136 lines
4.2 KiB
Python
136 lines
4.2 KiB
Python
"""Page-based KV cache with page-table-indirected read/write.
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Provides:
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- PagedCache: paged KV cache combining page pool and tensor storage.
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"""
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from typing import List, Tuple
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import torch
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from torch import Tensor
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STOP = object()
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class PagedCache:
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"""Paged KV cache with page-table-indirected read/write.
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Combines:
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- Page pool (ref-counted alloc/free via bitmask)
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- KV tensor storage (k_cache, v_cache)
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Call :meth:`bind` to obtain a batch view for the attention layers.
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"""
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def __init__(
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self,
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n_layers: int,
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n_pages: int,
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page_size: int,
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n_kv_heads: int,
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head_dim: int,
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device: torch.device,
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dtype: torch.dtype,
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):
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self.page_size = page_size
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self._free_mask = (1 << n_pages) - 1
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self._refs: List[int] = [0] * n_pages
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self.k_cache = torch.empty(
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(n_layers, n_pages, page_size, n_kv_heads, head_dim),
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device=device,
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dtype=dtype,
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)
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self.v_cache = torch.empty(
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(n_layers, n_pages, page_size, n_kv_heads, head_dim),
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device=device,
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dtype=dtype,
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)
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def alloc(self) -> int:
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lsb = self._free_mask & -self._free_mask
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if lsb == 0:
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return -1
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idx = lsb.bit_length() - 1
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self._free_mask ^= lsb
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self._refs[idx] = 1
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return idx
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def alloc_n(self, n: int) -> List[int]:
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pages = [self.alloc() for _ in range(n)]
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if any(p < 0 for p in pages):
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for p in pages:
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if p >= 0:
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self.free(p)
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return []
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return pages
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def free(self, idx: int) -> None:
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self._refs[idx] -= 1
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if self._refs[idx] == 0:
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self._free_mask |= 1 << idx
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def bind(self, page_table: Tensor, total_len: int = 0) -> "CacheView":
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return CacheView(self, page_table, total_len)
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def write(
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self, layer_id: int, page_table: Tensor, start_pos: int, k: Tensor, v: Tensor
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) -> None:
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seq_len = k.size(1)
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if seq_len == 0:
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return
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page_size = self.page_size
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written = 0
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first_page = start_pos // page_size
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last_page = (start_pos + seq_len - 1) // page_size
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for pi in range(first_page, last_page + 1):
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phys_pages = page_table[:, pi]
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page_start = pi * page_size
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write_start = max(page_start, start_pos)
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write_end = min(page_start + page_size, start_pos + seq_len)
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offset = write_start - page_start
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chunk = write_end - write_start
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self.k_cache[layer_id, phys_pages, offset : offset + chunk] = k[
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:, written : written + chunk
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]
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self.v_cache[layer_id, phys_pages, offset : offset + chunk] = v[
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:, written : written + chunk
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]
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written += chunk
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def gather(self, layer_id: int, page_table: Tensor) -> Tuple[Tensor, Tensor]:
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k_parts, v_parts = [], []
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for pi in range(page_table.size(1)):
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phys_pages = page_table[:, pi]
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if not (phys_pages >= 0).any():
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break
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k_parts.append(self.k_cache[layer_id, phys_pages])
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v_parts.append(self.v_cache[layer_id, phys_pages])
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k = torch.cat(k_parts, dim=1)
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v = torch.cat(v_parts, dim=1)
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return k, v
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class CacheView:
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"""Per-batch view that bundles PagedCache + page_table + total_len.
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Attention layers receive this as ``paged_cache`` and only see
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``write()`` / ``gather()``, never raw page tables or length params.
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"""
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__slots__ = ("_cache", "_page_table", "_total_len")
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def __init__(self, cache: PagedCache, page_table: Tensor, total_len: int = 0):
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self._cache = cache
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self._page_table = page_table
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self._total_len = total_len
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def write(self, layer_id: int, start_pos: int, k: Tensor, v: Tensor) -> None:
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self._cache.write(layer_id, self._page_table, start_pos, k, v)
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def gather(self, layer_id: int) -> Tuple[Tensor, Tensor]:
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k, v = self._cache.gather(layer_id, self._page_table)
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if self._total_len:
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k = k[:, : self._total_len]
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v = v[:, : self._total_len]
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return k, v
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