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chore: import upstream snapshot with attribution
2026-07-13 12:38:16 +08:00

879 lines
32 KiB
Python

from __future__ import annotations
import os
import random
from collections import deque
from contextlib import nullcontext
from enum import Enum
from typing import TYPE_CHECKING, List, Literal, Optional, Tuple, Type, overload
import numpy as np
import torch
import torch.distributed as dist
from sglang.srt.disaggregation.base import KVPoll
from sglang.srt.environ import envs
from sglang.srt.utils import is_hip, is_npu
if TYPE_CHECKING:
from sglang.srt.disaggregation.base.conn import KVArgs, StateType
from sglang.srt.disaggregation.common.conn import (
CommonKVBootstrapServer,
CommonKVManager,
CommonKVReceiver,
CommonKVSender,
)
from sglang.srt.managers.schedule_batch import Req
from sglang.srt.server_args import ServerArgs
#########################
# Constants & Enums
#########################
FAKE_BOOTSTRAP_HOST = "2.2.2.2"
_IS_HIP = is_hip()
def is_dsv4_c128_online_enabled() -> bool:
"""Return whether DSV4 C128 uses request-scoped online state."""
return not _IS_HIP and envs.SGLANG_OPT_USE_ONLINE_COMPRESS.get()
def get_dsv4_c128_state_indices(
req_pool_idx: int,
seq_len: int,
*,
online: bool,
ring_size: int,
) -> np.ndarray:
"""Return the PD transfer row/page indices for DSV4 C128 state."""
if seq_len == 0 or seq_len % 128 == 0:
return np.empty((0,), dtype=np.int32)
if online:
return np.array([int(req_pool_idx)], dtype=np.int32)
assert ring_size % 128 == 0, f"C128 ring_size must be 128-aligned, got {ring_size}"
pages_per_req = ring_size // 128
page = int(req_pool_idx) * pages_per_req + ((seq_len - 1) % ring_size) // 128
return np.array([page], dtype=np.int32)
class DisaggregationMode(Enum):
NULL = "null"
PREFILL = "prefill"
DECODE = "decode"
@staticmethod
def to_engine_type(mode: str) -> str:
if mode == DisaggregationMode.PREFILL.value:
return "prefill"
elif mode == DisaggregationMode.DECODE.value:
return "decode"
return "unified"
#########################
# Synchronization
#########################
def _get_failure_prob() -> float:
try:
return float(envs.SGLANG_TEST_DISAGG_FAILURE_PROB.get())
except Exception:
# fallback to legacy env var
return float(os.getenv("DISAGGREGATION_TEST_FAILURE_PROB", "0"))
def _poll_with_failure_injection(pollers) -> List[int]:
if (failure_prob := _get_failure_prob()) > 0:
return [
int(KVPoll.Failed) if random.random() < failure_prob else int(poller.poll())
for poller in pollers
]
return [int(poller.poll()) for poller in pollers]
def _is_fake_transfer(req: Req, server_args: ServerArgs) -> bool:
return req.bootstrap_host == FAKE_BOOTSTRAP_HOST or (
req.bootstrap_host is None
and server_args.disaggregation_transfer_backend == "fake"
)
def _apply_metadata_gate(polls, decode_reqs, metadata_buffers, server_args) -> None:
"""Downgrade Success → Transferring for requests whose metadata hasn't landed.
Mutates `polls` in-place. Called before all-reduce so that MIN across TP
ranks naturally prevents any rank from committing before all ranks are ready.
