyperparameters()

        # Learnable compressor for binder -> 256, then project to hidden
        self.binder_compress = DimCompressor(binder_input_dim, out_dim=compressed_dim)
        self.proj_binder = nn.Linear(compressed_dim, hidden_dim)
        self.dropout_b1 = nn.Dropout(dropout)
        self.act = nn.GELU()

        # GLM side stays 256 -> hidden
        self.proj_glm = nn.Linear(glm_input_dim, hidden_dim)
        self.dropout_g1 = nn.Dropout(dropout)
        
        self.use_local_cnn = use_local_cnn_on_glm
        self.local_cnn = LocalCNN(hidden_dim, dropout=self.hparams.dropout) if use_local_cnn_on_glm else nn.Identity()

        self.layers = nn.ModuleList(
            [CrossModalBlock(hidden_dim, heads, self.hparams.dropout) for _ in range(num_layers)]
        )

        #self.ln_out = nn.LayerNorm(hidden_dim)
        # self.head = nn.Sequential(nn.Linear(hidden_dim, 1), nn.Sigmoid())  # OLD: returned probabilities
        self.head = nn.Linear(hidden_dim, 1)  # NEW: return logits (safe for AMP)

    def forward(self, binder_emb, glm_emb, binder_mask, glm_mask):
        """
        binder_emb: (B, Lb, binder_input_dim)
        glm_emb:    (B, Lg, glm_input_dim)
        Returns per-nucleotide logits for the GLM sequence: (B, Lg)
        """
        # Binder: learnable compression → 256 → hidden
        b = self.binder_compress(binder_emb)  # (B, Lb, 256)
        b = self.proj_binder(b)  # (B, Lb, hidden_dim)
        b = self.dropout_b1(self.act(b))

        # GLM: project → hidden, add local CNN context
        g = self.proj_glm(glm_emb)  # (B, Lg, hidden_dim)
        g = self.dropout_g1(self.act(g))
        if self.use_local_cnn:
            g = self.local_cnn(g)

        # Cross-modal blocks: update binder states using GLM
        for layer in self.layers:
            b, g = layer(b, g, binder_mask, glm_mask)  # (B, Lb, hidden_dim)

        # Predict per-nucleotide logits on the GLM tokens:
        # return self.head(g).squeeze(-1)         # OLD: probabilities (with Sigmoid in head)
        logits = self.head(g).squeeze(
            -1
        )  
        return logits
        
    # ----- Lightning hooks -----
    def training_step(self, batch, batch_idx):
        """
        Training step taken by PyTorch-Lightning trainer. Uses batch returned by data collator.
        Colator returns a dictionary with:
            "binder_emb"    # [B, Lb_max, Db]
            "binder_kpm"    # [B, Lb_max]
            "glm_emb"       # [B, Lg_max, Dg]
            "glm_kpm"       # [B, Lg_max]
            "labels"        # [B, Lg_max]
            "ID"
            "tr_sequence"
            "dna_sequence"
        }
        """
        logits = self.forward(batch["binder_emb"], batch["glm_emb"], batch["binder_kpm"], batch["glm_kpm"])
        loss = calculate_loss(
            logits, batch["labels"], batch["binder_kpm"], batch["glm_kpm"], alpha=self.hparams.alpha, gamma=self.hparams.gamma, loss_type=self.hparams.loss_type
        )
        self.log(
            "train/loss",
            loss,
            on_step=True,
            on_epoch=True,
            prog_bar=True,
            batch_size=logits.size(0),
        )
        
        # ---- AUPRC and AUROC on labels in {0, >0.99} only ----
        ap, n_pos, n_neg, precision, recall, thresholds = auprc_zeros_vs_ones_from_logits(
            logits.detach(), batch["labels"], batch.get("glm_kpm"), pos_thresh=0.99
        )
        auc, n_pos, n_neg, tpr, fpr, thresolds, tp, fp = auroc_zeros_vs_ones_from_logits(
            logits.detach(), batch["labels"], batch.get("glm_kpm"), pos_thresh=0.99
        )
        # per-batch AP (epoch-mean is a decent summary); sync across GPUs if using DDP
        self.log("train/auprc_0v1",
                ap if torch.isfinite(ap) else torch.tensor(0.0, device=ap.device),
                on_step=False, on_epoch=True, prog_bar=True, sync_dist=True, batch_size=logits.size(0))
        self.log("train/auroc_0v1",
                auc if torch.isfinite(auc) else torch.tensor(0.0, device=auc.device),
                on_step=False, on_epoch=True, prog_bar=True, sync_dist=True, batch_size=logits.size(0))
        # (optional) also log class counts so you can sanity-check balance
        self.log("train/n_pos_0v1", float(n_pos), on_step=False, on_epoch=True, sync_dist=True)
        self.log("train/n_neg_0v1", float(n_neg), on_step=False, on_epoch=True, sync_dist=True)

        return loss

    def validation_step(self, batch, batch_idx):
        logits = self.forward(batch["binder_emb"], batch["glm_emb"], batch["binder_kpm"], batch["glm_kpm"])
        loss = calculate_loss(
            logits, batch["labels"], batch["binder_kpm"], batch["glm_kpm"], alpha=self.hparams.alpha, gamma=self.hparams.gamma, loss_type=self.hparams.loss_type
        )
        self.log(
            "val/loss",
            loss,
            on_step=False,
            on_epoch=True,
            prog_bar=True,
            batch_size=logits.size(0),
        )
        
