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692 lines
25 KiB
Python
692 lines
25 KiB
Python
from __future__ import annotations
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import logging
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from typing import TYPE_CHECKING, Optional
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import numpy as np
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import torch
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from sglang.kernels.ops.memory.common import (
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_get_last_loc_safe_kernel as _get_last_loc_safe_kernel,
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)
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from sglang.kernels.ops.memory.common import get_last_loc_kernel as get_last_loc_kernel
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from sglang.kernels.ops.memory.common import (
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get_last_loc_triton,
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get_last_loc_triton_safe,
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write_req_to_token_pool_triton,
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)
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from sglang.srt.hardware_backend.npu.dsv4.dsv4_common_hooks import (
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maybe_evict_dsv4_state_on_swa,
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maybe_write_dsv4_decode,
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maybe_write_dsv4_extend,
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)
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from sglang.srt.mem_cache.allocator.swa import SWATokenToKVPoolAllocator
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from sglang.srt.mem_cache.base_prefix_cache import BasePrefixCache, EvictParams
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from sglang.srt.mem_cache.memory_pool import HybridReqToTokenPool, ReqToTokenPool
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from sglang.srt.runtime_context import get_server_args
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from sglang.srt.server_args import ServerArgs
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from sglang.srt.utils import is_cuda, is_hip, is_npu, support_triton
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from sglang.srt.utils.common import ceil_align, is_pin_memory_available
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_is_npu = is_npu()
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_is_hip = is_hip()
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_is_cuda = is_cuda()
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if TYPE_CHECKING:
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from sglang.srt.managers.schedule_batch import Req, ScheduleBatch
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from sglang.srt.mem_cache.allocator import BaseTokenToKVPoolAllocator
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from sglang.srt.model_executor.forward_batch_info import DSV4StateLens
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# Needs 2 + 1 slots for mamba request with prefix cache. 2 for ping pong cache, 1 for running mamba state.
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MAMBA_STATE_PER_REQ_PREFIX_CACHE = 3
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# Lazy mode: 1 + 1 slots (1 ping-pong + 1 running), second ping-pong allocated on demand at boundary.
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MAMBA_STATE_PER_REQ_PREFIX_CACHE_LAZY = 2
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MAMBA_STATE_PER_REQ_NO_CACHE = 1
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logger = logging.getLogger(__name__)
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def kv_to_page_indices(kv_indices: np.ndarray, page_size: int):
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# The page is guaranteed to be full except the last page.
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if page_size == 1:
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return kv_indices
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return kv_indices[::page_size] // page_size
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def kv_to_page_num(num_kv_indices: int, page_size: int):
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return (num_kv_indices + page_size - 1) // page_size
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def page_align_floor(length: int, page_size: int) -> int:
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return (length // page_size) * page_size
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def free_swa_out_of_window_slots(
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req: Req,
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pre_len: int,
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*,
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sliding_window_size: int,
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page_size: int,
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req_to_token_pool: ReqToTokenPool,
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token_to_kv_pool_allocator: BaseTokenToKVPoolAllocator,
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is_chunk_cache: bool = False,
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) -> None:
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# For swa radix cache, we need to evict the tokens that are not in the tree cache and also not in the sliding window
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assert (
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req.cache_protected_len % page_size == 0
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), "cache_protected_len must be page aligned"
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evict_floor = max(req.cache_protected_len, getattr(req, "swa_evict_floor", 0))
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if page_size > 1 and evict_floor > req.cache_protected_len:
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evict_floor = -(-evict_floor // page_size) * page_size
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req.swa_evicted_seqlen = max(req.swa_evicted_seqlen, evict_floor)
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if is_chunk_cache:
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# Chunk cache builds no radix tree, so no tombstone-leaf concern; evict
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# up to the window boundary (the trailing floor keeps it page-aligned).
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evict_threshold = pre_len - sliding_window_size
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else:
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# Radix cache: keep max(window, page). The trailing floor page-aligns the
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# frontier, and subtracting at least one page keeps it below the insert
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# boundary (page_floor(seq_len)) so the last leaf is never all-tombstone.
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# No extra page margin is needed.