"""
for i, poll_val in enumerate(polls):
if poll_val == int(KVPoll.Success):
decode_req = decode_reqs[i]
if _is_fake_transfer(decode_req.req, server_args):
continue
actual_room = metadata_buffers.bootstrap_room[
decode_req.metadata_buffer_index, 0
].item()
if actual_room == 0:
polls[i] = int(KVPoll.Transferring)
def poll_and_all_reduce(
pollers,
gloo_group: dist.ProcessGroup,
decode_reqs=None,
metadata_buffers: Optional[MetadataBuffers] = None,
server_args: Optional[ServerArgs] = None,
):
# at a certain prob, the poll is failed to simulate failure
polls = _poll_with_failure_injection(pollers)
# Apply metadata gate on the decode requests to downgrade Success → Transferring for requests whose metadata hasn't landed.
if (
decode_reqs is not None
and metadata_buffers is not None
and server_args is not None
):
_apply_metadata_gate(polls, decode_reqs, metadata_buffers, server_args)
tensor_to_reduce = torch.tensor(polls, dtype=torch.uint8, device="cpu")
dist.all_reduce(tensor_to_reduce, op=dist.ReduceOp.MIN, group=gloo_group)
return tensor_to_reduce.tolist()
def poll_and_all_reduce_attn_cp_tp_group(
pollers,
attn_cp_cpu_group: dist.ProcessGroup,
attn_tp_cpu_group: dist.ProcessGroup,
):
# First sync across attn-tp ranks so all TP participants for a given (dp, cp)
# shard observe the same status transitions.
polls = poll_and_all_reduce(pollers, attn_tp_cpu_group)
# Then sync across attn-cp ranks, so all TPxCP participants in one DP shard
# converge to the same global status.
tensor_to_reduce = torch.tensor(polls, dtype=torch.uint8, device="cpu")
dist.all_reduce(
tensor_to_reduce,
op=dist.ReduceOp.MIN,
group=attn_cp_cpu_group,
)
return tensor_to_reduce.tolist()
def poll_and_all_reduce_with_staging(
decode_reqs,
staging_handler,
gloo_group: dist.ProcessGroup,
metadata_buffers: Optional[MetadataBuffers] = None,
server_args: Optional[ServerArgs] = None,
):
"""Staging-aware polling: advance scatter, demote incomplete transfers, all_reduce."""
for decode_req in decode_reqs:
if decode_req.kv_receiver.require_staging and not staging_handler.is_done(
decode_req
):
staging_handler.advance_scatter(decode_req)
# allow test injection of failure probability at runtime
receivers = [dr.kv_receiver for dr in decode_reqs]
raw_polls = _poll_with_failure_injection(receivers)
for i, decode_req in enumerate(decode_reqs):
if raw_polls[i] == int(KVPoll.Success):
if decode_req.kv_receiver.require_staging and not staging_handler.is_done(
decode_req
):
raw_polls[i] = int(KVPoll.Transferring)
# Apply metadata gate on the decode requests to downgrade Success → Transferring for requests whose metadata hasn't landed.
if metadata_buffers is not None and server_args is not None:
_apply_metadata_gate(raw_polls, decode_reqs, metadata_buffers, server_args)
poll_tensor = torch.tensor(raw_polls, dtype=torch.uint8, device="cpu")
dist.all_reduce(poll_tensor, op=dist.ReduceOp.MIN, group=gloo_group)
return poll_tensor.tolist()
#########################
# Metadata Buffers
#########################
class ReqToMetadataIdxAllocator:
"""A memory pool that maps a request to its first output token location."""
def __init__(
self,
size: int,
):
self.size = size
self.free_slots = deque(list(range(size)))
def available_size(self):
return len(self.free_slots)
def alloc(self) -> Optional[int]:
if len(self.free_slots) == 0:
return None
return self.free_slots.popleft()
def free(self, free_index: int):
self.free_slots.append(free_index)
class MetadataBuffers:
def __init__(
self,
size: int,
hidden_size: int,
hidden_states_dtype: torch.dtype,
max_top_logprobs_num: int = 128,
custom_mem_pool: torch.cuda.MemPool = None,
):
self.custom_mem_pool = custom_mem_pool
bootstrap_room_dtype = torch.uint64
device = "cpu"
if is_npu():
