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chore: import upstream snapshot with attribution
2026-07-13 12:32:31 +08:00

286 lines
11 KiB
Python

# Copyright (c) 2026 LightSeek Foundation
#
# Permission is hereby granted, free of charge, to any person obtaining a copy
# of this software and associated documentation files (the "Software"), to deal
# in the Software without restriction, including without limitation the rights
# to use, copy, modify, merge, publish, distribute, sublicense, and/or sell
# copies of the Software, and to permit persons to whom the Software is
# furnished to do so, subject to the following conditions:
#
# The above copyright notice and this permission notice shall be included in
# all copies or substantial portions of the Software.
#
# THE SOFTWARE IS PROVIDED "AS IS", WITHOUT WARRANTY OF ANY KIND, EXPRESS OR
# IMPLIED, INCLUDING BUT NOT LIMITED TO THE WARRANTIES OF MERCHANTABILITY,
# FITNESS FOR A PARTICULAR PURPOSE AND NONINFRINGEMENT. IN NO EVENT SHALL THE
# AUTHORS OR COPYRIGHT HOLDERS BE LIABLE FOR ANY CLAIM, DAMAGES OR OTHER
# LIABILITY, WHETHER IN AN ACTION OF CONTRACT, TORT OR OTHERWISE, ARISING FROM,
# OUT OF OR IN CONNECTION WITH THE SOFTWARE OR THE USE OR OTHER DEALINGS IN THE
# SOFTWARE.
from __future__ import annotations
from abc import ABC, abstractmethod
from dataclasses import dataclass
from typing import TYPE_CHECKING
import torch
import torch.distributed as dist
if TYPE_CHECKING:
from tokenspeed.runtime.layers.logits_processor import LogitsProcessorOutput
from tokenspeed.runtime.sampling.dp_sampling_config import DpSamplingRuntimeConfig
from tokenspeed.runtime.sampling.sampling_batch_info import SamplingBatchInfo
from tokenspeed.runtime.sampling.sampling_params import SamplingParams
from tokenspeed.runtime.utils.server_args import ServerArgs
DEFAULT_RANDOM_SEED = 48
CUDA_GRAPH_VARIANT_DEFAULT = "default"
SPECULATIVE_ACCEPT_THRESHOLD_SINGLE = 1.0
SPECULATIVE_ACCEPT_THRESHOLD_ACC = 1.0
@dataclass
class SamplingBackendConfig:
enable_nan_detection: bool = False
# Optional logprob features — OFF by default. These are checked at server
# start / graph capture time so the fast path has zero extra compute.
# Enabling any of these enlarges the captured graph footprint.
enable_output_logprobs: bool = False
# Sizing for pre-allocated per-backend buffers (e.g. coin buffers for
# rejection sampling). Required to keep RNG out of the CUDA graph.
max_bs: int = 1
max_draft_tokens_per_req: int = 1
# Sizing for backend-owned per-request state (e.g. token-count buffers
# for penalties in FlashInferFullSamplingBackend). Indexed by req_pool_idx, not
# batch row, so the data survives batch membership changes.
max_req_pool_size: int = 0
vocab_size: int = 0
device: torch.device | None = None
random_seed: int = DEFAULT_RANDOM_SEED
# Attention TP group for sampler-output broadcast (rank 0 wins).
tp_group: tuple[int, ...] | None = None
enable_tp_sync: bool = True
@classmethod
def from_server_args(
cls,
server_args: ServerArgs,
*,
max_bs: int,
max_draft_tokens_per_req: int,
device: str,
random_seed: int = DEFAULT_RANDOM_SEED,
max_req_pool_size: int = 0,
vocab_size: int = 0,
tp_group: tuple[int, ...] | None = None,
) -> SamplingBackendConfig:
return cls(
enable_nan_detection=server_args.enable_nan_detection,
enable_output_logprobs=server_args.enable_output_logprobs,
max_bs=max_bs,
max_draft_tokens_per_req=max(max_draft_tokens_per_req, 1),
max_req_pool_size=max_req_pool_size,
vocab_size=vocab_size,
device=device,
random_seed=random_seed,
tp_group=tp_group,
enable_tp_sync=not server_args.disable_sampling_tp_sync,
)
class SamplingBackend(ABC):
"""Shared contract for single-step sampling and multi-step spec-decode verification.
Both methods return (output_tokens, accept_lengths). For sample(),
accept_lengths is all-ones so the downstream contract matches verify().
Backends that need random state override prepare() to refill per-request
buffers outside of any CUDA graph capture.
Requests asking for params a backend doesn't implement are NOT rejected;
the backend silently applies only what it supports, so all requests go
through the same captured graph.
"""
# Subclasses that hold per-pool-idx state (scalars like temperature /
# top_k, plus large rows like _counts / _logit_bias) flip this to True
# so prepare_step() performs flip detection + _reset_slot. Stateless
# backends (greedy) leave it False and the whole prepare_step call is
# a no-op.
_HAS_POOL_STATE: bool = False
_SUPPORTS_DP_VERIFY: bool = False
def __init__(self, config: SamplingBackendConfig) -> None:
self.config = config
# Sentinel of "which rid currently owns each slot from this backend's
# point of view". rid is just a comparison value here, not a lookup
# key, so this is pool-keyed state (size O(pool_rows) strings), not
# rid-keyed state. A mismatch against the incoming rid is a flip.
if self._HAS_POOL_STATE:
pool_rows = config.max_req_pool_size + 1
self._last_rid_per_slot: list[str | None] = [None] * pool_rows
# Resolved once; None means maybe_broadcast is a no-op.
self._tp_pg = None
self._tp_src_global_rank: int | None = None
if (
config.enable_tp_sync
and config.tp_group is not None
and len(config.tp_group) > 1
):
from tokenspeed.runtime.distributed.process_group_manager import (
process_group_manager as pg_manager,
)
self._tp_pg = pg_manager.get_process_group("nccl", config.tp_group)
self._tp_src_global_rank = config.tp_group[0]
def configure_dp_sampling(self, runtime: DpSamplingRuntimeConfig) -> None:
"""Configure optional DP sampling state.