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evict_threshold = pre_len - max(sliding_window_size, page_size)
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new_swa_evicted_seqlen = max(
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req.swa_evicted_seqlen,
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evict_threshold,
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)
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if page_size > 1:
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new_swa_evicted_seqlen = (new_swa_evicted_seqlen // page_size) * page_size
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if new_swa_evicted_seqlen > req.swa_evicted_seqlen:
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free_slots = req_to_token_pool.req_to_token[
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req.req_pool_idx, req.swa_evicted_seqlen : new_swa_evicted_seqlen
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]
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token_to_kv_pool_allocator.free_swa(free_slots)
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maybe_evict_dsv4_state_on_swa(
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token_to_kv_pool_allocator, req_to_token_pool, req, new_swa_evicted_seqlen
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)
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req.swa_evicted_seqlen = new_swa_evicted_seqlen
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def maybe_cache_unfinished_req(req: Req, tree_cache: BasePrefixCache, **kwargs):
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if getattr(req, "skip_radix_cache_insert", False):
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return
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tree_cache.cache_unfinished_req(req, **kwargs)
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def write_cache_indices(
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out_cache_loc: torch.Tensor,
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req_pool_indices_tensor: torch.Tensor,
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req_pool_indices_cpu: torch.Tensor,
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prefix_lens_tensor: torch.Tensor,
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prefix_lens_cpu: torch.Tensor,
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seq_lens_tensor: torch.Tensor,
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seq_lens_cpu: torch.Tensor,
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extend_lens_tensor: torch.Tensor,
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extend_lens_cpu: torch.Tensor,
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prefix_tensors: list[torch.Tensor],
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req_to_token_pool: ReqToTokenPool,
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):
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if support_triton(get_server_args().attention_backend):
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prefix_pointers = torch.tensor(
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[t.data_ptr() for t in prefix_tensors],
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dtype=torch.uint64,
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pin_memory=is_pin_memory_available(req_to_token_pool.device),
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).to(req_to_token_pool.device, non_blocking=True)
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# TODO: some tensors can be reused for ForwardBatchInfo (e.g., extend_lens, cumsum_start)
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write_req_to_token_pool_triton[(req_pool_indices_tensor.shape[0],)](
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req_to_token_pool.req_to_token,
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req_pool_indices_tensor,
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prefix_pointers,
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prefix_lens_tensor,
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seq_lens_tensor,
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extend_lens_tensor,
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out_cache_loc,
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req_to_token_pool.req_to_token.shape[1],
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)
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else:
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pt = 0
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for i in range(req_pool_indices_cpu.shape[0]):
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req_idx = req_pool_indices_cpu[i].item()
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prefix_len = prefix_lens_cpu[i].item()
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seq_len = seq_lens_cpu[i].item()
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extend_len = extend_lens_cpu[i].item()
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req_to_token_pool.write(
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(req_idx, slice(0, prefix_len)),
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prefix_tensors[i],
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)
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req_to_token_pool.write(
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(req_idx, slice(prefix_len, seq_len)),
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out_cache_loc[pt : pt + extend_len],
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)
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pt += extend_len
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def get_last_loc(
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req_to_token: torch.Tensor,
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req_pool_indices_tensor: torch.Tensor,
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prefix_lens_tensor: torch.Tensor,
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) -> torch.Tensor:
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attn_backend = get_server_args().attention_backend
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uses_triton_dispatch = attn_backend not in ("ascend", "torch_native")
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if _is_hip and uses_triton_dispatch:
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# HIP-only: the legacy get_last_loc_triton kernel emits a
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# mixed-width int32->int64 store that Triton mis-compiles on HIP,
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# producing out-of-range last_loc values under EAGLE +
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# page_size>1 (e.g. with aiter unified attention or the triton
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# attention backend). The bug is in the Triton HIP codegen, not
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# in any particular attention backend, so route every HIP path
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# that would otherwise use get_last_loc_triton through the
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# int32-safe variant. Non-HIP hardware keeps the original
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# dispatcher below.
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return get_last_loc_triton_safe(
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req_to_token, req_pool_indices_tensor, prefix_lens_tensor
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)
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if uses_triton_dispatch:
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impl = get_last_loc_triton
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else:
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impl = get_last_loc_torch
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return impl(req_to_token, req_pool_indices_tensor, prefix_lens_tensor)
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def get_last_loc_torch(
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req_to_token: torch.Tensor,
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req_pool_indices_tensor: torch.Tensor,
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prefix_lens_tensor: torch.Tensor,
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) -> torch.Tensor:
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return torch.where(
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prefix_lens_tensor > 0,
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req_to_token[req_pool_indices_tensor, prefix_lens_tensor - 1],
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torch.full_like(prefix_lens_tensor, -1),
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)
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def get_alloc_len_per_decode(server_args: Optional[ServerArgs] = None) -> int:
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if server_args is None:
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server_args = get_server_args()
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if server_args.speculative_algorithm is None:
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return 1
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# Spec decoding allocates max(topk * num_steps, num_draft_tokens) per decode step.