# For ascend backend, output tokens are placed in the NPU and will be transferred by D2D channel.
device = "npu"
# TODO: Fix me when npu backend supports torch.uint64
bootstrap_room_dtype = torch.int64
elif self.custom_mem_pool:
# TODO(shangming): Fix me (use 'cuda') when nvlink_transport of Mooncake is bug-free
device = "cpu"
elif envs.SGLANG_MOONCAKE_CUSTOM_MEM_POOL.get() == "INTRA_NODE_NVLINK":
device = "cuda"
with (
torch.cuda.use_mem_pool(self.custom_mem_pool)
if self.custom_mem_pool
else nullcontext()
):
# TODO: abort top_logprobs_num > 128 in PD
# We transfer the metadata of first output token to decode
# The minimal size for RDMA is 64Bytes, so we pad it to > 64Bytes
self.output_ids = torch.zeros((size, 16), dtype=torch.int32, device=device)
self.cached_tokens = torch.zeros(
(size, 16), dtype=torch.int32, device=device
)
self.output_token_logprobs_val = torch.zeros(
(size, 16), dtype=torch.float32, device=device
)
self.output_token_logprobs_idx = torch.zeros(
(size, 16), dtype=torch.int32, device=device
)
self.output_top_logprobs_val = torch.zeros(
(size, max_top_logprobs_num), dtype=torch.float32, device=device
)
self.output_top_logprobs_idx = torch.zeros(
(size, max_top_logprobs_num), dtype=torch.int32, device=device
)
# For PD + spec decode
self.output_topk_p = torch.zeros(
(size, 16), dtype=torch.float32, device=device
)
self.output_topk_index = torch.zeros(
(size, 16), dtype=torch.int64, device=device
)
self.output_hidden_states = torch.zeros(
(size, hidden_size), dtype=hidden_states_dtype, device=device
)
# Request validation: store bootstrap_room to detect metadata corruption
self.bootstrap_room = torch.zeros(
(size, 8), dtype=bootstrap_room_dtype, device=device
)
def get_buf_infos(self):
ptrs = [
self.output_ids.data_ptr(),
self.cached_tokens.data_ptr(),
self.output_token_logprobs_val.data_ptr(),
self.output_token_logprobs_idx.data_ptr(),
self.output_top_logprobs_val.data_ptr(),
self.output_top_logprobs_idx.data_ptr(),
self.output_topk_p.data_ptr(),
self.output_topk_index.data_ptr(),
self.output_hidden_states.data_ptr(),
self.bootstrap_room.data_ptr(),
]
data_lens = [
self.output_ids.nbytes,
self.cached_tokens.nbytes,
self.output_token_logprobs_val.nbytes,
self.output_token_logprobs_idx.nbytes,
self.output_top_logprobs_val.nbytes,
self.output_top_logprobs_idx.nbytes,
self.output_topk_p.nbytes,
self.output_topk_index.nbytes,
self.output_hidden_states.nbytes,
self.bootstrap_room.nbytes,
]
item_lens = [
self.output_ids[0].nbytes,
self.cached_tokens[0].nbytes,
self.output_token_logprobs_val[0].nbytes,
self.output_token_logprobs_idx[0].nbytes,
self.output_top_logprobs_val[0].nbytes,
self.output_top_logprobs_idx[0].nbytes,
self.output_topk_p[0].nbytes,
self.output_topk_index[0].nbytes,
self.output_hidden_states[0].nbytes,
self.bootstrap_room[0].nbytes,
]
return ptrs, data_lens, item_lens
def get_buf(self, idx: int):
return (
self.output_ids[idx].clone(),
self.cached_tokens[idx].clone(),
self.output_token_logprobs_val[idx].clone(),
self.output_token_logprobs_idx[idx].clone(),
self.output_top_logprobs_val[idx].clone(),
self.output_top_logprobs_idx[idx].clone(),
self.output_topk_p[idx].clone(),
self.output_topk_index[idx].clone(),
self.output_hidden_states[idx].clone(),
self.bootstrap_room[idx].clone(),
)
def set_buf(self, req: Req):
self.output_ids[req.metadata_buffer_index][0] = req.output_ids[0]
