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

313 lines
13 KiB
Python

from __future__ import annotations
import dataclasses
import logging
from dataclasses import dataclass
from typing import TYPE_CHECKING, Any, List, Optional, Union
import torch
from sglang.srt.constants import HEALTH_CHECK_RID_PREFIX
from sglang.srt.eplb.expert_distribution import ExpertDistributionMetrics
from sglang.srt.layers.logits_processor import LogitsProcessorOutput
from sglang.srt.managers.schedule_batch import Req
from sglang.srt.model_executor.forward_batch_info import PPProxyTensors
from sglang.srt.state_capturer.base import TopkCaptureOutput
if TYPE_CHECKING:
from sglang.srt.managers.scheduler import GenerationBatchResult
from sglang.srt.speculative.eagle_info import EagleDraftInput
logger = logging.getLogger(__name__)
def _async_d2h(t: torch.Tensor) -> torch.Tensor:
"""Async D2H copy for overlap scheduling. On CUDA the dest is pinned (a D2H
to pageable host memory blocks the caller until done) and record_stream keeps
the source alive until the copy stream drains, so the caching allocator can't
recycle it early. Non-CUDA falls back to a plain copy."""
if not t.is_cuda:
return t.to("cpu", non_blocking=True)
cpu_t = torch.empty(t.shape, dtype=t.dtype, pin_memory=True)
cpu_t.copy_(t, non_blocking=True)
t.record_stream(torch.cuda.current_stream(t.device))
return cpu_t
@dataclasses.dataclass
class GenerationBatchResult:
logits_output: Optional[LogitsProcessorOutput] = None
pp_hidden_states_proxy_tensors: Optional[PPProxyTensors] = None
next_token_ids: Optional[
Union[torch.Tensor, List[torch.Tensor], List[List[int]]]
] = None
num_correct_drafts: int = 0 # no bonus included
num_correct_drafts_per_req_cpu: Optional[List[int]] = None
num_block_accept_tokens: int = 0
num_cap_tokens: int = 0
# FDFO dLLM batching: per-request accepted block length and carried algo state.
accept_length_per_req_cpu: Optional[List[int]] = None
dllm_algo_state: Optional[List[Any]] = None
can_run_cuda_graph: bool = False
# PP skip output comm: True when output send/recv was skipped and
# next_token_ids are placeholder zeros. Used by process_batch_result_prefill
# to validate that skipped output is never consumed.
skipped_output_comm: bool = False
# For output processing
extend_input_len_per_req: Optional[List[int]] = None
extend_logprob_start_len_per_req: Optional[List[int]] = None
# For overlap scheduling
copy_done: Optional[torch.cuda.Event] = None
delay_sample_func: Optional[callable] = None
future_indices: Optional[torch.Tensor] = None
speculative_num_draft_tokens: Optional[int] = None
# FIXME(lsyin): maybe move to a better place?
# sync path: forward stream -> output processor
accept_lens: Optional[torch.Tensor] = None
block_accept_lens: Optional[torch.Tensor] = None
cap_lens: Optional[torch.Tensor] = None
# Next-iter seq_lens; published via on_publish.
new_seq_lens: Optional[torch.Tensor] = None
# relay path: forward stream -> next step forward
next_draft_input: Optional[EagleDraftInput] = None
# Refs the worker wants scheduler to keep alive for the same 2-iter window
# as batch_record_buf. Used for cross-stream tensor lifetime (e.g. a spec
# V2 verify ForwardBatch whose tensors must outlive mid-iter SB rebinds).
extra_keep_alive_refs: Optional[List[Any]] = None
# Routed experts: pending async D2H for overlap scheduling
routed_experts_output: Optional[TopkCaptureOutput] = None
indexer_topk_output: Optional[TopkCaptureOutput] = None
# metrics
expert_distribution_metrics: Optional[ExpertDistributionMetrics] = None
# Forward pass metrics (FPM) — GPU-accurate timing via CUDA events
fpm_start_event: Optional[torch.cuda.Event] = None
fpm_end_event: Optional[torch.cuda.Event] = None
@property
def has_sampled_token_ids(self) -> bool:
"""True when this iter sampled token ids; False when none were produced
this rank/split (a non-last PP rank or a non-final prefill split)."""
return isinstance(self.next_token_ids, torch.Tensor)
@torch.profiler.record_function("copy_result_to_cpu")
def copy_to_cpu(self, return_logprob: bool, return_hidden_states: bool = True):
"""Copy tensors to CPU in overlap scheduling.