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spec_steps = server_args.speculative_num_steps or 1
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spec_topk = server_args.speculative_eagle_topk or 1
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spec_tokens = server_args.max_speculative_num_draft_tokens
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page_size = server_args.page_size
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from sglang.srt.speculative.spec_info import SpeculativeAlgorithm
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spec_algo = SpeculativeAlgorithm.from_string(server_args.speculative_algorithm)
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if page_size == 1 or spec_topk == 1 or not spec_algo.has_draft_kv():
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return max(spec_steps * spec_topk, spec_tokens)
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else:
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# spec v2 tree (page>1, topk>1): worst-case page-aligned footprint per
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# topk branch is ceil((page_size-1 + num_steps) / page) pages, each branch
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# duplicated -- reserve for all topk branches.
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num_new_pages_per_topk = (
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(page_size - 1) + spec_steps + page_size - 1
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) // page_size
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return max(num_new_pages_per_topk * page_size * spec_topk, spec_tokens)
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def get_alloc_reserve_per_decode(server_args: Optional[ServerArgs] = None) -> int:
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"""KV length reserved per request at each decode step.
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The 2x is a double-buffer that absorbs the kv_committed_len lag in overlap
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mode; see eagle_utils.eagle_prepare_for_decode.
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"""
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return 2 * get_alloc_len_per_decode(server_args)
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def get_req_to_token_extra_context_len(server_args: ServerArgs) -> int:
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"""req_to_token row headroom beyond the model context length.
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Sized to hold the decode over-allocation; the spec v2 page>1 topk>1 holey
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draft footprint can outgrow the default num_draft_tokens headroom.
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"""
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# FIXME(lsyin): temporary fix for the context length issue under spec decoding
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extra = 4 + (server_args.max_speculative_num_draft_tokens or 0)
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if (
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server_args.speculative_algorithm is not None
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and server_args.page_size > 1
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and (server_args.speculative_eagle_topk or 1) > 1
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):
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extra = max(extra, get_alloc_reserve_per_decode(server_args))
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return extra
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def alloc_token_slots(
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tree_cache: BasePrefixCache,
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num_tokens: int,
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backup_state: bool = False,
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):
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allocator = tree_cache.token_to_kv_pool_allocator
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evict_from_tree_cache(tree_cache, num_tokens)
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state = None
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if backup_state:
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state = allocator.backup_state()
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out_cache_loc = allocator.alloc(num_tokens)
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if out_cache_loc is None:
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error_msg = (
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f"Out of memory. Try to lower your batch size.\n"
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f"Try to allocate {num_tokens} tokens.\n"
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f"{available_and_evictable_str(tree_cache)}"
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)
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logger.error(error_msg)
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if tree_cache is not None:
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tree_cache.pretty_print()
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raise RuntimeError(error_msg)
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return (out_cache_loc, state) if backup_state else out_cache_loc
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def evict_from_tree_cache(tree_cache: BasePrefixCache | None, num_tokens: int):
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if tree_cache is None:
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return
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if tree_cache.is_chunk_cache():
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return
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allocator = tree_cache.token_to_kv_pool_allocator
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if isinstance(allocator, SWATokenToKVPoolAllocator):
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# Hybrid allocator
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full_available_size = allocator.full_available_size()
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swa_available_size = allocator.swa_available_size()
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if full_available_size < num_tokens or swa_available_size < num_tokens:
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full_num_tokens = max(0, num_tokens - full_available_size)
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swa_num_tokens = max(0, num_tokens - swa_available_size)
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tree_cache.evict(
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EvictParams(num_tokens=full_num_tokens, swa_num_tokens=swa_num_tokens)
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)
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else:
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# Standard allocator
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if allocator.available_size() < num_tokens:
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tree_cache.evict(EvictParams(num_tokens=num_tokens))
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def _compute_dsv4_state_lens(batch, *, is_decode: bool):
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"""Per-req c{4,128}_state pool alloc lens (``DSV4StateLens``) for this step.
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None on CUDA / non-V4 paths (allocator has no ``compute_dsv4_state_lens_*``).
