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"""
FlashVQ: Custom Vector Quantization with dual Triton GPU + PyTorch CPU path.

Replaces vector_quantize_pytorch entirely (D-100). FlashVQCodebook is a standalone
nn.Module implementing all VQ operations:
  - Cosine similarity codebook lookup
  - EMA codebook update
  - Dead code reset
  - Rotation trick (gradient through quantization)
  - Commitment loss

Dispatch pattern (following tscale.py):
  if x.is_cuda and _HAS_TRITON β†’ _TritonFlashVQFn.apply()
  else β†’ self._cpu_forward()
"""

import torch
import torch.nn as nn
import torch.nn.functional as F

_HAS_TRITON = False
try:
    import triton
    import triton.language as tl
    _HAS_TRITON = True
except ImportError:
    pass


class _RotationTrickFn(torch.autograd.Function):
    """
    Rotation trick gradient through vector quantization.

    Instead of straight-through estimator (STE), rotate the encoder output
    gradient toward the quantized vector direction. This helps the encoder
    learn to produce outputs that align with codebook entries.
    """

    @staticmethod
    def forward(ctx, x, quantized):
        ctx.save_for_backward(x.detach(), quantized.detach())
        return quantized

    @staticmethod
    def backward(ctx, grad_output):
        x, quantized = ctx.saved_tensors
        # Normalize in fp32 for numerical stability
        x_norm = F.normalize(x.float(), dim=-1)
        q_norm = F.normalize(quantized.float(), dim=-1)
        # Gradient deflection: subtract projection onto (x_norm - q_norm)
        # This rotates the gradient toward the quantized direction
        diff = x_norm - q_norm
        proj = (grad_output.float() * x_norm).sum(dim=-1, keepdim=True)
        grad_x = grad_output.float() - proj * diff
        return grad_x.to(grad_output.dtype), None


class FlashVQCodebook(nn.Module):
    """
    Vector quantization codebook with dual GPU (Triton) / CPU (PyTorch) paths.

    Interface matches vector_quantize_pytorch.VectorQuantize:
      forward(x) β†’ (quantized, indices, commitment_loss)

    All VQ operations are self-contained:
      - Cosine similarity codebook lookup
      - Straight-through estimator (STE) with optional rotation trick
      - EMA codebook update (decay=0.99)
      - Dead code reset (threshold_ema_dead_code=2)
      - Commitment loss
    """

    def __init__(
        self,
        codebook_size: int = 8192,
        codebook_dim: int = 32,
        decay: float = 0.99,
        commitment_weight: float = 1.0,
        threshold_ema_dead_code: int = 2,
        kmeans_init: bool = True,
        kmeans_iters: int = 10,
        rotation_trick: bool = True,
    ):
        super().__init__()
        self.codebook_size = codebook_size
        self.codebook_dim = codebook_dim
        self.decay = decay
        self.commitment_weight = commitment_weight
        self.threshold_ema_dead_code = threshold_ema_dead_code
        self.kmeans_init = kmeans_init
        self.kmeans_iters = kmeans_iters
        self.rotation_trick = rotation_trick

        # Codebook buffers
        self.register_buffer('embed', torch.randn(codebook_size, codebook_dim) * 0.02)
        self.register_buffer('cluster_size', torch.zeros(codebook_size))
        self.register_buffer('embed_avg', torch.zeros(codebook_size, codebook_dim))

        # Tile sizes for Triton kernel (set on first GPU forward)
        self._triton_block_bt = 16
        self._triton_tile_k = 1024

    def _compute_tile_sizes(self):
        """
        Dynamic tile sizing per D-102.