# The cached_tokens buffer is (size, 16); slots 0-3 hold cached token
# counts and slots 4-6 are reused for multimodal prompt token counts
# (slots 7-15 remain spare). This avoids adding new RDMA buffers.
# Slot map: 0=cached 1=device 2=host 3=storage 4=image 5=audio 6=video.
self.cached_tokens[req.metadata_buffer_index][0] = req.cached_tokens
self.cached_tokens[req.metadata_buffer_index][1] = req.cached_tokens_device
self.cached_tokens[req.metadata_buffer_index][2] = req.cached_tokens_host
self.cached_tokens[req.metadata_buffer_index][3] = req.cached_tokens_storage
# Compute multimodal prompt token counts on the prefill node so decode
# can report them in usage.
if req.multimodal_inputs:
image_t, audio_t, video_t = req.multimodal_inputs.compute_mm_token_counts()
else:
image_t = audio_t = video_t = 0
self.cached_tokens[req.metadata_buffer_index][4] = image_t
self.cached_tokens[req.metadata_buffer_index][5] = audio_t
self.cached_tokens[req.metadata_buffer_index][6] = video_t
if req.return_logprob:
if req.logprob.output_token_logprobs_val: # not none or empty list
self.output_token_logprobs_val[req.metadata_buffer_index][0] = (
req.logprob.output_token_logprobs_val[0]
)
if req.logprob.output_token_logprobs_idx: # not none or empty list
self.output_token_logprobs_idx[req.metadata_buffer_index][0] = (
req.logprob.output_token_logprobs_idx[0]
)
if req.logprob.output_top_logprobs_val: # not none or empty list
self.output_top_logprobs_val[req.metadata_buffer_index][
: len(req.logprob.output_top_logprobs_val[0])
] = torch.tensor(
req.logprob.output_top_logprobs_val[0],
dtype=torch.float32,
device="cpu",
)
if req.logprob.output_top_logprobs_idx: # not none or empty list
self.output_top_logprobs_idx[req.metadata_buffer_index][
: len(req.logprob.output_top_logprobs_idx[0])
] = torch.tensor(
req.logprob.output_top_logprobs_idx[0],
dtype=torch.int32,
device="cpu",
)
# For PD + spec decode
if req.hidden_states_tensor is not None:
# speculative_eagle_topk should not be greater than 16 currently
topk = req.output_topk_p.size(0)
self.output_topk_p[req.metadata_buffer_index, :topk].copy_(
req.output_topk_p
)
self.output_topk_index[req.metadata_buffer_index, :topk].copy_(
req.output_topk_index
)
self.output_hidden_states[req.metadata_buffer_index].copy_(
req.hidden_states_tensor
)
# Store bootstrap_room for validation on decode side
self.bootstrap_room[req.metadata_buffer_index, 0] = (
req.bootstrap_room if req.bootstrap_room is not None else 0
)
#########################
# Transfer Backend
#########################
class TransferBackend(Enum):
MOONCAKE = "mooncake"
MORI = "mori"
NIXL = "nixl"
ASCEND = "ascend"
FAKE = "fake"
class KVClassType(Enum):
KVARGS = "kvargs"
MANAGER = "manager"
SENDER = "sender"
RECEIVER = "receiver"
BOOTSTRAP_SERVER = "bootstrap_server"
@overload
def get_kv_class(
transfer_backend: TransferBackend, class_type: Literal[KVClassType.KVARGS]
) -> Type[KVArgs]: ...
@overload
def get_kv_class(
transfer_backend: TransferBackend, class_type: Literal[KVClassType.MANAGER]
) -> Type[CommonKVManager]: ...
@overload
def get_kv_class(
transfer_backend: TransferBackend, class_type: Literal[KVClassType.SENDER]
) -> Type[CommonKVSender]: ...
@overload
def get_kv_class(
transfer_backend: TransferBackend, class_type: Literal[KVClassType.RECEIVER]
) -> Type[CommonKVReceiver]: ...