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"""
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allocator = batch.token_to_kv_pool_allocator
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if not hasattr(allocator, "compute_dsv4_state_lens_extend"):
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return None
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if is_decode:
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return allocator.compute_dsv4_state_lens_decode(batch.reqs)
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return allocator.compute_dsv4_state_lens_extend(
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batch.reqs, batch.seq_lens_cpu.tolist()
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)
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def alloc_paged_token_slots_extend(
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tree_cache: BasePrefixCache,
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prefix_lens: torch.Tensor,
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prefix_lens_cpu: torch.Tensor,
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seq_lens: torch.Tensor,
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seq_lens_cpu: torch.Tensor,
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last_loc: torch.Tensor,
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extend_num_tokens: int,
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backup_state: bool = False,
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req_pool_indices: Optional[torch.Tensor] = None,
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|
dsv4_state_lens: Optional[DSV4StateLens] = None,
|
|
batch=None,
|
|
):
|
|
# Over estimate the number of tokens: assume each request needs a new page.
|
|
allocator = tree_cache.token_to_kv_pool_allocator
|
|
num_tokens = extend_num_tokens + len(seq_lens_cpu) * allocator.page_size
|
|
evict_from_tree_cache(tree_cache, num_tokens)
|
|
|
|
state = None
|
|
if backup_state:
|
|
state = allocator.backup_state()
|
|
|
|
is_dsv4 = req_pool_indices is not None and hasattr(allocator, "c4_attn_allocator")
|
|
extra_alloc_kwargs = {}
|
|
if is_dsv4:
|
|
extra_alloc_kwargs["req_pool_indices"] = req_pool_indices
|
|
# Per-call per-req tables for the c-pool / state last_loc lookup.
|
|
if batch is not None:
|
|
extra_alloc_kwargs["req_to_token_pool"] = batch.req_to_token_pool
|
|
if dsv4_state_lens is not None:
|
|
extra_alloc_kwargs["dsv4_state_lens"] = dsv4_state_lens
|
|
|
|
out = allocator.alloc_extend(
|
|
prefix_lens,
|
|
prefix_lens_cpu,
|
|
seq_lens,
|
|
seq_lens_cpu,
|
|
last_loc,
|
|
extend_num_tokens,
|
|
**extra_alloc_kwargs,
|
|
)
|
|
|
|
if is_dsv4:
|
|
bundle = out
|
|
out_cache_loc = None if bundle is None else bundle.out_full_loc
|
|
if batch is not None:
|
|
batch.out_cache_loc_dsv4 = bundle
|
|
else:
|
|
out_cache_loc = out
|
|
|
|
if out_cache_loc is None:
|
|
error_msg = (
|
|
f"Prefill out of memory. Try to lower your batch size.\n"
|
|
f"Try to allocate {extend_num_tokens} tokens.\n"
|
|
f"{available_and_evictable_str(tree_cache)}"
|
|
)
|
|
logger.error(error_msg)
|
|
if tree_cache is not None:
|
|
tree_cache.pretty_print()
|
|
raise RuntimeError(error_msg)
|
|
|
|
return (out_cache_loc, state) if backup_state else out_cache_loc
|
|
|
|
|
|
def alloc_req_slots(
|
|
req_to_token_pool: ReqToTokenPool,
|
|
reqs: list[Req],
|
|
tree_cache: BasePrefixCache | None,
|
|
) -> list[int]:
|
|
"""Allocate request slots from the pool.
|
|
|
|
Fail-loud: raises ``RuntimeError`` if the pool can't satisfy the batch. An
|
|
alloc failure here means the admission budget (``PrefillAdder``) was wrong
|
|
and should surface rather than be masked.
|
|
"""
|
|
num_reqs = len(reqs)
|
|
if isinstance(req_to_token_pool, HybridReqToTokenPool):
|
|
# Byte-coordinated for the shared allocator (accounts for the peer full
|
|
# sub-pool's bytes); plain slot free count for the non-shared one.
|
|
mamba_available_size = (
|
|
req_to_token_pool.mamba_allocator.schedulable_available_size()
|
|
)