Only the tensors which are needed for processing results are copied,
e.g., next_token_ids, logits outputs
"""
if return_logprob:
if self.logits_output.next_token_logprobs is not None:
self.logits_output.next_token_logprobs = _async_d2h(
self.logits_output.next_token_logprobs
)
if self.logits_output.input_token_logprobs is not None:
self.logits_output.input_token_logprobs = _async_d2h(
self.logits_output.input_token_logprobs
)
if self.logits_output.next_token_top_logprobs_val is not None:
self.logits_output.next_token_top_logprobs_val = [
_async_d2h(v) if torch.is_tensor(v) else v
for v in self.logits_output.next_token_top_logprobs_val
]
if self.logits_output.next_token_top_logprobs_idx is not None:
self.logits_output.next_token_top_logprobs_idx = [
_async_d2h(x) if torch.is_tensor(x) else x
for x in self.logits_output.next_token_top_logprobs_idx
]
if self.logits_output.next_token_token_ids_logprobs_val is not None:
self.logits_output.next_token_token_ids_logprobs_val = [
_async_d2h(v) if torch.is_tensor(v) else v
for v in self.logits_output.next_token_token_ids_logprobs_val
]
if return_hidden_states and self.logits_output.hidden_states is not None:
self.logits_output.hidden_states = _async_d2h(
self.logits_output.hidden_states
)
self.next_token_ids = _async_d2h(self.next_token_ids)
if self.accept_lens is not None:
self.accept_lens = _async_d2h(self.accept_lens)
if self.block_accept_lens is not None:
self.block_accept_lens = _async_d2h(self.block_accept_lens)
if self.cap_lens is not None:
self.cap_lens = _async_d2h(self.cap_lens)
# Sub-objects only declare their device fields; the single copy+safety
# primitive (_async_d2h: pinned D2H + record_stream) is injected here so
# all device->host copying and lifetime safety lives in one place.
for holder in (
self.routed_experts_output,
self.indexer_topk_output,
self.expert_distribution_metrics,
):
if holder is not None:
holder.map_device_tensors(_async_d2h)
self.copy_done.record()
@classmethod
def from_pp_proxy(
cls, logits_output, next_pp_outputs: PPProxyTensors, can_run_cuda_graph
):
# TODO(lsyin): refactor PP and avoid using dict
proxy_dict = next_pp_outputs.tensors
return cls(
logits_output=logits_output,
pp_hidden_states_proxy_tensors=None,
next_token_ids=next_pp_outputs["next_token_ids"],
extend_input_len_per_req=proxy_dict.get("extend_input_len_per_req", None),
extend_logprob_start_len_per_req=proxy_dict.get(
"extend_logprob_start_len_per_req", None
),
can_run_cuda_graph=can_run_cuda_graph,
)
def validate_input_length(
req: Req, max_req_input_len: int, allow_auto_truncate: bool
) -> Optional[str]:
"""Validate and potentially truncate input length.
Args:
req: The request containing input_ids to validate
max_req_input_len: Maximum allowed input length
allow_auto_truncate: Whether to truncate long inputs
Returns:
Error message if validation fails, None if successful
"""
if len(req.origin_input_ids) >= max_req_input_len:
if allow_auto_truncate:
logger.warning(
"Request length is longer than the KV cache pool size or "
"the max context length. Truncated. "
f"{len(req.origin_input_ids)=}, {max_req_input_len=}."
)
req.origin_input_ids = req.origin_input_ids[:max_req_input_len]
return None
else:
error_msg = (
f"Input length ({len(req.origin_input_ids)} tokens) exceeds "
f"the maximum allowed length ({max_req_input_len} tokens). "
f"Use a shorter input or enable --allow-auto-truncate."
