- gather_compressed_kv: CSA top-k gather via existing gather_kv.cu - gather_all_compressed_kv: HCA dense gather via new gather_all_compressed_kernel - gather_swa_kv: SWA ring buffer gather via new gather_swa_kernel - Added gather_swa.cu with both SWA + all-compressed gather kernels - Added gather.py Python wrapper (torch.utils.cpp_extension JIT) - Updated handle.py: added schema field, num_query_heads/head_dim properties - Updated manager.py: passes schema + num_query_heads to handle All gather kernels: FP8→BF16 dequant + BF16 RoPE concat in single launch. Output: dense BF16 tensors ready for FMHA consumption.
287 lines
10 KiB
Python
287 lines
10 KiB
Python
"""LayerCacheHandle — typed per-call view onto one layer's cache.
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Constructed by KVCacheManager.acquire() once per layer per forward.
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Holds tensor references and integer indices; no allocation. Methods
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expose the operations AttentionSubBlock needs without exposing the
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underlying storage layout.
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"""
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from __future__ import annotations
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from dataclasses import dataclass
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from typing import Optional, TYPE_CHECKING
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import torch
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if TYPE_CHECKING:
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from dsv4.cache.paged_cache import PagedKVPool
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from dsv4.cache.state_cache import StateCachePool
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from dsv4.cache.schema import LayerCacheSchema
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@dataclass
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class LayerCacheHandle:
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"""Read/write interface for one layer's cache.
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The fields are the resolved indices and tensor refs for THIS call's
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batch of requests. AttentionSubBlock never sees raw pool tensors.
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"""
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# Pool references (shared across handles — never mutated).
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paged: Optional["PagedKVPool"]
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state: "StateCachePool"
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schema: "LayerCacheSchema"
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# Per-call indices.
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request_slots: torch.Tensor # [batch] int32 — state cache slot per request
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positions: torch.Tensor # [tokens] int32 — absolute position per token
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request_ids: torch.Tensor # [tokens] int32 — which request each token belongs to
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# Block table for the classical pool (None for SWA-only layers).
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# Shape: [batch, max_logical_blocks] int32. -1 padding for unused entries.
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block_table: Optional[torch.Tensor]
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# Number of valid blocks per request (excludes padding).
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block_lens: Optional[torch.Tensor]
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# ------------------------------------------------------------------
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# Properties called by AttentionSubBlock
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# ------------------------------------------------------------------
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@property
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def num_query_heads(self) -> int:
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"""Number of query heads (from schema)."""
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# The schema doesn't store n_q directly — derive from the config.
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# For now, store on the handle at construction.
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return self._num_query_heads
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@num_query_heads.setter
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def num_query_heads(self, value: int):
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self._num_query_heads = value
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@property
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def head_dim(self) -> int:
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"""Head dimension (from schema)."""
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return self.schema.entry_head_dim
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# ------------------------------------------------------------------
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# Methods called by AttentionSubBlock
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# ------------------------------------------------------------------
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def write_swa(
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self,
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raw_kv: torch.Tensor, # (T, head_dim) BF16
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) -> None:
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"""Write raw KV into the SWA ring buffer AND tail compression buffer.
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Both regions get the same tokens — SWA consumes the last n_win,
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the tail accumulates until it can flush.
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"""
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from dsv4.kernels.cache.append_swa import append_swa_kernel
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append_swa_kernel(
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raw_kv=raw_kv,
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request_slots=self.request_slots,
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positions=self.positions,
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swa_fp8=self.state.swa_fp8,
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swa_rope=self.state.swa_rope,
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swa_inv=self.state.swa_inv,
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swa_pos=self.state.swa_pos,
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swa_head=self.state.swa_head,
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rope_dim=self.schema.rope_dim,
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)
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def flush_compression(
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self,
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compressed: torch.Tensor, # (T_flush, head_dim) BF16 — newly produced
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indexer_keys: Optional[torch.Tensor] = None,
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) -> None:
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"""Promote pending tail tokens into the classical pool.
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Called by the compressor when the tail buffer has enough tokens.
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Allocates a new block if the latest block is full.
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Block allocation requires going outside the captured graph — in
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a fully-captured decode this is rare (once per m or m' tokens),
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so we make it explicit. The manager has the contract.
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"""
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raise NotImplementedError("see kernels/cache/flush_compression.py")
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def gather_compressed_kv(
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self,
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selected_indices: torch.Tensor, # (T, top_k) int64 — from indexer
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) -> tuple[torch.Tensor, torch.Tensor]:
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"""CSA: gather top-k compressed KV entries into dense BF16 tensors.
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Returns:
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(k_compressed, v_compressed) each of shape (1, n_comp, head_dim) BF16.
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The leading dim=1 is for the single KV head (MQA in DSV4).
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"""
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assert self.paged is not None, "CSA gather requires paged pool"
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from dsv4.kernels.cache.gather import gather_compressed_kv
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hd = self.head_dim
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rd = self.schema.rope_dim
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epb = self.schema.entries_per_block
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# selected_indices is int64, gather kernel needs int32
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indices_i32 = selected_indices.to(torch.int32)
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# block_table for CSA: [batch, max_logical_blocks]
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# For per-request gather, use the first request's block_table
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# (decode: batch=1, so this is trivial)
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if self.block_table.dim() == 1:
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bt = self.block_table.unsqueeze(0)
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else:
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bt = self.block_table
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k_out = gather_compressed_kv(
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entries_fp8=self.paged.entries_fp8,
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entries_rope=self.paged.entries_rope,
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inv_scale=self.paged.inv_scale,
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topk_indices=indices_i32,
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block_table=bt,
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entries_per_block=epb,
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head_dim=hd,
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rope_dim=rd,
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)
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# k_out: (T, top_k, hd) — for FMHA we need (1, n_comp, hd)
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# At decode T=1: squeeze to (top_k, hd) then unsqueeze for KV head dim
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n_comp = k_out.shape[1]
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k_compressed = k_out.squeeze(0).unsqueeze(0) # (1, n_comp, hd)
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# V shares the same storage but is transposed — DSV4 uses K=V for
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# the compressed KV (same entries, different projection weights applied
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# before compression). For now, return the same gathered tensor.