|
|
# Eviction headroom factor: 3x (or lazy variant) for radix COW, 1x for chunk.
|
|
if tree_cache.supports_mamba():
|
|
factor = (
|
|
MAMBA_STATE_PER_REQ_PREFIX_CACHE_LAZY
|
|
if req_to_token_pool.enable_mamba_extra_buffer_lazy
|
|
else MAMBA_STATE_PER_REQ_PREFIX_CACHE
|
|
)
|
|
else:
|
|
factor = MAMBA_STATE_PER_REQ_NO_CACHE
|
|
mamba_state_needed = num_reqs * factor
|
|
if mamba_available_size < mamba_state_needed:
|
|
if tree_cache is not None and tree_cache.supports_mamba():
|
|
mamba_num = max(0, mamba_state_needed - mamba_available_size)
|
|
tree_cache.evict(EvictParams(num_tokens=0, mamba_num=mamba_num))
|
|
req_pool_indices = req_to_token_pool.alloc(reqs)
|
|
if req_pool_indices is None:
|
|
raise RuntimeError(
|
|
"alloc_req_slots runs out of memory. "
|
|
"Please set a smaller number for `--max-running-requests`. "
|
|
f"{req_to_token_pool.available_size()=}, {num_reqs=}, "
|
|
)
|
|
return req_pool_indices
|
|
|
|
|
|
def _alloc_page_size(batch: ScheduleBatch) -> int:
|
|
# DCP swaps in an allocator whose page_size is server_args.page_size *
|
|
# dcp_size, so it can be > 1 even when tree_cache.page_size is 1; branch on
|
|
# the real allocator's page_size there. Elsewhere the two are equal.
|
|
if (_is_hip or _is_cuda) and get_server_args().dcp_size > 1:
|
|
return batch.tree_cache.token_to_kv_pool_allocator.page_size
|
|
return batch.tree_cache.page_size
|
|
|
|
|
|
def alloc_for_extend(
|
|
batch: ScheduleBatch,
|
|
) -> tuple[torch.Tensor, torch.Tensor, torch.Tensor]:
|
|
"""
|
|
Allocate KV cache for extend batch and write to req_to_token_pool.
|
|
|
|
Returns ``(out_cache_loc, req_pool_indices_device, req_pool_indices_cpu)``
|
|
(the last is the host/CPU mirror). ``alloc_req_slots`` raises ``RuntimeError``
|
|
if the pool can't satisfy the batch (fail-loud — see its docstring).
|
|
"""
|
|
# free out-of-window swa tokens
|
|
batch.maybe_evict_swa()
|
|
|
|
prefix_tensors = [r.prefix_indices for r in batch.reqs]
|
|
|
|
# Create tensors for allocation
|
|
prefix_lens_cpu = torch.tensor(batch.prefix_lens, dtype=torch.int64)
|
|
extend_lens_cpu = torch.tensor(batch.extend_lens, dtype=torch.int64)
|
|
prefix_lens_device = prefix_lens_cpu.to(batch.device, non_blocking=True)
|
|
extend_lens_device = extend_lens_cpu.to(batch.device, non_blocking=True)
|
|
|
|
# Allocate req slots (raises RuntimeError if the pool is exhausted)
|
|
req_pool_indices = alloc_req_slots(
|
|
batch.req_to_token_pool, batch.reqs, batch.tree_cache
|
|
)
|
|
req_pool_indices_cpu = torch.tensor(req_pool_indices, dtype=torch.int64)
|
|
req_pool_indices_device = req_pool_indices_cpu.to(batch.device, non_blocking=True)
|
|
|
|
# Allocate KV cache (throws exception on failure)
|
|
if _alloc_page_size(batch) == 1:
|
|
out_cache_loc = alloc_token_slots(batch.tree_cache, batch.extend_num_tokens)
|
|
else:
|
|
# Paged allocation - build last_loc
|
|
last_loc = [
|
|
(t[-1:] if len(t) > 0 else torch.tensor([-1], device=batch.device))
|
|
for t in prefix_tensors
|
|
]
|
|
out_cache_loc = alloc_paged_token_slots_extend(
|
|
tree_cache=batch.tree_cache,
|
|
prefix_lens=prefix_lens_device,
|
|
prefix_lens_cpu=prefix_lens_cpu,
|
|
seq_lens=batch.seq_lens,
|
|
seq_lens_cpu=batch.seq_lens_cpu,
|
|
last_loc=torch.cat(last_loc),
|
|
extend_num_tokens=batch.extend_num_tokens,
|
|
req_pool_indices=req_pool_indices_device,
|
|
dsv4_state_lens=_compute_dsv4_state_lens(batch, is_decode=False),
|
|
batch=batch,
|
|
)
|
|
|
|
# Write to req_to_token_pool
|
|
write_cache_indices(
|
|
out_cache_loc,
|
|
req_pool_indices_device,
|
|
req_pool_indices_cpu,
|
|
prefix_lens_device,
|
|
prefix_lens_cpu,
|
|
batch.seq_lens,
|
|
batch.seq_lens_cpu,
|
|
extend_lens_device,
|
|
extend_lens_cpu,
|
|
prefix_tensors,
|
|
batch.req_to_token_pool,
|
|
)