@overload
def get_kv_class(
transfer_backend: TransferBackend, class_type: Literal[KVClassType.BOOTSTRAP_SERVER]
) -> Type[CommonKVBootstrapServer]: ...
def get_kv_class(
transfer_backend: TransferBackend, class_type: KVClassType
) -> Optional[Type]:
from sglang.srt.disaggregation.fake import FakeKVReceiver, FakeKVSender
if transfer_backend == TransferBackend.MOONCAKE:
from sglang.srt.disaggregation.base import KVArgs
from sglang.srt.disaggregation.mooncake import (
MooncakeKVBootstrapServer,
MooncakeKVManager,
MooncakeKVReceiver,
MooncakeKVSender,
)
class_mapping = {
KVClassType.KVARGS: KVArgs,
KVClassType.MANAGER: MooncakeKVManager,
KVClassType.SENDER: MooncakeKVSender,
KVClassType.RECEIVER: (MooncakeKVReceiver),
KVClassType.BOOTSTRAP_SERVER: MooncakeKVBootstrapServer,
}
return class_mapping.get(class_type)
elif transfer_backend == TransferBackend.MORI:
from sglang.srt.disaggregation.base import KVArgs
from sglang.srt.disaggregation.mori import (
MoriKVBootstrapServer,
MoriKVManager,
MoriKVReceiver,
MoriKVSender,
)
class_mapping = {
KVClassType.KVARGS: KVArgs,
KVClassType.MANAGER: MoriKVManager,
KVClassType.SENDER: MoriKVSender,
KVClassType.RECEIVER: (MoriKVReceiver),
KVClassType.BOOTSTRAP_SERVER: MoriKVBootstrapServer,
}
return class_mapping.get(class_type)
elif transfer_backend == TransferBackend.ASCEND:
from sglang.srt.disaggregation.ascend import (
AscendKVBootstrapServer,
AscendKVManager,
AscendKVReceiver,
AscendKVSender,
)
from sglang.srt.disaggregation.base import KVArgs
class_mapping = {
KVClassType.KVARGS: KVArgs,
KVClassType.MANAGER: AscendKVManager,
KVClassType.SENDER: AscendKVSender,
KVClassType.RECEIVER: (AscendKVReceiver),
KVClassType.BOOTSTRAP_SERVER: AscendKVBootstrapServer,
}
return class_mapping.get(class_type)
elif transfer_backend == TransferBackend.NIXL:
from sglang.srt.disaggregation.base import KVArgs
from sglang.srt.disaggregation.nixl import (
NixlKVBootstrapServer,
NixlKVManager,
NixlKVReceiver,
NixlKVSender,
)
class_mapping = {
KVClassType.KVARGS: KVArgs,
KVClassType.MANAGER: NixlKVManager,
KVClassType.SENDER: NixlKVSender,
KVClassType.RECEIVER: (NixlKVReceiver),
KVClassType.BOOTSTRAP_SERVER: NixlKVBootstrapServer,
}
return class_mapping.get(class_type)
elif transfer_backend == TransferBackend.FAKE:
from sglang.srt.disaggregation.base import KVArgs
from sglang.srt.disaggregation.fake import (
FakeKVManager,
FakeKVReceiver,
FakeKVSender,
)
class_mapping = {
KVClassType.KVARGS: KVArgs,
KVClassType.MANAGER: FakeKVManager,
KVClassType.SENDER: FakeKVSender,
KVClassType.RECEIVER: (FakeKVReceiver),
}
return class_mapping.get(class_type)
raise ValueError(f"Unsupported transfer backend: {transfer_backend}")
def _get_cp_rank_page_bounds(
total_pages: int, cp_rank: int, cp_size: int
) -> Tuple[int, int]:
base = total_pages // cp_size
rem = total_pages % cp_size
local_start = cp_rank * base + min(cp_rank, rem)
n_pages = base + (1 if cp_rank < rem else 0)
return local_start, local_start + n_pages
def page_indices_to_cp_rank_page_indices(
page_indices: np.ndarray,
total_pages: int,
cp_rank: int,
cp_size: int,
) -> np.ndarray:
"""
Filter page_indices (which are *global* page ids in the KV pool) to those
belonging to the given CP rank for this request.