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# TODO: verify if K and V are stored separately or shared.
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v_compressed = k_compressed.clone()
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return k_compressed, v_compressed
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def gather_all_compressed_kv(self) -> tuple[torch.Tensor, torch.Tensor]:
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"""HCA: gather ALL compressed KV entries into dense BF16 tensors.
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No indexer — dense attention over the short compressed sequence.
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Returns:
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(k_compressed, v_compressed) each of shape (1, n_comp, head_dim) BF16.
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"""
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assert self.paged is not None, "HCA gather requires paged pool"
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from dsv4.kernels.cache.gather import gather_all_compressed_kv
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hd = self.head_dim
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rd = self.schema.rope_dim
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epb = self.schema.entries_per_block
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if self.block_table.dim() == 1:
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bt = self.block_table.unsqueeze(0)
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bl = self.block_lens.unsqueeze(0) if self.block_lens is not None else None
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else:
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bt = self.block_table
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bl = self.block_lens
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if bl is None:
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# Default: all blocks valid
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bl = torch.full((bt.shape[0],), bt.shape[1], dtype=torch.int32, device=bt.device)
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k_out = gather_all_compressed_kv(
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entries_fp8=self.paged.entries_fp8,
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entries_rope=self.paged.entries_rope,
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inv_scale=self.paged.inv_scale,
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block_table=bt,
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block_lens=bl,
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entries_per_block=epb,
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head_dim=hd,
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rope_dim=rd,
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)
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# k_out: (batch, total_entries, hd) — for FMHA we need (1, n_comp, hd)
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n_comp = k_out.shape[1]
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k_compressed = k_out.squeeze(0).unsqueeze(0) # (1, n_comp, hd)
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v_compressed = k_compressed.clone()
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return k_compressed, v_compressed
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def gather_swa_kv(self) -> tuple[torch.Tensor, torch.Tensor]:
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"""Gather SWA window entries into dense BF16 tensors.
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Returns:
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(k_swa, v_swa) each of shape (1, swa_len, head_dim) BF16.
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"""
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from dsv4.kernels.cache.gather import gather_swa_kv
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hd = self.head_dim
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rd = self.schema.rope_dim
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k_out = gather_swa_kv(
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swa_fp8=self.state.swa_fp8,
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swa_rope=self.state.swa_rope,
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swa_inv=self.state.swa_inv,
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swa_pos=self.state.swa_pos,
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request_slots=self.request_slots,
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head_dim=hd,
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rope_dim=rd,
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)
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# k_out: (batch, n_win, hd) — for FMHA we need (1, swa_len, hd)
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k_swa = k_out.squeeze(0).unsqueeze(0) # (1, swa_len, hd)
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v_swa = k_swa.clone()
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return k_swa, v_swa
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def read_swa_view(self) -> "SWAView":
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"""Return a typed view of the SWA window for this batch."""
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return SWAView(
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fp8=self.state.swa_fp8,
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rope=self.state.swa_rope,
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inv_scale=self.state.swa_inv,
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positions=self.state.swa_pos,
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head=self.state.swa_head,
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slots=self.request_slots,
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)
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def read_classical_view(self) -> "ClassicalView":
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"""Return a typed view of compressed entries for this batch."""
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assert self.paged is not None, "SWA-only layers have no classical cache"
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return ClassicalView(
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entries_fp8=self.paged.entries_fp8,
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entries_rope=self.paged.entries_rope,
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inv_scale=self.paged.inv_scale,
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block_table=self.block_table,
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block_lens=self.block_lens,
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)
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def read_indexer_view(self) -> "IndexerView":
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"""CSA-only. Returns FP4 indexer keys with their scales."""
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assert self.paged is not None and self.paged.indexer_keys_fp4 is not None
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return IndexerView(
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keys_fp4=self.paged.indexer_keys_fp4,
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scale=self.paged.indexer_scale,
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global_scale=self.paged.indexer_global_scale,
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block_table=self.block_table,
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block_lens=self.block_lens,
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)
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def __post_init__(self):
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# Initialize _num_query_heads (must be set by the manager at construction)
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if not hasattr(self, '_num_query_heads'):
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self._num_query_heads = 0
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# Typed views — simple dataclasses, no logic. The FMHA / indexer / SWA
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# kernels accept these to keep their signatures clean.
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@dataclass
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class SWAView:
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fp8: torch.Tensor
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rope: torch.Tensor
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inv_scale: torch.Tensor
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positions: torch.Tensor
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head: torch.Tensor
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slots: torch.Tensor
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@dataclass
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class ClassicalView:
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entries_fp8: torch.Tensor
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entries_rope: torch.Tensor
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inv_scale: torch.Tensor
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block_table: torch.Tensor
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block_lens: torch.Tensor
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@dataclass
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class IndexerView:
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keys_fp4: torch.Tensor
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scale: torch.Tensor
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global_scale: torch.Tensor
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block_table: torch.Tensor
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block_lens: torch.Tensor
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