|
|
|
|
# DSV4-NPU hook: no-op on non-DSV4 paths.
|
|
if _is_npu:
|
|
maybe_write_dsv4_extend(
|
|
batch,
|
|
req_pool_indices_cpu,
|
|
prefix_lens_cpu,
|
|
batch.seq_lens_cpu,
|
|
)
|
|
|
|
return out_cache_loc, req_pool_indices_device, req_pool_indices_cpu
|
|
|
|
|
|
def alloc_paged_token_slots_decode(
|
|
tree_cache: BasePrefixCache,
|
|
seq_lens: torch.Tensor,
|
|
seq_lens_cpu: torch.Tensor,
|
|
last_loc: torch.Tensor,
|
|
token_per_req: int = 1,
|
|
req_pool_indices: Optional[torch.Tensor] = None,
|
|
dsv4_state_lens: Optional[DSV4StateLens] = None,
|
|
batch=None,
|
|
) -> torch.Tensor:
|
|
"""Allocate paged KV cache for decode batch."""
|
|
allocator = tree_cache.token_to_kv_pool_allocator
|
|
# Over estimate the number of tokens: assume each request needs a new page.
|
|
num_tokens = len(seq_lens) * allocator.page_size
|
|
evict_from_tree_cache(tree_cache, num_tokens)
|
|
|
|
# DSV4-NPU allocator also needs req_pool_indices + per-req state lens and
|
|
# returns a DSV4OutCacheLoc bundle; hasattr-gated so others stay unchanged.
|
|
is_dsv4 = req_pool_indices is not None and hasattr(allocator, "c4_attn_allocator")
|
|
extra_alloc_kwargs = {}
|
|
if is_dsv4:
|
|
extra_alloc_kwargs["req_pool_indices"] = req_pool_indices
|
|
# Per-call per-req tables for the last_loc lookup.
|
|
if batch is not None:
|
|
extra_alloc_kwargs["req_to_token_pool"] = batch.req_to_token_pool
|
|
if dsv4_state_lens is not None:
|
|
extra_alloc_kwargs["dsv4_state_lens"] = dsv4_state_lens
|
|
|
|
out = allocator.alloc_decode(seq_lens, seq_lens_cpu, last_loc, **extra_alloc_kwargs)
|
|
|
|
if is_dsv4:
|
|
bundle = out
|
|
out_cache_loc = None if bundle is None else bundle.out_full_loc
|
|
if batch is not None:
|
|
batch.out_cache_loc_dsv4 = bundle
|
|
else:
|
|
out_cache_loc = out
|
|
|
|
if out_cache_loc is None:
|
|
error_msg = (
|
|
f"Decode out of memory. Try to lower your batch size.\n"
|
|
f"Try to allocate {len(seq_lens) * token_per_req} tokens.\n"
|
|
f"{available_and_evictable_str(tree_cache)}"
|
|
)
|
|
logger.error(error_msg)
|
|
if tree_cache is not None:
|
|
tree_cache.pretty_print()
|
|
raise RuntimeError(error_msg)
|
|
|
|
return out_cache_loc
|
|
|
|
|
|
def alloc_for_decode(batch: ScheduleBatch, token_per_req: int) -> torch.Tensor:
|
|
"""
|
|
Allocate KV cache for decode batch and write to req_to_token_pool.