For a single request, its pages occupy a contiguous global range
[first_page, first_page + total_pages). We first compute the local
split [0, total_pages) across cp_size ranks, then shift that local
range by first_page back into the global page id space and take
the intersection with page_indices.
Returns:
Subset of page_indices that fall in this rank's global
[start_page, end_page) slice for the given CP rank.
"""
if cp_size <= 1:
return page_indices
if page_indices.size == 0:
return np.asarray(page_indices)
first_page = int(page_indices.min())
base = total_pages // cp_size
rem = total_pages % cp_size
if rem == 0:
local_start = cp_rank * base
local_end = local_start + base
else:
local_start = cp_rank * base + min(cp_rank, rem)
n_pages = base + (1 if cp_rank < rem else 0)
local_end = local_start + n_pages
# Map back to global page ids.
start_page = first_page + local_start
end_page = first_page + local_end
mask = (page_indices >= start_page) & (page_indices < end_page)
return np.asarray(page_indices)[mask]
def filter_kv_indices_for_cp_rank(
kv_mgr: CommonKVManager,
kv_indices: np.ndarray,
index_slice: slice,
total_pages: Optional[int] = None,
) -> Tuple[np.ndarray, slice]:
"""Filters kv_indices and index_slice for the current CP rank."""
if total_pages is None:
total_pages = len(kv_indices)
cp_rank = kv_mgr.attn_cp_rank
cp_size = kv_mgr.attn_cp_size
if cp_size <= 1:
return kv_indices, index_slice
rank_start, rank_end = _get_cp_rank_page_bounds(total_pages, cp_rank, cp_size)
chunk_start = index_slice.start if index_slice.start is not None else 0
chunk_end = index_slice.stop if index_slice.stop is not None else total_pages
first_pos = max(rank_start, chunk_start) - chunk_start
last_pos = min(rank_end, chunk_end) - chunk_start
if last_pos <= first_pos:
new_kv_indices = kv_indices[:0]
new_index_slice = slice(chunk_start, chunk_start)
else:
new_kv_indices = kv_indices[first_pos:last_pos]
new_index_slice = slice(
chunk_start + first_pos,
chunk_start + last_pos,
)
return new_kv_indices, new_index_slice
#########################
# Misc
#########################
def is_mla_backend(target_kv_pool) -> bool:
from sglang.srt.mem_cache.deepseek_v4_memory_pool import DeepSeekV4TokenToKVPool
from sglang.srt.mem_cache.memory_pool import MLATokenToKVPool
return isinstance(target_kv_pool, (MLATokenToKVPool, DeepSeekV4TokenToKVPool))
def append_state_component(
kv_args: KVArgs,
state_type: StateType,
data_ptrs: List[int],
data_lens: List[int],
item_lens: List[int],
dim_per_tensor: Optional[List[int]] = None,
) -> None:
"""Append one state component. Caller orders state_types consistently
on prefill and decode sides."""
kv_args.state_types.append(state_type)
kv_args.state_data_ptrs.append(data_ptrs)
kv_args.state_data_lens.append(data_lens)
kv_args.state_item_lens.append(item_lens)
kv_args.state_dim_per_tensor.append(dim_per_tensor or [])
def setup_state_kv_args(
kv_args: KVArgs,
token_to_kv_pool,
draft_token_to_kv_pool=None,
total_kv_layers: int = None,
req_to_token_pool=None,
) -> None:
"""Populate ``kv_args`` state-buffer fields from the given pool.
Shared by prefill and decode bootstrap paths so the state_type dispatch
lives in one place.