)
return error_msg
return None
def get_logprob_dict_from_result(result: GenerationBatchResult) -> dict:
logits_output = result.logits_output
assert logits_output is not None
return {
"extend_input_len_per_req": result.extend_input_len_per_req,
"extend_logprob_start_len_per_req": result.extend_logprob_start_len_per_req,
"next_token_logprobs": result.logits_output.next_token_logprobs,
"next_token_top_logprobs_val": result.logits_output.next_token_top_logprobs_val,
"next_token_top_logprobs_idx": result.logits_output.next_token_top_logprobs_idx,
"next_token_token_ids_logprobs_val": result.logits_output.next_token_token_ids_logprobs_val,
"next_token_token_ids_logprobs_idx": result.logits_output.next_token_token_ids_logprobs_idx,
"input_token_logprobs": result.logits_output.input_token_logprobs,
"input_top_logprobs_val": result.logits_output.input_top_logprobs_val,
"input_top_logprobs_idx": result.logits_output.input_top_logprobs_idx,
"input_token_ids_logprobs_val": result.logits_output.input_token_ids_logprobs_val,
"input_token_ids_logprobs_idx": result.logits_output.input_token_ids_logprobs_idx,
}
def get_logprob_from_pp_outputs(
next_pp_outputs: PPProxyTensors,
) -> tuple[LogitsProcessorOutput, list[int], list[int]]:
logits_output = LogitsProcessorOutput(
# Do not send logits and hidden states because they are large
next_token_logits=None,
hidden_states=None,
next_token_logprobs=next_pp_outputs["next_token_logprobs"],
next_token_top_logprobs_val=next_pp_outputs["next_token_top_logprobs_val"],
next_token_top_logprobs_idx=next_pp_outputs["next_token_top_logprobs_idx"],
next_token_token_ids_logprobs_val=next_pp_outputs[
"next_token_token_ids_logprobs_val"
],
next_token_token_ids_logprobs_idx=next_pp_outputs[
"next_token_token_ids_logprobs_idx"
],
input_token_logprobs=next_pp_outputs["input_token_logprobs"],
input_top_logprobs_val=next_pp_outputs["input_top_logprobs_val"],
input_top_logprobs_idx=next_pp_outputs["input_top_logprobs_idx"],
input_token_ids_logprobs_val=next_pp_outputs["input_token_ids_logprobs_val"],
input_token_ids_logprobs_idx=next_pp_outputs["input_token_ids_logprobs_idx"],
)
extend_input_len_per_req = next_pp_outputs["extend_input_len_per_req"]
extend_logprob_start_len_per_req = next_pp_outputs[
"extend_logprob_start_len_per_req"
]
return logits_output, extend_input_len_per_req, extend_logprob_start_len_per_req
@dataclass
class EmbeddingBatchResult:
"""Result from an embedding/classification forward pass.
Attributes:
embeddings: Model output — pooled embeddings or classification logits.
pooled_hidden_states: Raw hidden states before the task head. Present
only when the batch contained ``return_pooled_hidden_states=True``
requests. Tensor (uniform shapes) or list of tensors (MIS).
copy_done: CUDA event recorded after the async CPU copy completes.
"""
embeddings: torch.Tensor
pooled_hidden_states: Optional[torch.Tensor] = None
copy_done: Optional[torch.cuda.Event] = None
@property
def can_run_cuda_graph(self) -> bool:
return False
@torch.profiler.record_function("copy_embedding_to_cpu")
def copy_to_cpu(self):
"""Copy embeddings and pooled hidden states to CPU for overlap scheduling."""
if isinstance(self.embeddings, torch.Tensor):
self.copy_done = torch.get_device_module(self.embeddings.device).Event()
self.embeddings = _async_d2h(self.embeddings)
else:
assert isinstance(self.embeddings, list)
if len(self.embeddings) == 0:
return
self.copy_done = torch.get_device_module(self.embeddings[0].device).Event()
self.embeddings = [_async_d2h(emb) for emb in self.embeddings]
if self.pooled_hidden_states is not None:
if isinstance(self.pooled_hidden_states, list):
self.pooled_hidden_states = [
_async_d2h(t) for t in self.pooled_hidden_states
]
else:
self.pooled_hidden_states = _async_d2h(self.pooled_hidden_states)
self.copy_done.record()
def is_health_check_generate_req(recv_req):
rid = getattr(recv_req, "rid", None)
return rid is not None and rid.startswith(HEALTH_CHECK_RID_PREFIX)