        Queries GPU device properties to determine SRAM budget, then computes
        BLOCK_BT and TILE_K such that:
            BLOCK_BT * codebook_dim * 2 + TILE_K * codebook_dim * 2 < SRAM * 0.9

        For sm_89 (RTX 4060, 99KB SRAM per SM):
          codebook_size=8192, codebook_dim=32 β†’ BLOCK_BT=16, TILE_K=1024 (65KB)
          codebook_size=4096, codebook_dim=32 β†’ BLOCK_BT=16, TILE_K=512  (33KB)
        """
        if not torch.cuda.is_available():
            return
        try:
            props = torch.cuda.get_device_properties(0)
            sram_budget = 99 * 1024  # SM 8.9: 99KB per SM

            # Conservative estimate: each element is 2 bytes (bf16) in SRAM
            elem_bytes = 2

            # Find largest TILE_K that fits with BLOCK_BT=16
            bt = 16
            for tk in [2048, 1024, 512, 256, 128]:
                sram_usage = bt * self.codebook_dim * elem_bytes + tk * self.codebook_dim * elem_bytes
                if sram_usage < sram_budget * 0.9:
                    self._triton_block_bt = bt
                    self._triton_tile_k = tk
                    return

            # Fallback for very constrained SRAM or large codebook_dim
            self._triton_block_bt = 8
            self._triton_tile_k = 256
        except Exception:
            # Default values
            self._triton_block_bt = 16
            self._triton_tile_k = 1024

    def forward(self, x: torch.Tensor):
        """
        Args:
            x: Input tensor of shape [*, codebook_dim]
        Returns:
            quantized: Tensor of same shape as x
            indices: Tensor of shape [*] with codebook indices
            commitment_loss: Scalar tensor
        """
        orig_shape = x.shape
        x_flat = x.reshape(-1, self.codebook_dim)

        if x.is_cuda and _HAS_TRITON:
            quantized, indices, commitment_loss = self._triton_forward(x_flat)
        else:
            quantized, indices, commitment_loss = self._cpu_forward(x_flat)

        quantized = quantized.reshape(orig_shape)
        indices = indices.reshape(orig_shape[:-1])
        return quantized, indices, commitment_loss

    def _triton_forward(self, x_flat: torch.Tensor):
        """Triton GPU path β€” dispatched when CUDA + Triton available."""
        # Use _TritonFlashVQFn for forward + backward via autograd
        quantized, indices, commitment_loss = _TritonFlashVQFn.apply(
            x_flat, self.embed, self.cluster_size, self.embed_avg,
            self.codebook_size, self.codebook_dim,
            self.commitment_weight, self.rotation_trick,
        )

        # EMA update and dead code reset (under torch.no_grad)
        with torch.no_grad():
            self._ema_update(x_flat, indices)
            self._dead_code_reset(x_flat)

        return quantized, indices, commitment_loss

    def _cpu_forward(self, x_flat: torch.Tensor):
        """
        Pure PyTorch CPU path β€” implements all VQ operations.

        Steps:
          1. Cosine similarity lookup β†’ nearest codebook entry indices
          2. Quantize via straight-through estimator (or rotation trick)
          3. Compute commitment loss
          4. EMA update codebook (under torch.no_grad)
          5. Dead code reset (under torch.no_grad)
        """
        # ── Step 1: Cosine similarity lookup ──
        x_norm = F.normalize(x_flat.float(), dim=-1)
        embed_norm = F.normalize(self.embed.float(), dim=-1)
        sim = x_norm @ embed_norm.T  # [N, codebook_size]
        indices = sim.argmax(dim=-1)  # [N]

        # ── Step 2: Quantize with STE or rotation trick ──
        with torch.no_grad():
            quantized = self.embed[indices]  # [N, D]

        if self.rotation_trick:
            quantized = _RotationTrickFn.apply(x_flat, quantized)
        else:
            # Straight-through estimator
            quantized = x_flat + (quantized - x_flat).detach()

        # ── Step 3: Commitment loss ──
        commitment_loss = self.commitment_weight * F.mse_loss(
            x_flat.float(), quantized.detach().float()
        )

        # ── Step 4: EMA update ──
        with torch.no_grad():
            self._ema_update(x_flat, indices)

            # ── Step 5: Dead code reset ──
            self._dead_code_reset(x_flat)

        return quantized, indices, commitment_loss

    def _ema_update(self, x_flat: torch.Tensor, indices: torch.Tensor):
        """
        Exponential moving average codebook update.