"""
from sglang.srt.disaggregation.base.conn import StateType
from sglang.srt.hardware_backend.npu.memory_pool_npu import NPUMLATokenToKVPool
from sglang.srt.mem_cache.base_swa_memory_pool import BaseSWAKVPool
from sglang.srt.mem_cache.deepseek_v4_memory_pool import DeepSeekV4TokenToKVPool
from sglang.srt.mem_cache.memory_pool import (
DSATokenToKVPool,
HybridLinearKVPool,
MiniMaxSparseKVPool,
)
kv_args.state_types = []
kv_args.state_data_ptrs = []
kv_args.state_data_lens = []
kv_args.state_item_lens = []
kv_args.state_dim_per_tensor = []
kv_args.is_hybrid_mla_backend = False
if isinstance(token_to_kv_pool, MiniMaxSparseKVPool):
if token_to_kv_pool.index_kv_pool is not None:
raise NotImplementedError(
"PD disaggregation for MiniMax sparse layers with index value "
"(index_kv_pool) is not yet supported; only K-only sparse layers are."
)
if token_to_kv_pool.index_k_pool is not None:
dp, dl, il = token_to_kv_pool.get_index_k_state_buf_infos()
append_state_component(kv_args, StateType.MINIMAX_INDEX_K, dp, dl, il)
elif hasattr(token_to_kv_pool, "get_state_buf_infos"):
data_ptrs, data_lens, item_lens = token_to_kv_pool.get_state_buf_infos()
# DeepSeekV4TokenToKVPool inherits BaseSWAKVPool; its heterogeneous
# state list is described per-entry via get_state_buf_infos.
if isinstance(token_to_kv_pool, BaseSWAKVPool):
append_state_component(
kv_args, StateType.SWA, data_ptrs, data_lens, item_lens
)
# unified_kv: the SWA ring lives in the unified buffers (no separate
# swa_kv_pool) and is addressed per-row, so ship it as SWA_RING.
if getattr(token_to_kv_pool, "_unified_kv", False) and hasattr(
token_to_kv_pool, "get_unified_swa_ring_buf_infos"
):
ring_ptrs, ring_lens, ring_item_lens = (
token_to_kv_pool.get_unified_swa_ring_buf_infos()
)
if ring_ptrs:
append_state_component(
kv_args,
StateType.SWA_RING,
ring_ptrs,
ring_lens,
ring_item_lens,
)
if hasattr(token_to_kv_pool, "get_c128_state_buf_infos"):
c128_ptrs, c128_lens, c128_item_lens = (
token_to_kv_pool.get_c128_state_buf_infos()
)
if c128_ptrs:
append_state_component(
kv_args,
StateType.C128_STATE,
c128_ptrs,
c128_lens,
c128_item_lens,
)
elif isinstance(token_to_kv_pool, HybridLinearKVPool):
dim = (
token_to_kv_pool.get_state_dim_per_tensor()
if hasattr(token_to_kv_pool, "get_state_dim_per_tensor")
else None
)
kv_args.is_hybrid_mla_backend = is_mla_backend(
token_to_kv_pool.full_kv_pool
)
append_state_component(
kv_args, StateType.MAMBA, data_ptrs, data_lens, item_lens, dim
)
elif isinstance(token_to_kv_pool, (DSATokenToKVPool, NPUMLATokenToKVPool)):
if draft_token_to_kv_pool is not None and isinstance(
draft_token_to_kv_pool, DSATokenToKVPool
):
(
draft_data_ptrs,
draft_data_lens,
draft_item_lens,
) = draft_token_to_kv_pool.get_state_buf_infos()
data_ptrs = data_ptrs + draft_data_ptrs
data_lens = data_lens + draft_data_lens
item_lens = item_lens + draft_item_lens
if isinstance(token_to_kv_pool, NPUMLATokenToKVPool):
kv_args.kv_buf_groups = (
len(kv_args.kv_data_ptrs) // token_to_kv_pool.layer_num
)
kv_args.total_kv_layers = total_kv_layers
else:
append_state_component(
kv_args, StateType.DSA, data_ptrs, data_lens, item_lens
)
