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sgl-project--sglang/python/sglang/jit_kernel/ngram_corpus.py
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chore: import upstream snapshot with attribution
2026-07-13 12:38:16 +08:00

141 lines
4.9 KiB
Python

from __future__ import annotations
from collections.abc import Iterable, Sequence
from typing import Dict, List, Tuple
import numpy as np
import torch
import tvm_ffi
from sglang.jit_kernel.utils import cache_once, load_jit
_MATCH_TYPE_MAP = {"BFS": 0, "PROB": 1}
def _to_csr(batch_tokens: List[List[int]]) -> Tuple[torch.Tensor, torch.Tensor]:
flat = []
offsets = [0]
for seq in batch_tokens:
flat.extend(seq)
offsets.append(len(flat))
tokens_flat = torch.tensor(flat, dtype=torch.int32)
offsets_t = torch.tensor(offsets, dtype=torch.int64)
return tokens_flat, offsets_t
@cache_once
def get_ngram_corpus_cls():
module = load_jit(
"ngram_corpus",
cpp_files=[
"ngram_corpus/result.cpp",
"ngram_corpus/trie.cpp",
"ngram_corpus/suffix_automaton.cpp",
"ngram_corpus/ngram.cpp",
"ngram_corpus/ngram_corpus_ffi.cpp",
],
header_only=False,
)
module.register_once()
@tvm_ffi.register_object("sgl.NgramCorpus")
class NgramCorpusFFI(tvm_ffi.Object):
__slots__ = ("__dict__",)
def __init__(
self,
capacity: int,
max_trie_depth: int,
min_bfs_breadth: int,
max_bfs_breadth: int,
draft_token_num: int,
match_type: str,
external_sam_budget: int = 0,
external_corpus_max_tokens: int = 10000000,
) -> None:
mt = _MATCH_TYPE_MAP.get(match_type)
if mt is None:
raise ValueError(
f"Unknown match_type: '{match_type}'. Must be 'BFS' or 'PROB'."
)
self.__ffi_init__(
capacity,
max_trie_depth,
min_bfs_breadth,
max_bfs_breadth,
draft_token_num,
mt,
external_sam_budget,
external_corpus_max_tokens,
)
self._draft_token_num = draft_token_num
def insert(self, batch_tokens: List[List[int]]) -> None:
tokens_flat, offsets = _to_csr(batch_tokens)
self.async_insert(tokens_flat, offsets) # type: ignore
def match_stateful(
self,
state_ids: List[int],
batch_tokens: List[List[int]],
total_lens: List[int],
) -> Tuple[np.ndarray, np.ndarray]:
tokens_flat, offsets = _to_csr(batch_tokens)
batch_size = len(batch_tokens)
d = self._draft_token_num
state_ids_t = torch.tensor(state_ids, dtype=torch.int64)
total_lens_t = torch.tensor(total_lens, dtype=torch.int64)
out_tokens = torch.zeros(batch_size * d, dtype=torch.int32)
out_mask = torch.zeros(batch_size * d * d, dtype=torch.uint8)
self.batch_match_stateful( # type: ignore
state_ids_t, tokens_flat, offsets, total_lens_t, out_tokens, out_mask
)
return out_tokens.numpy().astype(np.int64), out_mask.numpy().astype(
np.int64
)
def erase_states(self, state_ids: List[int]) -> None:
state_ids_t = torch.tensor(state_ids, dtype=torch.int64)
self.erase_match_state(state_ids_t) # type: ignore
def load_external_corpus_named(
self, corpus_id: str, chunks: Iterable[Sequence[int]], max_tokens: int
) -> Tuple[int, int]:
self.start_external_corpus_load() # type: ignore
chunk_count = 0
loaded_token_count = 0
try:
for chunk in chunks:
tokens_t = torch.tensor(list(chunk), dtype=torch.int32)
if loaded_token_count + len(tokens_t) > max_tokens:
raise ValueError(
"External ngram corpus exceeds the remaining token budget "
f"({max_tokens}) after loading {loaded_token_count} tokens."
)
loaded_token_count += len(tokens_t)
self.append_external_corpus_tokens(tokens_t) # type: ignore
chunk_count += 1
self.finish_external_corpus_load(corpus_id) # type: ignore
except Exception:
self.cancel_external_corpus_load() # type: ignore
raise
return chunk_count, loaded_token_count
def remove_corpus(self, corpus_id: str) -> None:
self.remove_external_corpus(corpus_id) # type: ignore
def list_corpora(self) -> Dict[str, int]:
result = self.list_external_corpora() # type: ignore
if not result:
return {}
out: Dict[str, int] = {}
for line in result.split("\n"):
corpus_id, token_count = line.split("\t", 1)
out[corpus_id] = int(token_count)
return out
return NgramCorpusFFI