Stateless or unsupported backends ignore this; DP-capable backends
override it to initialize backend-local communication buffers.
"""
def maybe_broadcast(self, *tensors: torch.Tensor) -> None:
"""Broadcast each tensor from tp_group[0] so all attention-TP ranks
agree. No-op when sync is off or tp_size <= 1. Graph-safe."""
if self._tp_pg is None:
return
for t in tensors:
dist.broadcast(t, src=self._tp_src_global_rank, group=self._tp_pg)
def prepare_step(
self,
request_ids: list[str],
request_pool_indices: list[int],
sampling_params_list: list[SamplingParams],
num_tokens_per_req: int = 1,
) -> None:
"""Called once per step, outside the CUDA graph. Two jobs:
1. Flip detection: a slot's owning rid changed since last step
(first-use and rid-recycling look the same). Delegates to
_reset_slot which scatters all per-slot persistent state
(scalars, counts, bias, generators).
2. Per-step dynamic refill: coin buffers, etc. Delegated to the
subclass via _prepare_step_hook.
Stateless backends (greedy) short-circuit both phases.
"""
if not self._HAS_POOL_STATE:
return
assert (
len(request_ids) == len(request_pool_indices) == len(sampling_params_list)
), (
f"prepare_step expects aligned per-request lists; got "
f"rids={len(request_ids)}, pool_indices={len(request_pool_indices)}, "
f"sp_list={len(sampling_params_list)}"
)
pool_rows = len(self._last_rid_per_slot)
for rid, pool_idx, sp in zip(
request_ids, request_pool_indices, sampling_params_list
):
assert (
0 <= pool_idx < pool_rows
), f"pool_idx {pool_idx} out of range [0, {pool_rows}) for rid={rid}"
if self._last_rid_per_slot[pool_idx] != rid:
self._reset_slot(pool_idx, sp)
self._last_rid_per_slot[pool_idx] = rid
self._prepare_step_hook(
num_tokens_per_req=num_tokens_per_req,
bs=len(request_pool_indices),
request_pool_indices=request_pool_indices,
)
def prepare_capture(self, bs: int, num_tokens_per_req: int = 1) -> None:
"""Per-step refill for the capture/warm-up path. No flip detection;
the backend uses its stub generator for any RNG-fed buffers so the
captured graph sees a fully-written state.
Default: no-op.
"""
self._prepare_step_hook(
num_tokens_per_req=num_tokens_per_req,
bs=bs,
request_pool_indices=None,
)
def cuda_graph_capture_variants(self, num_tokens_per_req: int) -> tuple[str, ...]:
"""Return sampler-specific CUDA graph variants to capture."""
return (CUDA_GRAPH_VARIANT_DEFAULT,)
def prepare_capture_variant(
self,
bs: int,
num_tokens_per_req: int,
variant: str,
) -> None:
if variant != CUDA_GRAPH_VARIANT_DEFAULT:
raise ValueError(f"Unsupported CUDA graph variant: {variant}")
self.prepare_capture(bs=bs, num_tokens_per_req=num_tokens_per_req)
def cuda_graph_replay_variant(self, num_tokens_per_req: int) -> str:
return CUDA_GRAPH_VARIANT_DEFAULT
def _prepare_step_hook(
self,
num_tokens_per_req: int,
bs: int,
request_pool_indices: list[int] | None,
) -> None:
"""Subclass hook for per-step dynamic state (coin buffers, etc).
request_pool_indices=None is the capture path; otherwise the CPU
list from forward_op.request_pool_indices.
Default: no-op."""
def _reset_slot(self, pool_idx: int, sp: SamplingParams) -> None:
"""Scatter all per-slot persistent state for a newly-assigned slot.
Called from prepare_step on flip. Stateful backends override."""
raise NotImplementedError
def reset_capture_state(self) -> None:
"""Clear any per-pool state that warm-up iterations may have dirtied
before CUDA graph capture. Warm-up runs sample()/verify() against
pool row 0 (see CudaGraphWrapper capture path); stateful backends
override this to zero whatever row 0 accumulates. Default: no-op."""
def get_packed_output_d2h(
self,
output_tokens: torch.Tensor,
output_lengths: torch.Tensor,
) -> tuple[torch.Tensor, torch.Tensor] | None:
"""If the backend wrote both outputs into a single contiguous GPU
buffer, return CPU views obtained from one D2H copy. Otherwise
return None and let the caller fall back to two separate D2Hs."""
return None
@abstractmethod
def sample(
self,
logits_output: LogitsProcessorOutput,
sampling_info: SamplingBatchInfo,
) -> tuple[torch.Tensor, torch.Tensor]: ...
@abstractmethod
def verify(
self,
logits_output: LogitsProcessorOutput,
sampling_info: SamplingBatchInfo,
candidates: torch.Tensor,
) -> tuple[torch.Tensor, torch.Tensor]: ...