        # ---- AUPRC and AUROC on labels in {0, >0.99} only ----
        ap, n_pos, n_neg, precision, recall, thresholds = auprc_zeros_vs_ones_from_logits(
            logits.detach(), batch["labels"], batch.get("glm_kpm"), pos_thresh=0.99
        )
        auc, n_pos, n_neg, tpr, fpr, thresolds, tp, fp = auroc_zeros_vs_ones_from_logits(
            logits.detach(), batch["labels"], batch.get("glm_kpm"), pos_thresh=0.99
        )
        # per-batch AP (epoch-mean is a decent summary); sync across GPUs if using DDP
        self.log("val/auprc_0v1",
                ap if torch.isfinite(ap) else torch.tensor(0.0, device=ap.device),
                on_step=False, on_epoch=True, prog_bar=True, sync_dist=True, batch_size=logits.size(0))
        self.log("val/auroc_0v1",
                auc if torch.isfinite(auc) else torch.tensor(0.0, device=auc.device),
                on_step=False, on_epoch=True, prog_bar=True, sync_dist=True, batch_size=logits.size(0))
        
        return loss

    def test_step(self, batch, batch_idx):
        logits = self.forward(batch["binder_emb"], batch["glm_emb"], batch["binder_kpm"], batch["glm_kpm"])
        loss = calculate_loss(
            logits, batch["labels"], batch["binder_kpm"], batch["glm_kpm"], alpha=self.hparams.alpha, gamma=self.hparams.gamma, loss_type=self.hparams.loss_type
        )
        self.log(
            "test/loss", loss, on_step=False, on_epoch=True, batch_size=logits.size(0)
        )
        
        # ---- AUPRC and AUROC on labels in {0, >0.99} only ----
        ap, n_pos, n_neg, precision, recall, thresholds = auprc_zeros_vs_ones_from_logits(
            logits.detach(), batch["labels"], batch.get("glm_kpm"), pos_thresh=0.99
        )
        auc, n_pos, n_neg, tpr, fpr, thresolds, tp, fp = auroc_zeros_vs_ones_from_logits(
            logits.detach(), batch["labels"], batch.get("glm_kpm"), pos_thresh=0.99
        )
        # per-batch AP (epoch-mean is a decent summary); sync across GPUs if using DDP
        self.log("test/auprc_0v1",
                ap if torch.isfinite(ap) else torch.tensor(0.0, device=ap.device),
                on_step=False, on_epoch=True, prog_bar=True, sync_dist=True, batch_size=logits.size(0))
        self.log("test/auroc_0v1",
                auc if torch.isfinite(auc) else torch.tensor(0.0, device=auc.device),
                on_step=False, on_epoch=True, prog_bar=True, sync_dist=True, batch_size=logits.size(0))
        
        return loss

    def predict_step(self, batch, batch_idx, dataloader_idx=0):
        logits = self.forward(batch["binder_emb"], batch["glm_emb"],
                            batch["binder_kpm"], batch["glm_kpm"]).squeeze(-1)  # (B,L)
        valid = ~batch["glm_kpm"]   # (B,L)
        return {
            "ids": batch["ID"],                           # list[str]
            "logits": logits.detach().cpu(),              # (B,Lmax) padded
            "valid": valid.detach().cpu(),                # (B,Lmax) booleans
            "labels": batch["labels"].detach().cpu(),     # (B,Lmax) padded
        }
        
    def on_before_optimizer_step(self, optimizer):
        # Compute global L2 norm of all parameter gradients (ignores None grads)
        grads = []
        for p in self.parameters():
            if p.grad is not None:
                # .detach() avoids autograd tracking; .float() avoids fp16 overflow in norms
                grads.append(p.grad.detach().float().norm(2))
        if grads:
            total_norm = torch.norm(torch.stack(grads), p=2)
            self.log("train/grad_norm", total_norm, on_step=True, prog_bar=False, logger=True)
    
    def on_after_backward(self):
        grads = [p.grad.detach().float().norm(2)
                for p in self.parameters() if p.grad is not None]
        if grads:
            total_norm = torch.norm(torch.stack(grads), p=2)
            self.log("train/grad_norm_back", total_norm, on_step=True, prog_bar=False)

    def on_train_epoch_end(self):
        if False:
            if self.train_auc.compute() is not None:
                self.log("train/auroc", self.train_auc.compute(), prog_bar=True)
            self.train_auc.reset()

    def on_validation_epoch_end(self):
        if False:
            if self.val_auc.compute() is not None:
                self.log("val/auroc", self.val_auc.compute(), prog_bar=True)
            self.val_auc.reset()

    def on_test_epoch_end(self):
        if False:
            if self.test_auc.compute() is not None:
                self.log("test/auroc", self.test_auc.compute(), prog_bar=True)
            self.test_auc.reset()

    def configure_optimizers(self):
        # AdamW + cosine as a sensible default
        opt = torch.optim.AdamW(
            self.parameters(),
            lr=self.hparams.lr,
            weight_decay=self.hparams.weight_decay,
        )
        # Scheduler optional—comment out if you prefer fixed LR
        sch = torch.optim.lr_scheduler.CosineAnnealingLR(
            opt, T_max=max(self.trainer.max_epochs, 1)
        )
        return {
            "optimizer": opt,
            "lr_scheduler": {"scheduler": sch, "interval": "epoch"},
        }