        Args:
            x_flat: [N, D] input vectors
            indices: [N] codebook indices for each input vector
        """
        one_hot = F.one_hot(indices, num_classes=self.codebook_size).float()  # [N, codebook_size]
        n_assign = one_hot.sum(dim=0)  # [codebook_size]

        # EMA on cluster_size (how many inputs assigned to each code)
        self.cluster_size.mul_(self.decay).add_(n_assign * (1 - self.decay))

        # EMA on embed_avg: weighted sum of assigned inputs
        # embed_avg[c] = decay * embed_avg[c] + (1 - decay) * sum(x assigned to c)
        x_float = x_flat.float()
        for c in range(self.codebook_size):
            mask = indices == c
            count = mask.sum().item()
            if count > 0:
                assigned_sum = x_float[mask].sum(dim=0)
                self.embed_avg[c].mul_(self.decay).add_(assigned_sum * (1 - self.decay))

        # Normalize: embed = embed_avg / cluster_size (with epsilon)
        cluster_size_safe = self.cluster_size.clamp(min=1e-5)
        self.embed.copy_(self.embed_avg / cluster_size_safe.unsqueeze(1))

    def _dead_code_reset(self, x_flat: torch.Tensor):
        """
        Replace dead codebook entries (cluster_size < threshold) with
        random vectors from the current input batch.
        """
        dead_mask = self.cluster_size < self.threshold_ema_dead_code
        n_dead = dead_mask.sum().item()
        if n_dead == 0:
            return
        dead_indices = torch.where(dead_mask)[0]
        # Replace with random input vectors
        rand_idx = torch.randint(0, x_flat.shape[0], (n_dead,), device=x_flat.device)
        self.embed[dead_indices] = x_flat[rand_idx].detach()
        self.cluster_size[dead_indices] = 0.0
        self.embed_avg[dead_indices] = 0.0

    @torch.no_grad()
    def kmeans_init_codebook(self, x: torch.Tensor):
        """Initialize codebook via k-means on first batch."""
        x_flat = x.reshape(-1, self.codebook_dim).float()
        centroids = x_flat[torch.randperm(x_flat.shape[0])[:self.codebook_size]].clone()
        for _ in range(self.kmeans_iters):
            dist = torch.cdist(x_flat, centroids)
            assign = dist.argmin(dim=-1)
            for i in range(self.codebook_size):
                mask = assign == i
                if mask.sum() > 0:
                    centroids[i] = x_flat[mask].mean(dim=0)
        self.embed.copy_(centroids)

    @torch.no_grad()
    def get_codebook_utilization(self) -> float:
        """Fraction of codebook entries with any usage."""
        return (self.cluster_size > 0).float().mean().item()

    @torch.no_grad()
    def get_dead_code_count(self) -> int:
        """Number of codebook entries below EMA dead threshold."""
        return (self.cluster_size < self.threshold_ema_dead_code).sum().item()


# ─── Triton GPU Kernels ───
# Only defined when Triton is available

if _HAS_TRITON:

    @triton.jit
    def _triton_flash_vq_lookup_kernel(
        x_ptr, codebook_ptr, indices_ptr,
        stride_xb, stride_xd,
        stride_cb, stride_cd,
        N_CTX: tl.constexpr,
        CODEBOOK_SIZE: tl.constexpr,
        CODEBOOK_DIM: tl.constexpr,
        BLOCK_BT: tl.constexpr,
        TILE_K: tl.constexpr,
    ):
        """
        Tiled cosine similarity + argmax lookup for VQ codebook.

        Architecture:
            pid = batch tile index
            Load input tile [BLOCK_BT, CODEBOOK_DIM]
            Normalize in fp32
            Tile over codebook in TILE_K chunks:
                Load codebook tile [TILE_K, CODEBOOK_DIM]
                Normalize in fp32
                Compute dot product via tl.dot β†’ [BLOCK_BT, TILE_K]
                Update running argmax
            Store best indices

        SRAM: all arithmetic in fp32 with small tiles to fit 99KB budget.
        """
        pid = tl.program_id(0)
        offs_bt = pid * BLOCK_BT + tl.arange(0, BLOCK_BT)
        offs_d = tl.arange(0, CODEBOOK_DIM)

