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sgl-project--sglang/python/sglang/jit_kernel/minimax_quant_ue8m0.py
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chore: import upstream snapshot with attribution
2026-07-13 12:38:16 +08:00

106 lines
3.8 KiB
Python

from __future__ import annotations
from typing import TYPE_CHECKING, Tuple
import torch
from sglang.jit_kernel.utils import (
cache_once,
is_arch_support_pdl,
load_jit,
make_cpp_args,
)
if TYPE_CHECKING:
from tvm_ffi.module import Module
@cache_once
def _jit_module(group_size: int) -> Module:
args = make_cpp_args(group_size, is_arch_support_pdl())
return load_jit(
"minimax_per_token_quant_ue8m0",
*args,
cuda_files=["minimax/per_token_quant_ue8m0.cuh"],
cuda_wrappers=[
("per_token_quant_ue8m0", f"per_token_quant_ue8m0<{args}>"),
],
)
@cache_once
def _jit_scatter_module(group_size: int, topk: int) -> Module:
# topk is a template arg so the dst-row load/store loops fully unroll.
args = make_cpp_args(group_size, topk, is_arch_support_pdl())
return load_jit(
"minimax_per_token_quant_ue8m0_scatter",
*args,
cuda_files=["minimax/per_token_quant_ue8m0.cuh"],
cuda_wrappers=[
(
"per_token_quant_ue8m0_scatter",
f"per_token_quant_ue8m0_scatter<{args}>",
),
],
)
def per_token_quant_fp8_ue8m0(
x: torch.Tensor, group_size: int = 128
) -> Tuple[torch.Tensor, torch.Tensor]:
"""Per-token group quant to FP8-e4m3 with a fused UE8M0 (int32-packed) scale.
Returns ``(x_q, x_sf)`` where ``x_q`` is fp8_e4m3 ``[num_tokens, hidden]`` and
``x_sf`` is the int32-packed UE8M0 scale ``[num_tokens, hidden//group_size//4]``
(row-major). Byte-identical to ``per_token_group_quant_fp8(scale_ue8m0=True)``
followed by ``transform_sf_into_required_layout`` (both ceil-round the scale),
but does it in a single kernel -- no separate transpose/pack launch.
"""
assert x.is_cuda and x.dtype == torch.bfloat16 and x.dim() == 2
assert x.is_contiguous()
num_tokens, hidden = x.shape
assert hidden % group_size == 0
num_groups = hidden // group_size
assert num_groups % 4 == 0, "num_groups must be a multiple of 4 for int32 packing"
x_q = torch.empty_like(x, dtype=torch.float8_e4m3fn)
x_sf = torch.empty(
(num_tokens, num_groups // 4), dtype=torch.int32, device=x.device
)
_jit_module(group_size).per_token_quant_ue8m0(x, x_q, x_sf)
return x_q, x_sf
def per_token_quant_fp8_ue8m0_scatter(
x: torch.Tensor,
gateup_input: torch.Tensor,
gateup_input_scale: torch.Tensor,
src2dst: torch.Tensor,
topk_ids: torch.Tensor,
topk: int,
m_max: int,
group_size: int = 128,
) -> None:
"""Fused per-token FP8/UE8M0 quant **and** scatter into the permuted grouped-GEMM
input -- a single kernel replacing ``per_token_quant_fp8_ue8m0`` +
``fill_gateup_input_triton_kernel``.
For each source token it computes the fp8 row + int32-packed UE8M0 scale once,
then writes them to each of the token's ``topk`` destination rows:
``gateup_input`` fp8 ``[E, m_max, hidden]`` (row ``src2dst[token, i]``)
``gateup_input_scale`` int32 ``[E, hidden//group//4, m_max]`` (MN-major; byte-scattered)
Slots with ``topk_ids[token, i] < 0`` are skipped. Byte-identical to the
two-kernel path on every written row.
"""
assert x.is_cuda and x.dtype == torch.bfloat16 and x.dim() == 2
assert x.is_contiguous()
assert gateup_input.dtype == torch.float8_e4m3fn and gateup_input.dim() == 3
assert gateup_input_scale.dtype == torch.int32 and gateup_input_scale.dim() == 3
num_tokens, hidden = x.shape
assert hidden % group_size == 0
num_groups = hidden // group_size
assert num_groups % 4 == 0, "num_groups must be a multiple of 4 for int32 packing"
_jit_scatter_module(group_size, int(topk)).per_token_quant_ue8m0_scatter(
x, gateup_input, gateup_input_scale, src2dst, topk_ids, int(topk), int(m_max)
)