# DSV4 NextN shares the target allocator, so target and draft use the same
# local SWA indices. Keep draft buffers in a separate positional component
# to avoid mixing them into the target's heterogeneous state layout, while
# reusing the existing SWA transport dispatch. NPU has a different paged
# state layout and is intentionally left unchanged.
if (
not is_npu()
and isinstance(token_to_kv_pool, DeepSeekV4TokenToKVPool)
and isinstance(draft_token_to_kv_pool, DeepSeekV4TokenToKVPool)
):
if not draft_token_to_kv_pool.compression_ratios or not all(
ratio == 0 for ratio in draft_token_to_kv_pool.compression_ratios
):
raise RuntimeError(
"DSV4 draft state transfer expects SWA-only NextN layers"
)
if token_to_kv_pool._unified_kv != draft_token_to_kv_pool._unified_kv:
raise RuntimeError(
"DSV4 target and draft pools must use the same unified-KV mode"
)
if token_to_kv_pool._unified_kv:
target_geometry = (
token_to_kv_pool.unified_swa_window,
token_to_kv_pool.unified_swa_ring_size,
token_to_kv_pool.unified_swa_pages,
)
draft_geometry = (
draft_token_to_kv_pool.unified_swa_window,
draft_token_to_kv_pool.unified_swa_ring_size,
draft_token_to_kv_pool.unified_swa_pages,
)
if target_geometry != draft_geometry:
raise RuntimeError(
"DSV4 target and draft pools must share SWA ring geometry: "
f"target={target_geometry}, draft={draft_geometry}"
)
draft_ptrs, draft_lens, draft_item_lens = (
draft_token_to_kv_pool.get_unified_swa_ring_buf_infos()
)
draft_state_type = StateType.SWA_RING
else:
if (
token_to_kv_pool.full_to_swa_index_mapping
is not draft_token_to_kv_pool.full_to_swa_index_mapping
):
raise RuntimeError(
"DSV4 target and draft pools must share the SWA index mapping"
)
target_geometry = (
token_to_kv_pool.page_size,
token_to_kv_pool.sliding_window,
)
draft_geometry = (
draft_token_to_kv_pool.page_size,
draft_token_to_kv_pool.sliding_window,
)
if target_geometry != draft_geometry:
raise RuntimeError(
"DSV4 target and draft pools must share paged SWA geometry: "
f"target={target_geometry}, draft={draft_geometry}"
)
draft_ptrs, draft_lens, draft_item_lens = (
draft_token_to_kv_pool.get_state_buf_infos()
)
draft_state_type = StateType.SWA
if draft_ptrs:
append_state_component(
kv_args,
draft_state_type,
draft_ptrs,
draft_lens,
draft_item_lens,
)
if (
StateType.MAMBA not in kv_args.state_types
and req_to_token_pool is not None
and hasattr(req_to_token_pool, "get_state_buf_infos")
):
data_ptrs, data_lens, item_lens = req_to_token_pool.get_state_buf_infos()
if data_ptrs:
dim = (
req_to_token_pool.get_state_dim_per_tensor()
if hasattr(req_to_token_pool, "get_state_dim_per_tensor")
else None
)
append_state_component(
kv_args, StateType.MAMBA, data_ptrs, data_lens, item_lens, dim
)
def prepare_abort(req: Req, error_message: str, status_code=None):
from sglang.srt.managers.schedule_batch import FINISH_ABORT
# populate finish metadata and stream output
req.finished_reason = FINISH_ABORT(error_message, status_code)
if req.return_logprob:
req.logprob.input_token_logprobs_val = []
req.logprob.input_token_logprobs_idx = []
req.logprob.input_top_logprobs_val = []
req.logprob.input_top_logprobs_idx = []
req.logprob.input_token_ids_logprobs_val = []
req.logprob.input_token_ids_logprobs_idx = []
def is_aborted(req: Req) -> bool:
from sglang.srt.managers.schedule_batch import FINISH_ABORT
return isinstance(req.to_finish, FINISH_ABORT) or isinstance(
req.finished_reason, FINISH_ABORT
)