        # ── Load input tile ──
        x_ptrs = x_ptr + offs_bt[:, None] * stride_xb + offs_d[None, :] * stride_xd
        x = tl.load(x_ptrs, mask=offs_bt[:, None] < N_CTX, other=0.0)

        # ── Normalize input in fp32 (no keepdims in Triton tl.sum) ──
        x_f32 = x.to(tl.float32)
        x_sq = tl.sum(x_f32 * x_f32, axis=1)  # [BLOCK_BT]
        x_norm_f32 = x_f32 / tl.sqrt(x_sq[:, None] + 1e-8)

        # ── Running argmax over tiled codebook ──
        best_sim = tl.full([BLOCK_BT], -float('inf'), dtype=tl.float32)
        best_idx = tl.zeros([BLOCK_BT], dtype=tl.int32)

        for k_start in range(0, CODEBOOK_SIZE, TILE_K):
            offs_k = k_start + tl.arange(0, TILE_K)
            k_mask = offs_k < CODEBOOK_SIZE

            # Load codebook tile into fp32 directly for normalization
            cb_ptrs = (codebook_ptr
                       + offs_k[:, None] * stride_cb
                       + offs_d[None, :] * stride_cd)
            cb = tl.load(cb_ptrs, mask=k_mask[:, None], other=0.0)

            # Normalize codebook tile in fp32
            cb_f32 = cb.to(tl.float32)
            cb_sq = tl.sum(cb_f32 * cb_f32, axis=1)  # [TILE_K]
            cb_norm_f32 = cb_f32 / tl.sqrt(cb_sq[:, None] + 1e-8)

            # Cosine similarity via tl.dot (tf32 on sm_89)
            sim = tl.dot(x_norm_f32, tl.trans(cb_norm_f32))  # [BLOCK_BT, TILE_K]

            # Running argmax within this tile
            tile_max = tl.max(sim, axis=1)
            tile_argmax = tl.argmax(sim, axis=1)
            tile_idx = k_start + tile_argmax

            # Merge with best across tiles using element-wise mask
            update_mask = tile_max > best_sim
            best_sim = tl.where(update_mask, tile_max, best_sim)
            best_idx = tl.where(update_mask, tile_idx, best_idx)

        # ── Store results ──
        tl.store(indices_ptr + offs_bt, best_idx, mask=offs_bt < N_CTX)


    @triton.jit
    def _triton_flash_vq_quantize_kernel(
        codebook_ptr, indices_ptr, quantized_ptr,
        stride_cb, stride_cd,
        stride_qb, stride_qd,
        N_CTX: tl.constexpr,
        CODEBOOK_DIM: tl.constexpr,
        BLOCK_BT: tl.constexpr,
    ):
        """
        Gather quantized vectors from codebook at given indices.
        Kernel form of: quantized[i] = codebook[indices[i]]
        """
        pid = tl.program_id(0)
        offs_bt = pid * BLOCK_BT + tl.arange(0, BLOCK_BT)
        offs_d = tl.arange(0, CODEBOOK_DIM)

        # Load indices for this batch tile
        idx = tl.load(indices_ptr + offs_bt, mask=offs_bt < N_CTX, other=0)

        # Gather: for each i in BLOCK_BT, load codebook[idx[i], :]
        # Pointer arithmetic with broadcasting
        gather_ptrs = (codebook_ptr
                       + idx[:, None] * stride_cb
                       + offs_d[None, :] * stride_cd)
        quantized = tl.load(gather_ptrs,
                            mask=offs_bt[:, None] < N_CTX,
                            other=0.0)

        # Store quantized output
        out_ptrs = (quantized_ptr
                    + offs_bt[:, None] * stride_qb
                    + offs_d[None, :] * stride_qd)
        tl.store(out_ptrs, quantized, mask=offs_bt[:, None] < N_CTX)


    def _triton_lookup(x, embed, block_bt=None, tile_k=None):
        """
        Launch Triton VQ lookup kernel with SRAM-safe tile sizes.