|
|
|
|
Returns:
|
|
out_cache_loc: allocated cache locations
|
|
"""
|
|
|
|
batch.maybe_evict_swa()
|
|
|
|
seq_lens_gpu = batch.seq_lens
|
|
bs = seq_lens_gpu.shape[0]
|
|
|
|
if _alloc_page_size(batch) == 1:
|
|
# Non-paged allocation
|
|
out_cache_loc = alloc_token_slots(batch.tree_cache, bs * token_per_req)
|
|
else:
|
|
# Paged allocation
|
|
last_loc = batch.req_to_token_pool.req_to_token[
|
|
batch.req_pool_indices, seq_lens_gpu - 1
|
|
]
|
|
seq_lens_next = seq_lens_gpu + token_per_req
|
|
out_cache_loc = alloc_paged_token_slots_decode(
|
|
tree_cache=batch.tree_cache,
|
|
seq_lens=seq_lens_next,
|
|
seq_lens_cpu=batch.seq_lens_cpu + token_per_req,
|
|
last_loc=last_loc,
|
|
token_per_req=token_per_req,
|
|
req_pool_indices=batch.req_pool_indices,
|
|
dsv4_state_lens=_compute_dsv4_state_lens(batch, is_decode=True),
|
|
batch=batch,
|
|
)
|
|
|
|
# Write to req_to_token_pool
|
|
if batch.model_config.is_encoder_decoder:
|
|
locs = batch.encoder_lens + seq_lens_gpu
|
|
else:
|
|
locs = seq_lens_gpu.clone()
|
|
|
|
batch.req_to_token_pool.write(
|
|
(batch.req_pool_indices, locs), out_cache_loc.to(torch.int32)
|
|
)
|
|
|
|
# DSV4-NPU hook: no-op on non-DSV4 paths.
|
|
if _is_npu:
|
|
maybe_write_dsv4_decode(
|
|
batch,
|
|
batch.seq_lens_cpu + token_per_req,
|
|
token_per_req,
|
|
)
|
|
|
|
return out_cache_loc
|
|
|
|
|
|
def release_kv_cache(req: Req, tree_cache: BasePrefixCache, is_insert: bool = True):
|
|
# MambaRadixCache may alloc mamba state before alloc KV cache
|
|
if req.req_pool_idx is None:
|
|
assert (
|
|
tree_cache.supports_mamba()
|
|
), "Only MambaRadixCache allow freeing before alloc"
|
|
# TODO (csy, hanming): clean up this early allocation logic
|
|
if req.mamba_pool_idx is not None:
|
|
tree_cache.req_to_token_pool.mamba_allocator.free(
|
|
req.mamba_pool_idx.unsqueeze(-1)
|
|
)
|
|
req.mamba_pool_idx = None
|
|
return
|
|
|
|
tree_cache.cache_finished_req(
|
|
req,
|
|
is_insert=is_insert and not getattr(req, "skip_radix_cache_insert", False),
|
|
)
|
|
|
|
# StreamingSession.cache_finished_req handles speculative tail trim
|
|
# and bookkeeping flag sync internally, then sets req_pool_idx = None.
|
|
if req.req_pool_idx is None:
|
|
return
|
|
|
|
start_p, end_p = req.pop_overallocated_kv_cache()
|
|
|
|
global_server_args = get_server_args()
|
|
page_size = global_server_args.page_size
|
|
spec_algo = global_server_args.speculative_algorithm
|
|
|
|
# strip_thinking_cache intentionally reports output tokens as overallocated
|
|
# so they fall into the free path below (#22373).
|
|
if spec_algo is None and not global_server_args.strip_thinking_cache:
|
|
assert (
|
|
start_p == end_p
|
|
), f"Unexpected overallocated KV cache, {req.kv_committed_len=}, {req.kv_allocated_len=}"
|
|
|
|
if page_size > 1:
|
|
start_p = ceil_align(start_p, page_size)
|
|
|
|
if start_p < end_p:
|
|
indices_to_free = tree_cache.req_to_token_pool.req_to_token[req.req_pool_idx][
|
|
start_p:end_p
|
|
]
|
|
tree_cache.token_to_kv_pool_allocator.free(indices_to_free)
|
|
# If the prefix cache doesn't manage mamba states, we must free them here.
|
|
if isinstance(tree_cache.req_to_token_pool, HybridReqToTokenPool) and (
|
|
not tree_cache.supports_mamba()
|
|
):
|
|
assert (
|
|
req.mamba_pool_idx is not None
|
|
), "mamba state is freed while the tree cache does not manage mamba states"
|
|
tree_cache.req_to_token_pool.free_mamba_cache(req)
|
|
# DSV4-NPU's free() also releases c4/c128 state pages; no-op for others.
|
|
tree_cache.req_to_token_pool.free(req)
|
|
|
|
|
|
def available_and_evictable_str(tree_cache: BasePrefixCache) -> str:
|
|
return tree_cache.available_and_evictable_str()
|