        Args:
            x: [N, D] input tensor (cuda, contiguous)
            embed: [codebook_size, D] codebook (cuda, contiguous)
            block_bt: BLOCK_BT tile size (auto-computed if None)
            tile_k: TILE_K tile size (auto-computed if None)
        Returns:
            indices: [N] int64 tensor of argmax indices
        """
        N, D = x.shape
        codebook_size = embed.shape[0]
        assert embed.shape[1] == D, f"Codebook dim {embed.shape[1]} != input dim {D}"

        # SRAM-safe tile sizes: kernel uses tf32 (fp32 math), and Triton
        # pipelines data through shared memory. Conservative sizing ensures
        # fits within ~99KB (sm_89) even with default num_stages=3.
        #
        # fp32 codebook tile: TILE_K * D * 4  β†’  128*32*4 = 16KB
        # fp32 input tile:    BLOCK_BT * D * 4 β†’  8*32*4 = 1KB
        # Accumulator:        BLOCK_BT*TILE_K*4 β†’ 8*128*4 = 4KB
        # Per stage: ~21KB. With 3 pipeline stages: ~63KB (fits in 99KB).
        #
        # Larger tiles oversubscribe SRAM (tested: TILE_K=1024 β†’ 321KB needed).
        if block_bt is None or tile_k is None:
            BLOCK_BT = 8
            TILE_K = 128
        else:
            BLOCK_BT, TILE_K = block_bt, tile_k

        grid = (triton.cdiv(N, BLOCK_BT),)

        indices = torch.empty(N, dtype=torch.int32, device=x.device)

        _triton_flash_vq_lookup_kernel[grid](
            x, embed, indices,
            x.stride(0), x.stride(1),
            embed.stride(0), embed.stride(1),
            N, codebook_size, D,
            BLOCK_BT=BLOCK_BT, TILE_K=TILE_K,
        )

        return indices.long()


class _TritonFlashVQFn(torch.autograd.Function):
    """
    Custom autograd Function wrapping Triton VQ kernels.

    Forward: Triton tiled cosine similarity + argmax lookup
    Backward: Rotation trick gradient or straight-through estimator
    """

    @staticmethod
    def forward(ctx, x_flat, embed, cluster_size, embed_avg,
                codebook_size, codebook_dim,
                commitment_weight, rotation_trick):
        # Triton tiled lookup for indices
        with torch.no_grad():
            indices = _triton_lookup(x_flat.contiguous(), embed.contiguous())

        quantized = embed[indices]
        commitment_loss = commitment_weight * F.mse_loss(x_flat.float(), quantized.detach().float())

        # Clone saved tensors to avoid version conflicts with in-place EMA updates
        ctx.save_for_backward(
            x_flat.detach().clone(),
            quantized.detach().clone(),
            embed.detach().clone(),
        )
        ctx.codebook_dim = codebook_dim
        ctx.rotation_trick = rotation_trick

        return quantized, indices, commitment_loss

    @staticmethod
    def backward(ctx, grad_quantized, grad_indices, grad_commitment):
        x_flat, quantized, embed = ctx.saved_tensors

        if ctx.rotation_trick:
            # Rotation trick gradient
            x_norm = F.normalize(x_flat.float(), dim=-1)
            q_norm = F.normalize(quantized.float(), dim=-1)
            diff = x_norm - q_norm
            proj = (grad_quantized.float() * x_norm).sum(dim=-1, keepdim=True)
            grad_x = grad_quantized.float() - proj * diff
        else:
            # Straight-through estimator
            grad_x = grad_quantized.float()

        return grad_x.to(grad_quantized.dtype), None, None, None, None, None, None, None


# When Triton is not available, define a fallback lookup
if not _HAS_TRITON:

    def _triton_lookup(x, embed):
        """Fallback: torch-based cosine similarity lookup (CPU or CUDA without Triton)."""
        with torch.no_grad():
            x_norm = F.normalize(x.float(), dim=-1)
            embed_norm = F.normalize(embed.float(), dim=-1)
            sim = x_norm @ embed_norm.T
            indices = sim.argmax(dim=-1)
        return indices